OpenArt is an AI Storytelling and Visual Creation Platform used by millions worldwide. We’re building the next generation of creative tools powered by cutting-edge AI, enabling anyone to create videos, visuals, characters, and stories with unprecedented speed and imagination. We believe the future of creativity is AI-native, and we're shaping that future.
🚀 Why Join OpenArtSmall team, massive surface area, senior engineers own real systems, not slices.
Ship at real scale, your work goes to millions of users, fast.
Founder-led engineering culture, both founders are technical and deeply involved in product and architecture.
AI-native product, you’ll design how cutting-edge AI models are exposed as real user experiences.
High ownership, low process, we value judgment, clarity, and speed over bureaucracy.
7-10X growth in revenue for the past 2 years. Now you’ll play a critical role in helping the company scale to the next stage.
We’re looking for a Founding Platform & Reliability Engineer who can own the design, scalability, and reliability of our entire infrastructure stack end-to-end, from high-level architecture decisions to hands-on implementation, observability, and cost optimization.
This is NOT a role for traditional operators or narrow DevOps specialists. You should be comfortable working across cloud infrastructure, distributed systems, backend services, and developer tooling, making pragmatic decisions that balance product velocity, system reliability, and cost efficiency—especially in a fast-evolving, AI-native environment.
You will work closely with the founders and product engineers to design and evolve the platform that powers OpenArt, shaping key decisions such as serverless vs. containerized architecture, multi-provider AI reliability, and scaling systems to millions of users—while acting as a force multiplier for the entire engineering team.
🛠 What You’ll DoDefine and operationalize SLOs/SLIs across critical user journeys (generation, editing, payments/credits, uploads, etc.), and use them to drive prioritization (including error budgets)
Participate in an on-call rotation and lead incident response improvements (alert quality, runbooks, escalation paths). Establish blameless postmortems and ensure action items are implemented.
Implement reliability patterns at external boundaries, and build mechanisms for per-vendor “health” measurement and routing/fallback policies
Stand up end-to-end observability: structured logs, metrics, traces, and dashboards that let engineers answer “what broke” and “why now” quickly.
Build deploy safety practices: automated rollbacks, canarying, feature-flag patterns, and reliable CI/CD gates.
Own the direction of our infrastructure architecture, including defining when serverless is the right approach versus when we should evolve toward containerized or more managed systems, and guiding the team through those transitions as we scale.
Build cost observability and cost-control primitives: per-request cost attribution, caching strategies, capacity planning, and budget alerts.
Act as a senior technical voice, influencing architecture, tooling, engineering best practices, and raising the overall engineering bar.
Core Requirements
5+ years building and operating production systems where reliability and scaling are core.
Strong software engineering skills (you can ship production code, not just configure tools).
Cloud-native experience (AWS or GCP), ideally with serverless/event-driven systems and at least one container path (Fargate/ECS/Cloud Run/Kubernetes).
Deep knowledge of observability practices: dashboards, alerting, distributed tracing, and incident response maturity.
Ability to design resilient interactions with external dependencies (timeouts, retries/backoff/jitter, circuit breakers, idempotency).
Can communicate tradeoffs to non-infra peers clearly
Ability to operate with ambiguity and define problems before solving them.
Nice to Have
Have designed an internal platform abstraction (e.g., API gateway / workflow engine / job orchestration) that enabled multiple product teams to ship faster with fewer incidents.
Have shipped concrete reliability outcomes: e.g., reduced MTTR, improved SLO attainment, lowered p95 latency, or reduced infra/unit costs
Prior startup experience or experience owning large surface-area features.
GCP, Cloud Run, Modal, Upstash, Sentry, Amplitude, Firebase, Redis, React / Next.js, Node.js, TypeScript, Python, etc.
💰 CompensationCompetitive base salary and bonus program
Equity - meaningful ownership in what you build
High autonomy, high growth environment
Bay Area preferred (hybrid allowed)
Visa sponsorship available
We’ll consider remote
Top Skills
What We Do
Embedding VC is an early-stage venture fund backing Generative AI startups. All our investors are current and former builders and operators. We believe in the mission to develop AGI, and we are at the onset of a new computing super cycle, fundamentally driven by AI innovations.

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