Booking options
£12
£12
On-Demand course
10 hours 19 minutes
All levels
Mastering data science skills and expertise can open new doors of opportunities for you in a wide range of fields. Learn the fundamentals and develop a solid grasp of Python data science with the comprehensive Data Science with Python course. This course is designed to assist you in securing a valuable skill set and boosting your career.
This course will provide you with quality training on the fundamentals of data analysis with Python. From the step-by-step learning process, you will learn the techniques of setting up the system. Then the course will teach you Python data structure and functions. You will receive detailed lessons on NumPy, Matplotlib, and Pandas. Furthermore, you will develop the skills for Algorithm Evaluation Techniques, visualising datasets and much more.
After completing the course you will receive a certificate of achievement. This certificate will help you create an impressive resume. So join today!
You may have to take a quiz or a written test online during or after the course. After successfully completing the course, you will be eligible for the certificate.
This course Data Science with Python course is ideal for beginners in data science. It will help them develop a solid grasp of Python and help them pursue their dream career in the field of data science.
The students will not require any formal qualifications or previous experience to enrol in this course. Anyone can learn from the course anytime from anywhere through smart devices like laptops, tabs, PC, and smartphones with stable internet connections. They can complete the course according to their preferable pace so, there is no need to rush.
This course will equip you with valuable knowledge and effective skills in this area. After completing the course, you will be able to explore career opportunities in the fields such as
Data Analyst
Data Scientist
Data Manager
Business Analyst
And much more!
90 sections • 90 lectures • 10:19:00 total length
•Course Overview & Table of Contents: 00:09:00
•Introduction to Machine Learning - Part 1 - Concepts , Definitions and Types: 00:05:00
•Introduction to Machine Learning - Part 2 - Classifications and Applications: 00:06:00
•System and Environment preparation - Part 1: 00:04:00
•System and Environment preparation - Part 2: 00:06:00
•Learn Basics of python - Assignment 1: 00:10:00
•Learn Basics of python - Assignment 2: 00:09:00
•Learn Basics of python - Functions: 00:04:00
•Learn Basics of python - Data Structures: 00:12:00
•Learn Basics of NumPy - NumPy Array: 00:06:00
•Learn Basics of NumPy - NumPy Data: 00:08:00
•Learn Basics of NumPy - NumPy Arithmetic: 00:04:00
•Learn Basics of Matplotlib: 00:07:00
•Learn Basics of Pandas - Part 1: 00:06:00
•Learn Basics of Pandas - Part 2: 00:07:00
•Understanding the CSV data file: 00:09:00
•Load and Read CSV data file using Python Standard Library: 00:09:00
•Load and Read CSV data file using NumPy: 00:04:00
•Load and Read CSV data file using Pandas: 00:05:00
•Dataset Summary - Peek, Dimensions and Data Types: 00:09:00
•Dataset Summary - Class Distribution and Data Summary: 00:09:00
•Dataset Summary - Explaining Correlation: 00:11:00
•Dataset Summary - Explaining Skewness - Gaussian and Normal Curve: 00:07:00
•Dataset Visualization - Using Histograms: 00:07:00
•Dataset Visualization - Using Density Plots: 00:06:00
•Dataset Visualization - Box and Whisker Plots: 00:05:00
•Multivariate Dataset Visualization - Correlation Plots: 00:08:00
•Multivariate Dataset Visualization - Scatter Plots: 00:05:00
•Data Preparation (Pre-Processing) - Introduction: 00:09:00
•Data Preparation - Re-scaling Data - Part 1: 00:09:00
•Data Preparation - Re-scaling Data - Part 2: 00:09:00
•Data Preparation - Standardizing Data - Part 1: 00:07:00
•Data Preparation - Standardizing Data - Part 2: 00:04:00
•Data Preparation - Normalizing Data: 00:08:00
•Data Preparation - Binarizing Data: 00:06:00
•Feature Selection - Introduction: 00:07:00
•Feature Selection - Uni-variate Part 1 - Chi-Squared Test: 00:09:00
•Feature Selection - Uni-variate Part 2 - Chi-Squared Test: 00:10:00
•Feature Selection - Recursive Feature Elimination: 00:11:00
•Feature Selection - Principal Component Analysis (PCA): 00:09:00
•Feature Selection - Feature Importance: 00:06:00
•Refresher Session - The Mechanism of Re-sampling, Training and Testing: 00:12:00
•Algorithm Evaluation Techniques - Introduction: 00:07:00
•Algorithm Evaluation Techniques - Train and Test Set: 00:11:00
•Algorithm Evaluation Techniques - K-Fold Cross Validation: 00:09:00
•Algorithm Evaluation Techniques - Leave One Out Cross Validation: 00:05:00
•Algorithm Evaluation Techniques - Repeated Random Test-Train Splits: 00:07:00
•Algorithm Evaluation Metrics - Introduction: 00:09:00
•Algorithm Evaluation Metrics - Classification Accuracy: 00:08:00
•Algorithm Evaluation Metrics - Log Loss: 00:03:00
•Algorithm Evaluation Metrics - Area Under ROC Curve: 00:06:00
•Algorithm Evaluation Metrics - Confusion Matrix: 00:10:00
•Algorithm Evaluation Metrics - Classification Report: 00:04:00
•Algorithm Evaluation Metrics - Mean Absolute Error - Dataset Introduction: 00:06:00
•Algorithm Evaluation Metrics - Mean Absolute Error: 00:07:00
•Algorithm Evaluation Metrics - Mean Square Error: 00:03:00
•Algorithm Evaluation Metrics - R Squared: 00:04:00
•Classification Algorithm Spot Check - Logistic Regression: 00:12:00
•Classification Algorithm Spot Check - Linear Discriminant Analysis: 00:04:00
•Classification Algorithm Spot Check - K-Nearest Neighbors: 00:05:00
•Classification Algorithm Spot Check - Naive Bayes: 00:04:00
•Classification Algorithm Spot Check - CART: 00:04:00
•Classification Algorithm Spot Check - Support Vector Machines: 00:05:00
•Regression Algorithm Spot Check - Linear Regression: 00:08:00
•Regression Algorithm Spot Check - Ridge Regression: 00:03:00
•Regression Algorithm Spot Check - Lasso Linear Regression: 00:03:00
•Regression Algorithm Spot Check - Elastic Net Regression: 00:02:00
•Regression Algorithm Spot Check - K-Nearest Neighbors: 00:06:00
•Regression Algorithm Spot Check - CART: 00:04:00
•Regression Algorithm Spot Check - Support Vector Machines (SVM): 00:04:00
•Compare Algorithms - Part 1 : Choosing the best Machine Learning Model: 00:09:00
•Compare Algorithms - Part 2 : Choosing the best Machine Learning Model: 00:05:00
•Pipelines : Data Preparation and Data Modelling: 00:11:00
•Pipelines : Feature Selection and Data Modelling: 00:10:00
•Performance Improvement: Ensembles - Voting: 00:07:00
•Performance Improvement: Ensembles - Bagging: 00:08:00
•Performance Improvement: Ensembles - Boosting: 00:05:00
•Performance Improvement: Parameter Tuning using Grid Search: 00:08:00
•Performance Improvement: Parameter Tuning using Random Search: 00:06:00
•Export, Save and Load Machine Learning Models : Pickle: 00:10:00
•Export, Save and Load Machine Learning Models : Joblib: 00:06:00
•Finalizing a Model - Introduction and Steps: 00:07:00
•Finalizing a Classification Model - The Pima Indian Diabetes Dataset: 00:07:00
•Quick Session: Imbalanced Data Set - Issue Overview and Steps: 00:09:00
•Iris Dataset : Finalizing Multi-Class Dataset: 00:09:00
•Finalizing a Regression Model - The Boston Housing Price Dataset: 00:08:00
•Real-time Predictions: Using the Pima Indian Diabetes Classification Model: 00:07:00
•Real-time Predictions: Using Iris Flowers Multi-Class Classification Dataset: 00:03:00
•Real-time Predictions: Using the Boston Housing Regression Model: 00:08:00
•Resources - Data Science & Machine Learning with Python: 00:00:00
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