Vinkius
PreciseFP logo
Vinkius
Vinkius runs on LlamaIndex

How to Use the PreciseFP MCP in LlamaIndex

Index PreciseFP financial profiles directly into LlamaIndex to run accurate RAG pipelines on client data.

See Vinkius in Action

Works with every AI agent you already use

…and any MCP-compatible client

PreciseFP MCP on Cursor AI Code Editor MCP Client PreciseFP MCP on Claude Desktop App MCP Integration PreciseFP MCP on OpenAI Agents SDK MCP Compatible PreciseFP MCP on Visual Studio Code MCP Extension Client PreciseFP MCP on GitHub Copilot AI Agent MCP Integration PreciseFP MCP on Google Gemini AI MCP Integration PreciseFP MCP on Lovable AI Development MCP Client PreciseFP MCP on Mistral AI Agents MCP Compatible PreciseFP MCP on Amazon AWS Bedrock MCP Support
MCP Servers — Included with Plan
Vinkius runs on LlamaIndex

Connect PreciseFP MCP to LlamaIndex

Create your Vinkius account to connect PreciseFP to LlamaIndex — we handle the hosting, security, and runtime updates so you don't have to. No server setup required.

GDPR Included with Plan

Key Capabilities

Ground LlamaIndex Queries with this MCP Server

The `get_account` tool pulls complete financial profiles directly into your LlamaIndex vector store. Instead of guessing client details, your agent queries live data to answer complex planning questions. This ensures your financial recommendations are always backed by verified system records. You can build index pipelines that automatically refresh. The agent uses `list_accounts` to scan for updates, then pulls the latest details for each profile. This gives you a searchable knowledge base of your entire book of business.

Search Client Activity and History

The `get_account_activity` tool provides a structured timeline of every form submission and update. Your LlamaIndex agent indexes these logs via the MCP interface to track client responsiveness and engagement history. This lets you run semantic searches over past interactions to spot bottlenecks. The system maps these activities directly to client nodes in your index. You can ask your agent which clients have pending paperwork, and it will check `list_form_engagements` to find the answer. It eliminates manual spreadsheet tracking entirely.

Retrieve and Map PDF Templates

The `get_pdf_template` tool allows your agent to inspect document structures and fields programmatically. LlamaIndex reads this structure to understand exactly what information your templates collect. This helps your agent match the right document to the right client scenario. Your agent uses `list_pdf_templates` to keep its template index up to date. When a client needs a specific form, the agent identifies the correct template ID and initiates the process. You get structured document matching without writing hardcoded rules.

Setup guide

Set up PreciseFP MCP in LlamaIndex

Prerequisites

  • Python 3.10+ installed
  • llama-index-tools-mcp package
  • Active Vinkius subscription with a valid endpoint token
  1. 1

    Install dependencies

    Run pip install llama-index-tools-mcp llama-index-llms-openai. The MCP tools package provides BasicMCPClient and McpToolSpec.

  2. 2

    Connect with BasicMCPClient

    Point BasicMCPClient to your Vinkius endpoint URL. Replace [YOUR_TOKEN_HERE] with your token from cloud.vinkius.com. Supports SSE and Streamable HTTP transports.

  3. 3

    Convert to LlamaIndex tools

    Call mcp_tool_spec.to_tool_list_async() to convert all PreciseFP MCP tools into native FunctionTool objects that any LlamaIndex agent can use.

  4. 4

    Run with any LLM

    Create a FunctionAgent with the tools and your preferred LLM. Swap OpenAI for Anthropic, Gemini, or any LlamaIndex-supported provider.

agent.py
from llama_index.tools.mcp import BasicMCPClient, McpToolSpec
from llama_index.core.agent.workflow import FunctionAgent
from llama_index.llms.openai import OpenAI

# Connect to the MCP
mcp_client = BasicMCPClient(
    "https://edge.vinkius.com/[YOUR_TOKEN_HERE]/mcp"
)
mcp_tool_spec = McpToolSpec(client=mcp_client)

# Convert MCP tools to LlamaIndex tools
tools = await mcp_tool_spec.to_tool_list_async()

# Create and run the agent
agent = FunctionAgent(
    tools=tools,
    llm=OpenAI(model="gpt-4o"),
    system_prompt="You have access to PreciseFP tools.",
)
response = await agent.run("List recent PreciseFP data")

Independent Platform Disclaimer: Vinkius is an independent platform and is not affiliated with, endorsed by, sponsored by, verified by, or otherwise authorized by PreciseFP. All third-party trademarks, logos, and brand names are the property of their respective owners. Their use on this website is strictly for informational purposes to identify service compatibility and interoperability.

Why Choose Vinkius

Vinkius connects your tools to AI with real-time monitoring and automatic cost savings — all from one dashboard.

Real-time monitoring

Live

visibility into every interaction

Connect your favorite tools to your AI and see exactly what's happening — every request, every response, in real time.

Built-in savings

60%

lower AI costs

Vinkius compresses data between your apps and your AI automatically. Lower bills every month — no configuration required.

Single dashboard

One

place for every integration

Every tool your AI connects to, managed from a single screen. One account, complete control.

Common questions about PreciseFP MCP in LlamaIndex

You call `list_accounts` to fetch active profiles and convert the JSON output into Document nodes. LlamaIndex then embeds these nodes into your vector database. This lets you perform semantic searches across your client base.
Yes, your agent can execute actions based on search context. If a query reveals a client is missing critical tax info, the agent calls `create_form_engagement` to send the correct intake template automatically.
The server returns structured JSON from tools like `get_form_template`. LlamaIndex handles this clean data much better than raw PDFs, resulting in highly accurate chunking and retrieval performance.
Yes, you can use the filtering parameters in the MCP tool to target specific client types. This keeps your index clean and avoids wasting vector database storage on inactive profiles.
We secure your personal information by ensuring that client data records and person details retrieved via `get_person` never touch third-party storage. The connection between LlamaIndex and the server is fully encrypted and runs within a zero-trust MCP sandbox. This ensures compliant handling of sensitive personal information.

Start using the PreciseFP MCP today

We host it, we monitor it, we maintain it. You just paste one token.

Built & Managed by Vinkius 30s setup 13 tools

We've already built the connector for PreciseFP. Just plug in your AI agents and start using Vinkius.

No hosting. No infrastructure. No complex setup.
All 13 tools are live and waiting. You're up and running in seconds.

Vinkius runs on Claude Claude
Vinkius runs on ChatGPT ChatGPT
Vinkius runs on Cursor Cursor
Vinkius runs on Gemini Gemini
Vinkius runs on Windsurf Windsurf
Vinkius runs on VS Code VS Code
Vinkius runs on JetBrains JetBrains
Vinkius runs on Vercel Vercel
+ other MCP clients

Vinkius gives your AI agents access to the full catalog of app connectors, all fully managed, secure, and enterprise-ready. One subscription, every tool you need.

Zero hosting required Full MCP catalog included Enterprise-grade security Auto-updated by Vinkius

Built, hosted, and secured by Vinkius. You just connect and go.