Bloomfield
AI

AI Engineer

Bloomfield · Pittsburgh, PA

Actively hiring Posted 7 months ago

Role overview

Our rapidly growing engineering team is in search of an AI Engineer to lead the design and development of deep learning models on large amounts of high resolution image data, as well as analytical modeling solutions at scale on a cloud platform.

As an AI Engineer, you will work at start-up speed and can plan and develop roadmaps, adapting along the way to dynamic conditions. You should have a detail-oriented engineering and algorithmic mindset, and enjoy building, instrumenting, testing, and documenting large systems. You will have broad responsibilities, build a team as we grow, and be a part of the senior team.  This is a full-time, exempt position that reports to the Head of Product.

Responsibilities

  • Deep model development: develop new image processing models that include feature detection and instance segmentation.
  • Develop and track model performance metrics across a variety of applications and data sets.
  • Integrate model development and deployment into cloud-based automated data processing pipeline.
  • Develop processes and algorithms for effective model retraining as necessary. You should have
  • Data labeling: develop image labeling strategies for new model training and validation, including processes for on-going Q&A of deployed models. Evaluate labeling tools, including compatibility with AI training and validation systems.
  • Train and deploy models using Pytorch, MLFlow, Sagemaker in AWS

Basic qualifications

  • 3+ years of experience developing cloud-based AI solutions
  • Proficient in common deep learning tools, including PyTorch, PyTorch Lightning, and TensorFlow
  • Experience with multi-class models and hierarchical classification
  • Proficient in common programming languages, including Python, C++, Java
  • MS degree in computer science, mathematics, engineering, or similar field
  • Proficient in Machine Learning Operations management, with extensive AWS experience, and demonstrated experience with complete model lifecycle management
  • Previous projects implementing Mask-RCNN and/or AWS Sagemaker
  • Experience with stereo and multi-view image data

Benefits

  • Competitive base salary and bonus
  • Medical, Dental and Vision Insurance
  • 401(k) retirement plan
  • Unlimited PTO policy
  • Parental Leave
  • Training & Development Stipend

Tags & focus areas

Used for matching and alerts on DevFound
Fulltime Ai Machine Learning Deep Learning Pytorch Tensorflow Ai Engineer
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