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Artificial Intelligence: X

Professional Certification in AI

This program equips you with the fundamental skills you will need as an AI Scientist / Engineer. This is the first certification of our three part Master Series in AI.

You will become familiar with and gain expertise in regression and classification models. You will then learn about Neural Networks. Then, on to image processing with Convolutional Neural Networks.

At the end of this course, you will be able to train a variety of advanced neural network models, and apply them to image recognition and other problems.

You will now be ready to read research papers, and succeed in entry-level to intermediate AI and ML jobs.

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Applications opening soon

Starts

To be decided
Self-paced

Duration

12 Weeks

Format

Live Online
Online

Time Investment

10 to 15 hours per week
Online

Fee

INR 30,000

(Interest free EMI available)

Registration closes

To be decided

Master Series

Course Outcome

After successfully completing the program, you will be:

1. Able to run a variety of advanced neural network models on your own
2. Awarded the Professional Certification in Artificial Intelligence
3. Eligible to attend the Artificial Intelligence: Y program, the second part of the 3-part Master Series
4. Prepared to pursue advanced learning (graduate and above) studies in AI and Machine Learning
5. Eligible for junior to intermediate positions in industry

Who should apply

Prerequisites

Anyone who seeks to learn machine learning and Artificial Intelligence, and who has the necessary prerequisites. The course is however tailored to students as well as working professionals, who have some background in maths as well as programming.

See if you are ready

1. Basic statistics and mathematics (upto probability distributions, linear algebra and univariate calculus)
2. Working knowledge of python as represented by the subjects in python-preparator.
3. You can, at your option, either take the above free course and pass it, or test into AI: X.

Program Structure

Live online classes
1. Live Online Classes

Bi-weekly lessons with labs and quizzes

Mentorship
2. Mentor-Supported

Ten or more hours/week to interact with an experienced & accomplished mentor

Module end Project
3. End-of-Module Project

Complex problems that challenge you to apply what you learned

Capstone
4. Capstone

10–12 week long Capstone Project with one of our partner companies or faculty

Program Faculty

Dr. Pavlos Protopapas

Professor, Harvard University

Pavlos is the Scientific Program Director, Institute for Applied Computational Science (IACS) at Harvard University, and leads the data science masters program at Harvard.

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Topics Covered

Module 1

kNN Regression and Linear Regression
Multi-Regression, Polynomial-Regression, Model Selection using Train/Validation and Cross Validation
Inference in Linear Regression
Regularization: Ridge & Lasso Regressions
Logistic Regression
Metrics and Data Imbalance, Precision, and Recall
Neural Networks 1 - Perceptron and MLP, Anatomy of Neural Networks and Design Choices
Neural Networks 2 - Fitting Neural Networks

Project Week

Module 2

Introduction, Review of Feed Forward Network Networks (Network Architecture and Design Choices)
Backpropagation and Optimizers
Regularization for Neural Networks, Early Stopping, Data Augmentation, Dropout, and Batch Normalization
Convolutional Neural Networks: Basic Concepts and Architectures
Receptive Fields, Strides and Saliency Maps
Convolutional Neural Networks: State of the Art CNNs
Neural Net Transfer Learning
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Project Week

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Financial Assistance

Interest free EMI

Our programs are priced for access, and are affordable for most around the world who seek the best training in sought after areas like AI and Data Science. For those who might still need financing, we have EMI payments available.

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And we'll give you both Amazon vouchers worth ₹ 5,000

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Frequently Asked Questions

What is the Master Certification Series: AI?

It is a 3-part series where each program leads to an individual certification. 

  • Level: X is for beginners in AI
  • Level: Y is for advanced learners in AI
  • Level Z: Is for expert level practitioners

You can take these programs consecutively or at your own pace.

What are the prerequisites for the program?

We welcome students from all academic backgrounds pursuing undergraduate programs and also those who are working, and have a deep interest in AI and Machine Learning. Knowledge of a minimum of high school level mathematics and basic python programming is important for this program.

What are the resources I can avail if I don’t fulfill the prerequisites?

Our Foundations program will help you prepare for the AI:X program and get you ready to build your skill sets in Artificial Intelligence. The course is self paced and is available absolutely free.

I already know the basics of AI and Machine Learning. Can I still take this program?

If your basics are strong, and you are familiar with topics covered with AI:X, you can directly take the Artificial Intelligence: Y program which is the second part of the Master AI series.

I am an experienced developer and I wish to pivot into AI. Can I take this program?

Yes, provided you meet the course prerequisites. We welcome both students and working professionals from all academic backgrounds in our programs.

I am interested in higher studies in AI. Should I take this program?

This program is an ideal stepping stone to a top tier university. The program will equip you to read, interpret, and apply concepts in most leading-edge academic papers; and enable you to conduct original research in your area of interest. Our internationally renowned faculty will fully support your applications to major graduate programs.

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