Listen and read

Step into an infinite world of stories

  • Listen and read as much as you want
  • Over 400 000+ titles
  • Bestsellers in 10+ Indian languages
  • Exclusive titles + Storytel Originals
  • Easy to cancel anytime
Subscribe now
Details page - Device banner - 894x1036
Cover for TensorRT‑LLM Optimization: Quantization, Kernel Fusion, and Throughput Engineering

TensorRT‑LLM Optimization: Quantization, Kernel Fusion, and Throughput Engineering

Language
English
Format
Category

Non-Fiction

"TensorRT‑LLM Optimization: Quantization, Kernel Fusion, and Throughput Engineering"

Built for experienced ML systems engineers, inference specialists, and GPU performance practitioners, this book is a deep guide to making large language models run faster, cheaper, and more predictably with TensorRT‑LLM. Rather than offering generic acceleration advice, it develops a precise mental model of the TensorRT‑LLM stack so readers can understand where performance is won or lost: in quantization choices, graph compilation, fused kernels, KV-cache policy, and serving scheduler behavior.

The book covers the full optimization path from precision strategy and post-training quantization pipelines to engine build configuration, plugin-enabled fusion, attention specialization, and throughput-oriented serving design. Readers will learn how to choose among FP16, BF16, FP8, INT8, and INT4 in hardware-aware ways; validate deployable quantized artifacts; realize fused execution paths in compiled engines; engineer KV-cache behavior for long-context workloads; and benchmark and profile systems with enough rigor to attribute gains to the right layer.

Structured as an advanced, implementation-minded text, the book emphasizes cross-layer tradeoffs rather than isolated tricks. It assumes solid familiarity with transformer inference, CUDA-era GPU concepts, and production deployment concerns, and rewards readers who want durable optimization judgment instead of version-fragile recipes."

© 2026 NobleTrex Press (Ebook): 6610001219079

Release date

Ebook: 8 May 2026