Slide 1

Slide 1 text

Azure AI – Build 2022 Updates and more... SATO Naoki (Neo) Senior Software Engineer, Microsoft

Slide 2

Slide 2 text

No content

Slide 3

Slide 3 text

How customers adopt AI  Knowledge Mining 60 %  Reduction in cost of compliance  Conversational AI 30 %  Of all e-commerce will be through voice by 2030  Document Process Automation 46 %  Cost savings with process automation in IT enterprises  Machine Translation 78 %  Of language services utilize Machine Translation  Speech Transcription & Analytics 64%  Of online education experts use automated transcription Build, deploy and manage custom ML models Solve common business scenarios Knowledge Mining Conversational AI Business Process Automation Machine Translation Speech Transcription & Analytics

Slide 4

Slide 4 text

No content

Slide 5

Slide 5 text

ML platform Azure Machine Learning Azure AI Vision Speech Language Decision OpenAI Service Customizable, high quality AI models Cognitive Services Bot Service Cognitive Search Form Recognizer Video Indexer Metrics Advisor Immersive Reader Scenario specific AI services Applied AI Services

Slide 6

Slide 6 text

Preview Preview Preview Auto-tuning capability Preview Gated Preview Gated Preview Gated Preview

Slide 7

Slide 7 text

Preview Document & Conversation Summarization Preview Custom Named Entity Recognition Generally Available Custom Text Classification Generally Available Conversational Language Understanding Generally Available Document Translation Generally Available

Slide 8

Slide 8 text

Public Preview

Slide 9

Slide 9 text

GitHub Copilot https://github.com/features/copilot/

Slide 10

Slide 10 text

ML platform Azure Machine Learning Azure AI Vision Speech Language Decision OpenAI Service Customizable, high quality AI models Cognitive Services Bot Service Cognitive Search Form Recognizer Video Indexer Metrics Advisor Immersive Reader Scenario specific AI services Applied AI Services

Slide 11

Slide 11 text

Data Preparation Model Building Model Training Model Management & Monitoring Model Deployment Responsible AI MLOps

Slide 12

Slide 12 text

Structured Data Unstructured Data Analytics Business Apps Prepare Data Build & Train Manage & Monitor Deploy across clouds and on-premises Serverless Compute Managed Kubernetes Azure Edge & Hybrid Azure Arc-enabled Kubernetes Edge/IoT Devices Azure ML

Slide 13

Slide 13 text

MLOps

Slide 14

Slide 14 text

Preview Generally Available Preview Generally Available  Support for natural language processing and image tasks  Generation of model training codes  Enhancements for product integration and MLOps

Slide 15

Slide 15 text

Azure ML Azure ML Your editor of choice

Slide 16

Slide 16 text

Pipeline Metadata name, display_name, version, type, etc. Interface input/output specifications (name, type, description, default value, etc). Command, Code & Environment command, code and environment required to run the component SDK CLI UI

Slide 17

Slide 17 text

Fairness Inclusiveness Privacy & Security Transparency Reliability & Safety Accountability Microsoft’s AI Principles

Slide 18

Slide 18 text

Responsible AI investments and safeguards for facial recognition https://azure.microsoft.com/en-us/blog/responsible-ai-investments-and-safeguards-for-facial-recognition/

Slide 19

Slide 19 text

No content

Slide 20

Slide 20 text

Azure Machine Learning Responsible AI Dashboard & Responsible AI Scorecard Managed endpoints Python SDK v2 Arc support Command Line Interface v2 Custom reusable components (in pipelines) Automated ML new features Support for natural language processing and image tasks Generation of model training codes Enhancements for product integration and MLOps Integration with RStudio Workbench

Slide 21

Slide 21 text

No content