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💬 프롬프트 라이브러리 📖 AI 용어 사전 🔗 유용한 링크

AI 용어집

인공지능 완전 사전

162
카테고리
2,032
하위 카테고리
23,060
용어
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Industrial IoT sensors

Connected devices collecting real-time data on industrial equipment, including vibration, temperature, pressure, and other operational parameters.

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Heterogeneous data

Set of data of different natures (structured, unstructured, temporal, spatial) requiring specific methods for their coherent integration.

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Fusion algorithms

Mathematical and computational methods allowing intelligent combination of multiple information sources into a unified and optimized output.

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Temporal metadata

Time-related information associated with sensor data, including timestamps, sampling frequencies, and temporal relationships between events.

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Cross-source validation

Technique for verifying data consistency and reliability by comparing information from different independent sources.

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Dynamic weighting

Automatic adaptation of weights assigned to each data source based on their reliability and relevance for a given context.

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Ensemble learning

Approach combining multiple machine learning models to improve predictive performance by aggregating their individual predictions.

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Inter-source correlation analysis

Study of statistical relationships between different data sources to identify dependencies and synergies exploitable in fusion.

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Multimodal preprocessing

Set of cleaning, normalization, and transformation techniques applied to different types of data before their integration into a unified model.

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Centralized fusion architecture

Approach where all data sources are routed to a single central point to be processed and merged together.

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Decentralized fusion architecture

Structure where data processing and partial fusion are performed locally before final aggregation, reducing bandwidth requirements.

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Feature-level fusion

Combination of feature vectors extracted from different sources before applying the final classification or regression algorithm.

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Decision-level fusion

Integration of individual predictions from multiple models trained on distinct sources to produce a final consensus decision.

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Multi-sensor anomaly detection

Identification of abnormal behaviors by jointly analyzing data from multiple sensors to increase sensitivity and reduce false positives.

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Missing data imputation

Statistical and AI techniques to estimate and replace missing values in multi-source time series while preserving correlations.

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Bayesian probabilistic fusion

Method using Bayes' theorem to combine probabilities from different sources while accounting for their respective uncertainties.

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Multimodal neural networks

Deep learning architectures specifically designed to process and simultaneously merge different types of data (images, text, time series).

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Inter-source calibration

Process of adjusting measurements from different sensors to eliminate systematic biases and ensure measurement scale consistency.

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