Wikis

Info-nuggets to help anyone understand various concepts of MLOps, their significance, and how they are managed throughout the ML lifecycle.

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AI Regulations in China
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AI Regulations in India
Model safety
Synthetic & Generative AI
MLOps
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ML Monitoring

Bias Monitoring

ML bias is a phenomenon where some aspects of datasets with equal significance are given more weight or representation than others, leading to skewed outcomes.

ML bias is a phenomenon where some aspects of datasets with equal significance are given more weight or representation than others, leading to skewed outcomes. In such cases, the errors are magnified in the final analytical results rendering the ML model inappropriate and ineffective.

In its simplest terms, bias is the situation where the model consistently predicts distorted results because of incorrect assumptions. When we train our model on a training set and evaluate it on a training set, a biased model produces significant losses or errors.

Is Explainability critical for your AI solutions?

Schedule a demo with our team to understand how AryaXAI can make your mission-critical 'AI' acceptable and aligned with all your stakeholders.

AI Regulations in China
AI Regulations in the European Union (EU)
AI Regulations in the US
AI Regulations in India
Model safety
Synthetic & Generative AI
MLOps
Model Performance
ML Monitoring
Explainable AI
ML Monitoring

Bias Monitoring

ML bias is a phenomenon where some aspects of datasets with equal significance are given more weight or representation than others, leading to skewed outcomes.

ML bias is a phenomenon where some aspects of datasets with equal significance are given more weight or representation than others, leading to skewed outcomes. In such cases, the errors are magnified in the final analytical results rendering the ML model inappropriate and ineffective.

In its simplest terms, bias is the situation where the model consistently predicts distorted results because of incorrect assumptions. When we train our model on a training set and evaluate it on a training set, a biased model produces significant losses or errors.

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Is Explainability critical for your AI solutions?

Schedule a demo with our team to understand how AryaXAI can make your mission-critical 'AI' acceptable and aligned with all your stakeholders.