
Senior Data Engineer - Enterprise B2B Marketplace
TruelogicAbout Truelogic
At Truelogic we are a leading provider of nearshore staff augmentation services headquartered in New York. For over two decades, we’ve been delivering top-tier technology solutions to companies of all sizes, from innovative startups to industry leaders, helping them achieve their digital transformation goals.
Our team of 600+ highly skilled tech professionals, based in Latin America, drives digital disruption by partnering with U.S. companies on their most impactful projects. Whether collaborating with Fortune 500 giants or scaling startups, we deliver results that make a difference.
By applying for this position, you’re taking the first step in joining a dynamic team that values your expertise and aspirations. We aim to align your skills with opportunities that foster exceptional career growth and success while contributing to transformative projects that shape the future.
Our Client
Our client operates the premier technology-driven B2B wholesale marketplace for a rapidly expanding compliance-driven industry, serving thousands of brands and retailers across North America. Managing over $4B+ in annual transaction volume—representing more than 40% of its market's domestic wholesale commerce—their platform streamlines complex logistics, order management, and multi-territory client relationships. They are expanding their core data team to modernize enterprise analytics infrastructure and scale the platform that drives operational and financial insights.
Job Summary
The Senior Data Engineer is a high-influence technical leadership role responsible for steering the architecture, evolution, and scalability of the enterprise data platform. Partnering cross-functionally with Engineering, Finance, Product, and Operations, you will establish the technical strategy for how data is modeled, orchestrated, and consumed company-wide. This role demands a hands-on technical driver who can build highly resilient serverless data pipelines, modernize legacy ingestion processes, and institute strict data governance and observability standards across a modern cloud-native data stack.
Responsibilities
Data Platform Evolution: Guide the foundational architecture, scaling strategies, and long-term roadmap of the enterprise data platform.
Pipeline Engineering: Design and lead the development of highly scalable data pipelines using Airflow, dbt, and Python.
Modern Stack Integration: Build and maintain high-throughput integrations across core modern data stack tools, including Fivetran, Redshift, and Sigma.
Serverless Architecture: Develop and optimize serverless data services and ingestion layers leveraging AWS infrastructure (e.g., AWS Lambda).
Advanced Data Modeling: Partner with cross-functional stakeholders to define reliable, performant data warehouse
Opens the company's application page
Listed via
Jobicy
jobicy.com
Similar roles

Data Analyst
Harnham - Data & Analytics Recruitment

Senior Data Analyst
Harnham - Data & Analytics Recruitment

Service Charge Data Analyst
Robertson Bell
Data Analyst
R3vamp Limited
Design & Tech
Related reads from TCHNX

Why AI Design Tools Are Quietly Replacing Junior Designers and What Actually Comes Next
AI tools promise efficiency, but London studios are discovering an unexpected paradox: automation creates new bottlenecks requiring precisely the expertise being eliminated. We investigate what's actually happening to entry-level design work.

The Inference Economy: Why AI’s Biggest Cost Shift Is Happening After Training
A major shift in AI economics is reshaping the industry. As training frontier models becomes more expensive and inference becomes dramatically cheaper, companies are being forced to rethink how they build, deploy, price, and monetise intelligent systems.

The Emergence of Small Language Models: Why Efficiency Is Overtaking Scale
As the AI industry confronts computational costs and environmental concerns, a new generation of compact models is proving that bigger isn't always better. Small language models are reshaping enterprise AI deployment.