Site Reliability Engineer - Generative AI Platform

Htc Inc.
Burbank, United States of America
yesterday

Role details

Contract type
Permanent contract
Employment type
Full-time (> 32 hours)
Working hours
Regular working hours
Languages
English
Experience level
Intermediate
Compensation
$ 158K

Job location

Burbank, United States of America

Tech stack

Artificial Intelligence
Amazon Web Services (AWS)
Azure
Backup Devices
Bash
Cloud Computing
Information Systems
Continuous Integration
Data Infrastructure
Linux
DevOps
Distributed Systems
Github
Python
Key Management
PostgreSQL
Machine Learning
MongoDB
Redis
Reliability Engineering
Ansible
Prometheus
Runbook
Service Pack
Vault (Revision Control System)
YAML
Zabbix
Datadog
Data Logging
Scripting (Bash/Python/Go/Ruby)
Cloud Platform System
Chatbots
System Availability
Delivery Pipeline
Large Language Models
Grafana
Kubernetes Helm Charts
Multi-Cloud
Generative AI
Backend
Gitlab
Kubernetes
Infrastructure Automation Frameworks
Information Technology
Deployment Automation
Kafka
Nintex
Terraform
Splunk
Appdynamics
Jenkins

Job description

We are seeking a Site Reliability Engineer to support cloud-native infrastructure and platform reliability for enterprise Generative AI and conversational experience platforms.

This role is ideal for a strong hands-on SRE / DevOps / platform engineer who has solid production experience with Kubernetes, Terraform, automation, observability, incident response, and CI/CD, and is ready to grow deeper into multi-cloud and Generative AI platform environments.

You do not need to be the lead architect on day one, but you should be bright, adaptable, technically curious, and able to learn quickly in a fast-moving platform engineering environment.

What You'll Do

  • Support Kubernetes-based platform infrastructure for AI and data service workloads.
  • Build and maintain infrastructure using Terraform and infrastructure-as-code practices.
  • Assist with Helm chart updates, Kubernetes configuration, deployment automation, and environment management.
  • Help implement monitoring, alerting, logging, and observability across platform services.
  • Troubleshoot production issues across Kubernetes clusters, infrastructure, CI/CD pipelines, and distributed systems.
  • Automate repetitive operational tasks using Python, Bash, Ansible, YAML, or similar tools.
  • Support deployment pipelines and release processes using CI/CD tools such as Harness, GitHub Actions, GitLab, Jenkins, or Azure DevOps.
  • Assist with rollout patterns such as canary deployments, blue/green releases, and rollback processes.
  • Support operational processes including patching, upgrades, backups, capacity planning, and incident response.
  • Work with senior SREs, architects, developers, DevOps, and security teams to improve reliability and scalability.
  • Contribute to documentation, runbooks, troubleshooting guides, and platform best practices.
  • Learn and support backend platform components such as Kafka, PostgreSQL, Redis, Vault, MongoDB, and n8n.

Requirements

Build and support the cloud infrastructure behind enterprise Generative AI platforms. We are looking for a hands-on SRE with strong Kubernetes, Terraform, automation, and observability experience who is ready to grow into advanced AI platform reliability work., * 4+ years of experience in SRE, DevOps, platform engineering, cloud infrastructure, Linux systems, or related technical roles.

  • Hands-on experience operating or supporting Kubernetes in a production or high-availability environment.
  • Experience with Terraform or similar infrastructure-as-code tools.
  • Scripting or automation experience using Python, Bash, Ansible, YAML, or similar.
  • Experience with monitoring, logging, alerting, or observability tools such as ELK, Zabbix, Prometheus, Grafana, Splunk, Datadog, AppDynamics, or similar.
  • Experience troubleshooting incidents, performing root cause analysis, and improving reliability after production issues.
  • Familiarity with CI/CD concepts and deployment automation.
  • Strong Linux, networking, infrastructure, or cloud troubleshooting skills.
  • Ability to learn new tools quickly and work effectively in a fast-paced engineering environment.
  • Strong communication skills and willingness to collaborate with senior engineers, developers, architects, and business stakeholders.

Preferred Qualifications

  • Experience with GCP, AWS, or Azure cloud environments.
  • Exposure to GCP/GKE, AWS/EKS, or Azure/AKS.
  • Experience with Helm charts.
  • Exposure to Harness, GitHub Actions, GitLab, Jenkins, or Azure DevOps.
  • Experience with OpenTelemetry, Prometheus, Splunk, AppDynamics, or similar enterprise observability tools.
  • Exposure to backend systems such as Kafka, PostgreSQL, Redis, MongoDB, or Vault.
  • Experience supporting AI, ML, LLM, chatbot, conversational AI, or data platform environments.
  • Experience with security patching, access controls, secrets management, and production governance.
  • Bachelor's degree in Computer Science, Information Systems, Engineering, or equivalent relevant experience., * ands-on with Terraform, Kubernetes, CI/CD: 5 years (Required)
  • SRE, DevOps, Infrastructure, Platform, or Cloud Operations: 5 years (Required)

Benefits & conditions

Pulled from the full job description

  • 401(k)
  • Health insurance
  • 401(k) matching
  • Paid time off
  • Employee discount
  • Vision insurance
  • Health savings account, * 401(k)
  • 401(k) matching
  • Dental insurance
  • Employee assistance program
  • Employee discount
  • Health insurance
  • Health savings account
  • Life insurance
  • Paid time off
  • Relocation assistance
  • Vision insurance

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