Your training data has as much to do with the success of your data project as
the algorithms themselves because most failures in AI systems relate to
training data. But while training data is the foundation for successful AI and
machine learning, there are few comprehensive resources to help you ace the
process.
In this hands-on guide, author Anthony Sarkis--lead engineer for the Diffgram
AI training data software--shows technical professionals, managers, and
subject matter experts how to work with and scale training data, while
illuminating the human side of supervising machines. Engineering leaders, data
engineers, and data science professionals alike will gain a solid
understanding of the concepts, tools, and processes they need to succeed with
training data.
With this book, you'll learn how to:
Work effectively with training data including schemas, raw data, and
annotations
Transform your work, team, or organization to be more AI/ML data-centric
Clearly explain training data concepts to other staff, team members, and
stakeholders
Design, deploy, and ship training data for production-grade AI applications
Recognize and correct new training-data-based failure modes such as data bias
Confidently use automation to more effectively create training data
Successfully maintain, operate, and improve training data systems of record
Також купити книгу Training Data for Machine Learning: Human Supervision from
Annotation to Data Science, Anthony Sarkis Ви можете по посиланню