Diploma in Data Science

Breadcrumb Abstract Shape
Breadcrumb Abstract Shape
Breadcrumb Abstract Shape
Breadcrumb Abstract Shape
Breadcrumb Abstract Shape
Breadcrumb Abstract Shape
Diploma in Data Science | Complete Syllabus

Diploma in Data Science

Complete syllabus: Machine Learning, NLP, Deep Learning with hands‑on implementations

Data Science Syllabus

1. Introduction to Machine Learning
  • 1.1 Algorithms and Models in Machine Learning
  • 1.2 Feature engineering
    • 1.2.1 Encoding
    • 1.2.2 Scaling
2. Types of Machine Learning – Classification
  • 2.1.1 KNN
    • KNN Algorithm Implementation
    • Performance measure
    • Streamlit
  • 2.1.2 SVM
    • SVM Algorithm
  • 2.1.3 Naive Bayes
    • Probability
    • Conditional Probability
    • Bayes Theorem
    • Q&A of Naive Bayes
    • Naive Bayes Algorithm
  • 2.1.4 Decision Tree
    • Examples of decision tree
    • Implementation of DT
  • 2.1.5 Random Forest
    • Implementation of Random Forest
2.2 Regression
  • 2.2.1 Simple Linear Regression
    • Simple linear regression Algorithm
    • Performance of SLR
  • 2.2.2 Polynomial Regression
    • Polynomial Regression Algorithm
  • 2.2.3 Multiple Linear Regression
    • Multiple Linear Regression Algorithm
2.3 Handling Imbalanced Datasets
  • 2.3.1 Implementation of Imbalanced Dataset
2.4 Clustering
  • 2.4.1 K-Means Clustering
    • K-Means Clustering Algorithm
2.5 Hyperparameter Tuning
  • Grid Search, Random Search
3. Introduction to NLP
  • 3.1 Steps of NLP
  • 3.2 Applications of NLP
  • 3.3 Sentiment Analysis on Twitter Data
4. Deep Learning
  • 4.1 What is ANN
    • Implementation of ANN
    • Difference between Feed Forward Network and backpropagation network
  • 4.2 What is CNN
    • Layers of CNN
    • Implementation of CNN
  • 4.3 What is RNN
    • What is LSTM
    • Implementation of RNN

📞 Talk to us

Call to enroll or ask about the Data Science syllabus

+91 8714194150