Building AI apps: Technical use cases and patterns | BRK142

00:40:11
https://www.youtube.com/watch?v=1pFE_rZq5to

Résumé

TLDRThis session at Microsoft Ignite covers the building of AI applications using Azure AI tools. Hosted by Senior Product Marketing Manager Devanshi Joshi, and other experts Mandy Whaley and Dan Gartner, the presentation delves into technical patterns, use cases, and the operationalization of AI applications. It highlights the capabilities of the Azure AI Application Platform, which supports AI-powered app development through AI infrastructure, services, and developer tools. The session also includes live demonstrations of AI app templates, and tools like GitHub Copilot for Azure and Azure AI Foundry. Attendees learn about overcoming operational challenges such as AI governance, cost management, and continuous integration of evaluations. The session encourages developers to explore AI app templates and includes recommendations for further hands-on workshops and labs.

A retenir

  • 🤖 AI is revolutionizing app development in personal and professional domains.
  • 🔧 Use Azure AI Application Platform for innovating and automating business processes.
  • 📊 Focus on aligning AI use cases with business value for successful integration.
  • ⚙️ Discover Azure's developer tools to enhance AI app building and operationalization.
  • 💡 Consider both internal and external customer experiences for AI investment.
  • 🛠️ Utilize AI app templates for accelerated development and deployment.
  • 🔒 Emphasize AI governance for model and data management.
  • 🐍 Azure AI Foundry SDKs offer robust monitoring and evaluations capabilities.
  • 💻 GitHub Copilot integrates seamlessly with Azure for enhanced developer experience.
  • 📈 Continuous evaluations and cost management are crucial for efficient AI deployment.

Chronologie

  • 00:00:00 - 00:05:00

    This introductory segment of the session is presented by Devanshi Joshi, Mandy Whaley, and Dan Gartner, focusing on building AI apps. Devanshi highlights the transformative impact of AI across industries and hints at the key areas and considerations for businesses implementing AI solutions. Key themes include modernizing existing applications, enhancing customer and employee experiences, and strategically investing in AI for business growth.

  • 00:05:00 - 00:10:00

    Devanshi introduces the Azure AI Application Platform as a comprehensive framework for building AI-powered applications, featuring infrastructure, developer tools, and access to AI models, all with a focus on security and privacy. Key components include the Azure AI Studio, the Azure AI Agent service, and the Azure AI Model catalog, amidst an evolution in developer capabilities and operational structures within organizations due to the rise of AI.

  • 00:10:00 - 00:15:00

    Mandy Whaley begins her presentation focusing on the end-to-end developer experience provided by Microsoft for AI application development. Important features include Azure's SDKs in various languages, and tools like GitHub Copilot to assist developers. Mandy emphasizes the importance of libraries such as Azure Open AI SDKs and the new Azure AI Foundry SDK in simplifying AI application development, offering capabilities to experiment with models and evaluate performance.

  • 00:15:00 - 00:20:00

    Mandy demonstrates exploring AI app templates and using GitHub Copilot for Azure. She shows how to deploy applications quickly using tools like the Azure Developer CLI, provisioning essential Azure resources through these templates. Key functionalities of GitHub Copilot for Azure are explored such as querying Azure resources, checking log files, and even managing costs for efficient development practices.

  • 00:20:00 - 00:25:00

    In this segment, Mandy discusses operational considerations, like observability and resource management during AI app development. She demonstrates using the GitHub Copilot for Azure to monitor application performance and resource utilization, including obtaining logs and managing Azure resources directly within VS Code, emphasizing the integration's benefits for maintaining cost awareness and optimizing application performance.

  • 00:25:00 - 00:30:00

    Dan Gartner continues with a focus on operationalizing AI applications using Azure AI Foundry. Key components include AI governance through AI hubs to manage model and data access, integrated monitoring solutions to track model interactions, and the application of continuous integration practices. Dan showcases how to manage AI models, quotas, and evaluate AI performance within Azure Foundry, stressing the importance of governance in AI deployment.

  • 00:30:00 - 00:40:11

    Dan demonstrates the capabilities of an AI app template that includes governance, monitoring, and analytics tools, reinforcing operational efficiency. The session concludes with Devanshi summarizing available resources and programs to assist developers and organizations in adopting and accelerating AI within their applications, mentioning hands-on labs and further sessions encouraging attendees to engage and expand their AI development skills.

Afficher plus

Carte mentale

Mind Map

Questions fréquemment posées

  • Who hosted the session on building AI apps?

    The session was hosted by Devanshi Joshi, Mandy Whaley, and Dan Gartner.

  • What is the focus of the session on AI apps?

    The session focuses on technical use cases, development patterns, tools, and strategies for building and operationalizing AI applications using Azure AI tools.

  • What platform is highlighted for developing AI solutions?

    The Azure AI Application Platform is highlighted for developing AI solutions.

  • What tools are demonstrated in the session?

    The session demonstrates AI app templates, GitHub Copilot for Azure, Azure AI Foundry, and AI evaluations.

  • Why is AI governance important in AI apps?

    AI governance is important to control models, data access, manage costs, and ensure compliance with enterprise standards.

  • What products are integrated with Azure AI Application Platform?

    The platform includes AI infrastructure, application services, developer tools, and model catalogs from AI innovators.

  • How does the session recommend handling operational challenges in AI development?

    It recommends using Azure AI Hubs for governance, AI Foundry for developer experience, evaluations in CICD, and monitoring tools for operational challenges.

  • What is the benefit of using AI app templates?

    AI app templates provide code and infrastructure solutions that accelerate the development and deployment of AI applications.

  • How can developers manage costs during AI application development?

    Developers can manage costs using tools like Azure AI Hubs to monitor and control resource quotas and expenses.

  • Is there a specific lab recommended for hands-on learning?

    Yes, the Lab Mastering Azure Container Apps and Gen. AI for Intelligent Solutions Lab 413 is recommended for hands-on learning.

Voir plus de résumés vidéo

Accédez instantanément à des résumés vidéo gratuits sur YouTube grâce à l'IA !
Sous-titres
en
Défilement automatique:
  • 00:00:14
    All right.
  • 00:00:14
    Hi, everyone.
  • 00:00:15
    Welcome to the session on building AI apps, technical use
  • 00:00:19
    cases and patterns.
  • 00:00:21
    I'm Devanshi Joshi, Senior Product Marketing Manager for the Azure
  • 00:00:24
    Application Platform.
  • 00:00:26
    And joining me today for this session will be Mandy
  • 00:00:29
    Whaley, Partner Director for Product for Developer Tools and Dan
  • 00:00:33
    Gartner, Director Specialist for App Innovation.
  • 00:00:37
    We will start with exploring the technical patterns and use
  • 00:00:41
    cases for AI powered app development, then explore the tools
  • 00:00:45
    to help you get started easily and finally close with
  • 00:00:48
    how to operationalise these AI apps in production.
  • 00:00:53
    All right, So before we begin into the deep depths
  • 00:00:56
    of technical technology use cases with a show of hands
  • 00:01:00
    here in person and also virtually, can you tell me
  • 00:01:04
    how many of you interact with AI today?
  • 00:01:09
    Wow, like 9599% of the room and I'm sure virtually
  • 00:01:13
    as well.
  • 00:01:14
    It could be in your personal lives with home assistance
  • 00:01:19
    or in your professional lives with AI powered tools using
  • 00:01:23
    Microsoft Copilot, ChatGPT and other routines that are now part
  • 00:01:28
    of both your work and daily home lives.
  • 00:01:32
    So AI is pretty much revolutionizing everything in our lives
  • 00:01:37
    personally and professionally.
  • 00:01:40
    It's been around for a couple of decades.
  • 00:01:42
    The last few years have been radically transformative, transforming also
  • 00:01:47
    the app development journey that we have seen our customers
  • 00:01:50
    on board and join us along.
  • 00:01:53
    So every Business Today across every industry is reinventing their
  • 00:01:58
    current application landscape and building new apps right at the
  • 00:02:03
    centre with AI.
  • 00:02:07
    OK, so how about delivering this transformation, getting real with
  • 00:02:13
    your organization?
  • 00:02:14
    What are some of the key consideration areas for you
  • 00:02:17
    to address?
  • 00:02:18
    You start with looking at the represented use cases that
  • 00:02:22
    are aligned to your business value.
  • 00:02:24
    Discuss when and how to modernize your existing apps or
  • 00:02:28
    data assets, and also highlight key operational imperatives and opportunities
  • 00:02:34
    to ensure you can securely scale as your business grows.
  • 00:02:39
    Discovering your AI app strategy with internal processes or experiences
  • 00:02:44
    for external customers.
  • 00:02:47
    It can be a whole layer of end to end
  • 00:02:51
    experiences you build.
  • 00:02:54
    So understanding where to focus your AI investment and remembering
  • 00:02:58
    that your ROI is not just about cost.
  • 00:03:01
    It could vary from time savings to customer satisfaction as
  • 00:03:05
    well as employee engagement.
  • 00:03:07
    And depending on your business.
  • 00:03:09
    Consider these areas for your AI investments, whether it be
  • 00:03:13
    reshaping business processes to operate more effectively, enriching the employee
  • 00:03:19
    experiences or reimagining your new customer experiences, accelerating existing product
  • 00:03:26
    innovations or new ones to deliver completely transformed experience for
  • 00:03:31
    both your solution in house and end customers.
  • 00:03:35
    So one way to think about it is that you
  • 00:03:38
    consider cases that are mapped to internal experiences and then
  • 00:03:43
    external experiences.
  • 00:03:45
    So reinventing experiences for your customers can include personalization and
  • 00:03:50
    product discovery.
  • 00:03:51
    I see someone go yeah, in the crowd.
  • 00:03:53
    OK, I see you're there already.
  • 00:03:54
    Nice content generation and marketing service and support or building
  • 00:04:00
    your own assistance with build your own copilot experiences like
  • 00:04:04
    here TomTom is re imagining the digital cockpit by understanding
  • 00:04:09
    already 95% of their complex requests, improving response time from
  • 00:04:14
    12 seconds to 2.5 seconds.
  • 00:04:16
    And when we reflect on internal experiences, the business processes
  • 00:04:21
    side of it, extending to include again building internal assistance,
  • 00:04:25
    AI assistance, Co pilots or having high volume transaction processing
  • 00:04:30
    and anomaly detection, information discovery and knowledge mining or even
  • 00:04:35
    document intelligence and summarisation.
  • 00:04:38
    Manulife here has data scientists take only days now to
  • 00:04:42
    set up their environment to make fraud detection much easier.
  • 00:04:47
    So to get all of this started for our customers,
  • 00:04:50
    Microsoft's Azure AI Application platform provides the framework for you
  • 00:04:56
    to build your own AI powered apps.
  • 00:04:59
    In fact, it's the framework that Microsoft Copilot is built
  • 00:05:02
    on.
  • 00:05:03
    It's the most advanced platform for creating AI capabilities and
  • 00:05:08
    solutions, whether you're extending and building on top of Microsoft
  • 00:05:12
    Copilot or building your own Copilot, or innovating and automating
  • 00:05:17
    with AI throughout your business processes.
  • 00:05:20
    The Azure AI Application Platform provides that comprehensive and integrated
  • 00:05:25
    platform to deliver on these applications performing better, taking you
  • 00:05:30
    to market faster.
  • 00:05:32
    The platform includes AI infrastructure providing computing power with CPUs
  • 00:05:37
    and GPUs, application services to deploy and scale your apps,
  • 00:05:42
    foundation models from AI innovators across the industry, your own
  • 00:05:46
    business data, and the developer tooling to build these solutions.
  • 00:05:51
    All of this wrapped up in our industry leading approach
  • 00:05:55
    to AI privacy, safety and security.
  • 00:05:59
    Now Azure AI platform, we heard about it a lot
  • 00:06:02
    today starting from the very keynote.
  • 00:06:04
    It's this unified AI platform representing the Azure AI Portal
  • 00:06:08
    and unified SDK experience is in addition to the prebuilt
  • 00:06:13
    app templates and access to the third party ISV and
  • 00:06:16
    to ISV tools and services.
  • 00:06:19
    So earlier today, Satya shared that we're evolving the Azure
  • 00:06:23
    AI Studio into this fully enterprise grade management console to
  • 00:06:27
    give organisations the visibility they need on cost, quality, performance
  • 00:06:32
    and safety.
  • 00:06:33
    We're introducing the new Azure AI Agent service to connect
  • 00:06:37
    knowledge, memory, action, and models, all of it together for
  • 00:06:42
    creating robust and sophisticated apps together with the Azure AI
  • 00:06:47
    Model catalog, open AI service content safety, all of this
  • 00:06:52
    is together powering the Azure AI Foundry.
  • 00:06:56
    Developers will now be able to stay in their flow
  • 00:06:59
    right where they are, directly access Azure AI services from
  • 00:07:03
    the world's most popular developer tools, move quickly from idea
  • 00:07:07
    to code and Microsoft back AI app templates, agent orchestration
  • 00:07:12
    service, as well as the curated selection of integrated third
  • 00:07:16
    party solutions.
  • 00:07:17
    Discovering the best of models out there.
  • 00:07:20
    the IT admins, operations and compliance teams can now leverage
  • 00:07:24
    the management and government's tools to run their AI apps
  • 00:07:27
    effectively and with confidence.
  • 00:07:30
    So now every generation of applications has brought a changing
  • 00:07:34
    set of needs.
  • 00:07:36
    So just as web, mobile and cloud drove the rise
  • 00:07:40
    of new application platform, AI will also evolve how we
  • 00:07:45
    build, run, govern and optimize our apps that are defined
  • 00:07:50
    by AI.
  • 00:07:51
    With the power of the new models that are coming
  • 00:07:55
    out every day, their power to solve reason complex problems,
  • 00:07:59
    there's this real opportunity to automate complex business processes and
  • 00:08:04
    human workflows to drive business growth at the end.
  • 00:08:07
    So data here forms the key to get you those
  • 00:08:11
    insights and value creation for your businesses.
  • 00:08:16
    Data forms the key here, driving us into decision making,
  • 00:08:20
    better product design, better customer service and better acquisitions.
  • 00:08:26
    The opportunity for you here as customers, we seek to
  • 00:08:30
    use AI to automate virtually anything and every step of
  • 00:08:34
    the way in your journey.
  • 00:08:36
    Workflows, business processes, ingesting signals to business processes and workflow
  • 00:08:43
    automation and to outputs, even actions.
  • 00:08:47
    So there are challenges however, and the developer has a
  • 00:08:51
    steep learning curve, learning curve here from functions to new
  • 00:08:55
    tools coming out, particularly with the Gen.
  • 00:08:57
    AI models coming out every other day with newer revisions.
  • 00:09:02
    So as well as the AI engineer has to work
  • 00:09:05
    on integrating to the existing systems, AI is bringing in
  • 00:09:09
    new waves.
  • 00:09:10
    You get to modernize, but you also have this whole
  • 00:09:13
    set of existing capabilities to make it work with your
  • 00:09:16
    technical debt in a different in a whole new light.
  • 00:09:20
    So the AI is also hallucinating at the same time.
  • 00:09:24
    It's hard.
  • 00:09:25
    And of course, the IT professional, we can never forget
  • 00:09:29
    that the IT professional leads have also transformed for the
  • 00:09:32
    management of the tools that understand their security, privacy, safety,
  • 00:09:37
    all of the aspects today along with Gen.
  • 00:09:39
    AI coming in way to manage costs and optimize resources.
  • 00:09:44
    Now I would like to invite Mandy to walk us
  • 00:09:47
    through the end to end developer experience for AI app
  • 00:09:50
    development and overcome, help you overcome these challenges and get
  • 00:09:54
    started easily.
  • 00:09:54
    Thank.
  • 00:09:55
    You so much.
  • 00:09:56
    Hi everybody.
  • 00:09:57
    How's it going?
  • 00:09:57
    Thanks for being here last session of the day.
  • 00:10:00
    Hope you've had a great day.
  • 00:10:01
    One, I'm Andy Whaley, I lead our Azure dev tools
  • 00:10:04
    and Azure SDK team and I'm really excited to share
  • 00:10:07
    with you some of the things that we've been building
  • 00:10:10
    to help you build AI apps for a lot of
  • 00:10:12
    these great use cases that Devante was sharing.
  • 00:10:15
    So at Microsoft, we take an end to end approach
  • 00:10:18
    for developer experience for helping you build cloud and AI
  • 00:10:21
    applications.
  • 00:10:22
    It starts in your IDE, in your editor where you're
  • 00:10:25
    writing your code, connecting to your DevOps tools like GitHub
  • 00:10:28
    and Azure DevOps and then all the way to Azure,
  • 00:10:30
    the cloud platform.
  • 00:10:32
    And our goal is for any developer working in any
  • 00:10:35
    language to be successful.
  • 00:10:37
    So we build libraries in pythonjavascriptjava.net and Go.
  • 00:10:42
    And GitHub Copilot is there to help you along the
  • 00:10:44
    whole journey.
  • 00:10:45
    I wanted to take a minute to share about some
  • 00:10:48
    of the new things happening with our Azure AISDKS because
  • 00:10:51
    these are really at the core of how we're enabling
  • 00:10:54
    you to build AI applications.
  • 00:10:56
    A big part of this is our Azure Open AISDKS.
  • 00:10:59
    We have these in python.net, JavaScript, Java, and Go.
  • 00:11:02
    These bring the incredible powers of the Open AI models
  • 00:11:06
    to Azure with Azure Security and Azure Enterprise Promises.
  • 00:11:10
    You can check these out with the URL, the QR
  • 00:11:12
    code that's there.
  • 00:11:13
    This is a great way to get started.
  • 00:11:15
    Tons of samples and really easy to use SDKS.
  • 00:11:19
    And then we're really excited for the net community because
  • 00:11:23
    Open AI just announced their stable release of the Open
  • 00:11:27
    AI Net SDK.
  • 00:11:28
    And this is really great because it allows.net developers to
  • 00:11:32
    use the latest Open AI features, and it pairs with
  • 00:11:35
    the Azure Companion SDK libraries that we build so that
  • 00:11:38
    you can easily move to Azure Open AI and use
  • 00:11:41
    things like Azure Identity and all of the Azure features
  • 00:11:44
    that you're used to.
  • 00:11:45
    So definitely go give this a try if you're a.net
  • 00:11:48
    developer and then today you've probably been hearing a lot
  • 00:11:52
    about Azure AI Foundry.
  • 00:11:53
    We're really excited to have the Azure AI Foundry SDK
  • 00:11:57
    in preview.
  • 00:11:58
    This is a new experience focused on a really simplified
  • 00:12:01
    developer experience that brings everything you need to build an
  • 00:12:05
    AI application together.
  • 00:12:07
    Evaluations, tracing models.
  • 00:12:10
    And one of the really cool things about it is
  • 00:12:13
    that you can explore different models in the really expansive
  • 00:12:17
    model catalogue that we offer and make very few code
  • 00:12:20
    changes.
  • 00:12:21
    And that's one of the things that this Foundry SDK
  • 00:12:23
    enables.
  • 00:12:24
    So definitely go take a look at that.
  • 00:12:26
    We are going to share some today, some demos, some
  • 00:12:29
    tooling, some things that can help you on this whole
  • 00:12:32
    journey of building an AI application.
  • 00:12:34
    As we've been building AI applications and talking with customers
  • 00:12:38
    and community members, we've kind of broken down into these
  • 00:12:42
    these steps of that taking an idea of your AI
  • 00:12:45
    powered application and getting it to production.
  • 00:12:48
    So you start with exploration, you're trying out different models,
  • 00:12:51
    you're trying them in the playground, you're starting to collect
  • 00:12:54
    your prompts, you're trying to see what does successful output
  • 00:12:57
    start to look like.
  • 00:12:59
    And then very quickly you're into this development phase where
  • 00:13:02
    you're connecting the LLM part of your app to the
  • 00:13:04
    rest of your application.
  • 00:13:06
    Maybe existing resources that you have.
  • 00:13:08
    You may be starting to put your prompts in source
  • 00:13:11
    control so you can start to iterate on them and
  • 00:13:13
    just connecting and building out your user interactions and really
  • 00:13:16
    starting to look like what is your proof of concept
  • 00:13:19
    look like.
  • 00:13:20
    And then from there, you're starting to move towards pilot
  • 00:13:23
    and production and all of your normal software engineering best
  • 00:13:27
    practices apply.
  • 00:13:28
    You want to get your CICD pipeline set up, but
  • 00:13:30
    there's some new things to think about in the pipeline,
  • 00:13:33
    like how do you bring your prompt evaluations into your
  • 00:13:36
    CICD pipeline so that you can be running your prompt
  • 00:13:39
    evaluations just like you run your other automated tests.
  • 00:13:43
    And we've built some great tooling to help you with
  • 00:13:45
    that.
  • 00:13:45
    We're going to be demoing some of that today.
  • 00:13:48
    And then from there, you're moving to pilot and production
  • 00:13:50
    and users are starting to really interact with your application
  • 00:13:53
    and the ways that you're getting customer feedback and doing
  • 00:13:56
    experimentation become really important.
  • 00:13:58
    So we're going to take a look at this.
  • 00:13:59
    I'm going to show you some of the tooling and
  • 00:14:01
    experiences you can that it can help you during exploration
  • 00:14:04
    and development.
  • 00:14:05
    And then Dan is going to come up and cover
  • 00:14:07
    some of the things that help you operationalize your app
  • 00:14:09
    when you're heading for production.
  • 00:14:11
    So we're going to build an application.
  • 00:14:13
    We're on a team.
  • 00:14:14
    We want to use GPT 4 O and we want
  • 00:14:16
    to use the image processing capabilities of this.
  • 00:14:19
    We're going to build an application where we can upload
  • 00:14:22
    images and then chat with those images.
  • 00:14:25
    We're going to use two new tools, the AI app
  • 00:14:28
    template gallery and also GitHub copilot for Azure.
  • 00:14:33
    We're going to start in the AI app template gallery.
  • 00:14:35
    So this is a new resource that we've just launched
  • 00:14:38
    for developers, and it's a gallery of application templates that
  • 00:14:42
    cover different AI use cases, application patterns.
  • 00:14:46
    You can filter by the kind of task that it's
  • 00:14:48
    doing.
  • 00:14:49
    You can try out all the different languages, you can
  • 00:14:52
    filter by model.
  • 00:14:53
    And each one of these is an application that includes
  • 00:14:56
    all of the source code needed to get it up
  • 00:14:58
    and running, as well as the infrastructure as code files
  • 00:15:01
    that help you provision the Azure resources.
  • 00:15:04
    You can see what the app's going to look like
  • 00:15:06
    when you deploy it, an architecture diagram showing you what
  • 00:15:10
    Azure resources are used.
  • 00:15:11
    And many of them include videos that can help you
  • 00:15:14
    get started.
  • 00:15:15
    All of them you can open directly in GitHub code
  • 00:15:18
    spaces, get started with one command, or just view the
  • 00:15:21
    code on GitHub.
  • 00:15:23
    So we're going to use a template from the gallery
  • 00:15:25
    to help us build our application.
  • 00:15:28
    And we're also going to use that together with GitHub
  • 00:15:30
    Copilot for Azure.
  • 00:15:31
    GitHub copilot for Azure is now in public preview.
  • 00:15:34
    We're super excited.
  • 00:15:35
    This is a copilot chat extension that you can use
  • 00:15:39
    in VS Code to help you with all things Azure.
  • 00:15:42
    So, you know, looking for information about Azure resources, learning
  • 00:15:46
    about new Azure services.
  • 00:15:48
    Now you have the latest Azure documentation right inside of
  • 00:15:51
    your IDE that you can access just by asking questions.
  • 00:15:54
    It also has information about your Azure context, your subscription,
  • 00:15:58
    your tenants.
  • 00:15:59
    So it can help you get information about your resources,
  • 00:16:02
    troubleshoot issues, and even build and deploy applications.
  • 00:16:06
    So we're going to use these two things together, GitHub
  • 00:16:08
    copilot for Azure and the AI App Template Gallery.
  • 00:16:11
    All right, we're going to move into VS Code.
  • 00:16:15
    So here I'm in VS Code and I'm going to
  • 00:16:17
    see if Copilot can help me find a template to
  • 00:16:20
    get started on my application using GPT 4 O.
  • 00:16:23
    So it's going out, it's querying and looking at that
  • 00:16:26
    Azure AI template gallery for something that matches what I'm
  • 00:16:30
    looking for.
  • 00:16:31
    And here it is.
  • 00:16:32
    It's found a template.
  • 00:16:33
    It's the chat plus vision template.
  • 00:16:35
    It gives me the URL.
  • 00:16:38
    I can just type that init command into my terminal
  • 00:16:41
    and this is going to start to set up my
  • 00:16:44
    local environment.
  • 00:16:46
    So I'm going to give it an environment name.
  • 00:16:48
    And now I have the application code here ready for
  • 00:16:51
    me to work with.
  • 00:16:53
    You can see that we've got the application code.
  • 00:16:55
    Here's where the chat is happening.
  • 00:16:59
    And then I've also got infrastructure as code files that
  • 00:17:02
    are helping provision all the different Azure resources that are
  • 00:17:05
    used.
  • 00:17:06
    So that looks great.
  • 00:17:07
    This is going to help me a lot.
  • 00:17:09
    One of my favorite copilot features is the workspace feature.
  • 00:17:14
    And so you can ask at workspace and this helps
  • 00:17:17
    copilot look at the entire repo, the whole code base,
  • 00:17:20
    not just a few files.
  • 00:17:22
    So I think about this as like maybe sort of
  • 00:17:24
    an expert programmer on this code base.
  • 00:17:26
    If I'm ramping up on a new project, it can
  • 00:17:28
    help me learn about it.
  • 00:17:30
    So this is great.
  • 00:17:31
    This is telling me, this is Python, we're using Azure
  • 00:17:34
    Open AI.
  • 00:17:34
    It's going to deploy to container OPS.
  • 00:17:36
    This is looking like the application that I want to
  • 00:17:39
    use, but I know we're also using Bicep to specify
  • 00:17:42
    the resources.
  • 00:17:43
    So I'm going to ask at Azure to look a
  • 00:17:45
    little bit deeper to take a look at the actual
  • 00:17:48
    Bicep files and just confirm which model we're using.
  • 00:17:52
    Great.
  • 00:17:52
    It took a look.
  • 00:17:53
    It knows that we're using GPT 4 O, that matches
  • 00:17:56
    what I want to do.
  • 00:17:57
    And so now I'm ready to start deploying to Azure,
  • 00:18:01
    but I want to check the availability of GPT 4
  • 00:18:04
    O in certain regions.
  • 00:18:06
    So we're always adding new models to the AI Foundry
  • 00:18:09
    catalogue and they roll out to different regions.
  • 00:18:13
    So as you're thinking about where to put your application,
  • 00:18:15
    where to put your compute resources, you can use at
  • 00:18:18
    Azure to help you know the latest information on regional
  • 00:18:21
    availability for different models.
  • 00:18:23
    You can also use it to get information about AI
  • 00:18:25
    resources that you've already deployed.
  • 00:18:28
    OK, great.
  • 00:18:28
    So this is letting me know this and E US
  • 00:18:31
    two, I'm going to use that.
  • 00:18:33
    So next I'm going to ask GitHub copilot to help
  • 00:18:35
    me deploy this application.
  • 00:18:38
    So this is great.
  • 00:18:39
    It's knows I'm using the Azure developer CLI.
  • 00:18:41
    It lets me know I can just use AZD provision
  • 00:18:44
    and AZD deploy.
  • 00:18:46
    Now, this template takes about three to four minutes to
  • 00:18:49
    deploy the whole thing, provisioning all the resources, packaging the
  • 00:18:53
    application code and deploying it.
  • 00:18:56
    So in the time that you could maybe go grab
  • 00:18:57
    a coffee, your application's up and running.
  • 00:19:00
    This is the resource group that it will create.
  • 00:19:03
    I've got Azure Open AI resources, container apps, container apps
  • 00:19:07
    environment, my managed identity so I can do keyless authentication
  • 00:19:11
    and my log analytics workspace.
  • 00:19:13
    And I could dive into, you know, each one of
  • 00:19:15
    those resources and take a closer look.
  • 00:19:17
    And here's my application that was deployed so we can
  • 00:19:20
    try it out.
  • 00:19:21
    We'll pick a graph because one of the things that
  • 00:19:24
    our team may be interested in is can we chat
  • 00:19:27
    and get information from charts and graphs.
  • 00:19:30
    So this is an example we're asking about is this
  • 00:19:33
    tree coverage loss, which region has the most?
  • 00:19:35
    And it can tell that tropical has the most and
  • 00:19:38
    it's the dark green area.
  • 00:19:40
    Another thing we're interested is in interpreting diagrams.
  • 00:19:43
    So this is an architecture diagram.
  • 00:19:46
    I'm going to ask it to list the services used
  • 00:19:50
    in this app.
  • 00:19:51
    And so it's going to take a look at that
  • 00:19:53
    architecture diagram and it returns.
  • 00:19:55
    These are all the Azure services that were used in
  • 00:19:57
    that grade.
  • 00:19:58
    So we did it.
  • 00:19:59
    We built our application.
  • 00:20:00
    We've got our we're using GPT 4 O, we've got
  • 00:20:03
    our image processing application.
  • 00:20:05
    From here we could start to evolve that and add
  • 00:20:07
    more resources and take our application to the next steps.
  • 00:20:11
    There's a couple more things I want to show you
  • 00:20:13
    with GitHub copilot for Azure that can help you as
  • 00:20:16
    you are evolving your application.
  • 00:20:19
    So we're back in VS Code and this is the
  • 00:20:21
    Azure Container OPS VS Code extension, same resources we were
  • 00:20:24
    just looking at.
  • 00:20:26
    And one of the things that's really handy is you
  • 00:20:28
    can focus on a resource and then say ask at
  • 00:20:30
    Azure.
  • 00:20:31
    And this lets the agent know that you want to
  • 00:20:33
    talk about this specific resource.
  • 00:20:35
    So I'm going to ask it to go get the
  • 00:20:37
    most recent logs for this resource.
  • 00:20:39
    This is something really common where I'm working on my
  • 00:20:42
    application.
  • 00:20:42
    And maybe I just want to check, you know, is
  • 00:20:44
    there anything going on?
  • 00:20:45
    I could ask it to get errors.
  • 00:20:48
    I can just take a quick look at what's going
  • 00:20:50
    on with my application.
  • 00:20:51
    So it's using my Azure context again, my subscription, my
  • 00:20:54
    tenant, it knows what resource we're talking about.
  • 00:20:57
    It's going out and querying those logs and it's even
  • 00:20:59
    going to bring them back and put them in a
  • 00:21:01
    nice table for me.
  • 00:21:02
    And one of the things that I really like about
  • 00:21:05
    it is that I get a quick look at what's
  • 00:21:07
    going on, but it will also give me the link
  • 00:21:10
    that if I want to go continue looking deeper into
  • 00:21:13
    the logs in the portal, I'll get a link to
  • 00:21:15
    continue that in the portal.
  • 00:21:17
    It's coming, There we go.
  • 00:21:19
    So that's it.
  • 00:21:20
    That is a super time saver.
  • 00:21:22
    One other time saver that I really like to use
  • 00:21:25
    is the fact that GitHub Copilot for Azure knows about
  • 00:21:28
    my Azure Resource graph.
  • 00:21:30
    So I can ask it something like this for that
  • 00:21:33
    resource group we just created when we deployed our application.
  • 00:21:37
    Just give me a list of all those resources and
  • 00:21:39
    give me the link to go directly to them in
  • 00:21:41
    the portal.
  • 00:21:41
    This is like a really great time saver.
  • 00:21:44
    It just gets all of those resources right in my
  • 00:21:46
    coding environment, super accessible for me to if I need
  • 00:21:49
    to go check a setting in the portal or dig
  • 00:21:52
    deeper on something.
  • 00:21:54
    Now one other thing that you want to think about
  • 00:21:57
    as you're going in those early phases of exploration and
  • 00:22:00
    development and starting to move towards pilot are your cost.
  • 00:22:04
    It's great to keep an eye on your cost as
  • 00:22:06
    you're exploring different models, different application architectures and get a
  • 00:22:10
    copilot for Azure can help you with that too.
  • 00:22:13
    We have a cost management assistant.
  • 00:22:15
    You can ask it to break down cost for certain
  • 00:22:17
    time ranges by resource group by service and just get
  • 00:22:21
    a quick view of that right inside of of VS
  • 00:22:23
    Code.
  • 00:22:25
    OK, so we did it.
  • 00:22:27
    We built our application.
  • 00:22:29
    It's up and running and everything that I showed you
  • 00:22:32
    is available for you to try today.
  • 00:22:34
    You can, you can go use all of this right
  • 00:22:36
    now.
  • 00:22:37
    The AI app template gallery is live.
  • 00:22:39
    This QR code will get there.
  • 00:22:40
    Go try out.
  • 00:22:41
    You can deploy the app we were just looking at.
  • 00:22:44
    And then you can also suggest use cases.
  • 00:22:47
    If there's use cases that you would love to see
  • 00:22:49
    in the application gallery, please let us know.
  • 00:22:52
    And then GitHub copilot for Azure, available in the VS
  • 00:22:55
    Code Marketplace.
  • 00:22:56
    Go install it, give it a try, start finding out
  • 00:22:59
    which things help save you time and which things are
  • 00:23:02
    really important to have in your editor.
  • 00:23:04
    Really excited to be here with you today.
  • 00:23:06
    Next, we're going to go ahead and look at the
  • 00:23:09
    next phases through evaluations, through production, and Dan's going to
  • 00:23:12
    show you some great demos on that.
  • 00:23:14
    All right.
  • 00:23:16
    All right.
  • 00:23:16
    Thank you, Mandy.
  • 00:23:22
    All right, so I'm going to close this out by
  • 00:23:25
    walking through how we can operationalize our AI applications using
  • 00:23:30
    Azure AI Foundry and the Azure AI Foundry SDKS.
  • 00:23:33
    And what we're going to use to do this is
  • 00:23:35
    we're going to use an AI app template.
  • 00:23:37
    So these templates are really fantastic.
  • 00:23:39
    There's tons of different use cases out there there.
  • 00:23:42
    There's chat over images, content creation, enterprise chat, enterprise search,
  • 00:23:47
    and then some of them contain everything that you need
  • 00:23:50
    to fully operationalize your app for production and are fully
  • 00:23:54
    connected to AI Foundry.
  • 00:23:55
    So let's dive into one of those, the app template
  • 00:24:00
    that we're going to look at.
  • 00:24:03
    It's called Contoso Creative Writer.
  • 00:24:06
    Yeah, it's super simple to install, just do AZD init
  • 00:24:09
    dash T Contoso Creative Writer.
  • 00:24:12
    You'll pull down the template onto your machine.
  • 00:24:14
    But this is a very interesting example application.
  • 00:24:18
    One, it's a multi agent AI application.
  • 00:24:21
    So it's doing a bunch of different things.
  • 00:24:23
    It's orchestrating across multiple different AI agents.
  • 00:24:27
    We've got one researcher agent that's using Azure Open AI.
  • 00:24:30
    It's using tools like the Bing search service, It's using
  • 00:24:33
    Azure AI Search.
  • 00:24:35
    There's another writing a writer agent that creates marketing copy.
  • 00:24:39
    And then there's an editor agent.
  • 00:24:40
    So if you're looking for an example of a multi
  • 00:24:43
    agent application, this is where to go.
  • 00:24:45
    But this also includes a lot of the different services
  • 00:24:48
    and resources that you need to operationalize an AI application.
  • 00:24:52
    And we're going to dive into those.
  • 00:24:55
    So when I meet, when I say operationalize, this is
  • 00:24:57
    what I mean, this is what I'm going to focus
  • 00:25:00
    on.
  • 00:25:00
    This is what we're going to show on today.
  • 00:25:02
    AI governance, right?
  • 00:25:04
    Most enterprises really, one of the barriers is they're not
  • 00:25:07
    going to adopt generative AI unless they've got the ability
  • 00:25:11
    to govern the different AI models, to govern the data
  • 00:25:14
    that your AI applications are going to be using.
  • 00:25:17
    And so we can implement all of that with Azure
  • 00:25:20
    AI Hubs.
  • 00:25:20
    So we're going to look at those that's deployed with
  • 00:25:23
    this AI app template.
  • 00:25:25
    We're going to look at the developer experience with AI
  • 00:25:28
    Foundry Playgrounds, so your developers can work with these different
  • 00:25:32
    models.
  • 00:25:32
    There's multimodal playgrounds that they can work with.
  • 00:25:36
    We're going to dive into AI evaluations.
  • 00:25:39
    We're going to look at CICD, continuous integration with GitHub
  • 00:25:43
    Actions, and you have the ability to run AI evaluations
  • 00:25:47
    as part of that.
  • 00:25:48
    And then we're going to look at all the baked
  • 00:25:51
    in app monitoring, observability tracing, as well as experiments.
  • 00:25:56
    So I'm going to switch over to my machine and
  • 00:26:00
    we're going to get started.
  • 00:26:03
    First thing that I want to show you is this
  • 00:26:06
    is how we can get Contoso Creative writer onto your
  • 00:26:09
    machine.
  • 00:26:10
    It's super simple, just AZD init Contoso Creative writer.
  • 00:26:14
    It's going to ask you to create a new environment
  • 00:26:16
    name.
  • 00:26:17
    I'm just going to give it a name.
  • 00:26:19
    Three, I've got a project installed.
  • 00:26:22
    I want to deploy this to Azure.
  • 00:26:23
    This is what I do AZD up, done.
  • 00:26:28
    Pick a subscription, pick a region and that Contoso Creative
  • 00:26:32
    Writer AI template is going to be deployed to my
  • 00:26:35
    Azure subscription.
  • 00:26:36
    Now this one has a bunch of different resources in
  • 00:26:39
    it, so it takes about 15 minutes.
  • 00:26:41
    It's provisioning, AI search, all that sort of stuff.
  • 00:26:45
    So if I've already pre provisioned it, this is a
  • 00:26:48
    resource group that eventually gets created.
  • 00:26:51
    Now you'll see there's some very interesting things here.
  • 00:26:54
    It's not just the app pieces, it's not just container
  • 00:26:57
    apps, but we've we've got an AI hub, we've got
  • 00:27:00
    an AI project, we've got application insights for monitoring.
  • 00:27:04
    So this template contains basically everything that I need to
  • 00:27:08
    to implement all of that operate all of all those
  • 00:27:11
    operationalization capabilities.
  • 00:27:14
    This is the application, this is the Contoso Creative Writer
  • 00:27:18
    application, and I can go ahead and and show you
  • 00:27:21
    what it does.
  • 00:27:21
    So basically if we look at this debug view over
  • 00:27:25
    here, you'll see that we've got multiple agents working together
  • 00:27:30
    to create ad copy for a particular blog post.
  • 00:27:34
    First, there's a researcher task that's going out.
  • 00:27:37
    It's querying the web, it's querying Bing search to look
  • 00:27:40
    up things based on the prompt that we have for
  • 00:27:42
    our article.
  • 00:27:43
    And then it's querying open AI search to retrieve product
  • 00:27:48
    information.
  • 00:27:49
    So the point of this is I want to author
  • 00:27:52
    A blog post that infuses kind of marketing speak for
  • 00:27:55
    products that I have in my store.
  • 00:27:58
    And then after that there's an editor agent and the
  • 00:28:01
    editor goes and it it evaluates the blog post, it
  • 00:28:04
    gives kind of review notes and those sorts of things,
  • 00:28:07
    whether or not they should accept this.
  • 00:28:09
    So this is a very interesting multi agent application.
  • 00:28:13
    Now how do we operationalize it?
  • 00:28:17
    So the first thing that we want to take a
  • 00:28:20
    look at is the Azure AI Hub.
  • 00:28:23
    So you could tell by the sort of random name
  • 00:28:26
    here that this was provisioned by the infrastructure as code
  • 00:28:30
    that was brought down when I ran AZD and Net.
  • 00:28:34
    The hub is the place where I can define different
  • 00:28:37
    projects for my developers.
  • 00:28:39
    This is where I can control the different models that
  • 00:28:42
    our developers have access to.
  • 00:28:44
    This is where I can control the data that our
  • 00:28:47
    developers have access to.
  • 00:28:49
    If you've been to other sessions, you may have heard
  • 00:28:52
    there's over 1800 models available to you in Azure AI.
  • 00:28:55
    This is where you can constrain that.
  • 00:28:56
    This is where you can say, all right, developers, you
  • 00:28:59
    have access to these models, you have access to these,
  • 00:29:01
    this data, you have access to these projects.
  • 00:29:03
    Go ahead and go nuts, right?
  • 00:29:05
    You can apply the governance at the hub level and
  • 00:29:08
    you still give your developers the flexibility to be productive
  • 00:29:12
    and build AI applications.
  • 00:29:15
    Another great thing about hubs is this is where I
  • 00:29:18
    can manage my quota.
  • 00:29:19
    Big concern for most enterprises is how do I manage
  • 00:29:22
    and control costs and those sorts of things.
  • 00:29:25
    This is sort of a single pane of glass where
  • 00:29:29
    I can view quota across my entire subscription.
  • 00:29:32
    So you'll see here in my subscription, I've got a
  • 00:29:35
    couple dozen models deployed, right?
  • 00:29:37
    And I can see the quota allocated to each of
  • 00:29:39
    them.
  • 00:29:40
    I can see quota allocated by model as I can
  • 00:29:43
    see quota allocated by resource, right?
  • 00:29:46
    And if I want to change the quota for one
  • 00:29:48
    particular model, it's just a click right here and I
  • 00:29:51
    can increase quota for particular models.
  • 00:29:53
    So this is where you can have centralized sort of
  • 00:29:56
    management of quota of cost and all those sorts of
  • 00:29:58
    things.
  • 00:29:59
    So those are AI hubs and that was deployed from
  • 00:30:02
    that AI app template.
  • 00:30:04
    Now your developers, they're going to work with projects.
  • 00:30:08
    So I've clicked into one of the projects that was
  • 00:30:11
    deployed by that Azure AI template app template, and they're
  • 00:30:15
    going to spend a lot of time in playgrounds.
  • 00:30:18
    Now you'll see here, once this playground loads, this is
  • 00:30:22
    where I can interact with, with the different models that
  • 00:30:26
    were defined at the hub level, right?
  • 00:30:28
    So I don't have access to every single model in
  • 00:30:31
    the in the model catalogue.
  • 00:30:34
    I only have access to those models that were were
  • 00:30:37
    basically assigned to my project at the Azure AI hub.
  • 00:30:41
    So again, the point is you can control the models
  • 00:30:44
    that your developers have access to.
  • 00:30:47
    And then they can go in here and they can
  • 00:30:48
    experiment with prompts.
  • 00:30:50
    They can write their own custom prompts.
  • 00:30:52
    They can use AI to generate prompts that they want
  • 00:30:55
    to use to interact with this particular model.
  • 00:30:58
    They can add their own data, but they can only
  • 00:31:01
    add the data that was assigned at that hub level.
  • 00:31:04
    And, and so we can enforce permissioning across all of
  • 00:31:07
    this as well.
  • 00:31:09
    So this is the developer experience.
  • 00:31:11
    This is Azure AI hubs and Azure AI projects.
  • 00:31:15
    This enables you to enforce the governance that you need.
  • 00:31:20
    Let's talk about some other operationalization concepts.
  • 00:31:25
    One of those is tracing, right?
  • 00:31:28
    Most AI applications are going to use multiple models and
  • 00:31:32
    you're going to need good observability in order to see
  • 00:31:36
    how those models are interacting with each other, right?
  • 00:31:40
    And so we can use the Azure AI Foundry SDKS
  • 00:31:44
    to send our telemetry up to Azure AI Foundry, as
  • 00:31:49
    you can see right here.
  • 00:31:51
    So I can drill in to telemetry for my application.
  • 00:31:57
    Looks like I had an error so I can drill
  • 00:31:59
    in here.
  • 00:31:59
    I can see there's different models interacting with each other.
  • 00:32:03
    I can see what model calls the other model, I
  • 00:32:06
    can see what APIs are called, and I can drill
  • 00:32:08
    into the tracing right here in Azure AI Foundry.
  • 00:32:12
    I can also, if I wanted to open this up
  • 00:32:16
    in Azure Application Insights.
  • 00:32:20
    So if I want to do deeper log analysis, we
  • 00:32:22
    can use App Insights to query the logs as well,
  • 00:32:26
    right?
  • 00:32:26
    And so we just launched this into a, into a
  • 00:32:28
    workspace.
  • 00:32:29
    I can see all my traces here.
  • 00:32:31
    And there's even other queries where I can delve into
  • 00:32:36
    the LLM telemetry.
  • 00:32:37
    So if I wanted to see things like tokens used
  • 00:32:40
    over time, average model duration, all these queries were a
  • 00:32:44
    part of that AI app template that we deployed.
  • 00:32:47
    So from a monitoring perspective, you can use the Azure
  • 00:32:51
    Foundry SDKS to send your telemetry to app sites and
  • 00:32:56
    to your Azure AI project.
  • 00:32:59
    The last thing that I want to show is evaluations.
  • 00:33:02
    So we can create evaluations from Azure AI Foundry.
  • 00:33:08
    You may have seen these demos, but it's super simple.
  • 00:33:11
    It's just a button you click, you pick your metrics
  • 00:33:14
    and you've got a new and you've got a new
  • 00:33:16
    evaluation.
  • 00:33:17
    But what I want to show is you can also
  • 00:33:20
    run those from code.
  • 00:33:22
    And so if I drill in, this is the code
  • 00:33:26
    repo that we pulled down when I ran AZD init.
  • 00:33:31
    I'm using the latest Azure AI Foundry SDKS to run
  • 00:33:35
    evaluations.
  • 00:33:36
    So I can run these on demand.
  • 00:33:37
    And what you're going to see here is I'm configuring
  • 00:33:40
    the different metrics that I want to include in this
  • 00:33:43
    particular evaluation.
  • 00:33:44
    I've got a connection string up to my Azure AI
  • 00:33:48
    project.
  • 00:33:48
    So that's where I can stream the evaluation results.
  • 00:33:52
    And so I can kick this off locally, right?
  • 00:33:55
    So this is just Python.
  • 00:33:56
    I'm using the Python libraries.
  • 00:33:57
    I can run it locally, but it's also very easy
  • 00:34:00
    for me to include this as part of the CICD
  • 00:34:03
    pipeline.
  • 00:34:05
    So this is a GitHub action.
  • 00:34:06
    I'm calling the evaluate method and so as part of
  • 00:34:10
    my CICD and this is good practice.
  • 00:34:13
    Anytime you tweak a prompt, anytime you change the model,
  • 00:34:16
    anytime you, you know, change the data that your model
  • 00:34:19
    is going to be using with, with Rag, it's a
  • 00:34:21
    good idea to run evaluations against it so you can
  • 00:34:24
    validate whether or not you've improved or degraded performance.
  • 00:34:28
    Well, now it's very easy to run these as part
  • 00:34:30
    of your, your Git of actions as part of your,
  • 00:34:33
    your CICD pipeline.
  • 00:34:35
    So just to take a quick peek, if you look
  • 00:34:38
    at my GitHub, we'll see I've got evaluations loaded here.
  • 00:34:43
    I can see the, the different scores for some of
  • 00:34:46
    the different metrics that I, that I configured in that
  • 00:34:49
    code.
  • 00:34:50
    I can also view evaluation results right here in Azure
  • 00:34:55
    AI Foundry as well.
  • 00:34:57
    So you can, you can stream your results from your
  • 00:35:00
    emails in multiple locations, CICD and AI Foundry.
  • 00:35:03
    So those are the different capabilities, the different operationalization capabilities
  • 00:35:10
    that we wanted to show.
  • 00:35:12
    All that stuff was included in that Azure AI template,
  • 00:35:15
    ACV Init, ACV up.
  • 00:35:17
    I've got a really good example for how I can
  • 00:35:20
    build sort of a production ready enterprise AI application.
  • 00:35:25
    That's it.
  • 00:35:25
    I'm going to hand it back to Devanshi to close
  • 00:35:27
    this out.
  • 00:35:28
    So thank you everybody.
  • 00:35:36
    All right.
  • 00:35:40
    OK, I think I'm stuck.
  • 00:35:56
    Just bear with me.
  • 00:36:09
    OK, so I think thank you, Dan and Mandy for
  • 00:36:12
    walking us through those amazing demos on how to get
  • 00:36:16
    started across our technical patterns and use cases when we
  • 00:36:21
    talk about starting to build AI apps.
  • 00:36:24
    So for you to get started, of course, check out
  • 00:36:27
    the AI App template gallery.
  • 00:36:28
    Start today with the VS Code extension for GitHub Copilot
  • 00:36:32
    for Azure.
  • 00:36:33
    You can download it, use the same demo that we
  • 00:36:36
    showed here today in your own environment, and start building.
  • 00:36:42
    I'm going to just wait five more seconds for everyone
  • 00:36:45
    to take a photo of this or go to the
  • 00:36:47
    QR code.
  • 00:36:48
    All right, OK, moving on.
  • 00:36:55
    So Microsoft offers a variety of programs for you to
  • 00:36:58
    get started and accelerate that journey for cloud and AI
  • 00:37:02
    adoption like Azure Innovate, Migrate and Modernize as well as
  • 00:37:06
    Azure Essentials built for both enterprise customers as well as
  • 00:37:10
    partners, ensuring that the cloud solutions that are being built
  • 00:37:14
    are both reliable, secure, as well as performant at scale.
  • 00:37:18
    So take advantage of those programs as well as the
  • 00:37:22
    new code with program where Microsoft is offering code development
  • 00:37:26
    with customers for a two to three-week Sprint to accelerate
  • 00:37:30
    your AI up dev journey.
  • 00:37:32
    The development team here is helped with adopting these patterns
  • 00:37:37
    and practices we talked about, and it pretty much accelerates,
  • 00:37:42
    speeds up that realisation of your ideas into productionised features
  • 00:37:47
    and overall helping your velocity to adapt to market changes
  • 00:37:51
    with AI.
  • 00:37:53
    This spans all use cases we talked about today, all
  • 00:37:56
    technical patterns right from code generation, documentation analysis, image analysis,
  • 00:38:02
    document processing and summarisation, video processing, building your own AI
  • 00:38:07
    assistance across all of the industries, healthcare, media, entertainment, professional
  • 00:38:13
    and financial services as well as retail.
  • 00:38:17
    So for getting your hands dirty, getting hands on, try
  • 00:38:21
    out the Lab Mastering Azure Container Apps and Gen.
  • 00:38:25
    AI for Intelligent Solutions Lab 413 tomorrow, as well as
  • 00:38:30
    take this AI app template demo more upfront on Thursday,
  • 00:38:35
    Theatre session 616 with Kickstarter AI app development journey.
  • 00:38:41
    And lastly, on Friday morning, 8:30 AM, we have another
  • 00:38:45
    breakout that breaks down these use cases with customer insights.
  • 00:38:49
    Choose the right AI app use case for your business.
  • 00:38:53
    So we'll see you there today at tomorrow and also
  • 00:38:56
    on Friday.
  • 00:38:57
    This brings us to the end, and thank you for
  • 00:38:59
    joining us today.
  • 00:39:00
    Have a great rest of Microsoft Ignite.
Tags
  • AI Applications
  • Azure AI
  • Operationalization
  • AI Governance
  • Development Patterns
  • Azure Tools
  • GitHub Copilot
  • AI Infrastructure
  • Continuous Integration