HyperDict - Self linked dictionary in Python

Overview

Hyper Dictionary

Advanced python dictionary(hash-table), which can link it-self keys and make calculations into the keys of the dict

Installation

Use the package manager pip to install foobar.

pip install HyperDict

Usage

The syntax of expressions:

{'key' : '...$(expression)$...'}

Initialization:

from HyperDict import HyperDict
from json import dumps
dictionary = HyperDict({}) # {} - your dict

Examples:

example = Hyperdict(
    {
        'a': 5,
        'b': '$(a)$'
    }
)

print(dumps(example))

    {
       'a': 5,
       'b': 5
    }
example = Hyperdict(
    {
        'a': 5,
        'b': '$(a + x)$ ' # here with a space
    }
)

print(dumps(example))

    {
       'a': 5,
       'b': '5 '
    }
example = Hyperdict(
    {
        'a': 5,
        'b': 100,
        'c': '$(b + d)$',
        'd': '$(b + a)$'
    }
)

print(dumps(example))

    {
        'a': 5,
        'b': 100,
        'c': 205,
        'd': 105
    }
example = Hyperdict(
    {
        'a': ['one_item'],
        'b': '$(a + ["another_item"])$'
    }
)

print(dumps(example))

    {
        'a': ['one_item'],
        'b': ['one_item', 'another_item']
    }
some_func = lambda arg: arg + 1

example = Hyperdict(
    {
        'a': 5,
        'b': '$(some_func(a))$'
    }
)

print(dumps(example))

    {
       'a': 5,
       'b': 5
    }

Changing:

example = Hyperdict(
    {
        'a': 5,
        'b': '$(a)$'
    }
)
print(example) 
# >>> {'a': 5, 'b': 5}
example['a'] = 'another_val'
print(example)
# >>> {'a': 'another_val', 'b': 'another_val'}
example['a'] = '4'
print(example) 
# >>> {'a': 'another_val', 'b': 4}

# !!! 'b' links 'a', but 'a' doesn't link 'b'

Warning

# Keys of your dict must be only strings
{5: 'abc', True: []} # is prohibited
{'5': 'abc', 'True': []} # is allowed

Contributing

Pull requests are welcome. For major changes, please open an issue first to discuss what you would like to change.

Please make sure to update tests as appropriate.

License

MIT

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