Prompts
Prompt engineering is a core activity in AI engineering. Braintrust allows you to create prompts, test them out in the playground, use them in your code, update them, and track their performance over time. Our goal is to provide a world-class authoring experience in Braintrust, seamlessly, securely, and reliably integrate them into your code, and debug issues as they arise.
Creating a prompt
To create a prompt, visit the prompts tab in a project, and click the "+ Prompt" button. Pick a name and unique slug for your prompt. The slug is an immutable identifier that you can use to reference it in your code. As you change the prompt's name, description, or contents, its slug stays constant.
Prompts can use mustache templating syntax to refer to variables. These variables are substituted
automatically in the playground and using the .build()
function in your code. More on that below.
Updating a prompt
Each prompt change is versioned, e.g. 5878bd218351fb8e
. You can use this identifier to pin a specific
version of the prompt in your code.
You can use this identifier to refer to a specific version of the prompt in your code.
Testing in the playground
While developing a prompt, it can be useful to test it out on real-world data in the Playground. You can open a prompt in the playground, tweak it, and save a new version once you're ready.
Using prompts in your code
Executing directly
In Braintrust, a prompt is a simple function that can be invoked directly through the SDK and REST API. When invoked, prompt functions leverage the proxy to access a wide range of providers and models with managed secrets, and are automatically traced and logged to your Braintrust project. All functions are fully managed and versioned via the UI and API.
Functions are a broad concept that encompass prompts, code snippets, HTTP endpoints, and more. When using the functions API, you can use a prompt’s slug or ID as the function’s slug or ID, respectively.
The return value, result
, is a string unless you have tool calls, in which case it returns the arguments
of the first tool call. In typescript, you can assert this by using the schema
argument, which ensures your
code matches a particular zod schema:
Streaming
You can also stream results in an easy-to-parse format.
Vercel AI SDK
If you're using Next.js and the Vercel AI SDK, you can use the Braintrust
adapter by installing the @braintrust/vercel-ai-sdk
package and converting the stream to Vercel's format:
Logging
Any invoke
requests you make will be logged using the active logging state, just like a function decorated
with @traced
or wrapTraced
. You can also pass in the parent
argument, which is a string that you can
derive from span.export()
while doing distributed tracing.
Fetching in code
If you'd like to run prompts directly, you can fetch them using the Braintrust SDK. The loadPrompt()
/load_prompt()
function loads a prompt into a simple format that you can pass along to the OpenAI client. Prompts
are cached upon initial load for fast subsequent retrieval operations.
If you need to use another model provider, then you can use the Braintrust
proxy to access a wide range of models using the OpenAI
format. You can also grab the messsages
and other parameters directly from
the returned object to use a model library of your choice.
Pinning a specific version
To pin a specific version of a prompt, use the loadPrompt()
/load_prompt()
function with the version identifier.
Versioning with git
You can also download prompts to your local filesystem and ensure a specific version is used via version control. In addition to removing any risk around runtime performance, this approach also allows you to review changes to prompts in pull requests.
Prompts are stored in a simple, mustache-compatble format, so you can also edit them directly in your favorite text editor.
If you update the plaintext file, you can push it back to Braintrust using the push
command.
To use a local prompt in your code, you can just import it directly.
Deployment strategies
It is often useful to use different versions of a prompt in different environments. For example, you might want to use the latest
version locally and in staging, but pin a specific version in production. This is simple to setup by conditionally passing a version
to loadPrompt()
/load_prompt()
based on the environment.
Chat vs. completion format
In Python, prompt.build()
returns a dictionary with chat or completion parameters, depending on the prompt type. In Typescript, however,
prompt.build()
accepts an additional parameter (flavor
) to specify the format. This allows prompt.build
to be used in a more type-safe
manner. When you specify a flavor, the SDK also validates that the parameters are correct for that format.
Opening from traces
When you use a prompt in your code, Braintrust automatically links spans to the prompt used to generate them. This allows you to click to open a span in the playground, and see the prompt that generated it alongside the input variables. You can even test and save a new version of the prompt directly from the playground.
This workflow is very powerful. It effectively allows you to debug, iterate, and publish changes to your prompts directly within Braintrust. And because Braintrust flexibly allows you to load the latest prompt, a specific version, or even a version controlled artifact, you have a lot of control over how these updates propagate into your production systems.
Using the API
The full lifecycle of prompts -- creating, retrieving, modifying, etc. -- can be managed through the REST API. See the API docs for more details.