AI & ML Engineering Professional Certificate

Course provided by Model Institute of Engineering & Technology

5 modules

Explore the fundamentals of Artificial Intelligence & Machine Learning

4-4.5 Level NCrF 

National Credit Framework

320 Hours 

Flexible Learning

Intermediate Level

Certificate Diploma Course

09-10 Credits

Course Overview

This program blends Microsoft’s Azure-based AI curriculum with MIER’s hands-on training, delivering practical skills for creating region-specific AI solutions in Jammu’s smart city and tourism sectors. Students gain real-world experience in MIER’s AI Lab, working with Azure Machine Learning, Python, and reinforcement learning to build intelligent troubleshooting agents and scalable ML pipelines. Through skill-focused workshops on Azure AI workflows, model optimization, and autonomous agent development, learners are equipped for career paths such as AI Solutions Developer and Machine Learning Engineer.

Key Learning Highlights

  • Hands-on AI development using Azure ML, Python, and reinforcement learning

  • Practical application of AI to smart city and tourism sector challenges in Jammu

  • Design and deployment of intelligent troubleshooting agents and ML pipelines

  • Skill-focused workshops on Azure AI workflows and model optimization

  • Building autonomous AI agents for real-world problem solving

  • Career preparation for roles like AI Solutions Developer and Machine Learning Engineer

Tools & Platform Used

Learning Outcome

By the end of this course, students will be able to:

  • Develop and deploy AI solutions using Azure ML, Python, and reinforcement learning

  • Design and implement intelligent troubleshooting agents and scalable ML pipelines

  • Apply AI techniques to region-specific challenges in smart city and tourism sectors

  • Optimize AI models and workflows using Azure AI best practices

  • Build and manage autonomous AI agents for real-world applications

  • Demonstrate industry-ready skills for roles such as AI Solutions Developer and Machine Learning Engineer

Master the course with just 5 Modules

This course takes students from the fundamentals of AI and machine learning to advanced techniques in model optimization and cloud deployment. Beginning with core concepts, data engineering, and neural networks, students progress to hands-on development using TensorFlow, Scikit-learn, and Azure ML. The journey concludes with real-world deployment strategies, ethical considerations, and a capstone project delivering industry-ready AI/ML solutions.

Fundamentals of AI and Machine Learning
  • Learn core concepts of AI/ML, including supervised & unsupervised learning, regression, classification, and clustering.

  • Understand neural networks, data preprocessing, and feature engineering basics.

  • Explore ethical AI principles and real-world applications.

  • Perform data ingestion, cleaning, and transformation using Python, Pandas, and NumPy.

  • Apply feature engineering techniques for better model performance.

  • Build scalable data pipelines with Azure Data Factory and SQL integration.

  • Develop ML models using Scikit-learn, TensorFlow, and Azure ML.

  • Apply hyperparameter tuning and evaluate models with metrics like ROC and AUC.

  • Explore ensemble methods and fundamentals of deep learning.

  • Deploy models using Azure ML pipelines, Kubernetes, and Docker.

  • Implement real-time and batch inference, with monitoring and retraining workflows.

  • Study deployment case studies in sectors like healthcare and finance.

  • Design and build an end-to-end AI/ML application using Azure ML and Python frameworks.

  • Integrate data pipelines, model training, and deployment in a real-world scenario.

  • Solve industry-relevant challenges through a practical, hands-on project.

Roles

  • Machine Learning Engineer
  • AI Engineer (Azure)
  • ML Operations Associate (MLOps)
  • Data Science Engineer
  • Cloud AI Solutions Developer
  • AI DevOps Engineer

Related Courses

Are you ready to take the next step toward your career?