Getting familiar with the active ML tools
Throughout this book, we’ve introduced and discussed several key active ML tools and labeling platforms, including Lightly, Encord, LabelBox, Snorkel AI, Prodigy, modAL
, and Roboflow. To further enhance your understanding and assist you in selecting the most suitable tool for your specific project needs, let’s revisit these tools with expanded insights and introduce a few additional ones:
- modAL (https://modal-python.readthedocs.io/en/latest/): This is a flexible and modular active ML framework in Python, designed to seamlessly integrate with
scikit-learn
. It stands out for its extensive range of query strategies, which can be tailored to various active ML scenarios. Whether you are dealing with classification, regression, or clustering tasks,modAL
provides a robust and intuitive interface for implementing active learning workflows. - Label Studio (https://docs.humansignal.com/guide/active_learning. html?__hstc...