Senior Data Engineer
Nelo
Location
CDMX; NYC
Employment Type
Full time
Location Type
On-site
Department
Data Science
Deadline to Apply
March 31, 2026 at 2:00 AM EDT
About Nelo
Nelo is a leading consumer fintech and e-commerce platform in Mexico, with >$500MM in annualized GMV and >$75MM in annualized revenue. Our mission is to increase the buying power of consumers in Latin America, and we are doing so by building a modern alternative to credit cards.
Nelo has raised over $40M of venture capital from investors including Homebrew, Two Sigma Ventures and Susa Ventures. Nelo has additionally raised a $100M asset credit facility from Victory Park Capital.
Our lean team includes experienced leaders from top technology companies including Uber, Amazon, Rappi, and DiDi. We pride ourselves on our velocity, intellectual rigor, and efficiency.
Nelo has offices in Mexico City and New York City.
About the role
We are looking for a Senior Data Engineer to help design, build, and operate the core data platform that powers analytics, machine learning, and business decision-making at Nelo. This is a hands-on, high-impact role for an experienced engineer who enjoys working across the full data lifecycle, from ingestion and transformation to reliability, scalability, and ML enablement.
You will partner closely with Analytics, Product, Engineering, Marketing, Risk, and Machine Learning teams to ensure our data infrastructure is robust, scalable, and easy to build on as Nelo continues to grow.
What you’ll do
Own and evolve the data platform: Design, build, and maintain scalable, reliable data pipelines and datasets that power analytics, reporting, and machine learning use cases across the company.
Build and maintain ETL/ELT pipelines: Develop production-grade pipelines that ingest data from transactional systems, third-party providers, and event streams into our data warehouse and feature store.
Enable analytics and business teams: Partner with Data Analytics and stakeholders to ensure data is well-modeled, documented, and accessible for self-service analysis.
Support machine learning workflows: Build and maintain feature pipelines and feature stores that support model training, validation, and online/offline inference.
Ensure data quality and reliability: Implement data quality checks, monitoring, alerting, and SLAs to ensure trust in our data products.
Improve developer experience: Build tooling, abstractions, and CI/CD pipelines that make it easier and safer to develop, test, and deploy data pipelines.
Collaborate cross-functionally: Work closely with Software Engineers, ML Engineers, and Product Managers to align data models and pipelines with product and business needs.
Scale for growth: Continuously improve performance, cost efficiency, and scalability of our data infrastructure as data volume and use cases expand.
Role requirements
At least 5 years of experience in data engineering, software engineering, or backend engineering roles with significant ownership of production data systems.
Technical Skills
Strong proficiency in Python for building data pipelines and infrastructure.
Advanced SQL skills and deep experience with data modeling for analytics and ML use cases.
Hands-on experience building ETL/ELT pipelines using tools or frameworks such as Airflow, AWS Glue, dbt, or similar orchestration systems.
Experience working with cloud data warehouses and query engines such as Athena/Presto, Redshift, BigQuery, or Snowflake.
Familiarity with big data or distributed processing frameworks such as Spark (or equivalent).
Experience designing and maintaining CI/CD pipelines for data workflows.
Exposure to feature stores, ML data pipelines, or close collaboration with ML Engineering teams is a strong plus.
Experience with AWS (S3, IAM, Lambda, Glue, EMR, etc.) or similar cloud ecosystems.
Engineering Mindset
Strong understanding of data reliability, observability, and best practices for production systems.
Ability to write clean, maintainable, and well-tested code.
Collaboration & Communication
Proven ability to work cross-functionally with Analytics, ML, and Product teams.
Strong communication skills to explain technical concepts to non-engineers and align on trade-offs.
Why you’ll succeed:
You enjoy owning systems end-to-end and making them better over time.
You balance speed, correctness, and long-term maintainability.
You’re excited about enabling others (analysts, scientists, and engineers) to move faster with high-quality data.
You’re comfortable operating in a fast-moving startup environment with evolving requirements.
Location:
This role is based in-office in Mexico City or New York City.
Compensation and Benefits:
Very competitive salary and equity
100% medical, dental & vision insurance coverage for you
Unlimited PTO
401(k) for US-based employees
Extended maternity and paternity leave
Relocation support