First Party data integration solution built for marketing teams to enable audience and conversion onboarding into Google Marketing products (Google Ads, Campaign Manager, Google Analytics).

Overview

Megalista

Sample integration code for onboarding offline/CRM data from BigQuery as custom audiences or offline conversions in Google Ads, Google Analytics 360, Google Display & Video 360 and Google Campaign Manager.

Disclaimer: This is not an officially supported Google product.

Supported integrations

  • Google Ads

    • Contact Info Customer Match (email, phone, address) [details]
    • Id Based Customer Match (device Id, user id)
    • Offline Conversions through gclid [details]
    • Store Sales Direct (SSD) conversions [details]
  • Google Analytics (Universal analytics)

  • Campaign Manager

    • Offline Conversions API (user id, device id, match id, gclid, dclid) [details]
  • Google Analytics 4

  • Appsflyer

    • S2S Offline events API (conversion upload), to be used for audience creation and in-app events with Google Ads and DV360 [details]

How does it work

Megalista was design to separate the configuration of conversion/audience upload rules from the engine, giving more freedom for non-technical teams (i.e. Media and Business Inteligence) to setup multiple upload rules on their own.

The solution consists in #1 a Google Spreadsheet (template) in which all rules are defined by mapping a data source (BigQuery Table) to a destination (data upload endpoint) and #2, an apache beam workflow running on Google Dataflow, scheduled to upload the data in batch mode.

Prerequisites

Google Cloud Services

  • Google Cloud Platform account
    • Billing enabled
    • BigQuery enabled
    • Dataflow enabled
    • Cloud storage enabled
    • Cloud scheduler enabled
  • At least one of:
    • Google Ads API Access
    • Campaign Manager API Access
    • Google Analytics API Access
  • Python3
  • Google Cloud SDK

Access Requirements

Those are the minimum roles necessary to deploy Megalista:

  • OAuth Config Editor
  • BigQuery User
  • BigQuery Job User
  • BigQuery Data Viewer
  • Cloud Scheduler Admin
  • Storage Admin
  • Dataflow Admin
  • Service Account Admin
  • Logs Viewer
  • Service Consumer

APIs

Required APIs will depend on upload endpoints in use. We recomend you to enable all of them:

  • Google Sheets (required for any use case) [link]
  • Google Analytics [link]
  • Google Analytics Reporting [link]
  • Google Ads [link]
  • Campaign Manager [link]

Installation

Create a copy of the configuration Spreadsheet

WIP

Creating required access tokens

To access campaigns and user lists on Google's platforms, this dataflow will need OAuth tokens for a account that can authenticate in those systems.

In order to create it, follow these steps:

  • Access GCP console
  • Go to the API & Services section on the top-left menu.
  • On the OAuth Consent Screen and configure an Application name
  • Then, go to the Credentials and create an OAuth client Id with Application type set as Desktop App
  • This will generate a Client Id and a Client secret
  • Run the generate_megalist_token.sh script in this folder providing these two values and follow the instructions
    • Sample: ./generate_megalist_token.sh client_id client_secret
  • This will generate the Access Token and the Refresh token

Creating a bucket on Cloud Storage

This bucket will hold the deployed code for this solution. To create it, navigate to the Storage link on the top-left menu on GCP and click on Create bucket. You can use Regional location and Standard data type for this bucket.

Running Megalista

We recommend first running it locally and make sure that everything works. Make some sample tables on BigQuery for one of the uploaders and make sure that the data is getting correctly to the destination. After that is done, upload the Dataflow template to GCP and try running it manually via the UI to make sure it works. Lastly, configure the Cloud Scheduler to run Megalista in the frequency desired and you'll have a fully functional data integration pipeline.

Running locally

python3 megalist_dataflow/main.py \
  --runner DirectRunner \
  --developer_token ${GOOGLE_ADS_DEVELOPER_TOKEN} \
  --setup_sheet_id ${CONFIGURATION_SHEET_ID} \
  --refresh_token ${REFRESH_TOKEN} \
  --access_token ${ACCESS_TOKEN} \
  --client_id ${CLIENT_ID} \
  --client_secret ${CLIENT_SECRET} \
  --project ${GCP_PROJECT_ID} \
  --region us-central1 \
  --temp_location gs://{$GCS_BUCKET}/tmp

Deploying Pipeline

To deploy, use the following command: ./deploy_cloud.sh project_id bucket_name region_name

Manually executing pipeline using Dataflow UI

To execute the pipeline, use the following steps:

  • Go to Dataflow on GCP console
  • Click on Create job from template
  • On the template selection dropdown, select Custom template
  • Find the megalist file on the bucket you've created, on the templates folder
  • Fill in the parameters required and execute

Scheduling pipeline

To schedule daily/hourly runs, go to Cloud Scheduler:

Creating a Service Account

It's recommended to create a new Service Account to be used with the Cloud Scheduler

  • Go to IAM & Admin > Service Accounts
  • Create a new Service Account with the following roles:
    • Cloud Dataflow Service Agent
    • Dataflow Admin
    • Storage Objects Viewer

Usage

Every upload method expects as source a BigQuery data with specific fields, in addition to specific configuration metadata. For details on how to setup your upload routines, refer to the Megalista Wiki or the Megalista user guide.

Comments
  • Add Firestore source

    Add Firestore source

    Hello. I've implemented a Firestore source, which is meant to work as an alternative for Sheets for parametrization purposes.

    • Why Firestore? Some of our clients are unable to access the Spreadsheets domain for security purposes, and Firestore proved to be a great option. It provides reliable and dynamic storage, and is quite simple to use. Also, the expected usage level for Megalist should fall into the free tier.

    Additionally, Firestore has great integration with App Engine. In a future PR, I’d like to add a highly customizable App Engine form integrated with Firestore, which provides an easy to use alternative to Sheets, especially for non-technical users unable to access it.

    • Requirements: For now, Firestore usage requires a GCP project with native Firestore mode.

    • Usage: The default fields for any upload type are: active (yes/no), bq_dataset, bq_table, source and type. Valid upload types and their required fields can be seen in the firestore_execution_source file.

    As with Sheets, account IDs are included separately. In this case, in a Firestore document called account_config, within the same collection. In other words, the hierarchy is: Firestore collection -> document entries for each schedule + account_config document.

    In order to check Firestore, Megalist requires the setup_firestore_collection command line parameter. If setup_sheet_id is provided, Sheets will be used instead.

    • Improvement opportunities:
    1. For now, the Firestore source expects BigQuery parameters, as it is the only ingest option currently available. This should be made flexible in the future, to allow options such as GCS.

    2. The list of parameter metadata was included in firestore_execution_source, and could be modularized in the future.

    • Testing I have only been able to test uploads to Google Ads and Google Analytics so far, as we generally lack access/test data to other platforms. Help with further testing would be greatly appreciated.
    opened by nivaldoh 10
  • Add partial failure support for Google Ads

    Add partial failure support for Google Ads

    Hi, we've added support for partial failures in Google Ads conversion uploads. By default, if a single row contains errors, the entire batch is blocked. This change aims to allow any valid rows to be uploaded, regardless of errors in other rows in the same batch. For more information: https://developers.google.com/adwords/api/docs/guides/partial-failure

    Topics for future consideration:

    1. We could make this optional, if needed.
    2. Megalist currently shows only the amount of rows that reached the uploader. We intend to contribute again soon with changes that display the number of rows that were, in fact, accepted by the API, as well as logs that register invalid rows individually and the reason for their rejections.
    opened by nivaldoh 10
  • Not being to upload Custom Variables as a part of CM offline conversion data

    Not being to upload Custom Variables as a part of CM offline conversion data

    Hi There,

    We are running Megalista implementation for a client for quite a long time. It's been working wonderfully so far. However, in one of the scenarios, where we use the CM offline conversion upload functionality, it uploads all the data except Custom Variables. Below are the steps that we have performed and confirmed at our end.

    1. All these custom variables are available and enabled on the floodlight level.
    2. We also used regular API calls to push these same variables into the CM platform and that worked fine. So the problem is not with the data or setup on the CM part.

    We value your time and effort. However, it would be of huge help if it would be possible to look at this from Megalista's end. Any help or guidance would be highly appreciated, as we are not sure how to proceed beyond this point.

    Additionally, if any input is needed from our end, we would be happy to contribute.

    Thanks & Regards, Sandhya

    opened by Sandhya-1988 7
  • Fixed error when saving the uploaded data to a BigQuery table

    Fixed error when saving the uploaded data to a BigQuery table

    The process fails to create a BigQuery table with the uploaded data:

    table_name = self._bq_ops_dataset.get() + '.' + execution.source.source_metadata[1] + "_uploaded"
    TypeError: unsupported operand type(s) for +: 'NoneType' and 'str' 
    

    The approach as to change it to execution.source.source_metadata[0] instead of self._bq_ops_dataset.get(), which is returning None instead of the Dataset name.

    opened by gabrielmpaula 7
  • Add dclid implementation to the CM connector and fixed a bug in the customVariables column

    Add dclid implementation to the CM connector and fixed a bug in the customVariables column

    Add dclid implementation to the CM connector and fixed a bug where the customVariables (type/value) info was not retrieved from the table since it was not matching the regex for the filtered columns. Migrate CM API version to 4 since it will be deprecated in Feb 2023. Updated google-api-python-client to the latest version to support the CM API version 4. All tests passed. Tested CM connector and Customer Match connector.

    opened by anaesqueda 3
  • Trouble uploading audience to GoogleAds

    Trouble uploading audience to GoogleAds

    I'm trying to send audience lists to Google Ads, but having the following error in all forms of Customer Match:

    ERROR:megalista.GoogleAdsCustomerMatchAbstractUploader:'int' object has no attribute 'name' Traceback (most recent call last): File "/home/bianca_santos/google-marketing-data-sync/megalista-v2/megalista/megalista_dataflow/uploaders/utils.py", line 72, in inner return func(*args, **kwargs) File "/home/bianca_santos/google-marketing-data-sync/megalista-v2/megalista/megalista_dataflow/uploaders/google_ads/customer_match/abstract_uploader.py", line 209, in process execution.destination.destination_metadata)) File "/home/bianca_santos/google-marketing-data-sync/megalista-v2/megalista/megalista_dataflow/uploaders/google_ads/customer_match/abstract_uploader.py", line 60, in _create_list_if_it_does_not_exist customer_id, list_name, list_definition) File "/home/bianca_santos/google-marketing-data-sync/megalista-v2/megalista/megalista_dataflow/uploaders/google_ads/customer_match/abstract_uploader.py", line 70, in _do_create_list_if_it_does_not_exist resource_name = self._get_user_list_resource_name(customer_id, list_name) File "/home/bianca_santos/google-marketing-data-sync/megalista-v2/megalista/megalista_dataflow/uploaders/google_ads/customer_match/abstract_uploader.py", line 109, in _get_user_list_resource_name query_aux = f"AND user_list.access_reason={ads_client.enums.AccessReasonEnum.OWNED.name}" AttributeError: 'int' object has no attribute 'name' ERROR:megalista.GoogleAdsCustomerMatchAbstractUploader:Error uploading data. Traceback (most recent call last): File "/home/bianca_santos/google-marketing-data-sync/megalista-v2/megalista/megalista_dataflow/uploaders/utils.py", line 72, in inner return func(*args, **kwargs) File "/home/bianca_santos/google-marketing-data-sync/megalista-v2/megalista/megalista_dataflow/uploaders/google_ads/customer_match/abstract_uploader.py", line 209, in process execution.destination.destination_metadata)) File "/home/bianca_santos/google-marketing-data-sync/megalista-v2/megalista/megalista_dataflow/uploaders/google_ads/customer_match/abstract_uploader.py", line 60, in _create_list_if_it_does_not_exist customer_id, list_name, list_definition) File "/home/bianca_santos/google-marketing-data-sync/megalista-v2/megalista/megalista_dataflow/uploaders/google_ads/customer_match/abstract_uploader.py", line 70, in _do_create_list_if_it_does_not_exist resource_name = self._get_user_list_resource_name(customer_id, list_name) File "/home/bianca_santos/google-marketing-data-sync/megalista-v2/megalista/megalista_dataflow/uploaders/google_ads/customer_match/abstract_uploader.py", line 109, in _get_user_list_resource_name query_aux = f"AND user_list.access_reason={ads_client.enums.AccessReasonEnum.OWNED.name}" AttributeError: 'int' object has no attribute 'name' INFO:megalista.GoogleAdsOfflineUploader:Uploading 1000 rows... INFO:megalista.GoogleAdsOfflineConversionsUploader:Uploading 1000 offline conversions on customers/5852184472/conversionActions/792598949 to Google Ads. ERROR:megalista.GoogleAdsOfflineConversionsUploader:Error on uploading offline conversions: Multiple errors in ‘details’. First error: The click or call is owned by a customer account that the uploading customer does not manage., at conversions[0].gclid. INFO:megalista:Completed successfully!

    The account is a MCC Google Ads Account.

    opened by BiancaK3 2
  • [Docs] Possible outdated documentation

    [Docs] Possible outdated documentation

    We have identified 1 possible instance of outdated documentation:

    About

    This is part of a research project that aims to automatically detect outdated documentation in GitHub repositories. We are evaluating the validity of our approach by identifying instances of outdated documentation in real-world projects.

    We hope that this research will be a step towards keeping documentation up-to-date. If this has been helpful, consider updating the documentation to keep it in sync with the source code. If this has not been helpful, consider updating this issue with an explanation, so that we can improve our approach. Thanks!

    opened by wesleytanws 2
  • Customer Match Upload with login_customer_id

    Customer Match Upload with login_customer_id

    Change to take the AccountConfig Customer Id to be used as the login_customer_id for the gAds API Requests. It takes each Audience's Metadata 5 (Account) if exists for the customer_id value in requests. If this Metadata does not exist, it takes also the AccountConfig Customer Id for the customer_id

    This allows to upload audiences to non-MCC accounts where the manager account needs to be passed in the login_customer_id in the new gAds API

    opened by alvarolamas10 2
  • Recode change and reformatted

    Recode change and reformatted

    recode change and reformatted code contain:

    • [x] reformatted code to easily readable code maintenance
    • [x] change %s to fstring for more readable and less error
    • [x] passed local test flake8
    opened by slowy07 2
  • Documentation mismatch in Google Ads Customer Match Device ID schema

    Documentation mismatch in Google Ads Customer Match Device ID schema

    According to the documentation, the expected schema for Google Ads Customer Match Device ID table is | Column name | Type | Description | Requirement | | :---: | :---: | :---: | :---: | | mobile_device_id | STRING | Mobile device Id identifier (android AdId or IOS IDFA) | required |

    But in the source code, the field is mobileId.

    def get_row_keys(self) -> List[str]:
        return ['mobileId']
    
    opened by xfer 2
  • Question: project name is megalist or megalista?

    Question: project name is megalist or megalista?

    I have a doubt, @astivi and @caiotomazelli

    The name of the repository and documentation is Megalista But the folder structure uses the name megalist and some parameters as well.

    We understand that the name of the solution is Megalista, and all coding must use the megalist nomenclature. Is correct?

    opened by joaquimsn 2
  • Allow auth via manager access

    Allow auth via manager access

    I noticed that the README states:

    Calls to the Google Ads API will fail if the user that generated the OAuth2 credentials (Access Token and Refresh Token) doesn't have direct access to the Google Ads account to which the calls are being directed. It's not enough for the user to have access to a MCC above this account and being able to access the account through the interface, it's required that the user has permissions on the account itself.

    However, the Google Ads API client library for Java supports auth via manager access by specifying login-customer-id as described in https://developers.google.com/google-ads/api/docs/client-libs/java/config-file and https://developers.google.com/google-ads/api/docs/concepts/call-structure#cid.

    opened by jradcliff 0
  • BigQuery column names schema should be

    BigQuery column names schema should be "dimension" not "cd" for Data Import Destination.

    Hi Guys, I'm using megalista to upload some audiences from bigquery to google analytics data import.

    Right now you're checking the column names in the data source in bigquery with the schema 'cd\d+', but it doesn't work when we upload the data into google analytics, since the data import only accept 'dimension\d+' schema.

    So, my recommendation is to change in the script megalista_dataflow/data_sources/data_source.py, the line:

    'GA_DATA_IMPORT': {
        'columns': [
            {'name': 'cd\\d+', 'required': True, 'data_type': 'string'},
            {'name': 'cd\\d+', 'required': True, 'data_type': 'string'},
            {'name': 'cd\\d+', 'required': False, 'data_type': 'string'},
        ],
        'groups': []
    },
    

    for:

    'GA_DATA_IMPORT': {
        'columns': [
            {'name': 'dimension\\d+', 'required': True, 'data_type': 'string'},
            {'name': 'dimension\\d+', 'required': True, 'data_type': 'string'},
            {'name': 'dimension\\d+', 'required': False, 'data_type': 'string'},
        ],
        'groups': []
    },
    

    Best,

    Gibran

    opened by gibrano 0
  • [GA4 MP] timestamp_micros should be sent inside the events array

    [GA4 MP] timestamp_micros should be sent inside the events array

    CHANGELOG:

    • Alter timestamp_micros location within the measurement protocol payload for GA4 to inside the events array

    OBSERVATIONS

    Looking at the Measurement Protocol Reference, it seems like timestamp_micros should be sent at the top level of the payload. However, empirically, it does not work. I performed experiments both by using Megalista's workflow and by performing individual post requests to the collection endpoint

    Intuitively, it makes sense that it works this way as a same request could send multiple events for a given user with distinct timestamps

    opened by fsalhani 2
Releases(v4.4)
  • v4.4(Apr 12, 2022)

    Add error notification by email capabilities.

    Every error occurred inside uploaders can now be aggregated and sent by email.
    For setup instructions, refer to the "Errors notifications by email" section of the readme file.

    Source code(tar.gz)
    Source code(zip)
  • v4.3(Feb 23, 2022)

    Update the Google Ads API from v8 to v10.

    This update introduced resend controls for Google Ads Offline Conversions given. This change was driven by a new error being thrown starting by the API v9. More information on possible changes necessaries do sources database tables on the Update Instructions page.

    Source code(tar.gz)
    Source code(zip)
  • v4.2(Sep 15, 2021)

    Changes execution of Google Ads API Customer Match uploader to create a single job and append operations to that single job. Also splits user identifiers by operation.

    Source code(tar.gz)
    Source code(zip)
  • v4.1(Jun 22, 2021)

  • v4.0(May 26, 2021)

Owner
Google
Google ❤️ Open Source
Google
Template to create a telegram bot in python

Template for Telegram Bot Template to create a telegram bot in python. How to Run Set your telegram bot token as environment variable TELEGRAM_BOT_TOK

PyTopia 10 Mar 07, 2022
A Python Script to automate searching of available vaccination centers in the city and hence booking

Cowin Vaccine Availability Notifier Cowin Vaccine Availability Notifier takes your City or PIN code as an input and automatically notifies you via ema

Jayesh Padhiar 7 Sep 05, 2021
Properly-formatted dynamic timestamps for Discord messages

discord-timestamps discord-timestamps generates properly-formatted dynamic timestamps for Discord messages, with support for Arrow objects. format

Ben Soyka 2 Mar 10, 2022
Webb-Tracker-Bot - This is a discord bot that displays current progress of the James Webb Space Telescope.

Webb-Tracker-Bot - This is a discord bot that displays current progress of the James Webb Space Telescope.

Copperbotte 1 Jan 05, 2022
Telegram bot for searching videos in your PDisk account by @AbirHasan2005

PDisk-Videos-Search A Telegram bot for searching videos in your PDisk account by @AbirHasan2005. Configs API_ID - Get from @TeleORG_Bot API_HASH - Get

Abir Hasan 39 Oct 21, 2022
Url-shortener - A url shortener made in python using the API's from the pyshorteners lib

URL Shortener Um encurtador de link feito em python usando as API's da lib pysho

Spyware 3 Jan 07, 2022
SmartFile API Client (Python).

A SmartFile Open Source project. Read more about how SmartFile uses and contributes to Open Source software. Summary This library includes two API cli

SmartFile 19 Jan 11, 2022
Stock Market Insights is a Dashboard that gives the 360 degree view of the particular company stock

fedora-easyfix A collection of self-contained and well-documented issues for newcomers to start contributing with How to setup the local development e

Ganesh N 3 Sep 10, 2021
:lock: Python 2.7/3.X client for HashiCorp Vault

hvac HashiCorp Vault API client for Python 3.x Tested against the latest release, HEAD ref, and 3 previous minor versions (counting back from the late

hvac 1k Dec 29, 2022
Python library to connect to Firebots API

This is a firebot library to connect to Firebots API. https://firebot.app/ From Firebots Website: "Firebot is a fully featured open-source bot that c

1 Jan 08, 2022
Shellkg-py - A temporary Repository to rewrite of shellpkg in python

Shellkg-py - A temporary Repository to rewrite of shellpkg in python

2 Jan 26, 2022
Automatically searching for vaccine appointments

Vaccine Appointments Automatically searching for vaccine appointments Usage To copy this package, run: git clone https://github.com/TheIronicCurtain/v

58 Apr 13, 2021
Support for Competitive Coding badges to add in Github readme or portfolio websites.

Support for Competitive Coding badges to add in Github readme or portfolio websites.

Akshat Aggarwal 2 Feb 14, 2022
Image captioning service for healthcare domains in Vietnamese using VLP

Image captioning service for healthcare domains in Vietnamese using VLP This service is a web service that provides image captioning services for heal

CS-UIT AI Club 2 Nov 04, 2021
An open-source Discord Nuker can be used as a self-bot or a regular bot.

How to use Double click avery.exe, and follow the prompts Features Important! Make sure to use [9] (Scrape Info) before using these, or some things ma

Exortions 3 Jul 03, 2022
A Python script to backup all repos (public or private) of a user.

GithubBackupAllRepos A Python script to backup all repos (public or private) of a user. Features Clone public and private repos Load specified SSH key

Podalirius 15 Jan 03, 2023
in-progress decompilation of Gauntlet Legends decompression code on the N64

Gauntlet-Legends A in-progress decompilation of Gauntlet-Legends (N64) decompression code. This project currently supports the US release. Building (L

6 Jul 23, 2022
An interactive and multi-function Telegram bot, made especially for Telegram groups.

PyKorone An interaction and fun bot for Telegram groups, having some useful and other useless commands. Created as an experiment and learning bot but

Amano Team 17 Nov 12, 2022
BanAllBot - Telegram Code To Ban All Group Members very fast

BanAllBot Telegram Code To Ban All Group Members very fast FORK AND KANG WITH CR

27 May 13, 2022
The programm for collecting data from Tinkoff API and building Excel table.

tinkproject The program for portfolio analysis via Tinkoff API Hello! This is my first project, please, don't judge me. This project was developed for

214 Dec 02, 2022