Amazon.com Services LLC
Data Science, Applied Science, selling partner services
AppliedScientist
Neural analysis suggests this role is
optimal for Mid+ candidates.
“Applied Scientist at Amazon.com Services LLC. Skills: Machine learning, Data science, Algorithm development. Innovate with GenAI/LLM/VLM technology. Build automated solutions for risk evaluation”
What You'll Achieve.
Prevent eCommerce fraud; Manage safety of transactions; Scale up operation with automation; Create impactful business value
Industry & Context.
Solve real world problems
What They're Looking For.
Must Have
Experience programming in Java, C++, Python or related language, Experience with SQL and an RDBMS or Data Warehouse
Nice to Have
Experience implementing algorithms using toolkits and self-developed code, Publications at top-tier peer-reviewed conferences or journals
What You'll Do.
Innovate with GenAI/LLM/VLM technology
Build automated solutions for risk evaluation
Build automated solutions for automated operations
Design end-to-end machine learning solutions
Develop end-to-end machine learning solutions
Deploy end-to-end machine learning solutions
Create impactful business value
Learn machine learning advancements
Experiment with machine learning advancements
Create the best customer experience
Build scalable machine learning solutions
Build efficient machine learning solutions
Build automated processes for data analyses
Build automated processes for model development
Build automated processes for model validation
Build automated processes for model implementation
Provide clear reports for solutions
Provide compelling reports for solutions
Contribute to innovation
Contribute to knowledge-sharing
How You'll Work.
Team & Collaboration
Business partners; Engineering teams; Diverse group of scientists
Communication Scope
Compelling reports
Full Job Description
Do you want to join an innovative team of scientists who use machine learning and statistical techniques to help Amazon provide the best customer experience by preventing eCommerce fraud? Are you excited by the prospect of analyzing and modeling terabytes of data and creating state-of-the-art algorithms to solve real world problems? Do you like to own end-to-end business problems/metrics and directly impact the profitability of the company? Do you enjoy collaborating in a diverse team environment? If yes, then you may be a great fit to join the Amazon Selling Partner Trust & Store Integrity Science Team. We are looking for a talented scientist who is passionate to build advanced machine learning systems that help manage the safety of millions of transactions every day and scale up our operation with automation. Key job responsibilities Innovate with the latest GenAI/LLM/VLM technology to build highly automated solutions for efficient risk evaluation and automated operations Design, develop and deploy end-to-end machine learning solutions in the Amazon production environment to create impactful business value Learn, explore and experiment with the latest machine learning advancements to create the best customer experience A day in the life You will be working within a dynamic, diverse, and supportive group of scientists who share your passion for innovation and excellence. You'll be working closely with business partners and engineering teams to create end-to-end scalable machine learning solutions that address real-world problems. You will build scalable, efficient, and automated processes for large-scale data analyses, model development, model validation, and model implementation. You will also be providing clear and compelling reports for your solutions and contributing to the ongoing innovation and knowledge-sharing that are central to the team's success. Basic Qualifications: - Experience programming in Java, C++, Python or related language - Experience with SQL
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