mlflow
Track ML experiments, manage model registry with versioning, deploy models to production, and reproduce experiments with MLflow - framework-agnostic ML lifecycle platform
Best use case
mlflow is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Track ML experiments, manage model registry with versioning, deploy models to production, and reproduce experiments with MLflow - framework-agnostic ML lifecycle platform
Teams using mlflow should expect a more consistent output, faster repeated execution, less prompt rewriting, better workflow continuity with your supporting tools.
When to use this skill
- You want a reusable workflow that can be run more than once with consistent structure.
- You already have the supporting tools or dependencies needed by this skill.
When not to use this skill
- You only need a quick one-off answer and do not need a reusable workflow.
- You cannot install or maintain the underlying files, dependencies, or repository context.
Installation
Claude Code / Cursor / Codex
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/mlops-mlflow/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How mlflow Compares
| Feature / Agent | mlflow | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
Track ML experiments, manage model registry with versioning, deploy models to production, and reproduce experiments with MLflow - framework-agnostic ML lifecycle platform
Where can I find the source code?
You can find the source code on GitHub using the link provided at the top of the page.
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SKILL.md Source
# MLflow: ML Lifecycle Management Platform
## When to Use This Skill
Use MLflow when you need to:
- **Track ML experiments** with parameters, metrics, and artifacts
- **Manage model registry** with versioning and stage transitions
- **Deploy models** to various platforms (local, cloud, serving)
- **Reproduce experiments** with project configurations
- **Compare model versions** and performance metrics
- **Collaborate** on ML projects with team workflows
- **Integrate** with any ML framework (framework-agnostic)
**Users**: 20,000+ organizations | **GitHub Stars**: 23k+ | **License**: Apache 2.0
## Installation
```bash
# Install MLflow
pip install mlflow
# Install with extras
pip install mlflow[extras] # Includes SQLAlchemy, boto3, etc.
# Start MLflow UI
mlflow ui
# Access at http://localhost:5000
```
## Quick Start
### Basic Tracking
```python
import mlflow
# Start a run
with mlflow.start_run():
# Log parameters
mlflow.log_param("learning_rate", 0.001)
mlflow.log_param("batch_size", 32)
# Your training code
model = train_model()
# Log metrics
mlflow.log_metric("train_loss", 0.15)
mlflow.log_metric("val_accuracy", 0.92)
# Log model
mlflow.sklearn.log_model(model, "model")
```
### Autologging (Automatic Tracking)
```python
import mlflow
from sklearn.ensemble import RandomForestClassifier
# Enable autologging
mlflow.autolog()
# Train (automatically logged)
model = RandomForestClassifier(n_estimators=100, max_depth=5)
model.fit(X_train, y_train)
# Metrics, parameters, and model logged automatically!
```
## Core Concepts
### 1. Experiments and Runs
**Experiment**: Logical container for related runs
**Run**: Single execution of ML code (parameters, metrics, artifacts)
```python
import mlflow
# Create/set experiment
mlflow.set_experiment("my-experiment")
# Start a run
with mlflow.start_run(run_name="baseline-model"):
# Log params
mlflow.log_param("model", "ResNet50")
mlflow.log_param("epochs", 10)
# Train
model = train()
# Log metrics
mlflow.log_metric("accuracy", 0.95)
# Log model
mlflow.pytorch.log_model(model, "model")
# Run ID is automatically generated
print(f"Run ID: {mlflow.active_run().info.run_id}")
```
### 2. Logging Parameters
```python
with mlflow.start_run():
# Single parameter
mlflow.log_param("learning_rate", 0.001)
# Multiple parameters
mlflow.log_params({
"batch_size": 32,
"epochs": 50,
"optimizer": "Adam",
"dropout": 0.2
})
# Nested parameters (as dict)
config = {
"model": {
"architecture": "ResNet50",
"pretrained": True
},
"training": {
"lr": 0.001,
"weight_decay": 1e-4
}
}
# Log as JSON string or individual params
for key, value in config.items():
mlflow.log_param(key, str(value))
```
### 3. Logging Metrics
```python
with mlflow.start_run():
# Training loop
for epoch in range(NUM_EPOCHS):
train_loss = train_epoch()
val_loss = validate()
# Log metrics at each step
mlflow.log_metric("train_loss", train_loss, step=epoch)
mlflow.log_metric("val_loss", val_loss, step=epoch)
# Log multiple metrics
mlflow.log_metrics({
"train_accuracy": train_acc,
"val_accuracy": val_acc
}, step=epoch)
# Log final metrics (no step)
mlflow.log_metric("final_accuracy", final_acc)
```
### 4. Logging Artifacts
```python
with mlflow.start_run():
# Log file
model.save('model.pkl')
mlflow.log_artifact('model.pkl')
# Log directory
os.makedirs('plots', exist_ok=True)
plt.savefig('plots/loss_curve.png')
mlflow.log_artifacts('plots')
# Log text
with open('config.txt', 'w') as f:
f.write(str(config))
mlflow.log_artifact('config.txt')
# Log dict as JSON
mlflow.log_dict({'config': config}, 'config.json')
```
### 5. Logging Models
```python
# PyTorch
import mlflow.pytorch
with mlflow.start_run():
model = train_pytorch_model()
mlflow.pytorch.log_model(model, "model")
# Scikit-learn
import mlflow.sklearn
with mlflow.start_run():
model = train_sklearn_model()
mlflow.sklearn.log_model(model, "model")
# Keras/TensorFlow
import mlflow.keras
with mlflow.start_run():
model = train_keras_model()
mlflow.keras.log_model(model, "model")
# HuggingFace Transformers
import mlflow.transformers
with mlflow.start_run():
mlflow.transformers.log_model(
transformers_model={
"model": model,
"tokenizer": tokenizer
},
artifact_path="model"
)
```
## Autologging
Automatically log metrics, parameters, and models for popular frameworks.
### Enable Autologging
```python
import mlflow
# Enable for all supported frameworks
mlflow.autolog()
# Or enable for specific framework
mlflow.sklearn.autolog()
mlflow.pytorch.autolog()
mlflow.keras.autolog()
mlflow.xgboost.autolog()
```
### Autologging with Scikit-learn
```python
import mlflow
from sklearn.ensemble import RandomForestClassifier
from sklearn.model_selection import train_test_split
# Enable autologging
mlflow.sklearn.autolog()
# Split data
X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.2)
# Train (automatically logs params, metrics, model)
with mlflow.start_run():
model = RandomForestClassifier(n_estimators=100, max_depth=5, random_state=42)
model.fit(X_train, y_train)
# Metrics like accuracy, f1_score logged automatically
# Model logged automatically
# Training duration logged
```
### Autologging with PyTorch Lightning
```python
import mlflow
import pytorch_lightning as pl
# Enable autologging
mlflow.pytorch.autolog()
# Train
with mlflow.start_run():
trainer = pl.Trainer(max_epochs=10)
trainer.fit(model, datamodule=dm)
# Hyperparameters logged
# Training metrics logged
# Best model checkpoint logged
```
## Model Registry
Manage model lifecycle with versioning and stage transitions.
### Register Model
```python
import mlflow
# Log and register model
with mlflow.start_run():
model = train_model()
# Log model
mlflow.sklearn.log_model(
model,
"model",
registered_model_name="my-classifier" # Register immediately
)
# Or register later
run_id = "abc123"
model_uri = f"runs:/{run_id}/model"
mlflow.register_model(model_uri, "my-classifier")
```
### Model Stages
Transition models between stages: **None** → **Staging** → **Production** → **Archived**
```python
from mlflow.tracking import MlflowClient
client = MlflowClient()
# Promote to staging
client.transition_model_version_stage(
name="my-classifier",
version=3,
stage="Staging"
)
# Promote to production
client.transition_model_version_stage(
name="my-classifier",
version=3,
stage="Production",
archive_existing_versions=True # Archive old production versions
)
# Archive model
client.transition_model_version_stage(
name="my-classifier",
version=2,
stage="Archived"
)
```
### Load Model from Registry
```python
import mlflow.pyfunc
# Load latest production model
model = mlflow.pyfunc.load_model("models:/my-classifier/Production")
# Load specific version
model = mlflow.pyfunc.load_model("models:/my-classifier/3")
# Load from staging
model = mlflow.pyfunc.load_model("models:/my-classifier/Staging")
# Use model
predictions = model.predict(X_test)
```
### Model Versioning
```python
client = MlflowClient()
# List all versions
versions = client.search_model_versions("name='my-classifier'")
for v in versions:
print(f"Version {v.version}: {v.current_stage}")
# Get latest version by stage
latest_prod = client.get_latest_versions("my-classifier", stages=["Production"])
latest_staging = client.get_latest_versions("my-classifier", stages=["Staging"])
# Get model version details
version_info = client.get_model_version(name="my-classifier", version="3")
print(f"Run ID: {version_info.run_id}")
print(f"Stage: {version_info.current_stage}")
print(f"Tags: {version_info.tags}")
```
### Model Annotations
```python
client = MlflowClient()
# Add description
client.update_model_version(
name="my-classifier",
version="3",
description="ResNet50 classifier trained on 1M images with 95% accuracy"
)
# Add tags
client.set_model_version_tag(
name="my-classifier",
version="3",
key="validation_status",
value="approved"
)
client.set_model_version_tag(
name="my-classifier",
version="3",
key="deployed_date",
value="2025-01-15"
)
```
## Searching Runs
Find runs programmatically.
```python
from mlflow.tracking import MlflowClient
client = MlflowClient()
# Search all runs in experiment
experiment_id = client.get_experiment_by_name("my-experiment").experiment_id
runs = client.search_runs(
experiment_ids=[experiment_id],
filter_string="metrics.accuracy > 0.9",
order_by=["metrics.accuracy DESC"],
max_results=10
)
for run in runs:
print(f"Run ID: {run.info.run_id}")
print(f"Accuracy: {run.data.metrics['accuracy']}")
print(f"Params: {run.data.params}")
# Search with complex filters
runs = client.search_runs(
experiment_ids=[experiment_id],
filter_string="""
metrics.accuracy > 0.9 AND
params.model = 'ResNet50' AND
tags.dataset = 'ImageNet'
""",
order_by=["metrics.f1_score DESC"]
)
```
## Integration Examples
### PyTorch
```python
import mlflow
import torch
import torch.nn as nn
# Enable autologging
mlflow.pytorch.autolog()
with mlflow.start_run():
# Log config
config = {
"lr": 0.001,
"epochs": 10,
"batch_size": 32
}
mlflow.log_params(config)
# Train
model = create_model()
optimizer = torch.optim.Adam(model.parameters(), lr=config["lr"])
for epoch in range(config["epochs"]):
train_loss = train_epoch(model, optimizer, train_loader)
val_loss, val_acc = validate(model, val_loader)
# Log metrics
mlflow.log_metrics({
"train_loss": train_loss,
"val_loss": val_loss,
"val_accuracy": val_acc
}, step=epoch)
# Log model
mlflow.pytorch.log_model(model, "model")
```
### HuggingFace Transformers
```python
import mlflow
from transformers import Trainer, TrainingArguments
# Enable autologging
mlflow.transformers.autolog()
training_args = TrainingArguments(
output_dir="./results",
num_train_epochs=3,
per_device_train_batch_size=16,
evaluation_strategy="epoch",
save_strategy="epoch",
load_best_model_at_end=True
)
# Start MLflow run
with mlflow.start_run():
trainer = Trainer(
model=model,
args=training_args,
train_dataset=train_dataset,
eval_dataset=eval_dataset
)
# Train (automatically logged)
trainer.train()
# Log final model to registry
mlflow.transformers.log_model(
transformers_model={
"model": trainer.model,
"tokenizer": tokenizer
},
artifact_path="model",
registered_model_name="hf-classifier"
)
```
### XGBoost
```python
import mlflow
import xgboost as xgb
# Enable autologging
mlflow.xgboost.autolog()
with mlflow.start_run():
dtrain = xgb.DMatrix(X_train, label=y_train)
dval = xgb.DMatrix(X_val, label=y_val)
params = {
'max_depth': 6,
'learning_rate': 0.1,
'objective': 'binary:logistic',
'eval_metric': ['logloss', 'auc']
}
# Train (automatically logged)
model = xgb.train(
params,
dtrain,
num_boost_round=100,
evals=[(dtrain, 'train'), (dval, 'val')],
early_stopping_rounds=10
)
# Model and metrics logged automatically
```
## Best Practices
### 1. Organize with Experiments
```python
# ✅ Good: Separate experiments for different tasks
mlflow.set_experiment("sentiment-analysis")
mlflow.set_experiment("image-classification")
mlflow.set_experiment("recommendation-system")
# ❌ Bad: Everything in one experiment
mlflow.set_experiment("all-models")
```
### 2. Use Descriptive Run Names
```python
# ✅ Good: Descriptive names
with mlflow.start_run(run_name="resnet50-imagenet-lr0.001-bs32"):
train()
# ❌ Bad: No name (auto-generated UUID)
with mlflow.start_run():
train()
```
### 3. Log Comprehensive Metadata
```python
with mlflow.start_run():
# Log hyperparameters
mlflow.log_params({
"learning_rate": 0.001,
"batch_size": 32,
"epochs": 50
})
# Log system info
mlflow.set_tags({
"dataset": "ImageNet",
"framework": "PyTorch 2.0",
"gpu": "A100",
"git_commit": get_git_commit()
})
# Log data info
mlflow.log_param("train_samples", len(train_dataset))
mlflow.log_param("val_samples", len(val_dataset))
```
### 4. Track Model Lineage
```python
# Link runs to understand lineage
with mlflow.start_run(run_name="preprocessing"):
data = preprocess()
mlflow.log_artifact("data.csv")
preprocessing_run_id = mlflow.active_run().info.run_id
with mlflow.start_run(run_name="training"):
# Reference parent run
mlflow.set_tag("preprocessing_run_id", preprocessing_run_id)
model = train(data)
```
### 5. Use Model Registry for Deployment
```python
# ✅ Good: Use registry for production
model_uri = "models:/my-classifier/Production"
model = mlflow.pyfunc.load_model(model_uri)
# ❌ Bad: Hard-code run IDs
model_uri = "runs:/abc123/model"
model = mlflow.pyfunc.load_model(model_uri)
```
## Deployment
### Serve Model Locally
```bash
# Serve registered model
mlflow models serve -m "models:/my-classifier/Production" -p 5001
# Serve from run
mlflow models serve -m "runs:/<RUN_ID>/model" -p 5001
# Test endpoint
curl http://127.0.0.1:5001/invocations -H 'Content-Type: application/json' -d '{
"inputs": [[1.0, 2.0, 3.0, 4.0]]
}'
```
### Deploy to Cloud
```bash
# Deploy to AWS SageMaker
mlflow sagemaker deploy -m "models:/my-classifier/Production" --region-name us-west-2
# Deploy to Azure ML
mlflow azureml deploy -m "models:/my-classifier/Production"
```
## Configuration
### Tracking Server
```bash
# Start tracking server with backend store
mlflow server \
--backend-store-uri postgresql://user:password@localhost/mlflow \
--default-artifact-root s3://my-bucket/mlflow \
--host 0.0.0.0 \
--port 5000
```
### Client Configuration
```python
import mlflow
# Set tracking URI
mlflow.set_tracking_uri("http://localhost:5000")
# Or use environment variable
# export MLFLOW_TRACKING_URI=http://localhost:5000
```
## Resources
- **Documentation**: https://mlflow.org/docs/latest
- **GitHub**: https://github.com/mlflow/mlflow (23k+ stars)
- **Examples**: https://github.com/mlflow/mlflow/tree/master/examples
- **Community**: https://mlflow.org/community
## See Also
- `references/tracking.md` - Comprehensive tracking guide
- `references/model-registry.md` - Model lifecycle management
- `references/deployment.md` - Production deployment patternsRelated Skills
mlflow-tracking-setup
Mlflow Tracking Setup - Auto-activating skill for ML Training. Triggers on: mlflow tracking setup, mlflow tracking setup Part of the ML Training skill category.
mlflow-experiment-tracker
MLflow integration skill for experiment tracking, model registry, and artifact management. Enables LLMs to log experiments, compare runs, manage model lifecycle, and retrieve artifacts through the MLflow API.
searching-mlflow-docs
Searches and retrieves MLflow documentation from the official docs site. Use when the user asks about MLflow features, APIs, integrations (LangGraph, LangChain, OpenAI, etc.), tracing, tracking, or requests to look up MLflow documentation. Triggers on "how do I use MLflow with X", "find MLflow docs for Y", "MLflow API for Z".
retrieving-mlflow-traces
Retrieves MLflow traces using CLI or Python API. Use when the user asks to get a trace by ID, find traces, filter traces by status/tags/metadata/execution time, query traces, or debug failed traces. Triggers on "get trace", "search traces", "find failed traces", "filter traces by", "traces slower than", "query MLflow traces".
querying-mlflow-metrics
Fetches aggregated trace metrics (token usage, latency, trace counts, quality evaluations) from MLflow tracking servers. Triggers on requests to show metrics, analyze token usage, view LLM costs, check usage trends, or query trace statistics.
instrumenting-with-mlflow-tracing
Instruments Python and TypeScript code with MLflow Tracing for observability. Must be loaded when setting up tracing as part of any workflow including agent evaluation. Triggers on adding tracing, instrumenting agents/LLM apps, getting started with MLflow tracing, tracing specific frameworks (LangGraph, LangChain, OpenAI, DSPy, CrewAI, AutoGen), or when another skill references tracing setup. Examples - "How do I add tracing?", "Instrument my agent", "Trace my LangChain app", "Set up tracing for evaluation"
databricks-mlflow-evaluation
MLflow 3 GenAI agent evaluation. Use when writing mlflow.genai.evaluate() code, creating @scorer functions, using built-in scorers (Guidelines, Correctness, Safety, RetrievalGroundedness), building eval datasets from traces, setting up trace ingestion and production monitoring, aligning judges with MemAlign from domain expert feedback, or running optimize_prompts() with GEPA for automated prompt improvement.
analyzing-mlflow-trace
Analyzes a single MLflow trace to answer a user query about it. Use when the user provides a trace ID and asks to debug, investigate, find issues, root-cause errors, understand behavior, or analyze quality. Triggers on "analyze this trace", "what went wrong with this trace", "debug trace", "investigate trace", "why did this trace fail", "root cause this trace".
analyzing-mlflow-session
Analyzes an MLflow session — a sequence of traces from a multi-turn chat conversation or interaction. Use when the user asks to debug a chat conversation, review session or chat history, find where a multi-turn chat went wrong, or analyze patterns across turns. Triggers on "analyze this session", "what happened in this conversation", "debug session", "review chat history", "where did this chat go wrong", "session traces", "analyze chat", "debug this chat".
mlflow-expert
MLflow expert: experiment tracking, model registry, autologging, MLflow Projects, MLflow Models, model serving, A/B testing, feature store integration. Use when tracking ML experiments, managing models, or deploying ML models with MLflow.
mlflow
Track ML experiments, manage model registry with versioning, deploy models to production, and reproduce experiments with MLflow - framework-agnostic ML lifecycle platform
mlflow-python
MLflow experiment tracking via Python API. TRIGGERS - MLflow metrics, log backtest, experiment tracking, search runs.