Last Updated on July 15, 2023 by Editorial Team
Author(s): John Loewen, PhD
Originally published on Towards AI.
Interactive global CO2 emissions data visuals in 4 easy steps
Fully Interactive Python plotly web application created using modular prompt engineering
ChatGPT is revolutionizing how we create complex data visualizations, letting us easily leverage awesome Python libraries without getting tangled in syntax.
But there’s a method to implementing generative AI to work in our favour— modular prompt engineering.
Designing just the right instruction for ChatGPT is a bit of an art form, but when you get it right, you have a working code in minutes rather than hours.
But don’t just take my word for it — let’s put this theory to the test with a real-world example that uses a real-world data set.
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Published via Towards AI