dlcp2023:proceedings
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dlcp2023:proceedings [11/10/2023 10:31] – admin | dlcp2023:proceedings [01/12/2023 09:45] – [Current status] admin | ||
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After blind peer review, all accepted papers will be published in the conference proceedings. | After blind peer review, all accepted papers will be published in the conference proceedings. | ||
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Notification of paper acceptance — < | Notification of paper acceptance — < | ||
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More details can be found at [[http:// | More details can be found at [[http:// | ||
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+ | ===== Current status ===== | ||
+ | {{: | ||
+ | * Авторам разосланы гранки. Окончательная версия должна поступить в редакцию не позднее **4 декабря 2023г.** | ||
+ | * В конце ноября будут разосланы верстки для окончательной правки. | ||
+ | * DOI статей должны быть известны в начале декабря. | ||
+ | * Желающие могут получить письмо из издательства о принятии статьи в печать. Для этого надо написать мне запрос по электроной почте [[kryukov@theory.sinp.msu.ru]]. | ||
+ | * Тексты статей на сайте издательства будут доступны в январе 2024г. | ||
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<color red>// | <color red>// | ||
- | ==== Plenary Reports ==== | + | ===== Plenary Reports |
| **M.I.Petrovskiy**. DEEP LEARNING METHODS FOR THE TASKS OF CREATING " | | **M.I.Petrovskiy**. DEEP LEARNING METHODS FOR THE TASKS OF CREATING " | ||
- | ==== Track 1. Machine Learning in Fundamental Physics ==== | + | ===== Track 1. Machine Learning in Fundamental Physics |
| **Ju.Dubenskaya**. Generating Synthetic Images of Gamma-Ray Events for Imaging Atmospheric Cherenkov Telescopes Using Conditional Generative Adversarial Networks || | | **Ju.Dubenskaya**. Generating Synthetic Images of Gamma-Ray Events for Imaging Atmospheric Cherenkov Telescopes Using Conditional Generative Adversarial Networks || | ||
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| **A.D.Zaborenko**. Novelty Detection Neural Networks for Model-Independent New Physics Search | | **A.D.Zaborenko**. Novelty Detection Neural Networks for Model-Independent New Physics Search | ||
- | ==== Track 2. Machine Learning in Natural Sciences ==== | + | ===== Track 2. Machine Learning in Natural Sciences |
| **M.Borisov**. Estimating cloud base height from all-sky imagery using artificial neural networks | | **M.Borisov**. Estimating cloud base height from all-sky imagery using artificial neural networks | ||
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| **A.V. Vorobev**. Machine learning for diagnostics of space weather effects in the Arctic region | | **A.V. Vorobev**. Machine learning for diagnostics of space weather effects in the Arctic region | ||
- | ==== Track 3. Modern Machine Learning Methods ==== | + | ===== Track 3. Modern Machine Learning Methods |
| **N.Y.Bykov** / Methods for a Partial Differential Equation Discovery: Application to Physical and Engineering Problems | | **N.Y.Bykov** / Methods for a Partial Differential Equation Discovery: Application to Physical and Engineering Problems |
dlcp2023/proceedings.txt · Last modified: 18/01/2024 16:16 by admin