I wrote the following code to load images from my S3 bucket, do some preliminary preprocessing, and read them into a numpy array:

from scipy.misc import imresize
from scipy.misc import imread
import numpy as np
import boto3
import tempfile
import matplotlib.image as mpimg
import matplotlib.pyplot as plt

temp = []
s3 = boto3.resource('s3', region_name='ap-northeast-2')  # This is the nearest AWS region to my location

role = get_execution_role()
bucket = s3.Bucket('my-bucket')

for img_name in X:
    obj = bucket.Object('ImageFolder/'+img_name)
    img = mpimg.imread(img_name)
    img = imresize(img, (32, 32))
    img = img.astype('float32')

X = np.stack(temp)

But it is taking forever to do this. There are about 20000 images, and it took about 3 hours to finish loading them into temp! And at the time of posting this question, it was in the process of putting temp into the numpy array X, which I suspect might take anything from 1-2 hours. That means this whole process takes around 5 hours to complete, while it only took less than a minute in my local system (a run-of-the-mill dual core 2.2 GHz CPU, no GPU)! So, how do I make it faster? And is it possible to do this as fast as in my local system?

  • You could try a parallelized implementation using multithreading but it's not going to get you down to the "under-minute" run. The reason why is that there is an incurred network overhead from having to fetch the images from S3. – Scratch'N'Purr Jun 11 '18 at 6:42
  • @Scratch'N'Purr Yeah, I understand the network overhead part; that's why I asked if its even possible to get to "under a minute". Anyway, I just thought of giving AWS a shot, but if I have to incur so much overhead to even get things rolling (transfer files in folders to S3 with aws-cli instead of there being an "upload folder" option in S3 browser, then do multi-threading to read them back...ugh), which was all done in under 3-4 lines of code in my local system, then I am highly disappointed with AWS. The process of transitioning from physical system to cloud should have been much smoother. – Kristada673 Jun 11 '18 at 6:47
  • @Kristada673 this is unlikely to have anything to do with AWS performance. Where are you actually running this? Inside EC2, or externally? – Michael - sqlbot Jun 11 '18 at 8:44
  • @Michael-sqlbot In a Jupyter notebook inside AWS Sagemaker – Kristada673 Jun 11 '18 at 8:46
  • I believe ap-northeast-2 (your bucket region) is not a Sagemaker region. Where are you running this? – Michael - sqlbot Jun 11 '18 at 8:54

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Browse other questions tagged or ask your own question.