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CI PyPI version Python ≥3.9 License

pyofiles

Fast, Rust-powered file operations for Python. Drop-in replacements for os.walk, os.listdir, and glob.glob -- built on parallel directory walkers for maximum speed.

Install

uv add pyofiles

or with pip:

pip install pyofiles

CLI

pyofiles includes a command-line interface. Run directly with uvx:

uvx pyofiles find . --ext .py --modified-after 7d

Or install globally with uv tool:

uv tool install pyofiles

Version

pyofiles --version
pyofiles -v

You can also check the version from Python:

import pyofiles
print(pyofiles.__version__)

Examples

# Walk a directory, showing only Python files
pyofiles walk ./src --ext .py --skip-hidden

# Long format: type, size, modified time, path
pyofiles walk ./src --ext .py -l

# Walk with name and size filters
pyofiles walk ./src --names main utils --min-size 0.001

# Find files by name substring
pyofiles find ./data --names report invoice --ext .pdf

# Find files modified in the last 7 days
pyofiles find ./project --ext .py --modified-after 7d

# Find files created before a specific date
pyofiles find ./logs --ext .log --created-before 2024-06-01

# Find large files modified recently
pyofiles find ./data --ext .csv --min-size 100 --modified-after 24h

# Find by size alone
pyofiles find . --min-size 500

# Stop after the first match (fast lookups in huge trees)
pyofiles find ./drawings --names P-1042 --limit 1

# Tune walker threads (more helps on network drives)
pyofiles find //server/share --ext .pdf --threads 16

# Glob pattern matching (with time/size filters)
pyofiles glob ./project "**/*.rs"
pyofiles glob ./project "**/*.py" --modified-after 7d --max-depth 3

# List directory contents (with filters)
pyofiles ls ./some/dir -l
pyofiles ls ./src --ext .py --skip-hidden

# Index files by stem (with time filters)
pyofiles index ./src --ext .py .pyi .pyc
pyofiles index ./src --ext .py --created-after 2024-01-01

# Disk usage analysis (with extension/time/name filters)
pyofiles du ./project --depth 2 --top 10
pyofiles du ./project --ext .py --modified-after 30d
pyofiles du ./project --names test --ext .py

# NTFS MFT fast path (Windows, elevated shell, local NTFS volume)
pyofiles du C:\ --mft --depth 2 --top 20
pyofiles find C:\Users --mft --ext .mp4 --min-size 500
pyofiles walk C:\projects --mft --ext .py

# JSON output (works with all commands, pipe to jq)
pyofiles find ./src --ext .py --json
pyofiles du . --json | jq '.entries[:5]'

Time formats

Time arguments (--modified-after, --modified-before, --created-after, --created-before) accept:

Format Example Meaning
Relative duration 7d, 24h, 30m, 1w ago from now
ISO date 2024-03-15 midnight on that date
ISO datetime 2024-03-15T10:30:00 specific moment
Unix timestamp 1709251200 raw epoch seconds

Filter availability

All filters are available across commands where they make sense:

Filter walk find ls glob index du
--ext yes yes yes yes (required) yes
--names yes yes yes yes yes
--min/max-size yes yes yes yes yes yes
--skip-hidden yes yes yes yes yes yes
--max-depth yes yes yes yes
time filters yes yes yes yes yes yes
--limit yes
--threads yes yes yes yes yes
--mft yes yes no no no yes

Python API

walk(directory, extensions=None, skip_hidden=False, max_depth=None, names=None, min_size_mb=None, max_size_mb=None, modified_after=None, modified_before=None, created_after=None, created_before=None, threads=None, mft=False)

Parallel recursive directory walk. Returns list[FileEntry].

When any filter is given, only matching files are returned; directories are omitted. Without filters, files and directories are both included.

import pyofiles

# Walk everything
entries = pyofiles.walk("/path/to/dir")

# Only Python files
entries = pyofiles.walk("/path", extensions=[".py"])

# Files modified in the last 24 hours
import time
recent = pyofiles.walk("/path", modified_after=time.time() - 86400)

# Walk with name and size filters
entries = pyofiles.walk("/path", names=["test"], min_size_mb=0.01)

for e in entries:
    if e.is_file:
        print(f"{e.name} ({e.size} bytes)")

find(directory, names=None, extensions=None, min_size_mb=None, max_size_mb=None, skip_hidden=False, max_depth=None, modified_after=None, modified_before=None, created_after=None, created_before=None, limit=None, threads=None, mft=False)

Search for files by name substrings, extensions, size, and time. Accepts multiple substrings -- a file matches if its name contains ANY of them (case-insensitive).

limit=N stops the search as soon as N matches are found, which makes single-file lookups in huge trees return almost immediately. Which matches are returned when the limit truncates is unspecified.

# Find files containing "report" or "invoice" in the name
results = pyofiles.find("/data", names=["report", "invoice"])

# Find large videos
results = pyofiles.find("/media", extensions=[".mp4", ".avi"], min_size_mb=100)

# Combine: name + extension + size
results = pyofiles.find("/docs", names=["2024"], extensions=[".pdf"], max_size_mb=50)

# Find recently modified Python files
results = pyofiles.find("/src", extensions=[".py"], modified_after=time.time() - 7*86400)

# Find files created in a date range
results = pyofiles.find("/logs", names=["error"],
                        created_after=1709251200, created_before=1711929600)

# Find by size alone
results = pyofiles.find("/data", min_size_mb=500)

# First match only: stops walking as soon as it is found
results = pyofiles.find("/drawings", names=["P-1042"], limit=1)

list_dir(directory, extensions=None, names=None, min_size_mb=None, max_size_mb=None, skip_hidden=False, modified_after=None, modified_before=None, created_after=None, created_before=None)

Non-recursive single-directory listing. Returns list[FileEntry] sorted by name.

entries = pyofiles.list_dir("/path")

# List only Python files, skip hidden
entries = pyofiles.list_dir("/src", extensions=[".py"], skip_hidden=True)

# List recently modified files
entries = pyofiles.list_dir("/data", modified_after=time.time() - 86400)

index(directory, extensions, skip_hidden=False, max_depth=None, names=None, min_size_mb=None, max_size_mb=None, modified_after=None, modified_before=None, created_after=None, created_before=None, threads=None)

Build a file index grouped by filename stem. Useful for finding related files with different extensions.

If two files share the same stem and extension (e.g. in different subdirectories), the lexicographically smallest full path is kept, so results are deterministic.

idx = pyofiles.index("/src", extensions=[".py", ".pyi", ".pyc"])
# {"main": {".py": "/src/main.py", ".pyc": "/src/__pycache__/main.pyc"}}

# Index only recently modified files
idx = pyofiles.index("/src", extensions=[".py"], modified_after=time.time() - 7*86400)

# Index with depth limit
idx = pyofiles.index("/project", extensions=[".py"], max_depth=3)

glob(directory, pattern, skip_hidden=False, max_depth=None, min_size_mb=None, max_size_mb=None, modified_after=None, modified_before=None, created_after=None, created_before=None, threads=None)

Parallel glob pattern matching. Returns list[str] of full paths.

Patterns with a literal directory prefix (e.g. src/**/*.py) start the walk at that directory instead of scanning the whole tree.

paths = pyofiles.glob("/project", "**/*.py")
paths = pyofiles.glob("/project", "src/**/*.{rs,toml}")

# Glob with time filter
paths = pyofiles.glob("/project", "**/*.py", modified_after=time.time() - 7*86400)

# Glob with size filter
paths = pyofiles.glob("/data", "**/*.csv", min_size_mb=10)

disk_usage(directory, depth=1, top=20, skip_hidden=False, extensions=None, names=None, min_size_mb=None, max_size_mb=None, modified_after=None, modified_before=None, created_after=None, created_before=None, threads=None, mft=False)

Analyze disk space usage by directory. Returns a DiskUsage object.

usage = pyofiles.disk_usage("/home", depth=2, top=10)
print(f"Total: {usage.total_size_gb:.2f} GB across {usage.total_files} files")
for entry in usage.entries:
    print(f"  {entry.path}: {entry.size_mb:.1f} MB ({entry.file_count} files)")

# Disk usage for Python files only
usage = pyofiles.disk_usage("/project", extensions=[".py"])

# Disk usage of recently modified files
usage = pyofiles.disk_usage("/project", modified_after=time.time() - 30*86400)

# Disk usage of test files
usage = pyofiles.disk_usage("/project", names=["test"], extensions=[".py"])

MFT fast path (Windows)

walk, find, and disk_usage accept mft=True (CLI: --mft) on Windows. Instead of walking directories, pyofiles then reads the volume's NTFS Master File Table directly through a raw volume handle -- the same approach WizTree and Everything use. One pass over the MFT yields the metadata of every file on the volume, which is dramatically faster than directory traversal for large subtrees or whole drives.

# Whole-drive usage in seconds instead of minutes
usage = pyofiles.disk_usage("C:\\", mft=True, depth=2, top=20)

# Volume-wide name lookups, Everything-style
hits = pyofiles.find("C:\\", names=["report_2024"], extensions=[".pdf"], mft=True)

All filters, return types, and result shapes match the walk backend. It is always an explicit opt-in and never enabled automatically, because the requirements and semantics differ:

  • Requirements: administrator privileges and a local NTFS volume. Without them an OSError explains what is missing. UNC and network paths are rejected. On non-Windows builds mft=True raises ValueError.
  • Whole-volume scan: the MFT is read for the entire volume and results are filtered to the requested subtree, so cost is proportional to the volume's total file count, not the subtree's. Huge wins for big trees; overkill for scanning a small folder.
  • Hard links: every hard link appears once per name, exactly like a directory walker sees them.
  • Sizes: logical sizes of the unnamed data stream, matching os.stat().st_size. Alternate data streams are not counted.
  • Snapshot semantics: reads the on-disk state. Writes from the last few seconds may not be visible yet, and results are a point-in-time snapshot of the volume.
  • Access: raw volume reads bypass file ACLs, so mft=True can return entries inside directories a normal walk cannot open.
  • Reparse points: symlinks and junctions are listed, not followed.
  • Paths: results always use absolute canonical paths (e.g. C:\Users\...), regardless of how the directory argument was spelled.
  • skip_hidden uses the NTFS hidden attribute plus dot-prefixed names, and hides everything beneath a hidden directory, like the walker does.
  • NTFS metadata files ($MFT, $LogFile, $Extend, ...) are excluded, matching what directory enumeration shows.

Types

FileEntry

Returned by walk, find, list_dir.

Attribute Type
path str
name str
is_file bool
is_dir bool
size int
extension str
modified float or None
created float or None

Timestamps are unix epoch seconds. Use datetime.fromtimestamp(entry.modified) to convert. created may be None on Linux systems that don't support creation time.

SizeEntry

Returned inside DiskUsage.entries.

Attribute Type
path str
size int
file_count int
size_mb float
size_gb float

DiskUsage

Returned by disk_usage.

Attribute Type
entries list[SizeEntry]
total_size int
total_files int
total_size_mb float
total_size_gb float

Behavior notes

  • Hidden files: skip_hidden skips dot-prefixed names everywhere, and also files with the hidden attribute on Windows.
  • Creation time: on filesystems that do not support creation time (some Linux setups), created_after/created_before match no files. FileEntry.created is None there.
  • Unreadable metadata: when a size or time filter is active, files whose metadata cannot be read are excluded.
  • Result order: walk, find, and glob run in parallel and return results in no particular order. list_dir is sorted by name.

Performance

Every recursive operation runs on the ignore crate's parallel directory walker (the same engine ripgrep uses), with metadata taken from the directory read itself wherever the platform provides it (free on Windows). Bindings via PyO3. Typically 5-50x faster than equivalent Python code, especially on large directories and network drives. Wheels are abi3: one wheel per platform covers Python 3.9+.

License

MIT

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Fast, Rust-powered file operations for Python

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