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Production-grade AI aviation SDK for airport data and analytics

Project description

AeroNavX

PyPI Python License CI

A production-grade AI Aviation SDK for airport data, flight geometry, network intelligence, emissions, and passenger experience.

Features

  • 🛫 Airport Database: 84,000+ global airports with IATA/ICAO indexing
  • 🛬 Runway Information: 47,000+ runways with dimensions and surfaces
  • 📊 Aviation Statistics: Country, continent, and global analytics
  • 📏 Distance Calculations: Haversine, Vincenty, SLC
  • 🌍 Geodesy: Bearings, midpoints, great circle paths
  • 🔍 Search: Fuzzy name search + nearest neighbor queries
  • 🤖 AI Semantic Search (HF): Embedding-based airport search
  • 🧠 Jet Lag Intelligence: Severity, direction, recovery estimation
  • 🌐 Network & Hub Intelligence: Connectivity-based hub scoring
  • 🛤️ Synthetic Routing: Great-circle routes + waypoint generation
  • 🌱 Emissions: Baseline + advanced emissions with SAF comparisons
  • Timezone Support: Local time conversion + fallback offset
  • 🌤️ Weather: METAR/TAF fetching
  • 💻 CLI: Command-line interface
  • 🌐 REST API: FastAPI-based endpoints

Architecture

  • Core (aeronavx/core): data loaders, geodesy, routing, emissions, statistics
  • AI Layer (aeronavx/hf): semantic search, cache, offline inference
  • Interfaces: CLI (aeronavx/cli) + FastAPI server (aeronavx/api)
  • Data (aeronavx/data): bundled OurAirports datasets for offline-first use

Installation

pip install aeronavx

Extras matrix

# Full data features (pandas, scipy, timezonefinder, rapidfuzz, requests)
pip install aeronavx[full]

# AI semantic search (HF)
pip install aeronavx[hf]

# API server
pip install aeronavx[api]

# Everything
pip install aeronavx[all]

Or from source:

git clone https://github.com/teyfikoz/AeroNavX.git
cd AeroNavX
pip install -e .

Quick Start

import aeronavx

# Get airports
ist = aeronavx.get_airport("IST")
jfk = aeronavx.get_airport("JFK")

# Calculate distance
dist_km = ist.distance_to(jfk)
print(f"Distance: {dist_km:.2f} km")

# Find nearest airports
nearest = aeronavx.nearest_airport(41.0, 29.0, n=5)

# Estimate emissions
co2 = aeronavx.estimate_co2_kg_for_segment("IST", "JFK")
print(f"CO2: {co2:.2f} kg per passenger")

AI Semantic Search (HF)

import aeronavx as anx

results = anx.semantic_search("New York international", top_k=5)

# If pandas is installed, results is a DataFrame
print(results[["iata", "name", "municipality", "score"]])

Jet Lag Intelligence

import aeronavx as anx

ist = anx.get_airport("IST")
jfk = anx.get_airport("JFK")

jet_lag = anx.calculate_jet_lag(ist, jfk, age=35)
print(jet_lag.direction.value, jet_lag.severity.value, jet_lag.estimated_recovery_days)

Network & Hub Intelligence

import aeronavx as anx

hubs = anx.identify_global_hubs(top_n=5)
for hub in hubs:
    print(hub.airport.iata_code, hub.hub_score)

Advanced Emissions + SAF

import aeronavx as anx

emissions = anx.calculate_flight_emissions(
    "IST", "JFK",
    aircraft_type=anx.AircraftType.WIDE_BODY,
    fuel_type=anx.FuelType.JET_A1,
    load_factor=0.85,
)
print(emissions.total_co2_kg, emissions.co2_per_passenger_kg)

savings = anx.compare_saf_savings("IST", "JFK", saf_percentage=50)
print(savings.reduction_percentage)

Synthetic Routing

import aeronavx as anx

route = anx.generate_route("IST", "JFK", num_waypoints=8)
print(route.total_distance_km, route.total_time_hours)

Offline Mode & Cache

Set environment variables before import:

export HF_TOKEN="your_token"
export AERONAVX_CACHE="~/.aeronavx"
export AERONAVX_OFFLINE=1
export AERONAVX_EMBED_MODEL="sentence-transformers/all-MiniLM-L6-v2"

Offline mode uses cached models only; if the model is not cached, a clear error is raised.

Supported tokens:

  • HF_TOKEN
  • HF_API_TOKEN
  • HUGGINGFACE_HUB_TOKEN

Advanced: Filtering Airports

from aeronavx.core import loader

# Load only major airports (large + medium with scheduled service)
major_airports = loader.load_airports(
    include_types=['large_airport', 'medium_airport'],
    scheduled_service_only=True
)
print(f"Major airports: {len(major_airports):,}")  # ~3,200

# Load specific countries
us_airports = loader.load_airports(countries=['US'])
print(f"US airports: {len(us_airports):,}")  # ~20,000

# Load airports with IATA codes only
iata_airports = loader.load_airports(has_iata_only=True)
print(f"IATA airports: {len(iata_airports):,}")  # ~9,000

Runway Information

import aeronavx

# Get all runways for an airport
runways = aeronavx.get_runways_by_airport("KJFK")
for rwy in runways:
    print(f"{rwy.designation}: {rwy.length_ft:.0f}ft, {rwy.surface}")

# Get the longest runway
longest = aeronavx.get_longest_runway("KJFK")
print(f"Longest: {longest.designation} - {longest.length_ft:.0f}ft")

# Get only paved runways
paved = aeronavx.get_paved_runways("KJFK")
print(f"Paved runways: {len(paved)}")

Aviation Statistics

import aeronavx

# Global statistics
stats = aeronavx.get_global_stats()
print(f"Total airports: {stats.total_airports:,}")
print(f"Total runways: {stats.total_runways:,}")
print(f"Countries: {stats.countries_count}")
print(f"Longest runway: {stats.longest_runway_ft:,.0f} ft")

# Country statistics
us_stats = aeronavx.get_country_stats("US")
print(f"US has {us_stats.total_airports:,} airports")
print(f"Large airports: {us_stats.large_airports}")
print(f"Total runways: {us_stats.total_runways:,}")

# Continent statistics
eu_stats = aeronavx.get_continent_stats("EU")
print(f"Europe: {eu_stats.total_airports:,} airports")
print(f"Countries: {eu_stats.countries_count}")

# Top countries
top = aeronavx.get_top_countries_by_airports(5)
for country, count in top:
    print(f"{country}: {count:,} airports")

CLI Usage

# Calculate distance
aeronavx distance --from IST --to JFK --unit nmi

# Find nearest airports
aeronavx nearest --lat 41.0 --lon 29.0 --n 5

# Search by name
aeronavx search --name "Heathrow"

# Estimate emissions
aeronavx emissions --from IST --to LHR

# Flight time
aeronavx flight-time --from IST --to JFK

# Semantic search (HF)
aeronavx semantic-search --query "London Heathrow"

# Jet lag analysis
aeronavx jet-lag --from IST --to JFK --age 35

# Global hubs
aeronavx hubs --top-n 5

# Advanced emissions
aeronavx emissions-advanced --from IST --to JFK --aircraft-type wide_body --saf-percent 50

# Synthetic route
aeronavx synthetic-route --from IST --to JFK --waypoints 8

API Server

python -m aeronavx.api.server

Then access:

Data

AeroNavX includes 84,000+ airports and 47,000+ runways from OurAirports, which provides:

  • Global Coverage: Airports, heliports, seaplane bases, and runways worldwide
  • MIT License: Free to use commercially
  • Regular Updates: Community-maintained and updated
  • Comprehensive Data: IATA/ICAO codes, coordinates, types, runway dimensions, surfaces, and more

Data Attribution: Airport and runway data from OurAirports (David Megginson et al.) - Licensed under MIT License

Examples

See examples/ directory for:

  • basic_distance.py: Distance calculations
  • nearest_airports.py: Finding nearby airports
  • routing_example.py: Multi-segment routes
  • emissions_example.py: CO2 estimation

Testing

pytest

Run real-model semantic search tests (optional):

AERONAVX_RUN_REAL_MODEL_TESTS=1 pytest tests/test_semantic_search_real_model.py

Benchmarks

Run the semantic search benchmark locally:

python benchmark_semantic_search.py --sample-size 2000

Latest benchmark outputs are included in PRODUCTION_READINESS_REPORT.md.

Dependencies

Required: Python >= 3.9

Optional:

  • pandas: DataFrame support
  • scipy: Faster spatial indexing
  • rapidfuzz: Better fuzzy search
  • timezonefinder: Timezone support
  • fastapi, uvicorn: API server
  • requests: Weather data
  • sentence-transformers, transformers, torch, datasets, huggingface_hub, accelerate: HF semantic search
  • faiss-cpu (optional): ANN acceleration for semantic search

Roadmap

  • v4.0: demand forecasting, delay prediction, airline ops dashboards
  • v4.1: carbon optimization + lifecycle emissions modeling
  • v4.2: hosted inference endpoints and enterprise deployments

License

MIT License

Contributing

Contributions welcome! Please open an issue or pull request.

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