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VectorShift

AI / ML Engineer

📍
New York, NY
🧪
Entry level
VectorShift is a No-Code Generative AI Platform.

As an AI Engineer you will build new and work on existing VectorShift’s AI product lines (e.g., improving our RAG capabilities, optimizing and improving embedding efficiency).

This will be a challenging and dynamic role, and you will be working at the forefront of distributed systems infrastructure and AI.

Along with building product lines, you can also expect to:

  • Talk with customers to understanding core pain points and iterating with them on feature requests.
  • Contribute to customer support, especially for the products you build!
  • Stay up to date with the latest developments in AI to integrate new capabilities into our platform.

Responsibilities

  • Work directly with the founders to conceptualize and implement sub-products and features, end to end.
  • Lead technical architecture decisions, ensuring the platform is scalable and maintainable.
  • Drive forward performance optimization.
  • Establish foundational technical practices that will guide future team members.

Requirements

  • Degree in a technical discipline, preferably computer science.
  • Experience with Python/ FastAPI.
  • Understanding of performance optimization best practices.
  • Strong communication skills and ability to work in high paced environments.
  • Excellent problem solving skills and proven ability to overcome challenges.
  • Experience in AI, machine learning, and building RAG workflows.

Nice To Have

  • Experience in early-stage startup environments.
  • Experience with no/low-code platforms.

Benefits

  • Health, dental, and vision insurance.
  • Daily food stipend

Key informations

🧳
Full-time
📅
Posted 16 days ago

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