Affiliation:
1. Nvidia Inc, Santa Clara, CA
2. Northeastern University, Boston, MA
Abstract
Motivated by the growing complexity and heterogeneity of modern data centers, and the prevalence of commodity component failures, this article studies the
failure-aware placement problem
of placing tasks of a parallel job on machines in the data center with the goal of increasing availability. We consider two models of failures: adversarial and probabilistic. In the adversarial model, each node has a weight (higher weight implying higher reliability) and the adversary can remove any subset of nodes of total weight at most a given bound
W
and our goal is to find a placement that incurs the least disruption against such an adversary. In the probabilistic model, each node has a probability of failure and we need to find a placement that maximizes the probability that at least
K
out of
N
tasks survive at any time.
For adversarial failures, we first show that (i) the problems are in Σ
2
, the second level of the polynomial hierarchy; (ii) a variant of the problem that we call R
obust
F
ap
(for Robust Failure-Aware Placement) is co-NP-hard; and (iii) an all-or-nothing version of R
obust
F
ap
is Σ
2
-complete. We then give a polynomial-time approximation scheme (PTAS) for R
obust
F
ap
, a key ingredient of which is a solution that we design for a fractional version of R
obust
F
ap
. We then study H
ier
R
obust
F
ap
, which is the fractional R
obust
F
ap
problem over a hierarchical network, in which failures can occur at any subset of nodes in the hierarchy, and a failure at a node can adversely impact all of its descendants in the hierarchy. To solve H
ier
R
obust
F
ap
, we introduce a notion of
hierarchical max-min fairness
and a novel
Generalized Spreading
algorithm, which is simultaneously optimal for every upper bound
W
on the total weight of nodes that an adversary can fail. These generalize the classical notion of
max-min fairness
to work with nodes of differing capacities, differing reliability weights, and hierarchical structures. Using randomized rounding, we extend this to give an algorithm for integral H
ier
R
obust
F
ap
.
For the probabilistic version, we first give an algorithm that achieves an additive ϵ approximation in the failure probability for the single level version, called P
rob
F
ap
, while giving up a (1 + ϵ) multiplicative factor in the number of failures. We then extend the result to the hierarchical version, H
ier
P
rob
F
ap
, achieving an ϵ additive approximation in failure probability while giving up an (L + ϵ) multiplicative factor in the number of failures, where
L
is the number of levels in the hierarchy.
Publisher
Association for Computing Machinery (ACM)
Subject
Computational Theory and Mathematics,Computer Science Applications,Hardware and Architecture,Modelling and Simulation,Software
Reference48 articles.
1. Ceph storage architecture. Retrieved January 17 2018 from http://docs.ceph.com/docs/giant/architecture/. Ceph storage architecture. Retrieved January 17 2018 from http://docs.ceph.com/docs/giant/architecture/.
2. S. Agrawal Y. Ding A. Saberi and Y. Ye. 2012. Price of correlations in stochastic optimization. Operations Research 60 (February 2012) 243--248. 10.1287/opre.1110.1011 S. Agrawal Y. Ding A. Saberi and Y. Ye. 2012. Price of correlations in stochastic optimization. Operations Research 60 (February 2012) 243--248. 10.1287/opre.1110.1011
3. A scalable, commodity data center network architecture
4. The Datacenter as a Computer: An Introduction to the Design of Warehouse-Scale Machines
5. The Price of Robustness
Cited by
3 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献