Job Description

About The Project

Join Neurons Lab as a Senior GCP Data Architect working on banking data lake and reporting systems for large financial institutions. This is an end-to-end role where youll start with presales and architecture - gathering requirements, designing solutions, establishing governance frameworks - then progress to implementing your designs through to MVP delivery.

Our Focus: Banking and Financial Services clients with stringent regulatory requirements (Basel III, MAS TRM, PCI-DSS, GDPR). Youll architect data lake solutions for critical use cases like AML reporting, KYC data management, and regulatory compliance - ensuring robust data governance, metadata management, and data quality frameworks.

Your Impact: Design end-to-end data architectures combining GCP data services (BigQuery, Dataflow, Data Catalog, Dataplex) with on-premise systems (ex. Oracle). Establish data governance frameworks with cataloging, lineage, and quality controls. Then build your designs - implementing data pipelines, governance tooling, and delivering working MVPs for mission-critical banking systems.

Duration: Part-time long-term engagement with project-based allocations

Reporting: Direct report to Head of Cloud

Objective

Design and deliver data lake solutions for banking clients on Google Cloud Platform:

  • Architecture Excellence: Design data lake architectures, create technical specifications, lead requirements gathering and solution workshops
  • MVP Implementation: Build your designs - implement data pipelines, deploy governance frameworks, deliver working MVPs with data quality
  • Data Governance: Establish and implement comprehensive governance frameworks including metadata management, data cataloging, data lineage, and data quality standards
  • Client Success: Own the full lifecycle from requirements to MVP delivery, ensuring secure, compliant, scalable solutions aligned with banking regulations and GCP best practices
  • Knowledge Transfer: Create reusable architectural patterns, data governance blueprints, implementation code, and comprehensive documentation

KPI

  • Design data architecture comprehensive documentation and governance framework
  • Deliver MVP from architecture to working implementation
  • Establish data governance implementations including metadata catalogs, lineage tracking, and quality monitoring
  • Achieve 80%+ client acceptance rate on proposed data architectures and technical specifications
  • Implement data pipelines with data quality and comprehensive monitoring
  • Create reusable architectural patterns and IaC modules for banking data lakes and regulatory reporting systems
  • Document solutions aligned with banking regulations (Basel III, MAS TRM, AML/KYC requirements)
  • Deliver cost models and ROI calculations for data lake implementations

Areas of Responsibility

Phase 1: Data Architecture & Presales

  • Elicit and document requirements for data lake, reporting systems, and analytics platforms
  • Design end-to-end data architectures: ingestion patterns, storage strategies, processing pipelines, consumption layers
  • Create architecture diagrams, data models (dimensional, data vault), technical specifications, and implementation roadmaps
  • Data Governance Design: Design metadata management frameworks, data cataloging strategies, data lineage implementations, data quality monitoring
  • Evaluate technology options and recommend optimal GCP and On Premises data services for specific banking use cases
  • Calculate ROI, TCO, and cost-benefit analysis for data lake implementations
  • Banking Domain: Design solutions for AML reporting, KYC data management, regulatory compliance, risk reporting
  • Hybrid Cloud Architecture: Design integration patterns between GCP and on-premise platforms (ex. Oracle, SQL Server)
  • Security & compliance architecture: IAM, VPC Service Controls, encryption, data residency, audit logging
  • Participate in presales activities: technical presentations, client workshops, demos, proposal support
  • Create detailed implementation roadmaps and technical specifications for development teams

Phase 2: MVP Implementation & Delivery

  • Build production data pipelines based on approved architectures
  • Implement data warehouses: schema creation, partitioning, clustering, optimization, security setup
  • Deploy data governance frameworks: Data Catalog configuration, metadata tagging, lineage tracking, quality monitoring
  • Develop data ingestion patterns from on-premise systems
  • Write production-grade data transformation, validation, and business logic implementation
  • Develop Python applications for data processing automation, quality checks, and orchestration
  • Build data quality frameworks with validation rules, anomaly detection, and alerting
  • Create sample dashboards and reports for business stakeholders
  • Implement CI/CD pipelines for data pipeline deployment using Terraform
  • Deploy monitoring, logging, and alerting for data pipelines and workloads
  • Performance tuning and cost optimization for production data workloads
  • Document implementation details, operational runbooks, and knowledge transfer materials

Skills & Knowledge

Certifications & Core Platform:

  • GCP Professional Cloud Architect (strong plus, not mandatory) - demonstrates GCP expertise
  • GCP Professional Data Engineer (alternative certification)
  • Core GCP data services: BigQuery, Dataflow, Pub/Sub, Data Catalog, Dataplex, Dataform, Composer, Cloud Storage, Data Fusion

Must-Have Technical Skills:

  • Data Architecture (expert level) - data lakes, lakehouses, data warehouses, modern data architectures
  • Data Governance (expert level) - metadata management, data cataloging, data lineage, data quality frameworks, hands-on implementation
  • SQL (advanced-expert level) - production-grade queries, complex transformations, window functions, CTEs, query optimization, performance tuning
  • Data Modeling (expert level) - dimensional modeling, data vault, entity-relationship, schema design patterns for banking systems
  • ETL/ELT Implementation (advanced level) - production data pipelines using Dataflow (Apache Beam), Dataform, Composer, orchestration
  • Python (advanced level) - production data applications, pandas/numpy for data processing, automation, scripting, testing
  • Data Quality (advanced level) - validation frameworks, monitoring strategies, anomaly detection, automated testing

BFSI Domain Knowledge (MANDATORY):

  • Banking data domains: AML (Anti-Money Laundering), KYC (Know Your Customer), regulatory reporting, risk management
  • Financial regulations: Basel III, MAS TRM (Monetary Authority of Singapore Technology Risk Management), PCI-DSS, GDPR
  • Understanding of banking data flows, reporting requirements, and compliance frameworks
  • Experience with banking data models and financial services data architecture

Strong Plus:

  • On-premise data platforms: Oracle, SQL Server, Teradata
  • Data quality tools: Great Expectations, Soda, dbt tests, custom validation frameworks
  • Visualization tools: Looker, Looker Studio, Tableau, Power BI
  • Infrastructure as Code: Terraform for GCP data services
  • Streaming data processing: Pub/Sub, Dataflow streaming, Kafka integration
  • Vector databases and search: Vertex AI Vector Search, Elasticsearch (for GenAI use cases)

Communication:

  • Advanced English (written and verbal)
  • Client-facing presentations, workshops, and requirement gathering sessions
  • Technical documentation and architecture artifacts (diagrams, specifications, data models)
  • Stakeholder management and cross-functional collaboration

Experience

  • 7+ years in data architecture, data engineering, or solution architecture roles
  • 4+ years hands-on with GCP data services (BigQuery, Dataflow, Data Catalog, Dataplex) - production implementations
  • 3+ years in data governance (MANDATORY) - metadata management, data lineage, data quality frameworks, data cataloging
  • 3+ years in BFSI/Banking domain (MANDATORY) - AML, KYC, regulatory reporting, compliance requirements
  • 5+ years with SQL and relational databases - complex query writing, optimization, performance tuning
  • 3+ years in data modeling - dimensional modeling, data vault, or other data warehouse methodologies
  • 2+ years in presales/architecture roles - requirements gathering, solution design, client presentations
  • Experience with on-premise data platforms (MANDATORY) - Ex. Teradata, Oracle, SQL Server integration with cloud


Job Details

Role Level: Mid-Level Work Type: Full-Time
Country: Philippines City: Metro Manila
Company Website: https://www.neurons-lab.com/ Job Function: Engineering
Company Industry/
Sector:
IT Services and IT Consulting

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