Top Gen AI and Machine Learning Course in Chennai ⭐ Placement | 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 Chennai

  • Join Gen AI and Machine Learning Training Institute in Chennai to Gain AI Technologies.
  • Our Gen AI and Machine Learning Training in Chennai Covers DL and Prompt Engineering.
  • Work on Real-time AI Projects and Enhance Your Skills Through Expert Sessions.
  • Choose From Flexible Learning Options: Weekday, Weekend or Fast-track Batches.
  • Earn a Gen AI and Machine Learning Certification in Chennai With 100% Placement Support.
  • Receive Guidance in Portfolio Creation, Interview Readiness and Career Advancement.

WANT IT JOB

Become a AI/ML Developer in 3 Months

Freshers Salary

3 LPA

To

8 LPA

Quality Training With Affordable Fees in Chennai!
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 Chennai offers comprehensive training for freshers seeking a career in artificial intelligence. Our program, recognized as a leading Gen AI and Machine Learning Training provides a robust curriculum designed to build foundational and advanced skills. Upon successful completion, you will receive a Gen AI and Machine Learning Certification enhancing your professional credibility. We also provide dedicated support for Gen AI and Machine Learning Placement, connecting you with top companies in the industry to help you secure a promising career.

What You'll Learn From Gen AI and Machine Learning Training

Gen AI and Machine Learning Course in Chennai provides a comprehensive launchpad, introducing you to cutting-edge concepts like generative models, deep learning and autonomous systems.

Design smart solutions that can learn from data, detect hidden patterns and make predictive decisions using modern ML techniques.

Work with industry-standard tools and frameworks, including Python, TensorFlow, Keras and Hugging Face, to build and deploy intelligent applications.

Master the complete AI development pipeline, from collecting and cleaning data to training, tuning and evaluating high-performing models.

Engage in hands-on projects based on real-world scenarios, gaining experience in applying AI across sectors such as retail, healthcare and finance.

Get a recognized certification under the guidance of AI specialists to prove your proficiency and expand your job options in the field of machine learning and artificial intelligence.

Additional Info

Course Highlights

  • Start Your AI Journey: Master Gen AI, machine learning, deep learning, model training, prompt engineering and intelligent automation all in one career-ready course.
  • Receive personalized job support with placement opportunities from top companies hiring AI and ML professionals.
  • Join a growing community of over 11,000 learners trained and placed through our network of 350+ trusted hiring partners.
  • Learn from seasoned AI experts with over a decade of hands-on experience in artificial intelligence, data science and automation.
  • Access beginner-friendly modules, industry projects and full career mentorship to guide you throughout your learning path.
  • Take advantage of budget-friendly fees, flexible class timings and 100% placement assistance ideal for both fresh graduates and professionals switching careers.

Benefits of Gen AI And Machine Learning Training in Chennai

  • 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 - Sep- 2025
08:00 AM & 10:00 AM
Weekdays
10 - Sep - 2025
08:00 AM & 10:00 AM
Weekends
13 - Sep - 2025
(10:00 AM - 01:30 PM)
Weekends
14 - Sep - 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 Chennai is carefully designed with a comprehensive syllabus ideal for beginners and aspiring AI professionals. Through this course, you will learn fundamental concepts like machine learning algorithms, deep learning, data preprocessing and generative AI models. The Gen AI and Machine Learning Course in Chennai also covers popular tools and frameworks such as TensorFlow, PyTorch and Hugging Face. Students gain practical experience through Gen AI And Machine Learning Internships in Chennai and real-world projects that enhance their skills.

  • 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 and Python
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 Chennai

    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.
    Book Session

    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 Interview Questions and Answers (2025 Guide)

    Ans:

    Computers may learn patterns from data and increase their accuracy without explicit programming thanks to machine learning, a subfield of artificial intelligence. Unlike traditional coding, where every rule is manually written, machine learning models adapt by analyzing examples and making predictions based on experience.

    Ans:

    The three main categories of the machine learning algorithms are reinforcement learning, unsupervised learning and supervised learning. Unsupervised learning uses unlabeled data to uncover hidden patterns, supervised learning trains models using labeled data and reinforcement learning teaches models to make decisions by rewarding or punishing them.

    Ans:

    Poor performance on new data results from overfitting, which occurs when the model learns the training data too thoroughly, including noise or random fluctuations. To avoid this, methods like cross validation, adding regularization or increasing the training dataset can be used to ensure the model generalizes well.

    Ans:

    The bias-variance trade-off describes the balance between a models simplicity (bias) and its complexity (variance). A model with high bias may underfit and miss important patterns while a model with high variance may overfit and fail to generalize. Achieving the right balance improves the models accuracy on new data.

    Ans:

    Cross-validation is a technique to evaluate a models ability to generalize to unseen data. It entails splitting the dataset into several sections using some of them to train the model and others to test it. This process helps ensure that the model’s performance is consistent and not just tailored to the training set.

    Ans:

    Feature engineering is process of selecting, modifying and creating input variables (features) that improve a model’s predictive power. Effective feature engineering helps models learn important patterns more efficiently, often leading to better accuracy and faster training.

    Ans:

    A table that compares the predictions of a classification model with the actual results is called a confusion matrix. It breaks down results into true positives, true negatives, false positives and false negatives, allowing calculation of key metrics such accuracy, precision, recall and F1-score to evaluate performance.

    Ans:

    An optimization technique called gradient descent iteratively updates a models parameters to reduce its error. By calculating the gradient (or slope) of the loss function, it adjusts the parameters in the direction that reduces the error, helping the model learn from data effectively.

    Ans:

    More accurate predictions are made by ensemble learning than by any one machine learning model alone. Techniques like bagging (e.g., Random Forest) and boosting (e.g., AdaBoost) improve accuracy by reducing errors and variance through collective decision-making.

    Ans:

    Deep learning, a specialized branch of machine learning, uses multi layer neural networks to automatically identify complex patterns. To succeed at tasks like picture and speech recognition, it processes enormous amounts of data, unlike classical machine learning, which usually utilizes simpler models with fewer layers.

    Company-Specific Interview Questions from Top MNCs

    1. What distinguishes generative AI from machine learning?

    Ans:

    In general machine learning refers to algorithms that use data to identify patterns in order to predict or decide. Instead than only categorizing or predicting, generative AI, a subtype of machine learning, focuses on producing new data, such writing, graphics or music by learning the underlying data distribution.

    2. Can you explain supervised and unsupervised learning with examples?

    Ans:

    Supervised learning trains models like estimating property values based on features with labeled data. Unsupervised learning works with unlabeled data to find hidden patterns, like clustering customers into groups. Both methods are fundamental in building machine learning models for different tasks.

    3. What role does the Transformer model play in Generative AI?

    Ans:

    The Transformer architecture uses self attention mechanisms to efficiently process sequences of data enabling better context understanding. It forms the backbone of many generative AI models like GPT, allowing these models to generate coherent and contextually relevant content, especially in natural language processing.

    4. How does overfitting affect machine learning models and how can it be prevented?

    Ans:

    When a model learns training data including noise too well, it is said to be overfitting and will not generalize well to new data. Techniques like cross-validation, regularization and increasing training data help prevent overfitting, ensuring the model performs well on unseen data.

    5. What are Generative Adversarial Networks (GANs) and how do they work?

    Ans:

    GANs are made up of two neural networks that compete with one another: the discriminator and the generator. The generator produces fictitious data, while the discriminator attempts to distinguish between the two. This adversarial process helps the generator improve and produce realistic outputs.

    6. Explain the concept of feature engineering in machine learning.

    Ans:

    Feature engineering involves selecting, transforming and creating input variables that improve a model’s performance. Good features help models learn relevant patterns effectively, which is crucial since the quality of features often impacts the success of machine learning projects.

    7. How does fine-tuning a pre trained model benefit Gen AI development?

    Ans:

    Fine-tuning allows developers to adapt a large pre trained model to specific tasks by training it further on smaller datasets. This saves time and computational resources while improving accuracy, as the model already has general knowledge from extensive prior training.

    8. What is reinforcement learning and where is it applied?

    Ans:

    Rewards or penalties are used in the reinforcement learning, a type of machine learning, to train an agent to make decisions. Its widely used in robotics, gaming and recommendation systems to optimize actions over time based on feedback.

    9. What role do recurrent neural networks (RNNs) play in processing sequential data?

    Ans:

    Evaluating generative models involves both automated metrics like BLEU and ROUGE for text and human judgment to assess creativity and coherence. Since generative outputs can be subjective, a combination of quantitative and qualitative evaluation is necessary.

    10. What challenges do you face while deploying machine learning and Gen AI models?

    Ans:

    Deployment challenges include ensuring model scalability latency ethical concerns such as bias and data privacy Continuous monitoring and updating are vital to maintain performance and fairness, while also managing resource constraints in real world environments.

    1. What distinguishes supervised learning from unsupervised learning?

    Ans:

    supervised education Because the input output pairs are known, a model trained on the labeled data can generate predictions or classifications. On the other hand unsupervised learning works with the unlabeled data and seeks to uncover underlying patterns or groupings without predetermined results such grouping clients according to their purchase habits.

    2. How does transfer learning benefit Generative AI models?

    Ans:

    A model trained on a big dataset can be improved on a smaller, task-specific dataset due to transfer learning. This method improves the performance and efficiency of generative models by utilizing the information gathered from the larger dataset, particularly in situations where the amount of data available for the particular task is restricted.

    3. Can you elaborate on the machine learning idea of overfitting?

    Ans:

    A model that overfits is unable to generalize well to new, unknown data because it has learned not just the fundamental patterns in training data but also noise and outliers. Techniques like cross-validation, regularization and pruning are employed to prevent overfitting, ensuring the model performs well on real-world data.

    4. What are Generative Adversarial Networks (GANs) and how do they work?

    Ans:

    A generator that generates fictitious data and a discriminator that assesses its veracity are the two neural networks that make up GANs. These networks are trained simultaneously in a competitive setting, with the generator improving its outputs to deceive the discriminator, leading to the generation of highly realistic data.

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

    Ans:

    An agent that participates in reinforcement learning learns to make decisions by acting in a given environment and getting feedback in form of rewards or penalties. Unlike supervised learning, which uses labeled data to teach the model, reinforcement learning emphasizes learning the best course of action through trial and error in order to maximize cumulative rewards.

    6. What is the role of attention mechanisms in transformer models?

    Ans:

    By focusing on particular segments of the input sequence during prediction, attention mechanisms help models better capture linkages and dependencies in data. In transformer models self-attention allows each word in a sentence to attend to all other words, facilitating better understanding of context and meaning.

    7. How do you evaluate the performance of a generative model?

    Ans:

    Evaluating generative models involves both quantitative metrics and qualitative assessments. Metrics like Inception Score and Fréchet Inception Distance assess the quality and diversity of generated images, while human evaluation is crucial to judge aspects like creativity, coherence and relevance in generated content.

    8. What are some challenges in deploying machine learning models in production?

    Ans:

    Deploying machine learning models presents challenges such as ensuring scalability, managing latency, handling model drift and maintaining data privacy. Models are must be continuously monitored and updated in order to adjust to shifting data patterns and guarantee reliable performance in practical applications.

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

    Ans:

    Feature engineering involves selecting, modifying or creating new input features to improve model performance. Well engineered features can enhance the model's ability to learn relevant patterns, leading to better accuracy and generalization while poor feature selection can hinder the effectiveness.

    10. Which moral issues need to be taken into account while creating AI systems?

    Ans:

    Ethical considerations in AI development include ensuring fairness by avoiding bias in training data, maintaining transparency in model decisions and safeguarding user privacy. Its crucial to design AI systems that are accountable, explainable and aligned with societal values to prevent misuse and promote trust.

    1. How does supervised learning differ from unsupervised learning?

    Ans:

    In supervised learning, the model is taught using data that includes both the inputs and the correct outputs, allowing it to learn to predict or classify future data. On the other hand unsupervised learning works with data has no labels and the goal is to uncover patterns or group similar items like segmenting customers based on buying habits.

    2. How does transfer learning benefit machine learning models?

    Ans:

    Transfer learning enables a model trained on a large dataset to perform better on a smaller task-specific dataset. By using the information collected from the bigger dataset, this strategy enhances model performance and efficiency, especially when data availability is limited for the specific project.

    3. Could you describe machine learning's overfitting concept?

    Ans:

    A model that overfits is unable to generalize well to new, unknown data because it has learned not just the fundamental patterns in the training data also the noise and outliers. Techniques like cross-validation, regularization and pruning are employed to prevent overfitting, ensuring the model performs well on real-world data.

    4. What are Generative Adversarial Networks (GANs) and how do they work?

    Ans:

    A discriminator that assesses the authenticity of the data and a generator that produces fictitious data make up GANs. These networks are trained simultaneously in a competitive setting, with the generator improving its outputs to deceive the discriminator, leading to the generation of highly realistic data.

    5. How do attention mechanisms enhance performance in transformer models?

    Ans:

    By focusing on particular segments of the input sequence during prediction, attention mechanisms models better capture linkages and dependencies in data .In transformer models self attention allows each word in a sentence to attend to all other words facilitating better understanding of context and meaning.

    6. How does feature engineering function in machine learning?

    Ans:

    Feature engineering involves selecting modifying or creating new input features to improve model performance. Well-engineered features can enhance the model's ability to learn relevant patterns, leading to better accuracy and generalization, while poor feature selection can hinder the model's effectiveness.

    7. How is missing data in a dataset handled?

    Ans:

    There are a number of methods for dealing with missing data, such as using algorithms that are naturally able to handle missing data or imputing missing values using the mean, median or mode. Alternatively depending on the amount of missing data and how it affects the analysis, rows or columns with missing values may be eliminated.

    8. How do the Random Forest and XGBoost algorithms vary from one another?

    Ans:

    XGBoost is the gradient boosting algorithm that builds an ensemble of decision trees sequentially, each correcting the errors of its predecessor, leading to high predictive accuracy. Random Forest, in contrast, creates multiple decision trees independently and averages their predictions, reducing variance and preventing overfitting.

    9. How do you evaluate the performance of a machine learning model?

    Ans:

    A range of indicators are used to evaluate the success of a machine learning model, depending on the goal. While mean squared error (MSE), mean absolute error (MAE) and R-squared are standard metrics for regression tasks, metrics like accuracy, precision, recall, F1-score and ROC AUC are frequently employed for the classification tasks.

    10. Which ethical factors need to be considered while creating AI systems?

    Ans:

    Ethical considerations in AI development include ensuring fairness by avoiding bias in training data maintaining transparency in model decisions and safeguarding user privacy. Its crucial to design AI systems that are accountable, explainable and aligned with societal values to prevent misuse and promote trust.

    1. What is One-Hot Encoding (OHE)?

    Ans:

    A method for transforming categorical data into a binary matrix is called one-hot encoding. The binary vectors that represent each category have one 'hot' (1) element and the remaining elements are 'cold' (0). The categories "red," "blue," and "green" in a "color" feature, for example, might be represented by OHE as [1, 0, 0], [0, 1, 0] and [0, 0, 1] accordingly. In machine learning, this approach is frequently used to deal with categorical variables.

    2. What is the difference between Lemmatization and Stemming?

    Ans:

    Lemmatization produces the base or dictionary form of a word while stemming reduces words to their root form. Lemmatization creates a legitimate and logical word by taking into account the words meaning and context. Stemming simply chops off prefixes or suffixes potentially resulting in non-existent words. For example, lemmatization of 'better' would result in 'good', while stemming would reduce it to 'bet'.

    3. What is Conditional Probability?

    Ans:

    The chance of a event happening given that another event has already happened is known as conditional probability. The formula P(A|B) = P(A and B) / P(B) is used to compute it. This concept is fundamental in various fields such as machine learning, statistics and finance, where the probability of an event is influenced by the occurrence of a previous event.

    4. Describe the machine learning concept of overfitting.

    Ans:

    The process of overfitting is when a model learns the noise and outliers in addition to the underlying patterns in the training data, which results in poor generalization on fresh, untested data. Techniques like cross validation, regularization and pruning are employed to prevent overfitting, ensuring the model performs well on real-world data.

    5. How would you respond to a dataset that contains missing data?

    Ans:

    There are a number of methods for dealing with missing data, such as using algorithms that are naturally able to handle missing data or imputing values that are missing using the mean, median or mode. Alternatively, depending on the amount of missing data and how it affects the analysis, rows or columns with missing values may be eliminated.

    6. What are the trade-offs between Precision and Recall?

    Ans:

    Metrics such precision and recall are used to assess how well categorization models work. Recall gauges the capacity to identify every positive case, whereas precision gauges the accuracy of positive predictions. Increasing precision often reduces recall and vice versa. The balance between them depends on the specific application and the cost of false positives and false negatives.

    7. What is the difference between XGBoost and Random Forest algorithms?

    Ans:

    XGBoost is a gradient boosting technique that produces a high predicted accuracy by successively building an ensemble of decision trees, each of which fixes the mistakes of the one before it. Random Forest in contrast creates multiple decision trees independently and averages their predictions, reducing variance and preventing overfitting.

    8. Can you describe the project where you implemented a machine learning model?

    Ans:

    In a recent project developed a recommendation system for an e-commerce platform using collaborative filtering. I used collaborative filtering to analyze user behavior and recommend products. Matrix factorization techniques were implemented to improve recommendation accuracy.

    9. How does supervised learning differ from unsupervised learning?

    Ans:

    In supervised learning, labeled data is used for training a model, while unsupervised learning finds patterns in unlabeled data. Supervised learning requires input-output pairs for training, examples covers linear regression, support vector machines and neural networks. Unsupervised learning clusters data based on similarities or patterns, examples include k-means clustering, hierarchical clustering and principal component analysis.

    10. How would you encode a categorical variable with thousands of distinct values?

    Ans:

    Encoding a categorical variable with a large number of distinct values can be challenging. One approach is to use techniques like target encoding where categories are replaced with the mean of the target variable for that category. Alternatively, dimensionality reduction methods like PCA can be applied after one-hot encoding to reduce the feature space. Careful consideration is needed to avoid introducing noise or overfitting.

    1. What is Generative AI?

    Ans:

    Generative AI refers to models and techniques that create new content images, text, audio or other data resembling the patterns of the training data. Instead of just predicting labels, generative models learn data distributions and can sample from them to produce novel instances. This approach underpins innovations like deepfakes, text-to-image synthesis and large language models.

    2. How does a Generative Adversarial Network (GAN) work?

    Ans:

    The two neural networks are a discriminator and a generator make up a GAN. The generator produces new data instances, while the discriminator evaluates them against real data. Through this adversarial process, both networks improve, with the generator learning to produce more realistic data and the discriminator becoming better at distinguishing real from fake data.

    3. What is the difference between Generative and Discriminative models?

    Ans:

    Generative models are able to produce fresh samples that are comparable to the training data by learning the joint probability distribution p(x) or p(x, y). Discriminative models, on the other hand, learn the conditional probability p(y|x) for classification tasks, focusing on distinguishing between classes without generating new data.

    4. How does a Variational Autoencoder (VAE) function?

    Ans:

    A VAE is a machine learning model that takes data (like an image), compresses it into a small set of numbers and recreates the original data from those numbers. While learning it tries to make the recreated data as close as possible to the original while also organizing the numbers in smooth meaningful way. This allows it to generate new data by sampling these numbers, creating outputs similar to the original examples.

    5. What is Transfer Learning?

    Ans:

    The process of fine-tuning a previously trained model on a fresh dataset is called transfer learning. This strategy makes use of the insights gathered from the broader dataset, improving the performance and efficiency of models, especially when data availability is limited for the specific task.

    6. What are the applications of Generative AI?

    Ans:

    Applications for generative AI are numerous and span several industries. Text generation, language translation and chatbots that can have conversations that resemble those of a human are all applications of natural language processing or NLP It is capable of producing poetry, stories and articles in the content generating process. It can also produce lifelike pictures and films which are useful in the industries like design and entertainment.

    7. What is the role of Latent Variable Models in Generative AI?

    Ans:

    Latent variable models assume observed data is generated from latent (unobserved) factors. By introducing latent variables z, these models define p(x, z) and integrate out z to get p(x). Examples include Variational Autoencoders (VAEs) and Generative Adversarial Networks (GANs), where a latent code controls the generation process. Latent spaces capture abstract features, enabling meaningful manipulation of generated samples.

    8. How does Attention Mechanism enhance Transformer models?

    Ans:

    Attention mechanisms enable models to focus on specific parts of the input sequence making predictions, allowing them to capture dependencies and relationships in data more effectively. In transformer models, self-attention allows each word in a sentence to attend to all other words, facilitating better understanding of context and meaning.

    9. What are the ethical considerations in Generative AI?

    Ans:

    Ethical considerations in Generative AI include ensuring fairness by avoiding bias in training data, maintaining transparency in model decisions and safeguarding user privacy. Its crucial to design AI systems that are accountable, explainable and aligned with societal values to prevent misuse and promote trust.

    10. How is a machine learning model's performance assessed?

    Ans:

    Depending on the objective, different metrics are used to assess a machine learning model's performance. Measures such as ROC-AUC, F1-score, recall, accuracy and precision are frequently employed for classification tasks, whereas R-squared, mean absolute error (MAE) and mean squared error (MSE) are prominent metrics for regression activities.

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    Top Gen AI And Machine Learning Job Opportunities for Freshers

    • 1. AI/ML Developer Jobs at Startups and IT Companies
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    • 4. Apply Through Job Portals
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    Getting Started With Gen AI and ML Training in Chennai

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    You'll receive a certificate proving your industry readiness.Just complete your projects and pass the pre-placement assessment.This certification validates your skills and prepares you for real-world roles.

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    The time needed varies based on your prior knowledge and learning pace. It typically takes three to six months of constant practice for beginners effort, including practice with real datasets. Those with some experience can complete certification in 1 to 3 months. Working on practical projects speeds up the learning process.

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    Gen AI And Machine Learning Course FAQs

    1. What foundational knowledge is needed before starting Gen AI and Machine Learning training?

    You should be familiar with basic Python programming, some mathematics (like algebra and statistics) and have a general idea of what AI does. These essentials help you grasp complex ideas like model building and algorithm tuning more easily. Without this foundation, jumping into advanced concepts may feel overwhelming and confusing.
    These in-demand skills unlock opportunities in diverse fields such as technology, healthcare, finance, marketing, robotics and more. Companies seek professionals who can develop intelligent systems, interpret data and automate tasks, making positions such as machine learning specialist, data scientist or AI engineer highly accessible and rewarding.
    The curriculum explores machine learning, deep learning, neural networks, computer vision, reinforcement learning and natural language processing. It also tackles practical concerns like AI ethics and responsible design. Together these modules help learners build real-world AI solutions while understanding their broader impact and limitations.
    Yes, hands-on projects are an essential component of the learning experience. You’ll work on building chatbots, image recognition models or predictive systems to see how theoretical concepts apply in real-world scenarios. This project-based learning is essential for internalizing skills and building confidence in applying AI solutions.
    Absolutely many programs guide you in assembling a professional portfolio that highlights your projects and code samples. This acts as a concrete demonstration of your abilities and is a powerful tool when interviewing or applying for AI-related roles.
    Anyone with a basic understanding of programming and math whether you're a student, a working professional or switching careers can enroll. The willingness to study is the primary prerequisite and grow in AI field, rather than specific background or degree.
    No formal degree is typically needed this course. These courses usually require basic programming and math knowledge. Many courses also include quick refresher to ensure all learners start with the same foundational understanding.
    Not at all. Most advanced courses include introductory refreshers that help you catch up before diving into deeper topics. This makes the course accessible even if you're new to AI, ensuring you progress smoothly.
    While foundational knowledge is recommended, some advanced courses welcome beginners who are willing to do pre-course self-study. However, starting with a basic AI or Python course may offer a smoother learning journey for absolute beginners.

    1. What type of job support does this Gen AI and Machine Learning course offer?

    Many programs provide comprehensive job assistance, including help with resume writing, interview prep and introductions to recruiters hiring AI professionals. This support significantly boosts your chances of landing a role after completing the course.

    2. Are the projects included in the course genuinely helpful for job applications?

    Yes these projects serve as practical proof of your AI skills. When you add them to your resume or portfolio, they demonstrate your ability to build working AI solutions, setting you apart during interviews and job evaluations.

    3. Can I land jobs at prominent companies after completing this training?

    The skills gained from an advanced Gen AI and Machine Learning course massively improve your prospects of working with top companies in sectors like tech, finance and healthcare. Such organizations seek professionals who can apply AI for innovation and efficiency.

    4. Do these courses offer support specifically for fresh graduates or those changing careers?

    Absolutely many courses provide tailored support for freshers and career switchers including interview coaching and career guidance. They help you position your newly acquired AI skills effectively making job hunt much more manageable.
    Yes most courses award certificate once you complete the training. This credential helps to validate your skills in AI and can be shared on your resume or LinkedIn profile.
    Definitely. A certification showcases your ability to tackle complex AI challenges and makes you more competitive in the market. Employers value certified candidates who demonstrate both skill and commitment to the field.
    You should have basic programming and math understanding and a genuine interest in AI technologies. Even if you're new to AI, many courses begin with foundational content to help you stay aligned as you advance.
    By teaching you how to analyze data, build AI models and automate tasks, this course equips you with essential, high-value skills. These abilities make you a strong candidate for roles that demand innovation and complex problem-solving.
    You’ll learn to use machine learning algorithms, develop neural networks, process language and images and automate workflows using AI tools. You'll also dive into AI ethics and data visualization vital skills for deploying AI responsibly and effectively.

    1. Are job placement services included in the course fee?

    Yes for most advanced programs, the fee covers placement assistance, including resume review, interview preparation and career counseling to land on AI job after completion.
    Course pricing differs based on factors like the instructor experience, curriculum depth, resource availability and personalized support. Higher priced courses often include perks such as 1 on 1 mentoring or lifetime access.
    Many providers offer beginner-friendly pricing models with flexible payment options. Scholarships or discounts may also be available, increasing the accessibility of AI education for a larger audience.
    No pricing is typically standardized, regardless of where you're based. Whether you live in a major city or a remote region, everyone can access the same training at the same rate.
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