Convert the DataFrame to a NumPy array.
By default, the dtype of the returned array will be the common NumPy dtype of all types in the DataFrame. For example, if the dtypes are float16
and float32
, the results dtype will be float32
. This may require copying data and coercing values, which may be expensive.
The dtype to pass to numpy.asarray()
.
Whether to ensure that the returned value is not a view on another array. Note that copy=False
does not ensure that to_numpy()
is no-copy. Rather, copy=True
ensure that a copy is made, even if not strictly necessary.
The value to use for missing values. The default value depends on dtype and the dtypes of the DataFrame columns.
Examples
>>> pd.DataFrame({"A": [1, 2], "B": [3, 4]}).to_numpy() array([[1, 3], [2, 4]])
With heterogeneous data, the lowest common type will have to be used.
>>> df = pd.DataFrame({"A": [1, 2], "B": [3.0, 4.5]}) >>> df.to_numpy() array([[1. , 3. ], [2. , 4.5]])
For a mix of numeric and non-numeric types, the output array will have object dtype.
>>> df['C'] = pd.date_range('2000', periods=2) >>> df.to_numpy() array([[1, 3.0, Timestamp('2000-01-01 00:00:00')], [2, 4.5, Timestamp('2000-01-02 00:00:00')]], dtype=object)
RetroSearch is an open source project built by @garambo | Open a GitHub Issue
Search and Browse the WWW like it's 1997 | Search results from DuckDuckGo
HTML:
3.2
| Encoding:
UTF-8
| Version:
0.7.4