Marketplace testing
Automated test generation, review, and execution for pytest-based projects.
install
source · Clone the upstream repo
git clone https://github.com/aiskillstore/marketplace
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/aiskillstore/marketplace "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/byronwilliamscpa/testing" ~/.claude/skills/aiskillstore-marketplace-testing-b20058 && rm -rf "$T"
manifest:
skills/byronwilliamscpa/testing/SKILL.mdsource content
Testing Skill
Automated test generation, review, and execution for pytest-based projects.
Activation
Auto-activates on keywords: test, coverage, pytest, unittest, integration test, e2e, performance, benchmark, security testing
Workflows
Test Generation
- generate.md: Generate test cases for code
Test Review
- review.md: Review existing tests for quality
Specialized Testing
- e2e.md: End-to-end testing patterns
- security.md: Security testing patterns
- performance.md: Performance testing patterns
Context Files
- pytest-commands.md: Common pytest commands
- pytest-patterns.md: Testing patterns and best practices
Commands
# Run all tests uv run pytest # Run with coverage uv run pytest --cov=src/fragrance_rater --cov-report=html --cov-report=term-missing # Run specific test categories uv run pytest -m "not slow" uv run pytest -m "integration" uv run pytest -m "unit" # Run with verbose output uv run pytest -v --tb=short # Run mutation testing uv run mutmut run --paths-to-mutate=src/ # Run property-based tests uv run pytest --hypothesis-show-statistics
Coverage Standards
- Minimum Coverage: 80%
- Branch Coverage: Enabled
- Coverage Report: HTML and terminal output
Test Organization
tests/ ├── unit/ # Unit tests (fast, isolated) ├── integration/ # Integration tests (may use external services) ├── e2e/ # End-to-end tests (full system) ├── security/ # Security-focused tests ├── performance/ # Performance and load tests └── conftest.py # Shared fixtures
Testing Patterns
AAA Pattern (Arrange-Act-Assert)
def test_example(): # Arrange input_data = create_test_data() # Act result = function_under_test(input_data) # Assert assert result == expected_output
Fixtures
@pytest.fixture def sample_data(): return {"key": "value"} def test_with_fixture(sample_data): assert sample_data["key"] == "value"