autoresearchclaw-autonomous-research
Fully autonomous research pipeline that turns a topic idea into a complete academic paper with real citations, experiments, and conference-ready LaTeX.
How do I install this agent skill?
npx skills add https://github.com/aradotso/trending-skills --skill autoresearchclaw-autonomous-researchIs this agent skill safe to install?
- Gen Agent Trust Hubfail
This skill automates academic research by cloning an unverified external repository and executing dynamically generated Python code. The installation process from an untrusted source and the runtime execution of AI-generated experiments pose significant security risks, including potential remote code execution and local command execution. Furthermore, the skill's reliance on external literature and web data creates an attack surface for indirect prompt injection.
- Socketpass
No alerts
- Snykwarn
Risk: MEDIUM · 2 issues
- Runlayerfail
1/1 file flagged
- ZeroLeakspass
Score: 93/100 · 2 sections analyzed
What does this agent skill do?
AutoResearchClaw — Autonomous Research Pipeline
Skill by ara.so — Daily 2026 Skills collection.
AutoResearchClaw is a fully autonomous 23-stage research pipeline that takes a natural language topic and produces a complete academic paper: real arXiv/Semantic Scholar citations, sandboxed experiments, statistical analysis, multi-agent peer review, and conference-ready LaTeX (NeurIPS/ICML/ICLR). No hallucinated references. No human babysitting.
Installation
# Clone and install
git clone https://github.com/aiming-lab/AutoResearchClaw.git
cd AutoResearchClaw
python3 -m venv .venv && source .venv/bin/activate
pip install -e .
# Verify CLI is available
researchclaw --help
Requirements: Python 3.11+
Configuration
cp config.researchclaw.example.yaml config.arc.yaml
Minimum config (config.arc.yaml)
project:
name: "my-research"
research:
topic: "Your research topic here"
llm:
provider: "openai"
base_url: "https://api.openai.com/v1"
api_key_env: "OPENAI_API_KEY"
primary_model: "gpt-4o"
fallback_models: ["gpt-4o-mini"]
experiment:
mode: "sandbox"
sandbox:
python_path: ".venv/bin/python"
export OPENAI_API_KEY="$YOUR_OPENAI_KEY"
OpenRouter config (200+ models)
llm:
provider: "openrouter"
api_key_env: "OPENROUTER_API_KEY"
primary_model: "anthropic/claude-3.5-sonnet"
fallback_models:
- "google/gemini-pro-1.5"
- "meta-llama/llama-3.1-70b-instruct"
export OPENROUTER_API_KEY="$YOUR_OPENROUTER_KEY"
ACP (Agent Client Protocol) — no API key needed
llm:
provider: "acp"
acp:
agent: "claude" # or: codex, gemini, opencode, kimi
cwd: "."
The agent CLI (e.g. claude) handles its own authentication.
OpenClaw bridge (optional advanced capabilities)
openclaw_bridge:
use_cron: true # Scheduled research runs
use_message: true # Progress notifications
use_memory: true # Cross-session knowledge persistence
use_sessions_spawn: true # Parallel sub-sessions
use_web_fetch: true # Live web search in literature review
use_browser: false # Browser-based paper collection
Key CLI Commands
# Basic run — fully autonomous, no prompts
researchclaw run --topic "Your research idea" --auto-approve
# Run with explicit config file
researchclaw run --config config.arc.yaml --topic "Mixture-of-experts routing efficiency" --auto-approve
# Run with topic defined in config (omit --topic flag)
researchclaw run --config config.arc.yaml --auto-approve
# Interactive mode — pauses at gate stages for approval
researchclaw run --config config.arc.yaml --topic "Your topic"
# Check pipeline status / resume a run
researchclaw status --run-id rc-20260315-120000-abc123
# List past runs
researchclaw list
Gate stages (5, 9, 20) pause for human approval in interactive mode. Pass --auto-approve to skip all gates.
Python API
from researchclaw.pipeline import Runner
from researchclaw.config import load_config
# Load config and run
config = load_config("config.arc.yaml")
config.research.topic = "Efficient attention mechanisms for long-context LLMs"
config.auto_approve = True
runner = Runner(config)
result = runner.run()
# Access outputs
print(result.artifact_dir) # artifacts/rc-YYYYMMDD-HHMMSS-<hash>/
print(result.deliverables_dir) # .../deliverables/
print(result.paper_draft_path) # .../deliverables/paper_draft.md
print(result.latex_path) # .../deliverables/paper.tex
print(result.bibtex_path) # .../deliverables/references.bib
print(result.verification_report) # .../deliverables/verification_report.json
# Run specific stages only
from researchclaw.pipeline import Runner, StageRange
runner = Runner(config)
result = runner.run(stages=StageRange(start="LITERATURE_COLLECT", end="KNOWLEDGE_EXTRACT"))
# Access knowledge base after a run
from researchclaw.knowledge import KnowledgeBase
kb = KnowledgeBase.load(result.artifact_dir)
findings = kb.get("findings")
literature = kb.get("literature")
decisions = kb.get("decisions")
Output Structure
After a run, all outputs land in artifacts/rc-YYYYMMDD-HHMMSS-<hash>/:
artifacts/rc-20260315-120000-abc123/
├── deliverables/
│ ├── paper_draft.md # Full academic paper (Markdown)
│ ├── paper.tex # Conference-ready LaTeX
│ ├── references.bib # Real BibTeX — auto-pruned to inline citations
│ ├── verification_report.json # 4-layer citation integrity report
│ └── reviews.md # Multi-agent peer review
├── experiment_runs/
│ ├── run_001/
│ │ ├── code/ # Generated experiment code
│ │ ├── results.json # Structured metrics
│ │ └── sandbox_output.txt # Execution logs
├── charts/
│ └── *.png # Auto-generated comparison charts
├── evolution/
│ └── lessons.json # Self-learning lessons for future runs
└── knowledge_base/
├── decisions.json
├── experiments.json
├── findings.json
├── literature.json
├── questions.json
└── reviews.json
Pipeline Stages Reference
| Phase | Stage # | Name | Notes |
|---|---|---|---|
| A | 1 | TOPIC_INIT | Parse and scope research topic |
| A | 2 | PROBLEM_DECOMPOSE | Break into sub-problems |
| B | 3 | SEARCH_STRATEGY | Build search queries |
| B | 4 | LITERATURE_COLLECT | Real API calls to arXiv + Semantic Scholar |
| B | 5 | LITERATURE_SCREEN | Gate — approve/reject literature |
| B | 6 | KNOWLEDGE_EXTRACT | Extract structured knowledge |
| C | 7 | SYNTHESIS | Synthesize findings |
| C | 8 | HYPOTHESIS_GEN | Multi-agent debate to form hypotheses |
| D | 9 | EXPERIMENT_DESIGN | Gate — approve/reject design |
| D | 10 | CODE_GENERATION | Generate experiment code |
| D | 11 | RESOURCE_PLANNING | GPU/MPS/CPU auto-detection |
| E | 12 | EXPERIMENT_RUN | Sandboxed execution |
| E | 13 | ITERATIVE_REFINE | Self-healing on failure |
| F | 14 | RESULT_ANALYSIS | Multi-agent analysis |
| F | 15 | RESEARCH_DECISION | PROCEED / REFINE / PIVOT |
| G | 16 | PAPER_OUTLINE | Structure paper |
| G | 17 | PAPER_DRAFT | Write full paper |
| G | 18 | PEER_REVIEW | Evidence-consistency check |
| G | 19 | PAPER_REVISION | Incorporate review feedback |
| H | 20 | QUALITY_GATE | Gate — final approval |
| H | 21 | KNOWLEDGE_ARCHIVE | Save lessons to KB |
| H | 22 | EXPORT_PUBLISH | Emit LaTeX + BibTeX |
| H | 23 | CITATION_VERIFY | 4-layer anti-hallucination check |
Common Patterns
Pattern: Quick paper on a topic
export OPENAI_API_KEY="$OPENAI_API_KEY"
researchclaw run \
--topic "Self-supervised learning for protein structure prediction" \
--auto-approve
Pattern: Reproducible run with full config
# config.arc.yaml
project:
name: "protein-ssl-research"
research:
topic: "Self-supervised learning for protein structure prediction"
llm:
provider: "openai"
api_key_env: "OPENAI_API_KEY"
primary_model: "gpt-4o"
fallback_models: ["gpt-4o-mini"]
experiment:
mode: "sandbox"
sandbox:
python_path: ".venv/bin/python"
max_iterations: 3
timeout_seconds: 300
researchclaw run --config config.arc.yaml --auto-approve
Pattern: Use Claude via OpenRouter for best reasoning
export OPENROUTER_API_KEY="$OPENROUTER_API_KEY"
cat > config.arc.yaml << 'EOF'
project:
name: "my-research"
llm:
provider: "openrouter"
api_key_env: "OPENROUTER_API_KEY"
primary_model: "anthropic/claude-3.5-sonnet"
fallback_models: ["google/gemini-pro-1.5"]
experiment:
mode: "sandbox"
sandbox:
python_path: ".venv/bin/python"
EOF
researchclaw run --config config.arc.yaml \
--topic "Efficient KV cache compression for transformer inference" \
--auto-approve
Pattern: Resume after a failed run
# List runs to find the run ID
researchclaw list
# Resume from last completed stage
researchclaw run --resume rc-20260315-120000-abc123
Pattern: Programmatic batch research
import asyncio
from researchclaw.pipeline import Runner
from researchclaw.config import load_config
topics = [
"LoRA fine-tuning on limited hardware",
"Speculative decoding for LLM inference",
"Flash attention variants comparison",
]
config = load_config("config.arc.yaml")
config.auto_approve = True
for topic in topics:
config.research.topic = topic
runner = Runner(config)
result = runner.run()
print(f"[{topic}] → {result.deliverables_dir}")
Pattern: OpenClaw one-liner (if using OpenClaw agent)
Share the repo URL with OpenClaw, then say:
"Research mixture-of-experts routing efficiency"
OpenClaw auto-reads RESEARCHCLAW_AGENTS.md, clones, installs, configures, and runs the full pipeline.
Compile the LaTeX Output
# Navigate to deliverables
cd artifacts/rc-*/deliverables/
# Compile (requires a LaTeX distribution)
pdflatex paper.tex
bibtex paper
pdflatex paper.tex
pdflatex paper.tex
# Or upload paper.tex + references.bib directly to Overleaf
Troubleshooting
researchclaw: command not found
# Make sure the venv is active and package is installed
source .venv/bin/activate
pip install -e .
which researchclaw
API key errors
# Verify env var is set
echo $OPENAI_API_KEY
# Should print your key (not empty)
# Set it explicitly for the session
export OPENAI_API_KEY="sk-..."
Experiment sandbox failures
The pipeline self-heals at Stage 13 (ITERATIVE_REFINE). If it keeps failing:
# Increase timeout and iterations in config
experiment:
max_iterations: 5
timeout_seconds: 600
sandbox:
python_path: ".venv/bin/python"
Citation hallucination warnings
Stage 23 (CITATION_VERIFY) runs a 4-layer check. If references are pruned:
- This is expected behaviour — fake citations are removed automatically
- Check
verification_report.jsonfor details on which citations were rejected and why
PIVOT loop running indefinitely
Stage 15 (RESEARCH_DECISION) may pivot multiple times. To cap iterations:
research:
max_pivots: 2
max_refines: 3
LaTeX compilation errors
# Check for missing packages
pdflatex paper.tex 2>&1 | grep "File.*not found"
# Install missing packages (TeX Live)
tlmgr install <package-name>
Out of memory during experiments
# Force CPU mode in config
experiment:
sandbox:
device: "cpu"
max_memory_gb: 4
Key Concepts
- PIVOT/REFINE Loop: Stage 15 autonomously decides PROCEED, REFINE (tweak params), or PIVOT (new hypothesis direction). All artifacts are versioned.
- Multi-Agent Debate: Stages 8, 14, 18 use structured multi-perspective debate — not a single LLM pass.
- Self-Learning: Each run extracts lessons with 30-day time decay. Future runs on similar topics benefit from past mistakes.
- Sentinel Watchdog: Background monitor detects NaN/Inf in results, checks paper-evidence consistency, scores citation relevance, and guards against fabrication throughout the run.
- 4-Layer Citation Verification: arXiv lookup → CrossRef lookup → DataCite lookup → LLM relevance scoring. A citation must pass all layers to survive.
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/aradotso/trending-skills/autoresearchclaw-autonomous-research">View autoresearchclaw-autonomous-research on skillZs</a>