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Tag Based Routing

Route requests based on tags. This is useful for

  • Implementing free / paid tiers for users
  • Controlling model access per team, example Team A can access gpt-4 deployment A, Team B can access gpt-4 deployment B (LLM Access Control For Teams )

Quick Start

1. Define tags on config.yaml

  • A request with tags=["free"] will get routed to openai/fake
  • A request with tags=["paid"] will get routed to openai/gpt-4o
model_list:
- model_name: gpt-4
litellm_params:
model: openai/fake
api_key: fake-key
api_base: https://exampleopenaiendpoint-production.up.railway.app/
tags: ["free"] # 👈 Key Change
- model_name: gpt-4
litellm_params:
model: openai/gpt-4o
api_key: os.environ/OPENAI_API_KEY
tags: ["paid"] # 👈 Key Change

router_settings:
enable_tag_filtering: True # 👈 Key Change
general_settings:
master_key: sk-1234

2. Make Request with tags=["free"]

This request includes "tags": ["free"], which routes it to openai/fake

curl -i http://localhost:4000/v1/chat/completions \
-H "Content-Type: application/json" \
-H "Authorization: Bearer sk-1234" \
-d '{
"model": "gpt-4",
"messages": [
{"role": "user", "content": "Hello, Claude gm!"}
],
"tags": ["free"]
}'

Expected Response

Expect to see the following response header when this works

x-litellm-model-api-base: https://exampleopenaiendpoint-production.up.railway.app/

Response

{
"id": "chatcmpl-33c534e3d70148218e2d62496b81270b",
"choices": [
{
"finish_reason": "stop",
"index": 0,
"message": {
"content": "\n\nHello there, how may I assist you today?",
"role": "assistant",
"tool_calls": null,
"function_call": null
}
}
],
"created": 1677652288,
"model": "gpt-3.5-turbo-0125",
"object": "chat.completion",
"system_fingerprint": "fp_44709d6fcb",
"usage": {
"completion_tokens": 12,
"prompt_tokens": 9,
"total_tokens": 21
}
}

3. Make Request with tags=["paid"]

This request includes "tags": ["paid"], which routes it to openai/gpt-4

curl -i http://localhost:4000/v1/chat/completions \
-H "Content-Type: application/json" \
-H "Authorization: Bearer sk-1234" \
-d '{
"model": "gpt-4",
"messages": [
{"role": "user", "content": "Hello, Claude gm!"}
],
"tags": ["paid"]
}'

Expected Response

Expect to see the following response header when this works

x-litellm-model-api-base: https://api.openai.com

Response

{
"id": "chatcmpl-9maCcqQYTqdJrtvfakIawMOIUbEZx",
"choices": [
{
"finish_reason": "stop",
"index": 0,
"message": {
"content": "Good morning! How can I assist you today?",
"role": "assistant",
"tool_calls": null,
"function_call": null
}
}
],
"created": 1721365934,
"model": "gpt-4o-2024-05-13",
"object": "chat.completion",
"system_fingerprint": "fp_c4e5b6fa31",
"usage": {
"completion_tokens": 10,
"prompt_tokens": 12,
"total_tokens": 22
}
}

✨ Team based tag routing (Enterprise)

LiteLLM Proxy supports team-based tag routing, allowing you to associate specific tags with teams and route requests accordingly. Example Team A can access gpt-4 deployment A, Team B can access gpt-4 deployment B (LLM Access Control For Teams)

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Here's how to set up and use team-based tag routing using curl commands:

  1. Enable tag filtering in your proxy configuration:

    In your proxy_config.yaml, ensure you have the following setting:

    model_list:
    - model_name: fake-openai-endpoint
    litellm_params:
    model: openai/fake
    api_key: fake-key
    api_base: https://exampleopenaiendpoint-production.up.railway.app/
    tags: ["teamA"] # 👈 Key Change
    model_info:
    id: "team-a-model" # used for identifying model in response headers
    - model_name: fake-openai-endpoint
    litellm_params:
    model: openai/fake
    api_key: fake-key
    api_base: https://exampleopenaiendpoint-production.up.railway.app/
    tags: ["teamB"] # 👈 Key Change
    model_info:
    id: "team-b-model" # used for identifying model in response headers

    router_settings:
    enable_tag_filtering: True # 👈 Key Change

    general_settings:
    master_key: sk-1234
  2. Create teams with tags:

    Use the /team/new endpoint to create teams with specific tags:

    # Create Team A
    curl -X POST http://0.0.0.0:4000/team/new \
    -H "Authorization: Bearer sk-1234" \
    -H "Content-Type: application/json" \
    -d '{"tags": ["teamA"]}'
    # Create Team B
    curl -X POST http://0.0.0.0:4000/team/new \
    -H "Authorization: Bearer sk-1234" \
    -H "Content-Type: application/json" \
    -d '{"tags": ["teamB"]}'

    These commands will return JSON responses containing the team_id for each team.

  3. Generate keys for team members:

    Use the /key/generate endpoint to create keys associated with specific teams:

    # Generate key for Team A
    curl -X POST http://0.0.0.0:4000/key/generate \
    -H "Authorization: Bearer sk-1234" \
    -H "Content-Type: application/json" \
    -d '{"team_id": "team_a_id_here"}'
    # Generate key for Team B
    curl -X POST http://0.0.0.0:4000/key/generate \
    -H "Authorization: Bearer sk-1234" \
    -H "Content-Type: application/json" \
    -d '{"team_id": "team_b_id_here"}'

    Replace team_a_id_here and team_b_id_here with the actual team IDs received from step 2.

  4. Verify routing:

    Check the x-litellm-model-id header in the response to confirm that the request was routed to the correct model based on the team's tags. You can use the -i flag with curl to include the response headers:

    Request with Team A's key (including headers)

    curl -i -X POST http://0.0.0.0:4000/chat/completions \
    -H "Authorization: Bearer team_a_key_here" \
    -H "Content-Type: application/json" \
    -d '{
    "model": "fake-openai-endpoint",
    "messages": [
    {"role": "user", "content": "Hello!"}
    ]
    }'

    In the response headers, you should see:

    x-litellm-model-id: team-a-model

    Similarly, when using Team B's key, you should see:

    x-litellm-model-id: team-b-model

By following these steps and using these curl commands, you can implement and test team-based tag routing in your LiteLLM Proxy setup, ensuring that different teams are routed to the appropriate models or deployments based on their assigned tags.

Other Tag Based Features