This role requires a SRE mindset combined with AI/ML expertise and strong application engineering skills across public and private cloud environments.
Key Responsibilities
- End-to-end service ownership: design for telemetry, security, resiliency, scalability, and performance; lead sizing/architecture; drive service health reviews and process simplification.
- Incident management and prevention: lead postmortems/RCAs, coordinate fixes, define repair items, and implement data-driven prevention and continuous improvement.
- AI/ML and GenAI delivery: design and integrate solutions with LLMs, RAG, agentic workflows, and conversational AI; build low-latency model serving and retraining pipelines.
- Application engineering: develop performant microservices for distributed, containerized, cloud-native systems.
- Automation: eliminate toil by automating operational workflows, recovery procedures, code delivery, and configuration management; build internal tools and reusable scripts/services to accelerate delivery and reduce errors.
- Observability: define and implement monitoring, logging, alerting, and tracing strategies; establish SLOs/SLIs/error budgets; improve diagnostics and performance visibility for rapid triage.
- Cross-functional collaboration: partner with product, operations, and data teams to translate requirements into secure, scalable solutions; communicate effectively with technical and non-technical stakeholders.
Minimum Qualifications
- BS/MS in Computer Science or related field; 10+ years of software engineering in cloud environments.
- Strong in distributed systems/microservices using java / python; SQL/data modeling; python for AI/automation.
- SRE/DevOps expertise: systems and networking fundamentals, application security, observability, performance analysis, and incident response.
- Proven SDLC excellence: code quality, reviews, version control, CI/CD, testing, and release engineering.
- Excellent written and verbal communication; English fluency.
Preferred/Technical Skills
- AI/ML/GenAI: experience with foundational models, RAG, agentic architectures; model deployment, optimization, monitoring, and retraining.
- Cloud and containers: experience with containerization, orchestration, and resilient, fault-tolerant microservices.
- Observability: hands-on experience designing dashboards, alerts, traces, logs, and metrics; defining SLOs/SLIs and error budgets; on-call readiness and runbook quality.
- Operations: performance tuning across java / python and SQL for large-scale enterprise applications; strong Linux/Unix expertise; capacity planning and reliability reviews.
- Automation and scripting: proficiency in scripting to automate operational workflows, build tooling, and CI/CD tasks (., shell scripting, python, configuration-as-code, task runners).
- Familiarity with enterprise ERP applications and standard DevOps tooling and practices.
Career Level - IC4
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