Specifically, I’m interested in: * Writing high-performance, memory-efficient code (e.g., using C++, SIMD, GPU, parallel computing) * HPC system design and architecture * Optimizing large-scale data processing and ML infrastructure * Profiling, latency optimization, and memory management for data-heavy tasks
I’m looking for: 1. Books, resources, tutorials, online degrees that can guide me from a strong mathematical and ML foundation into performance optimization 2. Effective learning paths to transition from a general data science role to working with performance-critical systems and large-scale compute environments
I’m keen to improve my ability to build more efficient systems and handle large datasets or complex models with near real-time performance where necessary.
Would love any recommendations, personal experiences, or resources to help guide my learning!