Skip to main content

Persistence layer utilities for mir project

Project description

mir-persistence-layer-utils

Utilities for the persistence layer when working with the mir project. The official PyPi package can be found here.

Dependencies

  • pymongo
  • motor
  • bcrypt
  • pydantic
  • httpx
  • hurry.filesize
  • python-dotenv
  • psutil

Installation

Installing the utilities via pip

pip install navalmartin-mir-db-utils

For a specific version you can use

pip install navalmartin-mir-db-utils==x.x.x

You can uninstall the project via

pip uninstall navalmartin-mir-db-utils

How to use

You can check which specific version you have installed by

import navalmartin_mir_db_utils
print(navalmartin_mir_db_utils.__version__)

Create a session

from dotenv import load_dotenv
from navalmartin_mir_db_utils.dbs import MongoDBSession 

# laod configuration variables
# using the default .env

# load the MONGODB_URL
load_dotenv()

# assume that the MONGODB_NAME is not loaded
# so we need to set it manuall
session = MongoDBSession(db_name="my-db-name")

Execute simple queries

You can use the session to execute simple queries as shown below

import asyncio
import bson
from navalmartin_mir_db_utils.dbs.mongodb_session import MongoDBSession
from navalmartin_mir_db_utils.crud.mongodb_crud_utils import ReadEntityCRUDAPI
from navalmartin_mir_db_utils.utils.exceptions import ResourceNotFoundException
from navalmartin_mir_db_utils.crud.crud_utils import get_one_result_or_raise

COLLECTION_NAME = "YOUR_COLLECTION_NAME"
MONGODB_URL = "YOUR_MONGODB_URL"
MONGO_DB_NAME_FROM = "YOUR_MONGODB_NAME"


async def query_db(mongodb_session: MongoDBSession, criteria: dict,
                   projection: dict,
                   collection_name: str):
    query_result = ReadEntityCRUDAPI.find(criteria=criteria, projection=projection,
                                          db_session=mongodb_session,
                                          collection_name=collection_name)
    docs = [doc async for doc in query_result]
    return docs


async def count_docs(mongodb_session: MongoDBSession, criteria: dict,
                     collection_name: str):
    query_result = await ReadEntityCRUDAPI.count_documents(criteria=criteria,
                                                           db_session=mongodb_session,
                                                           collection_name=collection_name)
    return query_result


async def query_db_or_raise(mongodb_session: MongoDBSession, criteria: dict,
                            projection: dict,
                            collection_name: str):
    query_result = await get_one_result_or_raise(crud_handler=ReadEntityCRUDAPI(collection_name=collection_name),
                                                 projection=projection,
                                                 criteria=criteria,
                                                 db_session=mongodb_session)

    return query_result


async def run_examples(mir_db_session_from: MongoDBSession):
    result = await query_db(mongodb_session=mir_db_session_from,
                            criteria={'_id': bson.ObjectId('63ebc9f94c092a48bd179ae7')},
                            projection={},
                            collection_name=COLLECTION_NAME)
    print(result)
    n_docs = await count_docs(mongodb_session=mir_db_session_from,
                              criteria={},
                              collection_name=COLLECTION_NAME)
    print(n_docs)

    try:
        result = await query_db_or_raise(mongodb_session=mir_db_session_from,
                                         criteria={'survey_idx': bson.ObjectId('63ad64252c853ee163fc6a63')},
                                         projection={'original_filename': 1},
                                         collection_name=COLLECTION_NAME)
    except ResourceNotFoundException as e:
        print(str(e))


def main():
    mir_db_session_from = MongoDBSession(mongodb_url=MONGODB_URL,
                                         db_name=MONGO_DB_NAME_FROM)

    asyncio.run(run_examples(mir_db_session_from=mir_db_session_from))

    
if __name__ == '__main__':
    main()

Simple models

import datetime
from navalmartin_mir_db_utils.schemata import IndexedItemDataViewBase, UserDataViewBase


class MyIndexedItem(IndexedItemDataViewBase):
    pass


if __name__ == '__main__':
    mdb_json = {'_id': '123456',
                'created_at': datetime.datetime.utcnow(),
                'updated_at': datetime.datetime.utcnow()}

    my_indexed_item = MyIndexedItem.build_from_mongodb_json(mdb_json=mdb_json)

    print(f"MyIndexedItem  {my_indexed_item}")
    print(f"MyIndexedItem fields set {my_indexed_item.__fields_set__}")

    user_data_json = {'_id': '123456',
                      'created_at': datetime.datetime.utcnow(),
                      'updated_at': datetime.datetime.utcnow(),
                      "name": "Alex",
                      "surname": "Giavaras",
                      "email": "alex@someemail.com"}

    user = UserDataViewBase.build_from_mongodb_json(mdb_json=user_data_json,
                                                    access_token="1236",
                                                    refresh_token="69878")

    print(f"User  {user}")
    print(f"User fields set {user.__fields_set__}")

Run transactions

You can also run transactions.

from typing import Any
import bson
from pymongo.read_concern import ReadConcern
from pymongo.write_concern import WriteConcern
from pymongo.read_preferences import ReadPreference
import asyncio

from navalmartin_mir_db_utils.dbs.mongodb_session import MongoDBSession
from navalmartin_mir_db_utils.transanctions import run_transaction
from navalmartin_mir_db_utils.transanctions.decorators import with_transaction

IMAGES_COLLECTION_TO_READ = "YOUR_COLLECTION_NAME"
MONGODB_URL = "YOUR_MONGODB_URL"
MONGO_DB_NAME_FROM = "YOUR_MONGODB_NAME"

wc_majority = WriteConcern("majority", wtimeout=1000)
read_concern = ReadConcern("local")


async def read_images_callback(session: Any, kwargs: dict):
    db_name = kwargs['db_name']
    survey_idx = kwargs['survey_idx']
    projection = kwargs['projection']

    db = session.client.get_database(db_name)
    images_collection = db[IMAGES_COLLECTION_TO_READ]

    images = images_collection.find({'survey_idx': bson.ObjectId(survey_idx)},
                                    projection=projection,
                                    session=session)
    return images


async def transaction_result_handler(transaction_result: Any):
    images = [img async for img in transaction_result]
    return images
    
@with_transaction
async def execute_function(mir_db_session: MongoDBSession):
    return await run_transaction(mdb_session=mir_db_session,
                                 async_callback=read_images_callback,
                                 callback_args=callback_args,
                                 max_commit_time_ms=None,
                                 read_concern=read_concern,
                                 write_concern=wc_majority,
                                 read_preference=ReadPreference.PRIMARY,
                                 with_log=True,
                                 transaction_result_handler=transaction_result_handler)


if __name__ == '__main__':
    mir_db_session = MongoDBSession(mongodb_url=MONGODB_URL,
                                    db_name=MONGO_DB_NAME_FROM)

    callback_args = {'db_name': 'mir_db',
                     'survey_idx': '63ad64252c853ee163fc6a63',
                     'projection': {'original_filename': 1}}
    transaction_result = asyncio.run(execute_function(mdb_session=mir_db_session))
    print(transaction_result)

There is also a decorator available to run a transaction

from typing import Any
import bson
from pymongo.read_concern import ReadConcern
from pymongo.write_concern import WriteConcern
from pymongo.read_preferences import ReadPreference
import asyncio

from navalmartin_mir_db_utils.dbs.mongodb_session import MongoDBSession
from navalmartin_mir_db_utils.transanctions.decorators import use_async_transaction

IMAGES_COLLECTION_TO_READ = 'YOUR_COLLECTION_NAME'
MONGODB_URL = "YOUR_MONGODB_URL"
MONGO_DB_NAME_FROM = "YOUR_MONGODB_NAME"

wc_majority = WriteConcern("majority", wtimeout=1000)
read_concern = ReadConcern("local")

callback_args = {'db_name': 'mir_db',
                 'survey_idx': '63ad64252c853ee163fc6a63',
                 'projection': {'original_filename': 1}}


async def read_images_callback(session: Any, kwargs: dict):
    db_name = kwargs['db_name']
    survey_idx = kwargs['survey_idx']
    projection = kwargs['projection']

    db = session.client.get_database(db_name)
    images_collection = db[IMAGES_COLLECTION_TO_READ]

    images = images_collection.find({'survey_idx': bson.ObjectId(survey_idx)},
                                    projection=projection,
                                    session=session)
    return images


async def transaction_result_handler(transaction_result: Any):
    images = [img async for img in transaction_result]
    return images


@use_async_transaction(async_callback=read_images_callback,
                        callback_args=callback_args,
                        mdb_session=MongoDBSession(mongodb_url=MONGODB_URL, db_name=MONGO_DB_NAME_FROM),
                        write_concern=wc_majority,
                        read_concern=read_concern,
                        read_preference=ReadPreference.PRIMARY,
                        max_commit_time_ms=None,
                        with_log=True,
                        with_transaction_result=True,
                        transaction_result_handler=transaction_result_handler)
async def query_db(mongodb_session: MongoDBSession, **kwargs):
    transaction_result = kwargs['transaction_result']
    return transaction_result


if __name__ == '__main__':
    mir_db_session_from = MongoDBSession(mongodb_url=MONGODB_URL,
                                         db_name=MONGO_DB_NAME_FROM)

 
    print("Running transaction as decorator...")
    transaction_result = asyncio.run(query_db(mongodb_session=mir_db_session_from))
    print(transaction_result)

Task monitoring

Some utilities exist to monitor a task

import time
import psutil
import datetime
import pprint
from navalmartin_mir_db_utils.schemata import TaskPerformanceResultSchema, TaskResultSchema


def sum_task(sleep_time: int, n_elements: int):
    time.sleep(sleep_time)

    total = sum([i for i in range(n_elements)])
    return total


if __name__ == '__main__':
    start_time = time.time()

    pp = pprint.PrettyPrinter(indent=4)
    task_performance = TaskPerformanceResultSchema()
    task_result = TaskResultSchema()

    sum = sum_task(sleep_time=3,
                   n_elements=1000000)

    task_result.results = [{'sum': sum}]

    virtual_mem_dict = dict(psutil.virtual_memory()._asdict())
    cpu_percentage = psutil.cpu_percent()

    pp.pprint(f"Task virtual memory dictionary: {virtual_mem_dict}")
    pp.pprint(f"Task CPU performance: {cpu_percentage}")

    end_time = time.time()
    task_performance.latency = end_time - start_time
    task_performance.ended_at = datetime.datetime.utcnow()
    task_performance.cpu_util = cpu_percentage
    task_performance.disk_util = virtual_mem_dict

    pp.pprint(f"Task performance: {task_performance}")
    pp.pprint(f"Task result: {task_result}")

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

navalmartin_mir_db_utils-0.0.35.tar.gz (13.7 kB view hashes)

Uploaded Source

Built Distribution

navalmartin_mir_db_utils-0.0.35-py3-none-any.whl (22.6 kB view hashes)

Uploaded Python 3

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page