Tuesday, 22 March 2022

What's new in StormCrawler 2.3

StormCrawler 2.3 was released yesterday. It contains a relatively small number of changes compared to previous releases but these include important bug fixes. We have also ported existing ParseFilters to JSoupParseFilters, leading to some noticeable performance improvements and an exuberant tweet


We also welcomed Richard Zowalla as a new committer on the project.

Here are the main changes.

Dependency upgrades

  • Elasticsearch 7.17.0 
  • Tika 2.3.0
  • Caffeine 2.9.3 

Core

  • Convert LinkParseFilter into a JSoupFilter (#944)
  • Rewrote LinkParseFilter + added XPathFilter + tests for JSOUPFilters (#953)

  • General Code Refactoring and Good Practices (#937)

  • Add unified way of initializing classes via string … (#943)

  • Changed order of emit outlinks and emit of parent url ... (#954

Elasticsearch 

  • Enable compression (#941
  • Enable _source for content index in ES archetype (#958

URLFrontier

  • Spout does not reconnect to URLFrontier if an exception occurs (#956

The next release will probably include a new module for Elasticsearch 8, see #945. If you have some experience of using ES new client library, your contribution will be very welcome.

Thank you to all users and contributors, in particular Felix Engl for his work on the code refactoring and Julian Alvarez for reporting and fixing the bug in #954.

Our users Gage Piracy have also been very generous in donating some of the customisations we wrote for them back to the project.

Happy crawling!

Monday, 21 March 2022

Unlock your web crawl with URLFrontier

 Our guest writer today is Richard Zowalla.


Richard is a committer on StormCrawler, CrawlerCommons and other open source projects such as Apache TomEE. He is a PhD student in the field of medical web data mining. His recent work “Crawling the German Health Web” was published in the Journal of Medical Internet Research and is about using StormCrawler as a focused web crawler to collect a large sample of the German Health Web.

Richard will now tell us about his experimentation with URLFrontier and crawler4j. As you probably know, URLFrontier is a project sponsored by the NLNet foundation that we, at DigitalPebble, have been working on for just over a year and it is now in its second iteration. Let’s start by explaining what it is all about…

What is URLFrontier?

Web crawlers need to store the information about the URLs they process, this is called a crawl frontier. Typically, each web crawling software has its own way of implementing this. Our very own StormCrawler is no exception, except that it is not tied to one specific backend but can use several implementations like Elasticsearch, SOLR or SQL.


What URLFrontier does is to provide a crawler/language-neutral API for the operations that web crawlers do when communicating with a crawl frontier e.g. get the next URLs to crawl, update the information about URLs already processed, change the crawl rate for a particular hostname, get the list of active hosts, get statistics, etc...

URLFrontier is based on gRPC and provides not only an API but also an implementation of the service and client code in Java that can be used to communicate with it. Because the API and implementations are based on gRPC, URLFrontier can be used by web crawlers regardless of the programming language they are written in. As you would expect, StormCrawler has a module for URLFrontier, which was used extensively last year in a large-scale crawl described here.

By externalising the frontier logic from web crawlers, we can reuse the same implementation across different web crawlers and can make it better as a community instead of having each crawler project constantly reinventing the wheel. It also helps modularizing a crawler setup and make it distributed.

Let’s now see what Richard has been up to. 

The crawler4j framework

Crawler4j is an open source web crawler written in Java, which provides a simple interface for crawling the Web in a single process. Sadly, the original (academic) project became mostly inactive with its last release in 2018 leaving users only two options: (1) migrate to another crawler framework or (2) maintain a fork of the library and release it to Maven Central. In the end, we decided to do the latter and forked the repository to continue using crawler4j within our academic research projects.


As setting up a multi-threaded web crawler with crawler4j is fairly simple, using a fully distributed web crawler would have been overkill for our small use-cases (i.e. focus on fetching single web sites). Therefore, we decided to maintain our own fork with up-to-date libraries and the possibility to (easily) switch between different frontier implementations as Oracle’s Sleepycat licence does not comply with some of our use-cases.


To start with crawler4j, you need to choose from one of the available crawl frontier implementations:



The HSQLDB and URLFrontier frontier implementations are only available in our fork. They aim to mitigate the rather strict licensing policies of Sleepycat.


After choosing a crawl frontier implementation, you can simply add the required dependency via Maven to your project (here: we choose URLFrontier):


   <dependency>

            <groupId>de.hs-heilbronn.mi</groupId>

            <artifactId>crawler4j-with-urlfrontier</artifactId>

            <version>4.8.2</version>

            <type>pom</type>

   </dependency>


Next, you have to create a crawler class which extends WebCrawler. This class decides which URLs should be crawled and handles the fetched web pages. 


public class FrontierWebCrawler extends WebCrawler {


   @Override

   public boolean shouldVisit(Page referringPage, WebURL url) {

// determines, if a given URL should be visited by the crawler

       return true

   }


   @Override

   public void visit(Page page) {

       //handle a fetched page, e.g. store it

   }


}


In addition, you need to implement a controller class which specifies the seeds for the web crawl, the folder in which crawler4j will store intermediate crawl data and some other config options such as the number of crawler threads or if the web crawler should be polite and/or honour the robots exclusion protocol. This can be done like this:


protected CrawlController init() throws Exception {

   final CrawlConfig config = new CrawlConfig();

   config.setCrawlStorageFolder(“/tmp”);

   config.setPolitenessDelay(800);

   config.setMaxDepthOfCrawling(3);      

   config.setIncludeBinaryContentInCrawling(false);

   config.setResumableCrawling(true);

   config.setHaltOnError(false);

   final BasicURLNormalizer normalizer = BasicURLNormalizer.newBuilder().idnNormalization(BasicURLNormalizer.IdnNormalization.NONE).build();

   final PageFetcher pageFetcher = new PageFetcher(config, normalizer);

   final RobotstxtConfig robotstxtConfig = new RobotstxtConfig();

   robotstxtConfig.setSkipCheckForSeeds(true); // we skip the robots checks for adding seeds (will be checked later on demand)

   final int maxQueues = 10;

   final int port = 10;

   final FrontierConfiguration frontierConfiguration = new URLFrontierConfiguration(config, maxQueues, "localhost", port);


   final RobotstxtServer robotstxtServer = new RobotstxtServer(robotstxtConfig, pageFetcher, frontierConfiguration.getWebURLFactory());

   return new CrawlController(config, normalizer, pageFetcher, robotstxtServer, frontierConfiguration);

}


Seeds can then be added via the CrawlController. To increase performance, you can skip the robots.txt check while adding new seeds.

Crawler4j in with URLFrontier

The integration of URLFrontier in crawler4j basically boils down to three (adapter) classes and some boilerplate code to connect with the gRPC code provided by URLFrontier. This reduces the amount of crawler logic to handle the crawl frontier significantly. 


As URLFrontier handles duplicate URLs and acts as a remote crawl frontier, it is now fairly simple to run crawler4j on different machines. URLFrontier then acts as the single point of synchronisation. Consequently, this approach can turn crawler4j into a simple distributed web crawler. Without a remote frontier (like URLFrontier), we would have had to implement a custom distributed URLFrontier using a framework like Hazelcast in order to distribute crawler4j’s crawl frontier. In both cases, distributing crawler4j comes at the cost that we need to implement additional business logic to handle or store the fetched Web pages in a distributed way. Nevertheless, the ease to implement a web crawler with crawler4j outweighs this issue.

The default URLFrontier service implementation is based on RocksDB and it is publicly available as a Docker image.

Experimenting with different frontier implementations

For our experiment, we relied on three virtual machines (VMs). Each VM is equipped with 4 vCPU, 10GB of memory and is running on Ubuntu 20.04 LTS with latest OpenJDK 17. We used a seed list of 1M URLs generated from the site rankings computed by CommonCrawl.


Each Web crawl was started simultaneously on each VM and was run for an exact duration of 48 hours. We limited the crawling depth per URL to 3. URLFrontier was run as a docker container residing on the same VM as the crawler. Every 30 seconds, we checked the amount of processed (i.e. completed) URLs. 


Note, that we did not apply any further processing of fetched Web pages as this wasn’t in the scope of our experiment. The example’s code is available on GitHub.

Results

On average, the crawler4j framework was capable of downloading up to 90 web pages per minute with a politeness delay of 800ms between each request to the same host. The detailed statistics are:


  • Sleepycat:  fetched ~ 90 pages / min; 

  • URLFrontier: fetched ~ 72 pages / min; 

  • HSQLDB: fetched: ~ 68 pages / min; 


Figure 1 depicts the number of processed (i.e. fetched) URLs over the time period of 48 hours. 



Overall, there is a noticeable difference between Sleepycat, URLFrontier and the HSQLDB frontier implementation. However, HSQLDB is only a few pages slower than the URLFrontier implementation. As can be seen from the aggregate numbers, Sleepycat is faster compared to the other implementations. We can assume that the proprietary Sleepycat communication protocol outperforms gRPC (URLFrontier) and JDBC (HSQLDB) calls by not adding too much communication overhead.


Conclusion

Performance aside, one benefit of using StormCrawler is that the code needed to integrate it in crawler4j boils down two only three classes while the other two implementations required a significantly more complex integration. 


In addition, by adopting URLFrontier as a backend, it is possible to easily exchange the crawler implementation and re-use the same data as before. We also benefit from any improvements to the service implementation without the need to change a single line of code. In particular, the forthcoming versions of URLFrontier should contain some very useful features.

Another important advantage of URLFrontier is that it opens the content of the frontier to the outside world: You can manipulate or view the content of the frontier during an ongoing web crawl via the CLI. This is not possible for the other frontier implementations.


Overall, our experiment showed that URLFrontier is slower than the original Sleepycat implementation, which most likely originates from the overhead introduced by the gRPC calls to communicate with URLFrontier. This is also true for the JDBC-based HSQLDB implementation. On the plus side, URLFrontier does not suffer from (commercial) licensing issues such as Sleepycat and can turn crawler4j into a simple distributed web crawler with little additional work, unlike using the other two implementations.  


The figures given in this post depend on the particular seed list, the ordering of URLs, and the hardware used for the experiment. Therefore, you might get different results for your specific use case. The resources and configurations of this experiment being publicly available, you can try to reproduce it and extend it as you wish. 


Next steps

This experiment has been very successful and informative and we are hoping to run more benchmarks in the future, like for instance a larger scale crawling in fully distributed mode.

URLFrontier is getting many improvements in its current phase of development and we are beginning to see alternative implementations of the service, like this one based on Opensearch. We are also seeing the project gain some traction with existing web crawlers.

An alternative experiment would be to compare the performance of the different URLFrontier service implementations available. Exciting times ahead!

Happy crawling everyone and a massive thank you to Richard for being our guest writer. 


Tuesday, 11 January 2022

What's new in StormCrawler 2.2

StormCrawler 2.2 has just been released. This marks the beginning of having releases only for 2.x, 1.18 was the last release for the 1.x branch which is now discontinued. In case you were wondering why there was no "What's new in StormCrawler 2.1", it is simply that it contained the same modifications as 1.18 and did not get its own announcement.

This version contains many bugfixes, as usual, users are advised to upgrade to this version.

Happy crawling and thanks to our sponsors, contributors and users! PS: I am tempted to run a workshop on webcrawling with StormCrawler at the BigData conference in Vilnius in November. Anyone interested? If so please get in touch and let me know what you'd like to learn about. https://bigdataconference.eu/

Wednesday, 5 May 2021

What's new in StormCrawler 1.18

 
StormCrawler 1.18 has just been released. Since the previous version dates from nearly 10 months ago, the number of changes is rather large (see below).

This version contains many bugfixes, as usual, users are advised to upgrade to this version. One of the noticeable new features is module for URLFrontier (if you haven't checked it up, do so right now!); I will publish a tutorial on how to use it soon.

1.18 is also likely to be the last release based an Apache Storm 1.x, our 2.x branch will become master as soon as I have released 2.1.

Happy crawling and thanks to our sponsors, contributors and users!

Monday, 20 July 2020

Please welcome StormCrawler 2.0

Nearly 6 years after its initial release and after another 32 releases, StormCrawler has just reached version 2.0! 

This is similar to what we did 4 years ago when 1.0 was released, in that the change of major version reflects the version of Apache Storm that StormCrawler is based on. This is not a major refactoring of StormCrawler in any way, although some minor changes can be found, mainly in the way the topologies are submitted. These changes are documented in the READMEs generated by our archetypes.

In terms of functionalities and behavior, StormCrawler 2.0 is similar to the version 1.17 released a few minutes ago.

I expect to keep both branches in parallel for a bit, at least until StormCrawler 2.0 has been sufficiently tested and is used by the majority of our users.

The change to Apache Storm 2 is not just a way of future-proofing StormCrawler, since version 2 is the current branch in Apache Storm. By adopting Storm 2, we are also getting a platform 100% Java making debugging and possible contributions to Apache Storm itself, and we also benefit from Storm's recent improvements such as improved performance and better backpressure model.

I am looking forward to getting feedback (and bugfixes) from the StormCrawler community. Please give StormCrawler 2.0 a try if you can.

Happy crawling! 




What's new in StormCrawler 1.17


I have just released StormCrawler 1.17. As you can see in the list below, this contains important bugfixes and improvements. For this reason, we recommend that all users upgrade to this version, however, please check the breaking changes below if you apply it to an existing crawl.

Dependency upgrades

  • Various dependency upgrades  #808
  • CrawlerCommons 1.1 dependency #807
  • Tika 1.24.1 #797
  • Jackson-databind  #803 #793 #798

Core

  • Use regular expressions for custom number of threads per queue fetcher #788
  • /!breaking!/ Prefix protocol metadata #789
  • Basic authentication for OKHTTP #792
  • Utility to debug / test parsefilters #794
  • /!breaking!/ Remove deprecated methods and fields enhancement #791
  • AdaptiveScheduler to set last-modified time in metadata  #777 #812
  • /bugfix/ _fetch.exception_ key should be removed from metadata if subsequent fetches are successful #813
  • /bugfix/ SimpleFetcherBolt maxThrottleSleepMSec not deactivated #814
  • /!breaking!/ Index pages with content="noindex,follow" meta tag #750
  • Enable extension parsing for SitemapParser enhancement parser #749 #815

WARC



Elasticsearch


  • /bugfix/ AggregationSpout error due SimpleDateFormat not thread safe #809
  • /bugfix/ IndexerBolt issue causing ack failures #801
  • Allow ES to connect over a proxy #787
Of the breaking changes above, #789 is particularly important. If you want to use SC 1.17 on an existing crawl, make sure you add 

protocol.md.prefix: ""

to the configuration. Similarly, http.skip.robots has changed to http.robots.file.skip


Thanks to all contributors and users! Happy crawling! 

PS: something equally exciting is coming next ;-)



Thursday, 16 January 2020

What's new in StormCrawler 1.16?

Happy new year!

StormCrawler 1.16 was released a couple of days ago. You can find the full list of changes on https://github.com/DigitalPebble/storm-crawler/milestone/26?closed=1

As usual, we recommend that all users upgrade to this version as it contains important fixes and performance improvements.

Dependency upgrades

  • Tika 1.23 (#771)
  • ES 7.5.0 (#770
  • jackson-databind from 2.9.9.2 to 2.9.10.1 dependency (#767)

Core

  • OKHttp configure authentication for proxies (#751)
  • Make URLBuffer configurable + AbstractURLBuffer uses URLPartitioner (#754)
  • /bugfix/ okhttp protocol: reliably mark trimmed content because of content limit (#757)
  • /!breaking!/ urlbuffer code in a separate package + 2 new implementations (#764)
  • Crawl-delay handling: allow `fetcher.max.crawl.delay` exceed 300 sec.(#768)
  • okhttp protocol: HTTP request header lacks protocol name and version (#775)
  • Locking mechanism for Metadata objects (#781)

LangID

  • /bugfix/ langID parse filter gets stuck (#758)

Elasticsearch

  • /bugfix/ Fix NullPointerException in JSONResourceWrappers  (#760)
  • ES specify field used for grouping the URLs explicitly in mapping (#761)
  • Use search after for pagination in HybridSpout (#762)
  • Filter queries in ES can be defined as lists (#765)
  • es.status.bucket.sort.field can take a list of values (#766)
  • Archetype for SC+Elasticsearch (#773)
  • ES merge seed injection into crawl topology (#778)
  • Kibana - change format of templates to ndjson (#780)
  • /bugfix/ HybridSpout get key for results when prefixed by "metadata." (#782)
  • AggregationSpout to store sortValues for the last result of each bucket (#783)
  • Import Kibana dashboards using the API (#785)
  • Include Kibana script and resources in ES archetype (#786)

One of the main improvements in 1.16 is the addition of a Maven archetype to generate a crawl topology using Elasticsearch as a backend (#773). This is done by calling

mvn archetype:generate -DarchetypeGroupId=com.digitalpebble.stormcrawler -DarchetypeArtifactId=storm-crawler-elasticsearch-archetype -DarchetypeVersion=LATEST

The generated project also contains a script and resources to load templates into Kibana.

The topology for Elasticsearch now includes the injection of seeds from a file, which was previously in a separate topology. These changes should help beginners get started with StormCrawler.

The previous release included URLBuffers, with just one simple implementation. Two new implementations have been added in #764. The brand new PriorityURLBuffer sorts the buckets by the number of acks they got since the last sort whereas the SchedulingURLBuffer tries to guess when a queue should release a URL based on how long it took its previous URLs to be acked on average. The former has been used extensively with the HybridSpout but the latter is still experimental.

Finally, we added a soft locking mechanism to Metadata (#781)  to help trace the source of ConcurrentModificationExceptions. If you are experiencing such exceptions, calling metadata.lock() when emitting e.g.

collector.emit(StatusStreamName, tuple, new Values(url, metadata.lock(), Status.FETCHED))

will trigger an exception whenever the metadata object is modified somewhere else. You might need to call unlock() in the subsequent bolts.

This does not change the way the Metadata works but is just there to help you debug.

Hopefully, we should be able to release 2.0 in the next few months. In the meantime, happy crawling and a massive thank you to all contributors!