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This repository contains examples for the Neptune app version 2.x, which uses the Python client version 1.x.
For the new Neptune client examples, go to scale-examples β
What is neptune.ai?
Neptune is an experiment tracker purpose-built for foundation model training.
With Neptune, you can monitor thousands of per-layer metricsβlosses, gradients, and activationsβat any scale. Visualize them with no lag and no missed spikes. Drill down into logs and debug training issues fast. Keep your model training stable while reducing wasted GPU cycles.
Examples
Docs
Neptune 2.x app
GitHub
Colab
Quickstart
Track and organize runs
Monitor runs live
Version datasets in runs
Programmatically manage projects
Compare datasets between runs
Resume run or other object
Use Neptune in HPO jobs
Use Neptune in pipelines
Reproduce Neptune runs
Restart runs from checkpoint
Use Neptune in distributed computing
Track models end-to-end
Re-run failed training
Log from sequential pipelines
DDP training experiments
Use multiple integrations together
Use cases
Neptune 2.x app
GitHub
Colab
Text classification using fastText
Text classification using Keras
Text summarization
Time series forecasting
Integrations
Docs
Neptune 2.x app
GitHub
Colab
Airflow
Altair
Amazon SageMaker (custom Docker containers)
Amazon SageMaker (PyTorch Estimator)
Azure ML
Bokeh
Catalyst
CatBoost
DALEX
Detectron2
Docker
Evidently
fastai
Folium (Leaflet)
GitHub Actions
Google Colab
Great Expectations
HTML
Kedro
Keras
lightGBM
Matplotlib
MLflow
MosaicML Composer
Optuna
pandas
Plotly
Prophet
Python
PyTorch
PyTorch Ignite
PyTorch Lightning
R
Sacred
scikit-learn
Seaborn
skorch
TensorBoard
TensorFlow
π€ Transformers
XGBoost
ZenML
Utilities
GitHub
Import runs from Weights & Biases to Neptune
Copy runs from one Neptune project to another
Copy models and model versions from model registry to runs