https://help.openai.com/en/articles/6654000-best-practices-for-prompt-engineering-with-openai-api
本文属于必读系列 ,看完之后你就立马搞懂啥叫zero shot ,few shot 等等
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If you're just getting started with OpenAI API, we recommend reading the Introduction and Quickstart tutorials first.
Due to the way the instruction-following models are trained or the data they are trained on, there are specific prompt formats that work particularly well and align better with the tasks at hand. Below we present a number of prompt formats we find work reliably well, but feel free to explore different formats, which may fit your task best.
Note: the "{text input here}" is a placeholder for actual text/context
For best results, we generally recommend using the latest, most capable models. As of November 2022, the best options are the “text-davinci-003”model for text generation, and the “code-davinci-002”model for code generation.
Less effective ❌:
Summarize the text below as a bullet point list of the most important points.{text input here}
Better ✅:
Summarize the text below as a bullet point list of the most important points.Text: """{text input here}"""
Be specific about the context, outcome, length, format, style, etc
Less effective ❌:
Write a poem about OpenAI.
Better ✅:
Write a short inspiring poem about OpenAI, focusing on the recent DALL-E product launch (DALL-E is a text to image ML model) in the style of a {famous poet}
Less effective ❌:
Extract the entities mentioned in the text below. Extract the following 4 entity types: company names, people names, specific topics and themes.Text: {text}
Show, and tell - the models respond better when shown specific format requirements. This also makes it easier to programmatically parse out multiple outputs reliably.
Better ✅:
Extract the important entities mentioned in the text below. First extract all company names, then extract all people names, then extract specific topics which fit the content and finally extract general overarching themesDesired format:Company names: <comma_separated_list_of_company_names>People names: -||-Specific topics: -||-General themes: -||-Text: {text}
✅ Zero-shot
Extract keywords from the below text.Text: {text}Keywords:
✅ Few-shot - provide a couple of examples
Extract keywords from the corresponding texts below.Text 1: Stripe provides APIs that web developers can use to integrate payment processing into their websites and mobile applications.Keywords 1: Stripe, payment processing, APIs, web developers, websites, mobile applications##Text 2: OpenAI has trained cutting-edge language models that are very good at understanding and generating text. Our API provides access to these models and can be used to solve virtually any task that involves processing language.Keywords 2: OpenAI, language models, text processing, API.##Text 3: {text}Keywords 3:
✅Fine-tune: see fine-tune best practices here.
Less effective ❌:
The description for this product should be fairly short, a few sentences only, and not too much more.
Better ✅:
Use a 3 to 5 sentence paragraph to describe this product.
Less effective ❌:
The following is a conversation between an Agent and a Customer. DO NOT ASK USERNAME OR PASSWORD. DO NOT REPEAT.Customer: I can’t log in to my account.Agent:
Better ✅:
The following is a conversation between an Agent and a Customer. The agent will attempt to diagnose the problem and suggest a solution, whilst refraining from asking any questions related to PII. Instead of asking for PII, such as username or password, refer the user to the help article www.samplewebsite.com/help/faqCustomer: I can’t log in to my account.Agent:
Less effective ❌:
# Write a simple python function that# 1. Ask me for a number in mile# 2. It converts miles to kilometers
In this code example below, adding “import” hints to the model that it should start writing in Python. (Similarly “SELECT” is a good hint for the start of a SQL statement.)
Better ✅:
# Write a simple python function that# 1. Ask me for a number in mile# 2. It converts miles to kilometers import
Generally, we find that model
andtemperature
are the most commonly used parameters to alter the model output.
model
-Higher performance models are more expensive and have higher latency.
temperature
- A measure of how often the model outputs a less likely token. The higher the temperature
, the more random (and usually creative) the output. This, however, is not the same as “truthfulness”. For most factual use cases such as data extraction, and truthful Q&A, the temperature
of 0 is best.
max_tokens
(maximum length) - Does not control the length of the output, but a hard cutoff limit for token generation. Ideally you won’t hit this limit often, as your model will stop either when it thinks it’s finished, or when it hits a stop sequence you defined.
stop
(stop sequences) - A set of characters (tokens) that, when generated, will cause the text generation to stop.
For other parameter descriptions see the API reference.
If you're interested in additional resources, we recommend:
Guides
Text completion - learn how to generate or edit text using our models
Code completion - explore prompt engineering for Codex
Fine-tuning - Learn how to train a custom model for your use case
Embeddings - learn how to search, classify, and compare text
Moderation
OpenAI cookbook repo - contains example code and prompts for accomplishing common tasks with the API, including Question-answering with Embeddings
Community Forum
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