Associate Data Scientist, New College Grad - 2026

VisaFoster City, CA
3hHybrid

About The Position

The Global Data Science team at Visa leverages our rich data - spanning over 3 billion card accounts and 100 billion transactions per year- and other third-party data sources to solve meaningful business problems. We are seeking an Associate Data Scientist to support the data science efforts for Visa’s Global Cross-Broder team. The role is part of the Global Data Office and will work closely with senior data scientists and business partners in day-to-day operations. This associate will contribute in executing an analytics agenda that delivers insights and AI-powered solutions to improve Visa’s products and services.

Requirements

  • Bachelor's or Master's degree in Computer Science, Computer Engineering, CIS/MIS, Cybersecurity, Statistics, Business or a related field, graduating May 2025 - August 2026.
  • Permanent Authorization to work in the U.S. is a precondition of employment for this position. Visa will not sponsor applicants for work visas in connection with this position. Future sponsorship will not be considered.

Nice To Haves

  • 2+ years of experience in data analysis, quantitative modeling, or data driven decision making in an academic or professional setting.
  • Proficiency in SQL and Python for data analysis and modeling.
  • Experience extracting, transforming, aggregating, and analyzing large datasets using SQL, Python, R, and Spark, including exploratory data analysis and feature engineering.
  • Hands‑on experience using Generative AI or AI‑assisted tools (e.g., LLMs, coding assistants, AutoML) to support data analysis, insight generation, or workflow efficiency.
  • Applied experience with Generative AI techniques, such as prompt engineering, text summarization, classification, or LLM assisted analysis, through coursework, projects, or professional work.
  • Familiarity with responsible AI considerations, including data privacy, bias awareness, and model limitations.
  • Solid foundation in statistics and machine learning, including regression, classification, and model evaluation techniques.
  • Hands on experience building descriptive and predictive models using machine learning libraries and tools such as scikit learn, Jupyter notebooks, Python, R, and/or SAS.
  • Exposure to data mining and statistical modeling techniques, including regression, clustering, decision trees, and related methods.
  • Experience in building and maintaining BI solutions using tools like Tableau, Power BI, or similar platforms, including metrics definitions, semantic layers, data quality validation, and user support.
  • Effective communication and collaboration skills, with the ability to explain data driven insights clearly to business stakeholders and translate analysis into actionable recommendations for technical and non-technical audiences.
  • Experience organizing and managing analytical work using productivity tools such as Excel, Word, PowerPoint, and collaboration platforms (e.g., Teams).
  • Exposure to financial services, payments, credit cards, or merchant analytics is a plus but not required.

Responsibilities

  • Contribute to the development and deployment of analytics and machine learning models, supporting use cases from data exploration through validation and implementation under guidance from senior team members.
  • Apply Generative AI techniques (e.g., prompt engineering, LLM‑based text analysis, summarization, and classification) to enhance data analysis, insight generation, and internal workflows.
  • Leverage large‑scale datasets using SQL, Python, R, Hive, or SAS, combining traditional statistical methods with ML and GenAI‑assisted approaches to uncover trends and actionable insights.
  • Use AI‑powered development tools (e.g., coding assistants, AutoML, and notebook automation) to accelerate experimentation, improve code quality, and increase productivity.
  • Build and maintain BI dashboards and reports, and support user adoption through documentation, walkthroughs, and guidance on best practices for BI usage.
  • Develop intuitive visualizations and dashboards to communicate insights and model outputs to technical and non-technical audiences.
  • Support model deployment and monitoring efforts, collaborating with data engineering teams and following established MLOps, data governance, and responsible AI guidelines.
  • Partner with product, marketing, operations, and finance teams to understand business questions and translate them into analytical tasks.
  • Assist in framing business problems into analytical approaches, contributing to data‑driven solutions that inform product and operational decisions.
  • Present insights and recommendations using structured storytelling, clearly explaining assumptions, limitations, and potential business impact.
  • Support prioritization of analytics initiatives by considering business value, data availability, and technical feasibility in collaboration with senior team members.
  • Communicate technical findings in simple, actionable terms to non‑technical partners and stakeholders.
  • Help drive adoption of analytics solutions by validating results, documenting methodologies, and demonstrating how insights address real business needs.
  • Collaborate closely with cross‑functional teams to iterate on analyses and improve solutions based on feedback.

Benefits

  • Medical
  • Dental
  • Vision
  • 401 (k)
  • FSA/HSA
  • Life Insurance
  • Paid Time Off
  • Wellness Program
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