Command Palette

Search for a command to run...

UnylyUnyly
Весь каталог

Award Flight Daily

БесплатноНе проверен

Official airline award MCP. Search 12.3M+ award flights across 48 loyalty programs.

GitHubEmbed

Описание

Official airline award MCP. Search 12.3M+ award flights across 48 loyalty programs.

README

A FastMCP server that wraps the Award Flight Daily database (12.3M award flight records across 25 loyalty programs) and exposes it to AI agents via tools.

Overview

The Award Flight Daily MCP server provides 7 core tools for searching, analyzing, and optimizing award travel:

  1. afd_search_award_flights - Core search across 12M+ records
  2. afd_list_programs - All 25 programs with statistics
  3. afd_get_program_details - Deep dive on a single program
  4. afd_get_route_availability - Calendar view for a route
  5. afd_find_sweet_spots - Best-value redemptions
  6. afd_check_transfer_partners - Credit card transfer ratios
  7. afd_get_market_stats - Aggregate database statistics

File Structure

mcp_server/
├── __init__.py                 # Package definition
├── config.py                   # Constants: programs, cabins, banks
├── server.py                   # FastMCP server entry point (7 tools registered)
├── db/
│   ├── __init__.py
│   └── queries.py             # DuckDB queries (read-only, parameterized)
├── models/
│   ├── __init__.py
│   ├── inputs.py              # 8 Pydantic input models with validators
│   └── responses.py           # Formatting helpers (JSON/Markdown)
└── tools/
    ├── __init__.py
    ├── search.py              # afd_search_award_flights
    ├── programs.py            # afd_list_programs, afd_get_program_details
    ├── routes.py              # afd_get_route_availability
    ├── sweet_spots.py         # afd_find_sweet_spots
    ├── transfers.py           # afd_check_transfer_partners
    └── analytics.py           # afd_get_market_stats

Configuration

All environment and program configuration lives in config.py:

  • MCP_SERVER_NAME: "awardflightdaily_mcp"
  • DUCKDB_PATH: Environment variable, defaults to /data/award_flights.duckdb
  • PROGRAMS: Dictionary of 25 programs (slug -> full name)
  • CABINS: Cabin class codes (Y/W/J/F)
  • BANKS: 7 credit card programs

Installation & Deployment

Requirements

fastmcp>=1.0.0
pydantic>=2.0
duckdb==1.1.3

Running

Stdio mode (local):

python -m mcp_server.server

HTTP mode (remote):

python -m mcp_server.server --http 8001

Tools API

1. Search Award Flights

SearchInput(
    origin="JFK",                      # Required: IATA code(s)
    destination="NRT",                 # Required: IATA code(s)
    date_from="2026-06-01",           # Required: YYYY-MM-DD
    date_to="2026-06-30",             # Required: YYYY-MM-DD
    cabin=CabinClass.BUSINESS,        # Optional: Y/W/J/F (default J)
    source="united,aeroplan",         # Optional: program filter
    direct_only=False,                # Optional: nonstop only
    max_miles=100000,                 # Optional: mileage cap
    min_seats=1,                      # Optional: min seats (default 1)
    limit=50,                         # Optional: results limit (default 50, max 200)
    offset=0,                         # Optional: pagination offset
    response_format=ResponseFormat.JSON # Optional: JSON or Markdown
)

Returns: Paginated flight results with mileage, taxes, seats, airlines, equipment.

2. List Programs

ListProgramsInput(
    response_format=ResponseFormat.JSON
)

Returns: All 25 programs with:

  • Total flights & routes
  • Date range
  • Cabin availability counts (Y/W/J/F)

3. Program Details

ProgramDetailInput(
    program="united",  # Required: program slug
    response_format=ResponseFormat.JSON
)

Returns: Deep stats for one program:

  • Total availability
  • Unique routes & airports
  • Average & minimum mileage by cabin

4. Route Availability

RouteInput(
    origin="JFK",
    destination="NRT",
    cabin=CabinClass.BUSINESS,
    source=None,  # Optional: filter by program
    response_format=ResponseFormat.JSON
)

Returns: All dates for a route with mileage, taxes, seats per program.

5. Find Sweet Spots

SweetSpotInput(
    cabin=CabinClass.BUSINESS,
    origin=None,  # Optional
    destination=None,  # Optional
    limit=25,
    response_format=ResponseFormat.JSON
)

Returns: Best-value routes ranked by minimum mileage cost.

6. Transfer Partners

TransferInput(
    bank="chase",      # Optional: bank slug
    program="united",  # Optional: program slug
    response_format=ResponseFormat.JSON
)

Returns: Credit card → airline transfer mappings with:

  • Transfer ratio (e.g., "1:1")
  • Speed (e.g., "Instant", "1-2 days")

7. Market Stats

MarketStatsInput(
    response_format=ResponseFormat.JSON
)

Returns: Aggregate database stats:

  • Total records, programs, routes
  • Airport coverage
  • Cabin availability breakdown

Input Validation

All inputs use Pydantic with validation:

  • IATA codes: Must be exactly 3 alphabetic characters
  • Dates: YYYY-MM-DD format only
  • Cabin: Enum restricted to Y/W/J/F
  • Limit: 1-200 results
  • Offset: >= 0
  • Min seats: 1-9

Invalid inputs raise ValidationError with detailed messages.

Response Formats

JSON (default)

Full structured response with pagination metadata:

{
  "total": 1234,
  "count": 50,
  "offset": 0,
  "has_more": true,
  "cabin": "J",
  "results": [
    {
      "id": "...",
      "source": "united",
      "origin": "JFK",
      "destination": "NRT",
      "date": "2026-06-15",
      "mileage": 75000,
      "taxes": 11.20,
      "seats": 2,
      "direct": true,
      "airlines": "United",
      "equipment": "B787",
      "updated_at": "2026-03-26T12:34:56"
    }
  ]
}

Markdown

Human-readable output with formatting:

# Award Flight Search Results

**1234 flights found** | Cabin: Business | Showing 50

## JFK → NRT | 2026-06-15

- **75,000 miles** + $11.20 taxes | united
- Nonstop | 2 seats | United B787

...

Database

All queries are:

  • Read-only (DuckDB in read-only mode)
  • Parameterized with proper escaping
  • Filtered on expired_at IS NULL (active records only)
  • Type-safe with CAST(? AS DATE) for dates

Connection is lazy-loaded on first query and reused.

Design Principles

  1. No monoliths - Each tool in its own module
  2. Separation of concerns - DB queries, models, tools, responses separate
  3. Type safety - Pydantic models on all inputs
  4. Defensive - All parameterized queries, validators on inputs
  5. Fast - Read-only DuckDB, lazy connection, caching via MCP layer
  6. Testable - Pure functions, no side effects

Error Handling

  • Invalid input: Pydantic ValidationError with field details
  • Database error: Returns error message string (no 500s)
  • No results: Friendly "No flights found" message

The MCP layer handles serialization of errors to the client.

Future Enhancements

  • Price tracking ($/mile value calculation)
  • Seat map integration
  • Award chart comparison
  • Frequent flyer earning rates
  • Stopover/layover optimization
  • Alert setup via MCP (future: read-write tools)

from github.com/eCriswell7/award-flight-daily-mcp

Установка Award Flight Daily

У этого сервера нет опубликованного пакета — он собирается из исходников. Открой репозиторий и следуй инструкции в README.

▸ github.com/eCriswell7/award-flight-daily-mcp

FAQ

Award Flight Daily MCP бесплатный?

Да, Award Flight Daily MCP бесплатный — установка в пару кликов через Unyly без оплаты.

Нужен ли API-ключ для Award Flight Daily?

Нет, Award Flight Daily работает без API-ключей и переменных окружения.

Award Flight Daily — hosted или self-hosted?

Доступен hosted-вариант: Unyly запускает сервер в облаке, локальная установка не обязательна.

Как установить Award Flight Daily в Claude Desktop, Claude Code или Cursor?

Открой Award Flight Daily на unyly.org, выбери вкладку своего клиента (Claude Desktop, Claude Code, Cursor) и нажми Install — конфиг сгенерируется автоматически, без правки JSON.

Похожие MCP

Compare Award Flight Daily with

Не уверен что выбрать?

Найди свой стек за 60 секунд

Автор?

Embed-бейдж для README

Похожее

Все в категории development