| name | honcho-memory |
| description | Gives AI agents persistent memory across conversations using Honcho. Automatically saves and retrieves user context so the AI remembers preferences, history, and facts between sessions. Use when you need the AI to remember past conversations, recall what a user has told it, inject relevant context into prompts, or manage separate memory spaces for different topics. |
| license | AGPL-3.0 |
| compatibility | Requires Python 3.9+, honcho-ai>=2.1.0, and a Honcho API key from honcho.dev. Set HONCHO_API_KEY and optionally HONCHO_WORKSPACE_ID in your environment. |
| metadata | {"author":"plastic-labs","version":"0.1.0","honcho-sdk":"2.1.0"} |
Honcho Memory Skill
This skill provides three tools for storing and retrieving AI memory using Honcho.
Setup
-
Get a Honcho API key at honcho.dev.
-
Set environment variables:
HONCHO_API_KEY=your-api-key
HONCHO_WORKSPACE_ID=default # optional, defaults to "default"
-
Install dependencies:
pip install honcho-ai python-dotenv
Tools
save_memory
Saves a conversation turn (user or assistant message) to Honcho.
When to use: After every message exchange to build up the user's memory.
from tools.save_memory import save_memory
save_memory(
user_id="alice",
content="I love hiking",
role="user",
session_id="chat-1",
assistant_id="assistant"
)
query_memory
Asks a natural language question against stored memory using Honcho's Dialectic API.
When to use: When the user asks "do you remember...?", or when you need to recall facts about the user before responding.
from tools.query_memory import query_memory
answer = query_memory(
user_id="alice",
query="What are Alice's hobbies?",
session_id="chat-1"
)
get_context
Retrieves recent conversation history formatted for direct use in an LLM API call.
When to use: At the start of each LLM call to inject relevant context from past conversations.
from tools.get_context import get_context
messages = get_context(
user_id="alice",
session_id="chat-1",
assistant_id="assistant",
tokens=4000
)
Concept Mapping
| Zo Computer | Honcho |
|---|
| Account | Workspace |
| User | Peer |
| Conversation | Session |
| Message | Message |
Example: Full Conversation Flow
from tools.save_memory import save_memory
from tools.query_memory import query_memory
from tools.get_context import get_context
user_id = "alice"
session_id = "session-1"
save_memory(user_id, "I'm learning Rust and love rock climbing", "user", session_id)
save_memory(user_id, "That's great! Both require patience.", "assistant", session_id)
print(query_memory(user_id, "What does Alice do in her free time?"))
messages = get_context(user_id, session_id, "assistant", tokens=4000)