프롬프트 엔지니어링 가이드
😃 기초
💼 기본 애플리케이션
🧙‍♂️ 중급
🤖 자치령 대표
⚖️ Reliability
🖼️ Image Prompting
🔓 Prompt Hacking
🔨 Tooling
💪 Prompt Tuning
🎲 Miscellaneous
Models
📙 Vocabulary Reference
📚 Bibliography
📦 Prompted Products
🛸 Additional Resources
🔥 Hot Topics
✨ Credits

Dealing With Long Form Content

🟦 This article is rated medium
Reading Time: 2 minutes

Last updated on August 7, 2024

Dealing with long form content can be difficult, as models have limited context length. Let's learn some strategies for effectively handling long form content.

1. Preprocessing the Text

Before passing the long form content to a language model, it is helpful to preprocess the text to reduce its length and complexity. Some strategies for preprocessing include:

  • Removing unnecessary sections or paragraphs that are not relevant or contribute to the main message. This can help to prioritize the most important content.
  • Summarizing the text by extracting key points or using automatic summarization techniques. This can provide a concise overview of the main ideas.

These preprocessing steps can help to reduce the length of the content and improve the model's ability to understand and generate responses.

2. Chunking and Iterative Approach

Instead of providing the entire long form content to the model at once, it can be divided into smaller chunks or sections. These chunks can be processed individually, allowing the model to focus on a specific section at a time.

An iterative approach can be adopted to handle long form content. The model can generate responses for each chunk of text, and the generated output can serve as part of the input with the next chunk. This way, the conversation with the language model can progress in a step-by-step manner, effectively managing the length of the conversation.

4. Post-processing and Refining Responses

The initial responses generated by the model might be lengthy or contain unnecessary information. It is important to perform post-processing on these responses to refine and condense them.

Some post-processing techniques include:

  • Removing redundant or repetitive information.
  • Extracting the most relevant parts of the response.
  • Reorganizing the response to improve clarity and coherence.

By refining the responses, the generated content can be made more concise and easier to understand.

5. Utilizing AI assistants with longer context support

While some language models have limited context length, there are AI assistants, like OpenAI's GPT-4 and Anthropic's Claude, that support longer conversations. These assistants can handle longer form content more effectively and provide more accurate responses without the need for extensive workarounds.

6. Code libraries

Python libraries like Llama Index and Langchain can be used to deal with long form content. In particular, Llama Index can "index" the content into smaller parts then perform a vector search to find which part of the content is most relevent, and solely use that. Langchain can perform recursive summaries over chunks of text in which in summarizes one chunk and includes that in the prompt with the next chunk to be summarized.

Conclusion

Dealing with long form content can be challenging, but by employing these strategies, you can effectively manage and navigate through the content with the assistance of language models. Remember to experiment, iterate, and refine your approach to determine the most effective strategy for your specific needs.

Sander Schulhoff

Sander Schulhoff is the Founder of Learn Prompting and an ML Researcher at the University of Maryland. He created the first open-source Prompt Engineering guide, reaching 3M+ people and teaching them to use tools like ChatGPT. Sander also led a team behind Prompt Report, the most comprehensive study of prompting ever done, co-authored with researchers from the University of Maryland, OpenAI, Microsoft, Google, Princeton, Stanford, and other leading institutions. This 76-page survey analyzed 1,500+ academic papers and covered 200+ prompting techniques.

Copyright © 2024 Learn Prompting.