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LangSmith Enhances LLM Apps with Dynamic Few-Shot Examples - Blockchain.News

LangSmith Enhances LLM Apps with Dynamic Few-Shot Examples

Rongchai Wang Aug 06, 2024 17:35

LangSmith introduces dynamic few-shot example selectors, allowing for improved LLM app performance by dynamically selecting relevant examples based on user input.

LangSmith Enhances LLM Apps with Dynamic Few-Shot Examples

LangSmith has unveiled a new feature that promises to enhance the performance of applications using large language models (LLMs). According to the LangChain Blog, the company has launched dynamic few-shot example selectors as part of its LangSmith platform. This innovative feature allows users to index examples in their datasets with a single click and dynamically select the most relevant few-shot examples based on user input.

The Challenges of Optimizing Model Performance

Few-shot prompting is a widely-used technique to improve model performance by including example inputs and desired outputs in the model prompt. Typically, developers use 3-5 examples to avoid overwhelming the context window. However, as applications grow in complexity, hundreds or even thousands of examples may be necessary to cover diverse user needs. Adding such a large dataset to every request is impractical due to increased token costs and latency.

Fine-tuning is often considered the next best option for handling numerous examples. While effective, fine-tuning comes with several downsides, including complexity, difficulty in updating with new examples, and the need for specialized infrastructure and expertise. Moreover, it lacks the flexibility to personalize examples for different users, making it less suitable for rapid iterations and personalized applications.

Dynamic Few-Shot Examples in LangSmith

Dynamic few-shot prompting addresses these challenges by allowing for the selection of the most relevant examples based on user input. This technique still uses a small set of 3-5 examples but dynamically selects them, thus covering a broader range of options and outperforming static datasets. LangSmith integrates this feature to streamline dataset management and enhance LLM application performance. With just one click, users can index their dataset and retrieve a list of examples most similar to new input, making it easier to iterate quickly and personalize applications.

Compared to fine-tuning, dynamic few-shot prompting is technically simpler, easier to keep updated, and requires minimal specialized infrastructure. This approach allows developers to retrieve relevant examples based on user inputs, enabling rapid iteration and personalization of applications.

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The new button added in LangSmith that allows you to index a dataset as a few-shot dataset

Currently, dynamic few-shot prompting in LangSmith is in closed beta, with a public launch expected later this month. Interested users can sign up for the waitlist. For more details on how to use dynamic few-shot prompting, LangSmith provides detailed technical documentation and a video walkthrough.

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