ktrain: A Low-Code Library for Augmented Machine Learning

October, 2021
IDA document: D-28847
FFRDC: Systems and Analyses Center
Type: Documents
Division: Information Technology and Systems Division
Authors:
Authors
Arun S. Maiya See more authors
We present ktrain, a low-code Python library that makes machine learning more accessible and easier to apply. As a wrapper to TensorFlow and many other libraries (e.g., transformers, scikit-learn, stellargraph), it is designed to make sophisticated, state-of-the-art machine learning models simple to build, train, inspect, and apply by both beginners and experienced practitioners. Featuring modules that support text data (e.g., text classification, sequence tagging, open-domain question-answering), vision data (e.g., image classification), graph data (e.g., node classification, link prediction), and tabular data, ktrain presents a simple unified interface enabling one to quickly solve a wide range of tasks in as little as three or four “commands” or lines of code.