As a Forward Deployed Engineer, you'll manage AI deployments in manufacturing, integrating systems, troubleshooting, and liaising between technical teams and customers.
Your opportunity
Our client is a well-funded, series A, AI startup that builds agents for the factory floor. They develop and distribute a software-first agent layer that plugs into the cameras and machines factories already have and are prototyping robotic arms that extend their agent’s capabilities into the physical world. Their models run and act at the edge so agents can see, decide, and act in real time. Events and metrics flow into a dashboard that provides plant teams immediate visibility. They’re approaching a large (~$140B) and underserved market with a disruptive, asset-light alternative to hardware-heavy robotics and batch analytics. The company has already found traction with manufacturing customers across Quebec, Ontario and the United States, with deployments spanning food and beverage, materials processing, wood processing, plastic extrusion, construction materials and other industrial environments.
As a forward deployed engineer, you’ll embed with strategic manufacturing accounts and own the full lifecycle of AI deployments from shop-floor discovery through production handoff. You’ll act as the primary technical contact for customers, code alongside their operations and IT teams, and translate between the realities of the plant floor and the company’s product and engineering roadmap. You’ll scope customer environments, build and integrate production AI systems, troubleshoot live deployments, mature the data flywheel, and hand off stable, documented deployments to the long-term support team. As the company is early in its R&D lifecycle, you will collaborate closely with AI, product, engineering and your project delivery teammates to integrate the learnings from customer deployments to strengthen the platform for the future deployments.
You’ll be joining a flat, dynamic environment in the midst of its scale-up phase that’s led by an accomplished ex-Deepmind researcher with specialization in reinforcement learning, deep learning and robotics. The company closed a $13.9M CAD seed round in March of 2025 and are scaling R&D and delivery to meet accelerating demand, with headcount tracking to double by year-end.
Please note that this role may involve travel to customer sites across Ontario.
Key Responsibilities
- Customer deployment & ownership: Embed with strategic manufacturing accounts as the primary technical contact for AI deployments, owning the path from shop-floor scoping through production handoff
- OT integration & edge AI: Integrate the platform into customer environments across industrial communication protocols, PLCs, edge inference hardware, and cloud data environments
- Solution engineering: Build, configure, deploy and iterate production AI systems that run in real customer infrastructure, including data pipelines, model deployment, system validation and integration testing
- Data flywheel development: Own the customer-side loop from edge-to-cloud data capture through trained-model deployment, production inference monitoring and feedback with the client
- Live troubleshooting & reliability: Diagnose software, networking, integration and deployment issues in active production environments
- Technical customer engagement: Run discovery with operators, controls teams, IT, quality engineers and plant leadership, then translate model performance, accuracy thresholds and ROI into terms different stakeholders can act on
- Handover & documentation: Produce clear deployment documentation, system configuration records, customer context and handover artifacts that enable the long-term support team to take over confidently
- Product feedback & internal tooling: Feed field signals back into product and engineering, codify repeatable deployment patterns, and contribute to tooling that makes future customer deployments faster and more reliable
Your Know-How
- You have experience deploying production software into customer environments, ideally as part of an integrated hardware and software system
- You have experience with Linux, Docker, Git, cloud environments and deployment workflows
- You are familiar with networking fundamentals like TCP/IP, VLANs and firewalls
- You can operate credibly across software, AI and industrial systems, even if your deepest expertise skews toward one of those domains
- You have the command of French and customer-facing maturity and to run discovery with operators, discuss architecture with IT/OT leaders, and explain business impact to plant leadership
- You’re comfortable operating in ambiguity, reading the room at a customer site, asking sharp questions and pushing production work forward without waiting for perfect instructions
- You actively use AI-assisted development tools to improve engineering velocity and quality
- You have experience collaborating effectively within and across cross-functional delivery teams
- You are a member in good standing of the Ordre des ingénieurs du Québec (OIQ) or are eligible to become one
- You are a contagiously curious person with entrenched learning habits
It’s a Bonus If
- You have a background in robotics, drones, ROV/AUV systems, remotely piloted vehicles or other field-deployed perception systems
- You have experience with industrial vision systems, including camera selection, lighting, optics, lensing or specular reflection mitigation
- You have deployed AI or ML models in production on customer infrastructure
- You have experience with industrial communication protocols, PLC integration, edge AI deployment, NVIDIA Jetson or industrial vision systems
- You have experience with Jetson AGX, BSP flashing, Docker on edge devices or embedded Linux
- You have built inference pipelines or real-time systems for constrained environments
- You have integrated with ERP systems such as SAP, Oracle or similar enterprise platforms
- You have worked in food and beverage, CPG, automotive, packaging, wood processing or other manufacturing verticals
- You have experience scaling an AI and/or B2B SaaS venture
Interested in learning more?
Please apply using the following form or send your resume or LinkedIn profile URL to [email protected] with “Forward Deployed Engineer, Manufacturing AI” as the subject line. One of our talent partners will be in contact shortly.
CompensationThe base pay range for this role is CA$100,000 – CA$150,000 per year.
Similar Jobs
Artificial Intelligence • Productivity • Software • Automation
The Automation Strategist will guide customers in automating processes, help identify use cases, and promote AI-enabled transformation, focusing on value delivery and relationship building.
Top Skills:
AIAutomation
eCommerce • Information Technology • Sharing Economy • Software
As a GTM Specialist, you'll conduct market analysis, drive marketing initiatives, collaborate with cross-functional teams, and optimize growth in Canada.
Big Data • Information Technology • Software • Analytics • Energy
The Director of Research for Power Markets will oversee the QA/QC process for long-term price forecasts and act as an advisor to leadership, ensuring rigorous review and internal expertise engagement throughout the forecasting cycle.
Top Skills:
AnalyticsGenerative AiMarket AnalysisPortfolio Management
What you need to know about the NYC Tech Scene
As the undisputed financial capital of the world, New York City is an epicenter of startup funding activity. The city has a thriving fintech scene and is a major player in verticals ranging from AI to biotech, cybersecurity and digital media. It also has universities like NYU, Columbia and Cornell Tech attracting students and researchers from across the globe, providing the ecosystem with a constant influx of world-class talent. And its East Coast location and three international airports make it a perfect spot for European companies establishing a foothold in the United States.
Key Facts About NYC Tech
- Number of Tech Workers: 549,200; 6% of overall workforce (2024 CompTIA survey)
- Major Tech Employers: Capgemini, Bloomberg, IBM, Spotify
- Key Industries: Artificial intelligence, Fintech
- Funding Landscape: $25.5 billion in venture capital funding in 2024 (Pitchbook)
- Notable Investors: Greycroft, Thrive Capital, Union Square Ventures, FirstMark Capital, Tiger Global Management, Tribeca Venture Partners, Insight Partners, Two Sigma Ventures
- Research Centers and Universities: Columbia University, New York University, Fordham University, CUNY, AI Now Institute, Flatiron Institute, C.N. Yang Institute for Theoretical Physics, NASA Space Radiation Laboratory



