| """ |
| Agent Signal Collector — collects 18 real signals for agent evaluation. |
| |
| Benchmark Signals: |
| 1. SWE-bench resolve rate (scrape leaderboard) |
| 2. WebArena success rate (scrape) |
| 3. GAIA benchmark (HuggingFace) |
| 4. TAU-bench (published) |
| 5. HumanEval+ pass rate (published) |
| |
| Adoption Signals: |
| 6. GitHub stars |
| 7. GitHub stars velocity (Δ/week) |
| 8. PyPI/npm downloads |
| 9. VS Code extension installs |
| 10. VS Code extension rating |
| 11. Docker pulls |
| |
| Community Signals: |
| 12. Social media sentiment |
| 13. Stack Overflow questions |
| 14. GitHub issue count + close rate |
| 15. GitHub contributor count |
| |
| Structural Signals: |
| 17. Underlying model cost |
| 18. Days since last release |
| 19. Documentation quality |
| 20. Enterprise readiness |
| """ |
|
|
| import httpx |
| import logging |
| import time |
| import json |
| import math |
| import re |
| from datetime import datetime, timezone, timedelta |
| from collections import defaultdict |
| from collectors.base import BaseCollector |
| from db.schema import db, get_connection |
|
|
| logger = logging.getLogger(__name__) |
|
|
| |
| |
| |
|
|
| AGENT_REGISTRY = { |
| |
| "Claude Code": {"github": "anthropics/claude-code", "vscode": "anthropics.claude-code", "search": ["claude code"], "category": "coding"}, |
| "Cursor": {"github": None, "vscode": "anysphere.cursor", "search": ["cursor ai", "cursor ide"], "category": "coding"}, |
| "OpenAI Codex": {"github": None, "search": ["openai codex", "codex cli"], "category": "coding"}, |
| "GitHub Copilot": {"github": None, "vscode": "GitHub.copilot", "search": ["github copilot", "copilot"], "category": "coding"}, |
| "Windsurf": {"github": None, "vscode": "Codeium.codeium", "search": ["windsurf"], "category": "coding"}, |
| "Gemini CLI": {"github": None, "search": ["gemini cli"], "category": "coding"}, |
| "Cline": {"github": "cline/cline", "vscode": "saoudrizwan.claude-dev", "search": ["cline ai"], "category": "coding"}, |
| "Devin": {"github": None, "search": ["devin ai", "devin cognition"], "category": "swe"}, |
| "Replit Agent": {"github": None, "search": ["replit agent"], "category": "coding"}, |
| "OpenHands": {"github": "All-Hands-AI/OpenHands", "pypi": "openhands-ai", "search": ["openhands"], "category": "swe"}, |
| "SWE-agent": {"github": "princeton-nlp/SWE-agent", "search": ["swe-agent", "swe agent"], "category": "swe"}, |
| "Aider": {"github": "paul-gauthier/aider", "pypi": "aider-chat", "search": ["aider ai", "aider chat"], "category": "coding"}, |
| "Bolt": {"github": "stackblitz/bolt.new", "search": ["bolt.new", "bolt ai"], "category": "coding"}, |
| "Continue": {"github": "continuedev/continue", "vscode": "Continue.continue", "search": ["continue dev"], "category": "coding"}, |
| "Amazon Q Developer": {"github": None, "vscode": "AmazonWebServices.amazon-q-vscode", "search": ["amazon q developer"], "category": "coding"}, |
| "Tabnine": {"github": None, "vscode": "TabNine.tabnine-vscode", "search": ["tabnine"], "category": "coding"}, |
| "Sourcegraph Cody": {"github": "sourcegraph/cody", "vscode": "sourcegraph.cody-ai", "search": ["sourcegraph cody"], "category": "coding"}, |
| "Supermaven": {"github": None, "vscode": "supermaven.supermaven", "search": ["supermaven"], "category": "coding"}, |
| |
| "OpenAI Deep Research": {"github": None, "search": ["deep research openai"], "category": "research"}, |
| "Perplexity Research": {"github": None, "search": ["perplexity research"], "category": "research"}, |
| "Manus": {"github": None, "search": ["manus ai", "manus agent"], "category": "general"}, |
| "NotebookLM": {"github": None, "search": ["notebooklm"], "category": "research"}, |
| "Kimi Researcher": {"github": None, "search": ["kimi research"], "category": "research"}, |
| "Genspark": {"github": None, "search": ["genspark"], "category": "research"}, |
| "Gemini Deep Research": {"github": None, "search": ["gemini deep research"], "category": "research"}, |
| |
| "OpenClaw": {"github": "anthropics/openclaw", "search": ["openclaw"], "category": "browser"}, |
| "Operator": {"github": None, "search": ["openai operator"], "category": "browser"}, |
| "Browser Use": {"github": "browser-use/browser-use", "pypi": "browser-use", "search": ["browser use"], "category": "browser"}, |
| "Wingman": {"github": None, "search": ["wingman ai"], "category": "browser"}, |
| "NanoBot": {"github": None, "search": ["nanobot"], "category": "browser"}, |
| "Adept ACT-2": {"github": None, "search": ["adept act", "adept ai"], "category": "browser"}, |
| "Multion": {"github": "AltimateAI/multion", "pypi": "multion", "search": ["multion"], "category": "browser"}, |
| |
| "LangGraph": {"github": "langchain-ai/langgraph", "pypi": "langgraph", "npm": "@langchain/langgraph", "search": ["langgraph"], "category": "multi"}, |
| "CrewAI": {"github": "crewAIInc/crewAI", "pypi": "crewai", "search": ["crewai"], "category": "multi"}, |
| "Microsoft AutoGen": {"github": "microsoft/autogen", "pypi": "autogen", "search": ["autogen", "microsoft autogen"], "category": "multi"}, |
| "OpenAI Agents SDK": {"github": "openai/openai-agents-python", "pypi": "openai-agents", "search": ["openai agents sdk"], "category": "multi"}, |
| "Claude MCP": {"github": "anthropics/anthropic-sdk-python", "search": ["claude mcp", "model context protocol"], "category": "multi"}, |
| "LlamaIndex": {"github": "run-llama/llama_index", "pypi": "llama-index", "search": ["llamaindex"], "category": "multi"}, |
| "PydanticAI": {"github": "pydantic/pydantic-ai", "pypi": "pydantic-ai", "search": ["pydantic ai"], "category": "multi"}, |
| "Semantic Kernel": {"github": "microsoft/semantic-kernel", "pypi": "semantic-kernel", "search": ["semantic kernel"], "category": "multi"}, |
| "DSPy": {"github": "stanfordnlp/dspy", "pypi": "dspy", "search": ["dspy"], "category": "multi"}, |
| "Haystack": {"github": "deepset-ai/haystack", "pypi": "haystack-ai", "search": ["haystack ai"], "category": "multi"}, |
| "Composio": {"github": "ComposioHQ/composio", "pypi": "composio-core", "search": ["composio"], "category": "multi"}, |
| |
| "ChatGPT": {"github": None, "search": ["chatgpt"], "category": "general"}, |
| "Claude": {"github": None, "search": ["claude anthropic"], "category": "general"}, |
| "AutoGPT": {"github": "Significant-Gravitas/AutoGPT", "pypi": "autogpt", "search": ["autogpt"], "category": "general"}, |
| "MetaGPT": {"github": "geekan/MetaGPT", "pypi": "metagpt", "search": ["metagpt"], "category": "general"}, |
| "Lovable": {"github": None, "search": ["lovable dev", "lovable ai"], "category": "coding"}, |
| "v0": {"github": None, "search": ["v0 dev", "v0 vercel"], "category": "coding"}, |
| "Pieces": {"github": "pieces-app/pieces-os-client-sdk-for-python", "vscode": "MeshIntelligentTechnologiesInc.pieces-vscode", "search": ["pieces for developers"], "category": "coding"}, |
| } |
|
|
| |
| BENCHMARK_SCORES = { |
| |
| "swebench": { |
| "Claude Code": 72.7, "OpenAI Codex": 69.1, "Devin": 55.0, |
| "OpenHands": 53.0, "SWE-agent": 33.2, "Cursor": 45.0, |
| "GitHub Copilot": 35.0, "Windsurf": 40.0, "Cline": 38.0, |
| "Aider": 41.0, "Amazon Q Developer": 36.8, |
| }, |
| |
| "gaia": { |
| "OpenAI Deep Research": 72.0, "Manus": 65.0, "Claude": 58.0, |
| "ChatGPT": 55.0, "Perplexity Research": 50.0, |
| }, |
| |
| "webarena": { |
| "OpenClaw": 42.0, "Operator": 38.0, "Browser Use": 28.0, |
| "Manus": 35.0, "Multion": 24.0, |
| }, |
| |
| "humaneval": { |
| "Claude Code": 92.0, "OpenAI Codex": 90.0, "Cursor": 88.0, |
| "GitHub Copilot": 82.0, "Devin": 78.0, "Cline": 75.0, |
| "Windsurf": 80.0, "SWE-agent": 65.0, "OpenHands": 70.0, |
| "Aider": 79.0, "Amazon Q Developer": 76.0, "Tabnine": 72.0, |
| "Continue": 74.0, "Sourcegraph Cody": 71.0, |
| }, |
| |
| "tau_bench": { |
| "Claude Code": 68.0, "OpenAI Codex": 62.0, "Devin": 58.0, |
| "OpenHands": 52.0, "Aider": 48.0, |
| }, |
| } |
|
|
|
|
| class AgentSignalCollector(BaseCollector): |
| name = "agent_signals" |
|
|
| def collect(self) -> dict: |
| rows = 0 |
| errors = 0 |
| conn = get_connection() |
|
|
| for agent_name, info in AGENT_REGISTRY.items(): |
| signals = {} |
|
|
| |
| for bench_name, bench_data in BENCHMARK_SCORES.items(): |
| if agent_name in bench_data: |
| signals[f"bench_{bench_name}"] = bench_data[agent_name] |
|
|
| |
| repo = info.get("github") |
| if repo: |
| try: |
| r = httpx.get(f"https://api.github.com/repos/{repo}", |
| headers={"Accept": "application/vnd.github+json"}, timeout=15) |
| if r.status_code == 200: |
| data = r.json() |
| signals["github_stars"] = data.get("stargazers_count", 0) |
| signals["github_forks"] = data.get("forks_count", 0) |
| signals["github_open_issues"] = data.get("open_issues_count", 0) |
| signals["github_watchers"] = data.get("subscribers_count", 0) |
|
|
| |
| pushed = data.get("pushed_at") |
| if pushed: |
| pushed_dt = datetime.fromisoformat(pushed.replace("Z", "+00:00")) |
| signals["days_since_update"] = (datetime.now(timezone.utc) - pushed_dt).days |
|
|
| |
| cr = httpx.get(f"https://api.github.com/repos/{repo}/contributors?per_page=1&anon=true", |
| headers={"Accept": "application/vnd.github+json"}, timeout=10) |
| if cr.status_code == 200: |
| |
| link = cr.headers.get("Link", "") |
| match = re.search(r'page=(\d+)>; rel="last"', link) |
| signals["github_contributors"] = int(match.group(1)) if match else len(cr.json()) |
|
|
| |
| ir = httpx.get(f"https://api.github.com/repos/{repo}/issues?state=closed&per_page=1", |
| headers={"Accept": "application/vnd.github+json"}, timeout=10) |
| if ir.status_code == 200: |
| closed_link = ir.headers.get("Link", "") |
| closed_match = re.search(r'page=(\d+)>; rel="last"', closed_link) |
| closed_count = int(closed_match.group(1)) if closed_match else len(ir.json()) |
| total_issues = closed_count + signals.get("github_open_issues", 0) |
| if total_issues > 0: |
| signals["issue_close_rate"] = closed_count / total_issues |
|
|
| time.sleep(1) |
| except Exception as e: |
| logger.debug("[agent_signals] github error for %s: %s", agent_name, e) |
| errors += 1 |
|
|
| |
| pypi_pkg = info.get("pypi") |
| if pypi_pkg: |
| try: |
| r = httpx.get(f"https://pypistats.org/api/packages/{pypi_pkg}/recent", timeout=10) |
| if r.status_code == 200: |
| data = r.json().get("data", {}) |
| signals["pypi_downloads_week"] = data.get("last_week", 0) |
| signals["pypi_downloads_month"] = data.get("last_month", 0) |
| time.sleep(1) |
| except Exception: |
| errors += 1 |
|
|
| |
| npm_pkg = info.get("npm") |
| if npm_pkg: |
| try: |
| r = httpx.get(f"https://api.npmjs.org/downloads/point/last-week/{npm_pkg}", timeout=10) |
| if r.status_code == 200: |
| signals["npm_downloads_week"] = r.json().get("downloads", 0) |
| time.sleep(0.5) |
| except Exception: |
| errors += 1 |
|
|
| |
| vscode_id = info.get("vscode") |
| if vscode_id: |
| try: |
| payload = {"filters": [{"criteria": [{"filterType": 7, "value": vscode_id}]}], "flags": 914} |
| r = httpx.post("https://marketplace.visualstudio.com/_apis/public/gallery/extensionquery", |
| json=payload, headers={"Content-Type": "application/json", |
| "Accept": "application/json;api-version=6.0-preview.1"}, timeout=15) |
| if r.status_code == 200: |
| exts = r.json().get("results", [{}])[0].get("extensions", []) |
| if exts: |
| stats = {s["statisticName"]: s["value"] for s in exts[0].get("statistics", [])} |
| signals["vscode_installs"] = int(stats.get("install", 0)) |
| signals["vscode_rating"] = float(stats.get("averagerating", 0)) |
| signals["vscode_rating_count"] = int(stats.get("ratingcount", 0)) |
| time.sleep(1) |
| except Exception: |
| errors += 1 |
|
|
| |
| search_terms = info.get("search", []) |
| sentiments = [] |
| for term in search_terms: |
| for table, col in [("bluesky_signals", "text"), ("reddit_signals", "title"), |
| ("hn_signals", "title"), ("mastodon_signals", "text")]: |
| try: |
| srows = conn.execute(f""" |
| SELECT s.composite_sentiment FROM sentiment_scores s |
| WHERE LOWER(s.text_preview) LIKE ? |
| """, (f"%{term.lower()}%",)).fetchall() |
| sentiments.extend([r[0] for r in srows if r[0] is not None]) |
| except Exception: |
| pass |
|
|
| if sentiments: |
| signals["sentiment_avg"] = sum(sentiments) / len(sentiments) |
| signals["sentiment_count"] = len(sentiments) |
| signals["sentiment_positive_pct"] = sum(1 for s in sentiments if s > 0.05) / len(sentiments) |
|
|
| |
| mention_count = 0 |
| for term in search_terms: |
| try: |
| n = conn.execute("SELECT COUNT(*) FROM stackoverflow_signals WHERE LOWER(title) LIKE ?", |
| (f"%{term.lower()}%",)).fetchone()[0] |
| mention_count += n |
| except Exception: |
| pass |
| signals["so_questions"] = mention_count |
|
|
| |
| github_keys = ["github_stars", "github_forks", "github_open_issues", "github_watchers", |
| "github_contributors", "issue_close_rate", "days_since_update"] |
| if info.get("github") and signals.get("github_stars", 0) == 0: |
| try: |
| prev = conn.execute(""" |
| SELECT signals_json FROM agent_signals_raw |
| WHERE agent_name = ? ORDER BY id DESC LIMIT 1 |
| """, (agent_name,)).fetchone() |
| if prev: |
| prev_signals = json.loads(prev[0]) if prev[0] else {} |
| for k in github_keys: |
| if k in prev_signals and prev_signals[k]: |
| signals[k] = prev_signals[k] |
| except Exception: |
| pass |
|
|
| |
| now_ts = datetime.now(timezone.utc).strftime("%Y-%m-%d %H:%M:%S") |
| with db() as wconn: |
| wconn.execute(""" |
| INSERT INTO agent_signals_raw |
| (agent_name, category, signals_json, collected_at) |
| VALUES (?, ?, ?, ?) |
| """, (agent_name, info.get("category", "general"), json.dumps(signals), now_ts)) |
| rows += 1 |
|
|
| conn.close() |
| return {"rows_inserted": rows, "errors": errors} |
|
|