Machine Learning Training in Rajaji Nagar

  • Tailored Interview Prep for Machine Learning Roles.
  • Affordable Machine Learning Courses Tailored for All Levels.
  • Access to Online Materials, Video Lectures, and Mock Interviews.
  • Certified Machine Learning Professional With 8+ Years Experience.
  • Partnered With 300+ Hiring Companies & 12,000+ Trained Candidates.
Hands On   40+ Hrs
Projects   4 +
Placement Support   Lifetime Access
3K+

Course Fees on Month ₹8999 ₹18000
(Lowest price in chennai)

See why over 25,000+ Students choose ACTE

Machine Learning Course Curriculam

Curriculam Designed By Experts

Expertly designed curriculum for future-ready professionals.

Industry Oriented Curriculam

An exhaustive curriculum designed by our industry experts which will help you to get placed in your dream IT company

  •  
    30+  Case Studies & Projects
  •  
    9+  Engaging Projects
  •  
    10+   Years Of Experience
  • Overview of Machine Learning
  • Types of Machine Learning algorithms
  • Applications of Machine Learning in various domains
  • Introduction to Python and popular ML libraries
  • NumPy, Pandas, and scikit-learn
  • Data cleaning and handling missing values
  • Data transformation techniques (scaling, normalization)
  • Feature selection and engineering
  • Exploratory Data Analysis (EDA) using visualizations
  • Linear Regression
  • Logistic Regression
  • Decision Trees and Random Forests
  • Support Vector Machines (SVM)
  • Naive Bayes Classifier
  • K-Means Clustering
  • Hierarchical Clustering
  • Principal Component Analysis (PCA)
  • Association Rule Learning (Apriori algorithm)
  • Anomaly detection
  • Training and testing datasets
  • Cross-validation techniques
  • Evaluation metrics (accuracy, precision, recall, F1-score)
  • Confusion matrix and ROC curves
  • Bias-Variance tradeoff
  • Bagging and Random Forests
  • Boosting and AdaBoost
  • Stacking and Blending
  • Hyperparameter tuning
  • Model selection techniques
  • Introduction to Neural Networks
  • Activation functions
  • Backpropagation and Gradient Descent
  • Convolutional Neural Networks (CNNs)
  • Recurrent Neural Networks (RNNs)
  • Image Classification
  • Object Detection and Localization
  • Natural Language Processing (NLP)
  • Sequence-to-Sequence Models
  • Generative Adversarial Networks (GANs)
  • Markov Decision Processes (MDPs)
  • Q-Learning and Value Iteration
  • Policy Gradient Methods
  • Deep Q-Networks (DQN)
  • Applications of Reinforcement Learning
  • Transfer Learning
  • Explainable AI and Interpretability
  • Time Series Analysis
  • Autoencoders and Variational Autoencoders
  • Model Deployment and serving with cloud platforms
  • Show More

    Machine Learning Course Projects

    Become a Machine Learning Expert With Practical and Engaging Projects.

    •  
      Practice essential Tools
    •  
      Designed by Industry experts
    •  
      Get Real-world Experience

    Iris Flower Classification

    Use the famous Iris dataset to classify flowers based on their features. K-Nearest Neighbors (k-NN), Decision Trees.

    Handwritten Digit Recognition

    Implement a model to classify digits from the MNIST dataset using neural Networks and convolutional Neural Networks.

    House Price Prediction

    Predict house prices based on various features (size, location, etc.). Linear Regression, Decision Trees.

    Image with CIFAR-10

    Classify images from the CIFAR-10 dataset into 10 different categories using Convolutional Neural Networks (CNNs) and Transfer Learning.

    Customer Segmentation

    Use clustering techniques to segment customers based on their purchasing behaviour. K-Means Clustering, Hierarchical Clustering.

    Predicting Stock Prices

    Use historical stock price data to predict future prices. LSTM (Long Short-Term Memory) networks, Time Series Analysis.

    Speech Recognition System

    Build a model to translate audible words into written language. Natural Language Processing (NLP), Recurrent Neural Networks (RNNs).

    Recommender System

    Build a system that recommends products based on user preferences. Collaborative Filtering, Matrix Factorization.

    Self-Driving Car Simulation

    Simulate a self-driving car using reinforcement learning in a virtual environment. Reinforcement Learning, Computer Vision.

    Key Features

    Practical Training

    Global Certifications

    Flexible Timing

    Trainer Support

    Study Material

    Placement Support

    Mock Interviews

    Resume Building

    Batch Schedule

    Weekdays Regular (Class 1Hr - 1:30Hrs) / Per Session

    • 17-Mar-2025 Starts Coming Monday ( Monday - Friday) 08:00 AM (IST)
    • 19-Mar-2025 Starts Coming Wednesday ( Monday - Friday) 10:00 AM (IST)

    Weekend Regular (Class 3Hrs) / Per Session

    • 15-Mar-2025 Starts Coming Saturday ( Saturday - Sunday) 10:00 AM (IST)

    Weekend Fast-track (Class 6Hrs - 7Hrs) / Per Session

    • 16-Mar-2025 Starts Coming Saturday ( Saturday - Sunday) 10:00 AM (IST)

    Enquiry Form

    Top Placement Company is Now Hiring You!
    • Learning strategies that are appropriate and tailored to your company's requirements.
    • Live projects guided by instructors are a characteristic of the virtual learning environment.
    • The curriculum includes of full-day lectures, practical exercises, and case studies.

    Machine Learning Course Overview

    What goals are achieved in a Machine Learning Course?

    Typically, students in a machine learning course seek to accomplish a number of important objectives, including mastery of the basic ideas and algorithms of the field, hands-on practice implementing models using programming languages and libraries (such as scikit-learn and Python), and development of abilities in feature selection, data preprocessing, and model evaluation. Students also get better at interpreting data, learn how to apply machine learning techniques to real-world issues, and understand the ethical implications of AI technologies. Ultimately, the course equips students to develop, evaluate, and use machine learning models efficiently efficiently.

    Future works for Machine Learning

    • Explainable AI: Developing models that make predictions and provide understandable explanations for their decisions enhances trust and transparency.
    • Federated Learning: Enabling decentralized model training across multiple devices while maintaining data privacy, allowing for better personalization without compromising sensitive information.
    • Automated Machine Learning (AutoML): Creating tools that automate the selection of models and hyperparameters, making machine learning more accessible to non-experts.
    • Integration with Edge Computing: Deploying machine learning models on edge devices (like smartphones and IoT devices) to enable real-time processing and reduce latency.

    What new Machine Learning frameworks are there?

    Recent years have seen the emergence of several new machine learning frameworks that improve performance and versatility. PyTorch Lightning makes PyTorch code easier to understand and handle complicated models for both production and research purposes. TensorFlow 2.0 is much more user-friendly and eager to execute, making it ideal for novices. To enable quick prototyping, especially for deep learning jobs, Fastai expands upon PyTorch. JAX provides automatic differentiation and high-performance numerical computing, which makes it perfect for machine learning and physics research. Furthermore, frameworks facilitating model portability across platforms include ONNX (Open Neural Network Exchange). When used together, these frameworks facilitate many applications and speed up development.

    Trends and Techniques used in Machine Learning

    • Ethical AI: Increasing focus on fairness, transparency, and accountability in machine learning models to mitigate bias and ensure equitable outcomes.
    • Multimodal Learning: Integration of different types of data (e.g., text, images, audio) into a single model to enhance understanding and performance.
    • Transfer Learning: Leveraging pre-trained models on new tasks to improve performance and reduce training time is particularly effective in deep learning.
    • Reinforcement Learning: Training models through trial and error in an environment to optimize decision-making processes, used in applications like robotics and game playing.

    Machine Learning Uses

    To promote efficiency and creativity, machine learning is used in many different sectors. It supports personalized medicine by helping with disease diagnosis. Risk assessment and fraud detection are improved in the financial sector. Retailers employ it to segment their consumer base and provide tailored recommendations, and marketers utilize it for sentiment analysis and targeted ads. AI-powered cars, smart home appliances, and sophisticated natural language processing software, such as chatbots, are also powered by machine learning. It is a useful tool in many industries, changing the way companies function and engage with their clientele thanks to its capacity to evaluate big datasets and identify trends.

    Add-Ons Info

    Career Opportunities  After Machine Learning

    Machine Learning Engineer

    A machine learning engineer is responsible for developing, constructing, and putting into practice machine learning models and algorithms to tackle difficult problems. The engineer processes data, enhances model performance.

    Data Scientist

    Data scientists examine large, complicated databases to glean useful insights and shape corporate strategy. They use statistical and machine learning methodologies to create predictive models and carry out tests.

    AI Research Scientist

    AI Research Scientists carry out cutting-edge research to further machine learning and artificial intelligence. They create novel approaches to challenging issues, investigate novel algorithms and methodologies.

    Deep Learning Engineer

    A deep learning engineer's speciality is creating and deploying deep learning models—like neural networks—for a range of uses, including computer vision and natural language processing. Their main areas of concentration are performance tuning.

    Machine Learning Product Manager

    A machine learning product manager is the liaison between technical teams and business stakeholders. They select features, provide the vision for the product, and ensure that machine learning solutions support organizational objectives.

    Computer Vision Engineer

    Computer vision engineers create models and algorithms to enable robots to interpret and comprehend visual data from the outside world. Their areas of expertise include video analysis, object detection, and picture recognition.


    Skill to Master
    Data Preprocessing
    Statistical Analysis
    Algorithm Development
    Feature Engineering
    Model Evaluation
    Programming Proficiency
    Data Visualization
    Deep Learning
    Problem-Solving
    Domain Knowledge
    Deployment Skills
    Collaboration and Communication
    Show More

    Tools to Master
    TensorFlow
    PyTorch
    scikit-learn
    Keras
    Pandas
    NumPy
    Matplotlib
    Seaborn
    Apache Spark
    RapidMiner
    H2O.ai
    Jupyter Notebook
    Show More
    Our Instructor

    Learn from certified professionals who are currently working.

    instructor
    Training by

    Karan , having 9 yrs of experience

    Specialized in: Machine Learning Deployment, Cloud Computing, Automated Machine Learning (AutoML), and Big Data Technologies.

    Note: Karan is experienced in deploying machine learning models in cloud environments, focusing on scalability and efficiency. His practical insights into cloud platforms and deployment strategies make him a valuable instructor for students looking to implement their models in real-world applications.

    Job Assistant Program

    We are proud to have participated in more than 40,000 career transfers globally.

    Machine Learning Certification

    Certificate
    GET A SAMPLE CERTIFICATE
  • Enhanced Job Prospects
  • Skill Validation
  • Career Advancement
  • Up-to-Date Knowledge
  • Professional Credibility
  • Networking Opportunities
  • Google Professional Machine Learning Engineer
  • Microsoft Certified Azure AI Engineer Associate
  • IBM Data Science Professional Certificate
  • AWS Certified Machine Learning
  • Certified Machine Learning Professional (CMLP)
  • Certification in machine learning can help you get work, but it is not guaranteed. Employers consider practical experience, problem-solving abilities, and pertinent projects more important than knowledge and dedication.

    Many machine learning certifications are available. Many professionals choose to diversify their skill sets, become more marketable, and become competent in other disciplines.

  • Machine Learning Engineer
  • Data Scientist
  • AI Specialist
  • Data Analyst
  • Research Scientist
  • Software Developer
  • Quantitative Analyst
  • Many Machine Learning certification exams are available online, allowing you to take them at your convenience from anywhere. Various platforms and institutions offer remote proctoring, ensuring the integrity of the exam while providing flexibility in scheduling.

    Although it is not necessarily required, real-world experience can be quite helpful in obtaining a certification in machine learning. Numerous certification programs are made to be beginner-friendly and to provide fundamental knowledge.

    If the training matches your expectations and the certification program fits your professional goals, then getting the ACTE Machine Learning Certification can be worthwhile.

    Show More

    Frequently Asked Questions

    • It is possible to attend a demo session before enrolling in a course. Many institutions provide trial courses so prospective students can experience the curriculum, teaching methodology, and course structure. One such institution is ACTE Course Institute. Before registering, you can ascertain whether the course aligns with your expectations and learning objectives. Asking questions helps you learn the teacher's style and the nature of the classroom environment.
    • The highly skilled faculty at ACTE Course Institute has vast experience in various fields, such as software development, cloud computing, data science, machine learning, and more. Every teacher has years of experience in the industry and academia, enabling them to offer practical insights and real-world applications in their instruction.
    • Students at ACTE Course Institute receive placement aid. The institute assists students in landing jobs in their professions by offering advice on job search tactics, CV development, and interview techniques. Additionally, they work with business partners and build an employer network to help graduates find internships and jobs. With this help, students will be better equipped to join the workforce, and their employability will increase.
      • Completion Certificate
      • Professional Certification
      • Academic Certificates
    • As part of their training, students at the ACTE Course Institute can perform real-world projects. These assignments give students practical experience and the capacity to apply their theoretical understanding to real-world situations. Students gain practical skills by working on real projects, improving their comprehension of the subject matter, and constructing a portfolio highlighting their qualifications to future employers.

    STILL GOT QUERIES?

    Get a Live FREE Demo

    • Flexibility: Online, weekends & more.
    • Hands-on: Projects & practical exercises.
    • Placement support: Resume & interview help.
    • Lifelong learning: Valuable & adaptable skills.
    • Full curriculum: Foundational & advanced concepts.

    Enquiry Now