Best Gen AI and Machine Learning Course in Porur |Gen AI and Machine Learning Training in Porur With Placement Support | Updated 2025

Gen AI and Machine Learning Course for All Graduates, NON-IT, Diploma & Career Gaps — ₹22,000/- only.

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Gen AI and Machine Learning Course in Porur

  • Join Our Top Gen AI And Machine Learning Institute In Porur To Gain Solid Expertise In AI Tools And Intelligent Automation.
  • Our Gen AI And Machine Learning Course In Porur Covers Deep Learning, Prompt Engineering, NLP, And Complete Model Deployment Workflows.
  • Work On Real-Time AI Projects And Boost Your Skills With Expert, Mentor-Guided Training.
  • Pick A Learning Schedule That Fits You: Weekday, Weekend, Or Fast-Track Batches.
  • Get A Gen AI & Machine Learning Certification In Porur With 100% Placement Assistance.
  • Get Full Support For Portfolio Building, Interview Prep, And Consistent Career Growth.

WANT IT JOB

Become a AI/ML Developer in 3 Months

Freshers Salary

3 LPA

To

8 LPA

Quality Training With Affordable Fees in Porur!
INR ₹23000
INR ₹22000

11987+

(Placed)
Freshers To IT

6543+

(Placed)
NON-IT To IT

9187+

(Placed)
Career Gap

5567+

(Placed)
Less Then 60%

Our Hiring Partners

Overview of Gen AI and Machine Learning Course

This Gen AI And Machine Learning Course In Porur offers a solid, beginner-friendly pathway for anyone looking to enter the world of artificial intelligence. Our program, recognized for high-quality Gen AI And Machine Learning Training, delivers a well-structured curriculum that builds both foundational and advanced expertise. Once you complete the course, you’ll earn a Gen AI And Machine Learning Certification that strengthens your professional profile. You’ll also receive dedicated Gen AI And Machine Learning Placement support, connecting you with leading companies to help you launch a strong and successful career.

What You'll Learn From Gen AI and ML Course

The Gen AI And Machine Learning Course In Porur offers a powerful foundation, taking you into advanced areas like generative models, deep learning, and intelligent automated systems.

You’ll learn to build smart AI solutions that analyze data, identify patterns, and deliver reliable predictions using modern machine learning techniques.

Gain hands-on experience with leading tools and frameworks such as Python, TensorFlow, Keras, and Hugging Face to build and deploy real-world AI applications.

Develop end-to-end expertise across the full AI lifecycle from data collection and preparation to model training, tuning, and validation.

Work on practical industry-based projects and see how AI is applied across fields like retail, healthcare, and finance.

Earn a valued certification guided by expert AI trainers, helping you showcase your capabilities and unlock stronger career opportunities in artificial intelligence and machine learning.

Additional Info

Course Highlights

  • Kickstart Your AI Career With A Job-Ready Program Covering Gen AI, ML, Deep Learning, Model Training, Prompt Engineering, And Automation.
  • Receive Full Job Support With Placement Opportunities From Top Companies Searching For Skilled AI And ML Professionals.
  • Become Part Of A Growing Community Of 11,000+ Learners Trained And Placed Through Our Network Of 350+ Trusted Hiring Partners.
  • Learn Directly From Seasoned AI Experts With Over A Decade Of Hands-On Experience In AI, Data Science, And Automation.
  • Access Beginner-Friendly Modules, Real Industry Projects, And End-To-End Career Mentorship Throughout Your Learning Journey.
  • Enjoy Flexible Class Timings, Affordable Fees, And 100% Placement Support Ideal For Freshers And Working Professionals Transitioning Into AI Careers.

Benefits of Gen AI And Machine Learning Training in Porur

  • Smarter Decisions – Gen AI and Machine Learning analyze large amounts of data to help businesses make smarter decisions more quickly. These systems can find patterns and trends that humans might overlook. With this information companies can plan better, avoid mistakes and improve their results. Its like having a smart assistant that helps guide important choices.
  • Saves Time and Effort – These technologies are great at automating repetitive tasks like data entry, content writing and customer service chats. This means less manual work and more time to focus on bigger goals. They also help reduce human errors, making work more accurate and efficient. In short things get done faster and smarter with less effort.
  • Personalised Experience – Gen AI enables the creation of user-specific experiences according to their preferences and behavior. These systems know what works best for each individual, whether its Netflix movie recommendations or online shopping site product recommendations. This improves the relationship between companies and their clients. Everyone benefits from a more interesting and pertinent experience.
  • Creative Content Generation – Generative AI's capacity to produce writing, art, music and even computer code is among its most intriguing advantages. This helps designers, writers and content creators produce work more quickly and explore new ideas with ease. You don’t need to be highly technical to use these tools. They turn your creativity into real results faster than ever.
  • High Career Demand – Experts in machine learning and general artificial intelligence are in greater demand. From healthcare to finance to tech, companies are hiring experts who can build intelligent systems and analyze data. These skills open up many high-paying career opportunities. Learning AI today can lead to a strong and stable future in the job market.

Popular Tools Taught in Gen AI And Machine Learning Course in Offline

  • Python – Python is most widely used programming language for AI and machine learning due to its high level of strength and ease of learning. It has many libraries and frameworks that help build smart applications quickly. Beginners and experts alike use Python to write code for data analysis, model building and more. Its simplicity and flexibility make it a top choice for AI projects.
  • TensorFlow – Google created the robust open-source package TensorFlow for creating and refining machine learning models. It helps create deep learning networks that can recognize images, understand language and more. TensorFlow supports both beginners and advanced users with lots of tools and tutorials. Its widely used in industry for developing real AI systems.
  • PyTorch – PyTorch is another popular library for deep learning known for its ease of use and dynamic computation capabilities. It allows developers to build AI models faster and experiment more easily Many researchers prefer PyTorch because it makes debugging and testing simple. Its great for learning and applying advanced machine learning techniques.
  • Jupyter Notebook – Jupyter Notebook is an interactive tool that lets you write and run code in small blocks, making it easier to test and visualize your work. It’s widely used for data exploration, cleaning and building machine learning models. You can also add notes and charts to explain your code. This tool is perfect for both learning and sharing AI projects.
  • Scikit-learn – Scikit-learn is a straightforward and effective Python machine learning package. It provides ready made tools for common tasks like classification, regression, clustering and data preprocessing. It’s beginner-friendly and works well for small to medium-sized projects. Scikit-learn helps users build models quickly without needing deep knowledge of math.

Must-Know Frameworks for Aspiring Gen AI And Machine Learning Professionals

  • TensorFlow – Google developed the well known open-source framework TensorFlow, which aids in the development and training of machine learning models, particularly deep learning networks. It supports large-scale data processing and can run on different devices from computers to smartphones. Many developers use TensorFlow because it is flexible and has lots of tools to simplify complex AI tasks.
  • PyTorch – PyTorch is a user friendly framework known for its flexibility and speed, widely used by researchers and developers for deep learning. Dynamic computation graphs make it simple to explore allowing you to quickly alter the model. PyTorch makes debugging simpler and helps build complex AI systems with less effort.
  • Keras – Based on TensorFlow and other frameworks, Keras is a high-level API for neural networks. Because of its straightforward and user-friendly architecture, it is ideal for freshers who wish to quickly create AI models. Keras provides pre-built layers and tools, so you can create and test deep learning models with minimal coding.
  • Hugging Face Transformers – Hugging Face is a powerful framework focused on natural language processing (NLP) using transformer models like BERT and GPT. It provides easy access to pre trained models that can understand and generate human language. This framework helps developers build chatbots, text summarizers and other language based AI tools without starting from scratch.
  • Apache MXNet – The deep learning framework Apache MXNet is effective and scalable, supporting both imperative and symbolic programming. Its designed for speed and can run on multiple GPUs and machines making it good for big projects. MXNet offers flexibility for developers to build custom AI models while keeping performance high.

Essential Skills You’ll Learn in a Gen AI And Machine Learning Training

  • Data Analysis and Preparation – One of the first skills you’ll learn is how to collect, clean and prepare data for AI models. This step is very important because good data helps create accurate and reliable models. You’ll understand how to handle missing data, remove errors and organize information properly. This skill forms the foundation for any successful AI or machine learning project.
  • Building Machine Learning Models – Learn to build machine learning models that can infer information from data and forecast outcomes. This entails selecting appropriate algorithms and using real world data to train your models. You’ll learn how to evaluate and improve these models to ensure perform well. This skill is key to solving problems using AI technology.
  • Programming with Python – As the course progresses, you will gain proficiency in Python, the primary programming language used in AI and machine learning. You’ll learn to write clear, efficient code and use popular libraries like TensorFlow and Scikit-learn. This skill helps you turn AI concepts into working applications. Python makes it easier to build, test and deploy AI models.
  • Understanding Generative AI – Generative AI is about creating new content like text, images or music using AI models. You’ll learn how to work with generative models such as GANs and transformers. This skill allows you to develop systems that can produce creative outputs, not just analyze data. Its a growing area with many exciting applications in art, writing and design.
  • Problem-Solving and Critical Thinking – AI and machine learning require strong problem solving skills to understand challenges and design effective solutions. Throughout the course, you’ll practice breaking down complex problems and thinking critically about the best approaches This skill you adapt AI tools to real-world situations. Being able to analyze and solve problems is essential for any AI professional.

Key Roles and Responsibilities of Gen AI and Machine Learning Course

  • Machine Learning Engineer – A Machine Learning Engineer designs, builds and tests AI models that help machines learn from data. They select algorithms, train models and fine-tune them to improve accuracy. They also work on integrating these models into software applications. Their job is to turn theoretical AI concepts into practical tools that solve real problems.
  • Data Scientist – Large data sets are gathered and examined by data scientists in order to identify patterns and valuable insights. To create predictive models that inform business choices they employ machine learning techniques. Their work involves cleaning data, experimenting with algorithms and presenting findings clearly.
  • AI Research Scientist – Researchers in artificial intelligence investigate novel approaches and technological advancements. They conduct experiments, develop novel algorithms and publish their findings. Their focus is on pushing the boundaries of what AI can do often working on cutting edge problems. Their work lays the foundation for future AI applications.
  • AI/ML Product Manager – An AI and ML Product Manager plans and oversees the development of AI driven products. They understand customer needs and guide teams to build features powered by machine learning. They coordinate between data scientists, engineers and business stakeholders. Their goal is to deliver AI solutions add real value to users and businesses.
  • Data Engineer – The infrastructure used to store and process massive amounts of data is created and maintained by data engineers. They create pipelines to collect, clean and organize data efficiently for use in AI models. Their work ensures that machine learning teams have access to reliable and high-quality data. They are essential to making AI functions run smoothly.

Why Gen AI And Machine Learning Is the Smart Choice for Freshers

  • High Demand for Skills – There is a growing need for professionals who understand Gen AI and Machine Learning in almost every industry. Freshers with these skills have a better chance of getting hired quickly. Companies are looking for new talent to help build smart systems. This demand creates many job opportunities for beginners.
  • Good Salary Potential – Jobs in Gen AI and Machine Learning often come with attractive salaries, even for freshers. Since these skills are specialized and valuable, employers are willing to pay well. Strong financial growth can result from beginning a career in this industry. Its a great way to earn a good income early on.
  • Opportunity to Work on Cutting-Edge Technology – By training in Gen AI and Machine Learning, freshers get to work with the latest technology. This field is always evolving with new innovations and ideas. Being part of this fast-moving world keeps your work exciting and challenging. It also helps to stay ahead in the tech industry.
  • Wide Range of Career Paths – Gen AI and Machine Learning skills open doors to many different roles like data scientist, AI engineer or research scientist. This variety allows freshers to choose a career path that suits their interests and strengths. You can work in different industries such as healthcare, finance or entertainment. The options are broad and flexible.
  • Strong Foundation for Future Learning – Learning Gen AI and Machine Learning provides a solid base to grow your tech knowledge over time. Freshers can build on these skills to explore advanced topics or related fields like robotics or big data. This foundation makes it easier to adapt as technology changes. Its an investment in a long-term career.

Landing Remote Jobs with Gen AI And Machine Learning Skills

  • High Demand for AI Talent Worldwide – Companies all over the world need AI and machine learning experts, so they offer many remote job opportunities. Having these skills makes you valuable no matter where you live. Employers often look beyond location when hiring for tech roles. This opens doors to work with global teams from home.
  • Work Is Mostly Computer-Based – Gen AI and machine learning work mainly involves coding, data analysis and building models on a computer. This kind of work can easily be done from anywhere with an internet connection. You don’t need to be physically present in an office. This makes it perfect for remote job roles.
  • Collaboration Through Online Tools – With skills in AI and machine learning, you’ll often use online platforms like GitHub, Slack or Zoom to collaborate. These tools make working remotely smooth and effective. You can share code, discuss projects and solve problems with teammates virtually. This maintains communication and productivity for remote teams.
  • Freelance and Project-Based Opportunities – Many AI and machine learning tasks can be done as freelance or contract projects. Having these skills lets you take on short-term jobs remotely for different clients. This gives you flexibility to choose your work hours and projects. It’s a great way to build experience and earn from home.
  • Growing Remote Tech Communities – AI and machine learning are the subject of numerous internet forums and communities. Being part of these groups helps you network and learn about remote job openings. You can get support, share knowledge and connect with recruiters worldwide. This makes finding remote work easier and more accessible.

What to Expect in Your First Gen AI And Machine Learning Job

  • Learning on the Job – You should anticipate spending a lot of time studying new tools and approaches in your first AI and machine learning career. You’ll work closely with experienced colleagues who will guide you. Its normal to face challenges as you apply what you’ve learned in training. This hands-on experience helps you grow quickly.
  • Working with Real Data – Unlike practice projects, real data can be messy and incomplete. You’ll learn how to clean, organize and prepare this data before building models. Handling real-world data teaches you important skills that improve your results. It also shows how AI works outside the classroom.
  • Team Collaboration – Your first job will involve working with different teams like data scientists, engineers and product managers. Communication is important to understand project goals and share your progress. Collaboration helps you see how AI fits into larger business problems. Develop both technical and soft skills.
  • Testing and Improving Models – Spend time testing AI models to check well they work and making improvements. This process includes the tuning settings, trying new algorithms and fixing errors. It requires patience and attention to detail. Over time, learn to build more accurate and reliable models.
  • Continuous Learning and Growth – AI and machine learning fields evolve fast, so expect to keep learning even after starting your job. New tools, techniques and research come out regularly. Staying curious and updating your skills is part of the career. Your first job is just the beginning of an exciting journey in AI.

Top Companies are Hiring for Gen AI And Machine Learning Professionals

  • Google – Google is at the forefront of AI research and development worldwide, working on initiatives like self-driving cars and Google Assistant. They hire AI experts to build smart systems that improve search, voice recognition and more. Google offers a creative environment to work on cutting-edge AI technologies. Its a great place to grow your skills and work on real-world AI problems.
  • Microsoft – Microsoft spends significantly in the AI and machine intelligence for its products such as Azure, Office and LinkedIn. They look for professionals to develop AI-powered tools and cloud services. Working here means contributing to solutions that impact millions of users worldwide. Microsoft supports continuous learning and innovation in AI technologies.
  • Amazon – AI and machine learning are used by Amazon to improves everything from warehouse automation to product recommendations. They hire specialists to build smart algorithms for Alexa, AWS and logistics. The company focuses on practical AI applications that enhance customer experience. Amazon provides many opportunities for AI professionals to work on large scale projects.
  • IBM – IBM has a strong history in AI with products like Watson, which uses AI to analyze data and help businesses. They employ AI and machine learning experts to solve complex problems in healthcare, finance and more. IBM encourages research and development in AI innovation. Joining IBM means being part of pioneering AI solutions.
  • NVIDIA – NVIDIA is well-known for their potent graphics cards, which are utilized in deep learning and AI computing. They hire AI professionals to develop hardware and software that accelerate machine learning tasks. NVIDIA plays a key role in advancing AI research and applications in gaming, robotics and autonomous vehicles. Its a top choice for those interested in AI technology development.
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Upcoming Batches For Classroom and Online

Weekdays
08 - Dec - 2025
08:00 AM & 10:00 AM
Weekdays
10 - Dec - 2025
08:00 AM & 10:00 AM
Weekends
13 - Dec - 2025
(10:00 AM - 01:30 PM)
Weekends
14 - Dec - 2025
(09:00 AM - 02:00 PM)
Can't find a batch you were looking for?
INR ₹22000
INR ₹23000

OFF Expires in

Who Should Take an Gen AI and Machine Learning Course

IT Professionals

Non-IT Career Switchers

Fresh Graduates

Working Professionals

Diploma Holders

Professionals from Other Fields

Salary Hike

Graduates with Less Than 60%

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Job Roles For Gen AI And Machine Learning Training

Applied Researcher

Machine Learning Engineer

MLOps Engineer

Data Engineer

Data Scientist

AI Ethicist

AI Product Manager

Computer Vision Engineer

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Tools Covered For Gen AI And Machine Learning Course

TensorFlow PyTorch Keras Scikit-learn Hugging Face OpenAI APIs Google Vertex AI Azure Machine Learning

What’s included ?

Convenient learning format

📊 Free Aptitude and Technical Skills Training

  • Learn basic maths and logical thinking to solve problems easily.
  • Understand simple coding and technical concepts step by step.
  • Get ready for exams and interviews with regular practice.
Dedicated career services

🛠️ Hands-On Projects

  • Work on real-time projects to apply what you learn.
  • Build mini apps and tools daily to enhance your coding skills.
  • Gain practical experience just like in real jobs.
Learn from the best

🧠 AI Powered Self Interview Practice Portal

  • Practice interview questions with instant AI feedback.
  • Improve your answers by speaking and reviewing them.
  • Build confidence with real-time mock interview sessions.
Learn from the best

🎯 Interview Preparation For Freshers

  • Practice company-based interview questions.
  • Take online assessment tests to crack interviews
  • Practice confidently with real-world interview and project-based questions.
Learn from the best

🧪 LMS Online Learning Platform

  • Explore expert trainer videos and documents to boost your learning.
  • Study anytime with on-demand videos and detailed documents.
  • Quickly find topics with organized learning materials.

Gen AI And Machine Learning course Syllabus

  • 🏫 Classroom Training
  • 💻 Online Training
  • 🚫 No Pre Request (Any Vertical)
  • 🏭 Industrial Expert

Our Gen AI And Machine Learning Training In Porur features a beginner-friendly, comprehensive curriculum tailored for newcomers and future AI professionals. You’ll explore key topics such as machine learning algorithms, deep learning methods, data preprocessing, and generative AI fundamentals. The course includes hands-on sessions with leading tools and frameworks like TensorFlow, PyTorch, and Hugging Face. Learners gain real-world experience through Gen AI And Machine Learning Internships In Porur and industry-based projects that sharpen practical skills. You’ll also get full Gen AI And Machine Learning Placement support including resume building, interview preparation, and career guidance to help you secure strong job opportunities.

  • Basics of AI and Machine Learning – Learn core concepts like algorithms, data handling and model building to create a strong foundation.
  • Advanced Techniques and Frameworks – Explore deep learning and use popular tools like TensorFlow and PyTorch for AI development.
  • Real-World Projects – Work on practical projects like image recognition and text analysis to gain hands-on experience.
  • Model Deployment and Tools – Understand to deploy AI models using tools like Jupyter, Git and cloud platforms.
Introduction to Artificial Intelligence
Data Preprocessing and Exploratory Data Analysis (EDA)
Supervised Machine Learning Algorithms
Unsupervised Learning and Clustering Techniques
Neural Networks and Deep Learning Frameworks
Natural Language Processing (NLP) Essentials
Model Deployment and AI Ethics

Establish a strong foundation in programming and AI concepts:

  • AI Basics – History, types and real world applications
  • Python Fundamentals – Setting up and using interactive coding environment
  • Jupyter Notebook – Interactive coding environment setup and navigation
  • Essential Libraries – NumPy and Pandas for data manipulation

Prepare and explore data for better model results:

  • Data Cleaning – Handling missing data, duplicates and outliers
  • Feature Engineering – Creating new features and scaling data
  • Visualization – Using Matplotlib and Seaborn to visualize data patterns
  • Statistical Techniques – Correlation, distributions and summaries

Learn core predictive modeling techniques:

  • Regression Models – Linear and Logistic Regression fundamentals
  • Decision Trees and Random Forests – Understanding ensemble methods
  • Model Training – Concepts of training, testing, overfitting and underfitting
  • Evaluation Metrics – Accuracy, precision, recall and F1-score

Discover how to analyze unlabeled data:

  • Clustering Basics – K-Means and Hierarchical Clustering algorithms
  • Dimensionality Reduction – Principal Component Analysis (PCA)
  • Data Grouping – Identifying patterns without labels
  • Visualization of Clusters – Plotting clusters using Python tools

Explore deep learning models and frameworks:

  • Neural Network Fundamentals – Layers, neurons and activation functions
  • TensorFlow and Keras – Installing and using popular deep learning libraries
  • Model Training – Backpropagation, loss functions and optimizers
  • Building Deep Models – Creating and fine tuning neural networks

Understand how machines process human language:

  • Text Preprocessing – Tokenization, stop words removal, stemming and lemmatization
  • Text Representation – Bag of Words, TF-IDF and word embeddings (Word2Vec, GloVe)
  • Popular NLP Libraries – Using NLTK and SpaCy for language tasks
  • Applications – Sentiment analysis, text classification and chatbots basics

Learn to deploy models and understand ethical AI practices:

  • Model Serialization – Saving and loading models with Pickle and Joblib
  • Deployment Tools – Basics of Flask and FastAPI to serve AI models
  • Model Monitoring – Tracking model performance and updating models
  • Ethical Considerations – Addressing bias, fairness and transparency in AI

🎁 Free Addon Programs

Aptitude, Spoken English.

🎯 Our Placement Activities

Daily Task, Soft Skills, Projects, Group Discussions, Resume Preparation, Mock Interview.

Gain Practical Experience in Gen AI And ML Projects

Placement Support Overview

Today's Top Job Openings for Gen AI And Machine Learning Professionals

Machine Learning Engineer

Company Code: GIP346

Chennai, Tamil Nadu

₹15,000 to ₹25,000 per month

B.Tech/B.E., M.Tech, B.Sc or M.Sc

Exp 0–2 years

  • We are actively seeking freshers for the role of Engineer for Machine Learning. With an emphasis on creating algorithms that learn from data and generate predictions without the need for explicit programming, you will design, develop and deploy machine learning systems. Monitoring the entire lifecycle of machine learning models, from data collections and preprocessing to the model training, evaluation and deployment is part of this role.
  • Easy Apply

    Deep Learning Engineer

    Company Code: PNC098

    Chennai, Tamil Nadu

    ₹20,000 – ₹40,000 per month

    B.Tech/B.E., M.Tech in Computer Science, AI or related fields

    Exp 0–2 years

  • We’re hiring freshers for the role of Deep Learning Engineer. You will work on developing and optimizing deep learning models, with a focus on Gen AI and multimodal AI systems. The position necessitates a solid foundation in logical reasoning and design thinking, as well as the ability to adapt to different programming languages.
  • Easy Apply

    Data Scientist (Entry Level)

    Company Code: IFI656

    Chennai, Tamil Nadu

    ₹5.5 LPA – ₹6.5 LPA

    B.Tech/B.E., B.Sc, M.Sc in Computer Science, Statistics or related fields

    Exp 0–2 yearS

  • We are looking for freshers to join as Data Scientists. You will analyze datasets, build predictive models and generate insights to support business decisions. For this position, a solid background in programming and statistics is required.
  • Easy Apply

    AI Software Developer

    Company Code: WPI497

    Chennai, Tamil Nadu

    ₹24,000 – ₹42,000 per month

    B.Tech/B.E. in Computer Science, IT.

    Exp 0–2 yearS

  • Opportunities are now open for freshers for the role of AI Software Developer. Responsibilities include coding AI algorithms, integrating AI services into applications and working with frameworks like TensorFlow and PyTorch. Good programming skills are needed for this position.
  • Easy Apply

    Natural Language Processing (NLP) Engineer

    Company Code: TMC210

    Chennai, Tamil Nadu

    ₹22,000 – ₹38,000 per month

    B.Tech/B.E., M.Tech in Computer Science or AI-related fields

    Exp 0–2 yearS

  • Now accepting applications for the role of NLP Engineer. You will work on text data preprocessing, sentiment analysis and developing NLP pipelines using tools like NLTK and SpaCy. A strong understanding of language processing techniques is required.
  • Easy Apply

    AI Solutions Developer

    Company Code: ACN894

    Chennai, Tamil Nadu

    ₹25,000 – ₹44,000 per month

    B.Tech/B.E. in Computer Science, Software Engineering or AI

    Exp 0–2 years

  • We are accepting applications for AI Solutions Developers. You will develop AI-powered applications, collaborate with cross-functional teams and implement machine learning models to solve business problems. Strong problem-solving skills are essential.
  • Easy Apply

    Computer Vision Engineer

    Company Code: BSE523

    Chennai, Tamil Nadu

    ₹35,000 – ₹36,000 per month

    B.Tech/B.E., M.Tech in Computer Science, Electrical Engineering or AI related

    Exp 0–2 years

  • Open positions available for junior Computer Vision Engineers. Your work will include image processing, developing object detection models and using frameworks like OpenCV and TensorFlow. Basic knowledge of deep learning is helpful for this role.
  • Easy Apply

    AI Research Analyst

    Company Code: CIN427

    Chennai, Tamil Nadu

    ₹30,000 – ₹50,000 per month

    B.E/B.Tech in Computer Science, Mathematics or Statistics

    Exp 0–2 year

  • Join our team as a AI Research Analyst. You will assist in researching AI algorithms, analyzing data patterns and supporting the development of AI prototypes. This is ideal for candidates eager to explore AI innovation.
  • Easy Apply

    Highlights for Gen AI and Machine Learning Internships in Porur

    Real Time Projects

    • 1. Gain hands-on experience by working on live Gen AI and Machine Learning-based applications.
    • 2. Understand real-world problem-solving through scenarios.
    Book Session

    Skill Development Workshops

    • 1. Participate in focused sessions on trending technologies and tools.
    • 2. Learn directly from industry experts through guided practical exercises.
    Book Session

    Employee Welfare

    • 1. Enjoy benefits like health coverage, flexible hours, and wellness programs.
    • 2. Companies prioritize mental well-being and work-life balance for all employees.
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    Mentorship & Peer Learning

    • 1. Learn under experienced mentors who guide your technical and career growth.
    • 2. Collaborate with peers to enhance learning through code reviews and group projects.
    Book Session

    Soft Skills & Career Readiness

    • 1. Improve communication, teamwork, and time management skills.
    • 2. Prepare for interviews and workplace dynamics with mock sessions and guidance.
    Book Session

    Certification

    • 1. Earn recognized credentials to validate your Gen AI and Machine Learning skills.
    • 2. Boost your resume with course or project completion certificates from reputed platforms.
    Book Session

    Sample Resume for Gen AI And Machine Learning (Fresher)

    • 1. Simple and Neat Resume Format

      – Use a clean layout with clear sections like summary, skills, education, and projects.

    • 2. List of Technologies You Know

      – Mention skills like Machine Learning, Deep Learning, NLP, Computer Vision, Data Preprocessing, Model Evaluation, AI Optimization.

    • 3. Real-Time Projects and Achievements

      – Add 1–2 real-time projects with a short description and the tools used.

    Top Gen AI and Machine Learning Tricky Interview Questions and Answers (2025 Guide)

    Ans:

    Machine learning is a field of artificial intelligence that enables systems to recognize patterns in data and improve performance over time without explicit programming. Models learn from examples and apply that knowledge to make predictions or decisions. This approach allows computers to adapt and become increasingly accurate as more data is processed.

    Ans:

    Machine learning is broadly categorized into supervised learning, unsupervised learning and reinforcement learning. Supervised learning relies on labeled datasets, unsupervised learning identifies patterns in unlabeled data and reinforcement learning optimizes decisions based on rewards. Each method is suited for different types of real-world applications.

    Ans:

    Overfitting occurs when a model learns the training data too precisely, capturing noise as if it were meaningful patterns. This results in poor performance on new or unseen data. Techniques like regularization, cross-validation and expanding the dataset help reduce overfitting and improve the model’s ability to generalize.

    Ans:

    The bias–variance trade-off represents the balance between model simplicity and complexity. High bias leads to underfitting by missing important data patterns, while high variance results in overfitting and poor performance on new data. Maintaining an appropriate balance ensures better accuracy and consistent predictions.

    Ans:

      Cross-validation assesses model performance on unseen data by splitting the dataset into training and testing portions multiple times. This repeated evaluation provides a reliable estimate of how the model performs in real scenarios. It also helps identify overfitting and ensures more robust model performance.

    Ans:

    Feature engineering enhances input data by selecting, transforming, or creating new features to improve learning efficiency. Well-designed features enable algorithms to identify key patterns and relationships more accurately. This process often results in better model performance and faster training times.

    Ans:

    A confusion matrix is a structured table that compares the predicted labels with the actual outcomes of a classification model. It highlights true positives, true negatives, false positives and false negatives. This information helps calculate performance metrics such as accuracy, precision, recall and F1-score.

    Ans:

    Gradient descent optimizes model parameters by minimizing prediction errors. It calculates the slope of the loss function and updates parameters in the direction that reduces the error. Repeated iterations allow the model to learn data patterns and produce more accurate predictions.

    Ans:

    Ensemble learning improves prediction accuracy by combining multiple models instead of relying on one. Techniques like bagging and boosting merge the strengths of individual models to reduce errors and increase stability. This collaborative approach often delivers superior performance across tasks.

    Ans:

    Deep learning uses multi-layer neural networks to process complex, high-dimensional data and automatically extract intricate features. It excels in areas like image, speech and video recognition. Traditional machine learning relies on simpler structures and manual feature engineering, whereas deep learning thrives on large datasets and sophisticated architectures.

    Company-Specific Interview Questions from Top MNCs

    1. How does generative AI differ from conventional machine learning?

    Ans:

    Traditional machine learning focuses on analyzing data to detect patterns and make predictions or support decisions. Generative AI, however, extends this by producing entirely new content such as text, images, or audio based on learned data distributions. While standard models provide classifications or forecasts, generative AI creates original outputs by understanding the underlying structure of the data.

    2. Can supervised and unsupervised learning be explained with simple examples?

    Ans:

    Supervised learning uses labeled data, such as predicting house prices based on known features and historical outcomes. Unsupervised learning, in contrast, works with unlabeled datasets to uncover hidden structures, like clustering customers with similar behaviors. Both approaches are essential for solving different types of problems in intelligent systems.

    3. What is the significance of the Transformer architecture in generative AI?

    Ans:

    The Transformer model leverages self-attention mechanisms to efficiently process sequences and capture long-range dependencies in data. It serves as the foundation for advanced generative AI systems, including GPT, enabling context-aware content generation. Its ability to manage complex relationships makes it highly effective for natural language processing applications.

    4. How does overfitting affect model performance and how can it be avoided?

    Ans:

    Overfitting happens when a model learns the training data too precisely, including irrelevant noise, which reduces its accuracy on new data. Techniques like regularization, cross-validation and expanding the training dataset improve generalization. These methods ensure models perform reliably in real-world situations and make accurate predictions on unseen data.

    5. What are GANs and how do they generate data?

    Ans:

    Generative Adversarial Networks consist of a generator that creates synthetic data and a discriminator that evaluates its authenticity. Through iterative competition, the generator improves over time, producing increasingly realistic outputs. This adversarial process allows GANs to generate high-quality, convincing data for various applications.

    6. How is feature engineering applied in machine learning?

    Ans:

    Feature engineering transforms raw data into meaningful inputs by selecting, modifying, or creating variables that enhance learning. Effective features help algorithms detect important patterns more clearly, improving model accuracy and training efficiency. The strength of feature engineering often determines the overall performance of the final model.

    7. How does fine-tuning pre-trained models benefit generative AI development?

    Ans:

    Fine-tuning adapts a large pre-trained model to a specific task using smaller, targeted datasets. This approach reduces training time and computational costs while enhancing task-specific accuracy. Leveraging pre-existing knowledge allows the model to perform efficiently and accelerates the development of specialized generative AI applications.

    8. What is reinforcement learning and where is it commonly used?

    Ans:

    Reinforcement learning trains agents to make decisions by rewarding correct actions and penalizing incorrect ones. It is widely applied in robotics, gaming systems and recommendation engines to optimize strategies over time. The feedback-driven learning process allows systems to continuously improve and adapt to changing environments.

    9. How can the quality of AI-generated content be measured effectively?

    Ans:

    The effectiveness of AI-generated output can be evaluated using automated metrics like BLEU or ROUGE for text, alongside human assessments for creativity and relevance. Combining quantitative scoring with qualitative judgment provides a comprehensive view of content quality. This ensures the generated results meet practical and functional standards.

    10. What are common challenges when deploying machine learning or generative AI models?

    Ans:

    Deployment challenges include managing system scalability, minimizing latency and addressing ethical concerns such as fairness and privacy. Continuous monitoring is necessary to maintain performance and detect model drift. Additionally, balancing accuracy with computational efficiency is critical for successful real-world implementation.

    1. How does supervised learning differ from unsupervised learning?

    Ans:

    Supervised learning works with labeled datasets, allowing models to learn relationships between inputs and outputs for accurate predictions or classifications. Unsupervised learning operates on unlabeled data to uncover hidden structures like clusters or patterns. It is especially useful for tasks such as segmenting customers based on behavior without predefined categories.

    2. How does transfer learning enhance generative AI models?

    Ans:

    Transfer learning improves performance by adapting a model trained on a large dataset to a smaller, specific dataset. This approach accelerates training, reduces data requirements and helps generative AI systems excel in specialized tasks. It is particularly valuable when limited data is available for the target application.

    3. What is overfitting in machine learning and why is it problematic?

    Ans:

    Overfitting happens when a model memorizes both meaningful patterns and noise in the training data, leading to poor performance on new data. Techniques such as regularization, pruning and cross-validation help maintain a balance between learning and generalization. Preventing overfitting is essential for reliable real-world predictions.

    4. What are GANs and how do they create realistic data?

    Ans:

    Generative Adversarial Networks consist of two neural networks: a generator that produces synthetic data and a discriminator that evaluates authenticity. Through continuous competition, the generator improves over time to create highly realistic outputs. This adversarial process makes GANs effective for applications like image synthesis and data augmentation.

    5. How does reinforcement learning differ from other machine learning approaches?

    Ans:

    Reinforcement learning trains agents to make decisions by interacting with an environment and receiving rewards or penalties based on actions. Unlike supervised learning, it does not rely on labeled data and learns strategies through trial and error. The primary goal is to maximize long-term rewards by identifying optimal behaviors.

    6. What role do attention mechanisms play in transformer models?

    Ans:

    Attention mechanisms allow transformer models to focus on the most important parts of an input sequence. Self-attention helps each element consider relationships with all others, capturing context and dependencies effectively. This mechanism enhances performance in tasks like language understanding, translation and content generation.

    7. How can the effectiveness of a generative model be evaluated?

    Ans:

    The performance of generative models is assessed using numerical metrics like Fréchet Inception Distance and Inception Score for quality and diversity. Human evaluation is also crucial to judge creativity, coherence and usefulness of the generated outputs. Combining both approaches ensures a comprehensive assessment of model performance.

    8. What challenges arise when deploying machine learning models in production?

    Ans:

    Deployment challenges include scaling systems, maintaining low latency and securing sensitive data. Models must be monitored for drift as data patterns evolve, requiring updates to sustain accuracy. Successful deployment depends on robust infrastructure, continuous evaluation and responsible data management practices.

    9. How does feature engineering impact machine learning model performance?

    Ans:

    Feature engineering transforms raw data into meaningful inputs by selecting, modifying, or creating variables that highlight important patterns. Well-crafted features enable algorithms to focus on relevant information, improving accuracy and generalization. Conversely, poorly designed features can limit even advanced models’ effectiveness.

    10. What ethical considerations are important when developing AI systems?

    Ans:

    Ethical AI involves fairness by avoiding biased datasets, transparency in decision-making and protecting user privacy. Systems should be accountable and designed to prevent misuse. Following ethical standards promotes trust, societal acceptance and long-term safety in AI deployments.

    1. How can supervised learning be distinguished from unsupervised learning?

    Ans:

    Supervised learning works with labeled datasets, allowing models to learn the relationship between inputs and outputs for accurate predictions or classifications. Unsupervised learning uses unlabeled data to identify patterns, clusters, or hidden structures. This method is especially helpful for segmenting users or discovering natural groupings within data.

    2. How does transfer learning enhance machine learning models?

    Ans:

    Transfer learning improves model performance by adapting a system trained on a large dataset to a smaller, specialized task. This approach reduces training time, optimizes resource usage and helps models perform effectively even with limited data. Leveraging pre-learned knowledge allows better results in specific applications.

    3. What is overfitting in machine learning and why is it an issue?

    Ans:

    Overfitting occurs when a model captures not only meaningful patterns but also noise and irrelevant details from training data, leading to poor performance on unseen data. Techniques like regularization, pruning and cross-validation mitigate overfitting. Maintaining balance ensures the model generalizes well across different datasets.

    4. What are GANs and how do they operate?

    Ans:

    Generative Adversarial Networks include two neural networks: a generator that produces synthetic data and a discriminator that evaluates its authenticity. These networks train competitively, pushing the generator to produce increasingly realistic outputs. GANs are widely used for image synthesis, data augmentation and creative content generation.

    5. How do attention mechanisms enhance transformer models?

    Ans:

    Attention mechanisms enable transformers to focus on the most relevant parts of an input sequence. Self-attention allows each word or element to reference others, capturing context and relationships efficiently. This capability significantly improves accuracy in tasks such as language understanding, translation and AI content generation.

    6. What role does feature engineering play in machine learning?

    Ans:

    Feature engineering transforms raw data into meaningful inputs by selecting, refining, or creating new variables. Well-designed features help algorithms detect critical patterns, improve prediction accuracy and support better generalization. Poorly chosen features, however, can limit a model’s learning capability.

    7. How is missing data typically handled in datasets?

    Ans:

    Missing data can be addressed through imputation methods like replacing values with the mean, median, or mode, or by using algorithms that manage missing entries naturally. In cases of excessive missing data, removing affected rows or columns may be appropriate. The approach depends on the dataset’s size and the impact of missing information.

    8. How do Random Forest and XGBoost differ in methodology?

    Ans:

    Random Forest builds multiple independent decision trees and averages their results to reduce overfitting and variance. XGBoost constructs trees sequentially, with each tree correcting errors from the previous one, achieving strong predictive accuracy. Both are effective but employ distinct learning strategies for problem-solving.

    9. How is the performance of a machine learning model evaluated?

    Ans:

    Model evaluation depends on the task type. Classification tasks use metrics such as accuracy, precision, recall, F1-score and ROC AUC, while regression tasks rely on measures like mean squared error, mean absolute error and R-squared. These metrics help determine the model’s reliability and suitability for real-world deployment.

    10. What ethical factors should be considered when designing AI systems?

    Ans:

    Ethical AI requires fairness by minimizing bias in training data, transparency in model operations and protection of user privacy. Building accountable and explainable systems ensures trust and prevents misuse. Ethical design aligns AI solutions with societal values and ensures safe, responsible deployment.

    1. How is One-Hot Encoding used in machine learning?

    Ans:

    One-Hot Encoding is a technique that converts categorical data into a binary matrix, where each category is represented as a separate vector. Each vector contains a ‘1’ to indicate the presence of a category, with all other positions set to zero. This approach helps models process categorical attributes without implying any ranking or order.

    2. What is the difference between Lemmatization and Stemming?

    Ans:

    Lemmatization produces the dictionary form of a word by considering grammar and context, ensuring the output is a valid word. Stemming removes prefixes or suffixes to extract the root, which may sometimes create incomplete or incorrect forms. Both aim to simplify words, but lemmatization is more accurate and linguistically aware.

    3. How is conditional probability defined in statistics?

    Ans:

    Conditional probability measures the likelihood of an event occurring given that another event has already occurred. It is calculated as P(A|B) = P(A and B)/P(B), showing how one event affects the probability of another. This concept is vital in machine learning, risk assessment and predictive modeling.

    4. What does overfitting signify in machine learning models?

    Ans:

    Overfitting happens when a model captures both meaningful patterns and random noise from the training data, causing poor performance on new datasets. It usually occurs when the model is excessively complex and memorizes the training set. Techniques like regularization, pruning and cross-validation help reduce overfitting and improve generalization.

    5. How should missing values in datasets be addressed?

    Ans:

    Missing data can be managed by imputing values with the mean, median, or mode, or by using algorithms that handle incomplete inputs. In cases where missing values are extensive or disruptive, removing affected rows or columns is appropriate. The method chosen depends on the size of the dataset and the potential impact on model performance.

    6. What is the trade-off between precision and recall?

    Ans:

    Precision measures the accuracy of positive predictions, while recall evaluates how well all actual positives are identified. Increasing precision can reduce recall and vice versa, creating a balance that must align with business priorities. The choice depends on whether minimizing false positives or false negatives is more important in a given scenario.

    7. How do Random Forest and XGBoost differ in operation?

    Ans:

    Random Forest builds multiple decision trees independently and averages their predictions, reducing variance and providing stable results. XGBoost constructs trees sequentially, with each new tree correcting the errors of previous ones, achieving higher predictive accuracy. Both are ensemble techniques but differ in their approach and optimization methods.

    8. Can you describe an example of a machine learning project?

    Ans:

    One project involved developing a recommendation engine for an e-commerce platform using collaborative filtering. User behavior and preferences were analyzed to provide personalized product suggestions. Matrix factorization techniques were applied to improve efficiency and scalability, resulting in more accurate recommendations.

    9. How can supervised learning be distinguished from unsupervised learning?

    Ans:

    Supervised learning uses labeled datasets to train models that predict outputs based on known input–output pairs, using algorithms like neural networks, SVMs, or regression. Unsupervised learning works with unlabeled data to identify hidden patterns, clusters, or structures and is often used for clustering or dimensionality reduction tasks.

    10. How can categorical features with high cardinality be encoded?

    Ans:

    High-cardinality categorical data requires encoding methods that prevent excessive feature growth. Target encoding replaces each category with a statistical measure from the target variable, reducing dimensionality. Alternatively, dimensionality reduction techniques can be applied after one-hot encoding to maintain efficiency and minimize overfitting risks.

    1. How can Generative AI be explained simply?

    Ans:

    Generative AI refers to models designed to create new content such as text, images, audio, or synthetic data by learning patterns from existing datasets. These systems understand the structure and distribution of data to generate fresh examples that resemble real-world inputs. This technology underpins tools like text-to-image generators, deepfake creators and advanced AI language models.

    2. How do Generative Adversarial Networks (GANs) function?

    Ans:

    GANs consist of two neural networks: a generator that produces synthetic data and a discriminator that evaluates its authenticity. Both networks train together in a competitive process, enhancing the generator’s ability to create realistic samples while refining the discriminator’s detection skills. This adversarial setup results in highly convincing and lifelike outputs.

    3. What distinguishes generative models from discriminative models?

    Ans:

    Generative models learn the joint probability of data and can generate new samples similar to the training set. Discriminative models focus on predicting labels by learning conditional probabilities and class boundaries. While generative models are useful for content creation, discriminative models excel at accurate classification and decision-making tasks.

    4. How does a Variational Autoencoder (VAE) generate data?

    Ans:

    A VAE compresses input data into a compact latent space and reconstructs it back to its original form. This process maintains a smooth and continuous latent representation, allowing the generation of new data points that share characteristics with the training examples. VAEs are widely used for realistic data synthesis and controlled sampling.

    5. What is Transfer Learning in machine learning?

    Ans:

    Transfer learning adapts a pre-trained model to perform a new, task-specific application using less data. By leveraging features learned from a large dataset, the model can achieve higher accuracy with fewer resources. This technique is particularly useful when labeled data for the new task is limited or expensive to obtain.

    6. How is Generative AI applied across industries?

    Ans:

    Generative AI powers applications such as automated content creation, chatbots and real-time language translation. In creative sectors, it is used to produce images, videos and design prototypes that closely mimic human-made work. Its ability to generate lifelike content makes it valuable in marketing, entertainment, digital media and product design.

    7. What role do Latent Variable Models play in generative AI?

    Ans:

    Latent variable models assume that observable data is influenced by hidden factors and capture relationships between seen and unseen variables. These models extract abstract patterns from the latent space, which guide the generation of new content. Techniques like VAEs and GANs rely on latent variables for smooth and controllable output creation.

    8. How does the Attention Mechanism improve Transformer models?

    Ans:

    Attention mechanisms allow models to focus selectively on critical parts of an input sequence while making predictions. In transformers, self-attention enables each token to consider relationships with all other tokens, improving context understanding. This enhances performance in tasks like text generation, translation and comprehension.

    9. What ethical concerns arise with Generative AI?

    Ans:

    Generative AI poses challenges such as bias in generated outputs, lack of transparency and privacy risks. Responsible development requires models to be explainable, accountable and resistant to misuse like misinformation or unauthorized content creation. Addressing these concerns is essential for building trust and safe deployment.

    10. How is the performance of machine learning models measured?

    Ans:

    Model evaluation depends on the task type. Classification tasks use metrics such as precision, recall, accuracy, F1-score and ROC-AUC, while regression tasks rely on R-squared, mean squared error and mean absolute error. These measures provide insight into how well the model predicts outcomes and generalizes to new data.

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    Gen AI and Machine Learning Course FAQs

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    Learning Gen AI and Machine Learning opens opportunities in multiple sectors like healthcare, finance, marketing, automotive and IT. Professionals are in demand for building intelligent systems, analyzing data and automating processes. Popular roles include AI developer, data scientist, ML engineer and automation analyst.
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