I am trying to read data from hdf5 file in Python. I can read the hdf5 file using h5py, but I cannot figure out how to access data within the file.

My code

import h5py    
import numpy as np    
f1 = h5py.File(file_name,'r+')    

This works and the file is read. But how can I access data inside the file object f1?


Read HDF5

import h5py
filename = 'file.hdf5'
f = h5py.File(filename, 'r')

# List all groups
print("Keys: %s" % f.keys())
a_group_key = list(f.keys())[0]

# Get the data
data = list(f[a_group_key])

Write HDF5

#!/usr/bin/env python
import h5py

# Create random data
import numpy as np
data_matrix = np.random.uniform(-1, 1, size=(10, 3))

# Write data to HDF5
data_file = h5py.File('file.hdf5', 'w')
data_file.create_dataset('group_name', data=data_matrix)

See h5py docs for more information.


For your application, the following might be important:

  • Support by other programming languages
  • Reading / writing performance
  • Compactness (file size)

See also: Comparison of data serialization formats

In case you are rather looking for a way to make configuration files, you might want to read my short article Configuration files in Python

  • To get the data in the HDF5 datasets as a numpy array, you can do f[key].value – erickrf May 4 '17 at 20:49

you can use Pandas.

import pandas as pd
  • 4
    FWIW, this uses PyTables under the hood. – Mike Williamson Mar 23 '18 at 1:59
  • 1
    You should not rely on the Pandas implementation unless you are storing dataframes. read_hdf relies on the HDF file to be in a certain structure; also there is no pd.write_hdf, so you could only use it one-way. See this post. – Max Jan 26 at 21:20
  • Pandas does have a writing function. See pd.DataFrame.to_hdf – Eric Taw Mar 17 at 18:58

Reading the file

import h5py

f = h5py.File(file_name, mode)

Studying the structure of the file by printing what HDF5 groups are present

for key in f.keys():
    print(key) #Names of the groups in HDF5 file.

Extracting the data

#Get the HDF5 group
group = f[key]

#Checkout what keys are inside that group.
for key in group.keys():

data = group[some_key_inside_the_group].value
#Do whatever you want with data

#After you are done
  • for key in data.keys(): print(key) #Names of the groups in HDF5 file. this can be replace by list(data) – Hitesh Apr 19 '18 at 7:00
  • 3
    to know exact structure with all variable use : data.visit(print) – Hitesh Apr 19 '18 at 7:29
  • just fyi, the f in h5py.File(...) should be capitalized. – dannykim Aug 1 '18 at 17:47
  • 1
    @dannykim Done. – Daksh Aug 2 '18 at 1:13
  • 1
    Important: data.close() is needed at the end. – anilbey Oct 30 '18 at 20:17

What you need to do is create a dataset. If you take a look at the quickstart guide, it shows you that you need to use the file object in order to create a dataset. So, f.create_dataset and then you can read the data. This is explained in the docs.


To read the content of .hdf5 file as an array, you can do something as follow

> import numpy as np 
> myarray = np.fromfile('file.hdf5', dtype=float)
> print(myarray)

Use below code to data read and convert into numpy array

import h5py
f1 = h5py.File('data_1.h5', 'r')
X1 = f1['x']
df1= np.array(X1.value)
dfy1= np.array(y1.value)
print (df1.shape)
print (dfy1.shape)
  • 1
    Don't forget to close the file, otherwise the file may get corrupted. – anilbey Oct 30 '18 at 20:16

Here's a simple function I just wrote which reads a .hdf5 file generated by the save_weights function in keras and returns a dict with layer names and weights:

def read_hdf5(path):

    weights = {}

    keys = []
    with h5py.File(path, 'r') as f: # open file
        f.visit(keys.append) # append all keys to list
        for key in keys:
            if ':' in key: # contains data if ':' in key
                weights[f[key].name] = f[key].value
    return weights


Haven't tested it thoroughly but does the job for me.

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