Expand description
Algorithmic Efficiency Optimizations for Core Tensor Operations
This module provides cutting-edge algorithmic optimizations that enhance the fundamental efficiency of tensor operations through advanced mathematical techniques, adaptive algorithms, and intelligent operation scheduling.
§Features
- Adaptive Algorithm Selection: Runtime selection of optimal algorithms based on tensor properties
- Operation Fusion: Multi-operation fusion for reduced memory bandwidth and computation
- Cache-Oblivious Algorithms: Memory hierarchy-aware algorithms that adapt to hardware
- Numerical Stability Enhancements: Advanced numerical techniques for robust computations
- Asymptotic Optimizations: Implementation of asymptotically superior algorithms
- Parallel Algorithm Scheduling: Intelligent work distribution for multi-core efficiency
Structs§
- Algorithm
Config - Configuration for algorithmic optimizations
- Algorithm
Performance Stats - Algorithm performance statistics
- Algorithmic
Optimizer - Advanced algorithmic operations manager
Enums§
- Fused
Operation - Fused operation types
- MatMul
Algorithm - Matrix multiplication algorithms
- Scheduling
Strategy - Parallel scheduling strategies