- All
- Favorite
- Popular
- Most rated

Create a labeled dataset using Azure Machine Learning data labeling tools
Learn how to use Azure Machine Learning data labeling to create, manage, and monitor data labeling projects.

NVIDIA DeepStream development with Microsoft Azure
With NVIDIA DeepStream, you can seamlessly develop optimized Intelligent Video Applications that can consume multiple video, image, and audio sources. You can also apply single or cascading inference operations to video frames in real-time, and transmit inference results to the cloud for archiving or additional processing.

NVIDIA DeepStream embedded device deployment with Azure
In this module, you'll publish and deploy an ARM-based DeepStream container workload to NVIDIA embedded hardware by using Azure IoT Edge.

Develop Custom Object Detection Models with NVIDIA and Azure Machine Learning
Azure Machine Learning studio is a GUI-based integrated development environment for constructing and operationalizing Machine Learning workflow on Azure. Learn how to develop custom object detection models using this service with NVIDIA GPU accelerated virtual machines.

Machine Teaching for Autonomous AI
In this path, you'll learn to design and implement a new AI paradigm called Machine Teaching for Autonomous AI. Machine Teaching uses the knowledge of subject matter experts to teach AI. Machine Teaching integrates known control methods, for stable control, Machine Learning, for advance perception, and Deep Reinforcement Learning, for learning strategies and human-like decision making. The deployment in industrial processes without disruption and providing real business value is considered from its design. Machine Teaching for Autonomous AI stores expert operators' skill set, and it helps companies achieve new levels of optimization for competitiveness, profitability, and sustainability. The hands-on development of Autonomous solutions will be taught using the Microsoft Project Bonsai Platform, a low-code platform where Machine Teaching is used to the implementation, training, and validation of Bonsai brains.

Make recommendations with Azure AI Personalizer
Learn how to use Azure AI Personalizer to empower your apps with smarter decision making through improved recommendations.

Introduction to Azure Sphere for industrial IoT connectivity
Characterize the types of connectivity options available to the Azure Sphere in an Industrial IoT scenario. Describe the functionality of each of the connectivity options and show how they can be combined to solve complex industrial IoT problems.

AI edge engineer
The interplay between AI, cloud, and edge is a rapidly evolving domain. Currently, many IoT solutions are based on basic telemetry. The telemetry function captures data from edge devices and stores it in a data store. Our approach extends beyond basic telemetry. We aim to model problems in the real world through machine learning and deep learning algorithms and implement the model through AI and Cloud on to edge devices. The model is trained in the cloud and deployed on the edge device. The deployment to the edge provides a feedback loop to improve the business process (digital transformation).

Create Azure Machine Learning resources with the CLI (v2)
Use the Azure Machine Learning CLI (v2) to create and manage workspace resources.

Use AutoML to train a labeled dataset and develop a production model
Learn how to use Automated Machine Learning to train a labeled dataset and develop a production object detection model.

Set up and configure an NVIDIA DeepStream development environment
In this module, you'll learn how to set up and configure an x86-based Ubuntu 18.04 system to host an NVIDIA DeepStream development environment.

Introduction to NVIDIA DeepStream Graph Composer with Microsoft Azure
In this module, you'll learn how to set up and configure the NVIDIA DeepStream 6.0 Graph Composer on an X86-based Ubuntu 18.04 system to enable rapid development of Intelligent Video Analytics application pipelines for deployment to cloud and edge-capable devices.

Run component-based pipelines in Azure Machine Learning with CLI (v2)
Use components to easily share and reuse code and use component-based pipelines to create machine learning workflows.

Deploy model to NVIDIA Triton Inference Server
NVIDIA Triton Inference Server is a multi-framework, open-source software that is optimized for inference. It supports popular machine learning frameworks like TensorFlow, Open Neural Network Exchange (ONNX) Runtime, PyTorch, NVIDIA TensorRT, and more. It can be used for your CPU or GPU workloads. In this module, you deploy your production model to NVIDIA Triton server to perform inference on a cloud-hosted virtual machine.

Autonomous AI design architect
This learning path is a brief introduction to a new AI paradigm called Machine Teaching for Autonomous AI. Machine Teaching uses the knowledge of subject matter experts to teach AI. It integrates known control methods for stable control, Machine Learning for advance perception, and Deep Reinforcement Learning for learning strategies and human-like decision making. It's AI integrated in industrial processes without disruption and providing real business value. It's validated in simulation, explainable that your experts can validate. Machine Teaching for Autonomous AI stores expert operators' skill set, enhancing and homogenizing expert operators' best performance, and/or efficiently training novices on the job when deployed as a Decision Support tool. It helps your company achieve new levels of optimization for competitiveness, profitability, and sustainability. It provides a robust innovation path for all areas of industrial processes and business with real ROI. At the end of this learning path, you'll be able to:

Run jobs in Azure Machine Learning with CLI (v2)
Use the Azure Machine Learning CLI (v2) to train models as jobs. Train a model using a basic Python script, or perform hyperparameter tuning with a sweep job.

Create workspace resources for getting started with Azure Machine Learning
In this module, you learn how to create resources for getting started with Azure Machine Learning.

Introduction to Azure AI Translator
Azure AI Translator is a cloud-based service that uses AI to reliably translate text and documents between languages in near real time. You can add multilanguage user experiences to your apps in 90 languages and dialects, along with free text translation with any operating system. Translator also has customizable translation models that can better understand industry-specific terminology or pronouns.

Run Azure AI services on IoT Edge
Implement a cognitive service for performing language detection on an IoT Edge device. Describe the components and steps for implementing a cognitive service on an IoT Edge device.

Image classification using Azure Sphere
Implement a neural network model for performing real-time image classification on a secured, internet-connected microcontroller-based device (Azure Sphere). Describe the components and steps for implementing a pre-trained image classification model on Azure Sphere.

Develop secure IoT solutions for Azure Sphere, Azure RTOS and Azure IoT Central
Deploy an Azure Sphere application to monitor ambient conditions for a laboratory. The application will monitor the room environment, connect to Azure IoT Central, and send telemetry data from the device to the cloud. You'll control cloud-to-device communications and undertake actions as needed.

Create an image recognition solution with Azure IoT Edge and Azure AI services
Create a computer vision solution on the IoT Edge using Azure AI services and Azure Speech Services. The application will capture and identify scanned item and convert the name of the item to the speech.

Develop secure IoT Solutions for Azure Sphere with IoT Hub
Deploy an Azure Sphere device application to monitor ambient conditions for laboratory conditions. The application will monitor the room environment conditions, connect to IoT Hub, and send telemetry data from the device to the cloud. You'll control cloud-to-device communications and undertake actions as needed.

Create vision models with Azure AI Custom Vision
Computer vision is an area of artificial intelligence that deals with visual perception. Azure AI Custom Vision enables you to train models on your own images for customized computer vision scenarios.
In-Depth Exploration of Microsoft Learn
Microsoft Learn is an innovative online educational platform developed by Microsoft, designed to offer a wide range of free, interactive learning opportunities. It caters to individuals looking to enhance their knowledge and skills across various technological fields such as cloud computing, artificial intelligence, data science, and software development. Since its launch, Microsoft Learn has become a crucial resource for professionals aiming to stay ahead in the technology sector.Origins and Evolution of Microsoft Learn
Launched with the mission to make high-quality education accessible to everyone, Microsoft Learn initially focused on Microsoft’s core technologies, including Azure and Microsoft 365. Over time, the platform has broadened its scope to cover a wide array of topics, reflecting the ever-evolving tech landscape and diverse learner needs. This evolution has established Microsoft Learn as a central hub for tech education.Impact on Online Education
Microsoft Learn has transformed online education by integrating interactive and hands-on learning experiences. The platform’s key contributions include:- Hands-On Learning: Provides practical scenarios to apply knowledge.
- Interactive Elements: Includes labs, quizzes, and exercises that engage users actively.
- Personalized Learning Paths: Tailors educational experiences to individual goals and interests.
Key Features and Advantages
Microsoft Learn offers several notable features:- Free Access to Learning Resources: Enjoy comprehensive educational content without any cost, making high-quality learning accessible to all.
- Interactive Learning Experience: Engage with hands-on labs, quizzes, and real-world scenarios to apply and retain knowledge effectively.
- Extensive Course Catalog: Explore a wide range of courses in cloud computing, artificial intelligence, data science, and more.
- Personalized Learning Paths: Follow guided paths tailored to your career goals and interests for a customized learning journey.
- Certification Preparation: Access resources and practice tests to help prepare for Microsoft certification exams and enhance your professional credentials.
- Practical Application: Build confidence and proficiency through practical exercises that simulate real-world challenges.
- Integration with Microsoft Ecosystem: Utilize the latest tools and technologies within Microsoft’s ecosystem to stay updated with industry trends.
- Continuous Learning Support: Benefit from regularly updated content that reflects the latest advancements in technology.