Do you want a side of serverless BS (SLBS) for your data infrastructure fud?

Did you want a side of SLBS with your software or hardware FUD?

server storage I/O trends

Updated 1/17/2018

Did you want a side of serverless bs (SLBS) with your software or hardware FUD?

A few years ago a popular industry buzzword term theme included server less and hardware less.

It turns out, serverless BS (SLBS) and hardware less are still trendy, and while some might view the cloud or software-defined data center (SDDC) virtualization, or IoT folks as the culprits, it is more widespread with plenty of bandwagon riders. SLBS can span from IoT to mobile, VDI and workspace clients (zero or similar), workstations, server, storage, networks. To me what’s ironic is that many purveyors of of SLBS also like to talk about hardware.

Whats the issue with SLBS?

Simple, on the one hand, there is no such thing as software that does not need hardware somewhere in the stack. Second, many purveyors of SLBS are solutions that in the past would have been called shrink-wrap. Thirdly IMHO SLBS tends to take away from the real benefit or story of some solutions that can also prompt questions or thoughts of if there are other FUD (fear uncertainty doubt) or MUD (marketing uncertainty doubt). Dare to be different, give some context about what your server less means as opposed to being lumped in with other SLBS followers.

Data Infrastructures and SDDI, SDDC, SDI
Data Infrastructures (hardware, software, services, servers, storage, I/O and networks)

Moving beyond SLBS

Can we move beyond the SLBS and focus on what the software or solution does, enables, its value proposition vs. how it is dressed, packaged or wrapped?

IMHO it does not matter who or why SLBS appeared or even that it exists, rather clarifying what it means and what it does not mean, adding some context. For example, you can acquire (buy, rent, subscribe) software without a server (or hardware). Likewise, you can get the software that comes bundled prepackaged with hardware (e.g. tin-wrapped), or via a cloud or other service.

The software can be shrink wrapped, virtual wrapped or download to run on a bare metal physical machine, cloud, container or VMs. Key is the context of does the software come with, or without hardware. This is an important point in that the software can be serverless (e.g. does not come with, or depend on specific hardware), or, it can be bundled, converged (CI), hyper-converged (HCI) among other package options.

software wrapping, packaging tin-wrapped software
Software needs hardware, hardware need software, both get defined and wrapped

All software requires some hardware somewhere in the stack. Even virtual, container, cloud and yes, software-defined anything requires hardware. What’s different is how much hardware is needed, where it is located, how is it is used, consumed, paid for as well as what the software that it enables.

Whats the point?

There are applications, solutions and various software that use fewer servers, less hardware, or runs somewhere else where the hardware including servers are in the stack. Until the next truly industry revolutionary technology occurs, which IMHO will be software that no longer requires any hardware (or marketing-ware) in the stack, and hardware that no longer needs any software in the stack, hardware will continue to need software and vice versa.

This is where the marketing-ware (not to be confused with valueware) comes into play with a response along the lines of clouds and virtual servers or containers eliminate the need for hardware. That would be correct with some context in that clouds, virtual machines, containers and other software-defined entities still need some hardware somewhere in the stack. Sure there can be less hardware including servers at a given place. Hardware still news software, the software still needs hardware somewhere in the stack.

data infrastructure stack layers
Data Infrastructure stack layers (hardware and software get defined with increasing value)

Show me some software that does not need any hardware anywhere in the stack, and I will either show you something truly industry unique, or, something that may be an addition to the SLBS list.

Add some context to what you are saying; some examples include that your software:

  • works with your existing hardware (or software)
  • does not need you to buy new or extra hardware
  • can run on the cloud, virtual, container or physical
  • requires fewer servers, less hardware, less cloud, container or virtual resources
  • is the focus being compatible with various data infrastructure resources
  • can be deployed and packaged as shrink-wrap, tin-wrapped or download
  • is packaged and marketed with less fud, or, fudless if you prefer

In other words, dare to be different, stand out, articulate your value proposition, and add some context instead of following behind the SLBS crowd.

Where to learn more

  • EMCworld 2015 How Do You Want Your Storage Wrapped?
  • Software Defined Storage Virtual Hard Disk (VHD) Algorithms + Data Structures
  • Data Infrastructure Primer and Overview (Its Whats Inside The Data Center)
  • Whats a data infrastructure?
  • Additional learning experiences along with common questions (and answers), as well as tips can be found in Software Defined Data Infrastructure Essentials book.

    Software Defined Data Infrastructure Essentials Book SDDC

    What this all means

    Watch out for getting hung up on, or pulled into myths about serverless or hardware less, at least until hardware no longer needs software, and software no longer needs hardware somewhere in the stack. The other point is to look for solutions that enable more effective (not just efficient or utilization) use of hardware (as well as software license) resources. Effective meaning more productive, getting more value and benefit without introducing bottlenecks, errors or rework.

    The focus does not have to be eliminating hardware (or software), rather, how to get more value out of hardware costs (up front and recurring Maintenance) as well as software licenses (and their Maintenance among other fees). This also applies to cloud and service providers, how to get more value and benefit, removing complexity (and costs will follow) as opposed to simply cutting and compromising.

    Next time somebody says serverless or hardware less, ask them if they mean fewer servers, less hardware, making more effective (and efficient) use of those resources, or if they mean no hardware or servers. If the latter, then ask them where their software will run. If they say cloud, virtual or container, no worries, at least then you know where the servers and hardware are located. Oh, and by the way, just for fun, watch for vendors who like to talk serverless or hardware less yet like to talk about hardware.

    Ok, nuff said, for now.

    Gs

    Greg Schulz – Microsoft MVP Cloud and Data Center Management, VMware vExpert 2010-2017 (vSAN and vCloud). Author of Software Defined Data Infrastructure Essentials (CRC Press), as well as Cloud and Virtual Data Storage Networking (CRC Press), The Green and Virtual Data Center (CRC Press), Resilient Storage Networks (Elsevier) and twitter @storageio. Courteous comments are welcome for consideration. First published on https://storageioblog.com any reproduction in whole, in part, with changes to content, without source attribution under title or without permission is forbidden.

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    Little data, big data and very big data (VBD) or big BS?

    StorageIO industry trends cloud, virtualization and big data

    This is an industry trends and perspective piece about big data and little data, industry adoption and customer deployment.

    If you are in any way associated with information technology (IT), business, scientific, media and entertainment computing or related areas, you may have heard big data mentioned. Big data has been a popular buzzword bingo topic and term for a couple of years now. Big data is being used to describe new and emerging along with existing types of applications and information processing tools and techniques.

    I routinely hear from different people or groups trying to define what is or is not big data and all too often those are based on a particular product, technology, service or application focus. Thus it should be no surprise that those trying to police what is or is not big data will often do so based on what their interest, sphere of influence, knowledge or experience and jobs depend on.

    Traveling and big data images

    Not long ago while out traveling I ran into a person who told me that big data is new data that did not exist just a few years ago. Turns out this person was involved in geology so I was surprised that somebody in that field was not aware of or working with geophysical, mapping, seismic and other legacy or traditional big data. Turns out this person was basing his statements on what he knew, heard, was told about or on sphere of influence around a particular technology, tool or approach.

    Fwiw, if you have not figured out already, like cloud, virtualization and other technology enabling tools and techniques, I tend to take a pragmatic approach vs. becoming latched on to a particular bandwagon (for or against) per say.

    Not surprisingly there is confusion and debate about what is or is not big data including if it only applies to new vs. existing and old data. As with any new technology, technique or buzzword bingo topic theme, various parties will try to place what is or is not under the definition to align with their needs, goals and preferences. This is the case with big data where you can routinely find proponents of Hadoop and Map reduce position big data as aligning with the capabilities and usage scenarios of those related technologies for business and other forms of analytics.

    SAS software for big data

    Not surprisingly the granddaddy of all business analytics, data science and statistic analysis number crunching is the Statistical Analysis Software (SAS) from the SAS Institute. If these types of technology solutions and their peers define what is big data then SAS (not to be confused with Serial Attached SCSI which can be found on the back-end of big data storage solutions) can be considered first generation big data analytics or Big Data 1.0 (BD1 ;) ). That means Hadoop Map Reduce is Big Data 2.0 (BD2 ;) ;) ) if you like, or dislike for that matter.

    Funny thing about some fans and proponents or surrogates of BD2 is that they may have heard of BD1 like SAS with a limited understanding of what it is or how it is or can be used. When I worked in IT as a performance and capacity planning analyst focused on servers, storage, network hardware, software and applications I used SAS to crunch various data streams of event, activity and other data from diverse sources. This involved correlating data, running various analytic algorithms on the data to determine response times, availability, usage and other things in support of modeling, forecasting, tuning and trouble shooting. Hmm, sound like first generation big data analytics or Data Center Infrastructure Management (DCIM) and IT Service Management (ITSM) to anybody?

    Now to be fair, comparing SAS, SPSS or any number of other BD1 generation tools to Hadoop and Map Reduce or BD2 second generation tools is like comparing apples to oranges, or apples to pears.

    Lets move on as there is much more to what is big data than simply focus around SAS or Hadoop.

    StorageIO industry trends cloud, virtualization and big data

    Another type of big data are the information generated, processed, stored and used by applications that result in large files, data sets or objects. Large file, objects or data sets include low resolution and high-definition photos, videos, audio, security and surveillance, geophysical mapping and seismic exploration among others. Then there are data warehouses where transactional data from databases gets moved to for analysis in systems such as those from Oracle, Teradata, Vertica or FX among others. Some of those other tools even play (or work) in both traditional e.g. BD1 and new or emerging BD2 worlds.

    This is where some interesting discussions, debates or disagreements can occur between those who latch onto or want to keep big data associated with being something new and usually focused around their preferred tool or technology. What results from these types of debates or disagreements is a missed opportunity for organizations to realize that they might already be doing or using a form of big data and thus have a familiarity and comfort zone with it.

    By having a familiarity or comfort zone vs. seeing big data as something new, different, hype or full of FUD (or BS), an organization can be comfortable with the term big data. Often after taking a step back and looking at big data beyond the hype or fud, the reaction is along the lines of, oh yeah, now we get it, sure, we are already doing something like that so lets take a look at some of the new tools and techniques to see how we can extend what we are doing.

    Likewise many organizations are doing big bandwidth already and may not realize it thinking that is only what media and entertainment, government, technical or scientific computing, high performance computing or high productivity computing (HPC) does. I’m assuming that some of the big data and big bandwidth pundits will disagree, however if in your environment you are doing many large backups, archives, content distribution, or copying large amounts of data for different purposes that consume big bandwidth and need big bandwidth solutions.

    Yes I know, that’s apples to oranges and perhaps stretching the limits of what is or can be called big bandwidth based on somebody’s definition, taxonomy or preference. Hopefully you get the point that there is diversity across various environments as well as types of data and applications, technologies, tools and techniques.

    StorageIO industry trends cloud, virtualization and big data

    What about little data then?

    I often say that if big data is getting all the marketing dollars to generate industry adoption, then little data is generating all the revenue (and profit or margin) dollars by customer deployment. While tools and technologies related to Hadoop (or Haydoop if you are from HDS) are getting industry adoption attention (e.g. marketing dollars being spent) revenues from customer deployment are growing.

    Where big data revenues are strongest for most vendors today are centered around solutions for hosting, storing, managing and protecting big files, big objects. These include scale out NAS solutions for large unstructured data like those from Amplidata, Cray, Dell, Data Direct Networks (DDN), EMC (e.g. Isilon), HP X9000 (IBRIX), IBM SONAS, NetApp, Oracle and Xyratex among others. Then there flexible converged compute storage platforms optimized for analytics and running different software tools such as those from EMC (Greenplum), IBM (Netezza), NetApp (via partnerships) or Oracle among others that can be used for different purposes in addition to supporting Hadoop and Map reduce.

    If little data is databases and things not generally lumped into the big data bucket, and if you think or perceive big data only to be Hadoop map reduce based data, then does that mean all the large unstructured non little data is then very big data or VBD?

    StorageIO industry trends cloud, virtualization and big data

    Of course the virtualization folks might want to if they have not already corner the V for Virtual Big Data. In that case, then instead of Very Big Data, how about very very Big Data (vvBD). How about Ultra-Large Big Data (ULBD), or High-Revenue Big Data (HRBD), granted the HR might cause some to think its unique for Health Records, or Human Resources, both btw leverage different forms of big data regardless of what you see or think big data is.

    Does that then mean we should really be calling videos, audio, PACs, seismic, security surveillance video and related data to be VBD? Would this further confuse the market, or the industry or help elevate it to a grander status in terms of size (data file or object capacity, bandwidth, market size and application usage, market revenue and so forth)?

    Do we need various industry consortiums, lobbyists or trade groups to go off and create models, taxonomies, standards and dictionaries based on their constituents needs and would they align with those of the customers, after all, there are big dollars flowing around big data industry adoption (marketing).

    StorageIO industry trends cloud, virtualization and big data

    What does this all mean?

    Is Big Data BS?

    First let me be clear, big data is not BS, however there is a lot of BS marketing BS by some along with hype and fud adding to the confusion and chaos, perhaps even missed opportunities. Keep in mind that in chaos and confusion there can be opportunity for some.

    IMHO big data is real.

    There are different variations, use cases and types of products, technologies and services that fall under the big data umbrella. That does not mean everything can or should fall under the big data umbrella as there is also little data.

    What this all means is that there are different types of applications for various industries that have big and little data, virtual and very big data from videos, photos, images, audio, documents and more.

    Big data is a big buzzword bingo term these days with vendor marketing big dollars being applied so no surprise the buzz, hype, fud and more.

    Ok, nuff said, for now.

    Cheers gs

    Greg Schulz – Author Cloud and Virtual Data Storage Networking (CRC Press, 2011), The Green and Virtual Data Center (CRC Press, 2009), and Resilient Storage Networks (Elsevier, 2004)

    twitter @storageio

    All Comments, (C) and (TM) belong to their owners/posters, Other content (C) Copyright 2006-2012 StorageIO and UnlimitedIO All Rights Reserved

    Buzzword Bingo 1.0 – Are you ready for fall product announcemnts?

    Ever play IT buzzword bingo or perhaps you have and not realized it?

    Anyone can play, its easy and you don’t even need to know or understand the words or terms.

    Its actually quite common and very easy, it goes like this, someone perhaps a vendor, var, media, analysts, pundit, blogger, twitter, customer/user, financier or whomever starts rattling of terms, phrases and acronyms in a discussion until some says or yells, “Bingo”, that is what I want or want to talk about or that applies to what Im interested in.  Buzzword bingo can be multi-directional, it can be played by customers and vendors alike, it can be played via product announcements, articles, white papers, blog posts, videos, presentations or webcasts you name it.

    So lets give it a try with a simple version to get started, oh, some of the acronyms have multiple meanings as well just to make the game more interesting, so remember, yell bingo when something resonates, ready? Ok, let’s go with 8 Gb Fibre Channel (8GFC), 10GbE, AVO, Agent-less, Authentication, Archiving, Backup, Backup Service Provider (BSP), BC/DR, Buffer, Bus, Benchmarking, Blade servers, Bulk Storage, CAS, Capacity Planning, Capacity per watt, CDP, Converged Enhanced Ethernet (CEE), CIFS, Cloud, cloud computing, cloud storage, cloud it, cloud confusion, clusters, Clustered Storage, CNA, Compliance, Compression, Converged Networks, Cores, Driver, Data Center Ethernet (DCE), DLP, Domain, D2D2D, Data management, Data migration, De-duplication, De-dupe debates, Dual Boot, DPM, eDiscovery, Energy Star, EPA, Environmental Health and Safety (EHS), Encryption, Event Correlation, eWaste, Fibre Channel over Ethernet (FCoE), FCBB, File management, FLASH or flash, Gateway, Green, Grid, Hash table, Index, HA, Hypervisor, hyperv, HAL, I/O Virtualization (IOV), Inband, Inline, ITIL, InfiniBand, Infrastructure Resource Management (IRM), IOPS per watt, IPM & MAID 2.0, iSCSI, LAN, Look aside buffer, MAN, Mhz, Multi-Protocol Storage, Managed Service Processors, Provider (MSP), MIBS, MLC, Meta, NAS, NFS, NPVID, OS, Over clocking, Optimization, Partitions, Para-virtualization, PCIe, Policy Management, POTS, POST, Post processing, PIROMA, Power Cooling Floor-space EHS (PCFE), PCI SIG IOV, Pin count, Pin out, Pun up, Performance, pNFS, Removable Hard Disk Drive (RHDD), RAID 6, RAM, Replication, RoHS, Replication, REST, SAN, SaaS, SRA, SRM, SAS, SATA, Security, SLC, Snapshots, SMIS, SNMP, SOAP, SRM, SSD, Stack, Tape, Threads, Thin Provision, Tier 0, Unstructured data, VCB, VM, Vmworld, Virtualization, virtual memory, Vmotion, VMware, vcpu, VTL, WAN, WAAS, WADS, WAFS, WADM, Web 2.0 or xaaS (replace x with whatever letter you like, kind of like xSP ;) ).

    Any bingos yet? Ok, enough is enough, will leave it here for now, maybe a future post for Buzzword Bingo 2.0 will include more technical terms and acronyms or excerpts from industry trade group dictionaries such as SNIA or glossaries such as those from mine and other books .

    With a plethora of upcoming announcements, rest assured, there will be plenty of opportunities to brush up on buzzword bingo so get ready, practice and enjoy your next game.

    Check out the news and portfolio as well as interesting links page to learn more about related topics.

    Ok, nuff said.

    Cheers gs

    Greg Schulz – Author Cloud and Virtual Data Storage Networking (CRC Press), The Green and Virtual Data Center (CRC Press) and Resilient Storage Networks (Elsevier)
    twitter @storageio

    All Comments, (C) and (TM) belong to their owners/posters, Other content (C) Copyright 2006-2024 Server StorageIO and UnlimitedIO LLC All Rights Reserved