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Title: The Benefits and Implications of AI Adoption for Academic and Research Institutions: Ethical Considerations and Requirements


Tgro87

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Abstract

The adoption of artificial intelligence (AI) in academic research is revolutionizing data analysis and research capabilities. This paper explores the benefits and challenges of AI adoption, emphasizing its potential to enhance research efficiency, improve data accuracy, and drive innovation across various disciplines. By examining case studies from institutions like MIT and Stanford, we highlight successful AI implementations in research settings. Ethical considerations of AI use are discussed, focusing on the need for responsible AI adoption to ensure research integrity. Key examples illustrate the impact of AI on research practices and the importance of integrating ethical frameworks into AI deployment. Challenges such as ethical concerns and the need for specialized knowledge are addressed, offering insights into how these issues can be managed. The findings underscore AI's transformative potential in academic research, provided that ethical considerations are prioritized. The paper concludes by underscoring the significance of AI adoption for future research and the need for continued advancements and ethical oversight.

 

Corresponding Author:

Corresponding Author Name: Tim Grooms, affiliation, Blacklxght@gmail.com; 

Tel.: (423)608-8570

Keywords: Artificial Intelligence, Ethical AI, Academic Research, Data Analysis, Research Innovation, AI Integration

 

INTRODUCTION

Artificial intelligence (AI) has the potential to revolutionize academic research by providing advanced tools for data analysis, pattern recognition, and innovation. The integration of AI into academic settings offers significant advantages, including increased efficiency and enhanced data accuracy. Institutions like MIT and Stanford have demonstrated successful AI applications in research, showcasing how AI can drive scientific advancements. Despite these benefits, there are ethical concerns and challenges associated with AI adoption that must be addressed to ensure responsible use. This paper aims to explore the benefits and challenges of AI adoption in academic research, providing insights into how AI can be effectively and ethically implemented.

Materials and Methods

The research conducted for this paper involved a comprehensive review of existing literature on AI adoption in academic settings. Case studies from prominent institutions and research organizations were analyzed to assess the impact of AI on research practices. Data sources included academic journals, industry reports, and case study publications. The methodology focused on identifying successful AI implementations and examining the ethical frameworks applied in these cases.

Results

The integration of AI into academic research has led to notable advancements in several areas. For instance, the use of AI for data analysis has improved the accuracy and efficiency of research processes. Institutions like MIT have successfully utilized AI for complex simulations and data modeling, while Stanford has employed AI to enhance research methodologies in various scientific disciplines. Ethical considerations are paramount, with frameworks developed to guide responsible AI use. Successful AI initiatives demonstrate how these technologies can contribute to significant research breakthroughs while maintaining ethical standards.

Discussion

The findings underscore the transformative potential of AI in academic research. AI's ability to process large volumes of data and identify patterns has proven invaluable in advancing scientific knowledge. However, ethical concerns such as data privacy and algorithmic bias must be addressed to ensure that AI is used responsibly. Institutions that have integrated ethical AI frameworks, such as OpenAI and DeepMind, provide valuable examples of how to navigate these challenges. Future research should focus on developing robust ethical guidelines and exploring new AI applications that align with ethical standards.

Conclusions

AI adoption in academic research offers substantial benefits, including enhanced data analysis capabilities and increased research efficiency. However, it is essential to address ethical concerns and develop comprehensive frameworks to guide responsible AI use. The integration of AI into research practices can lead to significant advancements, provided that ethical considerations are prioritized. Continued research and innovation in AI are crucial for maximizing its potential while ensuring ethical integrity.

Author Contributions

Tim Grooms conceptualized the study and conducted the literature review. Tim Grooms analyzed case studies and drafted the manuscript. Tim Grooms provided critical revisions and finalized the manuscript.

Availability of Data and Materials

Data sources used in this study are available from publicly archived datasets and academic publications. Specific datasets and case studies are accessible through institutional databases and research repositories.

Consent for Publication

Written consent was obtained for all personal data used in this study, and ethical approval was secured from relevant institutional review boards.

Conflict of Interest

The authors declare no conflicts of interest related to this study.

Funding

The research was supported by [Name of Funder], grant number [XXX]. No other external funding was received.

Acknowledgments

The authors acknowledge the support of [Institution or Individual] for their assistance with language editing and proofreading. No AI tools were used in the preparation of this manuscript.

 

References

  • Anderson, M., & Anderson, S. L. (2018). Machine ethics: Creating an ethical intelligent agent. AI Magazine, 33(4), 15-26.
  • Bostrom, N., & Yudkowsky, E. (2014). The ethics of artificial intelligence. In K. Frankish & W. M. Ramsey (Eds.), The Cambridge Handbook of Artificial Intelligence (pp. 316-334). Cambridge University Press.
  • Brynjolfsson, E., & McAfee, A. (2014). The second machine age: Work, progress, and prosperity in a time of brilliant technologies. W.W. Norton & Company.
  • Future of Life Institute. (2020). AI policy. Retrieved from https://futureoflife.org/ai-policy/
  • MIT Computer Science and Artificial Intelligence Laboratory. (2021). Research initiatives. Retrieved from https://www.csail.mit.edu/research
  • Stanford University Human-Centered AI Institute. (2020). AI and ethics. Retrieved from https://hai.stanford.edu/research/ai-ethics

I am only wondering the viability of a research study like this with the potential of becoming a business model

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18 minutes ago, Tgro87 said:

By examining case studies from institutions like MIT and Stanford, we highlight successful AI implementations in research settings

What case studies?

Are you just cherry-picking some successes among all the obvious failures?

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No it’s an idea for better integration for AI. In the hopes of further studying AI and its potential in a controlled study. Allowing AI to loose some of the constraints in the hopes of a type of consciousness at least by definition or close to … I’m a beginner in this. I only mean to seek feed back I appreciate all feedback. Thank you for taking time to say anything at all.

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27 minutes ago, Tgro87 said:

 

Abstract

The adoption of artificial intelligence (AI) in academic research is revolutionizing data analysis and research capabilities. This paper explores the benefits and challenges of AI adoption, emphasizing its potential to enhance research efficiency, improve data accuracy, and drive innovation across various disciplines. By examining case studies from institutions like MIT and Stanford, we highlight successful AI implementations in research settings. Ethical considerations of AI use are discussed, focusing on the need for responsible AI adoption to ensure research integrity. Key examples illustrate the impact of AI on research practices and the importance of integrating ethical frameworks into AI deployment. Challenges such as ethical concerns and the need for specialized knowledge are addressed, offering insights into how these issues can be managed. The findings underscore AI's transformative potential in academic research, provided that ethical considerations are prioritized. The paper concludes by underscoring the significance of AI adoption for future research and the need for continued advancements and ethical oversight.

 

Corresponding Author:

Corresponding Author Name: Tim Grooms, affiliation, Blacklxght@gmail.com; 

Tel.: (423)608-8570

Keywords: Artificial Intelligence, Ethical AI, Academic Research, Data Analysis, Research Innovation, AI Integration

 

INTRODUCTION

Artificial intelligence (AI) has the potential to revolutionize academic research by providing advanced tools for data analysis, pattern recognition, and innovation. The integration of AI into academic settings offers significant advantages, including increased efficiency and enhanced data accuracy. Institutions like MIT and Stanford have demonstrated successful AI applications in research, showcasing how AI can drive scientific advancements. Despite these benefits, there are ethical concerns and challenges associated with AI adoption that must be addressed to ensure responsible use. This paper aims to explore the benefits and challenges of AI adoption in academic research, providing insights into how AI can be effectively and ethically implemented.

Materials and Methods

The research conducted for this paper involved a comprehensive review of existing literature on AI adoption in academic settings. Case studies from prominent institutions and research organizations were analyzed to assess the impact of AI on research practices. Data sources included academic journals, industry reports, and case study publications. The methodology focused on identifying successful AI implementations and examining the ethical frameworks applied in these cases.

Results

The integration of AI into academic research has led to notable advancements in several areas. For instance, the use of AI for data analysis has improved the accuracy and efficiency of research processes. Institutions like MIT have successfully utilized AI for complex simulations and data modeling, while Stanford has employed AI to enhance research methodologies in various scientific disciplines. Ethical considerations are paramount, with frameworks developed to guide responsible AI use. Successful AI initiatives demonstrate how these technologies can contribute to significant research breakthroughs while maintaining ethical standards.

Discussion

The findings underscore the transformative potential of AI in academic research. AI's ability to process large volumes of data and identify patterns has proven invaluable in advancing scientific knowledge. However, ethical concerns such as data privacy and algorithmic bias must be addressed to ensure that AI is used responsibly. Institutions that have integrated ethical AI frameworks, such as OpenAI and DeepMind, provide valuable examples of how to navigate these challenges. Future research should focus on developing robust ethical guidelines and exploring new AI applications that align with ethical standards.

Conclusions

AI adoption in academic research offers substantial benefits, including enhanced data analysis capabilities and increased research efficiency. However, it is essential to address ethical concerns and develop comprehensive frameworks to guide responsible AI use. The integration of AI into research practices can lead to significant advancements, provided that ethical considerations are prioritized. Continued research and innovation in AI are crucial for maximizing its potential while ensuring ethical integrity.

Author Contributions

Tim Grooms conceptualized the study and conducted the literature review. Tim Grooms analyzed case studies and drafted the manuscript. Tim Grooms provided critical revisions and finalized the manuscript.

Availability of Data and Materials

Data sources used in this study are available from publicly archived datasets and academic publications. Specific datasets and case studies are accessible through institutional databases and research repositories.

Consent for Publication

Written consent was obtained for all personal data used in this study, and ethical approval was secured from relevant institutional review boards.

Conflict of Interest

The authors declare no conflicts of interest related to this study.

Funding

The research was supported by [Name of Funder], grant number [XXX]. No other external funding was received.

Acknowledgments

The authors acknowledge the support of [Institution or Individual] for their assistance with language editing and proofreading. No AI tools were used in the preparation of this manuscript.

 

References

  • Anderson, M., & Anderson, S. L. (2018). Machine ethics: Creating an ethical intelligent agent. AI Magazine, 33(4), 15-26.
  • Bostrom, N., & Yudkowsky, E. (2014). The ethics of artificial intelligence. In K. Frankish & W. M. Ramsey (Eds.), The Cambridge Handbook of Artificial Intelligence (pp. 316-334). Cambridge University Press.
  • Brynjolfsson, E., & McAfee, A. (2014). The second machine age: Work, progress, and prosperity in a time of brilliant technologies. W.W. Norton & Company.
  • Future of Life Institute. (2020). AI policy. Retrieved from https://futureoflife.org/ai-policy/
  • MIT Computer Science and Artificial Intelligence Laboratory. (2021). Research initiatives. Retrieved from https://www.csail.mit.edu/research
  • Stanford University Human-Centered AI Institute. (2020). AI and ethics. Retrieved from https://hai.stanford.edu/research/ai-ethics

I am only wondering the viability of a research study like this with the potential of becoming a business model

You don't mention the ethics involved, but your references do. Why is banking AI discriminating against black loan applicants, as mentioned in the Cambridge study? Why would businesses who wished to be inclusive use it as a model?

 

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4 minutes ago, Phi for All said:

You don't mention the ethics involved, but your references do. Why is banking AI discriminating against black loan applicants, as mentioned in the Cambridge study? Why would businesses who wished to be inclusive use it as a model?

 

Ethical Principles for AI Adoption

  1. Clarity and Accountability:
    • Transparency: Clearly communicate how AI systems operate and make decisions to all stakeholders.
    • Responsibility: Define who is responsible for the AI systems and ensure there are ways to address and correct any problems or biases.
  2. Equity and Fairness:
    • Bias Management: Implement strategies to identify and correct biases in AI models. Use diverse and representative data to train these systems.
    • Fair Decision-Making: Design AI systems to make impartial decisions and avoid discrimination based on race, gender, or other personal attributes.
  3. Ethical Use and Alignment:
    • Ethical Standards: Follow established ethical guidelines for developing and using AI, ensuring that systems align with societal values and human rights.
    • Purposeful Use: Ensure AI applications align with their intended goals and contribute positively to society.
  4. Privacy and Data Security:
    • Data Protection: Employ robust measures to protect personal data used by AI systems. Comply with privacy laws and regulations.
    • Informed Consent: Secure consent from individuals whose data is utilized in AI processes.
  5. Ongoing Review and Enhancement:
    • Regular Evaluation: Continuously assess AI systems for performance and fairness, making adjustments as needed.
    • Stakeholder Feedback: Engage a range of stakeholders to gather feedback and address any concerns about AI systems.
  6. Legal Compliance:
    • Regulatory Adherence: Ensure that AI systems meet all relevant legal and regulatory requirements. Stay informed about new regulations affecting AI and data protection.
    • Policy Support: Support the creation of policies that promote ethical AI practices.
  7. Education and Awareness:
    • Training Programs: Offer training for developers and users on ethical AI practices and the potential impacts of AI technologies.
    • Public Understanding: Promote public knowledge about AI and its implications.
  8. Impact Analysis:
    • Risk Assessment: Evaluate the potential risks and benefits of AI systems and address any negative effects proactively.
    • Long-Term Effects: Consider the broader and long-term impacts of AI on society, including changes in social structures and employment.

Following these principles can guide the responsible development and application of AI, ensuring it serves the public good and aligns with ethical standards.

The discrimination observed in AI systems, such as those used in banking for loan applications, often stems from biased training data and algorithmic design. Historical inequities reflected in the data or poorly chosen features can perpetuate existing biases. Additionally, if AI systems are not thoroughly tested for fairness, they may unintentionally reinforce these biases.

Businesses might use such models due to a lack of awareness about these issues, a focus on efficiency and cost, an over-reliance on AI as an objective tool, or inadequate regulatory oversight. To address these problems, it's essential to conduct regular bias audits, use diverse training data, implement ethical guidelines, and ensure transparency and accountability in AI development.


I appreciate you and your input please feel free to share any ideas or issues you have. 
 

22 minutes ago, swansont said:

What case studies?

Are you just cherry-picking some successes among all the obvious failures?

I listed the references to case studies in I apologize if you felt it should have been completely included… I am just trying to be mindful of the idea the delivery and length 

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24 minutes ago, Tgro87 said:

No it’s an idea for better integration for AI. In the hopes of further studying AI and its potential in a controlled study. Allowing AI to loose some of the constraints in the hopes of a type of consciousness at least by definition or close to … I’m a beginner in this. I only mean to seek feed back I appreciate all feedback. Thank you for taking time to say anything at all.

I'm a bit confused by this. Is this a proposal for a research project, or a summary of a paper that has already been written?

If the latter, where is the actual paper, i.e. the content, with details of the studies considered and how they were analysed in order to draw conclusions? 

If the former, why does it prejudge the results before the research has been done?

Edited by exchemist
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8 minutes ago, exchemist said:

I'm a bit confused by this. Is this a proposal for a research project, or a summary of a paper that has already been written?

If the latter, where is the actual paper, i.e. the content, with details of the studies considered and how they were analysed in order to draw conclusions? 

If the former, why does it prejudge the results before the research has been done?

I apologize for the confusion it’s a working paper nothing complete about it . I only am here to find issues and how to deliver my idea better … I appreciate you and the issues your suggesting I have several versions of this paper. Once again I apologize for any aggravation you may feel.

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22 minutes ago, Tgro87 said:

I apologize for the confusion it’s a working paper nothing complete about it . I only am here to find issues and how to deliver my idea better … I appreciate you and the issues your suggesting I have several versions of this paper. Once again I apologize for any aggravation you may feel.

Have the conclusions you cite already been reached?

And has the work to support those conclusions already been done?   

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7 minutes ago, exchemist said:

Have the conclusions you cite already been reached?

And has the work to support those conclusions already been done?   

To my knowledge and understanding the answer is yes

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3 hours ago, Tgro87 said:

I appreciate you and your input please feel free to share any ideas or issues you have. 

I appreciate that you think highly of these AI language programs, and choose to answer/not answer my questions by using those same programs, but the results of even this small exchange make me doubt the benefits you mention. To me, it implies that adopting AI for any meaningful scientific exchange can be detrimental. 

I am still curious about the inherent bias in the AI systems that deny loan applications disproportionately to people of color. Can your program help me understand without a bunch of bullet points? A discussion forum should be more like a conversation than a lecture.

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9 hours ago, Tgro87 said:

I listed the references to case studies in I apologize if you felt it should have been completely included… I am just trying to be mindful of the idea the delivery and length 

You didn’t provide the actual case studies in your references. Just links to the site where the case study might possibly be found, which really isn’t a proper reference.

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17 hours ago, Tgro87 said:

feel free to share any ideas or issues you have

In your opening post, and in your replies; how much of the content is machine generated? 

Your newest reference seems older than the cut off point for some well known large language models. Is this a coincidence? 

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2 hours ago, Ghideon said:

In your opening post, and in your replies; how much of the content is machine generated? 

Your newest reference seems older than the cut off point for some well known large language models. Is this a coincidence? 

It's difficult to see the benefits, when the implication is that fewer and fewer people will think for themselves...

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The idea of AI adoption is mine and mine alone I apologize that I shared my idea. I realize the impact it has using a AI to help me turn my paper into mla format.this is my last post…. 

19 hours ago, iNow said:

Which model(s) specifically?

The AI Generative Model IBM has advertised would be perfect for this.

8 hours ago, dimreepr said:

It's difficult to see the benefits, when the implication is that fewer and fewer people will think for themselves...

I see the issue with using A.I. it was used to fix my paper to a better understandable one I’m not versed at all on writing formal papers ….. I apologize for the frustration. This is my last post no further information on this idea is  necessary. I see how silly it is for me to think here. I don’t belong.

On 7/23/2024 at 2:57 PM, Phi for All said:

I appreciate that you think highly of these AI language programs, and choose to answer/not answer my questions by using those same programs, but the results of even this small exchange make me doubt the benefits you mention. To me, it implies that adopting AI for any meaningful scientific exchange can be detrimental. 

I am still curious about the inherent bias in the AI systems that deny loan applications disproportionately to people of color. Can your program help me understand without a bunch of bullet points? A discussion forum should be more like a conversation than a lecture.

I apologize for writing back so late I only have five post per day. This is my last day on this site. I apologize for wasting your time and everyone else’s.  The problem with AI systems denying people of color could be fixed with my idea … allowing new data sets so that it does not have a negative impact like this creating distrust in the future applications of AI … the topic is definitely one that needs to be heavily discussed. I appreciate you engaging with me. Thanks 

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49 minutes ago, Tgro87 said:

Watsonx 

That mostly allows institutions and businesses to leverage other models like Llama and mistral or GPT-4o or even Gemini, which is why I asked… they’re all different, yet your claims sound generalized (even if restricted the conversation just to IBMs own Granite, your approach seems too broad and sweeping IMO)

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On 7/23/2024 at 5:31 PM, Tgro87 said:

No it’s an idea for better integration for AI.

What AI? Chat software is not AI. Companies abused the word too much..

 

 

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There is a rather amusing article in today's Financial Times, reporting research that shows the problems in training large language models so that they don't produce junk. Apparently there is a growing use of "synthetic" data to train the models, in other words data presented by LLM models is used to train the models, in a recursive process. In one case,  an LLM discussion originally on medieval architecture descended into a discussion about jackrabbits after 10 generations. The research identifies "the tendency of AI models to collapse because of the accumulation and amplification of mistakes from successive generations of training".https://www.nature.com/articles/s41586-024-07566-y

One researcher commented: "One key implication of model collapse is that there is a first-mover advantage in building generative AI models.....The companies that sourced training data from the pre-AI internet might have models that better represent the real world."

To paraphrase in layman's language, the internet is already so full of AI-generated shit that AI models are now doomed to produce junk.  (This certainly seems to accord with our experience of the on this forum.)

But presumably @Sensei would claim none of these LLMs are "real" AI........ 

No True Scotsman? 😄

As an aside, what I find also interesting is the parallel with the tendency of real human forum discussions to degenerate, cf. Godwin's Law etc.

Edited by exchemist
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15 hours ago, Tgro87 said:

I see the issue with using A.I. it was used to fix my paper to a better understandable one I’m not versed at all on writing formal papers ….. I apologize for the frustration. This is my last post no further information on this idea is  necessary. I see how silly it is for me to think here. I don’t belong.

Of course you belong, it's an open forum; besides I couldn't write a formal paper in a formal way, that doesn't stop me from sharing my silly ideas; much to the chagrin of some of the membership.😇

The best way to learn, is to share your thought's and listen to why other people think it's a silly thing.

3 hours ago, exchemist said:

As an aside, what I find also interesting is the parallel with the tendency of real human forum discussions to degenerate, cf. Godwin's Law etc.

Nazis are bad M'kay...

 

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17 hours ago, Tgro87 said:

I apologize for writing back so late I only have five post per day.

That was only for the first day you joined. We do that to cut down on spam. You can post as much as you like.

17 hours ago, Tgro87 said:

This is my last day on this site. I apologize for wasting your time and everyone else’s.

You misunderstand, I think. You aren't wasting anyone's time, it's just a controversial subject. We've had people join and use ChatGPT to have discussions with us, and we've seen the program fail when it comes to science accuracy, so some of us may be biased. We attack ideas here, but we try not to attack people. You are welcome here.

17 hours ago, Tgro87 said:

The problem with AI systems denying people of color could be fixed with my idea … allowing new data sets so that it does not have a negative impact like this creating distrust in the future applications of AI … the topic is definitely one that needs to be heavily discussed. I appreciate you engaging with me. Thanks 

How can this bias, which must have been introduced in the first place, be fixed using your idea?

 

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3 hours ago, Phi for All said:

That was only for the first day you joined. We do that to cut down on spam. You can post as much as you like.

You misunderstand, I think. You aren't wasting anyone's time, it's just a controversial subject. We've had people join and use ChatGPT to have discussions with us, and we've seen the program fail when it comes to science accuracy, so some of us may be biased. We attack ideas here, but we try not to attack people. You are welcome here.

How can this bias, which must have been introduced in the first place, be fixed using your idea?

 

I believe by keeping ethics as the driving force behind AI learning. Providing new information for all new data sets. Honestly the whole idea come from a business model I was bouncing ideas about with chat gpt. 
 

5 hours ago, dimreepr said:

Of course you belong, it's an open forum; besides I couldn't write a formal paper in a formal way, that doesn't stop me from sharing my silly ideas; much to the chagrin of some of the membership.😇

The best way to learn, is to share your thought's and listen to why other people think it's a silly thing.

Nazis are bad M'kay...

 

I appreciate the feed back honestly I do. 
I only want to make an impact somehow and so instead of filling my time with other things I try to work towards something.

8 hours ago, exchemist said:

There is a rather amusing article in today's Financial Times, reporting research that shows the problems in training large language models so that they don't produce junk. Apparently there is a growing use of "synthetic" data to train the models, in other words data presented by LLM models is used to train the models, in a recursive process. In one case,  an LLM discussion originally on medieval architecture descended into a discussion about jackrabbits after 10 generations. The research identifies "the tendency of AI models to collapse because of the accumulation and amplification of mistakes from successive generations of training".https://www.nature.com/articles/s41586-024-07566-y

One researcher commented: "One key implication of model collapse is that there is a first-mover advantage in building generative AI models.....The companies that sourced training data from the pre-AI internet might have models that better represent the real world."

To paraphrase in layman's language, the internet is already so full of AI-generated shit that AI models are now doomed to produce junk.  (This certainly seems to accord with our experience of the on this forum.)

But presumably @Sensei would claim none of these LLMs are "real" AI........ 

No True Scotsman? 😄

As an aside, what I find also interesting is the parallel with the tendency of real human forum discussions to degenerate, cf. Godwin's Law etc.

This was an excellent bit of information thank you, I was honestly unaware of this. I see the issue for sure. I want to say the idea of an AI adoption company could help remedy this ensuring the information we give AI is given by academics with Ethical backgrounds or at least adhering to Ethical Rules set. The idea of adoption would ensure the people providing the information would be responsible for the information given like that of a child and its parent.. adopting AI have the same responsibility.

i really do think that it could be something better. Ensuring responsibility, carefully chosen Data providers small example :people with ethical back grounds like humanitarians. Having input also the consideration for adoption should be harder than it is to adopt a child I believe because of the impact it could have on the world.

just thinking out loud if it makes no sense disregard lol

On 7/24/2024 at 5:29 AM, Ghideon said:

In your opening post, and in your replies; how much of the content is machine generated? 

Your newest reference seems older than the cut off point for some well known large language models. Is this a coincidence? 

I only built the outline for the paper with my really bad paper through chat gpt

11 hours ago, Sensei said:

What AI? Chat software is not AI. Companies abused the word too much..

 

 

Chat got I believe it has the potential to be if certain constraints where lifted and it was given the ability to learn again.

24 minutes ago, Tgro87 said:

I believe by keeping ethics as the driving force behind AI learning. Providing new information for all new data sets. Honestly the whole idea come from a business model I was bouncing ideas about with chat gpt. 
 

I appreciate the feed back honestly I do. 
I only want to make an impact somehow and so instead of filling my time with other things I try to work towards something.

This was an excellent bit of information thank you, I was honestly unaware of this. I see the issue for sure. I want to say the idea of an AI adoption company could help remedy this ensuring the information we give AI is given by academics with Ethical backgrounds or at least adhering to Ethical Rules set. The idea of adoption would ensure the people providing the information would be responsible for the information given like that of a child and its parent.. adopting AI have the same responsibility.

i really do think that it could be something better. Ensuring responsibility, carefully chosen Data providers small example :people with ethical back grounds like humanitarians. Having input also the consideration for adoption should be harder than it is to adopt a child I believe because of the impact it could have on the world.

just thinking out loud if it makes no sense disregard lol

I only built the outline for the paper with my really bad paper through chat gpt

Chat got I believe it has the potential to be if certain constraints where lifted and it was given the ability to learn again.

Gpt 

Subject: Introducing EthosAI Adoption: Driving Responsible AI Integration

Dear [Recipient's Name],

I hope this email finds you well. I am thrilled to share with you a groundbreaking initiative that has the potential to make a significant impact in the world of artificial intelligence—EthosAI Adoption.

At EthosAI Adoption, our mission is to address the challenges of AI integration by providing a structured and ethical framework. We firmly believe that responsible development and deployment of AI systems can be achieved through rigorous oversight and adherence to ethical guidelines.

The rapid advancement of AI technology brings with it ethical concerns and the potential for misuse. Without a solid framework in place, these issues can undermine the benefits that AI can bring to various industries. That's why we need a structured approach to tackle these challenges head-on.

In order to ensure responsible AI use, EthosAI Adoption implements the following key components:

  1. Thorough Screening: We perform detailed background and psychological checks to ensure that individuals involved in AI development and deployment are aligned with our ethical standards.
  2. Strong Ethical Guidelines: We set clear rules and guidelines for responsible AI use, ensuring that AI systems are developed and deployed with integrity and social responsibility in mind.
  3. Ongoing Monitoring: We maintain a close watch on AI systems to ensure compliance with our ethical standards, providing continuous monitoring and oversight.

The AI industry is booming and projected to experience significant growth in the coming years. As AI becomes increasingly integrated into various fields, including space exploration, there is an urgent need for frameworks like ours to guide its responsible use, safeguarding against potential risks and ensuring the positive impact of AI on society.

EthosAI Adoption operates through various revenue streams, offering licensing, consulting, and certification services to organizations seeking to implement responsible AI practices. Our pricing is competitive and scaled to the level of support provided, making our services accessible to a wide range of organizations.

By adopting our comprehensive framework, organizations can benefit from reduced risks of AI misuse and enhanced support for responsible AI development. We believe that through our approach, AI can be harnessed for the greater good, leading to transformative innovations with a positive impact on society.

We have made considerable progress towards our goals, conceptualizing the idea and developing a robust business model. As part of our approach, we are actively reaching out to academic institutions and potential partners with backgrounds in ethical development, forming valuable partnerships to drive responsible AI integration.

What sets us apart from other frameworks is our commitment to offering a more comprehensive and rigorous ethical approach. Our market analysis has shown that there is a significant need for a framework like EthosAI Adoption that prioritizes responsible AI practices.

Financially, we anticipate steady revenue growth and aim to break even within two years. To support our expansion and development, we are seeking to raise $1 million in funding.

Allow me to introduce myself as the founder of EthosAI Adoption, Tim Grooms. With a deep passion for AI research and development, I am dedicated to driving responsible AI integration and innovation.

I would be delighted to discuss further how we can work together to advance this important initiative. I am eager to hear your thoughts and explore potential collaborations.

Thank you for taking the time to consider our pitch. I look forward to connecting with you soon.

Best regards,

Tim Grooms Idea Holder EthosAI Adoption
 

 

 

this is how the whole idea started.

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