AI - ML Engineer

Master Machine Learning, Deep Learning & AI model development — and become the engineer companies trust to build intelligent systems.

About Program

The AI ML Engineer Internship is designed for final-year VTU students who want to build strong foundations in machine learning and artificial intelligence. Starting with Python programming, data cleaning, and exploratory data analysis, the program progresses into supervised and unsupervised ML, neural networks, image processing, NLP, and model deployment. Students learn to build complete ML pipelines, work with real datasets, and apply industry best practices. With hands-on mentorship and project-driven learning, learners build multiple AI/ML applications and graduate with a portfolio-ready skillset. This internship prepares students for roles in ML engineering, data science, analytics, and AI-powered software development.

Key Features

Learn Complete AI & ML Skillsets
Build strong foundations in Python, data preprocessing, ML algorithms, deep learning, and model deployment — all in one internship.
Build Real AI/ML Projects
Work on practical projects such as prediction models, neural networks, image classification, NLP-based tools, and end-to-end ML pipelines.
Mentorship from Industry AI Professionals
Learn directly from experienced ML engineers and data scientists working on production-grade AI systems.
Beginner-Friendly with Progressive Advancement
Start with the basics and move toward advanced ML & DL concepts, making it suitable for students from all engineering branches.

Program Content

Topics Covered:

  • Variables, lists, dicts, loops & functions
  • Exception handling
  • Working with files
  • Using NumPy for numerical computing
  • Pandas for data manipulation
  • DataFrames: merge, join, filter
  • Python virtual environments
  • Jupyter Notebook workflows

Topics Covered:

  • Linear algebra basics: vectors, matrices
  • Probability distributions
  • Descriptive statistics
  • Hypothesis testing
  • Correlation vs causation
  • Normalization & standardization
  • Cost functions: intuition & math
  • Gradient descent basics

Topics Covered:

  • Handling missing values
  • Outlier detection & removal
  • Categorical encoding techniques
  • Feature scaling
  • Feature selection
  • Train-test split & cross-validation
  • Data balancing (SMOTE)
  • Best practices for ML-ready data

Topics Covered:

  • Data understanding & insights
  • Visualizing distributions
  • Pair plots, histograms, heatmaps
  • Univariate vs multivariate analysis
  • Using Matplotlib & Seaborn
  • Correlation analysis
  • Identifying patterns & anomalies
  • Building EDA reports

Topics Covered: 

  • Linear & Logistic Regression
  • Decision Trees & Random Forests
  • Support Vector Machines (SVM)
  • K-Nearest Neighbors (KNN)
  • Naive Bayes
  • Model evaluation metrics
  • Hyperparameter tuning
  • Building end-to-end ML pipelines

Topics Covered: 

  • K-Means clustering
  • Hierarchical clustering
  • Dimensionality reduction (PCA)
  • Anomaly detection
  • Association rules
  • Customer segmentation (use case)
  • Evaluating unsupervised models
  • Visualization for cluster insights

Topics Covered: 

  • Understanding neural network architecture
  • Forward & backward propagation
  • Activation functions
  • Loss functions & optimizers
  • Creating neural networks with TensorFlow/Keras
  • Underfitting vs overfitting
  • Model regularization
  • DL experimentation workflows

Topics Covered: 

  • Image processing basics
  • Convolutional Neural Networks (CNNs)
  • Pooling, padding, filters
  • Image classification
  • Data augmentation
  • Transfer learning (VGG, ResNet)
  • Building CV projects using Keras
  • Model deployment

Topics Covered: 

  • Text preprocessing: tokenization, stemming, lemmatization
  • Bag of Words & TF-IDF
  • Sentiment analysis
  • Intro to word embeddings
  • Text classification use cases
  • Building NLP models with Scikit-learn
  • Deploying NLP models
  • Real-world NLP workflows

Topics Covered: 

  • Problem identification using ML
  • Understanding business metrics
  • Mapping data to product features
  • Building user-centric AI solutions
  • Figma for AI product UI
  • Model lifecycle in products
  • Documentation & ML requirements

Topics Covered: 

  • AI product idea generation
  • Competitive analysis
  • Building MVPs for ML products
  • AI monetization strategies
  • Creating pitch decks
  • Using AI tools for product research
  • Preparing go-to-market (GTM) plans

Topics Covered: 

  • Resume building for AI/ML profiles
  • LinkedIn optimization
  • Writing ML case studies
  • GitHub portfolio for ML projects
  • Communication skills for data storytelling
  • Interview preparation (ML + coding)
  • Sales prediction using Regression
  • Iris dataset classifier
  • Customer segmentation using K-means
  • Sentiment analysis on social media data

Concepts Covered:

  • EDA
  • ML basics
  • Clustering
  • Classification
  • Image classification with CNN
  • Spam detection (NLP)
  • Credit card fraud detection
  • Housing price prediction

Concepts Covered:

  • Deep learning
  • NLP
  • Evaluation metrics
  • Optimization
  • End-to-End ML Pipeline & Deployment
  • AI Customer Insights Platform
  • NLP-powered Recommendation System
  • Deep Learning Visual Recognition System

Concepts Covered:

  • Architecture design
  • Deployment
  • Experimentation
  • Documentation

Tools & Softwares

Salary Scale

Maximum
12 LPA
Average
8 LPA
Minimum
4 LPA

Job Roles

FAQ's

Yes. You'll receive VTU-compliant certificates and documentation.

No. The program starts from fundamentals and scales gradually.

Prediction models, CNN-based classifiers, NLP applications, and a full ML pipeline.

Yes — resume, LinkedIn, GitHub, mock interviews & job guidance.

Offered in both offline and hybrid formats.

Yes, you will receive a verified completion certificate from Rooman Technologies upon meeting all requirements.

CSE, ISE, AIML, ECE, EEE, Civil, Mechanical and all final-year VTU students.

Python, Scikit-learn, TensorFlow, Pandas, Kaggle workflows, cloud ML basics.

Contact Us

Have questions about our programs or need guidance? Reach out to us and we’ll be happy to help.

Email Us

online@rooman.net

Call Us

080 6945 1000

Send us a Message

Contact Us

Have questions about our programs or need guidance? Reach out to us and we’ll be happy to help.

Email Us

online@rooman.net

Call Us

080 6945 1000

Send us a Message

AI - ML Engineer

AI – ML Engineer – A fast track to the success.
 

About Program

The “AI – Machine Learning Engineer” program trains individuals for roles in the IT-ITeS sector, focusing on AI, Big Data Analytics, product engineering, software development, and workplace management. Participants gain competencies in employing development tools, effective collaboration, and maintaining health and safety standards. The program equips them to understand business requirements, create compelling data-driven narratives, and collaborate with Data Scientists in complex model development. Upon completion, they master data inspection, transformation, statistical analysis, visualization, and machine learning, becoming adept at supporting strategic decision-making within the business intelligence landscape.

Project Execution Detail

Days Live Online Session
Day1
Introduction to Python and Basic Syntax
Day2
Control Structures
Day3
Functions
Day4
Data Structures
Day5
File Handling
Days Live Online Session
Day6
Modules, Libraries
Day7
Exception Handling
Day8
Object-Oriented Programming
Day9
Python programming with Databases
Day10
Hands-On Practice and Hands On Guided Project
Days Live Online Session
Day11
Introduction to Prompt Engineering and AI Language Models
Day12
Crafting Effective Prompts
Day13
Prompt Engineering for Specific Applications
Day14
Ethical Considerations and Advanced Techniques
Day15
Hands-on Practice with AI Tools
Days Live Online Session
Day16
Introduction to AI-Powered Coding Assistants
Day17
AI-Powered Code Generation
Day18
Debugging and Code Optimization with AI
Day19
Advanced Features of AI Coding Assistants
Day20
Hands on practice with GitHub Copilot, Amazon Q, Google Gemini
Days Live Online Session
Day21
Introduction to Data Analysis and Tools
Day22
Data Cleaning and Preprocessing
Day23
Data Analysis Using SQL
Day24
Data Visualization Techniques
Day25
Advanced Data Analytics and Reporting
Days Live Online Session
Day26
Course Introduction and Overview of Power BI
Day27
Understanding Power BI Interface and Basics
Day28
Data Sources and Data Importing
Day29
Data Transformation with Power Query
Day30
Advanced Power Query & Sharing Insights
Days Live Online Session
Day31
Data Modelling and Basic Visualization
Day32
Advanced Visualizations in Power BI
Day33
Introduction to DAX (Data Analysis Expressions)
Day34
Intermediate DAX
Day35
Data Refresh and Scheduling
Days Live Online Session
Day36
Create a dataflow with the input data
Day37
Create and train a machine learning model
Day38
Review the model validation report
Day39
Apply the model to a dataflow entity
Day40
Using the scored output from the model in a Power BI report
Days Live Online Session
Day1
Introduction to Python and Basic Syntax
Day2
Control Structures
Day3
Functions
Day4
Data Structures
Day5
File Handling
Days Live Online Session
Day6
Modules, Libraries
Day7
Exception Handling
Day8
Object-Oriented Programming
Day9
Python programming with Databases
Day10
Hands-On Practice and Hands On Guided Project
Days Live Online Session
Day11
Introduction to Prompt Engineering and AI Language Models
Day12
Crafting Effective Prompts
Day13
Prompt Engineering for Specific Applications
Day14
Ethical Considerations and Advanced Techniques
Day15
Hands-on Practice with AI Tools
Days Live Online Session
Day16
Introduction to AI-Powered Coding Assistants
Day17
AI-Powered Code Generation
Day18
Debugging and Code Optimization with AI
Day19
Advanced Features of AI Coding Assistants
Day20
Hands on practice with GitHub Copilot, Amazon Q, Google Gemini
Days Live Online Session
Day21
Introduction to Linux and Basic Commands
Day22
User and File Permissions Management
Day23
Process Management and Shell Scripting Basics
Day24
Package Management and Disk Management
Day25
Networking Basics and System Monitoring
Days Live Online Session
Day26
Introduction to Networking
Day27
TCP/IP Model and IP Addressing
Day28
Subnetting and DHCP
Day29
Application Layer Protocol
Day30
Network Troubleshooting and Basic Security
Days Live Online Session
Day31
Introduction to SQL/NoSQL Databases
Day32
SQL Querying
Day33
Database Normalization & Indexing
Day34
NoSQL Databases
Day35
Hands-on Guided Project Using Python & MongoDB
Days Live Online Session
Day36
Introduction to Flask and Application Setup
Day37
Working with Templates and Static Files
Day38
Handling Forms and User Input
Day39
Database Integration with Flask-SQLAlchemy
Day40
Authentication and Deploying Flask Applications
Days Live Online Session
Day41
Introduction to Cloud Computing,Core Cloud Services
Day42
Core Cloud Services
Day43
Introduction to Cloud DevOps
Day44
Advanced Cloud Computing
Day45
Hands-on Guided Project & Career Pathways and Hands-On Labs
Days Live Online Session
Day46
Introduction to Cloud Orchestration – Kubernetes
Day47
GKE
Day48
EKS
Day49
AZURE
Day50
Run Web Application on each cloud platform
Days Live Online Session
Day51
Introduction to Data Analysis and Tools
Day52
Data Cleaning and Preprocessing
Day53
Data Analysis Using SQL
Day54
Data Visualization Techniques
Day55
Advanced Data Analytics and Reporting
Days Live Online Session
Day56
Course Introduction and Overview of Power BI
Day57
Understanding Power BI Interface and Basics
Day58
Data Sources and Data Importing
Day59
Data Transformation with Power Query
Day60
Advanced Power Query & Sharing Insights
Days Live Online Session
Day61
Data Modelling and Basic Visualization
Day62
Advanced Visualizations in Power BI
Day63
Introduction to DAX (Data Analysis Expressions)
Day64
Intermediate DAX
Day65
Data Refresh and Scheduling
Days Live Online Session
Day66
Create a dataflow with the input data
Day67
Create and train a machine learning model
Day68
Review the model validation report
Day69
Apply the model to a dataflow entity
Day70
Using the scored output from the model in a Power BI report
Days Live Online Session
Day1
Course orientation ,Evaluation metrics,Evaluation Criteria,Live and Recorded Classes details
Day2
Agile principle,Scrum Framework,User stories
Day3
Repositories and Branching, Pull Requests and Code Reviews, GitHub Actions
Day4
User-focused approach to solving problems through empathy, creativity, and iteration
Days Live Online Session
Day5
Scikit -learn overview and understanding of ML models
Day6
Overview of Data Splitting and Model evaluation metrics
Day7
Day8
Data Aggregation using Python
Days Live Online Session
Day9
Overview of machine learning, Key concepts, Types of machine learning
Day10
Supervised, unsupervised, and reinforcement learning
Day11
Machine learning workflow, Introduction to IBM Watson, Capabilities, features, and services
Day12
Days Live Online Session
Day13
Building a simple ML sample model using Watson
Day14
Data sources and types of data,handling missing data, Feature engineering
Day15
Data transformation, Normalization, scaling, and encoding techniques
Day16
Data visualization, Data distributions, Data preprocessing with Pandas, Cleaning and transforming a dataset
Days Live Online Session
Day17
Tasks
Day18
Models
Day19
Logistic regression, building a regression model, Classification with decision trees
Days Live Online Session
Day20
Introduction to unsupervised learning, Clustering – K-means
Day21
Dimensionality reduction , Hierarchical clustering
Day22
Days Live Online Session
Day23
Principal component analysis (PCA)
Day24
Introduction to neural networks, and Architecture
Day25
Deep Learning,clustering with k-means
Days Live Online Session
Day26
Building a neural network,Perceptron ,ANN
Day27
CNN -Image Classification,Understanding convolution layers, pooling, and flattening
Day28
Days Live Online Session
Day29
RNN ,Sequence learning and temporal dependencies
Day30
Types of RNNs: LSTM
Day31
Days Live Online Session
Day32
Introduction to NLP, NLP pipeline and concepts
Day33
Text preprocessing
Day34
Classification techniques
Days Live Online Session
Day35
Bag of Words, TF-IDF, and word embeddings
Day36
Model evaluation metrics
Day37
Cross-validation and hyperparameter tuning, Sentiment analysis
Project Work
Project Work
Project Work
Sessions Topics
Session1
Importance of Employability Skills
Changing Workplaces and Related Skills
Session2
Greetings and Introductions
Read English Text With Appropriate Articulation
Session3
Effective Phone Conversations
Making Requests
Session4
Participating in Buyer Seller Interactions
Saying No or Refusing Politely
Session5
Construct Meaningful Sentences
Describe Personal Experiences and Thoughts
Session6
Write Effective Notes
Write Effective Resumes and Reports
Session7
Making a Great First Impression
Non-verbal Communication
Session8
Emotional Intelligence
Know Yourself
Session9
Positive Attitude
Personal Values & Ethics
Session10
Balance Your Body & Mind: The Power of Nutrition and Physical Activity
Plan and Manage Tasks Within a Timeline
Session11
Conflict Management – An Introduction
Understanding Perspectives
Session12
Resolve Conflicts to Maintain Relationships
Negotiation in Action Getting to YES
Session13
Communicate Effectively to Gain Acceptance
Compare Features and Benefits of Products & Services
Session14
Collaborate Across Different Teams
Collaborate to Achieve Team Goals
Session15
Introduction to Innovation
Introduction to Critical Thinking
Session16
Introduction to Decision Making
Apply Design Thinking
Session17
Understand Change
Introduction to Result Orientation
Session18
Introduction to Quality
Understand the Impact of Errors
Session19
Values and Beliefs – Make Ethical Decisions
Cultural Fitment & Diversity
Session20
Prevention of Sexual Harassment (POSH) Act
Behave Appropriately Towards People with Disabilities
Session21
Types of Customers – II
Build a Customer-Focused Mindset
Session22
Respond Effectively to Customers
Introduction to CRM Systems
Session23
Windows Operating System and File Management
Create Documents Using MS Word
Session24
Excel Skills to Boost Your Productivity
Useful Excel Features for the Workplace
Session25
Useful MS PowerPoint Features for the Workplace
Effective Information Search Online
Session26
Communicate using Email
Features of Online Communication Tools

Projects

Utilize IBM Watson's advanced AI capabilities to analyze customer interactions across various channels, such as emails, chat, and social media. In addition, implement Watson's AI services to extract deep insights, including customer intent, sentiment trends, and emerging issues.

A scalable Real-Time Social Media Analytics Pipeline that processes live data from platforms like Twitter and Facebook. It uses Apache Kafka, Spark Streaming, and NLP models for sentiment analysis, trend detection, and entity recognition—helping brands monitor reputation, track trends, and respond instantly.

Conduct advanced exploratory data analysis on large-scale genomic datasets to identify genetic variations associated with diseases. Use techniques like Principal Component Analysis (PCA) and t- Distributed Stochastic Neighbor Embedding (t-SNE) for dimensionality reduction and visualization. Apply statistical tests and correlation analysis to uncover significant genetic markers and patterns.

Apply advanced clustering techniques, such as DBSCAN and Hierarchical Clustering, along with dimensionality reduction methods like t-SNE to effectively analyze and visualize customer journeys across multiple touchpoints.

Implement transformer-based models like BERT (Bidirectional Encoder Representations from Transformers) or GPT (Generative Pre-trained Transformer) for advanced natural language understanding tasks. Furthermore, apply these models to complex NLP applications such as question answering, text summarization, and document comprehension, achieving state-of-the-art performance in language processing.

Use Bayesian optimization techniques to automate model selection and hyperparameter tuning for machine learning models. Implement tools like Hyperopt or Optuna to explore the hyperparameter space efficiently and select the best-performing models based on cross-validated performance metrics. This approach enhances model accuracy and optimizes computational resources.

Develop an ensemble regression model combining techniques like Gradient Boosting, Random Forests, and XGBoost for accurate real estate valuation. In addition, integrate various data sources, including historical property sales, economic indicators, and neighborhood features, to enhance prediction accuracy and provide detailed property valuations.

Furthermore, employ deep learning-based clustering techniques (e.g., Deep Embedded Clustering) to segment market data. Integrate neural networks with clustering algorithms to uncover hidden patterns and customer segments in complex datasets, enabling more targeted marketing and personalized product offerings

Implement a real-time language translation system using advanced neural machine translation models like Transformer-based architectures. Optimize the model for low-latency and high-quality translations in multiple languages, supporting applications in international communication and travel.

Develop automated model ensemble systems that combine multiple machine learning models to improve prediction accuracy. Implement techniques like stacking, blending, and bagging with automated pipelines to select and optimize the best-performing models based on validation results.

Tools & Softwares

Salary Scale

Maximum
12 LPA
Average
9 LPA
Minimum
6.5 LPA

Job Role

Enroll Now

Knowledge Center

Geoffrey Hinton, a pioneer in AI, talks about the evolution of neural networks

Elon Musk discusses the future of AI and machine learning

AI practitioners in machine learning by Andrew Ng

Understanding Machine Learning: From Theory to Algorithms

Our Alumni Work at

Frequently Asked Questions

The internship spans 45 days, including 40 days of AI/ML training (2 hours per day) and a 5-day capstone project, all conducted online.

You will dedicate 2 hours daily to live online sessions, plus additional self-study and project work time.

Yes, the program is designed for beginners and intermediate learners with basic programming knowledge, covering both foundational and advanced AI/ML concepts.

Yes, upon successful completion of training and project submission, you will receive an industry-recognized AI/ML Internship Certificate from Rooman Technologies.

You will gain skills in Python programming, data preprocessing, machine learning algorithms, model evaluation, and AI project deployment.

This is a 100% online internship, allowing you to learn from anywhere while engaging in live interactive sessions.

You will work on a real-world AI/ML capstone project that demonstrates your ability to apply machine learning models to solve practical problems.

Basic programming knowledge (preferably in Python) and familiarity with mathematics (linear algebra, statistics) are recommended.

Completing this program enhances your employability in AI, Data Science, and Machine Learning roles, providing hands-on experience that recruiters value.

Absolutely! Adding this certification to your LinkedIn and resume will strengthen your profile and showcase your AI/ML expertise to potential employers.

AI - ML Engineer

AI – ML Engineer – A fast track to the success.
 

About Program

The “AI – Machine Learning Engineer” program trains individuals for roles in the IT-ITeS sector, focusing on AI, Big Data Analytics, product engineering, software development, and workplace management. Participants gain competencies in employing development tools, effective collaboration, and maintaining health and safety standards. The program equips them to understand business requirements, create compelling data-driven narratives, and collaborate with Data Scientists in complex model development. Upon completion, they master data inspection, transformation, statistical analysis, visualization, and machine learning, becoming adept at supporting strategic decision-making within the business intelligence landscape.

Course Curriculum

Days Live Online Session
Day1
Introduction to Python and Basic Syntax
Day2
Control Structures
Day3
Functions
Day4
Data Structures
Day5
File Handling
Days Live Online Session
Day6
Modules, Libraries
Day7
Exception Handling
Day8
Object-Oriented Programming
Day9
Python programming with Databases
Day10
Hands-On Practice and Hands On Guided Project
Days Live Online Session
Day11
Introduction to Prompt Engineering and AI Language Models
Day12
Crafting Effective Prompts
Day13
Prompt Engineering for Specific Applications
Day14
Ethical Considerations and Advanced Techniques
Day15
Hands-on Practice with AI Tools
Days Live Online Session
Day16
Introduction to AI-Powered Coding Assistants
Day17
AI-Powered Code Generation
Day18
Debugging and Code Optimization with AI
Day19
Advanced Features of AI Coding Assistants
Day20
Hands on practice with GitHub Copilot, Amazon Q, Google Gemini
Days Live Online Session
Day21
Introduction to Data Analysis and Tools
Day22
Data Cleaning and Preprocessing
Day23
Data Analysis Using SQL
Day24
Data Visualization Techniques
Day25
Advanced Data Analytics and Reporting
Days Live Online Session
Day26
Course Introduction and Overview of Power BI
Day27
Understanding Power BI Interface and Basics
Day28
Data Sources and Data Importing
Day29
Data Transformation with Power Query
Day30
Advanced Power Query & Sharing Insights
Days Live Online Session
Day31
Data Modelling and Basic Visualization
Day32
Advanced Visualizations in Power BI
Day33
Introduction to DAX (Data Analysis Expressions)
Day34
Intermediate DAX
Day35
Data Refresh and Scheduling
Days Live Online Session
Day36
Create a dataflow with the input data
Day37
Create and train a machine learning model
Day38
Review the model validation report
Day39
Apply the model to a dataflow entity
Day40
Using the scored output from the model in a Power BI report
Days Live Online Session
Day1
Introduction to Python and Basic Syntax
Day2
Control Structures
Day3
Functions
Day4
Data Structures
Day5
File Handling
Days Live Online Session
Day6
Modules, Libraries
Day7
Exception Handling
Day8
Object-Oriented Programming
Day9
Python programming with Databases
Day10
Hands-On Practice and Hands On Guided Project
Days Live Online Session
Day11
Introduction to Prompt Engineering and AI Language Models
Day12
Crafting Effective Prompts
Day13
Prompt Engineering for Specific Applications
Day14
Ethical Considerations and Advanced Techniques
Day15
Hands-on Practice with AI Tools
Days Live Online Session
Day16
Introduction to AI-Powered Coding Assistants
Day17
AI-Powered Code Generation
Day18
Debugging and Code Optimization with AI
Day19
Advanced Features of AI Coding Assistants
Day20
Hands on practice with GitHub Copilot, Amazon Q, Google Gemini
Days Live Online Session
Day21
Introduction to Linux and Basic Commands
Day22
User and File Permissions Management
Day23
Process Management and Shell Scripting Basics
Day24
Package Management and Disk Management
Day25
Networking Basics and System Monitoring
Days Live Online Session
Day26
Introduction to Networking
Day27
TCP/IP Model and IP Addressing
Day28
Subnetting and DHCP
Day29
Application Layer Protocol
Day30
Network Troubleshooting and Basic Security
Days Live Online Session
Day31
Introduction to SQL/NoSQL Databases
Day32
SQL Querying
Day33
Database Normalization & Indexing
Day34
NoSQL Databases
Day35
Hands-on Guided Project Using Python & MongoDB
Days Live Online Session
Day36
Introduction to Flask and Application Setup
Day37
Working with Templates and Static Files
Day38
Handling Forms and User Input
Day39
Database Integration with Flask-SQLAlchemy
Day40
Authentication and Deploying Flask Applications
Days Live Online Session
Day41
Introduction to Cloud Computing,Core Cloud Services
Day42
Core Cloud Services
Day43
Introduction to Cloud DevOps
Day44
Advanced Cloud Computing
Day45
Hands-on Guided Project & Career Pathways and Hands-On Labs
Days Live Online Session
Day46
Introduction to Cloud Orchestration – Kubernetes
Day47
GKE
Day48
EKS
Day49
AZURE
Day50
Run Web Application on each cloud platform
Days Live Online Session
Day51
Introduction to Data Analysis and Tools
Day52
Data Cleaning and Preprocessing
Day53
Data Analysis Using SQL
Day54
Data Visualization Techniques
Day55
Advanced Data Analytics and Reporting
Days Live Online Session
Day56
Course Introduction and Overview of Power BI
Day57
Understanding Power BI Interface and Basics
Day58
Data Sources and Data Importing
Day59
Data Transformation with Power Query
Day60
Advanced Power Query & Sharing Insights
Days Live Online Session
Day61
Data Modelling and Basic Visualization
Day62
Advanced Visualizations in Power BI
Day63
Introduction to DAX (Data Analysis Expressions)
Day64
Intermediate DAX
Day65
Data Refresh and Scheduling
Days Live Online Session
Day66
Create a dataflow with the input data
Day67
Create and train a machine learning model
Day68
Review the model validation report
Day69
Apply the model to a dataflow entity
Day70
Using the scored output from the model in a Power BI report
Days Live Online Session
Day1
Course orientation ,Evaluation metrics,Evaluation Criteria,Live and Recorded Classes details
Day2
Agile principle,Scrum Framework,User stories
Day3
Repositories and Branching, Pull Requests and Code Reviews, GitHub Actions
Day4
User-focused approach to solving problems through empathy, creativity, and iteration
Days Live Online Session
Day5
Scikit -learn overview and understanding of ML models
Day6
Overview of Data Splitting and Model evaluation metrics
Day7
Day8
Data Aggregation using Python
Days Live Online Session
Day9
Overview of machine learning, Key concepts, Types of machine learning
Day10
Supervised, unsupervised, and reinforcement learning
Day11
Machine learning workflow, Introduction to IBM Watson, Capabilities, features, and services
Day12
Days Live Online Session
Day13
Building a simple ML sample model using Watson
Day14
Data sources and types of data,handling missing data, Feature engineering
Day15
Data transformation, Normalization, scaling, and encoding techniques
Day16
Data visualization, Data distributions, Data preprocessing with Pandas, Cleaning and transforming a dataset
Days Live Online Session
Day17
Tasks
Day18
Models
Day19
Logistic regression, building a regression model, Classification with decision trees
Days Live Online Session
Day20
Introduction to unsupervised learning, Clustering – K-means
Day21
Dimensionality reduction , Hierarchical clustering
Day22
Days Live Online Session
Day23
Principal component analysis (PCA)
Day24
Introduction to neural networks, and Architecture
Day25
Deep Learning,clustering with k-means
Days Live Online Session
Day26
Building a neural network,Perceptron ,ANN
Day27
CNN -Image Classification,Understanding convolution layers, pooling, and flattening
Day28
Days Live Online Session
Day29
RNN ,Sequence learning and temporal dependencies
Day30
Types of RNNs: LSTM
Day31
Days Live Online Session
Day32
Introduction to NLP, NLP pipeline and concepts
Day33
Text preprocessing
Day34
Classification techniques
Days Live Online Session
Day35
Bag of Words, TF-IDF, and word embeddings
Day36
Model evaluation metrics
Day37
Cross-validation and hyperparameter tuning, Sentiment analysis
Project Work
Project Work
Project Work
Sessions Topics
Session1
Importance of Employability Skills
Changing Workplaces and Related Skills
Session2
Greetings and Introductions
Read English Text With Appropriate Articulation
Session3
Effective Phone Conversations
Making Requests
Session4
Participating in Buyer Seller Interactions
Saying No or Refusing Politely
Session5
Construct Meaningful Sentences
Describe Personal Experiences and Thoughts
Session6
Write Effective Notes
Write Effective Resumes and Reports
Session7
Making a Great First Impression
Non-verbal Communication
Session8
Emotional Intelligence
Know Yourself
Session9
Positive Attitude
Personal Values & Ethics
Session10
Balance Your Body & Mind: The Power of Nutrition and Physical Activity
Plan and Manage Tasks Within a Timeline
Session11
Conflict Management – An Introduction
Understanding Perspectives
Session12
Resolve Conflicts to Maintain Relationships
Negotiation in Action Getting to YES
Session13
Communicate Effectively to Gain Acceptance
Compare Features and Benefits of Products & Services
Session14
Collaborate Across Different Teams
Collaborate to Achieve Team Goals
Session15
Introduction to Innovation
Introduction to Critical Thinking
Session16
Introduction to Decision Making
Apply Design Thinking
Session17
Understand Change
Introduction to Result Orientation
Session18
Introduction to Quality
Understand the Impact of Errors
Session19
Values and Beliefs – Make Ethical Decisions
Cultural Fitment & Diversity
Session20
Prevention of Sexual Harassment (POSH) Act
Behave Appropriately Towards People with Disabilities
Session21
Types of Customers – II
Build a Customer-Focused Mindset
Session22
Respond Effectively to Customers
Introduction to CRM Systems
Session23
Windows Operating System and File Management
Create Documents Using MS Word
Session24
Excel Skills to Boost Your Productivity
Useful Excel Features for the Workplace
Session25
Useful MS PowerPoint Features for the Workplace
Effective Information Search Online
Session26
Communicate using Email
Features of Online Communication Tools

Utilize IBM Watson's advanced AI capabilities to analyze customer interactions across various channels (e.g., emails, chat, social media). Implement Watson's AI services to extract deep insights, such as customer intent, sentiment trends, and emerging issues. Use these insights to drive personalized marketing strategies and improve customer engagement through targeted interventions.

Design and implement a real-time data collection and processing pipeline for social media data. Use tools like Apache Kafka and Apache Flink to capture, process, and analyze data streams from platforms like Twitter or Facebook. Apply sentiment analysis and trend detection algorithms to gain insights into public opinion and emerging trends.

Conduct advanced exploratory data analysis on large-scale genomic datasets to identify genetic variations associated with diseases. Use techniques like Principal Component Analysis (PCA) and t- Distributed Stochastic Neighbor Embedding (t-SNE) for dimensionality reduction and visualization. Apply statistical tests and correlation analysis to uncover significant genetic markers and patterns.

Apply advanced clustering techniques (e.g., DBSCAN, Hierarchical Clustering) and dimensionality reduction methods (e.g., t-SNE) to analyze and visualize customer journeys across multiple touchpoints. Identify distinct customer segments and behavioral patterns to enhance customer experience and optimize marketing strategies.

Implement transformer-based models like BERT (Bidirectional Encoder Representations from Transformers) or GPT (Generative Pre-trained Transformer) for advanced natural language understanding tasks. Apply these models to complex NLP applications such as question answering, text summarization, and document comprehension, achieving state-of-the-art performance in language processing.

Use Bayesian optimization techniques to automate model selection and hyperparameter tuning for machine learning models. Implement tools like Hyperopt or Optuna to explore the hyperparameter space efficiently and select the best-performing models based on cross-validated performance metrics. This approach enhances model accuracy and optimizes computational resources.

Develop an ensemble regression model combining techniques like Gradient Boosting, Random Forests, and XGBoost for accurate real estate valuation. Integrate various data sources, including historical property sales, economic indicators, and neighborhood features, to enhance prediction accuracy and provide detailed property valuations.

Employ deep learning-based clustering techniques (e.g., Deep Embedded Clustering) to segment market data. Integrate neural networks with clustering algorithms to uncover hidden patterns and customer segments in complex datasets, enabling more targeted marketing and personalized product offerings

Implement a real-time language translation system using advanced neural machine translation models like Transformer-based architectures. Optimize the model for low-latency and high-quality translations in multiple languages, supporting applications in international communication and travel.

Develop automated model ensemble systems that combine multiple machine learning models to improve prediction accuracy. Implement techniques like stacking, blending, and bagging with automated pipelines to select and optimize the best-performing models based on validation results.

Tools & Softwares

Salary Scale

Maximum
12 LPA
Average
9 LPA
Minimum
6.5 LPA

Job Role

Enroll Now

Knowledge Center

Geoffrey Hinton, a pioneer in AI, talks about the evolution of neural networks

Elon Musk discusses the future of AI and machine learning

AI practitioners in machine learning by Andrew Ng

Understanding Machine Learning: From Theory to Algorithms

Our Alumni Work at

Frequently Asked Questions

The internship spans 45 days, including 40 days of AI/ML training (2 hours per day) and a 5-day capstone project, all conducted online.

You will dedicate 2 hours daily to live online sessions, plus additional self-study and project work time.

Yes, the program is designed for beginners and intermediate learners with basic programming knowledge, covering both foundational and advanced AI/ML concepts.

Yes, upon successful completion of training and project submission, you will receive an industry-recognized AI/ML Internship Certificate from Rooman Technologies.

You will gain skills in Python programming, data preprocessing, machine learning algorithms, model evaluation, and AI project deployment.

This is a 100% online internship, allowing you to learn from anywhere while engaging in live interactive sessions.

You will work on a real-world AI/ML capstone project that demonstrates your ability to apply machine learning models to solve practical problems.

Basic programming knowledge (preferably in Python) and familiarity with mathematics (linear algebra, statistics) are recommended.

Completing this program enhances your employability in AI, Data Science, and Machine Learning roles, providing hands-on experience that recruiters value.

Absolutely! Adding this certification to your LinkedIn and resume will strengthen your profile and showcase your AI/ML expertise to potential employers.

AI - ML Engineer

AI-Data Analyst – A fast track to the success.
 

Start Date

April 08, 2026

Course Duration

390 Hrs

Start
Date

10 June 2024

Course Duration

320 Hrs

Instructors

Prakash, Srinivas + 2 more

About Program

The “AI – Machine Learning Engineer” program trains individuals for roles in the IT-ITeS sector, focusing on AI, Big Data Analytics, product engineering, software development, and workplace management. Participants gain competencies in employing development tools, effective collaboration, and maintaining health and safety standards. The program equips them to understand business requirements, create compelling data-driven narratives, and collaborate with Data Scientists in complex model development. Upon completion, they master data inspection, transformation, statistical analysis, visualization, and machine learning, becoming adept at supporting strategic decision-making within the business intelligence landscape.

Key Features

Why choose us?

Employability Skill
Live Project / Internship
Interview Preparation
Placement Assistance

Training Option

Tools & Softwares

Salary Scale

Maximum
6 LPA
Average
4 LPA
Minimum
2.5 LPA

Job Role

Our Alumni Work at

Course Curriculum

  • Overview of AI & Big Data Analytics and their societal impact
  • Roles and career paths in AI & Big Data Analytics
  • Key responsibilities of a Machine Learning Engineer
  • Skills and behaviours expected from a Machine Learning Engineer
  • Growth opportunities in the field
  • Idea Prioritization
  • Stages of Development
  • Feasibility and Planning
  • Competitive Advantage
  • Programming Practices
  • Automation and Scripting
  • Tools Utilization
  • System Configuration
  • Software Development Needs
  • System Limitations
  • Data Flows
  • Performance Evaluation
  • Algorithm Efficiency
  • Technical Specifications
  • Requirement Translation
  • Parallel Programming
  • Development Tools
  • Testing and Refinement

Certification

Testimonials

Frequently Asked Questions

The program is designed to equip students with skills in artificial intelligence (AI) and machine learning (ML), covering topics like data analysis, algorithm development, and AI-powered applications.

Basic knowledge of programming, particularly in Python, and an understanding of mathematics, including linear algebra and statistics, are recommended.

Key topics include machine learning algorithms, data analysis, AI ethics, natural language processing, computer vision, and deep learning.

Certifications from recognized industry bodies like NASSCOM, NSDC, and Skill India.

Yes, the course includes practical projects for real-world experience.

Tools like Python, Jupyter Notebook, SQL, Tableau, and various machine learning libraries are covered.

Roles such as Machine Learning Engineer, Business Analyst, AI Developer, and Data Scientist.

Yes, Rooman Technologies offers free demo sessions to give prospective students a preview of the course content and teaching methodology

The instructors are industry experts with extensive experience working with leading technology companies such as CISCO, WIPRO, and Infosys

You can enroll by visiting the Rooman Technologies website, filling out the necessary details, and following the enrollment procedure. For guidance, you can also contact their support team


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