天天干天天操天天爱-天天干天天操天天操-天天干天天操天天插-天天干天天操天天干-天天干天天操天天摸

課程目錄: 基于Azure的AI應(yīng)用程序開發(fā)培訓(xùn)

4401 人關(guān)注
(78637/99817)
課程大綱:

基于Azure的AI應(yīng)用程序開發(fā)培訓(xùn)

 

 

 

Introduction to Artificial Intelligence

This module introduces Artificial Intelligence and Machine learning.

Next, we talk about machine learning types and tasks.

This leads into a discussion of machine learning algorithms.

Finally we explore python as a popular language for machine learning solutions

and share some scientific ecosystem packages which will help you implement machine learning.

By the end of this unit you will be able to implement machine learning models

in at least one of the available python machine learning libraries.

Standardized AI Processes and Azure Resources

This module introduces machine learning tools available

in Microsoft Azure. It then looks at standardized approaches developed

to help data analytics projects to be successful. Finally,

it gives you specific guidance on Microsoft's Team Data Science Approach

to include roles and tasks involved with the process. The exercise at the end

of this unit points you to Microsoft's documentation

to implement this process in their DevOps solution if you don't have your own.

Azure Cognitive APIs

This module introduces you to Microsoft's pretrained and managed machine learning offered

as REST API's in their suite of cognitive services. We specifically implement solutions using the computer vision api,

the facial recognition api, and do sentiment analysis by calling the natural language service.

Azure Machine Learning Service: Model Training

This module introduces you to the capabilities of the Azure Machine Learning Service.

We explore how to create and then reference an ML workspace. We then talk about how

to train a machine learning model using the Azure ML service.

We talk about the purpose and role of experiments, runs, and models. Finally,

we talk about Azure resources available to train your machine learning models with.

Exercises in this unit include creating a workspace, building a compute target,

and executing a training run using the Azure ML service.

Azure Machine Learning Service: Model Management and Deployment

This module covers how to connect to your workspace.

Next, we discuss how the model registry works and how to register

a trained model locally and from a workspace training run.

In addition, we show you the steps to prepare a model for deployment including identifying dependencies,

configuring a deployment target, building a container image. Finally,

we deploy a trained model as a webservice and test it by sending JSON objects to the API.

 

主站蜘蛛池模板: 护士xxxx做爰 | 一级aaa级毛片午夜在线播放 | 国产精品天仙tv在线观看 | 国产成人爱片免费观看视频 | 亚洲国产99999在线精品一区 | 国产精品免费福利 | 日韩精品久久久免费观看夜色 | 黄色视频一级毛片 | 免费一区二区三区四区五区 | 伊人色综合久久天天爱 | 伊人激情在线 | 久久视频6免费观看视频精品 | 99久久免费国产精品m9 | 国产在线观看一区二区三区四区 | 中文字幕日韩一区 | 中文字幕卡二和卡三的视频 | 国产大秀视频一区二区三区 | 啪啪激情网 | 国产福利写真视频在线观看 | 日韩视频免费在线播放 | 国产大片网站 | 久久一区二区三区99 | 97视频总站 | 黄色成人在线 | 国产精品青草久久 | 国产福利区一区二在线观看 | 欧美日本一道高清二区三区 | 日韩欧美一区二区在线观看 | 久久精品草 | 国产成人精品免费视频动漫 | 久久永久免费中文字幕 | 免费看黄资源大全高清 | 在线播放国产区 | 欧美五月婷婷 | 国产国产成人人免费影院 | 香蕉视频在线播放 | 美女大片高清特黄a大片 | 亚欧成人一区二区 | 日本日韩欧美 | 欧美一级黄色录像 | 看最刺激的欧美毛片 |