A Simple Key-Value Data-store written in Python

Overview

mercury-db

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This is a File Based Key-Value Datastore that supports basic CRUD (Create, Read, Update, Delete) operations developed using Python.

The data store will support the following functional requirements:

  1. A new key-value pair can be added to the data store using the Create operation. The key is always a string - capped at 32chars. The value is always a JSON object-capped at 16KB.
  2. A Read operation on a key can be performed by providing the key, and receiving the value in response, as a JSON object.
  3. A Delete operation can be performed by providing the key.
  4. Every key supports setting a Time-To-Live property when it is created. This property is optional. If provided, it will be evaluated as an integer defining the number of seconds the key must be retained in the data store. Once the Time-To-Live for a key has expired, the key will no longer be available for Read or Delete operations.

The data store will also support the following non-functional requirements:

  1. The size of the file storing data must never exceed 1GB.
  2. More than one client process cannot be allowed to use the same file as a data store at any given time
  3. A client process is allowed to access the data store using multiple threads, if it desires to The data store must therefore be thread-safe.

Overview

The application has been developed as a library so that users can just import it and create an instance of the class and work with the data store by invoking relevant methods. The application satisfies both the functional and non-functional requirements mentioned above.

File Structure

  • src/mercury_db/datastore.py - The library that contains the methods for performing CRUD Operations.
  • setup.py

Installation

pip install mercury-db

Usage

Consider the following examples:

from src.mercury_db.datastore import *

ds = DataStore()
ds.create('myname', 'Vaidhyanathan', 60)
print(ds.read('myname'))
ds.create('New Delhi', 'India Gate')
ds.delete('myname')
print(ds.read('New Delhi'))
print(ds.read('name'))

Development Environment

  • OS: Linux (Ubuntu) - Linux-5.11.0-41
  • Language(s) used: Python

The application doesn't have any OS specific dependencies and should run without any problems in Mac and Windows as well.

Bugs/Requests

Please use the GitHub issue tracker to submit bugs or request features.

License

Copyright Vaidhyanathan S M, 2021

Distributed under the terms of the MIT license, py-dsa is free and open source software.

Owner
Vaidhyanathan S M
Software Developer | Native Android & Flutter Developer | Python | C++ | Technical Blogger @Medium
Vaidhyanathan S M
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