FIIT Enquiry Number : +91 86955 77650

Get trained by industry experts with 100% free placement support

For Colleges Enquiry : +91 63823 94148 | Feedback & Grievance: helpdesk.fiit@gmail.com | HR – +91 93611 02101

Machine Learning Training Institute with Certification

100% Job Guarantee ⭐⭐⭐⭐⭐

Master the Latest Technologies and Tools

Get Certified and Boost Your Career Prospects

Secure Your Future with Job Assurance

Course Syllabus

$

Introduction to Machine Learning

$

Fundamentals of Machine Learning

$

Supervised Learning & Unsupervised Learning Techniques

$

Deep Learning and Neural Networks

$

Natural Language Processing (NLP)

$

Advanced Topics :

Reinforcement Learning and Model Deploymen

Machine Learning (ML)

                Machine Learning (ML) is a subfield of artificial intelligence that focuses on developing algorithms and statistical models that enable computers to learn from and make predictions or decisions based on data. Unlike traditional programming, where explicit instructions are provided for every task, machine learning allows systems to improve their performance over time by identifying patterns and relationships within the data. This ability to learn and adapt makes ML a powerful tool for tasks such as image and speech recognition, natural language processing, and predictive analytics.

Why Machine Learning (ML) ?

               Studying Machine Learning is essential because it empowers individuals to create systems that can learn and improve from experience, driving innovation across various fields such as healthcare, finance, and technology. Machine Learning techniques enable the development of predictive models and intelligent systems capable of making data-driven decisions. Understanding Machine Learning opens up opportunities to solve complex problems, enhance business processes, and contribute to advancements in artificial intelligence. As the demand for Machine Learning expertise continues to grow, acquiring these skills ensures a competitive edge in the job market and the ability to stay at the forefront of technological progress.

Quick Enquiry

13 + 14 =

Program Highlights

l

Comprehensive Curriculum

         Explore the foundational and advanced concepts of machine learning, including supervised and unsupervised learning, regression, classification, clustering, and dimensionality reduction. Gain hands-on experience with essential algorithms and techniques such as decision trees, support vector machines, neural networks, and ensemble methods.

Capstone Projects

           Engage in practical projects that allow you to apply machine learning techniques to solve real-world problems. Work on datasets to build predictive models, analyze trends, and develop applications such as recommendation systems, fraud detection systems, and image recognition. Showcase your skills through a portfolio of completed projects.

Industry Experts

         Learn from experienced machine learning practitioners who provide insights into real-world applications and industry best practices. Our instructors share their expertise, helping you understand the challenges and opportunities in the field of machine learning.

Career Support

              Access tailored career services, including resume building, interview preparation, and job placement assistance. Prepare for roles such as machine learning engineer, data scientist, or AI developer in industries that leverage machine learning to drive innovation and decision-making.

Online Classes

Flexibility

       Online classes offer the convenience of learning from anywhere, making them ideal for those with busy schedules or those who prefer to study at their own pace.

Live Sessions & Recordings

      You can attend live virtual sessions and interact with instructors in real-time, or access recorded lectures if you need to review the material.

Technical Requirements

       You’ll need a computer with internet access, a webcam, and relevant software (like JDK, a code editor, etc.) to fully participate in the online course.

Networking

       Online learners can collaborate through virtual group projects, discussion forums, personal mentorship will be followed to guide the student.

Offline Classes

Structured Learning

        In-person classes provide a more traditional, structured learning environment and makes them suitable for those who prefer face-to-face interaction.

Hands-On Guidance

        You’ll receive immediate hands-on guidance from instructors and can collaborate directly with peers on projects.

Access to Facilities

        Offline students have access to campus facilities, including labs, study areas, and additional resources like libraries and technical support.

Networking Opportunities

        In-person classes often provide richer networking opportunities through direct interaction with instructors and industry professionals during events.

(FAQ)

Frequently Asked Questions

1. What core topics are covered in the Machine Learning course?

             The course covers core topics including supervised learning, unsupervised learning, model evaluation, feature selection, algorithm selection, and advanced techniques like ensemble learning and neural networks.

2. Do I need prior experience in programming to take this course?

            Basic programming knowledge is recommended, as the course uses Python for implementing machine learning algorithms. However, the course includes introductory programming concepts if needed.

3. Which machine learning frameworks and libraries will be used?

             The course uses popular machine learning frameworks and libraries such as Scikit-learn, TensorFlow, Keras, and PyTorch to build, train, and evaluate machine learning models.

4. How does the course address practical implementation of machine learning models?

             The course emphasizes practical implementation through hands-on projects, coding assignments, and case studies that involve building and deploying machine learning models on real-world datasets.

5. What is the focus on model evaluation and performance metrics in the course?

             The course covers model evaluation techniques including cross-validation, performance metrics like accuracy, precision, recall, F1 score, ROC curves, and confusion matrices to assess model effectiveness.

6. Will there be a focus on feature engineering and data preprocessing?

             Yes, the course includes comprehensive modules on feature engineering and data preprocessing, teaching techniques for handling missing values, encoding categorical variables, scaling features, and selecting relevant features.

Students

Testimonials