Skip to main content

Library which converts arbitrary Protobuf message objects into Entity Protobuf objects which can be used with Google Datastore.

Project description

Protobuf Message to Google Datastore Entity Protobuf Message Translator

Tests Build Status Codecov

This library allows you to store arbitrary Protobuf message objects inside the Google Datastore.

It exposes methods for translating arbitrary Protobuf message objects to Entity Protobuf objects which are used by Google Datastore and vice-versa.

It supports all the native which are supported by the Google Datastore.

Why, Motivation

If you are working with Google Datastore from a single programming language you can utilize one of the multiple Datastore ORMs for that programming language. Those ORMs allow you to define schema for your database models and work with them using native programming language types.

This approach brakes down when you want to work with the same set of datastore entities from multiple programming language.

There are multiple solutions for that problem, but one approach is to define some kind of model schema which is programming language agnostic.

And this library tries to do just that. It utilizes native protobuf message definitions as a schema for database models. This way those definitions can be shared by multiple programming language and each language just needs a light translator library (like this one) which knows how to translate arbitrary Protobuf object into Entity Protobuf object and vice-versa.

Features

Right now the library supports the following Protobuf field types and functionality:

  • All the simple types (string, int32, int64, double, float, bytes, bool, enum)

  • Scalar / container types (map, repeated)

  • Complex types from Protobuf standard library (google.protobuf.Timestamp, google.Protobuf.Struct, google.types.LatLng)

  • Using imports and referencing types from different Protobuf definition files. For example, you can have Protobuf message definition called Model1DB inside file model1.proto which has a field which references Model2DB from model2.proto file.

    For that to work, you need to make sure that the root directory which contains all the generated Protobuf Python files is available in PYTHONPATH.

    For example, if generated files are written to my_app/generated/, my_app/generated/ needs to be in PYTHONPATH and this directory needs to be a Python package (it needs to contain __init__.py file).

For more information on the actual types supported by Google Datastore, refer to https://cloud.google.com/datastore/docs/concepts/entities#properties_and_value_types.

Supported Python versions:

  • Python 2.7
  • Python 3.6
  • Python 3.7

It may also work with Python 3.4 and 3.5, but we don't test against those versions.

Usage

This library exposes three main public methods.

model_pb_to_entity_pb(model_pb, exclude_falsy_values=False, exclude_from_index=None)

This method converts arbitrary Protobuf message objects to the Entity Protobuf object which can be used with Google Datastore.

For example:

from google.cloud import datastore
from google.protobuf.timestamp_pb2 import Timestamp

from protobuf_cloud_datastore_translator import model_pb_to_entity_pb

from generated.protobuf.models import my_model_pb2

# 1. Store your database model object which is represented using a custom Protobuf message class
# instance inside Google Datastore

# Create database model Protobuf instance
model_pb = my_model_pb2.MyModelDB()
# Other entity attributes
model_pb.key1 = 'value1'
model_pb.key2 = 200
model_pb.parameters['foo'] = 'bar'
model_pb.parameters['bar'] = 'baz'

start_time_timestamp = Timestamp()
start_time_timestamp.GetCurrentTime()

model_pb.start_time = start_time_timestamp

# Convert it to Entity Protobuf object which can be used with Google Datastore
entity_pb = model_pb_to_entity_pb(model_pb)

# Store it in the datastore
client = Client(...)
key = self.client.key('MyModelDB', 'some_primary_key')
entity_pb_translated.key.CopyFrom(key.to_protobuf())
entity = datastore.helpers.entity_from_protobuf(entity_pb)
client.put(entity)

model_pb_with_key_to_entity_pb(client, model_pb, exclude_falsy_values=False, exclude_from_index=None)

As a convenience, this library also exposes model_pb_to_entity_pb method. This method assumes there is a special key string field on your Protobuf message which will act as an Entity primary key.

Underneath, this method infers project_id and namespace_id parts of the Entity composite primary key from the client object which is passed to this method. Entity kind is inferred from the Protobuf message model name. For example, if the Protobuf message model name is UserInfoDB, entity kind would be set to UserInfoDB.

For example:

from google.cloud import datastore

from protobuf_cloud_datastore_translator import model_pb_to_entity_pb

model_pb = my_model_pb2.MyModelDB()
model_pb.key = 'key-1234'
# set model fields
# ...

client = Client(project='my-project', namespace='my-namespace')

entity_pb = model_pb_to_entity_pb(model_pb)

# Store it in the datastore
entity = datastore.helpers.entity_from_protobuf(entity_pb)
client.put(entity)

# In this scenario, actual key would look the same if you manually constructed it like this:
key = client.key('MyModelDB', 'key-1234', project='my-project', namespace='my-namespace')

entity_pb_to_model_pb(model_pb_class, entity_pb, strict=False)

This method converts raw Entity Protobuf object as returned by the Google Datastore to provided Protobuf message class.

By default, fields which are found on the Datastore Entity Protobuf object, but not on the Protobuf message class are ignored. If you want an exception to be thrown in such scenario, you can pass strict=True argument to the method.

For example:

key = client.key('MyModelDB', 'some_primary_key')
entity = client.get(key)
entity_pb = datastore.helpers.entity_to_protobuf(entity)

model_pb = entity_pb_to_model_pb(my_model_pb2.MyModelPB, entity_pb)
print(model_pb)

Excluding Protobuf Model Fields from Indexes

By default, Google Cloud Datstore automatically indexes each entity (model) property.

Indexing each field (entity property) is usually not desired nor needed. It also has some limitations (for example, size of a simple field which is to be indexed is limited to 1500 bytes, etc.). In addition to that, uncessary indexing causes increased storage space consumption.

This library allows you to define which model fields to exclude from index on the field basis utilizing Protobuf field options extension.

For example:

syntax = "proto3";

import "google/protobuf/descriptor.proto";

// Custom Protobuf option which specifies which model fields should be excluded
// from index
// NOTE: Keep in mind that it's important not to change the option name
// ("exclude_from_index") since this library uses that special option name to
// determine if a field should be excluded from index.
extend google.protobuf.FieldOptions {
    bool exclude_from_index = 50000;
}

message ExampleDBModelWithOptions1 {
    string string_key_one = 1 [(exclude_from_index) = true];
    string string_key_two = 2;
    string string_key_three = 3 [(exclude_from_index) = true];
    string string_key_four = 4;
    int32 int32_field_one = 5;
    int32 int32_field_two = 6 [(exclude_from_index) = true];
}

In this example, fields string_key_one, string_key_three and int32_field_two won't be indexed (https://cloud.google.com/datastore/docs/concepts/indexes#unindexed_properties).

In this example, field option extension is defined in the same file where model is defined, but in reality you will likely define that extension inside a custom protobuf file (e.g field_options.proto) and include that file inside other files which contain your database model definitions.

Keep in mind that if you define option extension inside a package, that package needs to match the package under which the models are stored.

For example:

  1. protobuf/models/field_options.proto:
syntax = "proto3";

package models;

import "google/protobuf/descriptor.proto";

// Custom Protobuf option which specifies which model fields should be excluded
// from index
// NOTE: Keep in mind that it's important not to change the option name
// ("exclude_from_index") since this library uses that special option name to
// determine if a field should be excluded from index.
extend google.protobuf.FieldOptions {
    bool exclude_from_index = 50000;
}
  1. protobuf/models/my_model.proto:
syntax = "proto3";

package models;

import "models/field_options.proto";

message ExampleDBModelWithOptions1 {
    string string_key_one = 1 [(exclude_from_index) = true];
    string string_key_two = 2;
    string string_key_three = 3 [(exclude_from_index) = true];
    string string_key_four = 4;
    int32 int32_field_one = 5;
    int32 int32_field_two = 6 [(exclude_from_index) = true];
}

Gotchas

In Protobuf syntax version 3 a concept of field being set has been removed and combined with a concept of a default value. This means that even when a field is not set, a default value which is specific to that field type will be returned.

As far as this library is concerned, this means when you are converting / translating Protobuf object with no values set, translated object will still contain default values for fields which are not set.

For example, the output / end result of both those two calls will be the same:

# Field values are explicitly provided, but they match default values
example_pb = example_pb2.ExampleDBModel()
example_pb.bool_key = False
example_pb.string_key = ''
example_pb.int32_key = 0
example_pb.int64_key = 0
example_pb.double_key = 0.0
example_pb.float_key = 0.0
example_pb.enum_key = example_pb2.ExampleEnumModel.ENUM0
example_pb.bool_key = False
example_pb.bytes_key = b''
example_pb.null_key = 1

entity_pb_translated = model_pb_to_entity_pb(example_pb)
print(entity_pb_translated)

# No field values are provided, implicit default values are used during serialization
example_pb = example_pb2.ExampleDBModel()
entity_pb_translated = model_pb_to_entity_pb(example_pb)
print(entity_pb_translated)

If you don't want default values to be set on the translated Entity Protobuf objects and stored inside the datastore, you can pass exclude_falsy_values=True argument to the model_pb_to_entity_pb method.

For details, see:

Examples

For example Protobuf message definitions, see protobuf/ directory.

Example usage:

from google.cloud import datastore

from protobuf_cloud_datastore_translator import model_pb_to_entity_pb
from protobuf_cloud_datastore_translator import entity_pb_to_model_pb

from generated.protobuf.models import my_model_pb2

# 1. Store your database model object which is represented using a custom Protobuf message class
# instance inside Google Datastore

# Create database model Protobuf instance
model_pb = my_model_pb2.MyModelDB()
model_pb.key1 = 'value1'
model_pb.key2 = 200

# Convert it to Entity Protobuf object which can be used with Google Datastore
entity_pb = model_pb_to_entity_pb(model_pb)

# Store it in the datastore
# To avoid conversion back and forth you can also use lower level client methods which
# work directly with the Entity Protobuf objects
# For information on the low level client usage, see
# https://github.com/GoogleCloudPlatform/google-cloud-datastore/blob/master/python/demos/trivial/adams.py#L66
client = Client(...)
key = self.client.key('MyModelDB', 'some_primary_key')
entity_pb_translated.key.CopyFrom(key.to_protobuf())

entity = datastore.helpers.entity_from_protobuf(entity_pb)
client.put(entity)

# 2. Retrieve entity from the datastore and convert it to your Protobuf DB model instance class
# Same here - you can also use low level client to retrieve Entity protobuf object directly and
# avoid unnecessary conversion round trip
key = client.key('MyModelDB', 'some_primary_key')
entity = client.get(key)
entity_pb = datastore.helpers.entity_to_protobuf(entity)

model_pb = entity_pb_to_model_pb(my_model_pb2.MyModelPB, entity_pb)
print(model_pb)

Translator Libraries for Other Programming Languages

This section contains a list of translator libraries for other programming languages which offer the same functionality.

Tests

Unit and integration tests can be found inside tests/ directory.

You can run unit and integration tests and other lint checks by using tox.

# Run all tox targets
tox

# Run only lint checks
tox -e lint

# Run unit tests under Python 2.7
tox -e py2.7-unit-tests

# Run Integration tests under Python 3.7
tox -e py3.7-integration-tests

# Run unit and integration tests and generate and display code coverage report
tox -e coverage

NOTE 1: Integration tests depend on the Google Cloud Datastore Emulator to be running (./scripts/run-datastore-emulator.sh).

NOTE 2: Integration tests also run cross programming language compatibility tests which verify that the Python and Go translator libraries produce exactly the same output. As such, those tests also require Golang >= 1.12 to be installed on the system.

License

Copyright 2019 Tomaz Muraus

Licensed under the Apache License, Version 2.0 (the "License"); you may not use this work except in compliance with the License. You may obtain a copy of the License in the LICENSE file, or at:

http://www.apache.org/licenses/LICENSE-2.0

By contributing you agree that these contributions are your own (or approved by your employer) and you grant a full, complete, irrevocable copyright license to all users and developers of the project, present and future, pursuant to the license of the project.

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

Built Distribution

File details

Details for the file protobuf-cloud-datastore-translator-0.1.9.tar.gz.

File metadata

  • Download URL: protobuf-cloud-datastore-translator-0.1.9.tar.gz
  • Upload date:
  • Size: 38.3 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/1.13.0 pkginfo/1.5.0.1 requests/2.21.0 setuptools/40.8.0 requests-toolbelt/0.9.1 tqdm/4.31.1 CPython/2.7.16

File hashes

Hashes for protobuf-cloud-datastore-translator-0.1.9.tar.gz
Algorithm Hash digest
SHA256 eaa0a7926f87e04a5bc73652c52199c5d12a0b89a25b11fe1fc7465952a47192
MD5 15c45ac4b400a9f4eb4bc98e1408febd
BLAKE2b-256 37cc38f5145de3a607be56eb7eece12bae65df6eb8d5f32b18d176b89859f8ac

See more details on using hashes here.

File details

Details for the file protobuf_cloud_datastore_translator-0.1.9-py3-none-any.whl.

File metadata

File hashes

Hashes for protobuf_cloud_datastore_translator-0.1.9-py3-none-any.whl
Algorithm Hash digest
SHA256 ff9ee55681a2adbec0a5fd77685b01e7d151914e295869125317743ec59f0bb3
MD5 d0b31b77ab4d569796f240395f674d2c
BLAKE2b-256 334449db0756a3aac6a831a1805a3fcb15027732d0e85ab024ae392fbd24bc6d

See more details on using hashes here.

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