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Applied Data Science - AI/ML & GenAI

Applied Skills

15 modules

Hinglish

Certificate of completion

Lifetime access

Master the art of applying machine learning algorithms to real-world problems

Overview

In this comprehensive course on "Applied Data Science - AI/ML & GenAI," you will dive deep into the world of data science, artificial intelligence (AI), machine learning (ML), and generative artificial intelligence (GenAI). The course is designed to equip you with the practical knowledge and skills needed to apply data science techniques, AI algorithms, ML models, and GenAI technology in real-world scenarios. You will learn how to collect, analyze, and interpret data using various tools and techniques. In the AI component of the course, you will explore the principles of artificial intelligence, including machine learning, deep learning, natural language processing, computer vision, and more. You will also gain hands-on experience in building AI models and algorithms to solve complex problems. The ML portion of the course will cover the fundamentals of machine learning, including supervised learning, unsupervised learning, reinforcement learning, and neural networks. You will learn how to train ML models, evaluate their performance, and deploy them in production environments. Moreover, the course will introduce you to the emerging field of generative artificial intelligence (GenAI), where you will learn how to create AI systems that can generate new content, such as images, text, music, and more. You will explore cutting-edge techniques in Generative Adversarial Networks (GANs), variational autoencoders, and other GenAI models. By the end of the course, you will have a solid understanding of how to apply data science, AI, ML, and GenAI techniques to tackle real-world problems and drive innovation in various industries. Whether you are a beginner or an experienced professional looking to upskill, this course will provide you with the knowledge and tools needed to excel in the field of data science and artificial intelligence.

Key Highlights

Learn advanced data science techniques

Master artificial intelligence and machine learning

Explore the fascinating field of GenAI

Hands-on projects and real-world applications

Understanding of algorithms and models

Practical experience with AI tools

Develop AI/ML skills for various industries

Interactive sessions and expert instructors

What you will learn

Understanding Applied Data Science

Explore the foundations and principles of applied data science in AI, ML, and GenAI technologies.

Implementing AI and ML Techniques

Learn to implement advanced AI and ML techniques to analyze data sets and derive insights and predictions.

Leveraging Generative AI

Discover the capabilities of Generative AI and its applications in various domains for creative and innovative solutions.

Modules

Introduction

1 attachment • 33.62 mins

All About course - Watch before enrolling the course

Preview

Data Understanding

16 attachments

All about Data Analysis : Pandas Session - 1

All about Data Analysis : Pandas Session - 2

Numpy in depth

Pandas Notebook

Data Visualization Technique - Exploratory Data Analysis - I

EDA Notebook

Data Visualization Technique - Exploratory Data Analysis - II

EDA notebook 2

Project - I : Data Analyst

Retail_data_analysis_notebook

Retail_DATA

Analyst Interview - I

DATA ANALYSIS USING PANDAS

[Revision - 1] - How to perform data analysis

data_retail_walmat([Revision - 1] - How to perform data analysis)

Data_Analyst_Interview_Questions

Basic Math

16 attachments • 12 mins

Linear Algebra - I

Linear Algebra - II

Linear Algebra - ||| (Code)

Probability and Statistics - I

Probability and Statistics - II

Calculus - 1

Calculus - 2

Calculus - 3

Calculus - 4

Calculus - 5

Calculus - 6

Calculus - 7

Calculus - 8

Calculus - 9

Calculus - 10

Calculus - 11

Models : Zero level understanding

3 attachments

Simple mathematical models

Model warm-up : KNN basics

Simple_Mathematcal_model

Applied Machine learning

47 attachments • 5 hrs

Deep dive into KNN

Building Machine learning solution using KNN algorithm

ML Algorithms Different Cases - I

ML Algorithms Different Cases - II

ML Algorithms Different Cases- III

Performance Metrics - I

Performance Metrics - II

Logistic Regression - I

Logistic Regression - II

L2 Regularization : How to avoid overfitting

Logistic Regression: Code

GridSearch & RandomSearch : How to optimized parameters

Mini Project : Loan Approval Prediction - End to End implementation - I

Loan-Approval-Code-1

Mini Project : Loan Approval Prediction - End to End implementation - II

Loan_approval_final - II

Naive Bayes Algorithm - Basics ( What is conditional probability, bayes theorem)

Preview

What kind of problems we can solve using Naive bayes algorithm

Preview

Math behind Naive bayes - I

Preview

Math behind Naive bayes - II

Preview

Naive Bayes issue: Why we do Laplace smoothing

Preview

Naive bayes issue : Numerical stability issue

Preview

Naive Bayes : Hands-on Code

Nive_bayes_code_notebook

Introduction to Decision tree

Preview

What is Decision tree : How it is different from other algorithm

Preview

What is Entropy

Preview

What is information gain

What is gini impurity

How to construct three in Decision Tree

Hand-on Decision tree implementation

Decision Tree Learning material [Optional]

Hands-on : Decision Tree Code

How we split numerical feature in DT

Is feature scaling needed in DT

Overfitting and underfitting in DT

How DT will behave in different cases

What are Ensembles

What is bagging techniques and how it work internally

Some advantages of Bagging Technique

Introduction to Random Forest algorithm

What is OOB

Preview

Random Forest code walk through

Boosting vs bagging

Boosting in depth

Residules_Loss_Function

GBDT_XGBoost_code

Introduction to NLP

16 attachments • 3 hrs

What is NLP

Problem Statement : What problem we are solving to learn NLP

Preview

Text input : How to formulate given problem into ML/DL Problem

Preview

Why to convert input text into vector or numerical form

Preview

What is Bag of Word : Vectorization technique - I

Preview

why pre-processing needed before vectorization

Preview

What is stemming and lemmatization

What is TF-IDF : Vectorization technique-2

Preview

Hands-on : Text preprocessing

Code_Text_preprocessing

what is unigram bigram and n gram in depth

What is word2vec and other variation for vectorization

Mini Project : Amazon review Sentiment Analysis

Code: Amazon review Sentiment Analysis

What is RNN - Mathematics behind RNN model

Code walkthrough RNN

Case study : Machine learning

3 attachments

Case Study - I

Case Study - II

Case Study - III

Interview Prep For ML/Analyst Role

2 attachments

Interview Prep Session - I

Interview Prep Session - II

Deep Learning

8 attachments • 1 hrs

History of Neural networks and Deep Learning

How Biological Neurons work?

Growth of biological neural networks

Mathematical Notation; Feedforward, Backpropagation and weight tunning

ANN_basics

chapter3

111 pages

[Continue] Backpropagation, Feedforward and activation function

Example - 1

Case Study : Deep learning

Assignments - Data Analyst

Assignment - Machine learning

1 attachment

Assignment - I

GenAI

Structured Query Language

Live Sessions

2 attachments

Doubt Session - 1

Test

Certification

When you complete this course you receive a ‘Certificate of Completion’ signed and addressed personally by me.

Course Certificate

FAQs

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Once you enrol in a course, you will gain access to a dedicated online learning platform. All course materials, including video lessons, lecture notes, and supplementary resources, can be accessed conveniently through the platform at any time.

Can I interact with the instructor during the course?

Absolutely! we are committed to providing an engaging and interactive learning experience. You will have opportunities to interact with them through our community. Take full advantage to enhance your understanding and gain insights directly from the expert.

About the creator

About the creator

Applied Skills

 

Computer Engineer with a passion for Data Science, specializing in building tools from scratch. Over 10 years of experience teaching Applied Mathematics for IIT-JEE, GATE, and 5+ years in data science. 

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