Truelogic
Technology
Senior/LeadDataEngineer–AINativeAftermarketPlatform
“Senior/Lead Data Engineer – AI-Native Aftermarket Platform at Truelogic. Skills: Data Engineering, AI-Native Platform, Data Pipelines, Data Modeling. Design and build data pipelines. Design star and snowflake schemas”
Industry & Context.
Diagnose and resolve failing Spark / PySpark jobs; Navigate ambiguity; Balance trade-offs
What They're Looking For.
Must Have
Expertise in SQL, Dimensional modeling methodologies, Medallion architecture, SCDs, Grain management, Design idempotent pipelines, Incremental, checkpoint, and replaceWhere strategies, Production-grade Python engineering, Type hints, pytest, ruff, Diagnose and resolve failing Spark / PySpark jobs, Deep understanding of Delta Lake features, Hands-on expertise with dbt, Models, tests, and exposures, Authoring and deploying jobs using Databricks Asset Bundles (DAB), Operating within a Unity Catalog environment, Commitment to data quality, Pre-write asserts, Schema checks, Maintaining dbt relationship and uniqueness tests, Disciplined Git workflows, Conventional commits, Strict documentation practices, Experience provisioning and utilizing Service Principals, GitHub environment secrets, Secret management tools, Written technical communication skills, Translate pipeline work into business metrics, Proven decision-making abilities, Balance trade-offs between cost, latency, and reliability
Nice to Have
Experience leading technical initiatives, Establishing architectural standards, Contributing to interview rubrics, Reading or modifying Azure Data Factory (ADF) pipelines, Familiarity with Azure Data Lake storage, Familiarity with dbt observability tools, Awareness of PII detection and masking best practices, Experience with multi-tenant configuration patterns, Proficiency in reading and editing GitHub Actions workflows, Ability to make cost-aware compute decisions, Proficiency in AI-assisted development tools, Experience writing incident post-mortems, Coordinating feature handovers with Data Science teams
What You'll Do.
Design and build data pipelines
Design star and snowflake schemas
Construct scalable data marts
Write production-grade
unit-tested Python code
Build and test dbt models
Manage overall project structure
Author and deploy jobs using Databricks Asset Bundles
Implement rigorous data quality checks
Prevent silent drops of nulls or duplicates
Maintain data governance
Operate securely within a multi-repository architecture
Ensure zero personal credentials in production deployments
Run cross-repository exposure checks
Own data pipelines end-to-end
Make key technical design decisions
Mentor mid-level engineers
Conduct substantive code reviews
Define overarching technical direction
Set modeling standards
Set branching strategies
Set observability thresholds
Set secret management policies
Act as a technical leader
Participate in hiring panels
How You'll Work.
Team & Collaboration
Collaborative environment; Cross-repository exposure checks; Code reviews
Communication Scope
Written technical communication; Translate pipeline work into business metrics
Process & Methodology
Project structure, Branching strategies
Applying for this Senior/Lead Data Engineer – AI-Native Aftermarket Platform role?
Most applicants get filtered before a human reads their resume. See if yours makes the cut.
How to Apply on Ashby
- Ashby is a fast modern ATS — most applications take under 3 minutes.
- The resume parser is strong; verify parsed experience dates and job titles.
- Custom screening questions are often scored algorithmically — answer completely.
- Location field affects geo-based screening; use your actual metro area.
ANONYMOUS · UNFILTERED
What do employees actually say about Truelogic?
Real rants from real employees. Read before you apply.