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Documents dont l'auteur est "Asgharian, Masoud"

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Nombre de documents: 8

C

Cacciola, M., Frangioni, A., Asgharian, M., Ghaffari, A., & Nia, V. P. (février 2023). On the convergence of stochastic gradient descent in low-precision number formats [Communication écrite]. 12th International Conference on Pattern Recognition Applications and Methods (ICPRAM 2023), Lisbon, Portugal. Disponible

E

Edalati, A., Ghaffari, A., Ghazvini Nejad, M., Hou, L., Chen, B., Asgharian, M., & Partovi Nia, V. (février 2025). OAC: Output-adaptive Calibration for Accurate Post-training Quantization [Communication écrite]. 39th Annual AAAI Conference on Artificial Intelligence, Philadelphia, PA, USA. Publié dans Proceedings of the AAAI Conference on Artificial Intelligence, 39(16). Lien externe

G

Ghaffari, A., Younesian, S., Chen, B., Partovi Nia, V., & Asgharian, M. (février 2025). Rethinking Post-Training Quantization: Introducing a Statistical Pre-Calibration Approach [Communication écrite]. 14th International Conference on Pattern Recognition Applications and Methods (ICPRAM 2025), Porto, Portugal. Lien externe

Ghaffari, A., Asgharian, M., & Savaria, Y. (2024). Statistical hardware design with multi-model active learning. IEEE Transactions on Computer-Aided Design of Integrated Circuits and Systems, 43(2), 11 pages. Lien externe

Ghaffari, A., Yu, J., Nejad, M., Asgharian, M., Chen, B., & Partovi Nia, V. (février 2024). Mitigating Outlier Activations in Low-Precision Fine-Tuning of Language Models [Communication écrite]. 13th International Conference on Pattern Recognition Applications and Methods (ICPRAM 2024), Rome, Italy. Lien externe

J

Jafarzadeh Asl, H., Ghazvini Nejad, M., Edraki, A., Asgharian, M., & Partovi Nia, V. (août 2025). Tiny Noise-Robust Voice Activity Detector for Voice Assistants [Communication écrite]. 35th International Workshop on Machine Learning for Signal Processing (MLSP 2025), Istanbul, Turkiye (6 pages). Lien externe

L

Li, X., Parazeres, M., Oberman, A. M., Ghaffari, A., Asgharian, M., & Nia, V. P. (2023). EuclidNets: An Alternative Operation for Efficient Inference of Deep Learning Models. SN Computer Science, 4(5), -. Lien externe

P

Partovi Nia, V., Xin-lin, L. I., Asgharian, M., & Hu, S. (2022). A causal direction test for heterogeneous populations. Machine learning with applications, 7, 100235 (8 pages). Disponible

Liste produite: Tue Apr 14 03:42:41 2026 EDT.