Kód: 52524763
"Scalable Computing with Dask: Harnessing Parallelism for Efficient Data Processing and Advanced Analytics" is the essential guide for data scientists, engineers, and researchers aiming to master distributed Python computing. This ... celý popis
Angličtina
891 Kč
Dostupnost:
50 % šance
Máme informaci, že by titul mohl být dostupný. Na základě vaší objednávky se ho pokusíme do 6 týdnů zajistit.
Zadejte do formuláře e-mailovou adresu a jakmile knihu naskladníme, zašleme vám o tom zprávu. Pohlídáme vše za vás.
Nákupem získáte 89 bodů
Anotace knihy
"Scalable Computing with Dask: Harnessing Parallelism for Efficient Data Processing and Advanced Analytics" is the essential guide for data scientists, engineers, and researchers aiming to master distributed Python computing. This authoritative work situates Dask within the broader landscape of scalable data systems, drawing clear comparisons with frameworks like Spark and Hadoop while illuminating the motivations and challenges inherent in large-scale computation. Through a thoughtful exploration of Dask's philosophy, architecture, and community-driven roadmap, readers-whether newcomers or seasoned practitioners-are thoroughly prepared for an effective hands-on journey.
Delving deep into Dask's core internals-including task graphs, scheduling algorithms, resource management, and communication protocols-this volume reveals the technical foundations that make Dask both powerful and extensible. Advanced abstractions such as distributed arrays, dataframes, and domain-specific collections are unpacked with clarity, empowering readers to leverage parallelism, fault tolerance, and performance optimization in complex workflows. The book also offers pragmatic guidance on cluster deployment, elasticity, security, observability, and managing the unique demands of production environments, ensuring readers can seamlessly integrate Dask with existing data science and machine learning pipelines.
Beyond theory, the book grounds its teachings in real-world applications ranging from big data ETL and cloud-based dynamic scaling to GPU-accelerated analytics and robust production strategies. Industry-proven case studies in finance, bioinformatics, and IoT showcase Dask's versatility and impact. For those looking to push boundaries, it provides in-depth insights into customization, plugin development, instrumentation, and best practices for contributing to Dask's vibrant open-source ecosystem. Whether building complex, high-throughput pipelines or making distributed analytics more accessible and reliable, this guide equips readers with the tools, techniques, and expertise to unlock the full potential of scalable Python computing.
Parametry knihy
891 Kč
AngličtinaOsobní odběr Praha, Brno a 47529 dalších
Copyright ©2008-26 nejlevnejsi-knihy.cz Všechna práva vyhrazenaSoukromíCookies
Vrácení do měsíce
571 999 099 (8-15.30h)Nákupní košík ( prázdný )
Nacházíte se: