Learning Outcomes
After completing this course, learners will be able to:
Learn Python for data analysis using NumPy and Pandas
Acquire a clear understanding of data visualisation using Matplotlib, Seaborn and Pandas
Deepen your knowledge of Python for interactive and geographical potting using Plotly and Cufflinks
Understand Python for data science and machine learning
Get acquainted with Recommender Systems with Python
Enhance your understanding of Python for Natural Language Processing (NLP)
Description
Whether you are from an engineering background or not you still can efficiently work in the field of data science and the machine learning sector, if you have proficient knowledge of Python. Since Python is the easiest and most used programming language, you can start learning this language now to advance your career with the Data Science And Machine Learning Using Python : A Bootcamp course.
This course will give you a thorough understanding of the Python programming language. Moreover, it will show how can you use Python for data analysis and machine learning. Alongside that, from this course, you will get to learn data visualisation, and interactive and geographical plotting by using Python. The course will also provide detailed information on Python for data analysis, Natural Language Processing (NLP) and much more.
Upon successful completion of this course, get a CPD- certificate of achievement which will enhance your resume and career.
Certificate of Achievement
After the successful completion of the final assessment, you will receive a CPD-accredited certificate of achievement. The PDF certificate is for 9.99, and it will be sent to you immediately after through e-mail. You can get the hard copy for 15.99, which will reach your doorsteps by post.
Method of Assessment
After completing this course, you will be provided with some assessment questions. To pass that assessment, you need to score at least 60%. Our experts will check your assessment and give you feedback accordingly.
Career Path
After completing this course, you can explore various career options such as
Web Developer
Software Engineer
Data Scientist
Machine Learning Engineer
Data Analyst
In the UK professionals usually get a salary of £25,000 - £30,000 per annum for these positions.
Course Content
Welcome, Course Introduction & overview, and Environment set-up
Welcome & Course Overview 00:07:00
Set-up the Environment for the Course (lecture 1) 00:09:00
Set-up the Environment for the Course (lecture 2) 00:25:00
Two other options to setup environment 00:04:00
Python Essentials
Python data types Part 1 00:21:00
Python Data Types Part 2 00:15:00
Loops, List Comprehension, Functions, Lambda Expression, Map and Filter (Part 1) 00:16:00
Loops, List Comprehension, Functions, Lambda Expression, Map and Filter (Part 2) 00:20:00
Python Essentials Exercises Overview 00:02:00
Python Essentials Exercises Solutions 00:22:00
Python for Data Analysis using NumPy
What is Numpy? A brief introduction and installation instructions. 00:03:00
NumPy Essentials - NumPy arrays, built-in methods, array methods and attributes. 00:28:00
NumPy Essentials - Indexing, slicing, broadcasting & boolean masking 00:26:00
NumPy Essentials - Arithmetic Operations & Universal Functions 00:07:00
NumPy Essentials Exercises Overview 00:02:00
NumPy Essentials Exercises Solutions 00:25:00
Python for Data Analysis using Pandas
What is pandas? A brief introduction and installation instructions. 00:02:00
Pandas Introduction 00:02:00
Pandas Essentials - Pandas Data Structures - Series 00:20:00
Pandas Essentials - Pandas Data Structures - DataFrame 00:30:00
Pandas Essentials - Handling Missing Data 00:12:00
Pandas Essentials - Data Wrangling - Combining, merging, joining 00:20:00
Pandas Essentials - Groupby 00:10:00
Pandas Essentials - Useful Methods and Operations 00:26:00
Pandas Essentials - Project 1 (Overview) Customer Purchases Data 00:08:00
Pandas Essentials - Project 1 (Solutions) Customer Purchases Data 00:31:00
Pandas Essentials - Project 2 (Overview) Chicago Payroll Data 00:04:00
Pandas Essentials - Project 2 (Solutions Part 1) Chicago Payroll Data 00:18:00
Python for Data Visualization using matplotlib
Matplotlib Essentials (Part 1) - Basic Plotting & Object Oriented Approach 00:13:00
Matplotlib Essentials (Part 2) - Basic Plotting & Object Oriented Approach 00:22:00
Matplotlib Essentials (Part 3) - Basic Plotting & Object Oriented Approach 00:22:00
Matplotlib Essentials - Exercises Overview 00:06:00
Matplotlib Essentials - Exercises Solutions 00:21:00
Python for Data Visualization using Seaborn
Seaborn - Introduction & Installation 00:04:00
Seaborn - Distribution Plots 00:25:00
Seaborn - Categorical Plots (Part 1) 00:21:00
Seaborn - Categorical Plots (Part 2) 00:16:00
Seborn-Axis Grids 00:25:00
Seaborn - Matrix Plots 00:13:00
Seaborn - Regression Plots 00:11:00
Seaborn - Controlling Figure Aesthetics 00:10:00
Seaborn - Exercises Overview 00:04:00
Seaborn - Exercise Solutions 00:19:00
Python for Data Visualization using pandas
Pandas Built-in Data Visualization 00:34:00
Pandas Data Visualization Exercises Overview 00:03:00
Panda Data Visualization Exercises Solutions 00:13:00
Python for interactive & geographical plotting using Plotly and Cufflinks
Plotly & Cufflinks - Interactive & Geographical Plotting (Part 1) 00:19:00
Plotly & Cufflinks - Interactive & Geographical Plotting (Part 2) 00:14:00
Plotly & Cufflinks - Interactive & Geographical Plotting Exercises (Overview) 00:11:00
Plotly & Cufflinks - Interactive & Geographical Plotting Exercises (Solutions) 00:37:00
Capstone Project - Python for Data Analysis & Visualization
Project 1 - Oil vs Banks Stock Price during recession (Overview) 00:15:00
Project 1 - Oil vs Banks Stock Price during recession (Solutions Part 1) 00:18:00
Project 1 - Oil vs Banks Stock Price during recession (Solutions Part 2) 00:18:00
Project 1 - Oil vs Banks Stock Price during recession (Solutions Part 3) 00:17:00
Project 2 (Optional) - Emergency Calls from Montgomery County, PA (Overview) 00:03:00
Python for Machine Learning (ML) - scikit-learn - Linear Regression Model
Introduction to ML - What, Why and Types.. 00:15:00
Theory Lecture on Linear Regression Model, No Free Lunch, Bias Variance Tradeoff 00:15:00
scikit-learn - Linear Regression Model - Hands-on (Part 1) 00:17:00
scikit-learn - Linear Regression Model Hands-on (Part 2) 00:19:00
Good to know! How to save and load your trained Machine Learning Model! 00:01:00
scikit-learn - Linear Regression Model (Insurance Data Project Overview) 00:08:00
scikit-learn - Linear Regression Model (Insurance Data Project Solutions) 00:30:00
Python for Machine Learning - scikit-learn - Logistic Regression Model
Theory: Logistic Regression, conf. mat., TP, TN, Accuracy, Specificityetc. 00:10:00
scikit-learn - Logistic Regression Model - Hands-on (Part 1) 00:17:00
scikit-learn - Logistic Regression Model - Hands-on (Part 2) 00:20:00
scikit-learn - Logistic Regression Model - Hands-on (Part 3) 00:11:00
scikit-learn - Logistic Regression Model - Hands-on (Project Overview) 00:05:00
scikit-learn - Logistic Regression Model - Hands-on (Project Solutions) 00:15:00
Python for Machine Learning - scikit-learn - K Nearest Neighbors
Theory: K Nearest Neighbors, Curse of dimensionality . 00:08:00
scikit-learn - K Nearest Neighbors - Hands-on 00:25:00
scikt-learn - K Nearest Neighbors (Project Overview) 00:04:00
scikit-learn - K Nearest Neighbors (Project Solutions) 00:14:00
Python for Machine Learning - scikit-learn - Decision Tree and Random Forests
Theory: D-Tree & Random Forests, splitting, Entropy, IG, Bootstrap, Bagging. 00:18:00
scikit-learn - Decision Tree and Random Forests - Hands-on (Part 1) 00:19:00
scikit-learn - Decision Tree and Random Forests (Project Overview) 00:05:00
scikit-learn - Decision Tree and Random Forests (Project Solutions) 00:15:00
Python for Machine Learning - scikit-learn -Support Vector Machines (SVMs)
Support Vector Machines (SVMs) - (Theory Lecture) 00:07:00
scikit-learn - Support Vector Machines - Hands-on (SVMs) 00:30:00
scikit-learn - Support Vector Machines (Project 1 Overview) 00:07:00
scikit-learn - Support Vector Machines (Project 1 Solutions) 00:20:00
scikit-learn - Support Vector Machines (Optional Project 2 - Overview) 00:02:00
Python for Machine Learning - scikit-learn - K Means Clustering
Theory: K Means Clustering, Elbow method .. 00:11:00
scikit-learn - K Means Clustering - Hands-on 00:23:00
scikit-learn - K Means Clustering (Project Overview) 00:07:00
scikit-learn - K Means Clustering (Project Solutions) 00:22:00
Python for Machine Learning - scikit-learn - Principal Component Analysis (PCA)
Theory: Principal Component Analysis (PCA) 00:09:00
scikit-learn - Principal Component Analysis (PCA) - Hands-on 00:22:00
scikit-learn - Principal Component Analysis (PCA) - (Project Overview) 00:02:00
scikit-learn - Principal Component Analysis (PCA) - (Project Solutions) 00:17:00
Recommender Systems with Python - (Additional Topic)
Theory: Recommender Systems their Types and Importance 00:06:00
Python for Recommender Systems - Hands-on (Part 1) 00:18:00
Python for Recommender Systems - - Hands-on (Part 2) 00:19:00
Python for Natural Language Processing (NLP) - NLTK - (Additional Topic)
Natural Language Processing (NLP) - (Theory Lecture) 00:13:00
NLTK - NLP-Challenges, Data Sources, Data Processing .. 00:13:00
NLTK - Feature Engineering and Text Preprocessing in Natural Language Processing 00:19:00
NLTK - NLP - Tokenization, Text Normalization, Vectorization, BoW. 00:19:00
NLTK - BoW, TF-IDF, Machine Learning, Training & Evaluation, Naive Bayes 00:13:00
NLTK - NLP - Pipeline feature to assemble several steps for cross-validation 00:09:00
Resources
Resources - Data Science and Machine Learning using Python : A Bootcamp 00:00:00
Order your Certificates & Transcripts
Order your Certificates & Transcripts 00:00:00
Frequently Asked Questions
Are there any prerequisites for taking the course?
There are no specific prerequisites for this course, nor are there any formal entry requirements. All you need is an internet connection, a good understanding of English and a passion for learning for this course.
Can I access the course at any time, or is there a set schedule?
You have the flexibility to access the course at any time that suits your schedule. Our courses are self-paced, allowing you to study at your own pace and convenience.
How long will I have access to the course?
For this course, you will have access to the course materials for 1 year only. This means you can review the content as often as you like within the year, even after you've completed the course. However, if you buy Lifetime Access for the course, you will be able to access the course for a lifetime.
Is there a certificate of completion provided after completing the course?
Yes, upon successfully completing the course, you will receive a certificate of completion. This certificate can be a valuable addition to your professional portfolio and can be shared on your various social networks.
Can I switch courses or get a refund if I'm not satisfied with the course?
We want you to have a positive learning experience. If you're not satisfied with the course, you can request a course transfer or refund within 14 days of the initial purchase.
How do I track my progress in the course?
Our platform provides tracking tools and progress indicators for each course. You can monitor your progress, completed lessons, and assessments through your learner dashboard for the course.
What if I have technical issues or difficulties with the course?
If you encounter technical issues or content-related difficulties with the course, our support team is available to assist you. You can reach out to them for prompt resolution.