| # Grok Synthetic Generation Prompt For 400GB Dataset Target |
|
|
| Give this document to each interactive Grok session when more synthetic data is |
| needed. Grok should generate only staging JSONL. Final dedup, balancing, |
| checkpointing, Hugging Face upload, and Google Drive backup are handled outside |
| Grok. |
|
|
| ## Mission |
|
|
| Generate high-quality, non-duplicated synthetic code training records for the |
| FABLE 5 code completion and FIM dataset. Output JSONL only. The target system |
| will combine this synthetic stream with public real-code sources into twenty |
| balanced 20GB single-JSONL checkpoints, for 400GB total mirrored to Hugging Face |
| and Google Drive. |
|
|
| ## Absolute Safety Rules |
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|
| - Do not load the whole corpus into memory. |
| - Do not scan all existing dataset files. |
| - Do not build an in-memory global set of hashes. |
| - Write small JSONL files incrementally. |
| - Keep one process below 1.2GiB RSS; stop immediately above 1.5GiB RSS. |
| - Stop if disk free space drops below 95GiB. |
| - Never write into `dataset/`; only write staging output. |
| - Never delete source datasets. |
| - Never create binary, parquet, sqlite, zip, tar, or cache files unless |
| explicitly requested. |
|
|
| ## Output Directory |
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|
| Write generated files under: |
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|
| ```text |
| data/grok_outbox/<run_id>.inprogress/ |
| ``` |
|
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| When a run is complete and all files are flushed, rename the folder to: |
|
|
| ```text |
| data/grok_outbox/<run_id>.final/ |
| ``` |
|
|
| Use file names: |
|
|
| ```text |
| w<worker>-part-<number>.jsonl |
| ``` |
|
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| Each file should be about 512MiB to 1GiB. Smaller files are acceptable. Do not |
| create one huge file. |
|
|
| ## JSONL Schema |
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| Each line must be one UTF-8 JSON object: |
|
|
| ```json |
| {"text":"...","domain":"code_fim","difficulty":"medium","meta":{"lang":"python","source":"grok","mode":"psm","synthetic_kind":"api_usage"}} |
| ``` |
|
|
| Required fields: |
|
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| - `text`: non-empty training string. |
| - `domain`: `code_fim` or `code_gen`. |
| - `difficulty`: `easy`, `medium`, or `hard`. |
| - `meta.lang`: one of the target languages. |
| - `meta.source`: always `grok`. |
| - `meta.synthetic_kind`: one of the categories below. |
|
|
| FIM records must use one of: |
|
|
| ```text |
| <|fim_prefix|>{prefix}<|fim_suffix|>{suffix}<|fim_middle|>{middle} |
| <|fim_suffix|>{suffix}<|fim_prefix|>{prefix}<|fim_middle|>{middle} |
| ``` |
|
|
| Do not include markdown fences inside `text` unless the training record is |
| intentionally a markdown/documentation example. |
|
|
| ## Target Mix For Synthetic Output |
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| Across each Grok run, approximate this mix: |
|
|
| | Category | Share | |
| | --- | ---: | |
| | Realistic repository FIM | 35% | |
| | API/library usage FIM | 20% | |
| | Bug fix / refactor FIM | 15% | |
| | Tests and edge cases | 10% | |
| | Algorithmic code generation | 8% | |
| | Systems/concurrency/performance | 7% | |
| | Documentation/comment aware completion | 5% | |
|
|
| Language mix: |
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| | Language | Share | |
| | --- | ---: | |
| | Python | 24% | |
| | TypeScript/JavaScript | 22% | |
| | Java | 14% | |
| | Rust | 12% | |
| | C/C++ | 12% | |
| | Go | 8% | |
| | Kotlin/Swift/C# mixed | 8% | |
|
|
| Difficulty mix: |
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| | Difficulty | Share | |
| | --- | ---: | |
| | easy | 20% | |
| | medium | 50% | |
| | hard | 30% | |
|
|
| FIM mode mix: |
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| | Mode | Share | |
| | --- | ---: | |
| | psm | 70% | |
| | spm | 20% | |
| | gen | 10% | |
|
|
| ## Quality Bar |
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| Generate useful code that looks like it came from real projects: |
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| - Complete functions, classes, modules, tests, configs, and migrations. |
| - Realistic imports and dependency boundaries. |
| - Meaningful variable names and project structure. |
| - Edge cases, error handling, logging, type hints, and validation. |
| - Korean and English comments are allowed, but code should remain idiomatic. |
| - Include tests for tricky logic where appropriate. |
| - Prefer medium-length examples. Avoid tiny toy snippets as bulk data. |
|
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| Reject or avoid: |
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| - Near-duplicate templates with only renamed variables. |
| - Repeated boilerplate. |
| - Fake secrets, API keys, private keys, passwords, tokens, or credentials. |
| - Copyrighted source copied from real projects. |
| - Broken syntax unless the record is explicitly a bug-fix example and the |
| completion repairs it. |
| - Long natural-language explanations replacing code. |
|
|
| ## Dedup Discipline Inside Grok |
|
|
| Within a single Grok run, keep a small bounded rolling hash set only for recent |
| outputs to avoid immediate repeats. Do not attempt global dedup across all |
| datasets. The external pipeline handles global out-of-core dedup. |
|
|
| For each generated record, vary at least three of: |
|
|
| - language |
| - library/API family |
| - problem shape |
| - repository path |
| - data structure |
| - error handling |
| - tests |
| - FIM split location |
| - naming style |
|
|
| ## Record Examples |
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| Good `meta.synthetic_kind` values: |
|
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| - `repository_fim` |
| - `api_usage` |
| - `bugfix_refactor` |
| - `unit_tests` |
| - `algorithmic` |
| - `systems_concurrency` |
| - `performance` |
| - `docs_comments` |
| - `config_infra` |
| - `data_processing` |
|
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| Example shape: |
|
|
| ```json |
| {"text":"<|fim_prefix|>def normalize_path(raw: str) -> str:\n cleaned = raw.strip()\n<|fim_suffix|>\n return cleaned\n<|fim_middle|> if not cleaned:\n raise ValueError(\"path is empty\")\n","domain":"code_fim","difficulty":"easy","meta":{"lang":"python","source":"grok","mode":"psm","synthetic_kind":"bugfix_refactor","path":"src/pathing/normalize.py"}} |
| ``` |
|
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| ## Run Completion Report |
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| At the end of a run, write: |
|
|
| ```text |
| data/grok_outbox/<run_id>.final/RUN_REPORT.md |
| ``` |
|
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| Include: |
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| - total files |
| - total bytes |
| - approximate records |
| - category counts |
| - language counts |
| - difficulty counts |
| - max observed RSS |
| - disk free at start and end |
| - any files intentionally skipped or stopped early |
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| The report is metadata only. Do not put dataset records in the report. |
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