Site Reliability Engineering (SRE) combines software and systems engineering to build and run large-scale, massively distributed, fault-tolerant systems. SRE ensures that Salesforce services have reliability, capacity, performance and the availability to deliver our customer’s needs and a rate of improvement that our customers expect.
Our software development focuses on enabling service owners to operate their services safely at scale, whether through paved path integrations onto observability frameworks, optimizing existing systems, designing infrastructure or eliminating work through AI/ML. On the SRE team, you’ll have the opportunity to manage the complex challenges of scale which are unique to Salesforce, while using your expertise in coding, algorithms, complexity analysis and large-scale system design. Experience with AI/ML systems, autonomous agents, or observability for intelligent platforms is a strong plus.
SRE’s culture of diversity, intellectual curiosity, problem solving and openness is key to its success. Our organization brings together people with a wide variety of backgrounds, experiences and perspectives. We encourage them to collaborate, think big and take risks in a blame-free environment. We promote self-direction to work on meaningful projects, while we also strive to create an environment that provides the support and mentorship needed to learn and grow.
Required Skills
- 5+ years of experience in Python, Go, or Java for automation, tooling, and integration.
- Hands-on experience designing, building and operating large scale distributed systems, identifying shortcomings and optimization opportunities
- Demonstrated experience in developing and deploying production-grade software applications or services.
- Strong experience with AWS or GCP and services like EC2, VPC, IAM, S3, EKS.
- Expertise in Kubernetes and modern container orchestration.
- Deep understanding of SRE principles: SLIs/SLOs, availability, resiliency, and incident metrics (TTD, TTR).
- Experience with AI/ML platforms, agents, or intelligent observability systems.
- Familiarity with observability tooling: Grafana, OpenTelemetry, Zipkin/Jaeger, and TSDBs.
- Hands-on with CI/CD pipelines and Git-based workflows.
- Experience with IaC and config management tools: Terraform, Helm, Ansible, or Puppet.
- Strong Linux systems knowledge and troubleshooting skills.
- Data-driven mindset for identifying systemic issues and improving service reliability.
Responsibilities
- Define and implement SLIs/SLOs with engineering teams, driving reliability into system architecture.
- Build automation and self-healing capabilities to reduce manual operations.
- Operate and scale monitoring, alerting, and tracing systems for proactive issue detection.
- Lead post incident analysis, conduct postmortems, and ensure effective root cause resolution.
- Improve CI/CD practices to accelerate safe, frequent deployments.
- Use data to uncover trends, inform prioritization, and drive platform improvements.
- Collaborate on integrating AI-driven automation and observability to enhance reliability.
- Support and scale multi-cloud, multi-region services.
- Work within Agile teams, participating in SCRUM ceremonies and iterative delivery.
Desired Skills
- Familiarity with DevSecOps practices and secure pipeline integration.
- Knowledge of microservices, service mesh, or zero-trust infrastructure.
- Experience operating in global, multi-tenant, or compliance-sensitive environments.
- Strong written and verbal communication, with emphasis on documentation and knowledge sharing.
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