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Self-paced course
Self-paced course
Statistics for Data Analysis
Statistics for Data Analysis
Rating 4.7
220 reviews
220 reviews
220 reviews
Course Description
This is a hands-on, project-based course designed to help you learn and apply essential statistics concepts for data analysis & business intelligence.
Our goal is to simplify and demystify the world of statistics, and empower everyday people to understand and apply these tools and techniques – even if you have absolutely no background in math or stats!
We’ll start by discussing the role of statistics in business intelligence, the difference between sample and population data, and the importance of using statistical techniques to make smart predictions and data-driven decisions.
Next we’ll explore our data using descriptive statistics and probability distributions, introduce the normal distribution and empirical rule, and learn how to apply the central limit theorem to make inferences about populations of any type.
From there we’ll practice making estimates with confidence intervals, and using hypothesis tests to evaluate assumptions about unknown population parameters. We’ll introduce the basic hypothesis testing framework, then dive into concepts like null and alternative hypotheses, t-scores, p-values, type I vs. type II errors, and more.
Last but not least, we’ll introduce the fundamentals of regression analysis, explore the difference between correlation and causation, and practice using basic linear regression models to make predictions.
Throughout the course, you’ll play the role of a Recruitment Analyst for Maven Business School. Your goal is to use the statistical techniques you’ve learned to explore student data, predict the performance of future classes, and propose changes to help improve graduate outcomes.
You’ll also practice applying your skills to 5 real-world bonus projects, and use statistics to explore data from restaurants, medical centers, pharmaceutical companies, safety councils, airlines, and more.
If you’re an analyst, data scientist, business intelligence professional, or anyone looking to make smart, data-driven decisions, this course is for you.
Course Description
This is a hands-on, project-based course designed to help you learn and apply essential statistics concepts for data analysis & business intelligence.
Our goal is to simplify and demystify the world of statistics, and empower everyday people to understand and apply these tools and techniques – even if you have absolutely no background in math or stats!
We’ll start by discussing the role of statistics in business intelligence, the difference between sample and population data, and the importance of using statistical techniques to make smart predictions and data-driven decisions.
Next we’ll explore our data using descriptive statistics and probability distributions, introduce the normal distribution and empirical rule, and learn how to apply the central limit theorem to make inferences about populations of any type.
From there we’ll practice making estimates with confidence intervals, and using hypothesis tests to evaluate assumptions about unknown population parameters. We’ll introduce the basic hypothesis testing framework, then dive into concepts like null and alternative hypotheses, t-scores, p-values, type I vs. type II errors, and more.
Last but not least, we’ll introduce the fundamentals of regression analysis, explore the difference between correlation and causation, and practice using basic linear regression models to make predictions.
Throughout the course, you’ll play the role of a Recruitment Analyst for Maven Business School. Your goal is to use the statistical techniques you’ve learned to explore student data, predict the performance of future classes, and propose changes to help improve graduate outcomes.
You’ll also practice applying your skills to 5 real-world bonus projects, and use statistics to explore data from restaurants, medical centers, pharmaceutical companies, safety councils, airlines, and more.
If you’re an analyst, data scientist, business intelligence professional, or anyone looking to make smart, data-driven decisions, this course is for you.
Course Content
19.5 video hours
Skills you'll learn in this course
Describe distributions with central tendency & variability metrics
Select and run t‑tests, χ² & ANOVA to compare groups
Calculate confidence intervals & p‑values to support decisions
Translate statistical findings into plain‑language business insight
Meet your instructors


Enrique Ruiz
Sr. Learning Experience Designer
Enrique is a certified Microsoft Excel Expert and top-rated instructor with a background in business intelligence, data analysis and visualization. He has been producing advanced Excel and test prep courses since 2016, along with adaptations tailored to Spanish-speaking learners.
Student reviews
this is an really good platform to learn new skill through the vedio ,materials and at last giving exam.
Sunam Pramanik
I thoroughly enjoyed the Statistics for Data Analysis course, it was truly excellent. As someone with over 20 years of experience using Excel, this course opened up functions that I'd never used before. The course provided a robust foundation in statistics, significantly boosting my confidence in applying statistical methods. Using Excel for examples and assignments was particularly enlightening; it uncovered functionalities I hadn't explored before. Enrique, our instructor, was exceptional. His clear explanations and engaging teaching style made complex concepts understandable and enjoyable. I highly recommend this course to anyone looking to deepen their statistical knowledge and Excel skills.
Andrew Hubbard
<p>This was an amazing crash course in statistics. Enrique is a great instructor and the Maven team has done an impeccable job breaking down complex, heady subjects into bite-sized, digestible pieces. In addition, the focus on doing stats within Microsoft Excel makes it very useful in the real world. I recommend this to anyone who<br>a) Needs an intro to statistics, or <br>b) Wants to review the subject and learn how to apply it with simple tools in Excel.</p>
Nick
Included learning paths
Course credential
You’ll earn the course certification by completing this course and passing the assessment requirements

Statistics for Data Analysis

Statistics for Data Analysis
CPE Accreditation

CPE Credits:
0
Field of Study:
Information Technology
Delivery Method:
QAS Self Study
Maven Analytics LLC is registered with the National Association of State Boards of Accountancy (NASBA) as a sponsor of continuing professional education on the National Registry of CPE Sponsors. State boards of accountancy have the final authority on the acceptance of individual courses for CPE credit. Complaints regarding registered sponsors may be submitted to the National Registry of CPE Sponsors through its website: www.nasbaregistry.org.
For more information regarding administrative policies such as complaints or refunds, please contact us at admin@mavenanalytics.io or (857) 256-1765.
*Last Updated: May 25, 2023
Course Description
This is a hands-on, project-based course designed to help you learn and apply essential statistics concepts for data analysis & business intelligence.
Our goal is to simplify and demystify the world of statistics, and empower everyday people to understand and apply these tools and techniques – even if you have absolutely no background in math or stats!
We’ll start by discussing the role of statistics in business intelligence, the difference between sample and population data, and the importance of using statistical techniques to make smart predictions and data-driven decisions.
Next we’ll explore our data using descriptive statistics and probability distributions, introduce the normal distribution and empirical rule, and learn how to apply the central limit theorem to make inferences about populations of any type.
From there we’ll practice making estimates with confidence intervals, and using hypothesis tests to evaluate assumptions about unknown population parameters. We’ll introduce the basic hypothesis testing framework, then dive into concepts like null and alternative hypotheses, t-scores, p-values, type I vs. type II errors, and more.
Last but not least, we’ll introduce the fundamentals of regression analysis, explore the difference between correlation and causation, and practice using basic linear regression models to make predictions.
Throughout the course, you’ll play the role of a Recruitment Analyst for Maven Business School. Your goal is to use the statistical techniques you’ve learned to explore student data, predict the performance of future classes, and propose changes to help improve graduate outcomes.
You’ll also practice applying your skills to 5 real-world bonus projects, and use statistics to explore data from restaurants, medical centers, pharmaceutical companies, safety councils, airlines, and more.
If you’re an analyst, data scientist, business intelligence professional, or anyone looking to make smart, data-driven decisions, this course is for you.
Course Description
This is a hands-on, project-based course designed to help you learn and apply essential statistics concepts for data analysis & business intelligence.
Our goal is to simplify and demystify the world of statistics, and empower everyday people to understand and apply these tools and techniques – even if you have absolutely no background in math or stats!
We’ll start by discussing the role of statistics in business intelligence, the difference between sample and population data, and the importance of using statistical techniques to make smart predictions and data-driven decisions.
Next we’ll explore our data using descriptive statistics and probability distributions, introduce the normal distribution and empirical rule, and learn how to apply the central limit theorem to make inferences about populations of any type.
From there we’ll practice making estimates with confidence intervals, and using hypothesis tests to evaluate assumptions about unknown population parameters. We’ll introduce the basic hypothesis testing framework, then dive into concepts like null and alternative hypotheses, t-scores, p-values, type I vs. type II errors, and more.
Last but not least, we’ll introduce the fundamentals of regression analysis, explore the difference between correlation and causation, and practice using basic linear regression models to make predictions.
Throughout the course, you’ll play the role of a Recruitment Analyst for Maven Business School. Your goal is to use the statistical techniques you’ve learned to explore student data, predict the performance of future classes, and propose changes to help improve graduate outcomes.
You’ll also practice applying your skills to 5 real-world bonus projects, and use statistics to explore data from restaurants, medical centers, pharmaceutical companies, safety councils, airlines, and more.
If you’re an analyst, data scientist, business intelligence professional, or anyone looking to make smart, data-driven decisions, this course is for you.
Curriculum
1
Orientation & Benchmark Assessment
1
Orientation & Benchmark Assessment
1
Orientation & Benchmark Assessment
2
Getting Started
2
Getting Started
2
Getting Started
3
Why Statistics?
3
Why Statistics?
3
Why Statistics?
4
Understanding Data with Descriptive Statistics
6 MIN
6 MIN
6 MIN
6 MIN
6 MIN
6 MIN
6 MIN
4
Understanding Data with Descriptive Statistics
6 MIN
6 MIN
6 MIN
6 MIN
6 MIN
6 MIN
6 MIN
4
Understanding Data with Descriptive Statistics
6 MIN
6 MIN
6 MIN
6 MIN
6 MIN
6 MIN
6 MIN
5
PROJECT #1: Maven Pizza Parlor
5
PROJECT #1: Maven Pizza Parlor
5
PROJECT #1: Maven Pizza Parlor
6
Modeling Data with Probability Distributions
6 MIN
6 MIN
6 MIN
6
Modeling Data with Probability Distributions
6 MIN
6 MIN
6 MIN
6
Modeling Data with Probability Distributions
6 MIN
6 MIN
6 MIN
7
PROJECT #2: Maven Medical Center
7
PROJECT #2: Maven Medical Center
7
PROJECT #2: Maven Medical Center
8
The Central Limit Theorem
8
The Central Limit Theorem
8
The Central Limit Theorem
9
Making Estimates with Confidence Intervals
6 MIN
6 MIN
6 MIN
9
Making Estimates with Confidence Intervals
6 MIN
6 MIN
6 MIN
9
Making Estimates with Confidence Intervals
6 MIN
6 MIN
6 MIN
10
PROJECT #3: Maven Pharmaceuticals
10
PROJECT #3: Maven Pharmaceuticals
10
PROJECT #3: Maven Pharmaceuticals
11
Drawing Conclusions with Hypothesis Tests
6 MIN
6 MIN
6 MIN
6 MIN
6 MIN
11
Drawing Conclusions with Hypothesis Tests
6 MIN
6 MIN
6 MIN
6 MIN
6 MIN
11
Drawing Conclusions with Hypothesis Tests
6 MIN
6 MIN
6 MIN
6 MIN
6 MIN
12
PROJECT #4: Maven Safety Council
12
PROJECT #4: Maven Safety Council
12
PROJECT #4: Maven Safety Council
13
Making Predictions with Regression Analysis
6 MIN
6 MIN
6 MIN
6 MIN
6 MIN
6 MIN
13
Making Predictions with Regression Analysis
6 MIN
6 MIN
6 MIN
6 MIN
6 MIN
6 MIN
13
Making Predictions with Regression Analysis
6 MIN
6 MIN
6 MIN
6 MIN
6 MIN
6 MIN
14
PROJECT #5: Maven Airlines
14
PROJECT #5: Maven Airlines
14
PROJECT #5: Maven Airlines
15
Final Assessment
6 MIN
15
Final Assessment
6 MIN
15
Final Assessment
6 MIN
16
Course Feedback & Next Steps
16
Course Feedback & Next Steps
16
Course Feedback & Next Steps
Meet your instructors

Enrique Ruiz
Sr. Learning Experience Designer
Enrique is a certified Microsoft Excel Expert and top-rated instructor with a background in business intelligence, data analysis and visualization. He has been producing advanced Excel and test prep courses since 2016, along with adaptations tailored to Spanish-speaking learners.
Student reviews
this is an really good platform to learn new skill through the vedio ,materials and at last giving exam.

Sunam Pramanik
I thoroughly enjoyed the Statistics for Data Analysis course, it was truly excellent. As someone with over 20 years of experience using Excel, this course opened up functions that I'd never used before. The course provided a robust foundation in statistics, significantly boosting my confidence in applying statistical methods. Using Excel for examples and assignments was particularly enlightening; it uncovered functionalities I hadn't explored before. Enrique, our instructor, was exceptional. His clear explanations and engaging teaching style made complex concepts understandable and enjoyable. I highly recommend this course to anyone looking to deepen their statistical knowledge and Excel skills.

Andrew Hubbard
<p>This was an amazing crash course in statistics. Enrique is a great instructor and the Maven team has done an impeccable job breaking down complex, heady subjects into bite-sized, digestible pieces. In addition, the focus on doing stats within Microsoft Excel makes it very useful in the real world. I recommend this to anyone who<br>a) Needs an intro to statistics, or <br>b) Wants to review the subject and learn how to apply it with simple tools in Excel.</p>

Nick
Included learning paths
Course credential
You’ll earn the course certification by completing this course and passing the assessment requirements

Statistics for Data Analysis

Statistics for Data Analysis
CPE Accreditation

CPE Credits:
0
Field of Study:
Information Technology
Delivery Method:
QAS Self Study
Maven Analytics LLC is registered with the National Association of State Boards of Accountancy (NASBA) as a sponsor of continuing professional education on the National Registry of CPE Sponsors. State boards of accountancy have the final authority on the acceptance of individual courses for CPE credit. Complaints regarding registered sponsors may be submitted to the National Registry of CPE Sponsors through its website: www.nasbaregistry.org.
For more information regarding administrative policies such as complaints or refunds, please contact us at admin@mavenanalytics.io or (857) 256-1765.
*Last Updated: May 25, 2023
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