LIBRISTO
LIBROAMANTO
obligatorio
Entre a formar parte de una comunidad de amantes de los libros del mundo entero y acceda a un sinfín de ventajas. Crear una cuenta gratis
0
Envío gratuito con Zásilkovna para compras superiores a 59.99 €
Mensajería SEUR 4.99 Mensajería GLS 7.99 Mensajería Correos 5.49 Mensajería DHL 5.49 Punto SEUR 3.99

Envío gratis a partir de 69,99 euros.

Kubernetes for AI Engineers

Deploy, Scale, and Orchestrate LLM Workloads in Production

Idioma InglésInglés
Libro Tapa blanda
Libro Kubernetes for AI Engineers Raymond Norman
Código Libristo: 52748126
Editores Independently published, mayo 2026
Kubernetes for AI EngineersDeploy, Scale, and Orchestrate LLM Workloads in ProductionArtificial Inte... Descripción completa
? points 56 b Nuevo Nuevo
22.89
Almacenamiento externo Envío en 14-21 días

Hasta 30 días para devoluciones

Kubernetes for AI Engineers
Deploy, Scale, and Orchestrate LLM Workloads in Production

Artificial Intelligence is evolving fast-and running models locally is no longer enough. Modern AI systems must be scalable, GPU-optimized, cloud-native, secure, and production-ready. That's where Kubernetes becomes essential.

Kubernetes for AI Engineers is a practical, production-focused guide for AI engineers, MLOps professionals, DevOps teams, platform engineers, and developers building modern LLM infrastructure.

Unlike generic Kubernetes books focused on traditional applications, this book is built specifically for AI workloads. You'll learn how to deploy, manage, optimize, and scale large language models (LLMs), GPU inference systems, vector databases, and AI pipelines using Kubernetes in real-world environments.
From Docker containers to enterprise-grade orchestration, this book bridges the gap between experimentation and production AI deployment.

Inside This Book, You'll Learn How To:

  • Understand Kubernetes fundamentals for AI workloads
  • Deploy and orchestrate containerized LLM applications
  • Configure GPU node pools for high-performance inference
  • Scale AI infrastructure with Kubernetes clusters
  • Use Helm for model serving and deployment
  • Implement HPA and KEDA autoscaling for inference workloads
  • Deploy vector databases and RAG systems
  • Build Kubeflow pipelines for AI workflow automation
  • Secure AI clusters using RBAC, Secrets, and policies
  • Monitor AI systems with Prometheus and Grafana
  • Optimize GPU scheduling, memory usage, and performance
  • Design multi-cluster and hybrid AI architectures
  • Troubleshoot production AI deployments and networking issues
Real-World Technologies Covered
  • Kubernetes for AI workloads
  • GPU scheduling and CUDA containers
  • LLM inference orchestration
  • KServe and model serving
  • Kubeflow pipelines
  • Docker + Kubernetes workflows
  • Vector databases and RAG systems
  • Distributed AI infrastructure
  • AI observability and monitoring
  • CI/CD for AI systems
  • Multi-node GPU deployments
  • Cloud-native AI infrastructure
Who This Book Is For
Perfect for:
  • AI Engineers
  • MLOps Engineers
  • DevOps Professionals
  • Platform Engineers
  • Machine Learning Engineers
  • Cloud Architects
  • Developers building LLM applications
  • AI startups and technical founders
Deploying your first AI inference service or building enterprise-scale AI platforms, this book provides the practical skills needed with Kubernetes.
Why This Book Is Different
Most Kubernetes books teach generic container orchestration.
This book teaches:
Kubernetes specifically for AI systems.
You'll learn:
  • how GPUs behave inside Kubernetes,
  • how LLM inference scales,
  • how AI workloads differ from traditional applications,
  • and how to build resilient AI infrastructure for production environments.
Every chapter focuses on practical deployment, scalability, observability, performance optimization, and modern AI DevOps workflows.
Includes Practical Resources & Templates
Inside, you'll also get:
  • Kubernetes manifests for AI workloads
  • Helm examples
  • GPU optimization strategies
  • Security and secret-management workflows
  • AI observability templates
  • Deployment architecture patterns
  • Troubleshooting and debugging guides
Build the Future of AI Infrastructure
Kubernetes is becoming the foundation of scalable AI systems across startups, enterprises, and cloud platforms worldwide.
If you want to build:
  • LLM platforms,
  • AI APIs,
  • RAG systems,
  • inference clusters,
  • production AI services,

Actriz & Políglota
EWA KASP para
Visualizar el vídeo
Ewa Kasp
Libristo tiene la oferta más extensa de literatura en idiomas extranjeros. Por eso compran aquí sus libros.

Sobre el libro

Nombre y apellidos Kubernetes for AI Engineers
Idioma Inglés
Encuadernación Libro - Tapa blanda
Fecha de publicación 2026
Número de páginas 300
EAN 9798199033824
Código Libristo 52748126
Peso 701
Dimensiones 216 x 280 x 16
Regale este libro hoy
Es fácil
1 Añadir al carrito y elegir Entregar como regalo en el checkout 2 Le enviaremos un vale 3 El libro llegará a la dirección del destinatario

Inicio de sesión

Inicie sesión en su cuenta. ¿No tiene una cuenta Libristo? ¡Cree una ahora!

 
obligatorio
obligatorio

¿No tiene cuenta? Descubra las ventajas de tener una cuenta Libristo.

Si tiene una cuenta Libristo, lo tendrá todo bajo control.

Crear una cuenta Libristo
Asesor de libros Libroamiko
Hola, soy Libroamiko, ¿puedo ayudarte?