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Data Science Fundamentals and Practical Approaches

Learn everything you need about Data Science in one course and get skilled with Big Data Analysis and Python programming.  

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About This Course

Learn the fundamentals of the Data Science course with our comprehensive training plan and master data preprocessing, visualization & analysis like a pro! 

Implement Data analysis techniques with practical lessons & hands-on labs to solve any business problems with statistics & media analytics. 

Learn with instances from real-world experiences and handle data with perfect tools. 

Skills You’ll Get

Understand the role of SQL in data science Learn to handle Data science with tools like TensorFlow, and PyTorch.   Deploy CNN models.  Explore the Data analytics lifecycle.   Implement various data preprocessing operations. Analyze possible data error types.  Learn visual encoding with data visualization software. Explore the data visualization libraries.  Utilize the role of Statistics & Machine Learning (ML) in data science.  Learn about the seven layers of social media & business analytics.  Interact with Big Data & HDFS from Python applications. 

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

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This course is an introduction to data science. It teaches you the concepts from scratch to help you build strong software in the future & data principles from the foundation. 

Individuals from various fields & students interested in data science & programming can start this course & learn from the basics. Individuals interested in AI & ML can also learn this course. 

Learn data analysis, CNN tools such as TensorFlow & PyTorch, Machine learning & Big data with our interactive course. Work through hands-on labs & create practical changes with practice.

Absolutely! We’ll teach you the basics of AI & building networks, and get you started with machine learning using Python and TensorFlow. 

Yes, absolutely! The course includes knowledge from various domains and can be a game changer for career changers with its unique approach and great offerings in data science.

This course can help you get an entry-level job in data analysis, however, it is prescribed to go for a more detailed certification like CompTIA, ISC2, & Axelos. 

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