foundation model and generative ai
Large-scale Foundation Models and Generative AI for BigData Neuroscience
Recent advances in machine learning have made revolutionary breakthroughs in computer games, image and natural language understanding, and scientific discovery. Foundation models and large-scale language models (LLMs) have recently achieved human-like intelligence thanks to BigData. With the help of self-supervised learning (SSL) and transfer learning, these models may potentially reshape the landscapes of neuroscience research and make a significant impact on the future. Here we present a mini-review on recent advances in foundation models and generative AI models as well as their applications in neuroscience, including natural language and speech, semantic memory, brain-machine interfaces (BMIs), and data augmentation. We argue that this paradigm-shift framework will open new avenues for many neuroscience research directions and discuss the accompanying challenges and opportunities.
The Foundation Model Transparency Index
Bommasani, Rishi, Klyman, Kevin, Longpre, Shayne, Kapoor, Sayash, Maslej, Nestor, Xiong, Betty, Zhang, Daniel, Liang, Percy
Foundation models have rapidly permeated society, catalyzing a wave of generative AI applications spanning enterprise and consumer-facing contexts. While the societal impact of foundation models is growing, transparency is on the decline, mirroring the opacity that has plagued past digital technologies (e.g. social media). Reversing this trend is essential: transparency is a vital precondition for public accountability, scientific innovation, and effective governance. To assess the transparency of the foundation model ecosystem and help improve transparency over time, we introduce the Foundation Model Transparency Index. The Foundation Model Transparency Index specifies 100 fine-grained indicators that comprehensively codify transparency for foundation models, spanning the upstream resources used to build a foundation model (e.g data, labor, compute), details about the model itself (e.g. size, capabilities, risks), and the downstream use (e.g. distribution channels, usage policies, affected geographies). We score 10 major foundation model developers (e.g. OpenAI, Google, Meta) against the 100 indicators to assess their transparency. To facilitate and standardize assessment, we score developers in relation to their practices for their flagship foundation model (e.g. GPT-4 for OpenAI, PaLM 2 for Google, Llama 2 for Meta). We present 10 top-level findings about the foundation model ecosystem: for example, no developer currently discloses significant information about the downstream impact of its flagship model, such as the number of users, affected market sectors, or how users can seek redress for harm. Overall, the Foundation Model Transparency Index establishes the level of transparency today to drive progress on foundation model governance via industry standards and regulatory intervention.
IBM Demonstrates Groundbreaking Artificial Intelligence Research Using Foundational Models And Generative AI
AI has already demonstrated its power to revolutionize industries and accelerate scientific investigation. One field of AI research that has made stunning advancements is in the area of foundation models and generative AI, which enables computers to generate original content based on input data. This technology has been used to create everything from music and art to fake news reports. The move generated widespread media attention and excitement among users, highlighting the massive potential of AI. This demonstration came just three months after the release of ChatGPT to the public. Faced with the disruptive impact of OpenAI's GPT-3 model, Google and Microsoft were compelled to reveal AI integration plans for their respective search engines.