Data engineer
Listed on 2026-05-08
-
IT/Tech
Data Engineer, Data Science Manager
About Apexon:
Apexon is a digital-first technology services firm specializing in accelerating business transformation and delivering human-centric digital experiences. We have been meeting customers wherever they are in the digital lifecycle and helping them outperform their competition through speed and innovation.
Apexon brings together distinct core competencies in AI, analytics, app development, cloud, commerce, CX, data, Dev Ops, IoT, mobile, quality engineering and UX, and our deep expertise in BFSI, healthcare, and life sciences to help businesses capitalize on the unlimited opportunities digital offers. Our reputation is built on a comprehensive suite of engineering services, a dedication to solving clients toughest technology problems, and a commitment to continuous improvement.
Backed by Goldman Sachs Asset Management and Everstone Capital, Apexon now has a global presence of 15 offices (and 10 delivery centers) across four continents.
We enable #HumanFirstDIGITAL
Data Engineer
Engineer will be part of the datastore-migration Factory team that will be responsible to perform for the end-to-end datastore migration from on-prem Data Lake to AWS hosted Lake House. This is a high visibility and crucial project for Goldman Sachs.
Responsibilities of the Engineer include:
1.
Pipeline Migration
a.
Logic & Scheduling:
Refactoring and migrating extraction logic and job scheduling from legacy frameworks to the new Lakehouse environment.
b.
Data Transfer:
Executing the physical migration of underlying datasets while ensuring data integrity.
c.
Stakeholder Engagement:
Acting as a technical liaison to internal clients, facilitating "hand-off and sign-off" conversations with data owners to ensure migrated assets meet business requirements.
2.
Consumption Pattern Migration
a.
Code Conversion:
Translating and optimizing legacy SQL and Spark-based consumption patterns (raw and modeled) for compatibility with Snowflake and Iceberg.
b.
Usage analysis:
Understand usage patterns to deliver the required data products.
c.
Stakeholder Engagement:
Acting as a technical liaison to internal clients, facilitating "hand-off and sign-off" conversations with data owners to ensure migrated assets meet business requirements.
d.
Data Reconciliation & Quality
3.
A rigorous approach to data validation is required. Candidates must work with reconciliation frameworks to build confidence that migrated data is functionally equivalent to that already used within production flows.
Engineer will also need to work with internal data management platforms team and must have an aptitude for learning new workflows and language constructs as necessary.
Technical
Skills:
1.
Basic Qualifications
a.
Education:
Bachelors or Masters in Computer Science, Applied Mathematics, Engineering, or a related quantitative field.
b.
Experience:
Minimum of 3-5 years of professional "hands-on-keyboard" coding experience in a collaborative, team-based environment. Ability to trouble shoot (SQL) and basic scripting experience.
c.
Languages:
Professional proficiency in Python or Java.
d.
Methodology:
Deep familiarity with the full Software Development Life Cycle (SDLC) and CI/CD best practices & K8s deployment experience.
2.
Core Data Engineering
Competencies:
Candidates must demonstrate a sophisticated understanding of the following modeling concepts to ensure data correctness during reconciliation:
a.
Temporal Data Modeling:
Managing state changes over time (e.g., SCD Type
2).
b.
Schema Management:
Expertise in Schema Evolution ( Apache) and enforcement strategies.
c.
Performance Optimization:
Advanced knowledge of data partitioning and clustering.
d.
Architectural Theory:
Balancing Normalization vs. Denormalization and the strategic use of Natural vs. Surrogate Keys.
3.
Technical Stack Requirements:
While candidates are not expected to be experts in every tool, the collective team must cover the following technologies:
Extraction & Logic
Kafka, ANSI SQL, FTP, Apache Spark
Data Formats
JSON, Avro, Parquet
Platforms
Hadoop (HDFS/Hive), Snowflake, Apache Iceberg, Sybase IQ
Core Competencies:
Demonstrates strong integrity and consistently models good conduct and ethical decision-making.
Acts as a trusted team player who collaborates effectively across multiple teams and functions.
Communicates with clarity and confidence - concise written updates, structured verbal briefings, and proactive stakeholder management.
Works effectively with global teams across time zones and cultures; builds alignment and resolves issues constructively.
Delivery-focused with a strong sense of ownership; drives work to closure and meets commitments.
Brings high energy and urgency to achieve targets while maintaining quality and professionalism.
Shows intellectual curiosity; asks thoughtful questions, surfaces risks early, and seeks feedback to continuously improve.
Our Commitment to Diversity & Inclusion:
Did you know that Apexon has been Certified by Great Place To Work, the global authority on workplace culture, in each of the four regions in which it…
(If this job is in fact in your jurisdiction, then you may be using a Proxy or VPN to access this site, and to progress further, you should change your connectivity to another mobile device or PC).