Learn data science and analytics from scratch
Learn data science and analytics from scratch, available at $19.99, has an average rating of 5, with 94 lectures, 47 quizzes, based on 6 reviews, and has 19 subscribers.
You will learn about Set a solid foundation for data analytics and data science Master the statistic basics such as hypothesis testing and confusion matrix, and modeling basics such as regression model and ML model Master the analytic basics like AB testing and coding basics for SQL and Python Complete 2 case studies from end to end with the skillsets we learned This course is ideal for individuals who are Students that are interested in data science and data analytics It is particularly useful for Students that are interested in data science and data analytics.
Enroll now: Learn data science and analytics from scratch
Summary
Title: Learn data science and analytics from scratch
Price: $19.99
Average Rating: 5
Number of Lectures: 94
Number of Quizzes: 47
Number of Published Lectures: 93
Number of Published Quizzes: 47
Number of Curriculum Items: 141
Number of Published Curriculum Objects: 140
Original Price: $49.99
Quality Status: approved
Status: Live
What You Will Learn
- Set a solid foundation for data analytics and data science
- Master the statistic basics such as hypothesis testing and confusion matrix, and modeling basics such as regression model and ML model
- Master the analytic basics like AB testing and coding basics for SQL and Python
- Complete 2 case studies from end to end with the skillsets we learned
Who Should Attend
- Students that are interested in data science and data analytics
Target Audiences
- Students that are interested in data science and data analytics
Hi, this is Kangxiao, I have many years working experience from industry leaders like Paypal, Google and Chime. Throughout my entire career, I use data to do analysis, build models and solve key business problems.
When I learn online, I often ran into two issues:
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The course offers in-depth knowledge, but it doesn’t have very broad coverage. In reality, we don’t need to be experts for everything. But it will give us a huge advantage if we know the basics for a lot of things.
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The course focuses too much on the technical side. I find a lot of the courses focus entirely on either coding like how to write python codes, or stats like the math behind different kinds of ML models. And there are very few courses that link data analysis, modeling and coding together to solve real world problems.
In this course, I want to fulfill these gaps by offering a very broad coverage of data science, statistics, modeling and coding, and using case studies to connect data, coding, and stats together. That’s exactly what we do in the real world, in our day to day work. The best talents I observe in Paypal, Google and Chime are the ones who are really good at connecting these dots together to solve complicated problems.
At the end of this course, we will go through two major projects together with different focus areas. We will apply the knowledge we learned before (statistics, analytics, SQL, Python and modeling) to solve these two cases. The details of these two cases are shown below:
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Nashville housing analysis
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TLDR: Nashville housing is booming, we have some data about the house prices, house details and seller information. How can we use these to perform analysis and give business advice?
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Focus Area: Analytics and SQL
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Subscription business model analysis
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TLDR: We launched the subscription service 2 years ago. As the VP of analytics, we want to provide an update to our CEO including the business performance, where the opportunities and next step suggestions. We will use data to support our story.
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Focus Area: Analytics, Modeling, Python and SQL
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I hope this course can help set you ready for your future success. Please join us, If any of these interest you.
Course Curriculum
Chapter 1: Introduction
Lecture 1: Introduction
Lecture 2: Course outline
Lecture 3: What will we learn
Chapter 2: Statistics, Modeling and Machine Learning
Lecture 1: Stats Outline
Lecture 2: Hypothesis
Lecture 3: Sampling
Lecture 4: Sample Size Calculation
Lecture 5: Confusion Matrix
Lecture 6: ML 101
Lecture 7: Linear Regression 101
Lecture 8: Linear Regression 102
Lecture 9: Linear Regression 103
Lecture 10: Linear Regression 104
Lecture 11: Logistic Regression 101
Lecture 12: Logistic Regression 102
Lecture 13: Decision Tree 101
Lecture 14: Decision Tree 102
Lecture 15: Random Forest 101
Lecture 16: Random Forest 102
Lecture 17: GBDT 101
Lecture 18: GBDT 102
Lecture 19: Xgboost 101
Lecture 20: Xgboost 102
Lecture 21: Model Evaluation
Chapter 3: SQL
Lecture 1: How to run SQL in our class
Lecture 2: where our sql examples are and how to play with them
Lecture 3: Select
Lecture 4: Select distinct
Lecture 5: where clause
Lecture 6: Group by
Lecture 7: aggregate function
Lecture 8: Max/Min Function
Lecture 9: Having clause
Lecture 10: Join
Lecture 11: In operator
Lecture 12: Not equal operator
Lecture 13: date function
Lecture 14: case when statement
Lecture 15: Cast function
Lecture 16: Limit and offset function
Lecture 17: Window function
Lecture 18: subquery
Lecture 19: Complex Join
Lecture 20: Join and aggregate functions
Lecture 21: combine having and where
Lecture 22: Duplicates
Lecture 23: Nth number
Lecture 24: Previous Date/record
Lecture 25: Query Efficiency
Chapter 4: Analytic skills
Lecture 1: How to analyze a problem
Lecture 2: How to define success metrics
Lecture 3: A/B testing 101
Lecture 4: A/B testing 102
Lecture 5: Payment risk 101
Lecture 6: Payment risk 102
Chapter 5: Python
Lecture 1: Python input and output
Lecture 2: Python: Statement, Indentation and Comments
Lecture 3: Python: Data type
Lecture 4: Python: functions
Lecture 5: Python: operator
Lecture 6: Python: if else
Lecture 7: Python: for loop
Lecture 8: Python: while loop
Lecture 9: Python: List 101
Lecture 10: Python: List 102
Lecture 11: Python: Tuple 101
Instructors
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Sean Li
Certified Fraud Examiner, risk expert
Rating Distribution
- 1 stars: 0 votes
- 2 stars: 0 votes
- 3 stars: 0 votes
- 4 stars: 0 votes
- 5 stars: 6 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!
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