Kniha Parallel AI Programming in Python Landen Howe

Parallel AI Programming in Python

Build Supercharged ML Workflows That Perform in Production

Autor: Landen Howe
Jazyk: Angličtina
Vazba: Brožovaná
Dostupnost: Skladem u dodavatele
Odesíláme za 9-15 dnů
472
Parallel AI Programming in Python: Build Supercharged ML Workflows That Perform in Production.Are yo...

Informace o knize

Autor
Jazyk
Angličtina
Vazba
Kniha - Brožovaná
Vydáno
2025
Stránek
194
EAN
9798270308827
Enbook ID
50571839
Hmotnost
347
Rozměry
178 x 254 x 10

Kompletní popis

Parallel AI Programming in Python: Build Supercharged ML Workflows That Perform in Production.

Are you wrestling with slow model training, stalled data pipelines, or unpredictable inference performance? You're not alone-and you don't have to accept sluggish results as the norm.

Parallel AI Programming in Python offers the definitive, hands-on guide to turbocharging your machine learning workflows. From multicore CPU tricks to multi-GPU strategies and distributed architectures, this book equips you with the proven, production-ready techniques that top AI teams use every day.

Inside, you'll discover how to

  • Leverage Python's threading and multiprocessing to blast past the Global Interpreter Lock

  • Build high-throughput I/O pipelines with asyncio, Dask, and Ray for lightning-fast data ingestion

  • Master GPU parallelism with PyTorch DDP, NCCL tuning, and mixed-precision training

  • Scale across clusters using MPI, Ray, and Dask-and know exactly when adding nodes stops delivering gains

  • Optimize numeric kernels with NumPy, Numba, Cython, and native extensions for peak performance

  • Implement real-time, fault-tolerant pipelines with Kafka/Pulsar, backpressure, and exactly-once semantics

  • Profile, benchmark, and tune your code with cProfile, py-spy, perf, and NVIDIA Nsight to fix bottlenecks fast

When you put this book into practice, you will

  • Cut training times from days to hours using multi-GPU and distributed training patterns

  • Architect data pipelines that process millions of records per second without dropping a message

  • Deploy inference services that scale horizontally and maintain sub-100ms latency under heavy load

  • Detect and remedy performance pitfalls-from memory thrashing to straggler tasks-before they hit production

  • Maintain rock-solid environments with containerized setups, dependency pinning, and reproducible scripts

Whether you're an ML engineer, data scientist, or infrastructure developer, Parallel AI Programming in Python delivers hands-on labs, clear code examples, and concise checklists to transform sluggish prototypes into production-grade systems.

Take control of your AI pipeline performance today-add this essential resource to your toolkit and watch your Python workflows surge to new speeds.

Mohlo by vás zajímat

Joe DiMaggio

Jack B. Moore
1 700
455

His Little Cousin. a Tale.

Emma Maria Pearson
473

Golden Spike

EDWARD KING
592

Kaydreaming

Jennifer Knightstep
250
918

Wehrmacht's Last Stand

Robert M. Citino
551

The Faust of Goethe

Robert Talbot
918

Zákaznicí kteří koupili tuto knihu koupili také

Gibt es die optimale Einkaufsorganisation?

Elisabeth Fröhlich-Glantschnig
1 568

Poucette

Andersen
118
236