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Jan
25
comment Database with high throughput, efficient random access and queries on secondary index
So it sounds like external index for KV storage. We need to test performance, but all in all it sounds pretty reasonable. Thanks!
Jan
24
comment Database with high throughput, efficient random access and queries on secondary index
@ManuelArwedSchmidt: I see that Couchbase supports persistence to disk, so from your words I suppose it also requires all the data to be in memory as well? Yes, we thought about double storage, but in this case you 1) send only profile updates to analytical storage, which is inconvenient to analyze, or 2) send full profiles, thus duplicating data many times, or 3) do query to KV storage, which we are looking for anyway.
Aug
30
comment Fetch 5M URLs as fast as possible
@Bilk: I tried different parameters, but without any change. Moreover, I've got almost the same results with old plain thread pool (500 threads) and even different programming language. The picture is always the same: most requests get executed very quickly, and then strange delays start happening. I blame some low-level buffers or limits (e.g. number of open connections), but I have no more time to investigate it.
Aug
24
comment Fetch 5M URLs as fast as possible
@Bilk: yes, I use Netty at the backend and custom config: max number of connections per host is set to 10 (I assume even 1 should be enough since every time I connect to a different host) and max total number of connections is set to 100k. But even processing batch of 10k URLs is pretty slow, so it's unlikely that I reach this limit. Is there anything else I can tune up in AsyncHttpClient?
Aug
24
comment Fetch 5M URLs as fast as possible
@m-z: I've already increased limit for the number of open files, are there any other limits I can/should increase?
Aug
23
comment Fetch 5M URLs as fast as possible
@RexKerr: I thought about it as a last resort, but if I can get more from a single machine, it will save both - money and development time.
Aug
23
comment Fetch 5M URLs as fast as possible
@RexKerr: if this project succeeds, next step will be to increase number of URLs up to 250M and run the scan every couple of days, which means that we need at least 1-2k requests/sec. Anyway, I'm trying to find what binds the maximum number requests given that neither CPU nor network are utilized fully.
Aug
23
comment Fetch 5M URLs as fast as possible
@user2864740: yes, but then with 1000 workers I'd expect 5000/s, while it is still around 250. Also, channel (in Amazon EC2 instance) is underloaded, so I'm not sure what part of the network can be a bottleneck then.
Aug
22
comment How do I use Scala dispatch to get the URL returned in a 301 redirect?
If setFollowRedirects didn't work for you, try setFollowRedirect (without trailing s) instead.
Aug
12
comment How may I use CRF in NLTK?
It's never late for a good answer.
Apr
10
comment Kafka: Get broker host from ZooKeeper
Thanks and sorry for late reply. Could you please also post reference to the ZooKeeper client library you are using in your code? On my side, I figured out how to fix an error I described and will post alternative solution using com.101toc.ZkClient which comes with Kafka libraries. Anyway, I accept your answer as totally valid.
Mar
10
comment Check-and-set in Couchbase Java SDK 2.x?
This answers my question and I've already accepted it, but maybe you also know how to create new document with specific CAS (instead of in-place modification of existing document)?
Jan
31
comment Comparison of Lucene Analyzers
@anon: Tika is a separate project with several key features. Assuming that you mean Tika parsers, I'd say that Tika takes byte stream and outputs text + metadata, while Lucene analyzers take text and output processed token stream. For example, you may first parse PDF or XML file with Tika, producing documents with fields like "title", "author" and "text", and then analyze some or all of these fields with Lucene analyzers.
Nov
5
comment Pandas: map values of categorical variable to a predefined list of dummy columns
@Jeff: this is pretty unexpected behaviour, so thanks for noting!
Nov
3
comment Pandas: map values of categorical variable to a predefined list of dummy columns
Speed of answers is what always delights me on StackOverflow. Thanks, it works perfectly well!
Nov
1
comment Need help in latent semantic indexing
@user1064929: using multiple words is recommended, since together they uncover context, but even single word ("document" consisting of a single word) should do the job in most cases. However, if your ultimate goal is to get documents (or document parts) from the word, it makes sense to take a look at information retrieval methods. If you have concrete task and need recommendation, you can always post detailed questions here, on CrossValidated or DataScience (depending on what it is about more).
Oct
31
comment Need help in latent semantic indexing
@user1064929: "document" is pretty abstract concept. For example, if you try to analyse web site, you can consider it all as a single document, each web page as a document or even each paragraph as a document. In a later case co-occurrence matrix will show how often each word occurs in each paragraph. Does it answer your question?
Oct
2
comment How to avoid overfitting on the test data?
@DanielGolden: if you tweak the model to improve performance on test set, then it's by definition is not test set any more, but instead cross validation set. Test set is used exclusively for testing (trained and tweaked) model.
Aug
20
comment What is the easiest way to convert ndarray into cv::Mat?
I can't test it myself now, but it looks like better approach then the one I used, so I accept it without verification.
Aug
7
comment Cosine distance as vector distance function for k-means
I'm glad that it helped :)