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Exploration Or Explanation: 10 Key Differences For Data Visualisations

Exploration Or Explanation: 10 Key Differences For Data Visualisations

FromThe Effective Statistician - in association with PSI


Exploration Or Explanation: 10 Key Differences For Data Visualisations

FromThe Effective Statistician - in association with PSI

ratings:
Length:
25 minutes
Released:
May 21, 2024
Format:
Podcast episode

Description

Are you curious about how to tailor your data visualizations to either explore new insights or clearly explain your findings to different audiences?

How can you effectively use data visualizations in clinical trial reports, interactive dashboards, and more to achieve your specific goals?

In this episode, I'm diving into the fascinating world of data visualization. I explore a crucial yet often misunderstood distinction:
exploration versus explanation in data visualizations.

By the end of this episode, you'll grasp the 10 key differences between these two approaches, helping you tailor your visualizations to meet specific goals. Whether you're designing a clinical trial report for regulators or creating interactive dashboards for data analysis, understanding these differences is essential.

Join me as I unpack how to effectively communicate your data's story or discover new insights through tailored visual tools.
Released:
May 21, 2024
Format:
Podcast episode

Titles in the series (100)

The podcast from statisticians for statisticians to have a bigger impact at work. This podcast is set up in association with PSI - Promoting Statistical Insight. This podcast helps you to grow your leadership skills, learn about ongoing discussions in the scientific community, build you knowledge about the health sector and be more efficient at work. This podcast helps statisticians at all levels with and without management experience. It is targeted towards the health, but lots of topics will be important for the wider data scientists community.