#ModelDriftDetection
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opensourceais · 22 hours ago
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Your AI Doesn’t Sleep. Neither Should Your Monitoring.
We’re living in a world run by models from real-time fraud detection to autonomous systems navigating chaos. But what happens after deployment?
What happens when your model starts drifting, glitching, or breaking… quietly?
That’s the question we asked ourselves while building the AI Inference Monitor, a core module of the Aurora Framework by Auto Bot Solutions.
This isn’t just a dashboard. It’s a watchtower.
It sees every input and output. It knows when your model lags. It learns what “normal” looks like and it flags what doesn’t.
Why it matters: You can’t afford to find out two weeks too late that your model’s been hallucinating, misclassifying, or silently underperforming.
That’s why we gave the AI Inference Monitor:
Lightweight Python-based integration
Anomaly scoring and model drift detection
System resource tracking (RAM, CPU, GPU)
Custom alert thresholds
Reproducible logging for full audits
No more guessing. No more “hope it holds.” Just visibility. Control. Insight.
Built for developers, researchers, and engineers who know the job isn’t over when the model trains it’s just beginning.
Explore it here: Aurora On GitHub : AI Inference Monitor https://github.com/AutoBotSolutions/Aurora/blob/Aurora/ai_inference_monitor.py
Aurora Wiki https://autobotsolutions.com/aurora/wiki/doku.php?id=ai_inference_monitor
Get clarity. Get Aurora. Because intelligent systems deserve intelligent oversight.
Sub On YouTube: https://www.youtube.com/@autobotsolutions/videos
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