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A Python library providing `aws s3` operations with a boto3-like API.

Project description

boto3-s3

A complete library version of the aws s3 command, with a faithful aws s3 sync at its core. Every subcommand — cp / ls / mb / mv / presign / rb / rm / sync / website — runs in-process from Python, not by shelling out to the CLI. Byte transfers run on the same s3transfer engine as aws s3, so transfer performance keeps pace with the command.

Each command is a method on a single S3 object, taking ordinary keyword arguments; bring a boto3 client when you need a specific profile, region, or endpoint.

Status: early development (pre-1.0) — all subcommands are implemented; the public API may still change. Python: 3.10+ · License: Apache-2.0

Two packages:

  • boto3-s3 — the library. Run aws s3-equivalent operations from Python with your own boto3 clients and credentials.
  • boto3-s3-cli — the boto3-s3 command, a drop-in for aws s3.

Why

Much of aws s3 is easy to do straight from boto3 — a one-off cp or rm is a few lines, and recursive copies or multipart via s3transfer take only a bit more effort. What's genuinely hard is matching aws s3 faithfully: its path and naming rules, recursive and include/exclude semantics, and above all a sync that compares and transfers exactly like the command — fiddly to reproduce and easy to get subtly wrong. The usual fallbacks are shelling out to the aws s3 command and parsing its output, or a partial reimplementation that drifts from it. boto3-s3 is neither: it reproduces aws s3's behavior across the whole command set — sync included — as a library you call directly.

  • A faithful aws s3 sync. Mirror local trees and buckets in any direction — upload, download, or S3-to-S3 — with --delete, the same size/timestamp comparison as aws-cli, include/exclude, and dry-run.
  • Every aws s3 command. cp / ls / mb / mv / presign / rb / rm / website complete the set.
  • A library, not a CLI wrapper. Runs in-process: no subprocess, no scraping stdout, no aws on PATH. You pass boto3 clients directly and get structured, per-item results back — not text to parse.
  • Light enough for a Lambda. The Python runtime already ships boto3 (and its botocore / s3transfer deps), so adding boto3-s3 costs well under a megabyte for the full aws s3 feature set in-process — where bundling aws-cli (250 MB+) overruns the deployment size limit and shelling out isn't practical.
  • Transfer speed on par with aws-cli. Byte transfers use the same engine as aws s3 (s3transfer, or the optional CRT engine), so large transfers run at the same speed — no penalty for being a library.
  • Familiar behavior. Path rules, options, and (for the CLI) exit codes follow aws s3, so what you know from the command carries over.

Install

pip install boto3-s3          # the library
pip install boto3-s3-cli      # the `boto3-s3` command (also installs boto3-s3)

Optional extra — the AWS Common Runtime (CRT) transfer engine and CRT-family checksums:

pip install "boto3-s3[crt]"

Quick start

Create the S3 object once — it holds no connection of its own (nothing to close) and is safe to share across threads — then call what you need:

from boto3_s3 import S3

s3 = S3()

# Sync a directory tree up to S3, removing remote extras (mirror).
s3.sync("./site", "s3://my-bucket/site/", delete=True)

# Copy a single object up or down.
s3.cp("./report.csv", "s3://my-bucket/report.csv")
s3.cp("s3://my-bucket/report.csv", "./report.csv")

# List objects lazily; each item is a FileInfo (key, size, …).
for info in s3.ls("s3://my-bucket/site/", recursive=True):
    print(info.key, info.size)

# Delete everything under a prefix.
s3.rm("s3://my-bucket/tmp/", recursive=True)

# A presigned URL (no request is sent).
url = s3.presign("s3://my-bucket/report.csv", expires_in=900)

For cp / mv / sync the direction is inferred from the two endpoints: local-to-S3 is an upload, S3-to-local a download, S3-to-S3 a copy. A local-to-local pair is rejected, like aws s3.

Sync

sync is the heart of the library — a faithful re-creation of aws s3 sync, callable from Python, in every direction:

s3.sync("./site", "s3://my-bucket/site/")       # upload
s3.sync("s3://my-bucket/site/", "./site")       # download
s3.sync("s3://src/data/", "s3://dest/data/")     # S3-to-S3

It supports the flags you know from the command:

  • delete=True — remove destination entries the source no longer has. Items hidden by a filter stay out of deletion too, exactly like aws s3 sync.
  • compare= — how the source and destination are compared: None (default) uses size + mtime (equivalently AwsCliComparison(), tuned via AwsCliComparison(size_only=True) / (exact_timestamps=True)); True copies everything, False copies nothing; or pass a content strategy like EtagComparison(s3) / ChecksumComparison(s3, src, dest) (wrap either in ParallelCompare(...) to decide on a thread pool).
  • filter= — include/exclude matching; dryrun=True to preview every transfer and deletion first.

The content strategies are opt-in submodule imports — from boto3_s3.etagcompare import EtagComparison / from boto3_s3.checksumcompare import ChecksumComparison (and from boto3_s3.awsclicompare import AwsCliComparison to tune the default). ParallelCompare imports from boto3_s3 itself.

Because it runs in-process, sync hands back structured results that aws s3 can't: on_result fires once per item as the run proceeds, so you know exactly what changed without parsing any output. Each result carries a transfer_type (upload / download / copy / delete) and an outcome (succeeded / failed / warned / skipped):

from boto3_s3 import TransferType, OpOutcome

uploaded = []

def track(r):
    if r.transfer_type is TransferType.UPLOAD and r.outcome is OpOutcome.SUCCEEDED:
        uploaded.append(r.key)

s3.sync("./site", "s3://my-bucket/site/", delete=True, on_result=track)
print(f"{len(uploaded)} files uploaded")

Operations

S3 is the entry point: create one with s3 = S3(), then call the methods below — each mirrors an aws s3 subcommand.

Method aws s3 What it does
ls(target="s3://", *, recursive, page_size, request_payer, bucket_name_prefix, bucket_region) ls List objects and common prefixes under an S3 target — or, at the bare service root, every bucket. Returns a lazy Iterator[FileInfo].
cp(src, dest, *, recursive, filter, dryrun, …, **options) cp Copy bytes (upload / download / S3-to-S3 copy). src / dest may be a path/URI or a stream wrapped in IOStorage / StdioStorage.
mv(src, dest, *, recursive, …, **options) mv cp, then delete each source once its copy succeeds.
sync(src, dest, *, delete, filter, compare, …, **options) sync Recursively synchronize src into dest.
rm(target, *, recursive, filter, dryrun, request_payer, …) rm Delete objects (a single key, a recursive prefix, or the folder-marker sweep).
mb(target, *, tags) mb Create the bucket of target.
rb(target) rb Delete the (empty) bucket of target.
presign(target, *, expires_in=3600, method="get_object") presign Return a presigned URL. No request is sent.
website(target, *, index_document, error_document) website Set the bucket website configuration.

Choosing the client (profile, region, endpoint, cross-account)

A path argument is a str, an os.PathLike, or an S3Storage. A bare "s3://..." string uses the client the S3 instance builds from its own defaults — boto3.client("s3") for a zero-config S3().

For a specific profile, region, or endpoint, hand the S3 object a boto3.Session (and/or an endpoint_url / config); every bare "s3://..." string then inherits it:

import boto3
from boto3_s3 import S3, S3Storage

session = boto3.Session(profile_name="prod", region_name="eu-west-1")
s3 = S3(session=session)
s3.cp("./artifact.tar.gz", "s3://prod-bucket/artifacts/")

When a single operation needs more than one client — a cross-account S3-to-S3 copy is the clearest case — the instance default can't express it. Build each client yourself and wrap the URL in an S3Storage, which is used verbatim with its own client:

s3.cp(
    S3Storage("s3://src-bucket/data/", client=src_client),
    S3Storage("s3://dest-bucket/data/", client=dest_client),
    recursive=True,
)

An S3-compatible endpoint such as MinIO is just a differently-built client — set it on the S3 for every location, or pass a single S3Storage(url, client=minio) when only one side needs it:

minio = boto3.client(
    "s3",
    endpoint_url="http://localhost:9000",
    aws_access_key_id="minioadmin",
    aws_secret_access_key="minioadmin",
)
for info in S3().ls(S3Storage("s3://bucket/", client=minio)):
    print(info.key)

The bucket part of an S3 URI may also be an access-point ARN (plain or Outposts), passed through as the Bucket, like aws s3.

Running operations across threads

An S3 object carries only immutable defaults plus one benign, idempotent cache (the aws_config() reader — concurrent first reads just recompute the same value), so the object itself is safe to share across threads. The catch is building a boto3 client: boto3 documents that a session is not thread-safe, and creating clients concurrently from one session can resolve credentials more than once and can fail while copying the session's shared event hooks. A bare "s3://..." argument builds a fresh client on every call, so firing those operations from many threads at once is exactly that unsupported pattern.

An already-built client is safe to use concurrently — which is why building one up front and sharing it works. Pass a prebuilt client through S3Storage(url, client=client); the threaded calls then create nothing:

import concurrent.futures
import boto3
from boto3_s3 import S3, S3Storage

s3 = S3()
client = boto3.Session(profile_name="prod", region_name="eu-west-1").client("s3")

with concurrent.futures.ThreadPoolExecutor() as pool:
    for path in paths:  # paths: an iterable of pathlib.Path
        dest = S3Storage(f"s3://prod-bucket/{path.name}", client=client)
        pool.submit(s3.cp, str(path), dest)

Alternatively, subclass S3 and override client() to return a single memoized client — then bare "s3://..." strings are concurrency-safe too.

Options

cp / mv / sync take the aws s3 transfer options as snake_case keyword arguments, grouped here by what they control:

  • Metadata & headers: metadata, metadata_directive, copy_props, cache_control, content_type / content_disposition / content_encoding / content_language, expires, website_redirect, guess_mime_type
  • Access & storage class: acl, grants, storage_class, request_payer
  • Encryption: sse, sse_kms_key_id, sse_c / sse_c_key (and the copy-source pair)
  • Integrity & write control: checksum_algorithm, checksum_mode, no_overwrite, case_conflict
  • Glacier: force_glacier_transfer / ignore_glacier_warnings
s3.cp(
    "./photo.jpg",
    "s3://my-bucket/photo.jpg",
    storage_class="STANDARD_IA",
    content_type="image/jpeg",
    metadata={"reviewed": "yes"},
    acl="bucket-owner-full-control",
)

Multipart tuning (thresholds, concurrency, bandwidth, the classic/CRT engine choice) is a TransferConfig passed as transfer_config=; its defaults match aws s3.

Filtering

cp / mv / rm / sync take a filter= that decides which items stay in the operation. The common form is an aws s3-style include/exclude matcher (last match wins, default-include):

from boto3_s3 import GlobFilter

keep = GlobFilter().exclude("*").include("*.tar.gz").compile()
s3.cp("./build", "s3://artifacts/", recursive=True, filter=keep)

filter= also accepts a plain Callable[[FileInfo], bool] for arbitrary per-item gating. sync adds compare= and delete= (True to remove all extras, or a filter to remove only matching ones). They answer different questions: filter= decides which items take part at all, while compare= then decides, for each matched source/destination pair, whether it actually needs copying (by size + mtime, or by content with EtagComparison / ChecksumComparison).

Progress, results, cancellation, dry run

Batch operations stream their per-item outcomes instead of returning a list:

  • on_result(OpResult) — fires once per item as the run proceeds. Each OpResult carries a transfer_type (upload / download / copy / move / delete) and an outcome (succeeded / failed / warned / skipped / dryrun / notice). It is called from worker threads, so keep it fast and non-raising.
  • on_progress(TransferProgress) — byte-level transfer progress (cp / mv / sync; rm moves no bytes).
  • cancel_token — a CancelToken whose cancel() cooperatively stops the run (cp / mv / sync).
  • dryrun=True — reports every would-be action without any mutating call.

Custom backends

cp / mv / sync aren't limited to local paths and S3: a custom Storage subclass — an HTTP service, an archive, an in-memory store — can be one side of a transfer, the other side always S3 (the built-in IOStorage / StdioStorage stream wrappers are this same seam). A backend declares its capabilities, which a transfer pre-checks, failing fast if it needs more.

See docs/storage.md for the Storage contract, capabilities, and a worked example.

Errors

Every failure is a Boto3S3Error subclass — catch the root to catch them all.

Exception Raised when
Boto3S3Error Root of the hierarchy. Carries operation / bucket / key.
ValidationError A supplied value, precondition, or path is invalid.
ConfigurationError Credentials / region / profile / endpoint missing or unresolvable.
NotFoundError The target does not exist (S3 404, local FileNotFoundError).
AccessDeniedError Permission denied (S3 403, local PermissionError).
TransportError Network or local I/O failure (connection, timeout, OSError).
CancelledError Cancelled via CancelToken.
BatchError Raised once at the end of a batch op (cp -r / mv -r / rm -r / sync) when at least one item failed.

BatchError carries summary counts (succeeded / failed / warned / skipped / total); the per-item detail arrives live through on_result.

Debug logging

boto3 / botocore debug logs leak signed headers, signatures, and session tokens. set_stream_logger mirrors boto3.set_stream_logger but redacts those by default:

from boto3_s3 import set_stream_logger

set_stream_logger("botocore")  # credentials masked unless mask_secrets=False

Compatibility

  • Python: 3.10 and later.
  • OS: Linux, macOS, Windows (path-separator and case-sensitivity behavior is matched to aws s3 on each).
  • AWS SDK: boto3 >= 1.28, botocore >= 1.31, s3transfer >= 0.6.2. A few options need a newer SDK and are simply unavailable below it rather than emulated — conditional writes (no_overwrite), the CRC64NVME checksum, the ls bucket-name / bucket-region filters, mb with tags=, and the copy/download source-ETag extras (OpResult.extra_info's {"ETag": ...} needs capture_response=True on an old s3transfer, and its CopySourceIfMatch consistency pin on copies is absent). CRT features need the crt extra. Everything else works at the minimum (docs/overview.md section 2 is the authoritative list).

In short

Every aws s3 operation as an in-process Python call — no subprocess, no stdout to scrape, structured per-item results back.

Contributing

Bug reports, questions, and ideas are welcome on the issue tracker. To work on the code, CONTRIBUTING.md covers local setup (uv), the test suite, and the coding and commit conventions.

License

Apache-2.0. See LICENSE.

Source and issues: https://github.com/izumo-m/boto3-s3.

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