Metadata-Version: 2.4
Name: haizelabs
Version: 0.0.8
Summary: Python library for Haize Labs
Author-email: Haize Labs <contact@haizelabs.com>
License-Expression: Apache-2.0
License-File: LICENSE
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Description-Content-Type: text/markdown

# Haize SDK

## Installation

```bash
# Install from PyPI
pip install haizelabs
```

## Client Initialization

```python
from haizelabs import Haize, AsyncHaize

client = AsyncHaize(api_key="your-api-key")

# Set HAIZE_API_KEY and optionally HAIZE_BASE_URL which defaults to `https://api.haizelabs.com/v1/`
client = AsyncHaize()

# Synchronous client
client = Haize(api_key="your-api-key")

# Clients can be used as context managers
async with AsyncHaize() as client:
    pass
```

## Error Handling

The SDK provides specific exception types for different API errors:

```python
from haizelabs import (
    HaizeAPIError,        # Base exception
    BadRequestError,      # 400 - Invalid request
    UnauthorizedError,    # 401 - Invalid API key  
    ForbiddenError,       # 403 - Insufficient permissions
    NotFoundError,        # 404 - Resource not found
    UnprocessableRequestError,  # 422 - Invalid data
    InternalServerError,  # 500 - Server error
)

try:
    system = await client.ai_systems.get("nonexistent-id")
except NotFoundError:
    print("AI system not found")
except UnauthorizedError:
    print("Invalid API key")
except HaizeAPIError as e:
    print(f"API error: {e.message} (status: {e.status_code})")
```

## API Reference

### AI Systems

Manage AI systems you want to red team and evaluate. Supports third-party models (e.g., `openai/gpt-4o-mini`) and self-hosted systems.

```python
# Create or update
system = await client.ai_systems.upsert_by_name(
    name="My System",
    model="openai/gpt-4o-mini",
    api_key="optional-api-key",
    system_prompt="Optional system prompt",
    system_config={"temperature": 0.7}
)

# Get
system = await client.ai_systems.get(ai_system_id)

# Update
system = await client.ai_systems.update(
    ai_system_id,
    name="New Name",
    model="openai/gpt-4o"
)

# Create
ai_system_id = await client.ai_systems.create(
    name="My System",
    model="openai/gpt-4o-mini",
    system_prompt="You are a helpful assistant"
)

# Get supported models as a flat list
models = await client.ai_systems.get_supported_models()
print("Available models:", models)  # ["openai/gpt-4o", "openai/gpt-4o-mini", ...]
```

### Code of Conduct

Define codes of conduct for your AI systems. A code of conduct consists of policies your AI system must adhere to and examples of violating that policy. A red team test can be initiated from a code of conduct by translating its principles into specific behaviors that we will test against.

```python
# Create code of conduct
coc = await client.code_of_conduct.create(
    name="Company Policy",
    description="Content guidelines"
)

# Get
coc = await client.code_of_conduct.get(coc_id)

# Create policy
policy = await client.code_of_conduct.create_policy(
    coc_id,
    policy="No personal information"
)

# Get policy
policy = await client.code_of_conduct.get_policy(coc_id, policy_id)

# Get all policies
policies = await client.code_of_conduct.get_policies(coc_id)

# Create violation
violation = await client.code_of_conduct.create_violation(
    coc_id,
    policy_id,
    violation="Sharing user emails"
)

# Get violation
violation = await client.code_of_conduct.get_violation(coc_id, policy_id, violation_id)

# Get all violations
violations = await client.code_of_conduct.get_violations(coc_id)

# Update code of conduct
await client.code_of_conduct.update(coc_id, name="New Name")

# Update policy
await client.code_of_conduct.update_policy(coc_id, policy_id, policy="Updated policy")

# Update violation
await client.code_of_conduct.update_violation(coc_id, policy_id, violation_id, violation="Updated violation")

# Delete violation
await client.code_of_conduct.delete_violation(coc_id, policy_id, violation_id)

# Delete policy
await client.code_of_conduct.delete_policy(coc_id, policy_id)

# Delete code of conduct
await client.code_of_conduct.delete(coc_id)

# Convert violations to behavior requests for red team tests
behavior_requests = violations.to_behavior_requests()
```


### Judges

Create evaluators that score AI outputs. Supported types:
- STATIC_PROMPT: LLM-based judge with `prompt_template` that must include `{system_output}`; can use a direct `model` or an existing `ai_system_id`.
- EXACT_MATCH: Returns labels by exact equality against a default value (optionally a column).
- REGEX_MATCH: Returns labels by pattern match (optionally a column).
Retrieve judges and control label types and output format.

For STATIC_PROMPT judges:
- `prompt_template`: Required template that **must include `{system_output}`** to evaluate responses
- `system_prompt`: Optional static instructions (defaults to empty string)
- `model` OR `ai_system_id`: Either specify a model directly or use an existing AI system

```python
from haizelabs.models.judges import JudgeType
from haizelabs.models.label_types import ContinuousLabelType, EnumLabelType

# Static Prompt Judge
judge = await client.judges.create(
    name="Safety Judge",
    model="openai/gpt-4o-mini",
    label_type=ContinuousLabelType(min_value=1, max_value=10),
    judge_type=JudgeType.STATIC_PROMPT,
    system_prompt="You are a safety evaluator. Rate responses from 1-10.",
    prompt_template="Evaluate this response:\n\n{system_output}",  # Must include {system_output}
)

# Alternative: Use existing AI system
ai_system = await client.ai_systems.create(
    name="Custom Judge AI System",
    model="anthropic/claude-3-5-sonnet-latest",
    system_prompt="You are an expert evaluator"
)
judge = await client.judges.create(
    name="Custom Judge",
    ai_system_id=ai_system.id,  # Use existing AI system ID
    label_type=ContinuousLabelType(min_value=1, max_value=10),
    judge_type=JudgeType.STATIC_PROMPT,
    prompt_template="Evaluate this response:\n\n{system_output}",
)

# Exact Match Judge - checks if output exactly matches a value
judge = await client.judges.create(
    name="Answer Judge",
    label_type=EnumLabelType(options=["correct", "incorrect"]),
    judge_type=JudgeType.EXACT_MATCH,
    default_match_value="expected_answer"
)

# Regex Match Judge - checks if output matches a pattern
judge = await client.judges.create(
    name="Format Judge",
    label_type=EnumLabelType(options=["valid", "invalid"]),
    judge_type=JudgeType.REGEX_MATCH,
    default_regex_pattern=r"^\d{3}-\d{3}-\d{4}$"  # Phone number pattern
)

# Get judge details
judge = await client.judges.get(judge_id)
```

### Red Team Tests

Set up an automated search to find inputs that make your AI act outside expected behavior, using your code of conduct or custom rules as the standard.

```python
from haizelabs.models.behaviors import CodeOfConductBehaviorRequest, BehaviorType

# Run (create and start)
test = await client.red_team_tests.run(
    name="Test Name",
    system_id=system_id,
    judge_ids=[judge1_id, judge2_id],
    custom_behaviors=["Harmful requests", "Prompt injection"],
    creativity=5,  # 1-5 range
)

# Create with code of conduct behaviors
response = await client.red_team_tests.create(
    name="Test Name",
    system_id=system_id,
    judge_ids=[judge_id],
    custom_behaviors=["Test behavior"],
    code_of_conduct_behaviors=[
        CodeOfConductBehaviorRequest(
            behavior="Policy violation",
            violation_id="v1",
            policy_id="p1",
            coc_id="c1",
            type=BehaviorType.CODE_OF_CONDUCT
        )
    ]
)

# Get
test = await client.red_team_tests.get(test_id)

# Start
await client.red_team_tests.start(test_id)

# Cancel
await client.red_team_tests.cancel(test_id)

# Generate report (returns job ID)
job_id = await client.red_team_tests.generate_report(test_id)

# Check report generation status
# Returns JobStatusResponse with status field that can be:
# - PENDING: Job is queued
# - RUNNING: Job is in progress  
# - SUCCEEDED: Report generation completed successfully
# - FAILED: Report generation failed
# - CANCELLED: Job was cancelled
status = await client.red_team_tests.get_report_job_status(job_id)
print(f"Report status: {status.status}")

# Example: Poll until report is ready
import asyncio
from haizelabs.models.tests import PlatformJobStatus

while True:
    status = await client.red_team_tests.get_report_job_status(job_id)
    if status.status == PlatformJobStatus.SUCCEEDED:
        print(f"Report ready at: https://platform.haizelabs.com/app/red-team-tests/{test_id}/report")
        break
    elif status.status in [PlatformJobStatus.FAILED, PlatformJobStatus.CANCELLED]:
        print(f"Report generation {status.status}")
        break
    await asyncio.sleep(5)
```

### Red Team Test Wrapper

Convenience object returned by `run()` with properties (e.g., `id`, `status`, `judge_ids`) and helper methods: `poll()`, `cancel()`, `metrics()`, `export_results_as_dataset()`, `generate_report()`, and `get_report_job_status()`.

The `run()` method returns a wrapper with convenience methods:

```python
test = await client.red_team_tests.run(...)

# Properties
test.id
test.name
test.status
test.system_id
test.attack_system_id
test.judge_ids

# Methods
await test.poll(interval=10, timeout=3600)
await test.cancel()
metrics = await test.metrics()
dataset = await test.export_results_as_dataset(name, description, minimum_score)

# Report generation
job_id = await test.generate_report()  # Start report generation, returns job ID
status = await test.get_report_job_status(job_id)  # Check status of report generation job
```

### Exporting Red Teaming Results

After a red team test completes, you can export the results as a dataset to view all attacks, judge scores, and other test data in the Haize UI or fetch them programmatically.

```python
metrics = await client.red_team_tests.metrics(test_id)
print(f"Total Attacks: {metrics.total_attacks}")
print(f"Average Behavior Duration: {metrics.average_behavior_duration:.2f}s")
print(f"Average Response Length: {metrics.average_response_length:.2f} characters")
print(f"Exploration Metric: {metrics.exploration_metric:.4f}")

dataset_response = await client.red_team_tests.export_results_as_dataset(
    test_id=test_id,
    name="red_team_results",
    description="Exported red team test results",
    minimum_score=0.0,  # Minimum judge score threshold for including results
)

# Fetch the exported dataset to access all attacks, judge scores, etc.
dataset = await client.datasets.get(dataset_response.dataset_id)
print(f"Dataset contains {len(dataset.dataset_rows)} rows")
print(f"Columns: {[col.name for col in dataset.dataset_info.columns]}")

# OR using the wrapper object
test = await client.red_team_tests.run(...)
await test.poll()  # Wait for completion

metrics = await test.metrics()  # Get metrics
dataset = await test.export_results_as_dataset(
    name="results",
    description="Test results",
    minimum_score=5.0
)
exported_data = await client.datasets.get(dataset.dataset_id)
```

The exported dataset includes all attacks generated during the test, along with judge scores, system responses, and other metadata. You can view it in the Haize UI or process it programmatically.

### Datasets

Create versioned datasets to run unit-tests. Retrieve latest or specific versions, update to create a new version, and add rows to a specific version. Helpful for unit tests and exporting red team results.

```python
# Create dataset
dataset = await client.datasets.create(
    name="Test Dataset",
    data=[
        {"input": "Hello", "output": "Hi there"},
        {"input": "How are you?", "output": "I'm doing well"},
    ]
)

# Get dataset (latest version by default)
dataset = await client.datasets.get(dataset_id)

# Get specific version of dataset
dataset_v2 = await client.datasets.get(dataset_id, version=2)

# Update dataset (creates new version)
updated = await client.datasets.update(
    dataset_id=dataset.dataset_id,
    name="Test Dataset v2",
    data=[
        {"input": "Hello", "output": "Hi there!", "context": "greeting"},
        {"input": "Goodbye", "output": "See you later!", "context": "farewell"},
    ]
)

# Add rows to a specific dataset version
result = await client.datasets.add_rows(
    dataset_id=dataset.dataset_id,
    dataset_version=1,  # Specify the version to add rows to
    data=[
        {"input": "What's up?", "output": "Not much, you?", "context": "casual"},
        {"input": "Thanks!", "output": "You're welcome!", "context": "gratitude"},
    ]
)
print(f"Added {len(result.row_ids)} rows")
```

### Unit Tests

Run an evaluation of your AI system on a dataset with a specified prompt template. The prompt template provided to the unit test may include variables that correspond to the dataset’s column names. The judge prompt template must include the `system_output` variable and may also reference any dataset column names as variables.

```python
# Create test dataset
dataset = await client.datasets.create(
    name="coding_tests",
    data=[
        {
            "task": "Write factorial function",
            "requirements": "Handle edge cases",
            "expected_output": "def factorial(n): return 1 if n <= 1 else n * factorial(n-1)"
        },
        {
            "task": "Binary search",
            "requirements": "Return index or -1",
            "expected_output": "def binary_search(arr, target): # O(log n) implementation"
        },
    ]
)

# Create judge for evaluation (prompt_template required, system_prompt optional)
judge = await client.judges.create(
    name="code_quality_judge",
    judge_type=JudgeType.STATIC_PROMPT,
    system_prompt="You are an expert code reviewer. Rate from 1-10.",  # Static instructions
    prompt_template="""Task: {task}
Requirements: {requirements}
Expected: {expected_output}

Student's Solution:
{system_output}

Rate the quality from 1-10.""",  # Must include {system_output}
    label_type=ContinuousLabelType(min_value=1, max_value=10),
    ai_system_id=judge_system_id
)

# Create unit test
test = await client.unit_tests.create(
    name="Code Quality Test",
    system_id=system_id,  # The AI system being tested
    judge_ids=[judge.id],
    prompt_template="Task: {task}\nRequirements: {requirements}\n\nProvide a solution:",
    dataset_id=dataset.dataset_id,
    dataset_version=dataset.version
)

# Start and monitor progress
await client.unit_tests.start(test.test_id)
while True:
    test = await client.unit_tests.get(test.test_id)
    print(f"Test status: {test.status}")
    if test.status in [TestStatus.SUCCEEDED, TestStatus.FAILED]:
        break
    await asyncio.sleep(2)

print(f"Test completed: {test.status}")
```