AppGate Cybersecurity, Inc.
The
Financial Crime Data Scientist
combines investigative expertise with advanced data science techniques to identify, assess, and mitigate financial risks, fraud, and emerging cyber-enabled threats. This role will analyze transactional, behavioral, and device-level signals; detect indicators of compromise; identify anomalous activity; and support intelligence integration into Appgate’s Fraud security products.
The analyst will collaborate closely with
internal product teams
and other external intelligence sources to track financial crime patterns (e.g., ransomware operators, malware families, account takeover trends, money mule networks) and translate insights into
predictive models, detection rules, and automated workflows .
This candidate bridges fraud investigation, data analysis, and technical implementation while working cross-functionally with Product, Engineering, Risk, Marketing, and Operations.
Responsibilities Fraud & Threat Intelligence
Conduct in-depth investigations into financial crime activity, including transaction fraud, account compromise, synthetic identity, malware-enabled fraud, and ransomware monetization patterns.
Monitor intelligence feeds for emerging threat actors, TTPs, botnet activity, phishing kits, malware variants, and monetization schemes.
Identify fraud indicators, behavioral patterns, anomalies, and signal correlations across structured and unstructured data sources.
Data Analytics & Modeling
Collect, clean, engineer, and analyze large datasets using Python, SQL, and cloud-based data platforms.
Perform statistical analysis, clustering, anomaly detection, and supervised/unsupervised machine learning to improve predictive fraud scoring.
Build prototypes for fraud detection algorithms; partner with data science teams to productionize models.
Data Engineering & Automation
Build and maintain analytical data pipelines with engineers using tools such as
Airflow, dbt, Spark, or similar .
Automate data ingestion (APIs, logs, intelligence feeds, enrichment sources) for ongoing fraud monitoring.
Create dashboards and visualizations using
Tableau, Power BI, Looker, Mode, or similar
to communicate findings.
Cross-Functional Intelligence Integration
Translate fraud intelligence into actionable requirements for product and engineering teams (e.g., detection rules, model features, new risk signals).
Collaborate with marketing and customer-facing teams to prepare intelligence briefs, threat summaries, and fraud trend reports.
Produce fraud loss metrics, risk scoring insights, and performance evaluations of prevention tools.
Security & Compliance
Maintain strict confidentiality and follow handling protocols for sensitive data, PII, and regulated financial information.
Stay current on fraud trends, sanctions, AML regulations, and industry standards.
Required Qualifications
Bachelors/Masters degree in Data Science, Applied Statistics, Digital Forensics, Financial Engineering, Criminology, Computer Science, Cybersecurity, or relevant field; or equivalent experience.
1–3+ years
in fraud detection, threat intelligence, financial crime investigations, cyber threat analysis, or risk operations.
Strong proficiency in:
SQL
for data extraction and manipulation
Python
(pandas, NumPy, scikit-learn) for data analysis
Data visualization tools
(Tableau, Power BI, Looker, etc.)
Familiarity with
machine learning concepts , anomaly detection, statistics, and predictive modeling.
Experience with fraud platforms, case management systems, device intelligence, or behavioral analytics systems.
Demonstrated investigative mindset with excellent documentation and communication skills.
Preferred / Nice-to-Have Technical Skills
Experience with
big data
technologies (Spark, Databricks, Snowflake).
Knowledge of
fraud-specific data sources : device fingerprinting, behavioral biometrics, geolocation, IP intelligence, OSINT, malware intel feeds.
Familiarity with malware families, attack chains, and cyber threat intelligence frameworks such as
MITRE ATT&CK .
Exposure to
API-based integrations , data enrichment pipelines, and log analysis.
Understanding of
risk scoring systems , rules engines, or real-time decisioning platforms.
Experience with AML, KYC, BSA, sanctions screening, or cryptocurrency tracing tools.
Key Competencies
Analytical and critical thinking
Statistical and machine learning literacy
Effective communication and storytelling with data
Investigative rigor and attention to detail
Cross-functional collaboration
Integrity and confidentiality
Strong problem-solving and decision-making skills
Appgate is an Equal Opportunity/Affirmative Action Employer. All qualified applicants will receive consideration for employment without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, disability or veteran status, age or any other federally protected class. In furtherance of Appgate’s policy regarding affirmative action and equal employment opportunity, Appgate has developed a written affirmative action program. This program is available for review upon request by any applicant or employee during normal business hours by contacting the company’s EEO Coordinator.
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Financial Crime Data Scientist
combines investigative expertise with advanced data science techniques to identify, assess, and mitigate financial risks, fraud, and emerging cyber-enabled threats. This role will analyze transactional, behavioral, and device-level signals; detect indicators of compromise; identify anomalous activity; and support intelligence integration into Appgate’s Fraud security products.
The analyst will collaborate closely with
internal product teams
and other external intelligence sources to track financial crime patterns (e.g., ransomware operators, malware families, account takeover trends, money mule networks) and translate insights into
predictive models, detection rules, and automated workflows .
This candidate bridges fraud investigation, data analysis, and technical implementation while working cross-functionally with Product, Engineering, Risk, Marketing, and Operations.
Responsibilities Fraud & Threat Intelligence
Conduct in-depth investigations into financial crime activity, including transaction fraud, account compromise, synthetic identity, malware-enabled fraud, and ransomware monetization patterns.
Monitor intelligence feeds for emerging threat actors, TTPs, botnet activity, phishing kits, malware variants, and monetization schemes.
Identify fraud indicators, behavioral patterns, anomalies, and signal correlations across structured and unstructured data sources.
Data Analytics & Modeling
Collect, clean, engineer, and analyze large datasets using Python, SQL, and cloud-based data platforms.
Perform statistical analysis, clustering, anomaly detection, and supervised/unsupervised machine learning to improve predictive fraud scoring.
Build prototypes for fraud detection algorithms; partner with data science teams to productionize models.
Data Engineering & Automation
Build and maintain analytical data pipelines with engineers using tools such as
Airflow, dbt, Spark, or similar .
Automate data ingestion (APIs, logs, intelligence feeds, enrichment sources) for ongoing fraud monitoring.
Create dashboards and visualizations using
Tableau, Power BI, Looker, Mode, or similar
to communicate findings.
Cross-Functional Intelligence Integration
Translate fraud intelligence into actionable requirements for product and engineering teams (e.g., detection rules, model features, new risk signals).
Collaborate with marketing and customer-facing teams to prepare intelligence briefs, threat summaries, and fraud trend reports.
Produce fraud loss metrics, risk scoring insights, and performance evaluations of prevention tools.
Security & Compliance
Maintain strict confidentiality and follow handling protocols for sensitive data, PII, and regulated financial information.
Stay current on fraud trends, sanctions, AML regulations, and industry standards.
Required Qualifications
Bachelors/Masters degree in Data Science, Applied Statistics, Digital Forensics, Financial Engineering, Criminology, Computer Science, Cybersecurity, or relevant field; or equivalent experience.
1–3+ years
in fraud detection, threat intelligence, financial crime investigations, cyber threat analysis, or risk operations.
Strong proficiency in:
SQL
for data extraction and manipulation
Python
(pandas, NumPy, scikit-learn) for data analysis
Data visualization tools
(Tableau, Power BI, Looker, etc.)
Familiarity with
machine learning concepts , anomaly detection, statistics, and predictive modeling.
Experience with fraud platforms, case management systems, device intelligence, or behavioral analytics systems.
Demonstrated investigative mindset with excellent documentation and communication skills.
Preferred / Nice-to-Have Technical Skills
Experience with
big data
technologies (Spark, Databricks, Snowflake).
Knowledge of
fraud-specific data sources : device fingerprinting, behavioral biometrics, geolocation, IP intelligence, OSINT, malware intel feeds.
Familiarity with malware families, attack chains, and cyber threat intelligence frameworks such as
MITRE ATT&CK .
Exposure to
API-based integrations , data enrichment pipelines, and log analysis.
Understanding of
risk scoring systems , rules engines, or real-time decisioning platforms.
Experience with AML, KYC, BSA, sanctions screening, or cryptocurrency tracing tools.
Key Competencies
Analytical and critical thinking
Statistical and machine learning literacy
Effective communication and storytelling with data
Investigative rigor and attention to detail
Cross-functional collaboration
Integrity and confidentiality
Strong problem-solving and decision-making skills
Appgate is an Equal Opportunity/Affirmative Action Employer. All qualified applicants will receive consideration for employment without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, disability or veteran status, age or any other federally protected class. In furtherance of Appgate’s policy regarding affirmative action and equal employment opportunity, Appgate has developed a written affirmative action program. This program is available for review upon request by any applicant or employee during normal business hours by contacting the company’s EEO Coordinator.
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