Fundamentals of Data Analytics (Analyttica TreasureHunt Leaps)

Offered by Analyttica Datalab,
Fundamentals of Data Analytics (Analyttica TreasureHunt Leaps)

Get started with this applied course focusing on the building blocks of analytics and statistics. The multi dimensional course provides 12 hands on data cases across different domains and techniques.

Data Analytics is rapidly becoming one of the most critical drivers for any decision-making, at an individual and a business level. To jump-start this journey of data analytics one must thoroughly understand the fundamentals of analytics.

Through an experiential learning approach, the course will take you through the following fundamental analytical concepts -

  1. Collection of Data: Population and Sampling
  2. Classification and Representation of Data
  3. Measures of Location and Variability
  4. Basic Bi-variate Analysis
  5. Probability Distribution (s)
  6. Statistical Inference – Estimation and Hypothesis Testing

Course Structure:
The course is divided into 3 modules containing -

  1. Total of 13 Practice Data Cases to apply the knowledge gained to solve business problems leveraging real data-sets
  2. Total 12 Quizzes that will help you validate your knowledge
Go to Class
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