Generative AI
China will require AI to reflect socialist values, not challenge social order
China on Tuesday revealed its proposed assessment measures for prospective generative artificial intelligence (AI) tools, telling companies they must submit their products before launching to the public. The Cyberspace Administration of China (CAC) proposed the measures in order to prevent discriminatory content, false information and content with the potential to harm personal privacy or intellectual property, the South China Morning Press reported. Such measures would ensure that the products do not end up suggesting regime subversion or disrupting economic or social order, according to the CAC. A number of Chinese companies, including Baidu, SenseTime and Alibaba, have recently shown of new AI models to power a number of applications from chatbots to image generators, prompting concern from officials over the impending boom in use. The CAC also stressed that the products must align with the country's core socialist values, Reuters reported.
ChatGPT Security: OpenAI's Bug Bounty Program Offers Up to $20,000 Prizes
OpenAI, the company behind the massively popular ChatGPT AI chatbot, has launched a bug bounty program in an attempt to ensure its systems are "safe and secure." To that end, it has partnered with the crowdsourced security platform Bugcrowd for independent researchers to report vulnerabilities discovered in its product in exchange for rewards ranging from "$200 for low-severity findings to up to $20,000 for exceptional discoveries." It's worth noting that the program does not cover model safety or hallucination issues, wherein the chatbot is prompted to generate malicious code or other faulty outputs. The company noted that "addressing these issues often involves substantial research and a broader approach." Other prohibited categories are denial-of-service (DoS) attacks, brute-forcing OpenAI APIs, and demonstrations that aim to destroy data or gain unauthorized access to sensitive information.
China races to regulate AI after playing catchup to ChatGPT
Taipei, Taiwan โ After playing catchup to ChatGPT, China is racing to regulate the rapidly-advancing field of artificial intelligence (AI). Under draft regulations released this week, Chinese tech companies will need to register generative AI products with China's cyberspace agency and submit them to a security assessment before they can be released to the public. The regulations cover practically all aspects of generative AI, from how it is trained to how users interact with it, in an apparent bid by Beijing to control the at times unwieldy technology, the break-neck development of which has prompted warnings from tech leaders including Elon Musk and Apple co-founder Steve Wozniak. Under the rules unveiled by the Cyberspace Administration of China on Tuesday, tech companies will be responsible for the "legitimacy of the source of pre-training data" to ensure content reflects the "core value of socialism". Companies must ensure AI does not call for the "subversion of state power" or the overthrow of the ruling Chinese Communist Party (CCP), incite moves to "split the country" or "undermine national unity", produce content that is pornographic, or encourage violence, extremism, terrorism or discrimination.
๐พ Your guide to AI: March 2023
Welcome to the latest issue of your guide to AI, an editorialized newsletter covering key developments in AI research, industry, geopolitics and startups during February 2023. We wrote an op-ed for Sifted on how generative AI will change the software landscape and commented for TIME's cover story on ChatGPT. On the politics side, we reviewed and recommended spinout policy reform in Tony Blair Institute for Global Change's paper A New National Purpose and were included in Politico's 20 people who matter in UK technology. Air Street was featured in Insider's list of top AI investors See some of you at London.AI on Thurs 9 March w/DeepMind, Adept, Palantir and Basecamp Research. Register for our one-day RAAIS conference on research and applied AI 23 June 2023 in London. We'll be hosting speakers from Meta AI, Cruise, Intercom, Genentech, Northvolt and more to come! FYI, you might have to read this issue in full online vs. in your inbox. As usual, we love hearing what you're up to and what's on your mind, just hit reply or forward to your friends:-) Building large-scale AI models requires enormous computing power, which has emerged as the soft power of our time.
Sparks of Artificial General Intelligence: Early experiments with GPT-4
Bubeck, Sรฉbastien, Chandrasekaran, Varun, Eldan, Ronen, Gehrke, Johannes, Horvitz, Eric, Kamar, Ece, Lee, Peter, Lee, Yin Tat, Li, Yuanzhi, Lundberg, Scott, Nori, Harsha, Palangi, Hamid, Ribeiro, Marco Tulio, Zhang, Yi
Artificial intelligence (AI) researchers have been developing and refining large language models (LLMs) that exhibit remarkable capabilities across a variety of domains and tasks, challenging our understanding of learning and cognition. The latest model developed by OpenAI, GPT-4, was trained using an unprecedented scale of compute and data. In this paper, we report on our investigation of an early version of GPT-4, when it was still in active development by OpenAI. We contend that (this early version of) GPT-4 is part of a new cohort of LLMs (along with ChatGPT and Google's PaLM for example) that exhibit more general intelligence than previous AI models. We discuss the rising capabilities and implications of these models. We demonstrate that, beyond its mastery of language, GPT-4 can solve novel and difficult tasks that span mathematics, coding, vision, medicine, law, psychology and more, without needing any special prompting. Moreover, in all of these tasks, GPT-4's performance is strikingly close to human-level performance, and often vastly surpasses prior models such as ChatGPT. Given the breadth and depth of GPT-4's capabilities, we believe that it could reasonably be viewed as an early (yet still incomplete) version of an artificial general intelligence (AGI) system. In our exploration of GPT-4, we put special emphasis on discovering its limitations, and we discuss the challenges ahead for advancing towards deeper and more comprehensive versions of AGI, including the possible need for pursuing a new paradigm that moves beyond next-word prediction. We conclude with reflections on societal influences of the recent technological leap and future research directions.
Top 6 NLP Language Models Transforming AI In 2023 - Plato Data Intelligence.
In the rapidly evolving field of artificial intelligence, natural language processing has become a focal point for researchers and developers alike. As a testament to the remarkable progress in this area, several groundbreaking language models have emerged in recent years, pushing the boundaries of what machines can understand and generate. In this article, we will delve into the latest advancements in the world of large-scale language models, exploring enhancements introduced by each model, their capabilities, and potential applications. We'll start with a seminal BERT model from 2018 and finish with this year's latest breakthroughs like LLaMA by Meta AI and GPT-4 by OpenAI. If you'd like to skip around, here are the language models we featured: If this in-depth educational content is useful for you, you can subscribe to our AI research mailing list to be alerted when we release new material. In 2018, the Google AI team introduced a new cutting-edge model for Natural Language Processing (NLP) โ BERT, or Bidirectional Encoder Representations from Transformers.
Nextech3D.ai: Leading the Way in AI-Driven 3D Modeling for Ecommerce
With its breakthrough generative AI technology, Nextech3D.ai is poised to revolutionize 3D modeling applications, particularly in the fast-growing e-commerce industry, and emerge as a leader. The recent advent of ChatGPT, a sophisticated chatbot and trained language model, revolutionized the world of AI, bringing its vast potential and attention to the collective forefront of users and investors. AI-powered product offerings explicitly focused on 3D modeling for e-commerce serve a massive Total Addressable Market (TAM) and Serviceable Addressable Market (SAM). The estimated market size of the 3D modeling for e-commerce space is around $100 billion within the $5.5 trillion global e-commerce industry. With its suite of innovative products, Nextech3D.ai is already a preferred 3D model supplier for the e-commerce behemoth Amazon's private label products.
Artificial Intelligence & Generative AI Tracks at TiEcon 2023
In this exciting AI track at #TiEcon 2023, panelists Igor Joblokov, CEO and founder of Pryon AI and Ankit Jain, machine learning tech lead at Meta, will discuss advancements, challenges and future prospects of Generative AI. These seasoned panelists will share their experiences and insights in the state of the AI art and future directions in this fast evolving field. In the previous post, I briefly explained AI and Generative AI at link http://bit.ly/3Ur4TmI . Joblokov was named "Industry Luminary" by Speech Technology Magazine, and previously founded industry pioneer Yap, one of the earliest high accuracy, fully automated cloud platform for voice recognition. Pryon's sophisticated AI does not rely on prepped classification schemes but instead is able to create them as required, processing it for immediate use, as required.
Artificial Intelligence & Generative AI Opportunities & Challenges
Chat GPT has been all the rage lately and Artificial Intelligence track at #TiEcon 2023 will highlight the latest advances in AI. In this post, I will share info on AI and Generative AI and in the next post, I will share some info on exciting AI tracks at TiEcon 2023. Please see both posts for complete details on the tracks at TiEcon. Simply put, AI combines advances in computer science with robust datasets to enable problem-solving. Assigning repetitive cumbersome tasks to the machines enables for error free processing and enables research and development processes to be speedy and more efficient.
MIT CSAIL researchers discuss frontiers of generative AI
The emergence of generative artificial intelligence has ignited a deep philosophical exploration into the nature of consciousness, creativity, and authorship. As we bear witness to new advances in the field, it's increasingly apparent that these synthetic agents possess a remarkable capacity to create, iterate, and challenge our traditional notions of intelligence. But what does it really mean for an AI system to be "generative," with newfound blurred boundaries of creative expression between humans and machines? For those who feel as if "generative artificial intelligence" -- a type of AI that can cook up new and original data or content similar to what it's been trained on -- cascaded into existence like an overnight sensation, while indeed the new capabilities have surprised many, the underlying technology has been in the making for some time. But understanding true capacity can be as indistinct as some of the generative content these models produce.