Tag Archives: unisphere

Building Blocks – Part VI: But my #PrivateCloud is too small (or too big) for building blocks!

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Does your Building Block need a Fabric? <- Part 6

Okay, so this is all well and good, but you have been reading these posts and thinking that your environment is nowhere near the size of my example so Building Blocks are not for you. The fact is you can make individual Building Blocks quite a bit smaller or larger than the example I used in these posts and I’ll use a couple more quick examples to illustrate.

Small Environment: In this example, we’ll break down a 150 VM environment into three Building Blocks to provide the availability benefit of multiple isolated blocks. Additional Building Blocks can be deployed as the environment grows.

150 Total VMs deployed over 12 months
(2 vCPUs/32GB Disk/1GB RAM/25 IOPS per VM)

    • 300 vCPUs
    • 150GB RAM
    • 4800 GB Disk Space
    • 3750 Host IOPS

Assuming 3 Building Blocks, each Building Block would look something like this:

    • 50 VMs per Building Block
    • 2 x Dual CPU – 6 Core Servers (Maintains the 4:1 vCPU to Physical thread ratio)
    • 24-32GB RAM per server
    • 19 x 300GB 10K disks in RAID10 (including spares) — any VNXe or VNX model will be fine for this
      • >1600GB Usable disk space (this disk config provides more disk space and performance than required)
      • >1250 Host IOPS

Very Large Environment: In this example, we’ll scale up to 45,000 VMs using sixteen Building Blocks to provide the availability benefit of multiple isolated blocks. Additional Building Blocks can be deployed as the environment grows.

45000 Total VMs deployed over 48 months
(2 vCPUs/32GB Disk/4GB RAM/50 IOPS per VM)

    • 90000 vCPUs
    • 180,000 GB RAM
    • 1,440,000 GB Disk Space
    • 2,250,000 Host IOPS

Assuming 4 Building blocks per year, each Building Block would look something like this:

    • 2812 VMs per Building Block
    • 18 x Quad CPU – 10 Core Servera plus Hyperthreading (Maintains the 4:1 vCPU to Physical thread ratio)
    • 640GB Ram per server
    • 1216 x 300GB 15K disks in RAID10 (including spares) — one EMC Symmetrix VMAX for each Building Block
      • >90000GB Usable disk space (the 300GB disks are the smallest available but still too big and will provide quite a bit more space than the 90TB required. This would be a good candidate for EMC FASTVP sub-LUN tiering along with a few SSD disks, which would likely reduce the overall cost)
      • >140,000 Host IOPS

Hopefully this series of posts have shown that the Building Block approach is very flexible and can be adapted to fit a variety of different environments. Customers with environments ranging from very small to very large can tune individual Building Block designs for their needs to gain the advantages of isolated, repeatable deployments, and better long term use of capital.

Finally, if you find the benefits of the Building Block approach appealing, but would rather not deal with the integration of each Building Block, talk with a VCE representative about VBlock which provides all of the benefits I’ve discussed but in a pre-integrated, plug-and-play product with a single support organization supporting the entire solution.

Does your Building Block need a Fabric? <- Part 6

Building Blocks – Part V: Does your #PrivateCloud building block need a fabric?

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Sizing your Building Block <- Part 5 -> I’m too small for Building Blocks

You may have noticed in the last installment that I did not include any FibreChannel switches in the example BOM. There are essentially three ways to deal with the SAN connectivity in a Building Block and there are advantages as well as disadvantages to each. (Note: this applies to iSCSI as well)

1.) Use switches that already exist in your datacenter: You can attach each storage array and each server back to a common fabric that you already have (or that you build as part of the project) and zone each of the Building Block’s servers to their respective storage array.

  • Advantages:
    • Leverage any existing fabric equipment to reduce costs and centralize management
    • Allow for additional servers to be added to each Building Block in the future
    • Allow for presenting storage from one Building Block to servers in a different Building Block (useful for migrations)
  • Disadvantages:
    • Increases complexity – Requires you to configure zoning within each Building Block during deployment
    • Increases chances for human error that could cause an outage – Accidentally deleting entire Zonesets or VSANs is not as uncommon as you might think
    • Reduces the availability isolation between Building Blocks – The fabric itself becomes a point-of-failure common to all Building Blocks.

2.) Deploy a dedicated fabric within each Building Block: Since each Building Block has a known quantity of storage and server ports, you can easily add a dual-switch/fabric into the design. In our example of 9 hosts you’d need a total of 18 ports for hosts and maybe 8 ports for the storage array for a combined total of 26 switch ports. Two 16-port switches can easily accommodate that requirement.

  • Advantages:
    • Depending on the switches used, it could allow for additional servers in each Building Block in the future
    • Allow for presenting storage from one Building Block to servers in a different building block (useful for migrations) by connecting ISLs between Building Blocks
    • Maintains the Building Block isolation by not sharing the fabric switches across Building Blocks.
  • Disadvantages:
    • Increases complexity – Requires you to configure zoning within each Building Block during deployment
    • Increases chances for human error that could cause an outage – Again, accidentally deleting entire Zonesets or VSANs is not as uncommon as you might think

3.) Dispense with the fabric entirely: Since Building Blocks are relatively small, resulting in fewer total initiator/target pairs, it’s possible in some cases to directly attach all of the hosts to the storage array. In our example, the nine hosts need eighteen ports and the VNX5700 supports up to twenty four FC ports. This means you can directly attach all of the hosts to the array and still have six remaining ports on the array for replication, etc. Different arrays from EMC as well as other vendors will have various limits on the number of FC ports supported. Also, not all vendors support direct attached hosts so you’ll need to check that with your storage vendor of choice to be sure.

  • Advantages:
    • Maintains the Building Block isolation by not sharing the fabric switches across Building Blocks.
    • Simplifies deployment by eliminating the need to do any zoning at all and effectively eliminates any port queue limits (HBA elevator depth settings)
    • Simplifies troubleshooting by eliminating the fabric (buffer to buffer credits, bandwidth, port errors, etc) from the IO path.
  • Disadvantages:
    • Limits the number of hosts per Building Block by the maximum number of ports supported by the storage array.
    • More difficult to non-disruptively migrate VMs between Building Blocks since storage cannot be shared across. (If all Building Blocks are in the same Virtual Data Center in VMWare vSphere, you can still live-migrate VMs via the IP network between Building Blocks using Storage vMotion)

If you decide that the host count limit is okay, and either non-disruptive migration between Building Blocks is unnecessary or Storage vMotion will work for you, then eliminating the fabric can reduce cost and complexity, while improving overall availability and time to deploy. If you need the flexibility of a fabric, I personally like using dedicated switches in each building block. Cisco and Brocade both offer 1U switches with up to 48 ports per switch that will work quite well. Always deploy two switches (as two fabrics) in each Building Block for redundancy.

Okay, so you’ve managed to calculate the size of your environment, how much time it will take you to virtualize it, the number of Building Blocks you need, and the specifications for each Building Block, including whether you need a fabric. Now you can submit your budget, get your final quotes, and place orders. Once the equipment arrives it’s time to implement the solution.

When your first Building Block arrives, it would be a valuable use of time to learn how to script the configuration for each component in the Building Block. An EMC VNX array can be completely configured using Naviseccli or PowerShell, from the Storage Pool and LUN provisioning to initiator registration and Host/LUN masking. VMWare vSphere can similarly be configured using scripts or PowerShell. If you take the time to develop and test your scripts against your first Building Block, then you can use those scripts to quickly stand up each additional Building Block you deploy. Since future Building Blocks will be nearly identical, if not entirely identical, the scripts can speed your deployment time immensely.

EMC Navisphere/Unisphere CLI (for VNX) is documented fully in the VNX Command Line Interface (CLI) Reference for Block 1.0 A02. This document is available on EMC PowerLink at the following location:

Home > Support > Technical Documentation and Advisories > Software ~ J-O ~ Documentation > Navisphere Management Suite > Maintenance/Administration

Be sure to leverage any storage vendor plug-ins available to you for your chosen hypervisor (VMWare, Hyper-V, etc) to improve visibility up and down the layers and reduce the number of management tools you need to use on a daily basis.

For example, EMC Unisphere Manager, the array management UI running on the VNX storage array, includes built-in integration with VMWare and other host operating systems. Unisphere Manager displays the VMFS datastores, RDMs, and VMs that are running on each LUN and a storage administrator can quickly search for VM names to help with management and/or troubleshooting tasks.

EMC also provides free downloadable plug-ins for VMWare vSphere and Hyper-V so server administrators can see what storage arrays and LUNs are behind their VMs and datastores. The plug-ins also allow administrators to provision new LUNs from the storage array through the plug-ins without needing access to the array management tools.

Depending on which storage vendor you choose, if you build a fabric-less Building Block, you may be able to do all of your server and storage administration from vCenter if you leverage the free plug-ins.

Sizing your Building Block <- Part 5 -> I’m too small for Building Blocks

Building Blocks – Part IV: Sizing Your #PrivateCloud Building Blocks

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How many Building Blocks? <- Part 4 -> Does your Building Block need a Fabric?

Now that we know we’ll be deploying about 562 VM’s per Building Block we can use the other metrics to determine the requirements for a single block.

  • Since 562 VMs is about 12.5% of the 4500 total VMs, we then calculate 12.5% of the other metrics determined in the last post.
    • 12.5% of 9000 vCPUs = 1125 vCPUs
    • 12.5% of 4500GB RAM = 562GB RAM
    • 12.5% of 225,000 IOPS = 28125 Host IOPS
    • 12.5% of 562TB = 70TB Usable Disk capacity

First we’ll size the compute layer of the Building Block

  • At 4:1 vCPUs per Physical CPU thread you’d want somewhere around 281 hardware threads per Building Block. Using 4-socket, 8-core servers (32 cores per server) you’d need about 9 physical servers per building block. The number of vCPUs per physical CPU thread affects the % CPU Ready time in VMWare vSphere/ESX environments.
  • For 562GB of total RAM per Building Block, each server needs about 64GB of RAM
  • Per standard best practices, a highly available server needs two HBAs, more than two can be advantageous with high IOPS loads.

Next, we’ll calculate the storage layer of the Building Block

  • Assuming no cache hits, the backend disk load for 28,125 Host IOPS @ 50:50 read/write looks like the following:
    • RAID10 : 28125/2 + 28125/2*2 = 42187 Disk IOPS
    • RAID5 : 28125/2 + 28125/2*4 = 70312 Disk IOPS
    • RAID6 : 28125/2 + 28125/2*6 = 98437 Disk IOPS
  • If you calculate the number of disks required to meet the 70TB Usable in each RAID level, and the # of disks needed for both 10K RPM and 15K RPM disks to meet the IOPS for each RAID level, you’ll eventually find that for this specific example, using EMC Best Practices, 600GB 10K RPM SAS disks in RAID10 provides the least cost option (317 disks including hot spares). Since 10K RPM disks are also available in 2.5” sizes for some storage systems, this also provides the most compact solution in many cases (29 Rack Units for an EMC VNX storage array that has this configuration). In reality this is a very conservative configuration that ignores the benefits of storage array caching technologies and any other optimizations available, it’s essentially a worst case scenario and it would be beneficial to work with your storage vendor’s performance group to perform a more intelligent modeling of your workload.
  • Finally, you’ll need to select a storage array model that meets the requirements. Within EMC’s portfolio, 317 disks necessitate an EMC VNX5700 which will also have more than enough CPU horsepower to handle the 28125 host IOPS requirement.

At this point you’ve determined the basic requirements for a single Building Block which you can use as a starting point to work with your vendors for further tuning and pricing. Your vendors may also propose various optimizations that can help save you money and/or improve performance such as block-level tiering or extended SSD/Flash based caching.

Example bill-of-materials (BOM):

  • 9 x Quad-CPU/8-Core servers w/64GB RAM each
  • 2 x Single port FibreChannel HBAs
  • 1 x EMC VNX5700 Storage Array with 317 x 300GB 2.5” 10K SAS disks

Wait, where’s the fabric?

How many Building Blocks? <- Part 4 -> Does your Building Block need a Fabric?

Building Blocks – Part III: How Many Building Blocks does your #PrivateCloud need?

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The Building Block Approach <- Part 3 -> Sizing your Building Block

The key to sizing Building Blocks is to calculate the ratio between the compute and storage metrics. First you need to take a look at the total performance and disk space requirements for the whole environment, similar to the below example:

  • Total # of Virtual Machines you expect to be hosting (example: 4500 VMs)
  • Total Virtual CPUs assigned to all Guest VMs (average of 2 vCPUs per VM = 9000 vCPUs)
  • Total Memory required across all Guest VMs (average of 1GB per VM = 4.5TB)
  • Total Host IOPS needed at the array for all Guest VMs (average of 50 IOPS per VM = 225,000 Host IOPS)
    • You will need to have a read/write ratio with this as well (we will use 50:50 for these examples)
  • Total Disk Storage required for all Guest VMs. (average of 125GB per VM = 562TB)

Once you have the above data, you need to decide how many Building Blocks you want to have once the entire environment is built out. There are several things to consider in determining this number:

  • How often you want to be deploying additional Building Blocks (more on this below)
  • Your annual budget (I’m ignoring budget for this example, but your budget may limit the size of your deployment each year)
  • How many VMs you think you can deploy in a year (we’ll use 2250 per year for a two year deployment)

Some of these are pretty subjective so your actual results will vary quite a bit, but based what I’ve seen I do have some recommendations.

  • In order to take advantage of the availability isolation inherent in the Building Block approach, you’ll want to start with at least two Building Blocks and then add them one or two at a time depending on how you want to spread your server farms across the infrastructure.
  • Depending on the size of each Building Block you may want to keep Building Block deployments down to one every 3-6 months. That gives you ample time to build each block correctly and hopefully leaves time between deployments to monitor and adjust the Building Blocks.

That said I’d lean toward 4 to 6 Building Blocks per year. Of course this is just my opinion and your mileage may vary. For our example of 4500 VMs over 2 years @ 4 Building Blocks per year. we’ll end up with 8 Building Blocks with about 562 VMs each.

The Building Block Approach <- Part 3 -> Sizing your Building Block

Building Blocks – Part II: The Building Block Approach to the #PrivateCloud

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Build your own Private Cloud <- Part 2 -> How many Building Blocks

Since server virtualization abstracts the physical hardware from the operating systems and applications, essential for Cloud Infrastructures (also known as Infrastructure-as-a-Service), it’s ideally suited for breaking down the physical infrastructure into Building Blocks. Put simply, Building Blocks are repeatable, pre-designed mixes of storage, CPU, and memory.

There are several advantages to the Building Block approach that I’ll point out here:

  1. Rather than dropping a huge amount of capital up front on the entire infrastructure you need over the long haul, some of which will not be used at first, you can start with a smaller capital outlay today, then make multiple similarly small capital purchases only as needed. Further, when the hardware in a single Building Block reaches the end of its life (for any number of reasons), only that one Building Block will need to be refreshed at that time rather than a wholesale replacement of the entire environment.
  2. In an environment where virtualization is a new endeavor, sizing the compute, memory, and storage required is really an educated guess. As each Building Block is consumed, the real-world performance can be analyzed and adjusted for future Building Blocks to more closely match your specific workload.
  3. Building Blocks are inherently isolated which creates natural performance and availability boundaries. This can be leveraged for web and application server farms by spreading nodes of each farm across multiple Building Blocks. In the event of a catastrophic failure of one Building Block, due to major software bug affecting the cluster or the failure of an entire storage array for some reason, nodes of the server farm not hosted on the failed Building Block will be unaffected.
  4. The list price for storage arrays and servers goes down over time. If your growth is similar to many of my customers, where full build out of the physical infrastructure will not be required until 2-3 years after the start of the project, the acquisition cost of each individual Building Block will decrease over time, saving you money overall.
  5. In many cases, and due to a variety of factors, the cost to upgrade a storage array is higher than the cost to purchase the capacity with a new array. Upgrades also add complexity, complicate asset depreciation, and warranty renewals. The Building Block approach eliminates the majority of upgrades and the associated complexity.

Each Building Block can be maintained in its original build state or upgraded independent of the other building blocks so, for example, you don’t have to worry about upgrading every server in your datacenter with new HBA drivers if you decide to upgrade the storage array firmware on one array. You would only need to upgrade the servers in that arrays’ Building Block.

You may be thinking that your environment is not large enough to use a Building Block approach, but the more I worked on this project, the more I realized that Building Blocks can be adjusted to fit even very small environments. I’ll go into that a bit more later.

Build your own Private Cloud <- Part 2 -> How many Building Blocks

Building Blocks – Part I: Build your own #PrivateCloud

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Part 1 -> The Building Block Approach

As 2011 wraps up and I have a little time at home over the holidays, I’ve been reflecting on some of the customer projects I’ve worked on over the past year. Cloud computing and EMC’s vision for the “Journey to the Private Cloud” have been hot topics this year and of the various projects I’ve worked on this past year, one stands out to me as something that could be used as a blueprint for others who want to deploy their own Private Cloud but may not know how to start.

I have been working with a customer with approximately 10,000 servers that support their business and for all intents had zero virtualization as recent as 2010.  As most customers already know, they thought it would be good to begin virtualizing their environment to drive up asset utilization and flexibility while bringing down costs.  In the past, they’ve experimented with multiple server virtualization solutions (such as VMWare ESX and Microsoft Hyper-V) with limited success and had all but abandoned the idea.  A change in leadership in late 2010 brought a top-down initiative to virtualize wherever possible, but in order to instill confidence in virtualized environments within the various business units, the virtual infrastructure needed to be reliable and performant.

The customer spent the latter half of 2010 looking at their existing physical environment, finding that about 80% of the 10,000 servers were various application, file, and web servers; the remaining 20% being various database servers (mostly MS SQL).  Moving an infrastructure this large into a Private Cloud model would take several years and, further adding to the challenge, the DBA teams were particularly wary about virtualizing their database servers.  That said, the newly formed Virtualization and Cloud team set a goal of virtualizing the approximately 8,000 non-database servers over 36 months, starting out with dev/test and gradually adding production and tier-1 applications until only the database servers remained on physical infrastructure.  They believe that if they prove success with virtualization during this first 3 years, the DBAs will be more willing to begin virtualizing their systems, plus there should be more knowledge and tools in the public domain for managing virtual database instances by then.

To accomplish all of their goals, the customer leveraged some experience that individual team members had gained from prior environments to come up with a Building Block based deployment.  I worked with them to finalize the design and sizing for the each Building Block and throughout the year have helped analyze the performance of the deployed infrastructure to help determine how the Building Blocks can be optimized further.  Through the next several posts, I will explain the Building Block approach, detailing the benefits, some of the considerations, and some thoughts around sizing.  I hope that this information will be useful to others.  The content is mostly vendor agnostic except for some example data that uses EMC specific storage best practices.

Part 1 -> The Building Block Approach

Find your busiest LUNs Fast with Unisphere Analyzer Search

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One of the features that has been added to Analyzer (Navisphere and Unisphere) in recent versions is the ability to search for specific LUNs based on criteria.  This feature is actually pretty powerful because the criteria itself is pretty flexible.  For example, you can search for all LUNs attached to a specific host, or with a specific set of characters in the LUN name.  In addition you can search against performance metrics like Throughput, Response Time, or LUN Utilization.  This is where it gets interesting because you can look for poorly performing LUNs really quickly.  In the following example, I am going to build a search that looks for LUNs that have EX in the name (since all of my Exchange server LUNs have EX in the name) that ALSO have high LUN utilization for several polling intervals.

Once you’ve launched Analyzer and opened an Archive, click on the binocular icon in the tool bar to bring up the search dialog. 

You can choose a predefined search (a search you previously created and saved) or a new Object Based Query.  In this example we are going to build a new query so select “Object Based Query” and choose All LUNs in the drop down box.  If you wanted, you could narrow down the search to just Pool Based LUNs, just MetaLUNs, or Component LUNs, etc.)

Next we’ll define the LUN criteria by selecting the Name property, choosing Contains, and entering the “EX” value.  This will filter the search to only those LUNs that have EX in the name.  Finally we’ll set a threshold.  In this example, I’m looking for LUNs that have a LUN Utilization value over greater than 90% for at least 10 polling samples.  I could add more LUN criteria and/or more thresholds to further narrow down the results with AND or OR combinations.

Optionally, you can save the query so that it will be listed in the “Predefined Query” list in the future.  Click Search and set or edit the name of the search.

After clicking OK, Analyzer will create a new tab and populate the results of the search.  Once the search is complete you can graph metrics for the LUNs like normal.  Here I’ve selected Utilization to show why this LUN matched the search criteria — note the high utilization between 2am and 7am.

You can get much more granular with your searches if you are looking for something specific, or use metrics like Response Time to look for poorly performing LUNs attached to a specific server.  It’s pretty flexible.  I started using the search feature recently and thought others might be interested in it.  Try it out and let me know what you think.

Performance Analysis for Clariion and VNX – Part 5 (FASTCache)

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<< Back to Part 4 — Part 5 — Go to Part 6 >>

Sorry for the delay on this next post..  Between EMC World and my 9 month old, it’s been a battle for time…

Okay, so you have an EMC Unified storage system (Clariion, Celerra, or VNX) with FASTCache and you’re wondering how FASTCache is helping you.  Today I’m going to walk you through how to tease FASTCache performance data out of Analyzer.

I’m assuming you already have Analyzer launched and opened a NAR archive.  One thing to understand about Analyzer stats as they relate to FASTCache, is that stats are gathered at the LUN level for traditional RAID Group LUNs, but for Pool based LUNs, the stats are gathered at the pool level.  As a result graphing data for FASTCache differs for the two scenarios.

First we’ll take a look at the overall array performance.  Here we’ll see how much of the write workload is being handled by FASTCache.  In the SP Tab of Analyzer, select both SPs (be sure no LUNs or other objects are selected).  Select Write Throughput (IO/s), and then click the clipboard icon (with I’s and O’s).

Launch Microsoft Excel and paste into the sheet, and then perform the text-to-column change discussed in the previous post if necessary.

Next create a formula in the D column, adding the values for both SPs into a single total.  We’re not going to graph it quite yet though.

Back in Analyzer, deselect the two SPs, switch to the Storage Pool Tab, right-click on the array and choose Select All -> LUNs, then Select All -> Pools.

Click on a RAID Group LUN or Pool in the tree, it doesn’t matter which one, deselect Write Throughput (IO/s) and select FAST Cache Write Hits/s.  In a moment, you’ll end up with a graph like this.

Click the clipboard icon again to copy this data and paste it into a new sheet of the same workbook in Excel.  Insert a blank column between column A and B, then create a formula to add the values from column B through ZZ (ie: =SUM(C2:ZZ2).

Then copy that formula and paste into every row of column B.  This column will be our Total FAST Cache Write Hits for the whole array.  Finally, click the header for Column B to select it, then copy (CTRL-C).  Back to the first sheet — Paste the “Values” (123 Icon) into Column E.

Now that we have the Total Write IOPS and Total FAST Cache Write Hits in adjacent columns of the same worksheet, we can graph them together.  Select both columns (D and E in my example), click Insert, and choose 2D Area Chart.  You’ll get a nice little graph that looks something like the following.

Since it’s a 2D Area Chart, and not a stacked graph, the FASTCache Write IOPS are layered over the Total Write IOPS such that visually it shows the portion of total IOPS handled by FASTCache.  Follow this same process again for Read Throughput and FASTCache Read Hits.  Furthur manipulation in Excel will allow you to look at total IOPS (read and write) or drill down to individual Pools or RAID Group LUNs.

Another thing to note when looking at FASTCache stats…  FAST Cache Misses are IOPS that were not handled by FASTCache, but they may still have been handled by SP Cache.  So in order to get a feel for how many read IOs are actually hitting the disks, you’d actually want to subtract SP Read Cache Hits and Total FASTCache Read Hits (calculated similar to the above example) from SP Read Throughput.  This is similar for Write Cache Misses as well.

I hope this helps you better understand your FASTCache workload.  I’ll be working on FASTVP next, which is quite a bit more involved.

<< Back to Part 4 — Part 5 — Go to Part 6 >>

Performance Analysis for Clariion and VNX – Part 4

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Making Lemonade from Lemons.

In the last post, we looked at the storage processor statistics to check for cache health, excessive queuing, and response time issues and found that SPA has some performance degradation which seems to be related to write IO.  Now we need to drill down on the individual LUNs to see where that IO is being directed.  This is done in the LUN tab of Analyzer.  First, right click on the storage array itself in the left pane and choose deselect all -> items.  Then click the LUN tab and right click on the top level of the tree “LUNs”, choose select all -> LUNs.  Click on one of the LUNs to highlight it, then in choose Write Throughput (IO/s) from the bottom pane.  It may take a second for Analyzer to render the graph but you’ll end up with something like this…

You’ll quickly realize that this view doesn’t really help you figure out what’s going on.  With many LUNs, there is simply too much data to display it this way.  So click the clipboard button that has the I’s and O’s in it (next to the red arrow) to copy the graph data (in CSV format) into your desktop clipboard.  Now launch Microsoft Excel, select cell A1 and type Ctrl-V to paste the data.  It will look like the following image at first, with all LUNs statistics pasted into Column A.

Now we need to break out the various metrics into their own columns to make meaningful data, so go to the Data menu and click Text to Columns (see red arrow above).  Select Delimited, click Next..  Select ONLY comma as the delimiter, then next, next, finish.  Excel will separate the data into many columns (one column per LUN).  Next we’ll create a graph that can actually tell us something.  First, click the triangle button at the upper left corner of the sheet to select all of the data in the sheet at once.  Then click the area chart icon, select Area, then the Stacked Area (see Red Arrows below) icon.  Click OK.

You’ll get a nice little graph like this one below that is completely useless because the default chart has the X and Y axis reversed from what we need for Analyzer data.

To Fix this, right click on the graph, choose “Select Data”, click the Switch row/column button, and click OK.

Now you have a useful graph like the one below.  What we are seeing here is each band of color representing the Write IOPS for a particular LUN.  You’ll note that about 6 LUNs have very thick bands, and the rest of the over 100 LUNs have very small bands.  In this case, 6 LUNs are driving more than 50% of the total write IOPS on the array. Since the column header in the Excel sheet has the LUN data, you can mouse over the color band to see which LUN it represents.

Now that you know where to look, you can go back to Analyzer, deselect all LUNs and drill down to the individual LUNs you need to look at.  You may also want to look at the hosts that are using the busy LUNs to see what they are doing.  In Analyzer, check the Write IO Size for the LUNs you are interested in and see if the size is in line with your expectations for the application involved. Very large IO sizes coupled with high IOPS (ie: high bandwidth) may cause write cache contention.  In the case of this particular array, these 6 LUNs are VMFS datastores, and based on the Thin LUN space utilization and write IO loads, I would recommend that the customer convert them from Thin LUNs to Thick LUNs in the same Virtual Pool.  Thick LUNs have better write performance and lower processor overhead compared with Thin LUNs and the amount of free space in these Thin LUNs is fairly small.  This conversion can be done online with no host impact using LUN Migration.

You can use this copy/paste technique with Excel to graph all sorts of complex datasets from Analyzer that are pretty much not viewable with the default Analyzer graph.  This process lets you select specific data or groups of metrics from an complete Analyzer archive and graph just the data you want, in the way you want to see it.  There is also a way to do this as a bulk export/import, which can be scheduled too, and I’ll discuss that in the next post.

<< Back to Part 3 — Part 4 — Go to Part 5 >>

Performance Analysis for Clariion and VNX – Part 3

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Disclaimer: Performance Analysis is an art, not a science.  Every array is different, every application is different, and every environment has a different mix of both.  These posts are an attempt to get you started in looking at what the array is doing and pointing you in a direction to go about addressing a problem.  Keep in mind, a healthy array for one customer could be a poorly performing array for a different customer.  It all comes down to application requirements and workload.  Large block IO tends to have higher response times vs. small block IO for example.  Sequential IO also has a smaller benefit from (and sometimes can be hindered by) cache.  High IOPS and/or Bandwidth is not a problem, in fact it is proof that your array is doing work for you.  But understanding where the high IOPS are coming from and whether a particular portion of the IO is a problem is important.  You will not be able to read these series of posts and immediately dive in and resolve a performance problem on your array.  But after reading these, I hope you will be more comfortable looking at how the system is performing and when users complain about a performance problem, you will know where to start looking.  If you have a major performance issue and need help, open an case.

Starting from the top…

First let’s check the health of the front end processors and cache.  The data for this is in the SP Tab which shows both of the SPs.  The first thing I like to look at is the “SP Cache Dirty Pages (%)” but to make this data more meaningful we need to know what the write cache watermarks are set to.  You can find this by right-clicking on the array object in the upper-left pane and choosing properties.  The watermarks are shown in the SP Cache tab.

Once you note the watermarks, close the properties window and check the boxes for SPA and SPB.  In the lower pane, deselect utilization and chose SP Cache Dirty Pages (%).

Dirty pages are pages in write cache that have received new data from hosts, but have not been flushed to disk.  Generally speaking you want to have a high percentage of dirty pages because it increases the chance of a read coming from cache or additional writes to the same block of data being absorbed by the cache.  Any time an IO is served from cache, the performance is better than if the data had to be retrieved from disk.  This is why the default watermarks are usually around 60/80% or 70/90%.


What you don’t want is for dirty pages to reach 100%.  If the write cache is healthy, you will see the dirty pages value fluctuating between the high and low watermarks (as SPB is doing in the graph).  Periodic spikes or drops outside the watermarks are fine, but repeatedly hitting 100% indicates that the write cache is being stressed (SPA is having this issue on this system).  The storage system compensates for a full cache by briefly delaying host IO and going into a forced flushing state.  Forced Flushes are high priority operations to get data moved out of cache and onto the back end disks to free up write cache for more writes.  This WILL cause performance degradation.  Sustained Large Block Write IO is a common culprit here.

While we’re here, deselect Dirty Pages (%) and select Utilization (%) and look for two things here:

1.) Is either SP running at a load of higher than 70%?  This will increase application response time.  Check whether the SPs seem to fluctuate with the business day.  For non-disruptive upgrades, both SPs need to be under 50% utilization.

2.) Are the two SPs balanced?  If one is much busier than the other that may be something to investigate.

Now look at Response time (ms) and make sure that, again, both SPs are relatively even, and that Response time is within reasonable levels.  If you see that one SP has high utilization and response time but the other SP does not, there may be a LUN or set of LUNs owned by the busy SP that are consuming more array resources.  Looking at Total Throughput and Total Bandwidth can help confirm this, and then graphing Read vs. Write Throughput and Bandwidth to see what the IO operations actually are.  If both SPs have relatively similar throughput but one SP has much higher bandwidth, then there is likely some large block IO occurring that you may want to track down.

As an example, I’ve now seen two different customers where a Microsoft Sharepoint server running in a virtual machine (on a VMFS datastore) had a stuck process that caused SQL to drive nearly 200MB/sec of disk bandwidth to the backend array.  Not enough to cause huge issues, but enough to overdrive the disks in that LUN’s RAID Group, increasing queue length on the disks and SP, which in turn increased SP utilization and response time on the array.  This increased response time affected other applications unrelated to Sharepoint.

Next, let’s check the Port Queue Full Count.  This is the number of times that a front end port issued a QFULL response back to the hosts.   If you are seeing QFULL’s there are two possible causes.. One is that the Queue Depth on the HBA is too large for the LUNs being accessed.  Each LUN on the array has a maximum queue depth that is calculated using a formula based on the number of data disks in the RAID Group.  For example, a RAID5 4+1 LUN will have a queue depth of 88.  Assuming your HBA queue depth is 64 then you won’t have a problem.  However, if the LUN is used in a cluster file system (Oracle ASM, VMWare VMFS, etc) where multiple hosts are accessing the LUN simultaneously, you could run into problems here.  Reducing the HBA Queue Depth on the hosts will alleviate this issue.

The second cause is when there are many hosts accessing the same front end ports and the HBA Execution Throttle is too large on those hosts.  A Clariion/VNX front end port has a queue depth of 1600 which is the maximum number of simultaneous IO’s that port can process.  If there are 1600 IOs in queue and another IO is issued, the port responds with QFULL.   The host HBA responds by lowering its own Queue Depth (per LUN) to 1 and then gradually increasing the queue depth over time back to normal.  An example situation might be 10 hosts, all driving lots of IO, with HBA Execution Throttle set to 255.  It’s possible that those ten hosts can send a total of 2550 IOs simultaneously.  If they are all driving that IO to the same front end port, that will flood the port queue.  Reducing the HBA Execution throttle on the hosts will alleviate this issue.

Looking at the Port Throughput, you can see here that 2 ports are driving the majority of the workload.  This isn’t necessarily a problem by itself, but PowerPath could help spread the load across the ports which could potentially improve performance.

In VMWare environments specifically, it is very common to see many hosts all accessing many LUNs over only 1 or 2 paths even though there may be 4 or 8 paths available.  This is due to the default path selection (lowest port) on boot.  This could increase the chances of a QFULL problem as mentioned above or possibly exceeding the available bandwidth of the ports.  You can manually change the paths on each LUN on each host in a VMWare cluster to balance the load, or use Round-Robin load balancing.  PowerPath/VE automatically load balances the IO across all active paths with zero management overhead.

Another thing to look for is an imbalance of IO or Bandwidth on the processors.  Look specifically at Write Throughput and Write Bandwidth first as writes have the most impact on the storage system and more specifically the write cache.  As you can see in this graph, SPA is processing a fair bit more write IOPS compared to SPB.  This correlates with the high Dirty Pages and Response Time on SPA in the previous graphs.

So we’ve identified that there is performance degradation on SPA and that it is probably related to Write IO.  The next step is to dig down and find out if there are specific LUNs causing the high write load and see if those could be causing the high response times.

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