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Digital Innovation Engineer
Career Celanese Icims Com · Wilmington, DE, US · Hybrid · Active · iCIMS
Job facts
| Field | Value |
|---|---|
| Company | Career Celanese Icims Com |
| Title | Digital Innovation Engineer |
| Normalized title | - |
| Department / team | - |
| Location | Wilmington, DE, United States |
| Work model | Hybrid / Hybrid |
| Employment type | Full Time |
| Salary | - |
| Status | active |
| ATS provider | iCIMS |
| Posted / first seen | 2024-06-06 / 2026-05-31 |
| Changed / last seen | 2026-06-06 / 2026-06-06 |
Related slices
| Page | What it contains | Open |
|---|---|---|
| Company jobs | Active postings from Career Celanese Icims Com. | Open |
| Company breakdowns | Role, location, ATS, and work model facets for this company. | Open |
| ATS provider jobs | Active postings observed through iCIMS. | Open |
| Provider filtered search | The same provider as a filtered job collection. | Open |
| City jobs | Active postings in Wilmington. | Open |
| Work model jobs | Active Hybrid postings. | Open |
| Lifecycle events | Open, update, close, and reopen events for this posting. | Open |
| Original posting | Canonical source or apply URL captured from the ATS. | Open |
Linked records
| Company | Career Celanese Icims Com |
| Source | d3b33812-f7df-47ae-b551-bf3c93e22f73 |
| ATS provider | iCIMS |
Description
Overview
Celanese Engineered Materials is seeking an Engineer, Digital Innovation – Predictive Modeling & Advanced Experimentation role. This role is a specialized technical position focused on applying AI + Physics into predictive modeling, experimental design, and Bayesian optimization to enable faster, more confident decisions in new product and material development.
This role is an opportunity to play a key role in advancing predictive modeling and advanced experimental strategy to accelerate the design and development of next‑generation materials. Applying rigorous quantitative methods to enable informed decision‑making early in technology and product development.
The role operates at the intersection of modeling, statistics, and machine learning, with a strong emphasis on translating these capabilities into practical approaches that support technology and innovation programs. This position also builds and deploys digital methods to guide experimentation, prediction, and optimization that support computer aided engineering and new product development efforts.
**Location can be hybrid in one of the following locations:
Wilmington, DE
Florence, KY
Auburn Hills, MI
Irving, TX
Responsibilities
Predictive Modeling for Material Property Design
Develop and apply predictive and hybrid machine learning approaches for the prediction of properties key to designing the next generation of materials.
Integrate mechanistic understanding, statistical modeling, and data‑driven methods to generate reliable, decision‑ready predictions.
Quantify model confidence and limitations to support risk‑aware technical decisions.
Translate complex modeling outputs into clear, actionable insights for technology and innovation stakeholders.
Experimental Design & Bayesian Optimization for New Product Development
Design and apply advanced experimental design strategies and Bayesian optimization for new product development.
Efficiently explore high‑dimensional design spaces to prioritize experiments and identify optimal candidates for laboratory evaluation.
Apply adaptive and sequential learning approaches to balance exploration and exploitation under limited data conditions.
Qualifications
Master's Degree or higher, or with equivalent experience in computer science, computer engineering, machine learning, physics, applied mathematics or related field
Understanding of advanced materials, chemical processes, and laboratory data is a plus.
1+ years' work experience with modeling development, data analysis, business communication, and digital transformation is highly desirable.
Proficiency in AI + physics-based machine learning.
Working understanding of material science fundamentals
Strong foundation in applied statistics, experimental design, and probabilistic modeling.
Expertise in predictive modeling and simulation for material or system property prediction.
Experience with uncertainty quantification, model validation, and decision support under uncertainty.
Ability to translate advanced quantitative methods into practical workflows including proof-of-concept full-stack (backend + frontend) applications that inform technology and product decisions.
Working across the full lifecycle: problem formulation → model and strategy development → application and adoption.
Communicating complex modeling and experimental concepts clearly to diverse technical audiences.
Influencing technology and innovation decisions through quantitative, model‑driven insight.
Operating effectively in cross‑functional environments spanning product development, technology, innovation, and digital teams.
Full job record
| Job ID | 678067fdcfe711db323f3411402dc7cbb6c1648e |
| Org ID | 000bb1c1-f93f-43bc-86b0-f74424279536 |
| Source ID | d3b33812-f7df-47ae-b551-bf3c93e22f73 |
| Board ID | d3b33812-f7df-47ae-b551-bf3c93e22f73 |
| Provider | icims |
| Provider Job Key | 22802 |
| Title | Digital Innovation Engineer |
| Normalized Title | — |
| Status | active |
| Active | yes |
| Location Text | Wilmington, DE, US |
| Department | — |
| Team | — |
| Employment Type | full_time |
| Workplace Type | hybrid |
| Remote Policy | hybrid |
| Country | United States |
| Region | DE |
| City | Wilmington |
| Salary Raw | Overview Celanese Engineered Materials is seeking an Engineer, Digital Innovation – Predictive Modeling & Advanced Experimentation role. This role is a specialized technical position focused on applying AI + Physics into predictive modeling, experimental design, and Bayesian optimization to enable faster, more confident decisions in new product and material development. This role is an opportunity to play a key role in advancing predictive modeling and advanced experimental strategy to accelerate the design and development of next‑generation materials. Applying rigorous quantitative methods to enable informed decision‑making early in technology and product development. The role operates at the intersection of modeling, statistics, and machine learning, with a strong emphasis on translating these capabilities into practical approaches that support technology and innovation programs. This position also builds and deploys digital methods to guide experimentation, prediction, and optimization that support computer aided engineering and new product development efforts. **Location can be hybrid in one of the following locations: Wilmington, DE Florence, KY Auburn Hills, MI Irving, TX Responsibilities Predictive Modeling for Material Property Design Develop and apply predictive and hybrid machine learning approaches for the prediction of properties key to designing the next generation of materials. Integrate mechanistic understanding, statistical modeling, and data‑driven methods to generate reliable, decision‑ready predictions. Quantify model confidence and limitations to support risk‑aware technical decisions. Translate complex modeling outputs into clear, actionable insights for technology and innovation stakeholders. Experimental Design & Bayesian Optimization for New Product Development Design and apply advanced experimental design strategies and Bayesian optimization for new product development. Efficiently explore high‑dimensional design spaces to prioritize experiments and identify optimal candidates for laboratory evaluation. Apply adaptive and sequential learning approaches to balance exploration and exploitation under limited data conditions. Qualifications Master's Degree or higher, or with equivalent experience in computer science, computer engineering, machine learning, physics, applied mathematics or related field Understanding of advanced materials, chemical processes, and laboratory data is a plus. 1+ years' work experience with modeling development, data analysis, business communication, and digital transformation is highly desirable. Proficiency in AI + physics-based machine learning. Working understanding of material science fundamentals Strong foundation in applied statistics, experimental design, and probabilistic modeling. Expertise in predictive modeling and simulation for material or system property prediction. Experience with uncertainty quantification, model validation, and decision support under uncertainty. Ability to translate advanced quantitative methods into practical workflows including proof-of-concept full-stack (backend + frontend) applications that inform technology and product decisions. Working across the full lifecycle: problem formulation → model and strategy development → application and adoption. Communicating complex modeling and experimental concepts clearly to diverse technical audiences. Influencing technology and innovation decisions through quantitative, model‑driven insight. Operating effectively in cross‑functional environments spanning product development, technology, innovation, and digital teams. |
| Salary Min | — |
| Salary Max | — |
| Salary Currency | — |
| Salary Period | — |
| Source URL | https://career-celanese.icims.com/jobs/22802/digital-innovation-engineer/job |
| Apply URL | https://career-celanese.icims.com/jobs/22802/digital-innovation-engineer/job |
| First Seen At | 2026-05-31 18:47:30Z |
| Last Seen At | 2026-06-06 08:36:46Z |
| Last Checked At | 2026-06-06 08:36:46Z |
| Last Changed At | 2026-06-06 08:36:46Z |
| Inactive At | — |
| Source Posted At | 2024-06-06 08:36:45Z |
| Source Updated At | 2026-04-20 14:00:11Z |
| Raw Payload Uri | s3://job-postings-prod-raw-590183727216/raw/provider=icims/board=career-celanese.icims.com/date=2026-06-06/2026-06-06T08-36-43-911Z-f7dc23672f68e290d5b36ed7e5d3a6cdf7580fabf3955726e13af692510a625a.json |
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