Difference between revisions of "Partitioning Cache Data"

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  org.lockss.titleDbs = http://bpldb.bplonline.org/etc/adpn/titledb-local.xml
 
  org.lockss.titleDbs = http://bpldb.bplonline.org/etc/adpn/titledb-local.xml
  
Implementing a ''1 + 6'' partitioning strategy can save 12% on average for each network node. ''1 + 6'' indicates AU owner + 6 additional network nodes. Adding 2 additional nodes to the network can decrease per node storage by an average of 30%. Adding 4 additional nodes and partitioning cache data can save per node storage on average of 41%. This means we could store up to 18 TB of data on 10.6 TB nodes.
+
''n.b. An online interface exists but access control isn't defined yet. Contact Tobin for details.''
  
Implementing a ''1 + 5'' which is 6 discrete nodes in the network (double quorum), base storage decrease is 25% with no additional nodes. ''1 + 5'' with 4 additional nodes achieves a staggering 50% on average per node storage reduction.
+
PLNs can reduce the current burden on storage capacity and be more agile incorporating new members by establishing a baseline number indicating how many copies of the data in the network is sufficient. Data should then be partitioned such that each AU is contained on that number of nodes.  For this exercise, I have looked at implementing a ''1 + 5'' baseline. ''1 + 5'' indicates AU owner plus 5 network nodes (not the AU owner). This strategy results in 6 copies of data in an 8 node network and the average storage burden per node is reduced by '''25%''' with no new nodes added to the network. Adding 2 nodes to the network and implementing ''1 + 5'' reduces burden on average '''40%''' per node. Adding 4 nodes to the network and implementing ''1 + 5'' reduces burden on average '''50%''' per node.  
 +
 +
{| class="wikitable"
 +
!colspan="7"|Extant Storage Burden in TB
 +
|-
 +
| ||'''Base'''||colspan="6" align="center"|'''1 + 5'''
 +
|-
 +
| || ||colspan="6" align="center"| additional nodes
 +
|-
 +
| || ||+0||+1||+2||+3||+4
 +
|-
 +
|ADAH||5.87||3.79||3.42||2.64||2.47||2.37
 +
|-
 +
|AUB||5.87||4.66||4.52||3.82||3.77||3.44
 +
|-
 +
|BPL||5.87||3.79||3.36||3.28||3.14||1.89
 +
|-
 +
|SHC||5.87||4.79||4.06||3.57||2.81||2.74
 +
|-
 +
|TROY||5.87||3.80||3.32||3.20||3.11||2.81
 +
|-
 +
|UAB||5.87||4.96||3.64||3.14||2.70||2.61
 +
|-
 +
|UAT||5.87||5.26||5.16||5.11||4.98||4.97
 +
|-
 +
|UNA||5.87||4.18||4.02||3.64||3.05||2.87
 +
|-
 +
|}
  
All nodes (default configuration)
+
Limiting the copies of an AU and increasing the number of nodes increases network capacity. The nodes added to the network also reduce the storage burden of the 8 original nodes by reshuffling AU responsibilities in the ''1 + 5'' assignments.
  <nowiki>
 
au_host AUCount DiskCost (TB)  AUCount  DiskCost (TB)
 
ADAH 778 5.13            667
 
AUB 778 5.13
 
BPL 778 5.13
 
SHC 778 5.13
 
TROY 778 5.13
 
UAB 778 5.13
 
UAT 778 5.13
 
UNA 778 5.13
 
</nowiki>
 
Does not include vacated publisher AUs (which is between 500 and 600 GB).
 
  
''1 + 6''
+
'''Graph''' : Cost Reduction per Node in TB : http://bpldb.bplonline.org/images/adpn/CostReductionTB.png
<nowiki>        1+6 No New Nodes          1+6 2 New Nodes            1+6 4 New Nodes
 
au_host AUCount DiskCost cost    AUCount DiskCost cost       AUCount DiskCost cost
 
ADAH 667 4.62 -9.97%   519   3.95   -22.98%    503    2.61    -49.11%
 
AUB 676 3.85 -24.94%   540   3.23   -37.09%    425    3.17    -38.13%
 
BPL 669 4.51 -12.15%   522   3.11   -39.44%    405    2.48    -51.57%
 
SHC 666 4.49 -12.41%   519   3.23   -36.96%    408    2.84    -44.66% 
 
TROY 666 4.3 -16.09%   519   3.28   -36.09%    401    3.35    -34.68%
 
UAB 667 4.6 -10.26%   519   3.03   -40.89%    413    2.51    -51.13%
 
UAT 767 5.09 -0.86%   751   4.91   -4.38%    740    4.81    -6.23%
 
UNA 667 4.45 -13.23%   519   3.28   -36.09%    357    2.98    -41.96%
 
ADAH2   518   3.95       407    2.54
 
AUB2   519   3.95       501    3.26
 
BPL2       457    2.87
 
UAT2       428    2.49
 
</nowiki>
 
  
''1 + 5''
+
'''Graph''' : Cost Reduction per Node % Change : http://bpldb.bplonline.org/images/adpn/CostReductionPercent.png
<nowiki> 1+5 No New Nodes         1+5 4 New Nodes
 
au_host AUCount DiskCost cost AUCount DiskCost cost
 
ADAH 581 3.85 -24.87% 395 1.96 -61.80%
 
AUB 539 3.99 -22.12% 349 2.91 -43.30%
 
BPL 537 3.73 -27.13% 463 2.78 -45.74%
 
SHC 590 3.38 -34.07% 350 2.95 -42.46%
 
TROY 555 3.81 -25.71% 327 1.84 -64.18%
 
UAB 572 3.7 -27.87% 331 2.11 -58.88%
 
UAT 757 4.93 -3.68% 736 4.87 -5.02%
 
UNA 536 3.35 -34.56% 312 2.38 -53.55%
 
ADAH2 332 2.07
 
AUB2 328 2.53
 
BPL2 367 2.54
 
UAT2 377 1.84
 
</nowiki>
 
  
 
= Partition Implementation =
 
= Partition Implementation =
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  </property>
 
  </property>
 
</lockss-config></nowiki>
 
</lockss-config></nowiki>
 
  
 
=== Comprehending LOCKSS Title List ===
 
=== Comprehending LOCKSS Title List ===
Line 256: Line 240:
 
  }
 
  }
 
}</nowiki>
 
}</nowiki>
 
  
 
Using the original distribution and reshuffling for a new node resulted in :  
 
Using the original distribution and reshuffling for a new node resulted in :  
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# Select a list of peer_ids and au_ids where count is less than maxcount
 
# Select a list of peer_ids and au_ids where count is less than maxcount
 
# Insert a shuffled peer id where not in peer_ids select list
 
# Insert a shuffled peer id where not in peer_ids select list
 
  
 
The entire method :
 
The entire method :
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   }
 
   }
 
}</nowiki>
 
}</nowiki>
 
  
 
Dropping a node (SHC1) and reshuffling AUs without full holdings results in the following table.
 
Dropping a node (SHC1) and reshuffling AUs without full holdings results in the following table.

Latest revision as of 08:13, 14 October 2013

Why Partition

Partitioned Cost Reductions

Quorum in the network is 3. (This is down from the previous value of 4... find out why).

Any sort of partitioning strategy would need to be implemented at the titledb.xml level. Title AUs can be assigned to peers centrally, and each peer should receive a custom titledb.xml file. If LOCKSS is unwilling to support that then there is alternative using local parameters.

org.lockss.titleDbs = http://bpldb.bplonline.org/etc/adpn/titledb-local.xml

n.b. An online interface exists but access control isn't defined yet. Contact Tobin for details.

PLNs can reduce the current burden on storage capacity and be more agile incorporating new members by establishing a baseline number indicating how many copies of the data in the network is sufficient. Data should then be partitioned such that each AU is contained on that number of nodes. For this exercise, I have looked at implementing a 1 + 5 baseline. 1 + 5 indicates AU owner plus 5 network nodes (not the AU owner). This strategy results in 6 copies of data in an 8 node network and the average storage burden per node is reduced by 25% with no new nodes added to the network. Adding 2 nodes to the network and implementing 1 + 5 reduces burden on average 40% per node. Adding 4 nodes to the network and implementing 1 + 5 reduces burden on average 50% per node.

Extant Storage Burden in TB
Base 1 + 5
additional nodes
+0 +1 +2 +3 +4
ADAH 5.87 3.79 3.42 2.64 2.47 2.37
AUB 5.87 4.66 4.52 3.82 3.77 3.44
BPL 5.87 3.79 3.36 3.28 3.14 1.89
SHC 5.87 4.79 4.06 3.57 2.81 2.74
TROY 5.87 3.80 3.32 3.20 3.11 2.81
UAB 5.87 4.96 3.64 3.14 2.70 2.61
UAT 5.87 5.26 5.16 5.11 4.98 4.97
UNA 5.87 4.18 4.02 3.64 3.05 2.87

Limiting the copies of an AU and increasing the number of nodes increases network capacity. The nodes added to the network also reduce the storage burden of the 8 original nodes by reshuffling AU responsibilities in the 1 + 5 assignments.

Graph : Cost Reduction per Node in TB : http://bpldb.bplonline.org/images/adpn/CostReductionTB.png

Graph : Cost Reduction per Node % Change : http://bpldb.bplonline.org/images/adpn/CostReductionPercent.png

Partition Implementation

Title List

The title list is the most crucial component for any partitioning. With close to 1000 AUs management of partition responsibilities would be cumbersome at the node level.

<lockss-config>
 <property name="org.lockss.titleSet">
  <property name="Birmingham Public Library">
   <property name="name" value="All Birmingham Public Library AUs" />
   <property name="class" value="xpath" />
   <property name="xpath" value="[attributes/publisher='Birmingham Public Library']" />
  </property>
 </property> 
 <property name="org.lockss.title">
  <property name="BirminghamPublicLibraryBasePluginBirminghamPublicLibraryCartographyCollectionMaps000400000599">
   <property name="attributes.publisher" value="Birmingham Public Library" />
   <property name="journalTitle" value="Birmingham Public Library Cartography Collection" />
   <property name="type" value="journal" />
   <property name="title" value="Birmingham Public Library Cartography Collection: Maps (000400-000599)" />
   <property name="plugin" value="org.bplonline.adpn.BirminghamPublicLibraryBasePlugin" />
   <property name="param.1">
    <property name="key" value="base_url" />
    <property name="value" value="http://bpldb.bplonline.org/adpn/load/" />
   </property>
   <property name="param.2">
    <property name="key" value="group" />
    <property name="value" value="Cartography" />
   </property>
   <property name="param.3">
    <property name="key" value="collection" />
    <property name="value" value="000400-000599" />
   </property>
  </property>
 </property>
</lockss-config>

Comprehending LOCKSS Title List

Nested same name elements with different levels of nesting depth causes some difficulty in comprehension using standard tools. Standard deserialization techniques won't work because group 1 property element collection (org.lockss.titleSet) has different depth than group 2 property element collection (org.lockss.title).

protected void DeserializeXml() {
 using (FileStream _f = new FileStream(Server.MapPath(@"titledb.xml"), FileMode.Open, FileAccess.Read))
 {
  XmlReaderSettings _sets = new XmlReaderSettings();
  _sets.IgnoreWhitespace = true;
  _sets.ProhibitDtd = false;

  XmlReader _xml = XmlReader.Create(_f, _sets);
  XmlSerializer _xs = new XmlSerializer(typeof(LockssTitleDb));
  LockssTitleDb _titles = (LockssTitleDb)_xs.Deserialize(_xml);
 
  for (int i = 0; i < _titles.LockssTitleSet.Length; i++)
  {
    if (i % 2 == 0)
    {
      // first group property (has attribute name=org.lockss.titleSet)
      // titleSet displays publisher detail
      // this assumes group of 2 for each publisher and AU list
    } 
    else 
    {
      // second group property (has attribute name=org.lockss.title)
      // each iteration is a new AU for group 1 publisher
      for (int j = 0; j < _titles.LockssTitleSet[i].ChildNodes.Count; j++)
      {
        // property  name = normalized AU string
        // outer AU definition
        foreach (XmlNode _node in _titles.LockssTitleSet[i].ChildNodes[j].ChildNodes)
        {
          // loop through property tags          
        }
      }
    }
  }
  _f.close();
 }
...
[XmlRoot("lockss-config")]
public class LockssTitleDb 
{
    // cannot create a single interface for all nesting depths with a single name
    [XmlAnyElement()]
    public XmlElement[] LockssTitleSet;
}

Local Data Store

http://bpldb.bplonline.org/images/adpn/datastore.png

XML Generation

ExpertConfig option org.lockss.titlesDb does not examine content type. It only looks at the URL ending and string matches .xml, else it assumes it is a .txt configuration file. See BaseConfigFile.java constructor.

Title Distribution

Base Distribution

Using the local data store, au_ids are auto-incremented. After the initial distribution, new AU releases can be isolated by selecting from last known au_id. Row timestamp could also be used.

string[] _peers = GetPeerArray();
foreach (DataRow _row in _titles.Rows)
{
 Shuffle(_peers);

 int _counter = 0;
 bool _isPeer = IsPeer(_row["au_pub_id"].ToString());
 int _maxCount = _isPeer ? 5 : 6; 
 // not every publisher is a peer

 // insert 6 5
 foreach (string _peer in _peers)
 {
  if (_counter == _maxCount) break;
  if (_peer.Equals(_row["au_pub_id"].ToString())) continue;

  _connect.Command.Parameters.Clear();
  _connect.Command.CommandText = "INSERT INTO `adpn_peer_titles` (`peer_id`, `au_id`) VALUES (?,?)";
  _connect.Command.Parameters.AddWithValue("?", _peer);
  _connect.Command.Parameters.AddWithValue("?", _row["au_id"].ToString());
  _connect.Command.ExecuteNonQuery();
  _counter++;
 }

 if (_isPeer)
 {
  // insert 1
  _connect.Command.Parameters.Clear();
  _connect.Command.CommandText = "INSERT INTO `adpn_peer_titles` (`peer_id`, `au_id`) VALUES (?,?)";
  _connect.Command.Parameters.AddWithValue("?", _row["au_pub_id"].ToString());
  _connect.Command.Parameters.AddWithValue("?", _row["au_id"].ToString());
  _connect.Command.ExecuteNonQuery();
 }
}

A resultant table set could look like the following:

peer_id  count(*)  % burden
ADAH	  499	  55%
AUB	  549	  61%
BPL	  520	  57%
SHC	  504	  56%
SHC1	  490	  54%
TROY	  492	  54%
UAB	  532	  59%
UAT	  852	  94%
UAT1	  482	  53%
UNA	  510	  56%
		
905	Titles

New Node Reshuffle

The original distribution algorithm can be used with a slight modification, only update rows in the adpn_peer_titles table when new node is up after shuffle. This approach is assuming the new node is not to be considered an AU owner for existing AUs.

string[] _peers = GetPeerArray();
foreach (DataRow _row in _titles.Rows)
{
 Shuffle(_peers);

 int _counter = 0;
 bool _isPeer = IsPeer(_row["au_pub_id"].ToString());
 int _maxCount = _isPeer ? 5 : 6; 
 // not every publisher is a peer

 // insert 6 5
 foreach (string _peer in _peers)
 {
  if (_counter == _maxCount) break;
  if (_peer.Equals(_row["au_pub_id"].ToString())) continue;

  // ONLY modify existing AU map when new node is up 
  if (_peer.Equals(newNodePeerId))
  {
    _connect.Command.Parameters.Clear();
    _connect.Command.CommandText = @"
UPDATE `adpn_peer_titles` AS `a`, 
      (SELECT  `b2`.`peer_id` FROM `adpn_peer_titles` AS `b2`  
       WHERE `b2`.`au_id` = ?  AND `b2`.`peer_id` != ? ORDER BY RAND() LIMIT 1) AS `b` 
SET `a`.`peer_id` = ?
WHERE `a`.`peer_id` = `b`.`peer_id`
AND `a`.`au_id` = ? ";

    _connect.Command.Parameters.AddWithValue("?", _row["au_id"].ToString());
    _connect.Command.Parameters.AddWithValue("?", _row["au_pub_id"].ToString());
    _connect.Command.Parameters.AddWithValue("?", _peer);
    _connect.Command.Parameters.AddWithValue("?", _row["au_id"].ToString());
    _connect.Command.ExecuteNonQuery();
  }
 }
}

Using the original distribution and reshuffling for a new node resulted in :

peer_id  count(*)  % burden
ADAH	  456     50%
AUB	  492  	  54%
BPL	  467     52%
SHC	  456	  50%
SHC1	  438	  48%
TROY  	  445	  49%
UAB	  466	  51%
UAT	  845	  93%
UAT1	  441	  49%
UNA	  467	  52%
BPL1	  457	  50%

905 titles 

Dead Node Reshuffle

When a node is no longer a part of the network:

  1. Delete peer_id from apdn_peer_titles
  2. Select a list of peer_ids and au_ids where count is less than maxcount
  3. Insert a shuffled peer id where not in peer_ids select list

The entire method :

private void DeadNodeShuffle()
{
  _connect.Command.Parameters.Clear();
  _connect.Command.CommandText = @"SELECT `au_id` FROM `adpn_peer_titles` GROUP BY `au_id` HAVING COUNT(*) < 6";
  DataTable _titles = new DataTable();
  using (OdbcDataAdapter _adapter = new OdbcDataAdapter(_connect.Command))
  {
    _adapter.Fill(_titles);
  }

  foreach (DataRow _row in _titles.Rows)
  {
    _connect.Command.Parameters.Clear();
    _connect.Command.CommandText = @"INSERT INTO `adpn_peer_titles` (`peer_id`, `au_id`) 
      (SELECT `adpn_peers`.`peer_id`, (SELECT `au_id` FROM `au_titlelist` WHERE `au_id` = ?) AS 'au_id'
       FROM `adpn_peers` 
       WHERE `adpn_peers`.`active` = 'y'
       AND  `adpn_peers`.`peer_id` NOT IN (SELECT `peer_id` FROM `adpn_peer_titles` WHERE `au_id` = ?)       
       ORDER BY RAND() LIMIT 1)";
    _connect.Command.Parameters.AddWithValue("?", _row["au_id"].ToString());
    _connect.Command.Parameters.AddWithValue("?", _row["au_id"].ToString());
    _connect.Command.ExecuteNonQuery();
  }
}

Dropping a node (SHC1) and reshuffling AUs without full holdings results in the following table.

peer_id   count(*)   % burden
ADAH	  496	    55%
AUB	  528	    58%
BPL	  512	    57%
BPL1	  514	    57%
SHC	  500	    55%
TROY	  503	    56%
UAB	  520	    57%
UAT	  850	    94%
UAT1	  496	    55%
UNA	  511	    56%

905 titles