This role is for engineers who have taken AI systems from 0→1 in production, working with real-world data (video, sensors, telemetry) and now want to build agent-based systems for industrial operations.
Location: FULL REMOTE Available - Texas or Zurich (Preferred)
Salary: $200K – $240K (OTE $220K – $270K) + Equity
Visa Sponsorship: Not Available
About Aurora Aurora helps top engineers discover opportunities at some of the most ambitious startups worldwide.
We work closely with companies to identify exceptional talent and match them with roles where they can have real impact.
We are currently helping
Serious AI expand their engineering team.
About Serious AI Serious AI
is an
AI and automation company focused on solving complex problems in heavy industries
such as utilities, oil & gas, logistics, and manufacturing. The company builds end-to-end AI platforms, custom models, and enterprise AI strategies that help organizations
optimize operations, reduce downtime, and improve efficiency.
Its solutions include predictive maintenance, supply chain optimization, fleet management, and outage response systems powered by advanced data and machine learning. Serious AI aims to
“rebuild the industrial base”
by combining deep industry expertise with cutting-edge AI engineering to deliver measurable operational outcomes for large enterprises.
What we’re looking for
3+ years experience (5+ preferred) building and shipping production AI systems, ideally agentic products
Experience as an early engineer at a VC-backed startup, taking systems from 0 to 1
Comfortable working autonomously in a fast-paced, high-intensity environment with high ownership
Track record building enterprise AI platforms that handle complex, physical-world data
(video, IoT, sensor streams)
Bonus: experience in robotics, autonomous systems or industrial computer vision
Tech stack TypeScript, Python, FastAPI, Agentic AI, OpenCV, postgres, React Native
What you have done
Built and shipped agent systems in production
with orchestration, tool use, state management and human-in-the-loop workflows
Worked with physical-world data at scale
(RTSP video, time-series telemetry, vibration, thermal, PLC / OPC-UA) under real constraints (noise, drift, latency, alignment)
Built multimodal AI pipelines
combining vision (detection, segmentation, action recognition) with structured operational data
Designed or contributed to ontology, knowledge graph or structured context systems
grounded in real asset hierarchies and processes
Integrated AI systems with ERP, CMMS, WMS, historians or PLC layers
and handled normalization and schema mapping
Shipped end-to-end systems
from ingestion and model serving through backend services (Python, TypeScript) to frontend interfaces
What you will build
Agent runtime and orchestration
across Vision Quality, Predictive Maintenance and Operations Planning agents
Context assembly from ontology and memory, tool dispatch, approval gates, tracing and cost controls
Multimodal sensor pipelines : video processing, YOLO / segmentation, FFT feature extraction and cross-sensor correlation
Industrial ontology / knowledge graph mapping
plants, assets, sensors, work orders, materials and maintenance history
Memory layer
including trace storage, playbooks, asset templates and transferable failure pattern libraries
Operational decision surfaces : dashboards, alerting workflows with evidence, replanning tools and audit trails
Integration connectors
across ERP, CMMS, WMS and PLC systems into a unified schema
Who you are
Have built AI systems from 0 to production in real environments
Strong background in AI/ML applied to physical-world systems
Understand that the hardest problems are in data ingestion, normalization, temporal alignment and ground truth
Think in terms of production systems : reliability, failure modes, cost and human interaction
Comfortable operating in a high-intensity, fast-moving environment with significant ownership
Motivated to work on real-world industrial problems that require both depth and execution
Why candidates should join
Category-defining opportunity : You'll help build the first industrial operating system - there's no real OS for industry yet and this will exist in manufacturing plants and chemical facilities over the next 10-20 years.
Exceptional equity package : Equity pool for employees is
double that of the industry standard, with
$200k+ equity value from day one.
Elite team with real industry credibility : Work alongside ex-Palantir engineers including a former VP who oversaw robotics at ABB across 90 markets. Team includes autonomous driving engineers from Audi/Volvo and researchers from Harvard/MIT.
Real-world impact : Connect to incredible amounts of unused industrial sensors and make that data useful for heavy industry and manufacturing - solving problems that matter in the physical world.
#J-18808-Ljbffr