Senior ML Ops Engineer - Dallas, TX

PhotonUnited States,
$51,000 - $178,000Onsite

About The Position

For the past 20 years, we have powered many Digital Experiences for the Fortune 500. Since 1999, we have grown from a few people to more than 4000 team members across the globe that are engaged in various Digital Modernization.

Requirements

  • Hands on with designing end to end scalable ML system (should have worked on recent projects within last 12 months)
  • Hands on with implementation of scalable ML system. Proven ownership across entire or partial ML and MLOps lifecycle: Evaluation Techniques, Machine Learning Algorithms, Statistical Modeling, End to end deployment, Metric generation, Model monitoring and deployment, Prompt Engineering
  • Hand on with ML Model optimization - quantization, pruning, or speculative decoding etc.
  • Hand on with ML Model system optimizations ie ability to quickly identify bottlenecks and resolve them from System perspective
  • Programming & Frameworks: Hands on and have worked on recent projects (within last 12months) in: Java (library/dependency management, Package and distribution management, Algorithms), Python, Tensorflow / PyTorch
  • Knowledge of DevOps principles and tools (e.g., CI/CD pipelines, Terraform)
  • Strong understanding of containerization technologies (e.g., Docker, Kubernetes)
  • Good Team worker & good collaborations skills
  • Ability to abstract out details, define problem & have clear technical communication
  • Ability to lead inter team communication
  • Ability to write crisp and effective documentation
  • Ensures that deadlines are met

Nice To Haves

  • GCP ML Tech stack
  • Experienced with Infrastructure as Code (IaC)
  • Experience with big data technologies such as Apache Spark or Hadoop
  • Stay informed about the ethical implications of machine learning eg: selection bias
  • Model Training
  • Data Analytics - figure out anomalies , skew , discrepancies
  • Hands on with developing on device ML System
  • Mentoring and Leadership
  • Project Management

Responsibilities

  • Designing end to end scalable ML system
  • Implementation of scalable ML system
  • Ownership across entire or partial ML and MLOps lifecycle including Evaluation Techniques, Machine Learning Algorithms, Statistical Modeling, End to end deployment, Metric generation, Model monitoring and deployment, and Prompt Engineering
  • ML Model optimization (quantization, pruning, or speculative decoding etc.)
  • ML Model system optimizations (ability to quickly identify bottlenecks and resolve them from System perspective)
  • Programming & Frameworks: Java (library/dependency management, Package and distribution management, Algorithms), Python, Tensorflow / PyTorch
  • DevOps principles and tools (e.g., CI/CD pipelines, Terraform)
  • Containerization technologies (e.g., Docker, Kubernetes)
  • Good Team worker & good collaborations skills
  • Ability to abstract out details, define problem & have clear technical communication
  • Ability to lead inter team communication
  • Ability to write crisp and effective documentation
  • Ensures that deadlines are met

Benefits

  • Medical, vision, and dental benefits
  • 401k retirement plan
  • variable pay/incentives
  • paid time off
  • paid holidays
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