Senior AI Workflow & Systems Engineer
Quick Summary
logging, error handling, alerting, and monitoring across all deployed systems - Manage secrets, environment configs,
define the problem, scope the solution, and drive it to completion - Prototype emerging AI tools and frameworks and bring the best ones into TubeScience's stack
โก Senior AI Workflow & Systems Engineer
Build and run the AI infrastructure that powers every team at TubeScience.
๐๏ธ Role: Senior AI Workflow & Systems Engineer
๐ Location: Remote (Los Angeles based preferred)
๐ฐ Compensation: Remote $70,000โ$120,000 | Los Angeles $110,000โ$160,000
๐ค Reports to: VP of IS
๐ข Team: Information Systems
๐ About TubeScience
TubeScience is a data-driven creative studio producing performance advertising at massive scale โ and we're growing fast. We're looking for a Senior AI Workflow & Systems Engineer to be the most technically sophisticated AI builder in the company. You'll sit in IT but serve everyone โ owning the infrastructure, deployments, and systems that make our AI initiatives real, and unblocking every team that's building on top of them.
๐ก The Role
This is a systems and deployment role for someone genuinely excited about where AI is taking enterprise engineering. You won't just design workflows โ you'll own the infrastructure they run on, keep them running reliably, and be the expert other teams call when things break or they hit a wall.
You are the architect, the deployer, the maintainer, and the unlocker โ all in one. When there's no PM driving an AI initiative, you'll step in and own it end-to-end.
๐ฌ What You'll Own
๐ค AI Workflow Engineering
- Build and deploy LLM-powered applications and agent-based workflows that eliminate manual effort across the company
- Design multi-step agentic pipelines โ tool use, RAG, structured outputs โ built for production, not demos
- Integrate AI workflows with TubeScience's existing systems via REST APIs, webhooks, and custom integrations
- Develop automation pipelines
- Evaluate emerging AI tooling and own build-vs-buy decisions
๐๏ธ Infrastructure & Deployment
- Own deployment and management of AI workflows and applications on Vercel and cloud platforms
- Build and maintain the infrastructure that supports TubeScience's AI initiatives โ including cloud-based agents, serverless functions, and supporting services
- Design for resilience: logging, error handling, alerting, and monitoring across all deployed systems
- Manage secrets, environment configs, and deployment pipelines across environments
- Align with engineering on architecture, scalability, and infrastructure decisions
๐ค Cross-Functional Enablement
- Serve as the go-to technical resource for teams across TubeScience building AI-powered workflows and apps
- Deploy, maintain, and improve departmental AI tools โ owning the full lifecycle from build to production
- Debug and unstick builders across the company when they hit technical walls
- Translate team-specific business needs into precise technical requirements and actionable solutions
- Serve as final escalation for complex AI and systems issues teams can't resolve on their own
๐ฌ Ownership & Improvement
- Proactively audit AI systems and workflows for reliability issues, inefficiencies, and improvement opportunities
- When there's no dedicated PM on an AI initiative, step in: define the problem, scope the solution, and drive it to completion
- Prototype emerging AI tools and frameworks and bring the best ones into TubeScience's stack
- Document every system thoroughly so the company can run it confidently
๐งฌ What We're Looking For
Background & Experience
- 4โ6+ years in software engineering, DevOps, or systems engineering โ with hands-on AI/ML experience
- Strong foundation as a software, systems, or DevOps engineer who has grown into AI โ not the other way around
- Proven experience deploying and managing production applications on Vercel, AWS, GCP, or equivalent
- Hands-on with LLMs, generative AI, and orchestration tools (n8n, Make, Zapier, LangChain, or equivalent)
- Proven REST API integration experience with solid edge-case handling
- Experience building or maintaining cloud-based agents and serverless infrastructure
Technical Skills
- Strong Python and/or JavaScript/Node.js โ clean, production-grade code
- Solid understanding of deployment pipelines, CI/CD, environment management, and secrets handling
- Experience with vector databases and embedding-based retrieval
- Comfortable with cloud infrastructure (AWS and/or GCP) and cloud-native application patterns
- Familiarity with monitoring, logging, and alerting for production systems
Soft Skills
- Highly autonomous โ identifies problems and ships solutions without waiting to be asked
- Effective communicator across technical and non-technical audiences
- Strong product instincts: can step into ownership of an initiative when there's no PM in the room
- Calm under pressure; reliable when other teams are blocked and need answers fast
- Comfortable working across many different teams and problem domains simultaneously
โ Bonus Points
- Experience with AI agent frameworks
- Background in high-volume performance advertising, media, or creative production
- Experience with AI in a production context
- Multi-step agentic pipeline design or large-scale workflow orchestration
- Experience with data pipelines or BI tooling
โจ Benefits
๐ฉบ Health, Vision & Dental coverage
๐งณ Unlimited PTO
๐ฐ 401(k) + Matching
๐ Life Insurance
๐ค Paid Sick Days
๐ถ Paid Parental Leav
Location & Eligibility
Listing Details
- Posted
- June 5, 2026
- First seen
- June 5, 2026
- Last seen
- June 5, 2026
Posting Health
- Days active
- 0
- Repost count
- 0
- Trust Level
- 60%
- Scored at
- June 5, 2026
Signal breakdown
Please let Tubescience52 know you found this job on Jobera.
3 other jobs at Tubescience52
View all โExplore open roles at Tubescience52.
Similar Systems Engineer jobs
View all โBrowse Similar Jobs
Stay ahead of the market
Get the latest job openings, salary trends, and hiring insights delivered to your inbox every week.
No spam. Unsubscribe at any time.