Rust for Data Science: A Practical Guide to High-Performance Analytics Speed. Safety. Scalability

$39.99

This book serves as a textbook for learning the Rust programming language in the context of data science and analytics.

Rust for Data Science: A Practical Guide to High-Performance Analytics Speed. Safety. Scalability
Rust for Data Science: A Practical Guide to High-Performance Analytics Speed. Safety. Scalability
$39.99

[wpforms id=”1190″ title=”true” description=”Request a call back”]

Reactive Publishing Rust for Data Science: A Practical Guide to High-Performance Analytics Speed. Safety. Scalability. Welcome to the next evolution of data science. As datasets grow and performance bottlenecks hit hard, traditional tools can fall short. Enter Rust–a systems programming language built for blazing-fast performance, memory safety, and rock-solid reliability. This book bridges the worlds of data science and systems engineering, giving you the tools to build powerful, efficient analytics pipelines without sacrificing control or speed. Inside, you’ll explore: Why Rust matters for modern data science and analytics workflows Building custom data processing pipelines in Rust How Rust integrates with Python, Polars, Apache Arrow, and more Real-time, low-latency processing for streaming and big data use cases Hands-on projects to implement statistical models, transformations, and visualizations Whether you’re a Python veteran ready to level up your backend or a systems developer entering the world of analytics, this guide provides the practical, end-to-end knowledge to bring your data workflows into the Rust ecosystem. Rust isn’t just fast. It’s the future of high-performance data science. Build smarter. Analyze deeper. Execute faster.

Additional information

Weight 0.871 lbs
Dimensions 15.2 × 3.8 × 22.9 in

Reviews

There are no reviews yet.

Be the first to review “Rust for Data Science: A Practical Guide to High-Performance Analytics Speed. Safety. Scalability”

Your email address will not be published. Required fields are marked *