TBD
Project description
flex-evals
A Python implementation of the Flexible Evaluation Protocol (FEP) - a vendor-neutral, schema-driven standard for evaluating any system that produces complex or variable outputs, from deterministic APIs to non-deterministic LLMs and agentic workflows.
Quick Start
from flex_evals import evaluate, TestCase, Output, ContainsCheck
test_cases = [
TestCase(
id='test_001',
input="What is the capital of France?",
checks=[
ContainsCheck(
text='$.output.value', # JSONPath expression
phrases=['Paris', 'France'],
),
],
),
]
# System outputs to evaluate
outputs = [
Output(value="The capital of France is Paris."),
]
# Run evaluation
results = evaluate(test_cases, outputs)
print(f"Evaluation completed: {results.status}")
print(f"Passed: {results.results[0].check_results[0].results}")
Pytest Integration
Use the @evaluate decorator to test functions with automatic evaluation:
from flex_evals import TestCase, ContainsCheck
from flex_evals.pytest_decorator import evaluate
@evaluate(
test_cases=[TestCase(input="What is Python?")],
checks=[
ContainsCheck(
text="$.output.value", # JSONPath expression
phrases=["Python", "programming"],
),
],
samples=10,
success_threshold=0.8, # Expect 80% success
)
async def test_python_explanation(test_case: TestCase) -> str:
# This function will be called `samples * len(test_cases)` times.
# Each test case will be evaluated against this function's output.
# The value returned by this function will be populated into the `Output` dataclass and
# can be referenced by the Check via JSONPath (e.g. `text="$.output.value"`)
return my_llm(test_case.input)
Fixture Limitations
When using pytest fixtures with the @evaluate decorator, be aware that fixture instances are reused across all test executions within a single decorated function run. This means:
- If your pytest fixture maintains state (counters, lists, etc.), that state will accumulate across multiple executions
- Each execution does NOT get a fresh fixture instance - the same fixture is passed to all executions
- This is standard pytest behavior when fixtures are resolved to values before being passed to the decorator
Example of problematic fixture:
@pytest.fixture
async def stateful_fixture():
class Counter:
def __init__(self):
self.count = 0
def increment(self):
self.count += 1
return self.count
return Counter()
@evaluate(test_cases=[...], samples=5)
async def test_func(test_case, stateful_fixture):
# This will return 1, 2, 3, 4, 5 across executions
# NOT 1, 1, 1, 1, 1 as might be expected
return stateful_fixture.increment()
For stateless fixtures or fixtures that should maintain state across executions, this behavior is expected and correct.
Examples
See examples directory for more detailed usage examples:
- Pytest Decorator Examples - Complete pytest integration examples
- Quickstart Notebook - Introduction to FEP concepts
- Advanced Examples - Using YAML for defining test cases
- LLM-as-a-Judge - Using YAML for defining test cases
Table of Contents
- Features
- Installation
- Core Concepts
- Usage Examples
- Available Checks
- JSONPath Support
- Async Evaluation
- Architecture
- Development
- Contributing
- License
Features
Protocol Compliance
- Full FEP Implementation - Complete implementation of the Flexible Evaluation Protocol specification
- Structured Results - Comprehensive result format with metadata, timestamps, and error details
- Reproducible Evaluations - Consistent, auditable evaluation runs
Flexible Data Access
- JSONPath Expressions - Dynamic data extraction with
$.test_case.input,$.output.value, etc. - Multiple Input Types - Support for strings, objects, and complex nested data structures
- Custom Metadata - Attach arbitrary metadata to test cases, outputs, and evaluations
Built-in Checks
- Standard Checks -
exact_match,contains,regex,threshold - LLM Checks -
semantic_similarity,llm_judge(with user-provided async functions) - Extensible - Easy to add custom check implementations
Performance & Scalability
- Async Support - Automatic detection and optimal execution of sync/async checks
- Parallel Execution - Batch processing for large evaluation runs
- Memory Efficient - Streaming support for large datasets
Developer Experience
- Pythonic API - Clean, type-safe interfaces with excellent IDE support
- Test-Friendly - Easy unit testing of individual checks
- Comprehensive Documentation - Detailed examples and API reference
Installation
uv add flex-evals
pip install flex-evals
Requirements
- Python 3.11+
- Dependencies:
jsonpath-ng,pydantic,pyyaml,requests
Core Concepts
Test Cases
Define the inputs and expected outputs for evaluation:
test_case = TestCase(
id='unique_identifier',
input="System input data",
expected="Expected output", # Optional
metadata={'category': 'reasoning'} # Optional
)
Outputs
Represent the actual system responses being evaluated:
output = Output(
value="System generated response",
metadata={'model': 'gpt-4', 'tokens': 150} # Optional
)
Checks
Define evaluation criteria with type-safe, validated classes:
from flex_evals import ExactMatchCheck
check = ExactMatchCheck(
actual='$.output.value', # JSONPath to extract data
expected='Paris', # Literal value
case_sensitive=False
)
Usage Examples
Simple Text Comparison
from flex_evals import evaluate, TestCase, Output, ExactMatchCheck
# Geography quiz evaluation
test_cases = [TestCase(id='q1', input="Capital of France?", expected='Paris')]
outputs = [Output(value='Paris')]
checks = [
ExactMatchCheck(
actual='$.output.value',
expected='$.test_case.expected',
),
]
results = evaluate(test_cases, outputs, checks)
Pattern 1: Shared Checks (1-to-Many)
from flex_evals import ContainsCheck, RegexCheck
import re
# Each test case shares the same checks
checks = [
# Check if answer is correct
ContainsCheck(
text='$.output.value',
phrases=['Paris'],
case_sensitive=False
),
# Check if response is properly formatted
RegexCheck(
text='$.output.value',
pattern=r'The capital of .+ is .+\.',
flags=re.IGNORECASE
)
]
results = evaluate(test_cases, outputs, checks)
Pattern 2: Per-Test-Case Checks (1-to-1)
from flex_evals import ExactMatchCheck, RegexCheck
# Each test case has it's own checks
test_cases = [
TestCase(
id='math_problem',
input="What is 2+2?",
checks=[
ExactMatchCheck(
actual='$.output.value',
expected='4'
)
]
),
TestCase(
id='creative_writing',
input="Write a haiku about code",
checks=[
RegexCheck(
text='$.output.value',
pattern=r'(.+\n){2}.+'
)
]
)
]
outputs = [
Output(value="4"),
Output(value="Code flows like stream\nBugs dance in morning sunlight\nCommit, push, deploy"),
]
# No global checks needed - using per-test-case checks
results = evaluate(test_cases, outputs, checks=None)
JSONPath Support
Access data anywhere in the "evaluation context" (i.e. test case definition and output) using JSONPath expressions:
# Evaluation context structure:
{
'test_case': {
'id': 'test_001',
'input': "What is the capital of France?",
'expected': 'Paris',
'metadata': {'category': 'geography'}
},
'output': {
'value': "The capital of France is Paris",
'metadata': {'model': 'gpt-4', 'tokens': 25}
}
}
# JSONPath examples:
'$.test_case.input' # "What is the capital of France?"
'$.test_case.expected' # "Paris"
'$.output.value' # "The capital of France is Paris"
'$.output.metadata.model' # "gpt-4"
'$.test_case.metadata.category' # "geography"
Literal vs JSONPath
- Strings starting with
$.are JSONPath expressions - Use
\\$.to escape literal strings that start with$. - All other values are treated as literals
JSONPath Example
# Evaluate structured outputs
test_case = TestCase(
id='api_test',
input={'endpoint': '/users', 'method': 'GET'},
expected={'status': 200, 'count': 5}
)
output = Output(
value={'status': 200, 'data': {'users': [...]}, 'count': 5},
metadata={'response_time': 245}
)
checks = [
ExactMatchCheck(
# use JSONPath to access nested output value
actual='$.output.value.status',
# use JSONPath to access expected value
expected='$.test_case.expected.status'
),
ThresholdCheck(
# use JSONPath to access nested metadata
value='$.output.metadata.response_time',
max_value=500
)
]
Available Checks
flex-evals provides type-safe check classes with IDE support, validation, and clear APIs:
YAML Configuration
Checks can also be defined in YAML format for configuration-driven evaluations:
# test_cases.yaml
checks:
- type: exact_match
arguments:
actual: "$.output.value"
expected: "Paris"
case_sensitive: false
Load and use YAML-defined checks:
import yaml
from flex_evals import Check
# Load checks from YAML
with open('test_cases.yaml', 'r') as f:
config = yaml.safe_load(f)
checks = [Check(**check_config) for check_config in config['checks']]
# Use in evaluation
results = evaluate(test_cases, outputs, checks)
See example_yaml_test_cases.ipynb for comprehensive YAML configuration examples.
Standard Checks
ExactMatchCheck
Compare two values for exact equality:
from flex_evals import ExactMatchCheck
ExactMatchCheck(
actual='$.output.value',
expected='Paris',
case_sensitive=True, # Default
negate=False, # Default
)
ContainsCheck
Check if text contains all specified phrases:
from flex_evals import ContainsCheck
ContainsCheck(
text='$.output.value',
phrases=['Paris', 'France'],
case_sensitive=True, # Default
negate=False, # Pass if ALL phrases found
)
RegexCheck
Test text against regular expression patterns:
import re
from flex_evals import RegexCheck
RegexCheck(
text='$.output.value',
pattern=r'^[A-Z][a-z]+$',
flags=re.IGNORECASE, # Use standard re flags
negate=False,
)
ThresholdCheck
Validate numeric values against bounds:
from flex_evals import ThresholdCheck
ThresholdCheck(
value='$.output.confidence',
min_value=0.8,
max_value=1.0,
min_inclusive=True, # Default
max_inclusive=True, # Default
negate=False,
)
Extended Checks (Async)
semantic_similarity
Measure semantic similarity using embeddings:
TBD
LLMJudgeCheck
Use an LLM for qualitative evaluation:
from flex_evals import LLMJudgeCheck
from pydantic import BaseModel, Field
class HelpfulnessScore(BaseModel): # Pydantic model defining Judge format.
score: int = Field(description="Rate the response on a scale of 1-5h.")
reasoning: str = Field(description="Brief explanation of the score.")
async def llm_judge(prompt: str, response_format: type[BaseModel]):
response = ...
metadata = {
'cost_usd': ...,
'response_time_ms': ...,
'model_name': ...,
'model_version': ...,
}
return response, metadata
LLMJudgeCheck(
prompt="Rate this response for helpfulness: {{$.output.value.response}}",
response_format=HelpfulnessScore,
llm_function=llm_judge,
)
Async Evaluation
flex-evals automatically detects and optimizes async checks:
# Mix of sync and async checks
checks = [
# Sync __call__
ExactMatchCheck(
actual='$.output.value',
expected='Paris',
),
# Async __call__
LLMJudgeCheck(
prompt="{{$.output.value}}",
response_format=MyFormat,
llm_function=judge_func,
)
]
# Engine automatically:
# 1. Detects async checks
# 2. Runs all async checks in event loop
# 3. Maintains proper result ordering after execution
results = evaluate(test_cases, outputs, checks)
Custom Async Checks
from flex_evals.checks.base import BaseAsyncCheck
from flex_evals.registry import register
@register('custom_async_check', version='1.0.0')
class CustomAsyncCheck(BaseAsyncCheck):
async def __call__(self, text: str, api_endpoint: str) -> dict:
# Your async implementation
async with httpx.AsyncClient() as client:
response = await client.post(api_endpoint, json={'text': text})
return {'score': response.json()['score']}
Architecture
Core Components
src/flex_evals/
├── schemas/ # Pydantic models for FEP protocol
├── engine.py # Main evaluate() function
├── checks/
│ ├── base.py # BaseCheck and BaseAsyncCheck
│ ├── standard/ # Built-in synchronous checks
│ └── extended/ # Async checks (LLM, API calls)
├── jsonpath_resolver.py # JSONPath expression handling
├── registry.py # Check registration and discovery
└── exceptions.py # Custom exception hierarchy
Evaluation Flow
- Validation - Ensure inputs meet protocol requirements
- Check Resolution - Map check types to implementations
- Async Detection - Determine execution strategy
- Execution - Run checks with proper error handling
- Aggregation - Collect results and compute summaries
Result Format
EvaluationRunResult(
evaluation_id='uuid',
started_at='2025-01-01T00:00:00Z',
completed_at='2025-01-01T00:00:05Z',
status='completed', # completed | error | skip
summary=EvaluationSummary(
total_test_cases=100,
completed_test_cases=95,
error_test_cases=3,
skipped_test_cases=2
),
results=[TestCaseResult(...), ...],
experiment=ExperimentMetadata(...)
)
Development
Setup
# Clone repository
git clone https://github.com/your-org/flex-evals.git
cd flex-evals
# Install with development dependencies
uv install --dev
# Run tests
make unittests
# Run linting
make linting
# Run all quality checks
make tests
Project Commands
# Development workflow
make linting # Run ruff linting
make unittests # Run pytest with coverage
make tests # Run all quality checks
# Package management
uv add <package> # Add dependency
uv add --dev <tool> # Add development dependency
uv run <command> # Run command in environment
Adding Custom Checks
- Create check implementation:
from flex_evals.checks.base import BaseCheck
from flex_evals.registry import register
@register('my_check', version='1.0.0')
class MyCheck(BaseCheck):
def __call__(self, text: str, pattern: str, threshold: float = 0.5) -> dict:
# Your check logic here
score = your_analysis(text, pattern)
return {'score': score, 'passed': score >= threshold}
- Write tests:
def test_my_check():
check = MyCheck()
result = check(text='test input', pattern='test')
assert 'score' in result
assert 'passed' in result
- Register and use:
# Import registers the check automatically
from my_package.my_check import MyCheck
check = Check(type='my_check', arguments={
'text': '$.output.value',
'pattern': 'success',
'threshold': 0.8
})
Contributing
We welcome contributions! Please see our Contributing Guide for details.
Quick Contribution Steps
- Fork the repository
- Create a feature branch (
git checkout -b feature/amazing-feature) - Make your changes with tests
- Run linting and unit tests (
make tests) - Commit changes (
git commit -m 'Add amazing feature') - Push to branch (
git push origin feature/amazing-feature) - Open a Pull Request
Development Principles
- Comphensive Unit Tests - Ensure all new features have tests
- Consistent Style - Follow PEP 8 and use
rufffor linting - Documentation - Clear examples and comprehensive docs
License
This project is licensed under the Apache License 2.0 - see the LICENSE file for details.
Related Links
Support
- Issues: GitHub Issues
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
Built Distribution
Filter files by name, interpreter, ABI, and platform.
If you're not sure about the file name format, learn more about wheel file names.
Copy a direct link to the current filters
File details
Details for the file flex_evals-0.1.9.tar.gz.
File metadata
- Download URL: flex_evals-0.1.9.tar.gz
- Upload date:
- Size: 329.2 kB
- Tags: Source
- Uploaded using Trusted Publishing? No
- Uploaded via: uv/0.7.14
File hashes
| Algorithm | Hash digest | |
|---|---|---|
| SHA256 |
9154eccc3c33c9b00766af27765bb17fcb7db7f909a4fc29362afe84b9739d3d
|
|
| MD5 |
eca7cbf825801feddc550956b8c93089
|
|
| BLAKE2b-256 |
c30b6979566b565f650c849119f38dcfc777fe0a8567d66ec4281f6e9936b5f0
|
File details
Details for the file flex_evals-0.1.9-py3-none-any.whl.
File metadata
- Download URL: flex_evals-0.1.9-py3-none-any.whl
- Upload date:
- Size: 65.3 kB
- Tags: Python 3
- Uploaded using Trusted Publishing? No
- Uploaded via: uv/0.7.14
File hashes
| Algorithm | Hash digest | |
|---|---|---|
| SHA256 |
0884e7a43cbcfcdf20267b6a267d474126615363bb41ffd341f9b1a9d1eb7330
|
|
| MD5 |
7738002aaa4c0fce8d930387d29c20be
|
|
| BLAKE2b-256 |
6d28a76ed46a2a59cc6db648fa1b82c6906be2d9c7d49eadd3ddd9d151fbfc48
|