66

I have the following code

import matplotlib.pyplot as plt
import matplotlib.image as mpimg
import numpy as np
import boto3
s3 = boto3.resource('s3', region_name='us-east-2')
bucket = s3.Bucket('sentinel-s2-l1c')
object = bucket.Object('tiles/10/S/DG/2015/12/7/0/B01.jp2')
object.download_file('B01.jp2')
img=mpimg.imread('B01.jp2')
imgplot = plt.imshow(img)
plt.show(imgplot)

and it works. But the problem it downloads file into current directory first. Is it possible to read file and decode it as image directly in RAM?

10 Answers 10

76

I would suggest using io module to read the file directly in to memory, without having to use a temporary file at all.

For example:

import matplotlib.pyplot as plt
import matplotlib.image as mpimg
import numpy as np
import boto3
import io

s3 = boto3.resource('s3', region_name='us-east-2')
bucket = s3.Bucket('sentinel-s2-l1c')
object = bucket.Object('tiles/10/S/DG/2015/12/7/0/B01.jp2')

file_stream = io.StringIO()
object.download_fileobj(file_stream)
img = mpimg.imread(file_stream)
# whatever you need to do

You could also use io.BytesIO if your data is binary.

10
  • 6
    object.download_fileobj(file_stream) gives me an error, TypeError: unicode argument expected, got 'str' Sep 28, 2018 at 9:26
  • 5
    I get the same error: TypeError: string argument expected, got 'bytes'
    – Hephaestus
    Nov 23, 2018 at 21:33
  • 11
    If "string argument expected, got bytes" is your error, remember to try io.BytesIO() instead of io.StringIO(). For boto3 and python 3, that's the key
    – Hawkins
    Apr 1, 2019 at 11:02
  • 5
    I am getting a read past end of file error when I am executing the last line of the code Apr 30, 2019 at 11:23
  • 3
    @NeeleshkumarSrinivasanMannur I get the same error. Did you find a solution?
    – Tom
    May 7, 2019 at 20:32
39

Further development from Greg Merritt's answer to solve all errors in the comment section, using BytesIO instead of StringIO, using PIL Image instead of matplotlib.image.

The following function works for python3 and boto3. Similarly, write_image_to_s3 function is a bonus.

from PIL import Image
from io import BytesIO
import numpy as np

def read_image_from_s3(bucket, key, region_name='ap-southeast-1'):
    """Load image file from s3.

    Parameters
    ----------
    bucket: string
        Bucket name
    key : string
        Path in s3

    Returns
    -------
    np array
        Image array
    """
    s3 = boto3.resource('s3', region_name='ap-southeast-1')
    bucket = s3.Bucket(bucket)
    object = bucket.Object(key)
    response = object.get()
    file_stream = response['Body']
    im = Image.open(file_stream)
    return np.array(im)

def write_image_to_s3(img_array, bucket, key, region_name='ap-southeast-1'):
    """Write an image array into S3 bucket

    Parameters
    ----------
    bucket: string
        Bucket name
    key : string
        Path in s3

    Returns
    -------
    None
    """
    s3 = boto3.resource('s3', region_name)
    bucket = s3.Bucket(bucket)
    object = bucket.Object(key)
    file_stream = BytesIO()
    im = Image.fromarray(img_array)
    im.save(file_stream, format='jpeg')
    object.put(Body=file_stream.getvalue())
1
24

Greg Merritt's answer below is better method.

I'd like to suggest using Python's NamedTemporaryFile in tempfile module. It creates temporary files that will be deleted as file is closed (Thanks to @NoamG)

import matplotlib.pyplot as plt
import matplotlib.image as mpimg
import numpy as np
import boto3
import tempfile

s3 = boto3.resource('s3', region_name='us-east-2')
bucket = s3.Bucket('sentinel-s2-l1c')
object = bucket.Object('tiles/10/S/DG/2015/12/7/0/B01.jp2')
tmp = tempfile.NamedTemporaryFile()

with open(tmp.name, 'wb') as f:
    object.download_fileobj(f)
    img=mpimg.imread(tmp.name)
    # ...Do jobs using img
3
  • 2
    This should work fine, but under the hood, a real file is created and will be destroyed as soon as it is closed.
    – NoamG
    Aug 24, 2017 at 13:23
  • @NoamG Thanks! I was misunderstanding how tempfile module works. Updated my answers. Oct 10, 2017 at 6:23
  • 4
    That a file is made at all even if temporarily is important for AWS Lambda users concerned about downloading files larger than 512 MB, since lambda limits users to 512 MB in /tmp
    – Hawkins
    May 15, 2019 at 12:36
13

Streaming the image is possible by specifying the file format in imread().

import boto3
from io import BytesIO
import matplotlib.image as mpimg
import matplotlib.pyplot as plt

resource = boto3.resource('s3', region_name='us-east-2')
bucket = resource.Bucket('sentinel-s2-l1c')

image_object = bucket.Object('tiles/10/S/DG/2015/12/7/0/B01.jp2')
image = mpimg.imread(BytesIO(image_object.get()['Body'].read()), 'jp2')

plt.figure(0)
plt.imshow(image)
10

Slightly different approach using client:

import boto3
import io
from matplotlib import pyplot as plt

client = boto3.client("s3")

bucket='my_bucket'
key= 'my_key'

outfile = io.BytesIO()
client.download_fileobj(bucket, key, outfile)
outfile.seek(0)
img = plt.imread(outfile)

plt.imshow(img)
plt.show()
1
  • 1
    This highlights the absolutely critical point - once the data have been downloaded to the buffer object, seek() back to 0 before onward processing!
    – jtlz2
    Sep 25, 2022 at 19:32
5
object = bucket.Object('tiles/10/S/DG/2015/12/7/0/B01.jp2')
img_data = object.get().get('Body').read()
1
  • 14
    Thank you for this code snippet, which may provide some immediate help. A proper explanation would greatly improve its educational value by showing why this is a good solution to the problem, and would make it more useful to future readers with similar, but not identical, questions. Please edit your answer to add an explanation, and give an indication of what limitations and assumptions apply. Feb 6, 2018 at 14:30
3

The temporary file solution by Hyeungshik Jung looks good, but I noticed that the file somehow seem to be downloaded in a lazy fashion. This leads to a behavior that if you call img.shape() and you'll get an empty dimension tuple as a return value () even after you called object.download_fileobj(f). I resolved this issue by applying a f.seek(0,2) to the file descriptor - then all following operations work properly, e.g. returning all proper dimensions (704, 1024).

...
tmp = tempfile.NamedTemporaryFile()

with open(tmp.name, 'wb') as f:
    object.download_fileobj(f)
    f.seek(0,2) 
    img=mpimg.imread(tmp.name)
    print (img.shape)

3

I see a lot of good answers here. Here is my code snippet with AWS Config if you quickly test out the solution. Please note that it's not recommended to put your AWS credentials in the code body, rather it should come from the .env file or from the AWS Keystore.

import os
import boto3
from PIL import Image
import io

AWS_ACCESS_KEY_ID = 'your-aws-access-key'
AWS_SECRET_ACCESS_KEY = 'your-aws-secret'

s3 = boto3.resource('s3',
                    aws_access_key_id=AWS_ACCESS_KEY_ID,
                    aws_secret_access_key=AWS_SECRET_ACCESS_KEY)

def image_from_s3(bucket, key):
    bucket = s3.Bucket(bucket)
    image = bucket.Object(key)
    img_data = image.get().get('Body').read()
    return Image.open(io.BytesIO(img_data))

# call the function
image_from_s3("your-aws-bucket-name", "file-path")

# example
image_from_s3("my-images", "profile/2022/123.png")
0

Make sure that you will read a byte type data from S3 but Tensorflow needs a string tensor to convert to uint8 image. And this method doesn't need Pillow.

import boto3
import tensorflow as tf

credentials = boto3.Session(botocore_session=boto3.setup_default_session(), 
                                region_name="us-east-1").get_credentials()
    

s3 = boto3.Session(aws_access_key_id=credentials.access_key,
                      aws_secret_access_key=credentials.secret_key).client('s3') 

#file_on_s3 : 's3://mybucket/data/sample.jpg'
bucket_name = 'mybucket'
file_key = 'data/sample.jpg'


file_obj = s3.get_object(Bucket=bucket_name, Key=file_key)

# reading the file content in bytes
file_content = file_obj["Body"].read()  


img =  tf.io.decode_image(tf.convert_to_tensor(file_content, dtype=tf.string), 
                                channels=3, 
                                dtype=tf.dtypes.uint8, 
                                name=None, 
                                expand_animations=False)

img = tf.cast(img, tf.float32)
img_array = tf.image.resize(img, 
                            size=(224, 224),
                            method=tf.image.ResizeMethod.NEAREST_NEIGHBOR) 
0

You can achieve this using pillow, ssl and urblib inn python3
from PIL import Image import requests import ssl import urllib.request

img="https://{bucket}.s3.amazonaws.com/{folder}/"
context = ssl._create_unverified_context()
for i in range(1100,1102):
    image_url=img+str(i)+".png"
    im = Image.open(urllib.request.urlopen(image_url,context=context))
    im.show()`

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