--- license: cc-by-4.0 language: - en pretty_name: Speculative Decoding Papers size_categories: - n<1K task_categories: - text-classification - text-generation tags: - arxiv - semantic-scholar - papers - research - machine-learning configs: - config_name: default data_files: data.jsonl --- # Speculative Decoding Papers โ€” FineSet A research-paper dataset on **Speculative Decoding Papers**, assembled, deduplicated, and quality-scored by [FineSet](https://fineset.io) from arXiv and Semantic Scholar. > **๐Ÿ“ธ This is a dated snapshot โ€” generated 2026-06-19.** > It is not auto-updated. Research on **Speculative Decoding Papers** moves fast โ€” new papers land on arXiv every > week. Want this same dataset **refreshed daily**, on a topic *you* choose? See the bottom. โ†“ ## Why this dataset - **Quality-scored:** `quality_score` float (0โ€“1), blends citations with recency + code/venue signals โ€” filter out the noise - **Papers with code:** 134 flagged via `has_code` โ€” find reproducible work fast - **Deduplicated:** arXiv + Semantic Scholar cross-referenced, duplicate records merged - **Clean JSONL:** 485 records, one per line, normalized fields โ€” no encoding garbage ## Dataset details - **Records:** 485 - **Date range:** 2022โ€“2026 - **Snapshot date:** 2026-06-19 (frozen โ€” see note above) - **Sources:** arXiv, Semantic Scholar (cross-referenced, duplicates merged) - **arXiv categories:** cs.LG, cs.CL - **Quality scoring:** citations + recency + code/venue blend, 0โ€“1 (p50=0.35, p90=0.61) - **Format:** JSONL, one record per line ## Fields | Field | Type | Description | |---|---|---| | id | string | Deterministic SHA256 record id | | sources | list | Which sources contributed (`arxiv`, `semantic_scholar`) | | title | string | Paper title | | abstract | string | Full abstract | | authors | list | Author names | | categories | list | arXiv category codes | | fields_of_study | list | Semantic Scholar field tags | | published_date | string | ISO 8601 date | | url | string | arXiv abstract URL | | pdf_url | string\|null | Open-access PDF if available | | arxiv_id | string\|null | arXiv identifier | | doi | string\|null | DOI if available | | citation_count | int | Citation count (Semantic Scholar) | | influential_citation_count | int | Influential citations (Semantic Scholar) | | has_code | bool | Code repo detected in the arXiv comment | | code_url | string\|null | GitHub URL if detected | | venue | string\|null | Publication venue | | quality_score | float | 0โ€“1, blended (citations + recency + code/venue) | ## Quality score methodology `quality_score = max(impact, freshness)`, clamped to [0, 1], where: - **impact** = `max( log10(citations+1)/4 , log10(influential_citations+1)/2 )` โ€” realized impact (0.5 at 100 citations, ~0.75 at 1,000, 1.0 at 10,000+). - **freshness** = `recency ร— (0.35 + 0.30ยทhas_code + 0.20ยทhas_venue)` โ€” a baseline for recent papers (so a strong paper published this week isn't scored 0 just for lacking citations), where `recency` is 1.0 for papers โ‰ค60 days old and decays linearly to 0 by ~18 months. Old highly-cited papers score on impact; brand-new papers score on freshness; old uncited papers score ~0. Useful for filtering training data by quality, not just age. ## ๐Ÿ‘‰ Want this on YOUR topic, updated daily? This snapshot is frozen at 2026-06-19. The live FineSet pipeline keeps a dataset like this **refreshed every day** on whatever topic you describe โ€” new papers in, dedup and quality scoring automatic, export as JSONL/Parquet or push straight to the Hub. **Tell me the topic you'd want and I'll run the pipeline on it** โ€” open a discussion on this dataset, it's free and it's how I decide what to build next. โ†’ [fineset.io](https://fineset.io) โ€” describe what you want to train on, get a dataset. Early-access waitlist open (referral skip available).