IT 15

Certified in Data Science — Pumo Technovation
Pumo Technovation Logo

Certified in Data Science

Total Number of Modules6
Total Number of Topics135
Estimated Duration420:30 H

Module 1 – Data Science Overview

  • Introduction to Data Science90 Mins

Module 2 – Python

  • Python Setup, Environment and Basics120 Mins
  • Practice Program45 Mins
  • Python Operators90 Mins
  • Practice Program40 Mins
  • Python Control Statements180 Mins
  • Practice Program60 Mins
  • Python Loops240 Mins
  • Practice Program90 Mins
  • List and Set210 Mins
  • Practice Program45 Mins
  • Tuple & Dictionary210 Mins
  • Practice Program60 Mins
  • Function210 Mins
  • Practice Program120 Mins
  • Python Modules120 Mins
  • Practice Program90 Mins
  • Assessment120 Mins
  • Python Oops - Class & Object120 Mins
  • Practice Program90 Mins
  • Python Oops - Inheritance & Polymorphism180 Mins
  • Python Oops - Abstraction & Encapsulation180 Mins
  • Practice Program120 Mins
  • Python File & Exception Handling150 Mins
  • Practice Program210 Mins

Module 3 – Exploratory Data Analysis (EDA)

  • Introduction to NumPy60 Mins
  • NumPy Arrays90 Mins
  • Array Indexing and Slicing60 Mins
  • NumPy Operations60 Mins
  • Array Manipulation60 Mins
  • NumPy Linear Algebra120 Mins
  • NumPy Random Module60 Mins
  • NumPy Data Handling90 Mins
  • Practice Questions30 Mins
  • Introduction to Pandas30 Mins
  • Creating and Accessing Data30 Mins
  • Selecting and Modifying Data30 Mins
  • Data Aggregation and Grouping30 Mins
  • Advanced Data Handling60 Mins
  • Practice Program30 Mins
  • Introduction to Statistics180 Mins
  • Data Visualization60 Mins
  • Matplotlib60 Mins
  • Seaborn60 Mins
  • Practice Program120 Mins
  • Assessment60 Mins
  • Main Project (Stock Market / Covid-19 Analysis)180 Mins

Module 4 – Machine Learning

  • Introduction of Machine Learning120 Mins
  • Data Preprocessing120 Mins
  • Probability120 Mins
  • Hypothesis Testing120 Mins
  • Bayes' Theorem90 Mins
  • Sampling Techniques90 Mins
  • Central Limit Theorem (CLT)60 Mins
  • Statistical Decision Making: p-value Method60 Mins
  • Feature Selection60 Mins
  • Feature Extraction & Train_Test_Split90 Mins
  • Introduction of Supervised Learning120 Mins
  • Regression120 Mins
  • Classification180 Mins
  • Assessment120 Mins
  • Supervised Learning - Project 1250 Mins
  • Introduction of Unsupervised Learning60 Mins
  • Clustering60 Mins
  • Dimensionality Reduction90 Mins
  • Assessment160 Mins
  • Unsupervised Learning - Project 2210 Mins
  • Reinforcement Learning180 Mins
  • Assessment180 Mins
  • Reinforcement Learning - Project 3180 Mins
  • Assessment30 Mins

Module 5 – Streamlit

  • Introduction to Streamlit90 Mins
  • User Inputs90 Mins
  • Streamlit with Machine Learning90 Mins
  • Assessment30 Mins
  • Streamlit Project - Diabetes Prediction90 Mins

Module 6 – Deep Learning

  • Introduction to Deep Learning90 Mins
  • Neural Networks90 Mins
  • How Deep Learning Works120 Mins
  • Deep Learning Life Cycle90 Mins
  • Deep Learning Models (ANN, CNN, RNN, GAN, LSTM, Autoencoder)240 Mins
  • MCQ Test60 Mins
  • Assessment30 Mins
  • Main Project (Cancer Prediction / Digit Generator / Autoencoders)240 Mins

Module 7 – MySQL

  • Fundamentals of MySQL60 Mins
  • Practice Program60 Mins
  • Querying & Filtering Data60 Mins
  • Practice Program60 Mins
  • Joins & Relational Queries60 Mins
  • Practice Program60 Mins
  • MySQL Connectivity Basics30 Mins
  • Advanced MySQL Connectivity60 Mins
  • Assessment60 Mins
  • Project - Employee–Department Management System120 Mins
Data Science Tools
Placement 1
Placement 2
Placement 3
Placement 4
Placement 5
Placement 6
Scroll to Top