# output-parsers > Generate output parsers for mcptools with unstructured return types. Use when a tool returns raw strings or Result models with single str fields and needs structured ParseResult output. Covers testing tools, identifying parseable structures, extending modules with ParseResult models, and creating parser implementations. - Author: Martin Krasser - Repository: gradion-ai/freeact - Version: 20260120091553 - Stars: 126 - Forks: 0 - Last Updated: 2026-02-06 - Source: https://github.com/gradion-ai/freeact - Web: https://mule.run/skillshub/@@gradion-ai/freeact~output-parsers:20260120091553 --- --- name: output-parsers description: Generate output parsers for mcptools with unstructured return types. Use when a tool returns raw strings or Result models with single str fields and needs structured ParseResult output. Covers testing tools, identifying parseable structures, extending modules with ParseResult models, and creating parser implementations. --- # Output Parsers for mcptools Generate output parsers for Python tools in the `mcptools` package that have unstructured return types. ## Identifying Unstructured Return Types A tool has an unstructured return type when its `run()` function returns: - A `str` directly - A `Result` model with a single `str` field (named `result`, `content`, `output`, etc.) plus only `model_config` A `Result` model with multiple fields (beyond `model_config`) has a structured return type and does not need a parser. ## Workflow ### 1. Test the Python tool Run the Python tool with `ipybox_execute_ipython_cell` tool using 2-3 example inputs to observe return value patterns: ```python from mcptools.. import run, Params result = run(Params(...)) print(result) # or print(result.result) for Result types ``` ### 2. Identify structure Examine the output for parseable structure (JSON, JSONL, XML, delimited text, etc.). If no consistent structure exists, a parser cannot be generated. ### 3. Extend the Python tool module Preservation rules when extending tool modules: - Never modify existing `Params` class or other existing model definitions - Never remove or modify existing imports (they may be used by existing code) - Only add new imports, models, and functions Add to `mcptools//.py`: 1. A `ParseResult` model: ```python class ParseResult(BaseModel): """Parsed result containing structured data.""" model_config = ConfigDict( use_enum_values=True, ) : = Field(..., title="") ``` 2. A `run_parsed()` function: ```python def run_parsed(params: Params) -> ParseResult: """Run tool and return parsed structured data. Args: params: Tool parameters Returns: ParseResult with structured data """ from mcpparse.<category>.<tool> import parse result = run(params) # For str return: return parse(result) # For Result return: return parse(result.result) return parse(result) ``` ### 4. Create parser module Create `mcpparse/<category>/<tool>.py` with: ```python from mcptools.<category>.<tool> import ParseResult class <Tool>ParseError(Exception): """Exception raised when parsing <tool> results fails.""" pass def parse(result: str) -> ParseResult: """Parse <tool> result into structured data. Args: result: Raw string result from the tool Returns: ParseResult with structured data Raises: <Tool>ParseError: If parsing fails """ # Implementation based on observed output structure ... return ParseResult(...) ``` ### 5. Test run_parsed() Call the `ipybox_reset` tool to restart the IPython kernel so the next import loads the modified module. Then test with `ipybox_execute_ipython_cell` using the same example inputs from step 1: ```python from mcptools.<category>.<tool> import run_parsed, Params result = run_parsed(Params(...)) print(result) ``` Verify that the `ParseResult` fields are correctly populated. ## Examples ### str return type (brave_web_search) **Original:** `run(params: Params) -> str` returns JSONL **Extended with:** - `SearchResult` model for individual items - `ParseResult` with `results: list[SearchResult]` - `run_parsed()` that parses JSONL into structured objects ### Result return type (search_abstracts) **Original:** `run(params: Params) -> Result` where `Result.result: str` **Extended with:** - `Article` model for individual items - `ParseResult` with `articles: list[Article]` - `run_parsed()` that parses `result.result` into structured objects