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LinkedIn Learning

Data Literacy: Exploring and Describing Data in an AI World

via LinkedIn Learning

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Overview

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Learn about the fundamentals of data fluency and how data can help you make better decisions.

Syllabus

Introduction
  • Make better decisions with your data
1. Think with Data
  • The meaning of data fluency
  • Data fluency is for everyone
  • Data fluency in practice
  • Making intuitive thinking explicit
  • Thinking about causes
  • How to develop data fluency
  • Data-driven decision-making
  • ROI and the 80/20 rule for data fluency
  • Putting data in context
  • Data literacy in the age of generative AI and agentic AI
2. Prepare Data
  • Data ethics
  • Use in-house data
  • Use open data
  • Gather new data
  • Use third-party data
  • Assess the quality of data
  • Assess the generalizability of data
  • Assess the meaning of data
  • Assess the ambiguities in data
3. Adapt Data
  • Sort data
  • Filter data
  • Combine and split categories
  • Code text
  • Calculate sums and means
  • Calculate rates
  • Calculate ratios
  • Adjust ratios in practice
  • AI-assisted data preparation
4. Explore Data
  • Visual primacy: The importance of starting with pictures
  • Bar charts
  • Grouped bar charts
  • Pie charts
  • Dot plots
  • Box plots
  • Histograms
  • Line charts
  • Sparklines
  • Scatterplots
  • Data maps
5. Describe Data
  • Numerical descriptions
  • Describe measures of center
  • Describe variability with the range and IQR
  • Describe variability with the variance and standard deviation
  • Rescale data with z-scores
  • Interpret z-scores
  • Describe group differences with effect sizes
  • Predict scores with regression
  • Describe associations with correlations
  • Effect size for correlation and regression
  • Exploring tables
  • AI-assisted data exploration and modeling
6. Probability and Inference
  • Basic probability
  • Conditional probability
  • Expected values
  • Sampling variation
  • Inference as describing populations
  • AI as an additional source of analytical variability
7. Continuing Your Data Fluency Learning Quest
  • Next steps and additional resources

Taught by

Barton Poulson

Reviews

4.7 rating at LinkedIn Learning based on 3653 ratings

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