Spaces:
Running on Zero
Running on Zero
File size: 192,117 Bytes
9bade1b ec18889 9bade1b ac3d13d 9bade1b ec18889 9bade1b ec18889 9bade1b ac3d13d ec18889 ac3d13d ec18889 ac3d13d ec18889 9bade1b ec18889 9bade1b | 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 67 68 69 70 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124 125 126 127 128 129 130 131 132 133 134 135 136 137 138 139 140 141 142 143 144 145 146 147 148 149 150 151 152 153 154 155 156 157 158 159 160 161 162 163 164 165 166 167 168 169 170 171 172 173 174 175 176 177 178 179 180 181 182 183 184 185 186 187 188 189 190 191 192 193 194 195 196 197 198 199 200 201 202 203 204 205 206 207 208 209 210 211 212 213 214 215 216 217 218 219 220 221 222 223 224 225 226 227 228 229 230 231 232 233 234 235 236 237 238 239 240 241 242 243 244 245 246 247 248 249 250 251 252 253 254 255 256 257 258 259 260 261 262 263 264 265 266 267 268 269 270 271 272 273 274 275 276 277 278 279 280 281 282 283 284 285 286 287 288 289 290 291 292 293 294 295 296 297 298 299 300 301 302 303 304 305 306 307 308 309 310 311 312 313 314 315 316 317 318 319 320 321 322 323 324 325 326 327 328 329 330 331 332 333 334 335 336 337 338 339 340 341 342 343 344 345 346 347 348 349 350 351 352 353 354 355 356 357 358 359 360 361 362 363 364 365 366 367 368 369 370 371 372 373 374 375 376 377 378 379 380 381 382 383 384 385 386 387 388 389 390 391 392 393 394 395 396 397 398 399 400 401 402 403 404 405 406 407 408 409 410 411 412 413 414 415 416 417 418 419 420 421 422 423 424 425 426 427 428 429 430 431 432 433 434 435 436 437 438 439 440 441 442 443 444 445 446 447 448 449 450 451 452 453 454 455 456 457 458 459 460 461 462 463 464 465 466 467 468 469 470 471 472 473 474 475 476 477 478 479 480 481 482 483 484 485 486 487 488 489 490 491 492 493 494 495 496 497 498 499 500 501 502 503 504 505 506 507 508 509 510 511 512 513 514 515 516 517 518 519 520 521 522 523 524 525 526 527 528 529 530 531 532 533 534 535 536 537 538 539 540 541 542 543 544 545 546 547 548 549 550 551 552 553 554 555 556 557 558 559 560 561 562 563 564 565 566 567 568 569 570 571 572 573 574 575 576 577 578 579 580 581 582 583 584 585 586 587 588 589 590 591 592 593 594 595 596 597 598 599 600 601 602 603 604 605 606 607 608 609 610 611 612 613 614 615 616 617 618 619 620 621 622 623 624 625 626 627 628 629 630 631 632 633 634 635 636 637 638 639 640 641 642 643 644 645 646 647 648 649 650 651 652 653 654 655 656 657 658 659 660 661 662 663 664 665 666 667 668 669 670 671 672 673 674 675 676 677 678 679 680 681 682 683 684 685 686 687 688 689 690 691 692 693 694 695 696 697 698 699 700 701 702 703 704 705 706 707 708 709 710 711 712 713 714 715 716 717 718 719 720 721 722 723 724 725 726 727 728 729 730 731 732 733 734 735 736 737 738 739 740 741 742 743 744 745 746 747 748 749 750 751 752 753 754 755 756 757 758 759 760 761 762 763 764 765 766 767 768 769 770 771 772 773 774 775 776 777 778 779 780 781 782 783 784 785 786 787 788 789 790 791 792 793 794 795 796 797 798 799 800 801 802 803 804 805 806 807 808 809 810 811 812 813 814 815 816 817 818 819 820 821 822 823 824 825 826 827 828 829 830 831 832 833 834 835 836 837 838 839 840 841 842 843 844 845 846 847 848 849 850 851 852 853 854 855 856 857 858 859 860 861 862 863 864 865 866 867 868 869 870 871 872 873 874 875 876 877 878 879 880 881 882 883 884 885 886 887 888 889 890 891 892 893 894 895 896 897 898 899 900 901 902 903 904 905 906 907 908 909 910 911 912 913 914 915 916 917 918 919 920 921 922 923 924 925 926 927 928 929 930 931 932 933 934 935 936 937 938 939 940 941 942 943 944 945 946 947 948 949 950 951 952 953 954 955 956 957 958 959 960 961 962 963 964 965 966 967 968 969 970 971 972 973 974 975 976 977 978 979 980 981 982 983 984 985 986 987 988 989 990 991 992 993 994 995 996 997 998 999 1000 1001 1002 1003 1004 1005 1006 1007 1008 1009 1010 1011 1012 1013 1014 1015 1016 1017 1018 1019 1020 1021 1022 1023 1024 1025 1026 1027 1028 1029 1030 1031 1032 1033 1034 1035 1036 1037 1038 1039 1040 1041 1042 1043 1044 1045 1046 1047 1048 1049 1050 1051 1052 1053 1054 1055 1056 1057 1058 1059 1060 1061 1062 1063 1064 1065 1066 1067 1068 1069 1070 1071 1072 1073 1074 1075 1076 1077 1078 1079 1080 1081 1082 1083 1084 1085 1086 1087 1088 1089 1090 1091 1092 1093 1094 1095 1096 1097 1098 1099 1100 1101 1102 1103 1104 1105 1106 1107 1108 1109 1110 1111 1112 1113 1114 1115 1116 1117 1118 1119 1120 1121 1122 1123 1124 1125 1126 1127 1128 1129 1130 1131 1132 1133 1134 1135 1136 1137 1138 1139 1140 1141 1142 1143 1144 1145 1146 1147 1148 1149 1150 1151 1152 1153 1154 1155 1156 1157 1158 1159 1160 1161 1162 1163 1164 1165 1166 1167 1168 1169 1170 1171 1172 1173 1174 1175 1176 1177 1178 1179 1180 1181 1182 1183 1184 1185 1186 1187 1188 1189 1190 1191 1192 1193 1194 1195 1196 1197 1198 1199 1200 1201 1202 1203 1204 1205 1206 1207 1208 1209 1210 1211 1212 1213 1214 1215 1216 1217 1218 1219 1220 1221 1222 1223 1224 1225 1226 1227 1228 1229 1230 1231 1232 1233 1234 1235 1236 1237 1238 1239 1240 1241 1242 1243 1244 1245 1246 1247 1248 1249 1250 1251 1252 1253 1254 1255 1256 1257 1258 1259 1260 1261 1262 1263 1264 1265 1266 1267 1268 1269 1270 1271 1272 1273 1274 1275 1276 1277 1278 1279 1280 1281 1282 1283 1284 1285 1286 1287 1288 1289 1290 1291 1292 1293 1294 1295 1296 1297 1298 1299 1300 1301 1302 1303 1304 1305 1306 1307 1308 1309 1310 1311 1312 1313 1314 1315 1316 1317 1318 1319 1320 1321 1322 1323 1324 1325 1326 1327 1328 1329 1330 1331 1332 1333 1334 1335 1336 1337 1338 1339 1340 1341 1342 1343 1344 1345 1346 1347 1348 1349 1350 1351 1352 1353 1354 1355 1356 1357 1358 1359 1360 1361 1362 1363 1364 1365 1366 1367 1368 1369 1370 1371 1372 1373 1374 1375 1376 1377 1378 1379 1380 1381 1382 1383 1384 1385 1386 1387 1388 1389 1390 1391 1392 1393 1394 1395 1396 1397 1398 1399 1400 1401 1402 1403 1404 1405 1406 1407 1408 1409 1410 1411 1412 1413 1414 1415 1416 1417 1418 1419 1420 1421 1422 1423 1424 1425 1426 1427 1428 1429 1430 1431 1432 1433 1434 1435 1436 1437 1438 1439 1440 1441 1442 1443 1444 1445 1446 1447 1448 1449 1450 1451 1452 1453 1454 1455 1456 1457 1458 1459 1460 1461 1462 1463 1464 1465 1466 1467 1468 1469 1470 1471 1472 1473 1474 1475 1476 1477 1478 1479 1480 1481 1482 1483 1484 1485 1486 1487 1488 1489 1490 1491 1492 1493 1494 1495 1496 1497 1498 1499 1500 1501 1502 1503 1504 1505 1506 1507 1508 1509 1510 1511 1512 1513 1514 1515 1516 1517 1518 1519 1520 1521 1522 1523 1524 1525 1526 1527 1528 1529 1530 1531 1532 1533 1534 1535 1536 1537 1538 1539 1540 1541 1542 1543 1544 1545 1546 1547 1548 1549 1550 1551 1552 1553 1554 1555 1556 1557 1558 1559 1560 1561 1562 1563 1564 1565 1566 1567 1568 1569 1570 1571 1572 1573 1574 1575 1576 1577 1578 1579 1580 1581 1582 1583 1584 1585 1586 1587 1588 1589 1590 1591 1592 1593 1594 1595 1596 1597 1598 1599 1600 1601 1602 1603 1604 1605 1606 1607 1608 1609 1610 1611 1612 1613 1614 1615 1616 1617 1618 1619 1620 1621 1622 1623 1624 1625 1626 1627 1628 1629 1630 1631 1632 1633 1634 1635 1636 1637 1638 1639 1640 1641 1642 1643 1644 1645 1646 1647 1648 1649 1650 1651 1652 1653 1654 1655 1656 1657 1658 1659 1660 1661 1662 1663 1664 1665 1666 1667 1668 1669 1670 1671 1672 1673 1674 1675 1676 1677 1678 1679 1680 1681 1682 1683 1684 1685 1686 1687 1688 1689 1690 1691 1692 1693 1694 1695 1696 1697 1698 1699 1700 1701 1702 1703 1704 1705 1706 1707 1708 1709 1710 1711 1712 1713 1714 1715 1716 1717 1718 1719 1720 1721 1722 1723 1724 1725 1726 1727 1728 1729 1730 1731 1732 1733 1734 1735 1736 1737 1738 1739 1740 1741 1742 1743 1744 1745 1746 1747 1748 1749 1750 1751 1752 1753 1754 1755 1756 1757 1758 1759 1760 1761 1762 1763 1764 1765 1766 1767 1768 1769 1770 1771 1772 1773 1774 1775 1776 1777 1778 1779 1780 1781 1782 1783 1784 1785 1786 1787 1788 1789 1790 1791 1792 1793 1794 1795 1796 1797 1798 1799 1800 1801 1802 1803 1804 1805 1806 1807 1808 1809 1810 1811 1812 1813 1814 1815 1816 1817 1818 1819 1820 1821 1822 1823 1824 1825 1826 1827 1828 1829 1830 1831 1832 1833 1834 1835 1836 1837 1838 1839 1840 1841 1842 1843 1844 1845 1846 1847 1848 1849 1850 1851 1852 1853 1854 1855 1856 1857 1858 1859 1860 1861 1862 1863 1864 1865 1866 1867 1868 1869 1870 1871 1872 1873 1874 1875 1876 1877 1878 1879 1880 1881 1882 1883 1884 1885 1886 1887 1888 1889 1890 1891 1892 1893 1894 1895 1896 1897 1898 1899 1900 1901 1902 1903 1904 1905 1906 1907 1908 1909 1910 1911 1912 1913 1914 1915 1916 1917 1918 1919 1920 1921 1922 1923 1924 1925 1926 1927 1928 1929 1930 1931 1932 1933 1934 1935 1936 1937 1938 1939 1940 1941 1942 1943 1944 1945 1946 1947 1948 1949 1950 1951 1952 1953 1954 1955 1956 1957 1958 1959 1960 1961 1962 1963 1964 1965 1966 1967 1968 1969 1970 1971 1972 1973 1974 1975 1976 1977 1978 1979 1980 1981 1982 1983 1984 1985 1986 1987 1988 1989 1990 1991 1992 1993 1994 1995 1996 1997 1998 1999 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 2015 2016 2017 2018 2019 2020 2021 2022 2023 2024 2025 2026 2027 2028 2029 2030 2031 2032 2033 2034 2035 2036 2037 2038 2039 2040 2041 2042 2043 2044 2045 2046 2047 2048 2049 2050 2051 2052 2053 2054 2055 2056 2057 2058 2059 2060 2061 2062 2063 2064 2065 2066 2067 2068 2069 2070 2071 2072 2073 2074 2075 2076 2077 2078 2079 2080 2081 2082 2083 2084 2085 2086 2087 2088 2089 2090 2091 2092 2093 2094 2095 2096 2097 2098 2099 2100 2101 2102 2103 2104 2105 2106 2107 2108 2109 2110 2111 2112 2113 2114 2115 2116 2117 2118 2119 2120 2121 2122 2123 2124 2125 2126 2127 2128 2129 2130 2131 2132 2133 2134 2135 2136 2137 2138 2139 2140 2141 2142 2143 2144 2145 2146 2147 2148 2149 2150 2151 2152 2153 2154 2155 2156 2157 2158 2159 2160 2161 2162 2163 2164 2165 2166 2167 2168 2169 2170 2171 2172 2173 2174 2175 2176 2177 2178 2179 2180 2181 2182 2183 2184 2185 2186 2187 2188 2189 2190 2191 2192 2193 2194 2195 2196 2197 2198 2199 2200 2201 2202 2203 2204 2205 2206 2207 2208 2209 2210 2211 2212 2213 2214 2215 2216 2217 2218 2219 2220 2221 2222 2223 2224 2225 2226 2227 2228 2229 2230 2231 2232 2233 2234 2235 2236 2237 2238 2239 2240 2241 2242 2243 2244 2245 2246 2247 2248 2249 2250 2251 2252 2253 2254 2255 2256 2257 2258 2259 2260 2261 2262 2263 2264 2265 2266 2267 2268 2269 2270 2271 2272 2273 2274 2275 2276 2277 2278 2279 2280 2281 2282 2283 2284 2285 2286 2287 2288 2289 2290 2291 2292 2293 2294 2295 2296 2297 2298 2299 2300 2301 2302 2303 2304 2305 2306 2307 2308 2309 2310 2311 2312 2313 2314 2315 2316 2317 2318 2319 2320 2321 2322 2323 2324 2325 2326 2327 2328 2329 2330 2331 2332 2333 2334 2335 2336 2337 2338 2339 2340 2341 2342 2343 2344 2345 2346 2347 2348 2349 2350 2351 2352 2353 2354 2355 2356 2357 2358 2359 2360 2361 2362 2363 2364 2365 2366 2367 2368 2369 2370 2371 2372 2373 2374 2375 2376 2377 2378 2379 2380 2381 2382 2383 2384 2385 2386 2387 2388 2389 2390 2391 2392 2393 2394 2395 2396 2397 2398 2399 2400 2401 2402 2403 2404 2405 2406 2407 2408 2409 2410 2411 2412 2413 2414 2415 2416 2417 2418 2419 2420 2421 2422 2423 2424 2425 2426 2427 2428 2429 2430 2431 2432 2433 2434 2435 2436 2437 2438 2439 2440 2441 2442 2443 2444 2445 2446 2447 2448 2449 2450 2451 2452 2453 2454 2455 2456 2457 2458 2459 2460 2461 2462 2463 2464 2465 2466 2467 2468 2469 2470 2471 2472 2473 2474 2475 2476 2477 2478 2479 2480 2481 2482 2483 2484 2485 2486 2487 2488 2489 2490 2491 2492 2493 2494 2495 2496 2497 2498 2499 2500 2501 2502 2503 2504 2505 2506 2507 2508 2509 2510 2511 2512 2513 2514 2515 2516 2517 2518 2519 2520 2521 2522 2523 2524 2525 2526 2527 2528 2529 2530 2531 2532 2533 2534 2535 2536 2537 2538 2539 2540 2541 2542 2543 2544 2545 2546 2547 2548 2549 2550 2551 2552 2553 2554 2555 2556 2557 2558 2559 2560 2561 2562 2563 2564 2565 2566 2567 2568 2569 2570 2571 2572 2573 2574 2575 2576 2577 2578 2579 2580 2581 2582 2583 2584 2585 2586 2587 2588 2589 2590 2591 2592 2593 2594 2595 2596 2597 2598 2599 2600 2601 2602 2603 2604 2605 2606 2607 2608 2609 2610 2611 2612 2613 2614 2615 2616 2617 2618 2619 2620 2621 2622 2623 2624 2625 2626 2627 2628 2629 2630 2631 2632 2633 2634 2635 2636 2637 2638 2639 2640 2641 2642 2643 2644 2645 2646 2647 2648 2649 2650 2651 2652 2653 2654 2655 2656 2657 2658 2659 2660 2661 2662 2663 2664 2665 2666 2667 2668 2669 2670 2671 2672 2673 2674 2675 2676 2677 2678 2679 2680 2681 2682 2683 2684 2685 2686 2687 2688 2689 2690 2691 2692 2693 2694 2695 2696 2697 2698 2699 2700 2701 2702 2703 2704 2705 2706 2707 2708 2709 2710 2711 2712 2713 2714 2715 2716 2717 2718 2719 2720 2721 2722 2723 2724 2725 2726 2727 2728 2729 2730 2731 2732 2733 2734 2735 2736 2737 2738 2739 2740 2741 2742 2743 2744 2745 2746 2747 2748 2749 2750 2751 2752 2753 2754 2755 2756 2757 2758 2759 2760 2761 2762 2763 2764 2765 2766 2767 2768 2769 2770 2771 2772 2773 2774 2775 2776 2777 2778 2779 2780 2781 2782 2783 2784 2785 2786 2787 2788 2789 2790 2791 2792 2793 2794 2795 2796 2797 2798 2799 2800 2801 2802 2803 2804 2805 2806 2807 2808 2809 2810 2811 2812 2813 2814 2815 2816 2817 2818 2819 2820 2821 2822 2823 2824 2825 2826 2827 2828 2829 2830 2831 2832 2833 2834 2835 2836 2837 2838 2839 2840 2841 2842 2843 2844 2845 2846 2847 2848 2849 2850 2851 2852 2853 2854 2855 2856 2857 2858 2859 2860 2861 2862 2863 2864 2865 2866 2867 2868 2869 2870 2871 2872 2873 2874 2875 2876 2877 2878 2879 2880 2881 2882 2883 2884 2885 2886 2887 2888 2889 2890 2891 2892 2893 2894 2895 2896 2897 2898 2899 2900 2901 2902 2903 2904 2905 2906 2907 2908 2909 2910 2911 2912 2913 2914 2915 2916 2917 2918 2919 2920 2921 2922 2923 2924 2925 2926 2927 2928 2929 2930 2931 2932 2933 2934 2935 2936 2937 2938 2939 2940 2941 2942 2943 2944 2945 2946 2947 2948 2949 2950 2951 2952 2953 2954 2955 2956 2957 2958 2959 2960 2961 2962 2963 2964 2965 2966 2967 2968 2969 2970 2971 2972 2973 2974 2975 2976 2977 2978 2979 2980 2981 2982 2983 2984 2985 2986 2987 2988 2989 2990 2991 2992 2993 2994 2995 2996 2997 2998 2999 3000 3001 3002 3003 3004 3005 3006 3007 3008 3009 3010 3011 3012 3013 3014 3015 3016 3017 3018 3019 3020 3021 3022 3023 3024 3025 3026 3027 3028 3029 3030 3031 3032 3033 3034 3035 3036 3037 3038 3039 3040 3041 3042 3043 3044 3045 3046 3047 3048 3049 3050 3051 3052 3053 3054 3055 3056 3057 3058 3059 3060 3061 3062 3063 3064 3065 3066 3067 3068 3069 3070 3071 3072 3073 3074 3075 3076 3077 3078 3079 3080 3081 3082 3083 3084 3085 3086 3087 3088 3089 3090 3091 3092 3093 3094 3095 3096 3097 3098 3099 3100 3101 3102 3103 3104 3105 3106 3107 3108 3109 3110 3111 3112 3113 3114 3115 3116 3117 3118 3119 3120 3121 3122 3123 3124 3125 3126 3127 3128 3129 3130 3131 3132 3133 3134 3135 3136 3137 3138 3139 3140 3141 3142 3143 3144 3145 3146 3147 3148 3149 3150 3151 3152 3153 3154 3155 3156 3157 3158 3159 3160 3161 3162 3163 3164 3165 3166 3167 3168 3169 3170 3171 3172 3173 3174 3175 3176 3177 3178 3179 3180 3181 3182 3183 3184 3185 3186 3187 3188 3189 3190 3191 3192 3193 3194 3195 3196 3197 3198 3199 3200 3201 3202 3203 3204 3205 3206 3207 3208 3209 3210 3211 3212 3213 3214 3215 3216 3217 3218 3219 3220 3221 3222 3223 3224 3225 3226 3227 3228 3229 3230 3231 3232 3233 3234 3235 3236 3237 3238 3239 3240 3241 3242 3243 3244 3245 3246 3247 3248 3249 3250 3251 3252 3253 3254 3255 3256 3257 3258 3259 3260 3261 3262 3263 3264 3265 3266 3267 3268 3269 3270 3271 3272 3273 3274 3275 3276 3277 3278 3279 3280 3281 3282 3283 3284 3285 3286 3287 3288 3289 3290 3291 3292 3293 3294 3295 3296 3297 3298 3299 3300 3301 3302 3303 3304 3305 3306 3307 3308 3309 3310 3311 3312 3313 3314 3315 3316 3317 3318 3319 3320 3321 3322 3323 3324 3325 3326 3327 3328 3329 3330 3331 3332 3333 3334 3335 3336 3337 3338 3339 3340 3341 3342 3343 3344 3345 3346 3347 3348 3349 3350 3351 3352 3353 3354 3355 3356 3357 3358 3359 3360 3361 3362 3363 3364 3365 3366 3367 3368 3369 3370 3371 3372 3373 3374 3375 3376 3377 3378 3379 3380 3381 3382 3383 3384 3385 3386 3387 3388 3389 3390 3391 3392 3393 3394 3395 3396 3397 3398 3399 3400 3401 3402 3403 3404 3405 3406 3407 3408 3409 3410 3411 3412 3413 3414 3415 3416 3417 3418 3419 3420 3421 3422 3423 3424 3425 3426 3427 3428 3429 3430 3431 3432 3433 3434 3435 3436 3437 3438 3439 3440 3441 3442 3443 3444 3445 3446 3447 3448 3449 3450 3451 3452 3453 3454 3455 3456 3457 3458 3459 3460 3461 3462 3463 3464 3465 3466 3467 3468 3469 3470 3471 3472 3473 3474 3475 3476 3477 3478 3479 3480 3481 3482 3483 3484 3485 3486 3487 3488 3489 3490 3491 3492 3493 3494 3495 3496 3497 3498 3499 3500 3501 3502 3503 3504 3505 3506 3507 3508 3509 3510 3511 3512 3513 3514 3515 3516 3517 3518 3519 3520 3521 3522 3523 3524 3525 3526 3527 3528 3529 3530 3531 3532 3533 3534 3535 3536 3537 3538 3539 3540 3541 3542 3543 3544 3545 3546 3547 3548 3549 3550 3551 3552 3553 3554 3555 3556 3557 3558 3559 3560 3561 3562 3563 3564 3565 3566 3567 3568 3569 3570 3571 3572 3573 3574 3575 3576 3577 3578 3579 3580 3581 3582 3583 3584 3585 3586 3587 3588 3589 3590 3591 3592 3593 3594 3595 3596 3597 3598 3599 3600 3601 3602 3603 3604 3605 3606 3607 3608 3609 3610 3611 3612 3613 3614 3615 3616 3617 3618 3619 3620 3621 3622 3623 3624 3625 3626 3627 3628 3629 3630 3631 3632 3633 3634 3635 3636 3637 3638 3639 3640 3641 3642 3643 3644 3645 3646 3647 3648 3649 3650 3651 3652 3653 3654 3655 3656 3657 3658 3659 3660 3661 3662 3663 3664 3665 3666 3667 3668 3669 3670 3671 3672 3673 3674 3675 3676 3677 3678 3679 3680 3681 3682 3683 3684 3685 3686 3687 3688 3689 3690 3691 3692 3693 3694 3695 3696 3697 3698 3699 3700 3701 3702 3703 3704 3705 3706 3707 3708 3709 3710 3711 3712 3713 3714 3715 3716 3717 3718 3719 3720 3721 3722 3723 3724 3725 3726 3727 3728 3729 3730 3731 3732 3733 3734 3735 3736 3737 3738 3739 3740 3741 3742 3743 3744 3745 3746 3747 3748 3749 3750 3751 3752 3753 3754 3755 3756 3757 3758 3759 3760 3761 3762 3763 3764 3765 3766 3767 3768 3769 3770 3771 3772 3773 3774 3775 3776 3777 3778 3779 3780 3781 3782 3783 3784 3785 3786 3787 3788 3789 3790 3791 3792 3793 3794 3795 3796 3797 3798 3799 3800 3801 3802 3803 3804 3805 3806 3807 3808 3809 3810 3811 3812 3813 3814 3815 3816 3817 3818 3819 3820 3821 3822 3823 3824 3825 3826 3827 3828 3829 3830 3831 3832 3833 3834 3835 3836 3837 3838 3839 3840 3841 3842 3843 3844 3845 3846 3847 3848 3849 3850 3851 3852 3853 3854 3855 3856 3857 3858 3859 3860 3861 3862 3863 3864 3865 3866 3867 3868 3869 3870 3871 3872 3873 3874 3875 3876 3877 3878 3879 3880 3881 3882 3883 3884 3885 3886 3887 3888 3889 3890 3891 3892 3893 3894 3895 3896 3897 3898 3899 3900 3901 3902 3903 3904 3905 3906 3907 3908 3909 3910 3911 3912 3913 3914 3915 3916 3917 3918 3919 3920 3921 3922 3923 3924 3925 3926 3927 3928 3929 3930 3931 3932 3933 3934 3935 3936 3937 3938 3939 3940 3941 3942 3943 3944 3945 3946 3947 3948 3949 3950 3951 3952 3953 3954 3955 3956 3957 3958 3959 3960 3961 3962 3963 3964 3965 3966 3967 3968 3969 3970 3971 3972 3973 3974 3975 3976 3977 3978 3979 3980 3981 3982 3983 3984 3985 3986 3987 3988 3989 3990 3991 3992 3993 3994 3995 3996 3997 3998 3999 4000 4001 4002 4003 4004 4005 4006 4007 4008 4009 4010 4011 4012 4013 4014 4015 4016 4017 4018 4019 4020 4021 4022 4023 4024 4025 4026 4027 4028 4029 4030 4031 4032 4033 4034 4035 4036 4037 4038 4039 4040 4041 4042 4043 4044 4045 4046 4047 4048 4049 4050 4051 4052 4053 4054 4055 4056 4057 4058 4059 4060 4061 4062 4063 4064 4065 4066 4067 4068 4069 4070 4071 4072 4073 4074 4075 4076 4077 4078 4079 4080 4081 4082 4083 4084 4085 4086 4087 4088 4089 4090 4091 4092 4093 4094 4095 4096 4097 4098 4099 4100 4101 4102 4103 4104 4105 4106 4107 4108 4109 4110 4111 4112 4113 4114 4115 4116 4117 4118 4119 4120 4121 4122 4123 4124 4125 4126 4127 4128 4129 4130 4131 4132 4133 4134 4135 4136 4137 4138 4139 4140 4141 4142 4143 4144 4145 4146 4147 4148 4149 4150 4151 4152 4153 4154 4155 4156 4157 4158 4159 4160 4161 4162 4163 4164 4165 4166 4167 4168 4169 4170 4171 4172 4173 4174 4175 4176 4177 4178 4179 4180 4181 4182 4183 4184 4185 4186 4187 4188 4189 4190 4191 4192 4193 4194 4195 4196 4197 4198 4199 4200 4201 4202 4203 4204 4205 4206 4207 4208 4209 4210 4211 4212 4213 4214 4215 4216 4217 4218 4219 4220 4221 4222 4223 4224 4225 4226 4227 4228 4229 4230 4231 4232 4233 4234 4235 4236 4237 4238 4239 4240 4241 4242 4243 4244 4245 4246 4247 4248 4249 4250 4251 4252 4253 4254 4255 4256 4257 4258 4259 4260 4261 4262 4263 4264 4265 4266 4267 4268 4269 4270 4271 4272 4273 4274 4275 4276 4277 4278 4279 4280 4281 4282 4283 4284 4285 4286 4287 4288 4289 4290 4291 4292 4293 4294 4295 4296 4297 4298 4299 4300 4301 4302 4303 4304 4305 4306 4307 4308 4309 4310 4311 4312 4313 4314 4315 4316 4317 4318 4319 4320 4321 4322 4323 4324 4325 4326 4327 4328 4329 4330 4331 4332 4333 4334 4335 4336 4337 4338 4339 4340 4341 4342 4343 4344 4345 4346 4347 4348 4349 4350 4351 4352 4353 4354 4355 4356 4357 4358 4359 4360 4361 4362 4363 4364 4365 4366 4367 4368 4369 4370 4371 4372 4373 4374 4375 4376 4377 4378 4379 4380 4381 4382 4383 4384 4385 4386 4387 4388 4389 4390 4391 4392 4393 4394 4395 4396 4397 4398 4399 4400 4401 4402 4403 4404 4405 4406 4407 4408 4409 4410 4411 4412 4413 4414 4415 4416 4417 4418 4419 4420 4421 4422 4423 4424 4425 4426 4427 4428 4429 4430 4431 4432 4433 4434 4435 4436 4437 4438 4439 4440 4441 4442 4443 4444 4445 4446 4447 4448 4449 4450 4451 4452 4453 4454 4455 4456 4457 4458 4459 4460 4461 4462 4463 4464 4465 4466 4467 4468 4469 4470 4471 4472 4473 4474 4475 4476 4477 4478 4479 4480 4481 4482 4483 4484 4485 4486 4487 4488 4489 4490 4491 4492 4493 4494 4495 4496 4497 4498 4499 4500 4501 4502 4503 4504 4505 4506 4507 4508 4509 4510 4511 4512 4513 4514 4515 4516 4517 4518 4519 4520 4521 4522 4523 4524 4525 4526 4527 4528 4529 4530 4531 4532 4533 4534 4535 4536 4537 4538 4539 4540 4541 4542 4543 4544 4545 4546 4547 4548 4549 4550 4551 4552 4553 4554 4555 4556 4557 4558 4559 4560 4561 4562 4563 4564 4565 4566 4567 4568 4569 4570 4571 4572 4573 4574 4575 4576 4577 4578 4579 4580 4581 4582 4583 4584 4585 4586 4587 4588 4589 4590 4591 4592 4593 4594 4595 4596 4597 4598 4599 4600 4601 4602 4603 4604 4605 4606 4607 4608 4609 4610 4611 4612 4613 4614 4615 4616 4617 4618 4619 4620 4621 4622 4623 4624 4625 4626 4627 4628 4629 4630 4631 4632 4633 4634 4635 4636 4637 4638 4639 4640 4641 4642 4643 4644 4645 4646 4647 4648 4649 4650 4651 4652 4653 4654 4655 4656 4657 4658 4659 4660 4661 4662 4663 4664 4665 4666 4667 4668 4669 4670 4671 4672 4673 4674 4675 4676 4677 4678 4679 4680 4681 4682 4683 4684 4685 4686 4687 4688 4689 4690 4691 4692 4693 4694 4695 4696 4697 4698 4699 4700 4701 4702 4703 4704 4705 4706 4707 4708 4709 4710 4711 4712 4713 4714 4715 4716 4717 4718 4719 4720 4721 4722 4723 4724 4725 4726 4727 4728 4729 4730 4731 4732 4733 4734 4735 4736 4737 4738 4739 4740 4741 4742 4743 4744 4745 4746 4747 4748 4749 4750 4751 4752 4753 4754 4755 4756 4757 4758 4759 4760 4761 4762 4763 4764 4765 4766 4767 4768 4769 4770 4771 4772 4773 4774 4775 4776 4777 4778 4779 4780 4781 4782 4783 4784 4785 4786 4787 4788 4789 4790 4791 4792 4793 4794 4795 4796 4797 4798 4799 4800 4801 4802 4803 4804 4805 4806 4807 4808 4809 4810 4811 4812 4813 4814 4815 4816 4817 4818 4819 4820 4821 4822 4823 4824 4825 4826 4827 4828 4829 4830 4831 4832 4833 4834 4835 4836 4837 4838 4839 4840 4841 4842 4843 4844 4845 4846 4847 4848 4849 4850 4851 4852 4853 4854 4855 4856 4857 4858 4859 4860 4861 4862 4863 4864 4865 4866 4867 4868 4869 4870 4871 4872 4873 4874 4875 4876 4877 4878 4879 4880 4881 4882 4883 4884 4885 4886 4887 4888 4889 4890 4891 4892 4893 4894 4895 4896 4897 4898 4899 4900 4901 4902 4903 4904 4905 4906 4907 4908 4909 4910 4911 4912 4913 4914 4915 4916 4917 4918 4919 4920 4921 4922 4923 4924 4925 4926 4927 4928 4929 4930 4931 4932 4933 4934 4935 4936 4937 4938 4939 4940 4941 4942 4943 4944 4945 4946 4947 4948 4949 4950 4951 4952 4953 4954 4955 4956 4957 4958 4959 4960 4961 4962 4963 4964 4965 4966 4967 4968 4969 4970 4971 4972 4973 4974 4975 4976 4977 4978 4979 4980 4981 4982 4983 4984 4985 4986 4987 4988 4989 4990 4991 4992 4993 4994 4995 4996 4997 4998 4999 5000 5001 5002 5003 5004 5005 5006 5007 5008 5009 5010 5011 5012 5013 5014 5015 5016 5017 5018 5019 5020 5021 5022 5023 5024 5025 5026 5027 5028 5029 5030 5031 5032 5033 5034 5035 5036 5037 5038 5039 5040 5041 5042 5043 5044 5045 5046 5047 5048 5049 5050 5051 5052 5053 5054 5055 5056 5057 5058 5059 5060 5061 5062 5063 5064 5065 5066 5067 5068 5069 5070 5071 5072 5073 5074 5075 5076 5077 5078 5079 5080 5081 5082 5083 5084 5085 5086 5087 5088 5089 5090 5091 5092 5093 5094 5095 5096 5097 5098 5099 5100 5101 5102 5103 5104 5105 5106 5107 5108 5109 5110 5111 5112 5113 5114 5115 5116 5117 5118 5119 5120 5121 5122 5123 5124 5125 5126 5127 5128 5129 5130 5131 5132 5133 5134 5135 5136 5137 5138 5139 5140 5141 5142 5143 5144 5145 5146 5147 5148 5149 5150 5151 5152 5153 5154 5155 5156 5157 5158 5159 5160 5161 5162 5163 5164 5165 5166 5167 5168 5169 5170 5171 5172 5173 5174 5175 5176 5177 5178 5179 5180 5181 5182 5183 5184 5185 5186 5187 5188 5189 5190 5191 5192 5193 5194 5195 5196 5197 5198 5199 5200 5201 5202 5203 5204 5205 5206 5207 5208 5209 5210 5211 5212 5213 5214 5215 5216 5217 5218 5219 5220 5221 5222 5223 5224 5225 5226 5227 5228 5229 5230 5231 5232 5233 5234 5235 5236 5237 5238 5239 5240 5241 5242 5243 5244 5245 5246 5247 5248 5249 5250 5251 5252 5253 5254 5255 5256 5257 5258 5259 5260 5261 5262 5263 5264 5265 5266 5267 5268 5269 5270 5271 | #===================================================================================================================
#
# X Trasformer Python Module
#
# Partial x-transformers code With useful modifications as a stand-alone Python module
#
# Version 6.0
#
# Original source code courtesy of lucidrains
# https://github.com/lucidrains/x-transformers
#
# Original source code retrieved on 04/30/2025
# Original version 2.3.1 / Commit 458bc12
#
# Project Los Angeles
# Tegridy Code 2026
#
#===================================================================================================================
#
# Critical dependencies
#
# !pip install torch
# !pip install einops
# !pip install einx
#
#===================================================================================================================
from __future__ import annotations
import os
os.environ['USE_FLASH_ATTENTION'] = '1'
import torch
from torch.nn.attention import SDPBackend, sdpa_kernel
torch.backends.cuda.enable_flash_sdp(True)
#==================================================================================================================================
# attend.py
#==================================================================================================================================
from functools import partial
from typing import Tuple, Callable
import torch
from torch.nn import Module
from torch import nn, einsum, Tensor
import torch.nn.functional as F
from torch.utils.data import Dataset, DataLoader
from collections import namedtuple
from functools import wraps
from packaging import version
from dataclasses import dataclass
from einops import rearrange, repeat, pack, unpack
#========================================================================================================================
# constants
@dataclass
class Intermediates:
qk_similarities: Tensor | None = None
pre_softmax_attn: Tensor | None = None
post_softmax_attn: Tensor | None = None
values: Tensor | None = None
cached_kv: Tuple[Tensor, Tensor] | None = None
layer_type: str | None = None
def to_tuple(self):
return (self.qk_similarities, self.pre_softmax_attn, self.post_softmax_attn)
# helpers
def exists(val):
return val is not None
def default(val, d):
return val if exists(val) else d
def at_most_one_of(*bools):
return sum([*map(int, bools)]) <= 1
def compact(arr):
return [*filter(exists, arr)]
@torch.jit.script
def softclamp(t: Tensor, value: float):
return (t / value).tanh() * value
def pack_one(t, pattern):
return pack([t], pattern)
def unpack_one(t, ps, pattern):
return unpack(t, ps, pattern)[0]
def once(fn):
called = False
@wraps(fn)
def inner(x):
nonlocal called
if called:
return
called = True
return fn(x)
return inner
print_once = once(print)
# selective attention
# https://arxiv.org/abs/2410.02703 - section 3.3
# it is a technique to allow each token to prevent itself from being attended to by future tokens
# if sim_head_gate not supplied, will use the first head of the attention logits (sim in this framework)
def selective_attn(
sim,
sim_head_gate = None,
no_mask_sos = True
):
i, j, device = *sim.shape[-2:], sim.device
sim_head_gate = default(sim_head_gate, sim[:, 0])
gate = F.relu(sim_head_gate) # only positive
if no_mask_sos:
gate = gate.clone()
gate[..., -i] = 0.
eye = torch.eye(i, device = device)
if j > i:
eye = F.pad(eye, (j - i, 0), value = 1.)
gate = (1. - eye) * gate
gate = F.pad(gate, (0, 0, 1, -1), value = 0.) # only allow for masking the future
gate = gate.cumsum(dim = -2)
return sim - rearrange(gate, 'b i j -> b 1 i j')
# alternative distance functions
def qk_l2_dist_squared(q, k):
if k.ndim == 3:
k = repeat(k, 'b j d -> b h j d', h = q.shape[1])
q, packed_shape = pack_one(q, '* i d')
k, _ = pack_one(k, '* j d')
l2_dist_squared = torch.cdist(q, k) ** 2
return unpack_one(l2_dist_squared, packed_shape, '* i j')
# one-hot straight through softmax
def one_hot_straight_through(logits, temperature = 1.):
one_hot_indices = logits.argmax(dim = -1, keepdim = True)
one_hot = torch.zeros_like(logits).scatter(-1, one_hot_indices, 1.)
soft_attn = (logits / temperature).softmax(dim = -1)
return one_hot + soft_attn - soft_attn.detach()
# sparse topk attention - only keep topk attn logits for softmax
# optional straight through with masked out logits by setting `attn_sparse_topk_straight_through = True`
def sparse_topk_attn(
logits,
sparse_topk,
temperature = 1.,
straight_through = False
):
orig_logits = logits
mask_value = -torch.finfo(logits.dtype).max
top_values, _ = logits.topk(sparse_topk, dim = -1)
sparse_topk_mask = (logits >= top_values[..., -1:]) & (logits > mask_value)
logits = logits.masked_fill(~sparse_topk_mask, mask_value)
topk_attn = logits.softmax(dim = -1)
if not straight_through:
return topk_attn
soft_attn = (orig_logits / temperature).softmax(dim = -1)
return topk_attn.detach() + soft_attn - soft_attn.detach()
# functions for creating causal mask
# need a special one for onnx cpu (no support for .triu)
def create_causal_mask(i, j, device):
return torch.ones((i, j), device = device, dtype = torch.bool).triu(j - i + 1)
def onnx_create_causal_mask(i, j, device):
r = torch.arange(i, device = device)
causal_mask = rearrange(r, 'i -> i 1') < rearrange(r, 'j -> 1 j')
causal_mask = F.pad(causal_mask, (j - i, 0), value = False)
return causal_mask
# main class
class Attend(Module):
def __init__(
self,
*,
dropout = 0.,
causal = False,
heads = None,
pre_talking_heads = False,
post_talking_heads = False,
pre_scale_post_talking_heads = False,
sparse_topk = None,
sparse_topk_straight_through = False,
scale = None,
qk_norm = False,
l2_distance = False,
sigmoid = False,
custom_attn_fn: Callable | None = None,
flash = False,
softclamp_logits = False,
logit_softclamp_value = 50.,
add_zero_kv = False,
selective = False,
hard = False,
cope = None,
onnxable = False,
sdp_kwargs: dict = dict(
enable_flash = True,
enable_math = True,
enable_mem_efficient = True
)
):
super().__init__()
self.scale = scale
# causal related
self.causal = causal
self.create_causal_mask = onnx_create_causal_mask if onnxable else create_causal_mask
# attention type
is_sparse_topk_attn = exists(sparse_topk)
assert not (flash and sigmoid), 'sigmoid attention not available for flash'
assert not (flash and hard), 'hard attention not available for flash'
assert not (flash and is_sparse_topk_attn), 'topk attention not available for flash'
assert at_most_one_of(sigmoid, hard, l2_distance, is_sparse_topk_attn)
if exists(custom_attn_fn):
self.attn_fn = custom_attn_fn
elif sigmoid:
self.attn_fn = F.sigmoid
elif hard:
self.attn_fn = one_hot_straight_through
elif is_sparse_topk_attn:
self.attn_fn = partial(sparse_topk_attn, sparse_topk = sparse_topk, straight_through = sparse_topk_straight_through)
else:
softmax_fn = partial(F.softmax, dim = -1)
self.attn_fn = partial(softmax_fn, dtype = torch.float32) if not qk_norm else softmax_fn
# dropouts
self.dropout = dropout
self.attn_dropout = nn.Dropout(dropout)
# talking heads
assert not (flash and (pre_talking_heads or post_talking_heads or pre_scale_post_talking_heads)), 'talking heads not compatible with flash attention'
self.pre_softmax_talking_heads = nn.Conv2d(heads, heads, 1, bias = False) if pre_talking_heads else None
self.post_softmax_talking_heads = nn.Conv2d(heads, heads, 1, bias = False) if post_talking_heads else None
self.pre_scale_post_talking_heads = nn.Conv2d(heads, heads, 1, bias = False) if pre_scale_post_talking_heads else None
if exists(self.pre_softmax_talking_heads):
nn.init.dirac_(self.pre_softmax_talking_heads.weight)
if exists(self.post_softmax_talking_heads):
nn.init.dirac_(self.post_softmax_talking_heads.weight)
if exists(self.pre_scale_post_talking_heads):
# an improvisation where heads are combined pre-softmax attention, then used to scale post-softmax attention
nn.init.dirac_(self.pre_scale_post_talking_heads.weight)
# selective attention
assert not (flash and selective), 'selective attention cannot work on flash attention'
assert not (selective and not causal), 'selective attention is designed for autoregressive'
self.selective = selective
# l2 distance attention
self.l2_distance = l2_distance
# add a key / value token composed of zeros
# in case this helps controlling outliers, proposed by https://www.evanmiller.org/attention-is-off-by-one.html
self.add_zero_kv = add_zero_kv
# soft clamp attention logit value
if softclamp_logits:
assert not flash, 'flash attention not compatible with logit softclamp value yet'
assert logit_softclamp_value > 0.
self.softclamp_logits = softclamp_logits
self.logit_softclamp_value = logit_softclamp_value
# contextual positional encoding
self.cope = cope
# flash attention
self.flash = flash
torch_version = version.parse(torch.__version__)
assert not (flash and torch_version < version.parse('2.0.0')), 'in order to use flash attention, you must be using pytorch 2.0 or above'
# torch 2.3 uses new backend and context manager
if torch_version >= version.parse('2.3'):
from torch.nn.attention import SDPBackend
str_to_backend = dict(
enable_flash = SDPBackend.FLASH_ATTENTION,
enable_mem_efficient = SDPBackend.EFFICIENT_ATTENTION,
enable_math = SDPBackend.MATH,
enable_cudnn = SDPBackend.CUDNN_ATTENTION
)
sdpa_backends = [str_to_backend[enable_str] for enable_str, enable in sdp_kwargs.items() if enable]
self.sdp_context_manager = partial(torch.nn.attention.sdpa_kernel, sdpa_backends)
else:
self.sdp_context_manager = partial(torch.backends.cuda.sdp_kernel, **sdp_kwargs)
def flash_attn(
self,
q, k, v,
mask = None,
attn_bias = None
):
batch, heads, q_len, _, k_len, is_cuda, device = *q.shape, k.shape[-2], q.is_cuda, q.device
# Recommended for multi-query single-key-value attention by Tri Dao
# kv shape torch.Size([1, 512, 64]) -> torch.Size([1, 8, 512, 64])
if k.ndim == 3:
k = repeat(k, 'b ... -> b h ...', h = q.shape[1])
if v.ndim == 3:
v = repeat(v, 'b ... -> b h ...', h = q.shape[1])
# handle maybe l2 distance
if self.l2_distance:
k_norm_sq = k.norm(dim = -1, keepdim = True) ** 2
k = F.pad(k, (0, 1), value = -1.)
k = torch.cat((k, k_norm_sq), dim = -1)
q_norm_sq = q.norm(dim = -1, keepdim = True) ** 2
q = torch.cat((2 * q, q_norm_sq), dim = -1)
q = F.pad(q, (0, 1), value = -1.)
# handle scale - by default they scale by dim_head ** -0.5, but need to take care if using cosine sim attention
if exists(self.scale):
default_scale = q.shape[-1] ** -0.5
q = q * (self.scale / default_scale)
# Check if mask exists and expand to compatible shape
# The mask is B L, so it would have to be expanded to B H N L
causal = self.causal
# in the case of kv caching with one token (q_len == 1), just turn off causal masking
# in speculative decoding, this may go up to 5-6, so right aligned causal mask will be needed there
if q_len == 1 and causal:
causal = False
# expand key padding mask
if exists(mask):
assert mask.ndim == 4
mask = mask.expand(batch, heads, q_len, k_len)
# handle kv cache - this should be bypassable in updated flash attention 2
if k_len > q_len and causal:
causal_mask = self.create_causal_mask(q_len, k_len, device = device)
if not exists(mask):
mask = ~causal_mask
else:
mask = mask & ~causal_mask
causal = False
# manually handle causal mask, if another mask was given
if exists(mask) and causal:
causal_mask = self.create_causal_mask(q_len, k_len, device = device)
mask = mask & ~causal_mask
causal = False
# protect against an entire row being masked out
row_is_entirely_masked = None
if exists(mask):
row_is_entirely_masked = ~mask.any(dim = -1)
# handle alibi positional bias
# convert from bool to float
if exists(attn_bias):
attn_bias = attn_bias.expand(batch, heads, -1, -1)
# if mask given, the mask would already contain the causal mask from above logic
# otherwise, if no mask given but still causal, mask out alibi positional bias to a large negative number
mask_value = -torch.finfo(q.dtype).max
if exists(mask):
attn_bias = attn_bias.masked_fill(~mask, mask_value // 2)
elif causal:
causal_mask = self.create_causal_mask(q_len, k_len, device = device)
attn_bias = attn_bias.masked_fill(causal_mask, mask_value // 2)
causal = False
# scaled_dot_product_attention handles attn_mask either as bool or additive bias
# make it an additive bias here
mask = attn_bias
# pytorch 2.0 flash attn: q, k, v, mask, dropout, causal, softmax_scale
with self.sdp_context_manager():
out = F.scaled_dot_product_attention(
q, k, v,
attn_mask = mask,
dropout_p = self.dropout if self.training else 0.,
is_causal = causal
)
# for a row that is entirely masked out, should zero out the output of that row token
if exists(row_is_entirely_masked) and row_is_entirely_masked.any():
out = out.masked_fill(row_is_entirely_masked[..., None], 0.)
return out, Intermediates()
def forward(
self,
q, k, v,
mask = None,
attn_bias = None,
prev_attn = None
):
"""
einstein notation
b - batch
h - heads
n, i, j - sequence length (base sequence length, source, target)
d - feature dimension
"""
n, heads, kv_heads, device = q.shape[-2], q.shape[1], k.shape[1], q.device
scale = default(self.scale, q.shape[-1] ** -0.5)
causal = self.causal
# handle key padding mask
if exists(mask) and mask.ndim == 2:
mask = rearrange(mask, 'b j -> b 1 1 j')
# handle kv cached decoding
if n == 1 and causal:
causal = False
# handle grouped multi-query attention
if kv_heads == 1:
k, v = tuple(rearrange(t, 'b 1 n d -> b n d') for t in (k, v))
elif kv_heads < heads:
k, v = tuple(repeat(t, 'b kvh n d -> b (r kvh) n d', r = heads // kv_heads) for t in (k, v))
# handle zero kv, as means for allowing network to attend to nothing
if self.add_zero_kv:
k, v = tuple(F.pad(t, (0, 0, 1, 0), value = 0.) for t in (k, v))
if exists(mask):
mask = F.pad(mask, (1, 0), value = True)
if exists(attn_bias):
attn_bias = F.pad(attn_bias, (1, 0), value = 0.)
if self.flash:
assert not exists(prev_attn), 'residual attention not compatible with flash attention'
return self.flash_attn(q, k, v, mask = mask, attn_bias = attn_bias)
kv_einsum_eq = 'b j d' if k.ndim == 3 else 'b h j d'
if not self.l2_distance:
sim = einsum(f'b h i d, {kv_einsum_eq} -> b h i j', q, k)
else:
sim = -qk_l2_dist_squared(q, k)
sim = sim * scale
if exists(prev_attn):
sim = sim + prev_attn
qk_similarities = sim.clone()
if exists(self.pre_scale_post_talking_heads):
pre_to_post_scale = self.pre_scale_post_talking_heads(sim)
if exists(self.pre_softmax_talking_heads):
sim = sim + self.pre_softmax_talking_heads(sim)
if exists(attn_bias):
sim = sim + attn_bias
if self.softclamp_logits:
sim = softclamp(sim, self.logit_softclamp_value)
i, j, dtype = *sim.shape[-2:], sim.dtype
mask_value = -torch.finfo(sim.dtype).max
if exists(mask):
sim = sim.masked_fill(~mask, mask_value)
if causal:
causal_mask = self.create_causal_mask(i, j, device = device)
sim = sim.masked_fill(causal_mask, mask_value)
row_is_entirely_masked = None
if exists(mask):
row_is_entirely_masked = ~mask.any(dim = -1)
if exists(self.cope):
sim = sim + self.cope(q, sim)
if self.selective:
sim = selective_attn(sim)
pre_softmax_attn = sim
attn = self.attn_fn(sim)
attn = attn.type(dtype)
post_softmax_attn = attn
attn = self.attn_dropout(attn)
if exists(self.post_softmax_talking_heads):
attn = self.post_softmax_talking_heads(attn)
if exists(self.pre_scale_post_talking_heads):
attn = attn * pre_to_post_scale
out = einsum(f'b h i j, {kv_einsum_eq} -> b h i d', attn, v)
intermediates = Intermediates(
qk_similarities = qk_similarities,
pre_softmax_attn = pre_softmax_attn,
post_softmax_attn = post_softmax_attn
)
if exists(row_is_entirely_masked) and row_is_entirely_masked.any():
out = out.masked_fill(row_is_entirely_masked[..., None], 0.)
return out, intermediates
#=================================================================================================================================
# x_transformers.py
#=================================================================================================================================
from typing import Callable
import math
from copy import deepcopy
from random import random, randrange
from packaging import version
import torch
from torch.amp import autocast
import torch.nn.functional as F
from torch import nn, einsum, tensor, Tensor, cat, stack, arange, is_tensor
from torch.utils._pytree import tree_flatten, tree_unflatten
from torch.nn import Module, ModuleList, ModuleDict
from functools import partial, wraps
from collections import namedtuple
from contextlib import nullcontext
from dataclasses import dataclass
import einx
from einops.layers.torch import Rearrange
from einops import rearrange, repeat, reduce, pack, unpack
# einstein notation
# b - batch
# n - sequence
# d - feature dimension
# h - attention heads
# i, j - sequence (source, target)
# constants
DEFAULT_DIM_HEAD = 64
@dataclass
class LayerIntermediates:
hiddens: list[Tensor] | None = None # all hiddens, before the final norm (in pre-norm architecture)
last_hidden: Tensor | None = None # very last hidden after all attention layers, after the final norm
attn_intermediates: list[Intermediates] | None = None
layer_hiddens: list[Tensor] | None = None
attn_z_loss: Tensor | None = None
mems: Tensor | None = None
memory_tokens: Tensor | None = None
logit_entropies: Tensor | None = None
LinearNoBias = partial(nn.Linear, bias = False)
# helpers
def exists(val):
return val is not None
def default(val, d):
if exists(val):
return val
return d() if callable(d) else d
def identity(t, *args, **kwargs):
return t
def first(it, default = None):
return it[0] if len(it) > 0 else default
def is_empty(x):
return len(x) == 0
def cast_tuple(val, depth = 1):
return val if isinstance(val, tuple) else (val,) * depth
def divisible_by(num, den):
return (num % den) == 0
def maybe(fn = None):
if not exists(fn):
fn = identity
@wraps(fn)
def inner(x, *args, **kwargs):
if not exists(x):
return x
return fn(x, *args, **kwargs)
return inner
def at_most_one_of(*bools):
return sum(map(int, bools)) <= 1
class always():
def __init__(self, val):
self.val = val
def __call__(self, *args, **kwargs):
return self.val
class not_equals():
def __init__(self, val):
self.val = val
def __call__(self, x, *args, **kwargs):
return x != self.val
class equals():
def __init__(self, val):
self.val = val
def __call__(self, x, *args, **kwargs):
return x == self.val
def Sequential(*modules):
return nn.Sequential(*filter(exists, modules))
# tensor helpers
def log(t, eps = 1e-20):
return t.clamp(min = eps).log()
def max_neg_value(tensor):
return -torch.finfo(tensor.dtype).max
def l2norm(t, groups = 1):
t = rearrange(t, '... (g d) -> ... g d', g = groups)
t = F.normalize(t, p = 2, dim = -1)
return rearrange(t, '... g d -> ... (g d)')
def softclamp(t, value):
return (t / value).tanh() * value
def masked_mean(t, mask = None, dim = 1):
if not exists(mask):
return t.mean(dim = dim)
dims_append = (1,) * (t.ndim - mask.ndim)
mask = mask.reshape(*mask.shape, *dims_append)
num = (t * mask).sum(dim = dim)
den = mask.sum(dim = dim).clamp(min = 1.)
return num / den
def pad_at_dim(t, pad: tuple[int, int], dim = -1, value = 0.):
if pad == (0, 0):
return t
dims_from_right = (- dim - 1) if dim < 0 else (t.ndim - dim - 1)
zeros = ((0, 0) * dims_from_right)
return F.pad(t, (*zeros, *pad), value = value)
def or_reduce(masks):
head, *body = masks
for rest in body:
head = head | rest
return head
# entropy
def calc_entropy(
t: Tensor,
is_prob = False
):
prob = t.softmax(dim = -1) if not is_prob else t
return -(prob * log(prob)).sum(dim = -1)
# auxiliary loss helpers
def calc_z_loss(
pre_softmax_attns: list[Tensor],
mask = None,
weight = 1.
):
# the same loss applied to the mixture of experts router logits in https://arxiv.org/abs/2202.08906
# in the paper, in a tiny footnote, they mention using it on attention logits with stabilizing effects
# also used in PaLM as one of the measures
lse = 0.
for attn in pre_softmax_attns:
lse = lse + attn.logsumexp(dim = -1)
loss = torch.square(lse)
loss = reduce(loss, 'b h n -> b n', 'sum')
if not exists(mask):
return loss.mean() * weight
loss = loss[mask].sum() / mask.sum().clamp(min = 1e-5)
return loss * weight
# init helpers
def init_zero_(layer):
nn.init.constant_(layer.weight, 0.)
if exists(layer.bias):
nn.init.constant_(layer.bias, 0.)
# keyword argument helpers
def pick_and_pop(keys, d):
values = tuple(d.pop(key) for key in keys)
return dict(zip(keys, values))
def group_dict_by_key(cond, d):
return_val = [dict(),dict()]
for key in d.keys():
match = bool(cond(key))
ind = int(not match)
return_val[ind][key] = d[key]
return tuple(return_val)
def string_begins_with(prefix, str):
return str.startswith(prefix)
def group_by_key_prefix(prefix, d):
return group_dict_by_key(partial(string_begins_with, prefix), d)
def groupby_prefix_and_trim(prefix, d):
kwargs_with_prefix, kwargs = group_dict_by_key(partial(string_begins_with, prefix), d)
prefix_len = len(prefix)
kwargs_without_prefix = {key[prefix_len:]: value for key, value in kwargs_with_prefix.items()}
return kwargs_without_prefix, kwargs
# structured dropout, more effective than traditional attention dropouts
def dropout_seq(seq, mask, dropout):
b, n, *_, device = *seq.shape, seq.device
logits = torch.randn(b, n, device = device)
if exists(mask):
mask_value = max_neg_value(logits)
logits = logits.masked_fill(~mask, mask_value)
keep_prob = 1. - dropout
num_keep = max(1, int(keep_prob * n))
keep_indices = logits.topk(num_keep, dim = 1).indices
batch_indices = arange(b, device = device)
batch_indices = rearrange(batch_indices, 'b -> b 1')
seq = seq[batch_indices, keep_indices]
if exists(mask):
seq_counts = mask.sum(dim = -1)
seq_keep_counts = torch.ceil(seq_counts * keep_prob).int()
keep_mask = arange(num_keep, device = device) < rearrange(seq_keep_counts, 'b -> b 1')
mask = mask[batch_indices, keep_indices] & keep_mask
return seq, mask
# activations
class ReluSquared(Module):
def forward(self, x):
return F.relu(x) ** 2
# embedding
class TokenEmbedding(Module):
def __init__(self, dim, num_tokens, l2norm_embed = False):
super().__init__()
self.l2norm_embed = l2norm_embed
self.emb = nn.Embedding(num_tokens, dim)
def forward(self, x):
token_emb = self.emb(x.long())
return l2norm(token_emb) if self.l2norm_embed else token_emb
def init_(self):
if self.l2norm_embed:
nn.init.normal_(self.emb.weight, std=1e-5)
return
nn.init.kaiming_normal_(self.emb.weight)
# positional embeddings
class AbsolutePositionalEmbedding(Module):
def __init__(self, dim, max_seq_len, l2norm_embed = False):
super().__init__()
self.scale = dim ** -0.5 if not l2norm_embed else 1.
self.max_seq_len = max_seq_len
self.l2norm_embed = l2norm_embed
self.emb = nn.Embedding(max_seq_len, dim)
def forward(self, x, pos = None, seq_start_pos = None):
seq_len, device = x.shape[1], x.device
assert seq_len <= self.max_seq_len, f'you are passing in a sequence length of {seq_len} but your absolute positional embedding has a max sequence length of {self.max_seq_len}'
if not exists(pos):
pos = arange(seq_len, device = device)
if exists(seq_start_pos):
pos = (pos - seq_start_pos[..., None]).clamp(min = 0)
pos_emb = self.emb(pos)
pos_emb = pos_emb * self.scale
return l2norm(pos_emb) if self.l2norm_embed else pos_emb
class ScaledSinusoidalEmbedding(Module):
def __init__(self, dim, theta = 10000):
super().__init__()
assert divisible_by(dim, 2)
self.scale = nn.Parameter(torch.ones(1) * dim ** -0.5)
half_dim = dim // 2
freq_seq = arange(half_dim).float() / half_dim
inv_freq = theta ** -freq_seq
self.register_buffer('inv_freq', inv_freq, persistent = False)
def forward(self, x, pos = None, seq_start_pos = None):
seq_len, device = x.shape[1], x.device
if not exists(pos):
pos = arange(seq_len, device = device)
if exists(seq_start_pos):
pos = pos - seq_start_pos[..., None]
emb = einsum('i, j -> i j', pos, self.inv_freq)
emb = cat((emb.sin(), emb.cos()), dim = -1)
return emb * self.scale
class RelativePositionBias(Module):
def __init__(self, scale, causal = False, num_buckets = 32, max_distance = 128, heads = 8):
super().__init__()
self.scale = scale
self.causal = causal
self.num_buckets = num_buckets
self.max_distance = max_distance
self.relative_attention_bias = nn.Embedding(num_buckets, heads)
@staticmethod
def _relative_position_bucket(relative_position, causal = True, num_buckets = 32, max_distance = 128):
ret = 0
n = -relative_position
if not causal:
num_buckets //= 2
ret += (n < 0).long() * num_buckets
n = torch.abs(n)
else:
n = torch.max(n, torch.zeros_like(n))
max_exact = num_buckets // 2
is_small = n < max_exact
val_if_large = max_exact + (
torch.log(n.float() / max_exact) / math.log(max_distance / max_exact) * (num_buckets - max_exact)
).long()
val_if_large = torch.min(val_if_large, torch.full_like(val_if_large, num_buckets - 1))
ret += torch.where(is_small, n, val_if_large)
return ret
@property
def device(self):
return next(self.parameters()).device
def forward(self, i, j):
device = self.device
q_pos = arange(j - i, j, dtype = torch.long, device = device)
k_pos = arange(j, dtype = torch.long, device = device)
rel_pos = einx.subtract('j, i -> i j', k_pos, q_pos)
rp_bucket = self._relative_position_bucket(rel_pos, causal = self.causal, num_buckets = self.num_buckets, max_distance = self.max_distance)
values = self.relative_attention_bias(rp_bucket)
bias = rearrange(values, 'i j h -> h i j')
return bias * self.scale
class CoPE(Module):
"""
Appendix B of https://arxiv.org/abs/2405.18719
"""
def __init__ (
self,
dim,
heads,
max_pos,
soft_onehot = False,
talking_heads = False,
soft_onehot_temp = 5e-2
):
super () . __init__ ()
self.max_pos = max_pos
self.pos_emb = nn.Parameter(torch.zeros(max_pos, dim))
self.talking_heads = nn.Conv2d(heads, heads, 1, bias = False) if talking_heads else None
self.soft_onehot = soft_onehot
self.soft_onehot_temp = soft_onehot_temp
if not soft_onehot:
return
self.register_buffer('positions', arange(max_pos))
def forward(self, query, attn_logits):
if exists(self.talking_heads):
i, j = attn_logits.shape[-2:]
causal_mask = attn_logits.new_ones(i, j).triu_(j - i + 1).bool()
attn_logits = self.talking_heads(attn_logits)
attn_logits = attn_logits.masked_fill(causal_mask, -torch.finfo(attn_logits.dtype).max)
# compute positions
gates = attn_logits.sigmoid()
pos = gates.flip(-1).cumsum(dim = -1).flip(-1)
pos = pos.clamp(max = self.max_pos - 1)
logits_int = einsum('b h n d, p d -> b h n p', query, self.pos_emb)
if self.soft_onehot:
diff_pos = einx.subtract('i, j -> i j', pos, self.positions).abs()
soft_onehot_pos = F.softmax(-diff_pos / self.soft_onehot_temp, dim = -1)
cope_pos_emb = einsum('b h i j p, b h i p -> b h i j', soft_onehot_pos, logits_int)
else:
# interpolate from integer positions
pos_ceil = pos.ceil().long()
pos_floor = pos.floor().long()
logits_ceil = logits_int.gather(-1, pos_ceil)
logits_floor = logits_int.gather(-1, pos_floor)
w = pos - pos_floor
cope_pos_emb = logits_ceil * w + logits_floor * (1 - w)
return cope_pos_emb
class DynamicPositionBias(Module):
def __init__(self, dim, *, heads, depth, log_distance = False, norm = False):
super().__init__()
assert depth >= 1, 'depth for dynamic position bias MLP must be greater or equal to 1'
self.log_distance = log_distance
self.mlp = ModuleList([])
self.mlp.append(Sequential(
nn.Linear(1, dim),
LayerNorm(dim) if norm else None,
nn.SiLU()
))
for _ in range(depth - 1):
self.mlp.append(Sequential(
nn.Linear(dim, dim),
nn.LayerNorm(dim) if norm else None,
nn.SiLU()
))
self.mlp.append(nn.Linear(dim, heads))
@property
def device(self):
return next(self.parameters()).device
def forward(self, i, j):
n, device = j, self.device
# get the (n x n) matrix of distances
seq_arange = arange(j - i, j, device = device)
context_arange = arange(j, device = device)
indices = einx.subtract('i, j -> i j', seq_arange, context_arange)
indices += (j - 1)
# input to continuous positions MLP
pos = arange(-j + 1, j, device = device).float()
pos = rearrange(pos, '... -> ... 1')
if self.log_distance:
pos = torch.sign(pos) * torch.log(pos.abs() + 1) # log of distance is sign(rel_pos) * log(abs(rel_pos) + 1)
for layer in self.mlp:
pos = layer(pos)
# get position biases
bias = pos[indices]
bias = rearrange(bias, 'i j h -> h i j')
return bias
class AlibiPositionalBias(Module):
def __init__(
self,
heads,
total_heads = None,
slopes: list[int] | None = None,
**kwargs
):
super().__init__()
self.heads = heads
self.total_heads = default(total_heads, heads)
slopes = Tensor(default(slopes, self._get_slopes(heads)))
slopes = rearrange(slopes, 'h -> h 1 1')
self.register_buffer('slopes', slopes, persistent = False)
self.register_buffer('bias', None, persistent = False)
@property
def device(self):
return next(self.buffers()).device
@staticmethod
def _get_slopes(heads):
def get_slopes_power_of_2(n):
start = (2**(-2**-(math.log2(n)-3)))
ratio = start
return [start*ratio**i for i in range(n)]
if math.log2(heads).is_integer():
return get_slopes_power_of_2(heads)
closest_power_of_2 = 2 ** math.floor(math.log2(heads))
return get_slopes_power_of_2(closest_power_of_2) + get_slopes_power_of_2(2 * closest_power_of_2)[0::2][:heads-closest_power_of_2]
def forward_custom_pos(
self,
pos_i: Tensor,
pos_j: Tensor | None = None
):
h, device = self.total_heads, self.device
pos_j = default(pos_j, pos_i)
bias = -einx.subtract('... j, ... i -> ... i j', pos_j, pos_i).abs()
if bias.ndim == 3:
bias = rearrange(bias, 'b i j -> b 1 i j')
bias = bias * self.slopes
num_heads_unalibied = h - bias.shape[-3]
bias = pad_at_dim(bias, (0, num_heads_unalibied), dim = -3)
return bias
def forward(self, i, j):
h, device = self.total_heads, self.device
if exists(self.bias) and self.bias.shape[-1] >= j and self.bias.shape[-2] >= i:
return self.bias[..., -i:, -j:]
seq_arange = arange(j - i, j, device = device)
context_arange = arange(j, device = device)
bias = -einx.subtract('j, i -> 1 i j', context_arange, seq_arange).abs()
bias = bias * self.slopes
num_heads_unalibied = h - bias.shape[-3]
bias = pad_at_dim(bias, (0, num_heads_unalibied), dim = -3)
self.register_buffer('bias', bias, persistent = False)
return self.bias
class DataDependentAlibi(Module):
""" https://openreview.net/forum?id=q2Lnyegkr8 """
def __init__(
self,
dim,
heads,
causal = True,
bias_init = 5.,
post_log_scale = 1.,
):
super().__init__()
self.causal = causal
linear = nn.Linear(dim, heads * (1 if causal else 2))
self.to_forget_gates = nn.Sequential(
linear,
Rearrange('b n h -> b h n'),
nn.LogSigmoid()
)
nn.init.constant_(linear.bias, bias_init)
self.post_log_scale = post_log_scale
def forward(self, x):
bidirectional = not self.causal
forget_gates = self.to_forget_gates(x) * self.post_log_scale
forget_gates = forget_gates.cumsum(dim = -1)
if bidirectional:
forget_gates, forget_gates_reversed = forget_gates.chunk(2, dim = 1)
forget_gates = einx.subtract('b h i, b h j -> b h i j', forget_gates, forget_gates)
if bidirectional:
forget_gates_reversed = einx.subtract('b h j, b h i -> b h i j', forget_gates_reversed, forget_gates_reversed)
forget_gates = forget_gates.tril() + forget_gates_reversed.triu()
return forget_gates
class PerRowDataDependentAlibi(Module):
""" same as data dependent alibi from forgetting transformer, but the forgetting gates are also derived by a queries and keys with a small head dimension """
def __init__(
self,
dim,
heads,
causal = True,
dim_head = 8,
post_log_scale = 1.
):
super().__init__()
assert causal, 'bidirectional not supported yet'
self.scale = dim_head ** -0.5
linear = nn.Linear(dim, heads * dim_head * 2, bias = False)
self.to_forget_gates = nn.Sequential(
linear,
Rearrange('b n (qk h d) -> qk b h n d', qk = 2, d = dim_head)
)
self.post_log_scale = post_log_scale
def forward(self, x):
q, k = self.to_forget_gates(x)
forget_gates = einsum('... i d, ... j d -> ... i j', q, k) * self.scale
forget_gates = F.logsigmoid(forget_gates) * self.post_log_scale
# mask out upper triangle + diagonal
n = x.shape[-2]
causal_mask = torch.ones((n, n), dtype = torch.bool, device = x.device).triu()
forget_gates = forget_gates.masked_fill(causal_mask, 0.)
# reverse cumsum
forget_gates = forget_gates.flip(dims = (-1,))
forget_gates = forget_gates.cumsum(dim = -1)
forget_gates = forget_gates.flip(dims = (-1,))
return forget_gates
class RotaryEmbedding(Module):
def __init__(
self,
dim,
use_xpos = False,
scale_base = 512,
interpolation_factor = 1.,
base = 10000,
base_rescale_factor = 1.
):
super().__init__()
# proposed by reddit user bloc97, to rescale rotary embeddings to longer sequence length without fine-tuning
# has some connection to NTK literature
# https://www.reddit.com/r/LocalLLaMA/comments/14lz7j5/ntkaware_scaled_rope_allows_llama_models_to_have/
base *= base_rescale_factor ** (dim / (dim - 2))
inv_freq = 1. / (base ** (arange(0, dim, 2).float() / dim))
self.register_buffer('inv_freq', inv_freq)
assert interpolation_factor >= 1.
self.interpolation_factor = interpolation_factor
if not use_xpos:
self.register_buffer('scale', None)
return
scale = (arange(0, dim, 2) + 0.4 * dim) / (1.4 * dim)
self.scale_base = scale_base
self.register_buffer('scale', scale)
def forward_from_seq_len(self, seq_len):
device = self.inv_freq.device
t = arange(seq_len, device = device)
return self.forward(t)
@autocast('cuda', enabled = False)
def forward(self, t):
max_pos = t.max() + 1
if t.ndim == 1:
t = rearrange(t, 'n -> 1 n')
freqs = torch.einsum('b i , j -> b i j', t.type_as(self.inv_freq), self.inv_freq) / self.interpolation_factor
freqs = stack((freqs, freqs), dim = -1)
freqs = rearrange(freqs, '... d r -> ... (d r)')
if not exists(self.scale):
return freqs, 1.
power = (t - (max_pos // 2)) / self.scale_base
scale = self.scale ** rearrange(power, '... n -> ... n 1')
scale = stack((scale, scale), dim = -1)
scale = rearrange(scale, '... d r -> ... (d r)')
return freqs, scale
def rotate_half(x):
x = rearrange(x, '... (d r) -> ... d r', r = 2)
x1, x2 = x.unbind(dim = -1)
x = stack((-x2, x1), dim = -1)
return rearrange(x, '... d r -> ... (d r)')
@autocast('cuda', enabled = False)
def apply_rotary_pos_emb(t, freqs, scale = 1):
rot_dim, seq_len, orig_dtype = freqs.shape[-1], t.shape[-2], t.dtype
freqs = freqs[:, -seq_len:, :]
scale = scale[:, -seq_len:, :] if isinstance(scale, torch.Tensor) else scale
if t.ndim == 4 and freqs.ndim == 3:
freqs = rearrange(freqs, 'b n d -> b 1 n d')
# partial rotary embeddings, Wang et al. GPT-J
t, t_unrotated = t[..., :rot_dim], t[..., rot_dim:]
t = (t * freqs.cos() * scale) + (rotate_half(t) * freqs.sin() * scale)
out = cat((t, t_unrotated), dim = -1)
return out.type(orig_dtype)
# norms
class Scale(Module):
def __init__(self, value, fn):
super().__init__()
self.value = value
self.fn = fn
def forward(self, x, **kwargs):
out = self.fn(x, **kwargs)
scale_fn = lambda t: t * self.value
if not isinstance(out, tuple):
return scale_fn(out)
return (scale_fn(out[0]), *out[1:])
class LayerNorm(Module):
def __init__(
self,
dim,
unit_offset = False
):
"""
bias-less layernorm has been shown to be more stable. most newer models have moved towards rmsnorm, also bias-less
"""
super().__init__()
self.unit_offset = unit_offset
self.ln = nn.LayerNorm(dim, elementwise_affine = False)
self.gamma = nn.Parameter(torch.ones(dim))
nn.init.constant_(self.gamma, 1. - float(unit_offset))
def forward(self, x):
normed = self.ln(x)
gamma = self.gamma + float(self.unit_offset)
return normed * gamma
class AdaptiveLayerNorm(Module):
def __init__(
self,
dim,
dim_condition = None
):
super().__init__()
dim_condition = default(dim_condition, dim)
self.ln = nn.LayerNorm(dim, elementwise_affine = False)
self.to_gamma = LinearNoBias(dim_condition, dim)
nn.init.zeros_(self.to_gamma.weight)
def forward(self, x, *, condition):
if condition.ndim == 2:
condition = rearrange(condition, 'b d -> b 1 d')
normed = self.ln(x)
gamma = self.to_gamma(condition)
return normed * (gamma + 1.)
class ScaleNorm(Module):
def __init__(
self,
dim,
unit_offset = False
):
super().__init__()
self.unit_offset = unit_offset
self.scale = dim ** 0.5
self.g = nn.Parameter(torch.zeros(1))
nn.init.constant_(self.g, 1. - float(unit_offset))
def forward(self, x):
gamma = self.g + float(self.unit_offset)
return F.normalize(x, dim = -1) * self.scale * gamma
class RMSNorm(Module):
def __init__(
self,
dim,
unit_offset = False
):
super().__init__()
self.unit_offset = unit_offset
self.scale = dim ** 0.5
self.g = nn.Parameter(torch.zeros(dim))
nn.init.constant_(self.g, 1. - float(unit_offset))
def forward(self, x):
gamma = self.g + float(self.unit_offset)
return F.normalize(x, dim = -1) * self.scale * gamma
class AdaptiveRMSNorm(Module):
def __init__(
self,
dim,
dim_condition = None
):
super().__init__()
self.scale = dim ** 0.5
dim_condition = default(dim_condition, dim)
self.to_gamma = LinearNoBias(dim_condition, dim)
nn.init.zeros_(self.to_gamma.weight)
def forward(self, x, *, condition):
if condition.ndim == 2:
condition = rearrange(condition, 'b d -> b 1 d')
normed = F.normalize(x, dim = -1)
gamma = self.to_gamma(condition)
return normed * self.scale * (gamma + 1.)
class SimpleRMSNorm(Module):
def __init__(
self,
dim,
**kwargs
):
super().__init__()
self.scale = dim ** 0.5
def forward(self, x):
return F.normalize(x, dim = -1) * self.scale
class MultiheadRMSNorm(Module):
def __init__(self, dim, heads):
super().__init__()
self.rmsnorm = SimpleRMSNorm(dim)
self.gamma = nn.Parameter(torch.zeros(heads, 1, dim))
def forward(self, x):
return self.rmsnorm(x) * (self.gamma + 1.)
class DynamicTanh(Module):
""" https://arxiv.org/abs/2503.10622 """
def __init__(
self,
dim,
init_alpha = 1.,
gamma = 1.,
beta = 0.,
unit_offset = False
):
super().__init__()
self.pre_tanh_scale = nn.Parameter(tensor(init_alpha))
self.gamma = nn.Parameter(torch.ones(dim))
self.beta = nn.Parameter(torch.zeros(dim))
self.pre_tanh_scale_offset = init_alpha if unit_offset else 0.
self.gamma_offset = float(unit_offset)
nn.init.constant_(self.pre_tanh_scale, 0 if unit_offset else init_alpha)
nn.init.constant_(self.gamma, 1. - float(unit_offset))
def forward(self, x):
pre_tanh_scale = self.pre_tanh_scale + self.pre_tanh_scale_offset
gamma = self.gamma + self.gamma_offset
return (x * pre_tanh_scale).tanh() * gamma + self.beta
# residual and residual gates
class Residual(Module):
def __init__(self, dim, scale_residual = False, scale_residual_constant = 1., **kwargs):
super().__init__()
self.residual_scale = nn.Parameter(torch.ones(dim)) if scale_residual else None
self.scale_residual_constant = scale_residual_constant
def prepare(self, residual):
return residual, residual, dict()
def forward(self, x, residual, **kwargs):
if exists(self.residual_scale):
residual = residual * self.residual_scale
if self.scale_residual_constant != 1:
residual = residual * self.scale_residual_constant
return x + residual
class GRUGating(Module):
def __init__(self, dim, scale_residual = False, **kwargs):
super().__init__()
self.gru = nn.GRUCell(dim, dim)
self.residual_scale = nn.Parameter(torch.ones(dim)) if scale_residual else None
def prepare(self, residual):
return residual, residual, dict()
def forward(self, x, residual, **kwargs):
if exists(self.residual_scale):
residual = residual * self.residual_scale
gated_output = self.gru(
rearrange(x, 'b n d -> (b n) d'),
rearrange(residual, 'b n d -> (b n) d')
)
return gated_output.reshape_as(x)
# hyper connections
class HyperConnection(Module):
def __init__(
self,
dim,
*,
layer_index,
num_residual_streams,
num_input_views = 1,
tanh = True,
**kwargs
):
"""
https://arxiv.org/abs/2409.19606
Appendix J - Algorithm 2, Dynamic only
"""
super().__init__()
self.act = nn.Tanh() if tanh else nn.Identity()
self.norm = nn.LayerNorm(dim, bias = False)
self.num_residual_streams = num_residual_streams
self.layer_index = layer_index
self.static_beta = nn.Parameter(torch.ones(num_residual_streams))
init_alpha0 = torch.zeros((num_residual_streams, num_input_views))
init_alpha0[layer_index % num_residual_streams, :] = 1.
self.static_alpha = nn.Parameter(cat([init_alpha0, torch.eye(num_residual_streams)], dim = 1))
self.dynamic_alpha_fn = nn.Parameter(torch.zeros(dim, num_residual_streams + num_input_views))
self.dynamic_alpha_scale = nn.Parameter(torch.ones(()) * 1e-2)
self.num_input_views = num_input_views
self.dynamic_beta_fn = nn.Parameter(torch.zeros(dim))
self.dynamic_beta_scale = nn.Parameter(torch.ones(()) * 1e-2)
def prepare(self, residuals):
residuals = rearrange(residuals, '(b s) n d -> b n s d', s = self.num_residual_streams)
normed = self.norm(residuals)
wc_weight = self.act(normed @ self.dynamic_alpha_fn)
dynamic_alpha = wc_weight * self.dynamic_alpha_scale
alpha = dynamic_alpha + self.static_alpha
dc_weight = self.act(normed @ self.dynamic_beta_fn)
dynamic_beta = dc_weight * self.dynamic_beta_scale
beta = dynamic_beta + self.static_beta
# width connection
mix_h = einsum('... s t, ... s d -> ... t d', alpha, residuals)
views = self.num_input_views
if views == 1:
branch_input, residuals = mix_h[..., 0, :], mix_h[..., 1:, :]
else:
branch_input, residuals = mix_h[..., :views, :], mix_h[..., views:, :]
branch_input = rearrange(branch_input, '... v d -> v ... d')
return branch_input, residuals, dict(beta = beta)
def forward(self, x, residuals, *, beta):
residuals = einsum('b n d, b n s -> b n s d', x, beta) + residuals
return rearrange(residuals, 'b n s d -> (b s) n d')
# LIMe - layer integrated memory (dynamic version)
class DynamicLIMe(Module):
def __init__(
self,
dim,
num_layers,
num_views = 1,
norm = True,
use_softmax = True
):
super().__init__()
self.num_layers = num_layers
self.multiple_views = num_views > 1
self.to_weights = Sequential(
RMSNorm(dim) if norm else None,
nn.Linear(dim, num_views * num_layers),
Rearrange('... (views layers) -> views ... layers', views = num_views),
nn.Softmax(dim = -1) if use_softmax else nn.ReLU()
)
def forward(
self,
x,
hiddens
):
if not is_tensor(hiddens):
hiddens = stack(hiddens)
assert hiddens.shape[0] == self.num_layers, f'expected hiddens to have {self.num_layers} layers but received {tuple(hiddens.shape)} instead (first dimension must be layers)'
weights = self.to_weights(x)
out = einsum('l b n d, v b n l -> v b n d', hiddens, weights)
if self.multiple_views:
return out
return rearrange(out, '1 ... -> ...')
# token shifting
def shift(t, amount, mask = None):
if amount == 0:
return t
amount = min(amount, t.shape[1])
if exists(mask):
t = t.masked_fill(~mask[..., None], 0.)
return pad_at_dim(t, (amount, -amount), dim = - 2, value = 0.)
class ShiftTokens(Module):
def __init__(self, shifts, fn):
super().__init__()
self.fn = fn
self.shifts = tuple(shifts)
def forward(self, x, **kwargs):
mask = kwargs.get('mask', None)
shifts = self.shifts
segments = len(shifts)
feats_per_shift = x.shape[-1] // segments
splitted = x.split(feats_per_shift, dim = -1)
segments_to_shift, rest = splitted[:segments], splitted[segments:]
segments_to_shift = [shift(*args, mask = mask) for args in zip(segments_to_shift, shifts)]
x = cat((*segments_to_shift, *rest), dim = -1)
return self.fn(x, **kwargs)
class FoldAxially(Module):
def __init__(
self,
axial_dim,
fn: Module
):
super().__init__()
self.fn = fn
self.axial_dim = axial_dim # will fold the sequence as rearrange("b (n axial_dim) ... -> (b axial_dim) n ...")
def forward(
self,
x,
**kwargs
):
if self.axial_dim == 1:
return self.fn(x, **kwargs)
seq_len, axial_dim = x.shape[1], self.axial_dim
next_multiple = math.ceil(seq_len / axial_dim) * axial_dim
x = pad_at_dim(x, (0, next_multiple - seq_len), dim = 1)
x = rearrange(x, 'b (n axial_dim) ... -> (b axial_dim) n ...', axial_dim = axial_dim)
out = self.fn(x, **kwargs)
(out, *rest_out), tree_spec = tree_flatten(out)
out = rearrange(out, '(b axial_dim) n ... -> b (n axial_dim) ...', axial_dim = axial_dim)
out = out[:, :seq_len]
out = tree_unflatten((out, *rest_out), tree_spec)
return out
# post branch operator
class LayerScale(Module):
def __init__(
self,
fn: Module,
dim,
init_value = 0.,
unit_offset = False
):
super().__init__()
self.unit_offset = unit_offset
self.fn = fn
self.gamma = nn.Parameter(torch.zeros(dim))
nn.init.constant_(self.gamma, init_value - float(unit_offset))
def forward(self, x, **kwargs):
out = self.fn(x, **kwargs)
gamma = self.gamma + float(self.unit_offset)
if isinstance(out, Tensor):
return out * gamma
out, *rest = out
return out * gamma, *rest
class AdaptiveLayerScale(Module):
def __init__(
self,
fn: Module,
dim,
dim_condition = None,
init_bias_value = -2.
):
super().__init__()
self.fn = fn
dim_condition = default(dim_condition, dim)
self.to_gamma = nn.Linear(dim_condition, dim)
nn.init.zeros_(self.to_gamma.weight)
nn.init.constant_(self.to_gamma.bias, init_bias_value)
def forward(self, x, *, condition, **kwargs):
if condition.ndim == 2:
condition = rearrange(condition, 'b d -> b 1 d')
out = self.fn(x, **kwargs)
gamma = self.to_gamma(condition).sigmoid()
if isinstance(out, Tensor):
return out * gamma
out, *rest = out
return out * gamma, *rest
# skip connection combining
class ConcatCombine(Module):
def __init__(self, dim, prev_layer_ind):
super().__init__()
self.prev_layer_ind = prev_layer_ind
self.combine = LinearNoBias(dim * 2, dim)
def forward(self, x, prev_layers: list[Tensor]):
skip = prev_layers[self.prev_layer_ind]
concatted_skip = cat((skip, x), dim = -1)
return self.combine(concatted_skip)
# feedforward
class GLU(Module):
def __init__(
self,
dim_in,
dim_out,
activation: Callable,
mult_bias = False
):
super().__init__()
self.act = activation
self.proj = nn.Linear(dim_in, dim_out * 2)
self.mult_bias = nn.Parameter(torch.ones(dim_out)) if mult_bias else 1.
def forward(self, x):
x, gate = self.proj(x).chunk(2, dim = -1)
return x * self.act(gate) * self.mult_bias
class FeedForward(Module):
def __init__(
self,
dim,
dim_out = None,
mult = 4,
glu = False,
glu_mult_bias = False,
swish = False,
relu_squared = False,
custom_activation = None,
post_act_ln = False,
dropout = 0.,
sublayer_dropout = 0.,
no_bias = False,
zero_init_output = False
):
super().__init__()
inner_dim = int(dim * mult)
dim_out = default(dim_out, dim)
if exists(custom_activation):
activation = deepcopy(custom_activation)
elif relu_squared:
activation = ReluSquared()
elif swish:
activation = nn.SiLU()
else:
activation = nn.GELU()
if glu:
project_in = GLU(dim, inner_dim, activation, mult_bias = glu_mult_bias)
else:
project_in = nn.Sequential(
nn.Linear(dim, inner_dim, bias = not no_bias),
activation
)
self.ff = Sequential(
project_in,
LayerNorm(inner_dim) if post_act_ln else None,
nn.Dropout(dropout),
nn.Linear(inner_dim, dim_out, bias = not no_bias),
nn.Dropout(sublayer_dropout) if sublayer_dropout > 0. else None
)
# init last linear layer to 0
if zero_init_output:
init_zero_(self.ff[-1])
def forward(self, x):
return self.ff(x)
# attention. it is all we need
class Attention(Module):
def __init__(
self,
dim,
dim_head = DEFAULT_DIM_HEAD,
dim_context = None,
heads = 8,
causal = False,
flash = False,
pre_talking_heads = False,
post_talking_heads = False,
pre_scale_post_talking_heads = False,
head_scale = False,
sparse_topk = None,
sparse_topk_straight_through = False,
num_mem_kv = 0,
dropout = 0.,
sublayer_dropout = 0.,
on_attn = False,
gate_value_heads = False,
swiglu_values = False,
gate_values = False,
zero_init_output = False,
hard = False,
max_attend_past = None,
qk_norm = False,
qk_norm_groups = 1,
qk_norm_scale = 10,
qk_norm_dim_scale = False,
l2_distance = False,
sigmoid = False,
selective = False,
custom_attn_fn: Callable | None = None,
hybrid_module: Module | None = None,
hybrid_mask_kwarg: str | None = None,
hybrid_fold_axial_dim: int | None = None,
hybrid_learned_mix = False,
one_kv_head = False,
kv_heads = None,
value_dim_head = None,
dim_out = None,
add_zero_kv = False, # same as add_zero_attn in pytorch
rotate_num_heads = None,
data_dependent_alibi = False,
data_dependent_alibi_per_row = False,
data_dependent_alibi_per_row_dim_head = 8,
data_dependent_alibi_kwargs: dict = dict(),
use_cope = False,
cope_max_pos = 16,
cope_soft_onehot_pos = False,
cope_talking_heads = False,
softclamp_logits = False,
logit_softclamp_value = 50.,
learned_value_residual_mix = False,
laser = False, # https://arxiv.org/abs/2411.03493v1
laser_softclamp_value = 15.,
qkv_receive_diff_residuals = False,
use_latent_q = False,
dim_latent_q = None,
use_latent_kv = False,
dim_latent_kv = None,
latent_rope_subheads = None,
onnxable = False,
attend_sdp_kwargs: dict = dict(
enable_flash = True,
enable_math = True,
enable_mem_efficient = True
)
):
super().__init__()
dim_kv = default(dim_context, dim)
self.scale = dim_head ** -0.5
self.heads = heads
self.causal = causal
self.max_attend_past = max_attend_past
assert not (exists(kv_heads) and one_kv_head), 'either attn_one_kv_head is set to True (in which case kv_heads is set to 1), or attn_kv_heads is set, but not both'
value_dim_head = default(value_dim_head, dim_head)
kv_heads = default(kv_heads, heads)
kv_heads = 1 if one_kv_head else kv_heads
assert divisible_by(heads, kv_heads)
self.kv_heads = kv_heads
q_dim = dim_head * heads
k_dim = dim_head * kv_heads
v_dim = value_dim_head * kv_heads
out_dim = value_dim_head * heads
# determine input dimensions to qkv based on whether intermediate latent q and kv are being used
# for eventually supporting multi-latent attention (MLA)
self.to_latent_q = None
self.to_latent_kv = None
self.to_rotateable_k = None # for their "decoupled rope", subheads of keys that comes directly from base sequence (does not go through latents)
dim_q_input = dim
dim_kv_input = dim_kv
if use_latent_q:
assert exists(dim_latent_q)
self.to_latent_q = LinearNoBias(dim, dim_latent_q)
dim_q_input = dim_latent_q
if use_latent_kv:
assert exists(dim_latent_kv)
self.to_latent_kv = LinearNoBias(dim, dim_latent_kv)
dim_kv_input = dim_latent_kv
if exists(latent_rope_subheads):
assert not exists(rotate_num_heads), '`rotate_num_heads` cannot be set when multi-latent attention is being used'
rotate_num_heads = latent_rope_subheads
k_dim = dim_head * (kv_heads - latent_rope_subheads)
self.to_rotateable_k = LinearNoBias(dim, dim_head * latent_rope_subheads)
self.split_rotateable_k_heads = Rearrange('b n (h d) -> b h n d', h = latent_rope_subheads)
self.use_latent_q = use_latent_q
self.use_latent_kv = use_latent_kv
# query key projection
self.to_q = LinearNoBias(dim_q_input, q_dim)
self.to_k = LinearNoBias(dim_kv_input, k_dim)
self.to_v = LinearNoBias(dim_kv_input, v_dim)
# split and merge of attention heads
self.split_q_heads = Rearrange('b n (h d) -> b h n d', h = heads)
self.split_k_heads = Rearrange('b n (h d) -> b h n d', d = dim_head)
self.split_v_heads = Rearrange('b n (h d) -> b h n d', d = value_dim_head)
self.merge_heads = Rearrange('b h n d -> b n (h d)')
# whether qkv receives different residual stream combinations from hyper connections or lime
self.qkv_receive_diff_residuals = qkv_receive_diff_residuals
# enhancing gradients to attention through exponentiated values
self.laser = laser
self.laser_softclamp_value = laser_softclamp_value
# add GLU gating for aggregated values, from alphafold2
self.to_v_gate = None
if gate_values:
self.to_v_gate = nn.Linear(dim, out_dim)
self.to_v_gate_activation = F.silu if swiglu_values else F.sigmoid
nn.init.constant_(self.to_v_gate.weight, 0)
nn.init.constant_(self.to_v_gate.bias, 10)
# add per head gating of the output values, from 'Attend to nothing' paper
self.to_v_head_gate = None
if gate_value_heads:
self.to_v_head_gate = nn.Linear(dim, heads)
nn.init.constant_(self.to_v_head_gate.weight, 0)
nn.init.constant_(self.to_v_head_gate.bias, 10)
# cosine sim attention
self.qk_norm = qk_norm
self.qk_norm_groups = qk_norm_groups
self.qk_norm_scale = qk_norm_scale
# whether to use the rmsnorm (equivalent to cosine sim attention when scale is equal to 1) - https://arxiv.org/abs/2302.05442
self.qk_norm_dim_scale = qk_norm_dim_scale
self.qk_norm_q_scale = self.qk_norm_k_scale = 1
if qk_norm and qk_norm_dim_scale:
self.qk_norm_q_scale = nn.Parameter(torch.ones(heads, 1, dim_head))
self.qk_norm_k_scale = nn.Parameter(torch.ones(kv_heads, 1, dim_head))
assert (not qk_norm) or divisible_by(dim_head, qk_norm_groups), 'dimension per attention head must be divisible by the qk norm groups'
assert not (qk_norm and (dim_head // qk_norm_groups) <= 2), 'the group dimension may be too small (2 was too small in my tests, but 4 still works, surprisingly)'
# contextual positional encoding
# https://arxiv.org/html/2405.18719v2
cope = None
if use_cope:
assert causal, 'CoPE was designed for causal attention'
assert not flash, 'CoPE is not flash attention compatible'
cope = CoPE(
dim = dim_head,
heads = heads,
max_pos = cope_max_pos,
talking_heads = cope_talking_heads,
soft_onehot = cope_soft_onehot_pos
)
# data dependent alibi
# https://openreview.net/forum?id=q2Lnyegkr8
self.data_dependent_alibi = None
if data_dependent_alibi:
dda_klass = DataDependentAlibi if not data_dependent_alibi_per_row else PerRowDataDependentAlibi
dda_kwargs = dict(dim = dim, heads = heads, causal = causal)
if data_dependent_alibi_per_row:
dda_kwargs.update(dim_head = data_dependent_alibi_per_row_dim_head)
self.data_dependent_alibi = dda_klass(**dda_kwargs, **data_dependent_alibi_kwargs)
# attend class - includes core attention algorithm + talking heads
self.attend = Attend(
heads = heads,
causal = causal,
pre_talking_heads = pre_talking_heads,
post_talking_heads = post_talking_heads,
pre_scale_post_talking_heads = pre_scale_post_talking_heads,
dropout = dropout,
sparse_topk = sparse_topk,
sparse_topk_straight_through = sparse_topk_straight_through,
hard = hard,
qk_norm = qk_norm,
scale = qk_norm_scale if qk_norm else self.scale,
l2_distance = l2_distance,
sigmoid = sigmoid,
selective = selective,
custom_attn_fn = custom_attn_fn,
add_zero_kv = add_zero_kv,
flash = flash,
softclamp_logits = softclamp_logits,
logit_softclamp_value = logit_softclamp_value,
cope = cope,
onnxable = onnxable,
sdp_kwargs = attend_sdp_kwargs
)
# head scaling
self.head_scale = head_scale
if head_scale:
self.head_scale_params = nn.Parameter(torch.ones(1, heads, 1, 1))
# explicit topk sparse attention
self.sparse_topk = sparse_topk
# add memory key / values
self.num_mem_kv = num_mem_kv
if num_mem_kv > 0:
self.mem_k = nn.Parameter(torch.randn(kv_heads, num_mem_kv, dim_head))
self.mem_v = nn.Parameter(torch.randn(kv_heads, num_mem_kv, dim_head))
# maybe learned value residual mixer per token
self.to_value_residual_mix = nn.Sequential(
nn.Linear(dim, heads),
nn.Sigmoid(),
Rearrange('b n h -> b h n 1')
) if learned_value_residual_mix else always(0.5)
# attention on attention
self.attn_on_attn = on_attn
# hybrid module, in same vein as hymba https://www.arxiv.org/abs/2411.13676
hybrid_mix = None
hybrid_norms = None
hybrid_module = maybe(deepcopy)(hybrid_module)
if exists(hybrid_module) and exists(hybrid_fold_axial_dim):
hybrid_module = FoldAxially(axial_dim = hybrid_fold_axial_dim, fn = hybrid_module)
hybrid_mix = LinearNoBias(dim, heads) if hybrid_learned_mix else None
hybrid_norms = ModuleList([
MultiheadRMSNorm(dim_head, heads = heads),
MultiheadRMSNorm(dim_head, heads = heads)
])
self.hybrid_module = hybrid_module
self.hybrid_norms = hybrid_norms
self.hybrid_mix = hybrid_mix
self.hybrid_mask_kwarg = hybrid_mask_kwarg # for bidirectional, can forward `mask` into the hybrid module and let it handle variable lengths
# output dimension by default same as input, but can be overridden
dim_out = default(dim_out, dim)
self.to_out = nn.Sequential(LinearNoBias(out_dim, dim_out * 2), nn.GLU()) if on_attn else LinearNoBias(out_dim, dim_out)
# sublayer dropout
self.sublayer_dropout = nn.Dropout(sublayer_dropout) if sublayer_dropout > 0. else None
# the number of attention heads to rotate, for decoupled rope in multi-latent attention
rotate_num_heads = default(rotate_num_heads, heads)
assert 0 < rotate_num_heads <= heads
is_partial_rotate_heads = rotate_num_heads < heads
assert not (is_partial_rotate_heads and kv_heads < heads), 'grouped query attention not compatible with partial rotate heads (decoupled rope for multi-latent attention), yet'
self.rotate_num_heads = rotate_num_heads
# whether parent can kv cache
self.can_cache_kv = not selective
# init output projection 0
if zero_init_output:
init_zero_(self.to_out)
def forward(
self,
x,
context = None,
mask = None,
context_mask = None,
attn_mask = None,
rel_pos = None,
attn_bias = None,
rotary_pos_emb = None,
context_rotary_pos_emb = None,
pos = None, # for custom alibi positions
prev_attn = None,
mem = None,
mem_mask = None,
return_intermediates = False,
cache: Intermediates | None = None,
value_residual = None
):
b, n, h, kv_h, head_scale, num_mem_kv, device, has_context, qkv_receive_diff_residuals, is_multi_latent_attn = x.shape[0], x.shape[1], self.heads, self.kv_heads, self.head_scale, self.num_mem_kv, x.device, exists(context), self.qkv_receive_diff_residuals, self.use_latent_kv
# an interesting possibility with hyper connections
# having queries, keys, values be routed from different layers
assert not (qkv_receive_diff_residuals and has_context), 'qkv receiving different sequences can only be used for self attention'
if qkv_receive_diff_residuals:
assert x.ndim == 4 and x.shape[0] == 3
q_input, k_input, v_input = x
else:
kv_input = default(context, x)
q_input, k_input, v_input = x, kv_input, kv_input
if exists(mem):
k_input, mem_packed_shape = pack([mem, k_input], 'b * d')
v_input, _ = pack([mem, v_input], 'b * d')
# multi-latent attention logic
# https://arxiv.org/abs/2405.04434 - Deepseek-AI team
k_sub_heads = None # the rotateable subheads of keys derived from base sequence
if self.use_latent_q:
q_input = self.to_latent_q(q_input)
if is_multi_latent_attn:
assert not qkv_receive_diff_residuals
needs_k_sub_heads = exists(self.to_rotateable_k)
latent_kv_input = self.to_latent_kv(k_input)
if needs_k_sub_heads:
rotateable_k = self.to_rotateable_k(k_input)
k_sub_heads = self.split_rotateable_k_heads(rotateable_k)
if exists(cache):
cached_latent_kv, maybe_cached_k_sub_heads = cache.cached_kv
latent_kv_input = cat((cached_latent_kv, latent_kv_input), dim = -2)
if exists(maybe_cached_k_sub_heads):
k_sub_heads = cat((maybe_cached_k_sub_heads, k_sub_heads), dim = -2)
if return_intermediates:
cached_kv = (latent_kv_input, k_sub_heads)
k_input = v_input = latent_kv_input
# query, key, value projection
q = self.to_q(q_input)
k = self.to_k(k_input)
v = self.to_v(v_input)
q = self.split_q_heads(q)
k = self.split_k_heads(k)
v = self.split_v_heads(v)
# take care of decoupled rope from multi-latent attention
if exists(k_sub_heads):
k = cat((k, k_sub_heads), dim = 1)
# if previous values passed in for residual, either invoke resformer
orig_values = v
# https://arxiv.org/abs/2410.17897v1
if exists(value_residual):
value_residual_mix = self.to_value_residual_mix(q_input)
v = value_residual.lerp(v, value_residual_mix)
# qk normalization
if self.qk_norm:
qk_l2norm = partial(l2norm, groups = self.qk_norm_groups)
q, k = map(qk_l2norm, (q, k))
scale = self.qk_norm_scale
q = q * self.qk_norm_q_scale
k = k * self.qk_norm_k_scale
# take care of caching
if not is_multi_latent_attn:
if exists(cache):
ck, cv = cache.cached_kv
if exists(mem):
mk, k = unpack(k, mem_packed_shape, 'b h * d')
mv, v = unpack(v, mem_packed_shape, 'b h * d')
k = cat((ck, k), dim = -2)
v = cat((cv, v), dim = -2)
if exists(mem):
k = cat((mk, k), dim = -2)
v = cat((mv, v), dim = -2)
if return_intermediates:
mem_len = mem.shape[-2] if exists(mem) else 0
cached_kv = (k[..., mem_len:, :], v[..., mem_len:, :])
if exists(rotary_pos_emb):
rotate_num_heads = self.rotate_num_heads
partial_rotate_heads = rotate_num_heads < h
freqs, xpos_scale = rotary_pos_emb
q_xpos_scale, k_xpos_scale = (xpos_scale, xpos_scale ** -1.) if exists(xpos_scale) else (1., 1.)
if partial_rotate_heads:
q_rest, q = q[:, :-rotate_num_heads], q[:, -rotate_num_heads:]
k_rest, k = k[:, :-rotate_num_heads], k[:, -rotate_num_heads:]
q = apply_rotary_pos_emb(q, freqs, q_xpos_scale)
if has_context:
# override with `context_rotary_pos_emb` if provided
freqs, xpos_scale = context_rotary_pos_emb
_, k_xpos_scale = (xpos_scale, xpos_scale ** -1.) if exists(xpos_scale) else (1., 1.)
k = apply_rotary_pos_emb(k, freqs, k_xpos_scale)
if partial_rotate_heads:
q = cat((q_rest, q), dim = 1)
k = cat((k_rest, k), dim = 1)
input_mask = context_mask
if not exists(input_mask) and not has_context:
input_mask = mask
if (exists(input_mask) or exists(mem_mask)) and exists(mem):
seq_len, mem_len = n, mem.shape[-2]
if not exists(mem_mask):
input_mask = pad_at_dim(input_mask, (mem_len, 0), dim = -1, value = True)
elif not exists(input_mask):
input_mask = pad_at_dim(mem_mask, (0, seq_len), dim = -1, value = True)
else:
input_mask = cat((mem_mask, input_mask), dim = -1)
# i, j determined for relative positional bias, excluding memory key / values
i, j = tuple(t.shape[-2] for t in (q, k))
# maybe append memory key / values
if num_mem_kv > 0:
mem_k, mem_v = tuple(repeat(t, 'h n d -> b h n d', b = b) for t in (self.mem_k, self.mem_v))
if self.qk_norm:
mem_k = l2norm(mem_k)
mem_k = mem_k * self.qk_norm_k_scale
k = cat((mem_k, k), dim = -2)
v = cat((mem_v, v), dim = -2)
if exists(input_mask):
input_mask = pad_at_dim(input_mask, (self.num_mem_kv, 0), dim = -1, value = True)
# determine masking
mask_value = max_neg_value(q)
masks = []
final_attn_mask = None
if exists(input_mask):
input_mask = rearrange(input_mask, 'b j -> b 1 1 j')
masks.append(~input_mask)
if exists(attn_mask):
assert 2 <= attn_mask.ndim <= 4, 'attention mask must have greater than 2 dimensions but less than or equal to 4'
if attn_mask.ndim == 2:
attn_mask = rearrange(attn_mask, 'i j -> 1 1 i j')
elif attn_mask.ndim == 3:
attn_mask = rearrange(attn_mask, 'h i j -> 1 h i j')
masks.append(~attn_mask)
if exists(self.max_attend_past):
range_q = arange(j - i, j, device = device)
range_k = arange(j, device = device)
dist = einx.subtract('i, j -> 1 1 i j', range_q, range_k)
max_attend_past_mask = dist > self.max_attend_past
max_attend_past_mask = pad_at_dim(max_attend_past_mask, (num_mem_kv, 0), value = False, dim = -1) # handle memory key / values
masks.append(max_attend_past_mask)
if len(masks) > 0:
final_attn_mask = ~or_reduce(masks)
# prepare relative positional bias, if needed
if exists(rel_pos):
assert not exists(attn_bias)
if exists(pos):
assert isinstance(rel_pos, AlibiPositionalBias), 'only alibi allowed for custom positions at the moment'
# allow for custom positions to be passed in
attn_bias = rel_pos.forward_custom_pos(pos)
else:
attn_bias = rel_pos(i, j)
attn_bias = pad_at_dim(attn_bias, (num_mem_kv, 0)) # handle memory key / values
# prepare data dependent alibi from forgetting transformers paper, if needed
if exists(self.data_dependent_alibi):
attn_bias = self.data_dependent_alibi(x)
attn_bias = pad_at_dim(attn_bias, (num_mem_kv, 0))
if self.laser:
v = softclamp(v, self.laser_softclamp_value)
v = v.exp()
# attention is all we need
out, intermediates = self.attend(
q, k, v,
mask = final_attn_mask,
attn_bias = attn_bias,
prev_attn = prev_attn
)
# laser
if self.laser:
out = log(out)
# store the values for resformer
intermediates.values = orig_values
# normformer scaling of heads
if head_scale:
out = out * self.head_scale_params
# per head gating, from https://arxiv.org/abs/2306.12929
if exists(self.to_v_head_gate):
head_gate = self.to_v_head_gate(x)
out = einx.multiply('b n h, b h n d ->b h n d', head_gate.sigmoid(), out)
# if exists hybrid module, must do a normalization
# hybrid module
if exists(self.hybrid_module):
# hybrid input
hybrid_forward_kwargs = dict()
if not self.causal and exists(self.hybrid_mask_kwarg):
hybrid_forward_kwargs = {self.hybrid_mask_kwarg: mask}
# hybrid forward
hybrid_outputs = self.hybrid_module(x, **hybrid_forward_kwargs)
# handle hybrid out
(hybrid_out, *rest_hybrid_outs), _ = tree_flatten(hybrid_outputs)
# handle variable hybrid output and multi rmsnorm before summing to main attention output (also normed)
if hybrid_out.ndim == 3:
hybrid_out = rearrange(hybrid_out, 'b n (h d) -> b h n d', h = h)
out_norm, hybrid_out_norm = self.hybrid_norms
out = out_norm(out)
hybrid_out = hybrid_out_norm(hybrid_out)
if exists(self.hybrid_mix):
mix = self.hybrid_mix(x)
mix = rearrange(mix, 'b n h -> b h n 1')
out = out.lerp(hybrid_out, mix.sigmoid())
else:
out = 0.5 * (out + hybrid_out)
# merge heads
out = self.merge_heads(out)
# alphafold2 styled gating of the values
if exists(self.to_v_gate):
gates = self.to_v_gate(x)
out = out * self.to_v_gate_activation(gates)
# combine the heads
out = self.to_out(out)
# maybe sublayer dropout
out = maybe(self.sublayer_dropout)(out)
if exists(mask):
out = einx.where('b n, b n d, -> b n d', mask, out, 0.)
if not return_intermediates:
return out
intermediates.cached_kv = cached_kv
return out, intermediates
class AttentionLayers(Module):
def __init__(
self,
dim,
depth = None,
heads = 8,
causal = False,
cross_attend = False,
only_cross = False,
use_scalenorm = False,
use_rmsnorm = False,
use_dynamic_tanh = False,
dynamic_tanh_init_alpha = 1.,
use_simple_rmsnorm = False,
use_adaptive_layernorm = False,
use_adaptive_rmsnorm = False,
use_adaptive_layerscale = False, # paired with use_adaptive_layernorm for ada-ln-zero from DiT paper
norm_add_unit_offset = True,
dim_condition = None,
adaptive_condition_mlp = False,
adaptive_condition_mlp_expansion = 4,
alibi_pos_bias = False,
alibi_num_heads = None,
rel_pos_bias = False,
rel_pos_num_buckets = 32,
rel_pos_max_distance = 128,
dynamic_pos_bias = False,
dynamic_pos_bias_log_distance = False,
dynamic_pos_bias_mlp_depth = 2,
dynamic_pos_bias_norm = False,
rotary_pos_emb = False,
rotary_emb_dim = None,
rotary_xpos = False,
rotary_interpolation_factor = 1.,
rotary_xpos_scale_base = 512,
rotary_base_rescale_factor = 1.,
rotate_num_heads = None,
weight_tie_layers = False,
custom_layers: tuple[str, ...] | None = None,
layers_execute_order: tuple[int, ...] | None = None,
sandwich_coef = None,
par_ratio = None,
residual_attn = False,
cross_residual_attn = False,
macaron = False,
pre_norm = True,
pre_norm_has_final_norm = True,
gate_residual = False,
scale_residual = False,
scale_residual_constant = 1.,
shift_tokens = 0,
sandwich_norm = False,
softclamp_output = False,
softclamp_output_value = 30.,
zero_init_branch_output = False,
layer_dropout = 0.,
cross_attn_tokens_dropout = 0.,
disable_abs_pos_emb = None,
use_layerscale = False,
layerscale_init_value = 0.,
unet_skips = False,
integrate_layers = False,
layer_integrate_use_softmax = True,
num_residual_streams = 1,
qkv_receive_diff_residuals = False,
reinject_input = False, # seen first in DEQ paper https://arxiv.org/abs/1909.01377, but later used in a number of papers trying to achieve depthwise generalization https://arxiv.org/abs/2410.03020v1
learned_reinject_input_gate = False,
add_value_residual = False, # resformer from Zhou et al - https://arxiv.org/abs/2410.17897v1 - further corroboration by https://arxiv.org/abs/2412.15113 (faster emergence of ICL) - looks like this setting may becoming a necessity for every transformer soon
learned_value_residual_mix = True, # seeing big improvements when the value residual mix value is learned per token - credit goes to @faresobeid for taking the first step with learned scalar mix, then @Blinkdl for taking it a step further with data dependent. here we will use per token learned
rel_pos_kwargs: dict = dict(),
residual_fn_kwargs: dict = dict(),
**kwargs
):
super().__init__()
rotary_pos_emb = rotary_pos_emb or rotary_xpos
ff_kwargs, kwargs = groupby_prefix_and_trim('ff_', kwargs)
attn_kwargs, kwargs = groupby_prefix_and_trim('attn_', kwargs)
cross_attn_kwargs, kwargs = groupby_prefix_and_trim('cross_attn_', kwargs)
dim_head = attn_kwargs.get('dim_head', DEFAULT_DIM_HEAD)
data_dependent_alibi = attn_kwargs.get('data_dependent_alibi', False)
assert len(kwargs) == 0, f'unrecognized kwargs passed in {kwargs.keys()}'
self.dim = dim
self.causal = causal
self.layers = ModuleList([])
# routing related
# 1. greater than one residual stream, proposed in Hyper-Connections paper https://arxiv.org/abs/2409.19606
# 2. integrating more than one past layer, from LIMe paper https://arxiv.org/abs/2502.09245
qkv_receive_diff_residuals |= integrate_layers # qkv always receives different views if integrating layers
# hyper connections
assert num_residual_streams > 0
has_hyper_connections = num_residual_streams > 1
self.num_residual_streams = num_residual_streams
self.stream_emb = nn.Parameter(torch.zeros(num_residual_streams, dim)) if num_residual_streams > 1 else None
assert not (has_hyper_connections and gate_residual)
hyper_conn_produce_diff_views = qkv_receive_diff_residuals and not integrate_layers
# LIMe
hiddens_counter = 0
self.layer_integrators = ModuleList([])
assert not (qkv_receive_diff_residuals and not (hyper_conn_produce_diff_views or integrate_layers))
# positions related
self.disable_abs_pos_emb = default(disable_abs_pos_emb, (rel_pos_bias or rotary_pos_emb))
rotary_emb_dim = default(rotary_emb_dim, dim_head // 2)
assert rotary_emb_dim <= dim_head, f'rotary emb dim {rotary_emb_dim} must be less than or equal to attention head dimension {dim_head}'
if rotary_emb_dim < 32:
print('when training language model, rotary embedding dimension should be at least 32')
assert not (rotary_xpos and not causal), 'rotary xpos is not compatible with bidirectional attention'
self.rotary_pos_emb = RotaryEmbedding(rotary_emb_dim, use_xpos = rotary_xpos, scale_base = rotary_xpos_scale_base, interpolation_factor = rotary_interpolation_factor, base_rescale_factor = rotary_base_rescale_factor) if rotary_pos_emb else None
assert at_most_one_of(alibi_pos_bias, rel_pos_bias, data_dependent_alibi), 'you can only choose one of Alibi positional bias, data dependent Alibi (forgetting transformers), dynamic tanh, or T5 relative positional bias'
assert rel_pos_num_buckets <= rel_pos_max_distance, 'number of relative position buckets must be less than the relative position max distance'
# relative positional bias
flash_attn = attn_kwargs.get('flash', False)
assert at_most_one_of(rel_pos_bias, dynamic_pos_bias, alibi_pos_bias), 'you can only choose up to one of t5, alibi, or dynamic positional bias'
self.rel_pos = None
if rel_pos_bias:
assert not flash_attn, 'flash attention not compatible with t5 relative positional bias'
self.rel_pos = RelativePositionBias(scale = dim_head ** 0.5, causal = causal, heads = heads, num_buckets = rel_pos_num_buckets, max_distance = rel_pos_max_distance, **rel_pos_kwargs)
elif dynamic_pos_bias:
assert not flash_attn, 'flash attention not compatible with dynamic positional bias'
self.rel_pos = DynamicPositionBias(dim = dim // 4, heads = heads, log_distance = dynamic_pos_bias_log_distance, depth = dynamic_pos_bias_mlp_depth, norm = dynamic_pos_bias_norm, **rel_pos_kwargs)
elif alibi_pos_bias:
alibi_num_heads = default(alibi_num_heads, heads)
assert alibi_num_heads <= heads, 'number of ALiBi heads must be less than the total number of heads'
self.rel_pos = AlibiPositionalBias(heads = alibi_num_heads, total_heads = heads, **rel_pos_kwargs)
assert not (not pre_norm and sandwich_norm), 'sandwich norm cannot be used when not using prenorm'
self.pre_norm = pre_norm
self.sandwich_norm = sandwich_norm
self.residual_attn = residual_attn
self.cross_residual_attn = cross_residual_attn
assert not (flash_attn and (residual_attn or cross_residual_attn)), 'flash attention is not compatible with residual attention'
self.cross_attend = cross_attend
# determine norm
assert at_most_one_of(use_scalenorm, use_rmsnorm, use_dynamic_tanh, use_simple_rmsnorm, use_adaptive_layernorm, use_adaptive_rmsnorm), 'you can only use either scalenorm, rmsnorm, adaptive layernorm, adaptive rmsnorm, or simple rmsnorm'
norm_need_condition = False
dim_condition = default(dim_condition, dim)
dim_condition_mult = 1
if adaptive_condition_mlp:
dim_condition_mult = adaptive_condition_mlp_expansion
if use_scalenorm:
norm_class = ScaleNorm
elif use_rmsnorm:
norm_class = RMSNorm
elif use_simple_rmsnorm:
norm_class = SimpleRMSNorm
elif use_dynamic_tanh:
assert pre_norm, 'dynamic tanh norm only tested for pre-norm'
norm_class = partial(DynamicTanh, init_alpha = dynamic_tanh_init_alpha)
elif use_adaptive_layernorm:
norm_need_condition = True
norm_class = partial(AdaptiveLayerNorm, dim_condition = dim_condition * dim_condition_mult)
elif use_adaptive_rmsnorm:
norm_need_condition = True
norm_class = partial(AdaptiveRMSNorm, dim_condition = dim_condition * dim_condition_mult)
else:
norm_class = LayerNorm
norm_fn = partial(norm_class, dim)
if not norm_need_condition and norm_add_unit_offset:
# researcher Ohad Rubin shares in a blog post by adding an offset to gammas, they can be subjected to weight decay safely
norm_fn = partial(norm_fn, unit_offset = True)
self.norm_need_condition = norm_need_condition
self.dim_condition = dim_condition
# determine default block layer type order
if cross_attend and not only_cross:
default_block = ('a', 'c', 'f')
elif cross_attend and only_cross:
default_block = ('c', 'f')
else:
default_block = ('a', 'f')
if macaron:
default_block = ('f',) + default_block
# determine post branch wrapper
assert at_most_one_of(use_layerscale, use_adaptive_layerscale)
post_branch_fn = None
post_branch_fn_needs_condition = False
if use_layerscale:
post_branch_fn = partial(LayerScale, dim = dim, init_value = layerscale_init_value)
elif use_adaptive_layerscale:
post_branch_fn = partial(AdaptiveLayerScale, dim = dim, dim_condition = dim_condition * dim_condition_mult)
post_branch_fn_needs_condition = True
self.post_branch_fn_needs_condition = post_branch_fn_needs_condition
if exists(post_branch_fn) and not post_branch_fn_needs_condition and norm_add_unit_offset:
post_branch_fn = partial(post_branch_fn, unit_offset = True)
# setup mlp for conditioning
self.need_condition = norm_need_condition or post_branch_fn_needs_condition
self.adaptive_mlp = nn.Identity()
if self.need_condition and adaptive_condition_mlp:
self.adaptive_mlp = nn.Sequential(
LinearNoBias(dim_condition, dim_condition * dim_condition_mult),
nn.SiLU()
)
# zero init
if zero_init_branch_output:
attn_kwargs = {**attn_kwargs, 'zero_init_output': True}
ff_kwargs = {**ff_kwargs, 'zero_init_output': True}
# setup weight tying, which is a special case of `layer_execute_order`
assert not (exists(layers_execute_order) and exists(custom_layers) and exists(depth)), 'depth should not be passed in if using custom layers and custom layer execution order'
assert not (weight_tie_layers and any([*map(exists, (custom_layers, par_ratio, sandwich_coef))]))
if weight_tie_layers:
assert exists(depth), 'depth must be passed in with `weight_tie_layers` = True'
assert not exists(layers_execute_order)
layers_execute_order = tuple(range(len(default_block))) * depth
depth = 1
# calculate layer block order
len_default_block = 1
if exists(custom_layers):
layer_types = custom_layers
elif exists(par_ratio):
par_depth = depth * len(default_block)
assert 1 < par_ratio <= par_depth, 'par ratio out of range'
default_block = tuple(filter(not_equals('f'), default_block))
par_attn = par_depth // par_ratio
depth_cut = par_depth * 2 // 3 # 2 / 3 attention layer cutoff suggested by PAR paper
par_width = (depth_cut + depth_cut // par_attn) // par_attn
assert len(default_block) <= par_width, 'default block is too large for par_ratio'
par_block = default_block + ('f',) * (par_width - len(default_block))
par_head = par_block * par_attn
layer_types = par_head + ('f',) * (par_depth - len(par_head))
elif exists(sandwich_coef):
assert sandwich_coef > 0 and sandwich_coef <= depth, 'sandwich coefficient should be less than the depth'
layer_types = ('a',) * sandwich_coef + default_block * (depth - sandwich_coef) + ('f',) * sandwich_coef
else:
assert exists(depth), '`depth` must be passed in for `Decoder` or `Encoder`'
layer_types = default_block * depth
len_default_block = len(default_block)
self.layer_types = layer_types
self.layers_execute_order = default(layers_execute_order, tuple(range(len(layer_types))))
assert all([i < len(self.layer_types) for i in self.layers_execute_order])
self.num_attn_layers = len(list(filter(equals('a'), layer_types)))
# set the depth
depth = default(depth, len(self.layers_execute_order))
self.depth = depth
# stochastic depth
self.layer_dropouts = cast_tuple(layer_dropout, len(layer_types))
# structured dropout for cross attending
self.cross_attn_tokens_dropout = cross_attn_tokens_dropout
# calculate token shifting
shift_tokens = cast_tuple(shift_tokens, len(layer_types))
# optional soft clamping just before the final norm
# used in gemma 2
self.softclamp_output = softclamp_output
self.softclamp_output_value = softclamp_output_value
# whether it has post norm
self.final_norm = norm_fn() if pre_norm else nn.Identity()
# whether unet or not
self.unet_skips = unet_skips
num_skips = self.depth // len_default_block
assert not (unet_skips and num_skips == 0), 'must have depth of at least 2 for unet skip connections'
skip_indices = [i * len_default_block for i in range(num_skips)]
self.skip_combines = ModuleList([])
# whether there is reinjection of input at every layer
self.reinject_input = reinject_input
self.reinject_input_proj = nn.Linear(dim, dim, bias = False) if reinject_input else None
self.learned_reinject_input_gate = nn.Linear(dim, 1, bias = False) if learned_reinject_input_gate else None
# add the value from the first self attention block to all latter projected self attention values as a residual
self.add_value_residual = add_value_residual
is_first_self_attn = True
is_first_cross_attn = True
learned_value_residual_mix &= add_value_residual
# iterate and construct layers
for ind, (layer_type, layer_shift_tokens) in enumerate(zip(self.layer_types, shift_tokens)):
# `ind` is the index of each module - attention, feedforward, cross attention
# but `block_ind` refers to the typical enumeration of a transformer block (attn + ff + [optional] cross attn)
block_begin = divisible_by(ind, len_default_block)
block_ind = ind // len_default_block
is_last_layer = ind == (len(self.layer_types) - 1)
# attention, cross attention, feedforward
layer_qkv_receives_diff_view = layer_type == 'a' and qkv_receive_diff_residuals and not (is_first_self_attn and integrate_layers)
if layer_type == 'a':
self_attn_learned_value_residual = learned_value_residual_mix and not is_first_self_attn
layer = Attention(dim, heads = heads, causal = causal, qkv_receive_diff_residuals = layer_qkv_receives_diff_view, learned_value_residual_mix = self_attn_learned_value_residual, rotate_num_heads = rotate_num_heads, **attn_kwargs)
is_first_self_attn = False
elif layer_type == 'c':
layer = Attention(dim, heads = heads, **{**attn_kwargs, **cross_attn_kwargs})
is_first_cross_attn = False
elif layer_type == 'f':
layer = FeedForward(dim, **ff_kwargs)
layer = layer if not macaron else Scale(0.5, layer)
else:
raise Exception(f'invalid layer type {layer_type}')
if layer_shift_tokens > 0:
shift_range_upper = layer_shift_tokens + 1
shift_range_lower = -layer_shift_tokens if not causal else 0
layer = ShiftTokens(range(shift_range_lower, shift_range_upper), layer)
if exists(post_branch_fn):
layer = post_branch_fn(layer)
layer_integrate = None
if integrate_layers:
num_layer_hiddens = ind + 1
layer_integrate_num_view = 3 if layer_qkv_receives_diff_view else 1
layer_integrate = DynamicLIMe(dim, num_layer_hiddens, num_views = layer_integrate_num_view, use_softmax = layer_integrate_use_softmax)
if has_hyper_connections:
residual_fn = partial(HyperConnection, num_residual_streams = num_residual_streams)
if layer_type == 'a' and hyper_conn_produce_diff_views:
residual_fn = partial(residual_fn, num_input_views = 3)
elif gate_residual:
residual_fn = GRUGating
else:
residual_fn = Residual
residual = residual_fn(dim, layer_index = ind, scale_residual = scale_residual, scale_residual_constant = scale_residual_constant, **residual_fn_kwargs)
# handle unet skip connection
skip_combine = None
is_latter_half = block_begin and block_ind >= (self.depth / 2)
if self.unet_skips and is_latter_half:
skip_combine = ConcatCombine(dim, skip_indices.pop())
# all normalizations of the layer
pre_branch_norm = norm_fn() if pre_norm else None
post_branch_norm = norm_fn() if sandwich_norm else None
post_main_norm = norm_fn() if not pre_norm else None
norms = ModuleList([
pre_branch_norm,
post_branch_norm,
post_main_norm
])
self.skip_combines.append(skip_combine)
self.layer_integrators.append(layer_integrate)
self.layers.append(ModuleList([
norms,
layer,
residual
]))
# determine whether can cache kv
self.can_cache_kv = all([module.can_cache_kv for module in self.modules() if isinstance(module, Attention)])
def forward(
self,
x,
context = None,
mask = None,
context_mask = None,
attn_mask = None,
self_attn_kv_mask = None,
mems = None,
mem_masks = None,
seq_start_pos: Tensor | None = None,
cache: LayerIntermediates | None = None,
cache_age = 1,
return_hiddens = False,
rotary_pos_emb = None,
pos = None,
context_pos = None,
attn_bias = None,
condition = None,
in_attn_cond = None, # https://arxiv.org/abs/2105.04090
layers_execute_order: tuple[int, ...] | None = None
):
assert not (self.cross_attend ^ exists(context)), 'context must be passed in if cross_attend is set to True'
assert not (exists(condition) ^ self.need_condition), 'condition needs to be passed in if using adaptive layernorm or vice versa'
# handle condition
if exists(condition):
assert condition.shape[-1] == self.dim_condition, f'expected condition dimension of {self.dim_condition} but received {condition.shape[-1]}'
assert condition.ndim in {2, 3}
if condition.ndim == 2:
condition = rearrange(condition, 'b d -> b 1 d')
condition = self.adaptive_mlp(condition)
# setup maybe layernorm kwarg
norm_kwargs = dict()
if self.norm_need_condition:
norm_kwargs.update(condition = condition)
# maybe post branch fn conditioning (DiT paper's ada-ln-zero)
block_forward_kwargs = dict()
if self.post_branch_fn_needs_condition:
block_forward_kwargs.update(condition = condition)
# initialize accums
hiddens = []
layer_hiddens = []
intermediates = []
prev_attn = None
prev_cross_attn = None
mems = mems.copy() if exists(mems) else [None] * self.num_attn_layers
mem_masks = mem_masks.copy() if exists(mem_masks) else [None] * self.num_attn_layers
# handle left padded sequences
if exists(seq_start_pos):
seq_arange = arange(x.shape[-2], device = x.device, dtype = torch.long)
left_pad_mask = seq_arange >= seq_start_pos[..., None]
if exists(self_attn_kv_mask):
self_attn_kv_mask = self_attn_kv_mask & left_pad_mask
else:
self_attn_kv_mask = left_pad_mask
# rotary positions
cross_attn_rotary_pos_emb = dict()
if exists(self.rotary_pos_emb):
if not exists(rotary_pos_emb):
maybe_mem = first(mems, None) # todo - handle edge case where different layers get different memory lengths. don't think this will ever come up but who knows
mem_len = maybe_mem.shape[1] if exists(maybe_mem) else 0
if not exists(pos):
pos = arange(x.shape[1] + mem_len, device = x.device) - mem_len
rotary_pos_emb = self.rotary_pos_emb(pos)
# allow for rotary positions for context if provided
if exists(context_pos):
assert self.cross_attend
context_rotary_pos_emb = self.rotary_pos_emb(context_pos)
cross_attn_rotary_pos_emb.update(
rotary_pos_emb = rotary_pos_emb,
context_rotary_pos_emb = context_rotary_pos_emb
)
# assume cached key / values
attn_cache = []
if exists(cache):
assert self.causal and not any([*map(exists, (mask, attn_mask))])
if exists(context):
context = context[:, :0]
if cache_age > 0:
x = x[:, -cache_age:] # for spec decoding, may be greater than 1
attn_cache = cache.attn_intermediates
iter_attn_cache = iter(attn_cache)
# setup multistreams if needed
streams = self.num_residual_streams
is_multistream = streams > 1
if is_multistream:
x = einx.add('b n d, s d -> (b s) n d', x, self.stream_emb)
# get layers to be executed
layer_variables = (
self.layer_types,
self.skip_combines,
self.layers,
self.layer_dropouts,
self.layer_integrators
)
# able to override the layers execution order on forward, for trying to depth extrapolate
layers_execute_order = default(layers_execute_order, self.layers_execute_order)
layer_variables = tuple(tuple(layer_variable[i] for i in layers_execute_order) for layer_variable in layer_variables)
# derived input for reinjection if needed
inp_inject = None
if self.reinject_input:
assert not exists(in_attn_cond)
inp_inject = self.reinject_input_proj(x)
elif exists(in_attn_cond):
# handle in-attention conditioning, which serves the same purpose of having the network learn the residual
inp_inject = in_attn_cond if in_attn_cond.ndim == 3 else rearrange(in_attn_cond, 'b d -> b 1 d')
if exists(inp_inject) and exists(self.learned_reinject_input_gate):
inp_inject_gate = self.learned_reinject_input_gate(x).sigmoid()
inp_inject = inp_inject * inp_inject_gate
# store all hiddens for skips
skip_hiddens = []
# for value residuals
first_self_attn_inter = None
first_cross_attn_inter = None
# go through the attention and feedforward layers
for ind, (layer_type, skip_combine, (norm, block, residual_fn), layer_dropout, layer_integrator) in enumerate(zip(*layer_variables)):
is_last = ind == (len(self.layers) - 1)
# handle skip connections
skip_hiddens.append(x)
if exists(skip_combine):
x = skip_combine(x, skip_hiddens)
# layer dropout
if self.training and layer_dropout > 0. and random() < layer_dropout:
continue
if layer_type == 'a':
if return_hiddens:
hiddens.append(x)
layer_mem = mems.pop(0) if mems else None
layer_mem_mask = mem_masks.pop(0) if mem_masks else None
if layer_type == 'c':
if self.training and self.cross_attn_tokens_dropout > 0.:
context, context_mask = dropout_seq(context, context_mask, self.cross_attn_tokens_dropout)
x, inner_residual, residual_kwargs = residual_fn.prepare(x)
layer_hiddens.append(x)
if exists(layer_integrator):
x = layer_integrator(x, layer_hiddens)
pre_norm, post_branch_norm, post_main_norm = norm
if self.need_condition:
pre_norm = maybe(partial)(pre_norm, **norm_kwargs)
post_branch_norm = maybe(partial)(post_branch_norm, **norm_kwargs)
post_main_norm = maybe(partial)(post_main_norm, **norm_kwargs)
if exists(inp_inject):
x = x + inp_inject
if exists(pre_norm):
x = pre_norm(x)
if layer_type == 'a' and exists(layer_mem):
layer_mem = pre_norm(layer_mem)
block = partial(block, **block_forward_kwargs)
# handle maybe value residuals
maybe_self_attn_value_residual = None
maybe_cross_attn_value_residual = None
if self.add_value_residual:
if exists(first_self_attn_inter):
maybe_self_attn_value_residual = first_self_attn_inter.values
if exists(first_cross_attn_inter):
maybe_cross_attn_value_residual = first_cross_attn_inter.values
# forward depending on layer type
if layer_type == 'a':
out, inter = block(x, mask = mask, context_mask = self_attn_kv_mask, attn_mask = attn_mask, rel_pos = self.rel_pos, pos = pos, rotary_pos_emb = rotary_pos_emb, prev_attn = prev_attn, cache = next(iter_attn_cache, None), mem = layer_mem, mem_mask = layer_mem_mask, attn_bias = attn_bias, value_residual = maybe_self_attn_value_residual, return_intermediates = True)
elif layer_type == 'c':
out, inter = block(x, context = context, mask = mask, context_mask = context_mask, prev_attn = prev_cross_attn, cache = next(iter_attn_cache, None), value_residual = maybe_cross_attn_value_residual, **cross_attn_rotary_pos_emb, return_intermediates = True)
elif layer_type == 'f':
out = block(x)
# store first self or cross attention intermediate for value residual
if not exists(first_self_attn_inter) and layer_type == 'a':
first_self_attn_inter = inter
if not exists(first_cross_attn_inter) and layer_type == 'c':
first_cross_attn_inter = inter
if exists(post_branch_norm):
out = post_branch_norm(out)
x = residual_fn(out, inner_residual, **residual_kwargs)
if layer_type in ('a', 'c') and return_hiddens:
inter.layer_type = layer_type
intermediates.append(inter)
if layer_type == 'a' and self.residual_attn:
prev_attn = inter.pre_softmax_attn
elif layer_type == 'c' and self.cross_residual_attn:
prev_cross_attn = inter.pre_softmax_attn
if exists(post_main_norm):
x = post_main_norm(x)
if return_hiddens:
layer_hiddens.append(x)
if self.softclamp_output:
x = softclamp(x, self.softclamp_output_value)
final_norm = self.final_norm
if self.need_condition:
final_norm = maybe(partial)(final_norm, **norm_kwargs)
# take care of multistreams if needed, use sum for now
if is_multistream:
x = reduce(x, '(b s) n d -> b n d', 'sum', s = streams)
x = final_norm(x)
if not return_hiddens:
return x
intermediates = LayerIntermediates(
hiddens = hiddens,
last_hidden = x,
attn_intermediates = intermediates,
layer_hiddens = layer_hiddens,
)
return x, intermediates
class Encoder(AttentionLayers):
def __init__(self, **kwargs):
assert 'causal' not in kwargs, 'cannot set causality on encoder'
super().__init__(causal = False, **kwargs)
class Decoder(AttentionLayers):
def __init__(self, **kwargs):
assert 'causal' not in kwargs, 'cannot set causality on decoder'
super().__init__(causal = True, **kwargs)
class PrefixDecoder(AttentionLayers):
def __init__(self, **kwargs):
assert 'causal' not in kwargs, 'cannot set causality on decoder'
super().__init__(causal = False, **kwargs)
def forward(
self,
x,
*args,
attn_mask = None,
prefix_attn_len = None,
**kwargs
):
b, n, device = x.shape[0], x.shape[1], x.device
causal_mask = torch.ones((n, n), device = device, dtype = torch.bool).triu(1)
forwarded_mask = ~causal_mask
if exists(prefix_attn_len):
if isinstance(prefix_attn_len, int):
prefix_attn_len = torch.full((b,), prefix_attn_len, device = device)
prefix_mask = arange(n, device = device) < rearrange(prefix_attn_len, 'b -> b 1 1 1')
forwarded_mask = forwarded_mask | prefix_mask
if exists(attn_mask):
forwarded_mask = forwarded_mask & attn_mask
return super().forward(x, *args, attn_mask = forwarded_mask, **kwargs)
class CrossAttender(AttentionLayers):
def __init__(self, **kwargs):
super().__init__(cross_attend = True, only_cross = True, **kwargs)
class ViTransformerWrapper(Module):
def __init__(
self,
*,
image_size,
patch_size,
attn_layers: Encoder,
channels = 3,
num_classes = None,
post_emb_norm = False,
num_register_tokens = 0,
emb_dropout = 0.
):
super().__init__()
assert divisible_by(image_size, patch_size), 'image dimensions must be divisible by the patch size'
dim = attn_layers.dim
num_patches = (image_size // patch_size) ** 2
patch_dim = channels * patch_size ** 2
self.patch_size = patch_size
self.pos_embedding = nn.Parameter(torch.randn(1, num_patches, dim))
has_register_tokens = num_register_tokens > 0
self.has_register_tokens = has_register_tokens
if has_register_tokens:
self.register_tokens = nn.Parameter(torch.randn(num_register_tokens, dim))
self.patch_to_embedding = nn.Sequential(
LayerNorm(patch_dim),
nn.Linear(patch_dim, dim),
LayerNorm(dim)
)
self.post_emb_norm = LayerNorm(dim) if post_emb_norm else nn.Identity()
self.dropout = nn.Dropout(emb_dropout)
self.attn_layers = attn_layers
self.mlp_head = nn.Linear(dim, num_classes) if exists(num_classes) else nn.Identity()
def forward(
self,
img,
return_embeddings = False,
return_logits_and_embeddings = False
):
b, p = img.shape[0], self.patch_size
x = rearrange(img, 'b c (h p1) (w p2) -> b (h w) (p1 p2 c)', p1 = p, p2 = p)
x = self.patch_to_embedding(x)
n = x.shape[1]
x = x + self.pos_embedding[:, :n]
x = self.post_emb_norm(x)
x = self.dropout(x)
if self.has_register_tokens:
r = repeat(self.register_tokens, 'n d -> b n d', b = b)
x, ps = pack((x, r), 'b * d')
embed = self.attn_layers(x)
if self.has_register_tokens:
embed, _ = unpack(embed, ps, 'b * d')
assert at_most_one_of(return_embeddings, return_logits_and_embeddings)
if not exists(self.mlp_head) or return_embeddings:
return embed
pooled = embed.mean(dim = -2)
logits = self.mlp_head(pooled)
if not return_logits_and_embeddings:
return logits
return logits, embed
class TransformerWrapper(Module):
def __init__(
self,
*,
num_tokens,
max_seq_len,
attn_layers: AttentionLayers,
embed_num_tokens: dict[str, int] = dict(),
emb_dim = None,
max_mem_len = 0,
shift_mem_down = 0,
emb_dropout = 0.,
post_emb_norm = False,
num_memory_tokens = None,
memory_tokens_interspersed_every = None,
tie_embedding = False,
logits_dim = None,
return_only_embed = False,
num_output_heads = 1,
use_abs_pos_emb = True,
scaled_sinu_pos_emb = False,
l2norm_embed = False,
recycling = False, # from Jumper et al. - Alphafold2
train_max_recycle_steps = 4, # saw a benefit for language modeling up to 3 recycling steps, so let's default this to 4
emb_frac_gradient = 1., # GLM-130B and Cogview successfully used this, set at 0.1
attn_z_loss_weight = 1e-4,
average_pool_embed = False,
use_cls_token = False,
num_cls_tokens = 1,
squeeze_out_last_dim = False,
token_emb: TokenEmbedding | None = None,
mixture_of_softmax = False,
mixture_of_softmax_k = 4,
sigsoftmax_logits = False,
to_logits: Module | None = None,
):
super().__init__()
dim = attn_layers.dim
emb_dim = default(emb_dim, dim)
self.emb_dim = emb_dim
self.num_tokens = num_tokens
self.num_cls_tokens = num_cls_tokens
self.max_seq_len = max_seq_len
self.max_mem_len = max_mem_len
self.shift_mem_down = shift_mem_down
self.l2norm_embed = l2norm_embed
if not exists(token_emb):
token_emb = TokenEmbedding(emb_dim, num_tokens, l2norm_embed = l2norm_embed)
self.token_emb = token_emb
no_abs_pos_emb = max_seq_len == 0 or not (use_abs_pos_emb and not attn_layers.disable_abs_pos_emb)
if no_abs_pos_emb:
self.pos_emb = always(0)
elif scaled_sinu_pos_emb:
self.pos_emb = ScaledSinusoidalEmbedding(emb_dim)
else:
self.pos_emb = AbsolutePositionalEmbedding(emb_dim, max_seq_len, l2norm_embed = l2norm_embed)
# additional embeddings - say type embedding from BERT
self.embeds = None
if len(embed_num_tokens) > 0:
self.embeds = ModuleDict({f'{name}_embed': nn.Embedding(num_tokens, emb_dim) for name, num_tokens in embed_num_tokens.items()})
# fraction of the gradient that should go to the embedding, https://arxiv.org/abs/2105.13290
self.emb_frac_gradient = emb_frac_gradient
self.post_emb_norm = LayerNorm(emb_dim) if post_emb_norm else nn.Identity()
self.emb_dropout = nn.Dropout(emb_dropout)
self.project_emb = nn.Linear(emb_dim, dim) if emb_dim != dim else nn.Identity()
self.attn_layers = attn_layers
self.init_()
assert num_output_heads > 0
assert at_most_one_of(average_pool_embed, use_cls_token)
# maybe recycling
self.recycling = recycling
self.recycled_proj = LinearNoBias(dim, dim) if recycling else None
self.train_max_recycle_steps = train_max_recycle_steps
# classic cls token from the bert days
self.cls_token = None
if use_cls_token:
self.cls_token = nn.Parameter(torch.zeros(num_cls_tokens, dim))
nn.init.normal_(self.cls_token, std = 0.02)
# whether to average pool the embed (`global average pool`)
self.average_pool_embed = average_pool_embed
# output type
self.output_is_log_prob = mixture_of_softmax
self.to_mixture = None
self.combine_mixture = None
if mixture_of_softmax:
assert num_output_heads == 1
self.to_mixture = Sequential(
LinearNoBias(dim, dim * mixture_of_softmax_k),
Rearrange('... (k d) -> ... k d', k = mixture_of_softmax_k)
)
self.combine_mixture = LinearNoBias(dim, mixture_of_softmax_k)
# sig softmax
self.sigsoftmax_logits = sigsoftmax_logits
# output head, usually to logits of num_tokens
logits_dim = default(logits_dim, num_tokens)
self.has_multiple_heads = num_output_heads > 1
if return_only_embed:
self.to_logits = None
elif tie_embedding:
assert isinstance(token_emb, TokenEmbedding), 'can only tie embedding if using `TokenEmbedding`'
self.to_logits = lambda t: t @ self.token_emb.emb.weight.t()
elif num_output_heads > 1:
self.to_logits = ModuleList([LinearNoBias(dim, logits_dim) for _ in range(num_output_heads)])
else:
self.to_logits = LinearNoBias(dim, logits_dim) if not exists(to_logits) else to_logits
# memory tokens (like [cls]) from Memory Transformers paper
num_memory_tokens = default(num_memory_tokens, 0)
self.num_memory_tokens = num_memory_tokens
if num_memory_tokens > 0:
self.memory_tokens = nn.Parameter(torch.randn(num_memory_tokens, dim))
self.memory_tokens_interspersed_every = memory_tokens_interspersed_every
# squeeze out last dimension if possible
self.squeeze_out_last_dim = squeeze_out_last_dim
# whether can do cached kv decoding
self.can_cache_kv = self.num_memory_tokens == 0 and not recycling and self.attn_layers.can_cache_kv
self.can_cache_kv_outside_max_seq_len = no_abs_pos_emb
def init_(self):
if hasattr(self.token_emb, 'init_'):
self.token_emb.init_()
if self.l2norm_embed:
if not isinstance(self.pos_emb, always):
nn.init.normal_(self.pos_emb.emb.weight, std = 1e-5)
def forward(
self,
x,
return_embeddings = False,
return_logits_and_embeddings = False,
return_intermediates = False,
return_embeddings_and_intermediates = False,
return_logit_entropies = False,
mask = None,
return_mems = False,
return_attn = False,
mems = None,
mem_masks = None,
recycle_steps = None,
pos = None,
prepend_embeds = None,
prepend_mask = None,
embed_ids: dict[str, Tensor] = dict(),
sum_embeds = None,
return_attn_z_loss = False,
attn_z_loss_weight = 1e-4,
seq_start_pos = None,
cache: LayerIntermediates | None = None,
token_emb_kwargs = dict(),
to_logits_kwargs = dict(),
**kwargs,
):
# if sequence is None, auto create an empty one if `prepend_embeds` was supplied
if not exists(x):
assert exists(prepend_embeds)
x = prepend_embeds.new_empty((prepend_embeds.shape[0], 0), dtype = torch.long)
# shapes and variables
b, n, device, num_mems, has_memory_tokens, emb_frac_gradient, orig_mask = x.shape[0], x.shape[1], x.device, self.num_memory_tokens, self.num_memory_tokens > 0, self.emb_frac_gradient, mask
return_hiddens = return_mems | return_attn | return_intermediates | return_attn_z_loss | return_embeddings_and_intermediates
return_embeddings = return_embeddings | (not exists(self.to_logits)) | return_embeddings_and_intermediates
# absolute positional embedding
external_pos_emb = exists(pos) and pos.dtype != torch.long
pos_emb = self.pos_emb(x, pos = pos, seq_start_pos = seq_start_pos) if not external_pos_emb else pos
x = self.token_emb(x, **token_emb_kwargs) + pos_emb
# add additional embeddings
assert not (exists(self.embeds) ^ (len(embed_ids) > 0)), '`embed_num_tokens` must be defined on `TransformerWrapper`'
if exists(self.embeds):
assert len(embed_ids) == len(self.embeds)
for name, embed_id in embed_ids.items():
embed_key = f'{name}_embed'
assert embed_key in self.embeds
embed = self.embeds[embed_key](embed_id)
x = x + embed
# for summing embeddings passed externally - needs this for self-conditioning in non-autoregressive training
if exists(sum_embeds):
x = x + sum_embeds
# post embedding norm, purportedly leads to greater stabilization
x = self.post_emb_norm(x)
# whether to append embeds, as in PaLI, for image embeddings
if exists(prepend_embeds):
prepend_seq, prepend_dim = prepend_embeds.shape[1:]
assert prepend_dim == x.shape[-1], 'prepended embeddings need to have same dimensions as text model dimensions'
x = cat((prepend_embeds, x), dim = -2)
if exists(prepend_mask) or exists(mask):
mask = default(mask, lambda: torch.ones((b, n), device = device, dtype = torch.bool))
prepend_mask = default(prepend_mask, lambda: torch.ones((b, prepend_seq), device = device, dtype = torch.bool))
mask = cat((prepend_mask, mask), dim = -1)
# whether to reduce the gradient going to the embedding, from cogview paper, corroborated by GLM-130B model
if emb_frac_gradient < 1:
assert emb_frac_gradient > 0
x = x * emb_frac_gradient + x.detach() * (1 - emb_frac_gradient)
# embedding dropout
x = self.emb_dropout(x)
x = self.project_emb(x)
# maybe cls token
if exists(self.cls_token):
cls_tokens = repeat(self.cls_token, '... -> b ...', b = b)
x, cls_packed_shape = pack([cls_tokens, x], 'b * d')
if exists(mask):
mask = F.pad(mask, (self.num_cls_tokens, 0), value = True)
# maybe memory / register tokens
if has_memory_tokens:
mem_seq = x.shape[-2]
mem_every = self.memory_tokens_interspersed_every
if exists(mem_every):
assert mem_every > 0
assert isinstance(self.attn_layers, Decoder), 'only for decoder'
next_seq_len = math.ceil(n / mem_every) * mem_every
x = pad_at_dim(x, (0, next_seq_len - n), dim = -2, value = 0.)
x = rearrange(x, 'b (n m) d -> (b n) m d', m = mem_every)
mem = repeat(self.memory_tokens, 'n d -> b n d', b = x.shape[0])
x, mem_packed_shape = pack((mem, x), 'b * d')
# auto-handle masking after appending memory tokens
if not exists(mem_every) and exists(mask):
mask = pad_at_dim(mask, (num_mems, 0), dim = -1, value = True)
if exists(mem_every):
x = rearrange(x, '(b n) m d -> b (n m) d', b = b)
# handle maybe shifting of memories
if self.shift_mem_down and exists(mems):
mems_l, mems_r = mems[:self.shift_mem_down], mems[self.shift_mem_down:]
mems = [*mems_r, *mems_l]
# attention layers
if not self.recycling:
assert not exists(recycle_steps) or recycle_steps == 1, 'you did not train with recycling'
# regular
attended, intermediates = self.attn_layers(x, mask = mask, mems = mems, mem_masks = mem_masks, cache = cache, return_hiddens = True, seq_start_pos = seq_start_pos, **kwargs)
else:
# recycling
recycle_steps = default(recycle_steps, (randrange(self.train_max_recycle_steps) + 1) if self.training else None)
assert exists(recycle_steps) and recycle_steps > 0, '`recycle_steps` must be provided on forward if recycling is turned on and not training'
for i in range(recycle_steps):
first_step = i == 0
last_step = i == (recycle_steps - 1)
context = nullcontext if last_step else torch.no_grad
with context():
maybe_recycled = self.recycled_proj(attended.detach()) if not first_step else 0.
attended, intermediates = self.attn_layers(x + maybe_recycled, mask = mask, mems = mems, mem_masks = mem_masks, cache = cache, return_hiddens = True, seq_start_pos = seq_start_pos, **kwargs)
x = attended
# handle memories post-attention
if has_memory_tokens:
if exists(mem_every):
x = rearrange(x, 'b (n m) d -> (b n) m d', m = (mem_every + num_mems))
mem, x = unpack(x, mem_packed_shape, 'b * d')
intermediates.memory_tokens = mem
if exists(mem_every):
x = rearrange(x, '(b n) m d -> b (n m) d', b = b)
x = x[:, :mem_seq]
# global average pool
if self.average_pool_embed:
x = masked_mean(x, mask = orig_mask, dim = 1)
if exists(self.cls_token):
x, _ = unpack(x, cls_packed_shape, 'b * d')
x = x.squeeze(1) # Remove sequence dimension if num_cls_tokens=1 to keep previous behavior
# handle expansion to mixture if needed (for mixture of softmax)
combine_mixture = None
if exists(self.to_mixture):
combine_mixture = self.combine_mixture(x).softmax(dim = -1)
x = self.to_mixture(x)
# projecting to logits
if not return_embeddings:
if self.has_multiple_heads:
logits = tuple(fn(x, **to_logits_kwargs) for fn in self.to_logits)
else:
logits = self.to_logits(x, **to_logits_kwargs)
# maybe sig softmax
if self.sigsoftmax_logits:
logits = logits + logits.sigmoid().log()
# handle maybe combine mixture
if exists(combine_mixture):
with autocast('cuda', enabled = False):
prob = logits.softmax(dim = -1)
mos = einsum('... k d, ... k -> ... d', prob, combine_mixture)
logits = log(mos)
# maybe squeeze out last dimension of logits
if self.squeeze_out_last_dim:
logits = tuple((rearrange(t, '... 1 -> ...') if t.shape[-1] == 1 else t) for t in cast_tuple(logits))
if not self.has_multiple_heads:
logits = first(logits)
# different returns
if return_logits_and_embeddings:
out = (logits, x)
elif return_embeddings_and_intermediates:
out = (x, intermediates)
elif return_embeddings:
out = x
else:
out = logits
# logit entropies
if return_logit_entropies:
intermediates.logit_entropies = calc_entropy(logits)
return_intermediates = True
# aux loss
if return_attn_z_loss:
pre_softmax_attns = [t.pre_softmax_attn for t in intermediates.attn_intermediates]
intermediates.attn_z_loss = calc_z_loss(pre_softmax_attns, weight = attn_z_loss_weight)
return_intermediates = True
if return_mems:
hiddens = intermediates.hiddens
new_mems = [cat(pair, dim = -2) for pair in zip(mems, hiddens)] if exists(mems) else hiddens
new_mems = [t[..., -self.max_mem_len:, :].detach() for t in new_mems]
if not return_intermediates:
return out, new_mems
intermediates.mems = new_mems
if return_intermediates:
return out, intermediates
if return_attn:
attn_maps = [t.post_softmax_attn for t in intermediates.attn_intermediates]
return out, attn_maps
return out
class XTransformer(Module):
def __init__(
self,
*,
dim,
tie_token_emb = False,
ignore_index = -100,
pad_value = 0,
cross_attn_tokens_dropout = 0.,
**kwargs
):
super().__init__()
enc_kwargs, kwargs = groupby_prefix_and_trim('enc_', kwargs)
dec_kwargs, kwargs = groupby_prefix_and_trim('dec_', kwargs)
assert 'dim' not in enc_kwargs and 'dim' not in dec_kwargs, 'dimension of either encoder or decoder must be set with `dim` keyword'
enc_transformer_kwargs = pick_and_pop(['num_tokens', 'max_seq_len'], enc_kwargs)
enc_transformer_kwargs['emb_dropout'] = enc_kwargs.pop('emb_dropout', 0)
enc_transformer_kwargs['num_memory_tokens'] = enc_kwargs.pop('num_memory_tokens', None)
enc_transformer_kwargs['scaled_sinu_pos_emb'] = enc_kwargs.pop('scaled_sinu_pos_emb', False)
enc_transformer_kwargs['use_abs_pos_emb'] = enc_kwargs.pop('use_abs_pos_emb', True)
dec_transformer_kwargs = pick_and_pop(['num_tokens', 'max_seq_len'], dec_kwargs)
dec_transformer_kwargs['emb_dropout'] = dec_kwargs.pop('emb_dropout', 0)
dec_transformer_kwargs['scaled_sinu_pos_emb'] = dec_kwargs.pop('scaled_sinu_pos_emb', False)
dec_transformer_kwargs['use_abs_pos_emb'] = dec_kwargs.pop('use_abs_pos_emb', True)
self.cross_attn_tokens_dropout = cross_attn_tokens_dropout # how many tokens from the encoder to dropout when cross attending from decoder - seen in a couple papers, including Perceiver AR - this will also be very effective regularization when cross attending to very long memories
self.encoder = TransformerWrapper(
**enc_transformer_kwargs,
return_only_embed = True,
attn_layers = Encoder(dim = dim, **enc_kwargs)
)
self.decoder = TransformerWrapper(
**dec_transformer_kwargs,
attn_layers = Decoder(dim = dim, cross_attend = True, **dec_kwargs)
)
if tie_token_emb:
self.decoder.token_emb = self.encoder.token_emb
self.decoder = AutoregressiveWrapper(self.decoder, ignore_index=ignore_index, pad_value=pad_value)
@torch.no_grad()
def generate(self, seq_in, seq_out_start, seq_len, mask = None, attn_mask = None, **kwargs):
encodings = self.encoder(seq_in, mask = mask, attn_mask = attn_mask, return_embeddings = True)
return self.decoder.generate(seq_out_start, seq_len, context = encodings, context_mask = mask, **kwargs)
def forward(self, src, tgt, mask = None, attn_mask = None, src_prepend_embeds = None):
enc = self.encoder(src, mask = mask, attn_mask = attn_mask, prepend_embeds = src_prepend_embeds, return_embeddings = True)
if exists(src_prepend_embeds) and exists(mask):
mask = pad_at_dim(mask, (src_prepend_embeds.shape[-2], 0), dim = -1, value = True)
if self.training and self.cross_attn_tokens_dropout > 0:
enc, mask = dropout_seq(enc, mask, self.cross_attn_tokens_dropout)
out = self.decoder(tgt, context = enc, context_mask = mask)
return out
#=================================================================================================================================
# autoregressive_wrapper.py
#=================================================================================================================================
from math import ceil, log
from typing import Tuple, Callable
import torch
from torch import nn, Tensor
from torch.nn import Module
import torch.nn.functional as F
from einops import rearrange, pack, unpack
def exists(val):
return val is not None
def default(val, d):
return val if exists(val) else d
def identity(t, *args, **kwargs):
return t
def join(arr, delimiter = ', '):
return delimiter.join(arr)
def cast_tuple(t, length = 1):
return t if isinstance(t, tuple) else (t,) * length
def eval_decorator(fn):
def inner(self, *args, **kwargs):
was_training = self.training
self.eval()
out = fn(self, *args, **kwargs)
self.train(was_training)
return out
return inner
# for variable lengthed prefixes
def align_right(t, lens, pad_id = 0):
batch, seq_len, device, dtype = *t.shape, t.device, t.dtype
assert lens.ndim == 1 and lens.shape[0] == batch
assert lens.amax() <= seq_len
pad_lens = seq_len - lens
max_pad_len = pad_lens.amax()
batch_arange = torch.arange(batch, device = device, dtype = torch.long)[..., None]
prompt_len_arange = torch.arange(seq_len, device = device, dtype = torch.long)
t = F.pad(t, (max_pad_len, 0), value = pad_id)
offset = max_pad_len - pad_lens
aligned = t[batch_arange, prompt_len_arange + offset[..., None]]
return aligned
# nucleus
def top_p(logits, thres = 0.9):
sorted_logits, sorted_indices = torch.sort(logits, descending = True)
cum_probs = torch.cumsum(F.softmax(sorted_logits, dim = -1), dim = -1)
sorted_indices_to_remove = cum_probs > thres
sorted_indices_to_remove = F.pad(sorted_indices_to_remove, (1, -1), value = False)
sorted_logits[sorted_indices_to_remove] = float('-inf')
return sorted_logits.scatter(1, sorted_indices, sorted_logits)
# topk
def top_k(logits, frac_num_tokens = 0.1, k = None):
num_tokens = logits.shape[-1]
k = default(k, ceil(frac_num_tokens * num_tokens))
k = min(k, num_tokens)
val, ind = torch.topk(logits, k)
probs = torch.full_like(logits, float('-inf'))
probs.scatter_(1, ind, val)
return probs
# top_a
def top_a(logits, min_p_pow = 2.0, min_p_ratio = 0.02):
probs = logits.softmax(dim = -1)
max_probs = probs.amax(dim = -1, keepdim = True)
limit = torch.pow(max_probs, min_p_pow) * min_p_ratio
return torch.where(probs < limit, float('-inf'), logits)
# min_p
# https://arxiv.org/abs/2407.01082
def min_p(logits, min_p = 0.1):
probs = logits.softmax(dim = -1)
max_probs = probs.amax(dim = -1, keepdim = True)
limit = min_p * max_probs
return torch.where(probs < limit, float('-inf'), logits)
# filter logits functions dict[str -> Callable]
FILTER_LOGITS_FN = dict(
top_p = top_p,
top_k = top_k,
top_a = top_a,
min_p = min_p
)
# contrastive decoding function
def contrastive_decode_fn(
expert_logits,
amateur_logits,
alpha = 0.1,
beta = 0.5
):
"""
Appendix A Algorithm 2
https://arxiv.org/abs/2309.09117
"""
cutoff = log(alpha) + expert_logits.amax(dim = -1, keepdim = True)
diffs = (1 + beta) * expert_logits - beta * amateur_logits
contrastive_decode_logits = diffs.masked_fill(expert_logits < cutoff, -torch.finfo(expert_logits.dtype).max)
return contrastive_decode_logits
# autoregressive wrapper class
class AutoregressiveWrapper(Module):
def __init__(
self,
net,
ignore_index = -100,
pad_value = 0,
mask_prob = 0.,
add_attn_z_loss = False
):
super().__init__()
self.pad_value = pad_value
self.ignore_index = ignore_index
self.net = net
self.max_seq_len = net.max_seq_len
# paper shows masking (MLM) in conjunction with autoregressive decoder-only training leads to big improvements https://arxiv.org/abs/2210.13432
assert mask_prob < 1.
self.mask_prob = mask_prob
# whether to add router z-loss
self.add_attn_z_loss = add_attn_z_loss
@torch.inference_mode()
@eval_decorator
def generate(
self,
prompts,
seq_len,
eos_token = None,
temperature = 1.,
prompt_lens: Tensor | None = None,
filter_logits_fn: str | Callable = top_k,
restrict_to_max_seq_len = True,
amateur_model: Module | Tuple[Module] | None = None,
filter_kwargs: dict = dict(),
contrastive_decode_kwargs: dict | Tuple[dict] = dict(
beta = 0.5,
alpha = 0.1
),
cache_kv = True,
return_prime=False,
verbose=True,
**kwargs
):
max_seq_len, greedy, device = self.max_seq_len, temperature == 0., prompts.device
prompts, ps = pack([prompts], '* n')
b, t = prompts.shape
# handle filter logits fn given as string
if isinstance(filter_logits_fn, str):
assert filter_logits_fn in FILTER_LOGITS_FN, f"only {join(FILTER_LOGITS_FN.keys())} are available"
filter_logits_fn = FILTER_LOGITS_FN[filter_logits_fn]
# handle variable lengthed prompts (prefixes)
seq_start_pos = None
if exists(prompt_lens):
prompts = align_right(prompts, prompt_lens, pad_id = self.pad_value)
seq_start_pos = t - prompt_lens
# output from which sampled tokens appended to
out = prompts
if verbose:
print("Generating sequence of max length:", seq_len)
# kv caches
cache = None
# if doing contrastive decoding, turn off filter automatically
if exists(amateur_model):
amateur_model = cast_tuple(amateur_model)
contrastive_decode_kwargs = cast_tuple(contrastive_decode_kwargs)
assert len(amateur_model) == len(contrastive_decode_kwargs)
amateur_caches = [None] * len(amateur_model)
filter_logits_fn = identity
for i, module in enumerate(amateur_model):
if isinstance(module, AutoregressiveWrapper):
amateur_model[i] = module.net
module.eval()
# sampling up to seq_len
for sl in range(seq_len):
if restrict_to_max_seq_len:
max_len_exceeded = out.shape[-1] > max_seq_len
assert not (cache_kv and max_len_exceeded and not self.net.can_cache_kv_outside_max_seq_len), 'the network cannot use cached key values when decoding outside the max sequence length. most likely because you are using absolute positional embedding. you can switch to rotary embeddings to resolve this issue'
x = out[:, -max_seq_len:]
if exists(cache):
for inter in cache.attn_intermediates:
if inter.layer_type == 'a':
inter.cached_kv = [t[..., -(max_seq_len - 1):, :] for t in inter.cached_kv]
logits, new_cache = self.net(
x,
return_intermediates = True,
cache = cache,
seq_start_pos = seq_start_pos,
**kwargs
)
if cache_kv and self.net.can_cache_kv:
cache = new_cache
logits = logits[:, -1]
# handle contrastive decoding, Li et al.
# https://arxiv.org/abs/2210.15097
if exists(amateur_model):
for i, (amateur, amateur_cache, amateur_contrastive_decode_kwargs) in enumerate(zip(amateur_model, amateur_caches, contrastive_decode_kwargs)):
amateur_logits, next_amateur_cache = amateur(
x,
return_intermediates = True,
cache = amateur_cache,
seq_start_pos = seq_start_pos,
**kwargs
)
amateur_logits = amateur_logits[:, -1]
assert amateur_logits.shape == logits.shape, 'logits dimension are not the same between amateur and expert model'
logits = contrastive_decode_fn(logits, amateur_logits, **amateur_contrastive_decode_kwargs)
if cache_kv and amateur.can_cache_kv:
amateur_caches[i] = next_amateur_cache
# filter by top_k, top_p (nucleus), top_a, or custom
if greedy:
sample = logits.argmax(dim = -1, keepdim = True)
else:
filtered_logits = filter_logits_fn(logits, **filter_kwargs)
probs = F.softmax(filtered_logits / temperature, dim=-1)
sample = torch.multinomial(probs, 1)
# concat sample
out = torch.cat((out, sample), dim=-1)
if verbose:
if sl % 32 == 0:
print(sl, '/', seq_len)
if not exists(eos_token):
continue
is_eos_tokens = (out == eos_token)
if is_eos_tokens.any(dim = -1).all():
if verbose:
print('Model called the end of sequence at:', sl, '/', seq_len)
break
if exists(eos_token):
# mask out everything after the eos tokens
shifted_is_eos_tokens = F.pad(is_eos_tokens, (1, -1))
mask = shifted_is_eos_tokens.float().cumsum(dim = -1) >= 1
out = out.masked_fill(mask, self.pad_value)
if return_prime:
out = out[:, :]
else:
out = out[:, t:]
out, = unpack(out, ps, '* n')
return out
@torch.inference_mode()
@eval_decorator
def generate_masked(
self,
prompts,
seq_len,
eos_token = None,
temperature = 1.,
prompt_lens: Tensor | None = None,
filter_logits_fn: str | Callable = top_k,
restrict_to_max_seq_len = True,
amateur_model: Module | Tuple[Module] | None = None,
filter_kwargs: dict = dict(),
contrastive_decode_kwargs: dict | Tuple[dict] = dict(
beta = 0.5,
alpha = 0.1
),
cache_kv = True,
return_prime=False,
verbose=True,
masked_token_ids: list[int] | Tensor | None = None,
**kwargs
):
max_seq_len, greedy, device = self.max_seq_len, temperature == 0., prompts.device
prompts, ps = pack([prompts], '* n')
b, t = prompts.shape
# handle filter logits fn given as string
if isinstance(filter_logits_fn, str):
assert filter_logits_fn in FILTER_LOGITS_FN, f"only {join(FILTER_LOGITS_FN.keys())} are available"
filter_logits_fn = FILTER_LOGITS_FN[filter_logits_fn]
# prepare masked token ids tensor (if any)
if masked_token_ids is not None:
if not torch.is_tensor(masked_token_ids):
masked_token_ids = torch.tensor(masked_token_ids, dtype=torch.long, device=device)
else:
masked_token_ids = masked_token_ids.to(device=device, dtype=torch.long)
# keep unique and non-negative
masked_token_ids = torch.unique(masked_token_ids)
# remove any ids that are out of range (optional safety)
# we can't know vocab size here, so we only remove negative ids
masked_token_ids = masked_token_ids[masked_token_ids >= 0]
else:
masked_token_ids = None
# handle variable lengthed prompts (prefixes)
seq_start_pos = None
if exists(prompt_lens):
prompts = align_right(prompts, prompt_lens, pad_id = self.pad_value)
seq_start_pos = t - prompt_lens
# output from which sampled tokens appended to
out = prompts
if verbose:
print("Generating sequence of max length:", seq_len)
# kv caches
cache = None
# if doing contrastive decoding, turn off filter automatically
if exists(amateur_model):
amateur_model = cast_tuple(amateur_model)
contrastive_decode_kwargs = cast_tuple(contrastive_decode_kwargs)
assert len(amateur_model) == len(contrastive_decode_kwargs)
amateur_caches = [None] * len(amateur_model)
filter_logits_fn = identity
for i, module in enumerate(amateur_model):
if isinstance(module, AutoregressiveWrapper):
amateur_model[i] = module.net
module.eval()
# sampling up to seq_len
for sl in range(seq_len):
if restrict_to_max_seq_len:
max_len_exceeded = out.shape[-1] > max_seq_len
assert not (cache_kv and max_len_exceeded and not self.net.can_cache_kv_outside_max_seq_len), 'the network cannot use cached key values when decoding outside the max sequence length. most likely because you are using absolute positional embedding. you can switch to rotary embeddings to resolve this issue'
x = out[:, -max_seq_len:]
if exists(cache):
for inter in cache.attn_intermediates:
if inter.layer_type == 'a':
inter.cached_kv = [t[..., -(max_seq_len - 1):, :] for t in inter.cached_kv]
logits, new_cache = self.net(
x,
return_intermediates = True,
cache = cache,
seq_start_pos = seq_start_pos,
**kwargs
)
if cache_kv and self.net.can_cache_kv:
cache = new_cache
logits = logits[:, -1]
# handle contrastive decoding, Li et al.
# https://arxiv.org/abs/2210.15097
if exists(amateur_model):
for i, (amateur, amateur_cache, amateur_contrastive_decode_kwargs) in enumerate(zip(amateur_model, amateur_caches, contrastive_decode_kwargs)):
amateur_logits, next_amateur_cache = amateur(
x,
return_intermediates = True,
cache = amateur_cache,
seq_start_pos = seq_start_pos,
**kwargs
)
amateur_logits = amateur_logits[:, -1]
assert amateur_logits.shape == logits.shape, 'logits dimension are not the same between amateur and expert model'
logits = contrastive_decode_fn(logits, amateur_logits, **amateur_contrastive_decode_kwargs)
if cache_kv and amateur.can_cache_kv:
amateur_caches[i] = next_amateur_cache
# --- apply masked token ids here (after contrastive decoding, before filtering/sampling)
if masked_token_ids is not None and masked_token_ids.numel() > 0:
# safety: ensure indices are within logits' vocab dimension
vocab_size = logits.shape[-1]
valid_masked = masked_token_ids[masked_token_ids < vocab_size]
if valid_masked.numel() > 0:
# set logits for masked ids to a very large negative value
neg_inf = -1e9
# logits shape: (batch, vocab)
logits[:, valid_masked] = neg_inf
# filter by top_k, top_p (nucleus), top_a, or custom
if greedy:
sample = logits.argmax(dim = -1, keepdim = True)
else:
filtered_logits = filter_logits_fn(logits, **filter_kwargs)
probs = F.softmax(filtered_logits / temperature, dim=-1)
sample = torch.multinomial(probs, 1)
# concat sample
out = torch.cat((out, sample), dim=-1)
if verbose:
if sl % 32 == 0:
print(sl, '/', seq_len)
if not exists(eos_token):
continue
is_eos_tokens = (out == eos_token)
if is_eos_tokens.any(dim = -1).all():
if verbose:
print('Model called the end of sequence at:', sl, '/', seq_len)
break
if exists(eos_token):
# mask out everything after the eos tokens
shifted_is_eos_tokens = F.pad(is_eos_tokens, (1, -1))
mask = shifted_is_eos_tokens.float().cumsum(dim = -1) >= 1
out = out.masked_fill(mask, self.pad_value)
if return_prime:
out = out[:, :]
else:
out = out[:, t:]
out, = unpack(out, ps, '* n')
return out
@torch.inference_mode()
@eval_decorator
def generate_biased(
self,
prompts,
seq_len,
eos_token = None,
temperature = 1.,
prompt_lens: Tensor | None = None,
filter_logits_fn: str | Callable = top_k,
restrict_to_max_seq_len = True,
amateur_model: Module | Tuple[Module] | None = None,
filter_kwargs: dict = dict(),
contrastive_decode_kwargs: dict | Tuple[dict] = dict(
beta = 0.5,
alpha = 0.1
),
cache_kv = True,
return_prime=False,
verbose=True,
logit_bias: dict | Tensor | None = None, # <-- new parameter
**kwargs
):
"""
Autoregressive generation with optional additive logit bias.
logit_bias:
- dict[token_id -> float] OR
- torch.Tensor of shape (vocab,) OR (batch, vocab)
"""
max_seq_len, greedy, device = self.max_seq_len, temperature == 0., prompts.device
prompts, ps = pack([prompts], '* n')
b, t = prompts.shape
# handle filter logits fn given as string
if isinstance(filter_logits_fn, str):
assert filter_logits_fn in FILTER_LOGITS_FN, f"only {join(FILTER_LOGITS_FN.keys())} are available"
filter_logits_fn = FILTER_LOGITS_FN[filter_logits_fn]
# handle variable lengthed prompts (prefixes)
seq_start_pos = None
if exists(prompt_lens):
prompts = align_right(prompts, prompt_lens, pad_id = self.pad_value)
seq_start_pos = t - prompt_lens
# output from which sampled tokens appended to
out = prompts
if verbose:
print("Generating sequence of max length:", seq_len)
# kv caches
cache = None
# if doing contrastive decoding, turn off filter automatically
if exists(amateur_model):
amateur_model = cast_tuple(amateur_model)
contrastive_decode_kwargs = cast_tuple(contrastive_decode_kwargs)
assert len(amateur_model) == len(contrastive_decode_kwargs)
amateur_caches = [None] * len(amateur_model)
filter_logits_fn = identity
for i, module in enumerate(amateur_model):
if isinstance(module, AutoregressiveWrapper):
amateur_model[i] = module.net
module.eval()
# -------------------------
# Prepare logit_bias (robust vocab-size detection)
# -------------------------
prepared_bias = None
lazy_build_bias_from_dict = None
if exists(logit_bias):
if isinstance(logit_bias, dict):
# try to determine vocab size from model without using logits
vocab_size = None
# common places to find vocab size
try:
if hasattr(self.net, "config") and getattr(self.net.config, "vocab_size", None) is not None:
vocab_size = int(self.net.config.vocab_size)
elif getattr(self.net, "vocab_size", None) is not None:
vocab_size = int(self.net.vocab_size)
else:
# try to infer from embedding / output projection weights
# huggingface style: get_output_embeddings() or embed_tokens or lm_head
get_out = getattr(self.net, "get_output_embeddings", None)
if callable(get_out) and get_out() is not None:
vocab_size = int(get_out().weight.shape[0])
elif hasattr(self.net, "embed_tokens"):
vocab_size = int(self.net.embed_tokens.weight.shape[0])
elif hasattr(self.net, "lm_head"):
vocab_size = int(self.net.lm_head.weight.shape[0])
except Exception:
vocab_size = None
if vocab_size is not None:
bias_vec = torch.zeros(int(vocab_size), device=device, dtype=torch.float32)
for tok, val in logit_bias.items():
tok_i = int(tok)
if tok_i < 0 or tok_i >= vocab_size:
raise IndexError(f"logit_bias token id {tok_i} out of range for vocab size {vocab_size}")
bias_vec[tok_i] = float(val)
prepared_bias = bias_vec
else:
# can't determine vocab size yet — build lazily after first logits are available
lazy_build_bias_from_dict = {int(k): float(v) for k, v in logit_bias.items()}
elif isinstance(logit_bias, torch.Tensor):
prepared_bias = logit_bias.to(device=device, dtype=torch.float32)
else:
raise TypeError("logit_bias must be dict or torch.Tensor")
# sampling up to seq_len
for sl in range(seq_len):
if restrict_to_max_seq_len:
max_len_exceeded = out.shape[-1] > max_seq_len
assert not (cache_kv and max_len_exceeded and not self.net.can_cache_kv_outside_max_seq_len), \
'the network cannot use cached key values when decoding outside the max sequence length. most likely because you are using absolute positional embedding. you can switch to rotary embeddings to resolve this issue'
x = out[:, -max_seq_len:]
if exists(cache):
for inter in cache.attn_intermediates:
if inter.layer_type == 'a':
inter.cached_kv = [t[..., -(max_seq_len - 1):, :] for t in inter.cached_kv]
else:
x = out
logits, new_cache = self.net(
x,
return_intermediates = True,
cache = cache,
seq_start_pos = seq_start_pos,
**kwargs
)
if cache_kv and self.net.can_cache_kv:
cache = new_cache
logits = logits[:, -1] # shape (batch, vocab)
# If we couldn't build the bias earlier because vocab size was unknown,
# build it now from the first logits tensor.
if lazy_build_bias_from_dict is not None:
vocab_size = logits.shape[-1]
bias_vec = torch.zeros(vocab_size, device=device, dtype=torch.float32)
for tok, val in lazy_build_bias_from_dict.items():
if tok < 0 or tok >= vocab_size:
raise IndexError(f"logit_bias token id {tok} out of range for vocab size {vocab_size}")
bias_vec[tok] = val
prepared_bias = bias_vec
lazy_build_bias_from_dict = None # only build once
# handle contrastive decoding, Li et al.
# https://arxiv.org/abs/2210.15097
if exists(amateur_model):
for i, (amateur, amateur_cache, amateur_contrastive_decode_kwargs) in enumerate(zip(amateur_model, amateur_caches, contrastive_decode_kwargs)):
amateur_logits, next_amateur_cache = amateur(
x,
return_intermediates = True,
cache = amateur_cache,
seq_start_pos = seq_start_pos,
**kwargs
)
amateur_logits = amateur_logits[:, -1]
assert amateur_logits.shape == logits.shape, 'logits dimension are not the same between amateur and expert model'
logits = contrastive_decode_fn(logits, amateur_logits, **amateur_contrastive_decode_kwargs)
if cache_kv and amateur.can_cache_kv:
amateur_caches[i] = next_amateur_cache
# -------------------------
# Apply logit bias if provided
# -------------------------
if exists(prepared_bias):
# prepared_bias can be (vocab,) or (batch, vocab)
if prepared_bias.dim() == 1:
# broadcast to batch
logits = logits + prepared_bias.unsqueeze(0)
elif prepared_bias.dim() == 2:
# expect shape (batch, vocab)
if prepared_bias.shape[0] != logits.shape[0]:
raise ValueError("logit_bias tensor batch size must match logits batch size")
logits = logits + prepared_bias
else:
raise ValueError("logit_bias tensor must be 1D (vocab,) or 2D (batch, vocab)")
# filter by top_k, top_p (nucleus), top_a, or custom
if greedy:
sample = logits.argmax(dim = -1, keepdim = True)
else:
filtered_logits = filter_logits_fn(logits, **filter_kwargs)
probs = F.softmax(filtered_logits / temperature, dim=-1)
sample = torch.multinomial(probs, 1)
# concat sample
out = torch.cat((out, sample), dim=-1)
if verbose:
if sl % 32 == 0:
print(sl, '/', seq_len)
if not exists(eos_token):
continue
is_eos_tokens = (out == eos_token)
if is_eos_tokens.any(dim = -1).all():
if verbose:
print('Model called the end of sequence at:', sl, '/', seq_len)
break
if exists(eos_token):
# mask out everything after the eos tokens
shifted_is_eos_tokens = F.pad(is_eos_tokens, (1, -1))
mask = shifted_is_eos_tokens.float().cumsum(dim = -1) >= 1
out = out.masked_fill(mask, self.pad_value)
if return_prime:
out = out[:, :]
else:
out = out[:, t:]
out, = unpack(out, ps, '* n')
return out
@torch.inference_mode()
@eval_decorator
def generate_advanced(
self,
prompts,
seq_len,
eos_token = None,
temperature = 1.,
prompt_lens: Tensor | None = None,
filter_logits_fn: str | Callable = top_k,
restrict_to_max_seq_len = True,
amateur_model: Module | Tuple[Module] | None = None,
filter_kwargs: dict = dict(),
contrastive_decode_kwargs: dict | Tuple[dict] = dict(
beta = 0.5,
alpha = 0.1
),
cache_kv = True,
return_prime=False,
verbose=True,
# --- new generation options ---
logits_bias: dict | None = None, # {token_id: bias_value} where bias_value is float or Tensor(batch,)
masked_tokens: list | Tensor | None = None, # list of token ids to forbid
# --- binary classifier mode ---
binary_classifier: bool = False, # if True, run classifier snippet and return preds, probs
classifier_model: Module | None = None, # model to use for binary classification
batches: list | None = None, # iterable of input batches for classifier_model
threshold: float = 0.5, # threshold for converting probs to preds
classifier_device: torch.device | None = None,
# -----------------
**kwargs
):
# If binary classifier mode requested, run the provided snippet and return early.
if binary_classifier:
assert classifier_model is not None, "classifier_model must be provided when binary_classifier=True"
assert batches is not None, "batches (iterable of input tensors) must be provided when binary_classifier=True"
device = classifier_device if classifier_device is not None else (prompts.device if exists(prompts) else torch.device('cpu'))
all_probs = []
all_preds = []
classifier_model.eval()
with torch.no_grad():
for x in batches:
x = x.to(device)
logits = classifier_model(x).squeeze() # [B]
probs = torch.sigmoid(logits) # [B]
preds = (probs >= threshold).long()
all_probs.extend(probs.cpu().tolist())
all_preds.extend(preds.cpu().tolist())
return all_preds, all_probs
# --- normal generation path below ---
max_seq_len, greedy, device = self.max_seq_len, temperature == 0., prompts.device
prompts, ps = pack([prompts], '* n')
b, t = prompts.shape
# handle filter logits fn given as string
if isinstance(filter_logits_fn, str):
assert filter_logits_fn in FILTER_LOGITS_FN, f"only {join(FILTER_LOGITS_FN.keys())} are available"
filter_logits_fn = FILTER_LOGITS_FN[filter_logits_fn]
# handle variable lengthed prompts (prefixes)
seq_start_pos = None
if exists(prompt_lens):
prompts = align_right(prompts, prompt_lens, pad_id = self.pad_value)
seq_start_pos = t - prompt_lens
# output from which sampled tokens appended to
out = prompts
if verbose:
print("Generating sequence of max length:", seq_len)
# kv caches
cache = None
# if doing contrastive decoding, turn off filter automatically
if exists(amateur_model):
amateur_model = cast_tuple(amateur_model)
contrastive_decode_kwargs = cast_tuple(contrastive_decode_kwargs)
assert len(amateur_model) == len(contrastive_decode_kwargs)
amateur_caches = [None] * len(amateur_model)
filter_logits_fn = identity
for i, module in enumerate(amateur_model):
if isinstance(module, AutoregressiveWrapper):
amateur_model[i] = module.net
module.eval()
# normalize inputs for new args
if exists(logits_bias):
assert isinstance(logits_bias, dict), "logits_bias must be a dict {token_id: bias_value}"
if exists(masked_tokens):
if isinstance(masked_tokens, torch.Tensor):
masked_tokens = masked_tokens.tolist()
else:
masked_tokens = list(masked_tokens)
# sampling up to seq_len
for sl in range(seq_len):
if restrict_to_max_seq_len:
max_len_exceeded = out.shape[-1] > max_seq_len
assert not (cache_kv and max_len_exceeded and not self.net.can_cache_kv_outside_max_seq_len), 'the network cannot use cached key values when decoding outside the max sequence length. most likely because you are using absolute positional embedding. you can switch to rotary embeddings to resolve this issue'
x = out[:, -max_seq_len:]
if exists(cache):
for inter in cache.attn_intermediates:
if inter.layer_type == 'a':
inter.cached_kv = [t[..., -(max_seq_len - 1):, :] for t in inter.cached_kv]
logits, new_cache = self.net(
x,
return_intermediates = True,
cache = cache,
seq_start_pos = seq_start_pos,
**kwargs
)
if cache_kv and self.net.can_cache_kv:
cache = new_cache
logits = logits[:, -1] # shape: (batch, vocab)
# handle contrastive decoding, Li et al.
if exists(amateur_model):
for i, (amateur, amateur_cache, amateur_contrastive_decode_kwargs) in enumerate(zip(amateur_model, amateur_caches, contrastive_decode_kwargs)):
amateur_logits, next_amateur_cache = amateur(
x,
return_intermediates = True,
cache = amateur_cache,
seq_start_pos = seq_start_pos,
**kwargs
)
amateur_logits = amateur_logits[:, -1]
assert amateur_logits.shape == logits.shape, 'logits dimension are not the same between amateur and expert model'
logits = contrastive_decode_fn(logits, amateur_logits, **amateur_contrastive_decode_kwargs)
if cache_kv and amateur.can_cache_kv:
amateur_caches[i] = next_amateur_cache
# --- APPLY LOGITS BIAS AND MASKING HERE (before filtering / softmax) ---
# logits_bias: dict {token_id: bias_value} where bias_value is float or Tensor(batch,)
if exists(logits_bias):
# apply per-token bias updates directly to logits to avoid allocating full vocab bias tensor
for tok_id, bias_val in logits_bias.items():
# support scalar or per-batch tensor
if isinstance(bias_val, torch.Tensor):
if bias_val.dim() == 1 and bias_val.shape[0] == b:
bias_to_add = bias_val.to(device)
else:
bias_to_add = bias_val.to(device).view(1).expand(b)
else:
bias_to_add = torch.tensor(float(bias_val), device=device).view(1).expand(b)
logits[:, int(tok_id)] = logits[:, int(tok_id)] + bias_to_add
# masked_tokens: list of token ids to forbid
if exists(masked_tokens) and len(masked_tokens) > 0:
NEG_INF = -1e9
idx = torch.tensor(masked_tokens, device=device, dtype=torch.long)
idx = idx[(idx >= 0) & (idx < logits.shape[-1])]
if idx.numel() > 0:
logits.index_fill_(dim=-1, index=idx, value=NEG_INF)
# -------------------------------------------------------------------
# filter by top_k, top_p (nucleus), top_a, or custom
if greedy:
sample = logits.argmax(dim = -1, keepdim = True)
else:
filtered_logits = filter_logits_fn(logits, **filter_kwargs)
probs = F.softmax(filtered_logits / temperature, dim=-1)
sample = torch.multinomial(probs, 1)
# concat sample
out = torch.cat((out, sample), dim=-1)
if verbose:
if sl % 32 == 0:
print(sl, '/', seq_len)
if not exists(eos_token):
continue
is_eos_tokens = (out == eos_token)
if is_eos_tokens.any(dim = -1).all():
if verbose:
print('Model called the end of sequence at:', sl, '/', seq_len)
break
if exists(eos_token):
# mask out everything after the eos tokens
shifted_is_eos_tokens = F.pad(is_eos_tokens, (1, -1))
mask = shifted_is_eos_tokens.float().cumsum(dim = -1) >= 1
out = out.masked_fill(mask, self.pad_value)
if return_prime:
out = out[:, :]
else:
out = out[:, t:]
out, = unpack(out, ps, '* n')
return out
def compute_accuracy(self, logits, labels):
out = torch.argmax(logits, dim=-1)
out = out.flatten()
labels = labels.flatten()
mask = (labels != self.ignore_index) # can also be self.pad_value (your choice)
out = out[mask]
labels = labels[mask]
num_right = (out == labels)
num_right = torch.sum(num_right).type(torch.float32)
acc = num_right / len(labels)
return acc
def forward(self, x, return_outputs = False, **kwargs):
seq, ignore_index, add_attn_z_loss = x.shape[1], self.ignore_index, self.add_attn_z_loss
inp, target = x[:, :-1], x[:, 1:]
inp = torch.where(inp == ignore_index, self.pad_value, inp)
if self.mask_prob > 0.:
rand = torch.randn(inp.shape, device = x.device)
rand[:, 0] = -torch.finfo(rand.dtype).max # first token should not be masked out
num_mask = min(int(seq * self.mask_prob), seq - 1)
indices = rand.topk(num_mask, dim = -1).indices
mask = ~torch.zeros_like(inp).scatter(1, indices, 1.).bool()
kwargs.update(self_attn_kv_mask = mask)
logits, cache = self.net(
inp,
return_intermediates = True,
return_attn_z_loss = add_attn_z_loss,
**kwargs
)
acc = self.compute_accuracy(logits, target)
loss_fn = F.cross_entropy if not self.net.output_is_log_prob else F.nll_loss
loss = loss_fn(
rearrange(logits, 'b n c -> b c n'),
target,
ignore_index = ignore_index
)
if add_attn_z_loss:
loss = loss + cache.attn_z_loss
if not return_outputs:
return loss, acc
return loss, acc, logits, cache
@torch.inference_mode()
@eval_decorator
def generate_expert(
self,
prompts,
seq_len,
eos_token = None,
temperature = 1.,
prompt_lens: Tensor | None = None,
filter_logits_fn: str | Callable = top_k,
restrict_to_max_seq_len = True,
amateur_model: Module | Tuple[Module] | None = None,
filter_kwargs: dict = dict(),
contrastive_decode_kwargs: dict | Tuple[dict] = dict(
beta = 0.5,
alpha = 0.1
),
cache_kv = True,
return_prime=False,
verbose=True,
# --- new controls ---
token_type_ids: torch.LongTensor | None = None, # [vocab]
type_temperatures: dict | None = None, # {type_id: temp}
type_biases: dict | None = None, # {type_id: bias}
repetition_window: int = 64,
repetition_penalty_per_type: dict | None = None, # {type_id: penalty_scale}
rare_types: set | None = None, # e.g. {4, 5}
rare_type_boost: float = 0.0, # small, e.g. 0.5
entropy_threshold: float = 2.0, # when below, boost rare types
# --- masked tokens option ---
forbidden_token_ids: torch.LongTensor | torch.BoolTensor | None = None,
forbidden_value: float = -1e9,
**kwargs
):
max_seq_len, greedy, device = self.max_seq_len, temperature == 0., prompts.device
prompts, ps = pack([prompts], '* n')
b, t = prompts.shape
# handle filter logits fn given as string
if isinstance(filter_logits_fn, str):
assert filter_logits_fn in FILTER_LOGITS_FN, f"only {join(FILTER_LOGITS_FN.keys())} are available"
filter_logits_fn = FILTER_LOGITS_FN[filter_logits_fn]
# handle variable lengthed prompts (prefixes)
seq_start_pos = None
if exists(prompt_lens):
prompts = align_right(prompts, prompt_lens, pad_id = self.pad_value)
seq_start_pos = t - prompt_lens
# output from which sampled tokens appended to
out = prompts
if verbose:
print("Generating sequence of max length:", seq_len)
# kv caches
cache = None
# if doing contrastive decoding, turn off filter automatically
if exists(amateur_model):
amateur_model = cast_tuple(amateur_model)
contrastive_decode_kwargs = cast_tuple(contrastive_decode_kwargs)
assert len(amateur_model) == len(contrastive_decode_kwargs)
amateur_caches = [None] * len(amateur_model)
filter_logits_fn = identity
for i, module in enumerate(amateur_model):
if isinstance(module, AutoregressiveWrapper):
amateur_model[i] = module.net
module.eval()
# precompute some tensors for type controls
if token_type_ids is not None:
token_type_ids = token_type_ids.to(device)
# build per-token temperature and bias vectors if provided
per_token_temp = None
if type_temperatures is not None and len(type_temperatures) > 0:
per_token_temp = torch.ones_like(token_type_ids, dtype=torch.float32)
for type_id, temp_val in type_temperatures.items():
per_token_temp[token_type_ids == type_id] = float(temp_val)
per_token_bias = None
if type_biases is not None and len(type_biases) > 0:
per_token_bias = torch.zeros_like(token_type_ids, dtype=torch.float32)
for type_id, bias_val in type_biases.items():
per_token_bias[token_type_ids == type_id] = float(bias_val)
# repetition penalty per type
per_type_rep_penalty = repetition_penalty_per_type or {}
# rare type mask
rare_type_mask = None
if rare_types is not None and len(rare_types) > 0:
rare_type_mask = torch.zeros_like(token_type_ids, dtype=torch.bool)
for rt in rare_types:
rare_type_mask |= (token_type_ids == rt)
else:
per_token_temp = None
per_token_bias = None
per_type_rep_penalty = {}
rare_type_mask = None
# prepare forbidden mask if provided
# We'll lazily convert forbidden_token_ids into a boolean mask of shape [b, vocab]
forbidden_mask_per_batch = None
if forbidden_token_ids is not None:
# If it's a LongTensor of ids (1D)
if forbidden_token_ids.dtype in (torch.int64, torch.int32):
# create a [vocab] bool mask from ids
vocab_size = self.net.config.vocab_size if hasattr(self.net, 'config') else None
# If we can't infer vocab_size, we'll infer from token_type_ids if available
if vocab_size is None and token_type_ids is not None:
vocab_size = token_type_ids.shape[0]
assert vocab_size is not None, "Cannot infer vocab size for forbidden_token_ids; provide a boolean mask instead."
mask = torch.zeros(vocab_size, dtype=torch.bool, device=device)
ids = forbidden_token_ids.to(device)
mask[ids.clamp(0, vocab_size-1)] = True
forbidden_mask_per_batch = mask.unsqueeze(0).expand(b, -1) # [b, vocab]
elif forbidden_token_ids.dtype == torch.bool:
# could be [vocab] or [b, vocab]
if forbidden_token_ids.dim() == 1:
forbidden_mask_per_batch = forbidden_token_ids.to(device).unsqueeze(0).expand(b, -1)
elif forbidden_token_ids.dim() == 2:
assert forbidden_token_ids.shape[0] == b, "forbidden_token_ids batch dimension must match prompts batch size"
forbidden_mask_per_batch = forbidden_token_ids.to(device)
else:
raise ValueError("forbidden_token_ids boolean mask must be 1D [vocab] or 2D [b, vocab]")
else:
raise TypeError("forbidden_token_ids must be LongTensor of ids or BoolTensor mask")
# sampling up to seq_len
for sl in range(seq_len):
if restrict_to_max_seq_len:
max_len_exceeded = out.shape[-1] > max_seq_len
assert not (cache_kv and max_len_exceeded and not self.net.can_cache_kv_outside_max_seq_len), \
'the network cannot use cached key values when decoding outside the max sequence length. ' \
'most likely because you are using absolute positional embedding. ' \
'you can switch to rotary embeddings to resolve this issue'
x = out[:, -max_seq_len:]
if exists(cache):
for inter in cache.attn_intermediates:
if inter.layer_type == 'a':
inter.cached_kv = [t[..., -(max_seq_len - 1):, :] for t in inter.cached_kv]
logits, new_cache = self.net(
x,
return_intermediates = True,
cache = cache,
seq_start_pos = seq_start_pos,
**kwargs
)
if cache_kv and self.net.can_cache_kv:
cache = new_cache
logits = logits[:, -1] # [b, vocab]
# handle contrastive decoding
if exists(amateur_model):
for i, (amateur, amateur_cache, amateur_contrastive_decode_kwargs) in enumerate(
zip(amateur_model, amateur_caches, contrastive_decode_kwargs)
):
amateur_logits, next_amateur_cache = amateur(
x,
return_intermediates = True,
cache = amateur_cache,
seq_start_pos = seq_start_pos,
**kwargs
)
amateur_logits = amateur_logits[:, -1]
assert amateur_logits.shape == logits.shape, \
'logits dimension are not the same between amateur and expert model'
logits = contrastive_decode_fn(logits, amateur_logits, **amateur_contrastive_decode_kwargs)
if cache_kv and amateur.can_cache_kv:
amateur_caches[i] = next_amateur_cache
# --------- STRUCTURED LOGIT SHAPING (no training) ---------
if token_type_ids is not None:
# 1) per-token bias (type-aware)
if per_token_bias is not None:
logits = logits + per_token_bias # broadcast [vocab]
# 2) repetition penalty per type (context-aware)
if repetition_window > 0 and len(per_type_rep_penalty) > 0:
# look at recent tokens
recent = out[:, -repetition_window:].to(device) # [b, w]
# map to types
recent_types = token_type_ids[recent] # [b, w]
# for each type, compute frequency and apply penalty
# we do this per batch element
for bi in range(b):
types_b = recent_types[bi] # [w]
if types_b.numel() == 0:
continue
# count occurrences per type id present in penalties
for type_id, penalty_scale in per_type_rep_penalty.items():
# penalty_scale > 1.0 means stronger penalty
mask = (types_b == type_id)
if mask.any():
freq = mask.float().mean().item() # 0..1
if freq > 0.0:
# build a penalty vector for this type
type_mask = (token_type_ids == type_id) # [vocab]
# subtract a penalty proportional to freq
# (log-space penalty)
logits[bi, type_mask] /= (1.0 + freq * (penalty_scale - 1.0))
# 3) entropy-based rare-type boost (gentle, context-aware)
if rare_type_mask is not None and rare_type_boost > 0.0:
# compute current probs & entropy (before global temperature)
probs_raw = F.softmax(logits, dim=-1) # [b, vocab]
log_probs_raw = torch.log(probs_raw + 1e-9)
entropy = -(probs_raw * log_probs_raw).sum(dim=-1) # [b]
# for low-entropy states, gently boost rare types
low_entropy = entropy < entropy_threshold
if low_entropy.any():
# boost only for those batch elements
boost_vec = torch.zeros_like(logits)
boost_vec[:, rare_type_mask] = rare_type_boost
logits = torch.where(
low_entropy.unsqueeze(-1),
logits + boost_vec,
logits
)
# 4) per-token temperature (type-aware)
# apply before global temperature
if per_token_temp is not None:
# divide logits by per-token temperature
# (smaller temp -> sharper distribution for that type)
logits = logits / per_token_temp
# --------- APPLY FORBIDDEN TOKEN MASK ---------
if forbidden_mask_per_batch is not None:
# ensure shapes match
assert forbidden_mask_per_batch.shape[0] == b and forbidden_mask_per_batch.shape[1] == logits.shape[-1], \
"forbidden mask shape must be [b, vocab]"
# set logits for forbidden tokens to a large negative value
logits = logits.masked_fill(forbidden_mask_per_batch, float(forbidden_value))
# ----------------------------------------------------------
# filter by top_k, top_p (nucleus), top_a, or custom
if greedy:
sample = logits.argmax(dim = -1, keepdim = True)
else:
filtered_logits = filter_logits_fn(logits, **filter_kwargs)
probs = F.softmax(filtered_logits / temperature, dim=-1)
sample = torch.multinomial(probs, 1)
# concat sample
out = torch.cat((out, sample), dim=-1)
if verbose:
if sl % 32 == 0:
print(sl, '/', seq_len)
if not exists(eos_token):
continue
is_eos_tokens = (out == eos_token)
if is_eos_tokens.any(dim = -1).all():
if verbose:
print('Model called the end of sequence at:', sl, '/', seq_len)
break
if exists(eos_token):
# mask out everything after the eos tokens
shifted_is_eos_tokens = F.pad(is_eos_tokens, (1, -1))
mask = shifted_is_eos_tokens.float().cumsum(dim = -1) >= 1
out = out.masked_fill(mask, self.pad_value)
if return_prime:
out = out[:, :]
else:
out = out[:, t:]
out, = unpack(out, ps, '* n')
return out
#=========================================================================================
# Binary classifier fuctions
class ClsInferenceDataset(Dataset):
"""
Dataset for pairs (src_seq, label).
src_seq: list of token IDs (ints).
label: single int or float (0 or 1).
"""
def __init__(self, data_pairs):
self.data_pairs = data_pairs
def __len__(self):
return len(self.data_pairs)
def __getitem__(self, idx):
src_seq = self.data_pairs[idx]
x = torch.tensor(src_seq, dtype=torch.long)
return x
def build_cls_model(num_tokens=18819,
max_seq_len=1024,
logits_dim=1,
use_cls_token=True,
squeeze_out_last_dim=True,
dim=1024,
depth=8,
heads=8,
device='cuda'
):
"""
Constructs the Transformer model that outputs a single logit per input.
"""
model = TransformerWrapper(
num_tokens=num_tokens,
max_seq_len=max_seq_len,
logits_dim=logits_dim,
use_cls_token=use_cls_token,
squeeze_out_last_dim = squeeze_out_last_dim,
attn_layers=Encoder(dim=dim,
depth=depth,
heads=heads
)
)
return model.to(device)
def load_cls_model(checkpoint_path, device='cuda'):
"""
Rebuilds the architecture, loads weights.
"""
model = build_cls_model(device=device)
state = torch.load(checkpoint_path, map_location=device)
model.load_state_dict(state)
model.to(device).eval()
return model
def cls_predict(model,
seqs,
batch_size=8,
threshold=0.5,
seq_len=1024,
pad_token=18818,
device='cuda'
):
"""
Returns two lists:
- probs: float probabilities
- preds: int 0/1 predictions
"""
def collate_fn(batch):
# batch: list of sequences (list/1D-tensor)
tensors = [s[:seq_len].detach().clone() for s in batch]
max_len = min(seq_len, max(t.size(0) for t in tensors))
padded = torch.full((len(tensors), max_len), pad_token, dtype=torch.long)
for i, t in enumerate(tensors):
L = t.size(0)
padded[i, :L] = t
return padded
ds = ClsInferenceDataset(seqs)
loader = DataLoader(ds, batch_size=batch_size, shuffle=False, collate_fn=collate_fn)
all_probs = []
all_preds = []
model.to(device)
model.eval()
with torch.inference_mode():
for x in loader:
x = x.to(device) # [B, L] (truncated & padded)
logits = model(x).squeeze() # [B]
probs = torch.sigmoid(logits) # [B]
preds = (probs >= threshold).long()
probs = probs.cpu().tolist()
preds = preds.cpu().tolist()
if type(preds) == list:
all_probs.extend(probs)
all_preds.extend(preds)
else:
all_probs.append(probs)
all_preds.append(preds)
return all_preds, all_probs
#=================================================================================================================================
# This is the end of x_transformer_2_3_1 Python module
#================================================================================================================================= |