212 building googlebot - deview - google drive
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Transcript of 212 building googlebot - deview - google drive
Building Googlebot
Youngjin KimOctober 15, 2013
http://www.creditwritedowns.com/2011/07/european-monetary-union-titanic.html
From the web to your query
● Query processing1. Lookup keywords in the index => every relevant page2. Rank pages and display the result
● Google's index of the webkeyword => { page1, page2, ... }
● Building the index requires processing the current version of all of the pages on the web...
All of the pages on the web!?!
60 Trillion Pages And Counting!
Our local copy of the web
● Crawling○ Googlebot
● Storage○ Google File System (GFS), BigTable
● Processing○ MapReduce
● Data Centers○ Job control, Fault-Tolerance, High-Speed Networking,
Power/Cooling, etc.
Finding every page with googlebot
● Basic discovery crawl1. Start with the set
of known links2. Crawl every link
(pages change!)3. Extract every
new link, repeatCrawlStatus
WebPage
Crawl Pages
Extract Links
Key considerations in crawling
● Polite crawling○ Do not overload websites and DNS (no DoS!) ○ Understand web serving infrastructure
● Prioritize among discovered links○ Crawl is a giant queuing system○ Predicting serving capacity
● Do not waste resources○ Ignore spam/broken links○ Skip links with duplicate content
Mirrors
● Hosts with exactly the same contentdeview.krwww.deview.kr
● Paths within hosts with the same contentwww.cs.unc.edu/Courses/comp426-f09/docs/tools/downloads/tomcat/ jakarta-tomcat-4.1.29/webapps/tomcat-docswww.cs.unc.edu/Courses/comp590-001-f08/docs/tools/downloads/tomcat/ jakarta-tomcat-4.1.29/webapps/tomcat-docswww.cs.unc.edu/Courses/comp590-001-f08/tools/downloads/tomcat/ jakarta-tomcat-4.1.29/webapps/tomcat-docswww.cs.unc.edu/Courses/jbs/tools/downloads/tomcat/ jakarta-tomcat/4.1.29/webapps/tomcat-docs
● Unrestricted mirroring across hosts and paths○ Distributed graph mining
Optimizing our crawling
● Efficient crawling requires duplicate handling○ Predict whether a newly discovered link points to
duplicate content○ Must happen before crawling
useful(link, status_table) => { yes, no }
Duplicates in Dynamic Pages
● Duplicates are most common in dynamic linkshttp://foo.com/forum/viewtopic.php?t=3808&sid=126bc5f2http://foo.com/forum/viewtopic.php?t=3808&sid=d5b8483bhttp://foo.com/forum/viewtopic.php?t=3808&sid=3b1a8e27http://foo.com/forum/viewtopic.php?t=3808&sid=2a21f059...
● Significance analysis○ Parameter t is a relevant○ Parameter sid is irrelevant
● Duplicate predictionhttp://foo.com/forum/viewtopic.php?t=3808&sid=ee5da24a
SameContent
Equivalence rules and class names
● Equivalence rule for a cluster○ Set of relevant parameters○ Set of irrelevant parameters
● Equivalence class name○ Remove irrelevant parameters
ECN(link1) = ECN(link2) => Same content!○ For the previous example
ECN(http://foo.com/forum/viewtopic.php?t=3808&sid=ee5da24a) = http://foo.com/forum/viewtopic.php?t=3808
Modified crawl algorithm
● Representative table○ Equivalence class name => representative link
● Given a new link1. Identify cluster2. Lookup equivalence rule3. Apply rule to determine equivalence class name4. Lookup table of representatives5. Crawl link if no representative found
Equivalence rule generation
● Find every crawled link under a cluster cluster = { link1 : content1, link2 : content2, ... }● Study evidence
1. Insignificance analysis2. Significance analysis3. Parameter classification4. Equivalence rule construction
rule(cluster) = { param1 : RELEVANT, param2 : IRRELEVANT, param3 : CONFLICT, ... }
1. Insignificance analysis
● Group links by content content1 = { link11, link21, ... } content2 = { link21, link22, ... } ... ● For each parameter
○ For each content group with this parameter■ If parameter values are not the same, add the number
of links to the insignificance index
2. Significance analysis
● For each parameter○ Remove the parameter from every link
■ Group content by remainder link remainder1 = { content11, content21, ... } remainder2 = { content21, content22, ... } ...
■ Increment significance index by the number of unique contents minus 1
3. Parameter classification
● For each parameter○ Compute content relevance (or irrelevance) value
○ Sample criteria: 90/10 rule■ If relevance > 90 => parameter is RELEVANT■ If relevance < 10 => parameter is IRRELEVANT■ Otherwise, parameter is CONFLICT
Content_Relevance =Significance_Index
Significance_Index + Insignificance_Index
Content_Irrelevance =Insignificance_Index
Significance_Index + Insignificance_Index
Example: P is content-irrelevant
http://foo.com/directory?P=1&Q=3http://foo.com/directory?P=2&Q=3
http://foo.com/directory?P=1&Q=2http://foo.com/directory?P=2&Q=2http://foo.com/directory?P=3&Q=2http://foo.com/directory?P=4&Q=2
Content B
Cluster
Content A
2 links,different Ps
Content A
4 links,different Ps
Content B
Insignificance Analysis of P
P's insignificance index = 2 + 4 = 6P's content-irrelevance value = 100%
2 links,Content A
Q = 3
4 links,Content B
Q = 2
Significance Analysis of P
P's significance index = 0P's content-relevance value = 0%
Example: Q is content-relevant
http://foo.com/directory?P=1&Q=3http://foo.com/directory?P=2&Q=3
http://foo.com/directory?P=1&Q=2http://foo.com/directory?P=2&Q=2http://foo.com/directory?P=3&Q=2http://foo.com/directory?P=4&Q=2
Content B
Cluster
Content A
2 links,same Q
Content A
4 links,same Q
Content B
Insignificance Analysis of Q
Q's insignificance index = 0Q's content-irrelevance value = 0%
2 links,Content A&B
P = 1
2 links,Content A&B
P = 2
Significance Analysis of Q
Q's significance index = 1 + 1 = 2Q's content-relevance value = 100%
Facing the Real World
● Limitations○ Co-changing parameters○ Noisy data○ Parameters not used in the standard way○ Need for continuous validation
● State-of-the-art○ White-box vs black-box
● Search is not solved○ Not even crawling is solved!
Defining duplicates
● Identical pages● Identical visible content● Essentially identical visible content
○ Ignore page generation time○ Ignore breaking news side bar○ etc.
● What is the right answer?Two pages should be considered duplicatesif our users would consider them duplicates
● How to translate this notion into a checksum?
Q & A
Thank You!