Zusammenfassung
Konvertiert eine Tabelle in ein strukturiertes NumPy-Array.
Diskussion
NumPy is a fundamental package for scientific computing in Python, including support for a powerful N-dimensional array object. For more information, see Working with NumPy in ArcGIS.
Um Feature-Classes in ein NumPy-Array zu konvertieren, verwenden Sie stattdessen die Funktion FeatureClassToNumPyArray.
Syntax
TableToNumPyArray (in_table, field_names, {where_clause}, {skip_nulls}, {null_value})
Parameter | Erläuterung | Datentyp |
in_table | The feature class, layer, table, or table view. | String |
field_names [field_names,...] | A list (or tuple) of field names. For a single field, you can use a string instead of a list of strings. Use an asterisk (*) instead of a list of fields to access all fields from the input table (raster and BLOB fields are excluded). However, for faster performance and reliable field order, it is recommended that the list of fields be narrowed to only those that are actually needed. Raster and BLOB fields are not supported. Geometry objects are not supported using the SHAPE@ token, but geometry information can be included using other tokens such as SHAPE@XY (a tuple of the feature's centroid coordinates), SHAPE@AREA, and SHAPE@LENGTH. Additional information can be accessed using tokens (such as OID@) in place of field names:
(Der Standardwert ist *) | String |
where_clause | An optional expression that limits the records returned. For more information on where clauses and SQL statements, see SQL reference for query expressions used in ArcGIS. (Der Standardwert ist "") | String |
skip_nulls | Control whether records using nulls are skipped. It can be either a Boolean True or False, or a Python function or lambda expression. When set to True, if any of the record's attributes is null (including geometry), the record is skipped. With a False setting, skip_nulls attempts to use all records regardless of nulls. In a NumPy array, a null is represented as a nan (not a number) for floating-point numeric values but not for integers. Below is an example of skipping all records that include a null. A Python function or lambda expression can be used to allow finer control, including logging the OID values of all records that include a null value. In both examples below, the lambda expression or function is used to identify OIDs that include null records. Use a function to capture all records that are skipped because of nulls. Use a lambda expression to capture all records that are skipped because of nulls. Hinweis:In NumPy arrays, nulls are represented in float types such as nan and in text types such as None. Integer types do not support the concept of null values. (Der Standardwert ist False) | Variant |
null_value | Replaces null values from the input with a new value. null_value is replaced before skip_nulls is evaluated. Mask None values in integer fields with a -9999.
Mask None values in integer fields with different values using a dictionary.
Vorsicht:Providing a mask such as -9999 allows integer fields containing nulls to be exported to a NumPy array, but be cautious when using these values in any analysis. The results may be inadvertently skewed by the introduced value. (Der Standardwert ist None) | Integer |
Datentyp | Erläuterung |
NumPyArray | A NumPy structured array. |
Codebeispiel
Konvertieren Sie eine Tabelle in ein NumPy-Array, und führen Sie einige grundlegende Statistiken mit NumPy durch.
import arcpy
import numpy
input = "c:/data/usa.gdb/USA/counties"
arr = arcpy.da.TableToNumPyArray(input, ('STATE_NAME', 'POP1990', 'POP2000'))
# Sum the total population for 1990 and 2000
#
print(arr["POP1990"].sum())
print(arr["POP2000"].sum())
# Sum the population for the state of Minnesota
#
print(arr[arr['STATE_NAME'] == "Minnesota"]['POP2000'].sum())
Verwenden Sie "TableToNumPyArray", um Korrelationskoeffizienten für zwei Felder zu bestimmen.
import arcpy
import numpy
input = arcpy.GetParameterAsText(0)
field1 = arcpy.GetParameterAsText(1)
field2 = arcpy.GetParameterAsText(2)
arr = arcpy.da.TableToNumPyArray(input, (field1, field2))
# Print correlation coefficients for comparison of 2 field values
#
print(numpy.corrcoef((arr[field1], arr[field2])))