The Ultimate Guide to Data Ops for AI

Data is the fuel that powers AI and ML models. Without enough high-quality, relevant data, it is impossible to train and develop accurate and effective models.

DataOps (Data Operations) in Artificial Intelligence (AI) is a set of practices and processes that aim to optimize the management and flow of data throughout the entire AI development lifecycle. The goal of DataOps is to improve the speed, quality, and reliability of data in AI systems. It is an extension of the DevOps (Development Operations) methodology, which is focused on improving the speed and reliability of software development.