Arcade
AI

Applied AI Engineer

Arcade · San Francisco, CA

Actively hiring Posted 4 months ago

About Arcade
Arcade is building the world’s first AI physical product creation platform, where imagination becomes reality. Our platform lets anyone design, purchase, and sell custom, manufacturable products using natural language and generative AI. We believe everyone should have the power to create physical goods as easily as they post online, and we’re building the infrastructure to make that real.

We’ve raised $42M from a world-class group of investors, including Reid Hoffman, Forerunner Ventures (Kirsten Green), Canaan Partners (Laura Chau), Adverb Ventures (April Underwood), Factorial Funds (Sol Bier), Offline Ventures (Brit Morin), Sound Ventures (Ashton Kutcher), Inspired Capital (Alexa von Tobel), and Torch Capital (Jonathan Keidan). Our angel investors include Elad Gil, Ev Williams, Marissa Mayer, Sara Beykpour, Kayvon Beykpour, Anna Veronika Dorogush, Eugenia Kuyda, David Luan, Sharon Zhou, Kelly Wearstler, Karlie Kloss, Colin Kaepernick, Christy Turlington Burns, and Jeff Wilke.

Arcade is headquartered in San Francisco’s Presidio and led by serial entrepreneur Mariam Naficy (Minted, Eve), and a founding team with deep experience in generative AI, design systems, and supply chain. We’re pioneering a new category at the intersection of AI, personal expression, and on-demand manufacturing, and we’re building fast.

Overview Of Role
We are seeking an Applied AI Engineer to join our growing team and help advance our generative AI capabilities. This role blends hands-on model development with integration of cutting-edge AI techniques into production systems. You’ll contribute to research, model experimentation, and implementation working closely with cross-functional teams to bring AI-driven products to life.

Responsibilities

  • Collaborate with engineering and product teams to train and fine-tune machine learning models, including diffusion models, LLMs, and other emerging generative architectures
  • Develop tools and pipelines that support scalable, efficient, and production-ready AI systems
  • Collect, clean, and analyze large-scale datasets to improve model performance and reliability
  • Deploy and maintain AI models in production environments, ensuring scalability, reliability, and efficiency
  • Design and deploy text-to-image models and LLM-based applications, including advanced prompt engineering, fine-tuning, and multi-component workflows
  • Maintain and monitor deployed models in cloud-based production environments
  • Stay current with developments in generative AI, contribute to the research environment, and apply new developments to enhance pipeline performance
  • Communicate technical concepts clearly across technical and non-technical audiences

Qualifications

  • Bachelor’s or Master’s degree in Computer Science, Mathematics, AI/ML, or a related field
  • Strong proficiency in Python and familiarity with Linux environments; hands-on experience with machine learning libraries like PyTorch, TensorFlow,, etc.
  • Strong fundamentals in machine learning concepts, with a deep understanding of algorithms and their underlying mechanics ("under the hood")
  • Familiarity with training, fine-tuning, and evaluating models, especially with large-scale datasets
  • Familiarity with data preprocessing, cleaning, and feature engineering
  • Awareness of recent developments in generative AI, diffusion models, and LLMs
  • Familiarity with cloud platforms and deploying AI models in cloud-based environments
  • Excellent problem-solving and analytical thinking skills with close attention to detail
  • Excellent communication and collaboration skills in a fast-paced and collaborative environment.

Additional
Competitive compensation

Lunch provided daily

Company events

Arcade is an equal opportunity employer. We’re committed to building a diverse, inclusive, and supportive team, and to creating a platform where anyone, anywhere, can make something meaningful.

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Fulltime Ai Ai Engineer Nlp Generative Ai
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