| name | paper-workbench |
| description | Researcher-profile-driven paper intake and literature workbench for academic workflows. Use this whenever the user wants to skim, deep-read, card, compare, synthesize, map research gaps, or build a literature review from papers, arXiv/AlphaXiv links, DOIs, PDFs, landing pages, or existing paper JSON / workbench artifacts. Normalize sources into `paper-record`, then route into scan, deep-read, card, synthesis, review, or compatibility modes (`json`, `interpret`, `xray`). Trigger even when the user only says things like “精读这篇”, “整合这几篇”, “找研究空白”, or “搭综述框架”.
|
| category | research-learning-knowledge |
| tags | ["paper","research","normalization","literature-review","synthesis","doi","arxiv","analysis"] |
| version | 1.1.0 |
| argument-hint | [paper-source-or-artifact] [--mode scan|deep-read|card|synthesis|review|json|interpret|xray] [--workspace PATH] [--profile PATH] [--save PATH] [--lang LANG] [--fulltext auto|prefer|never] |
| allowed-tools | Read, Write, WebFetch, Bash(curl *), Bash(python *), Bash(pytest *) |
Paper Workbench
Unified entrypoint for paper intake, strategic reading, multi-paper synthesis,
and review construction.
Keep paper-record as the normalization layer. Do not merge high-level
analysis back into the normalized record.
When to use
Use this skill when the job is to:
- read one paper quickly
- deeply deconstruct one paper
- compare or synthesize multiple papers
- build a review outline or gap map
- normalize paper sources into reusable machine-readable artifacts
Do not use this skill when the primary job is to implement a paper. In that
case, route to paper2code.
Public interfaces
paper-record — normalized single-paper facts
researcher-profile — user research anchor
paper-deep-read — single-paper strategic analysis artifact
literature-synthesis — cross-paper integration artifact
review-outline — literature-review planning artifact
Accepted inputs
- arXiv IDs and arXiv URLs
- AlphaXiv URLs
- DOI strings or
doi.org/... URLs
- local academic PDFs or text files
- remote PDF URLs
- paper landing pages that expose a PDF
- existing
paper-record JSON
- existing
researcher-profile, paper-deep-read, literature-synthesis, or
review-outline JSON
Routing workflow
- Resolve the input class from
$ARGUMENTS, the latest user message, or a
pasted JSON artifact.
- If the request is paper-level and not already normalized, run
scripts/normalize_paper.py first.
- Determine the mode from explicit user intent or the defaulting rules below.
- If the chosen mode is profile-sensitive, load the supplied
researcher-profile or collect only the missing fields.
- Produce the requested mode output.
- Persist artifacts only when the user asked to save them.
Mode quick guide
Single-paper modes
scan
- Use for “先快速扫一下”, “预判”, or fast worth-reading decisions
deep-read
- Use for “精读这篇”, “深度阅读”, “解构这篇”
card
interpret
- Compatibility path for a lightweight explanation
xray
- Compatibility path for compact critique
json
- Return the normalized
paper-record
Cross-paper modes
synthesis
- Use for “整合这几篇”, “对比分析”, “找研究空白”
review
Defaulting rules
- If the user explicitly asks for a machine-readable or saved schema artifact,
default to
json
- If the user provides a single paper and asks to read or analyze it without a
more specific mode, default to
scan
- If the user provides 3 or more papers and asks for integration, default to
synthesis
- If the user provides exactly 2 papers and asks for integration, run a
comparison-oriented
synthesis and mark any gap mapping as provisional
Normalize first
For any paper-like input, run:
python "$SKILL_DIR/scripts/normalize_paper.py" \
--source "<paper-source>" \
--lang "<lang>" \
--fulltext "<auto|prefer|never>"
Use --save only when the user asked to persist the normalized JSON.
Profile workflow
Before deep-read, card, synthesis, or review, prefer a
researcher-profile.
If missing, collect only these fields:
research_field
core_question
thesis (optional)
target_tier
stage
If the user clearly wants no back-and-forth, proceed with a generic
profile-light analysis and explicitly mark that personalization is limited.
If the user wants persistence, create or update the profile with:
python "$SKILL_DIR/scripts/workbench_io.py" init-profile \
--path "<profile-path>" \
--research-field "<field>" \
--core-question "<question>" \
--thesis "<optional-thesis>" \
--target-tier "<target-tier>" \
--stage "<stage>"
Artifact persistence
When the user asks to save a deep read, synthesis, or review plan, write a JSON
artifact plus an optional Markdown or Org sidecar:
python "$SKILL_DIR/scripts/workbench_io.py" save-artifact \
--workspace "<workspace-dir>" \
--artifact-type "<paper-deep-read|literature-synthesis|review-outline>" \
--title "<artifact-title>" \
--payload-file "<json-payload-file>" \
--profile-path "<optional-profile-path>" \
--source-record "<path-to-paper-record>" \
--sidecar-file "<optional-md-or-org>"
Output rules
- Separate
作者观点 from 系统分析
- Never invent page numbers, quotations, or empirical details
- If a requested quote or page anchor is missing, use
[信息待核实]
synthesis and review must integrate arguments across papers rather than
serially summarizing each paper
review paragraphs must use PEEL as a micro-argument structure, not a
citation list
- If the input evidence is too thin for the requested mode, downgrade the claim
strength instead of pretending full coverage
Edge cases
- Mixed raw sources + existing JSON artifacts:
- normalize raw sources first, then merge at the artifact layer
- More than one paper but user asks for
deep-read:
- either choose the clearly primary paper or ask which one to focus on
- DOI metadata only and no reachable full text:
- return the strongest metadata available and mark missing full-text facts
References
references/routing.md — source classification and routing logic
references/schema.md — canonical paper-record contract
references/artifacts.md — researcher-profile and higher-level artifacts
references/migration.md — compatibility and alias mapping
references/modes/json.md — machine-readable output rules
references/modes/interpret.md — lightweight explanation path
references/modes/xray.md — compact critique path
references/modes/scan.md — single-paper quick triage
references/modes/deep-read.md — full single-paper deconstruction
references/modes/card.md — literature card only
references/modes/synthesis.md — cross-paper integration
references/modes/review.md — literature-review planning and writing