Home
Categories
EXPLORE
True Crime
Comedy
Business
Society & Culture
History
Sports
Health & Fitness
About Us
Contact Us
Copyright
© 2024 PodJoint
00:00 / 00:00
Sign in

or

Don't have an account?
Sign up
Forgot password
https://is1-ssl.mzstatic.com/image/thumb/Podcasts221/v4/fa/73/f6/fa73f67e-9530-6a91-8a2c-6d9df697e861/mza_16855833443396817171.jpg/600x600bb.jpg
The Daily ML
The Daily ML
49 episodes
2 months ago
This research paper examines the impact of an artificial intelligence tool for materials discovery on the productivity and performance of scientists working in a large U.S. firm's R&D lab. The study exploits a randomized rollout of the AI tool across teams of scientists, allowing the researchers to draw causal inferences about the effects of the technology. The paper demonstrates that the AI tool significantly increases the rate of materials discovery, patent filings, and product innovation, but these benefits are unequally distributed among scientists. The researchers find that the AI tool is most beneficial to scientists with strong judgment skills, which involve the ability to evaluate and prioritize AI-generated candidate compounds. The study also reveals that the AI tool automates a significant portion of idea generation tasks, resulting in a reallocation of scientist labor towards judgment tasks. This reallocation, along with the increased demand for judgment skills, explains the heterogeneous impact of the AI tool on scientific performance.
Show more...
Technology
RSS
All content for The Daily ML is the property of The Daily ML and is served directly from their servers with no modification, redirects, or rehosting. The podcast is not affiliated with or endorsed by Podjoint in any way.
This research paper examines the impact of an artificial intelligence tool for materials discovery on the productivity and performance of scientists working in a large U.S. firm's R&D lab. The study exploits a randomized rollout of the AI tool across teams of scientists, allowing the researchers to draw causal inferences about the effects of the technology. The paper demonstrates that the AI tool significantly increases the rate of materials discovery, patent filings, and product innovation, but these benefits are unequally distributed among scientists. The researchers find that the AI tool is most beneficial to scientists with strong judgment skills, which involve the ability to evaluate and prioritize AI-generated candidate compounds. The study also reveals that the AI tool automates a significant portion of idea generation tasks, resulting in a reallocation of scientist labor towards judgment tasks. This reallocation, along with the increased demand for judgment skills, explains the heterogeneous impact of the AI tool on scientific performance.
Show more...
Technology
https://i1.sndcdn.com/artworks-CHiQyIMD1R1FhCDX-vfROMw-t3000x3000.jpg
Ep36. O1 Replication Journey: A Strategic Progress Report – Part 1
The Daily ML
26 minutes 4 seconds
1 year ago
Ep36. O1 Replication Journey: A Strategic Progress Report – Part 1
This report details the research process of a team of researchers at Shanghai Jiao Tong University and other institutions who are attempting to replicate OpenAI's O1 model, a groundbreaking language model capable of complex reasoning. The report advocates for open science by detailing the entire research journey, including successes and failures, to help other researchers accelerate progress in the field. The researchers have introduced a new paradigm called "journey learning," where models learn not just shortcuts to solutions, but the entire exploration process, including trial and error and reflection, which they believe is key to O1's capabilities. They share valuable resources including technical hypotheses, cognitive exploration maps, and custom-developed tools. The report also highlights the challenges of traditional AI research and proposes a new framework for scientific communication and collaboration.
The Daily ML
This research paper examines the impact of an artificial intelligence tool for materials discovery on the productivity and performance of scientists working in a large U.S. firm's R&D lab. The study exploits a randomized rollout of the AI tool across teams of scientists, allowing the researchers to draw causal inferences about the effects of the technology. The paper demonstrates that the AI tool significantly increases the rate of materials discovery, patent filings, and product innovation, but these benefits are unequally distributed among scientists. The researchers find that the AI tool is most beneficial to scientists with strong judgment skills, which involve the ability to evaluate and prioritize AI-generated candidate compounds. The study also reveals that the AI tool automates a significant portion of idea generation tasks, resulting in a reallocation of scientist labor towards judgment tasks. This reallocation, along with the increased demand for judgment skills, explains the heterogeneous impact of the AI tool on scientific performance.