Protect critical systems and ensure reliability
Ensure the reliability and performance of critical systems. Prevent counterfeit leaks, enhance product authentication, and maintain supply chain integrity.
Ensure the reliability and performance of critical systems. Prevent counterfeit leaks, enhance product authentication, and maintain supply chain integrity.
The ever-changing landscape of advanced SOCs reshape traditional approaches of automotive functional safety (FuSa). Electrification (EV), connectivity, driver-assistance (ADAS), and software-defined vehicles (SDV) have ushered in the era of mega-functionality and scale. Advanced electronics and centralized ECU (Electronic Control Unit) architectures are impacting vehicle performance, safety, and functionality.
Centralized ECU architectures
Siloed data chain
Decoupling of HW from SW
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proteanTecs provides proactive approaches that transcend reactive measures, enabling stakeholders to effectively detect anomalies, anticipate failures, and proactively mitigate risks. Automotive manufacturers and OEMs can now achieve unprecedented levels of resilience, robustness, and operational efficiency, from ICs to ECUs.

In-mission health and performance monitoring for safety, functionality, and longevity during lifetime operation
Safe and reliable Power and Performance optimization per watt from through in-chip monitoring


Monitoring of system mission profile budget, with quantification of lifetime budget consumption
Personalized time-to-failure prediction, with aggregated fleet level analytics, insights and Root Cause Analysis (RCA)


Deep data analytics and actionable insights during production for optimized quality, operational efficiency and yield,
Enabling high resolution root cause analysis
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This paper introduces proteanTecs groundbreaking Outlier Detection solution that eliminates that tradeoff. proteanTecs' Outlier Detection uses deep data analytics and ML to detect latent defects as early as Wafer Sort, achieving high fault detection accuracy by learning normal behavior with on-chip agents and comparing test measurements with predicted ones. It identifies marginal issues beyond simple pass/fail metrics, where traditional methods fail.
This paper introduces proteanTecs groundbreaking Outlier Detection solution that eliminates that tradeoff. proteanTecs' Outlier Detection uses deep data analytics and ML to detect latent defects as early as Wafer Sort, achieving high fault detection accuracy by learning normal behavior with on-chip agents and comparing test measurements with predicted ones. It identifies marginal issues beyond simple pass/fail metrics, where traditional methods fail.
This paper introduces proteanTecs groundbreaking Outlier Detection solution that eliminates that tradeoff. proteanTecs' Outlier Detection uses deep data analytics and ML to detect latent defects as early as Wafer Sort, achieving high fault detection accuracy by learning normal behavior with on-chip agents and comparing test measurements with predicted ones. It identifies marginal issues beyond simple pass/fail metrics, where traditional methods fail.