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4th EuroMLSys@EuroSys 2024: Athens, Greece
- Proceedings of the 4th Workshop on Machine Learning and Systems, EuroMLSys 2024, Athens, Greece, 22 April 2024. ACM 2024
- Sandra Deepthy Siby, Sina Abdollahi
, Mohammad Maheri
, Marios Kogias
, Hamed Haddadi
:
GuaranTEE: Towards Attestable and Private ML with CCA. 1-9 - Taiyi Wang
, Eiko Yoneki
:
IA2: Leveraging Instance-Aware Index Advisor with Reinforcement Learning for Diverse Workloads. 10-17 - Houssem Eddine Souid
, Lucas Ody
, Youssef Achenchabe
, Valentin Lemaire
, Gianmarco Aversano
, Sabri Skhiri
:
Temporal Graph Generative Models: An empirical study. 18-27 - Hamid Ghasemirahni
, Alireza Farshin
, Mariano Scazzariello
, Marco Chiesa
, Dejan Kostic
:
Deploying Stateful Network Functions Efficiently using Large Language Models. 28-38 - Konstantinos Papaioannou
, Thaleia Dimitra Doudali
:
The Importance of Workload Choice in Evaluating LLM Inference Systems. 39-46 - Connor Espenshade
, Rachel Peng
, Eumin Hong
, Max Calman
, Yue Zhu
, Pritish Parida
, Eun Kyung Lee
, Martha A. Kim
:
Characterizing Training Performance and Energy for Foundation Models and Image Classifiers on Multi-Instance GPUs. 47-55 - Neil Hurley
, Erika Duriakova
, James Geraci
, Diarmuid O'Reilly-Morgan
, Elias Z. Tragos
, Barry Smyth
, Aonghus Lawlor
:
ALS Algorithm for Robust and Communication-Efficient Federated Learning. 56-64 - Rahma Nouaji
, Stella Bitchebe
, Oana Balmau
:
SpeedyLoader: Efficient Pipelining of Data Preprocessing and Machine Learning Training. 65-72 - Yushan Huang
, Josh Millar
, Yuxuan Long
, Yuchen Zhao
, Hamed Haddadi
:
Towards Low-Energy Adaptive Personalization for Resource-Constrained Devices. 73-80 - Ties Robroek
, Ehsan Yousefzadeh-Asl-Miandoab
, Pinar Tözün
:
An Analysis of Collocation on GPUs for Deep Learning Training. 81-90 - Dejan Grubisic
, Volker Seeker
, Gabriel Synnaeve
, Hugh Leather
, John M. Mellor-Crummey
, Chris Cummins
:
Priority Sampling of Large Language Models for Compilers. 91-97 - Yongjun He
, Yao Lu
, Gustavo Alonso
:
Deferred Continuous Batching in Resource-Efficient Large Language Model Serving. 98-106 - Foteini Strati
, Paul Elvinger
, Tolga Kerimoglu
, Ana Klimovic
:
ML Training with Cloud GPU Shortages: Is Cross-Region the Answer? 107-116 - Keshav Santhanam
, Deepti Raghavan
, Muhammad Shahir Rahman
, Thejas Venkatesh
, Neha Kunjal
, Pratiksha Thaker
, Philip Alexander Levis, Matei Zaharia
:
ALTO: An Efficient Network Orchestrator for Compound AI Systems. 117-125 - Zeling Zhang
, Dongqi Cai
, Yiran Zhang
, Mengwei Xu
, Shangguang Wang
, Ao Zhou
:
FedRDMA: Communication-Efficient Cross-Silo Federated LLM via Chunked RDMA Transmission. 126-133 - Petru Neague
, Marcel Gregoriadis
, Johan Pouwelse
:
De-DSI: Decentralised Differentiable Search Index. 134-143 - Pol G. Recasens
, Yue Zhu
, Chen Wang
, Eun Kyung Lee
, Olivier Tardieu
, Alaa Youssef
, Jordi Torres
, Josep Lluis Berral
:
Towards Pareto Optimal Throughput in Small Language Model Serving. 144-152 - Georgia Christofidi
, Thaleia Dimitra Doudali
:
Do Predictors for Resource Overcommitment Even Predict? 153-160 - Diarmuid O'Reilly-Morgan
, Elias Z. Tragos
, James Geraci
, Qinqin Wang
, Neil Hurley
, Barry Smyth
, Aonghus Lawlor
:
A Hybrid Decentralised Learning Topology for Recommendations with Improved Privacy. 161-168 - Connor Imes
, Andrew Rittenbach
, Peng Xie
, Dong-In Kang
, John Paul Walters
, Stephen P. Crago
:
Evaluating Deep Learning Recommendation Model Training Scalability with the Dynamic Opera Network. 169-175 - Bradley Aldous
, Ahmed M. Abdelmoniem
:
Comparative Profiling: Insights Into Latent Diffusion Model Training. 176-183 - Kamran Razavi
, Saeid Ghafouri
, Max Mühlhäuser
, Pooyan Jamshidi
, Lin Wang
:
Sponge: Inference Serving with Dynamic SLOs Using In-Place Vertical Scaling. 184-191 - Ahmed Menshawy
, Muhammad Zeeshan Nawaz
, Mahmoud Fahmy
:
Navigating Challenges and Technical Debt in Large Language Models Deployment. 192-199 - Kouider Chadli
, Goetz Botterweck
, Takfarinas Saber
:
The Environmental Cost of Engineering Machine Learning-Enabled Systems: A Mapping Study. 200-207 - Abir Chebbi
, Guido Kniesel
, Nabil Abdennadher
, Giovanna Dimarzo
:
Enhancing Named Entity Recognition for Agricultural Commodity Monitoring with Large Language Models. 208-213
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