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Statistics for Business Analytics and Data Science A-Z™

Learn The Core Stats For A Data Science Career. Master Statistical Significance, Confidence Intervals And Much More!

     
  • 4.6
  •  |
  • Reviews ( 12K )
₹4099

This Course Includes

  • iconudemy
  • icon4.6 (12K reviews )
  • icon6 total hours
  • iconenglish
  • iconOnline - Self Paced
  • iconcourse
  • iconUdemy

About Statistics for Business Analytics and Data Science A-Z™

If you are aiming for a career as a Data Scientist or Business Analyst then brushing up on your statistics skills is something you need to do.

But it's just hard to get started... Learning / re-learning ALL of stats just seems like a daunting task.

That's exactly why I have created this course!

Here you will quickly get the absolutely essential stats knowledge for a Data Scientist or Analyst.

This is not just another boring course on stats. 

This course is very practical. 

I have specifically included real-world examples of business challenges to show you how you could apply this knowledge to boost YOUR career.

At the same time you will master topics such as distributions, the z-test, the Central Limit Theorem, hypothesis testing, confidence intervals, statistical significance and many more!

So what are you waiting for?

Enroll now and empower your career!

What You Will Learn?

  • Understand what a Normal Distribution is.
  • Understand standard deviations.
  • Explain the difference between continuous and discrete variables.
  • Understand what a sampling distribution is.
  • Understand the Central Limit Theorem.
  • Apply the Central Limit Theorem in practice.
  • Apply Hypothesis Testing for Means.
  • Apply Hypothesis Testing for Proportions.
  • Use the Z-Score and Z-Tables.
  • Use the t-Score and t-Tables.
  • Understand the difference between a normal distribution and a t-distribution.
  • Understand and apply statistical significance.
  • Create confidence intervals.
  • Understand the potential pitfalls of overusing p-Values.