Semi-autonomous operations shift plant leaders from data troubleshooters to strategic decision-executors relying on AI signal sharpening.
@fogoros
-
Center of Excellence Validates AI Recommendations for Commercial Viability
By
–
Center of excellence provides final expert validation ensuring AI recommendations remain actionable and commercially viable.
-
AI Predictive Maintenance: From Knowing to Doing
By
–
Velocity indicators beat lagging indicators. Lagging: dashboard shows machine running hot. Velocity: AI recommends specific bearing replacement during scheduled 2-hour window next Tuesday. From knowing to doing changes everything. pic.twitter.com/a7by2oyiPS
— Lucian Fogoros (@fogoros) 12 avril 2026Velocity indicators beat lagging indicators. Lagging: dashboard shows machine running hot. Velocity: AI recommends specific bearing replacement during scheduled 2-hour window next Tuesday. From knowing to doing changes everything.
-
Optimization Engines Learn Physical Constraints Beyond Mathematics
By
–
Your optimization engine just learned the difference between mathematically possible and physically realistic.
-
Deterministic AI Creativity Respects Thermodynamic Laws
By
–
The deterministic foundation ensures AI creativity never violates the laws of thermodynamics or material science.
-
Stochastic AI and Physics Models Optimize Manufacturing Control
By
–
Stochastic algorithms like AI sit on top of deterministic mathematical models. Partner content with @Siemens.
— Lucian Fogoros (@fogoros) 12 avril 2026
AI gets creative freedom to optimize. Physics equations catch the impossible solutions.
Two-layer intelligence for manufacturing control. #sie_di #SiemensSDX pic.twitter.com/8tBtO8fUocStochastic algorithms like AI sit on top of deterministic mathematical models. Partner content with @Siemens
. AI gets creative freedom to optimize. Physics equations catch the impossible solutions.
Two-layer intelligence for manufacturing control. #sie_di #SiemensSDX -
CoreFluxIoT: From Porto to Hannover, Unified Industrial Protocol Platform
By
–
From Porto to Hannover. @corefluxiot started with 3 engineers and one idea: replace 6 factory tools with a single binary. Now they support 14 protocols and run on everything from a Raspberry Pi up. #HM26 #coreflux_ai pic.twitter.com/eQcsdQ3nrS
— Lucian Fogoros (@fogoros) 12 avril 2026From Porto to Hannover. @corefluxiot started with 3 engineers and one idea: replace 6 factory tools with a single binary. Now they support 14 protocols and run on everything from a Raspberry Pi up. #HM26 #coreflux_ai
-
MEMS Sensors Simplify Condition Monitoring Without Additional Hardware
By
–
Condition monitoring is about to get much simpler.
— Lucian Fogoros (@fogoros) 12 avril 2026
When MEMS sensors match piezo performance without conditioning hardware, the install complexity drops 50%.
Partner content with Tronics. #tronics_ai #HM26 pic.twitter.com/oeKKd77QwYCondition monitoring is about to get much simpler.
When MEMS sensors match piezo performance without conditioning hardware, the install complexity drops 50%.
Partner content with Tronics. #tronics_ai #HM26 -
Smart Sensor Technology: Essential Reading for IoT Professionals
By
–
@IotDesperados @Xavier_Porter1 @PaulFogoros @IIoT_World @CRudinschi @agentic_factory Worth reading for anyone working on smart sensor technology.
-
MQTT Limitations for High-Frequency Industrial Sensor Data
By
–
Plants generating thousands of data points per second need message throughput that MQTT cannot provide. The protocol was designed for low-bandwidth IoT devices, not high-frequency industrial sensors.