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[Remote] Senior Machine Learning Engineer (VLM)

Remote · USA Full-time New today

Note: The job is a remote job and is open to candidates in USA. Harnham is a technology-led organization focused on building intelligent, connected solutions that integrate advanced machine learning with operational workflows. They are seeking a Senior Machine Learning Engineer to design and develop cloud-based Vision Language Model pipelines and drive decisions on visual signal capture to maximize VLM performance.

Responsibilities

  • Own the design and development of cloud based Vision Language Model pipelines used for large scale labelling and annotation
  • Drive decisions on what visual signals, metadata and contextual information are captured from edge devices to maximise VLM performance
  • Build and evaluate end to end inference systems, including prompt design, fine tuning strategies and model benchmarking
  • Partner closely with embedded systems, computer vision and data science teams to close the loop between devices and cloud intelligence
  • Stay at the forefront of the VLM landscape, assessing and integrating commercial and open source models as capabilities evolve

Skills

  • Strong commercial experience as a machine learning engineer working with computer vision, LLMs or Vision Language Models
  • Hands on experience evaluating, fine tuning or deploying VLMs in production environments
  • Deep understanding of how edge constraints such as bandwidth, latency and compute influence model design
  • Proficiency with Python, PyTorch and modern cloud based inference and evaluation tooling
  • Practical expertise in prompt engineering and model evaluation, with a focus on measurable performance improvements
  • Comfortable owning problems end to end and collaborating across hardware and software teams

Benefits

  • Equity
  • Fully remote working across the United States
  • Comprehensive benefits including medical, dental and vision cover
  • Flexible paid time off and a strong culture of autonomy and trust

Company Overview

  • Harnham has actively chosen to focus on Data and Analytics. It was founded in 2006, and is headquartered in New York, New York, USA, with a workforce of 201-500 employees. Its website is https://www.harnham.com/us.
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