What are the responsibilities and job description for the Senior Support Engineer position at LanceDB?
About LanceDB
LanceDB is a high-performance, open-source, cloud-native database built for AI-native and multimodal workflows. From vector search at multi-billion scale to real-time retrieval, feature engineering, and analytics across large-scale datasets, LanceDB powers cutting-edge applications of machine learning and data infrastructure.
We’re looking for a hands-on, technically strong Support Engineer who will be the bridge between our engineering team and enterprise users of LanceDB, helping our customers deploy, operate, debug, and optimize distributed, cloud-native database systems built in Rust and Python.
Your Role
Must-have
You’ll join a world-class team of open-source builders (co-authors of pandas, and contributors to HDFS, Arrow, Iceberg, and HBase) working on cutting-edge AI infrastructure. You’ll collaborate on systems that power next-generation AI workloads while shaping how LanceDB operates and scales production environments.
LanceDB is a high-performance, open-source, cloud-native database built for AI-native and multimodal workflows. From vector search at multi-billion scale to real-time retrieval, feature engineering, and analytics across large-scale datasets, LanceDB powers cutting-edge applications of machine learning and data infrastructure.
We’re looking for a hands-on, technically strong Support Engineer who will be the bridge between our engineering team and enterprise users of LanceDB, helping our customers deploy, operate, debug, and optimize distributed, cloud-native database systems built in Rust and Python.
Your Role
- Serve as one of the primary technical points of contact for our customers: troubleshoot issues, respond to escalations, and guide customers through full lifecycle support for large-scale deployments of LanceDB.
- Work in close collaboration with our engineering and product teams to reproduce issues, debug root causes, propose remediation, and drive fixes or enhancements.
- Dive deeply into distributed database internals: query execution, storage engine, indexing, sharding, replication, fail-over, cloud orchestration (Kubernetes, serverless-style deployments).
- Use and contribute to Python and Rust codebases: reproduce customer environments, inspect logs, build diagnostic tools, run instrumentation, apply patches and configuration changes.
- Develop and maintain knowledge-base articles, runbooks, and support tooling that document common issues, best practices, deployment patterns, and performance tuning.
- Conduct white-glove onboarding for key customers: review architecture, recommend configuration, co-pilot production launches and scale tests, and help them operate and monitor LanceDB in their cloud environments.
- Work proactively: identify recurring issues, escalate product bugs or UX gaps, propose improvements in the support process, and advocate for the customer in the roadmap.
- Contribute to metrics around support response-times, resolution times, customer satisfaction, and help build a scalable support organization as we grow.
Must-have
- 8 years of professional experience in a support / operations / troubleshooting role in a distributed database or data infrastructure environment.
- Demonstrated experience with one or more of the following: distributed database systems, cloud-native data platforms, vector/feature stores, analytics engines or big data systems.
- Proficiency in Rust and/or Python: you should be comfortable reading, navigating, and debugging code in these languages; ideally you’ve built or debugged production-quality systems in one or both.
- Strong knowledge of distributed systems concepts: sharding, replication, consensus, failure modes, resource contention, performance bottlenecks, and cloud-native orchestration (Kubernetes, containerization, autoscaling).
- Excellent customer-facing communication skills: you’ll be working directly with high-value customers, so you must be comfortable explaining complex technical issues clearly, managing expectations, and advocating for the customer.
- Experience with cloud platforms (AWS, GCP, or Azure) and Kubernetes or serverless deployment models for database workloads.
- Strong sense of ownership, urgency, correct prioritization under pressure, and ability to work closely with engineering teams to drive resolution.
- Prior experience supporting or operating large-scale open-source database deployments (e.g., vector search systems, NoSQL databases, distributed SQL, lakehouse/feature-store architectures).
- Familiarity with storage engine internals, indexing/data layout, performance tuning, and profiling tools.
- Contributions to open-source projects (especially Rust/Python), or experience writing diagnostic tools, debuggers, or instrumentation.
- Experience deploying and monitoring systems in large-scale production environments: logging/observability (e.g., Prometheus, Grafana, OpenTelemetry), alerting, SLOs/SLAs.
- Comfortable working in a fast-moving startup environment with high autonomy and evolving responsibilities.
You’ll join a world-class team of open-source builders (co-authors of pandas, and contributors to HDFS, Arrow, Iceberg, and HBase) working on cutting-edge AI infrastructure. You’ll collaborate on systems that power next-generation AI workloads while shaping how LanceDB operates and scales production environments.
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