š¼ļø Model gallery
The model gallery is a curated collection of models configurations for LocalAI that enables one-click install of models directly from the LocalAI Web interface.
A list of the models available can also be browsed at the Public LocalAI Gallery.
LocalAI to ease out installations of models provide a way to preload models on start and downloading and installing them in runtime. You can install models manually by copying them over the models
directory, or use the API or the Web interface to configure, download and verify the model assets for you.
The models in this gallery are not directly maintained by LocalAI. If you find a model that is not working, please open an issue on the model gallery repository.
GPT and text generation models might have a license which is not permissive for commercial use or might be questionable or without any license at all. Please check the model license before using it. The official gallery contains only open licensed models.
Useful Links and resources
- Open LLM Leaderboard - here you can find a list of the most performing models on the Open LLM benchmark. Keep in mind models compatible with LocalAI must be quantized in the
gguf
format.
How it works
Navigate the WebUI interface in the “Models” section from the navbar at the top. Here you can find a list of models that can be installed, and you can install them by clicking the “Install” button.
Add other galleries
You can add other galleries by setting the GALLERIES
environment variable. The GALLERIES
environment variable is a list of JSON objects, where each object has a name
and a url
field. The name
field is the name of the gallery, and the url
field is the URL of the gallery’s index file, for example:
GALLERIES=[{"name":"<GALLERY_NAME>", "url":"<GALLERY_URL"}]
The models in the gallery will be automatically indexed and available for installation.
API Reference
Model repositories
You can install a model in runtime, while the API is running and it is started already, or before starting the API by preloading the models.
To install a model in runtime you will need to use the /models/apply
LocalAI API endpoint.
By default LocalAI is configured with the localai
repository.
To use additional repositories you need to start local-ai
with the GALLERIES
environment variable:
GALLERIES=[{"name":"<GALLERY_NAME>", "url":"<GALLERY_URL"}]
For example, to enable the default localai
repository, you can start local-ai
with:
GALLERIES=[{"name":"localai", "url":"github:mudler/localai/gallery/index.yaml"}]
where github:mudler/localai/gallery/index.yaml
will be expanded automatically to https://raw.githubusercontent.com/mudler/LocalAI/main/index.yaml
.
Note: the url are expanded automatically for github
and huggingface
, however https://
and http://
prefix works as well.
If you want to build your own gallery, there is no documentation yet. However you can find the source of the default gallery in the LocalAI repository.
List Models
To list all the available models, use the /models/available
endpoint:
curl http://localhost:8080/models/available
To search for a model, you can use jq
:
# Get all information about models with a name that contains "replit"
curl http://localhost:8080/models/available | jq '.[] | select(.name | contains("replit"))'
# Get the binary name of all local models (not hosted on Hugging Face)
curl http://localhost:8080/models/available | jq '.[] | .name | select(contains("localmodels"))'
# Get all of the model URLs that contains "orca"
curl http://localhost:8080/models/available | jq '.[] | .urls | select(. != null) | add | select(contains("orca"))'
How to install a model from the repositories
Models can be installed by passing the full URL of the YAML config file, or either an identifier of the model in the gallery. The gallery is a repository of models that can be installed by passing the model name.
To install a model from the gallery repository, you can pass the model name in the id
field. For instance, to install the bert-embeddings
model, you can use the following command:
LOCALAI=http://localhost:8080
curl $LOCALAI/models/apply -H "Content-Type: application/json" -d '{
"id": "localai@bert-embeddings"
}'
where:
localai
is the repository. It is optional and can be omitted. If the repository is omitted LocalAI will search the model by name in all the repositories. In the case the same model name is present in both galleries the first match wins.bert-embeddings
is the model name in the gallery (read its config here).
How to install a model not part of a gallery
If you don’t want to set any gallery repository, you can still install models by loading a model configuration file.
In the body of the request you must specify the model configuration file URL (url
), optionally a name to install the model (name
), extra files to install (files
), and configuration overrides (overrides
). When calling the API endpoint, LocalAI will download the models files and write the configuration to the folder used to store models.
LOCALAI=http://localhost:8080
curl $LOCALAI/models/apply -H "Content-Type: application/json" -d '{
"config_url": "<MODEL_CONFIG_FILE_URL>"
}'
# or if from a repository
curl $LOCALAI/models/apply -H "Content-Type: application/json" -d '{
"id": "<GALLERY>@<MODEL_NAME>"
}'
# or from a gallery config
curl $LOCALAI/models/apply -H "Content-Type: application/json" -d '{
"url": "<MODEL_CONFIG_FILE_URL>"
}'
An example that installs openllama can be:
LOCALAI=http://localhost:8080
curl $LOCALAI/models/apply -H "Content-Type: application/json" -d '{
"config_url": "https://raw.githubusercontent.com/mudler/LocalAI/master/embedded/models/hermes-2-pro-mistral.yaml"
}'
The API will return a job uuid
that you can use to track the job progress:
{"uuid":"1059474d-f4f9-11ed-8d99-c4cbe106d571","status":"http://localhost:8080/models/jobs/1059474d-f4f9-11ed-8d99-c4cbe106d571"}
For instance, a small example bash script that waits a job to complete can be (requires jq
):
response=$(curl -s http://localhost:8080/models/apply -H "Content-Type: application/json" -d '{"url": "$model_url"}')
job_id=$(echo "$response" | jq -r '.uuid')
while [ "$(curl -s http://localhost:8080/models/jobs/"$job_id" | jq -r '.processed')" != "true" ]; do
sleep 1
done
echo "Job completed"
To preload models on start instead you can use the PRELOAD_MODELS
environment variable.
To preload models on start, use the PRELOAD_MODELS
environment variable by setting it to a JSON array of model uri:
PRELOAD_MODELS='[{"url": "<MODEL_URL>"}]'
Note: url
or id
must be specified. url
is used to a url to a model gallery configuration, while an id
is used to refer to models inside repositories. If both are specified, the id
will be used.
For example:
PRELOAD_MODELS=[{"url": "github:mudler/LocalAI/gallery/stablediffusion.yaml@master"}]
or as arg:
local-ai --preload-models '[{"url": "github:mudler/LocalAI/gallery/stablediffusion.yaml@master"}]'
or in a YAML file:
local-ai --preload-models-config "/path/to/yaml"
YAML:
- url: github:mudler/LocalAI/gallery/stablediffusion.yaml@master
You can find already some open licensed models in the LocalAI gallery.
If you don’t find the model in the gallery you can try to use the “base” model and provide an URL to LocalAI:
curl $LOCALAI/models/apply -H "Content-Type: application/json" -d '{
"url": "github:mudler/LocalAI/gallery/base.yaml@master",
"name": "model-name",
"files": [
{
"uri": "<URL>",
"sha256": "<SHA>",
"filename": "model"
}
]
}'
Override a model name
To install a model with a different name, specify a name
parameter in the request body.
LOCALAI=http://localhost:8080
curl $LOCALAI/models/apply -H "Content-Type: application/json" -d '{
"url": "<MODEL_CONFIG_FILE>",
"name": "<MODEL_NAME>"
}'
For example, to install a model as gpt-3.5-turbo
:
LOCALAI=http://localhost:8080
curl $LOCALAI/models/apply -H "Content-Type: application/json" -d '{
"url": "github:mudler/LocalAI/gallery/gpt4all-j.yaml",
"name": "gpt-3.5-turbo"
}'
Additional Files
To download additional files with the model, use the files
parameter:
LOCALAI=http://localhost:8080
curl $LOCALAI/models/apply -H "Content-Type: application/json" -d '{
"url": "<MODEL_CONFIG_FILE>",
"name": "<MODEL_NAME>",
"files": [
{
"uri": "<additional_file_url>",
"sha256": "<additional_file_hash>",
"filename": "<additional_file_name>"
}
]
}'
Overriding configuration files
To override portions of the configuration file, such as the backend or the model file, use the overrides
parameter:
LOCALAI=http://localhost:8080
curl $LOCALAI/models/apply -H "Content-Type: application/json" -d '{
"url": "<MODEL_CONFIG_FILE>",
"name": "<MODEL_NAME>",
"overrides": {
"backend": "llama",
"f16": true,
...
}
}'
Examples
Embeddings: Bert
curl $LOCALAI/models/apply -H "Content-Type: application/json" -d '{
"id": "bert-embeddings",
"name": "text-embedding-ada-002"
}'
To test it:
LOCALAI=http://localhost:8080
curl $LOCALAI/v1/embeddings -H "Content-Type: application/json" -d '{
"input": "Test",
"model": "text-embedding-ada-002"
}'
Image generation: Stable diffusion
URL: https://github.com/EdVince/Stable-Diffusion-NCNN
Test it:
curl $LOCALAI/v1/images/generations -H "Content-Type: application/json" -d '{
"prompt": "floating hair, portrait, ((loli)), ((one girl)), cute face, hidden hands, asymmetrical bangs, beautiful detailed eyes, eye shadow, hair ornament, ribbons, bowties, buttons, pleated skirt, (((masterpiece))), ((best quality)), colorful|((part of the head)), ((((mutated hands and fingers)))), deformed, blurry, bad anatomy, disfigured, poorly drawn face, mutation, mutated, extra limb, ugly, poorly drawn hands, missing limb, blurry, floating limbs, disconnected limbs, malformed hands, blur, out of focus, long neck, long body, Octane renderer, lowres, bad anatomy, bad hands, text",
"mode": 2, "seed":9000,
"size": "256x256", "n":2
}'
Audio transcription: Whisper
URL: https://github.com/ggerganov/whisper.cpp
Note
LocalAI will create a batch process that downloads the required files from a model definition and automatically reload itself to include the new model.
Input: url
or id
(required), name
(optional), files
(optional)
curl http://localhost:8080/models/apply -H "Content-Type: application/json" -d '{
"url": "<MODEL_DEFINITION_URL>",
"id": "<GALLERY>@<MODEL_NAME>",
"name": "<INSTALLED_MODEL_NAME>",
"files": [
{
"uri": "<additional_file>",
"sha256": "<additional_file_hash>",
"filename": "<additional_file_name>"
},
"overrides": { "backend": "...", "f16": true }
]
}
An optional, list of additional files can be specified to be downloaded within files
. The name
allows to override the model name. Finally it is possible to override the model config file with override
.
The url
is a full URL, or a github url (github:org/repo/file.yaml
), or a local file (file:///path/to/file.yaml
).
The id
is a string in the form <GALLERY>@<MODEL_NAME>
, where <GALLERY>
is the name of the gallery, and <MODEL_NAME>
is the name of the model in the gallery. Galleries can be specified during startup with the GALLERIES
environment variable.
Returns an uuid
and an url
to follow up the state of the process:
{ "uuid":"251475c9-f666-11ed-95e0-9a8a4480ac58", "status":"http://localhost:8080/models/jobs/251475c9-f666-11ed-95e0-9a8a4480ac58"}
To see a collection example of curated models definition files, see the LocalAI repository.
Get model job state /models/jobs/<uid>
This endpoint returns the state of the batch job associated to a model installation.
curl http://localhost:8080/models/jobs/<JOB_ID>
Returns a json containing the error, and if the job is being processed:
{"error":null,"processed":true,"message":"completed"}
Last updated 27 Nov 2024, 16:34 +0100 .