# Tag Info

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After going through Richard's course in the Pluralsight, I think that both overlap in functionalities. In my understanding, the grains are virtual, single threaded and live in a distributed environment like cloud.

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To calculate the pseudo-inverse of non-square matrices you need to be able to calculate the transpose (easy) and the matrix inverse (others have supplied that functionality). There are two different calculations, depending on whether M has full column rank or full row rank. Full column rank means that the columns of the matrix are linearly independent ...

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Here is an implementation for the inverse. import org.apache.spark.mllib.linalg.{Vectors,Vector,Matrix,SingularValueDecomposition,DenseMatrix,DenseVector} import org.apache.spark.mllib.linalg.distributed.RowMatrix def computeInverse(X: RowMatrix): DenseMatrix = { val nCoef = X.numCols.toInt val svd = X.computeSVD(nCoef, computeU = true) if ...

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import org.apache.spark.mllib.linalg.{Vectors,Vector,Matrix,SingularValueDecomposition,DenseMatrix,DenseVector} import org.apache.spark.mllib.linalg.distributed.RowMatrix def computeInverse(X: RowMatrix): DenseMatrix = { val nCoef = X.numCols.toInt val svd = X.computeSVD(nCoef, computeU = true) if (svd.s.size < nCoef) { ...

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Me and my schoolmates have accomplished a distributed matrix library on top of Spark: Marlin(https://github.com/PasaLab/marlin). The algorithm of Matrix multiplication implemented in our library refer to CARMA(http://www.eecs.berkeley.edu/~odedsc/papers/bfsdfs-mm-ipdps13.pdf). At first, we survey the SUMMA algorithm. However, sending submatrix along the ...

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Here is my take: It is not advisable to store too many files in HDFS. Check this link: Namenode File No. Limit Search using MR is not efficient. Especially if you data is not partitioned or indexed. Your case would be best served by using a KeyValue store or a distributed search tool like Elastic Search (Given my limited understanding of your use case)

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You can implement it like that: // Do not re-create Random! Create it once only // The simplest implementation - not thread-save private static Random s_Generator = new Random(); ... // you can easiliy update the margin if you want, say, 91.234% const double margin = 90.0 / 100.0; int result = s_Generator.NextDouble() <= margin ? 1 : 0; ...

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First of all, you should save the reference to the random instance in order to get a proper random sequence of numbers: Random randGen = new Random(); The second thing to know, is that the max of the random is exclusive, so to properly solve the issue you should do: int eitherOneOrZero = randGen.Next(1, 11) % 10; To generalize it to any variation of ...

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to get true with a probability of 10%: bool result = new Random().Next(1, 11) % 10 == 0; to get true with a probability of 40%: bool result = new Random().Next(1, 11) > 6;

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Matrix multiplication is the easier one: there are several Matrix implementations with a multiply method in packages org.apache.spark.mllib.linalg and org.apache.spark.mllib.linalg.distributed. Pick whatever fits your needs most. I have not seen (pseudo-)inverse anywhere in the Spark API. But RowMatrix is able to compute the singular value decomposition ...

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The reason distributed systems are so complex is simple: time! Perfect synchronization of state becomes impossible in distributed systems for the simple fact that some amount of time must pass between the point that a message leaves one server and that point it arrives at its intended destination. In addition to this, networks are a far more unreliable ...

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Here is a link to a good book I found on Zookeeper

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This question can be answered in many words, but I'll try to boil it down to essentials: Heterogeneity is one of the main problems integration tries to solve. It is an inherent characteristic of most distributed systems and it refers to the fact that most often than not, when you have to integrate multiple systems, they will: Be on different platforms, in ...

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I think you may be confusing the sharding sense of "partitioning" with network partitions. Kafka does indeed provide sharding and replication. Kafka elects a unique leader for each partition of each topic. All writes for a topic partition go through the leader. This is relevant to the documentation you cited indicating Kafka favor's availability over ...

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The process knows there are no more commands, because/when it received a command with a timestamp >=T from every other process. Say we have a process P1 that received from process P2 a command with timestamp T2 >= T. Upon receiving this command, process P1 immediately learns of all the commands by P2 that were issued before or concurrently with its command ...

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Short answer: Not yet. We've discussed the idea of cluster-wide resources before, for NAS/SAN I/O, software licenses, or even a pool of IPs, but we don't have a JIRA for it yet. Like any resource, there are a few aspects to consider: Registering the resource(s). I could imagine some ResourceProvider other than a Mesos-slave that registers with the master ...

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Simply No Because of the following differences between DOS and NOS: System Image In case of a NOS, the users view the distributed computing system as a collection of distinct machines connected by a communication subsystem. On the other hand, a DOS hides existence of multiple computers and provides a single-system image to its users (virtual ...

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In a production deployment of multi-tier application, it's good practice to deploy each tier on separate VMs. However, depending on specific resource requirements of each component/tier like cpu, memory, disk, bandwidth usage etc., you may allocate different EC2 instance types for different component. It will make the efficient use of EC2 instance resources ...

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the problem is with the ip-address for those simulated clients NOT being unique No, the problem is that you are only identifying clients by their IP address. You should use IP:port, for example, via DatagramSocket.getRemoteSocketAddress(). Then you can test by running 100 instances of your client program in a single host.

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I would say use JMeter http://jmeter.apache.org/ TCP sampler: http://jmeter.apache.org/usermanual/component_reference.html#TCP_Sampler You can call Java directly: http://jmeter.apache.org/usermanual/component_reference.html#Java_Request

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After working a while on my own similar code block, I've decided that this is actually a memory issue. I'm using a 6 core 4GHz CPU and 8 gigs of RAM and seen this issue (on MATLAB 2014b) when I set the worker count high, and did not have any problems with low worker counts. When I use 6 or more workers (which is not ideal I know), memory consumption is ...

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This is a multi-part answer. Proposing no-op values is the way to discover commands that haven't got to the node yet. We don't simply fill each slot in the gap with a no-op command: we propose each slot is filled with a no-op. If any of the peers have accepted a command already, it will return that command in the Prepare-ack message and the proposer will ...

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The system model allows commands (messages) to be lost by the network anyway. If a message is lost, the client is expected to eventually retry the request; so it is fine to drop some of them. If the commands of a client have to executed in client order, then either the client only sends commands synchronously; or the commands have to be ordered at a higher ...

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I think you're misinterpreting what it means to send a result to the driver. saveAsTextFile does not send the data back to the driver. Rather, it sends the result of the save back to the driver once it's complete. That is, saveAsTextFile is distributed. The only case where it's not distributed is if you only have a single partition or you've coallesced your ...

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Just stumbled upon something in the Spark documentation: spark.executorEnv.[EnvironmentVariableName] Add the environment variable specified by EnvironmentVariableName to the Executor process. The user can specify multiple of these to set multiple environment variables. So in your case, I'd set the Spark configuration option ...

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Add two things to your state tracking: a timestamp and the server working on it. If a server starts up and sees anything in a building state for itself it knows it failed. Conversely, if it starts up and sees something in a building state for another server, it now has information that it's going to need to look at later to see if there's a problem that ...

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use apache cloudstack, it is open-source and it has tight integration with netscalar Load Balancers and F5 Load balancers, check below link for Netscalar LB creation and VM creation. Rules can be set on these and new VMs ca be spanned based on Load. https://cloudstack.apache.org/docs/api/apidocs-4.5/TOC_Root_Admin.html

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I am not sure what is specific to RabbitMQ here, but the idea with timestamps sounds like a good start if you have a single producer. The producer attaches a timestamp to the messages A, each message B take the same timestamp of its respective message A. With your approach some messages would not be processed, eg, message B(1). If all messages should be ...

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Honestly, if you are already in AWS, use cloud formation to spin up a box on demand, add an ELB in front, that handles your routing issue. On box spin-up, download the files from S3 for that customer onto the local disk. Set up a job that runs every 30-60 seconds to check for new files up on S3, and push/pulls them down on demand.

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Not using the standard API. You can just average the coef_ and intercept_ and that will produce a meaningful estimator. Do you want to parallelize over one core or over a network? There might be more efficient options for you, most of which will require a little more work. There are parallel implementations of SGD, but these will probably only pay of for ...

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This is a huge topic area with way too many options to list in total. But at a high level there are a couple of approaches that differ according to the use case and dictate some of the technologies that can be used. First, and most importantly, you need think about how data flows through the system. Is it a synchronous or asynchronous system? Meaning, when ...

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Just one crazy idea: why do you need actually update job1 output? JOB1 does its job producing one file for date. Why not add it with unique postfix like random UUID? JOB2 processes 'update' information. Maybe several times. The logic of output file naming is the same: date based name and unique postfix. JOB3 collects JOB1 and JOB2 output grouping them into ...

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You have to go through at least one extra step in MPI to do this. The problem is that the most general of the gather/scatter routines, MPI_Scatterv and MPI_Gatherv, allow you to pass a "vector" (v) of counts/displacements, rather than just one count for Scatter and Gather, but the types are all assumed to be the same. Here, there's no way around it; the ...

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For Job2, You can read the update file to filter the input data partitions in Driver code and set it in Input paths. You can follow the current approach to read the update file as distribute cache file.In case you want to fail the job if you are unable to read update file , throw exception in setup method itself. If your update logic does not require ...

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You can follow below approach: 1) run job1 on all your csv file 2) run job2 on small file and create new output 3) For update, you need to run one more job, in this job, load the output of job2 in setup() method and take output of job1 as a map() input. Then write the logic of update and generate final output. 4) then run your job3 for processing. ...

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