Jobs at Root Access
Must have skills
Good to have skills
About this Opportunity
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.
Train, evaluate, and debug machine learning models (e.g., deep learning, classical ML, multimodal models) using Python, PyTorch, and related frameworks.
Use our internal AI-powered tooling to accelerate model development, dataset preparation, experiment tracking, and deployment workflows.
Help test features like dataset validation, automated hyperparameter search, model introspection, and inference/runtime integrations.
Provide structured feedback on usability, model behavior, edge cases, and failure modes (you’re part of the product loop).
Build demo models, evaluation scripts, or experiment workflows that help us validate reliability and usability of the platform.
Read academic papers, model cards, and technical documentation to cross-verify model performance and expected behavior.
Have hands-on experience training ML models (vision, NLP, or embedded/edge ML all welcome).
Know your way around core ML concepts: model architectures, loss functions, optimization, evaluation metrics.
Have experience with ML toolchains and workflows (e.g., PyTorch Lightning, Hugging Face, ONNX, TensorRT, Weights & Biases).
Are curious about how AI development tools could be radically better—and want to help shape that future.
Have a Master’s in Mathematics, Data Science, or Engineering.
Bring prior work or internship experience with model training, ML research, or applied AI engineering.
Be hungry to contribute to an ambitious startup, with opportunities to go full-time
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