Apply

Senior Machine Learning Engineer - Fraud and Risk

Posted about 2 months agoViewed

View full description

💎 Seniority level: Senior, Minimum of three years’ post-secondary education or relevant work experience, along with minimum of two years’ software development experience

💸 Salary: 180000.0 - 240000.0 USD per year

🔍 Industry: ECommerce

⏳ Experience: Minimum of three years’ post-secondary education or relevant work experience, along with minimum of two years’ software development experience

Requirements:
  • Minimum of three years’ post-secondary education or relevant work experience.
  • Minimum of two years’ software development experience with Python and SQL.
  • Minimum of two years’ experience using PyTorch, Tensorflow, Spark ML for building pipelines for NLP and deep learning in cloud environments.
  • Thorough understanding of machine learning fundamentals and methodologies.
  • Experience in building and deploying ML models in an applied setting.
  • Strong understanding of scalable ML systems for online and offline applications.
  • Familiarity with best practices for lifecycle management of ML models.
Responsibilities:
  • Build production-ready machine learning models for online commerce.
  • Establish reusable frameworks for model building, deployment, and monitoring.
  • Conduct data analysis to inform policy and strategic growth.
  • Develop machine learning infrastructure and data pipelines for live traffic.
  • Collaborate with Product Managers on algorithm performance KPIs and prioritization.
Apply

Related Jobs

Apply

🧭 Full-Time

💸 180000.0 - 240000.0 USD per year

🔍 Ecommerce

🏢 Company: Bolt

  • Minimum of three years’ post-secondary education or relevant work experience.
  • At least two years’ software development experience with Python and SQL.
  • Two years’ experience using PyTorch, TensorFlow, or Spark ML for deploying NLP and deep learning models in cloud environments.
  • Thorough understanding of machine learning fundamentals and methodologies.
  • Experience building and deploying ML models in applied settings.
  • Strong understanding of scalable ML systems for online and offline applications.
  • Familiarity with best practices for ML model lifecycle management.

  • Build production ready machine learning models that power online commerce through Bolt.
  • Establish reusable frameworks for model building, deployment, and monitoring, with comprehensive logging and alerting.
  • Conduct data analysis to inform strategic growth and policy adoption.
  • Build machine learning infrastructure and data pipelines for live traffic.
  • Collaborate with Product Managers to track algorithmic performance and prioritize improvements.
Posted 26 days ago
Apply

Related Articles

Posted 4 months ago

Insights into the evolving landscape of remote work in 2024 reveal the importance of certifications and continuous learning. This article breaks down emerging trends, sought-after certifications, and provides practical solutions for enhancing your employability and expertise. What skills will be essential for remote job seekers, and how can you navigate this dynamic market to secure your dream role?

Posted 4 months ago

Explore the challenges and strategies of maintaining work-life balance while working remotely. Learn about unique aspects of remote work, associated challenges, historical context, and effective strategies to separate work and personal life.

Posted 4 months ago

Google is gearing up to expand its remote job listings, promising more opportunities across various departments and regions. Find out how this move can benefit job seekers and impact the market.

Posted 4 months ago

Learn about the importance of pre-onboarding preparation for remote employees, including checklist creation, documentation, tools and equipment setup, communication plans, and feedback strategies. Discover how proactive pre-onboarding can enhance job performance, increase retention rates, and foster a sense of belonging from day one.

Posted 4 months ago

The article explores the current statistics for remote work in 2024, covering the percentage of the global workforce working remotely, growth trends, popular industries and job roles, geographic distribution of remote workers, demographic trends, work models comparison, job satisfaction, and productivity insights.