Machine Learning and Data Science using Python

Crunch, Compute, Conclude: Machine Learning & Data Science with Python

  • (15 ratings) 680 students enrolled

Course Overview

Globally, the machine learning market is expected to grow twofold by 2022. Machine learning underlies many of the services we use today, including things like speech recognition and recommendations from online shopping platforms to suggesting music recommendations. This course is designed for any beginner to understand and have a clear understanding of what Machine learning is. Within the course you will also work with many real-world samples. The primary topics this course will cover are: Python Programming from Basics  Jupyter Notebook, Numpy, Pandas, Matplotlib  Machine learning with Scikit Learn A Complete Data Science and Machine Learning Project.  Why is Machine learning important and an exciting field to study? Better Career Opportunities and Growth Highly lucrative job opportunities    Specialized skills boosting salary hikes  

1. What are the requirements?

  • A Computer or Laptop with 4 GB RAM and an Internet connection.

2. What am I going to get from this course?

  • Will guide You to become a confident Data Scientist and Machine Learning Engineer with clearcut knowledge in all the fundamentals.
  • Make You confident to handle Projects in Machine Learnig and Data Science.

3. Who this course is for?

  • Anyone with average knowledge of using Computer and Internet and having a little Logic and Mathematical skills.

About the Author

  • Fairoos O K, is a highly experienced Computer Engineer, with most experience in Python, Java, and Android Developments. Also an online tutor, having students from countries like the US, UK, and Germany. Currently, practising as a Data Scientist using Python Programming.

Course Curriculum

PYTHON PROGRAMMING

  •  
  •  
  •  
  •  
  • For Loops
     
  • For Loop Samples
     
  • Strings, Int and Input
     
  • If, Else and Elif
     
  • While Loops
     
  • While Infinite Loops
     
  • While Loop Sample
     
  • Functions
     
  • Global and Local Variables
     
  • Variables
     
  • Data Types and Operators
     
  • String Operations, Special Operators
     
  • List in Python
     
  • Tuple and Set
     
  • Dictionary
     
  • Class and Objects
     
  • File Handling
     
  • Exception Handling
     
  • Working with JSON
     
  • Conclusion
     

NUMPY, PANDAS AND MATPLOTLIB

  • Introduction
     
  • Jupyter Notebook
     
  • Numpy Module
     
  • Numpy Arrays
     
  • Pandas Introduction
     
  • Data Frame Creation and Views
     
  • Data Frame Operations
     
  • Creating Data Frames
     
  • Read Write CSV Files
     
  • Read Write EXCEL Files
     
  • Handling Missing Data - Filna
     
  • Interpolate and Dropna
     
  • Replace Functions
     
  • Group By
     
  • Concat and Merge
     
  • Matplotlib Introduction
     
  • Format Strings in Plot Function
     
  • Labels, Legend and Grid
     
  • Bar Charts
     
  • Histograms
     
  • Pie Chart and Save Plot Images
     
  • Conclusion
     

MACHINE LEARNING AND SCIKIT LEARN

  • Introduction
     
  • Linear Regression
     
  • Linear Regression Multivariate
     
  • How Gradient Descent
     
  • Gradient Descent Implementation
     
  • Save and Load Model
     
  • Dummy Variables
     
  • One Hot Encoding
     
  • Train Test Split
     
  • Logistic Regression with Logit Function
     
  • Logistic Regression Binary Classification
     
  • Logistic Regression Multiclass
     
  • Confusion Matrix
     
  • How Decision Tree
     
  • Decision Tree Implementation
     
  • Random Forest
     
  • Support Vector Machine
     
  • SVM Classifier (SVC)
     
  • K- Fold Cross Validation
     
  • K- Fold and Parameter Tuning
     
  • K- Means Clustering
     
  • K- Means Implementation
     
  • Conclusion
     

DATA SCIENCE AND MACHINE LEARNING PROJECT

  • Introduction
     
  • Data Cleaning
     
  • Feature Engineering
     
  • Outlier Removal
     
  • Outlier Removal Contnd
     
  • Model Building
     
  • Model Export
     
  • Pycharm and VSC Editors
     
  • Python Flask Server
     
  • Flask Server Codes
     
  • Flask Server Running
     
  • Website UI
     
  • Conclusion
     

Course Conclusion

  • Course conclusion
     

reviews

    • Just started, it explains very well and comparatively easier than expected to understand.
      3 years ago
    • I liked the course which included step-by-step exercises and tutorials. Very well organized and conceived. I recommend this course who wish to start the journey with machine learning. Thank you Trycle and Fairoos sir.
      3 years ago
    • The presentation was good.Explanations were quite lucid for the most part.Recommended for absolute beginners to Python.
      2 years ago
    • Best for a beginner looking for a career in data science.
      2 years ago
    • Beautifully organized. As a beginner It is quite useful.
      1 year ago

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