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Brokle Platform Python SDK for OpenTelemetry-native LLM observability and tracing

Project description

Brokle Python SDK

OpenTelemetry-native observability for AI applications.

The Brokle Python SDK provides comprehensive observability, tracing, and auto-instrumentation for LLM applications. Choose your integration level:

🎯 Three Integration Patterns

Pattern 1: Wrapper Functions Wrap existing SDK clients (OpenAI, Anthropic) for automatic observability and platform features.

Pattern 2: Universal Decorator Framework-agnostic @observe() decorator with automatic hierarchical tracing. Works with any AI library.

Pattern 3: Native SDK (Sync & Async) Full platform capabilities with OpenAI-compatible interface. Context manager support with automatic resource cleanup.

Installation

pip install brokle

Setup

export BROKLE_API_KEY="bk_your_api_key_here"
export BROKLE_HOST="http://localhost:8080"

Quick Start

Pattern 1: Wrapper Functions

# Wrap existing SDK clients for automatic observability
from openai import OpenAI
from anthropic import Anthropic
from brokle import wrap_openai, wrap_anthropic

# OpenAI wrapper
openai_client = wrap_openai(
    OpenAI(api_key="sk-..."),
    tags=["production"],
    session_id="user_session_123"
)

# Anthropic wrapper
anthropic_client = wrap_anthropic(
    Anthropic(api_key="sk-ant-..."),
    tags=["claude", "analysis"]
)

response = openai_client.chat.completions.create(
    model="gpt-4",
    messages=[{"role": "user", "content": "Hello!"}]
)
# ✅ Automatic Brokle observability and tracing

Pattern 2: Universal Decorator

# Automatic hierarchical tracing with just @observe()
from brokle import observe
import openai

client = openai.OpenAI()

@observe(name="parent-workflow")
def main_workflow(data: str):
    # Parent span automatically created
    result1 = analyze_data(data)
    result2 = summarize_findings(result1)
    return f"Final result: {result1} -> {result2}"

@observe(name="data-analysis")
def analyze_data(data: str):
    # Child span automatically linked to parent
    response = client.chat.completions.create(
        model="gpt-4",
        messages=[{"role": "user", "content": f"Analyze: {data}"}]
    )
    return response.choices[0].message.content

@observe(name="summarization")
def summarize_findings(analysis: str):
    # Another child span automatically linked to parent
    response = client.chat.completions.create(
        model="gpt-4",
        messages=[{"role": "user", "content": f"Summarize: {analysis}"}]
    )
    return response.choices[0].message.content

# Automatic hierarchical tracing - no manual workflow management needed
result = main_workflow("User behavior data from Q4 2024")
# ✅ Complete span hierarchy: parent -> analyze_data + summarize_findings

Pattern 3: Native SDK

Sync Client:

from brokle import Brokle

# Context manager (recommended)
with Brokle(
    api_key="bk_...",
    host="http://localhost:8080"
) as client:
    response = client.chat.completions.create(
        model="gpt-4",
        messages=[{"role": "user", "content": "Hello!"}],
        tags=["production"]  # Analytics tags
    )
    print(f"Response: {response.choices[0].message.content}")

Async Client:

from brokle import AsyncBrokle
import asyncio

async def main():
    async with AsyncBrokle(
        api_key="bk_...",
    ) as client:
        response = await client.chat.completions.create(
            model="gpt-4",
            messages=[{"role": "user", "content": "Hello!"}],
            tags=["async", "production"]  # Analytics tags
        )
        print(f"Response: {response.choices[0].message.content}")

asyncio.run(main())

Privacy and Data Masking

Brokle supports client-side data masking to protect sensitive information before transmission. Masking is applied to input/output data and metadata before it leaves your application.

Basic Usage

import re
from brokle import Brokle

def mask_emails(data):
    """Mask email addresses in any data structure."""
    if isinstance(data, str):
        return re.sub(r'\b[\w.]+@[\w.]+\b', '[EMAIL]', data)
    elif isinstance(data, dict):
        return {k: mask_emails(v) for k, v in data.items()}
    elif isinstance(data, list):
        return [mask_emails(item) for item in data]
    return data

# Configure masking at client initialization
client = Brokle(api_key="bk_secret", mask=mask_emails)

# All input/output automatically masked
with client.start_as_current_span(
    "process",
    input="Contact john@example.com"
) as span:
    pass
# Transmitted as: input="Contact [EMAIL]"

Using Built-in Helpers

The SDK includes pre-built masking utilities for common PII patterns:

from brokle import Brokle
from brokle.utils.masking import MaskingHelper

# Option 1: Mask all common PII (recommended)
client = Brokle(
    api_key="bk_secret",
    mask=MaskingHelper.mask_pii  # Masks emails, phones, SSN, credit cards, API keys
)

# Option 2: Mask specific PII types
client = Brokle(api_key="bk_secret", mask=MaskingHelper.mask_emails)
client = Brokle(api_key="bk_secret", mask=MaskingHelper.mask_phones)
client = Brokle(api_key="bk_secret", mask=MaskingHelper.mask_api_keys)

# Option 3: Field-based masking
client = Brokle(
    api_key="bk_secret",
    mask=MaskingHelper.field_mask(['password', 'ssn', 'api_key'])
)

# Option 4: Combine multiple strategies
combined_mask = MaskingHelper.combine_masks(
    MaskingHelper.mask_emails,
    MaskingHelper.mask_phones,
    MaskingHelper.field_mask(['password', 'secret_token'])
)
client = Brokle(api_key="bk_secret", mask=combined_mask)

What Gets Masked

Masking applies to these span attributes:

  • input.value - Generic input data
  • output.value - Generic output data
  • gen_ai.input.messages - LLM chat messages
  • gen_ai.output.messages - LLM response messages
  • metadata - Custom metadata

Structural attributes are NOT masked (model names, token counts, metrics, timestamps, environment tags).

Error Handling

If your masking function throws an exception, Brokle returns:

"<fully masked due to failed mask function>"

This ensures sensitive data is never transmitted even if masking fails (security-first design).

Custom Pattern Masking

Create custom masking for your specific needs:

from brokle.utils.masking import MaskingHelper

# Mask IPv4 addresses
mask_ip = MaskingHelper.custom_pattern_mask(
    r'\b\d{1,3}\.\d{1,3}\.\d{1,3}\.\d{1,3}\b',
    '[IP_ADDRESS]'
)

client = Brokle(api_key="bk_secret", mask=mask_ip)

Security Best Practices

  1. Client-side masking: Data is masked before leaving your application
  2. Test your masks: Verify patterns catch your specific PII in development
  3. Fail-safe defaults: Exceptions result in full masking (never sends unmasked data)
  4. Performance: Masking adds <1ms overhead per span

For more examples, see examples/masking_basic.py and examples/masking_helpers.py.

Why Choose Brokle?

  • ⚡ <3ms Overhead: High-performance observability
  • 📊 Complete Visibility: Real-time analytics and quality scoring
  • 🔧 OpenTelemetry Native: Standards-based tracing and metrics
  • 🛠️ Three Patterns: Start simple, scale as needed

Next Steps

Examples

Check the examples/ directory:

Support


Simple. Powerful. OpenTelemetry-native observability for AI.

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