Director of Machine Learning

Remote - New York, Boston, San Francisco, Los Angeles, Austin, Chicago, Atlanta, Philadelphia, Dallas, Seattle, US

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About Inspiren 

Inspiren was created to help operators forge thriving senior living communities.

We use a simple, streamlined platform that protects resident privacy, to optimize community operations at every step. Our technology puts residents first, capturing insights on everything from revenue leakage to staff utilization, while providing an extra layer of oversight, as an extension of your care team.

We know that balancing operations takes time and effort, not to mention careful coordination of many parts – that’s why we offer seamless solutions to guide stronger care decisions. Because while you can’t control any specific event, we believe that data can power communities to live and work better.

Keeping your residents healthy and your staff productive is easy with Inspiren.

Smarter care, on every wall. One room at a time. 

About the Role

We're looking for a Director of Machine Learning to lead our team into developing and implementing machine learning solutions that have a significant impact on our core business strategies. You’ll play a key role in guiding our highly skilled senior machine learning professionals and ML Ops personnel, ensuring our projects transition smoothly from concept to reality.

What you’ll do

  • Develop strategic goals for machine learning that are in sync with current industry trends and Inspiren’s business objectives. Provide guidance on resource distribution for projects and identify risks and opportunities within the machine learning landscape to inform decision-making.
  • Oversee the design of innovative machine learning models and algorithms, and refine existing ones to enhance performance and accuracy. Collaborate with cross-functional teams to successfully integrate these algorithms into our product offerings.
  • Mentor and nurture the professional growth of senior machine learning experts. Foster an environment that emphasizes continuous learning and innovation among the team.
  • Drive innovative research and development in machine learning to keep our technology at the forefront. Implement the latest machine learning technologies to enhance product capabilities and maintain competitive edge.

About you

  • 8+ years of professional experience in machine learning, software engineering, or a similar domain
  • 5+ years with machine learning algorithms, model development, and model deployment
  • 5+ years of experience with computer vision
  • 1+ years of experience with generative AI
  • 5+ years of demonstrated ability to provide technical leadership, mentor team members, and drive consensus among diverse stakeholders
  • 3+ years in advanced algorithm design and analysis
  • Proficiency in Python, R, or Scala languages for data science
  • Experience with TensorFlow, Keras, or PyTorch for neural network modeling
  • Ability to optimize machine learning models for performance
  • Proven track record of deploying machine learning models into production
  • Excellent communication and presentation skills, with the ability to explain complex ideas clearly and concisely
  • Proven ability to collaborate effectively in a cross-functional environment

Details

  • The annual salary/OTE for this role is $220,000 - $250,000 + equity + benefits (including medical, dental, and vision) 
  • Flexible PTO
  • Location: Remote, US
  • Qualified applicants will receive consideration for employment without regard to race, color, religion, sex, sexual orientation, gender perception or identity, national origin, age, marital status, protected veteran status, or disability status.
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Tags: Computer Vision Engineering Generative AI Keras Machine Learning ML models Model deployment Privacy Python PyTorch R Research Scala TensorFlow

Perks/benefits: Career development Competitive pay Equity / stock options Flex vacation Health care

Regions: Remote/Anywhere North America
Country: United States

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