

Insight Global
Fraud Data Analyst
β - Featured Role | Apply direct with Data Freelance Hub
This role is for a Fraud Data Analyst with a contract length of more than 6 months, offering a pay rate of "unknown." Key skills required include SQL, Python, Tableau, and experience in risk analytics within eCommerce or online payments. A bachelor's degree in a related field is necessary.
π - Country
United States
π± - Currency
$ USD
-
π° - Day rate
Unknown
-
ποΈ - Date
November 18, 2025
π - Duration
More than 6 months
-
ποΈ - Location
Unknown
-
π - Contract
Unknown
-
π - Security
Unknown
-
π - Location detailed
San Jose, CA
-
π§ - Skills detailed
#Visualization #Python #Libraries #ML (Machine Learning) #Mathematics #Tableau #Data Science #SQL (Structured Query Language) #Statistics #Data Analysis #Datasets #AWS (Amazon Web Services) #Risk Analysis #Strategy #Data Mining #Leadership
Role description
JOB DESCRIPTION
We are looking for a talented, enthusiastic and dedicated person to support the Fraud Risk Strategy team. The incumbent will be responsible for supporting key projects associated with fraud detection, risk analysis and loss mitigation at Bill.com. This position requires a person who has experience with performing analytics, refining risk strategies, and developing predictive algorithms preferably in the risk domain.
Weβd love to chat if you have:
β’ Maximum 2 years of experience in risk analytics, data analysis, and data science within relevant industry experience in eCommerce, online payments, user trust/risk/fraud, or investigation/product abuse.
β’ Bachelorβs degree in Data Analytics, Data Science, Mathematics, Statistics, Data Mining or related field or equivalent practical experience
β’ Experience using statistics and data science to solve complex business problems
β’ Proficiency in SQL, Python, Excel including key data science libraries
β’ Proficiency in data visualization including Tableau
β’ Experience working with large datasets
β’ Ability to clearly communicate complex results to technical experts, business partners, and executives including development of dashboards and visualizations, ie Tableau.
β’ Comfortable with ambiguity and yet able to steer analytics projects toward clear business goals, testable hypotheses, and action-oriented outcomes
β’ Demonstrated analytical thinking through data-driven decisions, as well as the technical know-how, and ability to work with your team to make a big impact.
β’ Desirable to have experience or aptitude solving problems related to risk using data science and analytics
β’ Bonus: Experience with AWS, knowledge of fraud investigations, payment rule systems, working with ML teams, fraud typologies
Key Job Functions
β’ Design rules to detect/mitigate fraud
β’ Develop python scripts and models that support strategies
β’ Investigate novel/large cases
β’ Identify root cause
β’ Set strategy for different risk types
β’ Work with product/engineering to improvement control capabilities
β’ Develop and present strategies and guide execution
Expected Outcome in 6-12 months
β’ Work closely with team members and stakeholders to consult, design, develop, and manage fraud strategies and rules that not only solve emerging fraud trends but also provide a great experience to end customers.
β’ Utilize data analysis to design and implement fraud strategies
β’ Collaborate with cross-functional stakeholders including product managers and engineering teams to deploy data-driven fraud solutions that operate at scale and in real time for end customers.
β’ Make business recommendations to leadership and cross-functional teams with effective presentations of findings at multiple levels of stakeholders.
β’ Development of dashboard and visualizations to track KPI of fraud strategies implemented
JOB DESCRIPTION
We are looking for a talented, enthusiastic and dedicated person to support the Fraud Risk Strategy team. The incumbent will be responsible for supporting key projects associated with fraud detection, risk analysis and loss mitigation at Bill.com. This position requires a person who has experience with performing analytics, refining risk strategies, and developing predictive algorithms preferably in the risk domain.
Weβd love to chat if you have:
β’ Maximum 2 years of experience in risk analytics, data analysis, and data science within relevant industry experience in eCommerce, online payments, user trust/risk/fraud, or investigation/product abuse.
β’ Bachelorβs degree in Data Analytics, Data Science, Mathematics, Statistics, Data Mining or related field or equivalent practical experience
β’ Experience using statistics and data science to solve complex business problems
β’ Proficiency in SQL, Python, Excel including key data science libraries
β’ Proficiency in data visualization including Tableau
β’ Experience working with large datasets
β’ Ability to clearly communicate complex results to technical experts, business partners, and executives including development of dashboards and visualizations, ie Tableau.
β’ Comfortable with ambiguity and yet able to steer analytics projects toward clear business goals, testable hypotheses, and action-oriented outcomes
β’ Demonstrated analytical thinking through data-driven decisions, as well as the technical know-how, and ability to work with your team to make a big impact.
β’ Desirable to have experience or aptitude solving problems related to risk using data science and analytics
β’ Bonus: Experience with AWS, knowledge of fraud investigations, payment rule systems, working with ML teams, fraud typologies
Key Job Functions
β’ Design rules to detect/mitigate fraud
β’ Develop python scripts and models that support strategies
β’ Investigate novel/large cases
β’ Identify root cause
β’ Set strategy for different risk types
β’ Work with product/engineering to improvement control capabilities
β’ Develop and present strategies and guide execution
Expected Outcome in 6-12 months
β’ Work closely with team members and stakeholders to consult, design, develop, and manage fraud strategies and rules that not only solve emerging fraud trends but also provide a great experience to end customers.
β’ Utilize data analysis to design and implement fraud strategies
β’ Collaborate with cross-functional stakeholders including product managers and engineering teams to deploy data-driven fraud solutions that operate at scale and in real time for end customers.
β’ Make business recommendations to leadership and cross-functional teams with effective presentations of findings at multiple levels of stakeholders.
β’ Development of dashboard and visualizations to track KPI of fraud strategies implemented






