Add MLflow Pipelines Integration Example #568
                
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Description
This PR adds a comprehensive MLflow integration pipeline for Open WebUI that enables real-time conversation tracking, analytics, and performance monitoring. The pipeline automatically logs all user-AI interactions to MLflow with detailed metrics and artifacts.
Features Added
Type of Change
Core Functionality
inlet()andoutlet()methods to capture complete request/response cycleConfiguration Options
The pipeline supports extensive configuration via environment variables and valves:
MLFLOW_TRACKING_URIhttp://localhost:5000MLFLOW_EXPERIMENT_NAMEopen-webui-experimentsSEPARATE_RUNSfalseUSE_MODEL_NAMEfalseDEBUG_MODEfalseData Structure
Tags:
source,interface,user_id,chat_id,run_type,status,total_interactionsParameters:
model_id,model_name,user_email,chat_id,interface,task_typeMetrics:
user_message_length,assistant_message_length,response_time,input_tokens,output_tokens,total_tokensArtifacts: User inputs, AI responses, conversation history (JSON)
Requirements
mlflow>=2.0.0requests>=2.25.0Usage Examples
Basic Setup
1. Install MLflow (version 2.0.0 or higher)
pip install "mlflow>=2.0.0"
2. Start the MLflow tracking server
mlflow server --host 0.0.0.0 --port 5000
3. Configure Open WebUI (or any client) to use MLflow
export MLFLOW_TRACKING_URI=http://localhost:5000
export MLFLOW_EXPERIMENT_NAME=my-conversations
Screenshots