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Dataset Card for resh.edu.ru

Dataset Summary

This is a dataset of lessons scraped from resh.edu.ru. There are 7260 lessons with some metadata, the summary of those lessons, and some training excersices. The raw unprocessed dataset is stored in raw.jsonl.gz. A processed version for causal language modeling will be out in the coming days.

Languages

The dataset is in Russian, unless the lesson subject is foreign languages (there are Chinese, German, English and other lessons).

Dataset Structure

Data Fields

The lessons in the dataset should be in the following structure:

  • id - lesson's ID (int)
  • format - specifies the lesson format that was parsed (old or new) (string)
  • subject - which subject does the lesson belong to (string)
  • title - lesson's title (string)
  • author - lesson's author name (empty in new lessons) (string)
  • grade - lesson's grade (int)
  • summary - lesson's summary in HTML (string)
  • excercises - list of training excercises for the lesson. The structure of excercises varies on their type, and is described below.

All excercises have the following fields:

  • id - excercise ID (int)
  • title - excercise's title (string)
  • question - question's HTML (string)
  • question_type - type of question, differences between types is described below (string).

These are the question types:

  • single_choice and multiple_choice
    A task that requires you to choose one or multiple answers to a question.
    • choices - a list of possible choices
      • id - choice ID (string)
      • html - choice's HTML (string)
      • correct - indicates if the choice is correct (bool)
  • text_entry
    Requires you to fill in the blanks by typing in your answer
    • text - the text with blanks (in HTML format) (string)
    • answers - list of strings with correct answers that you need to fill in (list[string])
  • gap_match_text Requires you to fill in the gaps in text by choosing from a predefined list of answers.
    • text - the text with gaps (in HTML format) (string)
    • choices - list of possible answers you could choose from to fill the gaps with (plaintext) (list[string])
    • answers - list of correct answers (plaintext) (list[string])
  • gap_match_color Requires you to paint different parts of text with colors
    • text - the text that you need to paint (in HTML format) (string)
    • answers - list of text part's IDs and their respectable color
  • two_sets_association Requires you to split a list of items into pairs
    • choices - list of all items (in HTML format) (list[string])
    • pairs - list of items split into pairs (in HTML format) (list[string])
  • inline_choice Requires you to fill in the blanks by choosing from a predefined set of answers
    • choices - list of lists of possible choices (plaintext) (list[list[string]])
    • answers - list of correct answers (plaintext) (list[string])
  • order Requires you to put items in the correct order. Could contain multiple tasks, hence the list nesting.
    • choices - list of lists of scrabled items (in HTML format) (list[list[string]])
    • answers - list of lists of correctly ordered items (in HTML format) (list[list[string]])
  • gap_match_table Requires you to split items into two groups.
    • columns - group names (plaintext) (list[string])
    • answers - list of lists of items in each column (in HTML format) (list[list[string]])

Data Splits

There are 7260 lessons, all in the train split.

Dataset Creation

The data was scraped using a script located in my GitHub repository.

Additional Information

Dataset Curators

Licensing information

The lessons provided on resh.edu.ru are not protected by copyright and can be reused and distributed freely, as per Article 43 of the Constitution of the Russian Federation, and the Federal Law No. 273 of 29 December 2012 on Education.

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