metriculous-ml / metriculous
Measure and visualize machine learning model performance without the usual boilerplate.
☆94Updated 2 months ago
Related projects ⓘ
Alternatives and complementary repositories for metriculous
- Practical active learning in python☆189Updated 2 years ago
- Tutorial for a new versioning Machine Learning pipeline☆81Updated 3 years ago
- ⏸ Parallelized hyper-param optimization with validation set, not crossval☆89Updated last year
- Train multi-task image, text, or ensemble (image + text) models☆45Updated last year
- A toolset for black-box hyperparameter optimisation.☆136Updated 4 years ago
- Creates a learning-curve plot for Jupyter/Colab notebooks that is updated in real-time.☆175Updated 2 years ago
- fastai V2 implementation of Timeseries classification papers.☆240Updated 2 years ago
- General Interpretability Package☆58Updated last year
- Ordinal Regression tutorial for the International Summer School on Deep Learning 2019☆68Updated 5 years ago
- TF 2.x and PyTorch Lightning Callbacks for GPU monitoring☆92Updated 4 years ago
- Developing and integrating methods for fastai2 tabular with other datatypes☆26Updated 2 years ago
- Experiment orchestration☆103Updated 4 years ago
- Model Agnostic Confidence Estimator (MACEST) - A Python library for calibrating Machine Learning models' confidence scores☆100Updated last year
- Hypergol is a Data Science/Machine Learning productivity toolkit to accelerate any projects into production with autogenerated code, stan…☆53Updated last year
- TabNet for fastai☆123Updated 8 months ago
- NeuralPy: A Keras like deep learning library works on top of PyTorch☆79Updated 5 months ago
- A machine learning testing framework for sklearn and pandas. The goal is to help folks assess whether things have changed over time.☆101Updated 3 years ago
- This codebase is a starting point to get your Machine Learning project into Production.☆43Updated 3 years ago
- A Browser Extension That Notifies You When Jupyter Notebook Code Cells Terminate☆45Updated 4 years ago
- CinnaMon is a Python library which offers a number of tools to detect, explain, and correct data drift in a machine learning system☆76Updated last year
- Code you can use jointly with fastai☆93Updated 3 years ago
- Weakly Supervised End-to-End Learning (NeurIPS 2021)☆153Updated last year
- ☆20Updated 4 years ago
- Fit your tensorflow model using fastai and PyTorch☆91Updated 5 years ago
- A collection of inference modules for fastai2☆90Updated 2 years ago
- A python script for a PyTorch feed forward neural network for tabular data using categorical embeddings.☆67Updated 5 years ago
- Functional deep learning☆106Updated last year
- ☆101Updated 3 years ago