skills/agent-memory/SKILL.md
# AgentMemory Skill Persistent memory system for AI agents. Remember facts, learn from experience, and track entities across sessions. ## Installation ```bash clawdhub install agent-memory ``` ## Usage ```python from src.memory import AgentMemory mem = AgentMemory() # Remember facts mem.remember("Important information", tags=["category"]) # Learn from experience mem.learn( action="What was done", context="situation", outcome="positive", # or "negative" insight="What was
npx skillsauth add m4d3bug/oh-my-openclaw skills/agent-memoryInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Persistent memory system for AI agents. Remember facts, learn from experience, and track entities across sessions.
clawdhub install agent-memory
from src.memory import AgentMemory
mem = AgentMemory()
# Remember facts
mem.remember("Important information", tags=["category"])
# Learn from experience
mem.learn(
action="What was done",
context="situation",
outcome="positive", # or "negative"
insight="What was learned"
)
# Recall memories
facts = mem.recall("search query")
lessons = mem.get_lessons(context="topic")
# Track entities
mem.track_entity("Name", "person", {"role": "engineer"})
Add to your AGENTS.md or HEARTBEAT.md:
## Memory Protocol
On session start:
1. Load recent lessons: `mem.get_lessons(limit=5)`
2. Check entity context for current task
3. Recall relevant facts
On session end:
1. Extract durable facts from conversation
2. Record any lessons learned
3. Update entity information
Default: ~/.agent-memory/memory.db
Custom: AgentMemory(db_path="/path/to/memory.db")
testing
Anticipates needs, keeps work moving, and improves through use so the agent gets more proactive over time.
tools
Implements Manus-style file-based planning to organize and track progress on complex tasks. Creates task_plan.md, findings.md, and progress.md. Use when asked to plan out, break down, or organize a multi-step project, research task, or any work requiring >5 tool calls. Supports automatic session recovery after /clear.
development
Typed knowledge graph for structured agent memory and composable skills. Use when creating/querying entities (Person, Project, Task, Event, Document), linking related objects, enforcing constraints, planning multi-step actions as graph transformations, or when skills need to share state. Trigger on "remember", "what do I know about", "link X to Y", "show dependencies", entity CRUD, or cross-skill data access.
development
Multi search engine integration with 17 engines (8 CN + 9 Global). Supports advanced search operators, time filters, site search, privacy engines, and WolframAlpha knowledge queries. No API keys required.