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Python library to convert Python class instances(Objects) both flat and nested into a dictionary data structure. It's very useful in converting Python Objects into JSON format especially for nested objects, because they can't be handled well by json library

Project description

dictfier is a library to convert Python class instances(Objects) both flat and nested into a dictionary data structure. It’s very useful in converting Python Objects into JSON format especially for nested objects, because they can’t be handled well by json library

Prerequisites

-python version >= 2.7

Installing

For python3

pip3 install dictfier

For python2

pip install dictfier

Getting Started

Converting a flat object into a dict

import dictfier

class Student(object):
    def __init__(self, name, age):
        self.name = name
        self.age = age

student = Student("Danish", 24)

query = [
    "name",
    "age"
]

std_info = dictfier.dictfy(student, query)
print(std_info)

Converting nested object into a dict

import dictfier

class Course(object):
    def __init__(self, code, name):
        self.code = code
        self.name = name

class Student(object):
    def __init__(self, name, age, course):
        self.name = name
        self.age = age
        self.course = course

course = Course("CS201", "Data Structures")
student = Student("Danish", 24, course)

query = [
    "name",
    "age",
    {
        "course": [
            "code",
            "name",
        ]
    }
]

std_info = dictfier.dictfy(student, query)
print(std_info)

Converting object nested with iterable object into a dict

import dictfier

class Course(object):
    def __init__(self, code, name):
        self.code = code
        self.name = name

class Student(object):
    def __init__(self, name, age, courses):
        self.name = name
        self.age = age
        self.courses = courses

course1 = Course("CS201", "Data Structures")
course2 = Course('CS205", "Computer Networks")

student = Student("Danish", 24, [course1, course2])

query = [
    "name",
    "age",
    {
        "courses": [
            [
                "code",
                "name",
            ]
        ]
    }
]

std_info = dictfier.dictfy(student, query)
print(std_info)

What about instance methods or callable object fields?

Well we’ve got good news for that, dictfier can use callables which return values as fields, It’s very simple, you just have to pass “call_callable=True” as a keyword argument to dictfy function and add your callable field to a query. Eg

import dictfier

class Student(object):
    def __init__(self, name, age):
        self.name = name
        self.age = age

    def age_in_days(self):
        return self.age * 365

student = Student("Danish", 24)

query = [
    "name",
    "age_in_days"
]

std_info = dictfier.dictfy(student, query, call_callable=True)
print(std_info)

You can also add your custom field by using “not_found_create=True” as a keyword argument. Eg

import dictfier

class Student(object):
    def __init__(self, name, age):
        self.name = name
        self.age = age

student = Student("Danish", 24)

query = [
    "name",
    "age",
    {
        "school": "St Patrick"
    }
]

std_info = dictfier.dictfy(student, query, not_found_create=True)
print(std_info)

What if we want to use object field on a custom field to do some computations?.

Well there is a way to do that too, dictfier API provides useobj hook which is used to hook/pull the object on a current query node. To use the current object, just define a fuction which accept one argument(which is an object) and do your computations on that function then return the result, call useobj and pass that defined fuction to it.

Let’s say we want to calculate age of a student in terms of months from a student object with age field in terms of years. Here is how we would do this by using useobj hook.

import dictfier

class Student(object):
    def __init__(self, name, age):
        self.name = name
        self.age = age

student = Student("Danish", 24)

def age_in_months(obj):
    # Do the computation here then return the result
    return obj.age * 12

query = [
    "name",

    # This is a custom field which is computed by using age field from a student object
    # Note how age_in_months function is passed to useobj hook(This is very important for API to work)
    {"age_in_months": dictfier.useobj(age_in_months)}
]

std_info = dictfier.dictfy(student, query)
print(std_info)

How dictfier works?

dictfier works by converting given Object into a corresponding dict recursively(Hence works on nested objects) by using a Query. So what’s important here is to know how to structure right queries to extract right data from the object.

What’s a Query anyway?

A Query is basically a template which tells dictfier what to extract from an object. It is defined as a list or tuple of Object’s fields to be extracted.

Sample conversions.

When a flat student object is queried using a query below

query = [
    "name",
    "age",
]

dictfier will convert it into

{
    "name": student.name,
    "age": student.age,
}

For nested queries it goes like

query = [
    "name",
    "age",
    {
        "course": [
            "code",
            "name",
        ]
    }
]

Corresponding dict

{
    "name": student.name,
    "age": student.age,
    "course": {
        "code": student.course.code,
        "name": student.course.name,
    }
}

For iterable objects it goes like

query = [
    "name",
    "age",
    {
        "course": [
            [
                "code",
                "name",
            ]
        ]
    }
]

Putting a list or tuple inside a list or tuple of object fields is a way to declare that the Object is iterable. In this case

[
    [
        "code",
        "name",
    ]
]

Corresponding dict

{
    "name": student.name,
    "age": student.age,
    "courses": [
        {
            "code": course.code,
            "name": course.name,
        }
        for course in student.courses
    ]
}

Notice the list or tuple on “courses” unlike in other fields like “name” and “age”, it makes “courses” iterable, This is the reason for having nested list or tuple on “courses” query.

It’s pretty simple right?

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