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Dict2Flashcards

Sentence-mining app written in Python using Tkinter.

Structure

Hotkey: Ctrl + V

Query language docs

If you use Anki, then choose <Anki profile name>/collection.media. Keep in mind that media files aren't shared across profiles. So if you want to create cards for another profile, make sure that you also change media storage in File > Change downloaded media storage.

  1. Install Python3.11+ and add it in PATH.
  2. Open downloaded directory with main.pyw in it.
  3. Open command line in this directory
  4. Run pip install -r installation/win/requirements.txt to install required libraries
  1. Install Python3.11+
    • sudo apt install python3.11
  2. Install Tkinter
    • sudo apt install python3-tk
  3. Install PyGObject
    • sudo apt install python3-gi
  4. Install required libraries
    • pip3 install -r installation/linux/requirements.txt

To launch this app, open command line in the directory where main.pyw is located and run

  • if you are on Windows: python main.pyw
  • if you are on Linux: python3 main.pyw
  • Ctrl + 0: Moves app to upper left corner of the screen
  • Ctrl + 1..9: picks corresponding sentence
  • Ctrl + b: browse added cards
  • Ctrl + d: skips current card
  • Ctrl + z: returns to a previous card
  • Ctrl + q: moves current card to a separate file
  • Ctrl + Shift + a: calls <add word> window
  • Ctrl + e: calls <statistics> window
  • Ctrl + f: calls <find> window
  • Ctrl + c + Space: adds currently highlighted word to deck

  • Ctrl + c + Alt: adds currently highlighted text to the first sentence field

By default, resulting file is an Anki package that is located at the saving directory that you chose.

Card fields:

  1. Sentence example
  2. Word
  3. Definition
  4. Image
  5. Word audio

How to create custom format processor

Cards can have other fields, although they will not be displayed. But they could be used inside format and card processors.

All plugins can use

  • all contents of ./src/plugins_management/parsers_return_types
  • all contents of ./src/plugins_management/config_management
  • all contents of ./src/consts
  • cards, decks, preprocessing, query_language, storages, string_utils from ./src/app_utils

Just add from .. import app_utils, parsers_return_types, config_management, consts At the header of your file

To view every plugin interface, see ./src/plugins_loading/interfaces.py

All types are located in ./src/plugin_management/parsers_return_types.py. They are already available for plugins to use.


  • Generator[tuple[list[str], str], int, tuple[list[str], str]]
  • Generator that yields and returns list of image URLs and accompanied error message. Accepts required number of URLS

  • Generator[tuple[list[str], str], int, tuple[list[str], str]]
  • Generator that yields and returns list of sentences and accompanied error message. Accepts required number of sentences

  • Generator[AudioData, int, AudioData]
  • Generator that yields and returns AudioData and accompanied error message. Accepts required number of audio URLs
  • tuple[list[tuple[str, str]], str]
  • list of (audio_url, additional_info) accompanied with error message

A Card is essentially a Python dictionary with the following keys:

TagsScheme = dict[str, Unioun[str, list[str], "TagsScheme"]]

class CardFormat(TypedDict):
    word:        str
    special:     NotRequired[list[str]]
    definition:  NotRequired[str]
    examples:    NotRequired[list[str]]
    image_links: NotRequired[list[str]]
    audio_links: NotRequired[list[str]]
    tags:        NotRequired[TagsScheme]

Every plugin has to have config variable of LoadableConfig class

LoadableConfig(config_location: str,
               validation_scheme: dict[Any, tuple[Any, Sequence[Type], Sequence[Any]]],
               docs: str)
  • config_location has to be os.path.dirname(_file_)
  • validation_scheme:
{
   <field>: (<default_value>, [supported_type, ...], [valid_value, ...])
   ...
}

suppotred_types and valid values can be empty. In that case, all types/values are valid

  • docs: config documentation

To create a web parser, create a python file inside ./src/plugins/parsers/word/web/ with the following protocol:

  • config: LoadableConfig
    • plugin config
  • SCHEME_DOCS: str
    • documentation to the resulting scheme
  • define(query: str) -> tuple[list[CardFormat], str]
    • function that defines given word. Returns list of CardFormat accompanied with error message

Parses local JSON dictionary, that is located in ./media folder

To register a local dictionary, create a python file inside ./src/plugins/parsers/word/local/ with the following protocol:

  • config: LoadableConfig
    • plugin config
  • DICTIONARY_NAME: str
    • Relative path to the JSON dictionary of any format. Dictionary is located inside ./media folder
  • SCHEME_DOCS: str
    • documentation to the translated scheme
  • define(query: str, dictionary: DICTIONARY_T) -> tuple[list[CardFormat], str]
    • function that returns list of CardFormat accompanied with error message in response to a given query

To create a sentence parser, create a python file inside ./src/plugins/parsers/sentence/ with the following protocol:

  • config: LoadableConfig
    • plugin config
  • get(word: str) -> SentenceGenerator SentenceGenerator

To create an image parser, create a python file inside ./src/plugins/parsers/image/ with the following protocol:

  • config: LoadableConfig
    • plugin config
  • get(word: str) -> ImageGenerator

To register web audio getter, create a python file inside ./src/plugins/parsers/audio/web/ with the following protocol:

  • config: LoadableConfig
    • plugin config
  • get(word: str, card_data: dict) -> AudioGenerator

To register folder with audio files, create a python file inside ./src/plugins/parsers/audio/local/ with the following protocol:

  • config: LoadableConfig
    • plugin config
  • AUDIO_FOLDER: str
    • relative path to the folder with audio files that is located inside ./media/audio folder
  • get(word: str, card_data: dict) -> AudioGenerator
    • AudioGenerator but instead of audio urls it returns paths to local audio.

You may want to create special card processors to other applications from Anki. These apps may have special requirements for card format. For Example, to add an audio file to anki, one has to wrap its file name in [sound:<filename>]. To create a card processor, create a python file inside ./src/plugins/saving/card_processors/ with the following protocol:

  • get_save_image_name(word: str, image_source: str, image_parser_name: str, card_data: dict) -> str
    • returns saving image file name
  • get_card_image_name(saved_image_path: str) -> str
    • returns wrapped saved_image_path (this path is absolute)
  • get_save_audio_name(word: str, audio_provider: str, multiple_postfix: str, card_data: dict) -> str
    • returns saving audio file name
  • get_card_audio_name(saved_audio_path: str) -> str
    • returns wrapped saved_audio_path (this path is absolute)
  • process_card(card: dict) -> None
    • processes card in-place

Transforms saved card collection to needed file format To create a format processor, create a python file inside ./src/plugins/saving/format_processors/ with the following protocol:

  • save(deck: SavedDataDeck, saving_card_status: CardStatus, saving_path: str, image_names_wrapper: Callable[[str], str], audio_names_wrapper: Callable[[str], str]) -> None
    • iterates through SavedDataDeck (located in ./src/app_utils/cards.py) and pickes cards with saving_card_status from which the format is formed. image_names_wrapper and audio_names_wrapper are wrappers from current card processor

To create a theme, create a python file inside ./src/plugins/themes/ with the following protocol:

  • label_cfg: dict - Tkinter Label widget config, compatable with Text widget
  • button_cfg: dict - Tkinter Button widget config
  • text_cfg: dict - Tkinter Text widget config
  • entry_cfg: dict - Tkinter Entry widget config
  • checkbutton_cfg: dict - Tkinter Checkbutton widget config
  • toplevel_cfg: dict - Tkinter Toplevel widget config
  • root_cfg: dict - Tkinter Tk config
  • frame_cfg: dict - Tkinter Frame widget config
  • option_menu_cfg: dict - Tkinter OptionMenu widget config
  • option_submenus_cfg: dict - config used to configure submenus of OptionMenu

To create a language package, create a python file inside ./src/plugins/language_packages/ with the protocol listed inside ./src/plugins_loading/interfaces.LanguagePackageInterface class

Field queries:
    field_1[subfield_1][subfield_2]...[subfield_n]
    returns None if filed(subfield) wasn't found

Logic operators:
    if one of the arguments is None then it is automatically converted to False

    Unary operators:
    * logic operators:
        not

    Binary operators:
    * logic operators
        and, or
    * arithmetics operators:
        <, <=, >, >=, ==, !=

Keywords:
    in
        Checks whether <thing> is in <field>[<subfield_1>][...][<subfield_n>]
        returns False if argument is None

        Example:
            {
                "field": [val_1, .., val_n]}
            }

        thing in field
        Returns True if thing is in [val_1, .., val_n]


Special queries & commands
    $ANY
        Gets result from the whole hierarchy level

        Example:
            {
                "pos": {
                    "noun": {
                        "data": value_1
                    },
                    "verb" : {
                        "data": value_2
                    }
                }
            }

        $ANY returns ["noun", "verb"]
        pos[$ANY][data] returns [value_1, value_2]
        $ANY[$ANY][data] will also returns [value_1, value_2]

    $SELF
        Gets current hierarchy level keys

        Example:
            {
                "field_1": 1,
                "field_2": 2,
            }
        
        $SELF returns ["field_1", "field_2"]

    d_$
        Will convert string expression to a digit.

        By default, every key inside query strings
        (for example, in field[subfield] the keys are field and subfield)
        are treated as strings. If you have an integer/float key or an array
        with specific index, then you would need to use this prefix

        Example:
            {
                "array_field": [1, 2, 3],
                "int_field": {
                    1: [4, 5, 6]
                }
            }

        array_field[d_$1] returns 2
        int_field[d_$1] returns [4, 5, 6]

    f_$
        Will convert a numeric expression to a field

        By default, every stranded decimal-like strings
        are treated as decimals. So if your scheme contains decimal as a
        key you would need this prefix

        Example:
            {
                1: [1, 2, 3],
                2: {
                    "data": [4, 5, 6]
                }
            }

        f_$d_$1 returns [1, 2, 3]
        You would need to also use d_$ prefix, because as 1 would be converted to
        a <field> type, it would also be treated as a string
        Note:
            to get [4, 5, 6] from this scheme you would only need d_$ prefix:
            d_$2[data]

Methods:
    len
        Measures length of iterable object
        returns 0 if argument is None

        Example:
            {
                "field": [1, 2, 3]
            }

        len(field) returns 3

        Example:
            {
                "field": {
                    "subfield_1": {
                        "data": [1, 2, 3]
                    },
                    "subfield_2": {
                        "data": [4, 5]
                    }
                }
            }

        len(field[$ANY][data]) = len([[1, 2, 3], [4, 5]]) = 2

    split
        Splits given string or list of strings
        returns empty list if argument is None

        Example:
            {
                "field": "text with spaces",
                "list_field": ["text with spaces 1", "text with spaces 2"]
            }

        split(field) = ["text", "with", "spaces"]
        split(list_field) = [["text", "with", "spaces", "1"],
                             ["text", "with", "spaces", "2"]]

    any
        Returns True if one of items is True
        returns False if argument is None

        Example:
            {
                "field": {
                    "subfield_1": {
                        "data": 1
                    },
                    "subfield_2": {
                        "data": 2
                    }
                }
            }

       any(field[$ANY][data] > 1) returns True

    all
        Returns True if all items are True
        returns False if argument is None

        Example:
            {
                "field": {
                    "subfield_1": {
                        "data": 1
                    },
                    "subfield_2": {
                        "data": 2
                    }
                }
            }

        all($ANY[$ANY][data] > 0) returns True
        all($ANY[$ANY][data] > 1) returns False

    lower
        Makes all strings lowercase
        returns empty string ("") if argument is None

        Example:
            {
                "field_1": ["ABC", "abc", "AbC"],
                "field_2": "ABC"
            }
        
        lower(field_1) returns ["abc", "abc", "abc"]
        lower(field_2) returns "abc"

    upper
        Makes all strings uppercase
        returns empty string ("") if argument is None

        Example:
            {
                "field_1": ["ABC", "abc", "AbC"],
                "field_2": "abc"
            }
        
        upper(field_1) returns ["ABC", "ABC", "ABC", ""]
        upper(field_2) returns "ABC"

    reduce
        Flattens one layer of nested list result:
        returns empty list if argument is None

        Example:
            {
                "field_1": ["a", "b", "c"],
                "field_2": ["d", "e", "f"]
            }
        $ANY returns [["a", "b", "c"], ["d", "e", "f"]]
        reduce($ANY) returns ["a", "b", "c", "d", "e", "f"]
        Note:
            {
                "field_1": [["a"], ["b"], ["c"]],
                "field_2": [[["d"], ["e"], ["f"]]]
            }
        $ANY returns [[["a"], ["b"], ["c"]], [[["d"], ["e"], ["f"]]]]
        reduce($ANY) returns [["a"], ["b"], ["c"], [["d"], ["e"], ["f"]]]

    Note:
        You can also combine methods:
        Example:
            {
                "field_1": ["ABC", "abc", "AbC"],
                "field_2": ["Def", "dEF", "def"]
            }
        lower(reduce($ANY)) returns ["abc", "abc", "abc", "def", "def", "def"]

Evaluation precedence:
1) expressions in parentheses
2) keywords, methods
3) unary operators
4) binary operators