Innovation with AI in the Cloud Adoption Framework
The Cloud Adoption Framework is a collection of documentation, implementation guidance, best practices, and tools that are proven guidance from Microsoft designed to accelerate your cloud adoption lifecycle.
Review a prescriptive framework that includes the tools, programs, and content (best practices, configuration templates, and architecture guidance) to simplify adoption of AI and cloud-native practices at scale.
The list of required actions is categorized by persona to drive a successful deployment of AI in applications: from proof of concept to production, and then scaling and optimization.
Get started
To prepare for this phase of the cloud adoption lifecycle, use the following exercises:
- Machine learning model development, deployment, and management: Examine patterns and practices of building your own machine learning models, including machine learning operations (MLOps), automated machine learning (AutoML), and Responsible ML learning tools such as InterpretML and Fairlearn.
- Add domain-specific AI models to your applications: Learn about best practices for adding AI capabilities into your applications with Azure Cognitive Services. Also learn about the key scenarios these services help you address.
- Build your own conversational AI solution: Learn how to build your own Virtual Assistant, a conversational AI application that can understand language and speech, perceive vast amounts of information, and respond intelligently.
- Build AI-driven knowledge mining solutions: Learn how to use knowledge mining to extract structured data from your unstructured content and discover actionable information across your organization's data.
प्रतिक्रिया
https://aka.ms/ContentUserFeedback.
जल्द आ रहा है: 2024 के दौरान हम सामग्री के लिए फीडबैक तंत्र के रूप में GitHub मुद्दों को चरणबद्ध तरीके से समाप्त कर देंगे और इसे एक नई फीडबैक प्रणाली से बदल देंगे. अधिक जानकारी के लिए, देखें:के लिए प्रतिक्रिया सबमिट करें और देखें