Different models are naturally going to excel at different tasks (just like humans). For users — especially those building products — having visibility into those tradeoffs is going to be a critical part of the decision-making process.
Learn how building a scalable data labeling process ensures that your ML models have enough accurately-labeled training data to be effective and efficient.
As we wrap 2022, the Label Studio community survey reveals trends, investments and technology choices for data science teams in the year ahead.
Learn the four core pillars of data labeling — data, process, people, and technology — and how to build a successful data labeling practice.
Learn why going from manual data labeling to intelligent data labeling could be the key to saving time and cost.
Better ML/AI performance starts with accurate and consistent data, labeled by domain experts, accelerated by active learning.
Data-centric AI is a rapidly growing, data-first approach to building AI systems using high-quality data from the start and continually enhancing the dataset to improve the model's performance. Data-centric AI is a modern approach to building AI where model accuracy is primarily dependent on data quality.