Tiger Analytics

Sr. Site Reliability Engineer

Tiger Analytics  •  Washington, DC (Hybrid)  •  18 days ago
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Job Description

We 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 Responsibilities

1. Reliability & Performance Engineering

  • SLA/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 Infrastructure

  • Model 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 Response

  • Observability: 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.

Requirements

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).

Benefits

Benefits

Significant 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.

Tiger Analytics

About Tiger Analytics

In a world rife with complexity, we help our customers cut through uncertainty, plan strategically, and execute confidently. We work with them to strategize and operationalize Data and AI-led transformation programs that deliver real value at scale.

Our deep understanding of business value chains, agile operating models, platforms approach, and strategic hyperscaler partnerships allow us to engineer cutting-edge Data & AI solutions. We go beyond standard playbooks and best practices, and forge new ones.

If you’re keen to reimagine what AI can do for some of the toughest problems out there, come join our team of 5000+ brilliant technologists and consultants. Explore opportunities across our offices in the US, India, Canada, Mexico, UK, Spain, Singapore and Australia.

Industry
Consulting & Advisory
Company Size
5,001-10,000 employees
Headquarters
Santa Clara, CA
Year Founded
2011
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