Skip to content

Read data with specific numpy floating dtype #287

@snowtechblog

Description

@snowtechblog

Hi,
I have the need to read in the channel data of my 20Gb Tdms file in lower precision than float64, e.g. in float32 or even in float16, to reduce my memory consumption. I could not find an nice inbuild solution to that, so I fiddled my own little function that I would like to share and potentially raise as a feature request. (I am not so familiar with the module structure and structure of Tdms files in general to implement such feature via a pull request...)

import numpy as np
from nptdms import TdmsFile

def read_tdms_channel_dtyped(tdms_channel, float_dtype='float32'):
    # unscaled data is int16
    data = tdms_channel.read_data(scaled=False)[0]
    # but when setting the polynomial coefficients to float32 or float64
    c = np.asarray(tdms_channel._scaling.scalings[1].coefficients, dtype=float_dtype)
    # the resulting scaled version is of that same dtype
    # but apply np.astype again to support float16
    return np.polynomial.polynomial.polyval(data, c).astype(float_dtype)

tdms_channel = TdmsFile.open(<file>)[<group>][<channel>]
data = read_tdms_channel_dtyped(tdms_channel)

This function is motivated from the scale method in class PolynomialScaling(object) (line 61 in scaling.py).

Metadata

Metadata

Assignees

No one assigned

    Labels

    No labels
    No labels

    Projects

    No projects

    Milestone

    No milestone

    Relationships

    None yet

    Development

    No branches or pull requests

    Issue actions