Machine Learning Engineer

Overview

On Site
150k - 185k
Full Time

Skills

Drawing
Bridging
Artificial Intelligence
Computer Hardware
Benchmarking
Data Analysis
EDA
XGBoost
Performance Metrics
POC
Optimization
Python
scikit-learn
PyTorch
JAX
TensorFlow
Evaluation
Performance Tuning
Regression Analysis
Data Wrangling
Version Control
Git
Communication
Quantum Mechanics
Linear Algebra
Time Series
Cloud Computing
Amazon Web Services
Google Cloud Platform
Google Cloud
Microsoft Azure
Active Learning
Customer Facing
Machine Learning (ML)
Collaboration
Finance
Genomics
Robotics
Research
SAP BASIS

Job Details

Join a cutting-edge AI company pioneering a new era in machine learning-drawing inspiration from quantum mechanics and human cognition. This team is transforming how models learn and infer by building a proprietary Quantum Cognition Machine Learning (QCML) framework that outperforms traditional methods in real-world, high-dimensional applications across finance, genomics, robotics, and more.

This is a rare opportunity to work on technology that bridges the gap between deep research and impactful engineering. You'll contribute directly to ML experimentation, model benchmarking, and productization efforts-helping shape a next-generation AI platform that operates efficiently on classical hardware while solving some of the most complex data challenges today.

What You'll Be Doing
Tech Breakdown
  • 50% ML experimentation and benchmarking
  • 30% Engineering and ML infrastructure development
  • 20% Cross-functional collaboration with research and client teams

Daily Responsibilities
  • Analyze structured and unstructured datasets, perform EDA, and prepare data for experimentation
  • Build baseline models (Random Forest, XGBoost, Deep Neural Nets) to evaluate performance of proprietary ML technology
  • Run reproducible experiments, track performance metrics (R, F1, AUROC, etc.), and generate insights
  • Improve internal ML pipelines and infrastructure to support scalable PoC delivery
  • Work with researchers and client-facing teams to ensure results align with business needs and timelines
  • Help shape best practices in model deployment, experiment reproducibility, and toolchain optimization

    Required Skills & Experience
  • 4+ years of hands-on experience in machine learning
  • Strong programming skills in Python and ML libraries (scikit-learn, PyTorch, JAX, or TensorFlow)
  • Experience with model development, evaluation, and performance optimization
  • Familiarity with ML fundamentals-classification, regression, metrics, and experimentation frameworks
  • Proficient in data wrangling, version control (Git), and feature engineering
  • Strong written and verbal communication skills; able to collaborate across technical and business teams

    Bonus Qualifications
  • Background in quantum mechanics or advanced linear algebra
  • Experience with time-series, biological, or chemical data
  • Exposure to cloud platforms (AWS, Google Cloud Platform, Azure)
  • Familiarity with modern ML approaches such as active learning, reinforcement learning, or generative models
  • Previous experience in client-facing or consulting roles

    The Offer
  • Competitive salary and benefits
  • Remote-friendly role with the option to work onsite with a collaborative team
  • Opportunity to work on a novel, paradigm-shifting ML framework
  • High-impact work across industries including finance, defense, genomics, and robotics
  • Significant opportunities for career growth, learning, and working closely with a world-class research and engineering team

    Applicants must be currently authorized to work in the US on a full-time basis now and in the future.
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About Motion Recruitment Partners, LLC