Toward Data Systems That Are Business Semantic Centric and AI Agents Assisted
Cecil Pang

TL;DR
This paper introduces BSDS, a comprehensive data system architecture that aligns data management with business goals using AI agents and human-centric workflows to improve agility and scalability.
Contribution
It presents the BSDS framework, integrating architecture, workflows, and AI agents to make data systems more business-centric and adaptive, validated through real-world implementation.
Findings
Accelerates time-to-market for data initiatives
Enhances cross-functional collaboration
Provides a scalable blueprint for businesses
Abstract
Contemporary businesses operate in dynamic environments requiring rapid adaptation to achieve goals and maintain competitiveness. Existing data platforms often fall short by emphasizing tools over alignment with business needs, resulting in inefficiencies and delays. To address this gap, I propose the Business Semantics Centric, AI Agents Assisted Data System (BSDS), a holistic system that integrates architecture, workflows, and team organization to ensure data systems are tailored to business priorities rather than dictated by technical constraints. BSDS redefines data systems as dynamic enablers of business success, transforming them from passive tools into active drivers of organizational growth. BSDS has a modular architecture that comprises curated data linked to business entities, a knowledge base for context-aware AI agents, and efficient data pipelines. AI agents play a pivotal…
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Taxonomy
MethodsBalanced Selection · SPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
