Automated Search for Artificial Life Using Foundation Models

A new framework uses vision-language foundation models to expand the discovery of artificial life, offering a novel approach to ALife research.

Foundation models have demonstrated transformative potential in various scientific fields, yet their application in Artificial Life (ALife) research has been limited. Researchers from MIT, Sakana AI, OpenAI, and The Swiss AI Lab IDSIA have introduced the Automated Search for Artificial Life (ASAL) framework, which leverages vision-language foundation models to revolutionize the discovery process in ALife studies.

ASAL is designed to work with various ALife platforms like Boids, Particle Life, Game of Life, Lenia, and Neural Cellular Automata. By using ASAL, researchers are now able to discover previously unknown lifeforms and further extend their understanding of emergent structures within these simulations. The framework allows for quantitative analysis of traditionally qualitative phenomena, and its FM-agnostic design ensures future compatibility.

The framework employs three distinct search strategies: Supervised Target Search, Open-Ended Exploration, and Illumination, which respectively align simulations with text prompts, foster innovation through historical novelty, and seek diversity by identifying unique configurations. ASAL’s adoption ushers in a scalable and innovative approach to ALife research, moving beyond manual methods, thereby setting the stage for further exploration and discovery facilitated by foundation models.

75

Impact Score

Anthropic nears ?tn valuation after record Artificial Intelligence funding round

Anthropic has approached the trillion-dollar threshold after a massive new fundraising round underscored the soaring cost of building and scaling frontier Artificial Intelligence systems. The company plans to use the capital to expand compute capacity, advance safety research and meet rising enterprise demand for Claude.

Huawei chip design raises pressure on Nvidia, AMD, and Intel

Huawei has outlined a new chip design framework that it says can improve efficiency and reduce dependence on leading-edge manufacturing tools. The move adds pressure on US chipmakers as China builds a domestic Artificial Intelligence semiconductor ecosystem under export restrictions.

UK and EU seek simpler medical device rules

The UK and EU are advancing medical device regulatory changes aimed at improving predictability, reducing bottlenecks and supporting market access. Manufacturers of Artificial Intelligence-enabled devices in Europe will still need to navigate overlapping rules even as compliance timelines are extended.

LLMSurgeon targets foundation model data auditing

LLMSurgeon introduces a way to infer the domain mix of large language model pretraining data using only generated text. The framework is designed to improve transparency around foundation models whose training corpora remain largely undisclosed.

Contact Us

Got questions? Use the form to contact us.

Contact Form

Clicking next sends a verification code to your email. After verifying, you can enter your message.