In this episode of the Micro Binfie Podcast, titled "AI Unleashed: Navigating the Opportunities and Challenges of AI in Microbial Bioinformatics", Lee, Nabil, and Andrew unpack the implications of generative predictive text AI tools, notably GPT, on microbial bioinformatics.
They kick off the conversation by outlining the various applications of AI tools in their work, which range from generating boilerplate programs, drafting documents, to summarizing vast tracts of data. Andrew talks about his experience with GPT in coding, specifically via VS Code and GitHub Copilot, highlighting how GPT can generate nearly 90% of the necessary code based on a brief description of the task, thereby accelerating his work.
He goes on to discuss the use of GPT in clarifying lines of code and notes that they used AI to generate a paper on the ethical considerations of employing AI in microbial genomics research during a recent hackathon. The conversation then switches gears as Nabil shares his experience of using GPT to standardize date formats in tables and summarize paper abstracts. While GPT is generally accurate in performing simple tasks, he warns that the tool can sometimes provide erroneous answers.
Nabil also highlights GPT's ability to generate plausible but inaccurate responses for complex prompts, as illustrated by his experience when he used it to find a route in a video game. Andrew then talks about a script they created during a hackathon, which produces podcast episodes reviewing math tools. He points out the issues encountered, such as GPT providing wrong factual information.
Looking ahead, Andrew envisions a future awash with GPT-generated content that may or may not be correct, raising the challenge of discerning real and false information. However, they also acknowledge the potential benefits of AI technologies for those with visual impairments, though it's far from a perfect solution at present.
The conversation veers to the use of AI tech in handling boilerplate code and generating code snippets based on predictive text. The hosts further discuss the potential for this tool in rapid language learning. A live experiment ensues where Nabil and Andrew use a Perl script and utilize GPT-4 to convert this script into Python and back again to assess its capabilities in language translation. The AI tool proves proficient, considering comments, usage, and authorship and employing popular libraries like BioPython intelligently, though it does leave a disclaimer about potential inaccuracies.
They consider the possibility of using AI to optimize coding, similar to minifying JavaScript, and even the idea of iterating through multiple languages and assessing the output. Nabil initiates a simpler task for the AI, asking it to write a Python script translating DNA into protein, which then gets translated into Rust. Andrew shares his experience of using AI to generate a Python class that compares two spreadsheets using pandas, demonstrating AI's comprehension and execution of complex tasks.
In summary, this episode underscores the power and potential of AI in coding and the need for human oversight to ensure the quality and effectiveness of AI-generated content. It offers a glimpse into a future where AI tools, despite their limitations, can revolutionize many aspects of programming, bringing in new efficiencies and methods of working.
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