Job Description
Staff Site Reliability Engineer
Pocket FM is a leading audio entertainment platform that brings engaging, serialized fiction to millions of listeners across genres like romance, thriller, fantasy, and more. With over 130 million users globally and strong traction in markets like the US and Europe, we’re revolutionizing storytelling through audio.
Our unique model combines free listening with micropayments for premium content, powering strong business growth. In FY25, we reached an ARR of INR 2,000 crore, with over 100,000 hours of content on the platform. We're also at the forefront of innovation, leveraging AI-generated content to scale efficiently.
Role Overview
We are looking for a
Staff SRE
to lead reliability engineering efforts while driving AI-native solutioning and platform strategy. This role requires a blend of deep SRE expertise, distributed systems knowledge, applied AI/ML understanding, and strong security fundamentals to build resilient, scalable, intelligent, and secure infrastructure.
You will play a key role in shaping how AI-powered systems are designed, deployed, monitored, optimized — and secured — across the organization.
The Role: What You Build and Own
SRE & Platform Engineering
Design, build, and operate highly reliable, scalable distributed systems
Define and implement SLIs, SLOs, SLAs, and error budgets
Lead incident management, root cause analysis (RCA), and postmortems
Drive an automation-first approach for operations, deployment, and recovery
Improve observability (logs, metrics, tracing) across systems
AI-Native Solutioning
Architect and implement AI-driven operational workflows (AIOps)
Build systems leveraging LLMs, intelligent automation, and predictive analytics
Integrate AI into monitoring, alerting, anomaly detection, and remediation
Evaluate and adopt AI-powered developer and SRE tooling (e.g., LLM-based copilots, auto-debugging tools)
Information Security & Resilience
Embed
security-by-design
principles into infrastructure and platform architecture
Partner with Security teams to implement cloud security best practices (IAM, RBAC, network segmentation, encryption)
Lead secure configuration and hardening of Kubernetes clusters and cloud environments
Implement and maintain DevSecOps practices across CI/CD pipelines
Drive vulnerability management, patching strategy, and secure dependency management
Define and monitor security-related SLIs/SLOs (e.g., patch latency, vulnerability remediation time)
Implement runtime security, anomaly detection, and threat monitoring for AI and distributed systems
Ensure compliance with relevant frameworks (SOC2, ISO 27001, GDPR, etc.)
Conduct security reviews, threat modeling, and participate in incident response for security events
Secure AI/ML systems, including model security, prompt injection mitigation, data protection, and access controls
Strategy & Leadership
Define and drive AI-native SRE strategy and roadmap
Partner with engineering, platform, product, and security teams to embed reliability and security by design
Mentor engineers and establish best practices for SRE + AI + Security integration
Lead initiatives for cost optimization, performance tuning, system resilience, and risk reduction
The Ideal Candidate — Who You AreZ
Experience
8–12+ years in SRE / DevOps / Platform Engineering
Proven experience operating production-grade distributed systems at scale
Strong Experience With
Cloud platforms (AWS / GCP)
Kubernetes & container orchestration
Infrastructure as Code (Terraform,etc.)
CI/CD systems and automation frameworks
Deep Understanding Of
Distributed systems, scalability, and fault tolerance
Observability tools (Prometheus, Grafana, Datadog, OpenTelemetry)
Incident management frameworks and reliability engineering best practices
Cloud security architecture and DevSecOps principles
Programming
Strong programming experience in Python / Go
Your AI/ML Toolkit
Hands-On Experience With
LLMs (OpenAI, open-source models, etc.)
AI/ML pipelines or inference systems
Understanding Of
Prompt engineering, embeddings, vector databases
AI-driven automation or AIOps platforms
Secure AI system design and model lifecycle governance
Experience Integrating AI Into
Monitoring / alerting
Incident response
Developer productivity workflows
Security monitoring and anomaly detection