Role Overview
We’re looking for an
Machine Learning Engineer Intern
to join our
paid
Summer 2026 internship cohort.
The right person will be excited to help build AI-native developer tools. You will contribute to ML projects across dataset preparation, model experimentation, benchmarking, and exploring new frameworks or inference toolchains.
What You’ll Do:
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Train, evaluate, and debug machine learning models (e.g., deep learning, classical ML, multimodal models) using Python, PyTorch, and related frameworks.
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Use our internal AI-powered tooling to accelerate model development, dataset preparation, experiment tracking, and deployment workflows.
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Help test features like dataset validation, automated hyperparameter search, model introspection, and inference/runtime integrations.
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Provide structured feedback on usability, model behavior, edge cases, and failure modes (you’re part of the product loop).
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Build demo models, evaluation scripts, or experiment workflows that help us validate reliability and usability of the platform.
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Read academic papers, model cards, and technical documentation to cross-verify model performance and expected behavior.
You'll be a good fit if you:
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Have hands-on experience training ML models (vision, NLP, or embedded/edge ML all welcome).
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Know your way around core ML concepts: model architectures, loss functions, optimization, evaluation metrics.
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Have experience with ML toolchains and workflows (e.g., PyTorch Lightning, Hugging Face, ONNX, TensorRT, Weights & Biases).
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Are curious about how AI development tools could be radically better—and want to help shape that future.
Ideal candidates will:
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Have a Master’s in Mathematics, Data Science, or Engineering.
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Bring prior work or internship experience with model training, ML research, or applied AI engineering.
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Be hungry to contribute to an ambitious startup, with opportunities to go full-time