Hi
I hope youre doing well
Momento USA is a global technology consulting talent acquisition and creative development firm that addresses clients most pressing needs and challenges. We are currently looking for a Data Science Architect Warehouse Intelligence Platform
Job Title: Data Science Architect Warehouse Intelligence Platform
Location: Cincinnati OH (Day 1 On-site)
As a Senior Data Scientist you will be lead and architect for the intelligence layer for clients Warehouse Intelligence Platform. Your mission would be to transform raw operational data into real-time actionable decisions that optimize warehouse flow labor efficiency and equipment throughput. This role focuses on analyzing the operation data and creating AIML algorithms that will be productized into clients Warehouse Intelligence Platform to improve labor efficiency flow optimization orchestration decisions equipment performance and near-real-time decision support.
This is a hands-on self-starter leadership role: youll identify opportunities define success metrics shape roadmaps and guide delivery from prototype to deployment.
- Solution Architecture: Design and deploy end-to-end ML/AI architectures that integrate directly with clients warehouse execution platform to solve complex logistics problems (e.g. wave management task interleaving and labor balancing).
- Customer-Facing PoC Delivery: Own the end-to-end build and demonstration of customer-facing AI proof-of-concepts from data exploration through model validation to customer stakeholder presentation. PoCs include: Order Intelligence Capacity Optimization Framework (portfolio-wide) Throughput Anomaly Detection Demand Forecasting and Labor Allocation Recommendations. Models must be scoped to demonstrate measurable customer value within a single PI. This role requires direct customer-facing engagement - candidate must be comfortable presenting AI findings and recommendations to customer operations leaders and executives.
- Optimization Modeling: Build and refine sophisticated models for order batching wave management pathfinding slotting optimization and task interleaving to minimize travel time reduce exceptions and maximize throughput across automated and manual warehouse environments.
- Predictive Intelligence: Develop forecasting models for warehouse volume labor requirements and equipment maintenance to prevent bottlenecks before they occur.
- Algorithm Integration: Work closely with Product Development and Partners teams to ensure ML models are performant enough for low-latency real-time execution environments.
- MLOps Leadership: Establish best practices for model deployment monitoring and re-training in the wild to ensure systems adapt to changing seasonal demands.
- Generative Operational Intelligence: Build and deploy Large Language Models (LLMs) and Agentic workflows that allow operational leaders to query warehouse health and ask for optimization strategies in plain English.
- Define and maintain Warehouse Intelligence Platform analytics clients: end-to-end cycle time task latency WIP throughput SLA adherence pick rate exceptions and rework.
- Partner with Data Engineering to implement data pipelines from warehouse execution WMS WCS and PLC/IoT systems to ensure that the data is AI ready.
- Build dashboards and operational insights for customers.
- Document models assumptions monitoring and performance drift; implement governance and responsible AI practices.
| Required Education Skills and Experience |
- Masters in Data Science Computer Science Industrial Engineering Operations Research etc.
- 7 years in applied data science with production AI and ML
- Strong Python (pandas Pytorch/ TensorFlow scikit-learn) SQL experience with experimentation and statistical inference.
- Ability to work with event-driven data (timestamps state transitions logs).
- Self-starter with the ability to investigate and understand business requirements translate them into technical specifications and implement the required design.
- Excellent problem-solving and analytical skills. Strong communication and collaboration skills.
- Demonstrated experience with production classification forecasting and anomaly detection algorithms (e.g. XGBoost Random Forest ARIMA/Prophet LSTM Isolation Forest) - not just familiarity with LLM-based tools.
- Familiarity with operational data sources including PLC/SCADA systems historian databases WES/WMS/WCS event logs and sensor streams as inputs to ML pipelines.
- Use-case-first mindset: demonstrated ability to define a specific prediction target and identify required data before building infrastructure. Candidates who default to build the platform first are not the right fit for this role.
| Other Requirements/Comments |
- Familiarity with LLM orchestration prompt engineering and RAG (Retrieval-Augmented Generation) for operational intelligence use cases is a plus; primary focus of this role is operational ML not generative AI.
- Experience with warehouse/fulfillment systems: WES/WMS/TMS automation labor management.
- Azure/Databricks experience: Databricks ML Delta Lake MLflow feature engineering at scale.
- Experience deploying models into product workflows (API scoring batch scoring streaming signals).
- Strong background in Operations Research (OR) Linear Programming or Reinforcement Learning
Note: Momento USA is an Equal Opportunity/Affirmative Action Employer. All qualified applicants will receive consideration for employment without regard to race color religion sex pregnancy sexual orientation gender identity national origin age protected veteran status or disability status.
Hi I hope youre doing well Momento USA is a global technology consulting talent acquisition and creative development firm that addresses clients most pressing needs and challenges. We are currently looking for a Data Science Architect Warehouse Intelligence Platform Job Title: Data Science A...
Hi
I hope youre doing well
Momento USA is a global technology consulting talent acquisition and creative development firm that addresses clients most pressing needs and challenges. We are currently looking for a Data Science Architect Warehouse Intelligence Platform
Job Title: Data Science Architect Warehouse Intelligence Platform
Location: Cincinnati OH (Day 1 On-site)
As a Senior Data Scientist you will be lead and architect for the intelligence layer for clients Warehouse Intelligence Platform. Your mission would be to transform raw operational data into real-time actionable decisions that optimize warehouse flow labor efficiency and equipment throughput. This role focuses on analyzing the operation data and creating AIML algorithms that will be productized into clients Warehouse Intelligence Platform to improve labor efficiency flow optimization orchestration decisions equipment performance and near-real-time decision support.
This is a hands-on self-starter leadership role: youll identify opportunities define success metrics shape roadmaps and guide delivery from prototype to deployment.
- Solution Architecture: Design and deploy end-to-end ML/AI architectures that integrate directly with clients warehouse execution platform to solve complex logistics problems (e.g. wave management task interleaving and labor balancing).
- Customer-Facing PoC Delivery: Own the end-to-end build and demonstration of customer-facing AI proof-of-concepts from data exploration through model validation to customer stakeholder presentation. PoCs include: Order Intelligence Capacity Optimization Framework (portfolio-wide) Throughput Anomaly Detection Demand Forecasting and Labor Allocation Recommendations. Models must be scoped to demonstrate measurable customer value within a single PI. This role requires direct customer-facing engagement - candidate must be comfortable presenting AI findings and recommendations to customer operations leaders and executives.
- Optimization Modeling: Build and refine sophisticated models for order batching wave management pathfinding slotting optimization and task interleaving to minimize travel time reduce exceptions and maximize throughput across automated and manual warehouse environments.
- Predictive Intelligence: Develop forecasting models for warehouse volume labor requirements and equipment maintenance to prevent bottlenecks before they occur.
- Algorithm Integration: Work closely with Product Development and Partners teams to ensure ML models are performant enough for low-latency real-time execution environments.
- MLOps Leadership: Establish best practices for model deployment monitoring and re-training in the wild to ensure systems adapt to changing seasonal demands.
- Generative Operational Intelligence: Build and deploy Large Language Models (LLMs) and Agentic workflows that allow operational leaders to query warehouse health and ask for optimization strategies in plain English.
- Define and maintain Warehouse Intelligence Platform analytics clients: end-to-end cycle time task latency WIP throughput SLA adherence pick rate exceptions and rework.
- Partner with Data Engineering to implement data pipelines from warehouse execution WMS WCS and PLC/IoT systems to ensure that the data is AI ready.
- Build dashboards and operational insights for customers.
- Document models assumptions monitoring and performance drift; implement governance and responsible AI practices.
| Required Education Skills and Experience |
- Masters in Data Science Computer Science Industrial Engineering Operations Research etc.
- 7 years in applied data science with production AI and ML
- Strong Python (pandas Pytorch/ TensorFlow scikit-learn) SQL experience with experimentation and statistical inference.
- Ability to work with event-driven data (timestamps state transitions logs).
- Self-starter with the ability to investigate and understand business requirements translate them into technical specifications and implement the required design.
- Excellent problem-solving and analytical skills. Strong communication and collaboration skills.
- Demonstrated experience with production classification forecasting and anomaly detection algorithms (e.g. XGBoost Random Forest ARIMA/Prophet LSTM Isolation Forest) - not just familiarity with LLM-based tools.
- Familiarity with operational data sources including PLC/SCADA systems historian databases WES/WMS/WCS event logs and sensor streams as inputs to ML pipelines.
- Use-case-first mindset: demonstrated ability to define a specific prediction target and identify required data before building infrastructure. Candidates who default to build the platform first are not the right fit for this role.
| Other Requirements/Comments |
- Familiarity with LLM orchestration prompt engineering and RAG (Retrieval-Augmented Generation) for operational intelligence use cases is a plus; primary focus of this role is operational ML not generative AI.
- Experience with warehouse/fulfillment systems: WES/WMS/TMS automation labor management.
- Azure/Databricks experience: Databricks ML Delta Lake MLflow feature engineering at scale.
- Experience deploying models into product workflows (API scoring batch scoring streaming signals).
- Strong background in Operations Research (OR) Linear Programming or Reinforcement Learning
Note: Momento USA is an Equal Opportunity/Affirmative Action Employer. All qualified applicants will receive consideration for employment without regard to race color religion sex pregnancy sexual orientation gender identity national origin age protected veteran status or disability status.
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