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Minimizing Churn in Distributed Systems P. Brighten Godfrey, Scott Shenker, and Ion Stoica UC Berkeley SIGCOMM’06
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2 Road Map Introduction Simulation Basic Properties Analysis Applications Discussion Conclusion
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3 Introduction Churn Change in the set of participating nodes due to joins, graceful leaves, and failures A quantitative guide to the churn form selection strategies Analytically characterize the performance of strategies Compare the performance of strategies with different real traces
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4 Road Map Introduction Simulation Basic Properties Analysis Applications Discussion Conclusion
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5 Churn Simulations Model System Model Node status Up (in use, or available), down Nodes in use Definition of churn Example Two nodes fail and replaced by others
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6 Selection Strategies Predictive fixed strategies Fixed decent Select randomly from 50% with more up time Fixed most available The most time up Fixed longest lived Greatest average session time Agnostic fixed strategies Fixed random Predictive replacement strategies Max Expectation Greatest expected remaining uptime Longest uptime Longest current uptime Optimal Agnostic replacement strategies Random Replacement (RR) Passive Preference list Fail and then replace Active preference list
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7 Traces Synthetic traces PDF a = 1.5 and b fixed so that mean is 30 minutes
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8 Simulation Setup Event-based simulator Selection algorithm to react immediately after each change Chord protocol simulator No loss, except the node fail when then datagram is in flight At least 10 trails Sample 1000 random nodes 95% confidence intervals
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9 Basic Properties Synthetic Pareto lifetimes Fixed k = 50 Fixed strategies are the same The same mean session time
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10 Benefit of Replacement Strategies 1.3~5 times improvement The dynamically selecting nodes for long- running distributed application would be worthwhile
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11 Benefit of Replacement Strategies The best fixed strategies match the performance of the best replacement one The trace are shorter
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12 Agnostic Strategies RR is worse for small k, but is with in a factor of 2 of Max Expectation RR is 1.2~3 times better than Passive and 2.5~10 times better than Active PL
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13 Road Map Introduction Simulation Basic Properties Analysis Applications Discussion Conclusion
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14 Analysis of Fixed and PL strategies Fixed strategies Node recover instantaneously Each failure and recovery, normalized by time The number of a node failure Expected churn Passive Preference List strategies If k is large, then same as Fixed strategies Active Preference List strategies It pays more to switch back after the recovery of the node
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15 Analysis of Random Replacement Intuition Waiting time paradox RR is (roughly) selecting the current session of a random node This is biased towards longer sessions RR does very badly when stable nodes are rare One with mean r >> 1 and others’ are 1 Churn of RR is about 2 and the best fixed strategies is Churn rate
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16 Analysis of Random Replacement Agreement of the analysis with a simulation for n = 20 and the previous Pareto-distributed session time plot
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17 Characteristics of Random Replacement X’ is more skewed than X If E[X’] = E[X], then x’ and x are the yth percentile values of X’ and X The churn of RR decreases as the distributions become more “skewed” If the session time distributions are stable and have equal mean, RR’s expected churn is at most twice the expected churn of any fixed or Preference List strategy
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18 Road Map Introduction Simulation Basic Properties Analysis Applications Discussion Conclusion
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19 Anycast Whenever its current server fails, it obtains a list of the m servers to which it has lowest latency and connects to random on of these m Switching to another server is not counted Latencies were obtained from a synthetic edge network delay space generator It is modeled on measurements of latency between DNS servers
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20 Anycast Trade of between server list m and latency t t increases => Passive PL m increases => RR hybrid: ω decrease: Passive PL to Longest Uptime
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21 Anycast When session time is small, the end host experiences the mean server failure tare, as in Active PL
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22 DHT Neighbor Selection Long-distant neighbor Deterministic topology (Active PL) Randomized topology (RR) Simulation Sample n nodes from Gnutella Feed into Chord protocol simulator Two node send message to a node with single key It is failed when two message are lossed
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23 DHT Neighbor Selection Randomized topology are more stable, but have slightly longer routes Randomized topology also can reduce maintenance bandwidth
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24 Multicast Select one of m suitable nodes as parent Suitable: available bandwidth to serve another child Strategies Longest uptime, Minimum Depth, Minimum Latency Homogeneous bandwidth
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25 Multicast
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26 DHT Replica Placement Root set (Passive PL) Nodes with ID closer to key (Object) should keep the replica Root directory (RR) Replica of directory is the same as root set Replica may be on any node in the system Simulation Lazy replication On equal footing
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27 DHT Replica Placement There are many permanent failures in Gnutella traces
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28 Road Map Introduction Simulation Basic Properties Analysis Applications Discussion Conclusion
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29 Discussion When would one use Random Replacement? Minimize churn Longest Uptime RR would be easier to implement Uptime is not easy to determine Network problem, liar What about load balance? The result do not address fairness between users
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30 Road Map Introduction Simulation Basic Properties Analysis Applications Discussion Conclusion
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31 Conclusion A guide to performance of a range of node selection strategies in real-world traces Highlight and explain analytically the god performance of RR relative to smart strategies Explain the performance implications of a variety of existing distributed systems designs
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