Lean Layer is the #1 Rated RevOps Agency on G2, and we’re doubling our consulting team over the next year. Our reputation is built on excellent results, which means we need to keep hiring excellent people. We are looking for a RevOps Analytics Engineer with deep Revenue Operations expertise to own and maintain the data infrastructure that powers revenue analytics and reporting across our client environments.
This role focuses on data engineering and warehouse management, ensuring reliable pipelines, scalable data models, and high-quality revenue data. The RevOps Analytics Engineer will work closely with RevOps consultants who define CRM and business requirements, and with data analysts who build dashboards and reporting.
You may be a fit for the RevOps Analytics Engineer role if you are strong in SQL, data modeling, and warehouse architecture, and can understand the business context of revenue operations in order to build reliable and scalable data systems.
The ideal candidate:
Enjoys building reliable data systems and solving complex data problems
Has strong technical data engineering skills
Understands how revenue teams use data for reporting and decision-making
Can translate business context into scalable data models
Is comfortable working across multiple systems and client environments
Is comfortable working directly with clients as needed
Thrives in collaborative, fast-paced environments
Data Warehouse Ownership:
Design and maintain datasets and table structures
Manage warehouse performance, partitioning, clustering, and cost optimization
Maintain access controls and permissions
Structure warehouse schemas to support revenue analytics and reporting
Data Pipelines & Integrations:
Build and maintain ETL / ELT pipelines from revenue systems into the warehouse
Integrate data from systems such as HubSpot, Salesforce, marketing and sales analytics platforms, sales engagement platforms, billing systems, and product analytics tools
Monitor pipeline health and resolve failures
Manage schema changes from upstream systems
Ensure reliable and timely data synchronization
Manage GitHub repositories
Data Modeling for Revenue Analytics:
Design and maintain analytics-ready data models
Build models for accounts, contacts, opportunities, and pipeline data
BI & Analytics Support:
Maintain tables and models used by BI tools such as Looker
Optimize queries and support derived tables used in reporting
Ensure consistent metric definitions across reporting layers
Dashboard creation for data validation
Data Quality & Reliability:
Implement data validation and testing
Monitor pipeline health and data freshness
Identify and resolve data inconsistencies
Maintain documentation for warehouse models and data definitions
3–5 years of experience in data engineering or analytics engineering
Strong SQL skills
Experience working with data warehouses (BigQuery, Snowflake, Redshift, etc.)
Experience working with Salesforce or HubSpot as a data source
Experience building and maintaining ETL / ELT pipelines
Experience designing analytics-ready data models
Familiarity with API-based integrations and data syncing
Python for data pipelines or automation
Reverse ETL or operational data workflows
dbt or similar transformation tools
Looker or similar BI platforms
Experience with GitHub
Experience working with revenue or business systems and terminology such as:
Marketing Automation Platforms (MAP) like HubSpot
Marketing analytics platforms
SaaS revenue metrics (ARR, ACV, TCV, MRR, etc.)
SaaS terminology (MQL, SQL, SQO, Deal/Opportunity, Lead/Contact, etc.)
Learn more about what it's like to work at Lean Layer here.
Visa Sponsorship: Please note that we are not currently able to offer U.S. visa sponsorship or transfer for this position.
For Canadian Residents: We also invite you to apply for this position but please note that at this time we can only hire those outside of the United States as full-time contractors. If you have any questions about this set up, please don't hesitate to reach out to.
If an employer mentions a salary or salary range on their job, we display it as an "Employer Estimate". If a job has no salary data, Rise displays an estimate if available.
Lead MediaRadar’s data delivery lifecycle as a Data Engineering Manager, managing distributed engineers and delivering scalable ETL pipelines across a modern cloud stack.
Experienced Principal Data Engineer needed to design and develop large-scale, cloud-native data and ad-tech systems leveraging serverless, event-driven architectures and AI to power NBCUniversal's audience and advertising products.
Lead Data Engineer to guide Data Operations and Analytics Engineering, ensuring a reliable Databricks lakehouse and high-quality analytics that power OneOncology’s mission.
Gartner is hiring a Data Engineer - Production Support to manage daily Azure-based data warehouse operations, ensuring high data quality and stable ETL/ELT processes.
The Red Sox are hiring a Data Engineer to maintain and enhance their GCP-based data architecture, building ETL pipelines and monitoring to support business teams across the organization.
NIQ is hiring an experienced Commercial Data Manager to set data standards, drive data quality, and govern sales and product data that underpin revenue operations and decision-making.
Senior analytics leader needed to build AI-enabled analytics, establish company-wide metrics and governance, and turn data into actionable recommendations across Sur La Table's commerce and operations functions.