Staff Data Platform Engineer
Tatari · New York, NY · 1 wk ago
HybridEngineering$190k–$240k/yrFull-time
Responsibilities
- Own the reliability and availability of our data platform infrastructure across all environments
- Enforce and improve environment promotion discipline — staging is not prod, and prod is sacred
- Define and uphold SOPs around deployments, maintenance windows, and change management
- Instrument and monitor platform health using observability tooling; build alerting that means something
- Participate in architecture and deployment discussions; push back when something isn't ready
- Collaborate with data scientists, engineers, and product managers on infrastructure needs — as a partner, not an order-taker
- Identify and remediate reliability risks before they become incidents
- Support customer-facing and internal systems with a bias toward stability over velocity
Qualifications
- Operational instinct — "the fear" — you've been burned by prod, you respect it, and you've built habits around it. You know what a proper maintenance window looks like, you communicate before you touch production, and you don't spin up new initiatives while something critical is still burning in.
- 3+ years in cloud infrastructure, SRE, or platform engineering (AWS preferred; GCP/Azure experience translates)
- High Availability architecture: blue/green deployments, data replication, load balancing
- Experience with workflow orchestration (Airflow or similar DAG-based schedulers — or general job scheduling/cron systems at scale)
- Strong Linux fundamentals and scripting (Bash, Python, or similar)
- Distributed data processing (Spark, PySpark, or similar big data frameworks — or experience managing clusters that run them)
- Containerization and orchestration (Kubernetes, Docker, or similar)
- Data ingestion, ETL, or streaming systems (Kafka, Flink, or similar — or experience operating message queues and pipelines)
- Infrastructure-as-code and provisioning (Terraform, Helm, or similar)
- OLAP and OLTP databases (Clickhouse, Postgres, Redshift, or similar — query patterns, indexing, and operational care)
- Monitoring, logging, and observability (Datadog, Prometheus, Kibana, or similar)
- Managed data platforms (Databricks or similar — administering and scaling, not just consuming)
- Network infrastructure fundamentals: load balancers, DNS, auto-scaling, multi-region topologies, proxies
- Security and access management: least-privilege, secrets management, controls for data systems
- MLOps concepts or tooling — a plus
What we value above technical skills
- Humility — you don't know everything, you say so, and you ask before acting in unfamiliar territory
- Methodical execution — you minimize variables, you don't premature-optimize, you finish what you started before starting something new
- Communication — you tell the team what you're doing before you do it, especially in shared or production environments
- Ownership — when something goes wrong, you look inward first
- Independence – you can drive projects end-to-end, from ambiguous requirements to high quality deliverables. But you aren’t afraid to ask for help.
Benefits
- Total compensation ($190,000 - $240,000)
- Equity compensation
- Health insurance coverage for you and your dependents
- 401K, FSA, and commuter benefits
- $150 monthly spending account
- $1,000 annual continued education benefit
- $500 Newbie Productivity Perk
- Unlimited PTO and sick days
- Monthly Company Wellness Day Off
- Snacks, drinks, and catered lunches at the office
- Team building events
- Hybrid RTO of 2 days per week in office.