SlideShare a Scribd company logo
1 of 11
Download to read offline
Defining a Practical
Path to Artificial
Intelligence
196 Van Buren St. | Herndon, VA 20170 | (571) 353-6000 | vion.com
Foreword
Extracting actionable insights from raw data is critical to
the success of virtually any business or organization in
any industry – from finance, to healthcare, government
and manufacturing. The data sets that are used to glean
these insights are getting exponentially larger and being
created exponentially faster. The pace of data growth
will only continue to accelerate. Since the term “big
data” was coined in the 1990’s we have made great
strides in deriving intelligence from these massive pools
of information, but the reality is, we are just scratching
the surface of what is possible. Artificial Intelligence
(AI) is able to discover deeper insights and identify
correlations between different data sets far faster and
more completely than the human brain could possibly
process. The steady rise of AI as a business tool marks
the beginning of a new technology wave. Is AI accessible
for organizations of all sizes? According to Gartner’s
2018 CIO Agenda Survey, only four percent of CIOs
have implemented AI, while a further 46 percent have
developed plans to do so. This is typical with every new
technology trend – a slow increase of early adopters
emerge until something comes along to change the
dynamic and make access and implementation more
practical.
As the Gartner report points out, there is a perceived
steep learning curve with AI. While many enterprises
want to kickstart their AI initiatives, the challenges to
building an AI-optimized infrastructure typically holds
them back. But like the big data revolution 10 years ago,
AI is actually more approachable and simpler than many
CIOs may think. In fact, with the evolution of purpose-
built AI Infrastructures and the advancement of Graphics
Processing Units (GPUs) that enable massively parallel,
deep analysis in real-time; cognitive computing may be
the norm in data centers in record time. But how?
In this paper we will evaluate the path to AI for public
sector agencies and commercial organizations, identify
key questions and options to consider, and determine
how to accelerate implementation and management
within existing budgets.
Defining a Practical Path to Artificial Intelligence | 1
Chapter 1: Addressing Roadblocks to AI
AI is the next evolution of big data and data analytics initiatives that have been in play across organizations for a
decade. What’s holding enterprises back from moving forward in adopting AI? It boils down to three main issues:
ßß A struggle to “do it yourself“ (DIY), build an AI practice
ßß Finding the talent to build and support an AI practice
ßß Funding AI
The Burden of DIY
As new technologies come into the market, enterprises
are often stuck with building their own solutions.. The
same holds true for AI. When “DIY” is the only option, AI
initiatives stall out.
ßß Software Users are forced to take open source code,
often with limited documentation, then compile and
tune the code. In tuning, there are countless knobs that
they need to tweak to get more out of their training
runs.
ßß Hardware Users often spend months researching
various options and running Proof of Concepts (POC)
to see which delivers the best performance. Even
after purchasing the system, constant maintenance is
required.
ßß Slow Workloads Even when all of this is done, users find
that workloads are slow. It’s because the system is built
with legacy components, which are cobbled together,
creating bottlenecks.
An Evolving Workforce
Like the evolution of every other technology, early
trepidation often stems around having a workforce with the
skills and talent to support IT. The understanding gained
over the past 50 years can become irrelevant- from human
skills to tools, to infrastructure – in the past everything has
changed dramatically. But in this case, the AI evolution
doesn’t replace the architectural foundation of the
approach that already exists in– it augments it – in effect
allowing employees to make more informed decisions and
pursue more strategic oversight of data.
According to Whit Andrews, Research Vice President and
Gartner analyst, the most transformational benefits of AI in
the near term will arise from using it to enable employees
to pursue higher-value activities.
The DIY Dilemma:
ßß Never-ending cycles of compiling
and customizing open source
software
ßß Months of system building and
tuning, constant maintenance
ßß Legacy solutions full of data
bottlenecks, from storage to GPU
to apps
What’s Changing? The Algorithm is the Same, but the
Technology is Different
Like the evolution of every other technology, early
trepidation often stems around having a workforce with the
skills and talent to support IT. The understanding gained
over the past 50 years can become irrelevant- from human
skills to tools, to infrastructure – in the past everything has
changed dramatically. But in this case, the AI evolution
doesn’t replace the architectural foundation of the
approach that already exists in– it augments it – in effect
allowing employees to make more informed decisions and
pursue more strategic oversight of data.
According to Whit Andrews, Research Vice President and
Gartner analyst, the most transformational benefits of AI in
the near term will arise from using it to enable employees
to pursue higher-value activities.
Gartner predicts that by 2020,
20 percent of organizations will
dedicate workers to monitoring
and guiding neural networks.
Defining a Practical Path to Artificial Intelligence | 2
Defining a Practical Path to Artificial Intelligence | 3
CPU vs. GPU Comparision
Chapter 2: A Technology Collision with Perfect
Timing – Purpose-Built AI Infrastructures
The DIY dilemma becomes obsolete, thanks to a perfect
collision of technology. Now it’s practical rather than
theory. What happened?
ßß Hardware Improvements - Hardware evolution in
recent years has dramatically changed the volume of
data that can be processed and the speed at which
it can happen. Thanks to the gaming and research
industries, GPUs are ubiquitous and companies
like NVIDIA now create purpose-built GPUs for AI,
which process data 45 times faster than traditional
CPUs. GPUs also provide thousands of cores per
socket, making them exponentially more dense than
traditional CPUs, and provide scalability unachievable
in legacy architectures. Modern storage technology
from manufacturers, like Pure Storage, now support
extremely high IOPs and bus speeds using NVMe. PCIe
and NVLink can now transfer many GB per second for
these massively parallel and concurrent workloads.
ßß Software - Early adopters on the frontier of AI have
now built user-friendly software solutions designed for
neural networking. NVIDIA’s CUDA, Apache’s MXNet
and Google’s Tensorflow-GPU are all robust software
options that make AI easier to execute. Dataiku,
which leverages this aforementioned technologies, has
gone so far as to make AI a click and drag exercise,
accessible by any level of user.
ßß Containerization - This is an alternative to full machine
virtualization that involves encapsulating an application
in a container with its own operating environment. The
adoption of containerization allows IT architects to
leverage software, data science and this standardized
approach to the algorithm that has catapulted the
industry forward. Containerization enables rapid
innovation and development of algorithms, dramatically
reducing the time from initial development to
deployment in production. It also facilitates rapid
adaptation if the underlying datasets change or evolve.
We see this evidence in threat detection and the
growing strength of our nation’s cybersecurity profile
every day.
Total Vertices Size of Adjacency Matrix CPU Time(s) GPU Time(s) Speedup
1000 1,000,000 3.9s 0.103s 37.86x
2000 4,000,000 30.90s 0.698s 44.34x
4000 16,000,000 244.22s 5.09s 47.98x
8000 64,000,000 1941.0s 39.1s 49.64x
10000 100,000,000 3778.1s 77.8s 48.56
11111 123,454,321 5179.2s 108.01s 47.95
As data volume grows at an epic pace, these massive data
sets are meeting this hardware, software and computing
power, creating the perfect collision of technology that
can provide a distinct advantage to organizations. Where
in the past it has been really difficult for small agencies
to get compute, network and storage that is built off the
protocols they understand already, today, with the advent
of Infrastructures designed for AI – you no longer need a
PhD to leverage AI anymore.
Table 1: Simple implementation of the Floyd-Warshall all-pairs-shortest-path algorithm written in two versions, a standard
serial CPU version and a CUDA GPU version [5]1
.
On average the GPU time is 45x faster!
1
Stephen D. Boyles. User Equilibrium and System Optimum. https://www.slideshare.net/VishalSingh405/cpu-vs-gpu-presentation-54700475
Defining a Practical Path to Artificial Intelligence | 4
What is AI Ready Infrastructure?
Deep Learning requires more than fast compute and
high-bandwidth interconnects. When designing a full-
stack platform for large-scale deep learning, the system
architect’s goal is to provide a well-integrated, adaptable,
scalable set of compute, storage, networking and software
capabilities that seamlessly work together providing peak
efficiency and effectiveness. This requires provisioning
as many GPUs as possible, while ensuring linearity of
performance as the environment is scaled, all the while
keeping the GPUs fed with data.
Keeping the GPUs fed requires a high-performance data
pipeline all the way from storage to GPUs. AIRITM
supplies
the right balance of storage, performance and scalability.
When defining storage for deep-learning systems,
architects must consider three requirements:
ßß Diverse Performance - Deep learning often requires
multi-gigabytes-per-second I/O rates but isn’t restricted
to a single data type or I/O size. Training deep
neural network models for applications as diverse
as machine vision, natural-language processing, and
anomaly detection requires different data types and
dataset sizes. Storage systems that fail to deliver the
performance required during neural network training
will starve the GPU tier for data, and prolong the
length of the run, inhibiting developer productivity
and efficiency. Providing consistency of performance
at various IO sizes and profiles at a capacity scale will
ensure success.
ßß Scalable Capacity - Successful machine learning
projects often have ongoing data acquisition and
continuous training requirements, resulting in a
continued growth of data over time. Furthermore,
enterprises that succeed with one AI project find ways
to apply these powerful techniques to new application
areas, resulting in further data expansion to support
multiple use cases. Storage platforms with inflexible
capacity limits result in challenging administration
overheads to federate disparate pools.
ßß Strong Resiliency - As the value of AI grows within an
organization, so does the value of the infrastructure
supporting its delivery. Storage systems that result in
excessive downtime or require extensive administrative
outages can cause costly project delays or service
disruptions.
ßß AI-Ready Infrastructure (AIRI) provides enterprises a
simple solution to hit the ground running, and is the
product of the partnership between storage experts
Pure Storage, and high-performance computing experts
NVIDIA. AIRI aims to solve infrastructure complexities.
It eliminates the difficulties of building an AI data
center – while neatly and compactly delivering all the
necessary components in a small form-factor. Now
every enterprise can finally start to explore what AI can
do with their most important asset, data.
Cost Concerns Answered
Even as AI-ready infrastructure becomes accessible and
deployable for all the reasons described, the elephant
in the room is often still: How do we pay for it and how
can we implement it quickly and scale for the future? This
is where the perfect collision of needs and technology
continues and gains additional momentum with the advent
of modern acquisition models that provide greater financial
flexibility.
Just as the democratization of high performance computing
has catapulted AI, the as-a-Service model has simplified
acquisition of this technology. Acquiring AI infrastructure
as-a-Service allows users to manage and maintain it from a
monthly operating budget versus investing CapEx dollars
up-front. With as-a-Service, costs are more predictable and
organizations can scale as needed when needs change.
Defining a Practical Path to Artificial Intelligence | 5Defining a Practical Path to Artificial Intelligence | 5
Chapter 3: Deploying AI: Evaluating
Operational Impact
Ready for AI? Key Questions to Consider
According to Gartner researcher, Whit Andrews, the
main goal in the AI revolution should be to “normalize AI
planning and development for the whole organization,
including leaders of data and analytics, applications and
lines of business.” These simple steps help bring together
those leaders around a common purpose:
ßß Assess which business outcomes would benefit most
from AI
ßß Evaluate AI as simply the latest advanced analytical
technology available that might help achieve those
outcomes
As that evaluation of technology becomes more
granular, speed with data begins to take center stage.
The faster teams can iterate on a model, the better.
And that means doing everything possible to eliminate
data transfer time and other such variables, so models
can iterate dramatically faster. AI needs will continue
to evolve and force infrastructure to keep pace with
pushes for speed and performance. In that evaluation
process, organizations should give great value to what
will serve their current needs but also acknowledge
outgrowing them is inevitable. Data infrastructure has
to be future-proof to deliver high performance and
increase the productivity of data scientists or else it too
will become obsolete.
ßß Do you have data silos where data has to be copied from one to another?
ßß Do you have a data science team working with terabytes of data?
ßß Does it take to much time to go from cleaning data to getting feedback
about a model?
ßß Do you spend a significant amount of time managing and tracking
versions of training data sets?
ßß Do you spend significant resources on keeping your current infrastructure
online, replacing components or keeping up with workflow changes?
Here are key questions to consider whether your
organization can benefit from a purpose-built AI
infrastructure:
A Timeline to AI:
How AI Ready Infrastructure
as-a-Service is Changing
the Game
Federal government has been at the forefront of the AI
revolution since the beginning, but outside of the agencies
that are early adopters, the notion of implementing AI on
a budget has appeared to be a tedious and time intensive
task.
That’s where AI as-a-Service offers a tremendous solution
– not just for federal agencies, but organizations of all
types. For smaller or mid-size agencies or any organization
struggling with juggling resources, AI as-a-Service can be
the way to get started.
AIRI in conjunction with the as-a-Service model can
dramatically impact timelines:
Defining a Practical Path to Artificial Intelligence | 6
AIRI is ready to deploy. It
only takes a day to stand up
the capability –and within 30
days of migrating the data,
organizations can reap the
results.
There is typically an 18
month procurement and
acquisition process in Federal
organizations and an 18
month deployment process
= 36 months to realize any
benefit from a typical AI
solution acquired via traditional
structures.
AIRI
as-a-Service
DIY
VS.
Defining a Practical Path to Artificial Intelligence | 7
Use Case: Quickly Determine Security Threats
A large government agency wanted to perform image
classification and object detection on live video feeds to
better access security threats. They had an existing model,
but they wanted to build on and improve it to keep their
process streamlined.
The Challenge
The time, cost and process to develop and approve a new
model for object detection is tedious and can require many
rounds of review. The organization needed the ability to
update an existing model with new images that have been
labeled, correctly or incorrectly to deepen learning and
ultimately produce better quality intelligence on which to
base decision-making.
The Business Impact of AIRI
AIRI enables a more efficient approach to modeling that
has many positive impacts to the organization including:
improved speed, accuracy and performance of data analysis
as well greater independence and dexterity for the analysts,
The GPU power of the AIRI dramatically improves the
feedback loop to improve learning and speed the process,
thereby reducing the time data scientists spend retraining
their models. The cost savings compound over time as a
result of deploying more accurate models and reducing the
strain on resources. AIRI allows for faster experimentation,
data analysis and accuracy supporting stronger outcomes
and decision-making for the organization.
Cost & Space Impact of AIRI: 50 Racks Under 50 Inches
AIRI reduces racks of complexity into a complete solution
– delivering the performance of 50 racks of legacy
technologies under 50 inches. It’s less than 20 rack units,
which provides the performance of an entire data center
building in a form factor that’s a little taller than waist-
high. The power and space savings here are dramatic for
organizations. The system is also run on Ethernet, not
InfiniBand, which also reduces complexity and cost.
This streamlined infrastructure also simplifies “time to
insight” and the productivity of data scientists. Most data
scientists run AI workloads from a single server. Scaling a
project across many servers is difficult to do, and multi-
node scaling was reserved for very few AI experts. With
AIRI, any data scientist can do multi-node training and
produce actionable results faster. Imagine the potential
time savings and the ability to make better decisions – this
is possible when you have the production bed to act faster.
Defining a Practical Path to Artificial Intelligence | 7
Can AI Infrastucure as-a- Service
reduce footprint while increasing
performance?
AIRI provides 50 racks under 50 inches
Defining a Practical Path to Artificial Intelligence | 8
How ViON, Pure Storage
and NVIDIA Work Together
Simply put, AIRI is the technical accelerator with its high-
performance infrastructure and ViON is the delivery
accelerator with the as-a-Service model. ViON brings direct
partnerships and in-house support with cleared resources
that provide expertise from hardware to software. With
AIRI as-a-Service, ViON enables organizations to have the
AI solution on-site behind the customer firewall.
Many AI development teams have limited access to elite
GPU systems due to recurring public cloud shortages and
the expense of dedicated systems. ViON’s secure in-house
lab moves extreme high-performance testing into the agile
process by default.
About Pure Storage
Pure Storage (NYSE: PSTG) helps innovators build a
better world with data. Pure’s data solutions enable
SaaS companies, cloud service providers, and enterprise
and public sector customers to deliver real-time, secure
data to power their mission-critical production, DevOps,
and modern analytics environments in a multi-cloud
environment. One of the fastest growing enterprise IT
companies in history, Pure Storage enables customers to
quickly adopt next-generation technologies, including
artificialintelligenceandmachinelearning,tohelpmaximize
the value of their data for competitive advantage. And with
a Satmetrix-certified NPS customer satisfaction score in the
top one percent of B2B companies, Pure’s ever-expanding
list of customers are among the happiest in the world.
About NVIDIA
NVIDIA‘s (NASDAQ: NVDA) invention of the GPU in 1999
sparked the growth of the PC gaming market, redefined
modern computer graphics and revolutionized parallel
computing. More recently, GPU deep learning ignited
modern AI — the next era of computing — with the GPU
acting as the brain of computers, robots and self-driving
cars that can perceive and understand the world. More
information at http://nvidianews.nvidia.com/.
For more information contact:
William Hill | billy.hill@vion.com
Lead Data Scientist, VION
Defining a Practical Path to Artificial Intelligence | 8
196 Van Buren St. | Herndon, VA 20170 | (571) 353-6000 | vion.com
About ViON
ViON Corporation is a cloud service provider with over 37 years’ experience designing and delivering enterprise
data center solutions to government agencies and commercial businesses. The company provides IT as-a-Service
solutions including on-premise public cloud capabilities to simplify the challenges facing business leaders and
agency executives. Focused on supporting the customer’s evolution to the next generation data center, ViON’s Data
Center as-a-Service offering provides innovative solutions from OEMs and disruptive technology providers via a
consumption-based model. The complete range of as-a-Service solutions are available to research, compare, procure
and manage via a single portal, ViON Marketplace. ViON delivers expertise and an outstanding customer experience
at every step with professional and managed services, backed by highly-trained, cleared resources. A veteran-owned
company based in Herndon, Virginia, the company has field offices throughout the U.S. (www.vion.com).

More Related Content

What's hot

What's hot (20)

Predictive Enterprise Strategic Overview
Predictive Enterprise Strategic OverviewPredictive Enterprise Strategic Overview
Predictive Enterprise Strategic Overview
 
Smart Data Module 6 d drive the future
Smart Data Module 6 d drive the futureSmart Data Module 6 d drive the future
Smart Data Module 6 d drive the future
 
Data Analytics - The Insight
Data Analytics - The InsightData Analytics - The Insight
Data Analytics - The Insight
 
Facilitating Collaborative Life Science Research in Commercial & Enterprise E...
Facilitating Collaborative Life Science Research in Commercial & Enterprise E...Facilitating Collaborative Life Science Research in Commercial & Enterprise E...
Facilitating Collaborative Life Science Research in Commercial & Enterprise E...
 
Creating the Foundations for the Internet of Things
Creating the Foundations for the Internet of ThingsCreating the Foundations for the Internet of Things
Creating the Foundations for the Internet of Things
 
Diginnovia - Innovation in the Digital Age
Diginnovia - Innovation in the Digital AgeDiginnovia - Innovation in the Digital Age
Diginnovia - Innovation in the Digital Age
 
CWIN17 san francisco-rob vellinga - Interaction between AI and people
CWIN17 san francisco-rob vellinga -  Interaction between AI and peopleCWIN17 san francisco-rob vellinga -  Interaction between AI and people
CWIN17 san francisco-rob vellinga - Interaction between AI and people
 
Pervasive, intelligent cloud ecosystems, spectacular firms and frontier firms...
Pervasive, intelligent cloud ecosystems, spectacular firms and frontier firms...Pervasive, intelligent cloud ecosystems, spectacular firms and frontier firms...
Pervasive, intelligent cloud ecosystems, spectacular firms and frontier firms...
 
Taming Big Science Data Growth with Converged Infrastructure
Taming Big Science Data Growth with Converged InfrastructureTaming Big Science Data Growth with Converged Infrastructure
Taming Big Science Data Growth with Converged Infrastructure
 
Mission Critical Use Cases Show How Analytics Architectures Usher in an Artif...
Mission Critical Use Cases Show How Analytics Architectures Usher in an Artif...Mission Critical Use Cases Show How Analytics Architectures Usher in an Artif...
Mission Critical Use Cases Show How Analytics Architectures Usher in an Artif...
 
O'Reilly ebook: Machine Learning at Enterprise Scale | Qubole
O'Reilly ebook: Machine Learning at Enterprise Scale | QuboleO'Reilly ebook: Machine Learning at Enterprise Scale | Qubole
O'Reilly ebook: Machine Learning at Enterprise Scale | Qubole
 
Cisco Connect 2018 Malaysia - It transformation-an imperative for driving bus...
Cisco Connect 2018 Malaysia - It transformation-an imperative for driving bus...Cisco Connect 2018 Malaysia - It transformation-an imperative for driving bus...
Cisco Connect 2018 Malaysia - It transformation-an imperative for driving bus...
 
Scaling the mirrorworld with knowledge graphs
Scaling the mirrorworld with knowledge graphsScaling the mirrorworld with knowledge graphs
Scaling the mirrorworld with knowledge graphs
 
IBM Academy of Technology & Cognitive Computing
IBM Academy of Technology & Cognitive ComputingIBM Academy of Technology & Cognitive Computing
IBM Academy of Technology & Cognitive Computing
 
Virtual Reality Training in Smart Factory A Perspective View
Virtual Reality Training in Smart Factory A Perspective ViewVirtual Reality Training in Smart Factory A Perspective View
Virtual Reality Training in Smart Factory A Perspective View
 
SmartData Webinar: Cognitive Computing in the Mobile App Economy
SmartData Webinar: Cognitive Computing in the Mobile App EconomySmartData Webinar: Cognitive Computing in the Mobile App Economy
SmartData Webinar: Cognitive Computing in the Mobile App Economy
 
Investing in AI: Moving Along the Digital Maturity Curve
Investing in AI: Moving Along the Digital Maturity CurveInvesting in AI: Moving Along the Digital Maturity Curve
Investing in AI: Moving Along the Digital Maturity Curve
 
Benefiting from Semantic AI along the data life cycle
Benefiting from Semantic AI along the data life cycleBenefiting from Semantic AI along the data life cycle
Benefiting from Semantic AI along the data life cycle
 
Why Big Data Analytics Needs Business Intelligence Too
Why Big Data Analytics Needs Business Intelligence Too Why Big Data Analytics Needs Business Intelligence Too
Why Big Data Analytics Needs Business Intelligence Too
 
AI is moving from its academic roots to the forefront of business and industry
AI is moving from its academic roots to the forefront of business and industryAI is moving from its academic roots to the forefront of business and industry
AI is moving from its academic roots to the forefront of business and industry
 

Similar to Defining a Practical Path to Artificial Intelligence

Similar to Defining a Practical Path to Artificial Intelligence (20)

AI in Business - Key drivers and future value
AI in Business - Key drivers and future valueAI in Business - Key drivers and future value
AI in Business - Key drivers and future value
 
Meg Mude, Intel - Data Engineering Lifecycle Optimized on Intel - H2O World S...
Meg Mude, Intel - Data Engineering Lifecycle Optimized on Intel - H2O World S...Meg Mude, Intel - Data Engineering Lifecycle Optimized on Intel - H2O World S...
Meg Mude, Intel - Data Engineering Lifecycle Optimized on Intel - H2O World S...
 
Evaluating the opportunity for embedded ai in data productivity tools
Evaluating the opportunity for embedded ai in data productivity toolsEvaluating the opportunity for embedded ai in data productivity tools
Evaluating the opportunity for embedded ai in data productivity tools
 
Dell AI and HPC University Roadshow
Dell AI and HPC University RoadshowDell AI and HPC University Roadshow
Dell AI and HPC University Roadshow
 
Top Trends & Predictions That Will Drive Data Science in 2022.pdf
Top Trends & Predictions That Will Drive Data Science in 2022.pdfTop Trends & Predictions That Will Drive Data Science in 2022.pdf
Top Trends & Predictions That Will Drive Data Science in 2022.pdf
 
Data set The Future of Big Data
Data set The Future of Big DataData set The Future of Big Data
Data set The Future of Big Data
 
Understanding Emerging Technology - Artificial Intelligence
Understanding Emerging Technology - Artificial Intelligence Understanding Emerging Technology - Artificial Intelligence
Understanding Emerging Technology - Artificial Intelligence
 
Dell NVIDIA AI Powered Transformation in Financial Services Webinar
Dell NVIDIA AI Powered Transformation in Financial Services WebinarDell NVIDIA AI Powered Transformation in Financial Services Webinar
Dell NVIDIA AI Powered Transformation in Financial Services Webinar
 
Converged IoT Systems: Bringing the Data Center to the Edge of Everything
Converged IoT Systems: Bringing the Data Center to the Edge of EverythingConverged IoT Systems: Bringing the Data Center to the Edge of Everything
Converged IoT Systems: Bringing the Data Center to the Edge of Everything
 
An Encyclopedic Overview Of Big Data Analytics
An Encyclopedic Overview Of Big Data AnalyticsAn Encyclopedic Overview Of Big Data Analytics
An Encyclopedic Overview Of Big Data Analytics
 
Top 10 tredning technologies to learn in 2021
Top 10 tredning technologies to learn in 2021Top 10 tredning technologies to learn in 2021
Top 10 tredning technologies to learn in 2021
 
9/30 Top 5 Deep Learning
9/30 Top 5 Deep Learning 9/30 Top 5 Deep Learning
9/30 Top 5 Deep Learning
 
Complete-SRS.doc
Complete-SRS.docComplete-SRS.doc
Complete-SRS.doc
 
AI Trends.pdf
AI Trends.pdfAI Trends.pdf
AI Trends.pdf
 
Big data (word file)
Big data  (word file)Big data  (word file)
Big data (word file)
 
Exciting it trends in 2015 why you should consider shifting and upgrading yo...
Exciting it trends in 2015  why you should consider shifting and upgrading yo...Exciting it trends in 2015  why you should consider shifting and upgrading yo...
Exciting it trends in 2015 why you should consider shifting and upgrading yo...
 
trends of information systems and artificial technology
trends of information systems and artificial technologytrends of information systems and artificial technology
trends of information systems and artificial technology
 
Arc view convergence of ai and io t report
Arc view convergence of ai and io t reportArc view convergence of ai and io t report
Arc view convergence of ai and io t report
 
How AI Will Change Software Development And Applications
How AI Will Change Software Development And Applications How AI Will Change Software Development And Applications
How AI Will Change Software Development And Applications
 
10/21 Top 5 Deep Learning Stories
10/21 Top 5 Deep Learning Stories10/21 Top 5 Deep Learning Stories
10/21 Top 5 Deep Learning Stories
 

Recently uploaded

Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Safe Software
 
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Victor Rentea
 
Architecting Cloud Native Applications
Architecting Cloud Native ApplicationsArchitecting Cloud Native Applications
Architecting Cloud Native Applications
WSO2
 
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
?#DUbAI#??##{{(☎️+971_581248768%)**%*]'#abortion pills for sale in dubai@
 

Recently uploaded (20)

Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...
 
CNIC Information System with Pakdata Cf In Pakistan
CNIC Information System with Pakdata Cf In PakistanCNIC Information System with Pakdata Cf In Pakistan
CNIC Information System with Pakdata Cf In Pakistan
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
 
DEV meet-up UiPath Document Understanding May 7 2024 Amsterdam
DEV meet-up UiPath Document Understanding May 7 2024 AmsterdamDEV meet-up UiPath Document Understanding May 7 2024 Amsterdam
DEV meet-up UiPath Document Understanding May 7 2024 Amsterdam
 
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
 
Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...
Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...
Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...
 
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost SavingRepurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
 
FWD Group - Insurer Innovation Award 2024
FWD Group - Insurer Innovation Award 2024FWD Group - Insurer Innovation Award 2024
FWD Group - Insurer Innovation Award 2024
 
Corporate and higher education May webinar.pptx
Corporate and higher education May webinar.pptxCorporate and higher education May webinar.pptx
Corporate and higher education May webinar.pptx
 
[BuildWithAI] Introduction to Gemini.pdf
[BuildWithAI] Introduction to Gemini.pdf[BuildWithAI] Introduction to Gemini.pdf
[BuildWithAI] Introduction to Gemini.pdf
 
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ..."I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
 
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
 
Architecting Cloud Native Applications
Architecting Cloud Native ApplicationsArchitecting Cloud Native Applications
Architecting Cloud Native Applications
 
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
 
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data DiscoveryTrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
 
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
 
MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024
 
ICT role in 21st century education and its challenges
ICT role in 21st century education and its challengesICT role in 21st century education and its challenges
ICT role in 21st century education and its challenges
 
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin WoodPolkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
 
Artificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : UncertaintyArtificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : Uncertainty
 

Defining a Practical Path to Artificial Intelligence

  • 1. Defining a Practical Path to Artificial Intelligence 196 Van Buren St. | Herndon, VA 20170 | (571) 353-6000 | vion.com
  • 2. Foreword Extracting actionable insights from raw data is critical to the success of virtually any business or organization in any industry – from finance, to healthcare, government and manufacturing. The data sets that are used to glean these insights are getting exponentially larger and being created exponentially faster. The pace of data growth will only continue to accelerate. Since the term “big data” was coined in the 1990’s we have made great strides in deriving intelligence from these massive pools of information, but the reality is, we are just scratching the surface of what is possible. Artificial Intelligence (AI) is able to discover deeper insights and identify correlations between different data sets far faster and more completely than the human brain could possibly process. The steady rise of AI as a business tool marks the beginning of a new technology wave. Is AI accessible for organizations of all sizes? According to Gartner’s 2018 CIO Agenda Survey, only four percent of CIOs have implemented AI, while a further 46 percent have developed plans to do so. This is typical with every new technology trend – a slow increase of early adopters emerge until something comes along to change the dynamic and make access and implementation more practical. As the Gartner report points out, there is a perceived steep learning curve with AI. While many enterprises want to kickstart their AI initiatives, the challenges to building an AI-optimized infrastructure typically holds them back. But like the big data revolution 10 years ago, AI is actually more approachable and simpler than many CIOs may think. In fact, with the evolution of purpose- built AI Infrastructures and the advancement of Graphics Processing Units (GPUs) that enable massively parallel, deep analysis in real-time; cognitive computing may be the norm in data centers in record time. But how? In this paper we will evaluate the path to AI for public sector agencies and commercial organizations, identify key questions and options to consider, and determine how to accelerate implementation and management within existing budgets.
  • 3. Defining a Practical Path to Artificial Intelligence | 1 Chapter 1: Addressing Roadblocks to AI AI is the next evolution of big data and data analytics initiatives that have been in play across organizations for a decade. What’s holding enterprises back from moving forward in adopting AI? It boils down to three main issues: ßß A struggle to “do it yourself“ (DIY), build an AI practice ßß Finding the talent to build and support an AI practice ßß Funding AI The Burden of DIY As new technologies come into the market, enterprises are often stuck with building their own solutions.. The same holds true for AI. When “DIY” is the only option, AI initiatives stall out. ßß Software Users are forced to take open source code, often with limited documentation, then compile and tune the code. In tuning, there are countless knobs that they need to tweak to get more out of their training runs. ßß Hardware Users often spend months researching various options and running Proof of Concepts (POC) to see which delivers the best performance. Even after purchasing the system, constant maintenance is required. ßß Slow Workloads Even when all of this is done, users find that workloads are slow. It’s because the system is built with legacy components, which are cobbled together, creating bottlenecks. An Evolving Workforce Like the evolution of every other technology, early trepidation often stems around having a workforce with the skills and talent to support IT. The understanding gained over the past 50 years can become irrelevant- from human skills to tools, to infrastructure – in the past everything has changed dramatically. But in this case, the AI evolution doesn’t replace the architectural foundation of the approach that already exists in– it augments it – in effect allowing employees to make more informed decisions and pursue more strategic oversight of data. According to Whit Andrews, Research Vice President and Gartner analyst, the most transformational benefits of AI in the near term will arise from using it to enable employees to pursue higher-value activities. The DIY Dilemma: ßß Never-ending cycles of compiling and customizing open source software ßß Months of system building and tuning, constant maintenance ßß Legacy solutions full of data bottlenecks, from storage to GPU to apps
  • 4. What’s Changing? The Algorithm is the Same, but the Technology is Different Like the evolution of every other technology, early trepidation often stems around having a workforce with the skills and talent to support IT. The understanding gained over the past 50 years can become irrelevant- from human skills to tools, to infrastructure – in the past everything has changed dramatically. But in this case, the AI evolution doesn’t replace the architectural foundation of the approach that already exists in– it augments it – in effect allowing employees to make more informed decisions and pursue more strategic oversight of data. According to Whit Andrews, Research Vice President and Gartner analyst, the most transformational benefits of AI in the near term will arise from using it to enable employees to pursue higher-value activities. Gartner predicts that by 2020, 20 percent of organizations will dedicate workers to monitoring and guiding neural networks. Defining a Practical Path to Artificial Intelligence | 2
  • 5. Defining a Practical Path to Artificial Intelligence | 3 CPU vs. GPU Comparision Chapter 2: A Technology Collision with Perfect Timing – Purpose-Built AI Infrastructures The DIY dilemma becomes obsolete, thanks to a perfect collision of technology. Now it’s practical rather than theory. What happened? ßß Hardware Improvements - Hardware evolution in recent years has dramatically changed the volume of data that can be processed and the speed at which it can happen. Thanks to the gaming and research industries, GPUs are ubiquitous and companies like NVIDIA now create purpose-built GPUs for AI, which process data 45 times faster than traditional CPUs. GPUs also provide thousands of cores per socket, making them exponentially more dense than traditional CPUs, and provide scalability unachievable in legacy architectures. Modern storage technology from manufacturers, like Pure Storage, now support extremely high IOPs and bus speeds using NVMe. PCIe and NVLink can now transfer many GB per second for these massively parallel and concurrent workloads. ßß Software - Early adopters on the frontier of AI have now built user-friendly software solutions designed for neural networking. NVIDIA’s CUDA, Apache’s MXNet and Google’s Tensorflow-GPU are all robust software options that make AI easier to execute. Dataiku, which leverages this aforementioned technologies, has gone so far as to make AI a click and drag exercise, accessible by any level of user. ßß Containerization - This is an alternative to full machine virtualization that involves encapsulating an application in a container with its own operating environment. The adoption of containerization allows IT architects to leverage software, data science and this standardized approach to the algorithm that has catapulted the industry forward. Containerization enables rapid innovation and development of algorithms, dramatically reducing the time from initial development to deployment in production. It also facilitates rapid adaptation if the underlying datasets change or evolve. We see this evidence in threat detection and the growing strength of our nation’s cybersecurity profile every day. Total Vertices Size of Adjacency Matrix CPU Time(s) GPU Time(s) Speedup 1000 1,000,000 3.9s 0.103s 37.86x 2000 4,000,000 30.90s 0.698s 44.34x 4000 16,000,000 244.22s 5.09s 47.98x 8000 64,000,000 1941.0s 39.1s 49.64x 10000 100,000,000 3778.1s 77.8s 48.56 11111 123,454,321 5179.2s 108.01s 47.95 As data volume grows at an epic pace, these massive data sets are meeting this hardware, software and computing power, creating the perfect collision of technology that can provide a distinct advantage to organizations. Where in the past it has been really difficult for small agencies to get compute, network and storage that is built off the protocols they understand already, today, with the advent of Infrastructures designed for AI – you no longer need a PhD to leverage AI anymore. Table 1: Simple implementation of the Floyd-Warshall all-pairs-shortest-path algorithm written in two versions, a standard serial CPU version and a CUDA GPU version [5]1 . On average the GPU time is 45x faster! 1 Stephen D. Boyles. User Equilibrium and System Optimum. https://www.slideshare.net/VishalSingh405/cpu-vs-gpu-presentation-54700475
  • 6. Defining a Practical Path to Artificial Intelligence | 4 What is AI Ready Infrastructure? Deep Learning requires more than fast compute and high-bandwidth interconnects. When designing a full- stack platform for large-scale deep learning, the system architect’s goal is to provide a well-integrated, adaptable, scalable set of compute, storage, networking and software capabilities that seamlessly work together providing peak efficiency and effectiveness. This requires provisioning as many GPUs as possible, while ensuring linearity of performance as the environment is scaled, all the while keeping the GPUs fed with data. Keeping the GPUs fed requires a high-performance data pipeline all the way from storage to GPUs. AIRITM supplies the right balance of storage, performance and scalability. When defining storage for deep-learning systems, architects must consider three requirements: ßß Diverse Performance - Deep learning often requires multi-gigabytes-per-second I/O rates but isn’t restricted to a single data type or I/O size. Training deep neural network models for applications as diverse as machine vision, natural-language processing, and anomaly detection requires different data types and dataset sizes. Storage systems that fail to deliver the performance required during neural network training will starve the GPU tier for data, and prolong the length of the run, inhibiting developer productivity and efficiency. Providing consistency of performance at various IO sizes and profiles at a capacity scale will ensure success. ßß Scalable Capacity - Successful machine learning projects often have ongoing data acquisition and continuous training requirements, resulting in a continued growth of data over time. Furthermore, enterprises that succeed with one AI project find ways to apply these powerful techniques to new application areas, resulting in further data expansion to support multiple use cases. Storage platforms with inflexible capacity limits result in challenging administration overheads to federate disparate pools. ßß Strong Resiliency - As the value of AI grows within an organization, so does the value of the infrastructure supporting its delivery. Storage systems that result in excessive downtime or require extensive administrative outages can cause costly project delays or service disruptions. ßß AI-Ready Infrastructure (AIRI) provides enterprises a simple solution to hit the ground running, and is the product of the partnership between storage experts Pure Storage, and high-performance computing experts NVIDIA. AIRI aims to solve infrastructure complexities. It eliminates the difficulties of building an AI data center – while neatly and compactly delivering all the necessary components in a small form-factor. Now every enterprise can finally start to explore what AI can do with their most important asset, data. Cost Concerns Answered Even as AI-ready infrastructure becomes accessible and deployable for all the reasons described, the elephant in the room is often still: How do we pay for it and how can we implement it quickly and scale for the future? This is where the perfect collision of needs and technology continues and gains additional momentum with the advent of modern acquisition models that provide greater financial flexibility. Just as the democratization of high performance computing has catapulted AI, the as-a-Service model has simplified acquisition of this technology. Acquiring AI infrastructure as-a-Service allows users to manage and maintain it from a monthly operating budget versus investing CapEx dollars up-front. With as-a-Service, costs are more predictable and organizations can scale as needed when needs change.
  • 7. Defining a Practical Path to Artificial Intelligence | 5Defining a Practical Path to Artificial Intelligence | 5 Chapter 3: Deploying AI: Evaluating Operational Impact Ready for AI? Key Questions to Consider According to Gartner researcher, Whit Andrews, the main goal in the AI revolution should be to “normalize AI planning and development for the whole organization, including leaders of data and analytics, applications and lines of business.” These simple steps help bring together those leaders around a common purpose: ßß Assess which business outcomes would benefit most from AI ßß Evaluate AI as simply the latest advanced analytical technology available that might help achieve those outcomes As that evaluation of technology becomes more granular, speed with data begins to take center stage. The faster teams can iterate on a model, the better. And that means doing everything possible to eliminate data transfer time and other such variables, so models can iterate dramatically faster. AI needs will continue to evolve and force infrastructure to keep pace with pushes for speed and performance. In that evaluation process, organizations should give great value to what will serve their current needs but also acknowledge outgrowing them is inevitable. Data infrastructure has to be future-proof to deliver high performance and increase the productivity of data scientists or else it too will become obsolete. ßß Do you have data silos where data has to be copied from one to another? ßß Do you have a data science team working with terabytes of data? ßß Does it take to much time to go from cleaning data to getting feedback about a model? ßß Do you spend a significant amount of time managing and tracking versions of training data sets? ßß Do you spend significant resources on keeping your current infrastructure online, replacing components or keeping up with workflow changes? Here are key questions to consider whether your organization can benefit from a purpose-built AI infrastructure:
  • 8. A Timeline to AI: How AI Ready Infrastructure as-a-Service is Changing the Game Federal government has been at the forefront of the AI revolution since the beginning, but outside of the agencies that are early adopters, the notion of implementing AI on a budget has appeared to be a tedious and time intensive task. That’s where AI as-a-Service offers a tremendous solution – not just for federal agencies, but organizations of all types. For smaller or mid-size agencies or any organization struggling with juggling resources, AI as-a-Service can be the way to get started. AIRI in conjunction with the as-a-Service model can dramatically impact timelines: Defining a Practical Path to Artificial Intelligence | 6 AIRI is ready to deploy. It only takes a day to stand up the capability –and within 30 days of migrating the data, organizations can reap the results. There is typically an 18 month procurement and acquisition process in Federal organizations and an 18 month deployment process = 36 months to realize any benefit from a typical AI solution acquired via traditional structures. AIRI as-a-Service DIY VS.
  • 9. Defining a Practical Path to Artificial Intelligence | 7 Use Case: Quickly Determine Security Threats A large government agency wanted to perform image classification and object detection on live video feeds to better access security threats. They had an existing model, but they wanted to build on and improve it to keep their process streamlined. The Challenge The time, cost and process to develop and approve a new model for object detection is tedious and can require many rounds of review. The organization needed the ability to update an existing model with new images that have been labeled, correctly or incorrectly to deepen learning and ultimately produce better quality intelligence on which to base decision-making. The Business Impact of AIRI AIRI enables a more efficient approach to modeling that has many positive impacts to the organization including: improved speed, accuracy and performance of data analysis as well greater independence and dexterity for the analysts, The GPU power of the AIRI dramatically improves the feedback loop to improve learning and speed the process, thereby reducing the time data scientists spend retraining their models. The cost savings compound over time as a result of deploying more accurate models and reducing the strain on resources. AIRI allows for faster experimentation, data analysis and accuracy supporting stronger outcomes and decision-making for the organization. Cost & Space Impact of AIRI: 50 Racks Under 50 Inches AIRI reduces racks of complexity into a complete solution – delivering the performance of 50 racks of legacy technologies under 50 inches. It’s less than 20 rack units, which provides the performance of an entire data center building in a form factor that’s a little taller than waist- high. The power and space savings here are dramatic for organizations. The system is also run on Ethernet, not InfiniBand, which also reduces complexity and cost. This streamlined infrastructure also simplifies “time to insight” and the productivity of data scientists. Most data scientists run AI workloads from a single server. Scaling a project across many servers is difficult to do, and multi- node scaling was reserved for very few AI experts. With AIRI, any data scientist can do multi-node training and produce actionable results faster. Imagine the potential time savings and the ability to make better decisions – this is possible when you have the production bed to act faster. Defining a Practical Path to Artificial Intelligence | 7 Can AI Infrastucure as-a- Service reduce footprint while increasing performance? AIRI provides 50 racks under 50 inches
  • 10. Defining a Practical Path to Artificial Intelligence | 8 How ViON, Pure Storage and NVIDIA Work Together Simply put, AIRI is the technical accelerator with its high- performance infrastructure and ViON is the delivery accelerator with the as-a-Service model. ViON brings direct partnerships and in-house support with cleared resources that provide expertise from hardware to software. With AIRI as-a-Service, ViON enables organizations to have the AI solution on-site behind the customer firewall. Many AI development teams have limited access to elite GPU systems due to recurring public cloud shortages and the expense of dedicated systems. ViON’s secure in-house lab moves extreme high-performance testing into the agile process by default. About Pure Storage Pure Storage (NYSE: PSTG) helps innovators build a better world with data. Pure’s data solutions enable SaaS companies, cloud service providers, and enterprise and public sector customers to deliver real-time, secure data to power their mission-critical production, DevOps, and modern analytics environments in a multi-cloud environment. One of the fastest growing enterprise IT companies in history, Pure Storage enables customers to quickly adopt next-generation technologies, including artificialintelligenceandmachinelearning,tohelpmaximize the value of their data for competitive advantage. And with a Satmetrix-certified NPS customer satisfaction score in the top one percent of B2B companies, Pure’s ever-expanding list of customers are among the happiest in the world. About NVIDIA NVIDIA‘s (NASDAQ: NVDA) invention of the GPU in 1999 sparked the growth of the PC gaming market, redefined modern computer graphics and revolutionized parallel computing. More recently, GPU deep learning ignited modern AI — the next era of computing — with the GPU acting as the brain of computers, robots and self-driving cars that can perceive and understand the world. More information at http://nvidianews.nvidia.com/. For more information contact: William Hill | billy.hill@vion.com Lead Data Scientist, VION Defining a Practical Path to Artificial Intelligence | 8
  • 11. 196 Van Buren St. | Herndon, VA 20170 | (571) 353-6000 | vion.com About ViON ViON Corporation is a cloud service provider with over 37 years’ experience designing and delivering enterprise data center solutions to government agencies and commercial businesses. The company provides IT as-a-Service solutions including on-premise public cloud capabilities to simplify the challenges facing business leaders and agency executives. Focused on supporting the customer’s evolution to the next generation data center, ViON’s Data Center as-a-Service offering provides innovative solutions from OEMs and disruptive technology providers via a consumption-based model. The complete range of as-a-Service solutions are available to research, compare, procure and manage via a single portal, ViON Marketplace. ViON delivers expertise and an outstanding customer experience at every step with professional and managed services, backed by highly-trained, cleared resources. A veteran-owned company based in Herndon, Virginia, the company has field offices throughout the U.S. (www.vion.com).