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Data Science for Beginners - Python, Azure ML and Tableau

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Graeme Gordon

8:49:09

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  • 1 -Introduction.mp4
    02:11
  • 2 -The Data Scientist Role.mp4
    06:54
  • 1 -Setting Up Your Python Environment with Anaconda and Jupyter Notebook.mp4
    04:50
  • 2 -Jupyter Notebook Overview.mp4
    08:03
  • 3 -Notebooks.zip
  • 3 -Understanding Variables in Python.mp4
    09:02
  • 3 - Download All Notebooks Here.html
  • 4 -Data Types and Their Importance.mp4
    03:47
  • 5 -Working with Lists.mp4
    03:03
  • 6 -Exploring Dictionaries.mp4
    04:12
  • 7 -Tuples and Sets.mp4
    05:42
  • 8 -Introduction to Arithmetic and Comparison Operators.mp4
    04:35
  • 9 -Conditional Statements in Python.mp4
    06:27
  • 10 -Using For Loops.mp4
    04:28
  • 11 -Combining For Loops with Conditional Statements.mp4
    08:11
  • 12 -Defining Functions in Python.mp4
    09:21
  • 13 -Test your Knowledge Python Basics Q & A.mp4
    10:23
  • 1 -Descriptive Statistics Mean, Median, and Mode Explained.mp4
    05:24
  • 2 -Measuring Spread Standard Deviation and Variance.mp4
    03:30
  • 3 -Understanding Sampling Techniques in Data Science.mp4
    09:29
  • 4 -Understanding Variables.mp4
    05:20
  • 5 -Frequency Distribution Organizing Data for Insights.mp4
    03:38
  • 1 -DataScience salaries 2024.csv
  • 1 -Reading CSV Files with Pandas.mp4
    06:34
  • 1 -titanic.csv
  • 2 -Using Describe to Summarize Data.mp4
    08:02
  • 3 -Algebraic Operations in Pandas.mp4
    06:51
  • 4 -Renaming Columns.mp4
    06:27
  • 5 -Handling Missing Values.mp4
    11:55
  • 6 -Counting Values Understanding Data Distribution.mp4
    04:39
  • 7 -Grouping Data Aggregating Insights.mp4
    06:25
  • 8 -Filtering Data in Pandas.mp4
    09:33
  • 9 -Applying Functions to Data.mp4
    08:38
  • 10 -Converting Dates in Pandas.mp4
    08:33
  • 10 -web sales.zip
  • 11 -Plotting Data with Pandas.mp4
    05:51
  • 12 -Test your Knowledge Pandas Q & A.mp4
    08:40
  • 1 -Introduction Signing Up for ChatGPT.mp4
    04:00
  • 2 -Assigning a Role for ChatGPT.mp4
    04:11
  • 3 -Crafting Effective Instructions for ChatGPT.mp4
    04:17
  • 4 -Enhancing Responses by Providing Context.mp4
    06:05
  • 5 -Improving Responses with Few-Shot Examples.mp4
    07:21
  • 6 -Limitations and Considerations When Using ChatGPT.mp4
    02:21
  • 7 -Practical Data Analysis with ChatGPT (Part 1).mp4
    10:58
  • 8 -Practical Data Analysis with ChatGPT (Part 2).mp4
    05:19
  • 1 -Introduction to Line Plots.mp4
    11:51
  • 2 -Creating Histograms.mp4
    08:11
  • 3 -Customizing Plot Size (Figsize).mp4
    02:37
  • 4 -Formatting Your Plots.mp4
    06:31
  • 5 -Correlation Explained.mp4
    04:05
  • 6 -2018-2019 Happiness.csv
  • 6 -Building Basic Scatter Plots.mp4
    08:13
  • 7 -Creating Subplots.mp4
    10:06
  • 8 -Box Plots for Data Spread and Outliers.mp4
    05:41
  • 9 -Using Violin Plots for Distribution.mp4
    02:44
  • 10 -Visualizing Categorical Data with Bar Plots.mp4
    04:58
  • 11 -Advanced Scatter Plots with Seaborn.mp4
    05:41
  • 12 -Correlation Heatmaps.mp4
    09:09
  • 13 -Using Pair Plots for Multi-Variable Relationships.mp4
    08:04
  • 1 -Understanding the Machine Learning Lifecycle.mp4
    06:15
  • 2 -Supervised and Unsupervised Learning.mp4
    04:42
  • 3 -Supervised Learning Explained.mp4
    05:27
  • 4 -Unsupervised Learning Explained.mp4
    05:11
  • 5 -Practical Example of Linear Regression in Python - Part 1.mp4
    09:18
  • 5 -house data.csv
  • 6 -Practical Example of Linear Regression in Python - Part 2.mp4
    13:41
  • 1 -Data Import and Initial Analysis.mp4
    08:46
  • 1 -housing.csv
  • 2 -Preparing Categorical Data with One-Hot Encoding.mp4
    08:07
  • 3 -Mapping Geographic Data with Longitude and Latitude.mp4
    03:09
  • 4 -Scaling Data with Log Transformation.mp4
    05:14
  • 5 -Feature Engineering.mp4
    01:45
  • 6 -Understanding Multicollinearity.mp4
    02:45
  • 7 -Detecting Multicollinearity with a Heatmap.mp4
    08:27
  • 8 -Training the Regression Model.mp4
    05:29
  • 9 -Evaluating Model Performance with R-Squared.mp4
    07:47
  • 10 -Understanding Mean Squared Error (MSE).mp4
    04:21
  • 11 -Introduction to Random Forests.mp4
    04:41
  • 12 -Applying Random Forest to the Housing Project.mp4
    04:56
  • 13 -Exploring Feature Importance in Random Forests.mp4
    06:35
  • 1 -Introduction to Hypothesis Testing.mp4
    03:08
  • 2 -Understanding Null and Alternative Hypotheses.mp4
    02:56
  • 3 -Exploring t-Tests and z-Tests.mp4
    02:24
  • 4 -Understanding the P-Value.mp4
    02:53
  • 5 -Practical Example of Hypothesis Testing with Python.mp4
    06:01
  • 1 -Signing Up and Getting Started with Azure.mp4
    02:37
  • 2 -Optimizing and Managing Azure Costs.mp4
    03:38
  • 3 -Setting Up Your Workspace and Compute Environment.mp4
    04:48
  • 4 -Creating and Importing Data Assets.mp4
    06:35
  • 4 -Loan.csv
  • 5 -Design the Model in Azure Machine Learning Designer.mp4
    14:15
  • 6 -Interpreting the Confusion Matrix for Model Evaluation.mp4
    02:18
  • 7 -Measuring Model Accuracy and AUC.mp4
    04:00
  • 8 -Evaluating Model Precision, Recall, and F1 Score.mp4
    06:32
  • 9 -Final Model Evaluation and Insights.mp4
    07:27
  • Description


    Practical Data Science: Machine Learning, AI, Cloud and Data Analysis in Python, Tableau and Azure ML with Real Projects

    What You'll Learn?


    • Hands On Learning of Data Analysis and Manipulation in Python
    • Understand and Apply Key Statistical Concepts
    • Visualize Data to Extract Insights using Matplotlib and Seaborn
    • Develop and Evaluate Machine Learning Models with Python and Azure Machine Learning Studio
    • Experience with Cloud Computing and Natural Language Processing
    • Create Interactive Dashboards and Visualize Data Insights Using Tableau

    Who is this for?


  • This course is perfect for beginners who are curious about data science and want a hands-on introduction to this exciting field.
  • It’s ideal for students, career changers, and professionals from non-technical backgrounds who are looking to build a solid foundation in data science skills, including Python programming, data analysis, statistics, machine learning and cloud computing.
  • What You Need to Know?


  • There are no prerequisites for this course - it's designed for beginners
  • All you need is a computer, an internet connection, and a willingness to learn
  • More details


    Description

    "Data Science for Beginners - Python & Azure ML with Projects" is a hands-on course that introduces the essential skills needed to work in data science. Designed for beginners, this course covers Python programming, data analysis, statistics, machine learning, and cloud computing with Azure. Each topic is taught through practical examples, real-world datasets, and step-by-step guidance, making it accessible and engaging for anyone starting out in data science.

    What You Will Learn

    • Python Programming Essentials: Start with a foundation in Python, covering essential programming concepts such as variables, data types, functions, and control flow. Python is a versatile language widely used in data science, and mastering these basics will help you perform data analysis and build machine learning models confidently.

    • Data Cleaning and Analysis with Pandas: Get started with data manipulation and cleaning using Pandas, a powerful data science library. You’ll learn techniques for importing, exploring, and transforming data, enabling you to analyze data effectively and prepare it for modeling.

    • Statistics for Data Science: Build your knowledge of key statistical concepts used in data science. Topics include measures of central tendency (mean, median, mode), measures of variability (standard deviation, variance), and hypothesis testing. These concepts will help you understand and interpret data insights accurately.

    • Data Visualization: Gain hands-on experience creating visualizations with Matplotlib and Seaborn. You’ll learn to make line plots, scatter plots, bar charts, heatmaps, and more, enabling you to communicate data insights clearly and effectively.

    • Interactive Data Visualization with Tableau

      Master Tableau, a leading business intelligence tool, to create stunning and interactive dashboards. You’ll learn to:

      • Connect to data sources and prepare data for visualization.

      • Build charts such as bar graphs, histograms and donut charts.

      • Create calculated fields to segment and analyze data, like churn rate, tenure, age groups, and balance ranges.

      • Develop a Bank Churn Dashboard, integrating multiple visualizations and filters to gain actionable insights.

      • Publish your Tableau dashboards and share them with stakeholders.

      This section provides practical skills to analyze and visualize data interactively, equipping you to present insights effectively in real-world scenarios.

    Practical, Real-World Projects

    This course emphasizes learning by doing, with two in-depth projects that simulate real-world data science tasks:

    • California Housing Data Analysis: In this project, you’ll work with California housing data to perform data cleaning, feature engineering, and analysis. You’ll build a regression model to predict housing prices and evaluate its performance using metrics like R-squared and Mean Squared Error (MSE). This project provides a full-cycle experience in working with data, from exploration to model evaluation.

    • Loan Approval Model in Azure ML: In the second project, you’ll learn how to create, deploy, and test a machine learning model on the cloud using Azure Machine Learning. You’ll build a classification model to predict loan approval outcomes, mastering concepts like data splitting, accuracy, and model evaluation with metrics such as precision, recall, and F1-score. This project will familiarize you with Azure ML, a powerful tool used in industry for cloud-based machine learning.

    • Customer Churn Analysis and Prediction: In this project, you will analyze customer data to identify patterns and factors contributing to churn in a banking environment. You’ll clean and prepare the dataset, then build a predictive model to classify customers who are likely to leave the bank. By learning techniques such as feature engineering, model training, and evaluation, you will utilize metrics like accuracy, precision, recall, and F1-score to assess your model's performance. This project will provide you with practical experience in data analysis and machine learning, giving you the skills to tackle real-world challenges in customer retention

    • Bank Churn Dashboard in Tableau

      Build an interactive dashboard to visualize customer churn data. Use charts, filters, and calculated fields to highlight key insights, enabling users to understand churn patterns and customer behavior.

    Machine Learning and Cloud Computing

    • Machine Learning Techniques: This course covers the foundational machine learning techniques used in data science. You’ll learn to build and apply models like linear regression and random forests, which are among the most widely used models in data science for regression and classification tasks. Each model is explained step-by-step, with practical examples to reinforce your understanding.

    • Cloud Computing with Azure ML: Get introduced to the world of cloud computing and learn how Azure Machine Learning (Azure ML) can simplify model building, deployment, and scaling. You’ll explore how to set up an environment, work with data assets, and run machine learning experiments in Azure. Learning Azure ML will prepare you for a cloud-based data science career and give you skills relevant to modern data science workflows.

    Additional Features

    • Using ChatGPT as a Data Science Assistant: Discover how to leverage AI in your data science journey by using ChatGPT. You’ll learn techniques for enhancing productivity, drafting data queries, and brainstorming ideas with AI, making it a valuable assistant for your future projects.

    • Testing and Practice: Each section includes quizzes and practice exercises to reinforce your learning. You’ll have the opportunity to test your understanding of Python, data analysis, and machine learning concepts through hands-on questions and real coding challenges.

    By the end of this course, you’ll have completed practical projects, gained a strong foundation in Python, and developed skills in data science workflows that are essential in today’s data-driven world. Whether you’re looking to start a career in data science, upskill, or explore a new field, this course offers the knowledge and hands-on experience you need to get started.

    Who this course is for:

    • This course is perfect for beginners who are curious about data science and want a hands-on introduction to this exciting field.
    • It’s ideal for students, career changers, and professionals from non-technical backgrounds who are looking to build a solid foundation in data science skills, including Python programming, data analysis, statistics, machine learning and cloud computing.

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    Graeme Gordon
    Graeme Gordon
    Instructor's Courses
    I am a self taught Data and Insights Analyst with over 4 years experience working with data. I use SQL, Tableau and Microsoft Excel at an advanced level in my job every day and want to share my skills and teach how I would have wanted to learn these topics which can help you become a data analyst quickly. I aim to make my courses practical so you are getting real experience and getting a feel for what the job will be like. It is the best way to learn in my opinion. Please get in touch if you have any questions.
    Students take courses primarily to improve job-related skills.Some courses generate credit toward technical certification. Udemy has made a special effort to attract corporate trainers seeking to create coursework for employees of their company.
    • language english
    • Training sessions 86
    • duration 8:49:09
    • Release Date 2025/02/24