-
-
Save jasonrdsouza/f2c77dedb8d80faebcf9 to your computer and use it in GitHub Desktop.
''' | |
This script performs efficient concatenation of files stored in S3. Given a | |
folder, output location, and optional suffix, all files with the given suffix | |
will be concatenated into one file stored in the output location. | |
Concatenation is performed within S3 when possible, falling back to local | |
operations when necessary. | |
Run `python combineS3Files.py -h` for more info. | |
''' | |
import boto3 | |
import os | |
import threading | |
import argparse | |
import logging | |
# Script expects everything to happen in one bucket | |
BUCKET = "" # set by command line args | |
# S3 multi-part upload parts must be larger than 5mb | |
MIN_S3_SIZE = 6000000 | |
# Setup logger to display timestamp | |
logging.basicConfig(format='%(asctime)s => %(message)s') | |
def run_concatenation(folder_to_concatenate, result_filepath, file_suffix, max_filesize): | |
s3 = new_s3_client() | |
parts_list = collect_parts(s3, folder_to_concatenate, file_suffix) | |
logging.warning("Found {} parts to concatenate in {}/{}".format(len(parts_list), BUCKET, folder_to_concatenate)) | |
grouped_parts_list = chunk_by_size(parts_list, max_filesize) | |
logging.warning("Created {} concatenation groups".format(len(grouped_parts_list))) | |
for i, parts in enumerate(grouped_parts_list): | |
logging.warning("Concatenating group {}/{}".format(i, len(grouped_parts_list))) | |
run_single_concatenation(s3, parts, "{}-{}".format(result_filepath, i)) | |
def run_single_concatenation(s3, parts_list, result_filepath): | |
if len(parts_list) > 1: | |
# perform multi-part upload | |
upload_id = initiate_concatenation(s3, result_filepath) | |
parts_mapping = assemble_parts_to_concatenate(s3, result_filepath, upload_id, parts_list) | |
complete_concatenation(s3, result_filepath, upload_id, parts_mapping) | |
elif len(parts_list) == 1: | |
# can perform a simple S3 copy since there is just a single file | |
resp = s3.copy_object(Bucket=BUCKET, CopySource="{}/{}".format(BUCKET, parts_list[0][0]), Key=result_filepath) | |
logging.warning("Copied single file to {} and got response {}".format(result_filepath, resp)) | |
else: | |
logging.warning("No files to concatenate for {}".format(result_filepath)) | |
pass | |
def chunk_by_size(parts_list, max_filesize): | |
grouped_list = [] | |
current_list = [] | |
current_size = 0 | |
for p in parts_list: | |
current_size += p[1] | |
current_list.append(p) | |
if current_size > max_filesize: | |
grouped_list.append(current_list) | |
current_list = [] | |
current_size = 0 | |
return grouped_list | |
def new_s3_client(): | |
# initialize an S3 client with a private session so that multithreading | |
# doesn't cause issues with the client's internal state | |
session = boto3.session.Session() | |
return session.client('s3') | |
def collect_parts(s3, folder, suffix): | |
return filter(lambda x: x[0].endswith(suffix), _list_all_objects_with_size(s3, folder)) | |
def _list_all_objects_with_size(s3, folder): | |
def resp_to_filelist(resp): | |
return [(x['Key'], x['Size']) for x in resp['Contents']] | |
objects_list = [] | |
resp = s3.list_objects(Bucket=BUCKET, Prefix=folder) | |
objects_list.extend(resp_to_filelist(resp)) | |
while resp['IsTruncated']: | |
# if there are more entries than can be returned in one request, the key | |
# of the last entry returned acts as a pagination value for the next request | |
logging.warning("Found {} objects so far".format(len(objects_list))) | |
last_key = objects_list[-1][0] | |
resp = s3.list_objects(Bucket=BUCKET, Prefix=folder, Marker=last_key) | |
objects_list.extend(resp_to_filelist(resp)) | |
return objects_list | |
def initiate_concatenation(s3, result_filename): | |
# performing the concatenation in S3 requires creating a multi-part upload | |
# and then referencing the S3 files we wish to concatenate as "parts" of that upload | |
resp = s3.create_multipart_upload(Bucket=BUCKET, Key=result_filename) | |
logging.warning("Initiated concatenation attempt for {}, and got response: {}".format(result_filename, resp)) | |
return resp['UploadId'] | |
def assemble_parts_to_concatenate(s3, result_filename, upload_id, parts_list): | |
parts_mapping = [] | |
part_num = 0 | |
s3_parts = ["{}/{}".format(BUCKET, p[0]) for p in parts_list if p[1] > MIN_S3_SIZE] | |
local_parts = [p[0] for p in parts_list if p[1] <= MIN_S3_SIZE] | |
# assemble parts large enough for direct S3 copy | |
for part_num, source_part in enumerate(s3_parts, 1): # part numbers are 1 indexed | |
resp = s3.upload_part_copy(Bucket=BUCKET, | |
Key=result_filename, | |
PartNumber=part_num, | |
UploadId=upload_id, | |
CopySource=source_part) | |
logging.warning("Setup S3 part #{}, with path: {}, and got response: {}".format(part_num, source_part, resp)) | |
parts_mapping.append({'ETag': resp['CopyPartResult']['ETag'][1:-1], 'PartNumber': part_num}) | |
# assemble parts too small for direct S3 copy by downloading them locally, | |
# combining them, and then reuploading them as the last part of the | |
# multi-part upload (which is not constrained to the 5mb limit) | |
small_parts = [] | |
for source_part in local_parts: | |
temp_filename = "/tmp/{}".format(source_part.replace("/","_")) | |
s3.download_file(Bucket=BUCKET, Key=source_part, Filename=temp_filename) | |
with open(temp_filename, 'rb') as f: | |
small_parts.append(f.read()) | |
os.remove(temp_filename) | |
logging.warning("Downloaded and copied small part with path: {}".format(source_part)) | |
if len(small_parts) > 0: | |
last_part_num = part_num + 1 | |
last_part = ''.join(small_parts) | |
resp = s3.upload_part(Bucket=BUCKET, Key=result_filename, PartNumber=last_part_num, UploadId=upload_id, Body=last_part) | |
logging.warning("Setup local part #{} from {} small files, and got response: {}".format(last_part_num, len(small_parts), resp)) | |
parts_mapping.append({'ETag': resp['ETag'][1:-1], 'PartNumber': last_part_num}) | |
return parts_mapping | |
def complete_concatenation(s3, result_filename, upload_id, parts_mapping): | |
if len(parts_mapping) == 0: | |
resp = s3.abort_multipart_upload(Bucket=BUCKET, Key=result_filename, UploadId=upload_id) | |
logging.warning("Aborted concatenation for file {}, with upload id #{} due to empty parts mapping".format(result_filename, upload_id)) | |
else: | |
resp = s3.complete_multipart_upload(Bucket=BUCKET, Key=result_filename, UploadId=upload_id, MultipartUpload={'Parts': parts_mapping}) | |
logging.warning("Finished concatenation for file {}, with upload id #{}, and parts mapping: {}".format(result_filename, upload_id, parts_mapping)) | |
if __name__ == "__main__": | |
parser = argparse.ArgumentParser(description="S3 file combiner") | |
parser.add_argument("--bucket", help="base bucket to use") | |
parser.add_argument("--folder", help="folder whose contents should be combined") | |
parser.add_argument("--output", help="output location for resulting merged files, relative to the specified base bucket") | |
parser.add_argument("--suffix", help="suffix of files to include in the combination") | |
parser.add_argument("--filesize", type=int, help="max filesize of the concatenated files in bytes") | |
args = parser.parse_args() | |
logging.warning("Combining files in {}/{} to {}/{}, with a max size of {} bytes".format(BUCKET, args.folder, BUCKET, args.output, args.filesize)) | |
BUCKET = args.bucket | |
run_concatenation(args.folder, args.output, args.suffix, args.filesize) |
from datetime import datetime | |
import combineS3Files as combiner | |
from multiprocessing import Pool | |
def folders_at_level(base_folder, level): | |
# This function returns all of the S3 folders at a given depth level | |
# underneath the base folder. | |
# This allows a list to be built up of folders that should have their | |
# contents concatenated. | |
# Example: level --> 1 2 3 | |
# | | | | |
# base_folder/a/b/c | |
s3 = combiner.new_s3_client() | |
return {'/'.join(k[0].split('/')[:level+1]) for k in combiner.collect_parts(s3, base_folder, "")} | |
def rollup(input_folder): | |
# parallel map function only takes 1 arg | |
combiner.run_concatenation(input_folder, "pythonrollup/{}/all.json".format(input_folder), "") | |
if __name__ == '__main__': | |
print("Start: {}".format(datetime.now())) | |
folders_to_rollup = folders_at_level("split-2015-07-06", 3) | |
print("Folders: {}".format(folders_to_rollup)) | |
print("Finished Getting S3 Listing: {}".format(datetime.now())) | |
pool = Pool(processes=128) | |
pool.map(rollup, folders_to_rollup, 200) | |
print("End: {}".format(datetime.now())) |
I am new to this and I have really tried to get this working. I have 261 95MB files that i uploaded with a script to my S3 bucket. Now I need to to combine them back into 1 single file.
If I put a filesize of less than the 25GB single file size, the script works but I get several files instead of 1.
If I run the following command, which sets the max file size of the output file big enough to include all the parts, it doesn't do anything.
I think I may be missing the point of this code...
python combineOnS3.py --bucket vanillalv83vmwithfnbongpharma --folder splitfiles --output LV_Local_Demo_.vmdk --filesize 300000000000
I would like some answers on my above comment, but my friend just told me of the new aws cli command, and it uploaded my 23 GB file like a charm no problems...
aws s3 cp ./<file-to-upload.extension> s3://<bucket_name>/<filename-to-save-uploadedfile-as.extension
just ran this in a git bash terminal window on my windows machine. :)
I created a python lib and cli tool that does this based around the code in this gist. It can be found here https://github.com/xtream1101/s3-concat
Do you have an example where the s3 bucket name and folder or path are filled in? I'm not clear on what rows where that information needs to be manually typed in to the code.
Thanks great utility.
Your file size is exceeding max_filesize.
check this -
def chunk_by_size(parts_list, max_filesize):
grouped_list = []
current_list = []
current_size = 0
for p in parts_list:
if current_size + p[1] > max_filesize:
grouped_list.append(current_list)
current_list = []
current_size = 0
current_size += p[1]
current_list.append(p)
return grouped_list
I created a python lib and cli tool that does this based around the code in this gist. It can be found here https://github.com/xtream1101/s3-concat
I used this and it works perfectly. Thank you so much @xtream1101 :)
I have WAV files stored in S3 bucket which I created from Media Stream recording through React JS. I got the blob of the recording, then converted that blob to base64 string and from that string I created a buffer and then converted that buffer to a WAV file and stored in S3. Now I want to concatenate all those stored WAV files inside my lambda function using NodeJS. Since there is a 500MB limitations in Lambda function so I don't want to store in /tmp and directly upload the concatenated file into S3 bucket. Can anyone help in this? I have tried to concatenate buffer array which I received for every WAV file fetched from S3 but the audio is only coming from 1st audio i.e if I am concatenating 4 audio files only the first audio sound is played.
@vjkholiya123, This gist as well as my s3-concat python just takes the bytes of one file and append it to another. This type of concatenation only works for certain files.
The reason you are only hearing the first audio file is that most files have a start and an end to them. So in your case once the first audio file is done playing, it sees the ending bytes and thinks its done (no more audio).
To combine multiple audio files together you will have to use some other tool like ffmpeg or similar to convert and merge them correctly.
Not sure if you are looking to create one large single playable audio file or just trying to condense data, if the later then I am also working on a python library/cli tool called s3-tar which can tar or tar.gz many files into an archive.
@xtream1101, Thanks for your response. I am trying the create a single WAV file from multiple WAV files. I am able to use SOX in lambda function but the problem in lambda function is the 500MB /tmp storage and my WAV files are way larger than it. By using SOX I am able to concat the WAV files by first downloading the individual WAV files from bucket and storing them into /tmp storage and then running SOX command over those WAV files and storing the output in /tmp storage only and then uploading it to S3.
But I don't want to store in /tmp storage as it is very less for me so I tried concatenating the buffer data got while downloading the WAV files.
There are 2 solutions for this that I see,
- Do not write the files to disk, and keep in memory since lambdas have a max of 3GB
- If 3 GB is still not enough space, then I would suggest you move this process to a fargate task which has much larger disk/memory options.
does this work for MP4 files??
I am using python 3.7 to concatenate the files. Getting below error with this part of code:
len(filter(lambda x: x[0].endswith(suffix), _list_all_objects_with_size(s3, folder)))
Traceback (most recent call last):
File "<stdin>", line 1, in <module>
TypeError: object of type 'filter' has no len()
Any help/thoughts please?
Really really like this, helped me out a lot, have been looking into using multipart upload to do the heavy lifting and this does it perfectly 👍
I am using python 3.7 to concatenate the files. Getting below error with this part of code:
len(filter(lambda x: x[0].endswith(suffix), _list_all_objects_with_size(s3, folder)))
Traceback (most recent call last): File "<stdin>", line 1, in <module> TypeError: object of type 'filter' has no len()
Any help/thoughts please?
I think filter is a generator, so doesn't actually have a length. You can cast it as a list where the parts list filter is defined to solve this
Hi,
You have converted jason, can you tell me how you are going to insert in dynamo db
Hi, I am trying to combine multiple csv files with each file having the headers. While combining this files, the header is occurring multiple times treating it as a data. How can I combine the files such that the header appears only once at the top ??
is there an option to skip the header line or first line of the file? I think if there is an option to skip the header line, it will make s3_concat even better or perfect.
Hello friends any one know about AWS download file from s3 file using python script please ping me 7338320090