fbpx


Mentor Based

Machine Learning and AI Fundamentals

Empower Your Future with Machine Learning and AI Fundamentals: Unlocking the Potential of Tomorrow’s Technology Today.

Enroll now for early access of e-LMS

MODE
Online/ e-LMS
TYPE
Mentor Based
LEVEL
Advanced
DURATION
6 Weeks

About

The Machine Learning and AI Fundamentals course offers a comprehensive introduction to the core principles of machine learning and artificial intelligence. Designed for AI professionals, this course covers supervised and unsupervised learning techniques, neural networks, deep learning, and natural language processing. Through a blend of engaging video lectures, interactive coding sessions, and real-world projects, participants will gain hands-on experience and practical skills, preparing them to excel in the AI industry.

Aim

To equip AI professionals with essential machine learning and AI skills, enabling them to innovate and excel in their careers.

Program Structure

Introduction to Machine Learning and AI

  • Overview of Machine Learning and AI.
  • Historical Context and Evolution.
  • Key Terminologies and Concepts.

Supervised Learning

  • Linear Regression and Classification.
  • Decision Trees and Random Forests.
  • Support Vector Machines (SVM).
  • Model Evaluation and Performance Metrics.

Unsupervised Learning

  • Clustering Algorithms (K-means, Hierarchical).
  • Dimensionality Reduction Techniques (PCA, LDA).
  • Anomaly Detection.

Neural Networks and Deep Learning

  • Introduction to Neural Networks.
  • Deep Learning Fundamentals.
  • Convolutional Neural Networks (CNN).
  • Recurrent Neural Networks (RNN).
  • Transfer Learning.

Natural Language Processing (NLP)

  • Text Preprocessing and Tokenization.
  • Sentiment Analysis.
  • Topic Modeling.
  • Sequence Models and LSTM.
  • Transformer Models and BERT.

Practical Machine Learning

  • Working with Python and Jupyter Notebooks.
  • Using TensorFlow and Keras for Model Building.
  • Implementing PyTorch for Advanced Deep Learning.
  • Utilizing scikit-learn for Machine Learning Algorithms.

Participant’s Eligibility

  • Senior undergraduates and graduate students in Computer Science and related fields.
  • Professionals in IT, data science, and software development looking to enhance their AI skills.

Program Outcomes

  • Gain a strong foundation in machine learning and AI principles.
  • Develop proficiency in supervised and unsupervised learning techniques.
  • Acquire hands-on experience with neural networks and deep learning models.
  • Learn to implement natural language processing applications.
  • Master the use of key machine learning libraries and frameworks such as TensorFlow, Keras, PyTorch, and scikit-learn.
  • Complete real-world projects that demonstrate your ability to apply machine learning concepts.
  • Earn a certificate of completion recognized by industry leaders, enhancing your professional credentials.

Fee Structure

Fee:       INR 10,999             USD 164

We are excited to announce that we now accept payments in over 20 global currencies, in addition to USD. Check out our list to see if your preferred currency is supported. Enjoy the convenience and flexibility of paying in your local currency!

List of Currencies

Batches

Spring
Summer

Live

Autumn
Winter

FOR QUERIES, FEEDBACK OR ASSISTANCE

Contact Learner Support

Best of support with us

Phone (For Voice Call)


WhatsApp (For Call & Chat)

Key Takeaways

Program Deliverables

  • Access to e-LMS
  • Real Time Project for Dissertation
  • Project Guidance
  • Paper Publication Opportunity
  • Self Assessment
  • Final Examination
  • e-Certification
  • e-Marksheet

Future Career Prospects

  • Machine Learning Engineer: Design and implement machine learning models and algorithms.
  • Data Scientist: Analyze and interpret complex data to help companies make informed decisions.
  • AI Researcher: Conduct research to advance the field of artificial intelligence.
  • AI Developer: Build and deploy AI applications and systems.
  • NLP Specialist: Develop solutions for natural language processing tasks such as text analysis and speech recognition.
  • Business Intelligence Analyst: Use AI and machine learning to drive business strategies and optimize operations.

Enter the Hall of Fame!

Take your research to the next level!

Publication Opportunity
Potentially earn a place in our coveted Hall of Fame.

Centre of Excellence
Join the esteemed Centre of Excellence.

Networking and Learning
Network with industry leaders, access ongoing learning opportunities.

Hall of Fame
Get your groundbreaking work considered for publication in a prestigious Open Access Journal (worth ₹20,000/USD 1,000).

Achieve excellence and solidify your reputation among the elite!


×

Related Courses

program_img

Python for Data Science

Recent Feedbacks In Other Workshops

Please prepare better material with both foundamentals on the topics and manifacturing processes. More It was not a good idea to just use existing slides from other presentations put together.
Other sources for informations should also be presented for self tuition

GC Faussone : 2025-01-23 at 10:09 pm

great knowledge about topic.


Mr. Pratik Bhagwan Jagtap : 2025-01-22 at 7:29 pm

In general, it seems to me that the professor knows his subject very well and knows how to explain More it well.
CARLOS OSCAR RODRIGUEZ LEAL : 2025-01-20 at 8:07 am

View All Feedbacks

Still have any Query?