

Insight Global
Data Scientist
β - Featured Role | Apply direct with Data Freelance Hub
This role is for a Data Scientist with a contract length of "unknown", offering a pay rate of $50-$55/hour. Key skills include BigQuery, Python, and machine learning. Requires 6+ years of experience, preferably with a Master's degree in a STEM field.
π - Country
United States
π± - Currency
$ USD
-
π° - Day rate
440
-
ποΈ - Date
November 5, 2025
π - Duration
Unknown
-
ποΈ - Location
Unknown
-
π - Contract
Unknown
-
π - Security
Unknown
-
π - Location detailed
San Jose, CA
-
π§ - Skills detailed
#ML (Machine Learning) #SharePoint #Automation #Scala #"ETL (Extract #Transform #Load)" #GitHub #BigQuery #Jira #Python #Data Analysis #Documentation #Data Science #Monitoring
Role description
What Youβll Do
β’ Analyze and interpret complex data sets to derive actionable insights and inform decision-making.
β’ Perform statistical analysis on feature transformation and business impact analytics.
β’ Standardize rules and decision processes while enabling dynamic rule updates and analytics within the fraud detection platform.
β’ Collaborate across multidisciplinary teams in engineering, product development, and data science to scale solutions globally.
Story Behind the Need β Team & Key Projects
β’ Team: Work closely with Core Automation teamβs tech leads/managers.
β’ Partner with engineering teams to rebuild the next-generation risk platform (NGRP).
β’ Be part of the pioneer team launching NGRP.
Reason for Posting: Building a next-generation risk platform to support enterprise business functions under tight timelines for decision engine adoption.
Typical Day in the Role
Daily Responsibilities:
β’ Test and evaluation; processing and governance; monitoring.
β’ Data analysis and decision engine serving 80+ checkpointsβensure all rules perform with high quality; troubleshoot and automate when issues arise.
β’ Tasks distributed via Jira board (sprint planning/grooming cycle).
β’ Regular standups (at least twice a week; daily if needed).
β’ Onboarding requires more interaction with Engg/Product/US Risk core teams; later, ~50/50 split.
β’ Work primarily within Jira for task assignments and tracking.
β’ Code maintained in centralized GitHub repo.
β’ Documentation in wiki pages or SharePoint/shared drives.
Compelling Story & Candidate Value Proposition
β’ Why this role is interesting: Design and implement scalable solutions to optimize fraud detection systems, spanning model development, feature engineering, and rule-based systems.
β’ Collaborate closely with cross-functional teams to set a new global standard for efficacy and innovation.
β’ Address critical business challenges, develop advanced automation frameworks, and integrate cutting-edge machine learning techniques to enhance decision-making capabilities.
Candidate Requirements
β’ Top 3 Must-Have Skills (stack-ranked):
1. BigQuery, Python
1. Understanding of production systems architecture and offline data overview
1. Machine Learning experience
β’ Nice to Have: Risk and fraud experience or business acumen; experience working directly with engineers.
β’ Years of Experience: 6+
β’ Degrees/Certifications: Masterβs preferred; solid BS acceptable (STEM only).
Compensation: $50-$55/hour
What Youβll Do
β’ Analyze and interpret complex data sets to derive actionable insights and inform decision-making.
β’ Perform statistical analysis on feature transformation and business impact analytics.
β’ Standardize rules and decision processes while enabling dynamic rule updates and analytics within the fraud detection platform.
β’ Collaborate across multidisciplinary teams in engineering, product development, and data science to scale solutions globally.
Story Behind the Need β Team & Key Projects
β’ Team: Work closely with Core Automation teamβs tech leads/managers.
β’ Partner with engineering teams to rebuild the next-generation risk platform (NGRP).
β’ Be part of the pioneer team launching NGRP.
Reason for Posting: Building a next-generation risk platform to support enterprise business functions under tight timelines for decision engine adoption.
Typical Day in the Role
Daily Responsibilities:
β’ Test and evaluation; processing and governance; monitoring.
β’ Data analysis and decision engine serving 80+ checkpointsβensure all rules perform with high quality; troubleshoot and automate when issues arise.
β’ Tasks distributed via Jira board (sprint planning/grooming cycle).
β’ Regular standups (at least twice a week; daily if needed).
β’ Onboarding requires more interaction with Engg/Product/US Risk core teams; later, ~50/50 split.
β’ Work primarily within Jira for task assignments and tracking.
β’ Code maintained in centralized GitHub repo.
β’ Documentation in wiki pages or SharePoint/shared drives.
Compelling Story & Candidate Value Proposition
β’ Why this role is interesting: Design and implement scalable solutions to optimize fraud detection systems, spanning model development, feature engineering, and rule-based systems.
β’ Collaborate closely with cross-functional teams to set a new global standard for efficacy and innovation.
β’ Address critical business challenges, develop advanced automation frameworks, and integrate cutting-edge machine learning techniques to enhance decision-making capabilities.
Candidate Requirements
β’ Top 3 Must-Have Skills (stack-ranked):
1. BigQuery, Python
1. Understanding of production systems architecture and offline data overview
1. Machine Learning experience
β’ Nice to Have: Risk and fraud experience or business acumen; experience working directly with engineers.
β’ Years of Experience: 6+
β’ Degrees/Certifications: Masterβs preferred; solid BS acceptable (STEM only).
Compensation: $50-$55/hour






