Machine Learning Engineer – Forecasting & Production Systems
Newark, NJ
Salary: $120,000 – $180,000
Description / Position Overview
The business is operating without consistently reliable SKU-level forecasting, creating gaps in purchasing decisions, inventory planning, and revenue predictability.
This role exists to fix that.
You will own the development, deployment, and performance of forecasting systems that directly impact sales projections, demand planning, and purchasing decisions. This is not a research role. The expectation is clear: build models that work in production, improve accuracy over time, and drive measurable business outcomes.
Responsibilities
Forecasting Ownership
• Own SKU-level forecasting models across sales, demand, and purchasing
• Deliver forecasts that directly influence inventory and operational decisions
• Continuously improve model accuracy through iteration, testing, and feedback
Production Systems
• Deploy models into live environments used by operations and leadership
• Own model lifecycle: monitoring, retraining, performance tracking
• Ensure systems are stable, fast, and reliable under high-volume conditions
Data & Pipeline Ownership
• Build and maintain data pipelines supporting real-time or near-term forecasts
• Structure and clean large-scale transactional datasets
• Optimize data flow for speed, accuracy, and scalability
Business Execution
• Translate operational problems into predictive models
• Work directly with purchasing and operations teams to refine outputs
• Deliver usable forecasts — not theoretical models
Success Metrics (MANDATORY)
• Forecast accuracy improvement (MAPE, RMSE, or similar) over time
• Reduction in inventory overstock / stockouts
• Adoption of forecasts by purchasing and operations teams
• Model uptime and reliability in production environments
• Speed of iteration and deployment cycles
Requirements
• Proven experience deploying machine learning models into production
• Strong Python and experience with Scikit-learn or similar tools
• Strong statistical and predictive modeling foundation
• Hands-on experience with time series forecasting in real business settings
• Experience working with large-scale / big data environments
• Experience building data pipelines tied to ML systems
• Ability to operate in fast-paced, execution-driven environments
Must-Haves
• Built forecasting models used for real business decisions
• Strong time series forecasting experience (sales, demand, SKU-level preferred)
• Experience working with large datasets and high-volume systems
• Ownership mindset — ability to deliver outcomes, not just models
• Proven ability to execute quickly and adapt under changing conditions
Final Invitation to Apply
If you’ve built forecasting systems that actually drive decisions — not just models that sit unused — this is an opportunity to own a critical function and directly impact how the business operates and scales.
Email Resume: Joel@maiplacement.com
https://jobs.crelate.com/portal/maiplacement/job/57uddx43h4me63xrn6z1157iec?crt=1773957640579
Refer a friend, get up to $1000!