Industrial Engineering Analytics Engineer (Manufacturing Systems & Modeling) Location : Pittsburgh PA (Onsite) Employment type - contract
Job Description:
Required Skills:
Greenfield or brownfield project experience (good to have)
Equipment planning
Capacity planning
Labour planning
CAPEX management (good to have)
Supplier validation
Capital investments ROI IRR NPV and cost-benefit analysis
Design and maintain OEE models
Support factory ramp-up installation and operational readiness through model validation and performance tracking
Material planning
PFMEA
Lean Manufacturing
Six Sigma
Layout planning (good to have)
Simulation tools experience (not mandatory)
Strong expertise in Excel
Knowledge of AI-driven tools (good to have)
JD:
The Industrial Engineering Analytics Engineer will lead the development and application of advanced analytical models to drive manufacturing efficiency capacity planning and cost
optimization.
This role is responsible for building and managing integrated IE models that connect capacity labor material flow PFEP and cost (COGS) to enable data-driven decisionmaking across factory and site operations.
The ideal candidate will combine strong industrial engineering fundamentals with advanced analytics simulation business case development and AI-driven systems to support large-scale manufacturing environments.
Role Overview:
The Industrial Engineering Analytics Engineer will lead the development and application of advanced analytical models to drive manufacturing efficiency capacity planning and cost optimization.
This role is responsible for building and managing integrated IE models that connect capacity labor material flow PFEP and cost (COGS) to enable data-driven decision making across factory and site operations. The ideal candidate will combine strong industrial engineering fundamentals with advanced analytics simulation business case development and AI-driven systems to support large-scale manufacturing environments.
Key Responsibilities
Develop and own integrated IE models that connect capacity labor material flow PFEP and cost (COGS) to support factory planning and operations
Build and maintain capacity models (target vs. forecast vs. gated capacity) incorporating cycle time OEE yield losses and bottleneck analysis
Develop labor models to optimize headcount utilization and labor cost (LOH) across production systems
Create and evaluate business cases for capital investments including ROI IRR NPV and cost benefit analysis
Lead COGS modeling including labor overhead scrap and process-driven cost components
Develop and track scrap and yield models quantifying cost impact and identifying improvement opportunities
Design and maintain OEE models (availability performance quality) to drive operational efficiency and continuous improvement
Perform buffer and WIP analysis to optimize inline and interline storage reduce bottlenecks and stabilize production flow
Develop process flow diagrams (PFDs) and value stream maps to represent manufacturing systems and identify inefficiencies
Integrate PFEP (Plan for Every Part) data into models to optimize material flow storage and line-side delivery strategies
Support factory layout site planning and material flow decisions through data-driven insights and modeling
Perform scenario analysis and sensitivity studies to evaluate production strategies and capacity expansion plans
Utilize and/or develop factory simulation models (e.g. FlexSim AnyLogic Simio) to analyze throughput bottlenecks and system performance
Support factory ramp-up installation and operational readiness through model validation and performance tracking
Collaborate with cross-functional teams (Manufacturing Operations Supply Chain Finance
Engineering) to align models with real-world constraints and business needs
Translate complex analytical outputs into clear executive-level insights and recommendations
Collaborate with MES and Controls teams to integrate shop-floor data with IE models ensuring accurate OEE measurement and enabling real-time scalable dashboards for operational visibility and executive decision-making
AI & Data Systems
Introduce and implement AI-driven tools and platforms to enhance industrial engineering analytics and decision-making
Design and manage scalable data models and data architecture for IE capacity labor PFEPand cost analytics
Develop standardized systems frameworks and governance for data modeling analytics and reporting
Automate data collection validation and reporting pipelines using AI and advanced analytics tools
Enable predictive analytics and intelligent decision-making for capacity throughput and cost optimization
Establish best practices for data quality model standardization and system integration across the organization
Industrial Engineering Analytics Engineer (Manufacturing Systems & Modeling) Location : Pittsburgh PA (Onsite) Employment type - contract Job Description: Required Skills: Greenfield or brownfield project experience (good to have) Equipment planning Capacity planning Labour planning CAPEX mana...
Industrial Engineering Analytics Engineer (Manufacturing Systems & Modeling) Location : Pittsburgh PA (Onsite) Employment type - contract
Job Description:
Required Skills:
Greenfield or brownfield project experience (good to have)
Equipment planning
Capacity planning
Labour planning
CAPEX management (good to have)
Supplier validation
Capital investments ROI IRR NPV and cost-benefit analysis
Design and maintain OEE models
Support factory ramp-up installation and operational readiness through model validation and performance tracking
Material planning
PFMEA
Lean Manufacturing
Six Sigma
Layout planning (good to have)
Simulation tools experience (not mandatory)
Strong expertise in Excel
Knowledge of AI-driven tools (good to have)
JD:
The Industrial Engineering Analytics Engineer will lead the development and application of advanced analytical models to drive manufacturing efficiency capacity planning and cost
optimization.
This role is responsible for building and managing integrated IE models that connect capacity labor material flow PFEP and cost (COGS) to enable data-driven decisionmaking across factory and site operations.
The ideal candidate will combine strong industrial engineering fundamentals with advanced analytics simulation business case development and AI-driven systems to support large-scale manufacturing environments.
Role Overview:
The Industrial Engineering Analytics Engineer will lead the development and application of advanced analytical models to drive manufacturing efficiency capacity planning and cost optimization.
This role is responsible for building and managing integrated IE models that connect capacity labor material flow PFEP and cost (COGS) to enable data-driven decision making across factory and site operations. The ideal candidate will combine strong industrial engineering fundamentals with advanced analytics simulation business case development and AI-driven systems to support large-scale manufacturing environments.
Key Responsibilities
Develop and own integrated IE models that connect capacity labor material flow PFEP and cost (COGS) to support factory planning and operations
Build and maintain capacity models (target vs. forecast vs. gated capacity) incorporating cycle time OEE yield losses and bottleneck analysis
Develop labor models to optimize headcount utilization and labor cost (LOH) across production systems
Create and evaluate business cases for capital investments including ROI IRR NPV and cost benefit analysis
Lead COGS modeling including labor overhead scrap and process-driven cost components
Develop and track scrap and yield models quantifying cost impact and identifying improvement opportunities
Design and maintain OEE models (availability performance quality) to drive operational efficiency and continuous improvement
Perform buffer and WIP analysis to optimize inline and interline storage reduce bottlenecks and stabilize production flow
Develop process flow diagrams (PFDs) and value stream maps to represent manufacturing systems and identify inefficiencies
Integrate PFEP (Plan for Every Part) data into models to optimize material flow storage and line-side delivery strategies
Support factory layout site planning and material flow decisions through data-driven insights and modeling
Perform scenario analysis and sensitivity studies to evaluate production strategies and capacity expansion plans
Utilize and/or develop factory simulation models (e.g. FlexSim AnyLogic Simio) to analyze throughput bottlenecks and system performance
Support factory ramp-up installation and operational readiness through model validation and performance tracking
Collaborate with cross-functional teams (Manufacturing Operations Supply Chain Finance
Engineering) to align models with real-world constraints and business needs
Translate complex analytical outputs into clear executive-level insights and recommendations
Collaborate with MES and Controls teams to integrate shop-floor data with IE models ensuring accurate OEE measurement and enabling real-time scalable dashboards for operational visibility and executive decision-making
AI & Data Systems
Introduce and implement AI-driven tools and platforms to enhance industrial engineering analytics and decision-making
Design and manage scalable data models and data architecture for IE capacity labor PFEPand cost analytics
Develop standardized systems frameworks and governance for data modeling analytics and reporting
Automate data collection validation and reporting pipelines using AI and advanced analytics tools
Enable predictive analytics and intelligent decision-making for capacity throughput and cost optimization
Establish best practices for data quality model standardization and system integration across the organization