Job Description
As a Senior Database Engineer at Tekion, you will design, automate, and optimise database operations across our cloud-native automotive retail platform, connecting OEMs, dealerships, partners, and consumers. You’ll be working on scaling problems, laying down processes and streamlining requirements to actual executable tasks.
You’re expected to know in-depth about different storage and replication internals, trade-offs across SQL/NoSQL technologies, distributed systems fundamentals, transaction interaction and concurrency. A combination of this with strong Python fundamentals and Python scripting experience would make you a strong candidate for this role.
You should have at least 4+ years of experience. You should know about MongoDB in depth, and at least one SQL database like MySQL, MariaDB, PostgreSQL. People who want to build systems, not just manage them.
Key Responsibilities:
Core Database Engineering & Distributed Systems (Primary Focus):
Debug and prevent concurrency issues (deadlocks, lock escalation, starvation, long-running transactions) and advise teams on safe patterns (idempotency, retries, backoff, fencing tokens).
B-tree/LSM trade-offs, page layout, WiredTiger cache, journaling, WAL/redo/undo, checkpoints, compaction, MVCC behaviour
Backups (Logical vs Physical vs Snapshots based), upgradation of database systems and versions, data migration, and Disaster Recovery implementation
Query planner behaviour, statistics, cardinality estimation pitfalls
Indexing strategies and write amplification trade-offs
Reliability Engineering, Observability & Incident Response :
Build and implement database reliability practices:
Lead incident response and postmortems; implement preventative controls and automated remediation.
Implement monitoring and alerting for replication lag, lock contention, buffer/cache health, slow query patterns, storage growth, and failover events.
Python Automation & Platform Tooling (Required):
Develop and maintain robust Python tooling/services for:
Automated health checks, failover verification, backup/restore validation, and consistency checks.
Online schema change orchestration, safe rollout/rollback workflows, and guardrails in automation.
Performance diagnostics automation (plan capture, workload fingerprinting).
Build scalable automation that handles millions of records/events efficiently (attention to time/space complexity).
Data Modelling Across SQL & NoSQL:
Guide data modelling decisions across relational and document/Key-Value stores:
Normalisation vs denormalisation trade-offs
Secondary index design, hot partition mitigation, and throughput planning
TTL, archiving, and lifecycle policies
Define governance for data correctness, durability, and operational safety in high-throughput systems
Collaboration, Standards & Enablement
Partner with application teams to design safe data access patterns, migration strategies, and operational standards.
Define best practices for production change management, access controls, auditing, and compliance requirements.
Mentor engineers and raise the bar on database engineering craftsmanship across the org.
Qualifications & Skills
Must have
4+ years of work experience as an engineer in a relevant role and responsibilities.
Strong foundation in distributed systems and database fundamentals: CAP, consensus basics, replication, failure handling, and consistency.
Deep understanding of transaction semantics, isolation levels, MVCC, locking, concurrency failure modes, storage engines and DB internals.
Strong Python skills for building production-grade automation and diagnostics tooling.
Hands-on experience operating and tuning production databases (MongoDB and at least one SQL system such as MySQL, PostgreSQL, MariaDB etc).
Strong debugging and performance analysis skills; comfortable working from metrics, logs, traces, and low-level symptoms.
Experience working with Linux and familiarity with common commands.
Nice to Have
Experience with multi-region data architectures, global tables, and cross-region failover strategies.
Familiarity with AWS and MongoDB Atlas.
Understanding of Networking concepts like VPC, subnets, security groups, CIDR, peering etc.
Experience with Kubernetes and/or self-managed database experience
Experience building internal platforms (self-serve database ops, policy-as-code, safe migration frameworks).
What We’re Looking For
A senior engineer who:
Thinks in trade-offs (latency vs consistency, durability vs throughput, cost vs performance), thinks deeply.
Can reason from first principles about database behaviour under failure and load.
Uses Python to operationalise best practices into repeatable, safe automation and can instruct others on best practices.
Drives reliability, performance, and correctness across both SQL and NoSQL systems.
Leads through technical clarity, ownership, and mentorship.