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Data Science with AI – 250412
Python
Python Course Module – English
Python for Data Science
NumPy Course Module – English
Pandas Course Module – English
Matplotlib Course Module – English
Seaborn Course Module – English
Stats for Data Science
Statistics Course Module – English
Data Science and ML with AI
Getting Started with Data Science Sample Lesson
Introduction to Data Science
Notes – Data Science Introduction
Notes – Data Science History
Notes – Data Science Case Studies in Industry
Notes – Data Science Applications in Real World
Data Science Interview Questions – Introduction
Career in Data Science Sample Lesson
How to build a career in Data Science
Notes – How to Build a Career in Data Science
Notes – Why Data Science is in Demand
Notes – Career Opportunities in Data Science
Notes – Required Skill Set to become a Data Scientist
Notes – Learning Roadmap of Data Science
Notes – Salary Trends & Career Growth in Data Science
Notes – Future of Data Science
Exploratory Data Analysis Unlocking Insights
Exploratory Data Analysis
Notes – Exploratory Data Analysis
Interview Questions – Exploratory Data Analysis
Notes – Numerical vs Categorical Data in Data Science
Notes – Continuous vs. Discrete Data in Data Science
Notes – Feature Engineering in Data Science
Notes – Handling Missing Values in Data Science
Notes – Handling Outliers in Data Science
Notes – Univariate, Bivariate, Multivariate Analysis in Data Science
Notes – Correlation in Data Science
Notes – Data Cleaning Essentials in Data Science
Notes – Business Insights from EDA in Data Science
The Foundation of Artificial Intelligence
Machine Learning Introduction & Project Architecture
Notes – AI Introduction
Data Science Interview Questions – AI Introduction
Notes – ML Introduction
Data Science Interview Questions – ML Introduction
Notes – AI vs ML vs Data Science
Data Science Interview Questions – AI vs ML vs Data Science
Notes – AI & ML Case Studies in Industry
Notes – AI & ML Applications in Real World
Notes – Why Machine Learning?
Notes – Types of Machine Learning
Data Science Interview Questions – Types of Machine Learning
Notes – Key ML Terminologies
Data Science Interview Questions – Key ML Terminologies
Notes – Features and Labels in ML
Notes – Training and Testing in ML
Notes – Overfitting vs. Underfitting
Notes – Machine Learning Workflow
Notes – Data Science Project Architecture
Notes – Data Platform Strategy in Data Science
Notes – Data Science & Engineering Data Flow
Notes – Data Ecosystem Project Architecture
Supervised Learning
Regression Part-1
Notes – Scikit-learn Introduction
Data Science Interview Questions – Scikit-learn Introduction
Notes – Introduction to Regression
Notes – Regression Real-World Use Cases
Data Science Interview Question – Introduction to Regression
Regression Part-2
Notes – Types of Regression Problem
Notes – Linear Regression
Data Science Interview Question – Linear Regression
Notes – Evaluation Metrics in Data Science
Notes – Common Challenges with Regression
Notes – Linear vs Polynomial vs Ridge vs Lasso Regression
Notes – Regression Industry Applications
Regression Assignments
Logistic Regression
Classification – Logistic Regression
Notes – What is Classification?
Data Science Interview Questions – What is Classification?
Notes – Regression vs. Classification
Data Science Interview Questions – Regression vs. Classification
Notes – Classification Real-World Applications
Notes – Types of Classification Problems
Notes – Popular Classification Algorithms
Data Science Interview Questions – Popular Classification Algorithms
Notes – Logistic Regression
Data Science Interview Questions – Logistic Regression
Notes – Data Preparation for Classification
Notes – Label Encoding vs One-Hot Encoding
Notes – Feature Scaling in ML
Notes – Train-Test Split in ML
Notes – Handling Imbalanced Data in Classification
Notes – Model Evaluation Metrics in Classification
Notes – Accuracy in Classification
Notes – Precision, Recall, F1-Score in Classification
Notes – Confusion Matrix in Classification
Notes – ROC Curve and AUC Score in Classification
Notes – Overfitting & Underfitting in ML
Notes – Regularization Techniques in Classification
Notes – Classification Use Cases by Industry
Logistic Regression Assignments
Dive into KNN
Logistic Regression part-2 – KNN
Notes – What is k-NN?
Data Science Interview Questions – What is k-NN?
Notes – KNN Real-World Applications
Data Science Interview Questions – KNN Real-World Applications
Notes – How k-NN Works
Data Science Interview Questions – How k-NN Works
Notes – KNN Distance Metrics
Notes – Choosing the Right ‘k’ in KNN
Notes – Data Preparation for KNN
Notes – Categorical Features Handling in KNN
Notes – Strengths and Limitations of KNN
Notes – Evaluation Metrics in KNN
Notes – KNN Model Tuning
Notes – Cross-Validation in KNN for Optimal ‘k’
Decision Tree
Work with Decision Tree
Notes – Introduction to Decision Tree
Notes – Decision Tree Real-World Use Cases
Notes – Types of Decision Trees
Notes – Components of a Decision Tree
Notes – Decision Tree Splitting Criteria
Notes – Gini Impurity in Decision Tree
Notes – Entropy & Information Gain in Decision Tree
Notes – Advantages and Limitations of Decision Tree
Notes – Pre-Pruning and Post-Pruning in Decision Tree
Notes – Decision Tree Evaluation Metrics
Notes – Decision Tree Hyperparameter Tuning
Notes – Decision Tree Cross-Validation
Data Science Interview Questions – Introduction to Decision Tree
Random Forest Algorithm
Real-time Random Forest Algorithm Implementation
Notes – Introduction to Random Forest
Notes – Why use Random Forest over a Single Tree?
Notes – Random Forest Real-World Applications
Notes – Concept Behind Random Forest
Notes – How Random Forest Works
Notes – Random Forest Hyperparameters
Notes – Random Forest Advantages and Limitations
Notes – Random Forest Use Cases
Data Science Interview Questions – Introduction to Random Forest
Unsupervised Learning
What is Unsupervised Learning
Notes – What is Unsupervised Learning?
Data Science Interview Questions – What is Unsupervised Learning?
Notes – Supervised vs Unsupervised Learning
Data Science Interview Questions – Supervised vs Unsupervised Learning
Notes – Where to use Unsupervised Learning
Notes – Application of Unsupervised Learning
Notes – Popular Algorithms in Unsupervised Learning
Notes – Real world use cases of Unsupervised learnering
K-means Clustering
Clustering – K-means Clustering
Notes – Clustering
Data Science Interview Questions – Clustering
Notes – Clustering Real-world industry use cases
Notes – Classification vs Clustering
Data Science Interview Questions – Classification vs Clustering
Notes – K-means Clustering
Data Science Interview Questions – K-means Clustering
Notes – K-means Clustering Real-world industry use cases
Notes – Elbow Method in K-means Clustering
Hierarchical Clustering
K-means Clustering – Hierarchical Clustering
Notes – Hierarchical Clustering
Notes – Agglomerative vs Divisive Approach in Hierarchical Clustering
Notes – Hierarchical Clustering Real-world Industry Use Cases
Data Science Interview Questions – Hierarchical Clustering
Dimensionality Reduction
Notes – Dimensionality Reduction in Data Science
Deep Learning
Start with Deep Learning
Introduction to Deep Learning
Notes – Deep Learning vs Machine Learning
Data Science Interview Questions – Deep Learning vs Machine Learning
Notes – Deep Learning Introduction
Data Science Interview Questions – Deep Learning Introduction
Notes – Deep Learning Case Studies in Industry
Notes – Why Deep Learning?
Notes – Need for Deep Learning in Industry
Notes – Why Deep Learning is in Demand?
Notes – Key Deep Learning Terminologies
Convolutional Neural Network
MNIST Digit Recognition using CNN
Notes – CNN (Convolutional Neural Network)
Data Science Interview Questions – CNN
Fashion-MNIST Clothing Classifier using TensorFlow Keras
Activation Functions & Optimizers in Deep Learning
Notes – Activation Functions in Deep Learning
Data Science Interview Questions – Activation Functions in Deep Learning
Notes – RELU Activation Function in Deep Learning
Data Science Interview Questions – RELU Activation Function in Deep Learning
Notes – Optimizers in Deep Learning
Data Science Interview Questions – Optimizers in Deep Learning
Notes – Adam Optimizers in Deep Learning
Data Science Interview Questions – Adam Optimizers in Deep Learning
TensorFlow
Traffic Sign Recognition Defect Detection
Notes – ResNet50 in Data Science
Notes – Vanishing Gradients in Deep Learning
Notes – Transfer Learning
Data Science Interview Questions – Transfer Learning
Chest X-ray Pneumonia Detection
Notes – TensorFlow Introduction
Data Science Interview Questions – TensorFlow Introduction
Notes – DenseNet121
Recurrent Neural Networks
Stock Price Prediction using RNN
Notes – RNN in Data Science
Data Science Interview Questions – RNN
Notes – ANN vs CNN vs RNN
Long Short-Term Memory
Sentiment Analysis and Stock Price Prediction using LSTM
Notes – Long Short-Term Memory
Data Science Interview Questions – LSTM
Notes – RNN vs LSTM
LSTM in Deep Learning
Notes – LSTM in Deep Learning
Notes – RNN vs LST
Notes – LSTM Applications and Use Cases
Data Science Interview Questions – LSTM in Deep Learning
Language Translation using LSTM
Notes – Natural Language Processing
Data Science Interview Questions – NLP
Let’s Start PyTorch
MNIST Digit Recognition using PyTorch
Notes – PyTorch
Data Science Interview Questions – PyTorch
Notes – PyTorch vs TensorFlow
Notes – PyTorch Features
Notes – PyTorch Use Cases
Data Engineering
Start with Data Engineering
Big Data & Data Engineering for Data Science
Notes – Big Data in Data Science
Data Science Interview Questions – Big Data
Notes – Data Engineering in Data Science
Data Science Interview Questions – Data Engineering
Hadoop for Data Science
Notes – Hadoop in Data Science
Data Science Interview Questions – Hadoop
Notes – HDFS in Data Science
Data Science Interview Questions – HDFS
Notes – MapReduce in Data Science
Data Science Interview Questions – MapReduce
Notes – Hadoop Ecosystem in Data Science
Data Science Interview Questions – Hadoop Ecosystem
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Career in Data Science

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Lesson Content
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How to build a career in Data Science
Notes – How to Build a Career in Data Science
Notes – Why Data Science is in Demand
Notes – Career Opportunities in Data Science
Notes – Required Skill Set to become a Data Scientist
Notes – Learning Roadmap of Data Science
Notes – Salary Trends & Career Growth in Data Science
Notes – Future of Data Science
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