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Microsoft AI Professional Program (AI to OpenAI)

Microsoft AI Professional Program (AI to OpenAI)

Learn Microsoft AI Professional Program

Application closes 4th Feb 2026

  • Program Overview
  • Curriculum
  • Certificate
  • Key Outcomes
  • Faculty
  • Fees
  • FAQs

Key Highlights of the Microsoft AI Professional Program

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    Industry-relevant curriculum by Microsoft Subject Matter Experts (SMEs)

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    15+ Live Mentorship Sessions with Industry Experts

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    Access to Azure Lab for Practice

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    Exam Preparation Material for DP-100

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    Prepare for Microsoft Applied Skills Badge (Train and manage a ML model on Azure ML)

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    Certificate from Microsoft and Great Learning

Skills You will learn

  • Data Management
  • Python Programming
  • Training ML & DL Models
  • Deploying Models
  • Azure Blob Storage
  • Azure SQL
  • Azure ML Studio
  • Azure Functions
  • MLFlow
  • Azure OpenAI Studio & API
  • LangChain

About Microsoft Professional Program in Artificial Intelligence

This Microsoft AI course is a four-month online course offered by Microsoft and Great Learning. It offers a comprehensive understanding of foundational data skills, machine learning models, generative AI for text-based problems and Azure OpenAI for model deployment and monitoring. In this program, you will get 16+ live sessions and 1 industry webinar, as well as hands-on projects and case studies. You will earn verified Microsoft credentials that will enhance your profile and proficiency.

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What are the highlights of this Microsoft Artificial Intelligence course?

The highlights of the Microsoft Artificial Intelligence course are:

  • 4-month online program

  • 16 live mentorship sessions and 1 industry webinar

  • More than 11 real-world case studies and 3 hands-on projects

  • Azure Labs provided for your practice

  • The comprehensive curriculum was curated by Microsoft subject matter experts.

  • Opportunity to earn Microsoft Applied Skill Badge.

  • Exam preparation material for DP-100 (Microsoft certified: Azure Data Scientist Associate)

  • Certificate of completion from Microsoft and Great Learning

  • Personalized assistance from a dedicated program manager

  • Academic support for prompt query resolution

Does Microsoft offer this AI certification course?

Microsoft and Great Learning will award this certificate to you after you have successfully completed the course.

What is the duration of this Artificial Intelligence course by Microsoft?

This is a 4-month long program. The curriculum covers projects and breaks and takes 18 weeks as a whole.

Is this Microsoft certification in Artificial Intelligence course online or offline?

This is an online program where you will get live mentorship sessions and webinars.

Why should I join this course?

You should join this course if:

  1. If you are a beginner in the data domain and are looking to land your 1st job as a Data Scientist / ML Engineer / AI Engineer and want to focus on deploying data and AI solutions to production

  2. If you are a Data Science Professional in an Organization which is on Azure Cloud and/or want to engineer and deploy an end to end Data Science solution to solve critical business problems

  3. If you are a Cloud Solutions Architect, and you want to expand your capabilities into building data-driven solutions on Azure Cloud

This course can equip you with the skills and knowledge to leverage AI solutions on the cloud and boost your career.

Why should I choose Azure for Data Solutions?

You should choose Azure for Data Solutions because it provides a wide variety of robust and scalable out-of-the-box solutions for data professionals, ranging from analytics to ML/AI and data engineering.

As per Flexera 2020 State of the Cloud Report, Azure’s YoY (FY23) adoption rate is at 80%. It reflects the confidence data professionals have in Azure's capabilities.

According to a report by Burning Glass, jobs demanding Azure skills saw a 30.6% increase year-over-year (FY23). This indicates a strong market value and promising career prospects.

What are the key learning outcomes of this program?

Here are the key learning outcomes of this program:

  • Identify the problems you can solve with AI/ML/DL models and frameworks, and know how to interpret the evaluation metrics to aid in monitoring them.

  • Understand the approach and architecture of building data-driven solutions to business problems, deploying them on the cloud, and serving them to stakeholders.

  • Build hands-on SQL, database management, and Python programming skills to build and deploy solutions.

  • Learn to schedule and run Azure cloud jobs for training, tuning, and deployment.

  • Use Gen AI models to solve complex text-based problems.

  • Integrate ML lifecycle stages into pipelines with ML Ops and CI/CD principles.

What are some Azure Tools and Services?

These are the following Azure Tools and Services:

  • Azure Blob Storage

  • Azure SQL

  • Azure ML Studio

  • Azure Functions

  • MLFlow, ScikitLearn, PyTorch, StreamLit, Plotly

  • Azure OpenAI Studio & API, LangChain

  • Application Insights

  • Azure App Services

  • Git, GitHub, and Actions

Please note*: You will be provided with a Lab for the duration of the journey. It will have access to all the above mentioned tools and services on Azure

What topics are covered in Microsoft's Artificial Intelligence course?

These are some topics that you will learn in this Artificial Intelligence course by Microsoft:

  • TensorFlow, PyTorch, and Keras for implementing ML/DL models

  • AI Life Cycle and stages

  • Fundamentals of SQL

  • Common in-built functions

  • Joins, Subqueries, Window Functions, Custom Functions and Views

  • Python Programming Fundamentals

  • Exploratory Data Analysis on Python

  • Intelligent Reporting on Azure

  • AI and ML on Azure

  • Machine Learning for Structured Data

  • Deep Learning for Computer Vision

  • Generative AI with Azure OpenAI

  • Prompt Engineering Fundamentals 

  • Prompt Engineering on Cloud

  • Generative AI for NLP Solutions

  • MLOps on Azure

  • Introduction to DevOps & MLOps

  • Deploying and Monitoring an ML Workflow

This is a list of main topics. For more details on subtopics, please refer to the complete curriculum.

I don't have any programming experience. Can I join this course?

The program is a right fit for the beginners in the data domain. 

How much does this Generative AI course cost?

This generative AI course fee is $2490. You can contact the admissions team for flexible payment plans.

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Program Curriculum

This is a 4-month beginner-friendly Microsoft AI certificate program. Divided into 4 modules, this program teaches you to develop an end-to-end AI solution for a business problem using Azure. Starting with the basics of data, you will progress to building Machine Learning and Deep Learning models and applying Generative AI for text-based problems. Ultimately, you will deploy and monitor these models in a production environment. By the end of this program, you will be able to leverage AI across various applications.

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Course-01: Pre-work

In this course, you will learn the absolute basics of data science, machine learning, and deep learning. You will get a view of how Microsoft Azure Cloud Services are used to build data-driven solutions.

 

Week-01: Introduction to AI and the AI Value Chain

In the first week, you will dive into the world of Artificial Intelligence (AI). You will get an introduction to AI, ML, DL, RL, and LLM to fully understand the scope of this program. Familiarize yourself with an extensive array of problems that can be solved using ML/DL algorithms and frameworks. Know how an end-to-end AI workflow functions.

 

Topics Covered:

 

  • Practical Applications and Use-Cases of AI, ML, DL, RL, and LLMs
  • Frameworks: TensorFlow, PyTorch, and Keras for implementing ML/DL models
  • Concept of Evaluation Metrics: Accuracy, Precision, Recall, F1-Score, AUROC
  • Interpreting Evaluation Metrics for ML models
  • AI Life Cycle and stages

Course-02: Data Foundations on Azure

 

In this course, you will focus on the essentials of working with data and solving problems with SQL and Python to build basic Analytics and Reporting workflows. Learn to set up a cloud platform and its services. Get an understanding of how an end-to-end ML/AI solution looks like

 

Week-02: Fundamentals of SQL

 

This week, you will learn to create and configure a data storage resource on the cloud. Grasp how to manage data in a resource, including appending, modifying, deleting, securing, uploading, downloading, renaming, and organizing it into folders. Gain the ability to query data to answer basic business queries effectively

Topics Covered:

  • Overview of Database Management Systems
  • Introduction to SQL and its role in data management
  • Introduction to DML and DQL in SQL
  • Aggregating and Organizing Data in SQL
  • Overview of common in-built functions

Week-03: SQL for AI Engineering

 

During the week, you will learn to write complex queries to gain a deeper understanding of data. You will also learn to answer business questions. Additionally, you will run quality checks on data by documenting data profiles and conducting business sense checks. You will integrate diverse datasets to transform and prepare data for training.

Topics Covered:

 

  • Joins - Inner Join, Left join, right Join and full Join
  • Subqueries - Scalar, Row and Table Subqueries
  • Set operations - Union, Intersect and Except
  • Window Functions
  • Custom Functions and Views

Week-04: Python Programming Fundamentals

 

This week, you will learn the syntax and semantics of Python, including variables, data types, operators, expressions, and statements. Harness your skills in functional programming using conditional statements, loops, exceptions, and functions. Acquaint yourself with the various types of compute instances, their pricing, and their usage areas.

Topics Covered:

 

  • Python Variables, Data Types, and Basic Operators
  • Functional Programming with Conditional Statements, Loops and Lambda
  • Python Data Structures: Lists, Tuples, Sets, and Dictionaries
  • Overview Object-Oriented Programming in Python and use-cases
  • Exploring Python Libraries and Modules for ML/AI

Week-05: Exploratory Data Analysis on Python

 

In this week, you will develop the ability to extract insights and identify patterns in data using statistics. You will learn to execute correlation tests to ascertain associations among data sets. Cultivate the skill of coherently presenting insights and recommendations to stakeholders

Topics Covered: 

  • Implementing Descriptive Statistics for Univariate Analysis
  • Perform Pearson, Spearman, and Kendall Correlation Tests
  • Exploring Python's Matplotlib and Seaborn for Data Visualization
  • Best Practices for Effective Visual Storytelling and Presenting Recommendations
  • Dimensionality Reduction Techniques: PCA and t-SNE Using Scikit-Learn

Week-06: Intelligent Reporting on Azure

 

In this week, you will acquire the ability to assemble a simple yet effective analytics and reporting workflow. Using cloud-based tools, you will learn to automate report generation, alerts, notifications, and dashboard updates. Acquaint yourself with designing a straightforward yet functional data dashboard.

Topics Covered:

  • Understanding Business Analytics and Reporting Process
  • Azure Alerting and Notification Services
  • Creating Interactive Dashboards with Azure Power BI
  • Integration of Diverse Data Sources
  • Optimizing Reporting Performance and Troubleshooting

Week-07: Project-1

 

Sample Problem Statement:

E-comX, an e-commerce firm, is struggling with scattered, unstructured data hampering quick, data-driven decisions. The company requires an Azure-based solution for efficient data storage, with capabilities for complex queries, quality checks, and data integration for training purposes. Leveraging Python and compute resources, the solution should enable pattern recognition, correlation tests, and report automation. Ultimately, a simple, functional dashboard is sought to transform raw data into accessible business insights for key stakeholders for faster, more accurate decision-making.

 

Week-08: Learning Break

 

This week, you will receive a refresher course on Machine Learning and Deep Learning to strengthen your fundamentals. This period will serve as a buffer time for those who might need additional time to finalize their projects.

 

Course-03: AI and ML on Azure

 

In this course, you will focus on learning how to train and use different AI and ML algorithms/models to solve problems across various data modalities. You will work with tabular data, text data, and image data. Specifically, you will learn to apply Decision Trees, Neural Networks, and Large Language Models.

 

Week-09: Machine Learning for Structured Data

 

This week, you will master the skill of pre-processing, training, tuning, and evaluating models for Classification and Regression. Learn the systematic procedure of hyper-parameter tuning and experimentation. Comprehend the type of resources and associated costs required for training ML models.

Topics Covered: 

  • Data Preprocessing for Structured Data
  • Model training and how it works for Classification and Regression Models
  • Hyper-parameter Tuning 
  • Model Performance Evaluation
  • Costs associated with Training

Week-10: Deep Learning for Computer Vision

 

This week, you will carry out pre-processing, training, and evaluating Convolutional Neural Networks (CNNs). Learn how to experiment with model parameters methodically. Also, understand the type of resources necessary and costs implicated in training Deep Learning models

Topics Covered: 

  • Neural Networks Architecture
  • Data Preprocessing for Image Data
  • Training and Tuning Neural Networks
  • Model Performance Evaluation
  • Costs associated with Training Deep Learning Models

Week-11: Generative AI with Azure OpenAI

 

During this week, you will set up the Azure OpenAI Studio. Acquire the ability to write effective prompts for unique business use-cases. Gain an understanding of how different parameters work and influence the Language Model's responses

Topics Covered:

  • Large Language Models - An Introduction
  • How LLMs work - architecture and processes.
  • Prompt Engineering Fundamentals 
  • Parameters and Pricing
  • Applying PE for point business use-cases

Week-12: Prompt Engineering on Cloud

 

This week, you will master the usage of Azure OpenAI API to administer prompts on data at scale. Become proficient in evaluating prompts and responses. Learn to apply various prompt techniques such as Zero-shot, Few-shot, and CoT

Topics Covered:

  • Azure OpenAI API - and how to get set up with it on Python
  • Prompting Techniques: Zero-shot, Few-shot and CoT
  • Evaluating Prompts
  • Evaluating LLM Results
  • Automating LLM Functions on Datasets

Week-13: Generative AI for NLP Solutions

 

In the week, you will tackle text-based problems like Summarization and Classification. Learn to implement Retrieval Augmented Generation (RAG) for Question Answering. Deploy a user-friendly chatbot to cater to a specific use-case.

Topics Covered:

  • Hugging Face - how to get setup - and how to use it?
  • Summarization & Classification and their Evaluation metrics
  • What are embeddings and embedding similarity measures - Cosine and Euclidean
  • Vector Databases and how they are useful to implement RAG
  • Deploying a chat-bot on Azure using App Services

Week-14: Project-2

 

Sample Problem Statement:

ABC Corporation is facing challenges with its customer service. They are struggling due to the inability to process queries in real-time. They need a solution that can help them in text-based problem solving, scaling up their data processing, systematically experimenting with Language Models, and having an efficient customer interaction through the deployment of a user-friendly chatbot on Azure Cloud, specifically leveraging Azure OpenAI capabilities. This will not only boost their data analytics performance but also enhance customer experience and response time.

 

Week-15: Learning Break

 

This week, you are expected to pre-read the documentation on how to evaluate and consider costs associated with cloud solutions. Gain an overarching view of what an end-to-end Machine Learning Operations (MLOps) solution architecture entails.

 

Course-04: MLOps on Azure

 

In this course, you will focus on Ops - running jobs, deployment, monitoring, and putting a fully functional pipeline together using pipelines. You will also learn to manage that solution using DevOps and CICD principles

 

Week-16: Introduction to DevOps & MLOps

 

In the week, you will acquire a basic understanding of version control and its implementation. Know how to set up and utilize Development and Production environments effectively. Learn to operate a simple pipeline while understanding its overall architecture.

Topics Covered: 

  • Understanding and Implementing Version Control with Git
  • Effective Setup and Use of Development & Production Environments
  • Running a Simple Pipeline and Understanding its Architecture
  • Implementing CICD on Azure
  • Managing Projects and Tracking in Azure DevOps

Week-17: Deploying and Monitoring an ML Workflow

 

During this week, you will acquire a basic understanding of version control and its implementation. You will learn how to set up and utilize Development and Production environments effectively. You will also learn to operate a simple pipeline while understanding its overall architecture

Topics Covered: 

  • Understanding and Implementing Version Control with Git
  • Effective Setup and Use of Development & Production Environments
  • Running a Simple Pipeline and Understanding its Architecture
  • Implementing CICD on Azure
  • Managing Projects and Tracking in Azure DevOps

Week-18: Project-3

 

Sample Problem Statement:

As Y-Movies continues to expand its data-driven strategies, they face the challenge of effectively managing machine learning models from development to deployment. They are experiencing difficulties in automating tasks, maintaining versions, deploying models, and monitoring their performance. This manual and labor-intensive process has been sub-optimal, raising concerns about data quality, potential biases, and our team's capability to focus on strategic insights rather than operational tasks. Therefore, the business problem is to streamline, automate, and enhance our machine learning operations through Azure Cloud to enable efficient model management, robust model monitoring and retraining, and the creation of reliable customer-facing applications. This will eventually improve our decision-making, agility, and overall service of our streaming platform.

Industry Webinar

Building Data Products - A webinar by an Industry Expert who will give their perspective on how data products are built and integrated today into the products and services we use. You will get an idea of what lies ahead in your learning journey!

Earn a Certificate from Microsoft and Great Learning

Showcase your expertise in AI expertise and enhance your profile with a certificate awarded by Microsoft and Great Learning.

Microsoft AI certificate

* Image for illustration only. Certificate subject to change.

Key Learning Outcomes

Build an End-to-end AI Solution for a Business Problem

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    Explore the capabilities of AI/ML/DL models and frameworks

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    Understand the approach and architecture of building data-driven solution

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    Build hands-on SQL, database management, and Python programming skills

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    Schedule and run Azure cloud jobs for training, tuning, and deployment.

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    Use Gen AI models to solve complex text-based problems.

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    Integrate ML lifecycle stages into pipelines with ML Ops and CI/CD

Meet Your Faculty and Mentors

Learn from highly skilled professionals who have engineered AI solutions across various industry verticals and possess extensive real-world, hands-on experience.

  • Connor Hagen  - Faculty Director

    Connor Hagen

    Director of Technology at Microsoft's AI Co-Innovation Labs

    An accomplished AI professional, currently serving as the Director of Technology at Microsoft's AI Co-Innovation Labs, leading the development of cutting-edge Generative AI solutions in Azure. As a Technical Advisor for Azure OpenAI Service and Azure AI Platform, he drives strategic growth through partnerships, investments, and acquisitions in AI and emerging technologies. With expertise in solution architecture and engineering, he has been instrumental in operationalizing AI solutions across domains like time series forecasting, computer vision, and predictive maintenance. His work involves close collaboration with cross-functional teams and stakeholders to create impactful, data-driven AI solutions. A visionary leader, he plays a key role in advancing Microsoft's AI innovation and platform integration.

    Read more

  • Vinicio DeSola - Faculty Director

    Vinicio DeSola

    Senior Data Scientist, Aspen Capital

  • Ashkan Saidinejad  - Faculty Director

    Ashkan Saidinejad

    Data Scientist, Intact

  • Hossein Kalbasi  - Faculty Director

    Hossein Kalbasi

    Senior Data Scientist,Mercator AI

  • Dr. Abhinanda  Sarkar - Faculty Director

    Dr. Abhinanda Sarkar

    Senior Faculty & Director Academics, Great Learning

    Dr. Abhinanda Sarkar has B.Stat. and M.Stat. degrees from the Indian Statistical Institute (ISI) and a Ph.D. in Statistics from Stanford University. He was a lecturer at Massachusetts Institute of Technology (MIT) and a research staff member at IBM. Post this he spent a decade at General Electric (GE). He has provided committee service for the University Grants Commission (UGC) of the Government of India, for infoDev – a World Bank program, and for the National Association of Software and Services Companies (NASSCOM). He is a recipient of the ISI Alumni Association Medal, an IBM Invention Achievement Award, and the Radhakrishan Mentor Award from GE India. He is a seasoned academician and has taught at Stanford, ISI Delhi, the Indian Institute of Management (IIM-Bangalore), and the Indian Institute of Science. Currently, he is a Full-Time Faculty at Great Lakes. He is Associate Dean at the MYRA School of Business where he teaches courses such as business analytics, data mining, marketing research, and risk management. He is also co-founder of OmiX Labs – a startup company dedicated to low-cost medical diagnostics and nucleic acid testing.

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  • Dr. Pavankumar Gurazada - Faculty Director

    Dr. Pavankumar Gurazada

    Senior Faculty, Academics, Great Learning

    Dr. Pavankumar Gurazada brings a unique blend of industry experience and academic expertise, specializing in marketing, digital marketing, and machine learning. He is also a Data Science advisor and board member of Constems AI, a deep tech startup focused on building computer vision systems for Industry 4.0. Dr. Gurazada completed his Ph.D. from IIM Lucknow, with a research focus on using machine learning techniques to understand consumer engagement on social media. His research has been presented at prominent international conferences such as the EMAC Conference 2018, the China Internet+ Innovation and Entrepreneurship Conference 2019, and the NASMEI and MRSI conferences. His book, Marketing Analytics, published by Oxford University Press in March 2021, is a testament to his expertise in the field. He holds an MBA from IIM Bangalore and an Integrated Master’s degree in Science from IIT Bombay. With a career that spans roles in retail and B2B sales management, Dr. Gurazada’s industry experience includes leadership positions at Alghanim Retail in Kuwait and Saint Gobain in UAE & Oman, where he significantly contributed to business growth and managed distribution networks.

    Read more

  • Vishnu  Subramanian - Faculty Director

    Vishnu Subramanian

    Lead Data Scientist ,Great Learning

Program Fee

Program Fees: USD 2,490

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Benefits of learning AI with us

  • 4-month Online Learning
  • Curriculum by Microsoft Subject Matter Experts
  • Personalized assistance with dedicated program manager
  • Access to Azure Labs Services
  • 3 Industry Projects + 1 Industry Webinar
  • Prepare for DP-100 exam and Microsoft Applied Skills Badge

Batch Start Date

Frequently asked questions

Program Details

What is the Microsoft AI Professional Program (AI to OpenAI)?

The Microsoft AI Professional Program (AI to OpenAI) is a 4-month online program designed to help learners build end-to-end AI and Machine Learning solutions on Microsoft Azure, covering classical AI, Generative AI, and Azure OpenAI workflows.

What is the duration and format of this program?

This Microsoft AI program is a 4-month, fully online program that includes 15+ live sessions (15 live mentorship sessions + 1 industry webinar), hands-on projects, and case studies.

Does this program help with Microsoft AI certification preparation?

Yes. The program prepares learners for Microsoft Applied Skills credentials and includes exam preparation material for Microsoft Certified: Azure Data Scientist Associate (DP-100).

What is the role of Great Learning in delivering this program?

Great Learning delivers the Microsoft AI Professional Program (AI to OpenAI) by managing the online learning experience, including 


  • Program delivery 
  • Live mentorship sessions 
  • Hands-on projects 
  • Academic support 
  • Learner engagement

What credentials do participants receive on completing this Microsoft AI course?

Upon successful completion of the Microsoft AI Professional Program (AI to OpenAI), participants receive a Certificate of Completion issued by Microsoft and Great Learning. 

In addition, the program prepares learners for Microsoft credentials, including: 


  • Microsoft Applied Skills (train and deploy a machine learning model with Azure Machine Learning) 
  • Microsoft Certified: Azure Data Scientist Associate (DP-100) through dedicated exam preparation material

Faculty, Curriculum and Projects

Is the curriculum updated to reflect current industry AI trends and tools?

Yes. The curriculum is designed in collaboration with Microsoft Azure, includes real-world business case studies, and covers current enterprise AI practices such as RAG, AI agents, and governance.

Does this course cover Generative AI, Large Language Models (LLMs), and Prompt Engineering?

Yes. These topics are core components of the curriculum, including Generative AI fundamentals, Prompt Engineering techniques, LLM-powered workflows, Retrieval-Augmented Generation (RAG), agentic systems, and LLMOps.

Are there hands-on projects and case studies?

Yes. The program includes 11+ real-world case studies, 3 hands-on projects, and practical problem statements focused on deploying AI and Generative AI solutions.

What tools or software will I learn to use in this Microsoft AI course?

Learners gain hands-on experience with Microsoft’s AI ecosystem, including Azure Blob Storage, Azure SQL, Azure ML Studio, Azure Functions, MLFlow, Azure OpenAI Studio & API, and LangChain.

What topics are covered in the curriculum in the Microsoft Artificial Intelligence course?

The curriculum covers AI fundamentals, Azure Machine Learning, Deep Learning, Generative AI, Azure OpenAI, Prompt Engineering, Retrieval-Augmented Generation (RAG), and MLOps, as well as SQL, Python, and cloud deployment, making it a comprehensive Artificial Intelligence course by Microsoft.

Who will be teaching the Microsoft AI Program?

Academic Faculty

Role & Background

Dr. Abhinanda Sarkar

Academic Director. PhD from Stanford University; former faculty at MIT; extensive experience in AI, data science, and analytics education.

Dr. Pavan Kumar Gurazada

Adjunct Professor (Data Science). PhD from IIM Lucknow; expertise in Machine Learning, digital marketing, and applied AI research.

Vishnu Subramanian

Lead Data Scientist. IIT Kharagpur alumnus with industry experience in AI and ML solution development.


Eligibility, Admissions, and Fees

Who is eligible for the Microsoft AI course?

This program is suitable for you if: 


  • You are a beginner in the data domain and are looking to land your first job as a Data Scientist/ML Engineer/AI Engineer, and want to focus on deploying data and AI solutions to production. 

  • You are a Data Science professional in an organization on Azure Cloud and/or want to engineer and deploy an end-to-end Data Science solution to solve critical business problems. 

  • You are a Cloud Solutions Architect and want to expand your capabilities by building data-driven solutions on Azure Cloud.

Do I need prior experience in AI or Machine Learning to enroll in the Microsoft AI course?

This program is beginner-friendly, making it suitable as a Microsoft AI course for beginners that progresses from fundamentals to advanced AI topics. It starts with foundational topics such as SQL, databases, and Python, and then progresses to Machine Learning, Deep Learning, and Generative AI.

Is prior programming knowledge required for admission?

There are no mandatory prerequisites. Foundational programming concepts, including Python, are covered as part of the curriculum.

What is the fee for the Microsoft AI Program?

For more details about the structure, please contact your Program Advisor. 

Are there flexible payment options available for this program?

Discounts are offered for upfront payments, and instalment options are provided via payment partners. For more details, please contact your Program Advisor.

Career-Related Queries

What kind of job roles can I get after completing the Artificial Intelligence course by Microsoft?

After completing the Microsoft AI Professional Program (AI to OpenAI), learners can prepare for or apply to roles that involve building, deploying, or supporting AI and Generative AI solutions on Microsoft Azure. Depending on prior experience and background, relevant roles may include: 


  • Data Scientist 
  • Machine Learning Engineer 
  • AI Engineer 
  • Generative AI Engineer 
  • Cloud AI Engineer 
  • Azure Data Scientist 
  • AI/ML Solutions Engineer 
  • Data Analyst with an AI focus 
  • AI Consultant 
  • Cloud Solutions Architect (AI/ML) 


This program equips learners with skills aligned to industry roles that use Artificial Intelligence by Microsoft, including Azure-based AI and Generative AI workflows, which are commonly required skills across these roles.

Does this program offer career support?

Yes, there is dedicated program management support, academic guidance, mentorship, and portfolio-building through projects.

Is the Microsoft Artificial Intelligence program flexible for working professionals?

Yes. The program is delivered in an online format with learning breaks, self-paced modules, and optional electives, making it suitable for professionals managing work alongside learning.

Are there any opportunities for networking or interaction with peers?

Yes. The Microsoft AI program includes peer learning through discussion forums, project groups, and the Great Learning (GL) community, enabling interaction with professionals from diverse industries and experience levels.

Where can I contact for more queries or assistance?

For additional queries or support, learners can contact a Program Advisor or send an email to msaiprofessional@mygreatlearning.com

Others

Why Azure for Data Solutions?

Microsoft Azure offers scalable, enterprise-grade tools for analytics, Machine Learning, Generative AI, and data engineering. Azure’s high industry adoption and growing demand for Azure skills make it a strong platform for building, deploying, and managing end-to-end AI solutions in real-world environments.

How does Azure support end-to-end AI workflows?

Azure supports end-to-end AI workflows by enabling data storage, model training, evaluation, deployment, monitoring, and CI/CD on a single cloud platform. The program uses Azure services to cover the complete AI lifecycle, including Machine Learning, Generative AI with Azure OpenAI, and MLOps practices.

What is Microsoft AI certification?

Microsoft AI certification is a set of official credentials offered by Microsoft that validates a learner’s skills in Artificial Intelligence, Machine Learning, and cloud-based AI solutions using Microsoft Azure. 


These certifications assess practical knowledge across areas such as Azure Machine Learning, Azure OpenAI, data science, model training, deployment, and AI solution management, depending on the specific credential. They are designed to help professionals demonstrate industry-recognized AI expertise aligned with Microsoft’s AI technologies and tools.

Still have queries? Let’s Connect

Get in touch with our Program Advisors & get your queries clarified.

Speak with our expert +1 617 762 5411 or email to msaiprofessional@mygreatlearning.com

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