Were pioneering the development of a cuttingedge Seller Foundation Model (a Sellerdomain LLM) designed to capture seller interactions predict future behaviors and simulate responses across varied conditions. Our goal is to enhance support for our diverse seller community and foster improved outcomes for both sellers and the broader Amazon ecosystem. We are looking for passionate innovators who are excited about technology driven by customer experience and eager to make a lasting impact on the industry.
In this role youll collaborate with toptier scientists engineers and technical program managers (TPMs) to drive innovation and deliver exceptional results for our customers. You will lead the effort to leverage Amazons largescale computing resources to accelerate advances in large language model and foundation models. If youre enthusiastic about joining a dynamic and motivated team this is your chance to be part of an exciting journey. Apply now and help us shape the future of seller support at Amazon!
3 years of building machine learning models for business application experience PhD or Masters degree and 6 years of applied research experience Experience programming in Java C Python or related language Experience with neural deep learning methods and machine learning
Experience with modeling tools such as R scikitlearn Spark MLLib MxNet Tensorflow numpy scipy etc. Experience with large scale distributed systems such as Hadoop Spark etc.
Amazon is committed to a diverse and inclusive workplace. Amazon is an equal opportunity employer and does not discriminate on the basis of race national origin gender gender identity sexual orientation protected veteran status disability age or other legally protected status.
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