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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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Probabilistic Graphical Models

Structured representations of probability distributions to model complex dependencies between variables.

12 하위 카테고리
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Neuro-Symbolic Systems

Hybridization combining the strengths of neural learning and symbolic reasoning for more robust and interpretable AI.

12 하위 카테고리
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Advanced Hyperparameter Optimization

Sophisticated methods (Bayesian Optimization, Hyperband) to automate the search for the best model hyperparameters.

12 하위 카테고리
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Model Calibration

Techniques to align predicted probabilities with actual event frequencies for better uncertainty assessment.

12 하위 카테고리
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Graph Processing

Specialized algorithms for analysis, classification and prediction on graph-shaped data structures.

15 하위 카테고리
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Causal Inference and AI

Field aimed at establishing cause-and-effect relationships from observational and experimental data to improve decision-making.

12 하위 카테고리
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Neuromorphic Computing

Computer architecture inspired by the biological brain that uses electronic circuits to mimic neural and synaptic structures.

15 하위 카테고리
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Continual Learning and Lifelong Learning

Ability of AI systems to continuously learn new tasks without forgetting previously acquired knowledge.

12 하위 카테고리
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Data Synthesis and Advanced Data Augmentation

Artificial training data generation techniques to improve model robustness and compensate for the lack of real data.

12 하위 카테고리
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Multimodal Learning

Field dealing simultaneously with multiple types of data (text, image, audio, video) to create unified and rich representations.

12 하위 카테고리
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Combinatorial Optimization and AI

Application of machine learning techniques to solve complex discrete and combinatorial optimization problems.

12 하위 카테고리
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Inverse Reinforcement Learning

A method for inferring reward functions from expert behavior to learn optimal policies.

15 하위 카테고리
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Explainable and Interpretable AI

Set of techniques aimed at making AI model decisions understandable and transparent for humans.

12 하위 카테고리
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Hierarchical Reinforcement Learning

Approach that decomposes complex problems into simpler subtasks organized hierarchically to facilitate learning.

15 하위 카테고리
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Bandit Reinforcement Learning

Simplified case of reinforcement learning where the agent chooses among actions with uncertain rewards.

12 하위 카테고리
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AI and Autonomous Robotics

Integration of artificial intelligence into robotic systems to enable autonomy and adaptation to complex environments.

15 하위 카테고리
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Offline Reinforcement Learning

Learning paradigm from a fixed dataset without interaction with the environment during training.

12 하위 카테고리
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Zero-Shot and Few-Shot Learning Architecture

Model's ability to generalize to new tasks or classes with little or no training examples.

15 하위 카테고리
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Multimodal Contrastive Learning

Self-supervised learning technique that learns representations by comparing similar and different samples.

15 하위 카테고리
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IA pour Découverte Scientifique

Application de l'IA pour accélérer la découverte scientifique dans des domaines comme la biologie, la chimie et la physique.

12 하위 카테고리
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Model-Based Reinforcement Learning

Approach that learns a model of the environment to plan and make decisions more efficiently.

12 하위 카테고리
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Program Synthesis and Neural Architecture Search

Field using AI to automatically generate programs or optimize neural network architectures.

12 하위 카테고리
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AI for Complex Systems

Application of AI to model, analyze, and predict the behavior of complex and dynamic systems.

12 하위 카테고리
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Distributional Reinforcement Learning

Extension of reinforcement learning modeling the complete distribution of returns rather than only their expectation.

12 하위 카테고리
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Ethical AI and Algorithmic Bias

Study of ethical aspects of AI and development of methods to detect and correct biases in algorithms.

12 하위 카테고리
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Multi-Objective Reinforcement Learning

Extension of reinforcement learning that simultaneously optimizes multiple often conflicting objectives.

15 하위 카테고리
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AI and Game Theory

Application of game theory concepts to artificial intelligence to model strategic interactions between agents.

15 하위 카테고리
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Decision Trees and Random Forests

Learning methods based on tree structures for classification and regression, with Random Forests as a robust ensemble technique.

12 하위 카테고리
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Réseaux de Neurones Attentionnels

Mécanismes permettant aux modèles de se concentrer sélectivement sur différentes parties de l'entrée, révolutionnant le traitement des séquences et le NLP.

12 하위 카테고리
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Apprentissage Automatique Fédéré

Approche décentralisée où les modèles s'entraînent sur des données locales sans les centraliser, préservant la vie privée des utilisateurs.

15 하위 카테고리
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Méthodes d'Ensemble

Techniques combinant plusieurs modèles de base pour améliorer les prédictions, incluant bagging, boosting et stacking.

15 하위 카테고리
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Clustering et Segmentation non supervisée

Algorithmes regroupant automatiquement les données similaires en clusters sans étiquettes préexistantes pour découvrir des structures cachées.

15 하위 카테고리
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Analyse de Séries Temporelles

Étude et prédiction de données séquentielles ordonnées dans le temps, utilisant des modèles ARIMA, LSTM et Prophet pour identifier tendances et saisonnalités.

15 하위 카테고리
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Réseaux de Neurones à Mémoire

Architectures intégrant des mémoires externes pour stocker et récupérer des informations, permettant des raisonnements complexes sur de longues séquences.

12 하위 카테고리
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Apprentissage Méta

Paradigme où les modèles apprennent à apprendre, s'adaptant rapidement à de nouvelles tâches avec peu d'exemples d'entraînement.

15 하위 카테고리
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Systèmes Experts et Raisonnement Basé sur les Cas

Approches de l'IA classique utilisant des règles explicites ou des cas similaires pour résoudre des problèmes dans des domaines spécifiques.

12 하위 카테고리
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Traitement du Signal pour l'IA

Techniques de prétraitement et d'extraction de caractéristiques à partir de signaux continus (audio, vidéo, capteurs) pour les alimenter aux modèles d'IA.

12 하위 카테고리
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Réseaux de Neurones Génératifs Adversariaux

Architecture composée de deux réseaux en compétition (générateur et discriminateur) pour générer des données synthétiques réalistes.

12 하위 카테고리
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AI-Driven Combinatorial Optimization

Application of AI techniques to solve NP-hard optimization problems such as the traveling salesman problem or scheduling.

15 하위 카테고리
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Quantum Machine Learning

Intersection of quantum computing and machine learning, exploiting quantum phenomena to accelerate certain algorithms.

15 하위 카테고리
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Spatial and Geospatial Data Processing

Analysis and modeling of data with geographic components, using GIS and convolutional networks on satellite imagery.

12 하위 카테고리
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Analysis and Interpretability of Models

Techniques aimed at understanding and explaining AI model decisions, essential for trust and regulation.

15 하위 카테고리
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Capsule Neural Networks

Alternative to CNNs that preserves hierarchical spatial relationships between features for better object recognition.

12 하위 카테고리
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Bayesian Networks and Probabilistic Inference

Graphical models representing probabilistic dependencies between variables for reasoning under uncertainty.

15 하위 카테고리
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AI for Cybersecurity

Application of AI to intrusion detection, malware analysis and automated response to security threats.

15 하위 카테고리
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Variational Autoencoder Neural Networks

Generative models learning probabilistic latent representations to generate new data and perform variational inference.

15 하위 카테고리
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Transformers and Attention Mechanisms

Revolutionary architecture based on attention mechanisms that allows weighting the importance of different parts of data, revolutionizing NLP and now applied to many domains.

12 하위 카테고리
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Apprentissage Non Supervisé Profond

Ensemble de techniques permettant d'extraire automatiquement des représentations hiérarchiques à partir de données non étiquetées, incluant autoencoders et clustering profond.

15 하위 카테고리
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Time Series and Predictions

Specialized techniques for analyzing and predicting temporal sequential data, including ARIMA models, LSTM, Prophet, and hybrid approaches.

12 하위 카테고리
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MLOps and ML Engineering

Practices and tools for deploying, maintaining, and monitoring machine learning models in production, including CI/CD, versioning, and model monitoring.

14 하위 카테고리
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