# AgentPulse — Data and Code Release **NeurIPS 2026 Datasets & Benchmarks Track companion artifact.** This bundle contains all data, code, and reproduction scripts for the AgentPulse evaluation framework described in the paper *AgentPulse: A Continuous Multi-Signal Framework for Evaluating AI Agents in Deployment*. License: **CC BY 4.0** (see `LICENSE`). --- ## Contents ``` AgentPulse-Data-v6/ ├── README.md ← this file ├── LICENSE ← CC BY 4.0 ├── croissant.json ← Croissant metadata (JSON-LD) ├── data/ │ ├── csv/ ← 18 CSV exports of every relevant DB table │ └── sqlite/ ← (optional) full SQLite database, if present ├── code/ │ ├── collectors/ ← 18 signal-collector implementations │ ├── scoring/ ← NLP pipeline + factor composite + data quality │ ├── pipeline/ ← scheduler / orchestration │ ├── config.py ← global pipeline configuration │ ├── main.py ← entrypoint (`python main.py --serve`, etc.) │ └── requirements.txt ← Python dependencies ├── paper/ │ ├── neurips_agentpulse.tex ← LaTeX source │ ├── neurips_agentpulse.pdf ← compiled paper │ ├── neurips_2026.sty ← NeurIPS 2026 style file │ ├── checklist_.tex ← NeurIPS Paper Checklist │ ├── regen_figures.py ← regenerates all 5 paper figures from the data │ └── fig*.{png,pdf} ← compiled figures └── docs/ └── schema.md ← per-table column documentation ``` --- ## Data tables (`data/csv/`) | File | Rows | Description | |-----------------------------------|---------|-------------| | `agent_scores.csv` | 13,504 | Composite + per-factor scores per agent per category, time-stamped. The headline scoring output. | | `agent_signals_raw.csv` | 3,283 | Raw per-signal observations per agent (pre-aggregation). | | `agent_benchmark_signals.csv` | 1,563 | Published benchmark scores (SWE-bench, GAIA, WebArena, HumanEval+, τ-bench). | | `agent_github_history.csv` | 62 | GitHub stars / contributors / commits time-series. | | `agent_pypi_history.csv` | 1,440 | PyPI / npm download history. | | `sentiment_scores.csv` | 60,639 | NLP-scored texts (VADER + TextBlob + FinBERT + DistilBERT-SST2 ensemble). | | `data_quality.csv` | 38,965 | Composite quality score per text (uniqueness × bot × credibility × specificity). | | `models.csv` | 148 | Agent + model registry with vendor / category metadata. | | `bluesky_signals.csv` | 35,326 | Per-platform raw text + engagement. | | `reddit_signals.csv` | 2,413 | "" | | `hn_signals.csv` | 21,205 | "" | | `stackoverflow_signals.csv` | 571 | "" | | `github_signals.csv` | 23,288 | "" | | `github_discussions_signals.csv` | 2,090 | "" | | `devto_signals.csv` | 596 | "" | | `mastodon_signals.csv` | 1,160 | "" | | `v2ex_signals.csv` | 1,794 | "" | | `devtools_signals.csv` | 89 | VS Code / IDE marketplace install counts. | All CSVs are UTF-8 encoded with a header row. Timestamps are ISO-8601 in UTC. See `docs/schema.md` for full column documentation. --- ## Reproducing paper results ```bash cd code/ pip install -r requirements.txt # Reproduce all figures (writes into ../paper/) python ../paper/regen_figures.py # Re-derive composite scores from raw signals python -m scoring.agent_scoring_v2 --rebuild # Re-run the full pipeline end-to-end (continuous mode) python main.py ``` The cross-factor predictive validity result (Table 3, ρₛ=0.52, p<0.01, n=35) is computed in `code/scoring/agent_scoring_v2.py` and can be re-derived directly from `data/csv/agent_scores.csv` and external adoption proxies. --- ## Provenance All signals are collected from public APIs with documented rate-limits under each API's terms of service. Specifically: - **GitHub**: REST + GraphQL APIs (60 req/hr unauth, 5,000 req/hr authed) - **PyPI**: BigQuery public dataset - **VS Code Marketplace**: Public extension API - **Bluesky / Mastodon**: AT-Protocol / ActivityPub public firehose - **Reddit / Hacker News / Stack Overflow / Lemmy / Lobsters / Dev.to / V2EX**: Documented public APIs - **Benchmark scores**: Scraped from the official leaderboard pages cited in the paper (SWE-bench, GAIA, WebArena, HumanEval+, τ-bench) No private data, no scraped paywalled content, no PII beyond public authorship metadata is included. The release contains no individual user records — only aggregated per-text metadata required for sentiment scoring (post id, author handle if public, engagement counts). --- ## Citation ``` @inproceedings{agentpulse2026, title = {AgentPulse: A Continuous Multi-Signal Framework for Evaluating AI Agents in Deployment}, author = {Anonymous}, booktitle = {NeurIPS Datasets and Benchmarks Track}, year = {2026} } ``` ## Contact Per the NeurIPS double-blind review policy, author contact is withheld during review. Issues with the artifact may be reported via the submission system.