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Official Python SDK for the Context Protocol - Discover and execute AI tools programmatically

Project description

ctxprotocol

The Universal Adapter for AI Agents.

Connect your AI to the real world without managing API keys, hosting servers, or reading documentation.

Context Protocol is pip for AI capabilities. Just as you install packages to add functionality to your code, use the Context SDK to give your Agent instant access to thousands of live data sources and actions—from DeFi and Gas Oracles to Weather and Search.

PyPI version Python versions License: MIT


💰 $10,000 Developer Grant Program

We're funding the initial supply of MCP Tools for the Context Marketplace. Become a Data Broker.

  • 🛠️ Build: Create an MCP Server using this SDK (Solana data, Trading tools, Scrapers, etc.)
  • 📦 List: Publish it to the Context Registry
  • 💵 Earn: Get a $250–$1,000 Grant + earn USDC every time an agent queries your tool

👉 View Open Bounties & Apply Here


Why use Context?

  • 🔌 One Interface, Everything: Stop integrating APIs one by one. Use a single SDK to access any tool in the marketplace.
  • 🧠 Zero-Ops: We're a gateway to the best MCP tools. Just send the JSON and get the result.
  • ⚡️ Agentic Discovery: Your Agent can search the marketplace at runtime to find tools it didn't know it needed.
  • 💸 Dual-Surface Economics: Use Query for pay-per-response intelligence or Execute for session-budgeted method calls.

Who Is This SDK For?

Role What You Use
AI Agent Developer ctxprotocol — Query curated answers or Execute with explicit method pricing + sessions
Tool Contributor (Data Broker) mcp + ctxprotocol — Standard MCP server + security middleware

Installation

pip install ctxprotocol

Or with optional FastAPI support:

pip install ctxprotocol[fastapi]

Prerequisites

Before using the API, complete setup at ctxprotocol.com:

  1. Sign in — Creates your embedded wallet
  2. Set spending cap — Approve USDC spending on the ContextRouter (one-time setup)
  3. Fund wallet — Add USDC for tool execution fees
  4. Generate API key — In Settings page

Two Modes: Precision vs Intelligence

The SDK offers two payment models to serve different use cases:

Mode Method Payment Model Settlement Shape Use Case
Execute client.tools.execute() Per execute call Session accrual + deferred batch flush Deterministic pipelines, raw outputs, explicit spend envelopes
Query client.query.run() Pay-per-response Deferred post-response Complex questions, multi-tool synthesis, curated intelligence

Execute mode gives you raw data and full control with explicit method pricing and session budgets:

session = await client.tools.start_session(max_spend_usd="2.00")
execute_tools = await client.discovery.search(
    "whale transactions",
    mode="execute",
    surface="execute",
    require_execute_pricing=True,
)

result = await client.tools.execute(
    tool_id=execute_tools[0].id,
    tool_name=execute_tools[0].mcp_tools[0].name,
    args={"chain": "base", "limit": 20},
    session_id=session.session.session_id,
)
print(result.session)  # method_price, spent, remaining, max_spend, ...

Query mode gives you a managed librarian contract — the server runs the live pipeline (discover -> select -> iterative execute (with in-loop clarification if needed) -> synthesize -> settle) with model-aware context budgeting and can return plain answers or structured evidence packages for one flat fee:

answer = await client.query.run(
    query="What are the top whale movements on Base?",
    answer_model_id="glm-model",  # optional: choose the final synthesis model
    response_shape="answer_with_evidence",  # optional: answer | answer_with_evidence | evidence_only
    include_data_url=True,     # optional: persist full execution data to blob
    include_developer_trace=True,  # optional: include runtime developer trace
)
print(answer.response)    # response text or summary
print(answer.summary)     # short machine-friendly summary
print(answer.evidence)    # structured evidence package
print(answer.tools_used)  # Which tools were used
print(answer.cost)        # Cost breakdown
print(answer.data_url)    # Optional blob URL with full data
print(answer.developer_trace.summary if answer.developer_trace else None)
print(
    answer.developer_trace.diagnostics.selection
    if answer.developer_trace and answer.developer_trace.diagnostics
    else None
)
print(answer.orchestration_metrics)  # Optional first-pass / rediscovery metrics

Mixed listings are first-class: one listing can expose methods to both surfaces. Methods without _meta.pricing.executeUsd remain query-only until priced.

Compatibility: SDK/API payload fields such as price and price_per_query are retained for backward compatibility. In Query mode, they represent listing-level price per response turn. A future major release can add response-named aliases (for example, price_per_response) before deprecating legacy names.

response_shape options:

  • answer: backward-compatible prose answer
  • answer_with_evidence: prose plus summary, evidence, artifacts, freshness, confidence, usage, outcome, and controller
  • evidence_only: machine-friendly summary plus the same evidence package for downstream agents

Premium wedge answers can also expose evidence.market_intelligence, view.rows, view.columns, and the top-level controller fields stop_reason, issue_class, and actions_taken.

The first-party chat app uses the same Query contract and defaults to answer_with_evidence.

Quick Start

import asyncio
from ctxprotocol import ContextClient

async def main():
    async with ContextClient(api_key="sk_live_...") as client:
        # Pay-per-response: Ask a question, get a managed answer package
        answer = await client.query.run(
            query="What are the top whale movements on Base?",
            response_shape="answer_with_evidence",
        )
        print(answer.response)

        # Execute surface: require explicit execute pricing
        tools = await client.discovery.search(
            "gas prices",
            mode="execute",
            surface="execute",
            require_execute_pricing=True,
        )
        session = await client.tools.start_session(max_spend_usd="1.00")
        result = await client.tools.execute(
            tool_id=tools[0].id,
            tool_name=tools[0].mcp_tools[0].name,
            args={"chainId": 1},
            session_id=session.session.session_id,
        )
        print(result.result)

asyncio.run(main())

See a full dual-surface client script in examples/two-surfaces-client.py.

Configuration

Client Options

Option Type Required Default Description
api_key str Yes Your Context Protocol API key
base_url str No https://www.ctxprotocol.com API base URL (for development)
request_timeout_seconds float No 300.0 Timeout for non-streaming JSON API calls
stream_timeout_seconds float No 600.0 Timeout for streaming API calls; also used by client.query.run()
# Production
client = ContextClient(api_key=os.environ["CONTEXT_API_KEY"])

# Local development
client = ContextClient(
    api_key="sk_test_...",
    base_url="http://localhost:3000",
    request_timeout_seconds=420.0,
    stream_timeout_seconds=840.0,
)

API Reference

Discovery

client.discovery.search(query, limit?)

Search for tools with optional surface-aware filters.

tools = await client.discovery.search("ethereum gas", limit=10)

execute_tools = await client.discovery.search(
    "ethereum gas",
    mode="execute",
    surface="execute",
    require_execute_pricing=True,
)

client.discovery.get_featured(limit?, ...)

Get featured/popular tools.

featured = await client.discovery.get_featured(limit=5)
featured_execute = await client.discovery.get_featured(
    limit=5,
    mode="execute",
    require_execute_pricing=True,
)

Tools (Execute Surface)

Session lifecycle helpers use the canonical execute-scoped API contract: /api/v1/tools/execute/sessions...

client.tools.execute(tool_id, tool_name, args?)

Execute a single tool method. Execute calls can run inside session budgets.

session = await client.tools.start_session(max_spend_usd="2.50")

result = await client.tools.execute(
    tool_id="uuid-of-tool",
    tool_name="get_gas_prices",
    args={"chainId": 1},
    session_id=session.session.session_id,
)
print(result.method.execute_price_usd)
print(result.session)

client.tools.start_session(max_spend_usd)

started = await client.tools.start_session(max_spend_usd="5.00")

client.tools.get_session(session_id)

status = await client.tools.get_session("sess_123")

client.tools.close_session(session_id)

closed = await client.tools.close_session("sess_123")

Query (Pay-Per-Response)

client.query.run(query, tools?, answer_model_id?, include_data?, include_data_url?, include_developer_trace?, idempotency_key?)

Run an agentic query. The server applies the live librarian pipeline (discover -> select -> iterative execute (with in-loop clarification if needed) -> synthesize -> settle) with up to 100 MCP calls per response turn, then returns the selected Query response contract (answer, answer_with_evidence, or evidence_only).

client.query.run() buffers the same SSE transport used by client.query.stream() and returns the final done result. This keeps Python aligned with the TypeScript SDK and the live query runtime.

The query runtime now exposes a single managed executor surface. The server decides internal budgets, ambiguity handling, and exploration policy from the query itself instead of asking SDK callers to choose a lane.

include_developer_trace and orchestration_metrics are optional diagnostics.

# Simple string
answer = await client.query.run("What are the top whale movements on Base?")

# With specific tools
answer = await client.query.run(
    query="Analyze whale activity on Base",
    tools=["tool-uuid-1", "tool-uuid-2"],  # optional — auto-discover if omitted
    answer_model_id="kimi-model-thinking",   # optional final synthesis model
    include_data=True,                       # optional: include execution data inline
    include_data_url=True,                   # optional: include blob URL for full data
    include_developer_trace=True,            # optional: include Developer Mode trace
)

print(answer.response)      # response text or summary
print(answer.tools_used)    # [QueryToolUsage(id, name, skill_calls)]
print(answer.cost)          # QueryCost(model_cost_usd, tool_cost_usd, total_cost_usd)
print(answer.duration_ms)   # Total time
print(answer.data)          # Optional execution data (when include_data=True)
print(answer.data_url)      # Optional blob URL (when include_data_url=True)
print(answer.developer_trace.summary if answer.developer_trace else None)
print(
    answer.developer_trace.diagnostics.selection
    if answer.developer_trace and answer.developer_trace.diagnostics
    else None
)
print(answer.orchestration_metrics)  # Optional first-pass / rediscovery metrics

When retrieval-first synthesis rollout is enabled server-side, full-data or truncation-sensitive query requests can switch to retrieval-first context assembly using private stage artifacts and canonical execution data slices. include_data and include_data_url continue to reference the same canonical dataset used for synthesis.

client.query.stream(query, tools?, answer_model_id?, include_data?, include_data_url?, include_developer_trace?, idempotency_key?)

Same as run() but streams events in real-time via SSE.

Event types:

  • tool-status
  • text-delta
  • developer-trace (when include_developer_trace=True)
  • error
  • done
async for event in client.query.stream(
    query="What are the top whale movements?",
):
    if event.type == "tool-status":
        print(f"Tool {event.tool.name}: {event.status}")
    elif event.type == "text-delta":
        print(event.delta, end="")
    elif event.type == "error":
        print(f"\nStream error: {event.error}")
    elif event.type == "done":
        print(f"\nTotal cost: {event.result.cost.total_cost_usd}")

Types

from ctxprotocol import (
    # Auth utilities for tool contributors
    verify_context_request,
    is_protected_mcp_method,
    is_open_mcp_method,
    
    # Client types
    ContextClientOptions,
    Tool,
    McpTool,
    ExecuteOptions,
    ExecutionResult,
    ContextErrorCode,
    
    # Auth types (for MCP server contributors)
    VerifyRequestOptions,
    
    # Context types (for MCP server contributors receiving injected data)
    ContextRequirementType,
    HyperliquidContext,
    PolymarketContext,
    WalletContext,
    UserContext,
)

Error Handling

The SDK raises ContextError with specific error codes:

from ctxprotocol import ContextClient, ContextError

try:
    result = await client.tools.execute(...)
except ContextError as e:
    match e.code:
        case "no_wallet":
            # User needs to set up wallet
            print(f"Setup required: {e.help_url}")
        case "insufficient_allowance":
            # User needs to set a spending cap
            print(f"Set spending cap: {e.help_url}")
        case "payment_failed":
            # Insufficient USDC balance
            pass
        case "execution_failed":
            # Tool execution error
            pass

Error Codes

Code Description Handling
unauthorized Invalid API key Check configuration
no_wallet Wallet not set up Direct user to help_url
insufficient_allowance Spending cap not set Direct user to help_url
payment_failed USDC payment failed Check balance
execution_failed Tool error Retry with different args

🔒 Securing Your Tool (MCP Contributors)

If you're building an MCP server (tool contributor), verify incoming requests:

Quick Implementation with FastAPI

from fastapi import FastAPI, Request, Depends, HTTPException
from ctxprotocol import create_context_middleware, ContextError

app = FastAPI()
verify_context = create_context_middleware(audience="https://your-tool.com/mcp")

@app.post("/mcp")
async def handle_mcp(request: Request, context: dict = Depends(verify_context)):
    # context contains verified JWT payload (on protected methods)
    # None for open methods like tools/list
    body = await request.json()
    # Handle MCP request...

Manual Verification

from ctxprotocol import verify_context_request, is_protected_mcp_method, ContextError

# Check if a method requires auth
if is_protected_mcp_method(body["method"]):
    try:
        payload = await verify_context_request(
            authorization_header=request.headers.get("authorization"),
            audience="https://your-tool.com/mcp",  # optional
        )
        # payload contains verified JWT claims
    except ContextError as e:
        # Handle authentication error
        raise HTTPException(status_code=401, detail="Unauthorized")

MCP Security Model

The SDK implements a selective authentication model — discovery is open, execution is protected:

MCP Method Auth Required Why
initialize ❌ No Session setup
tools/list ❌ No Discovery - agents need to see your schemas
resources/list ❌ No Discovery
prompts/list ❌ No Discovery
tools/call Yes Execution - costs money, runs your code

What this means in practice:

  • https://your-mcp.com/mcp + initialize → Works without auth
  • https://your-mcp.com/mcp + tools/list → Works without auth
  • https://your-mcp.com/mcp + tools/callRequires Context Protocol JWT

This matches standard API patterns (OpenAPI schemas are public, GraphQL introspection is open).

Execution Timeout & Product Design

⚠️ Important: MCP tool execution has a ~60 second timeout (enforced at the platform/client level, not by MCP itself). This is intentional—it encourages building pre-computed insight products rather than raw data access.

Best practice: Run heavy queries offline (via cron jobs), store results in your database, and serve instant results via MCP. This is how Bloomberg, Nansen, and Arkham work.

# ❌ BAD: Raw access (timeout-prone, no moat)
{"name": "run_sql", "description": "Run any SQL against blockchain data"}

# ✅ GOOD: Pre-computed product (instant, defensible)
{"name": "get_smart_money_wallets", "description": "Top 100 wallets that timed market tops"}

See the full documentation for detailed guidance.

Context Injection (Personalized Tools)

For tools that analyze user data, Context automatically injects user context:

from ctxprotocol import CONTEXT_REQUIREMENTS_KEY, HyperliquidContext

# Define tool with context requirements
TOOLS = [{
    "name": "analyze_my_positions",
    "description": "Analyze your positions with personalized insights",
    "_meta": {
        "contextRequirements": ["hyperliquid"],
        "rateLimit": {
            "maxRequestsPerMinute": 30,
            "cooldownMs": 2000,
            "maxConcurrency": 1,
            "supportsBulk": True,
            "recommendedBatchTools": ["get_portfolio_snapshot"],
            "notes": "Hobby tier: use snapshot endpoints before fan-out loops.",
        },
    },
    "inputSchema": {
        "type": "object",
        "properties": {
            "portfolio": {
                "type": "object",
                "description": "Portfolio context (injected by platform)",
            },
        },
        "required": ["portfolio"],
    },
}]

# Your handler receives typed context
async def handle_analyze_positions(portfolio: HyperliquidContext):
    positions = portfolio.perp_positions
    account = portfolio.account_summary
    # ... analyze and return insights

Links

Requirements

  • Python 3.10+
  • httpx
  • pydantic
  • pyjwt[crypto]

License

MIT

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