 10542d00ea
			
		
	
	10542d00ea
	
	
	
		
			
			Curly quotes(Chinese punctuation) usually input from Chinese input method. When read from english context, it makes some confusion. Change-Id: Ibd50299ee287c56ec4759ea8ff53d47d006144f8
		
			
				
	
	
		
			958 lines
		
	
	
		
			36 KiB
		
	
	
	
		
			ReStructuredText
		
	
	
	
	
	
			
		
		
	
	
			958 lines
		
	
	
		
			36 KiB
		
	
	
	
		
			ReStructuredText
		
	
	
	
	
	
| ==================================
 | ||
| Building a Consistent Hashing Ring
 | ||
| ==================================
 | ||
| 
 | ||
| ---------------------
 | ||
| Authored by Greg Holt
 | ||
| ---------------------
 | ||
| 
 | ||
| This is a compilation of five posts I made earlier discussing how to build
 | ||
| a consistent hashing ring. The posts seemed to be accessed quite frequently,
 | ||
| so I've gathered them all here on one page for easier reading.
 | ||
| 
 | ||
| Part 1
 | ||
| ======
 | ||
| "Consistent Hashing" is a term used to describe a process where data is
 | ||
| distributed using a hashing algorithm to determine its location. Using
 | ||
| only the hash of the id of the data you can determine exactly where that
 | ||
| data should be. This mapping of hashes to locations is usually termed a
 | ||
| "ring".
 | ||
| 
 | ||
| Probably the simplest hash is just a modulus of the id. For instance, if
 | ||
| all ids are numbers and you have two machines you wish to distribute data
 | ||
| to, you could just put all odd numbered ids on one machine and even numbered
 | ||
| ids on the other. Assuming you have a balanced number of odd and even
 | ||
| numbered ids, and a balanced data size per id, your data would be balanced
 | ||
| between the two machines.
 | ||
| 
 | ||
| Since data ids are often textual names and not numbers, like paths for
 | ||
| files or URLs, it makes sense to use a "real" hashing algorithm to convert
 | ||
| the names to numbers first. Using MD5 for instance, the hash of the name
 | ||
| 'mom.png' is '4559a12e3e8da7c2186250c2f292e3af' and the hash of 'dad.png'
 | ||
| is '096edcc4107e9e18d6a03a43b3853bea'. Now, using the modulus, we can
 | ||
| place 'mom.jpg' on the odd machine and 'dad.png' on the even one. Another
 | ||
| benefit of using a hashing algorithm like MD5 is that the resulting hashes
 | ||
| have a known even distribution, meaning your ids will be evenly distributed
 | ||
| without worrying about keeping the id values themselves evenly distributed.
 | ||
| 
 | ||
| Here is a simple example of this in action:
 | ||
| 
 | ||
| .. code-block:: python
 | ||
| 
 | ||
|   from hashlib import md5
 | ||
|   from struct import unpack_from
 | ||
| 
 | ||
|   NODE_COUNT = 100
 | ||
|   DATA_ID_COUNT = 10000000
 | ||
| 
 | ||
|   node_counts = [0] * NODE_COUNT
 | ||
|   for data_id in xrange(DATA_ID_COUNT):
 | ||
|       data_id = str(data_id)
 | ||
|       # This just pulls part of the hash out as an integer
 | ||
|       hsh = unpack_from('>I', md5(data_id).digest())[0]
 | ||
|       node_id = hsh % NODE_COUNT
 | ||
|       node_counts[node_id] += 1
 | ||
|   desired_count = DATA_ID_COUNT / NODE_COUNT
 | ||
|   print '%d: Desired data ids per node' % desired_count
 | ||
|   max_count = max(node_counts)
 | ||
|   over = 100.0 * (max_count - desired_count) / desired_count
 | ||
|   print '%d: Most data ids on one node, %.02f%% over' % \
 | ||
|       (max_count, over)
 | ||
|   min_count = min(node_counts)
 | ||
|   under = 100.0 * (desired_count - min_count) / desired_count
 | ||
|   print '%d: Least data ids on one node, %.02f%% under' % \
 | ||
|       (min_count, under)
 | ||
| 
 | ||
| ::
 | ||
| 
 | ||
|   100000: Desired data ids per node
 | ||
|   100695: Most data ids on one node, 0.69% over
 | ||
|   99073: Least data ids on one node, 0.93% under
 | ||
| 
 | ||
| So that's not bad at all; less than a percent over/under for distribution
 | ||
| per node. In the next part of this series we'll examine where modulus
 | ||
| distribution causes problems and how to improve our ring to overcome them.
 | ||
| 
 | ||
| Part 2
 | ||
| ======
 | ||
| In Part 1 of this series, we did a simple test of using the modulus of a
 | ||
| hash to locate data. We saw very good distribution, but that's only part
 | ||
| of the story. Distributed systems not only need to distribute load, but
 | ||
| they often also need to grow as more and more data is placed in it.
 | ||
| 
 | ||
| So let's imagine we have a 100 node system up and running using our
 | ||
| previous algorithm, but it's starting to get full so we want to add
 | ||
| another node. When we add that 101st node to our algorithm we notice
 | ||
| that many ids now map to different nodes than they previously did.
 | ||
| We're going to have to shuffle a ton of data around our system to get
 | ||
| it all into place again.
 | ||
| 
 | ||
| Let's examine what's happened on a much smaller scale: just 2 nodes
 | ||
| again, node 0 gets even ids and node 1 gets odd ids. So data id 100
 | ||
| would map to node 0, data id 101 to node 1, data id 102 to node 0, etc.
 | ||
| This is simply node = id % 2. Now we add a third node (node 2) for more
 | ||
| space, so we want node = id % 3. So now data id 100 maps to node id 1,
 | ||
| data id 101 to node 2, and data id 102 to node 0. So we have to move
 | ||
| data for 2 of our 3 ids so they can be found again.
 | ||
| 
 | ||
| Let's examine this at a larger scale:
 | ||
| 
 | ||
| .. code-block:: python
 | ||
| 
 | ||
|   from hashlib import md5
 | ||
|   from struct import unpack_from
 | ||
| 
 | ||
|   NODE_COUNT = 100
 | ||
|   NEW_NODE_COUNT = 101
 | ||
|   DATA_ID_COUNT = 10000000
 | ||
| 
 | ||
|   moved_ids = 0
 | ||
|   for data_id in xrange(DATA_ID_COUNT):
 | ||
|       data_id = str(data_id)
 | ||
|       hsh = unpack_from('>I', md5(str(data_id)).digest())[0]
 | ||
|       node_id = hsh % NODE_COUNT
 | ||
|       new_node_id = hsh % NEW_NODE_COUNT
 | ||
|       if node_id != new_node_id:
 | ||
|           moved_ids += 1
 | ||
|   percent_moved = 100.0 * moved_ids / DATA_ID_COUNT
 | ||
|   print '%d ids moved, %.02f%%' % (moved_ids, percent_moved)
 | ||
| 
 | ||
| ::
 | ||
| 
 | ||
|   9900989 ids moved, 99.01%
 | ||
| 
 | ||
| Wow, that's severe. We'd have to shuffle around 99% of our data just
 | ||
| to increase our capacity 1%! We need a new algorithm that combats this
 | ||
| behavior.
 | ||
| 
 | ||
| This is where the "ring" really comes in. We can assign ranges of hashes
 | ||
| directly to nodes and then use an algorithm that minimizes the changes
 | ||
| to those ranges. Back to our small scale, let's say our ids range from 0
 | ||
| to 999. We have two nodes and we'll assign data ids 0–499 to node 0 and
 | ||
| 500–999 to node 1. Later, when we add node 2, we can take half the data
 | ||
| ids from node 0 and half from node 1, minimizing the amount of data that
 | ||
| needs to move.
 | ||
| 
 | ||
| Let's examine this at a larger scale:
 | ||
| 
 | ||
| .. code-block:: python
 | ||
| 
 | ||
|   from bisect import bisect_left
 | ||
|   from hashlib import md5
 | ||
|   from struct import unpack_from
 | ||
| 
 | ||
|   NODE_COUNT = 100
 | ||
|   NEW_NODE_COUNT = 101
 | ||
|   DATA_ID_COUNT = 10000000
 | ||
| 
 | ||
|   node_range_starts = []
 | ||
|   for node_id in xrange(NODE_COUNT):
 | ||
|       node_range_starts.append(DATA_ID_COUNT /
 | ||
|                                NODE_COUNT * node_id)
 | ||
|   new_node_range_starts = []
 | ||
|   for new_node_id in xrange(NEW_NODE_COUNT):
 | ||
|       new_node_range_starts.append(DATA_ID_COUNT /
 | ||
|                                 NEW_NODE_COUNT * new_node_id)
 | ||
|   moved_ids = 0
 | ||
|   for data_id in xrange(DATA_ID_COUNT):
 | ||
|       data_id = str(data_id)
 | ||
|       hsh = unpack_from('>I', md5(str(data_id)).digest())[0]
 | ||
|       node_id = bisect_left(node_range_starts,
 | ||
|                             hsh % DATA_ID_COUNT) % NODE_COUNT
 | ||
|       new_node_id = bisect_left(new_node_range_starts,
 | ||
|                             hsh % DATA_ID_COUNT) % NEW_NODE_COUNT
 | ||
|       if node_id != new_node_id:
 | ||
|           moved_ids += 1
 | ||
|   percent_moved = 100.0 * moved_ids / DATA_ID_COUNT
 | ||
|   print '%d ids moved, %.02f%%' % (moved_ids, percent_moved)
 | ||
| 
 | ||
| ::
 | ||
| 
 | ||
|   4901707 ids moved, 49.02%
 | ||
| 
 | ||
| Okay, that is better. But still, moving 50% of our data to add 1% capacity
 | ||
| is not very good. If we examine what happened more closely we'll see what
 | ||
| is an "accordion effect". We shrunk node 0's range a bit to give to the
 | ||
| new node, but that shifted all the other node's ranges by the same amount.
 | ||
| 
 | ||
| We can minimize the change to a node's assigned range by assigning several
 | ||
| smaller ranges instead of the single broad range we were before. This can
 | ||
| be done by creating "virtual nodes" for each node. So 100 nodes might have
 | ||
| 1000 virtual nodes. Let's examine how that might work.
 | ||
| 
 | ||
| .. code-block:: python
 | ||
| 
 | ||
|   from bisect import bisect_left
 | ||
|   from hashlib import md5
 | ||
|   from struct import unpack_from
 | ||
| 
 | ||
|   NODE_COUNT = 100
 | ||
|   DATA_ID_COUNT = 10000000
 | ||
|   VNODE_COUNT = 1000
 | ||
| 
 | ||
|   vnode_range_starts = []
 | ||
|   vnode2node = []
 | ||
|   for vnode_id in xrange(VNODE_COUNT):
 | ||
|       vnode_range_starts.append(DATA_ID_COUNT /
 | ||
|                                 VNODE_COUNT * vnode_id)
 | ||
|       vnode2node.append(vnode_id % NODE_COUNT)
 | ||
|   new_vnode2node = list(vnode2node)
 | ||
|   new_node_id = NODE_COUNT
 | ||
|   NEW_NODE_COUNT = NODE_COUNT + 1
 | ||
|   vnodes_to_reassign = VNODE_COUNT / NEW_NODE_COUNT
 | ||
|   while vnodes_to_reassign > 0:
 | ||
|       for node_to_take_from in xrange(NODE_COUNT):
 | ||
|           for vnode_id, node_id in enumerate(new_vnode2node):
 | ||
|               if node_id == node_to_take_from:
 | ||
|                   new_vnode2node[vnode_id] = new_node_id
 | ||
|                   vnodes_to_reassign -= 1
 | ||
|                   break
 | ||
|           if vnodes_to_reassign <= 0:
 | ||
|               break
 | ||
|   moved_ids = 0
 | ||
|   for data_id in xrange(DATA_ID_COUNT):
 | ||
|       data_id = str(data_id)
 | ||
|       hsh = unpack_from('>I', md5(str(data_id)).digest())[0]
 | ||
|       vnode_id = bisect_left(vnode_range_starts,
 | ||
|                            hsh % DATA_ID_COUNT) % VNODE_COUNT
 | ||
|       node_id = vnode2node[vnode_id]
 | ||
|       new_node_id = new_vnode2node[vnode_id]
 | ||
|       if node_id != new_node_id:
 | ||
|           moved_ids += 1
 | ||
|   percent_moved = 100.0 * moved_ids / DATA_ID_COUNT
 | ||
|   print '%d ids moved, %.02f%%' % (moved_ids, percent_moved)
 | ||
| 
 | ||
| ::
 | ||
| 
 | ||
|   90423 ids moved, 0.90%
 | ||
| 
 | ||
| There we go, we added 1% capacity and only moved 0.9% of existing data.
 | ||
| The vnode_range_starts list seems a bit out of place though. Its values
 | ||
| are calculated and never change for the lifetime of the cluster, so let's
 | ||
| optimize that out.
 | ||
| 
 | ||
| .. code-block:: python
 | ||
| 
 | ||
|   from bisect import bisect_left
 | ||
|   from hashlib import md5
 | ||
|   from struct import unpack_from
 | ||
| 
 | ||
|   NODE_COUNT = 100
 | ||
|   DATA_ID_COUNT = 10000000
 | ||
|   VNODE_COUNT = 1000
 | ||
| 
 | ||
|   vnode2node = []
 | ||
|   for vnode_id in xrange(VNODE_COUNT):
 | ||
|       vnode2node.append(vnode_id % NODE_COUNT)
 | ||
|   new_vnode2node = list(vnode2node)
 | ||
|   new_node_id = NODE_COUNT
 | ||
|   vnodes_to_reassign = VNODE_COUNT / (NODE_COUNT + 1)
 | ||
|   while vnodes_to_reassign > 0:
 | ||
|       for node_to_take_from in xrange(NODE_COUNT):
 | ||
|           for vnode_id, node_id in enumerate(vnode2node):
 | ||
|               if node_id == node_to_take_from:
 | ||
|                   vnode2node[vnode_id] = new_node_id
 | ||
|                   vnodes_to_reassign -= 1
 | ||
|                   break
 | ||
|           if vnodes_to_reassign <= 0:
 | ||
|               break
 | ||
|   moved_ids = 0
 | ||
|   for data_id in xrange(DATA_ID_COUNT):
 | ||
|       data_id = str(data_id)
 | ||
|       hsh = unpack_from('>I', md5(str(data_id)).digest())[0]
 | ||
|       vnode_id = hsh % VNODE_COUNT
 | ||
|       node_id = vnode2node[vnode_id]
 | ||
|       new_node_id = new_vnode2node[vnode_id]
 | ||
|       if node_id != new_node_id:
 | ||
|           moved_ids += 1
 | ||
|   percent_moved = 100.0 * moved_ids / DATA_ID_COUNT
 | ||
|   print '%d ids moved, %.02f%%' % (moved_ids, percent_moved)
 | ||
| 
 | ||
| ::
 | ||
| 
 | ||
|   89841 ids moved, 0.90%
 | ||
| 
 | ||
| There we go. In the next part of this series, will further examine the
 | ||
| algorithm's limitations and how to improve on it.
 | ||
| 
 | ||
| Part 3
 | ||
| ======
 | ||
| In Part 2 of this series, we reached an algorithm that performed well
 | ||
| even when adding new nodes to the cluster. We used 1000 virtual nodes
 | ||
| that could be independently assigned to nodes, allowing us to minimize
 | ||
| the amount of data moved when a node was added.
 | ||
| 
 | ||
| The number of virtual nodes puts a cap on how many real nodes you can
 | ||
| have. For example, if you have 1000 virtual nodes and you try to add a
 | ||
| 1001st real node, you can't assign a virtual node to it without leaving
 | ||
| another real node with no assignment, leaving you with just 1000 active
 | ||
| real nodes still.
 | ||
| 
 | ||
| Unfortunately, the number of virtual nodes created at the beginning can
 | ||
| never change for the life of the cluster without a lot of careful work.
 | ||
| For example, you could double the virtual node count by splitting each
 | ||
| existing virtual node in half and assigning both halves to the same real
 | ||
| node. However, if the real node uses the virtual node's id to optimally
 | ||
| store the data (for example, all data might be stored in /[virtual node
 | ||
| id]/[data id]) it would have to move data around locally to reflect the
 | ||
| change. And it would have to resolve data using both the new and old
 | ||
| locations while the moves were taking place, making atomic operations
 | ||
| difficult or impossible.
 | ||
| 
 | ||
| Let's continue with this assumption that changing the virtual node
 | ||
| count is more work than it's worth, but keep in mind that some applications
 | ||
| might be fine with this.
 | ||
| 
 | ||
| The easiest way to deal with this limitation is to make the limit high
 | ||
| enough that it won't matter. For instance, if we decide our cluster will
 | ||
| never exceed 60,000 real nodes, we can just make 60,000 virtual nodes.
 | ||
| 
 | ||
| Also, we should include in our calculations the relative size of our
 | ||
| nodes. For instance, a year from now we might have real nodes that can
 | ||
| handle twice the capacity of our current nodes. So we'd want to assign
 | ||
| twice the virtual nodes to those future nodes, so maybe we should raise
 | ||
| our virtual node estimate to 120,000.
 | ||
| 
 | ||
| A good rule to follow might be to calculate 100 virtual nodes to each
 | ||
| real node at maximum capacity. This would allow you to alter the load
 | ||
| on any given node by 1%, even at max capacity, which is pretty fine
 | ||
| tuning. So now we're at 6,000,000 virtual nodes for a max capacity cluster
 | ||
| of 60,000 real nodes.
 | ||
| 
 | ||
| 6 million virtual nodes seems like a lot, and it might seem like we'd
 | ||
| use up way too much memory. But the only structure this affects is the
 | ||
| virtual node to real node mapping. The base amount of memory required
 | ||
| would be 6 million times 2 bytes (to store a real node id from 0 to
 | ||
| 65,535). 12 megabytes of memory just isn't that much to use these days.
 | ||
| 
 | ||
| Even with all the overhead of flexible data types, things aren't that
 | ||
| bad. I changed the code from the previous part in this series to have
 | ||
| 60,000 real and 6,000,000 virtual nodes, changed the list to an array('H'),
 | ||
| and python topped out at 27m of resident memory – and that includes two
 | ||
| rings.
 | ||
| 
 | ||
| To change terminology a bit, we're going to start calling these virtual
 | ||
| nodes "partitions". This will make it a bit easier to discern between the
 | ||
| two types of nodes we've been talking about so far. Also, it makes sense
 | ||
| to talk about partitions as they are really just unchanging sections
 | ||
| of the hash space.
 | ||
| 
 | ||
| We're also going to always keep the partition count a power of two. This
 | ||
| makes it easy to just use bit manipulation on the hash to determine the
 | ||
| partition rather than modulus. It isn't much faster, but it is a little.
 | ||
| So, here's our updated ring code, using 8,388,608 (2 ** 23) partitions
 | ||
| and 65,536 nodes. We've upped the sample data id set and checked the
 | ||
| distribution to make sure we haven't broken anything.
 | ||
| 
 | ||
| .. code-block:: python
 | ||
| 
 | ||
|   from array import array
 | ||
|   from hashlib import md5
 | ||
|   from struct import unpack_from
 | ||
| 
 | ||
|   PARTITION_POWER = 23
 | ||
|   PARTITION_SHIFT = 32 - PARTITION_POWER
 | ||
|   NODE_COUNT = 65536
 | ||
|   DATA_ID_COUNT = 100000000
 | ||
| 
 | ||
|   part2node = array('H')
 | ||
|   for part in xrange(2 ** PARTITION_POWER):
 | ||
|       part2node.append(part % NODE_COUNT)
 | ||
|   node_counts = [0] * NODE_COUNT
 | ||
|   for data_id in xrange(DATA_ID_COUNT):
 | ||
|       data_id = str(data_id)
 | ||
|       part = unpack_from('>I',
 | ||
|           md5(str(data_id)).digest())[0] >> PARTITION_SHIFT
 | ||
|       node_id = part2node[part]
 | ||
|       node_counts[node_id] += 1
 | ||
|   desired_count = DATA_ID_COUNT / NODE_COUNT
 | ||
|   print '%d: Desired data ids per node' % desired_count
 | ||
|   max_count = max(node_counts)
 | ||
|   over = 100.0 * (max_count - desired_count) / desired_count
 | ||
|   print '%d: Most data ids on one node, %.02f%% over' % \
 | ||
|       (max_count, over)
 | ||
|   min_count = min(node_counts)
 | ||
|   under = 100.0 * (desired_count - min_count) / desired_count
 | ||
|   print '%d: Least data ids on one node, %.02f%% under' % \
 | ||
|       (min_count, under)
 | ||
| 
 | ||
| ::
 | ||
| 
 | ||
|   1525: Desired data ids per node
 | ||
|   1683: Most data ids on one node, 10.36% over
 | ||
|   1360: Least data ids on one node, 10.82% under
 | ||
| 
 | ||
| Hmm. +–10% seems a bit high, but I reran with 65,536 partitions and
 | ||
| 256 nodes and got +–0.4% so it's just that our sample size (100m) is
 | ||
| too small for our number of partitions (8m). It'll take way too long
 | ||
| to run experiments with an even larger sample size, so let's reduce
 | ||
| back down to these lesser numbers. (To be certain, I reran at the full
 | ||
| version with a 10 billion data id sample set and got +–1%, but it took
 | ||
| 6.5 hours to run.)
 | ||
| 
 | ||
| In the next part of this series, we'll talk about how to increase the
 | ||
| durability of our data in the cluster.
 | ||
| 
 | ||
| Part 4
 | ||
| ======
 | ||
| In Part 3 of this series, we just further discussed partitions (virtual
 | ||
| nodes) and cleaned up our code a bit based on that. Now, let's talk
 | ||
| about how to increase the durability and availability of our data in the
 | ||
| cluster.
 | ||
| 
 | ||
| For many distributed data stores, durability is quite important. Either
 | ||
| RAID arrays or individually distinct copies of data are required. While
 | ||
| RAID will increase the durability, it does nothing to increase the
 | ||
| availability – if the RAID machine crashes, the data may be safe but
 | ||
| inaccessible until repairs are done. If we keep distinct copies of the
 | ||
| data on different machines and a machine crashes, the other copies will
 | ||
| still be available while we repair the broken machine.
 | ||
| 
 | ||
| An easy way to gain this multiple copy durability/availability is to
 | ||
| just use multiple rings and groups of nodes. For instance, to achieve
 | ||
| the industry standard of three copies, you'd split the nodes into three
 | ||
| groups and each group would have its own ring and each would receive a
 | ||
| copy of each data item. This can work well enough, but has the drawback
 | ||
| that expanding capacity requires adding three nodes at a time and that
 | ||
| losing one node essentially lowers capacity by three times that node's
 | ||
| capacity.
 | ||
| 
 | ||
| Instead, let's use a different, but common, approach of meeting our
 | ||
| requirements with a single ring. This can be done by walking the ring
 | ||
| from the starting point and looking for additional distinct nodes.
 | ||
| Here's code that supports a variable number of replicas (set to 3 for
 | ||
| testing):
 | ||
| 
 | ||
| .. code-block:: python
 | ||
| 
 | ||
|   from array import array
 | ||
|   from hashlib import md5
 | ||
|   from struct import unpack_from
 | ||
| 
 | ||
|   REPLICAS = 3
 | ||
|   PARTITION_POWER = 16
 | ||
|   PARTITION_SHIFT = 32 - PARTITION_POWER
 | ||
|   PARTITION_MAX = 2 ** PARTITION_POWER - 1
 | ||
|   NODE_COUNT = 256
 | ||
|   DATA_ID_COUNT = 10000000
 | ||
| 
 | ||
|   part2node = array('H')
 | ||
|   for part in xrange(2 ** PARTITION_POWER):
 | ||
|       part2node.append(part % NODE_COUNT)
 | ||
|   node_counts = [0] * NODE_COUNT
 | ||
|   for data_id in xrange(DATA_ID_COUNT):
 | ||
|       data_id = str(data_id)
 | ||
|       part = unpack_from('>I',
 | ||
|           md5(str(data_id)).digest())[0] >> PARTITION_SHIFT
 | ||
|       node_ids = [part2node[part]]
 | ||
|       node_counts[node_ids[0]] += 1
 | ||
|       for replica in xrange(1, REPLICAS):
 | ||
|           while part2node[part] in node_ids:
 | ||
|               part += 1
 | ||
|               if part > PARTITION_MAX:
 | ||
|                   part = 0
 | ||
|           node_ids.append(part2node[part])
 | ||
|           node_counts[node_ids[-1]] += 1
 | ||
|   desired_count = DATA_ID_COUNT / NODE_COUNT * REPLICAS
 | ||
|   print '%d: Desired data ids per node' % desired_count
 | ||
|   max_count = max(node_counts)
 | ||
|   over = 100.0 * (max_count - desired_count) / desired_count
 | ||
|   print '%d: Most data ids on one node, %.02f%% over' % \
 | ||
|       (max_count, over)
 | ||
|   min_count = min(node_counts)
 | ||
|   under = 100.0 * (desired_count - min_count) / desired_count
 | ||
|   print '%d: Least data ids on one node, %.02f%% under' % \
 | ||
|       (min_count, under)
 | ||
| 
 | ||
| ::
 | ||
| 
 | ||
|   117186: Desired data ids per node
 | ||
|   118133: Most data ids on one node, 0.81% over
 | ||
|   116093: Least data ids on one node, 0.93% under
 | ||
| 
 | ||
| That's pretty good; less than 1% over/under. While this works well,
 | ||
| there are a couple of problems.
 | ||
| 
 | ||
| First, because of how we've initially assigned the partitions to nodes,
 | ||
| all the partitions for a given node have their extra copies on the same
 | ||
| other two nodes. The problem here is that when a machine fails, the load
 | ||
| on these other nodes will jump by that amount. It'd be better if we
 | ||
| initially shuffled the partition assignment to distribute the failover
 | ||
| load better.
 | ||
| 
 | ||
| The other problem is a bit harder to explain, but deals with physical
 | ||
| separation of machines. Imagine you can only put 16 machines in a rack
 | ||
| in your datacenter. The 256 nodes we've been using would fill 16 racks.
 | ||
| With our current code, if a rack goes out (power problem, network issue,
 | ||
| etc.) there is a good chance some data will have all three copies in that
 | ||
| rack, becoming inaccessible. We can fix this shortcoming by adding the
 | ||
| concept of zones to our nodes, and then ensuring that replicas are stored
 | ||
| in distinct zones.
 | ||
| 
 | ||
| .. code-block:: python
 | ||
| 
 | ||
|   from array import array
 | ||
|   from hashlib import md5
 | ||
|   from random import shuffle
 | ||
|   from struct import unpack_from
 | ||
| 
 | ||
|   REPLICAS = 3
 | ||
|   PARTITION_POWER = 16
 | ||
|   PARTITION_SHIFT = 32 - PARTITION_POWER
 | ||
|   PARTITION_MAX = 2 ** PARTITION_POWER - 1
 | ||
|   NODE_COUNT = 256
 | ||
|   ZONE_COUNT = 16
 | ||
|   DATA_ID_COUNT = 10000000
 | ||
| 
 | ||
|   node2zone = []
 | ||
|   while len(node2zone) < NODE_COUNT:
 | ||
|       zone = 0
 | ||
|       while zone < ZONE_COUNT and len(node2zone) < NODE_COUNT:
 | ||
|           node2zone.append(zone)
 | ||
|           zone += 1
 | ||
|   part2node = array('H')
 | ||
|   for part in xrange(2 ** PARTITION_POWER):
 | ||
|       part2node.append(part % NODE_COUNT)
 | ||
|   shuffle(part2node)
 | ||
|   node_counts = [0] * NODE_COUNT
 | ||
|   zone_counts = [0] * ZONE_COUNT
 | ||
|   for data_id in xrange(DATA_ID_COUNT):
 | ||
|       data_id = str(data_id)
 | ||
|       part = unpack_from('>I',
 | ||
|           md5(str(data_id)).digest())[0] >> PARTITION_SHIFT
 | ||
|       node_ids = [part2node[part]]
 | ||
|       zones = [node2zone[node_ids[0]]]
 | ||
|       node_counts[node_ids[0]] += 1
 | ||
|       zone_counts[zones[0]] += 1
 | ||
|       for replica in xrange(1, REPLICAS):
 | ||
|           while part2node[part] in node_ids and \
 | ||
|                   node2zone[part2node[part]] in zones:
 | ||
|               part += 1
 | ||
|               if part > PARTITION_MAX:
 | ||
|                   part = 0
 | ||
|           node_ids.append(part2node[part])
 | ||
|           zones.append(node2zone[node_ids[-1]])
 | ||
|           node_counts[node_ids[-1]] += 1
 | ||
|           zone_counts[zones[-1]] += 1
 | ||
|   desired_count = DATA_ID_COUNT / NODE_COUNT * REPLICAS
 | ||
|   print '%d: Desired data ids per node' % desired_count
 | ||
|   max_count = max(node_counts)
 | ||
|   over = 100.0 * (max_count - desired_count) / desired_count
 | ||
|   print '%d: Most data ids on one node, %.02f%% over' % \
 | ||
|       (max_count, over)
 | ||
|   min_count = min(node_counts)
 | ||
|   under = 100.0 * (desired_count - min_count) / desired_count
 | ||
|   print '%d: Least data ids on one node, %.02f%% under' % \
 | ||
|       (min_count, under)
 | ||
|   desired_count = DATA_ID_COUNT / ZONE_COUNT * REPLICAS
 | ||
|   print '%d: Desired data ids per zone' % desired_count
 | ||
|   max_count = max(zone_counts)
 | ||
|   over = 100.0 * (max_count - desired_count) / desired_count
 | ||
|   print '%d: Most data ids in one zone, %.02f%% over' % \
 | ||
|       (max_count, over)
 | ||
|   min_count = min(zone_counts)
 | ||
|   under = 100.0 * (desired_count - min_count) / desired_count
 | ||
|   print '%d: Least data ids in one zone, %.02f%% under' % \
 | ||
|       (min_count, under)
 | ||
| 
 | ||
| ::
 | ||
| 
 | ||
|   117186: Desired data ids per node
 | ||
|   118782: Most data ids on one node, 1.36% over
 | ||
|   115632: Least data ids on one node, 1.33% under
 | ||
|   1875000: Desired data ids per zone
 | ||
|   1878533: Most data ids in one zone, 0.19% over
 | ||
|   1869070: Least data ids in one zone, 0.32% under
 | ||
| 
 | ||
| So the shuffle and zone distinctions affected our distribution some,
 | ||
| but still definitely good enough. This test took about 64 seconds to
 | ||
| run on my machine.
 | ||
| 
 | ||
| There's a completely alternate, and quite common, way of accomplishing
 | ||
| these same requirements. This alternate method doesn't use partitions
 | ||
| at all, but instead just assigns anchors to the nodes within the hash
 | ||
| space. Finding the first node for a given hash just involves walking
 | ||
| this anchor ring for the next node, and finding additional nodes works
 | ||
| similarly as before. To attain the equivalent of our virtual nodes,
 | ||
| each real node is assigned multiple anchors.
 | ||
| 
 | ||
| .. code-block:: python
 | ||
| 
 | ||
|   from bisect import bisect_left
 | ||
|   from hashlib import md5
 | ||
|   from struct import unpack_from
 | ||
| 
 | ||
|   REPLICAS = 3
 | ||
|   NODE_COUNT = 256
 | ||
|   ZONE_COUNT = 16
 | ||
|   DATA_ID_COUNT = 10000000
 | ||
|   VNODE_COUNT = 100
 | ||
| 
 | ||
|   node2zone = []
 | ||
|   while len(node2zone) < NODE_COUNT:
 | ||
|       zone = 0
 | ||
|       while zone < ZONE_COUNT and len(node2zone) < NODE_COUNT:
 | ||
|           node2zone.append(zone)
 | ||
|           zone += 1
 | ||
|   hash2index = []
 | ||
|   index2node = []
 | ||
|   for node in xrange(NODE_COUNT):
 | ||
|       for vnode in xrange(VNODE_COUNT):
 | ||
|           hsh = unpack_from('>I', md5(str(node)).digest())[0]
 | ||
|           index = bisect_left(hash2index, hsh)
 | ||
|           if index > len(hash2index):
 | ||
|               index = 0
 | ||
|           hash2index.insert(index, hsh)
 | ||
|           index2node.insert(index, node)
 | ||
|   node_counts = [0] * NODE_COUNT
 | ||
|   zone_counts = [0] * ZONE_COUNT
 | ||
|   for data_id in xrange(DATA_ID_COUNT):
 | ||
|       data_id = str(data_id)
 | ||
|       hsh = unpack_from('>I', md5(str(data_id)).digest())[0]
 | ||
|       index = bisect_left(hash2index, hsh)
 | ||
|       if index >= len(hash2index):
 | ||
|           index = 0
 | ||
|       node_ids = [index2node[index]]
 | ||
|       zones = [node2zone[node_ids[0]]]
 | ||
|       node_counts[node_ids[0]] += 1
 | ||
|       zone_counts[zones[0]] += 1
 | ||
|       for replica in xrange(1, REPLICAS):
 | ||
|           while index2node[index] in node_ids and \
 | ||
|                   node2zone[index2node[index]] in zones:
 | ||
|               index += 1
 | ||
|               if index >= len(hash2index):
 | ||
|                   index = 0
 | ||
|           node_ids.append(index2node[index])
 | ||
|           zones.append(node2zone[node_ids[-1]])
 | ||
|           node_counts[node_ids[-1]] += 1
 | ||
|           zone_counts[zones[-1]] += 1
 | ||
|   desired_count = DATA_ID_COUNT / NODE_COUNT * REPLICAS
 | ||
|   print '%d: Desired data ids per node' % desired_count
 | ||
|   max_count = max(node_counts)
 | ||
|   over = 100.0 * (max_count - desired_count) / desired_count
 | ||
|   print '%d: Most data ids on one node, %.02f%% over' % \
 | ||
|       (max_count, over)
 | ||
|   min_count = min(node_counts)
 | ||
|   under = 100.0 * (desired_count - min_count) / desired_count
 | ||
|   print '%d: Least data ids on one node, %.02f%% under' % \
 | ||
|       (min_count, under)
 | ||
|   desired_count = DATA_ID_COUNT / ZONE_COUNT * REPLICAS
 | ||
|   print '%d: Desired data ids per zone' % desired_count
 | ||
|   max_count = max(zone_counts)
 | ||
|   over = 100.0 * (max_count - desired_count) / desired_count
 | ||
|   print '%d: Most data ids in one zone, %.02f%% over' % \
 | ||
|       (max_count, over)
 | ||
|   min_count = min(zone_counts)
 | ||
|   under = 100.0 * (desired_count - min_count) / desired_count
 | ||
|   print '%d: Least data ids in one zone, %.02f%% under' % \
 | ||
|       (min_count, under)
 | ||
| 
 | ||
| ::
 | ||
| 
 | ||
|   117186: Desired data ids per node
 | ||
|   351282: Most data ids on one node, 199.76% over
 | ||
|   15965: Least data ids on one node, 86.38% under
 | ||
|   1875000: Desired data ids per zone
 | ||
|   2248496: Most data ids in one zone, 19.92% over
 | ||
|   1378013: Least data ids in one zone, 26.51% under
 | ||
| 
 | ||
| This test took over 15 minutes to run! Unfortunately, this method also
 | ||
| gives much less control over the distribution. To get better distribution,
 | ||
| you have to add more virtual nodes, which eats up more memory and takes
 | ||
| even more time to build the ring and perform distinct node lookups. The
 | ||
| most common operation, data id lookup, can be improved (by predetermining
 | ||
| each virtual node's failover nodes, for instance) but it starts off so
 | ||
| far behind our first approach that we'll just stick with that.
 | ||
| 
 | ||
| In the next part of this series, we'll start to wrap all this up into
 | ||
| a useful Python module.
 | ||
| 
 | ||
| Part 5
 | ||
| ======
 | ||
| In Part 4 of this series, we ended up with a multiple copy, distinctly
 | ||
| zoned ring. Or at least the start of it. In this final part we'll package
 | ||
| the code up into a useable Python module and then add one last feature.
 | ||
| First, let's separate the ring itself from the building of the data for
 | ||
| the ring and its testing.
 | ||
| 
 | ||
| .. code-block:: python
 | ||
| 
 | ||
|   from array import array
 | ||
|   from hashlib import md5
 | ||
|   from random import shuffle
 | ||
|   from struct import unpack_from
 | ||
|   from time import time
 | ||
| 
 | ||
|   class Ring(object):
 | ||
| 
 | ||
|       def __init__(self, nodes, part2node, replicas):
 | ||
|           self.nodes = nodes
 | ||
|           self.part2node = part2node
 | ||
|           self.replicas = replicas
 | ||
|           partition_power = 1
 | ||
|           while 2 ** partition_power < len(part2node):
 | ||
|               partition_power += 1
 | ||
|           if len(part2node) != 2 ** partition_power:
 | ||
|               raise Exception("part2node's length is not an "
 | ||
|                               "exact power of 2")
 | ||
|           self.partition_shift = 32 - partition_power
 | ||
| 
 | ||
|       def get_nodes(self, data_id):
 | ||
|           data_id = str(data_id)
 | ||
|           part = unpack_from('>I',
 | ||
|              md5(data_id).digest())[0] >> self.partition_shift
 | ||
|           node_ids = [self.part2node[part]]
 | ||
|           zones = [self.nodes[node_ids[0]]]
 | ||
|           for replica in xrange(1, self.replicas):
 | ||
|               while self.part2node[part] in node_ids and \
 | ||
|                      self.nodes[self.part2node[part]] in zones:
 | ||
|                   part += 1
 | ||
|                   if part >= len(self.part2node):
 | ||
|                       part = 0
 | ||
|               node_ids.append(self.part2node[part])
 | ||
|               zones.append(self.nodes[node_ids[-1]])
 | ||
|           return [self.nodes[n] for n in node_ids]
 | ||
| 
 | ||
|   def build_ring(nodes, partition_power, replicas):
 | ||
|       begin = time()
 | ||
|       part2node = array('H')
 | ||
|       for part in xrange(2 ** partition_power):
 | ||
|           part2node.append(part % len(nodes))
 | ||
|       shuffle(part2node)
 | ||
|       ring = Ring(nodes, part2node, replicas)
 | ||
|       print '%.02fs to build ring' % (time() - begin)
 | ||
|       return ring
 | ||
| 
 | ||
|   def test_ring(ring):
 | ||
|       begin = time()
 | ||
|       DATA_ID_COUNT = 10000000
 | ||
|       node_counts = {}
 | ||
|       zone_counts = {}
 | ||
|       for data_id in xrange(DATA_ID_COUNT):
 | ||
|           for node in ring.get_nodes(data_id):
 | ||
|               node_counts[node['id']] = \
 | ||
|                   node_counts.get(node['id'], 0) + 1
 | ||
|               zone_counts[node['zone']] = \
 | ||
|                   zone_counts.get(node['zone'], 0) + 1
 | ||
|       print '%ds to test ring' % (time() - begin)
 | ||
|       desired_count = \
 | ||
|           DATA_ID_COUNT / len(ring.nodes) * REPLICAS
 | ||
|       print '%d: Desired data ids per node' % desired_count
 | ||
|       max_count = max(node_counts.itervalues())
 | ||
|       over = \
 | ||
|           100.0 * (max_count - desired_count) / desired_count
 | ||
|       print '%d: Most data ids on one node, %.02f%% over' % \
 | ||
|           (max_count, over)
 | ||
|       min_count = min(node_counts.itervalues())
 | ||
|       under = \
 | ||
|           100.0 * (desired_count - min_count) / desired_count
 | ||
|       print '%d: Least data ids on one node, %.02f%% under' % \
 | ||
|           (min_count, under)
 | ||
|       zone_count = \
 | ||
|           len(set(n['zone'] for n in ring.nodes.itervalues()))
 | ||
|       desired_count = \
 | ||
|           DATA_ID_COUNT / zone_count * ring.replicas
 | ||
|       print '%d: Desired data ids per zone' % desired_count
 | ||
|       max_count = max(zone_counts.itervalues())
 | ||
|       over = \
 | ||
|           100.0 * (max_count - desired_count) / desired_count
 | ||
|       print '%d: Most data ids in one zone, %.02f%% over' % \
 | ||
|           (max_count, over)
 | ||
|       min_count = min(zone_counts.itervalues())
 | ||
|       under = \
 | ||
|           100.0 * (desired_count - min_count) / desired_count
 | ||
|       print '%d: Least data ids in one zone, %.02f%% under' % \
 | ||
|           (min_count, under)
 | ||
| 
 | ||
|   if __name__ == '__main__':
 | ||
|       PARTITION_POWER = 16
 | ||
|       REPLICAS = 3
 | ||
|       NODE_COUNT = 256
 | ||
|       ZONE_COUNT = 16
 | ||
|       nodes = {}
 | ||
|       while len(nodes) < NODE_COUNT:
 | ||
|           zone = 0
 | ||
|           while zone < ZONE_COUNT and len(nodes) < NODE_COUNT:
 | ||
|               node_id = len(nodes)
 | ||
|               nodes[node_id] = {'id': node_id, 'zone': zone}
 | ||
|               zone += 1
 | ||
|       ring = build_ring(nodes, PARTITION_POWER, REPLICAS)
 | ||
|       test_ring(ring)
 | ||
| 
 | ||
| ::
 | ||
| 
 | ||
|   0.06s to build ring
 | ||
|   82s to test ring
 | ||
|   117186: Desired data ids per node
 | ||
|   118773: Most data ids on one node, 1.35% over
 | ||
|   115801: Least data ids on one node, 1.18% under
 | ||
|   1875000: Desired data ids per zone
 | ||
|   1878339: Most data ids in one zone, 0.18% over
 | ||
|   1869914: Least data ids in one zone, 0.27% under
 | ||
| 
 | ||
| It takes a bit longer to test our ring, but that's mostly because of
 | ||
| the switch to dictionaries from arrays for various items. Having node
 | ||
| dictionaries is nice because you can attach any node information you
 | ||
| want directly there (ip addresses, tcp ports, drive paths, etc.). But
 | ||
| we're still on track for further testing; our distribution is still good.
 | ||
| 
 | ||
| Now, let's add our one last feature to our ring: the concept of weights.
 | ||
| Weights are useful because the nodes you add later in a ring's life are
 | ||
| likely to have more capacity than those you have at the outset. For this
 | ||
| test, we'll make half our nodes have twice the weight. We'll have to
 | ||
| change build_ring to give more partitions to the nodes with more weight
 | ||
| and we'll change test_ring to take into account these weights. Since
 | ||
| we've changed so much I'll just post the entire module again:
 | ||
| 
 | ||
| .. code-block:: python
 | ||
| 
 | ||
|   from array import array
 | ||
|   from hashlib import md5
 | ||
|   from random import shuffle
 | ||
|   from struct import unpack_from
 | ||
|   from time import time
 | ||
| 
 | ||
|   class Ring(object):
 | ||
| 
 | ||
|       def __init__(self, nodes, part2node, replicas):
 | ||
|           self.nodes = nodes
 | ||
|           self.part2node = part2node
 | ||
|           self.replicas = replicas
 | ||
|           partition_power = 1
 | ||
|           while 2 ** partition_power < len(part2node):
 | ||
|               partition_power += 1
 | ||
|           if len(part2node) != 2 ** partition_power:
 | ||
|               raise Exception("part2node's length is not an "
 | ||
|                               "exact power of 2")
 | ||
|           self.partition_shift = 32 - partition_power
 | ||
| 
 | ||
|       def get_nodes(self, data_id):
 | ||
|           data_id = str(data_id)
 | ||
|           part = unpack_from('>I',
 | ||
|              md5(data_id).digest())[0] >> self.partition_shift
 | ||
|           node_ids = [self.part2node[part]]
 | ||
|           zones = [self.nodes[node_ids[0]]]
 | ||
|           for replica in xrange(1, self.replicas):
 | ||
|               while self.part2node[part] in node_ids and \
 | ||
|                      self.nodes[self.part2node[part]] in zones:
 | ||
|                   part += 1
 | ||
|                   if part >= len(self.part2node):
 | ||
|                       part = 0
 | ||
|               node_ids.append(self.part2node[part])
 | ||
|               zones.append(self.nodes[node_ids[-1]])
 | ||
|           return [self.nodes[n] for n in node_ids]
 | ||
| 
 | ||
|   def build_ring(nodes, partition_power, replicas):
 | ||
|       begin = time()
 | ||
|       parts = 2 ** partition_power
 | ||
|       total_weight = \
 | ||
|           float(sum(n['weight'] for n in nodes.itervalues()))
 | ||
|       for node in nodes.itervalues():
 | ||
|           node['desired_parts'] = \
 | ||
|               parts / total_weight * node['weight']
 | ||
|       part2node = array('H')
 | ||
|       for part in xrange(2 ** partition_power):
 | ||
|           for node in nodes.itervalues():
 | ||
|               if node['desired_parts'] >= 1:
 | ||
|                   node['desired_parts'] -= 1
 | ||
|                   part2node.append(node['id'])
 | ||
|                   break
 | ||
|           else:
 | ||
|               for node in nodes.itervalues():
 | ||
|                   if node['desired_parts'] >= 0:
 | ||
|                       node['desired_parts'] -= 1
 | ||
|                       part2node.append(node['id'])
 | ||
|                       break
 | ||
|       shuffle(part2node)
 | ||
|       ring = Ring(nodes, part2node, replicas)
 | ||
|       print '%.02fs to build ring' % (time() - begin)
 | ||
|       return ring
 | ||
| 
 | ||
|   def test_ring(ring):
 | ||
|       begin = time()
 | ||
|       DATA_ID_COUNT = 10000000
 | ||
|       node_counts = {}
 | ||
|       zone_counts = {}
 | ||
|       for data_id in xrange(DATA_ID_COUNT):
 | ||
|           for node in ring.get_nodes(data_id):
 | ||
|               node_counts[node['id']] = \
 | ||
|                   node_counts.get(node['id'], 0) + 1
 | ||
|               zone_counts[node['zone']] = \
 | ||
|                   zone_counts.get(node['zone'], 0) + 1
 | ||
|       print '%ds to test ring' % (time() - begin)
 | ||
|       total_weight = float(sum(n['weight'] for n in
 | ||
|                                ring.nodes.itervalues()))
 | ||
|       max_over = 0
 | ||
|       max_under = 0
 | ||
|       for node in ring.nodes.itervalues():
 | ||
|           desired = DATA_ID_COUNT * REPLICAS * \
 | ||
|               node['weight'] / total_weight
 | ||
|           diff = node_counts[node['id']] - desired
 | ||
|           if diff > 0:
 | ||
|               over = 100.0 * diff / desired
 | ||
|               if over > max_over:
 | ||
|                   max_over = over
 | ||
|           else:
 | ||
|               under = 100.0 * (-diff) / desired
 | ||
|               if under > max_under:
 | ||
|                   max_under = under
 | ||
|       print '%.02f%% max node over' % max_over
 | ||
|       print '%.02f%% max node under' % max_under
 | ||
|       max_over = 0
 | ||
|       max_under = 0
 | ||
|       for zone in set(n['zone'] for n in
 | ||
|                       ring.nodes.itervalues()):
 | ||
|           zone_weight = sum(n['weight'] for n in
 | ||
|               ring.nodes.itervalues() if n['zone'] == zone)
 | ||
|           desired = DATA_ID_COUNT * REPLICAS * \
 | ||
|               zone_weight / total_weight
 | ||
|           diff = zone_counts[zone] - desired
 | ||
|           if diff > 0:
 | ||
|               over = 100.0 * diff / desired
 | ||
|               if over > max_over:
 | ||
|                   max_over = over
 | ||
|           else:
 | ||
|               under = 100.0 * (-diff) / desired
 | ||
|               if under > max_under:
 | ||
|                   max_under = under
 | ||
|       print '%.02f%% max zone over' % max_over
 | ||
|       print '%.02f%% max zone under' % max_under
 | ||
| 
 | ||
|   if __name__ == '__main__':
 | ||
|       PARTITION_POWER = 16
 | ||
|       REPLICAS = 3
 | ||
|       NODE_COUNT = 256
 | ||
|       ZONE_COUNT = 16
 | ||
|       nodes = {}
 | ||
|       while len(nodes) < NODE_COUNT:
 | ||
|           zone = 0
 | ||
|           while zone < ZONE_COUNT and len(nodes) < NODE_COUNT:
 | ||
|               node_id = len(nodes)
 | ||
|               nodes[node_id] = {'id': node_id, 'zone': zone,
 | ||
|                                 'weight': 1.0 + (node_id % 2)}
 | ||
|               zone += 1
 | ||
|       ring = build_ring(nodes, PARTITION_POWER, REPLICAS)
 | ||
|       test_ring(ring)
 | ||
| 
 | ||
| ::
 | ||
| 
 | ||
|   0.88s to build ring
 | ||
|   86s to test ring
 | ||
|   1.66% max over
 | ||
|   1.46% max under
 | ||
|   0.28% max zone over
 | ||
|   0.23% max zone under
 | ||
| 
 | ||
| So things are still good, even though we have differently weighted nodes.
 | ||
| I ran another test with this code using random weights from 1 to 100 and
 | ||
| got over/under values for nodes of 7.35%/18.12% and zones of 0.24%/0.22%,
 | ||
| still pretty good considering the crazy weight ranges.
 | ||
| 
 | ||
| Summary
 | ||
| =======
 | ||
| Hopefully this series has been a good introduction to building a ring.
 | ||
| This code is essentially how the OpenStack Swift ring works, except that
 | ||
| Swift's ring has lots of additional optimizations, such as storing each
 | ||
| replica assignment separately, and lots of extra features for building,
 | ||
| validating, and otherwise working with rings.
 |