# How to store very large 3 dimensional matrix in HDF5 format?

I have a very large matrix which is a video file as an array of frames, each around 350x250 resolution. I have around 8,000-10,000 such frames in a single video file, which is around 1-1.5GB in size. I have figured that HDF5 is a good file format for my use as I have to perform a lot of mathematical operations on the file (across the entire depth column). My problem is that I am unable to store this 3D matrix in HDF5. Can someone suggest me how to store these frames in an incremental fashion (adding frame by frame to the hdf5 file) as a 3D matrix in hdf5 format? I am using h5py python package.

• Using ideas from docs.h5py.org/en/latest/high/dataset.html show us how you would store a small array, say 10 frames of the (20,20) size. Hint, initial the data set to (10,20,20), and iterate on `data[i,:,:]=frame`. Get this working for small data first. You can work on the big problem later. Commented Feb 5, 2017 at 18:51
• Thanks @hpaul. This solved my problem. Commented Feb 6, 2017 at 19:14

As an example, let's assume your video has 10 frames with a resolution of 200x200 pixels. Therefore, you would have to create a dataset with dimensions 10 x 200 x 200 x 3 with data type uint8 (each RGB component uses 8 unsigned bits). Here's how this transfers to the h5py api. Check the docs for details.

``````import h5py
import numpy as np

# create an hdf5 file
with h5py.File("/tmp/videos.h5") as f:
# create a dataset for your movie
dst = f.create_dataset("myvideo", shape=(10, 200, 200, 3),
dtype=np.uint8)
# fill the 10 frames with a random image
for frame in range(10):
dst[frame] = np.random.randint(255, size=(200, 200, 3))
``````
• If your frames are grayscale, the shape of the dataset would be 10 x 200 x 200, of course. Commented Feb 6, 2017 at 10:54
• This is exactly what I needed. It worked perfectly! Thanks a lot! Commented Feb 6, 2017 at 19:13