Data Scientist (Visa Predictive Models)
Company: Visa Inc.
Location: Washington
Posted on: May 3, 2025
Job Description:
Visa has the world's largest consumer payment transaction
dataset. We see data on over 250 billion transactions every year
from all over the world. We use that data to help our clients in
the payment ecosystem grow their businesses and to help consumers
access a fast, safe, and rewarding payment experience. Visa
Predictive Modeling (VPM) team develops and maintains predictive
machine learning models to primarily support Visa Risk and Identity
Solutions. Using VisaNet data and leveraging Machine Learning (ML)
and Artificial Intelligence (AI), our model scores help Visa
clients all over the world for fraud defense, identity
verification, smart marketing, etc. Through our models and
services, VPM fuels the growth of Visa clients, generates, and
diversifies revenues for VISA, while improving Visa Card customer
experience and their financial lives.Within VPM, the Acceptance
Risk Model Team is responsible for developing real-time fraud
detection models serving merchants. We leverage a set of rich data
available at merchant check-out including transactional, digital
and identity information to detect and stop fraud.This is a
Technical (Individual Contributor) role. Your responsibilities
include:
- Building and validating predictive models with advanced machine
learning techniques and tools to drive business value,
interpreting, and presenting modeling and analytical results to
non-technical audience.
- Conducting research using latest and emerging modeling
technologies and tools (e.g., Deep Neural Networks, RNN, LSTM,
etc.) to solve new fraud detection business problems.
- Improving the modeling process through MLOps and automation to
drive efficiency and effectiveness.
- Partnering with a cross functional team of Product Managers,
Data Engineers, Software Engineers, and Platform Engineers to
deploy models and/or model innovations into production.
- Managing model risks in line with Visa Model Risk Management
requirements.
- Conducting modeling analysis to address internal and external
clients' questions and requests.This is a hybrid position. Hybrid
employees can alternate time between both remote and office.
Employees in hybrid roles are expected to work from the office 2-3
set days a week (determined by leadership/site), with a general
guidepost of being in the office 50% or more of the time based on
business needs.Basic Qualifications
- 2+ years of relevant work experience and a Bachelors degree, OR
5+ years of relevant work experiencePreferred Qualifications
- 3 or more years of work experience with a Bachelor's Degree or
more than 2 years of work experience with an Advanced Degree (e.g.
Masters, MBA, JD, MD)
- Master's or PhD Degree in a quantitative field, such as
Statistics, Mathematics, Operational Research, Computer Science,
Economics, or Engineering
- Successful internships or 6 months of experience in a
predictive modeling function
- Preference is given to candidates with prior working experience
in predictive modeling functions
- Strong background in two or more of the following areas:
machine learning, deep learning, AI algorithms, statistical
learning, computations, scalable systems (e.g. Spark, Hadoop),
large scale data analysis, software engineering (automation)
- Experience with advanced and emerging technologies and tools in
big data and data science (e.g., Python, Spark, TensorFlow,
PyTorch, H2O, Dask, etc.), experience with SQL, Hive for extracting
and aggregating data
- Good verbal and written communication skills to both technical
and non-technical audience
- Must be a team player and capable of handling multitasks in a
dynamic environment
- Payment industry knowledge or fraud modeling experience is a
plus, but not requiredTechnical Qualifications
- Experience in Python and SQL is required
- Knowledge or experience with Hadoop, Hive, Spark for big data
analysis is a plus
- Knowledge or experience with script and shell programming in
Unix/Linux is a plus
- Knowledge or experience with using GitHub and Jira for data
science projects is a plusWork Hours: Varies upon the needs of the
department.Travel Requirements: This position requires travel 5-10%
of the time.Mental/Physical Requirements: This position will be
performed in an office setting. The position will require the
incumbent to sit and stand at a desk, communicate in person and by
telephone, frequently operate standard office equipment, such as
telephones and computers.Visa is an EEO Employer. Qualified
applicants will receive consideration for employment without regard
to race, color, religion, sex, national origin, sexual orientation,
gender identity, disability or protected veteran status. Visa will
also consider for employment qualified applicants with criminal
histories in a manner consistent with EEOC guidelines and
applicable local law.U.S. APPLICANTS ONLY: The estimated salary
range for a new hire into this position is 116,500.00 to 164,500.00
per year, which may include potential sales incentive payments (if
applicable). Salary may vary depending on job-related factors which
may include knowledge, skills, experience, and location. In
addition, this position may be eligible for bonus and equity. Visa
has a comprehensive benefits package for which this position may be
eligible that includes Medical, Dental, Vision, 401 (k), FSA/HSA,
Life Insurance, Paid Time Off, and Wellness Program.
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Keywords: Visa Inc., Silver Spring , Data Scientist (Visa Predictive Models), Other , Washington, Maryland
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