Setting Your Cache Type
By default, Auto-GPT set up with Docker Compose will use Redis as its memory backend. Otherwise, the default is LocalCache (which stores memory in a JSON file).
To switch to a different backend, change the MEMORY_BACKEND
in .env
to the value that you want:
local
uses a local JSON cache filepinecone
uses the Pinecone.io account you configured in your ENV settingsredis
will use the redis cache that you configuredmilvus
will use the milvus cache that you configuredweaviate
will use the weaviate cache that you configured
Memory Backend Setup
Links to memory backends
- Pinecone (opens in a new tab)
- Milvus (opens in a new tab) – self-hosted (opens in a new tab), or managed with Zilliz Cloud (opens in a new tab)
- Redis (opens in a new tab)
- Weaviate (opens in a new tab)
Redis Setup
Important
If you have set up Auto-GPT using Docker Compose, then Redis is included, no further setup needed.
Caution
This setup is not intended to be publicly accessible and lacks security measures. Avoid exposing Redis to the internet without a password or at all!
-
Launch Redis container
docker run -d --name redis-stack-server -p 6379:6379 redis/redis-stack-server:latest
-
Set the following settings in
.env
MEMORY_BACKEND=redis REDIS_HOST=localhost REDIS_PORT=6379 REDIS_PASSWORD="PASSWORD"
Replace
"PASSWORD"
by your password, omitting the double quotations ("").Optional configuration:
WIPE_REDIS_ON_START=False
to persist memory stored in Redis between runs.MEMORY_INDEX=<WHATEVER>
to specify a name for the memory index in Redis. The default isauto-gpt
.
Info
See redis-stack-server (opens in a new tab) for setting a password and additional configuration.
🌲 Pinecone API Key Setup
Pinecone lets you store vast amounts of vector-based memory, allowing the agent to load only relevant memories at any given time.
- Go to pinecone (opens in a new tab) and make an account if you don't already have one.
- Choose the
Starter
plan to avoid being charged. - Find your API key and region under the default project in the left sidebar.
In the .env
file set:
PINECONE_API_KEY
PINECONE_ENV
(example:us-east4-gcp
)MEMORY_BACKEND=pinecone
Milvus Setup
Milvus (opens in a new tab) is an open-source, highly scalable vector database to store huge amounts of vector-based memory and provide fast relevant search. It can be quickly deployed with docker, or as a cloud service provided by Zilliz Cloud (opens in a new tab).
-
Deploy your Milvus service, either locally using docker or with a managed Zilliz Cloud database:
-
Set up a managed Zilliz Cloud database
- Go to Zilliz Cloud (opens in a new tab) and sign up if you don't already have account.
- In the Databases tab, create a new database.
- Remember your username and password
- Wait until the database status is changed to RUNNING.
- In the Database detail tab of the database you have created, the public cloud endpoint, such as:
https://xxx-xxxx.xxxx.xxxx.zillizcloud.com:443
.
-
Run
pip3 install pymilvus
to install the required client library. Make sure your PyMilvus version and Milvus version are compatible (opens in a new tab) to avoid issues. See also the PyMilvus installation instructions (opens in a new tab). -
Update
.env
:MEMORY_BACKEND=milvus
- One of:
MILVUS_ADDR=host:ip
(for local instance)MILVUS_ADDR=https://xxx-xxxx.xxxx.xxxx.zillizcloud.com:443
(for Zilliz Cloud)
The following settings are optional:
MILVUS_USERNAME='username-of-your-milvus-instance'
MILVUS_PASSWORD='password-of-your-milvus-instance'
MILVUS_SECURE=True
to use a secure connection. Only use if your Milvus instance has TLS enabled. Note: settingMILVUS_ADDR
to ahttps://
URL will override this setting.MILVUS_COLLECTION
to change the collection name to use in Milvus. Defaults toautogpt
.
Weaviate Setup
Weaviate (opens in a new tab) is an open-source vector database. It allows to store data objects and vector embeddings from ML-models and scales seamlessly to billion of data objects. To set up a Weaviate database, check out their Quickstart Tutorial (opens in a new tab).
Although still experimental, Embedded Weaviate (opens in a new tab)
is supported which allows the Auto-GPT process itself to start a Weaviate instance.
To enable it, set USE_WEAVIATE_EMBEDDED
to True
and make sure you pip install "weaviate-client>=3.15.4"
.
Install the Weaviate client
Install the Weaviate client before usage.
$ pip install weaviate-client
Setting up environment variables
In your .env
file set the following:
MEMORY_BACKEND=weaviate
WEAVIATE_HOST="127.0.0.1" # the IP or domain of the running Weaviate instance
WEAVIATE_PORT="8080"
WEAVIATE_PROTOCOL="http"
WEAVIATE_USERNAME="your username"
WEAVIATE_PASSWORD="your password"
WEAVIATE_API_KEY="your weaviate API key if you have one"
WEAVIATE_EMBEDDED_PATH="/home/me/.local/share/weaviate" # this is optional and indicates where the data should be persisted when running an embedded instance
USE_WEAVIATE_EMBEDDED=False # set to True to run Embedded Weaviate
MEMORY_INDEX="Autogpt" # name of the index to create for the application
View Memory Usage
View memory usage by using the --debug
flag :)
🧠 Memory pre-seeding
Memory pre-seeding allows you to ingest files into memory and pre-seed it before running Auto-GPT.
$ python data_ingestion.py -h
usage: data_ingestion.py [-h] (--file FILE | --dir DIR) [--init] [--overlap OVERLAP] [--max_length MAX_LENGTH]
Ingest a file or a directory with multiple files into memory. Make sure to set your .env before running this script.
options:
-h, --help show this help message and exit
--file FILE The file to ingest.
--dir DIR The directory containing the files to ingest.
--init Init the memory and wipe its content (default: False)
--overlap OVERLAP The overlap size between chunks when ingesting files (default: 200)
--max_length MAX_LENGTH The max_length of each chunk when ingesting files (default: 4000)
# python data_ingestion.py --dir DataFolder --init --overlap 100 --max_length 2000
In the example above, the script initializes the memory, ingests all files within the Auto-Gpt/autogpt/auto_gpt_workspace/DataFolder
directory into memory with an overlap between chunks of 100 and a maximum length of each chunk of 2000.
Note that you can also use the --file
argument to ingest a single file into memory and that data_ingestion.py will only ingest files within the /auto_gpt_workspace
directory.
The DIR path is relative to the auto_gpt_workspace directory, so python data_ingestion.py --dir . --init
will ingest everything in auto_gpt_workspace
directory.
You can adjust the max_length
and overlap
parameters to fine-tune the way the
documents are presented to the AI when it "recall" that memory:
- Adjusting the overlap value allows the AI to access more contextual information from each chunk when recalling information, but will result in more chunks being created and therefore increase memory backend usage and OpenAI API requests.
- Reducing the
max_length
value will create more chunks, which can save prompt tokens by allowing for more message history in the context, but will also increase the number of chunks. - Increasing the
max_length
value will provide the AI with more contextual information from each chunk, reducing the number of chunks created and saving on OpenAI API requests. However, this may also use more prompt tokens and decrease the overall context available to the AI.
Memory pre-seeding is a technique for improving AI accuracy by ingesting relevant data into its memory. Chunks of data are split and added to memory, allowing the AI to access them quickly and generate more accurate responses. It's useful for large datasets or when specific information needs to be accessed quickly. Examples include ingesting API or GitHub documentation before running Auto-GPT.
Attention
If you use Redis for memory, make sure to run Auto-GPT with WIPE_REDIS_ON_START=False
For other memory backends, we currently forcefully wipe the memory when starting
Auto-GPT. To ingest data with those memory backends, you can call the
data_ingestion.py
script anytime during an Auto-GPT run.
Memories will be available to the AI immediately as they are ingested, even if ingested while Auto-GPT is running.