Skip to main content

Universal character encoding detector

Project description

chardet-rust

Universal character encoding detector — Rust-powered fork of chardet 7.0.

License: LGPL--2.1--or--later PyPI

[!NOTE] This is a fork of the chardet 7.0 Rust rewrite. It is published as chardet-rust on PyPI and is not an official release of the upstream chardet project.

[!WARNING] The upstream chardet 7.0 rewrite is an AI experiment and is not an official upstream replacement.

Performance (from upstream chardet 7.0)

98.1% accuracy on 2,510 test files. 43x faster than chardet 6.0.0 and 6.8x faster than charset-normalizer. Language detection for every result. LGPL licensed.

chardet 7.0 (Rust core) chardet 6.0.0 charset-normalizer
Accuracy (2,510 files) 98.1% 88.2% 78.5%
Speed 546 files/s 13 files/s 80 files/s
Language detection 95.1% -- --
Peak memory 26.2 MiB 29.5 MiB 101.2 MiB
Streaming detection yes yes no
Encoding era filtering yes no no
Supported encodings 99 84 99
License LGPL LGPL MIT

Installation

pip install chardet-rust

For source builds (or editable local development), install a Rust toolchain as well, because the extension module is built from rust/ with maturin.

Quick Start

import chardet

# Plain ASCII is reported as its superset Windows-1252 by default,
# keeping with WHATWG guidelines for encoding detection.
chardet.detect(b"Hello, world!")
# {'encoding': 'Windows-1252', 'confidence': 1.0, 'language': 'en'}

# UTF-8 with typographic punctuation
chardet.detect("It\u2019s a lovely day \u2014 let\u2019s grab coffee.".encode("utf-8"))
# {'encoding': 'utf-8', 'confidence': 0.99, 'language': 'es'}

# Japanese EUC-JP
chardet.detect("これは日本語のテストです。文字コードの検出を行います。".encode("euc-jp"))
# {'encoding': 'euc-jis-2004', 'confidence': 1.0, 'language': 'ja'}

# Get all candidate encodings ranked by confidence
text = "Le café est une boisson très populaire en France et dans le monde entier."
results = chardet.detect_all(text.encode("windows-1252"))
for r in results:
    print(r["encoding"], r["confidence"])
# windows-1252 0.44
# iso-8859-15 0.44
# mac-roman 0.42
# cp858 0.42

Streaming Detection

For large files or network streams, use UniversalDetector to feed data incrementally:

from chardet import UniversalDetector

detector = UniversalDetector()
with open("unknown.txt", "rb") as f:
    for line in f:
        detector.feed(line)
        if detector.done:
            break
result = detector.close()
print(result)

Encoding Era Filtering

Restrict detection to specific encoding eras to reduce false positives:

from chardet import detect_all
from chardet.enums import EncodingEra

data = "Москва является столицей Российской Федерации и крупнейшим городом страны.".encode("windows-1251")

# All encoding eras are considered by default — 4 candidates across eras
for r in detect_all(data):
    print(r["encoding"], round(r["confidence"], 2))
# windows-1251 0.5
# mac-cyrillic 0.47
# kz-1048 0.22
# ptcp154 0.22

# Restrict to modern web encodings — 1 confident result
for r in detect_all(data, encoding_era=EncodingEra.MODERN_WEB):
    print(r["encoding"], round(r["confidence"], 2))
# windows-1251 0.5

CLI

chardetect somefile.txt
# somefile.txt: utf-8 with confidence 0.99

chardetect --minimal somefile.txt
# utf-8

# Pipe from stdin
cat somefile.txt | chardetect

What's in chardet 7.0 (upstream)

  • Rust reimplementation of the detector core — the full detection pipeline is implemented in rust/src and exposed to Python via chardet_rs._chardet_rs (PyO3)
  • Python API compatibility layerdetect(), detect_all(), UniversalDetector, and chardetect keep the familiar chardet API while delegating execution to Rust
  • 12-stage detection pipeline — BOM detection, structural probing, byte validity filtering, and bigram statistical models are now executed in native code
  • 43x faster than chardet 6.0.0, 6.8x faster than charset-normalizer
  • 98.1% accuracy — +9.9pp vs chardet 6.0.0, +19.6pp vs charset-normalizer
  • Language detection — 95.1% accuracy across 49 languages, returned with every result
  • 99 encodings — full coverage including EBCDIC, Mac, DOS, and Baltic/Central European families
  • EncodingEra filtering — scope detection to modern web encodings, legacy ISO/Mac/DOS, mainframe, or all
  • Thread-safe detection callsdetect() and detect_all() are safe to call concurrently; free-threaded execution is covered in CI for Python 3.13t

License Discussion

There is an active licensing dispute around the upstream chardet 7.0 AI-assisted rewrite.

Timeline

  • On March 4, 2026, issue #327 was opened by a user identifying as Mark Pilgrim (original chardet author), arguing that relicensing from LGPL to MIT is not permitted.
  • On March 6, 2026, The Register article reported the dispute and included statements from multiple people in the OSS ecosystem.

Core Disagreement

  • Relicensing claim: maintainers stated the new version is a sufficiently new implementation and can be MIT-licensed.
  • Derivative-work claim: critics argue the rewrite remains derivative of prior LGPL work because of project continuity, prior code exposure, and intentional API/behavior compatibility.
  • Clean-room dispute: one side treats AI-assisted regeneration plus low similarity metrics as evidence of independence; the other side argues that AI training provenance and maintainer prior exposure weaken clean-room arguments.

Points Raised in Public Discussion

  • Similarity analysis (for example, references to JPlag comparisons) was cited as evidence that 7.0 differs structurally from prior versions.
  • Counterarguments focused less on line-by-line similarity and more on copyright/licensing doctrine for derivative works.
  • Broader concerns were raised about whether AI-assisted rewrites could undermine copyleft obligations in practice.
  • The Register also framed this as part of a larger unresolved legal question: how copyright and licensing apply when code is heavily AI-assisted.

Current Status

  • The disagreement is public and unresolved.
  • This repository includes this summary for transparency and context.
  • If licensing compliance is material to your use case, obtain legal advice before adoption.

This section is informational only and is not legal advice.

License

LGPL

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

chardet_rust-0.1.8.tar.gz (116.9 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

chardet_rust-0.1.8-cp314-cp314-macosx_11_0_arm64.whl (344.5 kB view details)

Uploaded CPython 3.14macOS 11.0+ ARM64

File details

Details for the file chardet_rust-0.1.8.tar.gz.

File metadata

  • Download URL: chardet_rust-0.1.8.tar.gz
  • Upload date:
  • Size: 116.9 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.14.0

File hashes

Hashes for chardet_rust-0.1.8.tar.gz
Algorithm Hash digest
SHA256 ec790475caa70bcece02f6a45fc499db9f581e33e03105508ddad04f6b037c42
MD5 8eef6b4ca6cd5fc033cd53ec9e1b42a2
BLAKE2b-256 a94e4f04e1679edf04a71b6673a96943c87d3ee3fd0fec7e42ac4e5c41928209

See more details on using hashes here.

File details

Details for the file chardet_rust-0.1.8-cp314-cp314-macosx_11_0_arm64.whl.

File metadata

File hashes

Hashes for chardet_rust-0.1.8-cp314-cp314-macosx_11_0_arm64.whl
Algorithm Hash digest
SHA256 221db4ead1527c81d8c1eab1f5b92d860e667e764c9bb107538d620042b96ef9
MD5 cb7d0bf054e1e64b1d1a46f6c62f6129
BLAKE2b-256 78ce6c9d6d35934037a1cfa0674f64bc99ddf3ae4273a580a6b465ccf61ccf82

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page