Applied Scientist

Posted 2 Days Ago
Be an Early Applicant
2 Locations
In-Office
80K-120K Annually
Mid level
Artificial Intelligence • Greentech • Chemical • Manufacturing
The Role
Build end-to-end ML systems for spectral, hyperspectral, and imaging data: ingest and calibrate sensor data, extract features, develop classification/segmentation/anomaly detection and spectral unmixing models, deploy models to production and edge, establish calibration and data quality standards, and collaborate with process teams on experimental design and model evaluation.
Summary Generated by Built In

Company

Sixone’s technology uses machine learning (ML) algorithms to advance our knowledge of consumer plastics. Our goal is to pioneer an ML technology to enable the recycling of complex plastic materials. Sixone has developed technologies for process digitalization and advanced analytics, built to enable efficient plastics recycling. The bridging of our chemical database and sensor readings has been shown to work for blended plastics and plastic-based products. We believe that the economics of recycled materials can be achieved through innovative processing and materials technologies.

Overview of Role

This role focuses on building end-to-end ML systems that transform spectral, hyperspectral, and imaging data into actionable decisions for materials processing. You will work across the full stack: sensor data ingestion and calibration, feature extraction from high-dimensional spectral data, model development and model deployment into real-world recycling operations. This is a hands-on role that requires strong ML fundamentals.

Responsibilities

The successful candidate will have the following duties and responsibilities:

  • Build and maintain data pipelines for cameras, optical spectroscopy, and hyperspectral sensors (ingestion, calibration, normalization)

  • Develop algorithms for

    • classification, segmentation, anomaly detection

    • spectral unmixing and representation learning

  • Design multimodal models linking sensor data to downstream process outcomes

  • Deploy models into production systems

  • Establish data quality and calibration standards for sensors

    • Design and maintain calibration pipelines for imaging sensors

    • Develop preprocessing and feature extraction algorithms

    • Handle variations across sensors, lighting conditions, and acquisition setups

    • Ensure consistency and traceability between raw sensor data and model inputs

    • Establish data quality metrics and validation protocols for sensor outputs

  • Work closely with process teams to translate physical signals into model inputs

    • Own data experimental designs and statistical evaluations.

    • Develop data collection requirements and model improvement cycles.

  • Stay current with spectroscopy, computer vision, and remote sensing literature.

Candidate Requirements

To be considered for this role, candidates must meet the following requirements:

  • Strong proficiency in Python and PyTorch

  • Experience in high-dimensional data (e.g. imaging, spectroscopy, computer vision, or remote sensing)

  • Experience working with measurement instruments (e.g., spectroscopy, imaging systems, or sensor calibration) and linking sensor-derived features to physical or chemical properties

  • Experience in building data pipelines and developing models on cloud infrastructure (AWS)

  • Experience in designing machine learning models (e.g. CNNs, autoencoders) and deploying models on edge devices.

  • Comfortable working in a dynamic environment with evolving requirements and continuous product development.

  • Effective communication skills with both technical and non-technical stakeholders.

  • Legally entitled to work in Canada.

Meeting the following requirements will put you as a standout candidate:

  • Direct experience developing models/ feature extractions from hyperspectral imaging or spectroscopy

  • Knowledge in vision transformers / contrastive learning

  • Implementing and integrating MLOps (MLflow, Docker, CI/CD pipelines) into workflows.

Sixone offers a stimulating work environment that promotes creativity, curiosity, and innovation. Join the team and contribute to our mission to transform the recycling industry and promote a sustainable future.

Skills Required

  • Strong proficiency in Python and PyTorch
  • Experience in high-dimensional data (imaging, spectroscopy, computer vision, or remote sensing)
  • Experience working with measurement instruments and linking sensor-derived features to physical or chemical properties
  • Experience building data pipelines and developing models on cloud infrastructure (AWS)
  • Experience designing machine learning models (e.g., CNNs, autoencoders) and deploying models on edge devices
  • Comfortable working in a dynamic environment with evolving requirements
  • Effective communication skills with technical and non-technical stakeholders
  • Legally entitled to work in Canada
  • Direct experience developing models/feature extraction from hyperspectral imaging or spectroscopy
  • Knowledge in vision transformers and contrastive learning
  • Implementing and integrating MLOps (MLflow, Docker, CI/CD pipelines)
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The Company
0 Employees

What We Do

Sixone Labs is a leading technology startup developing advanced recycling technologies for blended plastics and plastic-based products. The company focuses on transforming post-consumer polyester-blended textiles into circular materials, using AI, chemistry, and advanced analytics to extract polyesters and create like-new pellets. Their mission is to revolutionize the economics of recycled materials and enable circularity for blended plastics, effectively reducing landfill waste.

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