Applied Statistics for Data Analytics
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Applied Statistics for Data Analytics
This course is part of DeepLearning.AI Data Analytics Professional Certificate
Instructor: Sean Barnes
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Skills you'll gain
- Statistics
- Statistical Visualization
- Statistical Hypothesis Testing
- Histogram
- Probability Distribution
- Statistical Inference
- Data Visualization
- Estimation
- Sampling (Statistics)
- Statistical Methods
- Descriptive Statistics
- Probability
- Plot (Graphics)
- Simulations
- Data Analysis
- Correlation Analysis
- Data Literacy
- Statistical Analysis
- Probability & Statistics
- Analytics
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There are 4 modules in this course
Throughout this course, you will learn the fundamental statistical concepts, analyses, and visualizations that serve as the foundation for a career as a data analyst.
Whether you're new to statistics or looking to refresh your skills, this course will equip you with powerful techniques to extract meaningful insights from your data. By the end of this course, you will feel more confident and capable of implementing rigorous statistical analyses in your career as a data analyst! In the first module, you’ll explore the essential building blocks of statistics that enable rigorous data analysis. By the end, you’ll be able to define populations, samples, and sampling methods; characterize datasets using measures of central tendency, variability, and skewness; use correlation to understand relationships between features; and employ segmentation to reveal insights about different groups within your data. You’ll apply these concepts to real-world scenarios: analyzing movie ratings and durations over time, explaining customer behavior, and exploring healthcare outcomes. In the second module, you’ll cover key probability rules and concepts like conditional probability and independence, all with real-world examples you’ll encounter as a data analyst. Then you’ll explore probability distributions, both discrete and continuous. You'll learn about important distributions like the binomial and normal distributions, and how they model real-world phenomena. You’ll also see how you can use sample data to understand the distribution of your population, and how to answer common business questions like how common are certain outcomes or ranges of outcomes? Finally, you’ll get hands on with simulation techniques. You'll see how to generate random data following specific distributions, allowing you to model complex scenarios and inform decision-making. In modules 3 and 4, you'll learn powerful techniques to draw conclusions about populations based on sample data. This is your first foray into inferential statistics. You’ll start by constructing confidence intervals - a way to estimate population parameters like means and proportions with a measure of certainty. You'll learn how to construct and interpret these intervals for both means and proportions. You’ll also visualize how this powerful technique helps you manage the inherent uncertainty when investigating many business questions. Next, you’ll conduct hypothesis testing, a cornerstone of statistical inference that helps you determine whether an observed difference reflects random variation or a true difference. You'll discover how to formulate hypotheses, calculate test statistics, and interpret p-values to make data-driven decisions. You’ll learn tests for means and proportions, as well as how to compare two samples. Throughout the course, you’ll use large language models as a thought partner for descriptive and inferential statistics. You'll see how AI can help formulate hypotheses, interpret results, and even perform calculations and create visualizations for those statistics.
This module introduces core statistical concepts and techniques used to explore, summarize, and analyze data. Learners will start with examining sampling methods, best practices, and potential biases. They will also see how to use GenAI to troubleshoot spreadsheet formulas and errors to enhance their analytical workflows. Moreover, they will apply measures of central tendency, variability, and skewness to interpret data distributions and visualize insights using histograms, box plots, and bar charts. Lastly, the module will show how to conduct correlation analysis and data segmentation using spreadsheets.
What's included
27 videos8 readings7 assignments1 ungraded lab
27 videos•Total 101 minutes
- Welcome to this course•5 minutes
- Generative AI in this course•2 minutes
- Module 1 introduction•1 minute
- Populations and sampling•5 minutes
- Identifying the population•3 minutes
- Probabilistic samples•5 minutes
- Non-probabilistic samples•3 minutes
- Types of bias•5 minutes
- Histograms•4 minutes
- Demo: plotting distributions•4 minutes
- Central tendency, variability, and skewness•2 minutes
- Central tendency: mean and mode•4 minutes
- Central tendency: median•3 minutes
- Demo: central tendency•4 minutes
- Variability: range and interquartile range•3 minutes
- Variability: variance and standard deviation•5 minutes
- Skewness•3 minutes
- Why use these measures?•2 minutes
- Demo: variability and skewness•3 minutes
- Box plots•4 minutes
- Demo: LLMs for spreadsheet formulas & errors•6 minutes
- Correlation•5 minutes
- Correlation and causation•3 minutes
- Demo: correlations & scatterplots in spreadsheets•5 minutes
- What is segmentation?•3 minutes
- Demo: xlookup•4 minutes
- Demo: pivot tables•5 minutes
8 readings•Total 198 minutes
- Join the DeepLearning.AI Forum to ask questions, get support, or share amazing ideas!•2 minutes
- Bias in practice•15 minutes
- Practice Lab: DJing with data - Part 1•30 minutes
- Practice Lab: DJing with data - Part 2•30 minutes
- About the LLM Labs in this course•10 minutes
- Practice Lab: DJing with data - Part 3•30 minutes
- Graded lab: Forest fire prevention•80 minutes
- Module 1 lecture notes•1 minute
7 assignments•Total 110 minutes
- Lesson 1 quiz•10 minutes
- Lesson 2 quiz•10 minutes
- Lesson 3 quiz•10 minutes
- Lesson 4 quiz•10 minutes
- Lesson 5 quiz•10 minutes
- Module 1 quiz•30 minutes
- Graded lab: Forest fire prevention insights quiz•30 minutes
1 ungraded lab•Total 30 minutes
- Practice Lab: Using an LLM for spreadsheet formulas & errors•30 minutes
This module covers fundamental probability concepts and their applications in data analysis and decision-making. Learners will explore probability rules, distributions, and key statistical principles used to quantify uncertainty. They will distinguish between different types of events, compare discrete and continuous distributions, and apply the normal distribution to real-world datasets. The module also introduces simulation techniques, including random variate generation, to model uncertainty and support data-driven decisions.
What's included
22 videos12 readings5 assignments1 ungraded lab
22 videos•Total 91 minutes
- Module 2 introduction•1 minute
- Randomness and uncertainty•3 minutes
- Probability and the addition rule•4 minutes
- The multiplication and complement rules•5 minutes
- Conditional probability•3 minutes
- Independence•4 minutes
- Random variables•5 minutes
- Estimation•3 minutes
- From sample distributions to population distribution•5 minutes
- The Bernoulli distribution•4 minutes
- The binomial distribution•6 minutes
- The cumulative distribution function•3 minutes
- Random sampling – discrete•4 minutes
- Demo: spreadsheet simulation – discrete•6 minutes
- Demo: LLM simulation – discrete•3 minutes
- Continuous probability distributions•4 minutes
- The normal distribution•6 minutes
- The standard normal distribution•5 minutes
- Random sampling - normal•3 minutes
- Demo: Spreadsheet simulation - normal•4 minutes
- Demo: LLM simulation - normal•4 minutes
- Making decisions with distributions•5 minutes
12 readings•Total 401 minutes
- Coin tosses and dice rolls•15 minutes
- Probability vocabulary•10 minutes
- Practice Lab: DJing with data follow up - Part 1•80 minutes
- Simulation in practice•10 minutes
- Discrete probability distributions vocabulary•10 minutes
- Practice Lab: DJing with data follow up - Part 2•80 minutes
- Understanding z-scores•10 minutes
- Other distributions•15 minutes
- Continuous probability distributions vocabulary •10 minutes
- Practice Lab: DJing with data follow up - Part 3•80 minutes
- Graded Lab: Forest fire prevention follow up•80 minutes
- Module 2 lecture notes•1 minute
5 assignments•Total 90 minutes
- Lesson 1 quiz•10 minutes
- Lesson 2 quiz•10 minutes
- Lesson 3 quiz•10 minutes
- Module 2 quiz•30 minutes
- Graded Lab: Forest fire prevention follow up insights quiz•30 minutes
1 ungraded lab•Total 80 minutes
- Practice Lab: Using an LLM for simulation•80 minutes
What's included
14 videos5 readings5 assignments1 ungraded lab
14 videos•Total 59 minutes
- Module 3 introduction•1 minute
- Inferential statistics•4 minutes
- Point & interval estimates•3 minutes
- Sampling distributions & the central limit theorem•6 minutes
- Demo: confidence intervals in action•2 minutes
- Confidence intervals•5 minutes
- Mechanisms of confidence intervals•6 minutes
- Understanding margin of error•7 minutes
- Demo: confidence intervals for means•4 minutes
- Confidence intervals for proportions•4 minutes
- Demo: confidence intervals for proportions•4 minutes
- Interpretation with LLMs•4 minutes
- Simulating random sampling with LLMs•5 minutes
- Inference and visualization with LLMs•4 minutes
5 readings•Total 156 minutes
- Central Limit Theorem•15 minutes
- Practice Lab: Human sleep patterns and stress - Part 1•30 minutes
- Practice Lab: Human sleep patterns and stress - Part 2•30 minutes
- Graded Lab: Diamond prices•80 minutes
- Module 3 lecture notes•1 minute
5 assignments•Total 80 minutes
- Lesson 1 quiz•10 minutes
- Lesson 2 quiz•5 minutes
- Lesson 3 quiz•5 minutes
- Module 3 quiz•30 minutes
- Graded Lab: Diamond prices insights quiz•30 minutes
1 ungraded lab•Total 80 minutes
- Practice Lab: Using an LLM for confidence intervals•80 minutes
What's included
18 videos7 readings5 assignments1 ungraded lab
18 videos•Total 79 minutes
- Module 4 introduction•1 minute
- Demo: hypothesis testing in action•4 minutes
- Hypothesis testing: means•6 minutes
- The hypothesis•4 minutes
- Identifying the hypothesis and test type•4 minutes
- Calculating the test statistic•3 minutes
- Determining the significance level and rejection region•6 minutes
- Calculating the p value•5 minutes
- Demo: hypothesis testing for means•6 minutes
- Hypothesis testing errors•5 minutes
- The t distribution•6 minutes
- Hypothesis testing for proportions•6 minutes
- Demo: Hypothesis testing for proportions•4 minutes
- Two sample tests•6 minutes
- Other hypothesis tests•4 minutes
- Interpretation with LLMs•4 minutes
- Inference with LLMs•5 minutes
- Your next steps•1 minute
7 readings•Total 341 minutes
- Practice Lab: Human sleep patterns and stress - Part 3•80 minutes
- Explaining Statistical Inference•15 minutes
- Practice Lab: Human sleep patterns and stress - Part 4•80 minutes
- Graded Lab: Diamond prices•80 minutes
- Module 4 lecture notes•1 minute
- Capstone: Heart disease prevention•80 minutes
- Acknowledgments•5 minutes
5 assignments•Total 110 minutes
- Lesson 1 quiz•15 minutes
- Lesson 2 quiz•5 minutes
- Module 4 quiz•30 minutes
- Graded Lab: Diamond prices insights quiz•30 minutes
- Capstone: Heart disease prevention insights quiz•30 minutes
1 ungraded lab•Total 80 minutes
- Practice Lab: Using an LLM for hypothesis testing•80 minutes
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Reviewed on Oct 24, 2025
I have tried several different sources for central limit theorem, confidence intervals, hypothesis testing etc. and in this course it is perfectly explained.
Reviewed on Oct 11, 2025
The best course on foundations of data analytics. Sean Barnes is the best instructor.
Reviewed on Jul 19, 2025
Every time im getting into feeling more confident with data. I was amazed because this was finally an up to date formation, in which I was able to think using LMMs and so on, it was just excellent.
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