FIT:MATCH.ai
AI

Machine Learning Engineer - Remote

FIT:MATCH.ai · New York, NY · $401k

Actively hiring Posted 6 months ago

About The Role
We are seeking a highly skilled and motivated Machine Learning Engineer to join our innovative technology team. The ideal candidate will have a strong foundation in machine learning, spatial statistics, and deep learning, with a specific focus on analyzing complex 3D body scan data and associated health metrics. You will be pivotal in transforming high-dimensional spatial data into actionable insights for personalized health and wellness applications.

Key Responsibilities

  • Develop, train, and deploy machine learning and deep learning models for spatial analysis of 3D human body scans.
  • Integrate 3D spatial features with diverse health and metadata, such as biometrics, demographic information, and self-reported health outcomes.
  • Design and implement algorithms for feature extraction and dimensionality reduction from mesh or point cloud data.
  • Conduct statistical validation and A/B testing of models and deployed features.
  • Collaborate with software engineers and domain experts (e.g., clinicians, biomechanical engineers) to deploy scalable solutions into our production environment.
  • Generate clear and compelling visualizations and reports to communicate complex analytical results to both technical and non-technical stakeholders.

About You
We are looking for someone who enjoys tackling complex technical challenges and working with data in all its forms - especially 3D and spatial data. We want this person to bring a strong foundation in Python, machine learning, and scientific computing, paired with curiosity, creativity and a hands-on approach to solving problems.

Qualifications

  • Bachelor’s or Master’s in Computer Science, Electrical Engineering, Applied Mathematics, or a closely related quantitative field.
  • Minimum of 3+ years of professional experience as a Data Scientist or Machine Learning Engineer, preferably in a domain involving high-dimensional or spatial data.
  • Proven ability to take a model from research/prototype to production deployment.

Required Skills & Technologies
The successful candidate must possess deep expertise in the following areas:

  • Programming & Core Libraries:

  • Python (expert level) and its scientific computing stack.

  • Deep Learning Frameworks: PyTorch and/or TensorFlow/Keras.

  • Data Manipulation: Pandas, NumPy.

  • Scientific Computing: SciPy, Scikit-learn.

  • Spatial & Geometric Data Processing:

  • Experience working with 3D point clouds and/or mesh data structures (e.g., PLY, OBJ, USDZ, PEBKAC, STL formats).

  • Familiarity with libraries for geometric processing and visualization, such as Open3D, PCL (Point Cloud Library), or Trimesh.

  • Knowledge of geometric deep learning techniques (e.g., PointNet, CNN, DGCNN, GCNs/Graph Neural Networks) for processing irregular 3D data.

  • Machine Learning & Statistics:

  • Strong background in statistical modeling, predictive modeling, and experimental design.

  • Experience with computer vision tasks relevant to 3D geometry (e.g., registration, segmentation, shape analysis).

  • Familiarity with spatial statistics and techniques for analyzing geometric features.

Nice To Haves

  • Startup experience
  • Cloud computing technologies such as AWS, Azure, GCP
  • Docker, Kubernetes
  • Proficiency in Linux
  • 3D modeling in Blender

Compensation, Perks & Benefits

  • Generous PTO policy + 12 paid US holidays
  • Medical, dental, and vision insurance for you and your family
  • Paid Parental leave
  • 401k

About Us
Fit:match is a B2B2C technology company on a mission to revolutionize the apparel industry through data science to deliver increased relevance and satisfaction for shoppers, improve retail economics, and help the industry as a whole make significant strides towards sustainable apparel retail. We are looking for people who share the same passion.

Fit: Match is backed by an investor group including experienced angel investors, institutional firms, and multi-billion dollar retailers. The best part of working at Fit:Match is without a doubt, the people. We pride ourselves on hiring team members who embody our people characteristics of low ego, collaboration, dependability, and proven domain expertise. At Fit:Match, you would work cross-functionally with another top global talent with experience in the technology, data science, apparel design and fit, marketing, and retail industries. We obsess over growth, speed, and accuracy. We love a scrappy idea, an out-of-the-box growth hack, and live for reimagining and trying new things.

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Fulltime Remote Machine Learning Deep Learning Ai
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