AI-as-a-Service: All That You Need To Know
In 2008, the worldwide software-as-a-service market was
worth only $5.6 billion. Cut to 2020, and that figure is expected to soar to
$133 billion – clearly indicating the rapid rise in demand for
consumption-based software services (‘a la carte software’, so to speak).
Between 2018 and 2020, the total number of SaaS subscriptions are set to jump
by nearly 96%. This is, without a shadow of a doubt, one of the fastest growing
technology sub-domains at present.
While services like Platform-as-a-Service (PaaS) and
Infrastructure-as-a-Service (IaaS) have been in discussion for some time now –
the ‘as-a-service’ market is gradually being extended into newer, more
cutting-edge, fields. The artificial intelligence-as-a-service (AIaaS) market
is a classic example of that. According to estimates, the worldwide AIaaS
market will be valued at just a shade under $11 billion by the end of 2023,
with the 2017-2023 CAGR hovering around the 49% mark. The biggest of players,
like Microsoft, Google, IBM and Amazon, are already heavily active in this
field. In today’s discussion, we will take a look at some interesting facets of
the growth of AIaaS:
1 .What exactly is AIaaS?
As the name itself suggests, AIaaS refers to off-the-shelf
artificial intelligence service offerings that can be bought and implemented
immediately. In other words, it can be explained as ‘third party AI service
offerings’ as well. Like all other _ -as-a-Service packages, AIaaS also makes
use of cloud computing – and can add significant strategic flexibility to the
operations of organisations, pulling up efficiency and productivity levels.
Since AIaaS solutions are typically dynamic and highly adaptable, they also
help in optimising the effectiveness of big data analytics. With these
‘readymade’ AI services, it becomes possible for companies to derive all the
key advantages of artificial intelligence – without actually having to make
huge investments (and bear the associated risks) for building their very own
cloud platforms. The onus, however, lies with company CEOs and IT specialists
to understand the precise type of AI service they require, and the potential
benefits. AIaaS has multifarious benefits – but it should not be adopted
without adequate initial research.
Note: While the popularity of AIaaS is a fairly recent
trend, the concept of ‘artificial intelligence’ is far from being a new one. At
present, we have vendors that offer multifunctional digital platforms powered
by machine learning (apart from general cloud AI service providers).
2.
Will AIaaS emerge as a worthy
substitute of human intelligence?
The comparison is an erroneous one to begin with. Contrary
to what many think (and indeed, what the concept of AI has meant for years),
artificial intelligence is not ONLY about replicating the capabilities and
(probably) the cognitive prowess of human beings. Instead, AI should be viewed
as an end-to-end technology – which uses various techniques and modules to
analyse data better, identify patterns and trends, and calculate the
probabilities of different end results (say, for predictive purposes). Broadly
speaking, two different types of algorithms – the deep learning (DL) algorithms
and the machine learning (ML) algorithms – are used in full-fledged AIaaS
services. The prime objective for implementing AI solutions is to enhance the
capabilities of existing IT setups, and allow them to ‘learn’ new
functionalities (without additional coding having to be done). The entire
artificial intelligence vs human intelligence debate is overhyped, and in most
instances, misplaced. The two should ideally complement each other.
Note: The need to collect and securely store big data is
going up rapidly for companies. AIaaS makes artificial intelligence tools more
accessible – and hence, help a lot in data handling/management requirements.
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3.
What are
the main types of AIaaS?
For AI to indeed deliver the desired results, enterprises
have to select and correctly deploy the ‘right’ type of AIaaS first. Doing so,
in turn, requires the IT managers to be aware of the different types of these
‘ready-to-use’ AI services. Broadly, there are 4 different forms of AIaaS:
first, there are the customised machine learning (ML) platforms and frameworks,
that can create data models and and can ‘read’ patterns from existing data
pools. Next up, there are the AI-powered bots – powered by the ever-improving
natural language processing, or NLP, capabilities (in fact, chatbots are the
most popular use cases of AIaaS). Then, we have the entirely managed ML
services – which make use of drag-and-drop tools, cognitive analytics and
custom-created data models to generate more values (compared to the general
machine learning frameworks). The fourth type of AIaaS includes the third-party
APIs (application programming interfaces) – which are built to add extra
functionalities to any new/existing application. All that organisations willing
to join the digital transformation revolution have to do is identify the
type(s) of AIaaS that are likely to boost ROI figures, purchase them from AI
vendors, and start implementing them immediately. Small changes, if required,
can also be made.
Note: Apart from Microsoft, Amazon and Google, several other
companies – like SalesForce and Oracle – are also highly active in the AIaaS
space.
4.
How fast is
the AIaaS market growing?
As competition rates are increasing and digital technology
is getting more and more refined, the AI-as-a-Service sector is growing rapidly
(~$11 billion in 2023). From a $4810 million valuation last year, the global
market for artificial intelligence will jump to well over $88500 million by the
end of 2025. The growing demand among organisations for using cutting-edge
machine learning services on the cloud is also pulling up investment figures. A
recent report estimated that overall expenses on AI will show a 4X increase
between 2017 and 2021 – as different industries start to adopt AIaaS solutions.
The biggest advantage of AIaaS is it allows enterprises and workers to focus on
their core capabilities/lines of business – without having to worry about model
building or cloud network development. Over the next half a decade or so, the
growth of AIaaS will further gather momentum – and developers will be
increasingly incorporating AI capabilities in both applications and big data
systems.
Note: An enterprise-level study found that 8 out of every 10
companies prefer using multi-cloud models. Among them, specialised hybrid cloud
services are the most in demand.
5.
Does the
AIaaS market have different segments?
The scope of
artificial intelligence in general, and AIaaS in particular, is huge. As such,
trying to understand everything about the service at one go can be complicated,
and in fact, an exercise in futility. For purposes of research clarity – the
AIaaS domain is divided in different segments, based on different parameters.
According to functionality, there are the ‘managed services’ and the ‘professional
services’, while from the technology perspective, we have the DL and ML
services on one hand, and high-end NLP capabilities on the other. AIaaS can
also be segmented in terms of the software tool(s) that lies at the heart of it
– web/cloud APIs, processor tools, data archiving and storage, and others. In
terms of usability, AIaaS is finding rapid adoption in different industry
verticals – right from retail services, transportation, and banking &
finance, to healthcare, manufacturing and telecom services (the impact of AI
services on the public sector is also going up gradually). A wide range of
customisations are also available, enhancing the usability factor of AIaaS.
Note: In the transportation sector, AI-as-a-Service can be
used to make tasks like navigation, finding the fastest routes, and parking,
simpler than ever before.
6.
What
advantages does AIaaS deliver?
The benefits of
deploying AIaaS have a lot in common with the general advantages of any
consumption-based (i.e., on-demand) software service. For starters, the
seamless scalability is a big factor – since this allows enterprises to start
off small, and then increase the scale of AI operations over time (according to
project-specific requirements). In a scenario where the need for super-fast
graphical user interfaces (GPUs) and parallel machines is going through the
roof, AIaaS comes in handy – since it makes it possible for IT managers to
implement and use the latest AI-powered infrastructure, without having to be
concerned about the lofty expenses. Since AI-as-a-Service is, by definition,
ready to use – the challenges posed by the relatively complicated nature of
traditional AI solutions are bypassed. Yet another factor in favour of these
off-the-shelf AI services is the complete transparency. Users have to pay only
to to the extent of their use of the services – instead of arbitrary amounts
and high overheads. Smarter AI-powered operations at easily manageable budgets
– that’s the key for AIaaS for delivering value to enterprises.
Note: Machine learning plays a mighty important role in
facilitating ‘intelligent optimisation’ for different industries.
7.
What
factors are driving up the demand for AIaaS?
Ours is a data-driven environment, and in here, the value of
real-time decision-making capabilities can hardly be overemphasised. This, in
turn, serves as a key driver of AIaaS solutions. The volume of data obtained
from specialised, smart sensors, UAVs and different types of IoT applications
is expanding exponentially – and the need of the hour is for improved,
intelligent data management, use, accessibility and security. AIaaS is ideal
for smarter big data management, as well as for helping computing systems
perform specific tasks (with the help of ML modules). Since these services are
available as ready-to-use packages from vendors, the development/deployment
time is minimised. The fact that AIaaS can be used by practically everyone
(thanks to the user-friendly underlying algorithms) also boosts its demand. The
growing need for faster GUIs, and customised APIs also acts as an important
driver for this market. For cloud providers in particular, and for businesses
in general, AIaaS can deliver significant competitive advantages.
Note: The Distributed Machine Learning Toolkit by Microsoft
allows users to run multiple ML applications simultaneously. Predictive
analytics, speech recognition and translation services are included in the
Google Cloud Platform. IBM has its very own Watson Developer Cloud.
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8.
Will growth
of AIaaS increase the demand for specialist data scientists?
Yes, and in a big way. What’s more – as AIaaS starts to
become mainstream, more time and higher budgets will also need to be allocated.
Given the heavy investments (maybe not at the start, but certainly in the
long-run) involved and the potential benefits, it is only natural that
companies will ramp up their search for IT professionals with high expertise
and a lot of relevant experience. These data scientists will be responsible for
working with different types of customised AI algorithms. Over the years, AI
solutions have mostly been used by the largest players – simply because others
did not have qualified, adequately trained manpower (and tech generalists were
not enough). However, with the proliferation of AIaaS, a new generation of AI
data scientists will appear – and companies of all sizes will be able to hire
them and take advantage of artificial intelligence/machine learning. Make no
mistake – AI is a complex technology, and proper qualified personnel are
required to handle it.
Note: Amazon Web Services is still the market leader in the
public cloud domain. However, Microsoft Azure is growing the fastest in this
sector. Google Cloud and IBM Cloud occupy the third and fourth spots
respectively.
9.
Are there
any challenges/barriers for AIaaS?
For all its advantages and relative ease of use, there are
certain points of concern about AIaaS (like any other new tech service!). Since
users have to depend on third-party AI services for the
data/results/information required, unforeseen delays can crop up. The greater
reliance on external service providers can also pose data security challenges –
since quite a lot of business-critical data have to be shared with the
third-party vendors. The key here is to ensure that the chosen AIaaS has robust
security and data governance standards, to rule out unauthorised access. Once
we go beyond the initial cost-advantages of AIaaS (over traditional AI), the
chances of expenses going up in the long-run – as the technology gets more
refined and more complex – also become apparent. Since the vendors provide
AIaaS as a package offering, it is impossible to really understand the internal
AI mechanisms – although the data inputs and the expected results are known. As
a result, the overall transparency of the AI services gets reduced. Over the
next few quarters, the technology will get more advanced, and we can reasonably
expect that most of these challenges will be satisfactorily resolved.
Note: Serverless technology is leading the way in cloud
service adoption. Container-as-a-service (CaaS) is also fairly popular.
10. How important is it to select the
right AIaaS for business?
Let’s
just put it this way: if a AI service is implemented without adequate
background research, the entire thing can turn counterproductive. At the very
outset, a company has to take a stand on whether it at all needs AIaaS
solution(s). A thorough comparison between AIaaS platforms and self-coded
implementations also needs to be done – to get a fair idea on which option will
be more suitable. Users also need to continuously test the AI services, to make
sure that they are performing at optimal levels. In any AIaaS, the process of
implementing the algorithms is not explained – and that makes thorough AI
testing all the more important. In ‘low-level APIs’, there can be glitches in
the process pipeline – which need to be identified and removed quickly. As
already highlighted above, awareness of the different types of AIaaS, and their
respective functions and utilities, is also an absolute must. AIaaS is a vital
cog in the digital transformation journey of enterprises – but only if it is
chosen and implemented correctly.
Note: According to a research report, nearly 36% of all the
expenses on cloud services are wasted. Going forward, the focus has to be on
reducing this figure.
11. How about the importance of AIaaS
in the public cloud?
A 2018 RightScale report found that, 67% users are set to
increase their spendings on cloud services by at least 20% (18% companies have
plans to double their cloud expenses). The adoption of AI-as-a-Service is
rising across the board in the public cloud – with both AI data practices as
well as AI computing capabilities developing continuously. The recent
advancements in neural networks and deep learning mechanisms are also
instrumental in pulling up the adoption of AIaaS in the public cloud space.
Cloud vendor companies are offering ready-to-use APIs which do not require
elaborate machine learning models – enhancing the convenience factor. In the
public cloud, AI services can broadly be classified under three heads:
cognitive computing, conversational artificial intelligence, and custom
cognitive computing. The AI data infrastructure, on the other hand, includes
RDBMS, Data Lake and NoSQL.
Note: Cutting down on total expenses is the biggest point of
concern for cloud users as present. Generating better financial reports and
porting more workloads on cloud are also things that are being focused on.
12. AIaaS: The future
In terms of adoption and market share, North America (with a
46% share) is the clear leader in the global AIaaS sector. Europe, with ~28%
share, occupies the second position, followed by the Asia-Pacific. There is
also a definite ‘gap’ in how the services are being used – since only around
33% of the ‘AI companies’ actually leverage artificial intelligence in any
meaningful way. In the next couple of years, more users will ‘understand’ the
potentials of AIaaS and the far-reaching scopes of the technology – and the
deployments will be more effective. The market for web APIs and cloud APIs is
set to witness healthy growth, while the NLP market is also on an upward spiral
($21+ billion by 2025). The markets will continue to grow, and as the
technology becomes more nuanced – we are sure to see more interesting use cases
for specialised AI services.
More than 60% professional marketing experts feel that
artificial intelligence is the most important element in their overall digital
strategies. AIaaS makes the technology easily accessible – with users being
able to enjoy the benefits at a much lower cost. Of course, to truly generate
value and improve ROI figures, AIaaS has to be used smartly (with in-depth
research). According to reasonable estimates, AI services can push up
productivity by up to 40%.
The AIaaS market will continue to grow stronger in the
foreseeable future. It remains to be seen how companies manage to use it as a
key differentiator, and stay ahead of the competition.

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