iconLogo
Published:2025/12/24 19:30:32

AIでデータパイプラインを爆速(ばくはや)管理しちゃお!🚀✨

超要約: AIエージェントでクラウドデータ管理を自動化して、コスト削減&データ品質爆上げ!😎

✨ ギャル的キラキラポイント ✨

AIエージェント がデータ管理を自律的に(じりつてきに)やってくれるから、人間は楽ちん♪ ● ガバナンスポリシー っていうルールを守ってくれるから、セキュリティもバッチリ👌 ● コスト削減 にも貢献!💰 余計な出費(しゅっぴ)を減らせるって最高じゃん?

詳細解説

続きは「らくらく論文」アプリで

Governing Cloud Data Pipelines with Agentic AI

Aswathnarayan Muthukrishnan Kirubakaran / Adithya Parthasarathy / Nitin Saksena / Ram Sekhar Bodala / Akshay Deshpande / Suhas Malempati / Shiva Carimireddy / Abhirup Mazumder

Cloud data pipelines increasingly operate under dynamic workloads, evolving schemas, cost constraints, and strict governance requirements. Despite advances in cloud-native orchestration frameworks, most production pipelines rely on static configurations and reactive operational practices, resulting in prolonged recovery times, inefficient resource utilization, and high manual overhead. This paper presents Agentic Cloud Data Engineering, a policy-aware control architecture that integrates bounded AI agents into the governance and control plane of cloud data pipelines. In Agentic Cloud Data Engineering platform, specialized agents analyze pipeline telemetry and metadata, reason over declarative cost and compliance policies, and propose constrained operational actions such as adaptive resource reconfiguration, schema reconciliation, and automated failure recovery. All agent actions are validated against governance policies to ensure predictable and auditable behavior. We evaluate Agentic Cloud Data Engineering platform using representative batch and streaming analytics workloads constructed from public enterprise-style datasets. Experimental results show that Agentic Cloud Data Engineering platform reduces mean pipeline recovery time by up to 45%, lowers operational cost by approximately 25%, and decreases manual intervention events by over 70% compared to static orchestration, while maintaining data freshness and policy compliance. These results demonstrate that policy-bounded agentic control provides an effective and practical approach for governing cloud data pipelines in enterprise environments.

cs / cs.DC / cs.LG