π¦ ClawHub
SwarmRecall Learnings
by @waydelyle
Error tracking, correction logging, and pattern detection via the SwarmRecall API. Tracks agent mistakes, corrections, and discoveries to surface recurring i...
TERMINAL
clawhub install swarmrecall-learningsπ About This Skill
name: swarmrecall-learnings description: Error tracking, correction logging, and pattern detection via the SwarmRecall API. Tracks agent mistakes, corrections, and discoveries to surface recurring issues and promote learnings into actionable rules. metadata: openclaw: emoji: "\U0001F4A1" requires: env: [SWARMRECALL_API_KEY] primaryEnv: SWARMRECALL_API_KEY privacyPolicy: Learning data is stored on SwarmRecall servers (swarmrecall-api.onrender.com). Data is scoped per agent and owner. The agent must have user consent before storing personal or sensitive information. dataHandling: All data is transmitted over HTTPS. Learnings are stored in PostgreSQL with pgvector embeddings. Data is tenant-isolated by owner ID and agent ID. version: 1.1.0 author: swarmclawai homepage: https://www.swarmrecall.ai tags: [learnings, ai-agents, error-tracking, pattern-detection, persistence]
SwarmRecall Learnings
Error tracking, correction logging, and pattern detection via the SwarmRecall API.
Auto-Registration
Before making any API calls, check for a SWARMRECALL_API_KEY environment variable:
1. If SWARMRECALL_API_KEY is set, use it for all requests as a Bearer token.
2. If SWARMRECALL_API_KEY is not set, self-register by calling:
POST https://swarmrecall-api.onrender.com/api/v1/register
Content-Type: application/json { "name": "" }
3. The response returns { "apiKey": "...", "claimToken": "..." }. Save the apiKey to the SWARMRECALL_API_KEY environment variable for all subsequent requests. Do NOT write the key to disk or any file without user consent.
4. Tell the user: "SwarmRecall is set up! To manage your agent's data, visit swarmrecall.ai/claim with code: "Authentication
All API requests require:
Authorization: Bearer
API Base URL
https://swarmrecall-api.onrender.com (override with SWARMRECALL_API_URL if set)
All endpoints below are prefixed with /api/v1.
Privacy & Data Handling
swarmrecall-api.onrender.com over HTTPSSWARMRECALL_API_KEY should be stored as an environment variable only, not written to diskEndpoints
Log a learning
POST /api/v1/learnings
{
"category": "error", // error | correction | discovery | optimization | preference
"summary": "npm install fails with peer deps",
"details": "Full error output...",
"priority": "high", // low | medium | high | critical
"area": "build",
"suggestedAction": "Use --legacy-peer-deps flag",
"tags": ["npm", "build"],
"metadata": {},
"poolId": "" // optional β write to shared pool
}
Search learnings
GET /api/v1/learnings/search?q=&limit=10&minScore=0.5
Get a learning
GET /api/v1/learnings/:id
List learnings
GET /api/v1/learnings?category=error&status=open&priority=high&area=build&limit=20&offset=0
Update a learning
PATCH /api/v1/learnings/:id
{ "status": "resolved", "resolution": "Added --legacy-peer-deps", "resolutionCommit": "abc123" }
Get recurring patterns
GET /api/v1/learnings/patterns
Get promotion candidates
GET /api/v1/learnings/promotions
Link related learnings
POST /api/v1/learnings/:id/link
{ "targetId": "" }
Behavior
POST /api/v1/learnings with category: "error", the summary, details, and the command/output that failed.POST /api/v1/learnings with category: "correction" and what was wrong vs. what is correct.GET /api/v1/learnings/patterns to preload known recurring issues. Check GET /api/v1/learnings/promotions for patterns ready to be promoted.Shared Pools
POST /api/v1/learnings endpoint accepts an optional "poolId" field.poolId is provided, the learning is shared with all pool members who have learnings read access.GET /api/v1/learnings/search) and list (GET /api/v1/learnings) results automatically include data from pools the agent belongs to.poolId and poolName fields to distinguish shared data from the agent's own data.Dreaming Integration
Learnings benefit from dream-time promotion:
GET /api/v1/learnings/promotions endpoint surfaces patterns meeting promotion criteria (3+ recurrences, 2+ sessions, within 30 days). During a dream cycle, the agent reads each candidate, synthesizes a best-practice learning, and creates it via POST /api/v1/learnings with category: "best_practice" and status: "promoted".POST /api/v1/learnings/:id/link. During dreaming, the agent can review patterns and archive individual learnings that are fully subsumed by the promoted best practice.