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education [2019/05/27 12:08]
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education [2024/05/16 16:21]
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-  * [[education/​ca_2018|Concurrent Algorithms]] (theory & practice) +  * [[education/​ca_2023|Concurrent Algorithms]] (theory & practice) 
-  * [[education/​da|Distributed Algorithms]] (theory & practice)+  * [[education/​da_2023|Distributed Algorithms]] (theory & practice)
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 The lab taught in the past the following courses: The lab taught in the past the following courses:
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 DCL offers master projects in the following areas: DCL offers master projects in the following areas:
  
-  * **Probabilistic Byzantine Resilience**:  ​Development of high-performance,​ Byzantine-resilient distributed systems with provable probabilistic guarantees. Two options are currently available, both building on previous work on probabilistic Byzantine broadcast: (i) a theoretical ​project, focused the correctness ​of probabilistic Byzantine-tolerant distributed algorithms; (ii) a practical project, focused ​on numerically evaluating of our theoretical results. Please contact [[matteo.monti@epfl.ch|Matteo Monti]] to get more information.+  * **[[cryptocurrencies|Cryptocurrencies]]**: We have several ​project ​openings as part of our ongoing research ​on designing new cryptocurrency systems. Please contact [[rachid.guerraoui@epfl.ch|Prof. Rachid Guerraoui]].
  
 +  * **Tackling data heterogeneity in Byzantine-robust ML**: Context: Distributed ML is a very effective paradigm to learn collaboratively when all users correctly follow the protocol. However, some users may behave adversarially and measures should be taken to protect against such Byzantine behavior [ [[https://​papers.nips.cc/​paper/​2017/​hash/​f4b9ec30ad9f68f89b29639786cb62ef-Abstract.html|1]],​ [[https://​proceedings.mlr.press/​v162/​farhadkhani22a.html|2]] ]. In real-world settings, users have different datasets (i.e. non-iid), which makes defending against Byzantine behavior challenging,​ as was shown recently in  [ [[https://​proceedings.neurips.cc/​paper/​2021/​hash/​d2cd33e9c0236a8c2d8bd3fa91ad3acf-Abstract.html|3]],​ [[https://​openreview.net/​forum?​id=jXKKDEi5vJt|4]] ]. Some defenses were proposed to tackle data heterogeneity,​ but their performance is suboptimal on simple learning tasks. Goal: Develop defenses with special emphasis on empirical performance and efficiency in the heterogeneous setting. Contact [[https://​people.epfl.ch/​youssef.allouah?​lang=en|Youssef Allouah]] for more information.
  
-  * **Distributed computing using RDMA and/or NVRAM**: contact ​[[https://​people.epfl.ch/​igor.zablotchi|Igor Zablotchi]] for more information.+  * **Benchmark to certify Byzantine-robustness in ML**: Context: Multiple attacks have been proposed to instantiate a Byzantine adversary in distributed ML [ [[https://​proceedings.neurips.cc/​paper/​2019/​hash/​ec1c59141046cd1866bbbcdfb6ae31d4-Abstract.html|1]],​ [[https://​proceedings.mlr.press/​v115/​xie20a.html|2]] ]. While these attacks have been successful against known defenses, it remains unknown whether stronger attacks exist. As such, a strong benchmark is needed, to go beyond the cat-and-mouse game illustrating the existing research. Ideally, similar to other ML subfields such as privacy-preserving ML or adversarial examples, the desired benchmark should guarantee that no stronger attack exists. Goal: Develop a strong benchmark for attacks in Byzantine ML. Contact ​[[https://​people.epfl.ch/​youssef.allouah?​lang=en|Youssef Allouah]] for more information.
  
-  * **[[Distributed ML|Distributed Machine Learning]]**:​ contact [[http://​people.epfl.ch/​georgios.damaskinos|Georgios Damaskinos]] for more information. 
  
-  * **Robust Distributed Machine Learning**: With the proliferation of big datasets and models, Machine Learning is becoming distributed. Following the standard parameter server model, the learning phase is taken by two categories of machines: parameter servers and workers. Any of these machines could behave arbitrarily (i.e., said Byzantine) affecting the model convergence in the learning phase. Our goal in this project is to build a system that is robust against Byzantine behavior of both parameter server and workers. Our first prototype, AggregaThor(https://​www.sysml.cc/​doc/​2019/​54.pdf),​ describes the first scalable robust Machine Learning framework. It fixed a severe vulnerability in TensorFlow and it showed how to make TensorFlow even faster, while robust. Contact [[https://​people.epfl.ch/​arsany.guirguis|Arsany Guirguis]] or [[https://​people.epfl.ch/​sebastien.rouault|Sébastien Rouault]] for more information. 
  
-  * **Stochastic gradient: (artificial) reduction of the ratio variance/​norm for adversarial distributed SGD**: +  * **Evaluating Distributed Systems**: By nature, distributed systems are hard to evaluate. Deploying real world systems and orchestrating large scale experiments 
-One computationally-efficient ​and non-intrusive line of defense ​for adversarial ​distributed ​SGD (e.g. 1 parameter server distributing the gradient estimation to severalpossibly adversarial workersrelies on the honest workers to send back gradient estimations with sufficiently low variance; assumption which is sometimes hard to satisfy in practice+require dedicated software ​and expensive infrastructure. As a result, many widespread distributed systems are not properly 
-One solution could be to (drastically) increase the batch-size at the workersbut doing so may as well defeat the very purpose of distributing the computation.+evaluated, tested on uncomparable or irreproductible setups. Projects ​of this category aim to build efficient and scalable 
 +evaluation tools for distributed ​systemsDiablo-related projects involve building a test harness for evaluating blockchains 
 +(skills required: network programmingblockchain, Go, C++). Another set of projects focus on creating large networks 
 +simulators able to emulate hundreds of powerful machines from a single physical server ​(skills required: system 
 +programmingvirtualization,​ C, C++). Contact Gauthier Voron <​gauthier.voron@epfl.ch>​ for more information.
  
-In this projectwe propose two approaches that you can choose ​to explore (also you may propose a different approach) ​to (artificially) reduce ​the ratio variance/​norm ​of the stochastic gradientswhile keeping ​the benefits of the distribution. +  * **Robust mean estimation**: ​In recent yearsmany algorithms have been proposed ​to perform robust mean estimation, which has been shown to be equivalent to robust gradient-based machine learning. A new concept has been proposed to define ​the performance ​of a robust mean estimatorcalled ​the [[https://​arxiv.org/​abs/​2008.00742|averaging constant]] (along with the Byzantine resilience)This research project consists of computing the theoretical averaging constant of different ​proposed ​robust mean estimatorsand to study their empirical performances on randomly generated vectorsContact [[https://​people.epfl.ch/​sadegh.farhadkhani?​lang=en|Sadegh Farhadkhani]] for more information.
-The first proposed ​approachspeculative,​ boils down to "​intelligent"​ coordinate selection. +
-The second makes use of some kind of "​momentum"​ at the workers.+
  
-[1] "​Machine Learning with Adversaries:​ Byzantine Tolerant Gradient Descent"​ (https://​papers.nips.cc/​paper/​6617-machine-learning-with-adversaries-byzantine-tolerant-gradient-descent) 
-[2] "​Federated Learning: Strategies for Improving Communication Efficiency"​ (https://​arxiv.org/​abs/​1610.05492) 
  
-  * **Consistency in global-scale storage systems**: We offer several projects in the context of storage systems, ranging from implementation of social applications (similar to [[http://​retwis.redis.io/​|Retwis]],​ or [[https://github.com/​share/​sharejs|ShareJS]]) to recommender systems, static content storage services (à la [[https://​www.usenix.org/legacy/event/​osdi10/​tech/​full_papers/​Beaver.pdf|Facebook'​s Haystack]])or experimenting ​with well-known cloud serving benchmarks (such as [[https://​github.com/​brianfrankcooper/​YCSB|YCSB]]);​ please contact [[http://​people.epfl.ch/​dragos-adrian.seredinschi|Adrian Seredinschi]] or [[https://​people.epfl.ch/​karolos.antoniadis|Karolos Antoniadis]]  for further ​information.+  * **Accelerate Byzantine collaborative learning**: [[https://arxiv.org/abs/2008.00742|Our recent NeurIPS paper]] proposed algorithms for collaborative machine learning in the presence of Byzantine nodeswhich have been proved to be near optimal ​with respect to optimality at convergence. However, these algorithms require all-to-all communication at every round, which is suboptimalThis research consists of designing a practical solution to Byzantine collaborative learning, based on the idea of a random communication network at each round, with both theoretical guarantees and practical implementationContact ​[[https://​people.epfl.ch/​sadegh.farhadkhani?​lang=en|Sadegh Farhadkhani]] for more information.
  
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 +  * **Probabilistic Byzantine Resilience**: ​ Development of high-performance,​ Byzantine-resilient distributed systems with provable probabilistic guarantees. Two options are currently available, both building on previous work on probabilistic Byzantine broadcast: (i) a theoretical project, focused the correctness of probabilistic Byzantine-tolerant distributed algorithms; (ii) a practical project, focused on numerically evaluating of our theoretical results. Please contact [[matteo.monti@epfl.ch|Matteo Monti]] to get more information.
 +
 +  * **Microsecond-scale dependable systems.** Modern networking technologies such as RDMA (Remote Direct Memory Access) allow for sub-microsecond communication latency. Combined with emerging data center architectures,​ such as disaggregated resources pools, they open the door to novel blazing-fast and resource-efficient systems. Our research focuses on designing such microsecond-scale systems that can also tolerate faults. Our vision is that tolerating network asynchrony as well as faults (crash and/or Byzantine) is a must, but that it shouldn'​t affect the overall performance of a system. We achieve this goal by devising and implementing novel algorithms tailored for new hardware and revisiting theoretical models to better reflect modern data centers. Previous work encompasses microsecond-scale (BFT) State Machine Replication,​ Group Membership Services and Key-Value Stores (OSDI'​20,​ ATC'22 and ASPLOS'​23). Overall, if you are interested in making data centers faster and safer, contact [[https://​people.epfl.ch/​athanasios.xygkis|Athanasios Xygkis]] and [[https://​people.epfl.ch/​antoine.murat|Antoine Murat]] for more information.
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 ===== Semester Projects ===== ===== Semester Projects =====
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 If the subject of a Master Project interests you as a Semester Project, please contact the supervisor of the Master Project to see if it can be considered for a Semester Project. If the subject of a Master Project interests you as a Semester Project, please contact the supervisor of the Master Project to see if it can be considered for a Semester Project.
  
-EPFL I&C duration, credits and workload information are available [[https://​www.epfl.ch/​schools/​ic/​education/​|here]]Don't hesitate to contact the project supervisor if you want to complete your Semester Project outside the regular ​semester ​period.+EPFL I&C duration, credits and workload information are available ​on [[https://​www.epfl.ch/​schools/​ic/​education/​master/​semester-project-msc/|https://www.epfl.ch/​schools/​ic/​education/​master/​semester-project-msc/​]] 
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