# geolibre [![image](https://img.shields.io/pypi/v/geolibre.svg)](https://pypi.python.org/pypi/geolibre) [![image](https://colab.research.google.com/assets/colab-badge.svg)](https://colab.research.google.com/github/opengeos/GeoLibre/blob/main/python/examples/getting-started.ipynb) [![image](https://img.shields.io/conda/vn/conda-forge/geolibre.svg)](https://anaconda.org/conda-forge/geolibre) [![Conda Recipe](https://img.shields.io/badge/recipe-geolibre-green.svg)](https://github.com/conda-forge/geolibre-feedstock) GeoLibre in Jupyter: the full [GeoLibre](https://geolibre.app) GIS app as an [anywidget](https://anywidget.dev), with a leafmap-style Python API. The widget embeds the complete GeoLibre app (menus, panels, processing tools) inside a notebook cell. State syncs both ways through a single `.geolibre.json` project, so data you add from Python appears in the UI, and edits you make in the UI are readable back from Python. ## Install ```bash pip install geolibre ``` Or with conda from [conda-forge](https://anaconda.org/conda-forge/geolibre): ```bash conda install -c conda-forge geolibre ``` ## Quickstart ```python from geolibre import Map m = Map(center=(-100, 40), zoom=4) m.add_geojson("https://example.com/data.geojson", name="Data") m ``` Add more data and drive the view: ```python m.add_tile_layer( "https://tile.openstreetmap.org/{z}/{x}/{y}.png", name="OpenStreetMap", attribution="(c) OpenStreetMap contributors", ) m.add_cog("https://example.com/dem.tif", name="DEM", colormap="terrain") m.add_basemap("dark") m.set_center(-120, 47, zoom=8) ``` Round-trip the project: ```python m.save_project("my-map.geolibre.json") m2 = Map() m2.load_project("my-map.geolibre.json") # Read state edited in the UI (e.g. after panning/zooming): m.to_project()["mapView"]["center"] ``` ## API | Method | Description | | --- | --- | | `Map(center, zoom, basemap=, height=, layout=, theme=)` | Create a map. `layout` is `"embed"`, `"full"`, or `"maponly"`. | | `add_geojson(data, name=, **style)` | Add GeoJSON (dict, path, URL, JSON, or GeoDataFrame). | | `add_vector(data, name=, render_mode=, data_format=, source_layer=, **style)` | Add a vector dataset from a URL (GeoParquet, FlatGeobuf, zipped Shapefile, GeoJSON) or a local file (read via GeoPandas, inlined). | | `add_geoparquet` / `add_flatgeobuf` / `add_shp` `(data, name=, **style)` | Format-specific wrappers over `add_vector`. | | `add_vector_tiles(url, name=, source_layers=, source_layer=, **style)` | Add vector tiles from a TileJSON endpoint. | | `add_pmtiles(url, name=, tile_type=, source_layers=, **style)` | Add a PMTiles archive (vector or raster). | | `add_tile_layer(url, name=, tile_size=, attribution=)` | Add a raster XYZ tile layer. | | `add_wms(endpoint, layers, name=, styles=, image_format=, transparent=, tile_size=, **style)` | Add a WMS (GetMap) tiled raster layer. | | `add_wmts(url, name=, tile_size=, **style)` | Add a WMTS tile URL template. | | `add_wfs(endpoint, type_name, name=, version=, output_format=, srs_name=, max_features=, **style)` | Add a WFS layer (GeoJSON, fetched and inlined). | | `add_cog(url, name=, bands=, colormap=, rescale=)` | Add a Cloud Optimized GeoTIFF. | | `add_raster(url, name=, bands=, colormap=, rescale=)` | Add a raster (alias of `add_cog`). | | `add_3d_tiles(url, name=, altitude_offset=, request_headers=, **style)` | Add a 3D Tiles `tileset.json`. | | `add_video(urls, coordinates, name=, **style)` | Add a georeferenced video (four `[lng, lat]` corners). | | `add_basemap(basemap)` | Set the background basemap. | | `set_center(lng, lat, zoom=None)` | Center (and optionally zoom) the map. | | `set_center_zoom(lng, lat, zoom=None)` | Alias of `set_center` (leafmap compatibility). | | `remove_layer(layer_id)` / `clear_layers()` | Remove layers. | | `to_project()` / `load_project(src)` / `save_project(path)` | Project I/O. | ## Notes - The bundled app is served from a localhost HTTP server, so the interactive widget works in local Jupyter and VS Code directly. **Google Colab** routes through its built-in port proxy automatically. On **JupyterHub** (including managed/shared hubs) the front-end tries two same-origin routes and uses whichever is live, so a host needs only one of them: the Jupyter Server extension bundled with `geolibre` at `{base_url}geolibre/app/` (enabled automatically on `pip install geolibre`, but registered only after the Jupyter server restarts), and `jupyter-server-proxy` at `{base_url}proxy/{port}/` (works in the running server with no restart where it is installed). On other remote servers (Binder, remote JupyterLab), pass `Map(server_proxy=True)` to use that same remote path; `Map(server_proxy=False)` forces the direct path. - Optional extras: `pip install geolibre[all]` adds GeoPandas/Shapely support for `add_geojson(geodataframe)` and for reading **local** vector files (`add_vector`/`add_geoparquet`/`add_flatgeobuf`/`add_shp`), which the kernel reads and inlines as GeoJSON. Remote URLs for the same formats stream through the in-browser vector control and need no extras. - `add_geojson` inlines file/URL data into the project (up to 50 MB), so a large dataset is held in memory and re-synced on every project update. For very large layers, prefer a tile or COG source (`add_tile_layer`/`add_cog`) the app fetches directly.