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A project for reading JSON data and parse it with ability to make your edits to Json, insert values, delete values, update values and search for any values. and searialize, desearialize the object.

Reason this release was yanked:

bug in searilization object imports

Project description

JsonDF [Json parser for DataFrane usage]

This package is a package for converting nested Json/Dictionaries/Lists for DataFrame usage

Download

for latest release

pip install JsonDF==1.0.3

Normal Usage

and to use it :

from JsonDf.Data import Data

data = Data(prefix="your_prefered_prefix_default_is_root", data=YourJson)

data.childs() #for processing the childs of the Json/Dict/List
print(data.rows) #organized dictionary with the data !! Not for DataFrame usage
data.flatten() #for flattening the result for DataFram usage
print(data.rows_flatten) #flatten the data for DataFrame usage

Json type usage

In Json type you have the ability to parse Json/Dict in the sameway it parsed in JQuery, in addition to the ability to make objects automatically from json/dict

create Json

to use it :

from Json.utils.Json import Json

some_json = {
  'keys' : {
    "another_key": "some_value",  
    },
}

json = Json(json=some_json, name=any_name)
json.objectify()
print(json)
print(json.keys)
print(json.keys.another_key)

insert and update values in Json

you can add values inside the Json as you want, use the insert method

json.insert(name='name', value='value')

keep in mind that you add in the base level, which mean that if you have two Jsons inside each other, and you want to add in the secod Json, you need to access it first to add in it. I'll try to fix this problem later.

NOTE : you can update values in Json by using the same insert method if the name is already exist.

delete values totally

you can totally delete keys and its values from the Json using the delete method, in this case the name and its value will be deleted

json = Json(name='json_name', json={'key': 'value'})
json.delete('key')
print(json')

#  output :
#  {}
#  empty because the 'key' key and it's values is deleted

you've to know that when you delete a key, it's deleted the Json object it self not from the original template it has started with, so if the edits was made in the json was new and was made by JsonDf, deleting it will delete it with no coming back.

dumping values from keys

you can dump values from keys and make the key equals to empty value depends on its type, by using the dump() method

json = Json(name='json_name', json={'key': 'value'})
json.dump('key')
print(json')

#  output :
#  {'key': ''}

the type of the value is determined with the same type that it was with in the Json Object, to change it you've to update it with the insert() method after the objectify() other wise it will still with the same type.

searching in the Json

you can search in the Json using the find() and find_all() methods, which gives you the ability to find values based on the keys inside the Json.

json = Json(name='json_name', json={'key': 'value'})
result = json.find('key')
print(result)

#  output :
#  value
#  if you specified the reports param in find() to be True it will output
#  ('value', True)
#  the second True is for the success of the find method
json = Json(name='json_name', json={'key': {'key': 'value'})
json.find_all('key')

#  output :
#  {(0, 'key', 'key'), {'key': 'value'}}
#  {(1, 'key', 'key'), 'value'}
#  if you specified the reports param in find_all() to be False it will output the finds only

Searialization and Deserialization of objects in Json

you can now serialize objects to Json using the Searializer object, which takes the object as a paramater and gives you a Json for it, for now it doesn't work with instances of the object yet.

NOTE : you have to have the inspect package installed to work with it.

Searializing

to start with searilaization you have to import the searialzer object

from JsonDF.utils.Json.Searializer.Searializer import Searializer

working example with the searializer object

from JsonDF.utils.Json.Searializer.Searializer import Searializer

class Test:
  def __init__(self, param1, param2):
    self.param1 = param1
    self.param2 = param2
  
  def another_method(self, param1):
    x = param1 + self.param2

print(Searializer(Test).Serialize())

#   outputs :
# {'name': 'Test', 'params': {}, 'methods': {'Test.__init__': {'Test.__init__': {'params': (['self', 'param1', 'param2'], 
# None), 'code': '    def __init__(self, param1, param2):\n        self.param1 = param1\n        self.param2 = param2\n'}}, 
# 'Test.another_method': {'Test.another_method': {'params': (['self', 'param1'], None), 'code': '    def another_method
# (self, param1):\n        x = param1 + self.param2\n'}}}}

feel free to contribute in this project.

cheers.

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