PyTables File Format

PyTables has a powerful capability to deal with native HDF5 files created with another tools. However, there are situations were you may want to create truly native PyTables files with those tools while retaining fully compatibility with PyTables format. That is perfectly possible, and in this appendix is presented the format that you should endow to your own-generated files in order to get a fully PyTables compatible file.

We are going to describe the 2.0 version of PyTables file format (introduced in PyTables version 2.0). As time goes by, some changes might be introduced (and documented here) in order to cope with new necessities. However, the changes will be carefully pondered so as to ensure backward compatibility whenever is possible.

A PyTables file is composed with arbitrarily large amounts of HDF5 groups (Groups in PyTables naming scheme) and datasets (Leaves in PyTables naming scheme). For groups, the only requirements are that they must have some system attributes available. By convention, system attributes in PyTables are written in upper case, and user attributes in lower case but this is not enforced by the software. In the case of datasets, besides the mandatory system attributes, some conditions are further needed in their storage layout, as well as in the datatypes used in there, as we will see shortly.

As a final remark, you can use any filter as you want to create a PyTables file, provided that the filter is a standard one in HDF5, like zlib, shuffle or szip (although the last one can not be used from within PyTables to create a new file, datasets compressed with szip can be read, because it is the HDF5 library which do the decompression transparently).

Mandatory attributes for a File

The File object is, in fact, an special HDF5 group structure that is root for the rest of the objects on the object tree. The next attributes are mandatory for the HDF5 root group structure in PyTables files:

  • CLASS: This attribute should always be set to ‘GROUP’ for group structures.
  • PYTABLES_FORMAT_VERSION: It represents the internal format version, and currently should be set to the ‘2.0’ string.
  • TITLE: A string where the user can put some description on what is this group used for.
  • VERSION: Should contains the string ‘1.0’.

Mandatory attributes for a Group

The next attributes are mandatory for group structures:

  • CLASS: This attribute should always be set to ‘GROUP’ for group structures.
  • TITLE: A string where the user can put some description on what is this group used for.
  • VERSION: Should contains the string ‘1.0’.

Optional attributes for a Group

The next attributes are optional for group structures:

  • FILTERS: When present, this attribute contains the filter properties (a Filters instance, see section The Filters class) that may be inherited by leaves or groups created immediately under this group. This is a packed 64-bit integer structure, where
    • byte 0 (the least-significant byte) is the compression level (complevel).
    • byte 1 is the compression library used (complib): 0 when irrelevant, 1 for Zlib, 2 for LZO and 3 for Bzip2.
    • byte 2 indicates which parameterless filters are enabled (shuffle and fletcher32): bit 0 is for Shuffle while bit 1 is for*Fletcher32*.
    • other bytes are reserved for future use.

Mandatory attributes, storage layout and supported data types for Leaves

This depends on the kind of Leaf. The format for each type follows.

Table format

Mandatory attributes

The next attributes are mandatory for table structures:

  • CLASS: Must be set to ‘TABLE’.
  • TITLE: A string where the user can put some description on what is this dataset used for.
  • VERSION: Should contain the string ‘2.6’.
  • FIELD_X_NAME: It contains the names of the different fields. The X means the number of the field, zero-based (beware, order do matter). You should add as many attributes of this kind as fields you have in your records.
  • FIELD_X_FILL: It contains the default values of the different fields. All the datatypes are supported natively, except for complex types that are currently serialized using Pickle. The X means the number of the field, zero-based (beware, order do matter). You should add as many attributes of this kind as fields you have in your records. These fields are meant for saving the default values persistently and their existence is optional.
  • NROWS: This should contain the number of compound data type entries in the dataset. It must be an int data type.

Storage Layout

A Table has a dataspace with a 1-dimensional chunked layout.

Datatypes supported

The datatype of the elements (rows) of Table must be the H5T_COMPOUND compound data type, and each of these compound components must be built with only the next HDF5 data types classes:

  • H5T_BITFIELD: This class is used to represent the Bool type. Such a type must be build using a H5T_NATIVE_B8 datatype, followed by a HDF5 H5Tset_precision call to set its precision to be just 1 bit.

  • H5T_INTEGER: This includes the next data types:
    • H5T_NATIVE_SCHAR: This represents a signed char C type, but it is effectively used to represent an Int8 type.
    • H5T_NATIVE_UCHAR: This represents an unsigned char C type, but it is effectively used to represent an UInt8 type.
    • H5T_NATIVE_SHORT: This represents a short C type, and it is effectively used to represent an Int16 type.
    • H5T_NATIVE_USHORT: This represents an unsigned short C type, and it is effectively used to represent an UInt16 type.
    • H5T_NATIVE_INT: This represents an int C type, and it is effectively used to represent an Int32 type.
    • H5T_NATIVE_UINT: This represents an unsigned int C type, and it is effectively used to represent an UInt32 type.
    • H5T_NATIVE_LONG: This represents a long C type, and it is effectively used to represent an Int32 or an Int64, depending on whether you are running a 32-bit or 64-bit architecture.
    • H5T_NATIVE_ULONG: This represents an unsigned long C type, and it is effectively used to represent an UInt32 or an UInt64, depending on whether you are running a 32-bit or 64-bit architecture.
    • H5T_NATIVE_LLONG: This represents a long long C type (__int64, if you are using a Windows system) and it is effectively used to represent an Int64 type.
    • H5T_NATIVE_ULLONG: This represents an unsigned long long C type (beware: this type does not have a correspondence on Windows systems) and it is effectively used to represent an UInt64 type.
  • H5T_FLOAT: This includes the next datatypes:
    • H5T_NATIVE_FLOAT: This represents a float C type and it is effectively used to represent an Float32 type.
    • H5T_NATIVE_DOUBLE: This represents a double C type and it is effectively used to represent an Float64 type.
  • H5T_TIME: This includes the next datatypes:
    • H5T_UNIX_D32: This represents a POSIX time_t C type and it is effectively used to represent a ‘Time32’ aliasing type, which corresponds to an Int32 type.
    • H5T_UNIX_D64: This represents a POSIX struct timeval C type and it is effectively used to represent a ‘Time64’ aliasing type, which corresponds to a Float64 type.
  • H5T_STRING: The datatype used to describe strings in PyTables is H5T_C_S1 (i.e. a string C type) followed with a call to the HDF5 H5Tset_size() function to set their length.

  • H5T_ARRAY: This allows the construction of homogeneous, multidimensional arrays, so that you can include such objects in compound records. The types supported as elements of H5T_ARRAY data types are the ones described above. Currently, PyTables does not support nested H5T_ARRAY types.

  • H5T_COMPOUND: This allows the support for datatypes that are compounds of compounds (this is also known as nested types along this manual).

    This support can also be used for defining complex numbers. Its format is described below:

    The H5T_COMPOUND type class contains two members. Both members must have the H5T_FLOAT atomic datatype class. The name of the first member should be “r” and represents the real part. The name of the second member should be “i” and represents the imaginary part. The precision property of both of the H5T_FLOAT members must be either 32 significant bits (e.g. H5T_NATIVE_FLOAT) or 64 significant bits (e.g. H5T_NATIVE_DOUBLE). They represent Complex32 and Complex64 types respectively.

Array format

Mandatory attributes

The next attributes are mandatory for array structures:

  • CLASS: Must be set to ‘ARRAY’.
  • TITLE: A string where the user can put some description on what is this dataset used for.
  • VERSION: Should contain the string ‘2.3’.

Storage Layout

An Array has a dataspace with a N-dimensional contiguous layout (if you prefer a chunked layout see EArray below).

Datatypes supported

The elements of Array must have either HDF5 atomic data types or a compound data type representing a complex number. The atomic data types can currently be one of the next HDF5 data type classes: H5T_BITFIELD, H5T_INTEGER, H5T_FLOAT and H5T_STRING. The H5T_TIME class is also supported for reading existing Array objects, but not for creating them. See the Table format description in Table format for more info about these types.

In addition to the HDF5 atomic data types, the Array format supports complex numbers with the H5T_COMPOUND data type class. See the Table format description in Table format for more info about this special type.

You should note that H5T_ARRAY class datatypes are not allowed in Array objects.

CArray format

Mandatory attributes

The next attributes are mandatory for CArray structures:

  • CLASS: Must be set to ‘CARRAY’.
  • TITLE: A string where the user can put some description on what is this dataset used for.
  • VERSION: Should contain the string ‘1.0’.

Storage Layout

An CArray has a dataspace with a N-dimensional chunked layout.

Datatypes supported

The elements of CArray must have either HDF5 atomic data types or a compound data type representing a complex number. The atomic data types can currently be one of the next HDF5 data type classes: H5T_BITFIELD, H5T_INTEGER, H5T_FLOAT and H5T_STRING. The H5T_TIME class is also supported for reading existing CArray objects, but not for creating them. See the Table format description in Table format for more info about these types.

In addition to the HDF5 atomic data types, the CArray format supports complex numbers with the H5T_COMPOUND data type class. See the Table format description in Table format for more info about this special type.

You should note that H5T_ARRAY class datatypes are not allowed yet in Array objects.

EArray format

Mandatory attributes

The next attributes are mandatory for earray structures:

  • CLASS: Must be set to ‘EARRAY’.
  • EXTDIM: (Integer) Must be set to the extendable dimension. Only one extendable dimension is supported right now.
  • TITLE: A string where the user can put some description on what is this dataset used for.
  • VERSION: Should contain the string ‘1.3’.

Storage Layout

An EArray has a dataspace with a N-dimensional chunked layout.

Datatypes supported

The elements of EArray are allowed to have the same data types as for the elements in the Array format. They can be one of the HDF5 atomic data type classes: H5T_BITFIELD, H5T_INTEGER, H5T_FLOAT, H5T_TIME or H5T_STRING, see the Table format description in Table format for more info about these types. They can also be a H5T_COMPOUND datatype representing a complex number, see the Table format description in Table format.

You should note that H5T_ARRAY class data types are not allowed in EArray objects.

VLArray format

Mandatory attributes

The next attributes are mandatory for vlarray structures:

  • CLASS: Must be set to ‘VLARRAY’.
  • PSEUDOATOM: This is used so as to specify the kind of pseudo-atom (see VLArray format) for the VLArray. It can take the values ‘vlstring’, ‘vlunicode’ or ‘object’. If your atom is not a pseudo-atom then you should not specify it.
  • TITLE: A string where the user can put some description on what is this dataset used for.
  • VERSION: Should contain the string ‘1.3’.

Storage Layout

An VLArray has a dataspace with a 1-dimensional chunked layout.

Data types supported

The data type of the elements (rows) of VLArray objects must be the H5T_VLEN variable-length (or VL for short) datatype, and the base datatype specified for the VL datatype can be of any atomic HDF5 datatype that is listed in the Table format description Table format. That includes the classes:

  • H5T_BITFIELD
  • H5T_INTEGER
  • H5T_FLOAT
  • H5T_TIME
  • H5T_STRING
  • H5T_ARRAY

They can also be a H5T_COMPOUND data type representing a complex number, see the Table format description in Table format for a detailed description.

You should note that this does not include another VL datatype, or a compound datatype that does not fit the description of a complex number. Note as well that, for object and vlstring pseudo-atoms, the base for the VL datatype is always a H5T_NATIVE_UCHAR (H5T_NATIVE_UINT for vlunicode). That means that the complete row entry in the dataset has to be used in order to fully serialize the object or the variable length string.

Optional attributes for Leaves

The next attributes are optional for leaves:

  • FLAVOR: This is meant to provide the information about the kind of object kept in the Leaf, i.e. when the dataset is read, it will be converted to the indicated flavor. It can take one the next string values:

    • “numpy”: Read data (structures arrays, arrays, records, scalars) will be returned as NumPy objects.
    • “python”: Read data will be returned as Python lists, tuples, or scalars.