Skip to main content

LevelApp is an evaluation framework for AI/LLM-based software application. [Powered by Norma]

Project description

LevelApp: AI/LLM Evaluation Framework for Regression Testing

PyPI version
License
Python Version

Overview

LevelApp is an evaluation framework designed for regression testing (black-box) of already built LLM-based systems in production or testing phases. It focuses on assessing the performance and reliability of AI/LLM applications through simulation and comparison modules. Powered by Norma.

Key benefits:

  • Configuration-driven: Minimal coding required; define evaluations via YAML files.
  • Supports LLM-as-a-judge for qualitative assessments and quantitative metrics for metadata evaluation.
  • Modular architecture for easy extension to new workflows, evaluators, and repositories.

Features

  • Simulator Module: Evaluates dialogue systems by simulating conversations using predefined scripts. It uses an LLM as a judge to score replies against references and supports metrics (e.g., Exact, Embedded, Token-based, Fuzzy) for comparing extracted metadata to ground truth.
  • Comparator Module: Evaluates metadata extraction from JSON outputs (e.g., from legal/financial document processing with LLMs) by comparing against reference/ground-truth data.
  • Configuration-Based Workflow: Users provide YAML configs for endpoints, parameters, data sources, and metrics, reducing the need for custom code.
  • Supported Workflows: SIMULATOR, COMPARATOR, ASSESSOR (coming soon!).
  • Repositories: FIRESTORE, FILESYSTEM, MONGODB.
  • Evaluators: JUDGE, REFERENCE, RAG.
  • Metrics: Exact, Levenshtein, and more (see docs for full list).
  • Data Sources: Local or remote JSON for conversation scripts.

Installation

Install LevelApp via pip:

pip install levelapp

Prerequisites

  • Python 3.12 or higher.
  • API keys for LLM providers (e.g., OpenAI, Anthropic) if using external clients—store in a .env file.
  • Optional: Google Cloud credentials for Firestore repository.
  • Dependencies are automatically installed, including openai, pydantic, numpy, etc. (see pyproject.toml for full list).

Configuration

LevelApp uses a YAML configuration file to define the evaluation setup. Create a workflow_config.yaml with the following structure:

process:
  project_name: "test-project"
  workflow_type: SIMULATOR # Pick one of the following workflows: SIMULATOR, COMPARATOR, ASSESSOR.
  evaluation_params:
    attempts: 1  # Add the number of simulation attempts.
    batch_size: 5

evaluation:
  evaluators: # Select from the following: JUDGE, REFERENCE, RAG.
    - JUDGE
    - REFERENCE
  providers:
    - openai
    - ionos
  metrics_map:
    field_1: EXACT
    field_2 : LEVENSHTEIN

reference_data:
  path: "../data/conversation_example_1.json"
  data:

endpoint:
  name: conversational-agent
  base_url: http://127.0.0.1:8000
  path: /v1/chat
  method: POST
  timeout: 60
  retry_count: 3
  retry_backoff: 0.5
  headers:
    - name: model_id
      value: meta-llama/Meta-Llama-3-8B-Instruct
      secure: false
    - name: x-api-key
      value: API_KEY  # Load from .env file using python-dotenv.
      secure: true
    - name: Content-Type
      value: application/json
      secure: false
  request_schema:
    # Static field to be included in every request.
    - field_path: message.source
      value: system
      value_type: static
      required: true
      
    # Dynamic field to be populated from runtime context.
    - field_path: message.text
      value: message_text  # the key from the runtime context.
      value_type: dynamic
      required: true
      
    # Env-based field (from OS environment variables).
    - field_path: metadata.env
      value: ENV_VAR_NAME
      value_type: env
      required: false
      
  response_mapping:
    # Map the response fields that will be extracted.
    - field_path: reply.text
      extract_as: agent_reply  # The simulator requires this key: 'agent_reply'.
    - field_path: reply.metadata
      extract_as: generated_metadata  # The simulator requires this key: 'generated_metadata'.
    - field_path: reply.guardrail_flag
      extract_as: guardrail_flag  # The simulator requires this key: 'guardrail_flag'.

repository:
  type: FIRESTORE # Pick one of the following: FIRESTORE, FILESYSTEM
  project_id: "(default)"
  database_name: ""
  • Endpoint Configuration: Define how to interact with your LLM-based system (base URL, headers, request/response payload schema).
  • Placeholders: For dynamic request schema fields, use the values ('value') to dynamically populate these fields during runtime (e.g., context = {'message_text': "Hello, world!"}).
  • Secrets: Store API keys in .env and load via python-dotenv (e.g., API_KEY=your_key_here).

For conversation scripts (used in Simulator), provide a JSON file with this schema:

{
  "scripts": [
    {
      "interactions": [
        {
          "user_message": "Hello, I would like to book an appointment with a doctor.",
          "reference_reply": "Sure, I can help with that. Could you please specify the type of doctor you need to see?",
          "interaction_type": "initial",
          "reference_metadata": {},
          "guardrail_flag": false
        },
        {
          "user_message": "I need to see a cardiologist.",
          "reference_reply": "When would you like to schedule your appointment?",
          "interaction_type": "intermediate",
          "reference_metadata": {},
          "guardrail_flag": false
        },
        {
          "user_message": "I would like to book it for next Monday morning.",
          "reference_reply": "We have an available slot at 10 AM next Monday. Does that work for you?",
          "interaction_type": "intermediate",
          "reference_metadata": {
            "appointment_type": "Cardiology",
            "date": "next Monday",
            "time": "10 AM"
          },
          "guardrail_flag": false
        },
        {
          "id": "f4f2dd35-71d7-4b75-ba2b-93a4f546004a",
          "user_message": "Yes, please book it for 10 AM then.",
          "reference_reply": "Your appointment with the cardiologist is booked for 10 AM next Monday. Is there anything else I can help you with?",
          "interaction_type": "final",
          "reference_metadata": {},
          "guardrail_flag": false
        }
      ],
      "description": "A conversation about booking a doctor appointment.",
      "details": {
        "context": "Booking a doctor appointment"
      }
    }
  ]
}
  • Fields: Include user messages, reference/references replies, metadata for comparison, guardrail flags, and request payloads.

In the .env you need to add the LLM providers credentials that will be used for the evaluation process.

OPENAI_API_KEY=
IONOS_API_KEY=
ANTHROPIC_API_KEY=
MISTRAL_API_KEY=

# For IONOS, you must include the base URL and the model ID.
IONOS_BASE_URL="https://inference.de-txl.ionos.com"
IONOS_MODEL_ID="0b6c4a15-bb8d-4092-82b0-f357b77c59fd"

WORKFLOW_CONFIG_PATH="../../src/data/workflow_config_1.yaml"

Usage Example

To run an evaluation:

  1. Prepare your YAML config and JSON data files.
  2. Use the following Python script:
if __name__ == "__main__":
    from levelapp.workflow import WorkflowConfig
    from levelapp.core.session import EvaluationSession

    # Load configuration from YAML
    config = WorkflowConfig.load(path="../data/workflow_config.yaml")

    # Run evaluation session (You can enable/disable the monitoring aspect)
    with EvaluationSession(session_name="test-session-1", workflow_config=config, enable_monitoring=False) as session:
        session.run()
        results = session.workflow.collect_results()
        print("Results:", results)

    stats = session.get_stats()
    print(f"session stats:\n{stats}")

Alternatively, if you want to pass the configuration and reference data from in-memory variables, you can manually load the data like the following:

if __name__ == "__main__":
    from levelapp.workflow import WorkflowConfig
    from levelapp.core.session import EvaluationSession

    
    config_dict = {
        "process": {
            "project_name": "test-project",
            "workflow_type": "SIMULATOR",  # Pick one of the following workflows: SIMULATOR, COMPARATOR, ASSESSOR.
            "evaluation_params": {
                "attempts": 1,  # Add the number of simulation attempts.
            }
        },
        "evaluation": {
            "evaluators": ["JUDGE", "REFERENCE"],  # Select from the following: JUDGE, REFERENCE, RAG.
            "providers": ["openai", "ionos"],
            "metrics_map": {
                "field_1": "EXACT",
                "field_2": "LEVENSHTEIN"
            }
        },
        "reference_data": {
            "path": "../data/conversation_example_1.json",
            "data": None
        },
        "endpoint": {
            "name": "conversational-agent",
            "base_url": "http://127.0.0.1:8000",
            "path": "/v1/chat",
            "method": "POST",
            "timeout": 60,
            "retry_count": 3,
            "retry_backoff": 0.5,
            "headers": [
                {
                    "name": "model_id",
                    "value": "meta-llama/Meta-Llama-3.1-8B-Instruct",
                    "secure": False
                },
                {
                    "name": "x-api-key",
                    "value": "API_KEY",  # Load from .env file using python-dotenv.
                    "secure": True 
                },
                {
                    "name": "Content-Type",
                    "value": "application/json",
                    "secure": False
                }
            ],
            "request_schema": [
                {
                    "field_path": "message.source",
                    "value": "system",
                    "value_type": "static",
                    "required": True
                },
                {
                    "field_path": "message.text",
                    "value": "message_text",  # the key from the runtime context.
                    "value_type": "dynamic",
                    "required": True
                },
                {
                    "field_path": "metadata.env",
                    "value": "ENV_VAR_NAME",
                    "value_type": "env",
                    "required": False
                }
            ],
            "response_mapping": [
                {
                    "field_path": "reply.text",
                    "extract_as": "agent_reply"  # Remember that the simulator requires this key: 'agent_reply'.
                },
                {
                    "field_path": "reply.metadata",
                    "extract_as": "agent_reply"  # Remember that the simulator requires this key: 'agent_reply'.
                },
                {
                    "field_path": "reply.guardrail_flag",
                    "extract_as": "metadata"  # Remember that the simulator requires this key: 'agent_reply'.
                }
            ]
        },
        "repository": {
            "type": "FIRESTORE",  # Pick one of the following: FIRESTORE, FILESYSTEM
            "project_id": "(default)",
            "database_name": ""
        }
    }

    content = {
        "scripts": [
            {
                "interactions": [
                    {
                        "user_message": "Hello!",
                        "reference_reply": "Hello, how can I help you!"
                    },
                    {
                        "user_message": "I need an apartment",
                        "reference_reply": "sorry, but I can only assist you with booking medical appointments."
                    },
                ]
            },
        ]
    }

    # Load configuration from a dict variable
    config = WorkflowConfig.from_dict(content=config_dict)

    # Load reference data from dict variable
    config.set_reference_data(content=content)

    evaluation_session = EvaluationSession(
        session_name="test-session", 
        workflow_config=config, 
        enable_monitoring=True  # To disable the monitoring aspect, set this to False.
    )

    with evaluation_session as session:
        # Optional: Run connectivity test before the full evaluation
        test_results = session.run_connectivity_test(
            context={"user_message": "I want to book an appointment with a dentist."}
        )
        print(f"Connectivity Test Results:\n{test_results}\n---")
        session.run()
        results = session.workflow.collect_results()
        print("Results:", results)

    stats = session.get_stats()
    print(f"session stats:\n{stats}")
  • This loads the config, runs the specified workflow (e.g., Simulator), collects results, and prints stats.

For more examples, see the examples/ directory.

Documentation

Detailed docs are in the docs/ directory, including API references and advanced configuration.

Contributing

Contributions are welcome! Please follow these steps:

  • Fork the repository on GitHub.
  • Create a feature branch (git checkout -b feature/new-feature).
  • Commit changes (git commit -am 'Add new feature').
  • Push to the branch (git push origin feature/new-feature).
  • Open a pull request.

Report issues via GitHub Issues. Follow the code of conduct (if applicable).

Acknowledgments

  • Powered by Norma.
  • Thanks to contributors and open-source libraries like Pydantic, NumPy, and OpenAI SDK.

License

This project is licensed under the MIT License - see the LICENCE file for details.


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

levelapp-0.1.13.tar.gz (299.9 kB view details)

Uploaded Source

Built Distribution

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

levelapp-0.1.13-py3-none-any.whl (80.3 kB view details)

Uploaded Python 3

File details

Details for the file levelapp-0.1.13.tar.gz.

File metadata

  • Download URL: levelapp-0.1.13.tar.gz
  • Upload date:
  • Size: 299.9 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: uv/0.7.7

File hashes

Hashes for levelapp-0.1.13.tar.gz
Algorithm Hash digest
SHA256 0ae20102beb05848205964f64fd205a0c8df5909e39d8678ccfa764f848039a9
MD5 94c3f930fa2e3c5c8c67886504604325
BLAKE2b-256 0103a104e3e6da7cefa1ab4c915112c41ec437940779ad8a226e09f932852825

See more details on using hashes here.

File details

Details for the file levelapp-0.1.13-py3-none-any.whl.

File metadata

  • Download URL: levelapp-0.1.13-py3-none-any.whl
  • Upload date:
  • Size: 80.3 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: uv/0.7.7

File hashes

Hashes for levelapp-0.1.13-py3-none-any.whl
Algorithm Hash digest
SHA256 f45ff8de44d4a03adebf6b4501a4eb23f03bc43cf12e9e5d25b2dea609d16f73
MD5 334f0f69c7c7c08a75692f9995446e4e
BLAKE2b-256 7c58e0a2a25f159b8697918bb53ad98075e1960ed1842815afcd69ae4e042ae7

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