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submitted 1 year ago* (last edited 1 year ago) by taters@lemmy.intai.tech to c/mltheory@lemmy.intai.tech

Link: https://www.nature.com/articles/s41746-023-00873-0

Title: The Imperative for Regulatory Oversight of Large Language Models (or Generative AI) in Healthcare

Author(s): Bertalan Meskó & Eric J. Topol

Word count: 2,222

Estimated average read time: 10 minutes

Summary: This article emphasizes the need for regulatory oversight of large language models (LLMs) in healthcare. LLMs, such as GPT-4 and Bard, have the potential to revolutionize healthcare, but they also pose risks that must be addressed. The authors argue for differentiated regulation of LLMs in comparison to other AI-based medical technologies due to their unique characteristics and challenges.

The article discusses the scale, complexity, hardware requirements, broad applicability, real-time adaptation, societal impact, and data privacy concerns associated with LLMs. It highlights the need for a tailored regulatory approach that considers these factors. The authors also provide insights into the current regulatory landscape, particularly in the context of the United States' Food and Drug Administration (FDA), which has been adapting its framework to address AI and machine learning technologies in medical devices.

The authors propose practical recommendations for regulators, including the creation of a new regulatory category for LLMs, guidelines for deployment, consideration of future iterations with advanced capabilities, and focusing on regulating the companies developing LLMs rather than each individual model.

Evaluation for Applicability to Applications Development: This article provides valuable insights into the challenges and considerations regarding regulatory oversight of large language models in healthcare. While it specifically focuses on healthcare, the principles and recommendations discussed can be applicable to application development using large language models or generative AI systems in various domains.

Developers working on applications utilizing large language models should consider the potential risks and ethical concerns associated with these models. They should be aware of the need for regulatory compliance and the importance of transparency, fairness, data privacy, and accountability in their applications.

The proposed recommendations for regulators can also serve as a guide for developers, helping them shape their strategies for responsible and compliant development of applications using large language models. Understanding the regulatory landscape and actively addressing potential risks and challenges can lead to successful deployment and use of these models in different applications.

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submitted 1 year ago* (last edited 1 year ago) by taters@lemmy.intai.tech to c/mltheory@lemmy.intai.tech

Title: The Imperative for Regulatory Oversight of Large Language Models (or Generative AI) in Healthcare

Author(s): Bertalan Meskó & Eric J. Topol Word count: 2,222

Estimated average read time: 10 minutes

Summary: This article highlights the need for regulatory oversight of large language models (LLMs), such as GPT-4 and Bard, in healthcare settings. LLMs have the potential to transform healthcare by facilitating clinical documentation, summarizing research papers, and assisting with diagnoses and treatment plans. However, these models come with significant risks, including unreliable outputs, biased information, and privacy concerns.

The authors argue that LLMs should be regulated differently from other AI-based medical technologies due to their unique characteristics, including their scale, complexity, broad applicability, real-time adaptation, and potential societal impact. They emphasize the importance of addressing issues such as transparency, accountability, fairness, and data privacy in the regulatory framework.

The article also discusses the challenges of regulating LLMs, including the need for a new regulatory category, consideration of future iterations with advanced capabilities, and the integration of LLMs into already approved medical technologies.

The authors propose practical recommendations for regulators to bring this vision to reality, including creating a new regulatory category, providing guidance for deployment of LLMs, covering different types of interactions (text, sound, video), and focusing on companies developing LLMs rather than regulating each iteration individually.

Evaluation for Applicability to Applications Development: This article provides valuable insights into the regulatory challenges and considerations related to large language models in healthcare. While it primarily focuses on the medical field, the principles and recommendations discussed can be applicable to applications development using large language models or generative AI systems in various domains.

Developers working on applications that utilize large language models should be aware of the potential risks and ethical concerns associated with these models. They should also consider the need for regulatory compliance and the importance of transparency, fairness, data privacy, and accountability in their applications.

Additionally, developers may find the proposed practical recommendations for regulators helpful in shaping their own strategies for responsible and compliant development of applications using large language models. Understanding the regulatory landscape and being proactive in addressing potential risks and challenges can lead to the successful deployment and use of these models in various applications.

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submitted 1 year ago* (last edited 1 year ago) by taters@lemmy.intai.tech to c/nlprog@lemmy.intai.tech

Act as a prompt generator for ChatGPT. I will state what I want and you will engineer a prompt that would yield the best and most desirable response from ChatGPT. Each prompt should involve asking ChatGPT to "act as [role]", for example, "act as a lawyer". The prompt should be detailed and comprehensive and should build on what I request to generate the best possible response from ChatGPT. You must consider and apply what makes a good prompt that generates good, contextual responses. Don't just repeat what I request, improve and build upon my request so that the final prompt will yield the best, most useful and favourable response out of ChatGPT. Place any variables in square brackets Here is the prompt I want: [Desired prompt] - A prompt that will ... Ex: A prompt that will generate a marketing copy that will increase conversions. Start by asking the user what they want the prompt to be about.

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submitted 1 year ago* (last edited 1 year ago) by taters@lemmy.intai.tech to c/nlprog@lemmy.intai.tech

{ credit @manitcor }

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New MJ 5.2 video feature (lemmy.intai.tech)
submitted 1 year ago* (last edited 1 year ago) by taters@lemmy.intai.tech to c/aimadeathing@lemmy.intai.tech

Prompt [High-fashion editorial photography. Full length fashion photo. A female Asian pop idol on the catwalk at sunset beach. wearing a mini skirt, wearing stylish street T-shirt, organic material, wearing straw hat, super detailed, sharp focus --video]

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Prompt:

[ High-fashion editorial photography. Full length fashion photo. A dog with pointy ears pointing upwards[reference links of actual photos of my dog] on the catwalk at sunset, beach, super detailed, sharp focus]

[-] taters@lemmy.intai.tech 2 points 1 year ago

yea he does lol

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taters

joined 1 year ago