AI Adoption in Indian Industries: Progress and Challenges
The landscape of artificial intelligence (AI) is rapidly evolving, with various sectors worldwide experiencing significant transformations. In India, the adoption of AI is marked by both commendable advancements and notable disparities across industries. The recently released EY-NASSCOM AI Adoption Index 2.0 sheds light on this intricate landscape, highlighting improvements in AI maturity while also identifying persistent challenges.
Current AI Adoption Trends in India
India’s journey toward AI maturity showcases a mixed bag of progress. The AI Adoption Index indicates a slight increase in maturity, rising from 2.45 in 2022 to 2.47 in 2024. While an impressive 87% of firms find themselves in the middle stages of AI adoption, only 45% have ascended to the ‘expert’ level, reflecting a 10% increase from the previous assessment. This suggests that while companies are embracing AI, there remains a substantial gap in integrating these technologies into their core business strategies.
Sectoral Highlights: Leaders and Laggards
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Banking, Financial Services, and Insurance (BFSI):
- Maturity Score: 2.45
- Focus Areas: Fraud detection, risk management, and enhancing customer experience through predictive analytics. Private sector banks show better alignment of AI strategy with business goals compared to their public counterparts.
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Consumer Packaged Goods (CPG) and Retail:
- Maturity Score: 2.37
- Challenges: This sector faces roadblocks such as data standardization and strategic budgeting for AI initiatives.
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Manufacturing:
- Maturity Score: 2.67
- Focus: Automation and operational efficiency, though scaling proof-of-concept (PoC) projects remains challenging.
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Telecom, Media, and Entertainment (TM&E):
- Maturity Score: 2.67
- Innovations: Leaders in utilizing AI for customer service and content optimization, with growing use of Generative AI for dynamic content creation.
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Healthcare and Pharmaceuticals:
- Maturity Score: 2.11
- Status: The most lagging sector, using AI primarily for diagnostics while struggling with broader integration across operations.
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Energy and Utilities:
- Maturity Score: 2.47
- Applications: Predictive maintenance and energy optimization are becoming prevalent, but issues like data readiness hinder progress.
- Transport and Logistics:
- Maturity Score: 2.54
- Achievements: Successful in implementing AI for route optimization and predictive maintenance, yet scalability remains an issue.
Barriers to Progress
Despite the improvements observed, several barriers hinder deeper adoption of AI across sectors:
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Data Fragmentation: A significant percentage of companies struggle with unstandardized and siloed data systems, with nearly 32% lacking AI-ready data infrastructures.
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Leadership Commitment: Inconsistent engagement from leadership results in misalignment between AI initiatives and broader business objectives.
- Talent Shortages: There exists a significant gap between the demand for skilled AI professionals and the supply, complicating the implementation of AI solutions.
Opportunities for Enhanced AI Adoption
Despite these challenges, the report underscores promising opportunities for organizations looking to enhance their AI capabilities. Key strategies include:
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Improving Data Practices: Establishing standardized data frameworks to streamline AI implementation.
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Strengthening Leadership Engagement: Ensuring AI initiatives are in line with measurable business outcomes.
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Upskilling Talent: Developing a focused training pipeline to cultivate AI-related skills among employees.
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Sector-Specific Innovations: Tailoring AI use cases to address unique challenges faced by different industries, especially small to medium-sized businesses (SMBs).
- Ethical AI Practices: Pursuing transparency and fairness in all AI deployments, essential for sustaining trust in AI systems.
The Path Forward
As Indian enterprises navigate their journey from being AI-ready to AI-first, the potential for innovation across industries is substantial. A comprehensive, multi-faceted approach involving better data management, strong leadership commitment, and targeted talent development will be critical in realizing the country’s ambition to emerge as a global leader in AI.
In conclusion, while the road to AI maturity in India is fraught with challenges, the opportunities that AI presents for businesses to redefine operational efficiency and drive innovation are immense. With ongoing efforts and strategic investments, India stands poised to bridge the gap between ambition and actionable progress, reinforcing its position in the global AI landscape.
Author: Abhinav Johri, Technology Partner of EY India
Disclaimer: The views expressed in this post are solely those of the author and do not necessarily reflect the opinions of ETCIO.