Staff Data Engineer
Full-time | US | Canada
OXIO is the world’s first telecom-as-a-service (TaaS) platform. We are democratizing telecom and making it easily accessible for brands and enterprises to fully own and operate proprietary mobile networks designed to support their own customers needs. Our TaaS solution combines multiple existing networks into one single platform that can be seamlessly managed in the cloud as a modern SaaS offering. And it gets better - with full network access comes unparalleled business intelligence and insights to help enterprises better understand customer and machine (M2M) behavior. With a continuous focus on innovation, any company can build a powerful telecom presence with OXIO, and in addition help them glean unique customer insights like never before.
Job Description:
OXIO’s Data team is responsible for powering data-driven decision-making across the entire organization. In order for us to execute our mission effectively, we need to build a solid data foundation and ensure that every area of the business has access to highly reliable data.
We are hiring a talented and experienced Senior Data Engineer to join our small, but growing Data team, playing a critical role in designing and executing a robust and forward-looking data strategy for the company. Our team owns the data pipelines and tools that provide secure, reliable, and accessible data, enabling team members to derive actionable insights. Doing this job well means that we enable the entire organization’s ability to make more informed decisions, innovate faster, and serve our customers better.
In this role, you will work directly with our Data, Engineering, Operations, Data Science, Go-to-Market, and Finance teams to support the organization's data processing and analytics needs. You will serve as the internal expert on all things data engineering, empowering your peers with your expertise to collectively build a world-class data culture. This is a unique opportunity to directly influence not only our data systems, but also our drones and global operations. The ideal candidate will help us design systems that support the company’s needs today and many years into the future.
Key Responsibilities:Help build, maintain, and scale our data pipelines that bring together data from various internal and external systems into our data warehouse.
Partner with internal stakeholders to understand analysis needs and consumption patterns.
Partner with upstream engineering teams to enhance data logging patterns and best practices.
Participate in architectural decisions and help us plan for the company’s data needs as we scale.
Adopt and evangelize data engineering best practices for data processing, modeling, and lake/warehouse development.
Advise engineers and other cross-functional partners on how to most efficiently use our data tools.
Have 7+ years experience building large scale data platforms.
Experience in Data Engineering, and/or Analytics Engineering, building scalable data warehouses
Proficient with Dimensional Modeling (Star Schema, Kimball, Inmon) and Data architecture concepts, able to coach and influence others to up-level the craft of Data Engineering
Fantastic collaboration and communication skills, demonstrated by successful large-scale projects spanning multiple teams
Advanced SQL skills (ease with window functions, defining UDFs)
Experienced with Python, Spark for building and maintaining data pipelines & ETL/ELT processes
Experienced working with dbt and Snowflake, BigQuery, Redshift or other data warehouses.
Experience implementing real-time and batch data pipelines with tight SLOs and complex transformation requirements
Develop data models, schemas and standards for event data
Optimize data storage and access patterns for fast querying.
Improve data reliability, discoverability and observability.
Familiarity to Data Engineering tooling: ingesting, testing transformations, lineage, orchestration, publishing data, metric layers
Familiarity with storage layers like Hudi, Delta Lake and Iceberg.
Aptitude for product analysis, dashboarding, and reporting
Familiarity with infrastructure tooling such as Terraform/Pulumi and worked with Kubernetes.
proficiency with AWS cloud
Nice to haves:
Experience building streaming applications or pipelines using async messaging services or distributed streaming platforms like Apache Kafka
Knowledge of Airflow or some other orchestration tool
Experience with Spark or PySpark
Experience with event-driven architecture and streaming data processing frameworks like Kafka, Spark, Flink.
Experienced with time-series databases like Clickhouse, InfluxDB.
Competitive salary and stock option incentive program
Company paid healthcare
Flexible work arrangements
Company sponsored team-lunches and company retreats
International organization that enables you to work across boundaries, travel to different locations, and enjoy the dynamics of a rapidly growing startup
A diverse and inclusive team.
We welcome applicants from all backgrounds to apply regardless of race, ethnicity, age, disability status or
Skills Required
- 7+ years experience building large scale data platforms
- Experience in Data Engineering or Analytics Engineering building scalable data warehouses
- Proficient with Dimensional Modeling (Star Schema, Kimball, Inmon) and data architecture concepts
- Strong collaboration and communication skills contributing to large cross-functional projects
- Advanced SQL skills including window functions and UDFs
- Experience with Python and Spark for building and maintaining ETL/ELT pipelines
- Experience working with dbt and cloud data warehouses (Snowflake, BigQuery, Redshift or similar)
- Experience implementing real-time and batch data pipelines with tight SLOs
- Ability to develop data models, schemas and standards for event data
- Optimize data storage and access patterns for fast querying
- Improve data reliability, discoverability and observability
- Familiarity with data engineering tooling: ingestion, testing transformations, lineage, orchestration, publishing data, metric layers
- Familiarity with storage layers such as Hudi, Delta Lake, Iceberg
- Aptitude for product analysis, dashboarding, and reporting
- Familiarity with infrastructure tooling such as Terraform or Pulumi and experience with Kubernetes
- Proficiency with AWS cloud
- Experience building streaming applications or pipelines using async messaging or distributed streaming platforms like Apache Kafka
- Knowledge of Airflow or other orchestration tools
- Experience with time-series databases like ClickHouse or InfluxDB
- Experience with event-driven architecture and streaming frameworks like Spark, Flink
What We Do
OXIO is the first telecom-as-a-service (TAAS) platform for brands and enterprises that unbundles mobile telecom infrastructure, capturing the powerful data and true value that it emits. OXIO’s 100 percent cloud-based solution blends the wireless infrastructure of many providers, enabling something that wasn't possible before — a custom-purposed, asset-light network delivered to each brand in a matter of days. OXIO's B2B SaaS solution unlocks the full and uncompromising control of the wireless experience for brands, including actionable intelligence that drives clear value and results. Mobile data, long locked up in telecom silos, allows brands to get closer to their customers than ever. OXIO is headquartered in New York, with offices in Mexico City and Montreal, Canada. For more information, visit oxio.com.



