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3

Elasticsearch exists as a cloud, means if you have replicas they act sort of a master-master mode. If one server is down other will automatically take over. When indexing a documents it indexes in the replica also before returning thereby maintaining consistency of data. A cluster can have zero or more replicas and it can be configured runtime using the ...


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500,000 events per minute is 8,333 events per second, which should be pretty easy for a small cluster (3-5 machines) to handle. The problem will come with keeping 720M daily documents open for 60 days (43B documents). If each of the 10 fields is 32 bytes, that's 13.8TB of disk space (nearly 28TB with a single replica). For comparison, I have 5 nodes at ...


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Coordinating such a thing is non-trivial in a distributed system. The developers simply decided other stuff is more important and left this one out for now.


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The relevant error in the stack trace is here Caused by: org.elasticsearch.index.mapper.MapperParsingException: No handler for type [text] declared on field [queuename] Which means that your columns definition is almost correct but not quite, the type should be string not text: ... "columns" : [ ...


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In elasticsearch 1.5.2 you could achieve this using inner hits For example: put mybooks { "mappings": { "book": { "properties": { "bookTitle": { "type": "string" }, "bookAuthors": { "type": "nested", "properties": { "authorId ": { ...


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As for Redis, it acts as a buffer in case logstash and/or elasticsearch are down or slow. If you're using the full logstash or logstash-forwarder as a shipper, it will detect when logstash is unavailable and stop sending logs (remembering where it left off, at least for a while). So, in a pure logstash/logstash-forwarder environment, I see little reason to ...


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The best step you can perform now, especially that you have time-based indices, is to manually optimize the indices that are not written to. You will see improvements in performance for sure. The more segments there are, the more heap memory is being used. ES does automatically merge segments, but there are certain conditions that should apply for Lucene to ...


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You have 2 choices: First you add all available type values as default in your mapping (not scalable) { "poi" : { "properties" : { "suggest_field": { "type": "completion", "context": { "type": { "type": "category", "default": ["restaurant", "pool", "..."] }, ...


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For something like this I would use dependency injection. You want to decouple the NetFlowStorage class from the actual elasticsearch client: function NetFlowStorage(esClient) { this.host = 'localhost:9200'; this.shards = '4'; this.replicas = '0'; this.index_name = 'flow_track2'; // if you don't wanna share connections across several ...


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As Andrei suggested, I added <dependency> <groupId>org.elasticsearch</groupId> <artifactId>elasticsearch-mapper-attachments</artifactId> <version>2.4.3</version> </dependency> to my pom file (using ElasticSearch 1.4.1 at the moment...) When I added .put("plugin.types", ...


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I think that you should pass a config object and a connection object to the method. So if you would use Jasmine for testing for example you could pass a spy var client = {index:function(){}} spyOn(client, 'index'); .... expect(client.index)toHaveBeenCalled(); and to pass it at some point with injection or a singleton to the SUT


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Use the multiline filter to join everything up to one event, and roll it into Elasticsearch. You can grok{} and otherwise filter it on the way through, too.


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I think your email address might be tokenized during indexing. So instead of bill@gmail.com there are three tokens (terms): bill, gmail, com. If that is the case, try to add "index": "not_analyzed" to its mapping definition or try to use bool as below : { "query": { "bool": { "must": [ { ...


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I see are three possibilities: A. Index your durationfield as a number type, i.e. integer, double or whatever makes sense for your values B. If you don't have too many different values for duration (AND if your durations are natural numbers) you could also use a range aggregation specifying all ranges (1-2, 2-3, 3-4, 4-5, etc) { "query": { ...


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You could use something like: multiline { pattern => "START:" negate => "true" what => "previous" } This instructs the multiline filter/codec to put all lines not containing START: in the previous logevent. You can then use grok patterns to extract your 3 pieces of information. Take care you have to instruct grok to look in a ...


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I created simple example to show you how you can achieve this. var funcs = new List<Func<Range<double>, Range<double>>>(); funcs.Add(range => new Range<double>().From(1).To(2)); funcs.Add(range => new Range<double>().From(3).To(4)); var searchResponse = client.Search<Document>( s => s.Aggregations(agg ...


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Update your form as: <%= form_for :search, url: search_path, method: :get do |f| %> You may need to update you search action too to support nested params.


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date range aggregation with range as below : { "aggs": { "range": { "date_range": { "field": "logdate", "format": "YYYYMMDD", "ranges": [ { "from": "20150201" }, { "to": ...


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Aggregations are not easy to understand when you are used to MySQL group by. The first thing, is that aggregations results are not returned in hits, but in aggregations. So when you get the result of your search, you have to get aggregations like that : $results = $search->search(); $aggregationsResults = $results->getAggregations(); The second ...


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You can do it with q=... syntax, as well. q=... refers to query_string actually, but is a shorter version. And query_string is a bit confusing, because it has some defaults that one needs to be aware of to explain some situations. This is the case with your attempts: there is a setting called lowercase_expanded_terms which is true by default. What this ...


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The hits mismatch is, most probably, because of an un-sync between the primary shards and the replica. This can happen if you had a node leaving the cluster (for whatever reason) but kept making changes to documents (indexing, deleting, updating). The scoring part is a different story, and can be explained by "Relevancy Scoring" section from this blog post: ...


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You may try to use a filter aggregation with a script filter like this. Note that February 15th is the 46th day of the year and April 15th is the 105th day of the year (with an exception on leap years of course, but this illustrates a solution). The script will take any document with a logdate between Feb 15th and Apr 15th (of any year) and then the ...


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The one thing that is certain is that you first need to craft a custom mapping based on your specific data and according to your query needs, my advice is that contains_more should be of nested type so that you can issue more precise queries on your fields. I don't know the exact names of your fields, but based on what you showed, one possible mapping ...


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It's hard to tell what you're doing wrong from what you posted, but I can give you an example that works. Elasticsearch will, by default, index whatever source documents you give it. Every time it sees a new document field, it will create a mapping field with sensible defaults, and it will index them by default as well. If you want to exclude fields, you ...


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You can try a combination of query as below to get the desired order "bool": { "should": [ { "wildcard": { "name": { "value": "*Mar*" } } }, { "prefix": { "name": { "value": "Mar*", ...


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If you do not want to account for field length (fieldNorm) during the scoring you could disable norms for a field in the mapping. For example the mapping for the above example would be { "properties": { "item_type": { "type": "string" }, "color": { "type": "string", "norms": { "enabled": false ...


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According to what I found on elasticsearch-model's gem github page, the problem is you are calling name method on Elasticsearch Response object. You should call it on result documents. Docs say: response = Article.search 'fox dogs' response.results.first._source.title # => "Quick brown fox" so in your case it will be: response = ...


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Please show your mapping type, but I suspect your tags field is a simple string field like this: { "your_type" : { "properties" : { "tags" : { "type" : "string" } } } } In this case ES will "flatten" all your tags under the hood in the tags field at indexing time like this: tags: "stuff", ...


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The above is not a valid Query DSL. In the above Terms filter the values to "mediaType" field should be an array It should be the following : { "query": { "filtered": { "filter": { "bool": { "must": [ { "term": { "online": 1 } }, { ...


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You can search in several index with the \Elastica\Search class. Here is the version updated of your code : public function Query($value, $elasticaClient) { $elasticaQueryString = new \Elastica\Query\QueryString(); $elasticaQueryString->setQuery((string)$value); // Create the actual search object with some data. $elasticaQuery = new ...



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