Annuities Server
БесплатноНе проверенEnables retrieval of annuity client data, payout calculations, and portfolio analysis, with prompt templates for generating client reviews, summaries, and repor
Описание
Enables retrieval of annuity client data, payout calculations, and portfolio analysis, with prompt templates for generating client reviews, summaries, and reports.
README
Consolidated & fixed from MCP-Example-main + mcp-prompt-templates-main
For: VS Code + Claude Code on WSL/Ubuntu
📄 Open
README.htmlin a browser for the full documentation with embedded architecture diagrams.
What Was Fixed
| Issue in original repos | Fix applied |
|---|---|
Hardcoded C:\Users\Bijut\Desktop\typesdk.md |
Path(__file__).parent — cross-platform |
Windows paths + uv in desktop config |
WSL-friendly .venv/bin/python absolute paths |
| Two separate repos | Merged into one: 5 tools + 1 resource + 3 prompts |
Low-level Server class (verbose) |
FastMCP @mcp.tool / @mcp.resource / @mcp.prompt |
| No automated test | test_client.py — full end-to-end, no IDE needed |
realpath resolves symlink to system Python |
Use $(pwd)/.venv/bin/python in claude mcp add |
Key rule applied: tool count kept to 5. Too many tools breaks LLM tool-selection reliability.
Project Structure
mcp-annuities-server/
├── CLAUDE.md
├── README.md ← this file
├── README.html ← full docs with diagrams (open in browser)
├── requirements.txt
├── server.py ← MCP server (5 tools + 1 resource + 3 prompts)
├── test_client.py ← standalone end-to-end test
├── claude_desktop_config.example.json
├── .vscode/
│ └── mcp.json
├── data/
│ ├── annuities.csv ← 500-row dataset
│ └── generate_data.py
└── templates/
├── annuity_review/ ← config.yaml + template.md
├── client_summary/
└── portfolio_report/
Setup
cd ~/mcp-annuities-server
python3 -m venv .venv
.venv/bin/pip install -r requirements.txt
.venv/bin/python data/generate_data.py
Full Lifecycle — How a Request Flows
[1] User terminal (VS Code / WSL)
│ Natural-language request typed
▼
[2] Claude Code reasoning (Sonnet / Opus)
│ Matches request to tool schema
│ Produces tool_use block: {name, arguments}
▼
[3] MCP stdio handshake
│ JSON-RPC 2.0 sent over child process stdin
│ Server lives in .venv/bin/python subprocess
▼
[4] FastMCP dispatch + validation
│ Validates args against JSON Schema (from type hints)
│ Routes to the matching @mcp.tool() function
▼
[5] Tool execution
│ get_client: reads annuities.csv, returns matching row
│ calculate_payout: amortization math, no data lookup
▼
[6] data/annuities.csv
│ 500 rows, 15 columns, all values stored as strings
│
└──► Result serialized → stdout → layers 4→3→2→1 → user
Tool chaining (your session)
When you said "calculate the payout for this client", Claude Code chained two tools without any orchestrator script:
"Calculate the payout..."
→ Call 1: get_client("CLIENT_0001") [retrieves record]
→ Model extracts current_account_value + rate [type-converts strings]
→ Call 2: calculate_payout(principal, rate, term) [math]
→ Final answer combining both results
This is the live minimal version of Domain 1's agentic loop.
Layer-by-Layer Explanations
Layer 1 — User terminal
The terminal is just the I/O surface. All orchestration (deciding which
tool to call, building JSON-RPC, managing the subprocess) happens inside
the claude process, not in bash. Auth: use Claude Pro login (not API
key) to avoid extra billing. The ANTHROPIC_API_KEY env var set for your
Python lab scripts causes the "both auth methods" warning in Claude Code.
Layer 2 — Claude Code reasoning
Tool selection is pure pattern matching against schema descriptions.
"look up CLIENT_0001" matches get_client because its description says
"Retrieve full annuity contract details for one client by ID". A vague
description causes wrong picks — this is the "tool boundary design"
Domain 2 exam concept. The model emits a tool_use block, Claude Code
intercepts it, sends to layer 3, and waits for the result before writing
the final answer.
Layer 3 — MCP stdio handshake
Server.py is spawned ONCE as a child process at session start (not per
call). Three pipes wired: stdin (requests in), stdout (results out),
stderr (logs — never corrupts the protocol). JSON-RPC 2.0, newline-
delimited. The ✘ Failed to connect happened because realpath resolved
the venv symlink to /usr/bin/python3.12 (no mcp package) — $(pwd)/ .venv/bin/python keeps the venv path and the handshake succeeds.
Layer 4 — FastMCP dispatch + validation
FastMCP's event loop reads each JSON-RPC line, dispatches on method: tools/call, validates arguments against the auto-generated JSON Schema
(from type hints) before calling Python, serializes the return value into
a text content block, and writes the response to stdout. No print()
allowed in server.py — it would corrupt the stream.
Layer 5 — Tool execution
get_client: linear scan of CSV, returns matching dict (all strings).
calculate_payout: amortization formula with zero-rate edge-case handler
and explicit input validation (returns structured error, not exception).
Both are pure functions with no side effects — safe for an LLM to call.
Layer 6 — data/annuities.csv
500 rows, 15 columns (client_id, dob, age, product_type, premium_amount, crediting_rate_pct, term_years, monthly_payment, surrender_charge_pct, rider, risk_profile, state, payment_frequency, contract_start_date, current_account_value). IMPORTANT: csv.DictReader returns ALL values as strings — tools doing math must cast with float()/int(). Pydantic models with typed fields do this automatically (Domain 4 connection).
Step-by-Step: Wire into Claude Code
# 1. Standalone test (proves server logic, no AI)
.venv/bin/python test_client.py
# 2. MCP Inspector (visual debugging)
npx @modelcontextprotocol/inspector .venv/bin/python server.py
# 3. Register with Claude Code
claude mcp remove annuities-server # if exists
claude mcp add annuities-server -- "$(pwd)/.venv/bin/python" server.py
claude mcp list
# → annuities-server: .../.venv/bin/python server.py - ✔ Connected
# 4. Fix auth (if showing Opus / API billing)
claude /logout
# → choose claude.ai YES, API key NO
# 5. Launch and test
claude
/mcp
"Use the annuities-server to look up CLIENT_0001"
Tool / Resource / Prompt Reference
Tools (5)
| Tool | Purpose | Key args |
|---|---|---|
get_client |
Look up one client | client_id |
search_clients |
Filter portfolio | product_type, risk_profile, state, limit |
portfolio_summary |
Aggregate stats | group_by |
calculate_payout |
Amortized payout | principal, annual_rate_pct, term_years |
calculate_percentage |
Utility math | value, percentage |
Resource
| URI | Content |
|---|---|
annuities://dataset |
Raw CSV of all 500 rows |
Prompts
| Prompt | Purpose | Args |
|---|---|---|
annuity_review |
Suitability assessment | client_id |
client_summary |
Client letter | client_id |
portfolio_report |
Executive report | group_by |
CCAF Exam Domain Mapping
| What you built | Exam concept | Domain |
|---|---|---|
@mcp.tool() with type hints |
Tool schema design | D2 |
| stdio subprocess transport | Local MCP deployment | D2 |
claude mcp add with venv path |
MCP client configuration | D2 |
| 5-tool limit | Tool boundary / reasoning overload | D2 |
@mcp.resource() |
Resources vs tools distinction | D2 |
YAML + @mcp.prompt() |
MCP prompt templates | D2 |
| get_client → calculate_payout chaining | Implicit task decomposition | D1 |
| CLAUDE.md at project root | CLAUDE.md hierarchy | D3 |
| String CSV → Pydantic coercion | Structured output enforcement | D4 |
| JSON-RPC id correlation | Context / multi-turn state | D5 |
Quick Reference
# Golden path
cd ~/mcp-annuities-server && source .venv/bin/activate
python test_client.py # sanity check
claude mcp list # ✔ Connected
claude # launch
/mcp # verify
"Use annuities-server to look up CLIENT_0001"
# Fix ✘ Failed to connect
claude mcp remove annuities-server
claude mcp add annuities-server -- "$(pwd)/.venv/bin/python" server.py
# Fix Opus / API billing instead of Pro
claude /logout → claude.ai YES → API key NO
<-- See all tables with row Last updated: 2026-06-13 -->
Установка Annuities Server
У этого сервера нет опубликованного пакета — он собирается из исходников. Открой репозиторий и следуй инструкции в README.
▸ github.com/btholath/mcp-annuities-serverFAQ
Annuities Server MCP бесплатный?
Да, Annuities Server MCP бесплатный — установка в пару кликов через Unyly без оплаты.
Нужен ли API-ключ для Annuities Server?
Нет, Annuities Server работает без API-ключей и переменных окружения.
Annuities Server — hosted или self-hosted?
Self-hosted: сервер запускается локально на твоей машине командой из раздела установки.
Как установить Annuities Server в Claude Desktop, Claude Code или Cursor?
Открой Annuities Server на unyly.org, выбери вкладку своего клиента (Claude Desktop, Claude Code, Cursor) и нажми Install — конфиг сгенерируется автоматически, без правки JSON.
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