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TOMORROW TECHNOLOGY. TODAY.

Engineering Scalable AI Platforms: Strategies for Sustain and Reuse

For software engineers and AI practitioners, building sustainable AI solutions goes beyond developing models—it’s about creating robust AI platforms that can scale, adapt, and continuously deliver value to the enterprise. This talk will dive into the practical aspects of architecting AI platforms, focusing on the technical and operational considerations that enable sustainable AI practices. Attendees will gain insights into the essential building blocks of an AI platform, including data pipelines, model management, deployment automation, and monitoring frameworks. This session will provide a in depth understanding to designing systems that support the entire AI lifecycle, emphasizing best practices for scalability, reusability, and long-term maintenance. Key Takeaways: 1. Architecting the AI Platform: Learn how to design the core components of an AI platform, including data ingestion, feature engineering pipelines, and model serving architecture that supports a variety of use cases. 2. Scalable Infrastructure and MLOps: Discover best practices for integrating MLOps principles into your AI platform, automating model training, deployment, and monitoring to streamline workflows and improve model performance. 3. Data Pipeline Design for AI: Explore techniques for building efficient data pipelines that ensure high-quality data flow, feature consistency, and scalability, making data the reliable backbone of your AI solutions. 4. Model Management and Versioning: Understand how to manage model lifecycle, version control, and retraining processes, ensuring models remain accurate, relevant, and compliant with evolving business needs. 5. Monitoring and Observability: Gain practical knowledge on setting up monitoring frameworks that track model performance in production, detect drift, and alert teams to issues before they impact business outcomes. 6. Ensuring Sustainability and Reusability: Learn how to design with reusability in mind, creating modular components that can be leveraged across multiple projects, reducing development time and improving consistency. 7. Security, Governance, and Compliance: Address the technical challenges of securing your AI platform, implementing robust access controls, data governance policies, and ensuring compliance with industry standards.

Asset - Sanat Pattanaik
Sanat Pattanaik
Principal Consultant