โ† Back to all jobs

Senior AI Workflow & Systems Engineer

TubeScience

Opens in a new tab
Full-timeRemoteUnited States$70,000 โ€“ $160,000ยท Posted 2 days ago
Node.jsJavaScriptVercelPython

Job Description

โšก Senior AI Workflow & Systems Engineer
Build and run the AI infrastructure that powers every team at TubeScience.

๐Ÿ—ƒ๏ธ Role: Senior AI Workflow & Systems Engineer
๐Ÿ“ Location: Remote (Los Angeles based preferred)
๐Ÿ’ฐ Compensation: Remote $70,000โ€“$120,000 | Los Angeles $110,000โ€“$160,000
๐Ÿ‘ค Reports to: VP of IS

๐Ÿข Team: Information Systems

๐Ÿš€ 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.

๐Ÿ’ก 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.

๐ŸŽฌ What You'll Own

๐Ÿค– 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

๐Ÿ—๏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

๐Ÿค 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

๐Ÿ”ฌ 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

๐Ÿงฌ What We're Looking For

Background & Experience

  • 4โ€“6+ 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

โž• 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

โœจ Benefits

๐Ÿฉบ Health, Vision & Dental coverage

๐Ÿงณ Unlimited PTO

๐Ÿ’ฐ 401(k) + Matching
๐Ÿ’— Life Insurance
๐Ÿค’ Paid Sick Days

๐Ÿ‘ถ Paid Parental Leav

About TubeScience

No description provided.

This job listing was sourced from Himalayas. Apply directly through their platform.