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24 mars - 24 mars 2026

Classement: B (CORE2023)In-Person

Data Compression Conference

Mis à jour le : 20 days ago
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Snowbird, UT, USANo publisher

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Aperçu

The Data Compression Conference (DCC) is an international forum for current work on data compression and related applications. The conference addresses: Compression of specific types of data (text, images, video, etc.) Compression in networking, communications, and storage Applications to bioinformatics Applications to mobile computing Applications to information retrieval Computational issues for compression related applications Inpainting-based compression, perceptual coding Compressed data structures Quantization theory and vector quantization (VQ) Joint source-channel coding Compression-related standards Both theoretical and experimental work are of interest.

Appel à communications

The Data Compression Conference (DCC) is an international forum for current work on data compression and related applications. The conference addresses: Compression of specific types of data (text, images, video, etc.) Compression in networking, communications, and storage Applications to bioinformatics Applications to mobile computing Applications to information retrieval Computational issues for compression related applications Inpainting-based compression, perceptual coding Compressed data structures Quantization theory and vector quantization (VQ) Joint source-channel coding Compression-related standards Both theoretical and experimental work are of interest.

Dates importantes

Dates de la conférence

Conference Date

24 mars 2026

Précédemment :
  • 24 mars 2026 - 27 mars 2026

Soumission

Paper submission

NOUVEAU

11 octobre 2025

Notification

Notification date

NOUVEAU

23 novembre 2025

Version finale

Camera-ready

NOUVEAU

10 décembre 2025

Inscription

Author-Registration Deadline

10 décembre 2025

Classement source

Source: CORE2023

Classement: B

Domaine de recherche: Data management and data science

Carte

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