More than 70% of businesses globally use python & machine learning to analyse data, build predictive models, and automate decision-making processes. Using algorithms and statistical techniques of python and machine learning makes the business process more efficient. Logically, the need for qualified experts in this industry has increased dramatically. So, our “Python for Data Science & Machine Learning: Zero to Hero” course aims to meet this need by empowering you with the skills you need to succeed in this in-demand field. This will take you from zero to hero level of python & machine learning-related skills. Won’t you give yourself a chance to explore this skill?

The lesson Begins with an introduction to Python’s essential data science libraries, like NumPy and Pandas. Then this guides through a road map for advanced skills. Like data cleaning, exploratory data analysis, and visualisation techniques. The lesson concludes with important machine learning concepts, such as regression, classification, clustering, and recommender systems. You will have a practical understanding of the usage of Python for data analysis, predictive model construction, and data-driven decision-making at the end of this course. The best part is that practical, hands-on tasks are incorporated into each session to reinforce learning.

Your Benefits by Learning with ‘Cambridge Open Academy’:

  • Accreditation: Showcase your ability with our accredited Python for Data Science & Machine Learning: Zero to Hero to potential employers.
  • Free Certificate: Get a Free Digital Certificate upon successful completion of the Python for Data Science & Machine Learning: Zero to Hero.
  • Flexibility: Learn virtually from anywhere, anytime at your own pace and convenience.
  • Advance Your Career: Upskill to impress your employers and land your dream job or long-awaited promotion.
  • Immediately Applicable Coursework: Keep up with the latest skill trend by putting your skillsets to work.
  • Affordability: Save big with our online Python for Data Science & Machine Learning: Zero to Hero as it not only suits your professional needs but also fits within your budget.
  • Tutor Support: Get tutor support on weekdays, 9-5 am, and our dedicated 24/7 customer support.
  • Lifetime Access: Achieve lifetime access to the top-notch expertly crafted course materials.

Our Specialised Delivery Method:

  • Interactive Learning Materials: The course modules were created using an EdTech industry-recognised tool to keep you engaged at all times. With this tool, you get interactive, engaging and top-notch course content. In our courses, you can take advantage of features like—
    • Drop Down Menu
    • Drag and Drop
    • Flash Card
    • Label Graphic
    • Timeline View
  • Responsiveness: In light of contemporary mobile and point-of-need learning trends, our courses are designed to be intrinsically dynamic and provide you the ultimate eLearning solution. These courses will adapt to any gadget without any extra software.
  • Learner-Friendly Navigation: Our courses are also quite simple to navigate for any learner. These courses are designed with simplicity and a modern flow that appeals to a wide range of learning audiences, regardless of their technical background and gadgets.
  • Elegant Outline: Our courses are visually appealing, where you can —
    • Track your progress on the left-side navigation toolbar.
    • Engage in drag-and-drop sorting activities and use the multiple response question to test your understanding of course topics.

With your newly acquired skills from this course can help you

  • Increase Your Hireability.
  • Make Yourself a Valuable Asset
  • Get Your Long-awaited Promotion.
  • Boost Your Pay-scale
  • Better Your Productivity

Certification:

Once you have successfully completed the Python for Data Science & Machine Learning: Zero to Hero course, you will receive a PDF certificate completely free of cost as a proof of your accomplishment. The hardcopy certificate is also available for the cost of £9.99. UK students are required to pay a £10 as a delivery fee, while international students have to pay £19.99 for the shipment of a hardcopy certificate to their designated address.

Who is this course for?

This Python for Data Science & Machine Learning: Zero to Hero course is developed for people who wish to excel in their professional and personal life. Learn from industry leaders and interact with a global network of experts by enrolling in this Python for Data Science & Machine Learning: Zero to Hero course.

This course is ideal for:

  • Beginners looking to learn Python programming.
  • Professionals seeking to expand their programming knowledge.
  • Students aiming to enter the data science field.
  • Anyone interested in building a foundation in Python.

Requirements

Enrolling in our Python for Data Science & Machine Learning: Zero to Hero course does not require any prior knowledge or experience. All that is required is an internet-connected gadget and a passion to learn.

Career Path

Participants in the Python for Data Science & Machine Learning: Zero to Hero course are revolutionizing the professional landscape, propelling their careers forward, and enhancing their livelihoods across the globe. This sought-after course is empowering learners to forge new employment opportunities, advance within their respective industries, and experience substantial personal growth.

After finishing the course, you can advance your profession. Look into jobs like:

  • Python Developer: £45,000 – £60,000
  • Data Analyst: £30,000 – £50,000
  • Machine Learning Engineer: £55,000 – £85,000
  • Software Engineer: £40,000 – £65,000
  • Data Scientist: £50,000 – £75,000
  • Python Automation Engineer: £40,000 – £60,000

 

Welcome to the Python for Data Science & ML bootcamp! 00:01:00
Introduction to Python 00:01:00
Setting Up Python 00:02:00
What is Jupyter? 00:01:00
Anaconda Installation Windows Mac and Ubuntu 00:04:00
How to implement Python in Jupyter 00:01:00
Managing Directories in Jupyter Notebook 00:03:00
Input & Output 00:02:00
Working with different datatypes 00:01:00
Variables 00:02:00
Arithmetic Operators 00:02:00
Comparison Operators 00:01:00
Logical Operators 00:03:00
Conditional statements 00:02:00
Loops 00:04:00
Sequences Part 1: Lists 00:03:00
Sequences Part 2: Dictionaries 00:03:00
Sequences Part 3: Tuples 00:01:00
Functions Part 1: Built-in Functions 00:01:00
Functions Part 2: User-defined Functions 00:03:00
Course Materials 00:00:00
Installing Libraries 00:01:00
Importing Libraries 00:01:00
Pandas Library for Data Science 00:01:00
NumPy Library for Data Science 00:01:00
Pandas vs NumPy 00:01:00
Matplotlib Library for Data Science 00:01:00
Seaborn Library for Data Science 00:01:00
Introduction to NumPy arrays 00:01:00
Creating NumPy arrays 00:06:00
Indexing NumPy arrays 00:06:00
Array shape 00:01:00
Iterating Over NumPy Arrays 00:05:00
Basic NumPy arrays: zeros() 00:02:00
Basic NumPy arrays: ones() 00:01:00
Basic NumPy arrays: full() 00:01:00
Adding a scalar 00:02:00
Subtracting a scalar 00:01:00
Multiplying by a scalar 00:01:00
Dividing by a scalar 00:01:00
Raise to a power 00:01:00
Transpose 00:01:00
Element-wise addition 00:02:00
Element-wise subtraction 00:01:00
Element-wise multiplication 00:01:00
Element-wise division 00:01:00
Matrix multiplication 00:02:00
Statistics 00:03:00
What is a Python Pandas DataFrame? 00:01:00
What is a Python Pandas Series? 00:01:00
DataFrame vs Series 00:01:00
Creating a DataFrame using lists 00:03:00
Creating a DataFrame using a dictionary 00:01:00
Loading CSV data into python 00:02:00
Changing the Index Column 00:01:00
Inplace 00:01:00
Examining the DataFrame: Head & Tail 00:01:00
Statistical summary of the DataFrame 00:01:00
Slicing rows using bracket operators 00:01:00
Indexing columns using bracket operators 00:01:00
Boolean list 00:01:00
Filtering Rows 00:01:00
Filtering rows using AND OR operators 00:02:00
Filtering data using loc() 00:04:00
Filtering data using iloc() 00:02:00
Adding and deleting rows and columns 00:03:00
Sorting Values 00:02:00
Exporting and saving pandas DataFrames 00:02:00
Concatenating DataFrames 00:01:00
groupby() 00:03:00
Introduction to Data Cleaning 00:01:00
Quality of Data 00:01:00
Examples of Anomalies 00:01:00
Median-based Anomaly Detection 00:03:00
Mean-based anomaly detection 00:03:00
Z-score-based Anomaly Detection 00:03:00
Interquartile Range for Anomaly Detection 00:05:00
Dealing with missing values 00:06:00
Regular Expressions 00:07:00
Feature Scaling 00:03:00
Introduction (Exploratory Data Analysis in Python) 00:01:00
What is Exploratory Data Analysis? 00:01:00
Univariate Analysis 00:02:00
Univariate Analysis: Continuous Data 00:06:00
Univariate Analysis: Categorical Data 00:02:00
Bivariate analysis: Continuous & Continuous 00:05:00
Bivariate analysis: Categorical & Categorical 00:03:00
Bivariate analysis: Continuous & Categorical 00:02:00
Detecting Outliers 00:06:00
Categorical Variable Transformation 00:04:00
Introduction to Time Series 00:02:00
Getting stock data using yfinance 00:03:00
Converting a Dataset into Time Series 00:04:00
Working with Time Series 00:04:00
Visualising a Time Series 00:03:00
Data Visualisation using python 00:01:00
Setting Up Matplotlib 00:01:00
Plotting Line Plots using Matplotlib 00:02:00
Title, Labels & Legend 00:05:00
Plotting Histograms 00:01:00
Plotting Bar Charts 00:02:00
Plotting Pie Charts 00:03:00
Plotting Scatter Plots 00:06:00
Plotting Log Plots 00:01:00
Plotting Polar Plots 00:02:00
Handling Dates 00:01:00
Creating multiple subplots in one figure 00:03:00
What is Machine Learning? 00:02:00
Applications of machine learning 00:02:00
Machine Learning Methods 00:01:00
What is Supervised learning? 00:01:00
What is Unsupervised learning? 00:01:00
Supervised learning vs Unsupervised learning 00:04:00
Introduction to regression 00:02:00
How Does Linear Regression Work? 00:02:00
Line representation 00:01:00
Implementation in python: Importing libraries & datasets 00:02:00
Implementation in python: Distribution of the data 00:02:00
Implementation in python: Creating a linear regression object 00:03:00
Understanding Multiple linear regression 00:02:00
Exploring the dataset 00:04:00
Encoding Categorical Data 00:05:00
Splitting data into Train and Test Sets 00:02:00
Training the model on the Training set 00:01:00
Predicting the Test Set results 00:03:00
Evaluating the performance of the regression model 00:01:00
Root Mean Squared Error in Python 00:03:00
Introduction to classification 00:01:00
K-Nearest Neighbours algorithm 00:01:00
Example of KNN 00:01:00
K-Nearest Neighbours (KNN) using python 00:01:00
Importing required libraries 00:01:00
Importing the dataset 00:02:00
Splitting data into Train and Test Sets 00:03:00
Feature Scaling 00:01:00
Importing the KNN classifier 00:02:00
Results prediction & Confusion matrix 00:02:00
Introduction to decision trees 00:01:00
What is Entropy? 00:01:00
Exploring the dataset 00:01:00
Decision tree structure 00:01:00
Importing libraries & datasets 00:01:00
Encoding Categorical Data 00:03:00
Splitting data into Train and Test Sets 00:01:00
Results Prediction & Accuracy 00:03:00
Introduction (Classification Algorithms: Logistic regression) 00:01:00
Implementation steps 00:01:00
Importing libraries & datasets 00:02:00
Splitting data into Train and Test Sets 00:01:00
Pre-processing 00:02:00
Training the model 00:01:00
Results prediction & Confusion matrix 00:02:00
Logistic Regression vs Linear Regression 00:02:00
Introduction to clustering 00:01:00
Use cases 00:01:00
K-Means Clustering Algorithm 00:01:00
Elbow method 00:02:00
Steps of the Elbow method 00:01:00
Implementation in python 00:04:00
Hierarchical clustering 00:01:00
Density-based clustering 00:02:00
Implementation of k-means clustering in python 00:01:00
Importing the dataset 00:03:00
Visualising the dataset 00:02:00
Defining the classifier 00:02:00
3D Visualisation of the clusters 00:03:00
3D Visualisation of the predicted values 00:03:00
Number of predicted clusters 00:02:00
Introduction (Recommender System) 00:01:00
Collaborative Filtering in Recommender Systems 00:01:00
Content-based Recommender System 00:01:00
Importing libraries & datasets 00:03:00
Merging datasets into one dataframe 00:01:00
Sorting by title and rating 00:04:00
Histogram showing number of ratings 00:01:00
Frequency distribution 00:01:00
Jointplot of the ratings and number of ratings 00:01:00
Data pre-processing 00:02:00
Sorting the most-rated movies 00:01:00
Grabbing the ratings for two movies 00:01:00
Correlation between the most-rated movies 00:02:00
Correlation between the most-rated movies 00:02:00
Sorting the data by correlation 00:01:00
Filtering out movies 00:01:00
Sorting values 00:01:00
Repeating the process for another movie 00:02:00
Conclusion 00:01:00

Certification:​

Once you have successfully completed this course, you will receive a PDF certificate as a proof of your accomplishment. The hardcopy certificate is also available for the cost of £9.99.
Note: Delivery of hardcopy certificate is free within the United Kingdom. However, to obtain a hardcopy certificate, International students will have to pay additional fees based on their location.

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I have studied a few courses and have…

I have studied a few courses and have found the whole experience quick and efficient, and believe the courses will help contribute to my job in the Healthcare. Fabulous!

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