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SotA/Natural Language Processing/Prompt Engineering

Prompt Engineering

16 benchmarks1236 papers

Prompt engineering is the process of designing and refining the prompts used to generate text from language models, such as GPT-3 or similar models. The goal of prompt engineering is to improve the quality and relevance of the generated text by carefully crafting the prompts to elicit the desired responses from the model.

Prompt engineering involves several steps, including selecting the appropriate model architecture and parameters, designing the prompt format and structure, selecting the appropriate task and training data, and fine-tuning the model using the selected prompt and data.

Prompt engineering is a crucial step in the development of language models, as it can greatly influence the quality and effectiveness of the model's responses. By carefully designing and refining the prompts used to generate text, researchers and developers can improve the accuracy and relevance of the model's output, making it more useful for a wide range of applications, including chatbots, language translation, content creation, and more.

Benchmarks

Prompt Engineering on ImageNet

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Prompt Engineering on Caltech-101

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Prompt Engineering on DTD

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Prompt Engineering on EuroSAT

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Prompt Engineering on FGVC-Aircraft

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Prompt Engineering on Oxford 102 Flower

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Prompt Engineering on Oxford-IIIT Pet Dataset

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Prompt Engineering on SUN397

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Prompt Engineering on Stanford Cars

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Prompt Engineering on UCF101

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Prompt Engineering on Food-101

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Prompt Engineering on ImageNet-A

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Prompt Engineering on ImageNet-R

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Prompt Engineering on ImageNet-S

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Prompt Engineering on ImageNet V2

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Prompt Engineering on ImageNet-21k

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