Data democratization is crucial for modern organizations, enabling accessible and understandable data through tools and technologies.
Federated learning, a distributed approach, defends AI privacy by ensuring decentralized data on user devices, making it accessible and responsible.
TagSniff offers online debugging primitives for locating and fixing errors in computer programs, identifying tuples for further analysis based on metadata.
Application debugging in big data engineering requires a streamlined model like the "TagSniff" for effective online and post-hoc tasks.
Big data processing demands new approaches for debugging distributed systems, as traditional approaches struggle with the scale and complexity of these systems.
Federated learning ensures data privacy, but opens the system to adversaries exploiting poisoned data.
Query optimization is at the core of any data management and analytics system. Researchers used machine learning to solve these tasks more effectively and efficiently.