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Posted May 6, 2026

Data Engineer / AI Consultant

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Dice is the leading career destination for tech experts at every stage of their careers. Our client, Connexion Systems and Engineering, Inc., is seeking the following. Apply via Dice today! Project Overview We''re seeking an experienced Data Engineer / AI Consultant to design and implement advanced reliability (“life”) models using historical service labor, parts usage, and maintenance event data. This engagement will enable improved reliability insights, optimized service strategy, more accurate parts planning, and enhanced product quality through data-driven analysis. The project focuses on developing statistically grounded reliability estimates, identifying early-life failure behavior, and generating usage-based performance insights across critical systems and components. Objectives The consultant will create a scalable data and modeling framework that allows the organization to: • Quantify usage-based life characteristics (e.g., operating time, cycles, or utilization signals) for major assemblies and components. • Detect early-life failure trends using operational metrics, maintenance records, and service history. • Build reliability models that reflect real-world field performance across multiple product lines. • Establish a repeatable analytical approach that internal technical teams can maintain and expand after project completion. Scope of Work Data Engineering & Preparation • Aggregate, cleanse, and transform historical operational and maintenance data from enterprise service management platforms, including: • Maintenance and repair records • Failure classifications • Replacement part usage • Equipment configuration attributes • Operational signals such as cycles, runtime, or activity counts • Develop a consolidated dataset optimized for reliability analysis and statistical modeling. • Assess data completeness, identify inconsistencies, and recommend remediation strategies where needed. Reliability & Life Modeling • Develop statistical reliability models using techniques such as Weibull analysis, survival modeling, and time-to-failure estimation. • Generate usage-based reliability curves for key subsystems and components. • Produce statistical reliability outputs including: • B10 / B50 life metrics • Early-life failure probability estimates • Failure distribution profiles • Reliability trends segmented by region, product category, and usage characteristics • Validate models for accuracy, robustness, and practical applicability. Predictive Model Development • Design predictive algorithms that estimate failure likelihood based on real-world operating conditions. • Identify leading indicators that provide early warning signals for potential component or system failures. • Apply machine learning or regression-based techniques where appropriate to improve forecasting accuracy. Deliverables & Knowledge Transfer • Structured, analysis-ready reliability dataset derived from historical service records. • Usage-based life models (including Weibull and B10 estimates) for targeted components and systems. • Analytical framework for identifying early-life failure patterns using operational and maintenance data. • Comprehensive documentation package including: • Data definitions and structure overview • Modeling approach and methodology • Assumptions and validation procedures • Reusable code assets or notebooks (Python and/or SQL) • Final summary presentation outlining key insights, reliability findings, and strategic recommendations. Apply Now Apply Now
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