Догађаји
Изградите интелигентне апликације
17. мар 23 - 21. мар 23
Придружите се серији састанака како бисте изградили скалабилна АИ решења заснована на стварним случајевима коришћења са колегама програмерима и стручњацима.
Региструјте се одмахОвај прегледач више није подржан.
Надоградите на Microsoft Edge бисте искористили најновије функције, безбедносне исправке и техничку подршку.
Azure AI services help developers and organizations rapidly create intelligent, cutting-edge, market-ready, and responsible applications with out-of-the-box and prebuilt and customizable APIs and models. Example applications include natural language processing for conversations, search, monitoring, translation, speech, vision, and decision-making.
Савет
Try Azure AI services including Azure OpenAI, Content Safety, Speech, Vision, and more in the Azure AI Foundry portal. For more information, see What is Azure AI Foundry?.
Most Azure AI services are available through REST APIs and client library SDKs in popular development languages. For more information, see each service's documentation.
When building AI applications, use the following Azure AI services:
Service | Description |
---|---|
Combine the power of generative AI models with tools that allow agents to access and interact with real-world data sources. | |
Performs model inference for flagship models in the Azure AI model catalog. | |
Bring AI-powered cloud search to your mobile and web apps. | |
Perform a wide variety of natural language tasks. | |
Create bots and connect them across channels. | |
An AI service that detects unwanted contents. | |
Customize image recognition for your business. | |
Turn documents into intelligent data-driven solutions. | |
Detect and identify people and emotions in images. | |
Help users read and comprehend text. | |
Build apps with industry-leading natural language understanding capabilities. | |
Speech to text, text to speech, translation, and speaker recognition. | |
Use AI-powered translation technology to translate more than 100 in-use, at-risk, and endangered languages and dialects. | |
Extract actionable insights from your videos. | |
Analyze content in images and videos. |
The following Azure AI services are scheduled for retirement. These services are still available for existing applications but don't use them for new AI applications:
Service | Description |
---|---|
Identify potential problems early on. | |
Detect potentially offensive or unwanted content. | |
Understand natural language in your apps. | |
An AI service that detects unwanted contents. | |
Create rich, personalized experiences for each user. | |
Distill information into easy-to-navigate questions and answers. |
Pricing tiers (and the amount you get billed) are based on the number of transactions you send using your authentication information. Each pricing tier specifies the:
Напомена
Many of the Azure AI services have a free tier you can use to try the service. To use the free tier, use F0
as the SKU for your resource.
The tools that you can use to customize and configure models are different from tools that you use to call the Azure AI services. Out of the box, most Azure AI services allow you to send data and receive insights without any customization. For example:
Azure offers a wide range of tools that are designed for different types of users, many of which can be used with Azure AI services. Designer-driven tools are the easiest to use, and are quick to set up and automate, but might have limitations when it comes to customization. Our REST APIs and client libraries provide users with more control and flexibility, but require more effort, time, and expertise to build a solution. If you use REST APIs and client libraries, there's an expectation that you're comfortable working with modern programming languages like C#, Java, Python, JavaScript, or another popular programming language.
Let's take a look at the different ways that you can work with the Azure AI services.
Azure AI services client libraries and REST APIs provide direct access to your service. These tools provide programmatic access to the Azure AI services, their baseline models, and in many cases allow you to programmatically customize your models and solutions.
If you want to learn more about available client libraries and REST APIs, use our Azure AI services overview to pick a service and get started with one of our quickstarts.
You can use Azure DevOps and GitHub Actions to manage your deployments. In the following section, we have two examples of CI/CD integrations to train and deploy custom models for Speech and the Language Understanding (LUIS) service.
Language Understanding and the Speech service offer continuous integration and continuous deployment solutions that are powered by Azure DevOps and GitHub Actions. These tools are used for automated training, testing, and release management of custom models.
Many of the Azure AI services can be deployed in containers for on-premises access and use. Using these containers gives you the flexibility to bring Azure AI services closer to your data for compliance, security, or other operational reasons. For a complete list of Azure AI containers, see On-premises containers for Azure AI services.
Some services allow you to bring your own data, then train a model. Trained custom models allow you to extend the model using the service's data and algorithm with your own data. The output matches your needs. When you bring your own data, you might need to tag the data in a way specific to the service. For example, if you're training a model to identify flowers, you can provide a catalog of flower images along with the location of the flower in each image to train the model.
With Azure and Azure AI services, you have access to a broad ecosystem, such as:
The APIs in Azure AI services are hosted on a growing network of Microsoft-managed data centers. You can find the regional availability for each API in Azure region list.
Azure AI services support a wide range of cultural languages at the service level. You can find the language availability for each API in the supported languages list.
Azure AI services provide a layered security model, including authentication with Microsoft Entra credentials, a valid resource key, and Azure Virtual Networks.
Azure AI services awarded certifications include Cloud Security Alliance STAR Certification, FedRAMP Moderate, and HIPAA BAA.
To understand privacy and data management, go to the Trust Center.
Azure AI services provide several support options to help you move forward with creating intelligent applications. Azure AI services also have a strong community of developers that can help answer your specific questions. For a full list of support options available to you, see Azure AI services support and help options.
Догађаји
Изградите интелигентне апликације
17. мар 23 - 21. мар 23
Придружите се серији састанака како бисте изградили скалабилна АИ решења заснована на стварним случајевима коришћења са колегама програмерима и стручњацима.
Региструјте се одмахОбука
Путања учења
Get started with Azure AI Services - Training
How to get started with Azure AI Services
Цертификација
Microsoft Certified: Azure AI Fundamentals - Certifications
Demonstrate fundamental AI concepts related to the development of software and services of Microsoft Azure to create AI solutions.
Документација
Azure AI services documentation
Azure AI services help developers and organizations rapidly create intelligent, cutting-edge, market-ready, and responsible applications with out-of-the-box and prebuilt and customizable APIs and models.
Azure AI Services docs: What's new for January 2025 - Azure AI services
What's new in the Azure AI Services docs for January 2025.
Overview of Responsible use of AI - Azure AI services
Learn how to responsibly use Azure AI services with guidelines and links to articles for different services within the Azure AI suite.