reklama - zainteresowany?

Building Intelligent Cloud Applications. Develop Scalable Models Using Serverless Architectures with Azure - Helion

Building Intelligent Cloud Applications. Develop Scalable Models Using Serverless Architectures with Azure
ebook
Autor: John Biggs, Vicente Herrera GarcĂ­a, Jose Luis Calvo Salanova
ISBN: 978-14-920-5227-2
stron: 154, Format: ebook
Data wydania: 2019-09-10
Księgarnia: Helion

Cena książki: 186,15 zł (poprzednio: 216,45 zł)
Oszczędzasz: 14% (-30,30 zł)

Dodaj do koszyka Building Intelligent Cloud Applications. Develop Scalable Models Using Serverless Architectures with Azure

Tagi: Programowanie w chmurze

Serverless computing is radically changing the way we build and deploy applications. With cloud providers running servers and managing machine resources, companies now can focus solely on the application’s business logic and functionality. This hands-on book shows experienced programmers how to build and deploy scalable machine learning and deep learning models using serverless architectures with Microsoft Azure.

You’ll learn step-by-step how to code machine learning into your projects using Python and pre-trained models that include tools such as image recognition, speech recognition, and classification. You’ll also examine issues around deployment and continuous delivery including scaling, security, and monitoring.

This book is divided into four parts:

  • Cloud-based development: learn the basics of serverless computing with machine learning, functions as a service (FaaS), and the use of APIs
  • Adding intelligence: create serverless applications using Azure Functions; learn how to use pre-built machine-learning and deep-learning models
  • Deployment and continuous delivery: get up to speed with Azure Kubernetes Service, as well as Azure Security Center, and Azure Monitoring
  • Application examples: deliver data at the edge, build conversational interfaces, and use convolutional neural networks for image classification

Dodaj do koszyka Building Intelligent Cloud Applications. Develop Scalable Models Using Serverless Architectures with Azure

 

Osoby które kupowały "Building Intelligent Cloud Applications. Develop Scalable Models Using Serverless Architectures with Azure", wybierały także:

  • Ansible 2 w praktyce. Automatyzacja infrastruktury, zarzÄ…dzanie konfiguracjÄ… i wdrażanie aplikacji
  • Terraform w praktyce. Kurs video. Architektura serverless i us
  • Microsoft Azure. Kurs video. ZostaÅ„ administratorem systemów IT
  • Amazon Web Services (AWS). Kurs video. ZostaÅ„ administratorem systemów IT
  • Python dla DevOps. Naucz siÄ™ bezlitoÅ›nie skutecznej automatyzacji

Dodaj do koszyka Building Intelligent Cloud Applications. Develop Scalable Models Using Serverless Architectures with Azure

Spis treści

Building Intelligent Cloud Applications. Develop Scalable Models Using Serverless Architectures with Azure eBook -- spis treści

  • Preface
    • Intelligent Serverless Applications
    • How This Book Is Organized
    • Who This Book Is For
    • Goals for the Book
    • Using Python in Our Code Examples
    • Conventions Used in This Book
    • OReilly Online Learning
    • How to Contact Us
  • I. Cloud-Based Development
  • 1. Machine Learning and Deep Learning Models in the Cloud
    • An Introduction to Machine Learning
    • An Introduction to Deep Learning
    • Neural Networks
    • Difficulties Defining Structure and Training Machine Learning Models
    • An Introduction to Serverless Machine Learning
    • Using Containers with Machine Learning Models
    • The Benefits of Serverless Computing for Machine Learning
  • 2. Functions-as-a-Service and Event-Driven Programming
    • Software-as-a-Service, Cloud Computing, and Serverless
    • Microservices Architecture
    • The Rise of Functional Programming
      • Using Functions Instead of Objects
      • Asynchronous Programming
    • Serverless
    • Implementing Functions
    • Event-Driven Architecture
    • Implications of Real-Time Processing
    • Summary and Look Ahead
  • 3. Serverless Application Programming Interfaces in Microsoft Azure
    • APIs in Serverless Platforms
    • An Introduction to Azure
    • Azure General Services
  • II. Adding Intelligence
  • 4. Getting Started with Microsoft Azure Functions
    • Azure Functions
      • Creating a Function App by Using Azure Portal
      • Local Development Environment
        • .NET Core v2.x
        • Package manager
        • Node.js
        • Azure Functions Core Tools 2
        • Python 3.6 on Linux Ubuntu 18
        • Python 3.6 on Windows
        • Python 3.6 on macOS
      • Creating a Functions Project Using Core Tools
        • Creating new functions using Core Tools
        • Starting the Function App locally using Core Tools
        • Function settings files
          • Local settings and production settings
          • Deployment using Core Tools
      • Using Visual Studio Code
        • Switch from custom shells to Bash in Visual Studio Code
      • Debugging Python by Using Visual Studio Code
        • Problem: Configured debug type python is not supported
        • Problem: Forbidden execution of scripts (Windows)
        • Problem: Failed to attach, no module named ptvsd
    • Azure Blob Storage
      • Creating a Storage Account
      • Transferring Blobs
    • Summary and Look Ahead
  • 5. Using Machine Learning and Deep Learning Models
    • Azure Cognitive Services
      • Setting Up and Using a Service in Cognitive Services
      • Using a Cognitive Service from a Serverless Azure Functions Project
    • General Machine Learning Tools, Libraries, and Frameworks
      • Microsoft Cognitive Toolkit
      • ML.NET
      • Jupyter Notebook
      • TensorFlow
      • Keras
      • Scikit-learn
    • Cloud Machine Learning Solutions with Azure
      • Microsoft Machine Learning Studio
        • Creating a predictive example that can be invoked from a serverless app
      • Azure Machine Learning Service
        • Main components
        • Azure Machine Learning software development kit
        • TensorFlow models and the Azure Machine Learning SDK
        • Azure Machine Learning for Visual Studio Code
        • Visual Studio Tools for AI
  • III. Deployment and Continuous Delivery
  • 6. Deployment and Scaling
    • Deployment Options
      • Azure DevOps
      • Docker
      • Azure Container Registry
      • Kubernetes
        • Kubernetes resources
        • Kubernetes scalabilityvirtual nodes
      • Machine Learning Tools for Kubernetes
        • Kubeflow
          • Kubeflow Pipeline
          • Kubeflow TensorFlow
          • Kubeflow JupyterHub
          • Deploying in Kubernetes
        • ksonnet
        • kubectl
      • Single-Container Machine Learning
        • Jupyter Notebook in Kubernetes
      • Distributed Machine Learning with TFJob
  • 7. Security
    • Azure Functions Authorization Levels
    • API Management
    • Azure Security
      • Operations
      • Applications
      • Storage
      • Network Layer Controls
      • Networking
  • 8. Monitoring
    • Azure Monitor
    • Metrics and Logs
    • Data Sources
    • Application Insights
      • Insights for Containers (and VMs)
    • Log Analytics
      • Data Explorer Query Language
      • Alerts
      • Smart Groups
      • Autoscale and Metrics Alerts
  • Index

Dodaj do koszyka Building Intelligent Cloud Applications. Develop Scalable Models Using Serverless Architectures with Azure

Code, Publish & WebDesing by CATALIST.com.pl



(c) 2005-2024 CATALIST agencja interaktywna, znaki firmowe należą do wydawnictwa Helion S.A.