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I'm not sure if this is actually possiblem, I'm going off some second-hand experience on this.

I have a large application which was built using raw psycopg2 connections cursors on PostGIS databases, and now I am adapting it to insert some GeoPandas dataframes.

Originally I had been doing this by simply launching a new engine and importing the data like so:

from sqlalchemy import create_engine
from geoalchemy2 import Geometry, WKTElement

# Get features from GeoJSON and make geom column
gdf = gpd.GeoDataFrame.from_features(res_json['features'])
gdf['geom'] = gdf['geometry'].apply(lambda x: WKTElement(x.wkt, srid=CONFIG["SRID"]))
gdf.drop('geometry', 1, inplace=True)

# Create engine and import into database
engine = create_engine('postgresql://{0}:{1}@{2}:{3}/{4}'.format(dbuser, dbpass, dbhost, dbport, dbname), echo=False)
gdf.to_sql(tbl, engine, if_exists=if_exists, index=False, schema=schema, dtype={'geom': Geometry('MULTIPOLYGON', srid=CONFIG["SRID"])})

But I don't like opening a new connection when I have a psycopg2 cursor controlling everything else, it seems sloppy. I was told that I can actually use the cursor's connection itself in place of the engine, so I have tried this:

from sqlalchemy import create_engine

# Get features from GeoJSON and make geom column
gdf = gpd.GeoDataFrame.from_features(res_json['features'])
gdf['geom'] = gdf['geometry'].apply(lambda x: WKTElement(x.wkt, srid=CONFIG["SRID"]))
gdf.drop('geometry', 1, inplace=True)

# Get source connection from cursor and import to database
engine = cur.connection
gdf.to_sql(tbl, engine, if_exists=if_exists, index=False, schema=schema, dtype={'geom': Geometry('MULTIPOLYGON', srid=CONFIG["SRID"])})

But this returns the error:

ValueError: geom (geometry(MULTIPOLYGON,32637)) not a string

I'm not sure why this is an issue, create_engine() comes from sqlalchemy, not geoalchemy, so I don't know why it is able to handle the geometry column and this new method is not.

  • I didn't look in detail for this specific case, but in general writing to a database table with pandas to_sql is only supported with sqlalchemy engines (and sqlite connections, but not psycopg2 connections), and certainly the dtype argument you specify is handled in context of sqlalchemy. – joris Dec 6 '18 at 17:47

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