Job Description
About Exponentia.ai
Exponentia.ai
is a fast-growing AI-first technology services company, partnering with enterprises to shape and accelerate their journey to AI maturity. With a presence across the
US, UK, UAE, India, and Singapore , we bring together deep domain knowledge, cloud-scale engineering, and cutting-edge artificial intelligence to help our clients transform into agile, insight-driven organizations.
We are proud partners with global technology leaders such as
Databricks, Microsoft, AWS, and Qlik , and have been consistently recognized for innovation, delivery excellence, and trusted advisories.
Awards & Recognitions:
Innovation Partner of the Year – Databricks, 2024
Digital Impact Award, UK – 2024 (TMT Sector)
Rising Star – APJ Databricks Partner Awards 2023
Qlik’s Most Enabled Partner – APAC
With a team of
450+ AI engineers, data scientists, and consultants , we are on a mission to redefine how work is done, by combining human intelligence with AI agents to deliver exponential outcomes.
Learn more: www.exponentia.ai
About the Role:
We are looking for a
CoE
Lead – Data Engineering (Databricks & Azure)
to drive and scale our modern data engineering practice across the organization. This leadership role will be responsible for defining the technical vision, establishing best-in-class engineering standards, and overseeing the successful delivery of enterprise-grade data and AI platforms built on
Databricks and Microsoft Azure .
As the CoE Lead, you will combine
deep hands-on expertise in Data and AI
with strategic oversight, ensuring architecture consistency, platform convergence, and engineering excellence across engagements. You will act as the primary technical authority for data engineering initiatives, guiding solution design, mentoring senior engineers and architects, and partnering with business and client stakeholders to deliver measurable outcomes.
The ideal candidate brings
strong practical experience delivering Data and AI solutions using Databricks and Azure , along with prior exposure to
Tier 1 or Tier 2 organizations , reflecting the scale, governance maturity, and complexity expected from this role.
Key Responsibilities:
CoE Leadership & Strategy:
Define and own the
Data Engineering CoE vision, roadmap, and operating model
across Databricks and Azure.
Establish
architecture standards, reference patterns, best practices, and governance
for modern data platforms.
Drive alignment across platforms (Databricks, Azure Data Services, Fabric where applicable) to avoid silos.
Partner with leadership on
capability building, investments, and GTM strategy
for data engineering offerings.
Architecture & Technical Excellence:
Act as the
final technical authority
for solution design and architecture reviews.
Design and oversee
end-to-end data architectures
including ingestion, transformation, storage, and consumption.
Guide teams on:
Lakehouse architecture (Delta Lake)
Batch and streaming pipelines
Data modelling and performance optimization
Security, governance, and cost optimization
Ensure solutions are scalable, reliable, and aligned with enterprise standards.
Delivery & Execution Oversight:
Provide technical and delivery oversight across multiple engagements.
Support complex problem-solving and unblock teams during critical phases.
Ensure adherence to Agile delivery practices, SLAs, and quality benchmarks.
Collaborate closely with program managers and architects to ensure predictable delivery.
Stakeholder & Client Engagement:
Act as a
trusted advisor
to senior client stakeholders (CXOs, Data Heads, Architects).
Lead technical discussions, solution walkthroughs, and proposal responses.
Support pre-sales activities including
solutioning, estimations, and technical presentations .
Build long-term client relationships through credibility and execution excellence.
Team Building & Mentorship:
Build, mentor, and scale high-performing data engineering teams.
Define
skill frameworks, learning paths, and certification plans
for the CoE.
Coach senior engineers and architects on both technical depth and leadership skills.
Drive a strong engineering culture focused on quality, ownership, and continuous improvement.
Ideal Candidate Profile
10 - 12 years
of overall experience with strong depth in Data Engineering and Data Platforms.
Proven experience leading a Data Engineering, Data or AI CoE, practice, or large delivery teams.
Current or prior experience in Tier 1 or Tier 2 organizations is strongly preferred .
Deep hands-on expertise with:
Databricks (Spark, Delta Lake, Unity Catalog, Jobs, Workflows)
Azure Data Platform (ADLS, ADF, Synapse, Azure SQL, Event Hubs, etc.)
Strong experience with
modern data architecture patterns
(Lakehouse, Lambda/Kappa).
Solid understanding of
data governance, security, and cost management
on Azure.
Demonstrated ability to balance
hands-on problem solving with strategic leadership .
Strong communication skills with the ability to engage senior technical and business stakeholders.
Experience working in
consulting or client-facing environments
is highly preferred.