| name | weights-and-biases |
| description | W&B: log ML experiments, sweeps, model registry, dashboards. |
| version | 1.0.0 |
| author | Orchestra Research |
| license | MIT |
| dependencies | ["wandb"] |
| platforms | ["linux","macos","windows"] |
| metadata | {"hermes":{"tags":["MLOps","Weights And Biases","WandB","Experiment Tracking","Hyperparameter Tuning","Model Registry","Collaboration","Real-Time Visualization","PyTorch","TensorFlow","HuggingFace"]}} |
Weights & Biases: ML Experiment Tracking & MLOps
When to Use This Skill
Use Weights & Biases (W&B) when you need to:
- Track ML experiments with automatic metric logging
- Visualize training in real-time dashboards
- Compare runs across hyperparameters and configurations
- Optimize hyperparameters with automated sweeps
- Manage model registry with versioning and lineage
- Collaborate on ML projects with team workspaces
- Track artifacts (datasets, models, code) with lineage
Users: 200,000+ ML practitioners | GitHub Stars: 10.5k+ | Integrations: 100+
Installation
pip install wandb
wandb login
export WANDB_API_KEY=your_api_key_here
Quick Start
Basic Experiment Tracking
import wandb
run = wandb.init(
project="my-project",
config={
"learning_rate": 0.001,
"epochs": 10,
"batch_size": 32,
"architecture": "ResNet50"
}
)
for epoch in range(run.config.epochs):
train_loss = train_epoch()
val_loss = validate()
wandb.log({
"epoch": epoch,
"train/loss": train_loss,
"val/loss": val_loss,
"train/accuracy": train_acc,
"val/accuracy": val_acc
})
wandb.finish()
With PyTorch
import torch
import wandb
wandb.init(project="pytorch-demo", config={
"lr": 0.001,
"epochs": 10
})
config = wandb.config
for epoch in range(config.epochs):
for batch_idx, (data, target) in enumerate(train_loader):
output = model(data)
loss = criterion(output, target)
optimizer.zero_grad()
loss.backward()
optimizer.step()
if batch_idx % 100 == 0:
wandb.log({
"loss": loss.item(),
"epoch": epoch,
"batch": batch_idx
})
torch.save(model.state_dict(), "model.pth")
wandb.save("model.pth")
wandb.finish()
Core Concepts
1. Projects and Runs
Project: Collection of related experiments
Run: Single execution of your training script
run = wandb.init(
project="image-classification",
name="resnet50-experiment-1",
tags=["baseline", "resnet"],
notes="First baseline run"
)
print(f"Run ID: {run.id}")
print(f"Run URL: {run.url}")
2. Configuration Tracking
Track hyperparameters automatically:
config = {
"model": "ResNet50",
"pretrained": True,
"learning_rate": 0.001,
"batch_size": 32,
"epochs": 50,
"optimizer": "Adam",
"dataset": "ImageNet",
"augmentation": "standard"
}
wandb.init(project="my-project", config=config)
lr = wandb.config.learning_rate
batch_size = wandb.config.batch_size
3. Metric Logging
wandb.log({"loss": 0.5, "accuracy": 0.92})
wandb.log({
"train/loss": train_loss,
"train/accuracy": train_acc,
"val/loss": val_loss,
"val/accuracy": val_acc,
"learning_rate": current_lr,
"epoch": epoch
})
wandb.log({"loss": loss}, step=global_step)
wandb.log({"examples": [wandb.Image(img) for img in images]})
wandb.log({"gradients": wandb.Histogram(gradients)})
table = wandb.Table(columns=["id", "prediction", "ground_truth"])
wandb.log({"predictions": table})
4. Model Checkpointing
import torch
import wandb
checkpoint = {
'epoch': epoch,
'model_state_dict': model.state_dict(),
'optimizer_state_dict': optimizer.state_dict(),
'loss': loss,
}
torch.save(checkpoint, 'checkpoint.pth')
wandb.save('checkpoint.pth')
artifact = wandb.Artifact('model', type='model')
artifact.add_file('checkpoint.pth')
wandb.log_artifact(artifact)
Hyperparameter Sweeps
Automatically search for optimal hyperparameters.
Define Sweep Configuration
sweep_config = {
'method': 'bayes',
'metric': {
'name': 'val/accuracy',
'goal': 'maximize'
},
'parameters': {
'learning_rate': {
'distribution': 'log_uniform',
'min': 1e-5,
'max': 1e-1
},
'batch_size': {
'values': [16, 32, 64, 128]
},
'optimizer': {
'values': ['adam', 'sgd', 'rmsprop']
},
'dropout': {
'distribution': 'uniform',
'min': 0.1,
'max': 0.5
}
}
}
sweep_id = wandb.sweep(sweep_config, project="my-project")
Define Training Function
def train():
run = wandb.init()
lr = wandb.config.learning_rate
batch_size = wandb.config.batch_size
optimizer_name = wandb.config.optimizer
model = build_model(wandb.config)
optimizer = get_optimizer(optimizer_name, lr)
for epoch in range(NUM_EPOCHS):
train_loss = train_epoch(model, optimizer, batch_size)
val_acc = validate(model)
wandb.log({
"train/loss": train_loss,
"val/accuracy": val_acc
})
wandb.agent(sweep_id, function=train, count=50)
Sweep Strategies
sweep_config = {
'method': 'grid',
'parameters': {
'lr': {'values': [0.001, 0.01, 0.1]},
'batch_size': {'values': [16, 32, 64]}
}
}
sweep_config = {
'method': 'random',
'parameters': {
'lr': {'distribution': 'uniform', 'min': 0.0001, 'max': 0.1},
'dropout': {'distribution': 'uniform', 'min': 0.1, 'max': 0.5}
}
}
sweep_config = {
'method': 'bayes',
'metric': {'name': 'val/loss', 'goal': 'minimize'},
'parameters': {
'lr': {'distribution': 'log_uniform', 'min': 1e-5, 'max': 1e-1}
}
}
Artifacts
Track datasets, models, and other files with lineage.
Log Artifacts
artifact = wandb.Artifact(
name='training-dataset',
type='dataset',
description='ImageNet training split',
metadata={'size': '1.2M images', 'split': 'train'}
)
artifact.add_file('data/train.csv')
artifact.add_dir('data/images/')
wandb.log_artifact(artifact)
Use Artifacts
run = wandb.init(project="my-project")
artifact = run.use_artifact('training-dataset:latest')
artifact_dir = artifact.download()
data = load_data(f"{artifact_dir}/train.csv")
Model Registry
model_artifact = wandb.Artifact(
name='resnet50-model',
type='model',
metadata={'architecture': 'ResNet50', 'accuracy': 0.95}
)
model_artifact.add_file('model.pth')
wandb.log_artifact(model_artifact, aliases=['best', 'production'])
run.link_artifact(model_artifact, 'model-registry/production-models')
Integration Examples
HuggingFace Transformers
from transformers import Trainer, TrainingArguments
import wandb
wandb.init(project="hf-transformers")
training_args = TrainingArguments(
output_dir="./results",
report_to="wandb",
run_name="bert-finetuning",
logging_steps=100,
save_steps=500
)
trainer = Trainer(
model=model,
args=training_args,
train_dataset=train_dataset,
eval_dataset=eval_dataset
)
trainer.train()
PyTorch Lightning
from pytorch_lightning import Trainer
from pytorch_lightning.loggers import WandbLogger
import wandb
wandb_logger = WandbLogger(
project="lightning-demo",
log_model=True
)
trainer = Trainer(
logger=wandb_logger,
max_epochs=10
)
trainer.fit(model, datamodule=dm)
Keras/TensorFlow
import wandb
from wandb.keras import WandbCallback
wandb.init(project="keras-demo")
model.fit(
x_train, y_train,
validation_data=(x_val, y_val),
epochs=10,
callbacks=[WandbCallback()]
)
Visualization & Analysis
Custom Charts
import matplotlib.pyplot as plt
fig, ax = plt.subplots()
ax.plot(x, y)
wandb.log({"custom_plot": wandb.Image(fig)})
wandb.log({"conf_mat": wandb.plot.confusion_matrix(
probs=None,
y_true=ground_truth,
preds=predictions,
class_names=class_names
)})
Reports
Create shareable reports in W&B UI:
- Combine runs, charts, and text
- Markdown support
- Embeddable visualizations
- Team collaboration
Best Practices
1. Organize with Tags and Groups
wandb.init(
project="my-project",
tags=["baseline", "resnet50", "imagenet"],
group="resnet-experiments",
job_type="train"
)
2. Log Everything Relevant
wandb.log({
"gpu/util": gpu_utilization,
"gpu/memory": gpu_memory_used,
"cpu/util": cpu_utilization
})
wandb.log({"git_commit": git_commit_hash})
wandb.log({
"data/train_size": len(train_dataset),
"data/val_size": len(val_dataset)
})
3. Use Descriptive Names
wandb.init(
project="nlp-classification",
name="bert-base-lr0.001-bs32-epoch10"
)
wandb.init(project="nlp", name="run1")
4. Save Important Artifacts
artifact = wandb.Artifact('final-model', type='model')
artifact.add_file('model.pth')
wandb.log_artifact(artifact)
predictions_table = wandb.Table(
columns=["id", "input", "prediction", "ground_truth"],
data=predictions_data
)
wandb.log({"predictions": predictions_table})
5. Use Offline Mode for Unstable Connections
import os
os.environ["WANDB_MODE"] = "offline"
wandb.init(project="my-project")
Team Collaboration
Share Runs
run = wandb.init(project="team-project")
print(f"Share this URL: {run.url}")
Team Projects
- Create team account at wandb.ai
- Add team members
- Set project visibility (private/public)
- Use team-level artifacts and model registry
Pricing
- Free: Unlimited public projects, 100GB storage
- Academic: Free for students/researchers
- Teams: $50/seat/month, private projects, unlimited storage
- Enterprise: Custom pricing, on-prem options
Resources
See Also
references/sweeps.md - Comprehensive hyperparameter optimization guide
references/artifacts.md - Data and model versioning patterns
references/integrations.md - Framework-specific examples