Artwork

Greatest Hits – Software Engineering Daily에서 제공하는 콘텐츠입니다. 에피소드, 그래픽, 팟캐스트 설명을 포함한 모든 팟캐스트 콘텐츠는 Greatest Hits – Software Engineering Daily 또는 해당 팟캐스트 플랫폼 파트너가 직접 업로드하고 제공합니다. 누군가가 귀하의 허락 없이 귀하의 저작물을 사용하고 있다고 생각되는 경우 여기에 설명된 절차를 따르실 수 있습니다 https://ko.player.fm/legal.
Player FM -팟 캐스트 앱
Player FM 앱으로 오프라인으로 전환하세요!

OpenAI: Compute and Safety with Dario Amodei

57:45
 
공유
 

저장한 시리즈 ("피드 비활성화" status)

When? This feed was archived on August 01, 2022 13:57 (1+ y ago). Last successful fetch was on February 14, 2022 03:52 (2y ago)

Why? 피드 비활성화 status. 잠시 서버에 문제가 발생해 팟캐스트를 불러오지 못합니다.

What now? You might be able to find a more up-to-date version using the search function. This series will no longer be checked for updates. If you believe this to be in error, please check if the publisher's feed link below is valid and contact support to request the feed be restored or if you have any other concerns about this.

Manage episode 219205341 series 1441736
Greatest Hits – Software Engineering Daily에서 제공하는 콘텐츠입니다. 에피소드, 그래픽, 팟캐스트 설명을 포함한 모든 팟캐스트 콘텐츠는 Greatest Hits – Software Engineering Daily 또는 해당 팟캐스트 플랫폼 파트너가 직접 업로드하고 제공합니다. 누군가가 귀하의 허락 없이 귀하의 저작물을 사용하고 있다고 생각되는 경우 여기에 설명된 절차를 따르실 수 있습니다 https://ko.player.fm/legal.

Applications of artificial intelligence are permeating our everyday lives. We notice it in small ways–improvements to speech recognition; better quality products being recommended to us; cheaper goods and services that have dropped in price because of more intelligent production.

But what can we quantitatively say about the rate at which artificial intelligence is improving? How fast are models advancing? Do the different fields in artificial intelligence all advance together, or are they improving separately from each other? In other words, if the accuracy of a speech recognition model doubles, does that mean that the accuracy of image recognition will double also?

It’s hard to know the answer to these questions.

Machine learning models trained today can consume 300,000 times the amount of compute that could be consumed in 2012. This does not necessarily mean that models are 300,000 times better–these training algorithms could just be less efficient than yesterday’s models, and therefore are consuming more compute.

We can observe from empirical data that models tend to get better with more data. Models also tend to get better with more compute. How much better do they get? That varies from application to application, from speech recognition to language translation. But models do seem to improve with more compute and more data.

Dario Amodei works at OpenAI, where he leads the AI safety team. In a post called “AI and Compute,” Dario observed that the consumption of machine learning training runs is increasing exponentially–doubling every 3.5 months. In this episode, Dario discusses the implications of increased consumption of compute in the training process.

Dario’s focus is AI safety. AI safety encompasses both the prevention of accidents and the prevention of deliberate malicious AI application.

Today, humans are dying in autonomous car crashes–this is an accident. The reward functions of social networks are being exploited by botnets and fake, salacious news–this is malicious. The dangers of AI are already affecting our lives on the axes of accidents and malice.

There will be more accidents, and more malicious applications–the question is what to do about it. What general strategies can be devised to improve AI safety? After Dario and I talk about the increased consumption of compute by training algorithms, we explore the implications of this increase for safety researchers.

The post OpenAI: Compute and Safety with Dario Amodei appeared first on Software Engineering Daily.

  continue reading

168 에피소드

Artwork
icon공유
 

저장한 시리즈 ("피드 비활성화" status)

When? This feed was archived on August 01, 2022 13:57 (1+ y ago). Last successful fetch was on February 14, 2022 03:52 (2y ago)

Why? 피드 비활성화 status. 잠시 서버에 문제가 발생해 팟캐스트를 불러오지 못합니다.

What now? You might be able to find a more up-to-date version using the search function. This series will no longer be checked for updates. If you believe this to be in error, please check if the publisher's feed link below is valid and contact support to request the feed be restored or if you have any other concerns about this.

Manage episode 219205341 series 1441736
Greatest Hits – Software Engineering Daily에서 제공하는 콘텐츠입니다. 에피소드, 그래픽, 팟캐스트 설명을 포함한 모든 팟캐스트 콘텐츠는 Greatest Hits – Software Engineering Daily 또는 해당 팟캐스트 플랫폼 파트너가 직접 업로드하고 제공합니다. 누군가가 귀하의 허락 없이 귀하의 저작물을 사용하고 있다고 생각되는 경우 여기에 설명된 절차를 따르실 수 있습니다 https://ko.player.fm/legal.

Applications of artificial intelligence are permeating our everyday lives. We notice it in small ways–improvements to speech recognition; better quality products being recommended to us; cheaper goods and services that have dropped in price because of more intelligent production.

But what can we quantitatively say about the rate at which artificial intelligence is improving? How fast are models advancing? Do the different fields in artificial intelligence all advance together, or are they improving separately from each other? In other words, if the accuracy of a speech recognition model doubles, does that mean that the accuracy of image recognition will double also?

It’s hard to know the answer to these questions.

Machine learning models trained today can consume 300,000 times the amount of compute that could be consumed in 2012. This does not necessarily mean that models are 300,000 times better–these training algorithms could just be less efficient than yesterday’s models, and therefore are consuming more compute.

We can observe from empirical data that models tend to get better with more data. Models also tend to get better with more compute. How much better do they get? That varies from application to application, from speech recognition to language translation. But models do seem to improve with more compute and more data.

Dario Amodei works at OpenAI, where he leads the AI safety team. In a post called “AI and Compute,” Dario observed that the consumption of machine learning training runs is increasing exponentially–doubling every 3.5 months. In this episode, Dario discusses the implications of increased consumption of compute in the training process.

Dario’s focus is AI safety. AI safety encompasses both the prevention of accidents and the prevention of deliberate malicious AI application.

Today, humans are dying in autonomous car crashes–this is an accident. The reward functions of social networks are being exploited by botnets and fake, salacious news–this is malicious. The dangers of AI are already affecting our lives on the axes of accidents and malice.

There will be more accidents, and more malicious applications–the question is what to do about it. What general strategies can be devised to improve AI safety? After Dario and I talk about the increased consumption of compute by training algorithms, we explore the implications of this increase for safety researchers.

The post OpenAI: Compute and Safety with Dario Amodei appeared first on Software Engineering Daily.

  continue reading

168 에피소드

모든 에피소드

×
 
Loading …

플레이어 FM에 오신것을 환영합니다!

플레이어 FM은 웹에서 고품질 팟캐스트를 검색하여 지금 바로 즐길 수 있도록 합니다. 최고의 팟캐스트 앱이며 Android, iPhone 및 웹에서도 작동합니다. 장치 간 구독 동기화를 위해 가입하세요.

 

빠른 참조 가이드