Hero Image

AnitaB.org Talent Network

Connecting women in tech with the best professional opportunities!

Asset & Wealth Management, Digital Operations, Specialist, Analyst, Richardson

Goldman Sachs

Goldman Sachs

Accounting & Finance, IT, Operations
Richardson, TX, USA
Posted on Mar 26, 2026

About the division

Asset & Wealth Management (AWM) offers an unparalleled opportunity at one of the world's leading financial institutions. We are committed to helping a diverse global client base—including mutual funds, hedge funds, pension plans, sovereign wealth funds, insurance companies, endowments, foundations, third-party wealth firms, and ultra-high-net-worth individuals—achieve their financial goals through strategic investment and advisory services. With over $3 trillion in assets under supervision, AWM delivers innovative solutions across traditional public investing and alternative investments, with a focus on long-term performance and client success.

Wealth Management:

Across Wealth Management, Goldman Sachs helps empower clients and customers around the world to reach their financial goals. Our advisor-led wealth management businesses provide financial planning, investment management, banking, and comprehensive advice to a wide range of clients, including ultra-high net worth and high net worth individuals, as well as family offices, foundations and endowments, and corporations and their employees. Our direct-to-consumer business provides digital solutions that help customers save and invest. Across Wealth Management, our growth is driven by a relentless focus on our people, our clients and customers, and leading-edge technology, data, and design.

As part of this team you will be responsible for:

  • Analyzing large volumes of data leveraging advanced statistical techniques to uncover new fraud pattern, and perform deep qualitative and quantitative expert reviews
  • Designing and developing data driven fraud strategies and capabilities to control fraud losses for consumer centric money movement products
  • Leveraging supervised and unsupervised machine learning techniques to accurately identify high risk activities on the customer account.
  • Building new data features and data products to improve statistical fraud models
  • Identifying data signals to accurately distinguish between fraud and non-fraud activities
  • Identifying and evaluate new data sources to build effective fraud controls
  • Creating trend reports and analysis leveraging coding language and tools such as Python, PySpark, SQL, Snowflake, Databricks and Excel
  • Synthesizing current portfolio risk or trend data to support recommendation for action
  • Exploring and leveraging cloud based data science technologies to further enhance existing fraud controls
  • Measuring and monitoring the impact of designed risk controls on customers, and develop strategies to ensure a positive customer experience
  • Working closely with technology and capability partners to implement new data driven ideas and solutions

Basic Qualifications:

  • Bachelor’s degree in Mathematics, Statistics, Economics, Finance, Engineering or a related field.
  • Proven experience with very large dataset using Big Data tools and platform (e.g., Python, Pyspark, Snowflake, Databricks, SQL)
  • Ability to efficiently derive key insights and signals from complex structured and unstructured data
  • Strong working knowledge of statistical techniques including regression, clustering, neural network and ensemble techniques
  • 2+ years of experience in fraud risk management, preferably in banking products such as savings, checking, certificate deposit, credit cards, etc.
  • Creativity to go beyond tools and comfort working independently on solutions
  • Demonstrated thought leadership, creative thinking and project management Skills

Preferred Qualifications:

  • Master’s degree in Mathematics, Statistics, Economics, Finance, Engineering or a related field
  • Experience building quantitative data driven statistical strategies for a consumer checking and saving business
  • Familiarity with large-scale graph processing e.g. graph clustering and link prediction mathematical algorithm
  • Expertise in advanced machine learning techniques – ensemble techniques, reinforcement learning, deep neural network
  • Knowledge of fraud risk vendors and technology in consumer finance or digital services industry
  • Experience with consumer banking authentication tools and methodologies
  • Experience in reporting and data visualization tools to report on trends and analysis