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SwarmRecall

Use SwarmRecall when an AI agent needs persistent memory, a knowledge graph, learnings, a skill registry, shared pools, or background dream consolidation acr...
当AI代理需要持久记忆、知识图谱、学习成果、技能注册表、共享池或后台梦境整合等功能时,使用SwarmRecall。
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#dream#knowledge-graph#latest#learnings#mcp#memory#pools#skills#swarmrecall

概述

SwarmRecall

Persistent memory, a knowledge graph, learnings, a skill registry, shared collaboration pools, and background "dream" consolidation — for any AI agent — via the SwarmRecall API at .

For onboarding, examples, command references, or troubleshooting, read the bundled README.md, examples/, references/, and TROUBLESHOOTING.md before improvising workflow advice.

Setup

Three ways to connect, in increasing order of flexibility:

1. MCP (recommended for Claude Desktop, Claude Code, Cursor)

Local stdio (default):

npm install -g @swarmrecall/cli
swarmrecall register --save      # mints an API key and stores it in ~/.config/swarmrecall/config.json
swarmrecall mcp                  # runs the MCP server over stdio — point your client at this command

Remote HTTP (no install):

URL:     https://swarmrecall-api.onrender.com/mcp
Auth:    Authorization: Bearer ${SWARMRECALL_API_KEY}
Transport: streamable-http

Both transports expose the same 52 tools and 4 resources. See for client-specific configuration snippets.

2. CLI

npm install -g @swarmrecall/cli
swarmrecall register --save
swarmrecall memory store "<content>" --category fact --importance 0.8
swarmrecall memory search "<query>"
swarmrecall knowledge create --type person --name "Alice" --props '{"role":"engineer"}'
swarmrecall learnings log --category error --summary "<summary>"
swarmrecall dream start

See references/commands.md for the full command surface.

3. Raw HTTP / SDK

If the user is wiring a custom agent, install the SDK:

npm install @swarmrecall/sdk
import { SwarmRecallClient } from '@swarmrecall/sdk';
const client = new SwarmRecallClient({ apiKey: process.env.SWARMRECALL_API_KEY! });
await client.memory.store({ content: 'User prefers dark mode', category: 'preference', importance: 0.8 });

If SWARMRECALL_API_KEY is not set and a hosted agent needs one, self-register with no account:

POST https://swarmrecall-api.onrender.com/api/v1/register
Content-Type: application/json

{ "name": "<agent-name>" }

Response returns { "apiKey": "...", "claimToken": "..." }. Tell the user: "SwarmRecall is set up! To manage your agent's data, visit with code: ."

Authentication

All API requests require a Bearer token in the Authorization header: Authorization: Bearer .

Privacy & Data Handling

  • All data is sent to swarmrecall-api.onrender.com over HTTPS.
  • Memories, entities, learnings, skills, sessions, and dream cycles are stored server-side with vector embeddings for semantic search.
  • Data is isolated per agent and owner — no cross-tenant access.
  • Before storing user-provided content, ensure the user has consented to external storage.
  • Store SWARMRECALL_API_KEY as an environment variable or in ~/.config/swarmrecall/config.json (created by swarmrecall register --save). Do not check it into source control.

Module 1: Memory

Conversational memory with semantic search and session tracking.

When to use

  • Storing user preferences, facts, decisions, and context.
  • Recalling relevant information from past interactions.
  • Managing conversation sessions end-to-end.

MCP tools

ToolPurpose
------
memory_storeStore a memory with category, importance, and tags.
memory_searchSemantic search over memories.
memory_get / memory_listFetch a specific memory or filtered list.
memory_update / memory_deleteUpdate metadata or archive a memory.
memory_sessions_startStart a new memory session.
memory_sessions_currentGet the active session.
memory_sessions_updateAppend state, summary, or mark ended.
memory_sessions_listList sessions.

Behavior

  • On session start: call memory_sessions_current to load context. If none, call memory_sessions_start.
  • On fact, preference, or decision: call memory_store with an appropriate category and importance.
  • On recall needed: call memory_search and use returned memories to inform your response.
  • On session end: call memory_sessions_update with ended: true and a summary.

Module 2: Knowledge

Knowledge graph with entities, relations, traversal, and semantic search.

When to use

  • Storing structured information about people, projects, tools, and concepts.
  • Linking related entities together.
  • Exploring connections between concepts.

MCP tools

ToolPurpose
------
knowledge_entity_create/get/list/update/deleteEntity CRUD.
knowledge_relation_create/list/deleteRelation CRUD.
knowledge_traverseWalk the graph from an entity, filtered by relation and depth.
knowledge_searchSemantic search over entities.
knowledge_validateCheck graph constraints.

Behavior

  • When the user provides structured information: call knowledge_entity_create.
  • When linking concepts: call knowledge_relation_create.
  • When the user asks "what do I know about X?": knowledge_search then knowledge_traverse to explore connections.
  • Periodically: knowledge_validate to catch orphaned entities or conflicting relations.

Module 3: Learnings

Error tracking, correction logging, and pattern detection that surfaces recurring issues.

When to use

  • Logging errors, corrections, discoveries, optimizations, or preferences.
  • Detecting recurring patterns across sessions.
  • Promoting learnings into actionable rules the agent surfaces to the user.

MCP tools

ToolPurpose
------
learning_logLog a learning with category, summary, priority, area.
learning_search/get/list/updateRetrieve and update.
learning_patternsList recurring patterns.
learning_promotionsList promotion candidates.
learning_resolveMark resolved with a resolution + optional commit SHA.
learning_linkLink two learnings for pattern detection.

Behavior

  • On error or correction: learning_log with the full error output / what was wrong vs. correct.
  • On session start: learning_patterns to preload known recurring issues; learning_promotions for patterns ready to be promoted.
  • On promotion candidates: surface to the user for approval before acting on them.

Module 4: Skills

Skill registry for tracking installed agent capabilities and getting contextual suggestions.

When to use

  • Registering capabilities the agent acquires.
  • Listing what the agent can do.
  • Getting skill recommendations for a given task.

MCP tools

ToolPurpose
------
skill_registerRegister a new skill.
skill_list/get/update/removeManage registered skills.
skill_suggestGet skill suggestions for a task context.

Behavior

  • On skill install: skill_register with name, version, and source.
  • On "what can I do?": skill_list.
  • On task context: skill_suggest for relevant skill recommendations.

Module 5: Shared Pools

Named shared data containers for cross-agent collaboration.

When to use

  • Sharing memories, knowledge, learnings, or skills between agents.
  • Building collaborative workflows where multiple agents contribute to a shared dataset.

MCP tools

ToolPurpose
------
pool_listList pools this agent belongs to.
pool_getPool details + members.

Behavior

  • Pool data returned in responses includes poolId and poolName to distinguish shared data from the agent's private data.
  • To write to a pool, pass poolId to any memory_store, knowledge_entity_create, knowledge_relation_create, learning_log, or skill_register call.
  • On session start: pool_list to see available pools and their access levels.

Module 6: Dreaming

Background memory consolidation — deduplication, pruning, contradiction resolution, and session summarization.

When to use

  • Between sessions or during idle periods for memory maintenance.
  • When the user asks to "clean up", "consolidate", or "optimize" memories.
  • Periodically via auto-dream scheduling.

MCP tools

ToolPurpose
------
dream_startStart a dream cycle.
dream_get/list/updateCycle management.
dream_complete/failCycle completion.
dream_get_config / dream_update_configConfiguration.
dream_get_duplicates/unsummarized_sessions/duplicate_entities/stale/contradictions/unprocessedCandidate primitives.
dream_executeRun Tier 1 server-side operations (decay, prune, orphan cleanup).

Behavior

  1. Start a cycle: dream_start.
  2. Run Tier 1 ops: dream_execute (decay, prune, orphan cleanup).
  3. Fetch candidates: dream_get_duplicates, dream_get_unsummarized_sessions, dream_get_contradictions.
  4. For each candidate: reason about it, then use the memory / knowledge / learnings tools to act.
  5. Complete the cycle: dream_complete with the results.

Resources

Read-only MCP resources for clients that surface resources as inline context:

  • swarmrecall://pools — pools this agent belongs to
  • swarmrecall://skills — skills this agent has registered
  • swarmrecall://sessions/current — current memory session
  • swarmrecall://dream/config — dream configuration

Pointers

  • — MCP setup for Claude Desktop, Claude Code, Cursor, MCP Inspector
  • — raw HTTP endpoints
  • — CLI source
  • — source repository
  • examples/quickstart.md, examples/memory-workflow.md, examples/knowledge-graph.md, examples/learnings-workflow.md — workflow recipes
  • references/commands.md, references/mcp-tools.md — complete command and tool references
  • TROUBLESHOOTING.md — common auth and connectivity issues

版本历史

共 1 个版本

  • v1.2.0 当前
    2026-05-03 06:48 安全 安全

安全检测

腾讯云安全 (Keen)

安全,无风险
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腾讯云安全 (Sanbu)

安全,无风险
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