Use Data Science & Statistics To Solve Business Problems & Gain Insights Into Everyday Problems With 35+ Case Studies.
GET STARTEDWhat you’ll learn?
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Pandas to become a Data Analytics & Data Wrangling Whiz ensuring Data Quality.
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The most useful Machine Learning Algorithms with Scikit-learn.
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Statistics and Probability.
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Hypothesis Testing & A/B Testing.
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To create beautiful charts, graphs and Visualisations that tell a Story with Data.
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Understand common business problems and how to apply Data Science in solving them.
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Data Dashboards with Google Data Studio.
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36 Real World Business Problems and Case Studies.
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Recommendation Engines – Collaborative Filtering, LiteFM and Deep Learning methods.
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Natural Language Processing (NLP) using NLTK and Deep Learning.
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Time Series Forecasting with Facebook’s Prophet.
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Data Science in Marketing (Ad engagemnt & Performance).
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Consumer Analytics and Clustering.
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Social Media Sentiment Analysis.
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Understand Deep Learning (Keras, Tensorflow) and how to use it in several real world case studies.
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Deployment of Machine Learning Models in Production using Heroku and Flask (CI/CD).
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Perform Sports, Healthcare, Resturant and Economic Analaytics.
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Big Data Analysis and Machine Learning with PySpark.
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How to use Data Science in Retail (Market Basket Analysis, Sales Analytics and Demand forecasting).
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You’ll be using pre-configured Jupyter Notebooks in Google Colab (no hassle or setup, extremely simple to get started).
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All code examples run in your web browser regardless if you’re running Windows, macOS, Linux or Android.
Course content
Requirements
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No need to be a programming or math whiz, basic highschool math would be sufficient
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All programming is taught in this course making it beginner friendly
Data Science, Analytics & AI for Business & the Real World™ 2020
This is a practical course, the course I wish I had when I first started learning Data Science.
It focuses on understanding all the basic theory and programming skills required as a Data Scientist, but the best part is that it features 35+ Practical Case Studies covering so many common business problems faced by Data Scientists in the real world.
Right now, even in spite of the Covid-19 economic contraction, traditional businesses are hiring Data Scientists in droves!
And they expect new hires to have the ability to apply Data Science solutions to solve their problems. Data Scientists who can do this will prove to be one of the most valuable assets in business over the next few decades!
“Data Scientist has become the top job in the US for the last 4 years running!” according to Harvard Business Review & Glassdoor.
However, Data Science has a difficult learning curve – How does one even get started in this industry awash with mystique, confusion, impossible-looking mathematics, and code? Even if you get your feet wet, applying your newfound Data Science knowledge to a real-world problem is even more confusing.
This course seeks to fill all those gaps in knowledge that scare off beginners and simultaneously apply your knowledge of Data Science and Deep Learning to real-world business problems.
This course has a comprehensive syllabus that tackles all the major components of Data Science knowledge.
Our Complete 2020 Data Science Learning path includes:
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Using Data Science to Solve Common Business Problems
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The Modern Tools of a Data Scientist – Python, Pandas, Scikit-learn, NumPy, Keras, prophet, statsmod, scipy and more!
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Statistics for Data Science in Detail – Sampling, Distributions, Normal Distribution, Descriptive Statistics, Correlation and Covariance, Probability Significance Testing, and Hypothesis Testing.
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Visualization Theory for Data Science and Analytics using Seaborn, Matplotlib & Plotly (Manipulate Data and Create Information Captivating Visualizations and Plots).
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Dashboard Design using Google Data Studio
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Machine Learning Theory – Linear Regressions, Logistic Regressions, Decision Trees, Random Forests, KNN, SVMs, Model Assessment, Outlier Detection, ROC & AUC and Regularization
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Deep Learning Theory and Tools – TensorFlow 2.0 and Keras (Neural Nets, CNNs, RNNs & LSTMs)
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Solving problems using Predictive Modeling, Classification, and Deep Learning
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Data Analysis and Statistical Case Studies – Solve and analyze real-world problems and datasets.
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Data Science in Marketing – Modeling Engagement Rates and perform A/B Testing
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Data Science in Retail – Customer Segmentation, Lifetime Value, and Customer/Product Analytics
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Unsupervised Learning – K-Means Clustering, PCA, t-SNE, Agglomerative Hierarchical, Mean Shift, DBSCAN and E-M GMM Clustering
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Recommendation Systems – Collaborative Filtering and Content-based filtering + Learn to use LiteFM + Deep Learning Recommendation Systems
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Natural Language Processing – Bag of Words, Lemmatizing/Stemming, TF-IDF Vectorizer, and Word2Vec
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Big Data with PySpark – Challenges in Big Data, Hadoop, MapReduce, Spark, PySpark, RDD, Transformations, Actions, Lineage Graphs & Jobs, Data Cleaning and Manipulation, Machine Learning in PySpark (MLLib)
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Deployment to the Cloud using Heroku to build a Machine Learning API
Our fun and engaging Case Studies include:
Sixteen (16) Statistical and Data Analysis Case Studies:
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Predicting the US 2020 Election using multiple Polling Datasets
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Predicting Diabetes Cases from Health Data
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Market Basket Analysis using the Apriori Algorithm
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Predicting the Football/Soccer World Cup
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Covid Analysis and Creating Amazing Flourish Visualisations (Barchart Race)
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Analyzing Olympic Data
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Is Home Advantage Real in Soccer or Basketball?
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IPL Cricket Data Analysis
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Streaming Services (Netflix, Hulu, Disney Plus and Amazon Prime) – Movie Analysis
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Pizza Restaurant Analysis – Most Popular Pizzas across the US
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Micro Brewery and Pub Analysis
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Supply Chain Analysis
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Indian Election Analysis
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Africa Economic Crisis Analysis
Six (6) Predictive Modeling & Classifiers Case Studies:
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Figuring Out Which Employees May Quit (Retention Analysis)
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Figuring Out Which Customers May Leave (Churn Analysis)
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Who do we target for Donations?
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Predicting Insurance Premiums
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Predicting Airbnb Prices
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Detecting Credit Card Fraud
Four (4) Data Science in Marketing Case Studies:
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Analyzing Conversion Rates of Marketing Campaigns
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Predicting Engagement – What drives ad performance?
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A/B Testing (Optimizing Ads)
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Who are Your Best Customers? & Customer Lifetime Values (CLV)
Four (4) Retail Data Science Case Studies:
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Product Analytics (Exploratory Data Analysis Techniques
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Clustering Customer Data from Travel Agency
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Product Recommendation Systems – Ecommerce Store Items
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Movie Recommendation System using LiteFM
Two (2) Time-Series Forecasting Case Studies:
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Sales Forecasting for a Store
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Stock Trading using Re-Enforcement Learning
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Brent Oil Price Forecasting
Three (3) Natural Langauge Processing (NLP) Case Studies:
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Summarizing Reviews
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Detecting Sentiment in text
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Spam Detection
One (1) PySpark Big Data Case Studies:
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News Headline Classification
One (1) Deployment Project:
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Deploying your Machine Learning Model to the Cloud using Flask & Heroku
Who this course is for:
- Beginners to Data Science
- Business Analysts who wish to do more with their data
- College graduates who lack real world experience
- Business oriented persons (Management or MBAs) who’d like to use data to enhance their business
- Software Developers or Engineers who’d like to start learning Data Science
- Anyone looking to become more employable as a Data Scientist
- Anyone with an interest in using Data to Solve Real World Problems
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