Skip to main content

Create LLM agents with long-term memory and custom tools

Project description

MemGPT logo

MemGPT allows you to build LLM agents with long term memory & custom tools

Discord Twitter Follow arxiv 2310.08560 Documentation

MemGPT makes it easy to build and deploy stateful LLM agents with support for:

You can also use MemGPT to deploy agents as a service. You can use a MemGPT server to run a multi-user, multi-agent application on top of supported LLM providers.

image

Installation & Setup

Install MemGPT:

pip install -U pymemgpt

To use MemGPT with OpenAI, set the environment variable OPENAI_API_KEY to your OpenAI key then run:

memgpt quickstart --backend openai

To use MemGPT with a free hosted endpoint, you run run:

memgpt quickstart --backend memgpt

For more advanced configuration options or to use a different LLM backend or local LLMs, run memgpt configure.

Quickstart (CLI)

You can create and chat with a MemGPT agent by running memgpt run in your CLI. The run command supports the following optional flags (see the CLI documentation for the full list of flags):

  • --agent: (str) Name of agent to create or to resume chatting with.
  • --first: (str) Allow user to sent the first message.
  • --debug: (bool) Show debug logs (default=False)
  • --no-verify: (bool) Bypass message verification (default=False)
  • --yes/-y: (bool) Skip confirmation prompt and use defaults (default=False)

You can view the list of available in-chat commands (e.g. /memory, /exit) in the CLI documentation.

Dev portal (alpha build)

MemGPT provides a developer portal that enables you to easily create, edit, monitor, and chat with your MemGPT agents. The easiest way to use the dev portal is to install MemGPT via docker (see instructions below).

image

Quickstart (Server)

Option 1 (Recommended): Run with docker compose

  1. Install docker on your system
  2. Clone the repo: git clone https://github.com/cpacker/MemGPT.git
  3. Copy-paste .env.example to .env and optionally modify
  4. Run docker compose up
  5. Go to memgpt.localhost in the browser to view the developer portal

Option 2: Run with the CLI:

  1. Run memgpt server
  2. Go to localhost:8283 in the browser to view the developer portal

Once the server is running, you can use the Python client or REST API to connect to memgpt.localhost (if you're running with docker compose) or localhost:8283 (if you're running with the CLI) to create users, agents, and more. The service requires authentication with a MemGPT admin password; it is the value of MEMGPT_SERVER_PASS in .env.

Supported Endpoints & Backends

MemGPT is designed to be model and provider agnostic. The following LLM and embedding endpoints are supported:

Provider LLM Endpoint Embedding Endpoint
OpenAI
Azure OpenAI
Google AI (Gemini)
Anthropic (Claude)
Groq ✅ (alpha release)
Cohere API
vLLM
Ollama
LM Studio
koboldcpp
oobabooga web UI
llama.cpp
HuggingFace TEI

When using MemGPT with open LLMs (such as those downloaded from HuggingFace), the performance of MemGPT will be highly dependent on the LLM's function calling ability. You can find a list of LLMs/models that are known to work well with MemGPT on the #model-chat channel on Discord, as well as on this spreadsheet.

How to Get Involved

  • Contribute to the Project: Interested in contributing? Start by reading our Contribution Guidelines.
  • Ask a Question: Join our community on Discord and direct your questions to the #support channel.
  • Report Issues or Suggest Features: Have an issue or a feature request? Please submit them through our GitHub Issues page.
  • Explore the Roadmap: Curious about future developments? View and comment on our project roadmap.
  • Benchmark the Performance: Want to benchmark the performance of a model on MemGPT? Follow our Benchmarking Guidance.
  • Join Community Events: Stay updated with the MemGPT event calendar or follow our Twitter account.

Benchmarking Guidance

To evaluate the performance of a model on MemGPT, simply configure the appropriate model settings using memgpt configure, and then initiate the benchmark via memgpt benchmark. The duration will vary depending on your hardware. This will run through a predefined set of prompts through multiple iterations to test the function calling capabilities of a model. You can help track what LLMs work well with MemGPT by contributing your benchmark results via this form, which will be used to update the spreadsheet.

Legal notices

By using MemGPT and related MemGPT services (such as the MemGPT endpoint or hosted service), you agree to our privacy policy and terms of service.

Project details


Release history Release notifications | RSS feed

Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

Built Distribution

File details

Details for the file pymemgpt_nightly-0.3.25.dev20240825185545.tar.gz.

File metadata

File hashes

Hashes for pymemgpt_nightly-0.3.25.dev20240825185545.tar.gz
Algorithm Hash digest
SHA256 8be47b63fd6ac51085a7fbd03181e0a747c444f5de4a307f9ee8d316ca7d6d0b
MD5 1320585a0548e92ef9fb77f47a2e00dd
BLAKE2b-256 12f03a7cb7a1e4f39f78eef6a4fb70e0ffa67a591dfbafe781f5b45c487c832d

See more details on using hashes here.

File details

Details for the file pymemgpt_nightly-0.3.25.dev20240825185545-py3-none-any.whl.

File metadata

File hashes

Hashes for pymemgpt_nightly-0.3.25.dev20240825185545-py3-none-any.whl
Algorithm Hash digest
SHA256 6f5676e04bffb3fcea3f22d78d1612271ef9a600aa220302d91ad4f9b8e16044
MD5 67c6e1a9d098b818c9cca84165b4b001
BLAKE2b-256 ef238632476564bd20b7b91a79cb579ee8a46ffe09e132a6ae7898585008c771

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page