ODBIERZ TWÓJ BONUS :: »

The Architecture Handbook for Milvus Vector Database. Design and implement high-performance vector search systems with Milvus Yudong Cai, Jeremy Zhu, Xuan Yang, Bang Fu

Język publikacji: angielski
The Architecture Handbook for Milvus Vector Database. Design and implement high-performance vector search systems with Milvus Yudong Cai, Jeremy Zhu, Xuan Yang, Bang Fu - okladka książki

The Architecture Handbook for Milvus Vector Database. Design and implement high-performance vector search systems with Milvus Yudong Cai, Jeremy Zhu, Xuan Yang, Bang Fu - okladka książki

Autorzy:
Yudong Cai, Jeremy Zhu, Xuan Yang, Bang Fu
Serie wydawnicze:
Learning
Ocena:
Bądź pierwszym, który oceni tę książkę
Stron:
502
Dostępne formaty:
     PDF
     ePub
Ebook
139,00 zł

Dodaj do koszyka Dostępny natychmiast po opłaceniu zakupu lub Kup na prezent Kup 1-kliknięciem

Przenieś na półkę

Do przechowalni

The rapid adoption of LLMs demands efficient storage and lightning-fast retrieval of unstructured data. Designed as a vector database, Milvus has earned widespread recognition in the community and support from tech giants like Apple and NVIDIA. Yet, many developers only scratch the surface of what Milvus is truly capable of. Written by the contributors of the Milvus project, this handbook gives you an insider’s perspective on its design and how it handles large-scale, high-dimensional vector data.
Starting with the basics, you’ll learn about everything from service deployment and SDK usage to Milvus’ layered architecture and how its components interact. You’ll learn how the indexing, replication, compaction, and garbage collection systems work and how to apply them to real scenarios. Through practical demos and configuration exercises, you’ll learn how to monitor, scale, and secure Milvus in production and then advance to performance evaluation and scalability testing using tools like VectorDBBench. You'll also explore Milvus' integration with LangChain for use cases such as vector search and RAG-based chatbots.
By the end of this book, you’ll be able to analyze Milvus internals, fine-tune for performance, ensure system stability, and integrate it into next-generation AI solutions.
*Email sign-up and proof of purchase required

O autorach książki

Yudong Cai is a senior software engineer with over 20 years of experience in large-scale system development. As one of the founding members of the Milvus project, he helped build Milvus from the ground up and has been involved in the development and iteration of every version since its initial open-source release. His key contributions include delivering the first production-grade Range Search implementation, as well as the refactoring of the entire Milvus configuration system, alongside the design and implementation of numerous other critical features. He is also the original developer and key maintainer of Knowhere, Milvus' core vector computation engine, where he designed its architecture to support multiple hardware acceleration frameworks and a wide range of vector search algorithms.
Jeremy Zhu is a quality assurance engineer at Zilliz, focused on ensuring the robustness and high performance of the Milvus vector database. His core responsibilities include designing comprehensive test cases, developing automated system test pipelines for diverse scenarios, and executing rigorous stress, recovery, and performance testing. Jeremy possesses deep expertise in chaos engineering, distributed systems testing, and test automation frameworks, playing a key role in maintaining Milvus' high-quality standards.
Xuan Yang is a senior software engineer at Zilliz in China, passionate about designing high-performance, scalable distributed database systems. As a core Milvus contributor, she architected the DataNode module, implemented the compaction process, and led the L0 segment design. She is the primary maintainer of PyMilvus, the official Python SDK, and VectorDBBench, an open-source benchmarking framework for vector databases. She cares deeply about system stability and performance and is always eager to collaborate with the community to push the boundaries of large-scale AI and vector data infrastructure.
Bang Fu is a senior software engineer at Zilliz. With extensive experience in both Go and Python, he has actively contributed to the development of several key features for Milvus, including permission verification, request interception, incremental synchronization, and serverless metering functionalities. He is also interested in AI technology and led the development of the GPTCache project, which focuses on caching LLM responses to improve speed and reduce costs. In addition, he has participated in the development of the DeepSearcher project.

Zamknij

Przenieś na półkę
Dodano produkt na półkę
Usunięto produkt z półki
Przeniesiono produkt do archiwum
Przeniesiono produkt do biblioteki

Zamknij

Wybierz metodę płatności

Ebook
139,00 zł
Dodaj do koszyka
Płatności obsługuje:
Ikona płatności Alior Bank Ikona płatności Apple Pay Ikona płatności Bank PEKAO S.A. Ikona płatności Bank Pocztowy Ikona płatności Banki Spółdzielcze Ikona płatności BLIK Ikona płatności Crédit Agricole e-przelew Ikona płatności dawny BNP Paribas Bank Ikona płatności Google Pay Ikona płatności ING Bank Śląski Ikona płatności Inteligo Ikona płatności iPKO Ikona płatności mBank Ikona płatności Millennium Ikona płatności Nest Bank Ikona płatności Paypal Ikona płatności PayPo | PayU Płacę później Ikona płatności PayU Płacę później Ikona płatności Plus Bank Ikona płatności Płacę z Citi Handlowy Ikona płatności Płacę z Getin Bank Ikona płatności Płać z BOŚ Ikona płatności Płatność online kartą płatniczą Ikona płatności Santander Ikona płatności Visa Mobile
Bezpieczne płatności szyfrowane SSL