Page 1
YOJANA June 2022 17
ndia has a vibrant startup ecosystem with
supporting infrastructure– incubators,
development grants, angel/venture investors,
mentors– and a conducive policy environment.
The Economic Survey of India 2021-22 says that there
are 61,400 registered startups in India, making it the
third-largest startup ecosystem in the world behind China
and US. Around 14,000
1
new startups were registered
in India during CY2021
2
. Over the past decade, Indian
startups have created 6.6 lakh direct jobs and 34 lakh
indirect jobs.
Indian startups raised USD 24 billion in CY21,
compared to USD 10 billion in CY20. There has been a
significant localisation and diversification in the investor
pool for startups in India over the past decade. There were
more than 750 institutional investors in India in CY21,
80% more than in CY20. The number of angel investors
grew in CY21 by 20% to about 2,400. More than half the
investment deals in CY21 had an India-based investor.
Over 250 corporates have engaged with Indian startups
in some way, including by running 80+ open innovation
programmes for startups in CY21.
The Central and State governments in India have
actively supported the startup sector over the past decade.
The Startup India platform, which started in 2016, has
been instrumental in encouraging startups and integrating
them with the corporate and investment community. Over
26 States in India have a startup policy.
What is a Deep-Tech Startup?
Notwithstanding the healthy development of India’s
startup ecosystem, one weakness that keeps India behind
the developed countries is that we lack deep-tech startups.
“Deep-tech” startups constitute less than one per cent of
innovation Deep-Tech Startup Ecosystem
R Raghuttama Rao
The author is the CEO, Gopalakrishnan-Deshpande Centre for Innovation & Entrepreneurship, IIT Madras. Email: enquiries@gdciitm.org
I
the number of startups, far below what a fast-growing,
complex, and large economy like India should have.
The absence of deep-tech startups harms India
considerably by weakening her capability to meaningfully
address complex socio-economic challenges that afflict our
society in multiple sectors such as agriculture, healthcare,
transportation, education, energy, etc. The solutions to such
challenges that address the UN’s Sustainable Development
Goals would necessarily have to be radically new and
disrupt existing industries and business processes.
In India’s population of 130 crores, only the top
25%
3
(affluent and middle-class) benefit from the fruits of
technological progress, be it healthcare, consumer goods,
clean water, safe transportation, education, etc. In contrast,
the remaining 100 crore people do not get enough or are
substantially bypassed. This is because most of the hi-tech
goods and services are designed in the developed world
for rich people– the average per capita income in OECD
countries is about USD 40,000, while the average per
capita income of the bottom 100 crore people in India is
around USD 1000
3
. They simply cannot afford modern
innovations with an income of 2.5% of the people for
whom such innovations are designed. So, how do 100
crore Indians move towards development?
The answer lies in becoming Atmanirbhar in
commercialising domestic science and technology to solve
our challenging problems.
India’s development challenges are so unique and
idiosyncratic that innovators from developed countries,
not familiar with our context or cost structures, will not be
able to provide solutions. The clarion call from the Prime
Minister for ‘Atmanirbhar’ is apt here– we have to grow
our own deep-tech ecosystem.
Deep-tech startups arise from research-based, disruptive innovations from STEM labs of
academic/research institutions and solve hard problems and challenges. India lacks deep-tech
startups. Deep-tech startups constitute less than one per cent of the number of startups, far
below what a fast-growing, complex, and large economy like India should have.
Page 2
YOJANA June 2022 17
ndia has a vibrant startup ecosystem with
supporting infrastructure– incubators,
development grants, angel/venture investors,
mentors– and a conducive policy environment.
The Economic Survey of India 2021-22 says that there
are 61,400 registered startups in India, making it the
third-largest startup ecosystem in the world behind China
and US. Around 14,000
1
new startups were registered
in India during CY2021
2
. Over the past decade, Indian
startups have created 6.6 lakh direct jobs and 34 lakh
indirect jobs.
Indian startups raised USD 24 billion in CY21,
compared to USD 10 billion in CY20. There has been a
significant localisation and diversification in the investor
pool for startups in India over the past decade. There were
more than 750 institutional investors in India in CY21,
80% more than in CY20. The number of angel investors
grew in CY21 by 20% to about 2,400. More than half the
investment deals in CY21 had an India-based investor.
Over 250 corporates have engaged with Indian startups
in some way, including by running 80+ open innovation
programmes for startups in CY21.
The Central and State governments in India have
actively supported the startup sector over the past decade.
The Startup India platform, which started in 2016, has
been instrumental in encouraging startups and integrating
them with the corporate and investment community. Over
26 States in India have a startup policy.
What is a Deep-Tech Startup?
Notwithstanding the healthy development of India’s
startup ecosystem, one weakness that keeps India behind
the developed countries is that we lack deep-tech startups.
“Deep-tech” startups constitute less than one per cent of
innovation Deep-Tech Startup Ecosystem
R Raghuttama Rao
The author is the CEO, Gopalakrishnan-Deshpande Centre for Innovation & Entrepreneurship, IIT Madras. Email: enquiries@gdciitm.org
I
the number of startups, far below what a fast-growing,
complex, and large economy like India should have.
The absence of deep-tech startups harms India
considerably by weakening her capability to meaningfully
address complex socio-economic challenges that afflict our
society in multiple sectors such as agriculture, healthcare,
transportation, education, energy, etc. The solutions to such
challenges that address the UN’s Sustainable Development
Goals would necessarily have to be radically new and
disrupt existing industries and business processes.
In India’s population of 130 crores, only the top
25%
3
(affluent and middle-class) benefit from the fruits of
technological progress, be it healthcare, consumer goods,
clean water, safe transportation, education, etc. In contrast,
the remaining 100 crore people do not get enough or are
substantially bypassed. This is because most of the hi-tech
goods and services are designed in the developed world
for rich people– the average per capita income in OECD
countries is about USD 40,000, while the average per
capita income of the bottom 100 crore people in India is
around USD 1000
3
. They simply cannot afford modern
innovations with an income of 2.5% of the people for
whom such innovations are designed. So, how do 100
crore Indians move towards development?
The answer lies in becoming Atmanirbhar in
commercialising domestic science and technology to solve
our challenging problems.
India’s development challenges are so unique and
idiosyncratic that innovators from developed countries,
not familiar with our context or cost structures, will not be
able to provide solutions. The clarion call from the Prime
Minister for ‘Atmanirbhar’ is apt here– we have to grow
our own deep-tech ecosystem.
Deep-tech startups arise from research-based, disruptive innovations from STEM labs of
academic/research institutions and solve hard problems and challenges. India lacks deep-tech
startups. Deep-tech startups constitute less than one per cent of the number of startups, far
below what a fast-growing, complex, and large economy like India should have.
18 YOJANA June 2022
Need for Deep-Tech Startup Ecosystem
The phrase ‘deep-tech startup’ does not have a precise
definition, but there is a broad consensus on what it is.
Deep-tech startups arise from research-based, disruptive
innovations from STEM labs of academic/research
institutions and solve hard problems and challenges.
Some examples are— (a) recycling sewage to get clean
water at an affordable cost, (b) a low-cost solution at scale
for curing blindness, (c) affordable solutions for treating
diseases such as diabetes, dementia, cancer, etc., (d)
creating an alternative to Lithium-ion batteries, and (e)
low-cost satellite launching systems.
There are three major problems that deep-tech startups
have vis-à-vis other startups (including those that are called
tech-based startups).
1. Deep-tech startups need a longer gestation for
development than other startups. The latter might
need from 1-3 years to reach revenue, while deep-tech
startups need 5-8 years.
2. Deep-tech startups require different types of inputs–
they require more patient capital, specialised talent,
and expert knowledge in more than one domain, to
develop and validate a science-based innovation to the
point where it is acceptable to commercial investors.
For example, assume an invention involving creating
a new substance (say a chemical that removes heavy
metal from water). It takes time and resources to test
and validate samples, obtain regulatory approvals,
and set up a new manufacturing process to produce at
scale. All these are capital-intensive, time-consuming,
and have no assurance of success.
3. A deep-tech startup follows a different development
path than other startups. A deep-tech startup derives
its IP from the underlying science. The startup has to
work backwards and find a real-life problem that is
worth solving using its technology and validate the
adequacy and nature of the market demand for the
innovation.
Therefore, deep-tech startups
take more time, talent, and capital
to develop, upto when commercial
investors find them acceptable. The
risk of failure is high at every stage
for a deep-tech startup, usually higher
than in the case of other types of
startups. But the payoffs of successful
deep-tech startups are tremendous.
Think of Microsoft, Google, Apple,
Intel, Tesla, Moderna, SpaceX, etc.
They are large corporations today, but
they started as mere technology bets
not very long ago.
India has also created a few deep-tech startups over
the past decade, whose impact has been overwhelmingly
positive. It lends credence to the suggestion to step up
policy and financial support to the deep-tech startup
ecosystem.
Creating Ecosystem
India has produced about 94 unicorns so far, but barely
any of them can claim to be a deep-tech startup. We have
several venture funds in India, but most pursue relatively
‘lower risk’ investment opportunities that exploit India’s
growing consumption economy or those making cloned
products. While India has a problem of inadequate R&D
expenditure for an economy of her size, there is a sufficient
amount of high-quality research in India’s top STEM
colleges to fuel a deep-tech startup revolution. Some key
reasons why our academic researchers lag in their potential
to convert research into deep-tech startups are:
1. There is inadequate appreciation amongst
policymakers and university administrators for the
need to build capacity amongst academic researchers,
scientists, and STEM students in India to truly
understand what entrepreneurship entails and what
commercialisation of research means. Being formally
trained in science and technology but not having
adequate exposure to the real world of business/
commerce, academic researchers conflate invention
and innovation. There is a big difference between
making a successful technological breakthrough in
the lab and building a successful enterprise around
it. Becoming entrepreneurial cannot be imbibed by
reading or scholastic programmes but only through
experiential learning and expert mentoring/coaching.
2. While Government has made good efforts to fund
innovation in universities through programmes such
as prototype development, filing for IPR, incubation,
etc., few academics (<5%) commercialise their
research by startups. A key point is that even if
academics aspire to convert their inventions into
enterprises, they do not have the mental make-up
(the entrepreneur’s mindset) or the
knowledge of how to organise what
they have and collaborate with others to
get what they do not have/know. Many
universities have set up incubators
to help with this, but they are not
adequately equipped or incentivised to
commercialise research. Although they
are not-for-profit entities, incubators
look for startups that have a good
chance to be commercially viable. With
their limited budgets, incubators face
a tough challenge to nurture startups
to scale their revenues and become
Deep-tech startups take more
time, talent, and capital
to develop, upto when
commercial investors find
them acceptable. The risk of
failure is high at every stage
for a deep-tech startup, usually
higher than in the case of
other types of startups. But the
payoffs of successful deep-tech
startups are tremendous.
Page 3
YOJANA June 2022 17
ndia has a vibrant startup ecosystem with
supporting infrastructure– incubators,
development grants, angel/venture investors,
mentors– and a conducive policy environment.
The Economic Survey of India 2021-22 says that there
are 61,400 registered startups in India, making it the
third-largest startup ecosystem in the world behind China
and US. Around 14,000
1
new startups were registered
in India during CY2021
2
. Over the past decade, Indian
startups have created 6.6 lakh direct jobs and 34 lakh
indirect jobs.
Indian startups raised USD 24 billion in CY21,
compared to USD 10 billion in CY20. There has been a
significant localisation and diversification in the investor
pool for startups in India over the past decade. There were
more than 750 institutional investors in India in CY21,
80% more than in CY20. The number of angel investors
grew in CY21 by 20% to about 2,400. More than half the
investment deals in CY21 had an India-based investor.
Over 250 corporates have engaged with Indian startups
in some way, including by running 80+ open innovation
programmes for startups in CY21.
The Central and State governments in India have
actively supported the startup sector over the past decade.
The Startup India platform, which started in 2016, has
been instrumental in encouraging startups and integrating
them with the corporate and investment community. Over
26 States in India have a startup policy.
What is a Deep-Tech Startup?
Notwithstanding the healthy development of India’s
startup ecosystem, one weakness that keeps India behind
the developed countries is that we lack deep-tech startups.
“Deep-tech” startups constitute less than one per cent of
innovation Deep-Tech Startup Ecosystem
R Raghuttama Rao
The author is the CEO, Gopalakrishnan-Deshpande Centre for Innovation & Entrepreneurship, IIT Madras. Email: enquiries@gdciitm.org
I
the number of startups, far below what a fast-growing,
complex, and large economy like India should have.
The absence of deep-tech startups harms India
considerably by weakening her capability to meaningfully
address complex socio-economic challenges that afflict our
society in multiple sectors such as agriculture, healthcare,
transportation, education, energy, etc. The solutions to such
challenges that address the UN’s Sustainable Development
Goals would necessarily have to be radically new and
disrupt existing industries and business processes.
In India’s population of 130 crores, only the top
25%
3
(affluent and middle-class) benefit from the fruits of
technological progress, be it healthcare, consumer goods,
clean water, safe transportation, education, etc. In contrast,
the remaining 100 crore people do not get enough or are
substantially bypassed. This is because most of the hi-tech
goods and services are designed in the developed world
for rich people– the average per capita income in OECD
countries is about USD 40,000, while the average per
capita income of the bottom 100 crore people in India is
around USD 1000
3
. They simply cannot afford modern
innovations with an income of 2.5% of the people for
whom such innovations are designed. So, how do 100
crore Indians move towards development?
The answer lies in becoming Atmanirbhar in
commercialising domestic science and technology to solve
our challenging problems.
India’s development challenges are so unique and
idiosyncratic that innovators from developed countries,
not familiar with our context or cost structures, will not be
able to provide solutions. The clarion call from the Prime
Minister for ‘Atmanirbhar’ is apt here– we have to grow
our own deep-tech ecosystem.
Deep-tech startups arise from research-based, disruptive innovations from STEM labs of
academic/research institutions and solve hard problems and challenges. India lacks deep-tech
startups. Deep-tech startups constitute less than one per cent of the number of startups, far
below what a fast-growing, complex, and large economy like India should have.
18 YOJANA June 2022
Need for Deep-Tech Startup Ecosystem
The phrase ‘deep-tech startup’ does not have a precise
definition, but there is a broad consensus on what it is.
Deep-tech startups arise from research-based, disruptive
innovations from STEM labs of academic/research
institutions and solve hard problems and challenges.
Some examples are— (a) recycling sewage to get clean
water at an affordable cost, (b) a low-cost solution at scale
for curing blindness, (c) affordable solutions for treating
diseases such as diabetes, dementia, cancer, etc., (d)
creating an alternative to Lithium-ion batteries, and (e)
low-cost satellite launching systems.
There are three major problems that deep-tech startups
have vis-à-vis other startups (including those that are called
tech-based startups).
1. Deep-tech startups need a longer gestation for
development than other startups. The latter might
need from 1-3 years to reach revenue, while deep-tech
startups need 5-8 years.
2. Deep-tech startups require different types of inputs–
they require more patient capital, specialised talent,
and expert knowledge in more than one domain, to
develop and validate a science-based innovation to the
point where it is acceptable to commercial investors.
For example, assume an invention involving creating
a new substance (say a chemical that removes heavy
metal from water). It takes time and resources to test
and validate samples, obtain regulatory approvals,
and set up a new manufacturing process to produce at
scale. All these are capital-intensive, time-consuming,
and have no assurance of success.
3. A deep-tech startup follows a different development
path than other startups. A deep-tech startup derives
its IP from the underlying science. The startup has to
work backwards and find a real-life problem that is
worth solving using its technology and validate the
adequacy and nature of the market demand for the
innovation.
Therefore, deep-tech startups
take more time, talent, and capital
to develop, upto when commercial
investors find them acceptable. The
risk of failure is high at every stage
for a deep-tech startup, usually higher
than in the case of other types of
startups. But the payoffs of successful
deep-tech startups are tremendous.
Think of Microsoft, Google, Apple,
Intel, Tesla, Moderna, SpaceX, etc.
They are large corporations today, but
they started as mere technology bets
not very long ago.
India has also created a few deep-tech startups over
the past decade, whose impact has been overwhelmingly
positive. It lends credence to the suggestion to step up
policy and financial support to the deep-tech startup
ecosystem.
Creating Ecosystem
India has produced about 94 unicorns so far, but barely
any of them can claim to be a deep-tech startup. We have
several venture funds in India, but most pursue relatively
‘lower risk’ investment opportunities that exploit India’s
growing consumption economy or those making cloned
products. While India has a problem of inadequate R&D
expenditure for an economy of her size, there is a sufficient
amount of high-quality research in India’s top STEM
colleges to fuel a deep-tech startup revolution. Some key
reasons why our academic researchers lag in their potential
to convert research into deep-tech startups are:
1. There is inadequate appreciation amongst
policymakers and university administrators for the
need to build capacity amongst academic researchers,
scientists, and STEM students in India to truly
understand what entrepreneurship entails and what
commercialisation of research means. Being formally
trained in science and technology but not having
adequate exposure to the real world of business/
commerce, academic researchers conflate invention
and innovation. There is a big difference between
making a successful technological breakthrough in
the lab and building a successful enterprise around
it. Becoming entrepreneurial cannot be imbibed by
reading or scholastic programmes but only through
experiential learning and expert mentoring/coaching.
2. While Government has made good efforts to fund
innovation in universities through programmes such
as prototype development, filing for IPR, incubation,
etc., few academics (<5%) commercialise their
research by startups. A key point is that even if
academics aspire to convert their inventions into
enterprises, they do not have the mental make-up
(the entrepreneur’s mindset) or the
knowledge of how to organise what
they have and collaborate with others to
get what they do not have/know. Many
universities have set up incubators
to help with this, but they are not
adequately equipped or incentivised to
commercialise research. Although they
are not-for-profit entities, incubators
look for startups that have a good
chance to be commercially viable. With
their limited budgets, incubators face
a tough challenge to nurture startups
to scale their revenues and become
Deep-tech startups take more
time, talent, and capital
to develop, upto when
commercial investors find
them acceptable. The risk of
failure is high at every stage
for a deep-tech startup, usually
higher than in the case of
other types of startups. But the
payoffs of successful deep-tech
startups are tremendous.
YOJANA June 2022 19
There is a big difference
between making a successful
technological breakthrough
in the lab and building a
successful enterprise around
it. Becoming entrepreneurial
cannot be imbibed by reading
or scholastic programmes
but only through experiential
learning and expert mentoring/
coaching.
attractive investment propositions.
It is difficult (if not impossible) for
incubators to engage more deeply
with academics/researchers in labs
and handhold them in crossing the
early-stage valleys of death (e.g.
finding proof of technology or
proof of market). Incubators are
vital for the ecosystem but their
inbound supply chain needs to be
strengthened.
3. Indian corporates and industries
that are engaged with deep-tech
startups do so only with those
where technology is substantially
developed or where revenues are visible. A majority
of Indian corporates do not have knowledge or
mechanisms for dealing with Open Innovation
processes that our university/research institutions can
potentially offer for creating deep-tech startups.
It is being proposed that policymakers should
introduce Customer Discovery and Customer Development
programmes to develop deep-tech startups from academic/
research institutions in India.
In 2013, the US Government through the National
Science Foundation
4
introduced the I-Corps programme
5
with great success to commercialise academic research in
US universities. Quoting from NSF: “The I-Corps program
uses experiential education to help researchers gain
valuable insight into entrepreneurship, starting a business
or industry requirements and challenges. I-Corps enables
the transformation of invention to impact”. The most
significant risk for startups is not failure of technology but
failing to get adequate customers. The I-Corps programme
is mandatory in the US for startups to obtain federal
funding for research/commercialisation.
Analogous to the I-Corps programme, the Government
of India should consider making it mandatory for every
translational research proposal at a university/research
institution or a deep-tech startup seeking admission to a
government incubator to undergo a rigorous Customer
Discovery exercise. The learnings at such a programme
can be truly transformative.
The Gopalakrishnan-Deshpande Centre for Innovation
& Entrepreneurship (GDC) at IIT Madras has successfully
run its I-NCUBATE programme for the past four years
and trained over 170 deep-tech startups from over 50
colleges/incubators across India with excellent outcomes.
The I-NCUBATE programme is inspired by the I-Corps
programme. The empirical evidence of I-NCUBATE
programme for success is described below:
1. Every participant startup in I-NCUBATE, without
exception, found its innovation as not
a good fit for the market. They would
tweak their innovation or pivot it to
become relevant. Two-thirds of startups
found their early adopter customer
segment in this manner. This puts
them on a strong footing to build their
prototype/MVP and provides insights
into a good business model.
2. The remaining one-third of
teams that do not find a “problem
to solve” for their innovation have
two outcomes post I-NCUBATE.
Around 50% continue their Customer
Discovery exercise and end up finding
their early adopter customers. The residual 15% of
teams conclude there is no problem to solve– i.e. their
innovation is unlikely to succeed in the marketplace.
This is not a failure (which is how incubators or
investors would conclude) but actually a very good
outcome for the researchers. Had they gone ahead
with building their startup (without having done the
I-NCUBATE programme), they would have spent 2-3
years on it, spent money and other inputs and then
encountered failure.
3. The Customer Discovery exercise helps researchers
know in 8 weeks (rather than learn it the hard way in
3 years) if their innovation has a market, or how they
should shape their startup journey to maximise chances
for success. A “No-Go” is one of the best outcomes a
researcher can get from the I-NCUBA TE programme.
Conclusion
Unfortunately, very few researchers and startup
founders in India conduct a robust Customer Discovery
exercise. This is more due to a lack of awareness and
appreciation amongst policymakers of its transformational
impact on the researchers/entrepreneurs. By linking
development grants/seed investment programmes for
deep-tech startups with a robust Customer Discovery
exercise, we can create in India a significant amount of
deal flow of robust and curated deep-tech startups into
incubators and the ecosystem. More importantly, a fair
share of deep-tech startups will help in solving India’s
hard challenges. ?
(Views expressed in this article are personal.)
References
1. All data in this section (unless otherwise specified) is from
NASSCOM Startup India Report – 2021.
2. CY – Calendar Year
3. Author’s estimate
4. National Science Foundation: https://www.nsf.gov/
5. https://www.nsf.gov/news/special_reports/i-corps/
Page 4
YOJANA June 2022 17
ndia has a vibrant startup ecosystem with
supporting infrastructure– incubators,
development grants, angel/venture investors,
mentors– and a conducive policy environment.
The Economic Survey of India 2021-22 says that there
are 61,400 registered startups in India, making it the
third-largest startup ecosystem in the world behind China
and US. Around 14,000
1
new startups were registered
in India during CY2021
2
. Over the past decade, Indian
startups have created 6.6 lakh direct jobs and 34 lakh
indirect jobs.
Indian startups raised USD 24 billion in CY21,
compared to USD 10 billion in CY20. There has been a
significant localisation and diversification in the investor
pool for startups in India over the past decade. There were
more than 750 institutional investors in India in CY21,
80% more than in CY20. The number of angel investors
grew in CY21 by 20% to about 2,400. More than half the
investment deals in CY21 had an India-based investor.
Over 250 corporates have engaged with Indian startups
in some way, including by running 80+ open innovation
programmes for startups in CY21.
The Central and State governments in India have
actively supported the startup sector over the past decade.
The Startup India platform, which started in 2016, has
been instrumental in encouraging startups and integrating
them with the corporate and investment community. Over
26 States in India have a startup policy.
What is a Deep-Tech Startup?
Notwithstanding the healthy development of India’s
startup ecosystem, one weakness that keeps India behind
the developed countries is that we lack deep-tech startups.
“Deep-tech” startups constitute less than one per cent of
innovation Deep-Tech Startup Ecosystem
R Raghuttama Rao
The author is the CEO, Gopalakrishnan-Deshpande Centre for Innovation & Entrepreneurship, IIT Madras. Email: enquiries@gdciitm.org
I
the number of startups, far below what a fast-growing,
complex, and large economy like India should have.
The absence of deep-tech startups harms India
considerably by weakening her capability to meaningfully
address complex socio-economic challenges that afflict our
society in multiple sectors such as agriculture, healthcare,
transportation, education, energy, etc. The solutions to such
challenges that address the UN’s Sustainable Development
Goals would necessarily have to be radically new and
disrupt existing industries and business processes.
In India’s population of 130 crores, only the top
25%
3
(affluent and middle-class) benefit from the fruits of
technological progress, be it healthcare, consumer goods,
clean water, safe transportation, education, etc. In contrast,
the remaining 100 crore people do not get enough or are
substantially bypassed. This is because most of the hi-tech
goods and services are designed in the developed world
for rich people– the average per capita income in OECD
countries is about USD 40,000, while the average per
capita income of the bottom 100 crore people in India is
around USD 1000
3
. They simply cannot afford modern
innovations with an income of 2.5% of the people for
whom such innovations are designed. So, how do 100
crore Indians move towards development?
The answer lies in becoming Atmanirbhar in
commercialising domestic science and technology to solve
our challenging problems.
India’s development challenges are so unique and
idiosyncratic that innovators from developed countries,
not familiar with our context or cost structures, will not be
able to provide solutions. The clarion call from the Prime
Minister for ‘Atmanirbhar’ is apt here– we have to grow
our own deep-tech ecosystem.
Deep-tech startups arise from research-based, disruptive innovations from STEM labs of
academic/research institutions and solve hard problems and challenges. India lacks deep-tech
startups. Deep-tech startups constitute less than one per cent of the number of startups, far
below what a fast-growing, complex, and large economy like India should have.
18 YOJANA June 2022
Need for Deep-Tech Startup Ecosystem
The phrase ‘deep-tech startup’ does not have a precise
definition, but there is a broad consensus on what it is.
Deep-tech startups arise from research-based, disruptive
innovations from STEM labs of academic/research
institutions and solve hard problems and challenges.
Some examples are— (a) recycling sewage to get clean
water at an affordable cost, (b) a low-cost solution at scale
for curing blindness, (c) affordable solutions for treating
diseases such as diabetes, dementia, cancer, etc., (d)
creating an alternative to Lithium-ion batteries, and (e)
low-cost satellite launching systems.
There are three major problems that deep-tech startups
have vis-à-vis other startups (including those that are called
tech-based startups).
1. Deep-tech startups need a longer gestation for
development than other startups. The latter might
need from 1-3 years to reach revenue, while deep-tech
startups need 5-8 years.
2. Deep-tech startups require different types of inputs–
they require more patient capital, specialised talent,
and expert knowledge in more than one domain, to
develop and validate a science-based innovation to the
point where it is acceptable to commercial investors.
For example, assume an invention involving creating
a new substance (say a chemical that removes heavy
metal from water). It takes time and resources to test
and validate samples, obtain regulatory approvals,
and set up a new manufacturing process to produce at
scale. All these are capital-intensive, time-consuming,
and have no assurance of success.
3. A deep-tech startup follows a different development
path than other startups. A deep-tech startup derives
its IP from the underlying science. The startup has to
work backwards and find a real-life problem that is
worth solving using its technology and validate the
adequacy and nature of the market demand for the
innovation.
Therefore, deep-tech startups
take more time, talent, and capital
to develop, upto when commercial
investors find them acceptable. The
risk of failure is high at every stage
for a deep-tech startup, usually higher
than in the case of other types of
startups. But the payoffs of successful
deep-tech startups are tremendous.
Think of Microsoft, Google, Apple,
Intel, Tesla, Moderna, SpaceX, etc.
They are large corporations today, but
they started as mere technology bets
not very long ago.
India has also created a few deep-tech startups over
the past decade, whose impact has been overwhelmingly
positive. It lends credence to the suggestion to step up
policy and financial support to the deep-tech startup
ecosystem.
Creating Ecosystem
India has produced about 94 unicorns so far, but barely
any of them can claim to be a deep-tech startup. We have
several venture funds in India, but most pursue relatively
‘lower risk’ investment opportunities that exploit India’s
growing consumption economy or those making cloned
products. While India has a problem of inadequate R&D
expenditure for an economy of her size, there is a sufficient
amount of high-quality research in India’s top STEM
colleges to fuel a deep-tech startup revolution. Some key
reasons why our academic researchers lag in their potential
to convert research into deep-tech startups are:
1. There is inadequate appreciation amongst
policymakers and university administrators for the
need to build capacity amongst academic researchers,
scientists, and STEM students in India to truly
understand what entrepreneurship entails and what
commercialisation of research means. Being formally
trained in science and technology but not having
adequate exposure to the real world of business/
commerce, academic researchers conflate invention
and innovation. There is a big difference between
making a successful technological breakthrough in
the lab and building a successful enterprise around
it. Becoming entrepreneurial cannot be imbibed by
reading or scholastic programmes but only through
experiential learning and expert mentoring/coaching.
2. While Government has made good efforts to fund
innovation in universities through programmes such
as prototype development, filing for IPR, incubation,
etc., few academics (<5%) commercialise their
research by startups. A key point is that even if
academics aspire to convert their inventions into
enterprises, they do not have the mental make-up
(the entrepreneur’s mindset) or the
knowledge of how to organise what
they have and collaborate with others to
get what they do not have/know. Many
universities have set up incubators
to help with this, but they are not
adequately equipped or incentivised to
commercialise research. Although they
are not-for-profit entities, incubators
look for startups that have a good
chance to be commercially viable. With
their limited budgets, incubators face
a tough challenge to nurture startups
to scale their revenues and become
Deep-tech startups take more
time, talent, and capital
to develop, upto when
commercial investors find
them acceptable. The risk of
failure is high at every stage
for a deep-tech startup, usually
higher than in the case of
other types of startups. But the
payoffs of successful deep-tech
startups are tremendous.
YOJANA June 2022 19
There is a big difference
between making a successful
technological breakthrough
in the lab and building a
successful enterprise around
it. Becoming entrepreneurial
cannot be imbibed by reading
or scholastic programmes
but only through experiential
learning and expert mentoring/
coaching.
attractive investment propositions.
It is difficult (if not impossible) for
incubators to engage more deeply
with academics/researchers in labs
and handhold them in crossing the
early-stage valleys of death (e.g.
finding proof of technology or
proof of market). Incubators are
vital for the ecosystem but their
inbound supply chain needs to be
strengthened.
3. Indian corporates and industries
that are engaged with deep-tech
startups do so only with those
where technology is substantially
developed or where revenues are visible. A majority
of Indian corporates do not have knowledge or
mechanisms for dealing with Open Innovation
processes that our university/research institutions can
potentially offer for creating deep-tech startups.
It is being proposed that policymakers should
introduce Customer Discovery and Customer Development
programmes to develop deep-tech startups from academic/
research institutions in India.
In 2013, the US Government through the National
Science Foundation
4
introduced the I-Corps programme
5
with great success to commercialise academic research in
US universities. Quoting from NSF: “The I-Corps program
uses experiential education to help researchers gain
valuable insight into entrepreneurship, starting a business
or industry requirements and challenges. I-Corps enables
the transformation of invention to impact”. The most
significant risk for startups is not failure of technology but
failing to get adequate customers. The I-Corps programme
is mandatory in the US for startups to obtain federal
funding for research/commercialisation.
Analogous to the I-Corps programme, the Government
of India should consider making it mandatory for every
translational research proposal at a university/research
institution or a deep-tech startup seeking admission to a
government incubator to undergo a rigorous Customer
Discovery exercise. The learnings at such a programme
can be truly transformative.
The Gopalakrishnan-Deshpande Centre for Innovation
& Entrepreneurship (GDC) at IIT Madras has successfully
run its I-NCUBATE programme for the past four years
and trained over 170 deep-tech startups from over 50
colleges/incubators across India with excellent outcomes.
The I-NCUBATE programme is inspired by the I-Corps
programme. The empirical evidence of I-NCUBATE
programme for success is described below:
1. Every participant startup in I-NCUBATE, without
exception, found its innovation as not
a good fit for the market. They would
tweak their innovation or pivot it to
become relevant. Two-thirds of startups
found their early adopter customer
segment in this manner. This puts
them on a strong footing to build their
prototype/MVP and provides insights
into a good business model.
2. The remaining one-third of
teams that do not find a “problem
to solve” for their innovation have
two outcomes post I-NCUBATE.
Around 50% continue their Customer
Discovery exercise and end up finding
their early adopter customers. The residual 15% of
teams conclude there is no problem to solve– i.e. their
innovation is unlikely to succeed in the marketplace.
This is not a failure (which is how incubators or
investors would conclude) but actually a very good
outcome for the researchers. Had they gone ahead
with building their startup (without having done the
I-NCUBATE programme), they would have spent 2-3
years on it, spent money and other inputs and then
encountered failure.
3. The Customer Discovery exercise helps researchers
know in 8 weeks (rather than learn it the hard way in
3 years) if their innovation has a market, or how they
should shape their startup journey to maximise chances
for success. A “No-Go” is one of the best outcomes a
researcher can get from the I-NCUBA TE programme.
Conclusion
Unfortunately, very few researchers and startup
founders in India conduct a robust Customer Discovery
exercise. This is more due to a lack of awareness and
appreciation amongst policymakers of its transformational
impact on the researchers/entrepreneurs. By linking
development grants/seed investment programmes for
deep-tech startups with a robust Customer Discovery
exercise, we can create in India a significant amount of
deal flow of robust and curated deep-tech startups into
incubators and the ecosystem. More importantly, a fair
share of deep-tech startups will help in solving India’s
hard challenges. ?
(Views expressed in this article are personal.)
References
1. All data in this section (unless otherwise specified) is from
NASSCOM Startup India Report – 2021.
2. CY – Calendar Year
3. Author’s estimate
4. National Science Foundation: https://www.nsf.gov/
5. https://www.nsf.gov/news/special_reports/i-corps/
YOJANA June 2022 23
ndia was ranked 8
th
in the top 10 countries
by AI patent families
1
, ahead of Russia and
France, with AI-related patent applications
growing tenfold from 2012 to 2018. A report
titled ‘AI Enabled SaaS: The Next Frontier for Global
SaaS Start-ups from India’ highlighted that AI could
generate over 9,00,000 white-collar jobs and 3.6 million
indirect jobs by 2030. Additionally, India has over 1,300
Global Capability Centres (GCCs), with one in every
five GCCs using AI across key business functions such
as cybersecurity, customer services, supply chain, and
operations management.
2
To support this thriving AI industry, India is one of
the handful of countries that have developed a conceptual
national framework for the use of artificial intelligence
(AI) and its allied field, machine learning. The Government
expenditure on AI and Machine Learning has also steadily
increased with expected growth at a CAGR of 39 per cent
over the period 2019-2025 to reach USD 11,781.9 million
in 2025
3
. As per the government’s think tank NITI Aayog,
by 2035, AI has the potential to add USD 1 trillion to the
Indian economy. However, successful adoption of AI will
require strategy, implementation, risk management, and an
AI-enabled workforce. Even to promote innovations in AI,
a streamlined national policy framework is necessary.
In this regard, by recognising AI’s potential to
transform the Indian economy and the need for India to
AI and Machine Learning
Hindol Sengupta
Bhavya Tyagi
Hindol Sengupta is V ice President and Head of the Strategic Investment Research Unit at Invest India. Email: hindol.sengupta@investindia.org.in
Bhavya Tyagi is a researcher at the same organisation.
Industry 4.0 is set to usher an era of technologies that will completely alter the way in which we
interact with the world around us. Artificial Intelligence/Machine Learning, IoT, 5G, Augmented
Reality, Big Data, Nanotechnology, Robotics, and 3D printing are transforming the operational,
functional, and strategic landscape across various industries. In India, both private and public
enterprises and the Central and State governments are investing in multiple AI use cases– from
manufacturing to services. Most venture capital funding in India is now going to AI projects in
Banking, Financial Services, and Insurance Sector (BFSI), e-commerce, healthcare, electronics
and renewable energy startups.
applications I
build a comprehensive strategic framework to harness
it, NITI Aayog released a National Strategy for Artificial
Intelligence #AIforAll in June 2018. The paper lays
out the roadmap for India to leverage the coming-of-
age technologies to ensure inclusive growth and social
development. #AIforAll aims at enhancing and empowering
human capabilities to address challenges of access,
affordability, and efficiency in endeavouring to scale Made-
fOCuS
Page 5
YOJANA June 2022 17
ndia has a vibrant startup ecosystem with
supporting infrastructure– incubators,
development grants, angel/venture investors,
mentors– and a conducive policy environment.
The Economic Survey of India 2021-22 says that there
are 61,400 registered startups in India, making it the
third-largest startup ecosystem in the world behind China
and US. Around 14,000
1
new startups were registered
in India during CY2021
2
. Over the past decade, Indian
startups have created 6.6 lakh direct jobs and 34 lakh
indirect jobs.
Indian startups raised USD 24 billion in CY21,
compared to USD 10 billion in CY20. There has been a
significant localisation and diversification in the investor
pool for startups in India over the past decade. There were
more than 750 institutional investors in India in CY21,
80% more than in CY20. The number of angel investors
grew in CY21 by 20% to about 2,400. More than half the
investment deals in CY21 had an India-based investor.
Over 250 corporates have engaged with Indian startups
in some way, including by running 80+ open innovation
programmes for startups in CY21.
The Central and State governments in India have
actively supported the startup sector over the past decade.
The Startup India platform, which started in 2016, has
been instrumental in encouraging startups and integrating
them with the corporate and investment community. Over
26 States in India have a startup policy.
What is a Deep-Tech Startup?
Notwithstanding the healthy development of India’s
startup ecosystem, one weakness that keeps India behind
the developed countries is that we lack deep-tech startups.
“Deep-tech” startups constitute less than one per cent of
innovation Deep-Tech Startup Ecosystem
R Raghuttama Rao
The author is the CEO, Gopalakrishnan-Deshpande Centre for Innovation & Entrepreneurship, IIT Madras. Email: enquiries@gdciitm.org
I
the number of startups, far below what a fast-growing,
complex, and large economy like India should have.
The absence of deep-tech startups harms India
considerably by weakening her capability to meaningfully
address complex socio-economic challenges that afflict our
society in multiple sectors such as agriculture, healthcare,
transportation, education, energy, etc. The solutions to such
challenges that address the UN’s Sustainable Development
Goals would necessarily have to be radically new and
disrupt existing industries and business processes.
In India’s population of 130 crores, only the top
25%
3
(affluent and middle-class) benefit from the fruits of
technological progress, be it healthcare, consumer goods,
clean water, safe transportation, education, etc. In contrast,
the remaining 100 crore people do not get enough or are
substantially bypassed. This is because most of the hi-tech
goods and services are designed in the developed world
for rich people– the average per capita income in OECD
countries is about USD 40,000, while the average per
capita income of the bottom 100 crore people in India is
around USD 1000
3
. They simply cannot afford modern
innovations with an income of 2.5% of the people for
whom such innovations are designed. So, how do 100
crore Indians move towards development?
The answer lies in becoming Atmanirbhar in
commercialising domestic science and technology to solve
our challenging problems.
India’s development challenges are so unique and
idiosyncratic that innovators from developed countries,
not familiar with our context or cost structures, will not be
able to provide solutions. The clarion call from the Prime
Minister for ‘Atmanirbhar’ is apt here– we have to grow
our own deep-tech ecosystem.
Deep-tech startups arise from research-based, disruptive innovations from STEM labs of
academic/research institutions and solve hard problems and challenges. India lacks deep-tech
startups. Deep-tech startups constitute less than one per cent of the number of startups, far
below what a fast-growing, complex, and large economy like India should have.
18 YOJANA June 2022
Need for Deep-Tech Startup Ecosystem
The phrase ‘deep-tech startup’ does not have a precise
definition, but there is a broad consensus on what it is.
Deep-tech startups arise from research-based, disruptive
innovations from STEM labs of academic/research
institutions and solve hard problems and challenges.
Some examples are— (a) recycling sewage to get clean
water at an affordable cost, (b) a low-cost solution at scale
for curing blindness, (c) affordable solutions for treating
diseases such as diabetes, dementia, cancer, etc., (d)
creating an alternative to Lithium-ion batteries, and (e)
low-cost satellite launching systems.
There are three major problems that deep-tech startups
have vis-à-vis other startups (including those that are called
tech-based startups).
1. Deep-tech startups need a longer gestation for
development than other startups. The latter might
need from 1-3 years to reach revenue, while deep-tech
startups need 5-8 years.
2. Deep-tech startups require different types of inputs–
they require more patient capital, specialised talent,
and expert knowledge in more than one domain, to
develop and validate a science-based innovation to the
point where it is acceptable to commercial investors.
For example, assume an invention involving creating
a new substance (say a chemical that removes heavy
metal from water). It takes time and resources to test
and validate samples, obtain regulatory approvals,
and set up a new manufacturing process to produce at
scale. All these are capital-intensive, time-consuming,
and have no assurance of success.
3. A deep-tech startup follows a different development
path than other startups. A deep-tech startup derives
its IP from the underlying science. The startup has to
work backwards and find a real-life problem that is
worth solving using its technology and validate the
adequacy and nature of the market demand for the
innovation.
Therefore, deep-tech startups
take more time, talent, and capital
to develop, upto when commercial
investors find them acceptable. The
risk of failure is high at every stage
for a deep-tech startup, usually higher
than in the case of other types of
startups. But the payoffs of successful
deep-tech startups are tremendous.
Think of Microsoft, Google, Apple,
Intel, Tesla, Moderna, SpaceX, etc.
They are large corporations today, but
they started as mere technology bets
not very long ago.
India has also created a few deep-tech startups over
the past decade, whose impact has been overwhelmingly
positive. It lends credence to the suggestion to step up
policy and financial support to the deep-tech startup
ecosystem.
Creating Ecosystem
India has produced about 94 unicorns so far, but barely
any of them can claim to be a deep-tech startup. We have
several venture funds in India, but most pursue relatively
‘lower risk’ investment opportunities that exploit India’s
growing consumption economy or those making cloned
products. While India has a problem of inadequate R&D
expenditure for an economy of her size, there is a sufficient
amount of high-quality research in India’s top STEM
colleges to fuel a deep-tech startup revolution. Some key
reasons why our academic researchers lag in their potential
to convert research into deep-tech startups are:
1. There is inadequate appreciation amongst
policymakers and university administrators for the
need to build capacity amongst academic researchers,
scientists, and STEM students in India to truly
understand what entrepreneurship entails and what
commercialisation of research means. Being formally
trained in science and technology but not having
adequate exposure to the real world of business/
commerce, academic researchers conflate invention
and innovation. There is a big difference between
making a successful technological breakthrough in
the lab and building a successful enterprise around
it. Becoming entrepreneurial cannot be imbibed by
reading or scholastic programmes but only through
experiential learning and expert mentoring/coaching.
2. While Government has made good efforts to fund
innovation in universities through programmes such
as prototype development, filing for IPR, incubation,
etc., few academics (<5%) commercialise their
research by startups. A key point is that even if
academics aspire to convert their inventions into
enterprises, they do not have the mental make-up
(the entrepreneur’s mindset) or the
knowledge of how to organise what
they have and collaborate with others to
get what they do not have/know. Many
universities have set up incubators
to help with this, but they are not
adequately equipped or incentivised to
commercialise research. Although they
are not-for-profit entities, incubators
look for startups that have a good
chance to be commercially viable. With
their limited budgets, incubators face
a tough challenge to nurture startups
to scale their revenues and become
Deep-tech startups take more
time, talent, and capital
to develop, upto when
commercial investors find
them acceptable. The risk of
failure is high at every stage
for a deep-tech startup, usually
higher than in the case of
other types of startups. But the
payoffs of successful deep-tech
startups are tremendous.
YOJANA June 2022 19
There is a big difference
between making a successful
technological breakthrough
in the lab and building a
successful enterprise around
it. Becoming entrepreneurial
cannot be imbibed by reading
or scholastic programmes
but only through experiential
learning and expert mentoring/
coaching.
attractive investment propositions.
It is difficult (if not impossible) for
incubators to engage more deeply
with academics/researchers in labs
and handhold them in crossing the
early-stage valleys of death (e.g.
finding proof of technology or
proof of market). Incubators are
vital for the ecosystem but their
inbound supply chain needs to be
strengthened.
3. Indian corporates and industries
that are engaged with deep-tech
startups do so only with those
where technology is substantially
developed or where revenues are visible. A majority
of Indian corporates do not have knowledge or
mechanisms for dealing with Open Innovation
processes that our university/research institutions can
potentially offer for creating deep-tech startups.
It is being proposed that policymakers should
introduce Customer Discovery and Customer Development
programmes to develop deep-tech startups from academic/
research institutions in India.
In 2013, the US Government through the National
Science Foundation
4
introduced the I-Corps programme
5
with great success to commercialise academic research in
US universities. Quoting from NSF: “The I-Corps program
uses experiential education to help researchers gain
valuable insight into entrepreneurship, starting a business
or industry requirements and challenges. I-Corps enables
the transformation of invention to impact”. The most
significant risk for startups is not failure of technology but
failing to get adequate customers. The I-Corps programme
is mandatory in the US for startups to obtain federal
funding for research/commercialisation.
Analogous to the I-Corps programme, the Government
of India should consider making it mandatory for every
translational research proposal at a university/research
institution or a deep-tech startup seeking admission to a
government incubator to undergo a rigorous Customer
Discovery exercise. The learnings at such a programme
can be truly transformative.
The Gopalakrishnan-Deshpande Centre for Innovation
& Entrepreneurship (GDC) at IIT Madras has successfully
run its I-NCUBATE programme for the past four years
and trained over 170 deep-tech startups from over 50
colleges/incubators across India with excellent outcomes.
The I-NCUBATE programme is inspired by the I-Corps
programme. The empirical evidence of I-NCUBATE
programme for success is described below:
1. Every participant startup in I-NCUBATE, without
exception, found its innovation as not
a good fit for the market. They would
tweak their innovation or pivot it to
become relevant. Two-thirds of startups
found their early adopter customer
segment in this manner. This puts
them on a strong footing to build their
prototype/MVP and provides insights
into a good business model.
2. The remaining one-third of
teams that do not find a “problem
to solve” for their innovation have
two outcomes post I-NCUBATE.
Around 50% continue their Customer
Discovery exercise and end up finding
their early adopter customers. The residual 15% of
teams conclude there is no problem to solve– i.e. their
innovation is unlikely to succeed in the marketplace.
This is not a failure (which is how incubators or
investors would conclude) but actually a very good
outcome for the researchers. Had they gone ahead
with building their startup (without having done the
I-NCUBATE programme), they would have spent 2-3
years on it, spent money and other inputs and then
encountered failure.
3. The Customer Discovery exercise helps researchers
know in 8 weeks (rather than learn it the hard way in
3 years) if their innovation has a market, or how they
should shape their startup journey to maximise chances
for success. A “No-Go” is one of the best outcomes a
researcher can get from the I-NCUBA TE programme.
Conclusion
Unfortunately, very few researchers and startup
founders in India conduct a robust Customer Discovery
exercise. This is more due to a lack of awareness and
appreciation amongst policymakers of its transformational
impact on the researchers/entrepreneurs. By linking
development grants/seed investment programmes for
deep-tech startups with a robust Customer Discovery
exercise, we can create in India a significant amount of
deal flow of robust and curated deep-tech startups into
incubators and the ecosystem. More importantly, a fair
share of deep-tech startups will help in solving India’s
hard challenges. ?
(Views expressed in this article are personal.)
References
1. All data in this section (unless otherwise specified) is from
NASSCOM Startup India Report – 2021.
2. CY – Calendar Year
3. Author’s estimate
4. National Science Foundation: https://www.nsf.gov/
5. https://www.nsf.gov/news/special_reports/i-corps/
YOJANA June 2022 23
ndia was ranked 8
th
in the top 10 countries
by AI patent families
1
, ahead of Russia and
France, with AI-related patent applications
growing tenfold from 2012 to 2018. A report
titled ‘AI Enabled SaaS: The Next Frontier for Global
SaaS Start-ups from India’ highlighted that AI could
generate over 9,00,000 white-collar jobs and 3.6 million
indirect jobs by 2030. Additionally, India has over 1,300
Global Capability Centres (GCCs), with one in every
five GCCs using AI across key business functions such
as cybersecurity, customer services, supply chain, and
operations management.
2
To support this thriving AI industry, India is one of
the handful of countries that have developed a conceptual
national framework for the use of artificial intelligence
(AI) and its allied field, machine learning. The Government
expenditure on AI and Machine Learning has also steadily
increased with expected growth at a CAGR of 39 per cent
over the period 2019-2025 to reach USD 11,781.9 million
in 2025
3
. As per the government’s think tank NITI Aayog,
by 2035, AI has the potential to add USD 1 trillion to the
Indian economy. However, successful adoption of AI will
require strategy, implementation, risk management, and an
AI-enabled workforce. Even to promote innovations in AI,
a streamlined national policy framework is necessary.
In this regard, by recognising AI’s potential to
transform the Indian economy and the need for India to
AI and Machine Learning
Hindol Sengupta
Bhavya Tyagi
Hindol Sengupta is V ice President and Head of the Strategic Investment Research Unit at Invest India. Email: hindol.sengupta@investindia.org.in
Bhavya Tyagi is a researcher at the same organisation.
Industry 4.0 is set to usher an era of technologies that will completely alter the way in which we
interact with the world around us. Artificial Intelligence/Machine Learning, IoT, 5G, Augmented
Reality, Big Data, Nanotechnology, Robotics, and 3D printing are transforming the operational,
functional, and strategic landscape across various industries. In India, both private and public
enterprises and the Central and State governments are investing in multiple AI use cases– from
manufacturing to services. Most venture capital funding in India is now going to AI projects in
Banking, Financial Services, and Insurance Sector (BFSI), e-commerce, healthcare, electronics
and renewable energy startups.
applications I
build a comprehensive strategic framework to harness
it, NITI Aayog released a National Strategy for Artificial
Intelligence #AIforAll in June 2018. The paper lays
out the roadmap for India to leverage the coming-of-
age technologies to ensure inclusive growth and social
development. #AIforAll aims at enhancing and empowering
human capabilities to address challenges of access,
affordability, and efficiency in endeavouring to scale Made-
fOCuS
24 YOJANA June 2022
AI ecosystem in the government
currently comprises capacity
building and reskilling, policies,
innovation centres, and projects.
However, given the agile
nature of the technologies,
several research reports have
pressed for the development
and deployment of an agile
regulatory and infrastructural
framework to remove
bottlenecks and complexities in
AI-driven processes and ensure
standardisation of AI.
in-India artificial intelligence solutions
for the benefit of the developing and
emerging economies. Here, ‘solve
for India’ means to ‘solve for 40 per
cent of the world.’ In doing so, the
paper identifies five priority sectors
that are envisioned to gain the most
incremental value from the adoption
of these transformative technologies in
solving societal needs: a) healthcare–
increasing access to quality and
affordable healthcare, b) agriculture–
enhancing crop yield, ensuring food
security, and increasing farmers’
incomes, c) education– enhancing
the quality of education and human
resource productivity, d) smart cities
and infrastructure– ensuring efficient
connectivity and promoting intelligent urban planning, and
e) smart mobility and transportation– enabling efficient and
safe transportation. The National Strategy aims to support
and enable India’s AI ecosystem through grants, product
and solution development, collaboration with the industry,
and mentorship support to startups. Since the release of
this report, NITI Aayog has launched several initiatives
such as the Atal Innovation Mission, Empowered Group-6,
RAISE 2020 summit, etc. The flagship AI initiative of NITI
Aayog has been the Responsible AI Approach Documents
published in collaboration with the World Economic
Forum Centre for the next AI Industrial Revolution. The
Documents seek to establish broad ethics and principles for
the design, development, and deployment of AI in India.
AI ecosystem in the government currently comprises
capacity building and reskilling, policies, innovation
centres, and projects. However, given the agile nature of
the technologies, several research reports have pressed for
the development and deployment of an agile regulatory
and infrastructural framework to remove bottlenecks
and complexities in AI-driven processes and ensure
standardization of AI. Keeping this in mind, India’s
AI Standardization Committee of the Department of
Telecommunications (DoT) released a draft framework on
the India Artificial Intelligence Stack
to enable an environment to exploit
AI productively across all sectors and
bring interoperability, among other
things. The Stack is divided into six
layers– five main horizontal layers
and one vertical layer— each catering
to a specific purpose ranging from
information gathering and storage to
security and governance. The Report
highlights numerous benefits of the AI
Stack such as secure data storage and
data privacy, easy interface, protection
of digital rights, open API integration,
trustworthiness, ethical standards,
and usage of government Public Key
Infrastructure (PKI). It further lays
down the roadmap to increase public
and private partnership in research,
accelerating adoption of AI, skilling
the workforce, and ensuring ethics
and principle for a responsible AI. It
also ensures the creation of a common
Data controller, including multi-cloud
scenarios. One of the major advantages
of this proposed AI Stack is that it will
facilitate open API integration and
build AI architecture from square one.
Through this, the Government aims to
provide a balanced ‘playground’ for
institutions to accelerate research and development in AI
and ensure speedy adoption of AI across the value chain.
India is bringing in the use of AI in everything– from
promoting digital health, and amplifying digital financial
transactions to helping pensioners receive their payments
with greater ease, and tracking down tigers to preserve
them.
In Telangana, AI is helping authenticate pensioners
and ensuring that payments go to pensioners who are alive
(thus, removing chances of graft) and using basic images
and information to help validate recipients.
The Ministry of Corporate Affairs is using AI to
simplify corporate filings, while the Centre for Artificial
Intelligence and Robotics (CAIR) has been built as a
special hub for AI-related work of the DRDO (Defence
Research and Development Organisation). AI is an area of
special importance for the National Research Foundation,
and it is being promoted at the school level to encourage
new talent in this sphere.
India sees AI and machine learning as the next
transformative process to reform its economy and give it
greater depth, and weed out irregularities. This process has
already started with the digitisation of citizen identity and
financial transactions, but the use of AI
would give it a whole new dimension
and depth.
AI and machine learning are
particularly suited for India because the
country is the world’s largest generator
of democratic data or data which is
being generated and analysed under the
democratic rule of governance.
This wealth of data gives India
an advantage in many fields– from
India is bringing in the use
of AI in everything from
promoting digital health, and
amplifying digital financial
transactions to helping
pensioners receive their
payments with greater ease,
and tracking down tigers to
preserve them.
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