
Transform your data science workflows with Julia's lightning-fast performance. This practical guide helps Python and R developers transition to Julia for large-scale scientific computing, machine learning, and numerical analysis. Features real-world case studies, optimization techniques, and integration with popular data science tools. Includes parallel computing patterns and best practices for production deployment.
Author: Alexander Clifton |
Publisher: Fiel LLC |
Publication Date: 45614 |
Number of Pages: 268 pages |
Binding: Computers |
ISBN-10: |
ISBN-13: 9798230074601 |