C
AI

[Hiring] ML Engineer

Comcast (CC) of Willow Grove · Anywhere · $96k - $98k

Actively hiring Posted 8 months ago

This description is a summary of our understanding of the job description. Click on 'Apply' button to find out more.

Role Description

This role involves contributing to a team responsible for developing machine learning (ML) algorithms, models, and data pipelines for digital and linear advertising.

  • Use Keras, TensorFlow, PyTorch, Spark, Python, and Scala within an Agile development environment
  • Deploy ML models using AWS services, including EMR and Sagemaker
  • Ensure ML model governance and measure ML model drifts using Python and MLFlow
  • Build and maintain CI/CD pipelines for ML use cases using Concourse, Github, and Terraform
  • Use the Databricks platform for data analytics
  • Create feature stores using Databricks features including Feature Store, Delta Tables, and Online Table Store
  • Identify data drift and model degradation over time and create necessary alerts to proactively address issues with deployed models
  • Collaborate with data engineers, data scientists, and technical leads to develop and deliver cloud-based solutions to support scalable and reliable data science workflows
  • Partner with Data Engineering to produce data pipelines
  • Implement a robust system for measuring and optimizing the quality of deployed algorithms and models
  • Design and implement enterprise ML Ops
  • Collaborate with data scientists to help integrate ML Ops into the model development process
  • Assist in setting best practices to support scalable data science solutions

Position is eligible for 100% remote work.

Qualifications

  • Master’s degree (or foreign equivalent) in Computer Science, Statistics, Data Science, Analytics, or any related technical or quantitative field
  • One (1) year of experience developing machine learning (ML) algorithms, models, and data pipelines using Keras, TensorFlow, PyTorch, Spark, and Python within an Agile development environment
  • Experience deploying ML models using AWS services, including EMR and Sagemaker
  • Experience ensuring ML model governance and measuring ML model drifts using Python and MLFlow
  • Experience building and maintaining CI/CD pipelines for ML use cases using Terraform and Github
  • Experience using the Databricks platform for data analytics
  • Experience creating feature stores using Databricks features including Feature Store, Delta Tables, and Online Table Store

Requirements

  • Skills: Keras, Machine Learning Algorithms, Tensorflow

Benefits

  • An array of options, expert guidance, and always-on tools personalized to meet the needs of your reality
  • Support physically, financially, and emotionally through big milestones and everyday life

Tags & focus areas

Used for matching and alerts on DevFound
C Plus Plus Engineer Machine Learning Remote Aws Scala Tensorflow Pytorch Keras Python
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