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Modeller
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Kaynaklar
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YZ Sözlüğü

Yapay Zekanın tam sözlüğü

162
kategoriler
2.032
alt kategoriler
23.060
terimler
📖
terimler

Automated Data Augmentation

Automatic generation of image transformations (rotations, zooms, contrast modifications) to enrich the dataset and improve model robustness.

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terimler

Automatic Feature Engineering

Automated creation of relevant visual features from raw images without manual intervention to optimize learning.

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terimler

Automatic Model Selection

Algorithm that automatically evaluates and selects the best vision model among several candidate architectures based on performance metrics.

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terimler

AutoML Image Classification

Automated system that builds, trains, and deploys models to automatically categorize images into predefined classes.

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terimler

AutoML Object Detection

AutoML solution that automatically generates models capable of locating and identifying multiple objects in the same image with bounding boxes.

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terimler

AutoML Semantic Segmentation

Automation of creating models that assign a class to each pixel of an image for detailed scene understanding.

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terimler

AutoML Instance Segmentation

Automatic generation of models that distinguish and individually segment each object instance in an image at the pixel level.

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terimler

Auto-annotation of images

Process using pre-trained models to automatically generate labels and annotations on unlabeled images.

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terimler

Vision Transformers (ViT) AutoML

Automation of the architecture and training of transformer-based models specifically adapted for computer vision tasks.

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terimler

Automated Model Compression

AutoML techniques (pruning, quantization) that automatically reduce the size of vision models to optimize their deployment.

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Edge Deployment AutoML

Automation of the optimization and deployment of vision models on resource-constrained devices (mobile, IoT).

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terimler

Zero-Shot Learning AutoML

AutoML system capable of recognizing object classes never seen during training using semantic descriptions.

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terimler

Few-Shot Learning AutoML

Automation of learning vision models with very few examples per class using meta-learning techniques.

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terimler

Automated Active Learning

System that intelligently selects the most informative images to be manually annotated to maximize learning efficiency.

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terimler

AutoML Pipeline for Computer Vision

Complete automated pipeline of preprocessing, training, validation, and deployment steps for computer vision projects.

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terimler

Automated Ensemble Learning

Automatic combination of multiple vision models to improve predictive performance through voting or stacking techniques.

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