Remove AI Researcher Remove Algorithm Remove ML
article thumbnail

William Falcon, Founder and CEO of Lightning AI – Interview Series

Unite.AI

It was later open-sourced in 2019 during his PhD at NYU and Facebook AI Research, under the guidance of Kyunghyun Cho and Yann LeCun. In 2023, Lightning AI launched Lightning AI Studio, a cloud platform that enables coding, training, and deploying AI models directly from a browser with no setup required.

article thumbnail

Meta AI Introduces MLGym: A New AI Framework and Benchmark for Advancing AI Research Agents

Marktechpost

Furthermore, these frameworks often lack flexibility in assessing diverse research outputs, such as novel algorithms, model architectures, or predictions. By establishing such comprehensive frameworks, the field can move closer to realizing AI systems capable of independently driving meaningful scientific progress.

professionals

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

article thumbnail

AI News Weekly - Issue #408: Google's Nobel prize winners stir debate over AI research - Oct 10th 2024

AI Weekly

Join the AI conversation and transform your advertising strategy with AI weekly sponsorship aiweekly.co reuters.com Sponsor Personalize your newsletter about AI Choose only the topics you care about, get the latest insights vetted from the top experts online! Department of Justice. You can also subscribe via email.

article thumbnail

Researchers from MIT, Sakana AI, OpenAI and Swiss AI Lab IDSIA Propose a New Algorithm Called Automated Search for Artificial Life (ASAL) to Automate the Discovery of Artificial Life Using Vision-Language Foundation Models

Marktechpost

To address these challenges, researchers from MIT, Sakana AI, OpenAI, and The Swiss AI Lab IDSIA have developed the Automated Search for Artificial Life (ASAL). This innovative algorithm leverages vision-language foundation models (FMs) to automate the discovery of artificial lifeforms.

article thumbnail

Rethinking Reproducibility As the New Frontier in AI Research

Unite.AI

Reproducibility, integral to reliable research, ensures consistent outcomes through experiment replication. In the domain of Artificial Intelligence (AI) , where algorithms and models play a significant role, reproducibility becomes paramount. Multiple factors contribute to the reproducibility crisis in AI research.

article thumbnail

Meta AI Researchers Introduced SWEET-RL and CollaborativeAgentBench: A Step-Wise Reinforcement Learning Framework to Train Multi-Turn Language Agents for Realistic Human-AI Collaboration Tasks

Marktechpost

The algorithm also remains effective when applied to off-policy datasets, underlining its practicality in real-world scenarios with imperfect data. The research team created a meaningful evaluation framework by introducing ColBench as a benchmark tailored for realistic, multi-turn tasks. Check out the Paper , GitHub Page and Dataset.

article thumbnail

Sepsis ImmunoScore: The First FDA-Authorized AI Tool for Early Sepsis Detection and Risk Assessment

Marktechpost

The study conducted a prospective, multicenter observational study to develop and evaluate an ML algorithm, the Sepsis ImmunoScore, designed to identify sepsis within 24 hours and assess critical illness outcomes such as mortality and ICU admission. All credit for this research goes to the researchers of this project.

AI Tools 113