HadiDB: A lightweight, horizontally scalable database in Python
HadiDB: Lightweight, high-level scalable Python database
HadiDB (hadidb) is a lightweight database written in Python that has a high level of scalability.
Install HadiDB
Install using pip:
<code class="bash">pip install hadidb</code>
User Management
Create a user: createuser()
method creates a new user. authentication()
method authenticates the user's identity.
<code class="python">from hadidb.operation import user user_obj = user("admin", "admin") user_obj.createuser() # 创建用户user_obj.authentication() # 验证用户</code>
Return the result example:
<code class="json">{'status': 200, 'message': 'database user created'}</code>
Database, collection, and schema creation
The following code snippet shows how to set up user credentials, database collection schema, and how to insert data.
<code class="python">from hadidb.operation import operation username = "admin" password = "admin" database = "mefiz.com" collection = "authuser" schema = { "username": "unique", "password": "hash", "cnic": "unique", "picture": "image", "bio": "text" } db = operation(username, password, database, collection) db.create_database(schema)</code>
Data operation
- Insert data:
db.insert(data)
method inserts data.
<code class="python">data = { "username": "hadidb", "password": "12345", "cnic": "123232442", "picture": "user/my/hadidb.jpg", "bio": "hadidb is the best ;)" } result = db.insert(data) print(result)</code>
Return the result example:
<code class="json">{ 'status': 200, 'message': 'data insert successfully', 'data': { 'username': 'hadidb', 'password': '12345', 'cnic': '123232442', 'picture': 'user/my/hadidb.jpg', 'bio': 'hadidb is the best ;)', 'id': 1 } }</code>
- Update data:
db.update(1, update_data)
method updates data.
<code class="python">update_data = { "username": "hadidb_update", "password": "123455", "cnic": "1232324423", "picture": "user/my/hadidb1.jpg", "bio": "hadidb is the best ;) update bio" } result = db.update(1, update_data) print(result)</code>
Get data by ID:
db.getbyid(1)
method Get data by ID.Get all data:
db.getall()
method gets all data.Press the key to get data:
db.getbykey()
anddb.getbykeys()
methods use the key to get data.Count: The number of data statistics of
db.count()
method.db.getbykeycount()
method counts the number of data matching the specified key-value pair.Delete data:
db.delete(1)
method deletes data.
Database and collection management
Get all databases:
configuration().get_database()
method gets all databases.Get all collections:
configuration(database).get_collection()
method gets all collections of the specified database.Get the pattern:
configuration(database, collection).get_schema()
method gets the pattern of the specified collection.Delete collection:
databasedeletionservice().deletecollection()
method deletes collection.Delete the database:
databasedeletionservice().deleteDatabase()
method deletes the database.
Project link
- GitHub: //m.sbmmt.com/link/4b0a618db23379c7c77f818cf569050d
- Website: //m.sbmmt.com/link/a2642f3f2bd5c4424bb169ac8367257f
- Developer: Moming Iqbal
This version reorganized and polished the original text to make it clearer and easier to read, and formatted the code sections to make it easier to understand. All image links are retained.
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