Metadata-Version: 2.4
Name: iron-gql
Version: 0.3.2
Summary: iron_gql generates typed async GraphQL clients and runtime helpers from schemas for Python services
Keywords: graphql,gql,client,httpx,pydantic,codegen,async
Author: Ilia Ablamonov
Author-email: Ilia Ablamonov <ilia@flamefork.ru>
License-Expression: MIT
License-File: LICENSE
Classifier: Development Status :: 3 - Alpha
Classifier: Intended Audience :: Developers
Classifier: Topic :: Software Development :: Libraries
Classifier: Programming Language :: Python :: 3
Classifier: Programming Language :: Python :: 3.13
Requires-Dist: httpx>=0.28.1,<1
Requires-Dist: pydantic>=2.12.3,<3
Requires-Dist: graphql-core>=3.2.6,<4 ; extra == 'codegen'
Requires-Python: >=3.13
Project-URL: Homepage, https://github.com/Flamefork/iron_gql
Project-URL: Repository, https://github.com/Flamefork/iron_gql.git
Project-URL: Issues, https://github.com/Flamefork/iron_gql/issues
Provides-Extra: codegen
Description-Content-Type: text/markdown

# iron_gql

[![License](https://img.shields.io/badge/License-MIT-blue.svg)](LICENSE)
[![main](https://github.com/Flamefork/iron_gql/actions/workflows/main.yml/badge.svg)](https://github.com/Flamefork/iron_gql/actions/workflows/main.yml)
[![PyPI - Version](https://img.shields.io/pypi/v/iron-gql)](https://pypi.org/project/iron-gql/)


`iron_gql` is a lightweight GraphQL code generator and runtime that turns schema SDL and real query documents into typed Python clients powered by Pydantic models. Use it to wire GraphQL APIs into services, CLIs, background jobs, or tests without hand-writing boilerplate.

## Installation

```bash
pip install iron-gql            # runtime only (httpx + pydantic)
pip install iron-gql[codegen]   # + graphql-core for code generation
```

## Key Features
- **Query discovery.** `generate_gql_package` scans your codebase for calls that look like `<package>_gql("""...""")`, validates each statement, and emits a module with strongly typed helpers.
- **Typed inputs and results.** Generated Pydantic models mirror every selection set, enum, and input object referenced by the discovered queries.
- **Async runtime.** `runtime.GQLClient` speaks to GraphQL endpoints over `httpx` and can shortcut network hops when pointed at an ASGI app.
- **Deterministic validation.** `graphql-core` (codegen dependency) enforces schema compatibility and rejects duplicate operation names with incompatible bodies.

## Package Layout
- `runtime.py` – provides the async `GQLClient`, the reusable `GQLQuery` base class, and value serialization helpers.
- `codegen/generator.py` – orchestrates query discovery, validation, and module rendering.
- `codegen/parser.py` – converts GraphQL AST into typed helper structures consumed by the renderer.

## Getting Started
1. **Describe your schema.** Point `generate_gql_package` at an SDL file (`schema.graphql`). Include whichever root types you rely on (query, mutation, subscription).
2. **Author queries where they live.** Import the future helper and wrap your GraphQL statement:
   ```python
   from myapp.gql.client import client_gql

   get_user = client_gql(
       """
       query GetUser($id: ID!) {
           user(id: $id) {
               id
               name
           }
       }
       """
   )
   ```
   The generator infers the helper name (`client_gql`) from the package path you ask it to build.
3. **Generate the client module.**
   ```python
   from pathlib import Path

   from iron_gql.codegen import generate_gql_package

   generate_gql_package(
       schema_path=Path("schema.graphql"),
       package_full_name="myapp.gql.client",
       base_url_import="myapp.config:GRAPHQL_URL",
       scalars={"ID": "builtins:str"},
       to_camel_fn_full_name="myapp.inflection:to_camel",
       to_snake_fn=my_project_to_snake,
       debug_path=Path("iron_gql/debug/myapp.gql.client"),
       src_path=Path("."),
   )
   ```
   The call writes `myapp/gql/client.py` containing:
   - an async client singleton,
   - Pydantic result and input models,
   - a query class per operation with typed `execute` methods,
   - overloads for the helper function so editors can infer return types.
4. **Call your API.**
   ```python
   async def fetch_user(user_id: str):
       query = get_user.with_headers({"Authorization": "Bearer token"})
       result = await query.execute(id=user_id)
       return result.user
   ```

## Custom Scalars

The generator maps GraphQL scalars to Python types in two layers:

**Built-in scalars** are mapped automatically:

| GraphQL | Python |
|---------|--------|
| `String`, `Int`, `Float`, `Boolean` | `str`, `int`, `float`, `bool` |
| `Date` | `datetime.date` |
| `DateTime` | `datetime.datetime` |
| `JSON` | `object` |
| `Upload` | `iron_gql.FileVar` |

**Custom scalars** are configured via the `scalars` parameter in `"module:type"` format:

```python
generate_gql_package(
    ...,
    scalars={
        "ID": "builtins:str",
        "Money": "decimal:Decimal",
        "ULID": "ulid:ULID",
    },
)
```

Custom scalar types must be Pydantic-compatible — i.e. Pydantic should know how to parse them from JSON (deserialization) and serialize them to JSON. This works out of the box for standard library types (`datetime`, `Decimal`, `UUID`, `Enum`) and for any type that implements `__get_pydantic_core_schema__`. Unknown scalars fall back to `object` with a log warning.

## Customization Hooks
- **Naming conventions.** Supply `to_camel_fn_full_name` (module:path string) and a `to_snake_fn` callable to align casing with your own `alias_generator`.
- **Endpoint configuration.** `base_url_import` is written verbatim into the generated module; point it at a global string, config object, or helper that returns the GraphQL endpoint.

## Runtime Highlights
- `GQLClient` accepts ASGI `target_app` so you can reuse the runtime for production HTTP calls or in-process ASGI execution.
- `GQLQuery.with_headers` and `GQLQuery.with_file_uploads` clone the query object, making per-call customization trivial.
- `Upload` scalars map to `iron_gql.FileVar` for multipart file handling.
- `serialize_var` converts variables to JSON-friendly structures via Pydantic's `TypeAdapter`, supporting custom scalar types alongside nested models, dicts, and lists.

## Example

The [`example/`](example/) directory contains a complete working setup: a GraphQL schema with queries, mutations, enums, interfaces, unions, and fragments, plus the generation script and sample query definitions. See [`example/generate.py`](example/generate.py) for the codegen call and [`example/myapp/main.py`](example/myapp/main.py) for query usage.

## Testing

Override the generated client via `monkeypatch` (or any other module attribute patching) to point queries at a test server or an ASGI app:

```python
from iron_gql import runtime
from myapp.gql import api

async def test_get_user(monkeypatch):
    test_client = runtime.GQLClient(
        base_url="http://testserver",
        target_app=my_asgi_app,
    )
    monkeypatch.setattr(api, "API_CLIENT", test_client)

    result = await get_user.execute(id="1")
    assert result.user.name == "Alice"
```

The generated query classes resolve the client by module attribute name at call time, so replacing it is sufficient. The attribute is always named `{PACKAGE}_CLIENT` — for a package `myapp.gql.api` it is `API_CLIENT`.

## Validation and Troubleshooting
- Errors identify the file and line where the problematic statement lives.
- Duplicate operation names must share identical bodies; rename or consolidate to resolve the conflict.
