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1
Intro
2
Joe is Back at Meta
3
What Does Meta Get Out Of Putting Out LLMs?
4
Measuring The Quality Of LLMs
5
How Do You Pick The Sizes Of Models
6
Advice On Choosing Which Model To Start With
7
The Secret Sauce In The Training
8
What Is Being Worked On Now
9
The Safety Mechanisms In Llama 2
10
The Datasets Llama 2 Is Trained On
11
On Multilingual Capabilities & Tone
12
On The Biggest Applications Of Llama 2
13
On Why The Best Teams Are Built By Users
14
The Culture Differences Of Meta vs Open Source
15
The AI Learning Alliance
16
Where To Learn About Machine Learning
17
Why AI For Science Is Under-rated
18
What Are The Biggest Issues With Real-World Applications
Description:
Explore the far-reaching impacts of AI and its transformative role across various sectors in this Gradient Dissent podcast episode featuring Joseph Spisak, Product Director of Generative AI at Meta. Dive into the complexities of models like GPT and Llama2, examining their influence on user experiences and groundbreaking contributions to fields such as biology, material science, and green hydrogen production through the Open Catalyst Project. Gain insights into AI's practical business applications, from document summarization to intelligent note-taking, while addressing the ethical challenges of AI deployment. Learn about the importance of open-source AI development, community collaboration, and AI democratization. Discover valuable perspectives on the expansive world of AI, relevant to developers, business leaders, and tech enthusiasts, including discussions on model quality measurement, size selection, training techniques, safety mechanisms, multilingual capabilities, and real-world applications. Read more

The Impact of Machine Learning on Material Innovation and Scientific Progress

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