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Tool Calling in TabbyAPI
Note
Before getting started here, please look at the Custom templates page for foundational concepts.
Thanks to Storm for creating this documentation page.
TabbyAPI's tool calling implementation aligns with the OpenAI Standard, following the OpenAI Tools Implementation closely.
Features and Limitations
TabbyAPI's tool implementation supports:
- Tool calling when streaming
- Calling multiple tools per turn
Current limitations:
- No support for
tool_choiceparameter (always assumed to be auto) strictparameter not yet supported (OAI format ensured, but dtype and argument name choices not yet enforced)
Model Support
TabbyAPI exposes controls within the prompt_template to accommodate models specifically tuned for tool calling and those that aren't. By default, TabbyAPI includes chatml_with_headers_tool_calling.jinja, a generic template built to support the Llama 3.1 family and other models following the ChatML (with headers) format.
For more templates, check out llm-prompt-templates.
Usage
In order to use tool calling in TabbyAPI, you must select a prompt_template that supports tool calling when loading your model.
For example, if you are using a Llama 3.1 Family model you can simply modify your config.yml's prompt_template: to use the default tool calling template like so:
model:
...
prompt_template: tool_calls/chatml_with_headers
If loading via /v1/model/load, you would also need to specify a tool-supporting prompt_template.
Tool Template Variables
tools: Tools object.
Creating a Tool Calling Prompt Template
Here's how to create a TabbyAPI tool calling prompt template:
-
Define proper metadata:
Tool Call supporting
prompt_templatescan have the following fields as metadata:tool_startThis is a string that we expect the model to write when initating a tool call. (Required)tool_endThis is a string the model expects after completing a tool call.
Here is an example of these being defined:
{# Metadata #} {%- set stop_strings = ["<|im_start|>", "<|im_end|>"] -%} {%- set tool_start = "<|tool_start|>" -%} {# Optional Metadata #} {%- set tool_end = "<|tool_end|>" -%}tool_startandtool_endshould be selected based on which model you decide to use. For example, Groq's Tool calling models expects<tool_call>and</tool_call>while Llama3 FireFunctionV2's model expects onlyfunctoolsto start the call, without atool_end -
Define an
initial_system_prompt:While the name of your
inital_system_promptcan vary, it's purpose does not. This initial prompt is typically a simple instruction set followed by accessing thetoolstemplate variable.This will contain the function specification the user provided to the
toolsendpoint in their client when the chat completion request. Inside the template we can call this like so:{{ tools | tojson }}.
Note
Depending on the model you are using, it's possible your model may expect a special set of tokens to surround the function specifications. Feel free to surround
tools_jsonwith these tokens.
Note
To get a JSON representation of the tools variable, use
| tojson(indent=2)in the assignment
{% set initial_system_prompt %}
Your instructions here...
Available functions:
{{ tools | tojson(indent=2) }}
{% endset %}
You'll then want to make sure to provide this to the model in the first message it receives. Here is a simple example:
{%- if loop.first -%}
{{ bos_token }}{{ start_header }}{{ role }}{{ end_header }}
{{ inital_system_prompt }}
{{ content }}{{ eos_token }}
-
Handle messages with the
toolrole:After a tool call is made, a well behaved client will respond to the model with a new message containing the role
tool. This is a response to a tool call containing the results of it's execution.The simplest implementation of this will be to ensure your
message_roleslist within your prompt template containstool. Further customization may be required for models that expect specific tokens surrounding tool responses. An example of this customization is the Groq family of models from above. They expect special tokens surrounding their tool responses such as:{% if role == 'tool' %} <tool_response>{{ content }}</tool_response> {% endif %} -
Preserve tool calls from prior messages:
When creating a tool calling
prompt_template, ensure you handle previous tool calls from the model gracefully. Eachmessageobject withinmessagesexposed within theprompt_templatecould also containtool_calls.This field will contain tool calls made by the assistant in previous turns, and must be handled appropriately so that the model understands what previous actions it has taken (and can properly identify what tool response ID belongs to which call).
This will require using the
tool_start(and possiblytool_end) from above to wrap thetool_callobject like so:{% if 'tool_calls' in message and message['tool_calls'] %} {{ tool_start }}{{ message['tool_calls'] | tojson(indent=2) }}{{ tool_end }} {% endif %} -
Add the generation prompt check at the end:
{% if add_generation_prompt %} {{ start_header }}assistant{{ end_header }} {% endif %}
Note
When creating your own tool calling template, it's best to reference the default
chatml_with_headerstemplate as a starting point.
Support and Bug Reporting
For bugs, please create a detailed issue with the model, prompt template, and conversation that caused it. Alternatively, join our Discord and ask for Storm.