LogicPath, 3325 Paddocks Pkwy, Suwanee, Georgia, United States of America
Experience
Mid
Posted
Jul 10, 2026
Apply by
August 9, 2026
Applicants
0
Early applicantFull-timeWork from Office
Sign in to apply on web or download the app for more options.
Job Description
Summary
The position of Data Scientist is for the Logicpath division within Loomis. We are a team of tech-savvy cash inventory management experts passionate about helping financial institutions succeed.
We provide a collaborative and supportive environment that values the participation and contribution of all employees. We are looking for people who want to be challenged, solve complex problems, and feel connected to a larger purpose. Our mission-focused team, collaborative nature, and commitment lead dedication to client results.
Function
The Data Scientist will play a critical role in designing, scaling, and operationalizing advanced analytics and machine learning solutions across the company’s FinTech platforms. This role will lead complex forecasting initiatives, develop AI-driven use cases (including LLM-enabled support tools), and establish strong data quality and model governance practices.
This position requires a hands-on technical leader who can translate real-world operational and financial problems into robust, production-ready data science solutions, while partnering closely with engineering, product, implementation, and client-facing teams.
The ideal candidate combines strong statistical and machine learning expertise with practical engineering ability and a track record of delivering production-grade solutions in environments where communication, business processes, data quality, and operational constraints matter as much as model performance. This very technical person is capable of thinking in terms of “problem -> solution -> product -> value”, not just “models”.
Key Responsibilities
Forecasting & Advanced Analytics
Lead the design, development, and optimization of forecasting models for:
o Cash demand (branches, ATMs, retail locations, vaults)
o Labor and operational workload forecasting
Apply and evaluate time-series, probabilistic, and machine-learning techniques to improve forecast accuracy and stability.
Own model performance monitoring, drift detection, recalibration strategies, and continuous improvement.
AI, ML, & LLM Enablement
Design and implement LLM-based use cases to support internal teams (e.g., support, implementation, operations).
Develop approaches for prompt engineering, evaluation, and governance of LLM outputs.
Partner with engineering to integrate AI capabilities into production SaaS workflows.
Define metrics to measure effectiveness, accuracy, and operational impact (ROI) of AI solutions.
Data Quality, Governance & Model Risk
Establish data quality frameworks to detect anomalies, gaps, and integrity issues across large transactional datasets.
Define validation rules, thresholds, and scoring mechanisms to support data confidence and forecast reliability.
Contribute to model documentation, explainability, and governance practices aligned with financial services expectations.
Support audit, compliance, and client due diligence inquiries related to data and models.
Technical Leadership & Collaboration
Required Qualifications
6+ years of professional experience in data science, machine learning, or advanced analytics
Advanced proficiency with Python and data science libraries (e.g., pandas, NumPy, scikit-learn, TensorFlow/Torch)
Strong SQL skills and experience working with messy, incomplete, high-volume operational data
Well-rounded background in data science methods (e.g., supervised and unsupervised learning, anomaly detection, time series forecasting, survival analysis, simulation, optimization, causal analysis)
Familiarity with metric design
Demonstrated delivery of products that influenced business decisions
Experience collaborating with engineering teams on model deployment and monitoring.
Proven ability to communicate complex concepts clearly and effectively.
Preferred Qualifications
Experience in FinTech, banking, payments, retail cash management, or operations
Experience identifying high-value data science opportunities in operational businesses
Hands-on LLM development experience
Familiarity with data quality and model governance frameworks
Ideal Candidates are:
Comfortable with ambiguity
Driven to elevate themselves by elevating others
Curious and life-long learners
Able to identify valuable problems before being asked
Pragmatic rather than purely academically focused
Capable of explaining very technical ideas to non-technical stakeholders
Willing to challenge their own and others’ assumptions with evidence
Open to changing their mind when presented with new evidence
What Success Looks Like
· Forecasting models that are accurate, explainable, and trusted by clients and internal teams.
· AI and LLM use cases that measurably reduce operational effort and improve response quality.
· Strong data quality visibility that proactively identifies issues before they impact forecasts.
· Clear, well-documented models and methodologies that scale across clients and use cases.
· A collaborative, high-impact partnership with engineering, product, and client
Benefits:
Loomis offers one of the most comprehensive employee benefit packages in the industry, which includes:
Vacation and Sick Time (PTO) as well as Paid Holidays
Health & Dental Insurance
Vision Insurance
401(k) Plan
Basic Life Insurance Plan
Voluntary Life Insurance Plan
Flexible Spending and Health Savings Account
Dependent Care Account
Industry-leading Training and Development
Key Responsibilities
Lead design and optimization of forecasting models for cash demand, labor, and operational workload.
Apply time-series, probabilistic, and machine-learning techniques to improve forecast accuracy.
Own model performance monitoring, drift detection, and continuous improvement strategies.
Design and implement LLM-based use cases for internal support and operations.
Develop prompt engineering, evaluation, and governance approaches for LLM outputs.
Integrate AI capabilities into production SaaS workflows with engineering teams.
Establish data quality frameworks to detect anomalies and integrity issues in transactional datasets.
Define validation rules and scoring mechanisms to support data confidence and forecast reliability.
Support audit, compliance, and client due diligence inquiries related to data and models.