SEAICLMar 19

kRAIG: A Natural Language-Driven Agent for Automated DataOps Pipeline Generation

arXiv:2603.2031166.4h-index: 3
AI Analysis

This addresses the time-consuming and expertise-heavy process of constructing data pipelines for machine learning systems, offering a more reliable automated solution.

The paper tackles the problem of automating complex data engineering workflows by introducing kRAIG, an AI agent that translates natural language into production-ready Kubeflow Pipelines, achieving a 3x improvement in extraction and loading success and a 25% increase in transformation accuracy compared to state-of-the-art baselines.

Modern machine learning systems rely on complex data engineering workflows to extract, transform, and load (ELT) data into production pipelines. However, constructing these pipelines remains time-consuming and requires substantial expertise in data infrastructure and orchestration frameworks. Recent advances in large language model (LLM) agents offer a potential path toward automating these workflows, but existing approaches struggle with under-specified user intent, unreliable tool generation, and limited guarantees of executable outputs. We introduce kRAIG, an AI agent that translates natural language specifications into production-ready Kubeflow Pipelines (KFP). To resolve ambiguity in user intent, we propose ReQuesAct (Reason, Question, Act), an interaction framework that explicitly clarifies intent prior to pipeline synthesis. The system orchestrates end-to-end data movement from diverse sources and generates task-specific transformation components through a retrieval-augmented tool synthesis process. To ensure data quality and safety, kRAIG incorporates LLM-based validation stages that verify pipeline integrity prior to execution. Our framework achieves a 3x improvement in extraction and loading success and a 25 percent increase in transformation accuracy compared to state-of-the-art agentic baselines. These improvements demonstrate that structured agent workflows with explicit intent clarification and validation significantly enhance the reliability and executability of automated data engineering pipelines.

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