paper-orchestra
Orchestrate the full PaperOrchestra (Song et al., 2026, arXiv:2604.05018) five-agent pipeline to turn unstructured research materials (idea, experimental log, LaTeX template, conference guidelines, optional figures) into a submission-ready LaTeX manuscript and compiled PDF. TRIGGER when the user asks to "write a paper from my experiments", "turn this idea and these results into a paper", "generate a conference submission", "run paper-orchestra on X", or otherwise wants the end-to-end paper-writing pipeline. Coordinates the outline-agent, plotting-agent, literature-review-agent, section-writing-agent, and content-refinement-agent skills.
How do I install this agent skill?
npx skills add https://github.com/ar9av/paperorchestra --skill paper-orchestraIs this agent skill safe to install?
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Paper-orchestra is a legitimate academic orchestrator skill that automates a multi-agent pipeline for writing research papers. It transforms unstructured experimental data into submission-ready LaTeX manuscripts and PDFs using local scripts and standard academic tools while incorporating privacy protections.
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Risk: MEDIUM · 2 issues
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Score: 93/100 · 2 sections analyzed
What does this agent skill do?
paper-orchestra (Orchestrator)
Top-level driver for the PaperOrchestra pipeline. Read this document and follow
the steps below. The detailed prompts and rules live in each sub-skill's
SKILL.md and references/ directories — you (the host agent) will load them
as you go.
Source paper: Song et al., PaperOrchestra: A Multi-Agent Framework for Automated AI Research Paper Writing, arXiv:2604.05018, 2026. https://arxiv.org/pdf/2604.05018
What this skill produces
A complete submission package P = (paper.tex, paper.pdf) written into
workspace/final/, plus a full audit trail under workspace/ (outline,
figures, refs, drafts, refinement worklog, provenance snapshot).
Inputs (the (I, E, T, G, F) tuple from the paper)
The workspace MUST contain:
| File | Symbol | Required | Description |
|---|---|---|---|
workspace/inputs/idea.md | I | yes | Idea Summary (Sparse or Dense variant — see references/io-contract.md) |
workspace/inputs/experimental_log.md | E | yes | Experimental Log: setup, raw numeric data, qualitative observations |
workspace/inputs/template.tex | T | yes | LaTeX template for the target conference (with \section{...} commands) |
workspace/inputs/conference_guidelines.md | G | yes | Formatting rules, page limit, mandatory sections |
workspace/inputs/figures/ | F | no | Optional pre-existing figures. If empty, the plotting agent generates everything. |
scripts/init_workspace.py will scaffold this layout. scripts/validate_inputs.py
will check it before the pipeline runs.
Pipeline (read references/pipeline.md for the full diagram)
Step 1: Outline ──▶ outline.json (1 LLM call)
Step 2: Plotting ─┐
├──▶ figures/*.png + captions.json (~20-30 calls)
Step 3: Lit Review ─┘ (~20-30 calls)
intro_relwork.tex + refs.bib
Step 4: Section Writing ──▶ drafts/paper.tex (1 LLM call)
Step 5: Content Refine ──▶ final/paper.tex + final/paper.pdf (~5-7 calls, ~3 iters)
Step 2 and Step 3 are independent and MUST run in parallel when your host supports parallel sub-agents. If not, run Step 3 first (it has the longer wall time due to Semantic Scholar rate limits) and Step 2 second.
Critical pre-instruction (read once, apply always)
Before any LLM call that writes paper content (outline, intro/related work,
section writing, refinement), you MUST prepend the Anti-Leakage Prompt at
references/anti-leakage-prompt.md to your system prompt. This is verbatim
from Appendix D.4 of the paper and prevents pre-training-data leakage. The
paper applies it uniformly across all baselines for fair comparison; we apply
it for fidelity and to keep generated papers grounded in the user's inputs.
Step-by-step execution
0. Pre-flight Checks
Before running the pipeline, perform the following quality gates in order:
# 1. Scaffold the workspace
python skills/paper-orchestra/scripts/init_workspace.py --out workspace/
# user drops their inputs into workspace/inputs/
# 2. Validate required files are present and well-formed
python skills/paper-orchestra/scripts/validate_inputs.py --workspace workspace/
# 3. Check input density — idea and experimental log must meet minimum thresholds
python skills/paper-orchestra/scripts/check_idea_density.py \
--idea workspace/inputs/idea.md \
--log workspace/inputs/experimental_log.md
# 4. Cross-validate consistency between idea and experimental log
python skills/paper-orchestra/scripts/validate_consistency.py \
--idea workspace/inputs/idea.md \
--log workspace/inputs/experimental_log.md
If validate_inputs.py or check_idea_density.py fail (exit code 1 or 2), stop
and tell the user what's missing or below threshold — do not proceed until fixed.
validate_consistency.py produces warnings only (exit code 1 = WARN, non-blocking);
report warnings to the user but continue.
Before failing on missing inputs, check whether aggregation can supply them:
| Inputs state | Action |
|---|---|
idea.md and experimental_log.md both present and non-empty | Continue to Step 1. |
| Either is missing/empty, and the user mentioned a directory | Load and run agent-research-aggregator with that directory as --search-roots, then re-validate. |
| Either is missing/empty, no directory mentioned | Ask the user: "Your workspace is missing idea.md / experimental_log.md. Do you have a folder with research notes or agent history I can aggregate from? If so, tell me the path — or drop the files manually into workspace/inputs/." |
If validation still fails after aggregation (e.g. template.tex or conference_guidelines.md are missing), stop and tell the user exactly which files remain outstanding.
Also probe the TeX installation (once per workspace, result cached):
python skills/paper-orchestra/scripts/check_tex_packages.py \
--out workspace/tex_profile.json
The Section Writing Agent reads tex_profile.json to decide which LaTeX
patterns to use (e.g., Figure~\ref{} vs \cref{}, whether to include
\usepackage{microtype}, etc.). This eliminates compile-time package
failures that previously required iterative manual edits.
1. Outline (Step 1 — 1 LLM call)
Load skills/outline-agent/SKILL.md and follow it. Output: workspace/outline.json.
Validate with python skills/outline-agent/scripts/validate_outline.py workspace/outline.json.
Halt the pipeline if validation fails — every downstream agent depends on the schema.
2 ∥ 3. Plotting and Literature Review (in parallel)
Parse outline.json. Extract:
outline.plotting_plan→ drives Step 2outline.intro_related_work_plan→ drives Step 3
If your host supports parallel sub-agents (Claude Code's Agent tool with multiple concurrent calls; Cursor's parallel agents; Antigravity's worker pool), spawn two concurrent sub-tasks:
- Sub-task A: load
skills/plotting-agent/SKILL.md, execute the plotting plan, produceworkspace/figures/<figure_id>.pngfor every entry, plusworkspace/figures/captions.json. - Sub-task B: load
skills/literature-review-agent/SKILL.md, execute the research strategy, produceworkspace/drafts/intro_relwork.texandworkspace/refs.bib.
If your host does not support parallel sub-agents, run Sub-task B first (it has slower wall-clock due to Semantic Scholar QPS limits) then Sub-task A. The artifacts are independent, so order doesn't affect correctness.
3.5. Outline Reconciliation (after Step 3 completes, before Step 4)
Once Step 3 (Literature Review) has produced citation_pool.json and
cross_verification_report.json, run the reconciliation step.
Load references/outline-reconciliation.md and follow its prompt.
Output: workspace/outline_reconciled.json.
Validate and diff:
python skills/outline-agent/scripts/validate_outline.py workspace/outline_reconciled.json
python skills/paper-orchestra/scripts/diff_outlines.py \
--original workspace/outline.json \
--reconciled workspace/outline_reconciled.json \
--summary workspace/reconciliation_summary.md
If validation fails, fall back to outline.json for Step 4 and warn the user.
Show the user the reconciliation_summary.md (even if no changes — it confirms
the outline matched the actual literature).
Skip conditions: citation pool empty, Step 3 failed, or Step 2 is still
running and the host cannot issue another call concurrently. See
references/outline-reconciliation.md for full skip conditions.
4. Section Writing (Step 4 — ONE single multimodal LLM call)
Load skills/section-writing-agent/SKILL.md and follow it. This is one
single call in the paper (App. B: "Section Writing Agent (1 call)") — do
not split it per section. The agent receives:
outline_reconciled.json(use this if it exists; fall back tooutline.json)idea.md,experimental_log.mdintro_relwork.tex(already-filled from Step 3 — preserve verbatim)refs.bib(the citation map)conference_guidelines.mdresearch_brief.md(if it exists — read §1–§3 for accumulated pipeline context)- The actual figure image files from
workspace/figures/(multimodal input)
Output: workspace/drafts/paper.tex (a complete LaTeX document).
Then run the deterministic gates:
python skills/section-writing-agent/scripts/orphan_cite_gate.py workspace/drafts/paper.tex workspace/refs.bib
python skills/section-writing-agent/scripts/latex_sanity.py workspace/drafts/paper.tex
python skills/paper-orchestra/scripts/anti_leakage_check.py workspace/drafts/paper.tex
python skills/paper-orchestra/scripts/claim_evidence_gate.py \
--paper workspace/drafts/paper.tex \
--log workspace/inputs/experimental_log.md \
--out workspace/claim_evidence_report.json
claim_evidence_gate.py is a WARN gate (exit 1 = warnings, not a hard stop).
Report the count of unsupported claims to the user. The content-refinement agent
will address them in Step 5.
If any gate fails, the host agent must fix the issue (re-prompting the writing step with the gate's error report) before proceeding.
5. Content Refinement (Step 5 — ~3 iterations, ~5-7 calls)
Load skills/content-refinement-agent/SKILL.md and follow it. The skill
implements the loop with strict halt rules from halt-rules.md. Maintain
workspace/refinement/worklog.json and snapshot each iteration into
workspace/refinement/iter<N>/.
Halt conditions (any one triggers the loop to stop and accept the current best snapshot):
- Iteration count reaches the cap (default 3, see
halt-rules.md). - Overall score from the simulated reviewer decreases vs the previous iteration → revert to previous snapshot, halt.
- Overall score ties but at least one sub-axis decreases while none gain compensatingly (negative net sub-axis change) → revert, halt.
- Reviewer issues no new actionable weaknesses.
The accepted snapshot is copied to workspace/final/paper.tex.
6. Compile and finalize
cd workspace/final && latexmk -pdf paper.tex
Then write workspace/provenance.json capturing input file hashes, outline
hash, refs hash, figure hashes, and final tex/pdf hashes (helper:
scripts/snapshot.py in the orchestrator scripts dir if you want a one-shot;
otherwise the host agent computes hashes inline).
Report to the user: the path to workspace/final/paper.pdf, a brief summary of
which sections were drafted, citation count, refinement iterations completed,
and any gates that failed mid-pipeline.
Workspace layout
See references/io-contract.md. Summary:
workspace/
├── inputs/ # user-provided
│ ├── idea.md
│ ├── experimental_log.md
│ ├── template.tex
│ ├── conference_guidelines.md
│ └── figures/ # optional pre-existing figures
├── outline.json # Step 1 output
├── figures/ # Step 2 output
│ ├── <figure_id>.png
│ └── captions.json
├── refs.bib # Step 3 output
├── drafts/ # Step 3 + Step 4 output
│ ├── intro_relwork.tex
│ └── paper.tex
├── refinement/ # Step 5 working dir
│ ├── worklog.json
│ ├── iter1/
│ ├── iter2/
│ └── iter3/
├── final/ # accepted snapshot + compiled PDF
│ ├── paper.tex
│ └── paper.pdf
└── provenance.json # input/output hashes for reproducibility
Cost budget (from paper App. B)
Total: ~60–70 LLM calls per paper, ~40 minutes wall-time on the paper's setup. Budget breakdown:
| Step | Calls |
|---|---|
| Outline | 1 |
| Plotting | ~20–30 |
| Literature Review | ~20–30 |
| Section Writing | 1 |
| Content Refinement | ~5–7 |
Host integration
See references/host-integration.md for per-host invocation details (Claude
Code, Cursor, Antigravity, Cline, Aider, OpenCode).
Resources
references/pipeline.md— full step-by-step flow + parallelism rules + halt rulesreferences/io-contract.md— workspace layout, input file schemasreferences/anti-leakage-prompt.md— verbatim from App. D.4, prepend to every writing callreferences/paper-summary.md— 1-page distillation of arXiv:2604.05018references/host-integration.md— per-host invocation guidereferences/outline-reconciliation.md— NEW Step 3.5 outline reconciliation protocol (AutoSci-inspired)scripts/init_workspace.py— scaffold workspace dir treescripts/validate_inputs.py— verify (I, E, T, G) before runningscripts/anti_leakage_check.py— grep draft for leaked author names/emails/affilsscripts/claim_evidence_gate.py— NEW WARN gate: verify numeric claims in draft are grounded in experimental_log.mdscripts/diff_outlines.py— NEW diff original vs reconciled outline; writes reconciliation_summary.mdskills/shared/research_brief_template.md— NEW schema for workspace/research_brief.md (accumulated cross-agent context)
How can the creator link this skill?
Add the canonical catalog link to the repository README so users can inspect current installs and available audits. The publishing guide covers the complete discovery path.
<a href="https://skillzs.dev/skills/ar9av/paperorchestra/paper-orchestra">View paper-orchestra on skillZs</a>