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Applied Scientist, Edge AI and Science

Job in Belfast, County Antrim, BT1, Northern Ireland, UK
Listing for: Amazon
Full Time position
Listed on 2026-06-11
Job specializations:
  • IT/Tech
    AI Engineer (Applied/Software), Machine Learning/ ML Engineer, Data Scientist
Job Description & How to Apply Below

o:  | Evi Technologies Limited

Amazon Devices is an inventive research and development company that designs and engineers high-profile devices like the Kindle family of products, Fire Tablets, Fire TV, Health & Wellness, Amazon Echo, and Astro products.

This is an exciting opportunity to bring generative AI to Amazon's consumer products, both on-device at the edge and in the cloud. Our compression platform delivers 20x to 100x neural network compression, but using it well still takes weeks of hands‑on learning and expert intuition. The Edge AI Model Studio team exists to change that. We become the expert users so partner teams don't have to: we turn compression science into reliable, production workflows, and we package the results into a library of compression‑ready student architectures that partners can run on their own.

Our north star is simple. Training‑to‑deployment should feel like pushing a button, not a month‑long science project.

We are looking for an Applied Scientist to join Model Studio and help compress the next generation of models for edge and cloud deployment across modalities, including large language models, vision‑language models, speech and audio models, and omni models that reason jointly over text, audio, and video. You will apply and extend state‑of‑the‑art compression recipes to real models, define the benchmarks and evaluation methodology that make trade‑offs explicit, and build the reference implementations that let other teams deploy compressed models without our help.

You will work backwards from deployment constraints such as memory, latency, throughput, power, and cost, which differ across edge and cloud targets, partnering closely with fellow scientists, platform and compiler engineers, hardware architects, and product teams. The role sits on two frontiers pressing a model effectively and healing it back to quality means staying current not just with the latest compression techniques, but with the rapidly evolving model architectures themselves, and understanding deeply how each one works inside.

You will take ownership of project‑level delivery, apply advanced compression across a wide range of real models, and have room to grow your scope and technical influence.

Key job responsibilities
  • Apply and extend compression recipes (knowledge distillation, structured pruning, and post‑training and quantization‑aware quantization including low‑bit and mixed‑precision) to assigned models, achieving 20x to 100x compression while preserving model quality.
  • Design and run healing recipes (fine‑tuning and distillation that recover accuracy lost to compression), iterating on data mixes, objectives, and training settings until the compressed model meets its quality bar.
  • Track emerging model architectures and dissect how they work internally, so you can choose where to compress, anticipate where accuracy will break, and design recovery strategies grounded in the model's actual structure.
  • Build a library of compression‑ready model entries: reference implementations, compression recipes, model cards, and benchmark results that partner teams can run self‑service to produce deployment‑ready artifacts for edge and cloud targets.
  • Define the datasets, benchmarks, and KPIs that matter for your models, and build evaluation methodology that makes accuracy, latency, memory, and cost trade‑offs explicit.
  • Run fast feasibility gates on new model families and modalities before committing to long efforts, and pivot early when a candidate does not clear the bar.
  • Capture platform friction as high‑signal feedback: minimal reproductions and tracked fix requests that help platform and compression‑science partners root‑cause issues, so partner teams never rediscover the same blockers.
  • Write reproducible, testable, well‑documented code that meets the SDE I bar, so your recipes and results can be reproduced and built on by others.
  • Collaborate with Applied Scientists, platform and compiler engineers, hardware architects, and partner teams; mentor interns and help newer teammates ramp up.
  • Where appropriate and not precluded by business considerations, publish and present on Amazon's behalf at top ML venues such…
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