Machine Learning Workflows : Feature Engineering, Model Training, and Deployment Architectures Using Snowpark for Analytics Teams
Overview
In today's data-driven enterprises, analytics teams need scalable, secure, and efficient machine learning workflows that leverage the full power of their data warehouse without unnecessary data movement. Machine Learning Workflows: Feature Engineering, Model Training, and Deployment Architectures Using Snowpark for Analytics Teams, penned by Alistair Crowden, delivers a comprehensive guide to building end-to-end ML pipelines directly within Snowflake using Snowpark. This advanced technical book explores the Snowpark framework-Snowflake's developer-centric platform for Python, Java, and Scala-to enable feature engineering at scale, distributed model training, hyperparameter optimization, and production-grade deployment architectures. Written for experienced data scientists, ML engineers, and analytics leaders, it combines deep architectural insights with practical code examples, best practices, and real-world patterns drawn from enterprise deployments. Whether you're modernizing legacy ML processes, reducing infrastructure sprawl, or building governed ML operations on governed data, this book equips you with the knowledge to design robust, performant, and cost-effective workflows that integrate seamlessly with Snowflake's ecosystem. Take your analytics team's machine learning capabilities to the next level-master Snowpark and deliver production-ready models faster and more reliably. Ideal for organizations committed to warehouse-centric ML innovation.
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Details
- ISBN-13: 9798242440838
- ISBN-10: 9798242440838
- Publisher: Independently Published
- Publish Date: January 2026
- Dimensions: 10 x 7 x 0.27 inches
- Shipping Weight: 0.52 pounds
- Page Count: 128
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