India Emerges as a Global Leader in Machine Learning–Enabled Scientific Research
India has emerged as one of the
world’s most dynamic and rapidly advancing centers for machine learning
(ML)–enabled scientific research, according to the newly released ML
Global Impact Report 2025 by Marktechpost. New dataset shows India
rapidly strengthening its position in global AI-driven science, ranking third
worldwide for ML-enabled research published across the Nature family of
journals.
The
study, covering more than 5,000 ML-relevant scientific articles published in
the Nature family of journals between January 1 and September 30,
2025, identifies India as the third-largest contributor to ML-supported
scientific output worldwide — behind only China and the United States.
India’s
rise reflects an expanding network of universities, medical institutions,
national laboratories, deep-tech startups, and AI research centres that are
applying ML to address the country’s most complex scientific and societal
challenges. ML has become a foundational tool in India’s scientific ecosystem,
powering innovation across domains essential to national development.
India’s Rapid Growth in ML-Driven
Scientific Research
Indian
researchers demonstrated extensive adoption of widely used ML frameworks —
including XGBoost, Transformers, ResNet, U-Net, YOLO, LightGBM, and CatBoost —
applying them across high-impact scientific fields such as:
• medical imaging, diagnostics, cancer screening, and
genomics
• climate science, monsoon prediction, and environmental
modeling
• agriculture, crop-yield forecasting, and food systems
resilience
• materials science, chemistry, and nanotechnology
• Earth-observation, remote sensing, and disaster
preparedness
This
broad range of applications highlights India’s focus on practical, scalable,
and socially relevant ML research, with a strong orientation toward national
priorities in health, agriculture, climate resilience, and sustainable
development.
Research Volume vs. Density: India’s
Expanding Scientific Footprint
The
report shows that while China leads in research volume and the United States in
disciplinary breadth, India is experiencing a steep upward trajectory in
ML-driven science — with more institutions participating each year.
India’s
expansion is supported by:
• growing interdisciplinary research clusters
• increased investment in AI for health, agriculture, and
climate
• strong contributions from both Tier 1 and Tier 2
universities
• a rapidly growing startup ecosystem translating research
into applied innovation
India’s
participation is increasingly distributed and collaborative, positioning it as
one of the fastest-growing ML-enabled scientific ecosystems in the world.
Collaboration: India’s Strength in
Scientific Partnerships
Like
global ML research, India’s scientific output is highly collaborative, with
most ML-enabled studies involving 2–15 institutional affiliations. Indian
collaborations frequently connect:
• academia and medical institutions
• computational labs and engineering departments
• public research organizations and industry partners
• deep-tech startups and clinical institutions
International
collaboration is an especially important factor, with India appearing
prominently in partnerships with:
• the United States, especially in health, genomics, and
climate
• Saudi Arabia, particularly in materials science and
applied ML
• global research networks working in computer vision,
environmental science, and agriculture
These
collaboration patterns demonstrate India’s growing integration into the global
ML research community.
Beyond Generative AI: Classical ML
Powers India’s Scientific Impact
Despite
the popularity of generative AI models, the report finds that India’s
scientific progress is driven primarily by mature, proven machine learning
techniques, mirroring global trends. Classical ML methods — including Random
Forest, SVMs, and Scikit-learn–based workflows — account for 47% of all ML use
cases worldwide, and these approaches remain central to India’s research
output.
When
combined with established ensemble approaches such as GBM, XGBoost, LightGBM,
and CatBoost, these traditional methods represent over 75% of the ML techniques
powering real scientific work. This reinforces India’s focus on practical,
scalable innovation, rather than hype-driven experimentation.
India’s
research environment uses ML primarily for application-oriented scientific
tasks, including prediction, early diagnostics, environmental modeling, and
agricultural optimization — areas where classical and ensemble ML methods deliver
immediate, real-world impact.
India in Global Context: A Top-Three
Scientific Power
India’s
third-place ranking highlights the country’s rising influence in global
ML-driven science. The report situates India within a broader ecosystem shaped
by foundational ML tools originating from:
• United States (core ML infrastructure)
• Canada (GAN)
• United Kingdom (AlphaFold)
• Germany (U-Net)
• France/EU (Scikit-learn)
• Russia (CatBoost)
India’s
expanding research output shows how the country is actively contributing to —
and benefiting from — the global ML innovation landscape.
Dr.
Geetha Manjunath, Founder, CEO & CTO, NIRAMAI Health Analytix. Said, “India’s
surge in machine learning–driven scientific research — particularly in medical
imaging, diagnostics, and genomics — is shaping a future where advanced
technologies translate into improved population health at scale.”
NIRAMAI’s
Thermalytix platform is a leading example of India’s ability to convert
ML-supported scientific research into clinically validated, affordable, and
globally scalable healthcare innovation. The technology enables early detection
of breast cancer without radiation, compression, or on-site radiologists,
making it suitable for population-scale screening — especially in low-resource
settings.
“Solutions
like Thermalytix® demonstrate how India’s innovation ecosystem is using ML to
develop equitable health technologies that create real impact for millions,”
she added.
Asif
Razzaq, Editor & Co-Founder, Marktechpost, said, “India’s rise in
ML-powered scientific research is one of the most notable trends in this
dataset. What stands out is the country’s ability to apply machine learning
across diverse scientific domains — from agriculture and health to climate and
engineering. India has firmly established itself as a key contributor to the
global ML research ecosystem.”































Leave A Comment