About Algebra
Algebra builds and operates AI-powered workflows for mid-market companies as a managed service. We identify high-value operational processes, design AI systems to run them, and own the outcome end to end.
We are not consultants. We do not sell software licenses. We are the accountable operator.
The Role
This is a senior data engineering role for someone who can turn messy business data into the foundation for reliable AI workflows.
Algebra’s agents are only as good as the data layer underneath them. You will build the pipelines, models, integrations, and data infrastructure that allow our systems to understand client operations, surface the right context, and take action inside real business processes.
You need to be strong enough technically to design the data architecture, but practical enough to work inside imperfect client environments. You should be comfortable moving between data pipelines, warehousing, APIs, orchestration, transformation logic, data quality, governance, and production debugging.
This is a builder role. You will help define the data patterns, standards, and infrastructure Algebra uses as it scales from custom client deployments into repeatable systems.
If your instinct is to find the truth inside messy data, structure it properly, and make it useful for systems that actually run the business, this is the role.
What You’ll Do
Data Infrastructure and Pipelines
Data Modeling and Workflow Context
Integrations and Data Sources
Data Quality, Governance, and Reliability
What We’re Looking For
Bonus Points
What This Role Is Not
This is not a reporting or dashboard-only role. The data layer you build will power real AI workflows and operational systems.
This is not a clean-room analytics role where every source is documented and every table is reliable. You will work with messy, incomplete, inconsistent client data.
This is not a role where someone else defines the data architecture and you only implement tickets. You will be expected to form a view and create the standards Algebra scales on.
If your best work requires a mature data platform, a large team, and stable requirements, this is probably not the right fit. If you want to build the data backbone of an AI operations company from the ground up, we want to talk.
“`
Search qualified candidates by skills, location, experience, education, and more.
“`
