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You have to experiment a bit, but I think it is a reachable task. First of all for the propagation Task you'll need to use the Apache Karaf Cellar clustering solution, it will help you propagate all your changes throughout your Cluster-Group. Second you'll need to configure a fail-over mechanism as described in the documentation. For this you most likely ...


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I have found a solid answer for this question after a long time. It is possible to implement a Singleton in a distributed environment using AKKA toolkit. Details on how to implement can be found from here http://doc.akka.io/docs/akka/2.3.1/contrib/cluster-singleton.html


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Following the advice of user blakeoft on SeqAnswers (http://seqanswers.com/forums/showthread.php?t=45094), I dropped the PE flag and added individual file names for each output file and the program executed properly. java -classpath /*filepath*/Trimmomatic-0.32/trimmomatic-0.32.jar org.usadellab.trimmomatic.TrimmomaticPE \ -phred33 \ ~/refs/lec12/data_R1.fq ...


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I've never used trimmomatic but it looks like you are passing in the incorrect parameters. the trimmomatic webpage lists the usage from version 0.27+ as: java -jar <path to trimmomatic.jar> PE [-threads <threads] [-phred33 | -phred64] [-trimlog <logFile>] <input 1> <input 2> <paired output 1> <unpaired output 1> ...


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Instead of using nx.random_layout(Gph), one option available to you is to try the spring_layout algorithm provided by networkx. You'll need numpy installed but this force-directed algorithm will cluster the nodes based on the edge weights. Here is one example of a call to that algorithm, but you can tweak the parameters as needed. Replace the random ...


2

How about this: Loop the data and determine the groups by integer-dividing the third element by 10. import csv with open('data.txt') as f: groups = {} for item in list(csv.reader(f, delimiter=',')): n = int(item[2]) // 10 group = "%d-%d" % (n*10, n*10+9) groups.setdefault(group, []).append(item[:2]) Using your data, groups ...


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I have actually found the inverse to this question. Session replication for me (Tomcat7) with the OOTB options only works properly WITHOUT Sticky Session. After turning the logging up I found that with the JVMRoutes enabled my session ID goes from A123456789 to A123456789.01 -- suffixed with the jvmroute. That session is successfully replicated from Node 01 ...


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I have no experience with Proxmox, but if you can make an image that runs then you can use it to stamp out the cluster. What you'd need to do is boot the ISO, run the installer and then make an image of that. Be sure to delete /etc/machine-id before you create the image. CoreOS uses cloud-config to connect the machines together and configure a few ...


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I finally found solution. Actually I found a blog site. It is using Redis. The link is http://dmitrijs.artjomenko.com/2014/02/storing-sessions-in-redis-with-spring.html My application is developed by java7, but example is using java8. So, I modified some code, modified code is below: @Bean public EmbeddedServletContainerCustomizer containerCustomizer() ...


1

The way I've ended up implementing this still doesn't quite solve the race condition, but does allow me to run the same commands on all nodes (rather than deciding which node to run the post install script on). I now have: failure="" for node in ${nodelist[@]} do # check for mcmd service nc -z -w 1 $node 1862 || failure=1 done if [ ! -z $failure ] ...


1

etcd is a reliable system for cluster-wide coordination and state management. It is built on top of Raft. Raft gives etcd a total ordering of events across a system of distributed etcd nodes. This has many advantages and disadvantages: Advantages include: any node may be treated like a master minimal downtime (a client can try another node if one isn't ...


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One reason this can occur is that the environment hasn't been exported to the cores. I found one solution posted here, including sample code: http://www.numbertheory.nl/2011/11/14/parallelization-using-plyr-loading-objects-and-packages-into-worker-nodes/


1

(This would be more appropriate as a comment, but I don't have enough reputation.) From your description I have a feeling that your test looks like this: start 1st node put the data into 1st node start 2nd node This will result into state transfer from 1st to 2nd node. Replication queue would only be used during step 2, if 2nd node was already running. ...


2

Small computations fast We do use Spark in an interactive setting, as the backend of a web interface. Sub-second latencies are possible, but not easy. Some tips: Create SparkContext on start up. It takes a few seconds to get connected and get the executors started on the workers. You mention many simultaneous computations. Instead of each user having ...


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I think the short answer is "yes". Spark advertises itself as "near real-time". The one or two papers I've read describe throughput latency as either one second or several seconds. For best performance, look at combining it with Tachyon, an in-memory distributed file system. As for load-balancing, later releases of Spark can use a round-robin scheduler so ...


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Here is a quick example as you requested: % open a local pool of 2 workers parpool('local',2) % random matrix distributed over workers (each gets half of the data) A = distributed.rand(1000); % (non symmetric eigenvalue EIG is not yet available for codistributed arrays) A = A + A.'; % compute eigenvalues/eigenvectors [V,D] = eig(A); % V and D are ...


1

You have a severe problem in your configuration, despite the already accepted answer (which I mostly disagree with). You'll have to set up proper clustering on Liferay. In order for Liferay to find "the other" node, it uses Multicast (by default). And if you have multiple network cards but want/need one specific network card to be used for detecting the ...


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The way it works is very simple - the DRM (distributed resource manager) limits the CPU affinity mask of the process before it is started. The affinity mask tells the OS scheduler on which logical CPUs the process can be scheduled. The default CPU affinity mask simply contains all available logical CPUs. If not instructed otherwise, most OpenMP runtimes ...


0

I talked with the folks from Hazelcast and found that I had some fundamental misunderstandings about how it works. I didn't understand that you have to deploy Hazelcast like a service or daemon by running "com.hazelcast.examples.StartServer" on the compute nodes. This is how the nodes become aware of, and interact with each other. The Hazelcast zip includes ...


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It's not open source, but Oracle Coherence would easily solve this problem. If you need an implementation of JCache, the only one that I'm aware of being available today is Oracle Coherence; see: http://docs.oracle.com/middleware/1213/coherence/develop-applications/jcache_part.htm For the sake of full disclosure, I work at Oracle. The opinions and views ...


2

Session clustering is implemented in Application Server, not in Liferay. You have either configure it manually on your AS, or enable sticky sessions on your Load Balancer. There is a lot of articles about how to do it in Tomcat: In Tomcat documentation Liferay wiki Te second article is very heavy, as far as I remember to run the basic session ...


0

The tested and working answer to the question is as follows: if (cluster.isMaster) { var worker = cluster.fork(); // Receive messages from the worker and handles them in the master process. worker.on("message", function(code) { console.log("Parent "+worker.id+" received: " + code.msgFromWorker); ...


0

You need to set new JDBC connection parameters for your report data sources, since DB host migrated/switched to clustered environment. Old connection parameters are probably pointing to old environment setup. Check out port connectivity to database using telnet.


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Q1: relate back to original dataframe: Have a look at Carl Witthoft's answer. He wrote a variant of rle() (seqle() because it allows one to look for integer sequences rather than repetitions): detect intervals of the consequent integer sequences Q2: only keep clusters of certain length: C1[sapply(C1, length) > 3] yields the 2 clusters that are long ...


0

Firstly, I would suggest using the -r option to MATLAB to run your script as there are some occasional weirdnesses when piping input as you're doing, e.g. matlab -nodisplay -r test Then, I would change line 2 to state delete(gcp('nocreate')) to ensure you don't create a pool simply to delete it. Then, the next bit should be poolobj = parpool; poolsize ...


0

Try using the fs module to write to the filesystem to indicate success!


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My experience deploying a (Java)Play 2.2.3 to Amazon EC2 was terrible with EHCache. It requires a few workarounds with the localhost resolve (going su for each of your nodes - hard work when you have a few dozens of servers) and regardless, being free only for standalone version without ostensively letting us know upfront is a big no-no for me. I'm done with ...


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-- Do I need to create new Hazelcast instances inside the Runnables/Callables? Why do you want to do that? If you need to access the HazelcastInstance running the runnable/callable, let it implement HazelcastInstanceAware and you get the HazelcastInstance injcted. -- What is the effect of creating instances inside Runnables/Callables versus creating them ...


1

Next release of GridGain (6.2.0) will have globalSize() and globalPrimarySize() methods which will ask the cluster for the sizes. For now you can use the following code: // Only grab nodes on which cache "mycache" is started. GridCompute compute = grid.forCache("mycache").compute(); Collection<Integer> res = compute.broadcast( // This code will ...


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Maybe this example may help others that find this question: https://github.com/Jotschi/neo4j-ha-example/tree/master The example project shows how to setup neo4j embedded in HA mode.


0

The solution was to remove Node 3 (which was turned off) from the token manually.


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Here is a port-based solution: var cluster = require('cluster'); var http = require('http'); if (cluster.isMaster) { cluster.fork(); cluster.fork(); cluster.fork(); return; } function app (req, res) { res.writeHead(200); res.end('hello from ' + cluster.worker.id); } http.createServer(app).listen(8000); http.createServer(app).listen(8000 + ...


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Buildbot is a CI framework. It may be able to use mariaDB to store it's own data but it has nothing to do with mariaDB configuration itself.


0

Created github issue, fixed by pull 7882: https://github.com/joyent/node/issues/7881


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If you use Linux: mount filesystems where users have write permission (e.g. /home, /tmp, /var/tmp, /dev/shm) with option "noexec".


1

You want to change the default shell for all your users from /bin/bash to: /bin/bash -r so their shell becomes a restricted shell. Amonst other restriction the users are not allowed to cd, set or unset PATH or issue commands containing /. This locks them into only running commands you give them access to.


1

I believe what you are looking for is in setupMaster From the docs: cluster.setupMaster([settings]) settings Object exec String file path to worker file. (Default=process.argv[1]) args Array string arguments passed to worker. (Default=process.argv.slice(2)) silent Boolean whether or not to send output to parent's stdio. (Default=false) ...


0

I'm not quite sure whether this answers the same problem, but I recently wrote some code which groups wall segments in a maze in the same manner, i.e. nearest-neighbor. Mine is iterative, and makes use of the dist() function. Here's some of the code I used. I start with a N*4 matrix containing all the wall segments (generated using Prim's Tree Alg); the ...


5

You could approach this by building a lattice graph representing your matrix, where edges are only retained if the vertices have the same type: # Build initial matrix and lattice graph library(igraph) mat <- matrix(c(1, 1, 1, 1, 2, 1, 2, 1, 2, 2, 2, 1, 3, 1, 3, 1, 1, 1, 3, 1), nrow=4) labels <- as.vector(mat) g <- graph.lattice(dim(mat)) lyt <- ...


0

I think the problem is related to your PBS directives. Try changing from : #PBS -l select=2:ncpus=12:mpiprocs=24:mem=4gb to : #PBS -l select=2:ncpus=12:mpiprocs=12:mem=4gb This way, you request PBS to spawn 12 processes for each node instead of 24 processes previously. I don't think you need to regenerate the host file. Just run the code as : ...


1

While it's true that the asynchronous nature of node.js makes it awesome, it still runs in a single thread on the server in a single event loop. Multithreading a node.js app with cluster allows you to fork off child processes of the app into their own threads, allowing you to make better use of a multi-core server. I had built a game server architecture a ...


2

Find all methods for "silhouette" class: > methods(class = "silhouette") [1] plot.silhouette* summary.silhouette* Non-visible functions are asterisked To get code: getAnywhere(plot.silhouette)


0

I think you need to skip 12 lines sed -n 1~12p $PBS_NODEFILE > hosts_buffer or uniq $PBS_NODEFILE > hosts_buffer And also I notice your host file has only 23 lines. You could also try it this way: cd $PBS_O_WORKDIR mpiexec -hostfile $PBS_NODEFILE -np `wc -l < $PBS_NODEFILE` $SOLVER 2>&1


0

Calling OpenCluster with NULL parameter returned cluster handle for local PC, which was fine in my case.


0

I found this really confusing in the beginning as well. I still do to some extent, but I think I have a case working that looks similar to yours. The only thing that looks to be missing is telling the engines where the controller is. There's an option in the ipcluster config that looks like: c.SSHEngineLauncher.engine_args = ...


0

In addition to the previous answer, usage of NFS for a Lucene index is strongly discouraged as it badly hurts performance. See this kind of discussion for more information: http://lucene.472066.n3.nabble.com/Lucene-index-on-NFS-td4011301.html And there's a request feature to have full NFS support (which means handling delayed deletion): ...



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