Skip to main content

gRPC interface to lara_django_substances_store

Project description

LARA Django Substances Store - gRPC API

This directory contains the gRPC interface for the lara-django-substances-store application, providing a high-performance API for managing chemical substances, compounds, and related data in the LARA database.

Overview

The gRPC API provides remote procedure call access to the LARA Django Substances Store service with support for multiple programming languages through protocol buffer definitions. It also contains a high-level Python interface for easy integration with Python applications.

Package: lara-django-substances-store-grpc
Python Requirement: 3.13.*

Project Structure

api/grpc/
├── go/                          # Go gRPC client code
├── connect-es/                  # Connect-ES client code
├── connectrpc-es/               # ConnectRPC ES implementations
├── grpc-web/                    # gRPC-Web client code
├── gen/                         # Generated code from protobuf definitions
├── dist/                        # Distribution packages
├── pyproject.toml               # Python project configuration
└── python/                      # Python API module root
    └── lara_django_substances_store_grpc/
        ├── lara_django_substances_store_data_model.py   # Data model definitions
        ├── lara_django_substances_store_interfaces.py   # High-level interface
        └── v1/
            └── *_pb2.py         # Generated protocol buffer code

## Installation

### Using uv (Recommended)

Install the `lara-django-substances-store-grpc` package with uv for faster dependency resolution:

```bash
cd api/grpc
uv pip install .

Or with development dependencies:

uv pip install -e ".[dev]"

For development, install with editable mode and all dependency groups:

cd api/grpc
uv sync --all-groups

Using pip

Alternatively, install with pip:

pip install lara-django-substances-store-grpc

Or from the local directory:

cd api/grpc
pip install .

Dependencies

  • Runtime: grpcio>=1.73.0
  • Development:
    • grpcio-tools>=1.73.0
    • pytest>=8,<9
    • pytest-cov>=6,<7
    • pytest-asyncio

Code Generation

Protocol buffer definitions are located in ../proto/lara_django_substances_grpc/. To regenerate gRPC code from protobuf definitions, e.g. in case you changed the .proto file, use the Buf CLI:

cd api
buf generate

This will generate code for multiple targets as configured in buf.gen.yaml:

  • Python
  • Go
  • JavaScript/TypeScript (Connect-ES, ConnectRPC, gRPC-Web)

Running Tests

The test suite is located in api/tests/ and includes tests for all major entities:

Using uv

# From the api/grpc directory
uv run pytest api/tests/

# With coverage
uv run pytest api/tests/ --cov

Using pytest directly

# From the api/grpc directory
pytest api/tests/

# With coverage
pytest api/tests/ --cov

Test Files

  • test_lara_django_substances_store_substance_grpc.py - Substance tests
  • Additional test files for substances-store-related entities

Usage Examples

Python Client

import grpc
from lara_django_substances_store_grpc import substance_pb2, substance_pb2_grpc

# Create a channel to the gRPC server
channel = grpc.insecure_channel('localhost:50051')

# Create a stub (client)
stub = substance_pb2_grpc.SubstanceServiceStub(channel)

# Make a request
response = stub.GetSubstance(substance_pb2.GetSubstanceRequest(id=1))
print(response)

# Don't forget to close the channel when done
channel.close()

For more comprehensive examples, see the demo clients in ../../demo_clients/.

Development

Building

The project uses the uv_build backend for building:

# Using uv (recommended)
uv build

# Or using Python build module
python -m build

Working with uv

This project is configured for uv with the following features:

  • Build Backend: uv_build>=0.9.0,<=0.10.0
  • Module Root: python/ (all Python gRPC code should be placed here)
  • Dependency Groups: Development dependencies are organized in groups

Common uv commands:

# Sync dependencies
uv sync

# Sync with development dependencies
uv sync --all-groups

# Add a new dependency
uv add package-name

# Add a development dependency
uv add --dev package-name

# Run a command in the uv environment
uv run python script.py

# Build the package
uv build

Module Root

The Python module root is configured at python/, meaning all Python gRPC code should be placed in that directory.

Documentation

Protocol Buffer Linting

The project uses Buf for linting and breaking change detection. Configuration is in ../buf.yaml:

  • Follows DEFAULT lint rules with specific exceptions
  • Breaking change detection enabled
  • Ignores certain Google type definitions

Contributing

Contributions are welcome! Please see the CONTRIBUTING.md file in the project root for guidelines.

When modifying protobuf definitions:

  1. Edit .proto files in ../proto/lara_django_substances_grpc/
  2. Run buf generate to regenerate code
  3. Update tests as needed
  4. Run the test suite to ensure compatibility

License

See the LICENSE file in the project root.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

lara_django_substances_store_grpc-0.2.91.tar.gz (112.3 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

File details

Details for the file lara_django_substances_store_grpc-0.2.91.tar.gz.

File metadata

File hashes

Hashes for lara_django_substances_store_grpc-0.2.91.tar.gz
Algorithm Hash digest
SHA256 b3fb786d16d51bfe0291240b9e0015ae622a024b8f9dc09a7e3f42e17a19199e
MD5 c2a02e6cb75873a82d9c401aa596a8cd
BLAKE2b-256 6c2b55750140452585169774555dd13a1409dbd59f2dd48a0a8eae27ab354585

See more details on using hashes here.

File details

Details for the file lara_django_substances_store_grpc-0.2.91-py3-none-any.whl.

File metadata

File hashes

Hashes for lara_django_substances_store_grpc-0.2.91-py3-none-any.whl
Algorithm Hash digest
SHA256 1a729b9223a8b21ef205a3b66026e3ec637c6914708fdf760e55afb520dbda90
MD5 3c37fc32ed1a86df2f656eda1c0f60f3
BLAKE2b-256 42557d25e24a1f191dcb42ad484da06c1e422663042dd54bc033bb5f0bce5e6e

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page