The Role of ChatGPT in Democratizing Data Science: An Exploration of
AI-facilitated Data Analysis in Telematics
- URL: http://arxiv.org/abs/2308.02045v1
- Date: Wed, 26 Jul 2023 18:59:23 GMT
- Title: The Role of ChatGPT in Democratizing Data Science: An Exploration of
AI-facilitated Data Analysis in Telematics
- Authors: Ryan Lingo
- Abstract summary: This paper posits ChatGPT as a pivotal bridge, drastically lowering the steep learning curve associated with complex data analysis.
By generating intuitive data narratives and offering real-time assistance, ChatGPT democratizes the field.
The paper delves into challenges presented by such AI, from potential biases in analysis to ChatGPT's limited reasoning capabilities.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The realm of data science, once reserved for specialists, is undergoing a
revolution with the rapid emergence of generative AI, particularly through
tools like ChatGPT. This paper posits ChatGPT as a pivotal bridge, drastically
lowering the steep learning curve traditionally associated with complex data
analysis. By generating intuitive data narratives and offering real-time
assistance, ChatGPT democratizes the field, enabling a wider audience to glean
insights from intricate datasets. A notable illustration of this transformative
potential is provided through the examination of a synthetically generated
telematics dataset, wherein ChatGPT aids in distilling complex patterns and
insights. However, the journey to democratization is not without its hurdles.
The paper delves into challenges presented by such AI, from potential biases in
analysis to ChatGPT's limited reasoning capabilities. While the promise of a
democratized data science landscape beckons, it is imperative to approach this
transition with caution, cognizance, and an ever-evolving understanding of the
tool's capabilities and constraints.
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