NVIDIA CUDA Kernel Fusion Boosts GPU Efficiency in AI Workloads
NVIDIA's CUDA kernel fusion cuts memory traffic, kernel launch overhead, and speeds up AI and HPC tasks by up to 3x. Key for MoE and LLM training. (Read More)
Read the full articleYou might also wanna read
AI-Generated Metal Kernels Accelerate PyTorch Inference by 87% on Apple Devices
Our lab investigated whether frontier models can write optimized GPU kernels for Apple devices to speed up inference. We found that they can
The Critical Role of GPU Kernel Quality in Machine Learning System Performance
Machine learning systems sit at the heart of modern AI workloads. In these systems, performance often comes down to the quality of a small n
The Critical Role of GPU Kernel Quality in Machine Learning System Performance
Machine learning systems sit at the heart of modern AI workloads. In these systems, performance often comes down to the quality of a small n
Unsloth and NVIDIA Partner to Accelerate LLM Fine-Tuning by 20%
Learn how NVIDIA helped Unsloth to make fine-tuning AI models 20% faster with explanations and diagrams.
Unsloth - Train and Run Models Locally·2mo agoCUDA-L2: AI-Optimized Matrix Multiplication Outperforms NVIDIA cuBLAS
CUDA-L2: Surpassing cuBLAS Performance for Matrix Multiplication through Reinforcement Learning - deepreinforce-ai/CUDA-L2
AgentKernelArena: Benchmarking AI Coding Agents for GPU Kernel Optimization on AMD Instinct GPUs
AI coding agents such as Cursor Agent, Claude Code, and OpenAI Codex are improving fast, and people increasingly trust them with specialized
AI-Driven Approach for Portable GPU Kernels in High-Performance Computing
High-Performance Computing (HPC) applications increasingly depend on GPUs, yet developing optimized kernels across evolving GPU architecture

Comments
Sign in to join the conversation.
No comments yet. Be the first.