human-in-the-loop

Optimization of the Data Labeling Process in Weakly Supervised Environments

The article investigates the problem of increasing the efficiency of the data labeling process in poorly controlled environments based on Active Learning methods. The relevance of the work is due to the rapid growth of unstructured and partially labeled data, the high cost of manual annotation, the shortage of qualified experts, and the negative impact of noise labels on the quality of machine learning models.

Combining Agents’ Orchestration With Human Control for Automatic Planning in Distributed Systems

Modern distributed information systems increasingly require sophisticated automation appro- aches for task planning, resource allocation, and execution management. While AI agents based on large language models (LLMs) demonstrate significant potential for solving complex distributed computing tasks, fully autonomous solutions present substantial risks without proper human oversight and control mechanisms.