AI

Function calling and other API updates

1 Mins read

Developers can now describe functions to gpt-4-0613 and gpt-3.5-turbo-0613, and have the model intelligently choose to output a JSON object containing arguments to call those functions. This is a new way to more reliably connect GPT’s capabilities with external tools and APIs.

These models have been fine-tuned to both detect when a function needs to be called (depending on the user’s input) and to respond with JSON that adheres to the function signature. Function calling allows developers to more reliably get structured data back from the model. For example, developers can:

  • Create chatbots that answer questions by calling external tools (e.g., like ChatGPT Plugins)

Convert queries such as “Email Anya to see if she wants to get coffee next Friday” to a function call like send_email(to: string, body: string), or “What’s the weather like in Boston?” to get_current_weather(location: string, unit: 'celsius' | 'fahrenheit').

  • Convert natural language into API calls or database queries

Convert “Who are my top ten customers this month?” to an internal API call such as get_customers_by_revenue(start_date: string, end_date: string, limit: int), or “How many orders did Acme, Inc. place last month?” to a SQL query using sql_query(query: string).

  • Extract structured data from text

Define a function called extract_people_data(people: [{name: string, birthday: string, location: string}]), to extract all people mentioned in a Wikipedia article.

These use cases are enabled by new API parameters in our /v1/chat/completions endpoint, functions and function_call, that allow developers to describe functions to the model via JSON Schema, and optionally ask it to call a specific function. Get started with our developer documentation and add evals if you find cases where function calling could be improved


Source link

Related posts
AI

Revolutionizing knowledge management: VW’s AI prototype journey with AWS

12 Mins read
Today, we’re excited to share the journey of the VW—an innovator in the automotive industry and Europe’s largest car maker—to enhance knowledge…
AI

SmolTalk Released: The Dataset Recipe Behind the Best-in-Class Performance of SmolLM2

3 Mins read
Recent advancements in natural language processing (NLP) have introduced new models and training datasets aimed at addressing the increasing demands for efficient…
AI

Artificial Intelligence AI and Quantum Computing: Transforming Computational Frontiers

5 Mins read
Quantum computing (QC) stands at the forefront of technological innovation, promising transformative potential across scientific and industrial domains. Researchers recognize that realizing…

 

 

Leave a Reply

Your email address will not be published. Required fields are marked *