Superb AI Whitepapers
Expand your knowledge of labeling, automation, DataOps, and more with technical content authored by Superb AI and the ML community, including whitepapers, solution briefs, and other reference material.
How to Automate Data Labeling using Transfer, Few-Shot, and Self-Supervised Learning
In this paper, we dive into our Custom Auto-Label workflow and discuss the algorithmic components of the product and the corresponding user experience. We introduce how Custom Auto-Label builds upon cutting-edge transfer, few-shot, and self-supervised learning techniques and presents a novel structure for semi-automated data labeling. These techniques provide all users with easy-to-use labeling automation features and allow clients to customize/fine-tune models in an automated fashion.
How to Improve Data Labeling Efficiency with Auto-Labeling, Uncertainty Estimations, and Active Learning
In this whitepaper, we dive into the machine learning theory and techniques that were developed to evaluate our auto-labeling AI. More specifically, how the platform estimates the uncertainty of auto-labeled annotations and applies it to active learning. This whitepaper will help you measure and evaluate how much you can trust the model output when utilizing auto labeling for data annotation.