Submitting more applications increases your chances of landing a job.

Here’s how busy the average job seeker was last month:

Opportunities viewed

Applications submitted

Keep exploring and applying to maximize your chances!

Looking for employers with a proven track record of hiring women?

Click here to explore opportunities now!
We Value Your Feedback

You are invited to participate in a survey designed to help researchers understand how best to match workers to the types of jobs they are searching for

Would You Be Likely to Participate?

If selected, we will contact you via email with further instructions and details about your participation.

You will receive a $7 payout for answering the survey.


User unblocked successfully
https://bayt.page.link/wj5xDpUbHaoRCwDy6
Back to the job results

Associate Technical Architect

30+ days ago 2026/11/10
Other Business Support Services
Create a job alert for similar positions
Job alert turned off. You won’t receive updates for this search anymore.

Job description


Job Description:



Title: Lead data engineer
DCF Level: L40
About the Role

We are seeking a highly skilled and delivery-focused Lead GCP Data Engineer to support the design, development, and implementation of next-generation enterprise data and AI platforms on Google Cloud Platform (GCP).



This role will work closely with Enterprise Architects, platform leaders, and cross-functional engineering teams to build scalable, reusable, and AI-ready data foundations that enable advanced analytics, intelligent automation, and enterprise AI adoption.



The ideal candidate combines strong hands-on expertise in cloud-native data engineering, modern data platform development, semantic data enablement, and scalable pipeline engineering with the ability to lead engineering teams and drive high-quality delivery across multiple initiatives.



This role is expected to play a critical leadership position within the engineering organization by driving implementation excellence, mentoring teams, and operationalizing modern data architecture patterns.



Key Responsibilities



1. Enterprise Data Platform Engineering



  • Design, develop, and optimize scalable cloud-native data platforms and pipelines on GCP.
  • Implement robust batch, streaming, and event-driven data processing solutions supporting enterprise analytics and AI use cases.
  • Collaborate with Enterprise Architects to translate target-state architecture into scalable engineering implementations.
  • Contribute to modernization of legacy data ecosystems into reusable, governed, and AI-ready cloud platforms.
  • Support implementation of scalable ingestion, transformation, serving, and orchestration frameworks.

2. Data Product Engineering



  • Develop reusable and domain-oriented data products aligned with data mesh and data-as-a-product principles.
  • Implement scalable and modular data pipelines supporting multiple downstream consumers including analytics, AI/ML, and operational applications.
  • Contribute to implementation of:
    • Data contracts
    • Schema management
    • Metadata enrichment
    • Data quality frameworks
    • Reusable transformation patterns
  • Enable discoverability, trust, and operational reliability of enterprise data assets.

3. Semantic Layer & Consumption Enablement



  • Support implementation of semantic and business-consumption layers that simplify enterprise data access.
  • Collaborate with analytics and BI teams to enable standardized business metrics, reusable dimensions, and governed KPI definitions.
  • Contribute to semantic modeling and metadata integration initiatives supporting self-service analytics and AI consumption.
  • Assist in improving enterprise data usability, consistency, and discoverability across platforms.

4. GCP-Native Engineering & Development



  • Develop and optimize solutions leveraging GCP-native services including:
    • BigQuery
    • Dataflow
    • Dataproc
    • DBT
    • Pub/Sub
    • Cloud Storage
    • Cloud Composer (Airflow)
    • Cloud SQL
  • Build scalable ETL/ELT frameworks and real-time streaming pipelines.
  • Optimize data processing performance, reliability, scalability, and cost efficiency.
  • Implement CI/CD pipelines and engineering automation for data platform delivery.

5. AI/ML & GenAI Data Enablement



  • Build AI-ready data pipelines and scalable feature engineering workflows supporting enterprise AI initiatives.
  • Support integration with:
    • Vertex AI
    • BigQuery ML
    • Vector databases
    • LangChain
    • Generative AI Studio
  • Contribute to implementation of RAG architectures, semantic search, and AI-assisted data interaction patterns.
  • Partner with AI/ML teams to operationalize scalable ML and GenAI workflows.

6. Engineering Leadership & Delivery Excellence



  • Lead day-to-day engineering activities across multiple data engineering workstreams.
  • Guide and mentor junior and mid-level data engineers on modern engineering best practices.
  • Ensure adherence to coding standards, architecture guidelines, and operational best practices.
  • Drive engineering quality through automated testing, observability, monitoring, and performance optimization.
  • Collaborate with architects, product owners, analysts, and client stakeholders to ensure successful delivery outcomes.

7. Governance, Reliability & Observability



  • Implement data governance, lineage, monitoring, and observability frameworks.
  • Support enforcement of enterprise standards around security, reliability, scalability, and operational readiness.
  • Contribute to platform monitoring, incident management, and continuous improvement initiatives.
  • Ensure production readiness of pipelines and data services through robust testing and validation processes.

Technical Expertise Required



Area



Skills / Technologies



Cloud Data Engineering



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



Data Transformation



DBT, PySpark, SQL, ETL/ELT frameworks



Streaming & Pipelines



Apache Beam, real-time processing, event-driven architectures



Semantic Layer & Modeling



Semantic modeling concepts, Looker modeling, business metrics standardization



AI/ML Enablement



Vertex AI, BigQuery ML, LangChain, Vector Databases, GenAI integration



Orchestration & Automation



Cloud Composer (Airflow), CI/CD, Workflows



Metadata & Governance



Data Catalog, lineage, metadata management, observability frameworks



Programming



Python, SQL, PySpark



Qualifications



  • Bachelor’s or Master’s degree in Computer Science, Engineering, Information Systems, or related field.
  • 7+ years of experience in data engineering and cloud-native data platform development.
  • Minimum 4+ years of hands-on experience delivering enterprise-scale solutions on GCP.
  • Strong expertise in building scalable batch and streaming data pipelines.
  • Experience working on modern enterprise data platforms supporting analytics, AI/ML, and GenAI use cases.
  • Good understanding of semantic layer concepts, reusable data models, and governed data consumption patterns.
  • Experience working within large-scale data modernization and cloud transformation initiatives.
  • Strong problem-solving, debugging, and performance optimization skills.
  • Proven ability to lead engineering teams and collaborate across architecture, product, and business functions.
  • Excellent communication and stakeholder management skills.
  • GCP certifications such as Professional Data Engineer preferred.


Location:



DGS India - Mumbai - Thane Ashar IT Park

Brand:



Merkle

Time Type:



Full time

Contract Type:



Permanent
This job post has been translated by AI and may contain minor differences or errors.
You’ve reached the maximum limit of 15 job alerts. To create a new alert, please delete an existing one first.
Job alert created for this search. You’ll receive updates when new jobs match.
Are you sure you want to unapply?

You'll no longer be considered for this role and your application will be removed from the employer's inbox.