ADCI
Applied Science, Retail
AppliedScientist,BuyerRiskPrevention(BRP)
Neural analysis suggests this role is
optimal for Mid+ candidates.
“Applied Scientist, Buyer Risk Prevention (BRP) at ADCI. Skills: Machine learning, Risk prevention, Data science, Generative AI. Apply machine learning and statistical techniques. Build risk management models”
What You'll Achieve.
Safeguard millions of transactions
Industry & Context.
Translate business problems; Data-driven solutions
What They're Looking For.
Must Have
Experience programming in Java, C++, Python, Experience with SQL, Master's degree in Engineering, Computer Science, Machine Learning, Operations Research, Statistics, or related fields, Experience building machine learning models or developing algorithms for business application
Nice to Have
Experience implementing algorithms using both toolkits and self-developed code, Publications at top-tier peer-reviewed conferences or journals
What You'll Do.
Apply machine learning and statistical techniques
Build risk management models
Improve risk management models
Analyze large-scale historical data
Identify risk patterns
Identify emerging trends
Develop innovative models
Validate innovative models
Deploy innovative models
Experiment with emerging technologies
Enhance risk evaluation
Implement models in real-time production systems
Improve risk policies
Improve operational efficiency
Build scalable pipelines
Build automated pipelines
Monitor model performance
Provide clear reporting
Research new modeling approaches
Prototype new modeling approaches
How You'll Work.
Team & Collaboration
Partner with senior scientists; Partner with engineers; Collaborate with software engineers; Partner with operations teams; Partner with business teams
Communication Scope
Clear reporting
Full Job Description
Do you want to join an innovative team applying machine learning and advanced statistical techniques to protect Amazon customers and enable a trusted eCommerce experience? Are you excited about working with large-scale datasets and developing models that solve real-world fraud and risk challenges? If so, the Amazon Buyer Risk Prevention (BRP) Machine Learning team may be the right fit for you. We are seeking an Applied Scientist to help develop scalable machine learning solutions that safeguard millions of transactions every day. In this role, you will partner with senior scientists and engineers to translate business problems into data-driven solutions, build and evaluate models, and contribute to next-generation risk prevention systems, including applications of Generative AI and LLM technologies. Key job responsibilities Apply machine learning and statistical techniques to build and improve risk management models Analyze large-scale historical data to identify risk patterns and emerging trends Develop, validate, and deploy innovative models under the guidance of senior scientists Experiment with emerging technologies, including GenAI/LLMs, to enhance automation and risk evaluation Collaborate closely with software engineers to implement models in real-time production systems Partner with operations and business teams to improve risk policies and operational efficiency Build scalable, automated pipelines for data analysis, model training, and validation Monitor model performance and provide clear reporting on key risk and business metrics Research and prototype new modeling approaches to improve system performance Basic Qualifications: - Experience programming in Java, C++, Python or related language - Experience with SQL and an RDBMS (e.g., Oracle) or Data Warehouse - Master's degree in Engineering, Computer Science, Machine Learning, Operations Research, Statistics, or related fields - Experience building machine learning models or developing algorithms for busi
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