Skip to main content

Microframework for python aws lambdas

Project description

braincube-aws-core

Microframework for Python AWS lambdas.

Language pypi License

Installation

pip install braincube-aws-core

Built With

  • asyncpg - A fast PostgreSQL Database Client Library for Python/asyncio.
  • pydantic - Data validation using Python type hints.
  • pypika - Python Query Builder.

Application Controllers Example

import asyncio

from uuid import uuid4
from http import HTTPStatus

from core.app.data import HTTPRequest, HTTPResponse
from core.app.app_module import AppModule
from core.app.app_controller import AppController

from pydantic import BaseModel


class AccountDto(BaseModel):
    iban: str
    bban: str


data = {
    "a0a412d9-87ef-474b-9ac8-b682ec5e0fb3": AccountDto(iban="EUR27100777770209299700", bban="EURC12345612345678"),
    "5ebc25bd-e152-4a70-b251-d68e43be581e": AccountDto(iban="GR27100777770209299700", bban="GRC12345612345678"),
}

app = AppController("/accounts")


@app.get("/{id}")
async def get_account(request: HTTPRequest) -> HTTPResponse:
    account = data.get(request.path_params["id"])
    return HTTPResponse(HTTPStatus.OK if account else HTTPStatus.NO_CONTENT, account)


@app.post()
async def create_account(request: HTTPRequest[AccountDto]) -> HTTPResponse:
    data[uuid4()] = request.body
    return HTTPResponse(HTTPStatus.CREATED)


loop = asyncio.get_event_loop()

module = AppModule([app])


def main(event, context):
    return loop.run_until_complete(module.serve(event, context))

Dependency Injection Example

from core.di.injector import inject
from core.dal.postgres_connection import get_pool, Pool


@inject("data_warehouse_pool")
async def provide_warehouse_pool() -> Pool:
    return await get_pool()


@inject(qualifier="pool:data_warehouse_pool")
class BankService:

    def __init__(self, pool: Pool):
        self._pool = pool

Postgres Repository Example

from core.app.data import HTTPRequest
from core.utils.data import Order, OrderType
from core.dal.data import Key, Schema, Column, Relation, SimpleColumn, JoinType, JoinThrough, StatementField
from core.dal.postgres_connection import get_pool, Pool
from core.dal.postgres_repository import PostgresRepository

# schema definition
equities = Schema(
    table="equities",
    alias="e",
    primary_key=["id"],
    columns=[
        Column("id", updatable=False, insertable=False),
        Column("name"),
        Column("type"),
        Column("issuer_id", alias="issuerId"),
        Column("industry_sector", alias="industrySector"),
        Column("isin"),
        Column("reference"),
        Column("bloomberg_code", alias="bloombergCode"),
        Column("market_symbol", alias="marketSymbol"),
        Column("currency"),
        Column("country", ),
        Column("min_amount", alias="minAmount"),
    ],
    statement_fields=[
        StatementField("isTypeOne", statement="CASE WHEN e.type = 1 then True else False END")
    ],
    order=[
        Order(type=OrderType.asc, alias="name")
    ],
    relations=[
        Relation(
            table="parties",
            alias="p",
            columns=[
                SimpleColumn("name"),
                SimpleColumn("short_name", alias="shortName"),
            ],
            join_forced=False,
            join_type=JoinType.left,
            join_through=JoinThrough(from_column_name="issuer_id", to_column_name="id")
        )
    ]
)


# repository definition
class EquitiesRepo(PostgresRepository):

    def __init__(self, pool: Pool):
        super().__init__(pool, equities)


# repository usage

request = HTTPRequest()

repo = EquitiesRepo(await get_pool())

await repo.find_by_pk(Key(request.path_params["id"]), request.query_params.fields)

await repo.exists_by_pk(Key("9448a57b-f686-4935-b152-566baab712db"))

await repo.find_one(
    request.query_params.fields,
    conditions=request.query_params.conditions,
    order=request.query_params.order)

await repo.find_all(
    request.query_params.fields,
    conditions=request.query_params.conditions,
    order=request.query_params.order)

await repo.find_all_by_pk(
    [
        Key("9448a57b-f686-4935-b152-566baab712db"),
        Key("43c8ec37-9a59-44eb-be90-def391ba2f02")
    ],
    aliases=request.query_params.fields,
    order=request.query_params.order)

await repo.find_many(
    request.query_params.fields,
    conditions=request.query_params.conditions,
    page=request.query_params.page,
    order=request.query_params.order)

await repo.insert({
    "name": "Bursa de Valori Bucuresti SA",
    "type": 1,
    "industrySector": 40,
    "isin": "ROBVBAACNOR0",
    "bloombergCode": "BBG000BBWMC5",
    "marketSymbol": "BVB RO Equity",
    "currency": "RON",
    "country": "RO",
})

await repo.insert_bulk(
    aliases=["name", "type", "industrySector", "isin", "bloombergCode", "marketSymbol", "currency", "country"],
    data=[
        ["Bursa de Valori Bucuresti SA", 1, 40, "ROBVBAACNOR0", "BBG000BBWMC5", "BVB RO Equity", "RON", "RO"],
        ["Citigroup Inc", 1, 40, "US1729674242", "BBG000FY4S11", "C US Equity", "USD", "US"],
        ["Coca-Cola HBC AG", 1, 49, "CH0198251305", "BBG004HJV2T1", "EEE GA Equity", "EUR", "GR"],
    ]
)

await repo.update({
    "type": 1,
    "isin": 40,
}, request.query_params.conditions, request.query_params.fields)

await repo.update_by_pk(Key("9448a57b-f686-4935-b152-566baab712db"), {
    "type": 1,
    "isin": 40
})

await repo.delete(request.query_params.conditions, ["id", "name", "type"])

await repo.delete_by_pk(Key("9448a57b-f686-4935-b152-566baab712db"), ["id", "name", "type"])

await repo.fetch("SELECT * FROM equities WHERE type = $1 and isin = $2", [1, "TREEGYO00017"])

await repo.fetch_one("SELECT * FROM equities WHERE id = $1", ["2b67122a-f47e-41b1-b7f7-53be5ca381a0"])

await repo.execute("DELETE FROM equities WHERE id = $1", ["2b67122a-f47e-41b1-b7f7-53be5ca381a0"])

Query params format

fields=name, type, industrySector, isin, bloombergCode, parties_name, parties_shortName
type=1
isin=range(40, 49)
id=any(9448a57b-f686-4935-b152-566baab712db, 43c8ec37-9a59-44eb-be90-def391ba2f02)
page_no=1
page_size=50
top_size=50
order=name, id DESC

Local Development Requirements

To use the SAM CLI, you need the following tools.

Run server locally

# open ssh tunel
sudo sh ssh_tunnel_Analog_JBox.sh
# apply code changes to docker image
sam-api$ sam build
# start server locally on http://127.0.0.1:3000
sam-api$ sam local start-api --warm-containers EAGER
# or run function locally using event.json as parameter
sam-api$ sam local invoke ApiFunction --event events/event.json

Deploy to AWS

sam build --use-container
sam deploy --capabilities CAPABILITY_NAMED_IAM --guided --profile analog_user --region eu-west-1

Build and deploy new package version using twine

python3 -m pip install --upgrade pip
python3 -m pip install --upgrade build
python3 -m pip install --upgrade twine
python3 -m build
twine upload --skip-existing dist/*

Resources

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

braincube-aws-core-0.0.9.tar.gz (20.6 kB view details)

Uploaded Source

Built Distribution

braincube_aws_core-0.0.9-py3-none-any.whl (25.0 kB view details)

Uploaded Python 3

File details

Details for the file braincube-aws-core-0.0.9.tar.gz.

File metadata

  • Download URL: braincube-aws-core-0.0.9.tar.gz
  • Upload date:
  • Size: 20.6 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/4.0.2 CPython/3.10.11

File hashes

Hashes for braincube-aws-core-0.0.9.tar.gz
Algorithm Hash digest
SHA256 600b57707b8557a6eb5a90235497d04bfb11c5ff48ed9c3b7d761275680cbfc0
MD5 ef42d4d97cc2472a03fb47345f76472f
BLAKE2b-256 24117d29c401f20cc9ca4e57beebbc6b156a6ea431057527f54b01bca5f06ff5

See more details on using hashes here.

Provenance

File details

Details for the file braincube_aws_core-0.0.9-py3-none-any.whl.

File metadata

File hashes

Hashes for braincube_aws_core-0.0.9-py3-none-any.whl
Algorithm Hash digest
SHA256 0d3d6e0182fed6b304cb625c34847eafb9b31154143995be7ff74cda5d9f1c15
MD5 f064f4f169dbce38e7333a9c4adda5ee
BLAKE2b-256 75e81402307dc78984c7f175966ef18c7b58faaf870f52b705e85e2dc22419f3

See more details on using hashes here.

Provenance

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