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agent-research-aggregator

@ar9av · 收录于 1 周前 · 上游提交 1 周前

Pre-pipeline aggregator that scans AI agent cache directories (.claude, .cursor, .antigravity, .openclaw) or any user-specified directory for experimentation logs, extracts insights and numeric results, and formats them as PaperOrchestra-ready inputs (idea.md + experimental_log.md). TRIGGER when the user says "aggregate my agent logs for paper writing", "extract experiments from my coding agent history", "prepare PaperOrchestra inputs from my cache", "turn my agent logs into a paper", mentions a folder or directory they want to use as the basis for a paper, or wants to run PaperOrchestra but only has scattered agent experiment histories rather than structured inputs. Run this BEFORE paper-orchestra. Also called automatically by paper-orchestra when workspace/inputs/idea.md or workspace/inputs/experimental_log.md are missing.

适合你,如果积累了AI代理实验日志,想快速整理成论文格式。

/ 下载安装
agent-research-aggregator.skill双击,或拖进 Claude 桌面版 / Cowork,即完成安装↓ .skill↓ .zip
用别的 agent?下载 .zip 解压,把文件夹放进它的技能目录
Claude Code~/.claude/skills/(项目级 .claude/skills/)
Codex CLI~/.codex/skills/
Cursor自动读取上面两处目录
其他工具见其文档的「skills」目录;两个下载是同一份文件,只是名字不同
/ 通过 npx 安装 校验哈希
npx oh-my-skill add ar9av/paperorchestra/agent-research-aggregator
/ 通过 bash 安装
curl -fsSL https://oh-my-skill.com/install.sh | bash -s -- ar9av/paperorchestra/agent-research-aggregator
/ 已经装过?验证本机副本,不用重装
npx oh-my-skill verify ar9av/paperorchestra/agent-research-aggregator
安装目标可用 --agent / --scope 或 --to 明确指定;省略时只会在唯一已存在的 agent 目录上自动选择,零命中或多命中会停止并提示。content_hash 缺失或不一致均拒装。
609GitHub stars
~2.8K最小装载
~4.8K含声明引用
~13.6K文本包总量
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怎么用

技能原文 SKILL.md作者撰写 · MIT · 07b981f

agent-research-aggregator


Should I run? (decision gate)

Before starting Phase 1, check whether aggregation is actually needed:

| Situation | Action | |---|---| | workspace/inputs/idea.md and workspace/inputs/experimental_log.md both exist and are non-empty | Skip this skill entirely. Proceed directly to paper-orchestra. | | Either file is missing or empty, and the user provided a directory path | Run this skill with that directory as --search-roots. | | Either file is missing or empty, and no directory was provided | Scan cwd and ~ by default; show the discovery summary to the user before continuing. | | The inputs exist but look thin (e.g. idea.md has < 5 lines, no numeric data in experimental_log.md) | Ask the user whether to supplement with aggregation or proceed as-is. |

The skill is intentionally a pre-pass — it is cheap to skip and should only run when the structured inputs don't already exist.


A pre-processing skill for PaperOrchestra (arXiv:2604.05018). Reads scattered experimentation artifacts from AI coding-agent cache directories and synthesizes them into the structured (I, E) input pair the PaperOrchestra pipeline expects.

[.claude/]  [.cursor/]  [.antigravity/]  [.openclaw/]
      │            │              │               │
      └────────────┴──────────────┴───────────────┘
                          │
                    Phase 1: Discovery
                  (discover_logs.py)
                          │
                    discovered_logs.json
                          │
                    Phase 2: Extraction
                  (LLM call per log batch)
                          │
                    raw_experiments.json
                          │
                    Phase 3: Synthesis
                  (LLM call — consolidate)
                          │
                    synthesis.json
                          │
                    Phase 4: Formatting
                  (format_po_inputs.py)
                          │
             ┌────────────┴────────────┐
      workspace/inputs/         workspace/ara/
        idea.md                   aggregation_report.md
        experimental_log.md       discovered_logs.json
                                  raw_experiments.json
                                  synthesis.json

The output drops directly into workspace/inputs/ so the user can immediately run paper-orchestra on the same workspace.


Inputs

| Parameter | Required | Default | Description | |---|---|---|---| | --search-roots | no | cwd, ~ | Comma-separated directories to scan for agent caches | | --agents | no | all | Comma-separated subset: claude,cursor,antigravity,openclaw | | --workspace | no | ./workspace | PaperOrchestra workspace root | | --depth | no | 4 | Max directory scan depth (prevents runaway scans on large home dirs) | | --since | no | none | Only include logs modified after this date (ISO 8601: 2025-01-01) |

The user specifies these when invoking the skill, or you may ask them for --search-roots if the current directory has no detectable agent caches.


Phase 1 — Discovery (deterministic)

Run the discovery script to catalog every relevant log file:

python skills/agent-research-aggregator/scripts/discover_logs.py \
    --search-roots <roots> \
    --agents <agents> \
    --depth <depth> \
    --since <since> \
    --out workspace/ara/discovered_logs.json

The script exits with code 2 when no --project filter is set (this is expected on the first run). It prints a "Projects found" list to stdout — show it to the user immediately.

If no logs are found at all: stop and ask the user to specify --search-roots or point you at a directory that contains agent cache folders.


Phase 1.5 — Project Selection (mandatory)

A paper can only be written from a single project. You must ask the user which project to use before any LLM processing begins.

  1. Display the numbered project list from the discovery summary, e.g.: ``` Projects found: [1] /home/alice/projects/my-rl-experiment (42 files) [2] /home/alice/projects/llm-eval-suite (17 files) [3] /home/alice/projects/old-demo (3 files) ```
  2. Ask: *"Which project should this paper be based on? Please choose a number or paste the project path."*
  3. Do not proceed to Phase 2 until the user has answered.
  4. Re-run discovery with the chosen project to filter the manifest:
python skills/agent-research-aggregator/scripts/discover_logs.py \
    --search-roots <roots> \
    --agents <agents> \
    --depth <depth> \
    --since <since> \
    --project "<chosen project path>" \
    --out workspace/ara/discovered_logs.json

This overwrites discovered_logs.json so only the selected project's files remain. The script exits 0 on success.

If the discovery finds only one project: skip the question and inform the user: "Only one project found: <path>. Using it for the paper." — then re-run with --project automatically.

If the discovery summary shows irrelevant files after filtering: ask the user whether to include or exclude them before continuing to Phase 2. Err on the side of inclusion — the extraction prompt is conservative.


Phase 2 — Extraction (LLM-assisted)

Process discovered logs in batches (group by agent type; keep batches under ~50 KB of raw text to stay within context limits):

For each batch:

  1. Read the log files in the batch (the script's --list output tells you which file paths to read).
  2. Apply the extraction prompt from references/extraction-prompt.md as your system message.
  3. Pass the raw log text as the user message.
  4. Collect the structured JSON the LLM returns (see schema in the prompt).
  5. Append to workspace/ara/raw_experiments.json.

After all batches:

python skills/agent-research-aggregator/scripts/extract_experiments.py \
    --discovered workspace/ara/discovered_logs.json \
    --out workspace/ara/raw_experiments.json \
    --validate-only

Run this in --validate-only mode to check the combined JSON is well-formed and meets the minimum schema (experiments array non-empty, each entry has hypothesis or method or results). Fix any malformed entries before Phase 3.


Phase 3 — Synthesis (LLM-assisted)

Consolidate possibly-redundant experiment records from multiple agent caches into a single coherent research narrative. This is ONE LLM call.

System message: Use references/synthesis-prompt.md verbatim.

User message:

<raw_experiments>
{contents of workspace/ara/raw_experiments.json}
</raw_experiments>

The LLM must return a synthesis.json with keys:

  • research_question — the overarching question being investigated
  • hypothesis — the core proposed solution / claim
  • method_summary — how the approach works (concise, no data leakage)
  • key_contributions — 2–5 bullet strings
  • experimental_setup — datasets, metrics, baselines, implementation notes
  • results_tables — array of {title, headers[], rows[]} markdown-table objects
  • qualitative_observations — free-form text blocks (what worked, what didn't, failure modes, ablation insights)
  • iteration_history — ordered list of `{iteration_id, change_description, outcome}` entries if multiple iterations are detected
  • open_questions — questions that remain unanswered in the logs

Save to workspace/ara/synthesis.json.

Note: By this point, the user has already selected a single project in Phase 1.5. The synthesis should represent one coherent research thread. If the LLM still surfaces multiple disconnected research questions, flag this as a data quality warning in the audit report (Phase 5) but do not re-ask for project selection — that decision was made earlier.

Phase 4 — Formatting (deterministic)

Convert synthesis.json into PaperOrchestra input files:

python skills/agent-research-aggregator/scripts/format_po_inputs.py \
    --synthesis workspace/ara/synthesis.json \
    --out workspace/inputs/

This generates two files:

workspace/inputs/idea.md (Sparse variant)

Follows the PaperOrchestra Sparse Idea format (arXiv:2604.05018, §3.1):

# [Synthesized Research Title]

## Problem
<2–4 sentence problem statement derived from research_question>

## Hypothesis
<hypothesis from synthesis>

## Method
<method_summary from synthesis>

## Key Contributions
<key_contributions as bullet list>

## Open Questions
<open_questions, if any>
workspace/inputs/experimental_log.md

Follows the PaperOrchestra Experimental Log format (App. D.3):

## 1. Experimental Setup
<experimental_setup from synthesis, formatted as prose + sub-bullets>

## 2. Raw Numeric Data
<results_tables converted to GitHub-Flavored Markdown tables>

## 3. Qualitative Observations
<qualitative_observations from synthesis>

### Iteration History
<iteration_history as an ordered narrative, if present>

After running the script, review both files with the user:

  1. Read workspace/inputs/idea.md aloud and ask: "Does this accurately capture your research question and method?"
  2. Read the table headers from workspace/inputs/experimental_log.md and ask: "Are these the correct metrics and baselines?"

Revise based on feedback before proceeding to PaperOrchestra.


Phase 5 — Audit Report (deterministic)
python skills/agent-research-aggregator/scripts/format_po_inputs.py \
    --synthesis workspace/ara/synthesis.json \
    --out workspace/inputs/ \
    --report workspace/ara/aggregation_report.md

The --report flag makes the script also write aggregation_report.md, which contains:

  • Number of agent caches scanned, files read, batches processed
  • Per-agent breakdown (files found per agent type)
  • Experiment records extracted (count, date range)
  • Iterations detected (count, convergence direction)
  • Data quality warnings (gaps, low-confidence extractions, conflicting numbers)
  • Files written and their sizes

Show the report to the user. If the data quality section lists warnings, discuss them before running paper-orchestra — garbage in, garbage out.


Handoff to PaperOrchestra

Once the user has confirmed idea.md and experimental_log.md, the workspace is ready for the paper-orchestra pipeline. You still need:

| File | Status | Action | |---|---|---| | workspace/inputs/idea.md | ✓ generated | user review recommended | | workspace/inputs/experimental_log.md | ✓ generated | user review recommended | | workspace/inputs/template.tex | MISSING | ask user to provide their conference LaTeX template | | workspace/inputs/conference_guidelines.md | MISSING | ask user to provide (page limit, deadline, formatting rules) |

Tell the user exactly which two files are still needed, then offer to run paper-orchestra once they supply them.


Error handling

| Situation | Action | |---|---| | Cache directory does not exist | Skip silently; note in report | | File is binary or non-text | Skip; note in report | | File > 200 KB | Truncate at 200 KB; note in report with path | | LLM extraction returns malformed JSON | Re-prompt once with the parse error appended; if still malformed, log the batch as status: failed and continue | | Synthesis returns > 1 research_question | Log as data quality warning in audit report; do not re-ask for project (was selected in Phase 1.5) | | results_tables is empty after synthesis | Warn the user — PaperOrchestra's section-writing agent needs numeric data |


Hard rules (never violate)
  1. Never write to agent cache directories. This skill is read-only on .claude/, .cursor/, .antigravity/, .openclaw/.
  2. Never include personal information (emails, names, credentials, API keys) in generated idea.md or experimental_log.md. The extraction prompt instructs the LLM to strip PII; double-check before handoff.
  3. Never fabricate results. If a metric appears in only one log with low confidence, mark it [UNVERIFIED] in the table rather than silently including it.
  4. Never proceed past Phase 1 without user confirmation of the discovered file list if the scan found > 50 files.

Quick reference
# Phase 1: discover all projects (exits with code 2 — project selection required)
python skills/agent-research-aggregator/scripts/discover_logs.py \
    --search-roots . ~ --out workspace/ara/discovered_logs.json

# Phase 1.5: re-run with chosen project (exits 0)
python skills/agent-research-aggregator/scripts/discover_logs.py \
    --search-roots . ~ \
    --project "/home/user/projects/my-chosen-project" \
    --out workspace/ara/discovered_logs.json

# ... (Phase 2: LLM extraction calls, see above) ...

python skills/agent-research-aggregator/scripts/extract_experiments.py \
    --discovered workspace/ara/discovered_logs.json \
    --out workspace/ara/raw_experiments.json --validate-only

# ... (Phase 3: LLM synthesis call, see above) ...

python skills/agent-research-aggregator/scripts/format_po_inputs.py \
    --synthesis workspace/ara/synthesis.json \
    --out workspace/inputs/ \
    --report workspace/ara/aggregation_report.md
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