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AI and Machine Learning Course in Chennai

(4.8) 18475 Ratings
  • Join the AI and Machine Learning Training in Chennai to develop automation, predictive models, and intelligent solutions.
  • Learn key tools and frameworks including Python, TensorFlow, Keras, and Scikit-learn.
  • Work on real-time AI and Machine Learning projects involving data analysis, model training, and deployment tasks.
  • Ideal for students, developers, analysts, and professionals aspiring to build careers in AI.
  • Enroll at our AI and Machine Learning training institute in Chennai with weekday, weekend, and fast-track batches.
  • Receive full support for placement assistance, interview preparation, and certification guidance.

Course Duration

55+ Hrs

Live Project

3 Project

Certification Pass

Guaranteed

Training Format

Live Online (Expert Trainers)
Quality Training With Affordable Fee

⭐ Fees Starts From

INR 38,000
INR 18,500

12057+

Professionals Trained

10+

Batches every month

3075+

Placed Students

265+

Corporate Served

What You'll Learn

The AI and Machine Learning Course in Chennai is designed to give you practical knowledge of modern technologies.

You’ll discover the fundamentals of AI and Machine Learning with real-world examples and easy-to-follow exercises.

The course helps you build intelligent applications that solve business problems using data and insights.

Get hands-on training in creating, testing, and deploying models for different industries.

Our AI and Machine Learning Training in Chennai offers expert guidance with flexible learning options.

On completion, you receive certification that strengthens your career opportunities in AI and ML.

An Complete Overview of AI and Machine Learning Training

The AI and Machine Learning Course in Chennai is designed to help learners build strong skills in artificial intelligence and machine learning. Our AI and Machine Learning training in Chennai covers core concepts like predictive analytics deep learning Computer vision and NLP with an emphasis on applications. Through hands-on projects and interactive sessions, you will get hands-on experience with well-known tools like Keras and Python TensorFlow. The AI and Machine Learning Certification Course validates your expertise and prepares you for in-demand roles like Data Scientist, Machine Learning Engineer or AI Specialist. Whether you are a beginner exploring new career opportunities or a professional looking to upgrade your skills this AI and Machine Learning course offers flexible learning modes with both self-paced and instructor-led training options. By enrolling in our AI and Machine Learning training You improve not just your technical abilities but also boost your professional possibilities with industry-relevant knowledge and a globally recognized certification.

Additional Info

Future Trends for AI and Machine Learning Course

  • Integration of Generative AI in Training: In the future, generative AI will be given more attention in AI and machine learning training, allowing students to comprehend how models such as diffusion networks and GPT produce new content. The main goal of the training programs is to teach students how to create, optimize, and use generative models for fields including marketing, healthcare, and entertainment. Training will become more applied as a result of this change, going from theory to practical generative projects. Professionals can solve ethical issues and unleash creativity by understanding how to use generative AI responsibly. This guarantees that students are ready for the increasing demand in fields that rely heavily on creativity and data.
  • Emphasis on Responsible AI and Ethics: The necessity of ethical AI will be emphasized more and more in training programs as AI use spreads across industries. Future training programs in AI and machine learning will teach students how to create impartial, transparent, and equitable models. The training will be practical by using case studies to illustrate the advantages & disadvantages of AI in the real world. This guarantees that professionals are both technically proficient and socially conscious in their work. Students will get the confidence to create solutions that adhere to commercial and regulatory norms by concentrating on responsible AI. In the end, this strategy increases user and AI technology trust.
  • Real-Time AI with Edge Computing: Future training will incorporate lessons focused on how the deployment of AI is changing due to the emergence of edge computing. Students will learn how AI models may be directly taught and operated on smart sensors, smartphones, and Internet of Things devices. This facilitates real-time decision-making, enhances privacy, and lowers latency. Practical examples of how AI at the edge drives autonomous cars, smart cities, and healthcare monitoring will be covered in the training. Professionals can develop effective and scalable AI solutions for the upcoming technological age by grasping this trend. This focus ensures career readiness for roles that bridge AI with embedded systems.
  • AI-Driven Automation in Businesses: AI is being quickly adopted by organizations to automate processes, and training programs will increasingly reflect this demand. Students will learn how AI can improve customer service through chatbots and virtual assistants, automate tedious jobs, and streamline workflows. Real-world simulations where students create and implement automation pipelines will be incorporated into future programs. Professionals will be ready for positions in sectors like banking, retail, and logistics thanks to this. Training guarantees that students acquire both technical and business problem-solving abilities by placing a strong emphasis on automation. This movement creates opportunities for lucrative job options that emphasize creativity and efficiency.
  • AI in Cybersecurity and Threat Detection: As digital threats grow, future AI and Machine Learning training will cover the use of AI in cybersecurity. Students will be exposed to methods like anomaly detection fraud prevention and predictive analytics for security monitoring. Training will include live examples of how AI identifies vulnerabilities and responds to threats in real-time. This equips professionals with dual skills in both AI and security making them highly valuable to organizations. By focusing on this trend, learners prepare for one of the most critical and fast-growing areas in technology. The demand for AI-driven security experts will only rise in the coming years.
  • Industry-Specific AI Applications: Training in the future will focus on industry-specific uses of AI and machine learning rather than remaining generic. With the help of diagnostic tools, fraud detection in banking, and precision farming in agriculture, learners will investigate how artificial intelligence is revolutionizing these sectors. Customized projects will be incorporated into training programs to provide students with experience relevant to the business. This guarantees that students gain real-world experience that directly meets corporate demands. Professionals can increase their competitiveness in specialized job paths by becoming proficient in specific AI applications. Training is extremely useful for success in the real world because of this industry-focused approach.
  • Focus on Natural Language Processing (NLP): Future training programs will delve deeper into the field of natural language processing, which is quickly emerging as the foundation of AI-driven communication. In order to create human-like interactions, learners will research conversational AI, machine translation, and sentiment analysis. Building language models, recommendation engines, and chatbots are examples of practical tasks. This equips experts to handle the growing need for customer engagement solutions driven by AI. Learners can work on cutting-edge advancements in voice recognition, digital assistants, and content customisation by becoming proficient in natural language processing. This pattern guarantees that AI training stays closely related to the demands of contemporary communication.
  • AI for Data-Centric Decision Making: Data-driven approaches, where data quality is just as crucial as algorithms, will be the focus of AI training in the future. Before using machine learning models, learners will become proficient in gathering, cleaning, and evaluating huge datasets. The training will emphasize practical applications in business intelligence, supply chain, and retail. Students will get an understanding of how insights inform strategic choices by working with actual datasets. This gives experts the confidence they need to tackle challenging business issues. One of the most important differentiators in future employment will be the capacity to integrate data with AI.
  • Personalized Learning with AI Tools: AI-powered customisation will improve training in AI and machine learning in the future. Adaptive platforms will help learners by suggesting projects, lessons, and study routes based on their individual development. This guarantees that training becomes more effective, interesting, and in line with personal objectives. Instant feedback from AI tutors and virtual labs will enable students to overcome obstacles more rapidly. The way AI is changing education in general is reflected in this individualized approach. Students that participate in AI-driven learning acquire knowledge and hands-on experience with the tools they will eventually use.
  • AI in Sustainability and Green Tech: Future AI training will incorporate classes on green technologies, since sustainability is becoming a more important global concern. Students will investigate how AI might support renewable energy systems, minimize waste, and optimize energy use. Resource optimization, climate modeling, and smart grids are a few examples of training programs. This gives students the tools they need to further their careers and support sustainable business practices. Professionals can align with enterprises seeking eco-friendly solutions by becoming proficient in AI for sustainability. This tendency guarantees that AI training will continue to be important for both commercial expansion and global effect.

Key Tools and Technologies of AI and Machine Learning Course

  • Python: Most AI and machine learning training methods are built on top of Python due to its ease of use and robust library ecosystem. It provides powerful data processing frameworks like NumPy, Pandas and Scikit-learn. It is perfect for both novices and experts since learners can rapidly prototype and test algorithms. Python's community guarantees a wealth of educational materials and real-world examples. It is the best option for anyone beginning their AI adventure because of its versatility.
  • TensorFlow: One of the most popular frameworks for creating deep learning and artificial intelligence models is TensorFlow, which was created by Google. It enables students to create neural networks, train models, and effectively implement them on many platforms. Because of its great scalability, the tool can be used for projects ranging from research to applications at the production level. TensorBoard its visualization tool facilitates real-time tracking of training performance. TensorFlow offers both flexibility and sophisticated features for anyone seeking training in AI and machine learning.
  • Keras: Neural network development and training are made easier with Keras, a high-level deep learning API. It is easy for beginners to use and strong for more experienced students because it operates smoothly on top of TensorFlow. Learners can easily construct prototypes and test out various architectures because to its user-friendly design. The tool is frequently used to teach deep learning topics in AI training systems. It is a useful addition to any AI and ML curriculum because of its robust performance and ease of use.
  • PyTorch: Another popular framework for deep learning and AI research is PyTorch, which was created by Facebook renowned for its dynamic computation graph and adaptability it’s popular among researchers and developers alike. Its advantages for real-time experimentation and simple debugging are advantageous to learners. It also supports a large variety of models. For those who want to create creative solutions, PyTorch is an essential tool for AI and machine learning training.
  • Scikit-learn: Scikit-learn is a Python-based library designed for classical machine learning algorithms. It offers tools for regression, classification, clustering and model assessment which makes it a flexible option for training. Learners may quickly apply machine learning algorithms to real datasets using its easy-to-use API. Additionally, the library facilitates pipeline construction and preprocessing for organized processes. Because of its ease of use, novices can understand important ideas without encountering difficult learning curves.
  • Jupyter Notebook: Students can write, run, and view code step-by-step in the interactive Jupyter Notebook environment. Because it works well with libraries like TensorFlow and Pandas and supports Python it is frequently used in AI training. Alongside code students can record their learning process, resulting in a smooth workflow. Understanding is improved by its real-time display of outputs, graphs, and charts. An indispensable training tool for practice and project development is the Jupyter Notebook.
  • RapidMiner: RapidMiner is a robust platform that doesn't require a lot of code for data science and machine learning tasks. With its drag-and-drop interface, students can experiment with various models and visualize workflows. The tool is frequently used in AI training to teach ideas like evaluation, modeling, and data preprocessing. Although it offers sophisticated functionality for experts its user-friendly design makes it appropriate for novices. Students can focus more on ideas and less on using RapidMiner for grammar.
  • MLlib for Apache Spark: A scalable library for big data machine learning is Apache Spark's MLlib. It enables students to effectively apply machine learning techniques while working with large datasets. Real-time analytics and distributed computing are introduced during training with Spark MLlib. Students getting ready for jobs in data-intensive industries will find it very helpful. Professionals may manage projects that involve more than just small-scale experimentation with the help of Spark MLlib.
  • IBM Watson: IBM Watson is a leading AI platform offering cloud based tools for building intelligent applications. Learners in AI training can explore Watson’s capabilities in natural language processing, image recognition, and predictive analytics. The platform offers pre-trained models that improve comprehension and cut down on development time. It is very relevant for students because of its real-world applications in retail and healthcare finance. IBM Watson gives students the tools they need to develop AI-powered business solutions.
  • Google Cloud AI Platform: A stable environment for creating and implementing machine learning models at scale is offered by Google Cloud AI Platform. Learners can experience cloud-based model training and explore automation tools that simplify workflows. It supports integration with TensorFlow, PyTorch and other frameworks making it highly versatile. Training programs often include Google Cloud AI to teach deployment and scalability. By mastering this platform, learners become job-ready for cloud-focused AI roles.

Roles and Responsibilities of AI and Machine Learning Course

  • Data Analyst: In AI and machine learning training, a data analyst's primary responsibility is to gather, clean, and analyze data in order to derive insights. They learn how to use tools like Python, SQL, and visualization platforms to make data useful for business choices. Training enables them to work well with both structured and unstructured datasets. They also learn how to make reports and dashboards that show trends and patterns. Analysts that are proficient in these duties aid firms in better understanding their data. For those who like using logic and mathematics to solve problems, this position is perfect.
  • Machine Learning Engineer: To address challenging issues, a machine learning engineer creates, develops, and implements machine learning models. They concentrate on model optimization, neural networks, and algorithms during training. Among their duties is making sure the models are effective, scalable, and prepared for production. Additionally, they work along with analysts and developers to incorporate solutions into business systems. Through practical experience students get ready for jobs that require both applied intelligence and coding. The ideal candidates for this professional path are individuals who wish to design practical AI solutions.
  • AI Consultant: An AI consultant is an essential component of guiding businesses on how to adopt AI technologies effectively. In training learners gain exposure to industry case studies, problem-solving methods, and strategy building. Their responsibility is to evaluate business needs and recommend suitable AI-driven solutions. Consultants also act as a bridge between technical teams and decision-makers. This ensures businesses invest in the right AI initiatives with measurable value. For learners this role builds both technical expertise and strong communication skills.
  • Research Scientist: Research Scientists in AI and Machine Learning focus on developing new algorithms and pushing the boundaries of innovation. Training prepares them with knowledge in deep learning, reinforcement learning and natural language processing. Their responsibility involves experimenting, publishing research, and testing new approaches. They frequently collaborate with R&D teams at IT businesses or academic institutions. Strong mathematical backgrounds and a love of ongoing research are prerequisites for this position. It is appropriate for students who wish to influence the development of AI technologies.
  • Data Scientist: To find hidden patterns and provide predictive insights, a data scientist uses machine learning models. Learners concentrate on model creation, advanced analytics, and data pretreatment during training. It is their duty to convert unprocessed data into strategies that organizations may implement. Additionally they work with stakeholders to match corporate goals with AI solutions. Data scientists frequently operate in a variety of sectors, including retail, healthcare, and finance. For students who want to combine data management with decision-making, this position is ideal.
  • Business Intelligence Developer: A Business Intelligence Developer in AI training focuses on designing data-driven dashboards and reports. They learn how to apply machine learning outputs into visual insights for stakeholders. One of their duties is to make sure AI findings are seamlessly incorporated into current business processes. Additionally covered in the training are reporting technologies like Tableau, Power BI, and SQL. This position serves as a link between commercial decision-makers and technical AI teams. It is appropriate for students who want to make non-technical consumers understand AI discoveries.
  • NLP Engineer: Developing applications that process and comprehend human language is the area of expertise for an NLP engineer. Training equips students with machine translation, chatbot, and sentiment analysis skills. Their job is to create AI systems that can read, understand and respond to written or spoken language. They frequently work on text analytics, voice assistants and customer support bots. Strong programming abilities and linguistic comprehension are prerequisites for this position. It gives students the chance to work on AI projects that have a significant impact.
  • Computer Vision Engineer: A Computer Vision Engineer develops AI models that analyze and interpret images or videos. Training introduces learners to concepts like object detection, facial recognition, and image classification. Their responsibility is to create solutions for industries such as healthcare, security and automotive. They also learn to work with frameworks like OpenCV, TensorFlow and PyTorch. Computer Vision Engineers are critical in projects like self-driving cars and smart surveillance. This role is suitable for learners who are visually creative and technically inclined.
  • AI Project Manager: From idea to the end, an AI project manager ensures that AI-driven projects adhere to business goals. They get project management abilities as well as the foundations of AI through training. They are in charge of coordinating with clients, business stakeholders, and technical teams. They also oversee resources, keep tabs on developments, and guarantee that AI projects are finished on schedule. Leadership, communication, and technical knowledge of AI are necessary for this position. For students who wish to blend administrative knowledge with cutting-edge technologies, it is perfect.
  • AI Trainer / Educator: The primary goal of an AI trainer or educator is to instruct professionals and students on AI and machine learning ideas. They get both technical proficiency and instructional strategies from training. They are in charge of creating courses, giving lectures, and guiding students. In order to stay up with emerging technology and market trends, they also update their content. This function is crucial in forming the next generation of AI professionals. It suits learners who enjoy sharing knowledge and guiding others in their career journey.

Top Companies Hiring AI and Machine Learning Professionals

  • Google: Google has led the way in AI advancement constantly seeking professionals skilled in AI and Machine Learning training. The company focuses on areas like natural language processing, computer vision, and deep learning. With products such as Google Cloud AI, TensorFlow and Google Assistant it requires talent capable of building scalable AI systems. Training equips professionals to contribute to these high-impact projects. Google offers some of the most exciting career opportunities for AI specialists worldwide.
  • Microsoft: Microsoft makes significant investments in AI through its enterprise products, Office 365 upgrades, and Azure AI platform. To create intelligent applications and cloud-based AI services, the company is looking for experts with training in AI and machine learning. To provide AI-powered business solutions, roles are distributed among development, consulting, and research teams. Training ensures that candidates are knowledgeable in Python, Azure ML and deep learning frameworks. Microsoft is a top employer for AI-driven roles in research and applied technologies.
  • IBM: IBM continues to lead in AI through its Watson platform and enterprise AI solutions. To create apps for retail, healthcare and finance company employs experts with skills in AI and machine learning. Their responsibilities frequently include large-scale machine learning deployment, NLP, and predictive analytics. Professionals with a solid technical background and business acumen are highly valued by IBM. It gives students the chance to work on initiatives that promote global innovation.
  • Amazon: Among the biggest employers is Amazon. It seeks candidates with AI and Machine Learning training to build recommendation engines, predictive systems and intelligent automation. The company emphasizes scalability making skills in frameworks like PyTorch and TensorFlow valuable. Professionals here work on projects that impact millions of users daily. Amazon is a leading choice for anyone aiming to apply AI on a massive scale.
  • Accenture: Accenture integrates AI across consulting, digital transformation and automation services. It requires AI and Machine Learning training professionals to advise clients and implement AI solutions across industries. Professionals here contribute to projects involving business process automation, customer insights, and predictive modeling. Their ability to apply AI to actual business needs is ensured via training. Accenture provides a range of chances to collaborate on innovative AI initiatives with clients throughout the world.
  • Infosys: Infosys invests in AI through its Nia platform and digital transformation solutions. The company hires professionals with AI and Machine Learning training to deliver end-to-end automation and analytics solutions. Roles often involve AI-driven consulting, data engineering, and model deployment. Infosys values professionals who can integrate AI into enterprise workflows. For learners, it offers a strong pathway to work on innovative projects for global clients.
  • Wipro: Wipro is another IT major currently employing experts with AI and Machine Learning training experience. It makes use of AI in fields including cloud computing, business intelligence, and digital operations. Here, experts develop artificial intelligence (AI) systems that improve productivity and judgment. They can use technologies like cognitive automation and predictive analytics with the right training. Wipro provides a platform for using AI across multiple industries.
  • TCS (Tata Consultancy Services): One of the biggest IT companies in India TCS is a top employer of AI specialists. The business uses AI in supply chain optimization, healthcare, and finance. In order to develop intelligent business platforms and analytics solutions, it looks for applicants with training in AI and machine learning. Professionals that receive training are guaranteed to be able to use contemporary frameworks to create scalable systems. For AI specialists seeking international exposure, TCS provides robust career advancement opportunities.
  • Deloitte: Deloitte integrates AI into its consulting and advisory services to support digital transformation. The company looks for professionals with AI and Machine Learning training to design customized business solutions. Projects often include predictive modeling, fraud detection and customer experience enhancement. Training gives candidates the right mix of technical and consulting skills for these roles. Deloitte provides opportunities to work at the intersection of business strategy and advanced AI technologies.
  • NVIDIA: NVIDIA, a pioneer in deep learning research and AI hardware, is looking for experts in machine learning and AI training. AI training and machine learning. Its main areas of interest are GPU-powered AI, autonomous cars, and advanced neural network research. Professionals must develop, optimize, and scale AI models using NVIDIA hardware and software. Candidates can acquire the technical depth required for this cutting-edge setting with the aid of training. For individuals who are enthusiastic about the future of AI-driven technology, NVIDIA offers fascinating positions.
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AI and Machine Learning Training Objectives

To start an AI and Machine Learning course, learners are encouraged to have a basic understanding of mathematics, statistics, and programming concepts. Familiarity with Python, data handling, and logical problem-solving makes learning smoother, though beginners can still progress with proper guidance.
This training helps you build strong technical skills in algorithms, data processing, and predictive modeling. It boosts your problem-solving abilities, equips you with project-based experience, and prepares you for diverse roles in technology, business, and research domains.
Demand for AI and machine learning is very strong as organizations are shifting toward data-driven strategies. Professionals with these skills are considered valuable assets since companies across sectors rely on AI for innovation, efficiency, and competitive growth.
Yes, the course emphasizes hands-on learning with live projects, case studies, and industry-based scenarios. This approach helps learners apply concepts practically, gain confidence and solve real business challenges using AI and ML techniques.
  • AI-powered automation in industries
  • Advancements in healthcare and diagnostics
  • Smart business decision-making with predictive analytics
  • Autonomous systems like robotics and self-driving cars
  • Innovation in finance, retail, and supply chain optimization
  • Introduction to AI concepts
  • Python programming for AI
  • Data preprocessing and visualization
  • Machine learning algorithms
  • Neural networks and deep learning
  • Natural Language Processing (NLP)
  • IT and Software Development
  • Healthcare and Life Sciences
  • Finance and Banking
  • E-commerce and Retail
  • Manufacturing and Supply Chain
  • Automotive and Robotics
Our AI and Machine Learning Training comes with 100% placement assistance, ensuring you receive full support in landing your desired role. With hands-on industry projects, expert mentorship, and recognized accreditation you acquire the abilities to stand out to recruiters and secure high-demand positions in top companies.
  • Builds strong programming and data handling skills
  • Enhances problem-solving and analytical thinking
  • Provides exposure to real-world applications
  • Strengthens your professional profile with certification
Participants will work with tools like Python, TensorFlow, Keras, Scikit-learn, and Jupyter Notebooks. They will also explore data visualization tools such as Matplotlib and Power BI, ensuring they are equipped for both analysis and model building.
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AI and Machine Learning Course Benefits

The AI and Machine Learning Certification Course in Chennai offers learners hands-on experience with real-world projects, algorithms and data-driven modeling. Participants gain practical exposure through AI and Machine Learning internship in Chennai that build industry-ready skills. The AI and Machine Learning course covers essential concepts like predictive analytics, deep learning, and model deployment under expert guidance. Completing this program opens doors to top IT roles with AI and Machine Learning Course with placement support, ensuring a smooth start to your AI career.

  • Designation
  • Annual Salary
    Hiring Companies
  • 3.24L
    Min
  • 6.5L
    Average
  • 13.5L
    Max
  • 4.50L
    Min
  • 8.5L
    Average
  • 16.5L
    Max
  • 4.0L
    Min
  • 6.5L
    Average
  • 13.5L
    Max
  • 3.24L
    Min
  • 6.5L
    Average
  • 12.5L
    Max

About AI and Machine Learning Certification Training

Our AI and Machine Learning Course in Chennai provides in-depth knowledge of algorithms, predictive modeling, and intelligent system design. Through hands-on AI and Machine Learning projects, you acquire hands-on experience in model construction, implementation, and data analysis. The AI and Machine Learning training course is designed by industry experts to equip you with the skills required for high-demand roles. With 100% placement support, We make sure you’re ready to start a lucrative career in AI and ML.

Top Skills You Will Gain
  • Algorithm Design
  • Feature Engineering
  • Model Optimization
  • Big Data
  • Cloud Computing
  • Reinforcement Learning
  • Data Wrangling
  • Tensor Processing

12+ AI and Machine Learning Tools

Online Classroom Batches Preferred

Weekdays (Mon - Fri)
25 - May - 2026
08:00 AM (IST)
Weekdays (Mon - Fri)
27 - May - 2026
08:00 AM (IST)
Weekend (Sat)
29 - May - 2026
11:00 AM (IST)
Weekend (Sun)
30 - May - 2026
11:00 AM (IST)
Can't find a batch you were looking for?
₹38,000 ₹18,500 10% OFF Expires in

No Interest Financing start at ₹ 5000 / month

Corporate Training

  • Customized Learning
  • Enterprise Grade Learning Management System (LMS)
  • 24x7 Support
  • Enterprise Grade Reporting

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Empowering Learning Through Real Experiences and Innovation

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AI and Machine Learning Course Curriculam

Trainers Profile

Our AI and Machine Learning Course in Chennai is run by professionals with a wealth of AI experience algorithms, predictive modeling and real-world problem solving. The program emphasizes practical applications, ensuring learners gain hands-on experience with data analysis and model development. We provide comprehensive AI and Machine Learning training materials to guide your learning and reinforce key concepts. These resources help you build practical skills implement intelligent solutions and excel in high-demand AI roles.

Syllabus for AI and Machine Learning Training Download syllabus

  • History of AI
  • Types of AI: Narrow, General and Super AI
  • Machine Learning vs Traditional Programming
  • Applications of AI in Industries
  • Overview of AI and ML workflow
  • Python fundamentals
  • Data types and structures
  • Functions and loops
  • File handling
  • Libraries for AI: NumPy, Pandas
  • Data collection techniques
  • Handling missing values
  • Data normalization and scaling
  • Encoding categorical data
  • Feature selection methods
  • Data visualization techniques
  • Matplotlib and Seaborn usage
  • Correlation and covariance
  • Identifying outliers
  • Summary statistics
  • Linear regression
  • Logistic regression
  • Decision trees
  • Random forest
  • Support Vector Machines (SVM)
  • Clustering techniques: K-Means, Hierarchical
  • Dimensionality reduction
  • Principal Component Analysis (PCA)
  • Anomaly detection
  • Association rule learning
  • An overview of neural networks
  • Activation and perceptron functions
  • Backpropagation
  • CNNs, or convolutional neural networks
  • Neural networks that recur (RNN)
  • Text preprocessing
  • Tokenization and stemming
  • Sentiment analysis
  • Bag-of-Words and TF-IDF
  • Word embeddings
  • Preprocessing images
  • Detecting objects
  • Classification of images
  • Fundamentals of OpenCV
  • Convolutional processes
  • Training and testing split
  • Accuracy, precision, recall
  • Confusion matrix
  • Cross-validation
  • Hyperparameter tuning
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Industry Projects

Project 1
Healthcare Predictive Analytics

Create an AI model to evaluate patient information and forecast the likelihood of disease. In order to provide practical insights for enhancing patient care the research focuses on early detection using vital statistics, lifestyle data, and historical medical information.

Project 2
Traffic Prediction in Real Time

Create a machine learning system that uses historical patterns and real-time sensor data to predict traffic flow. By using predictive modeling, the initiative makes smart route optimization possible, eases traffic, and improves urban mobility.

Project 3
Quality Inspection Using Images

Develop a computer vision model to identify manufacturing product flaws automatically. Through picture analysis, the system detects irregularities and guarantees superior results cutting down on manual inspection time and increasing productivity.

Our Hiring Partner

Exam & AI and Machine Learning Certification

  • Basic understanding of mathematics and statistics
  • Familiarity with programming languages, preferably Python
  • Knowledge of data structures and algorithms
  • Basic knowledge of data analysis and visualization
  • Logical thinking and problem-solving skills
An AI and Machine Learning certification validates your skills in building predictive models, designing intelligent systems and applying advanced algorithms. It enhances your credibility with employers increases your job opportunities, and equips you with practical experience to tackle real-world problems effectively.
This Certification can fully guarantee employment, completing an AI and Machine Learning program with hands-on projects and expert guidance significantly improves your chances. With 100% placement support, learners gain assistance in interviews, resume building and securing high-demand AI roles.
  • Data Scientist
  • Machine Learning Engineer
  • AI Consultant
  • NLP Engineer
  • Computer Vision Specialist
  • AI Research Scientist
Gaining practical experience and in-demand technical abilities with this certification increases your marketability. It opens doors to specialized AI roles boosts your confidence in handling complex projects, and positions you for accelerated career growth in emerging technology sectors.

Our learners
transformed their careers

35 Laks
Highest Salary Offered
50%
Average Salary Hike
30K+
Placed in MNC's
15+
Year's in Training
Our Alumni
Alumni

A majority of our alumni

fast-tracked into managerial careers.

Get inspired by their progress in the Career Growth Report.

Our Student Successful Story

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How are the AI and Machine Learning Course with LearnoVita Different?

Feature

LearnoVita

Other Institutes

Affordable Fees

Competitive Pricing With Flexible Payment Options.

Higher AI and Machine Learning Fees With Limited Payment Options.

Live Class From ( Industry Expert)

Well Experienced Trainer From a Relevant Field With Practical AI and Machine Learning Training

Theoretical Class With Limited Practical

Updated Syllabus

Updated and Industry-relevant AI and Machine Learning Course Curriculum With Hands-on Learning.

Outdated Curriculum With Limited Practical Training.

Hands-on projects

Real-world AI and Machine Learning Projects With Live Case Studies and Collaboration With Companies.

Basic Projects With Limited Real-world Application.

Certification

Industry-recognized AI and Machine Learning Certifications With Global Validity.

Basic AI and Machine Learning Certifications With Limited Recognition.

Placement Support

Strong Placement Support With Tie-ups With Top Companies and Mock Interviews.

Basic Placement Support

Industry Partnerships

Strong Ties With Top Tech Companies for Internships and Placements

No Partnerships, Limited Opportunities

Batch Size

Small Batch Sizes for Personalized Attention.

Large Batch Sizes With Limited Individual Focus.

Additional Features

Lifetime Access to AI and Machine Learning Course Materials, Alumni Network, and Hackathons.

No Additional Features or Perks.

Training Support

Dedicated Mentors, 24/7 Doubt Resolution, and Personalized Guidance.

Limited Mentor Support and No After-hours Assistance.

AI and Machine Learning Course FAQ's

Certainly, you are welcome to join the demo session. However, due to our commitment to maintaining high-quality standards, we limit the number of participants in live sessions. Therefore, participation in a live class without enrollment is not feasible. If you're unable to attend, you can review our pre-recorded session featuring the same trainer. This will provide you with a comprehensive understanding of our class structure, instructor quality, and level of interaction.
All of our instructors are employed professionals in the industry who work for prestigious companies and have a minimum of 9 to 12 years of significant IT field experience. A great learning experience is provided by all of these knowledgeable people at LearnoVita.
  • LearnoVita is dedicated to assisting job seekers in seeking, connecting, and achieving success, while also ensuring employers are delighted with the ideal candidates.
  • Upon successful completion of a career course with LearnoVita, you may qualify for job placement assistance. We offer 100% placement assistance and maintain strong relationships with over 650 top MNCs.
  • Our Placement Cell aids students in securing interviews with major companies such as Oracle, HP, Wipro, Accenture, Google, IBM, Tech Mahindra, Amazon, CTS, TCS, Sports One , Infosys, MindTree, and MPhasis, among others.
  • LearnoVita has a legendary reputation for placing students, as evidenced by our Placed Students' List on our website. Last year alone, over 5400 students were placed in India and globally.
  • We conduct development sessions, including mock interviews and presentation skills training, to prepare students for challenging interview situations with confidence. With an 85% placement record, our Placement Cell continues to support you until you secure a position with a better MNC.
  • Please visit your student's portal for free access to job openings, study materials, videos, recorded sections, and top MNC interview questions.
LearnoVita Certification is awarded upon course completion and is recognized by all of the world's leading global corporations. LearnoVita are the exclusive authorized Oracle, Microsoft, Pearson Vue, and AI and Machine Learning exam centers, as well as an authorized partner of AI and Machine Learning. Additionally, those who want to pass the National Authorized Certificate in a specialized IT domain can get assistance from LearnoVita's technical experts.
As part of the training program, LearnoVita provides you with the most recent, pertinent, and valuable real-world projects. Every program includes several projects that rigorously assess your knowledge, abilities, and real-world experience to ensure you are fully prepared for the workforce. Your abilities will be equivalent to six months of demanding industry experience once the tasks are completed.
At LearnoVita, participants can choose from instructor-led online training, self-paced training, classroom sessions, one-to-one training, fast-track programs, customized training, and online training options. Each mode is designed to provide flexibility and convenience to learners, allowing them to select the format that best suits their needs. With a range of training options available, participants can select the mode that aligns with their learning style, schedule, and career goals to excel in AI and Machine Learning.
LearnoVita guarantees that you won't miss any topics or modules. You have three options to catch up: we'll reschedule classes to suit your schedule within the course duration, provide access to online class presentations and recordings, or allow you to attend the missed session in another live batch.
Please don't hesitate to reach out to us at contact@learnovita.com if you have any questions or need further clarification.
To enroll in the AI and Machine Learning at LearnoVita, you can conveniently register through our website or visit any of our branches in India for direct assistance.
Yes, after you've enrolled, you will have lifetime access to the student portal's study materials, videos, and top MNC interview questions.
At LearnoVita, we prioritize individual attention for students, ensuring they can clarify doubts on complex topics and gain a richer understanding through interactions with instructors and peers. To facilitate this, we limit the size of each AI and Machine Learning Service batch to 5 or 6 members.
The average annual salary for AI and Machine Learning Professionals in India is 3 LPA to 9 LPA.
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