Currently I am developing a class which abstracts the SQLAlchemy. This class will act as helper tool to verify the values from database. This class will be used in regression/load test. Test cases will make hundred-thousands of database query. The layout of my class is as following.
class MyDBClass: def __init__(self, dbName) self.dbName = dbName self.dbEngines[dbName] = create_engine() self.dbMetaData[dbName] = MetaData() self.dbMetaData[dbName].reflect(bind=self.dbEngines[dbName]) self.dbSession[dbName] = sessionmaker(bind=self.dbEngines[dbName]) def QueryFunction(self,dbName, tablename, some arguments): session = self.dbSession[dbName]() query = session.query(requiredTable) result = query.filter().all() session.close() def updateFunction(self, dbName, talbeName, some arguments): session = self.dbSession[dbName]() session.query(requiredTable).filter().update() session.commit() session.close() def insertFunction(self, dbName, tableName, some arguments): connection = self.dbEngines[dbName].connect() requiredTable = self.dbMetaData[dbName].tables[tableName] connection.execute(requiredTable.insert(values=columnValuePair)) connection.close() def cleanClose(self): # Code which will remove the connection/session/object from memory. # do some graceful work to clean close.
I want to write cleanClose() method which should remove the object which might be created by this class. This method should remove all those object from memory and provide a clean close. This may also avoid the memory leak. I am not able to figure out what all object should be removed from the memory. Can some one suggest me what method calls I need to make here?
Is there any way by which I can measure the performance different method and their variant?
I was going through the documentation here and realized that I should not make session in every method rather I should create single instance of session and use throughout. Please provide your feedback on this. And let me know what would be the best way of doing thing here.
Any kind of help will be greatly appreciated here.