Dentsu Creative Logo

Dentsu Creative

Senior Data Engineer

Posted Yesterday
Be an Early Applicant
In-Office
2 Locations
Senior level
In-Office
2 Locations
Senior level
Build and maintain scalable batch and real-time data pipelines on GCP to support analytics and AI. Develop reusable data products, implement data quality, schema management, and metadata enrichment. Collaborate with architects, analysts, and ML teams to enable AI-ready data platforms, monitor/operate pipelines, and follow engineering best practices.
The summary above was generated by AI

Job Description:

Title: Data engineer
DCF Level: L30
About the Role

We are seeking a highly motivated and hands-on GCP Data Engineer to support the development and delivery of modern enterprise data and AI platforms on Google Cloud Platform (GCP).

This role will work closely with Lead Data Engineers, Enterprise Architects, analytics teams, and AI/ML teams to build scalable, reliable, and AI-ready data pipelines and cloud-native data solutions that support enterprise analytics, intelligent automation, and digital transformation initiatives.

The ideal candidate should possess strong foundations in cloud data engineering, distributed data processing, and modern data platform development, along with a passion for building high-quality, scalable, and reusable data solutions in a fast-paced enterprise environment.

This role offers an excellent opportunity to work on large-scale data modernization, semantic data enablement, and next-generation AI data ecosystems.

Key Responsibilities

1. Cloud Data Engineering & Pipeline Development

  • Develop and maintain scalable batch and real-time data pipelines on GCP.
  • Build ingestion, transformation, and serving pipelines supporting enterprise analytics and AI use cases.
  • Assist in modernization of legacy data workflows into cloud-native architectures.
  • Develop reusable and maintainable data engineering components following established architectural standards.
  • Support implementation of event-driven and streaming-based data processing solutions.

2. Data Product Development

  • Contribute to development of reusable and domain-oriented data products.
  • Implement data transformation logic and standardized data models supporting downstream analytics and AI consumption.
  • Support implementation of:
    • Data quality validations
    • Schema management
    • Metadata enrichment
    • Data contracts
    • Reusable transformation frameworks
  • Ensure data pipelines are reliable, scalable, and production-ready.

3. GCP Platform Development

  • Work with GCP-native services including:
    • BigQuery
    • Dataflow
    • Dataproc
    • DBT
    • Pub/Sub
    • Cloud Storage
    • Cloud Composer (Airflow)
    • Cloud SQL
  • Develop ETL/ELT pipelines and optimize data processing workloads.
  • Support orchestration and scheduling of enterprise data workflows.
  • Monitor and troubleshoot pipeline performance, failures, and operational issues.

4. Semantic & Analytics Enablement

  • Support implementation of semantic models and business-friendly data structures for analytics and reporting.
  • Collaborate with analytics and BI teams to improve consistency and usability of enterprise data assets.
  • Assist in development of standardized metrics, dimensions, and reusable reporting datasets.
  • Contribute to metadata and data catalog integration initiatives.

5. AI/ML Data Enablement

  • Build and optimize AI-ready data pipelines supporting ML and GenAI initiatives.
  • Support feature engineering and data preparation workflows for AI/ML use cases.
  • Assist in integration with:
    • Vertex AI
    • BigQuery ML
    • Vector databases
    • GenAI frameworks
  • Contribute to implementation of semantic search and AI-assisted data interaction patterns.

6. Engineering Best Practices & Collaboration

  • Follow established coding standards, architecture guidelines, and DevOps practices.
  • Participate in code reviews, testing, debugging, and performance optimization activities.
  • Collaborate effectively with architects, lead engineers, analysts, and client stakeholders.
  • Contribute to engineering documentation, operational runbooks, and technical knowledge sharing.
  • Continuously learn and adopt modern cloud, data engineering, and AI platform technologies.

7. Governance, Monitoring & Operational Support

  • Support implementation of monitoring, logging, lineage, and observability frameworks.
  • Ensure adherence to enterprise security, governance, and compliance standards.
  • Assist in incident resolution, root cause analysis, and platform stability improvements.
  • Contribute to continuous improvement initiatives for operational excellence and delivery quality.

Technical Expertise Required

Area

Skills / Technologies

Cloud Data Engineering

GCP, BigQuery, Dataflow, Dataproc, Pub/Sub, Cloud Storage

Data Processing

SQL, Python, PySpark, DBT

Streaming & Pipelines

Apache Beam, batch & real-time processing

Workflow Orchestration

Cloud Composer (Airflow), Workflows

Semantic & Analytics

Basic semantic modeling concepts, reporting datasets, Looker exposure preferred

AI/ML Enablement

Vertex AI exposure, BigQuery ML, GenAI ecosystem awareness

Metadata & Governance

Data Catalog, metadata management, lineage concepts

DevOps & Automation

CI/CD concepts, Git, automation frameworks

Qualifications

  • Bachelor’s degree in Computer Science, Engineering, Information Systems, or related field.
  • 3–6 years of experience in data engineering and cloud-based data platform development.
  • Hands-on experience working with Google Cloud Platform (GCP) data services.
  • Strong SQL and Python programming skills.
  • Experience developing scalable ETL/ELT pipelines and distributed data processing workflows.
  • Understanding of modern data architecture concepts including data lakes, data warehouses, and streaming pipelines.
  • Exposure to analytics, AI/ML, or GenAI-enabled data ecosystems preferred.
  • Strong analytical, troubleshooting, and problem-solving skills.
  • Ability to work collaboratively in Agile and cross-functional delivery teams.
  • GCP certifications such as Associate Cloud Engineer or Professional Data Engineer are a plus.

Preferred Experience

  • Exposure to enterprise-scale data modernization initiatives.
  • Familiarity with modern data engineering and data product development practices.
  • Experience working with semantic layers, reporting platforms, or BI ecosystems.
  • Exposure to AI-ready data platforms and modern analytics ecosystems.
  • Experience in retail, marketing, customer analytics, or digital commerce domains is an advantage.

Location:

DGS India - Mumbai - Thane Ashar IT Park

Brand:

Merkle

Time Type:

Full time

Contract Type:

Permanent

Similar Jobs

Yesterday
In-Office
Mumbai, Maharashtra, IND
Senior level
Senior level
Fintech • Information Technology • Financial Services
Lead design and delivery of enterprise data platform capabilities, building scalable ingestion, transformation and orchestration pipelines using Python, Airflow, Snowflake and dbt. Drive metadata, lineage, data quality, observability, and Agentic AI integrations; support production L2/L3 operations, CI/CD deployments, POCs, cross-functional integration, and mentor engineering teams within an Agile framework.
Top Skills: AntigravityApache AirflowApache IcebergAWSAzureCi/CdCursorDbtDockerGCPGitKafkaKubernetesModel Context Protocol (Mcp)PythonRagSnowflakeSnowpipeSQLVector DatabasesWindsurf
8 Days Ago
Hybrid
Navi Mumbai, Thane, Maharashtra, IND
Senior level
Senior level
Blockchain • Fintech • Payments • Consulting • Cryptocurrency • Cybersecurity • Quantum Computing
Design and implement AI-driven data platforms and pipelines. Build GenAI/LLM workflows and agentic systems, develop production Python/PySpark applications and APIs, optimize Databricks and Snowflake analytics, architect AWS Glue ETL, and apply DBA fundamentals across relational and NoSQL stores.
Top Skills: Amazon RdsAws BedrockAws GlueAws LambdaAws SagemakerCi/CdDatabricksEmbeddingsFastapiFlaskGenaiLlmsMongodb AtlasMySQLPostgresPysparkPythonRagRest ApisSnowflakeTerraformVector Databases
6 Days Ago
Hybrid
Navi Mumbai, Thane, Maharashtra, IND
Senior level
Senior level
Artificial Intelligence • Big Data • Enterprise Web • Fintech • Software • Financial Services
Lead design and hands-on implementation of scalable cloud microservices and platform solutions. Mentor engineers, drive architecture decisions (DDD, clean/hexagonal), ensure non-functional requirements, document designs, and collaborate across teams to deliver reliable RESTful services used by customers.
Top Skills: AgileAWSClean ArchitectureDomain Driven DesignGCPHexagonal ArchitectureJavaJSONJwtKubernetesMicroservicesExcelMicrosoft OutlookMicrosoft WordRestful ApisService-Oriented ArchitectureSpring BootSpring Framework

What you need to know about the Mumbai Tech Scene

From haggling for the best price at Chor Bazaar to the bustle of Crawford Market, the energy of Mumbai's traditional markets is a key part of the city's charm. And while these markets will always have their place, the city also boasts a thriving e-commerce scene, ranking among the largest in the region. Driven by online sales in everything from snacks to licensed sports merchandise to children's apparel, the local industry is worth billions, with companies actively recruiting to meet the demands of continued growth.

Sign up now Access later

Create Free Account

Please log in or sign up to report this job.

Create Free Account