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Library for manipulating the existing tokenizer.

Project description

Tokenizer-Changer

Python script for manipulating the existing tokenizer.

The solution was tested on Llama3-8B tokenizer.


Installation

Installation from PyPI:

pip install tokenizerchanger

Usage

changer = TokenizerChanger(tokenizer, space_sign)

Create the object of TokenizerChanger class that optionally requires an existing tokenizer and space sign, which differs from one tokenizer to another. The tokenizer could be PreTrainedTokenizerFast class from рџ¤— tokenizers library.

changer.load_tokenizer(tokenizer)

If you did not load the tokenizer with TokenizerChanger class declaration, you can load it using this function.

changer.set_space_sign(space_sign)

If you did not set the space sign with TokenizerChanger class declaration, you can set it using this function. Default space sign is Д .

Deletion

changer.delete_tokens(list_of_unwanted_tokens, include_substrings)

Deletes the unwanted tokens from the tokenizer. If include_substrings is True, all token occurrences will be deleted even in other tokens. Defaults to True.

changer.delete_k_least_frequent_tokens(k=1000)
changer.delete_k_least_frequent_tokens(k=1000, exclude=list_of_tokens)

Deletes k most frequent tokens. The exclude argument stands for tokens that will be ignored during the deletion of the least frequent tokens.

changer.delete_overlaps(vocab)

Finds and deletes all intersections of the tokenizer's vocabulary and the vocab variable from the tokenizer. Notice that vocab should be a dict variable.

changer.delete_inappropriate_merges(vocab)

Deletes all merges from tokenizer which contradict the vocab variable. Notice that vocab should be a list[str] variable.

Addition

The idea of creating such functions arose due to the fact that the built-in functions do not add tokens/merges properly, when some tokens are deleted. That is why you can get more tokens after encoding the same text, even if the necessary tokens have been added.

changer.add_tokens(list_of_tokens)

Adds the tokens from the list. The indexes will be filled automatically.

changer.add_merges(list_of_merges)

Adds the merges from the list. If there are no necessary tokens for this merge, their addition will be suggested.

"Get" functions

changer.get_overlapping_tokens(vocab)

Returns the intersection between the tokenizer's vocabulary and the vocab variable. Notice that vocab should be a dict variable.

changer.get_overlapping_merges(merges)

Returns the intersection between the tokenizer's merges and the merges variable. Notice that merges should be a list variable.

Saving

changer.save_tokenizer(path)

Saves the current state of the changed tokenizer. Additionally, it saves tokenizer configs into path folder (./updated_tokenizer by default).

tokenizer = ch.updated_tokenizer()

Return the changed tokenizer.

Project details


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