114 lines
5 KiB
Markdown
114 lines
5 KiB
Markdown
# How to use LargeFiles
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The functions [save_model][great_ai.use_model] and [@use_model][great_ai.use_model] wrap LargeFile instances. Hence, besides configuring [LargeFile](/reference/large-file), users have few reasons to use LargeFiles directly.
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## Motivation
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Often, especially when working with data-heavy applications, large files can proliferate in a repository. Version controlling them is an obvious next step. However, GitHub's git LFS implementation [doesn't support deleting](https://docs.github.com/en/repositories/working-with-files/managing-large-files/removing-files-from-git-large-file-storage#git-lfs-objects-in-your-repository) large files, making it easy for them to eat-up the LFS quota and explode the size of your repos.
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[DVC](https://dvc.org/) is a viable alternative; however, it requires users to learn to use one more CLI tool.
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??? note "Using LargeFile-s directly (usually not needed)"
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LargeFile doesn't require users to learn too much new. It is a nearly exact copy of Python's built-in `open()` function, with which users are undoubtedly already familiar.
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## Simple example
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```python
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from great_ai.large_file import LargeFileS3
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LargeFileS3.configure_credentials({
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"aws_region_name": "your_region_like_eu-west-2",
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"aws_access_key_id": "YOUR_ACCESS_KEY_ID",
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"aws_secret_access_key": "YOUR_VERY_SECRET_ACCESS_KEY",
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"large_files_bucket_name": "create_a_bucket_and_put_its_name_here",
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})
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# Creates a new version and deletes the older version
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# leaving the three most recently used intact
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with LargeFileS3("test.txt", "w", keep_last_n=3) as f:
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for i in range(100000):
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f.write('test\n')
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# The latest version is returned by default
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# but an optional `version` keyword argument can be provided as well
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with LargeFileS3("test.txt", "r") as f: #(1)
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print(f.readlines()[0])
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```
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1. The latest version is already in the local cache; no download is required.
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### More details
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`LargeFile` behaves like an opened file (in the background, it is a temp file after all). Binary reads and writes are supported along with the [different keywords `open()` accepts](https://docs.python.org/3/library/functions.html#open){ target=_blank }.
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The local cache can be configured with these properties:
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```python
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LargeFileS3.cache_path = Path('.cache')
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LargeFileS3.max_cache_size = "30 GB"
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```
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#### I only need a path
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In case you only need a path to the (proxy of the) remote file, this pattern can be applied:
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```python
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path_to_model = LargeFileS3("folder-of-my-bert-model", version=31).get()
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```
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> This will first download the file/folder into your local cache folder. Then, it returns a `Path` object to the local version. Which can be turned into a string with `str(path_to_model)`.
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The same approach works for uploads:
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```python
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LargeFileS3("folder-of-my-bert-model").push('path_to_local/folder_or_file')
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```
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> This way, both regular files and folders can be handled. The uploaded file is called **folder-of-my-bert-model**, the local name is ignored.
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Lastly, all version of the remote object can be deleted by calling `LargeFileS3("my-file").delete()`. It will still reside in your local cache afterwards; its deletion will happen next time your local cache has to be pruned.
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## From the command-line
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The main reason for using the `large-file` or `python3 -m great_ai.large_file` commands is to upload or download models from the terminal. For example, when building a docker image, it is best practice to cache the referred models.
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### Setup
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Create an .ini file (or use *~/.aws/credentials*). It may look like this:
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```ini
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aws_region_name = your_region_like_eu-west-2
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aws_access_key_id = YOUR_ACCESS_KEY_ID
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aws_secret_access_key = YOUR_VERY_SECRET_ACCESS_KEY
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large_files_bucket_name = my_large_files
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```
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### Upload some files
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```sh
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large-file --backend s3 --secrets secrets.ini \
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--push my_first_file.json folder/my_second_file my_folder
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```
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> Only the filename is used as the S3 name; the rest of the path is ignored.
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!!! important "Using MongoDB"
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The possible values for `--backend` are `s3`, `mongo`, and `local`. The latter doesn't need credentials. It only versions and stores your files in a local folder. MongoDB, on the other hand, requires a `mongo_connection_string` and a `mongo_database` to be specified. For storing large files, it uses the [GridFS](https://www.mongodb.com/docs/manual/core/gridfs){ target=_blank } specification.
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### Download some files to the local cache
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This can be useful when building a Docker image, for example. This way, the files can already reside inside the container and need not be downloaded later.
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```sh
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large-file --backend s3 --secrets ~/.aws/credentials \
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--cache my_first_file.json:3 my_second_file my_folder:0
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```
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> Versions may be specified by using `:`-s.
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### Delete remote files
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```sh
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large-file --backend s3 --secrets ~/.aws/credentials \
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--delete my_first_file.json
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```
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