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Glosarium AI

Kamus lengkap Kecerdasan Buatan

162
kategori
2.032
subkategori
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A/B Testing

Experimental methodology comparing two versions (A and B) of a model or service to determine which performs better according to predefined metrics, typically through random traffic distribution.

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Multivariate Testing

Advanced technique testing multiple variables and their combinations simultaneously to identify overall optimization, allowing evaluation of interactions between different factors of the model.

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Blue-Green Deployment

Deployment pattern with two identical environments where traffic completely switches from the old version (Blue) to the new one (Green) after full validation, minimizing downtime.

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Feature Flag

Control mechanism allowing dynamic activation/deactivation of specific features or models without redeployment, facilitating experiments and quick rollbacks.

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Traffic Splitting

Intelligent routing technique proportionally distributing requests between different model versions according to configurable rules for A/B tests or gradual deployments.

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Statistical Significance

Probabilistic measure determining whether observed differences between tested variants are due to real effects rather than chance, typically with a p-value threshold < 0.05.

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P-value

Probability of observing results at least as extreme as those measured if the null hypothesis were true, serving as a decision criterion in hypothesis testing.

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Confidence Interval

Range of estimated values containing the true value of the measured parameter with a defined probability (typically 95%), quantifying the uncertainty of experimental estimates.

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Control Group

Population sample receiving the reference version (usually the current model) serving as a baseline for statistical comparison with experimental variants.

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Treatment Group

Population segment exposed to the experimental variant of the model or treatment being tested, allowing for the measurement of relative impact compared to the control group.

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Baseline Model

Reference model used as a point of comparison to evaluate improvements made by new versions, often the model currently in production.

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Champion-Challenger

Continuous competition strategy where the current champion model is constantly challenged by challenger models, with the best performer progressively replacing the champion.

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Progressive Rollout

Incremental deployment of a new model with a gradual increase in traffic percentage, allowing for continuous validation and minimization of the risk of negative impact.

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Experimentation Platform

Centralized infrastructure managing the complete lifecycle of experiments, from variant creation to statistical analysis of results and decision automation.

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Metric Drift

Phenomenon of gradual degradation of a model's performance metrics in production, detected through continuous monitoring and requiring periodic re-evaluations.

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Sample Size Calculation

Statistical process determining the minimum number of observations required to detect a significant difference with a given statistical power, essential for test planning.

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Bayesian A/B Testing

Alternative approach using Bayesian probabilities to evaluate variants, enabling continuous decisions with smaller samples and intuitive interpretation of results.

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Sequential Testing

Analysis methodology that allows evaluating results at predefined intervals without inflating the Type I error risk, optimizing the duration and costs of experiments.

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