At Limble we empower the unsung heroes who support the world. We’re revolutionizing the way businesses manage their maintenance operations by providing a comprehensive suite of software solutions that empower organizations to optimize asset performance and drive operational excellence. From preventive maintenance to inventory management and beyond, our robust CMMS platform offers a suite of features designed to streamline operations and enhance productivity.
About the roleWe're building a dedicated data and analytics capability inside our engineering organization, and we need the right person to lead it. As the Software Engineering Manager for Data & Analytics, you'll own the strategy and execution for how Limble collects, stores, and surfaces data to power customer-facing insights across our platform. You’ll be investigating and leveraging the power of AI tooling to help make that strategy a reality for our customers.
You and your team own the data repository and the reporting framework. These are the foundation other stream-aligned engineering teams build on to surface analytics inside their product areas. Your job is to make that foundation so good that teams can ship insights features without reinventing anything. This is a player-coach role meaning that you'll be close enough to the technical work to make strong architectural decisions and set engineering standards, while also building and leading the team that executes on the vision.
You'll start with a small team and grow it. That means you have opinions on hiring, on data architecture, and on what "quality delivery" looks like for analytics infrastructure at a scaling B2B SaaS company. You won't need someone telling you how to build, instead you'll come in ready to define the architecture and get going.
ResponsibilitiesDefine and drive the strategy for Limble's analytical data infrastructure
Design the boundary between transactional data stores (what the product reads and writes against) and the analytical layer (what feeds reporting and ai-powered insights), keeping both performant and maintainable
Architect and own the reporting framework that stream-aligned engineering teams use to embed analytics into their product areas
Partner with product leadership to translate customer and business analytics needs into a technical roadmap
Build, hire, and lead a high-performing team of data and analytics engineers
Drive significant architectural decisions through ADR reviews with Principal and Staff engineers, bringing well-reasoned proposals and leading the conversation
Own the observability of your data pipelines by defining SLAs for data freshness and quality, build alerting, and keep your consumers informed when something's off
Establish data governance and quality standards so the rest of engineering can trust the data they're building on top of
Drive adoption of the reporting framework across stream-aligned teams
Stay hands-on enough to review critical design decisions, contribute to architecture, and help your team get unstuck
5+ years of experience in data engineering, analytics engineering, or a related discipline with at least 2 years in an engineering management or technical lead role
Proven experience designing data infrastructure on AWS (Aurora PostgreSQL, DynamoDB, Redshift, S3, and related services)
Strong understanding of when to use an operational data store vs. an analytical one, and how to design the pipeline between them
Strong background in data modeling, ELT/ETL pipeline design, and building analytics-ready datasets
Experience building or contributing to a reporting or analytics framework consumed by multiple engineering teams or product surfaces
Experience owning data pipeline observability such as monitoring, alerting, SLAs, and incident response for data freshness and quality issues
Actively leveraging AI coding tools (GitHub Copilot, Cursor, Claude, or similar) in day-to-day development and sets the expectation for the team to do the same
Some exposure with embedding AI driven capabilities inside of a SaaS product
Comfortable staying player-coach: you can write a design doc, review a schema, or weigh in on a query optimization
Track record of hiring and developing engineers; you know what a good data engineer looks like and can get them excited about our mission here at Limble
Strong communicator who can translate data architecture decisions into language product and business stakeholders actually understand
Bias toward simplicity over complex solutions
Located in or near the Charlotte, NC metro area
Experience with embedded or in-app analytics (surfacing insights directly inside a SaaS product, not just internal BI)
Familiarity with event streaming on AWS (Kinesis, MSK, EventBridge, Kafka, or similar)
Experience with AWS Glue, Athena, or Lake Formation for data pipeline and lake orchestration
Experience at a B2B SaaS company in the 50–200 employee range
Exposure to regulated software environments (SOC 2, HIPAA, or similar)
Experience with BI or visualization tooling (Metabase, Looker, Tableau, or similar) in a product context
Competitive salary commensurate with experience
Fully remote position
Flexible PTO
13 paid company holidays
Paid parental leave
Health, Dental, and Vision insurance
Employer paid Basic Life insurance and Short-Term Disability insurance
Company contribution match for HSA and 401(k)
Flexible Spending Accounts
Monthly employee wellness stipend
Opportunities for Learning and Development Reimbursement
Pet insurance
Limble is an equal opportunity employer. We provide equal employment opportunities to all employees and applicants without regard to race, color, religion, creed, sex, sexual orientation, gender identity or expression, national origin, ancestry, age, disability, genetics, marital status, veteran status, or any other protected characteristic under applicable laws. We are committed to building a diverse and inclusive workforce and welcome people from all backgrounds, experiences, perspectives, and abilities. All qualified applicants with arrest or conviction records will be considered in accordance with applicable laws.
Skills Required
- 5+ years in data engineering, analytics engineering, or related discipline with at least 2 years in an engineering management or technical lead role
- Proven experience designing data infrastructure on AWS (Aurora PostgreSQL, DynamoDB, Redshift, S3, and related services)
- Strong understanding of operational vs. analytical data stores and pipeline design between them
- Strong background in data modeling, ELT/ETL pipeline design, and building analytics-ready datasets
- Experience building or contributing to a reporting or analytics framework consumed by multiple engineering teams or product surfaces
- Experience owning data pipeline observability: monitoring, alerting, SLAs, and incident response for data freshness and quality issues
- Actively leveraging AI coding tools (GitHub Copilot, Cursor, Claude, or similar) in day-to-day development and setting that expectation for the team
- Some exposure embedding AI-driven capabilities inside a SaaS product
- Comfortable player-coach: write design docs, review schemas, and advise on query optimization
- Proven track record of hiring and developing engineers
- Strong communicator able to translate data architecture decisions to product and business stakeholders
- Located in or near the Charlotte, NC metro area
- Bias toward simplicity over complex solutions
- Experience with embedded or in-app analytics (surfacing insights inside a SaaS product)
- Familiarity with event streaming on AWS (Kinesis, MSK, EventBridge, Kafka, or similar)
- Experience with AWS Glue, Athena, or Lake Formation for data pipeline and lake orchestration
- Experience at a B2B SaaS company in the 50-200 employee range
- Exposure to regulated software environments (SOC 2, HIPAA, or similar)
- Experience with BI or visualization tooling (Metabase, Looker, Tableau) in a product context
Limble Compensation & Benefits Highlights
The following summarizes recurring compensation and benefits themes identified from responses generated by popular LLMs to common candidate questions about Limble and has not been reviewed or approved by Limble.
-
Leave & Time Off Breadth — Time off is broad with flexible PTO, company holidays, and paid parental leave as part of a remote-first setup.
-
Healthcare Strength — Core coverage includes medical, dental, and vision alongside employer‑paid life insurance and short‑term disability.
-
Retirement Support — Financial benefits include a 401(k) with company match, complemented by employer contributions to tax‑advantaged accounts.
Limble Insights
What We Do
Limble is the AI maintenance and asset management platform. It empowers teams to increase uptime, extend asset life, and bring together maintenance and asset management on one platform. By unifying asset data, work orders, preventive maintenance, inventory, and analytics, Limble simplifies work for technicians and drives asset decisions with confidence.








