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Wells Fargo Senior Quantitative Analytics Specialist 
India, Telangana, Hyderabad 
867981352

09.03.2025

About this role:


In this Role, you will:

  • Perform highly complex activities related to creation, implementation, and documentation
  • Use highly complex statistical theory to quantify, analyze and manage markets
  • Forecast losses and compute capital requirements providing insights, regarding a wide array of business initiatives
  • Utilize structured securities and provide expertise on theory and mathematics behind the data
  • Manage market, credit, and operational risks to forecast losses and compute capital requirements
  • Participate in the discussion related to analytical strategies, modeling and forecasting methods
  • Identify structure to influence global assessments, inclusive of technical, audit and market perspectives
  • Collaborate and consult with regulators, auditors and individuals that are technically oriented and have excellent communication skills

Required Qualifications:

  • 4+ years of Quantitative Analytics experience, or equivalent demonstrated through one or a combination of the following: work experience, training, military experience, education
  • Master's degree or higher in a quantitative discipline such as mathematics, statistics, engineering, physics, economics, or computer science

Desired Skills:

  • Ph.D. in economics, statistics, finance, math, engineering or similar quantitative disciplines
  • 2+ years of experience in Fraud Risk Model development or Fraud detection strategies
  • 4+ years of scorecard development, credit or fraud risk analytics experience, or a combination of both.
  • Master's degree or higher in a quantitative field such as mathematics, statistics, engineering, physics, economics, or computer science
  • 4+ years of programming experience in SAS, Python or R
  • Experience in credit and/or fraud risk model development and/or monitoring
  • Excellent verbal and written communication skills
  • Experience in producing high quality technical documentation with tools such as Excel, Word, PowerPoint
  • Exposure to machine learning techniques (Random Forest, XG Boost, Light GBM, Neural Networks, and so on)
  • Developed Fraud Risk Model using Python
  • Familiarity with Credit Bureau Data
  • Excellent problem-solving skills and ability to connect dots, see big picture and find solutions and articulate in a clear manner.
  • Understanding of process, methodologies used in credit/fraud scoring model development, implementation, validation and monitoring
  • Ability to effectively manage multiple assignments with challenging timelines
  • Experience in statistical modeling techniques

Job Expectations:

  • Develop best-in-class transactional and application fraud risk models leveraging cutting-edge advanced AI/ML techniques
  • Analyze and explore predictive patterns using big data translating into enhanced strategies/rules leading to minimized fraud loss
  • Use Python to build end to end Machine Learning models starting from data processing to feature engineering to model estimation.
  • Lead and participate in critical debugging, testing and performance tuning for machine learning and/or statistical models written in python code
  • Conduct ad-hoc analysis and reporting as required
  • Responsible for documenting and presenting detailed model development processes and results, suitable for a variety of audiences
  • Lead and participate intensive team discussions, interactions with cross-functional teams, and dialogues with internal reviewers (Model Validation and Internal Audit)
  • Collaborate with key business model users to ensure models are business driven, properly implemented and executed
  • Respond to ongoing analytical requests from auditors and regulatory reviewers in timely manner

14 Mar 2025


Wells Fargo Recruitment and Hiring Requirements:

b. Wells Fargo requires you to directly represent your own experiences during the recruiting and hiring process.