Jasper AI's Dave Rogenmoser Discusses Early Prompt Engineering

Weights & Biases ยท Beginner ยทโœ๏ธ Prompt Engineering ยท3y ago
Dave Rogenmoser of Jasper AI discusses early prompt engineering with Lukas Biewald on Gradient Dissent by Weights & Biases. ๐Ÿ‘€ Watch the Full Episode at http://wandb.me/gd-jasper *Transcript* Lukas Biewald: You were the first person doing the prompt engineering, is that right, on day one of the product? Dave Rogenmoser: Yeah, it was me. It was me. Lukas Biewald: What did you learn? Teach me how to do prompt engineering. What are the first couple things that you figured out when you were just messing around with it? Dave Rogenmoser: Oh man. I mean, I just didn't know anything. First, I tried treating it like these instruct models where it's like, "Write a blog post for me." And it's just like, "Write a blog post for me, write a blog post for me, write a blog post for me, write a blog post for me." Okay, cool. What's happening here? There's patterns, and it's trying to figure out what I want, and all of that. I think really early days โ€” and we still get a lot of benefit from this โ€” is the examples that we would give it, for few-shot outputs, really were important. I was able to use examples that I knew for a fact converted really well on Facebook. We just always used stuff that was proven in the market to start to steer and give examples there. I knew the output I was trying to get to, and I wouldn't stop until it was like, "Man, that is really good and I would really use that.
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