Data Analysis Bootcamp™ 21 Real World Case Studies
Data Analysis Bootcamp™ 21 Real World Case Studies, available at $79.99, has an average rating of 4.48, with 168 lectures, based on 1116 reviews, and has 9799 subscribers.
You will learn about Understand the value of data for businesses The importance of Data Analytics The role of a Data Analyst Learn to use Python, Pandas, Matplotlib & Seaborn, Scikit-learn Learn Visualization Tools such as Matplotlib, Seaborn, Plotly and Mapbox Hypothesis Testing and A/B Testing – Understand t-tests and p values Unsupervised Machine Learning with K-Means Clustering Machine Learning from Linear Regressions (polynomial & multivariate), K-NNs, Logistic Regressions, SVMs, Decision Trees & Random Forests Advanced Pandas techniques from Vectorizing to Parallel Processsng Statistical Theory, Probability Theory, Distributions, Exploratory Data Analysis Ananlytic Case Studies involving Retail, Health, Elections, Sports, Resturants, Airbnb, Uber and more! Full Tutorial on Google Data Studio for Dashboard Creation This course is ideal for individuals who are Begineers to Data Anaysis or Business Analysts who wish to do more with their data or College graduates who lack real worlde experience or Business oriented persons (Management or MBAs) who'd like to use data to enhance their skills or Software Developers or Engineers who'd like to move into a Data Analyst Career or Anyone looking to understand Data and uncover insights or Those looking for a good foundation before starting a Data Science Masters/Bootcamp It is particularly useful for Begineers to Data Anaysis or Business Analysts who wish to do more with their data or College graduates who lack real worlde experience or Business oriented persons (Management or MBAs) who'd like to use data to enhance their skills or Software Developers or Engineers who'd like to move into a Data Analyst Career or Anyone looking to understand Data and uncover insights or Those looking for a good foundation before starting a Data Science Masters/Bootcamp.
Enroll now: Data Analysis Bootcamp™ 21 Real World Case Studies
Summary
Title: Data Analysis Bootcamp™ 21 Real World Case Studies
Price: $79.99
Average Rating: 4.48
Number of Lectures: 168
Number of Published Lectures: 168
Number of Curriculum Items: 168
Number of Published Curriculum Objects: 168
Original Price: $199.99
Quality Status: approved
Status: Live
What You Will Learn
- Understand the value of data for businesses
- The importance of Data Analytics
- The role of a Data Analyst
- Learn to use Python, Pandas, Matplotlib & Seaborn, Scikit-learn
- Learn Visualization Tools such as Matplotlib, Seaborn, Plotly and Mapbox
- Hypothesis Testing and A/B Testing – Understand t-tests and p values
- Unsupervised Machine Learning with K-Means Clustering
- Machine Learning from Linear Regressions (polynomial & multivariate), K-NNs, Logistic Regressions, SVMs, Decision Trees & Random Forests
- Advanced Pandas techniques from Vectorizing to Parallel Processsng
- Statistical Theory, Probability Theory, Distributions, Exploratory Data Analysis
- Ananlytic Case Studies involving Retail, Health, Elections, Sports, Resturants, Airbnb, Uber and more!
- Full Tutorial on Google Data Studio for Dashboard Creation
Who Should Attend
- Begineers to Data Anaysis
- Business Analysts who wish to do more with their data
- College graduates who lack real worlde experience
- Business oriented persons (Management or MBAs) who'd like to use data to enhance their skills
- Software Developers or Engineers who'd like to move into a Data Analyst Career
- Anyone looking to understand Data and uncover insights
- Those looking for a good foundation before starting a Data Science Masters/Bootcamp
Target Audiences
- Begineers to Data Anaysis
- Business Analysts who wish to do more with their data
- College graduates who lack real worlde experience
- Business oriented persons (Management or MBAs) who'd like to use data to enhance their skills
- Software Developers or Engineers who'd like to move into a Data Analyst Career
- Anyone looking to understand Data and uncover insights
- Those looking for a good foundation before starting a Data Science Masters/Bootcamp
Data Analysts aim to discover how data can be used to answer questions and solve problems through the use of technology. Many believe this will be the job of the future and be the single most important skill a job application can have in 2020.
In the last two decades, the pervasiveness of the internet and interconnected devices has exponentially increased the data we produce. The amount of data available to us is Overwhelming and Unprecedented. Obtaining, transforming and gaining valuable insights from this data is fast becoming the most valuable and in-demand skill in the 21st century.
In this course, you’ll learn how to use Data, Analytics, Statistics, Probability, and basic Data Science to give an edge in your career and everyday life. Being able to see through the noise within data, and explain it to others will make you invaluable in any career.
We will examine over 2 dozen real-world data setsand show how to obtain meaningful insights. We will take you on one of the most up-to-date and comprehensive learning paths using modern-day tools like Python, Google Colab and Google Data Studio.
You’ll learn how to create awesome Dashboards, tell stories with Data and Visualizations, make Predictions, Analyze experiments and more!
Our learning path to becoming a fully-fledged Data Analyst includes:
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The Importance of Data Analytics
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Python Crash Course
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Data Manipulations and Wrangling with Pandas
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Probability and Statistics
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Hypothesis Testing
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Data Visualization
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Geospatial Data Visualization
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Story Telling with Data
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Google Data Studio Dashboard Design – Complete Course
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Machine Learning – Supervised Learning
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Machine Learning – Unsupervised Learning (Clustering)
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Practical Analytical Case Studies
Google Data Studio Dashboard & Visualization Project:
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Executive Sales Dashboard (Google Data Studio)
Python, Pandas & Data Analytics and Data Science Case Studies:
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Health Care Analytics & Diabetes Prediction
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Africa Economic, Banking & Systematic Crisis Data
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Election Poll Analytics
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Indian Election 2009 vs 2014
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Supply-Chain for Shipping Data Analytics
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Brent Oil Prices Analytics
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Olympics Analysis – The Greatest Olympians
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Home Advantage Analysis in Basketball and Soccer
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IPL Cricket Data Analytics
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Predicting the Soccer World Cup
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Pizza Resturant Analytics
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Bar and Pub Analytics
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Retail Product Sales Analytics
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Customer Clustering
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Marketing Analytics – What Drives Ad Performance
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Text Analytics – Airline Tweets (Word Clusters)
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Customer Lifetime Values
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Time Series Forecasting – Demand/Sales Forecast
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Airbnb Sydney Exploratory Data Analysis
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A/B Testing
Course Curriculum
Chapter 1: Course Introduction & the Importance of Data Analysts
Lecture 1: Course Introduction
Lecture 2: The Importance of Data Analyst
Lecture 3: Why Data is the new Oil
Lecture 4: Making Sense of Buzz Words, Data Science, Big Data, Machine & Deep Learning
Lecture 5: The Roles in the Data World – Analyst, Engineer, Scientist, Statistician, DevOps
Chapter 2: Download Code and Slides and Setup Google Colab
Lecture 1: Download Code and Slides
Lecture 2: Download Course Code, Slides and Setup Google Colab for your iPython Notebooks
Chapter 3: Python Crash Course
Lecture 1: Why use Python for Data Anakytics and Data Science?
Lecture 2: Python – Basic Variables
Lecture 3: Python – Array/Lists and Dictionaries
Lecture 4: Python – Conditional Statements
Lecture 5: Python – Loops
Lecture 6: Python – Functions
Lecture 7: Python – Classes
Chapter 4: Pandas – Data Series and Manipulation
Lecture 1: Introduction to Pandas
Lecture 2: Pandas 1 – Data Series
Lecture 3: Pandas 2A – DataFrames – Index, Slice, Stats, Finding Empty cells, Filtering
Lecture 4: Pandas 2B – DataFrames – Index, Slice, Stats, Finding Empty cells & Filtering
Chapter 5: Pandas – Data Cleaning & Aggregration
Lecture 1: Pandas 3B – Data Cleaning – Alter Colomns/Rows, Missing Data & String Operations
Lecture 2: Pandas 3A – Data Cleaning – Alter Colomns/Rows, Missing Data & String Operations
Lecture 3: Pandas 4 – Data Aggregation – GroupBy, Map, Pivot, Aggreate Functions
Chapter 6: Pandas – Feature Engineering & Joins/Merge/Concatenating
Lecture 1: Pandas 5 – Feature Engineer, Lambda and Apply
Lecture 2: Pandas 6 – Concatenating, Merging and Joinining
Chapter 7: Pandas – Time Series Data
Lecture 1: Pandas 7 – Time Series Data
Chapter 8: Advanced Pandas
Lecture 1: Pandas 7 – ADVANCED Operations – Iterows, Vectorization and Numpy
Lecture 2: Pandas 8 – ADVANCED Operations – More Map, Zip and Apply
Lecture 3: Pandas 9 – Advanced Operations – Parallel Processing
Chapter 9: Map Visualizations
Lecture 1: Map Visualizations with Plotly – Cloropeths from Scratch – USA and World
Lecture 2: Map Visualizations with Plotly – Heatmaps, Scatter Plots and Lines
Chapter 10: Statistics for Data Analysts & Visualizations
Lecture 1: Introduction to Statistics
Lecture 2: Descriptive Statistics – Why Statistical Knowledge is so Important
Lecture 3: Descriptive Statistics 1 – Exploratory Data Analysis (EDA) & Visualizations
Lecture 4: Descriptive Statistics 2 – Exploratory Data Analysis (EDA) & Visualizations
Lecture 5: Sampling, Averages & Variance And How to lie and Mislead with Statistics
Lecture 6: Variance, Standard Deviation and Bessel’s Correction
Lecture 7: Types of Variables – Quantitive and Qualitative
Lecture 8: Frequency Distributions
Lecture 9: Frequency Distributions Shapes
Lecture 10: Analyzing Frequency Distributions – What is the Best Type of Wine? Red or White?
Lecture 11: Covariance & Correlation – Do Amazon & Google know you better than anyone else?
Lecture 12: Sampling – Sample Sizes & Confidence Intervals – What Can You Trust?
Lecture 13: Mean, Mode and Median – Not as Simple As You'd Think
Lecture 14: The Normal Distribution & the Central Limit Theorem
Lecture 15: Lying with Correlations – Divorce Rates in Maine caused by Margarine Consumption
Lecture 16: Z-Scores
Chapter 11: Probability Theory
Lecture 1: Probability – An Introduction
Lecture 2: Estimating Probability
Lecture 3: Addition Rule
Lecture 4: Permutations & Combinations
Lecture 5: Bayes Theorem
Chapter 12: Hypothesis Testing
Lecture 1: Hypothesis Testing Introduction
Lecture 2: Statistical Significance
Lecture 3: Hypothesis Testing – P Value
Lecture 4: Hypothesis Testing – Pearson Correlation
Chapter 13: Google Data Studio – Introduction & Setup
Lecture 1: All about Google Data Studio
Lecture 2: Opening Google Data Studio and Uploading Data
Chapter 14: Google Data Studio – Your First Dashboard
Lecture 1: Your First Dashboard Part 1
Lecture 2: Your First Dashboard Part 2
Lecture 3: Creating New Fields
Chapter 15: Google Data Studio – Pivot & Dynamic Tables (with Filters)
Lecture 1: Pivot Tables
Lecture 2: Dynamic Filtered Tables
Chapter 16: Google Data Studio – Scorecards and Time Comparison
Lecture 1: Scorecards
Lecture 2: Scorecards with Time Comparison
Chapter 17: Google Data Studio – Bar Charts, Line Charts and Time Series Plots
Lecture 1: Bar Charts
Lecture 2: Line Charts
Lecture 3: Time Series and Comparitive Time Series Plots
Chapter 18: Google Data Studio – Pie charts, Donut Charts, Treemaps & Scatter Plots
Lecture 1: Pie Charts, Donut Charts and Tree Maps
Lecture 2: Scatter Plots
Chapter 19: Google Data Studio – Geographic & Map Plots
Lecture 1: Google Data Studio – Geographic & Map Plots
Chapter 20: Google Data Studio – Bullet and Line Area Plots
Lecture 1: Google Data Studio – Scatter Plots
Chapter 21: Google Data Studio – Sharing your Interactive Dashboards
Lecture 1: Google Data Studio – Sharing your Interactive Dashboards
Chapter 22: Retail Sales Dashboard for Executives
Lecture 1: Homework Project – Create Executive Sales Dashboard
Chapter 23: Introduction to Machine Learning
Lecture 1: How Machine Learning enables Computers to Learn
Lecture 2: What is a Machine Learning Model?
Lecture 3: Types of Machine Learning
Chapter 24: Linear Regressions
Lecture 1: Linear Regression – Introduction to Cost Functions and Gradient Descent
Instructors
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Rajeev D. Ratan
Data Scientist, Computer Vision Expert & Electrical Engineer -
Nidia Sahjara
NLP Engineer & Researcher
Rating Distribution
- 1 stars: 27 votes
- 2 stars: 26 votes
- 3 stars: 129 votes
- 4 stars: 364 votes
- 5 stars: 570 votes
Frequently Asked Questions
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You can view and review the lecture materials indefinitely, like an on-demand channel.
Can I take my courses with me wherever I go?
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