Skip to main content

Transform library for GCP data pipelines (dbt macros)

Project description

gcp-pipeline-transform

SQL library - dbt macros for audit columns and PII masking.

NO Apache Beam or Airflow dependencies.


Architecture

                      GCP-PIPELINE-TRANSFORM
                      ──────────────────────

  ┌─────────────────────────────────────────────────────────────────┐
  │                     SQL LAYER                                    │
  │                                                                  │
  │  ┌─────────────────────────────────────────────────────────┐    │
  │  │                   dbt Macros                             │    │
  │  │                                                          │    │
  │  │  ┌─────────────────┐    ┌─────────────────┐             │    │
  │  │  │ Audit Columns   │    │  PII Masking    │             │    │
  │  │  │                 │    │                 │             │    │
  │  │  │ • _run_id       │    │ • SSN masking   │             │    │
  │  │  │ • _source_file  │    │ • DOB masking   │             │    │
  │  │  │ • _processed_at │    │ • Configurable  │             │    │
  │  │  │ • _transformed  │    │                 │             │    │
  │  │  └─────────────────┘    └─────────────────┘             │    │
  │  │                                                          │    │
  │  └─────────────────────────────────────────────────────────┘    │
  │                              │                                   │
  │                              ▼                                   │
  │  ┌─────────────────────────────────────────────────────────┐    │
  │  │                   SQL Templates                          │    │
  │  │                                                          │    │
  │  │  • Staging models (clean raw data)                      │    │
  │  │  • FDP models (business transformations)                │    │
  │  │  • Quality checks (dbt tests)                           │    │
  │  │                                                          │    │
  │  └─────────────────────────────────────────────────────────┘    │
  │                                                                  │
  └─────────────────────────────────────────────────────────────────┘
                              │
                              ▼
                    Used by: application1-transformation, application2-transformation

Transformation Flow

  BigQuery ODP                   dbt                      BigQuery FDP
  ────────────                   ───                      ────────────

  Raw tables      ┌───────────────────────────────────┐
  (from Beam)     │                                   │
       │          │  1. Staging Models                │
       └─────────►│     {{ source('odp', 'table') }}  │
                  │     • Clean data types            │
                  │     • Apply naming conventions    │
                  │                                   │
                  │  2. Add Audit Columns             │
                  │     {{ add_audit_columns() }}     │
                  │     • _run_id                     │
                  │     • _transformed_at             │
                  │                                   │
                  │  3. Apply PII Masking             │────► FDP Tables
                  │     {{ mask_ssn(column) }}        │
                  │     {{ mask_dob(column) }}        │
                  │                                   │
                  │  4. Business Logic                │
                  │     • JOINs (Application1: 2→1)             │
                  │     • MAPs (Application2: 1→1)             │
                  │                                   │
                  └───────────────────────────────────┘

Macros

add_audit_columns

Adds standard audit columns to every FDP table.

-- Usage in dbt model
SELECT
    customer_id,
    first_name,
    last_name,
    {{ add_audit_columns() }}
FROM {{ ref('stg_customers') }}

-- Output columns added:
--   _run_id STRING
--   _source_file STRING
--   _processed_at TIMESTAMP
--   _transformed_at TIMESTAMP (current time)

mask_ssn

Masks Social Security Numbers for PII compliance.

-- Usage
SELECT
    customer_id,
    {{ mask_ssn('ssn') }} as ssn_masked
FROM {{ ref('stg_customers') }}

-- Input:  123-45-6789
-- Output: XXX-XX-6789

mask_dob

Masks date of birth for PII compliance.

-- Usage
SELECT
    customer_id,
    {{ mask_dob('date_of_birth') }} as dob_masked
FROM {{ ref('stg_customers') }}

-- Input:  1990-05-15
-- Output: 1990-01-01 (only year preserved)

PII Masking Configuration

PII masking is configurable per schema. Define which fields to mask in the entity schema:

# In deployment schema definition
from gcp_pipeline_core.schema import EntitySchema, SchemaField

CustomerSchema = EntitySchema(
    entity_name="customers",
    system_id="Application1",
    fields=[
        SchemaField(name="customer_id", field_type="STRING", required=True),
        SchemaField(name="ssn", field_type="STRING", is_pii=True),
        SchemaField(name="dob", field_type="DATE", is_pii=True),
    ],
    primary_key=["customer_id"]
)

Key Findings

1. Standardized Audit Macros

  • add_audit_columns(): Ensures consistent lineage tracking across all models by adding run_id, processed_timestamp, and source_file.
  • apply_audit_columns(): Utility to retroactively add audit columns to existing tables.

2. Metadata-Driven PII Masking

  • Generic Masking Engine: Focuses on the shape of masking rather than the type of data.
  • Core Strategies:
    • mask_full(): Complete masking based on field length.
    • mask_partial_last4(): Preserves utility (last 4) while protecting privacy.
    • mask_redacted(): Replaces sensitive values with a constant "REDACTED" label.
  • Metadata-Powered: Selection is driven by pii_type in the schema metadata (e.g., pii_type: PARTIAL), ensuring the library doesn't make blind assumptions about data content.
  • Environment-Aware: Automatically adjusts depth (Full vs. Partial vs. None) based on the target environment (Prod vs. Staging vs. Dev).

3. Configurable Data Enrichment

  • Generic Macro: apply_enrichment(rules)
  • Rule Types:
    • DATE_PARTS: Automatically extracts year, month, day, and day name.
    • BUCKET: Categorizes numeric values into ranges (e.g., credit scores).
    • LOOKUP: Maps legacy codes to human-readable statuses.
    • EXPRESSION: Applies custom SQL expressions for complex logic.
  • Config-Driven: Enrichment is defined via metadata, keeping the library code generic and reusable across systems.

4. Data Safety & Validation

  • validate_no_pii_in_export: Safety macro that checks for unmasked PII patterns before data export, preventing accidental exposure of sensitive information.

Governance & Compliance

  • SQL Only: This library is strictly for dbt/SQL logic. NO Python dependencies (Beam/Airflow) allowed.
  • Consistency: All transformation models must use add_audit_columns() to maintain data lineage.
  • Privacy: High-risk PII fields (SSN, etc.) MUST be masked using the provided macros in all non-production exports.

Directory Structure

gcp-pipeline-transform/
└── dbt_shared/
    ├── macros/
    │   ├── audit_columns.sql      # add_audit_columns()
    │   ├── pii_masking.sql        # mask_ssn(), mask_dob()
    │   └── quality_checks.sql     # row_count_check(), etc.
    └── templates/
        ├── staging_model.sql      # Template for staging
        └── fdp_model.sql          # Template for FDP

Usage in Deployment

Reference in your deployment's dbt project:

# dbt_project.yml
name: 'application1_transformation'

# Reference shared macros
packages:
  - local: ../../gcp-pipeline-libraries/gcp-pipeline-transform/dbt_shared

Or copy macros to your project:

cp -r gcp-pipeline-libraries/gcp-pipeline-transform/dbt_shared/macros \
      deployments/application1-transformation/dbt/macros/shared/

Run Tests

Run dbt macro unit tests:

cd gcp-pipeline-libraries/gcp-pipeline-transform
pytest tests/unit/test_pii_macros.py

These tests verify the compiled SQL of the dbt macros using a mock dbt 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

gcp_pipeline_transform-1.0.28.tar.gz (10.4 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

gcp_pipeline_transform-1.0.28-py3-none-any.whl (9.5 kB view details)

Uploaded Python 3

File details

Details for the file gcp_pipeline_transform-1.0.28.tar.gz.

File metadata

  • Download URL: gcp_pipeline_transform-1.0.28.tar.gz
  • Upload date:
  • Size: 10.4 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.11.15

File hashes

Hashes for gcp_pipeline_transform-1.0.28.tar.gz
Algorithm Hash digest
SHA256 359beba8b4108fd312b7a33e9b270e3ac6c0401535168e23eda677e894aac754
MD5 3874d170362419e4cb3560ee51a60f49
BLAKE2b-256 36de0d6e99ec84be805697d64c56246e5d3e31885149c2ba4a239bc03cf9bf1b

See more details on using hashes here.

File details

Details for the file gcp_pipeline_transform-1.0.28-py3-none-any.whl.

File metadata

File hashes

Hashes for gcp_pipeline_transform-1.0.28-py3-none-any.whl
Algorithm Hash digest
SHA256 566dacc941a84f29794deba31a2c58288fc5051a105fb677d6a681f78f2fd994
MD5 980447b85f54287a0678de982489ac21
BLAKE2b-256 2897c574a6d3ddb6b393427d8054b874db092394dc28066824218017cb67c036

See more details on using hashes here.

Supported by

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