If there is a potential for duplicate entries and you want to avoid loading duplicate rows, see How can I avoid creating duplicate rows? on the Troubleshooting page.
You can use Heavy Immerse to import geospatial data into HeavyDB.
Supported formats include:
Keyhole Markup Language (.kml
)
GeoJSON (.geojson
)
Shapefiles (.shp
)
FlatGeobuf (.fgb
)
Shapefiles include four mandatory files: .shp
, .shx
, .dbf
, and .prj
. If you do not import the .prj
file, the coordinate system will be incorrect and you cannot render the shapes on a map.
To import geospatial definition data:
Open Heavy Immerse.
Click Data Manager.
Click Import Data.
Choose whether to import from a local file or an Amazon S3 instance. For details on importing from Amazon S3, see Importing Data from Amazon S3.
Click the large +
icon to select files for upload, or drag and drop the files to the Data Importer screen.
When importing shapefiles, upload all required file types at the same time. If you upload them separately, Heavy Immerse issues an error message.
Wait for the uploads to complete (indicated by green checkmarks on the file icons), then click Preview.
On the Data Preview screen:
Edit the column headers (if needed).
Enter a name for the table in the field at the bottom of the screen.
If you are loading the data files into a distributed system, verify under Import Settings that the Replicate Table checkbox is selected.
Click Import Data.
On the Successfully Imported Table screen, verify the rows and columns that compose your data table.
You can import spatial representations in Well-known Text (WKT) format. WKT is a text markup language for representing vector geometry objects on a map, spatial reference systems of spatial objects, and transformations between spatial reference systems.
When representing longitude and latitude in HEAVY.AI geospatial primitives, the first coordinate is assumed to be longitude by default.
You can use heavysql
to define tables with columns that store WKT geospatial objects.
You can use heavysql
to insert data as WKT string values.
You can insert data from CSV/TSV files containing WKT strings. HEAVY.AI supports Latin-1 ASCII format and UTF-8. If you want to load data with another encoding (for example, UTF-16), convert the data to UTF-8 before loading it to HEAVY.AI.
You can use your own custom delimiter in your data files.
You can import CSV and TSV files for tables that store longitude and latitude as either:
Separate consecutive scalar columns
A POINT field.
If the data is stored as a POINT, you can use spatial functions like ST_Distance
and ST_Contains
. When location data are stored as a POINT column, they are displayed as such when querying the table:
HEAVY.AI accepts data with any SRID, or with no SRID. HEAVY.AI supports SRID 4326 (WGS 84), and allows projections from SRID 4326 to SRID 900913 (Google Web Mercator). Geometries declared with SRID 4326 are compressed by default, and can be rendered and used to calculate geodesic distance. Geometries declared with any other SRID, or no SRID, are treated as planar geometries; the SRIDs are ignored.
If two geometries are used in one operation (for example, in ST_Distance
), the SRID values need to match.
If you are using heavysql, create the table in HEAVY.AI with the POINT field defined as below:
Then, import the file using COPY FROM
in heavysql. By default, the two columns as consumed as longitude x
and then latitude y
. If the order of the coordinates in the CSV file is reversed, load the data using the WITH option lonlat='false'
:
Columns can exist on either side of the point field; the lon/lat in the source file does not have to be at the beginning or end of the target table. Fields can exist on either side of the lon/lat pair.
If the imported coordinates are not 4326---for example, 2263---you can transform them to 4326 on the fly:
In Immerse, you define the table when loading the data instead of predefining it before import. Immerse supports appending data to a table by loading one or more files.
Longitude and latitude can be imported as separate columns.
You can create geo tables by importing specific geo file formats. HEAVY.AI supports the following types:
ESRI shapefile (.shp
and associated files)
GeoJSON (.geojson
or .json
)
KML (.kml
or .kmz
)
ESRI file geodatabase (.gdb
)
An ESRI file geodatabase can have multiple layers, and importing it results in the creation of one table for each layer in the file. This behavior differs from that of importing shapefiles, GeoJSON, or KML files, which results in a single table. See Importing an ESRI File Geodatabase for more information.
You import geo files using the COPY FROM
command with the geo
option:
The geo file import process automatically creates the table by detecting the column names and types explicitly described in the geo file header. It then creates a single geo column (always called heavyai_geo) that is of one of the supported types (POINT
, MULTIPOINT
, LINESTRING
, MULTILINESTRING
, POLYGON
, or MULTIPOLYGON
).
In Release 6.2 and higher, polygon render metadata assignment is disabled by default. This data is no longer required by the new polygon rendering algorithm introduced in Release 6.0. The new default results in significantly faster import for polygon table imports, particularly high-cardinality tables.
If you need to revert to the legacy polygon rendering algorithm, polygons from tables imported in Release 6.2 may not render correctly. Those tables must be re-imported after setting the server configuration flag enable-assign-render-groups
to true
.
The legacy polygon rendering algorithm and polygon render metadata server config will be removed completely in an upcoming release.
Due to the prevalence of mixed POLYGON/MULTIPOLYGON
geo files (and CSVs), if HEAVY.AI detects a POLYGON
type geo file, HEAVY.AI creates a MULTIPOLYGON
column and imports the data as single polygons.
If the table does not already exist, it is created automatically.
If the table already exists, and the data in the geo file has exactly the same column structure, the new file is appended to the existing table. This enables import of large geo data sets split across multiple files. The new file is rejected if it does not have the same column structure.
By default, geo data is stored as GEOMETRY
.
You can also create tables with coordinates in SRID 3857 or SRID 900913 (Google Web Mercator). Importing data from shapefiles using SRID 3857 or 900913 is supported; importing data from delimited files into tables with these SRIDs is not supported at this time. To explicitly store in other formats, use the following WITH
options in addition to geo='true':
Compression used:
COMPRESSED(32)
- 50% compression (default)
None
- No compression
Spatial reference identifier (SRID) type:
4326
- EPSG:4326 (default)
900913
- Google Web Mercator
3857
- EPSG:3857
For example, the following explicitly sets the default values for encoding and SRID:
Rendering of geo LINESTRING, MULTILINESTRING
, POLYGON
and MULTIPOLYGON
is possible only with data stored in the default lon/lat WGS84 (SRID 4326) format, although the type and encoding are flexible. Unless compression is explictly disabled (NONE
), all SRID 4326 geometries are compressed. For more information, see WSG84 Coordinate Compression.
Note that rendering of geo MULTIPOINT is not yet supported.
An ESRI file geodatabase (.gdb
) provides a method of storing GIS information in one large file that can have one or more "layers", with each layer containing disparate but related data. The data in each layer can be of different types. Importing a .gdb
file results in the creation of one table for each layer in the file. You import an ESRI file geodatabase the same way that you import other geo file formats, using the COPY FROM
command with the geo
option:
The layers in the file are scanned and defined by name and contents. Contents are classified as EMPTY
, GEO
, NON_GEO
or UNSUPPORTED_GEO
:
EMPTY
layers are skipped because they contain no useful data.
GEO
layers contain one or more geo columns of a supported type (POINT
, MULTIPOINT
, LINESTRING
, MULTILINESTRING
, POLYGON
, MULTIPOLYGON
) and one or more regular columns, and can be imported to a single table in the same way as the other geo file formats.
NON_GEO
layers contain no geo columns and one or more regular columns, and can be imported to a regular table. Although the data comes from a geo file, data in this layer does not result in a geo table.
UNSUPPORTED_GEO
layers contain geo columns of a type not currently supported (for example, GEOMETRYCOLLECTION
). These layers are skipped because they cannot be imported completely.
A single COPY FROM
command can result in multiple tables, one for each layer in the file. The table names are automatically generated by appending the layer name to the provided table name.
For example, consider the geodatabase file mydata.gdb
which contains two importable layers with names A
and B
. Running COPY FROM
creates two tables, mydata_A
and mydata_B
, with the data from layers A
and B
, respectively. The layer names are appended to the provided table name. If the geodatabase file only contains one layer, the layer name is not appended.
You can load one specific layer from the geodatabase file by using the geo_layer_name
option:
This loads only layer A, if it is importable. The resulting table is called mydata
, and the layer name is not appended. Use this import method if you want to set a different name for each table. If the layer name from the geodatabase file would result in an illegal table name when appended, the name is sanitized by removing any illegal characters.
You can import geo files directly from archive files (for example, .zip .tar .tgz .tar.gz) without unpacking the archive. You can directly import individual geo files compressed with Zip or GZip (GeoJSON and KML only). The server opens the archive header and loads the first candidate file it finds (.shp .geojson .json .kml), along with any associated files (in the case of an ESRI Shapefile, the associated files must be siblings of the first).
You can import geo files or archives directly from an Amazon S3 bucket.
You can provide Amazon S3 credentials, if required, by setting variables in the environment of the heavysql
process…
You can also provide your credentials explicitly in the COPY FROM command.
You can import geo files or archives directly from an HTTP/HTTPS website.
You can extend a column type specification to include spatial reference (SRID) and compression mode information.
Geospatial objects declared with SRID 4326 are compressed 50% by default with ENCODING COMPRESSED(32)
. In the following definition of table geo2, the columns poly2 and mpoly2 are compressed.
COMPRESSED(32)
compression maps lon/lat degree ranges to 32-bit integers, providing a smaller memory footprint and faster query execution. The effect on precision is small, approximately 4 inches at the equator.
You can disable compression by explicitly choosing ENCODING NONE
.
You can extend a column type specification to include spatial reference (SRID) and compression mode information.
Geospatial objects declared with SRID 4326 are compressed 50% by default with ENCODING COMPRESSED(32)
. In the following definition of table geo2, the columns poly2 and mpoly2 are compressed.
COMPRESSED(32)
compression maps lon/lat degree ranges to 32-bit integers, providing a smaller memory footprint and faster query execution. The effect on precision is small, approximately 4 inches at the equator.
You can disable compression by explicitly choosing ENCODING NONE
.