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129. Amber Teng - Building apps with a new generation of language models
Manage episode 343136661 series 2546508
It’s no secret that a new generation of powerful and highly scaled language models is taking the world by storm. Companies like OpenAI, AI21Labs, and Cohere have built models so versatile that they’re powering hundreds of new applications, and unlocking entire new markets for AI-generated text.
In light of that, I thought it would be worth exploring the applied side of language modelling — to dive deep into one specific language model-powered tool, to understand what it means to build apps on top of scaled AI systems. How easily can these models be used in the wild? What bottlenecks and challenges do people run into when they try to build apps powered by large language models? That’s what I wanted to find out.
My guest today is Amber Teng, and she’s a data scientist who recently published a blog that got quite a bit of attention, about a resume cover letter generator that she created using GPT-3, OpenAI’s powerful and now-famous language model. I thought her project would be make for a great episode, because it exposes so many of the challenges and opportunities that come with the new era of powerful language models that we’ve just entered.
So today we’ll be exploring exactly that: looking at the applied side of language modelling and prompt engineering, understanding how large language models have made new apps not only possible but also much easier to build, and the likely future of AI-powered products.
***
Intro music:
- Artist: Ron Gelinas
- Track Title: Daybreak Chill Blend (original mix)
- Link to Track: https://youtu.be/d8Y2sKIgFWc
***
Chapters:
- 0:00 Intro
- 2:30 Amber’s background
- 5:30 Using GPT-3
- 14:45 Building prompts up
- 18:15 Prompting best practices
- 21:45 GPT-3 mistakes
- 25:30 Context windows
- 30:00 End-to-end time
- 34:45 The cost of one cover letter
- 37:00 The analytics
- 41:45 Dynamics around company-building
- 46:00 Commoditization of language modelling
- 51:00 Wrap-up
132 פרקים
Manage episode 343136661 series 2546508
It’s no secret that a new generation of powerful and highly scaled language models is taking the world by storm. Companies like OpenAI, AI21Labs, and Cohere have built models so versatile that they’re powering hundreds of new applications, and unlocking entire new markets for AI-generated text.
In light of that, I thought it would be worth exploring the applied side of language modelling — to dive deep into one specific language model-powered tool, to understand what it means to build apps on top of scaled AI systems. How easily can these models be used in the wild? What bottlenecks and challenges do people run into when they try to build apps powered by large language models? That’s what I wanted to find out.
My guest today is Amber Teng, and she’s a data scientist who recently published a blog that got quite a bit of attention, about a resume cover letter generator that she created using GPT-3, OpenAI’s powerful and now-famous language model. I thought her project would be make for a great episode, because it exposes so many of the challenges and opportunities that come with the new era of powerful language models that we’ve just entered.
So today we’ll be exploring exactly that: looking at the applied side of language modelling and prompt engineering, understanding how large language models have made new apps not only possible but also much easier to build, and the likely future of AI-powered products.
***
Intro music:
- Artist: Ron Gelinas
- Track Title: Daybreak Chill Blend (original mix)
- Link to Track: https://youtu.be/d8Y2sKIgFWc
***
Chapters:
- 0:00 Intro
- 2:30 Amber’s background
- 5:30 Using GPT-3
- 14:45 Building prompts up
- 18:15 Prompting best practices
- 21:45 GPT-3 mistakes
- 25:30 Context windows
- 30:00 End-to-end time
- 34:45 The cost of one cover letter
- 37:00 The analytics
- 41:45 Dynamics around company-building
- 46:00 Commoditization of language modelling
- 51:00 Wrap-up
132 פרקים
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1 130. Edouard Harris - New Research: Advanced AI may tend to seek power *by default* 58:22


1 129. Amber Teng - Building apps with a new generation of language models 51:21


1 128. David Hirko - AI observability and data as a cybersecurity weakness 49:02


1 127. Matthew Stewart - The emerging world of ML sensors 41:34


1 126. JR King - Does the brain run on deep learning? 55:43


1 125. Ryan Fedasiuk - Can the U.S. and China collaborate on AI safety? 48:19


1 124. Alex Watson - Synthetic data could change everything 51:47


1 123. Ala Shaabana and Jacob Steeves - AI on the blockchain (it actually might just make sense) 54:43


1 122. Sadie St. Lawrence - Trends in data science 43:02


1 121. Alexei Baevski - data2vec and the future of multimodal learning 49:31


1 120. Liam Fedus and Barrett Zoph - AI scaling with mixture of expert models 40:47


1 119. Jaime Sevilla - Projecting AI progress from compute trends 48:34


1 118. Angela Fan - Generating Wikipedia articles with AI 51:44


1 117. Beena Ammanath - Defining trustworthy AI 46:46


1 116. Katya Sedova - AI-powered disinformation, present and future 54:24
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