.. _arch_function_calling_agentic_guide: Agentic (Text-to-Action) Apps ============================== Arch helps you easily personalize your applications by calling application-specific (API) functions via user prompts. This involves any predefined functions or APIs you want to expose to users to perform tasks, gather information, or manipulate data. This capability is generally referred to as **function calling**, where you have the flexibility to support “agentic” apps tailored to specific use cases - from updating insurance claims to creating ad campaigns - via prompts. Arch analyzes prompts, extracts critical information from prompts, engages in lightweight conversation with the user to gather any missing parameters and makes API calls so that you can focus on writing business logic. Arch does this via its purpose-built :ref:`Arch-FC LLM ` - the fastest (200ms p90 - 10x faser than GPT-4o) and cheapest (100x than GPT-40) function-calling LLM that matches performance with frontier models. ______________________________________________________________________________________________ .. image:: /_static/img/function-calling-network-flow.jpg :width: 100% :align: center Single Function Call -------------------- In the most common scenario, users will request a single action via prompts, and Arch efficiently processes the request by extracting relevant parameters, validating the input, and calling the designated function or API. Here is how you would go about enabling this scenario with Arch: Step 1: Define prompt targets with functions ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ .. literalinclude:: /_config/function-calling-network-agent.yml :language: yaml :linenos: :emphasize-lines: 16-37 :caption: Define prompt targets that can enable users to engage with API and backened functions of an app Step 2: Process request parameters in Flask ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ Once the prompt targets are configured as above, handling those parameters is .. literalinclude:: /_include/parameter_handling_flask.py :language: python :linenos: :caption: Flask API example for parameter extraction via HTTP request parameters Parallel/ Multiple Function Calling ----------------------------------- In more complex use cases, users may request multiple actions or need multiple APIs/functions to be called simultaneously or sequentially. With Arch, you can handle these scenarios efficiently using parallel or multiple function calling. This allows your application to engage in a broader range of interactions, such as updating different datasets, triggering events across systems, or collecting results from multiple services in one prompt. Arch-FC1B is built to manage these parallel tasks efficiently, ensuring low latency and high throughput, even when multiple functions are invoked. It provides two mechanisms to handle these cases: Step 1: Define Multiple Function Targets ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ When enabling multiple function calling, define the prompt targets in a way that supports multiple functions or API calls based on the user's prompt. These targets can be triggered in parallel or sequentially, depending on the user's intent. Example of Multiple Prompt Targets in YAML: .. literalinclude:: /_config/function-calling-network-agent.yml :language: yaml :linenos: :emphasize-lines: 16-37 :caption: Define prompt targets that can enable users to engage with API and backened functions of an app