Tietokirjallisuus
"Qdrant Vector Search in Practice"
"Qdrant Vector Search in Practice" is a comprehensive guide to mastering modern vector search technology, centering on the powerful open-source Qdrant database. Beginning with a grounding in the theoretical underpinnings of vector similarity search, high-dimensional data, and nearest neighbor algorithms, the book methodically explores how embeddings and vector representations transform unstructured data into actionable insights. Readers are introduced to Qdrant's architecture, capabilities, and its position in the evolving landscape of vector databases, with objective comparisons to solutions like FAISS, Milvus, and Pinecone. Real-world application scenarios, including NLP, computer vision, recommendation engines, and anomaly detection, demonstrate the breadth of vector search’s transformative impact.
Stepping beyond foundational concepts, the book delivers a holistic treatment of deploying and operating Qdrant at scale. It provides actionable guidance on installation across diverse environments—including bare metal, Docker, Kubernetes, and cloud platforms—while delving into clustering, high availability, security, cost optimization, backup strategies, and system observability. Readers will gain advanced knowledge in the design and ingestion of vector data, schema optimization, embedding generation pipelines, and integrating batch as well as real-time streaming workloads. The text further illuminates state-of-the-art indexing techniques, hybrid search strategies combining vectors and metadata, result ranking, model explainability, and best practices for maintaining data consistency, performance, and reliability.
The practical focus extends to integrating Qdrant into the broader AI and machine learning ecosystem, with in-depth discussions on APIs, client libraries, and real-world production pipelines. Advanced operational topics—including load balancing, stress testing, incident response, regulatory compliance, and multi-tenancy—are addressed to ensure robust and secure deployments. Illustrated with case studies and migration strategies, the book closes with a forward-looking perspective on emerging trends, community contributions, and the technological roadmap. Whether you're a data engineer, ML practitioner, or system architect, "Qdrant Vector Search in Practice" is an indispensable resource for unleashing the full potential of scalable, intelligent vector search solutions.
© 2025 HiTeX Press (E-kirja): 6610000964628
Julkaisupäivä
E-kirja: 11. heinäkuuta 2025
Nauti yli miljoonasta tarinasta, henkilökohtaisista suosituksista, viikottaisista uutuuksista sekä turvallisesta lastentilasta. Ei sitoutumisaikaa.
Kuuntele ja lue usein
19.99 € /kk
1 käyttäjätili
100 tuntia/kk
Ei sitoutumisaikaa
Kuuntele ja lue säännöllisesti
16.99 € /kk
1 käyttäjätili
50 tuntia/kk
Ei sitoutumisaikaa
Kuuntele ja lue rajattomasti
29.99 € /kk
1 käyttäjätili
Kuuntele ja lue rajattomasti
Ei sitoutumisaikaa
Jaa tarinat koko perheelle
Alkaen 26.99 € /kuukausi
2-6 käyttäjätiliä
100 tuntia/kk jokaiselle käyttäjälle
Ei sitoutumisaikaa
Sinä + 1 perheenjäsen
2 käyttäjätiliä26.99 € /kk
Kuuntele ja lue harvemmin - säästä käyttämättömät tunnit
9.99 € /kk
1 käyttäjätili
20 tuntia/kk
Säästä käyttämättömät tunnit, max 20h
Ei sitoutumisaikaa
Minulla on
Kampanjakoodi