Data Science Fundamentals and Practical Approaches

Lessons
Lab
TestPrep
AI Tutor (Add-on)
Get A Free Trial

About This Course

Skills You’ll Get

1

Preface

2

Fundamentals of Data Science

  • Introduction to data science
  • Why learn data science? 
  • Data analytics lifecycle
  • Types of data analysis
  • Types of jobs in data analytics
  • Data science tools
  • Fundamental areas of study in data science
  • Role of SQL in data science
  • Pros and cons of data science
  • Conclusion
  • References
  • Points to remember
3

Data Preprocessing

  • Introduction to data preprocessing
  • Data types and forms
  • Possible data error types
  • Various data preprocessing operations
  • Conclusion
  • References
  • Points to remember
4

Data Plotting and Visualization

  • Introduction to data visualization
  • Visual encoding
  • Data visualization software
  • Data visualization libraries
  • Basic data visualization tools
  • Specialized data visualization tools
  • Advanced data visualization tools
  • Visualization of geospatial data
  • Data visualization types
  • Conclusion
  • References
  • Points to remember
5

Statistical Data Analysis

  • Role of statistics in data science
  • Kinds of statistics
  • Probability theory
  • Conclusion
  • References
  • Points to remember
6

Machine Learning for Data Science

  • Overview of machine learning
  • Supervised machine learning
  • Unsupervised machine learning
  • Reinforcement learning
  • Conclusion
  • References
  • Points to remember
7

Time-Series Analysis

  • Overview of time-series analysis
  • Components of time-series
  • Time-series forecasting models
  • Conclusion
  • References
  • Points to remember
8

Deep Learning for Data Science

  • Introduction to TensorFlow
  • Pytorch
  • Deep learning primitives
  • Convolutional Neural Network (CNN)
  • TensorFlow and CNN
  • CNN and data analysis
  • AutoEncoder
  • Conclusion
  • References
  • Points to remember
9

Social Media Analytics

  • Overview of social media analytics
  • Seven layers of social media analytics
  • Social media analytics cycle
  • Key social media analytics methods
  • Accessing social media data
  • Challenges to social media analytics
  • Conclusion
  • References
  • Points to remember
10

Business Analytics

  • An overview of business analytics
  • The business analytics lifecycle
  • Basic tools used in business analytics
  • Main applications in business analytics
  • Challenges faced in business analytics
  • Conclusion
  • References
  • Points to Remember
11

Big Data Analytics

  • An overview of Big Data
  • Hadoop
  • HDFS (Hadoop Distributed File System)
  • Interacting with HDFS
  • Interacting with HDFS from Python applications
  • Conclusion
  • References
  • Points to remember

Related Courses

All Course
scroll to top