Role OverviewWe are seeking a high-caliber Site Reliability Engineer (SRE) to join our Forward Engineering team. You will be the guardian of our production ecosystems, ensuring that our complex, data-driven AI platforms remain resilient, scalable, and highly performant. This role is a hybrid of software engineering and systems architecture, with a specialized focus on MLOps —bridging the gap between model development and production-grade reliability.Key Responsibilities1. Reliability & Performance EngineeringSLA/SLO Management: Define, monitor, and maintain Service Level Objectives (SLOs) and Service Level Indicators (SLIs) for critical AI/ML services.Error Budgeting: Manage error budgets to balance the velocity of feature releases from the ML team with the stability of the production environment.Scalability: Architect and manage auto-scaling strategies for Kubernetes (GKE) to handle fluctuating workloads during model training and high-volume inference.2. MLOps & AI InfrastructureModel Serving Reliability: Ensure the high availability of Vertex AI endpoints and custom inference services.GPU/TPU Optimization: Monitor and optimize compute resource utilization (accelerators) to ensure cost-efficient performance for Large Language Models (LLMs).Pipeline Resilience: Support and stabilize ML pipelines (Vertex AI Pipelines/Kubeflow) to ensure seamless data flow from ingestion to model retraining.3. Automation & Orchestration (Eliminating "Toil")Infrastructure as Code (IaC): Use Terraform or Pulumi to provision and manage consistent, version-controlled cloud environments.CI/CD & GitOps: Design and optimize robust deployment pipelines for both application code and ML models using GitHub Actions, Cloud Build, or ArgoCD.Task Automation: Develop custom Python or Go scripts to automate repetitive operational tasks, self-healing mechanisms, and resource cleanup.4. Monitoring, Alerting & Incident ResponseObservability: Build and manage comprehensive dashboards using Prometheus, Grafana, or Google Cloud Operations Suite (Stackdriver) .Incident Management: Act as a primary responder in on-call rotations, leading the technical resolution of production outages.Blameless Post-Mortems: Conduct deep-dive root cause analysis (RCA) to ensure systemic issues are identified and permanently remediated through code.Orchestration: Expert-level knowledge of Kubernetes (K8s) and Docker.MLOps Stack: Familiarity with tools such as Kubeflow, Vertex AI, MLflow, or DVC .Scripting: Strong proficiency in Python (for automation) and Bash; knowledge of Go is a plus.Data Systems: Experience managing the reliability of data-heavy services (BigQuery, Pub/Sub, or Vector Databases like Pinecone/Milvus).Networking: Solid understanding of VPCs, Load Balancers, DNS, and secure service mesh (Istio/Anthos).BenefitsSignificant career development opportunities exist as the company grows. The position offers a unique opportunity to be part of a small, fast-growing, challenging and entrepreneurial environment, with a high degree of individual responsibility.Tiger Analytics provides equal employment opportunities to applicants and employees without regard to race, color, religion, age, sex, sexual orientation, gender identity/expression, pregnancy, national origin, ancestry, marital status, protected veteran status, disability status, or any other basis as protected by federal, state, or local law.#J-18808-Ljbffr