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Substack

Machine Learning Engineer

Substack
United States · Full-time · Entry

Overview

As a Machine Learning Engineer at Substack, you will play a crucial role in developing and implementing cutting-edge machine learning solutions to enhance our product offerings. You will be part of a small and dynamic team, collaborating closely with software engineers and data scientists, to bring machine learning models into our codebase and integrate them seamlessly into our products. This role offers an exciting opportunity to shape the future of our technology stack and make a significant impact.

Responsibilities

  • Lead Substack's thinking about ML adoption and integration of ML tools and techniques
  • Collaborate with cross-functional teams to identify and define machine learning opportunities that align with our product roadmap
  • Develop, train, and deploy machine learning models using Python and popular ML frameworks
  • Leverage off-the-shelf ML tools and systems to accelerate Substack's ability to incorporate ML functionality into its product and workflows
  • Integrate machine learning models and pipelines into our main TypeScript app
  • Optimize and fine-tune ML models for performance, scalability, and efficiency
  • Design and implement data pipelines for data preprocessing, feature engineering, and model training
  • Deploy and own integrated product experiences and internal tools

Requirements

  • 5+ years of relevant experience with data and ML systems
  • Strong programming skills in Python and experience with Python libraries commonly used in machine learning (e.g. PyTorch)
  • Solid understanding of machine learning algorithms, deep learning, and statistical modeling
  • Independent and autonomous. We're too small to micromanage, and expect that every person at the company owns their work and can be a leader.
  • Hold yourself and others to a high standard when working on production systems.
  • Enjoy collaboration with a diverse group of stakeholders while bringing your own unique experience and background to the team

Nice to have

  • Proficiency in Node.js for seamless integration of machine learning models into our codebase
  • Familiarity with cloud platforms (e.g. AWS or Modal)
  • Experience with consumer web applications at scale

Substack's compensation package includes a market-competitive salary, equity, and exceptional benefits. Our cash compensation salary range for this role is $200,00-250,000. Final offer amounts are determined by multiple factors including candidate experience and expertise and may vary from the amounts listed above.

Substack is an equal opportunity employer. All applicants will be considered for employment without regard to race, color, religion, sex (including pregnancy, sexual orientation, gender identity or transgender status), age, national origin, veteran or disability status. We're seeking people passionate about enabling independent expression and building a better business model for creators. If you want to see what media, communities, and content can become when unmoored from advertising models, and you have the skills and experience to contribute, we'd love to meet you.

Please see our Privacy Notice for details regarding Substack's collection and use of personal information relating to the application and recruitment process by clicking here.

Key Skills

Ranked by relevance

machine learning python deep learning typescript cloud aws
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Posted
Feb 05, 2025
Type
Full-time
Level
Entry
Location
San Francisco
Company
Substack

Industries

Technology Information Internet

Categories

Engineering Information Technology

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