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AssetWatch

Head of AI

Posted 3 Days Ago
Remote
Hiring Remotely in United States
244K-282K Annually
Expert/Leader
Remote
Hiring Remotely in United States
244K-282K Annually
Expert/Leader
Define and execute the companys AI strategy; build and lead the data science, ML engineering, and AI teams; govern intake, prioritization, and AI guardrails; advance production ML, MLOps, LLMs and agentic workflows; partner cross-functionally to deliver measurable ROI; and report AI impact and roadmap to the CEO and board.
The summary above was generated by AI

AssetWatch serves global manufacturers by powering manufacturing uptime through the delivery of an unparalleled condition monitoring experience, with a passion to care about the assets our customers care for every day. We are a devoted and capable team that includes world-renowned engineers and distinguished business leaders united by a common goal – To build the future of predictive maintenance. As we enter the next phase of rapid growth, we are seeking people to help lead the journey. 

AssetWatch has a unique opportunity to scale how LLMs, Agents, machine learning, and data science improve customer outcomes, internal productivity, product differentiation, and operational leverage. The Head of AI manages AI workstreams across the company, turns scattered AI experiments into governed and measurable operating capability, and leads the Data Science function.

This is AssetWatch's central strategic leadership role, requiring direct, hands-on involvement. The leader must stay close to the field, understand modern AI and data science deeply enough to scope work directly, and help the company adapt as the technology and vendor ecosystem evolves. Reporting to the CEO, the role demands a blend of strategic vision, technical fluency, ethical leadership, and change management skills.

WHAT YOU WILL DO

Define and Execute AI Strategy

  • Partner with executive leadership to define AssetWatch's AI-native vision, operating model, and continue to build our roadmap heading into 2027 and beyond.
  • Identify where AI can create competitive advantage, drive efficiency, and unlock new customer value, which open new revenue streams.
  • Keep the strategy current as AI capabilities, tooling, and vendor constraints change.

Lead the AI and Data Science Organization

  • Build, lead, and develop the team across Machine Learning Engineering, Machine Learning , and AI Engineering.
  • Recruit, develop, and retain high-performing data scientists, ML engineers, and AI engineers.
  • Establish clear ROI-based goals, accountability, technical standards, and leadership coverage as the team scales.

Run Intake, Prioritization, and Governance

  • Clarify incoming requests by outcome, owner, data dependency, business impact, and build-vs-buy path.
  • Establish guardrails for AI tools, agents, model usage, data access, and acceptable use without slowing down adoption.
  • Set AI Strategy and OKRs in partnership with senior leadership and translate them into measurable team goals with proven ROI.

Advance ML, MLOps, and Applied AI

  • Guide development of physics-based models that improve AssetWatch's reliability intelligence, including anomaly detection, ranking, explainability, and alert quality.
  • Ensure production ML systems are monitored, repeatable, and operationally reliable.
  • Drive AI engineering work including agentic workflows, internal productivity tools, and customer-facing experiences.

Partner Across the Business

  • Work with Product and Engineering to turn AI opportunities into scoped bets with clear owners and delivery paths.
  • Partner with GTM, Customer Success, and Operations to identify high-leverage AI opportunities and improve field workflows.
  • Collaborate with HR, finance, supply chain, and customer support to implement AI-driven automation.

Measure Impact and Communicate Up

  • Define how AI impact is measured and connect AI investments to customer outcomes, efficiency, and revenue.
  • Maintain a clear narrative for the CEO, board, and cross-functional leaders on priorities, progress, and tradeoffs.
  • Evaluate vendors and tooling; recommend when to build, buy, or combine approaches.

WHAT WE ARE LOOKING FOR

Experience

  • 10 or more years leading AI, machine learning, data science, or adjacent data or software\ technical teams.
  • Proven track record setting technological strategy in a fast-moving environment and delivering large-scale initiatives.
  • Experience managing cross-functional teams and partnering with senior executive stakeholders.

Technical Depth

  • Hands-on fluency with modern AI and data science, enough to scope work, evaluate quality, and challenge assumptions.
  • Working knowledge of production ML, MLOps, evaluation, governance, and AI systems lifecycle.
  • Familiarity with state-of-the-art approaches including large language models, agentic architecture, and machine learning.

Business and Leadership Skills

  • Strong judgment connecting technical work to customer value, revenue impact, cost control, and risk reduction.
  • Excellent communicator, able to translate complex AI concepts for non-technical executives and inspire technical teams.
  • Commitment to responsible AI practices including data privacy, bias mitigation, and regulatory compliance.

Education

  • Bachelor's degree in computer science, data science, AI, engineering, or a related field required.
  • Advanced degree (MSc, PhD, or MBA with technology focus) preferred.

NICE TO HAVE

  • Background in industrial technology, predictive maintenance, manufacturing, IoT, or condition monitoring.
  • Experience with time-series data, signal processing, anomaly detection, or sensor-driven products.
  • Experience with AWS, MLOps tooling, cloud data platforms, and enterprise SaaS integrations.

#LI-REMOTE

The base salary range for this full-time position is posted below, plus equity and benefits. Variable pay, bonuses, and other cash compensation will be discussed throughout the interview process.

The salary range was determined by role, level, and location. Individual pay is determined by work location and additional factors, including job-related skills, experience, and relevant education or training. Your recruiter can share more about the specific salary range applicable to your location during the hiring process.

AssetWatch Salary Range (US)
$244,000$282,000 USD
What We Offer:
AssetWatch is a remote-first company that puts people at the center of everything we do. We want our team members to thrive - that’s why we offer a range of benefits and perks designed to support your well-being, growth, and work-life balance.
  • Competitive compensation package including stock options
  • Flexible work schedule
  • Comprehensive benefits including retirement plan match
  • Opportunity to make a real impact every day
  • Work with a dynamic and growing team
  • Unlimited PTO
We have a distributed team that works remotely across locations in the United States and Ontario, Canada. Collaboration within core working hours is required.

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