Skip to main content

Python SDK for the Backboard API - Build conversational AI applications with persistent memory and intelligent document processing

Project description

Backboard Python SDK

A developer-friendly Python SDK for the Backboard API. Build conversational AI applications with persistent memory and intelligent document processing.

New to Backboard? We include $5 in free credits to get you started and support 1,800+ LLMs across major providers.

New in v1.5.12

  • JSON Output: Pass json_output=True on add_message to request structured JSON responses from the model (ignored when RAG, web search, or custom tools are active)

v1.5.9

  • Assistant response model now includes custom_fact_extraction_prompt and custom_update_memory_prompt fields
  • get_memories pagination response now includes page, page_size, and total_pages
  • Removed get_recent_usage (billing endpoint no longer part of public API)

Installation

pip install backboard-sdk

Quick Start

import asyncio
from backboard import BackboardClient

async def main():
    client = BackboardClient(api_key="your_api_key_here")

    assistant = await client.create_assistant(
        name="Support Bot",
        system_prompt="You are a helpful customer support assistant",
    )

    thread = await client.create_thread(assistant.assistant_id)

    response = await client.add_message(
        thread_id=thread.thread_id,
        content="Hello! Can you help me with my account?",
        llm_provider="openai",
        model_name="gpt-4o",
        stream=False,
    )

    print(response.content)

    # Streaming
    async for event in await client.add_message(
        thread_id=thread.thread_id,
        content="Stream me a short response",
        stream=True,
    ):
        if event.get("type") == "content_streaming":
            print(event.get("content", ""), end="", flush=True)

if __name__ == "__main__":
    asyncio.run(main())

Features

Memory (NEW in v1.4.0)

  • Persistent Memory: Store and retrieve information across conversations
  • Automatic Context: Enable memory to automatically search and use relevant context
  • Manual Management: Full control with add, update, delete, and list operations
  • Memory Modes: Auto (search + write), Readonly (search only), or off

Assistants

  • Create, list, get, update, and delete assistants
  • Configure custom tools and capabilities
  • Upload documents for assistant-level context

Threads

  • Create conversation threads under assistants
  • Maintain persistent conversation history
  • Support for message attachments

Documents

  • Upload documents to assistants or threads
  • Automatic processing and indexing for RAG
  • Support for PDF, Office files, text, and more
  • Real-time processing status tracking

Messages

  • Send messages with optional file attachments
  • Streaming and non-streaming responses
  • Tool calling support
  • Custom LLM provider and model selection

API Reference

Client Initialization

client = BackboardClient(api_key="your_api_key")
# or use as an async context manager
# async with BackboardClient(api_key="your_api_key") as client:
#     ...

Assistants

# Create assistant
assistant = await client.create_assistant(
    name="My Assistant",
    system_prompt="System prompt that guides your assistant",
    tools=[tool_definition],  # Optional
    tok_k=15,  # Optional: document chunks retrieved per query (1-100, default 10)
    custom_fact_extraction_prompt="Extract only preferences.",  # Optional
    custom_update_memory_prompt="Only update on corrections.",  # Optional
    # Embedding configuration (optional - defaults to OpenAI text-embedding-3-large with 3072 dims)
    embedding_provider="cohere",  # Optional: openai, google, cohere, etc.
    embedding_model_name="embed-english-v3.0",  # Optional
    embedding_dims=1024,  # Optional
)

# List assistants (limit: 1–200, skip: 0–10 000)
assistants = await client.list_assistants(skip=0, limit=100)

# Get assistant
assistant = await client.get_assistant(assistant_id)

# Update assistant
assistant = await client.update_assistant(
    assistant_id,
    name="New Name",
    system_prompt="Updated system prompt",
)

# Delete assistant
result = await client.delete_assistant(assistant_id)

Threads

# Create thread
thread = await client.create_thread(assistant_id)

# List threads for a specific assistant (limit: 1–200, skip: 0–10 000)
assistant_threads = await client.list_threads_for_assistant(assistant_id, skip=0, limit=100)

# List all threads (limit: 1–200, skip: 0–10 000)
threads = await client.list_threads(skip=0, limit=100)

# Get thread with messages
thread = await client.get_thread(thread_id)

# Delete thread
result = await client.delete_thread(thread_id)

Messages

# Send message
response = await client.add_message(
    thread_id=thread_id,
    content="Your message here",
    files=["path/to/file.pdf"],  # Optional attachments
    llm_provider="openai",  # Optional
    model_name="gpt-4o",  # Optional
    stream=False,
    memory="Auto",  # Optional: "Auto", "Readonly", or "off" (default)
    # memory_pro="Auto",  # Optional: Memory Pro — higher accuracy (cannot combine with memory)
    json_output=True,  # Optional: request JSON object output from the model
)

# Streaming messages
async for chunk in await client.add_message(thread_id, content="Hello", stream=True):
    if chunk.get('type') == 'content_streaming':
        print(chunk.get('content', ''), end='', flush=True)

Tool Integration (Simplified in v1.3.3)

Tool Definitions

# Use plain JSON objects (no verbose SDK classes needed!)
tools = [
    {
        "type": "function",
        "function": {
            "name": "get_weather",
            "description": "Get current weather",
            "parameters": {
                "type": "object",
                "properties": {
                    "location": {"type": "string", "description": "City name"}
                },
                "required": ["location"]
            }
        }
    }
]

assistant = await client.create_assistant(
    name="Weather Assistant",
    system_prompt="You are a helpful weather assistant",
    tools=tools,
)

Tool Call Handling

import json

# Enhanced object-oriented access with automatic JSON parsing
response = await client.add_message(
    thread_id=thread_id,
    content="What's the weather in San Francisco?",
    stream=False
)

if response.status == "REQUIRES_ACTION" and response.tool_calls:
    tool_outputs = []
    
    # Process each tool call
    for tc in response.tool_calls:
        if tc.function.name == "get_current_weather":
            # Get parsed arguments (required parameters are guaranteed by API)
            args = tc.function.parsed_arguments
            location = args["location"]
            
            # Execute your function and format the output
            weather_data = {
                "temperature": "68°F",
                "condition": "Sunny",
                "location": location
            }
            
            tool_outputs.append({
                "tool_call_id": tc.id,
                "output": json.dumps(weather_data)
            })
    
    # Submit the tool outputs back to continue the conversation
    final_response = await client.submit_tool_outputs(
        thread_id=thread_id,
        run_id=response.run_id,
        tool_outputs=tool_outputs
    )
    
    print(final_response.content)

Memory

# Add a memory
await client.add_memory(
    assistant_id=assistant_id,
    content="User prefers Python programming",
    metadata={"category": "preference"}
)

# Get all memories (supports page/page_size pagination)
memories = await client.get_memories(assistant_id, page=1, page_size=25)
for memory in memories.memories:
    print(f"{memory.id}: {memory.content}")

# Get specific memory
memory = await client.get_memory(assistant_id, memory_id)

# Update memory
await client.update_memory(
    assistant_id=assistant_id,
    memory_id=memory_id,
    content="Updated content"
)

# Delete memory
await client.delete_memory(assistant_id, memory_id)

# Get memory stats
stats = await client.get_memory_stats(assistant_id)
print(f"Total memories: {stats.total_memories}")

# Use memory in conversation
response = await client.add_message(
    thread_id=thread_id,
    content="What do you know about me?",
    memory="Auto"  # Enable memory search and automatic updates
)

Documents

# Upload document to assistant
document = await client.upload_document_to_assistant(
    assistant_id=assistant_id,
    file_path="path/to/document.pdf",
)

# Upload document to thread
document = await client.upload_document_to_thread(
    thread_id=thread_id,
    file_path="path/to/document.pdf",
)

# List assistant documents
documents = await client.list_assistant_documents(assistant_id)

# List thread documents
documents = await client.list_thread_documents(thread_id)

# Get document status
document = await client.get_document_status(document_id)

# Delete document
result = await client.delete_document(document_id)

Error Handling

The SDK includes comprehensive error handling:

from backboard import (
    BackboardAPIError,
    BackboardValidationError,
    BackboardNotFoundError,
    BackboardRateLimitError,
    BackboardServerError,
)

async def demo_err():
    try:
        await client.get_assistant("invalid_id")
    except BackboardNotFoundError:
        print("Assistant not found")
    except BackboardValidationError as e:
        print(f"Validation error: {e}")
    except BackboardAPIError as e:
        print(f"API error: {e}")

Supported File Types

The SDK supports uploading the following file types:

  • Documents: .pdf, .doc, .docx, .ppt, .pptx, .xls, .xlsx
  • Text / Data: .txt, .csv, .md, .markdown, .json, .jsonl, .xml
  • Code: .py, .js, .ts, .jsx, .tsx, .html, .css, .cpp, .c, .h, .java, .go, .rs, .rb, .php, .sql
  • Images (with embedded-image RAG support): .png, .jpg, .jpeg, .webp, .gif, .bmp, .tiff, .tif

Requirements

  • Python 3.8+
  • httpx >= 0.27.0

License

MIT License - see LICENSE file for details.

Support

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

backboard_sdk-1.5.12.tar.gz (22.4 kB view details)

Uploaded Source

Built Distribution

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

backboard_sdk-1.5.12-py3-none-any.whl (17.1 kB view details)

Uploaded Python 3

File details

Details for the file backboard_sdk-1.5.12.tar.gz.

File metadata

  • Download URL: backboard_sdk-1.5.12.tar.gz
  • Upload date:
  • Size: 22.4 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.13.1

File hashes

Hashes for backboard_sdk-1.5.12.tar.gz
Algorithm Hash digest
SHA256 41a5fe882fa9d8214000772d138d1c9169e90c852c5caf938f0c2cec500bab79
MD5 fe6b9f5b37ab97403dd7d742370cfe4c
BLAKE2b-256 653f57315f35bac14d21e3129c669c3c782f843b11726c4661ec9f29fe999a0c

See more details on using hashes here.

File details

Details for the file backboard_sdk-1.5.12-py3-none-any.whl.

File metadata

  • Download URL: backboard_sdk-1.5.12-py3-none-any.whl
  • Upload date:
  • Size: 17.1 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.13.1

File hashes

Hashes for backboard_sdk-1.5.12-py3-none-any.whl
Algorithm Hash digest
SHA256 617f40459e6ac492ec36d721ab5c20a555709f66cf3b23e1df2eb4b094e5b02f
MD5 43d2dff5225f796219c5ba9d7fdc187f
BLAKE2b-256 b1b3dbcdc4330c29707e41aa266adb8015ee79b8054d2b43b64dd4635dceb78a

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