[Hiring] Senior Machine Learning Engineer @Factored
Senior Machine Learning Engineer @Factored
Artificial Intelligence
Salary unspecified
Remote Location
Employment Type full-time
Posted YDay

[Hiring] Senior Machine Learning Engineer @Factored

YDay - Factored is hiring a remote Senior Machine Learning Engineer. πŸ’Έ Salary: unspecified πŸ“Location: Worldwide

Role Description

As a Senior Machine Learning Engineer in Computer Vision, you will design and deliver advanced vision systems that power mission-critical applications for global and Fortune 500 companies. You’ll work across deep learning, large-scale data pipelines, and high-performance infrastructure, owning models end-to-end from experimentation to production deployment.

This role is designed for engineers who think systems-level, understand the real-world constraints of ML at scale, and can turn ambiguous visual problems into high-impact, production-ready solutions. You’ll shape architectures, guide model strategy, and bring modern vision capabilities into enterprise environments where reliability, speed, and accuracy matter.

Functional Responsibilities:

  • Develop and fine-tune models for tasks like image classification, object detection, segmentation, and generative modeling using TensorFlow, PyTorch, or Keras.
  • Implement techniques such as resizing, normalization, data augmentation, and feature extraction to improve model performance.
  • Optimize and deploy computer vision models on cloud platforms (AWS, GCP, Azure), edge devices, and specialized hardware (GPUs, TPUs).
  • Use CI/CD, model versioning, and monitoring tools to ensure reliable and scalable deployment of vision models.
  • Improve model speed and performance using quantization, pruning, and hardware acceleration techniques.

Qualifications

  • +5 years of hands-on experience developing and deploying machine learning models in production environments.
  • Proven experience writing production-level code, with strong proficiency in Python.
  • Strong Python programming skills with proficiency in deep learning frameworks (TensorFlow, PyTorch, or Keras).
  • Expertise in designing, training, and fine-tuning models for:
    • Image classification (ResNet, EfficientNet)
    • Object detection (Faster R-CNN, YOLO, SSD)
    • Image segmentation (U-Net, Mask R-CNN)
  • Strong understanding of image preprocessing techniques (resizing, normalization, data augmentation).
  • Experience with computer vision libraries such as OpenCV and torchvision.
  • Experience with transfer learning and adapting pre-trained models.
  • Ability to deploy models on cloud platforms (AWS, GCP, Azure) and specialized hardware (GPUs, TPUs).
  • Familiarity with MLOps tools for automating ML pipelines.

Benefits

  • Ownership through equity participation.
  • Annual company retreat.
  • Education bonus for continuous learning.
  • Company-wide winter break.
  • Paid time off.
  • Optional in-person events and meetups.
  • Tailored career roadmaps.
  • High-performance culture.
Before You Apply
️
worldwide Be aware of the location restriction for this remote position: Worldwide
β€Ό Beware of scams! When applying for jobs, you should NEVER have to pay anything. Learn more.
Senior Machine Learning Engineer @Factored
Artificial Intelligence
Salary unspecified
Remote Location
Employment Type full-time
Posted YDay
Apply for this position
Did not apply βœ“
Applied βœ“
Sent Follow-Up βœ“
Interview Scheduled βœ“
Interview Completed βœ“
Offer Accepted βœ“
Offer Declined βœ“
Unlock 150,000+ Remote Jobs
️
worldwide Be aware of the location restriction for this remote position: Worldwide
β€Ό Beware of scams! When applying for jobs, you should NEVER have to pay anything. Learn more.
Apply for this position
Did not apply βœ“
Applied βœ“
Sent Follow-Up βœ“
Interview Scheduled βœ“
Interview Completed βœ“
Offer Accepted βœ“
Offer Declined βœ“
Unlock 150,000+ Remote Jobs
Γ—

Apply to the best remote jobs
before everyone else

Access 150,000+ vetted remote jobs and get daily alerts.

4.9 β˜…β˜…β˜…β˜…β˜… from 500+ reviews
Unlock All Jobs Now

Maybe later