Requirements
- Target platform
- OpenClaw
- Install method
- Manual import
- Extraction
- Extract archive
- Prerequisites
- OpenClaw
- Primary doc
- SKILL.md
Persistent memory for AI agents to store facts, learn from actions, recall information, and track entities across sessions.
Persistent memory for AI agents to store facts, learn from actions, recall information, and track entities across sessions.
Hand the extracted package to your coding agent with a concrete install brief instead of figuring it out manually.
I downloaded a skill package from Yavira. Read SKILL.md from the extracted folder and install it by following the included instructions. Then review README.md for any prerequisites, environment setup, or post-install checks. Tell me what you changed and call out any manual steps you could not complete.
I downloaded an updated skill package from Yavira. Read SKILL.md from the extracted folder, compare it with my current installation, and upgrade it while preserving any custom configuration unless the package docs explicitly say otherwise. Then review README.md for any prerequisites, environment setup, or post-install checks. Summarize what changed and any follow-up checks I should run.
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"})
Starting a session: Load relevant context from memory After conversations: Store important facts After failures: Record lessons learned Meeting new people/projects: Track as entities
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")
Agent frameworks, memory systems, reasoning layers, and model-native orchestration.
Largest current source with strong distribution and engagement signals.