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Text encoding type classifier

Project description

whatenc

PyPI License

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Text encoding type classifier.

whatenc is a command-line tool that identifies the encoding or transformation of a given string or file.

The model is trained on text samples from the English, Greek, Russian, Hebrew, and Arabic Wikipedia corpora, chosen to represent a diverse set of writing systems (Latin, Greek, Cyrillic, Hebrew, and Arabic scripts). Each line is encoded using multiple encoding schemes to generate labeled examples.

How It Works

whatenc uses a character-level 1D Convolutional Neural Network trained directly on bigram token sequences.

Each training sample is represented as:

  • bigram of characters, padded to a fixed maximum length
  • a true length scalar feature, allowing the network to learn relative string lengths

This neural approach achieves near-perfect classification accuracy after only a few epochs.

Supported Encodings

whatenc currently recognizes the following formats and transformations:

Category Encodings
Base encodings base32, base64, base85, hex, url
Text ciphers morse
Compression gzip64
Hash digests md5, sha1, sha224, sha256, sha384, sha512

Installation

You can install whatenc using pipx:

pipx install whatenc

Usage

API

from whatenc import Classifier

classifier = Classifier()
print(classifier.predict("hello, world!")) # returns: [('plain', 1.0), ('md5', 7.686760500681856e-26), ('base85', 2.864714171264974e-35)]

CLI

whatenc hello
whatenc samples.txt

Examples

[+] input: ZW5jb2RlIHRvIGJhc2U2NCBmb3JtYXQ=
   [~] top guess   = base64
      [=] base64   = 1.000
      [=] base85   = 0.000
      [=] plain    = 0.000

[+] input: hello
   [~] top guess   = plain
      [=] plain    = 1.000
      [=] md5      = 0.000
      [=] base64   = 0.000

[*] loading model
[+] input: האקדמיה ללשון העברית
   [~] top guess   = plain
      [=] plain    = 1.000
      [=] base64   = 0.000
      [=] base85   = 0.000

[*] loading model
[+] input: bfa99df33b137bc8fb5f5407d7e58da8
   [~] top guess   = md5
      [=] md5      = 0.999
      [=] sha1     = 0.001
      [=] sha224   = 0.000

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