Easily turn large sets of image urls to an image dataset. Can download, resize and package 100M urls in 20h on one machine.
Also supports saving captions for url+caption datasets.
pip install img2dataset
Example of datasets to download with example commands are available in the dataset_examples folder. In particular:
- mscoco 600k image/text pairs that can be downloaded in 10min
- cc3m 3M image/text pairs that can be downloaded in one hour
- cc12m 12M image/text pairs that can be downloaded in five hour
- laion400m 400M image/text pairs that can be downloaded in 3.5 days
- laion5B 5B image/text pairs that can be downloaded in 7 days using 10 nodes
- laion-aesthetic Laion aesthetic is a 120M laion5B subset with aesthetic > 7 pwatermark < 0.8 punsafe < 0.5
- laion-art Laion aesthetic is a 8M laion5B subset with aesthetic > 8 pwatermark < 0.8 punsafe < 0.5
- laion-high-resolution Laion high resolution is a 170M resolution >= 1024x1024 subset of laion5B
- laion-face Laion face is the human face subset of LAION-400M for large-scale face pretraining. It has 50M image-text pairs.
For all these examples, you may want to tweak the resizing to your preferences. The default is 256x256 with white borders. See options below.
First get some image url list. For example:
echo 'https://placekitten.com/200/305' >> myimglist.txt
echo 'https://placekitten.com/200/304' >> myimglist.txt
echo 'https://placekitten.com/200/303' >> myimglist.txt
Then, run the tool:
img2dataset --url_list=myimglist.txt --output_folder=output_folder --thread_count=64 --image_size=256
The tool will then automatically download the urls, resize them, and store them with that format:
- output_folder
- 00000
- 000000000.jpg
- 000000001.jpg
- 000000002.jpg
- 00000
or as this format if choosing webdataset:
- output_folder
- 00000.tar containing:
- 000000000.jpg
- 000000001.jpg
- 000000002.jpg
- 00000.tar containing:
with each number being the position in the list. The subfolders avoids having too many files in a single folder.
If captions are provided, they will be saved as 0.txt, 1.txt, ...
This can then easily be fed into machine learning training or any other use case.
Also .json files named 0.json, 1.json,... are saved with these keys:
- url
- caption
- key of the form 000010005 : the first 5 digits are the shard id, the last 4 are the index in the shard
- status : whether the download succeeded
- error_message
- width
- height
- original_width
- original_height
- exif
Also a .parquet file will be saved with the same name as the subfolder/tar files containing these same metadata. It can be used to analyze the results efficiently.
.json files will also be saved with the same name suffixed by _stats, they contain stats collected during downloading (download time, number of success, ...)
Checkout these examples to call this as a lib:
This module exposes a single function download
which takes the same arguments as the command line tool:
- url_list A file with the list of url of images to download. It can be a folder of such files. (required)
- image_size The size to resize image to (default 256)
- output_folder The path to the output folder. (default "images")
- processes_count The number of processes used for downloading the pictures. This is important to be high for performance. (default 1)
- thread_count The number of threads used for downloading the pictures. This is important to be high for performance. (default 256)
- resize_mode The way to resize pictures, can be no, border or keep_ratio (default border)
- no doesn't resize at all
- border will make the image image_size x image_size and add a border
- keep_ratio will keep the ratio and make the smallest side of the picture image_size
- center_crop will keep the ratio and center crop the largest side so the picture is squared
- resize_only_if_bigger resize pictures only if bigger that the image_size (default False)
- upscale_interpolation kind of upscale interpolation used for resizing (default "lanczos")
- downscale_interpolation kind of downscale interpolation used for resizing (default "area")
- encode_quality encode quality from 0 to 100, when using png it is the compression factor from 0 to 9 (default 95)
- encode_format encode format (default jpg)
- jpg jpeg format
- png png format
- webp webp format
- skip_reencode whether to skip reencoding if no resizing is done (default False)
- output_format decides how to save pictures (default files)
- files saves as a set of subfolder containing pictures
- webdataset saves as tars containing pictures
- parquet saves as parquet containing pictures as bytes
- tfrecord saves as tfrecord containing pictures as bytes
- dummy does not save. Useful for benchmarks
- input_format decides how to load the urls (default txt)
- txt loads the urls as a text file of url, one per line
- csv loads the urls and optional caption as a csv
- tsv loads the urls and optional caption as a tsv
- tsv.gz loads the urls and optional caption as a compressed (gzip) tsv.gz
- json loads the urls and optional caption as a json
- parquet loads the urls and optional caption as a parquet
- url_col the name of the url column for parquet and csv (default url)
- caption_col the name of the caption column for parquet and csv (default None)
- number_sample_per_shard the number of sample that will be downloaded in one shard (default 10000)
- extract_exif if true, extract the exif information of the images and save it to the metadata (default True)
- save_additional_columns list of additional columns to take from the csv/parquet files and save in metadata files (default None)
- timeout maximum time (in seconds) to wait when trying to download an image (default 10)
- enable_wandb whether to enable wandb logging (default False)
- wandb_project name of W&B project used (default img2dataset)
- oom_shard_count the order of magnitude of the number of shards, used only to decide what zero padding to use to name the shard files (default 5)
- compute_md5 compute md5 of raw images and store it in metadata (default True)
- distributor choose how to distribute the downloading (default multiprocessing)
- multiprocessing use a multiprocessing pool to spawn processes
- pyspark use a pyspark session to create workers on a spark cluster (see details below)
- subjob_size the number of shards to download in each subjob supporting it, a subjob can be a pyspark job for example (default 1000)
- retries number of time a download should be retried (default 0)
- disable_all_reencoding if set to True, this will keep the image files in their original state with no resizing and no conversion, will not even check if the image is valid. Useful for benchmarks. To use only if you plan to post process the images by another program and you have plenty of storage available. (default False)
- min_image_size minimum size of the image to download (default 0)
- max_aspect_ratio maximum aspect ratio of the image to download (default inf)
- incremental_mode Can be "incremental" or "overwrite". For "incremental", img2dataset will download all the shards that were not downloaded, for "overwrite" img2dataset will delete recursively the output folder then start from zero (default incremental)
- max_shard_retry Number of time to retry failed shards at the end (default 1)
If a first download got interrupted for any reason, you can run again with --incremental "incremental" (this is the default) and using the same output folder , the same number_sample_per_shard and the same input urls, and img2dataset will complete the download.
Img2dataset support several formats. There are trade off for which to choose:
- files: this is the simplest one, images are simply saved as files. It's good for up to 1M samples on a local file system. Beyond that performance issues appear very fast. Handling more than a million files in standard filesystem does not work well.
- webdataset: webdataset format saves samples in tar files, thanks to webdataset library, this makes it possible to load the resulting dataset fast in both pytorch, tensorflow and jax. Choose this for most use cases. It works well for any filesystem
- parquet: parquet is a columnar format that allows fast filtering. It's particularly easy to read it using pyarrow and pyspark. Choose this if the rest of your data ecosystem is based on pyspark. petastorm can be used to read the data but it's not as easy to use as webdataset
- tfrecord: tfrecord is a protobuf based format. It's particularly easy to use from tensorflow and using tf data. Use this if you plan to use the dataset only in the tensorflow ecosystem. The tensorflow writer does not use fsspec and as a consequence supports only a limited amount of filesystem, including local, hdfs, s3 and gcs. It is also less efficient than the webdataset writer when writing to other filesystems than local, losing some 30% performance.
Images can be encoded in jpeg, png or webp, with diffent quality settings.
Here are a few comparisons of space used for 1M images at 256 x 256:
format | quality | compression | size (GB) |
---|---|---|---|
jpg | 100 | N/A | 54.2 |
jpg | 95 | N/A | 29.9 |
png | N/A | 0 | 187.9 |
png | N/A | 9 | 97.7 |
webp | 100 | N/A | 31.0 |
webp | 95 | N/A | 23.8 |
Notes:
- jpeg at quality 100 is NOT lossless
- png format is lossless
- webp at quality 100 is lossless
- same quality scale between formats does not mean same image quality
Whenever feasible, you should pre-filter your dataset prior to downloading.
If needed, you can use:
- --min_image_size SIZE : to filter out images with one side smaller than SIZE
- --max_aspect_ratio RATIO : to filter out images with an aspect ratio greater than RATIO
When filtering data, it is recommended to pre-shuffle your dataset to limit the impact on shard size distribution.
The default values should be good enough for small sized dataset. For larger ones, these tips may help you get the best performance:
- set the processes_count as the number of cores your machine has
- increase thread_count as long as your bandwidth and cpu are below the limits
- I advise to set output_format to webdataset if your dataset has more than 1M elements, it will be easier to manipulate few tars rather than million of files
- keeping metadata to True can be useful to check what items were already saved and avoid redownloading them
To benchmark your system, and img2dataset interactions with it, it may be interesting to enable these options (only for testing, not for real downloads)
- --output_format dummy : will not save anything. Good to remove the storage bottleneck
- --disable_all_reencoding True : will not reencode anything. Good to remove the cpu bottleneck When both these options are enabled, the only bottlenecks left are network related: eg dns setup, your bandwidth or the url servers bandwidth.
Thanks to fsspec, img2dataset supports reading and writing files in many file systems.
To use it, simply use the prefix of your filesystem before the path. For example hdfs://
, s3://
, http://
, or gcs://
.
Some of these file systems require installing an additional package (for example s3fs for s3, gcsfs for gcs).
See fsspec doc for all the details.
If you need specific configuration for your filesystem, you may handle this problem by using the fsspec configuration system that makes it possible to create a file such as .config/fsspec/s3.json
and have information in it such as:
{
"s3": {
"client_kwargs": {
"endpoint_url": "https://some_endpoint",
"aws_access_key_id": "your_user",
"aws_secret_access_key": "your_password"
}
}
}
Which may be necessary if using s3 compatible file systems such as minio. That kind of configuration also work for all other fsspec-supported file systems.
Img2dataset supports several distributors.
- multiprocessing which spawns a process pool and use these local processes for downloading
- pyspark which spawns workers in a spark pool to do the downloading
multiprocessing is a good option for downloading on one machine, and as such it is the default. Pyspark lets img2dataset use many nodes, which makes it as fast as the number of machines. It can be particularly useful if downloading datasets with more than a billion image.
In order to use img2dataset with pyspark, you will need to do this:
pip install pyspark
- use the
--distributor pyspark
option - tweak the
--subjob_size 1000
option: this is the number of images to download in each subjob. Increasing it will mean a longer time of preparation to put the feather files in the temporary dir, a shorter time will mean sending less shards at a time to the pyspark job.
By default a local spark session will be created. You may want to create a custom spark session depending on your specific spark cluster. To do that check pyspark_example.py, there you can plug your custom code to create a spark session, then run img2dataset which will use it for downloading.
To create a spark cluster check the distributed img2dataset tutorial
To enable wandb, use the --enable_wandb=True
option.
Performance metrics are monitored through Weights & Biases.
In addition, most frequent errors are logged for easier debugging.
Other features are available:
- logging of environment configuration (OS, python version, CPU count, Hostname, etc)
- monitoring of hardware resources (GPU/CPU, RAM, Disk, Networking, etc)
- custom graphs and reports
- comparison of runs (convenient when optimizing parameters such as number of threads/cpus)
When running the script for the first time, you can decide to either associate your metrics to your account or log them anonymously.
You can also log in (or create an account) before by running wandb login
.
This tool works very well in the current state for up to 100M elements. Future goals include:
- a benchmark for 1B pictures which may require
- further optimization on the resizing part
- better multi node support
- integrated support for incremental support (only download new elements)
This tool is designed to download pictures as fast as possible. This put a stress on various kind of resources. Some numbers assuming 1350 image/s:
- Bandwidth: downloading a thousand average image per second requires about 130MB/s
- CPU: resizing one image may take several milliseconds, several thousand per second can use up to 16 cores
- DNS querying: million of urls mean million of domains, default OS setting usually are not enough. Setting up a local bind9 resolver may be required
- Disk: if using resizing, up to 30MB/s write speed is necessary. If not using resizing, up to 130MB/s. Writing in few tar files make it possible to use rotational drives instead of a SSD.
With these information in mind, the design choice was done in this way:
- the list of urls is split in K shards. K is chosen such that a shard has a reasonable size on disk (for example 256MB), by default K = 10000
- N processes are started (using multiprocessing process pool)
- each process starts M threads. M should be maximized in order to use as much network as possible while keeping cpu usage below 100%.
- each of this thread download 1 image and returns it
- the parent thread handle resizing (which means there is at most N resizing running at once, using up the cores but not more)
- the parent thread saves to a tar file that is different from other process
This design make it possible to use the CPU resource efficiently by doing only 1 resize per core, reduce disk overhead by opening 1 file per core, while using the bandwidth resource as much as possible by using M thread per process.
Also see architecture.md for the precise split in python modules.
To get the best performances with img2dataset, using an efficient dns resolver is needed.
- knot resolver can run in parallel
- bind resolver is the historic resolver and is mono core but very optimized
Follow the official quick start or run this on ubuntu:
install knot with
wget https://secure.nic.cz/files/knot-resolver/knot-resolver-release.deb
sudo dpkg -i knot-resolver-release.deb
sudo apt update
sudo apt install -y knot-resolver
sudo sh -c 'echo `hostname -I` `hostname` >> /etc/hosts'
sudo sh -c 'echo nameserver 127.0.0.1 > /etc/resolv.conf'
udo systemctl stop systemd-resolved
then start 4 instances with
sudo systemctl start [email protected]
sudo systemctl start [email protected]
sudo systemctl start [email protected]
sudo systemctl start [email protected]
Check it works with
dig @localhost google.com
In order to keep the success rate high, it is necessary to use an efficient DNS resolver. I tried several options: systemd-resolved, dnsmaskq and bind9 and reached the conclusion that bind9 reaches the best performance for this use case. Here is how to set this up on ubuntu:
sudo apt install bind9
sudo vim /etc/bind/named.conf.options
Add this in options:
recursive-clients 10000;
resolver-query-timeout 30000;
max-clients-per-query 10000;
max-cache-size 2000m;
sudo systemctl restart bind9
sudo vim /etc/resolv.conf
Put this content:
nameserver 127.0.0.1
This will make it possible to keep an high success rate while doing thousands of dns queries. You may also want to setup bind9 logging in order to check that few dns errors happen.
Either locally, or in gitpod (do export PIP_USER=false
there)
Setup a virtualenv:
python3 -m venv .env
source .env/bin/activate
pip install -e .
to run tests:
pip install -r requirements-test.txt
then
make lint
make test
You can use make black
to reformat the code
python -m pytest -x -s -v tests -k "dummy"
to run a specific test
cd tests/test_files
bash benchmark.sh
Download crawling at home first part, then:
cd tests
bash large_bench.sh
It takes 3.7h to download 18M pictures
1350 images/s is the currently observed performance. 4.8M images per hour, 116M images per 24h.
downloading 2 parquet files of 18M items (result 936GB) took 7h24 average of 1345 image/s
downloading 190M images from the crawling at home dataset took 41h (result 5TB) average of 1280 image/s
downloading 5.8B images from the laion5B dataset took 7 days (result 240TB), average of 9500 sample/s on 10 machines, technical details