8,63 €
8,63 €
inkl. MwSt.
Sofort per Download lieferbar
payback
0 °P sammeln
8,63 €
8,63 €
inkl. MwSt.
Sofort per Download lieferbar

Alle Infos zum eBook verschenken
payback
0 °P sammeln
Als Download kaufen
8,63 €
inkl. MwSt.
Sofort per Download lieferbar
payback
0 °P sammeln
Jetzt verschenken
8,63 €
inkl. MwSt.
Sofort per Download lieferbar

Alle Infos zum eBook verschenken
payback
0 °P sammeln
  • Format: ePub

"Optimizing Big Data Queries with LLAP"
"Optimizing Big Data Queries with LLAP" is an authoritative guide to unlocking high-performance analytics in modern data architectures. Beginning with a clear exposition of the limitations of traditional batch processing and the evolution toward low-latency analytical processing, the book demystifies the technology behind Hive's LLAP (Low-Latency Analytical Processing) engine. Readers are introduced to LLAP's unique daemon-based architecture, its advanced caching layers, and the way it transforms query execution for near real-time responsiveness.…mehr

  • Geräte: eReader
  • ohne Kopierschutz
  • eBook Hilfe
  • Größe: 0.7MB
  • FamilySharing(5)
Produktbeschreibung
"Optimizing Big Data Queries with LLAP"
"Optimizing Big Data Queries with LLAP" is an authoritative guide to unlocking high-performance analytics in modern data architectures. Beginning with a clear exposition of the limitations of traditional batch processing and the evolution toward low-latency analytical processing, the book demystifies the technology behind Hive's LLAP (Low-Latency Analytical Processing) engine. Readers are introduced to LLAP's unique daemon-based architecture, its advanced caching layers, and the way it transforms query execution for near real-time responsiveness. Comparative insights illuminate how LLAP stands apart from other engines such as Spark, Presto, and Dremio, while real-world case studies reveal industry adoption patterns and key business drivers.
The book moves beyond conceptual overviews to offer a comprehensive exploration of LLAP's internal mechanics. It covers the entire daemon lifecycle, intricate resource allocation strategies, and both configuration and scaling for maximum concurrency and high availability. In-depth chapters dissect the fragmented query processing model, orchestration with the Tez execution engine, advanced query optimization techniques, and memory and cache management strategies. Special focus is given to profiling, monitoring, troubleshooting, and performance benchmarking, equipping practitioners with tools and best practices for continual improvement.
Cognizant of enterprise demands for security and compliance, the book provides practical frameworks for row- and column-level security, authentication, auditing, and integration with governance tools such as Ranger and Sentry. It also addresses LLAP's role in hybrid cloud and containerized deployments, and explores its extensibility through plugins and interoperability with BI and streaming pipelines. Concluding with design patterns, lessons learned, and insights into emerging paradigms such as serverless and data mesh, "Optimizing Big Data Queries with LLAP" is an essential resource for architects, engineers, and decision-makers seeking to stay ahead in the rapidly evolving world of big data analytics.


Dieser Download kann aus rechtlichen Gründen nur mit Rechnungsadresse in A, B, BG, CY, CZ, D, DK, EW, E, FIN, F, GR, H, IRL, I, LT, L, LR, M, NL, PL, P, R, S, SLO, SK ausgeliefert werden.