Dataset features¶
datasets.Features
defines the internal structure of a dataset. Features are used to specify the underlying serialization format but also contain high-level information regarding the fields, e.g. column names, types, and conversion methods from names to integer values for a class label field.
A brief summary of how to use this class:
datasets.Features
should be only called once and instantiated with adict[str, FieldType]
, where keys are your desired column names, and values are the type of that column.
FieldType can be one of a few possibilities:
- a
datasets.Value
feature specifies a single typed value, e.g.int64
orstring
. The dtypes supported are as follows: null
bool
int8
int16
int32
int64
uint8
uint16
uint32
uint64
float16
float32 (alias float)
float64 (alias double)
timestamp[(s|ms|us|ns)]
timestamp[(s|ms|us|ns), tz=(tzstring)]
binary
large_binary
string
large_string
- a
a python
dict
specifies that the field is a nested field containing a mapping of sub-fields to sub-fields features. It’s possible to have nested fields of nested fields in an arbitrary manner.a python
list
or adatasets.Sequence
specifies that the field contains a list of objects. The pythonlist
ordatasets.Sequence
should be provided with a single sub-feature as an example of the feature type hosted in this list. Pythonlist
are simplest to define and write whiledatasets.Sequence
provide a few more specific behaviors like the possibility to specify a fixed length for the list (slightly more efficient).
Note
A datasets.Sequence
with a internal dictionary feature will be automatically converted into a dictionary of lists. This behavior is implemented to have a compatilbity layer with the TensorFlow Datasets library but may be un-wanted in some cases. If you don’t want this behavior, you can use a python list
instead of the datasets.Sequence
.
a
datasets.ClassLabel
feature specifies a field with a predefined set of classes which can have labels associated to them and will be stored as integers in the dataset. This field will be stored and retrieved as an integer value and two conversion methods,datasets.ClassLabel.str2int()
anddatasets.ClassLabel.int2str()
can be used to convert from the label names to the associate integer value and vice-versa.finally, two features are specific to Machine Translation:
datasets.Translation
anddatasets.TranslationVariableLanguages
. We refer to the package reference for more details on these features.