Data Science & Deep Learning for Business™ 20 Case Studies
Data Science & Deep Learning for Business™ 20 Case Studies, available at $64.99, has an average rating of 4.5, with 191 lectures, based on 1034 reviews, and has 11390 subscribers.
You will learn about Understand the value of data for business Solve common business problems in Marketing, Sales, Customer Clustering, Banking, Real Estate, Insurance, Travel and more! Python, Pandas, Matplotlib & Seaborn, SkLearn, Keras, Tensorflow, NLTK, Prophet, PySpark, MLLib and more! Machine Learning from Linear Regressions (polynomial & multivariate), K-NNs, Logistic Regressions, SVMs, Decision Trees & Random Forests Unsupervised Machine Learning with K-Means, Mean-Shift, DBSCAN, EM with GMMs, PCA and t-SNE Build a Product Recommendation Tool using collaborative & item/content based Hypothesis Testing and A/B Testing – Understand t-tests and p values Natural Langauge Processing – Summarize Reviews, Sentiment Analysis on Airline Tweets & Spam Detection To use Google Colab's iPython notebooks for fast, relaible cloud based data science work Deploy your Machine Learning Models on the cloud using AWS Advanced Pandas techniques from Vectorizing to Parallel Processsng Statistical Theory, Probability Theory, Distributions, Exploratory Data Analysis Predicting Employee Churn, Insurance Premiums, Airbnb prices, credit card fraud and who to target for donations Big Data skills using PySpark for Data Manipulation and Machine Learning Cluster customers based on Exploratory Data Analysis, then using K-Means to detect customer segments Build a Stock Trading Bot using re-inforement learning Apply Data Science & Analytics to Retail, performing segementation, analyzing trends, determining valuable customers and more! How to apply Data Science in Marketing to improve Conversion Rates, Predict Engagement and Customer Life Time Value This course is ideal for individuals who are Begineers to Data Science or Business Analysts who wish to do more with their data or College graduates who lack real world experience or Business oriented persons (Management or MBAs) who'd like to use data to enhance their business or Software Developers or Engineers who'd like to start learning Data Science or Anyone looking to become more employable as a Data Scientist It is particularly useful for Begineers to Data Science or Business Analysts who wish to do more with their data or College graduates who lack real world experience or Business oriented persons (Management or MBAs) who'd like to use data to enhance their business or Software Developers or Engineers who'd like to start learning Data Science or Anyone looking to become more employable as a Data Scientist.
Enroll now: Data Science & Deep Learning for Business™ 20 Case Studies
Summary
Title: Data Science & Deep Learning for Business™ 20 Case Studies
Price: $64.99
Average Rating: 4.5
Number of Lectures: 191
Number of Published Lectures: 190
Number of Curriculum Items: 191
Number of Published Curriculum Objects: 190
Original Price: $199.99
Quality Status: approved
Status: Live
What You Will Learn
- Understand the value of data for business
- Solve common business problems in Marketing, Sales, Customer Clustering, Banking, Real Estate, Insurance, Travel and more!
- Python, Pandas, Matplotlib & Seaborn, SkLearn, Keras, Tensorflow, NLTK, Prophet, PySpark, MLLib and more!
- Machine Learning from Linear Regressions (polynomial & multivariate), K-NNs, Logistic Regressions, SVMs, Decision Trees & Random Forests
- Unsupervised Machine Learning with K-Means, Mean-Shift, DBSCAN, EM with GMMs, PCA and t-SNE
- Build a Product Recommendation Tool using collaborative & item/content based
- Hypothesis Testing and A/B Testing – Understand t-tests and p values
- Natural Langauge Processing – Summarize Reviews, Sentiment Analysis on Airline Tweets & Spam Detection
- To use Google Colab's iPython notebooks for fast, relaible cloud based data science work
- Deploy your Machine Learning Models on the cloud using AWS
- Advanced Pandas techniques from Vectorizing to Parallel Processsng
- Statistical Theory, Probability Theory, Distributions, Exploratory Data Analysis
- Predicting Employee Churn, Insurance Premiums, Airbnb prices, credit card fraud and who to target for donations
- Big Data skills using PySpark for Data Manipulation and Machine Learning
- Cluster customers based on Exploratory Data Analysis, then using K-Means to detect customer segments
- Build a Stock Trading Bot using re-inforement learning
- Apply Data Science & Analytics to Retail, performing segementation, analyzing trends, determining valuable customers and more!
- How to apply Data Science in Marketing to improve Conversion Rates, Predict Engagement and Customer Life Time Value
Who Should Attend
- Begineers 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
Target Audiences
- Begineers 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
Welcome to the course on Data Science & Deep Learning for Business™ 20 Case Studies!
This course teaches you how Data Science & Deep Learning can be used to solve real-world business problems and how you can apply these techniques to 20 real-world case studies.
Traditional Businesses are hiring Data Scientists in droves, and knowledge of how to apply these techniques in solving their problems will prove to be one of the most valuable skills in the next decade!
What student reviews of this course are saying,
“I’m only half way through this course, but i have to say WOW. It’s so far, a lot better than my Business Analytics MSc I took at UCL. The content is explained better, it’s broken down so simply. Some of the Statistical Theory and ML theory lessons are perhaps the best on the internet! 6 stars out of 5!”
“It is pretty different in format, from others. The appraoch taken here is an end-to-end hands-on project execution, while introducing the concepts. A learner with some prior knowledge will definitely feel at home and get to witness the thought process that happens, while executing a real-time project. The case studies cover most of the domains, that are frequently asked by companies. So it’s pretty good and unique, from what i have seen so far. Overall Great learning and great content.”
—
“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 Learning path includes:
-
How Data Science and Solve Many Common Business Problems
-
The Modern Tools of a Data Scientist– Python, Pandas, Scikit-learn, Seaborn, Matplotlib & Plotly (Manipulate Data and Create Information Captivating Visualizations and Plots).
-
Statistics for Data Science in Detail– Sampling, Distributions, Normal Distribution, Descriptive Statistics, Correlation and Covariance, Probability Significance Testing and Hypothesis Testing.
-
Machine Learning Theory– Linear Regressions, Logistic Regressions, Decision Trees, Random Forests, KNN, SVMs, Model Assessment, Outlier Detection, ROC & AUC and Regularization
-
Deep Learning Theory and Tools – TensorFlow 2.0 and Keras (Neural Nets, CNNs, RNNs & LSTMs)
-
Solving problems using Predictive Modeling, Classification, and Deep Learning
-
Data Science in Marketing – Modeling Engagement Rates and perform A/B Testing
-
Data Science in Retail– Customer Segmentation, Lifetime Value, and Customer/Product Analytics
-
Unsupervised Learning – K-Means Clustering, PCA, t-SNE, Agglomerative Hierarchical, Mean Shift, DBSCAN and E-M GMM Clustering
-
Recommendation Systems – Collaborative Filtering and Content-based filtering + Learn to use LiteFM
-
Natural Language Processing –Bag of Words, Lemmatizing/Stemming, TF-IDF Vectorizer, and Word2Vec
-
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)
-
Deployment to the Cloud using AWS to build a Machine Learning API
Our fun and engaging 20 Case Studies include:
Six (6) Predictive Modeling & Classifiers Case Studies:
-
Figuring Out Which Employees May Quit (Retention Analysis)
-
Figuring Out Which Customers May Leave (Churn Analysis)
-
Who do we target for Donations?
-
Predicting Insurance Premiums
-
Predicting Airbnb Prices
-
Detecting Credit Card Fraud
Four (4) Data Science in Marketing Case Studies:
-
Analyzing Conversion Rates of Marketing Campaigns
-
Predicting Engagement – What drives ad performance?
-
A/B Testing (Optimizing Ads)
-
Who are Your Best Customers? & Customer Lifetime Values (CLV)
Four (4) Retail Data Science Case Studies:
-
Product Analytics (Exploratory Data Analysis Techniques
-
Clustering Customer Data from Travel Agency
-
Product Recommendation Systems – Ecommerce Store Items
-
Movie Recommendation System using LiteFM
Two (2) Time-Series Forecasting Case Studies:
-
Sales Forecasting for a Store
-
Stock Trading using Re-Enforcement Learning
Three (3) Natural Langauge Processing (NLP) Case Studies:
-
Summarizing Reviews
-
Detecting Sentiment in text
-
Spam Filters
One (1) PySpark Big Data Case Studies:
-
News Headline Classification
“Big data is at the foundation of all the megatrends that are happening.”
Businesses NEED Data Scientists more than ever. Those who ignore this trend will be left behind by their competition. In fact, the majority of new Data Science jobs won’t be created by traditional tech companies (Google, Facebook, Microsoft, Amazon, etc.) they’re being created by your traditional non-tech businesses. The big retailers, banks, marketing companies, government institutions, insurances, real estate and more.
“Consumer data will be the biggest differentiator in the next two to three years. Whoever unlocks the reams of data and uses it strategically will win.”
With Data Scientist salaries creeping up higher and higher, this course seeks to take you from a beginner and turn you into a Data Scientist capable of solving challenging real-world problems.
—
Data Scientist is the buzz of the 21st century for good reason! The tech revolution is just starting and Data Science is at the forefront. Get a head start applying these techniques to all types of Businesses by taking this course!
Course Curriculum
Chapter 1: Course Introduction – Why Businesses NEED Data Scientists more than ever!
Lecture 1: Introduction – Why do this course? Why Apply Data Science to Business?
Lecture 2: Why Data is the new Oil and what most Businesses are doing wrong
Lecture 3: Defining Business Problems for Analytic Thinking & Data Driven Decision Making
Lecture 4: Analytic Mindset
Lecture 5: 10 Data Science Projects every Business should do!
Lecture 6: Making Sense of Buzz Words, Data Science, Big Data, Machine & Deep Learning
Lecture 7: How Deep Learning is Changing Everything!
Lecture 8: The Roles in the Data World – Analyst, Engineer, Scientist, Statistician, DevOps
Lecture 9: How Data Scientists Approach Problems
Chapter 2: Course Setup & Pathways – DOWNLOAD RESOURCES HERE
Lecture 1: Course Approach – Different Options for Different Students
Lecture 2: Setup Google Colab for your iPython Notebooks (Download Course Code + Slides)
Lecture 3: Download Code, Slides and Datasets
Chapter 3: Python – A Crash Course
Lecture 1: Why use Python for Data Science?
Lecture 2: Python – Basic Variables
Lecture 3: Python – Variables (Lists and Dictionaries)
Lecture 4: Python – Conditional Statements
Lecture 5: More information on elif
Lecture 6: Python – Loops
Lecture 7: Python – Functions
Lecture 8: Python – Classes
Chapter 4: Pandas – Beginner to Advanvced
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
Lecture 5: Pandas 3A – Data Cleaning – Alter Colomns/Rows, Missing Data & String Operations
Lecture 6: Pandas 3B – Data Cleaning – Alter Colomns/Rows, Missing Data & String Operations
Lecture 7: Pandas 4 – Data Aggregation – GroupBy, Map, Pivot, Aggreate Functions
Lecture 8: Pandas 5 – Feature Engineer, Lambda and Apply
Lecture 9: Pandas 6 – Concatenating, Merging and Joinining
Lecture 10: Pandas 7 – Time Series Data
Lecture 11: Pandas 7 – ADVANCED Operations – Iterows, Vectorization and Numpy
Lecture 12: Pandas 8 – ADVANCED Operations – More Map, Zip and Apply
Lecture 13: Pandas 9 – ADVANCED Operations – Parallel Processing
Lecture 14: Map Visualizations with Plotly – Cloropeths from Scratch – USA and World
Lecture 15: Map Visualizations with Plotly – Heatmaps, Scatter Plots and Lines
Chapter 5: Statistics & Probability for Data Scientists
Lecture 1: Introdution 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: Sampling – Sample Sizes & Confidence Intervals – What Can You Trust?
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: Mean, Mode and Median – Not as Simple As You'd Think
Lecture 12: Variance, Standard Deviation and Bessel’s Correction
Lecture 13: Covariance & Correlation – Do Amazon & Google know you better than anyone else?
Lecture 14: Lying with Correlations – Divorce Rates in Maine caused by Margarine Consumption
Lecture 15: The Normal Distribution & the Central Limit Theorem
Lecture 16: Z-Scores
Chapter 6: Probability Theory
Lecture 1: Probability – An Introduction
Lecture 2: Estimating Probability
Lecture 3: Addition Rule
Lecture 4: Permutations & Combinations
Lecture 5: Bayes Theorem
Chapter 7: Hypothesis Testing
Lecture 1: Hypothesis Testing Introduction
Lecture 2: Statistical Significance
Lecture 3: Hypothesis Testing – P Value
Lecture 4: Hypothesis Testing – Pearson Correlation
Chapter 8: Machine Learning – Regressions, Classifications and Assessing Performance
Lecture 1: Introduction to Machine Learning
Lecture 2: How Machine Learning enables Computers to Learn
Lecture 3: What is a Machine Learning Model?
Lecture 4: Types of Machine Learning
Lecture 5: Linear Regression – Introduction to Cost Functions and Gradient Descent
Lecture 6: Linear Regressions in Python from Scratch and using Sklearn
Lecture 7: Polynomial and Multivariate Linear Regression
Lecture 8: Logistic Regression
Lecture 9: Support Vector Machines (SVMs)
Lecture 10: Decision Trees and Random Forests & the Gini Index
Lecture 11: K-Nearest Neighbors (KNN)
Lecture 12: Assessing Performance – Confusion Matrix, Precision and Recall
Lecture 13: Understanding the ROC and AUC Curve
Lecture 14: What Makes a Good Model? Regularization, Overfitting, Generalization & Outliers
Lecture 15: Introduction to Neural Networks
Lecture 16: Types of Deep Learning Algoritms CNNs, RNNs & LSTMs
Chapter 9: Deep Learning in Detail
Lecture 1: Neural Networks Chapter Overview
Lecture 2: Machine Learning Overview
Lecture 3: Neural Networks Explained
Lecture 4: Forward Propagation
Lecture 5: Activation Functions
Lecture 6: Training Part 1 – Loss Functions
Lecture 7: Training Part 2 – Backpropagation and Gradient Descent
Lecture 8: Backpropagation & Learning Rates – A Worked Example
Lecture 9: Regularization, Overfitting, Generalization and Test Datasets
Lecture 10: Epochs, Iterations and Batch Sizes
Lecture 11: Measuring Performance and the Confusion Matrix
Lecture 12: Review and Best Practices
Chapter 10: Case Study 1 – Figuring Out Which Employees May Quit – Retention Analysis
Lecture 1: Figuring Out Which Employees May Quit –Understanding the Problem & EDA
Lecture 2: Data Cleaning and Preparation
Instructors
-
Rajeev D. Ratan
Data Scientist, Computer Vision Expert & Electrical Engineer -
Nidia Sahjara
NLP Engineer & Researcher
Rating Distribution
- 1 stars: 25 votes
- 2 stars: 29 votes
- 3 stars: 109 votes
- 4 stars: 337 votes
- 5 stars: 534 votes
Frequently Asked Questions
How long do I have access to the course materials?
You can view and review the lecture materials indefinitely, like an on-demand channel.
Can I take my courses with me wherever I go?
Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!
You may also like
- Top 10 Language Learning Courses to Learn in November 2024
- Top 10 Video Editing Courses to Learn in November 2024
- Top 10 Music Production Courses to Learn in November 2024
- Top 10 Animation Courses to Learn in November 2024
- Top 10 Digital Illustration Courses to Learn in November 2024
- Top 10 Renewable Energy Courses to Learn in November 2024
- Top 10 Sustainable Living Courses to Learn in November 2024
- Top 10 Ethical AI Courses to Learn in November 2024
- Top 10 Cybersecurity Fundamentals Courses to Learn in November 2024
- Top 10 Smart Home Technology Courses to Learn in November 2024
- Top 10 Holistic Health Courses to Learn in November 2024
- Top 10 Nutrition And Diet Planning Courses to Learn in November 2024
- Top 10 Yoga Instruction Courses to Learn in November 2024
- Top 10 Stress Management Courses to Learn in November 2024
- Top 10 Mindfulness Meditation Courses to Learn in November 2024
- Top 10 Life Coaching Courses to Learn in November 2024
- Top 10 Career Development Courses to Learn in November 2024
- Top 10 Relationship Building Courses to Learn in November 2024
- Top 10 Parenting Skills Courses to Learn in November 2024
- Top 10 Home Improvement Courses to Learn in November 2024