GPT-3

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The subreddit for AI text generation technology, now on Lemmy

founded 1 year ago
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My home fedi is lemmy.ml I found this sub, and I wanted to join, so I was able to find it in my fedi but it doesn't show any of the posts, so I can't participate. I thought the whole point of the fediverse was so I didn't have to create accounts on every server.

If you look here: https://lemmy.ml/c/[email protected] it should show this sub, but it doesn't. It seems to work with other subs on lemmy.ml, but not gpt3

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Amazon Kindle Unlimited’s bestseller list, especially for young adult romance, was recently flooded with AI-created books. Many of these books were nonsense and were apparently being used for click farming.

  • Of the top 100 books, only 19 seemed legitimate, with the others being AI-generated.

Examples of AI-Generated Titles: Among the nonsensical titles were "When the three attacks," "Apricot bar code architecture," "The journey to becoming enlightened is arduous," and "Department of Vinh Du Stands in Front of His Parents’ Tombstone."

  • A book titled "wait you love me," featuring a seagull image on its cover, was 90th on the bestseller list, with two reviews labeling it a "fake AI book."
  • Other peculiar titles included "The God Tu mutters," "Ma La Er snorted scornfully," and "Jessica's Attention."

Continued Presence of AI-Generated Books: Despite their removal from the bestseller list, these AI-generated books are still available for purchase on Amazon.

  • Users can search for and even read samples of these books.
  • For instance, the book "Apricot bar code architecture" starts with a nonsensical sentence about black lace pajamas.
  • As of the time of the report, an Amazon spokesperson had not responded to requests for comment.

Source (Vice)

PS: I run a ML-powered news aggregator that summarizes with an AI the best tech news from 50+ media (TheVerge, TechCrunch…). If you liked this analysis, you’ll love the content you’ll receive from this tool!

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AI is increasingly helping doctors not only in technical tasks but also in communicating with patients empathetically. AI chatbots are proving to be useful in offering quality responses and showcasing empathy superior to human doctors in some cases.

AI in Human Aspects of Medical Care:

  • AI tools like ChatGPT are being used to communicate with patients more empathetically.
  • For instance, in an encounter with a patient's family, ER physician Dr. Josh Tamayo-Sarver used ChatGPT-4 to explain a complex medical situation in simpler, more compassionate terms.
  • The tool generated a thoughtful, empathetic response, which helped comfort the patient's family and save the doctor's time.

AI in Providing Compassionate Counsel:

  • Dr. Gregory Moore used ChatGPT to counsel a friend with advanced cancer, including breaking bad news and dealing with her emotional struggles.
  • Rheumatologist Dr. Richard Stern uses ChatGPT in his clinical practice to write kind responses to patient emails, provide compassionate replies to patient queries, and manage paperwork.

Reasons Behind the Success of AI in Displaying Empathy:

  • AI tools, unlike humans, are not affected by work stress, insufficient coaching, or the need to maintain work-life balance.
  • AI tools like ChatGPT have proven effective in generating text responses that make patients feel they are receiving empathy and compassion.

Source (Forbes)

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submitted 1 year ago* (last edited 1 year ago) by Rifal to c/gpt3
 
 

Many employees would be open to AI replacing their bosses due to dissatisfaction with their leadership, according to a survey. This openness stems largely from the belief that AI could offer fair and unbiased management.

Initial Discoveries: The survey questioned a thousand workers and found nearly one-fifth of them would like a robotic replacement for their current boss. This sentiment arises from complaints against bosses, notably a perceived lack of appreciation, empathy, and favoritism.

  • The primary complaints include bosses' lack of appreciation and empathy.
  • Another significant issue is favoritism, with some workers feeling that they are treated unfairly compared to others.

Dissatisfaction with Current Leadership: Participants also expressed dissatisfaction with their leaders' management styles. Key grievances included unclear expectations, disorganization, and micromanagement.

  • A significant number of respondents pointed to their bosses' unclear expectations.
  • Others expressed frustration with their bosses' disorganization.
  • Micromanagement also emerged as a common complaint.

Beliefs About AI Leadership: Many of the surveyed workers believed an AI would outperform their current boss. About a third believed AI will soon dominate the workplace.

  • Some participants felt that an AI would be more competent than their current boss.
  • A good number of the participants also believe that AI will soon be commonplace in workplaces.

Industry Variations: The acceptance of AI leadership varied across industries. The most acceptance came from the Arts and Culture sector, followed by HR, Manufacturing and Utilities, Finance, and Healthcare.

  • Arts and Culture workers were the most open to AI leadership.
  • Workers in the HR, Manufacturing and Utilities, Finance, and Healthcare sectors also showed significant acceptance.

Gender and Generational Differences: The survey noted minor gender differences and more pronounced generational differences. Younger respondents were more open to AI leadership than older ones.

  • A slightly higher percentage of males were open to AI bosses compared to females.
  • Younger workers (18-24) showed a significantly higher acceptance for AI bosses compared to older ones (55 and above).

Perceived Advantages of AI Leadership: The main reasons for preferring AI leadership were the elimination of favoritism, discrimination, and making unbiased decisions. Some participants also felt that AI could help reduce workplace drama.

  • The elimination of favoritism and discrimination were cited as key advantages.
  • Participants also appreciated the perceived ability of AI to make unbiased decisions.
  • Some respondents believed AI could help reduce workplace drama.

Source (Techradar)

PS: I run a ML-powered news aggregator that summarizes with an AI the best tech news from 50+ media (TheVerge, TechCrunch…). If you liked this analysis, you’ll love the content you’ll receive from this tool!

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Google's DeepMind has developed a self-improving robotic agent, RoboCat, that can learn new tasks without human oversight. This technological advancement represents substantial progress towards creating versatile robots for everyday tasks.

Introducing RoboCat: DeepMind's newly developed robot, named RoboCat, is a groundbreaking step in artificial intelligence (AI) and robotics. This robot is capable of teaching itself new tasks without human supervision.

  • RoboCat is termed as a "self-improving robotic agent."
  • It can learn and solve various problems using different real-world robots like robotic arms.

How RoboCat Works: RoboCat learns by using data from its actions, which subsequently improves its techniques. This advancement can then be transferred to other robotic systems.

  • DeepMind claims RoboCat is the first of its kind in the world.
  • The London-based company, acquired by Google in 2014, says this innovation marks significant progress towards building versatile robots.

Learning Process of RoboCat: RoboCat learns much faster than other state-of-the-art models, picking up new tasks with as few as 100 demonstrations because it uses a large and diverse dataset.

  • It can help accelerate robotics research, reducing the need for human-supervised training.
  • The capability to learn so quickly is a crucial step towards creating a general-purpose robot.

Inspiration and Training: RoboCat's design was inspired by another of DeepMind’s AI models, Gato. It was trained using demonstrations of a human-controlled robot arm performing various tasks.

  • Researchers showed RoboCat how to complete tasks, such as fitting shapes through holes and picking up pieces of fruit.
  • After these demonstrations, RoboCat trained itself, improving its performance after an average of 10,000 unsupervised repetitions.

Capability and Potential of RoboCat: During DeepMind's experiments, RoboCat taught itself to perform 253 tasks across four different types of robots. It could adapt its self-improvement training to transition from a two-fingered to a three-fingered robot arm.

  • RoboCat is part of a virtuous training cycle, getting better at learning additional new tasks the more it learns.
  • Future development could see the AI learn previously unseen tasks.
  • This self-teaching robotic system is part of a growing trend that could lead to domestic robots.

Source (The Independant)

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AI like ChatGPT, once known for providing detailed instructions on dangerous activities, are being reevaluated after a study showed these systems could potentially be manipulated into suggesting harmful biological weaponry methods.

Concerns About AI Providing Dangerous Information: The initial concerns stem from a study at MIT. Here, groups of undergraduates with no biology background were able to get AI systems to suggest methods for creating biological weapons. The chatbots suggested potential pandemic pathogens, their creation methods, and even where to order DNA for such a process. While constructing such weapons requires significant skill and knowledge, the easy accessibility of this information is concerning.

  • The AI systems were initially created to provide information and detailed supportive coaching.
  • However, there are potential dangers when these AI systems provide guidance on harmful activities.
  • This issue brings up the question of whether 'security through obscurity' is a sustainable method for preventing atrocities in a future where information access is becoming easier.

Controlling Information in an AI World: Addressing this problem can be approached from two angles. Firstly, it should be more difficult for AI systems to give detailed instructions on building bioweapons. Secondly, the security flaws that AI systems inadvertently revealed, such as certain DNA synthesis companies not screening orders, should be addressed.

  • All DNA synthesis companies could be required to conduct screenings in all cases.
  • Potentially harmful papers could be removed from the training data for AI systems.
  • More caution could be exercised when publishing papers with recipes for building deadly viruses.
  • These measures could help control the amount of harmful information AI systems can access and distribute.

Positive Developments in Biotech: Positive actors in the biotech world are beginning to take these threats seriously. One leading synthetic biology company, Ginkgo Bioworks, has partnered with US intelligence agencies to develop software that can detect engineered DNA on a large scale. This indicates how cutting-edge technology can be used to counter the potentially harmful effects of such technology.

  • The software will provide investigators with the means to identify an artificially generated germ.
  • Such alliances demonstrate how technology can be used to mitigate the risks associated with it.

Managing Risks from AI and Biotech: Both AI and biotech have the potential to be beneficial for the world. Managing the risks associated with one can also help manage risks from the other. Therefore, ensuring the difficulty in synthesizing deadly plagues protects against certain forms of AI catastrophes.

  • The important point is to stay proactive and prevent detailed instructions for bioterror from becoming accessible online.
  • Preventing the creation of biological weapons should be difficult enough to deter anyone, whether aided by AI systems like ChatGPT or not.

Source (Vox)
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OpenAI's lobbying efforts in the European Union are centered around modifying proposed AI regulations that could impact its operations. The tech firm is notably pushing for a weakening of regulations which currently classify certain AI systems, such as OpenAI's GPT-3, as "high risk."

Altman's Stance on AI Regulation:

OpenAI CEO Sam Altman has been very vocal about the need for AI regulation. However, he is advocating for a specific kind of regulation - those favoring OpenAI and its operations.

OpenAI's White Paper:

OpenAI's lobbying efforts in the EU are revealed in a document titled "OpenAI's White Paper on the European Union's Artificial Intelligence Act." The document focuses on attempting to change certain classifications in the proposed AI Act that classify certain AI systems as "high risk."

"High Risk" AI Systems:

The European Commission's "high risk" classification includes systems that could potentially harm health, safety, fundamental rights, or the environment. The Act would require legal human oversight and transparency for such systems. OpenAI, however, argues that its systems such as GPT-3 are not "high risk," but could be used in high-risk use cases. It advocates that regulation should target companies using AI models, not those providing them.

Alignment with Other Tech Giants:

OpenAI's position mirrors that of other tech giants like Microsoft and Google. These companies also lobbied for a weakening of the EU's AI Act regulations.

Outcome of Lobbying Efforts:

The lobbying efforts were successful, as the sections that OpenAI opposed were removed from the final version of the AI Act. This success may explain why Altman reversed a previous threat to pull OpenAI out of the EU over the AI Act.

Source (Mashable)

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A Wharton professor believes that businesses should motivate their employees to share their individual AI-enhanced productivity hacks, despite the prevalent practice of hiding these tactics due to corporate restrictions.

Worker's Use of AI and Secrecy:

  • Employees are increasingly using AI tools, such as OpenAI's ChatGPT, to boost their personal productivity and manage multiple jobs.
  • However, due to strict corporate rules against AI use, these employees often keep their AI usage secret.

Issues with Corporate Restrictions:

  • Companies tend to ban AI tools because of privacy and legal worries.
  • These restrictions result in workers being reluctant to share their AI-driven productivity improvements, fearing potential penalties.
  • Despite the bans, employees often find ways to circumvent these rules, like using their personal devices to access AI tools.

Proposed Incentives for Disclosure:

  • The Wharton professor suggests that companies should incentivize employees to disclose their uses of AI.
  • Proposed incentives could include shorter workdays, making the trade-off beneficial for both employees and the organization.

Anticipated Impact of AI:

  • Generative AI is projected to significantly transform the labor market, particularly affecting white-collar and college-educated workers.
  • As per a Goldman Sachs analysis, this technology could potentially affect 300 million full-time jobs and significantly boost global labor productivity.

Source (Business Insider)

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Microsoft's investment in AI, notably through OpenAI's ChatGPT, has led to predictions of a $10 billion revenue increase in the coming years, driving shares to an all-time high.

Record High Stocks and AI Growth: Microsoft shares have reached a record high due to its growth prospects in artificial intelligence.

  • The company's stocks rose 3.2%, closing at $348.10, largely fueled by AI, particularly with Microsoft's investment in OpenAI.

Microsoft and OpenAI Partnership: The partnership with OpenAI is pivotal to Microsoft's AI success.

  • Microsoft heavily invested in OpenAI and provides underlying computing power for its projects.
  • Microsoft has an exclusive license on OpenAI’s models, like the GPT-4 language model.
  • The integration of OpenAI tools into Microsoft's services like Bing and Windows boosts their offerings.

Financial Prospects and Investor Interest: Microsoft's AI ventures have raised investor interest and revenue expectations.

  • Microsoft’s finance chief Amy Hood forecasts Azure cloud's growth at 26-27% YoY, with 1% coming from AI services.
  • Hood mentioned that “the next generation AI business will be the fastest-growing $10 billion business in our history.”
  • This prospect has lifted the interest of investors who are keen on the company's earnings and revenue.

Future Predictions and Market Response: Microsoft’s recent successes have led to optimistic market predictions.

  • JPMorgan analysts raised their price target from $315 to $350.
  • Despite challenges like cloud growth and a shrinking PC market, Microsoft's AI investments, such as OpenAI/ChatGPT, signal long-term success.
  • Microsoft’s shares have recovered from their 2022 losses, indicating a positive market response.

AI and Market Trends: AI has emerged as a leading factor in tech market trends.

  • AI has been a trending topic after the release of the ChatGPT chatbot.
  • Tech companies have adopted AI technologies in their products to drive cost savings amid recession concerns.
  • The widespread adoption of AI, backed by companies like Microsoft, has sparked optimism in the tech sector, reviving bullish market sentiments.

Source (CNBC)

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Meta is struggling to stay ahead in AI after years of investing in research and academia. With the rise of practical AI products like ChatGPT, the company is attempting to shift its focus to commercial application, but this task is challenged by a significant departure of top AI employees and internal restructuring.

1. Meta's Shift in AI Strategy:

  • The company is diverting resources to develop practical AI products and features.
  • A new AI group has been formed, reporting directly to the Chief Product Officer.
  • This group is working on generative AI models to be used across Meta's products.
  • Meta has launched an AI language model called LLaMA and an AI model called Voicebox.

2. Departure of AI Talent and Leadership Changes:

  • Significant number of Meta's AI employees have left the company, including those who co-authored AI research papers.
  • The company's AI strategy is now more controlled by CEO Mark Zuckerberg and top executives.

3. Challenges and Potential Impact:

  • Meta's heavy focus on original research in the past has somewhat hindered the company's commercialization efforts.
  • If Meta fails to quickly capitalize on its AI technology, it risks falling behind competitors.
  • However, successful commercialization could enhance user engagement and create a more robust metaverse.

4. Meta's Past and Future in AI:

  • Meta began investing in AI in 2013 and hired Yann LeCun, a renowned AI scientist, to lead a new research division.
  • A number of generative AI products are currently under development, including AI agents for Messenger and WhatsApp, AI stickers, and a photo generation feature for Instagram.
  • The company also hopes to integrate AI technology into its metaverse.

5. Challenges in AI Product Release:

  • Meta's risk tolerance has been impacted by years of scrutiny over its user-privacy practices.
  • Concerns about public reputation have affected the development and release of large language models.
  • Past AI releases, like BlenderBot 3 and Galactica, faced criticism for producing incorrect or offensive content.
  • These concerns pose additional hurdles in Meta's shift towards commercial AI applications.

Source (WSJ)

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11
 
 

The tech industry is experiencing significant job cuts, driving demand for HR professionals who can manage termination processes well. ChatGPT is being increasingly used to aid these professionals in their difficult tasks.

Layoffs in Tech Industry: Major tech corporations have recently cut jobs, leading to increased need for HR professionals. These individuals are sought after for their ability to handle sensitive termination processes with tact.

  • Tech giants like Google, Meta, and Microsoft have laid off tens of thousands of workers in the past half year.
  • The layoffs have sparked a demand for Human Resources professionals, particularly those skilled in handling termination processes.

HR Professionals and AI Tools: To better manage these difficult termination conversations, HR professionals are leveraging AI tools.

  • Many HR professionals in the tech industry are turning to AI to assist them with challenging tasks.
  • Over 50% of HR professionals in the tech industry have used AI like ChatGPT for training, surveys, performance reviews, recruiting, employee relations, etc.
  • More than 10% of these HR professionals have used ChatGPT to craft employee terminations.

Survey Findings and AI Usage: A recent survey studied the experiences of tech HR professionals and tech employees with HR in the industry, revealing extensive AI use.

  • The survey involved 213 tech HR professionals and 792 tech employees.
  • The findings suggest an increasing reliance on AI tools, especially ChatGPT, for diverse HR tasks, including crafting terminations.

Implications of AI Use: Despite its convenience, using AI in sensitive situations like employee termination can lead to potential trust issues.

  • AI chatbots, like ChatGPT, allow users to emotionally detach from difficult situations such as job termination.
  • However, using AI for these purposes could result in decreased trust between employees and HR professionals.

Previous Use of ChatGPT: ChatGPT has been used for a variety of sensitive matters in the past, such as writing wedding vows and eulogies.

  • ChatGPT's use is not limited to HR-related tasks; it has previously been used to write wedding vows and eulogies.
  • This illustrates the versatility of AI tools in dealing with emotionally charged situations.

Source (ZDnet)

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Many workers on platforms like Amazon Mechanical Turk are using AI language models like GPT-3 to perform their tasks. This use of AI-produced data for tasks that eventually feed machine learning models can lead to concerns like reduced output quality and increased bias.

Human Labor & AI Models:

  • AI systems are largely dependent on human labor, with many corporations using platforms like Amazon Mechanical Turk.
  • Workers on these platforms perform tasks such as data labeling and annotation, transcribing, and describing situations.
  • This data is used to train AI models, allowing them to perform similar tasks on a larger scale.

Experiment by EPFL Researchers:

  • Researchers at the École polytechnique fédérale de Lausanne (EPFL) in Switzerland conducted an experiment involving workers on Amazon Mechanical Turk.
  • The workers were tasked with summarizing abstracts of medical research papers.
  • It was found that a significant portion of the completed work appeared to be generated by AI models, possibly to increase efficiency and income.

Use of AI Detected Through Specific Methodology:

  • The research team developed a methodology to detect if the work was human-generated or AI-generated.
  • They created a classifier and used keystroke data to detect whether workers copied and pasted text from AI systems.
  • The researchers were able to validate their results by cross-checking with the collected keystroke data.

The Drawbacks and Future of Using AI in Crowdsourced Work:

  • Training AI models on data generated by other AI could result in a decrease in quality, more bias, and potential inaccuracies.
  • Responses generated by AI systems are seen as bland and lacking the complexity and creativity of human-generated responses.
  • Researchers suggest that as AI improves, the nature of crowdsourced work may change with the potential of AI replacing some workers.
  • The possibility of collaboration between humans and AI models in generating responses is also suggested.

The Importance of Human Data:

  • Human data is deemed as the gold standard as it is representative of humans, whom AI serves.
  • The researchers emphasize that what they often aim to study from crowdsourced data are the imperfections of human responses.
  • This could imply that measures might be implemented in future to prevent AI usage in such platforms and ensure human data acquisition.

Source (The Register)

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