India’s AI Future: How You Can Help Drive the Next Tech Revolution
Soumalya De
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Table of Contents
1. The AI Wake-Up Call: Why India Can’t Fall Behind
1.1 The DeepSeek Phenomenon: A Game-Changer in AI
When China’s DeepSeek AI wiped $1 trillion off US tech stocks in a single day, it wasn’t just a financial tremor—it was a wake-up call. For India, a country celebrated for its IT prowess and jugaad innovation, the question stung: “Why can’t we pull off a DeepSeek?”
Here’s the reality: China built DeepSeek with 2,000 older-generation GPUs and a $6 million budget—less than the cost of a mid-tier Bollywood film. Meanwhile, India, despite its 5M+ developers and thriving startup ecosystem, had just 5% of global AI compute capacity as of February 2025. Startups and researchers still queue for months to access GPUs, while global giants like OpenAI hog 80% of the world’s AI chips.
The gap isn’t just about hardware—it’s a mindset reset. While China plays chess, India’s stuck playing catch-up.
1.2 Why India’s AI Ambitions Matter: The Paradox of Potential
Let’s confront the elephant in the server room: India is a data goldmine.
Yet, India spends a paltry 0.8% of GDP on R&D (up from 0.6% in 2023 but still trailing China’s 2.4%). Worse, 40% of AI talent still flees to Silicon Valley for better labs and paychecks.
The Good News:
But let’s be real: GPUs alone won’t fix this. India needs to shift from “Chalta Hai” to “Global First”—and you’re part of that story.
1.3Why This Matters for YOU
Whether you’re coding in Bengaluru, policymaking in Delhi, or brainstorming in a Tier-2 college:
By the end of this article, you’ll see why India’s AI future isn’t about catching up—it’s about rewriting the rules. Let’s dive in.
2. China’s AI Leap: Strategic Implications for India
2.1 What Makes DeepSeek So Significant?
China’s DeepSeek AI has rewritten the rules of the global AI race with its groundbreaking large language model (LLM), DeepSeek R1. Unlike Western rivals that rely on tens of thousands of high-end GPUs, DeepSeek achieved state-of-the-art performance using just 2,000 older-generation Nvidia H800 GPUs and a $6 million training budget—a fraction of the billions spent by OpenAI and Meta.
The secret sauce? Innovation over infrastructure:
Benchmark Dominance: DeepSeek outperforms models like LLaMA 405B in language, coding, and math tasks while using 9% of the compute power. For example, training DeepSeek V3 required 2.7 million GPU hours on 2,048 H800 GPUs—far less than competitors. This efficiency challenges the myth that AI breakthroughs demand unlimited resources.
2.2 Impact on Global Markets
DeepSeek’s launch triggered a $1 trillion selloff in US tech stocks in January 2025, with Nvidia’s shares plunging 17%—their steepest drop since the dot-com crash. Investors began questioning the sky-high valuations of AI firms like OpenAI and Anthropic, realizing frugal innovation could disrupt the status quo.
The Geopolitical Irony: Nvidia’s VP criticized U.S. GPU export restrictions as “misguided,” despite the company controlling 90% of the global AI chip market. While self-serving, his warning holds truth: restricting hardware access risks stifling global innovation.
Why India Should Care: If the West tightens chip exports, India’s access to critical GPUs—already strained—could worsen. With 18,693 GPUs recently procured under the IndiaAI Mission, the country is racing to bridge this gap, but global politics remain a wildcard.
2.3 India’s Reaction: Accelerating Ambitions Amid Global Shifts
DeepSeek’s success has sparked urgency—and introspection—in India’s tech ecosystem:
Rushabh Shah, an angel investor and Founder of Bolstart, emphasized the urgency for India to act faster. He noted that diplomats from Israel and Australia at the Pune Public Policy Festival agreed on one point:
"Indians are very slow. You need to meet them multiple times over ‘Chai’ to close deals and agreements. We might fall behind if we keep delaying important decisions due to fear. It’s time to be bold."
Ajai Chowdhary, Chairman of the National Quantum Mission and Co-Founder of HCLTech, added,
"If DeepSeek can create an LLM in two years, why can’t India? DeepSeek, in a matter of days, has completely upended how everyone sees artificial intelligence in terms of investment and as a technology to take advantage of."
Social Media Echoes: On X (formerly Twitter), users joked: “China trains AI models; India trains 1.4B people to solve ‘Select all buses’ captchas.”
The Silver Lining: India’s ?15,000 crore IndiaAI Mission and startups like Sarvam AI (building Hindi/Tamil LLMs) and Krutrim (Ola’s multilingual model) signal a shift from talk to action.
3. Why India is Lagging in AI Development
3.1 The R&D Gap: Underinvestment in Innovation
India’s R&D spending is a glaring weak spot. At 0.6% of GDP, it lags far behind China (2.4%) and the U.S. (3.4%). Even worse, private sector contributions account for just 36% of this spending, compared to 70%+ in China and the U.S. This underinvestment creates a domino effect:
The Fix: India needs to boost R&D spending to 2% of GDP by 2030, complemented by tax incentives to encourage greater private sector participation. Think of it as planting seeds for a tech harvest in 5 years.
As Ajai Chowdhary pointed out, "We have the money, but we need to execute faster."
3.2 The Open Market Trap: No Safety Net for Startups
China shields its tech ecosystem like a fortress. Local players like Alibaba and Tencent get years to experiment before facing global rivals. India? Its open market lets U.S. giants dominate:
The Fix: A phased “India First” policy, reserving government contracts for homegrown AI solutions (like the U.S.’s Buy American Act). Imagine Flipkart getting the first crack at e-commerce AI tools.
Sharad Sharma of iSPIRIT sums it up: "India doesn’t wish to be a trade colony of China or a technology colony of the U.S."
3.3 Brain Drain 2.0: Talent Flees, GPUs Vanish
India produces 1.5 million engineering graduates every year, but nearly 40% of top AI researchers move to the U.S. or EU. Why? Let’s unpack the “push and pull”:
But It’s Not Just Hardware:
The Fix:
4. Mindset Shift: From “Chalta Hai” to “Global First”
4.1 How “Chalta Hai” Holds India Back
For decades, India’s “Chalta Hai” mindset—translating to “it’ll do”—helped us navigate scarcity. But in AI, this attitude is a $100B roadblock:
The result? India risks becoming a backend office for global AI, not its architect.
4.2 What “Global First” Looks Like in AI
Meet the startups flipping the script:
This isn’t just innovation—it’s jugaad on steroids.
4.3 The Good News: India’s Unsung AI Heroes
While Silicon Valley obsesses over chatbots, India’s solving real-world problems:
Think of it as AI for 1.4B people, not 1%.
4.4 The Roadblocks: Why “Global First” Isn’t Easy
Even rockstars face soundchecks:
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4.5 How India Can Go “Global First”
Three no-BS steps to accelerate:
5. How India Can Outpace the AI Competition
5.1 Establishing a National AI Fund
Let’s reimagine innovation: A $3 billion playground where India’s brightest minds experiment without sweating quarterly profits. This proposed National AI Fund would judge success purely on performance milestones—not revenue targets or investor panic.
Why this matters: Startups like Sarvam AI (voice AI for farmers) and Krutrim (multilingual LLMs) didn’t emerge from thin air. They needed room to swing big—like building India’s first language models or frugal chips. This fund could become India’s risk-friendly sandbox, where “failure” is just a draft on the way to something groundbreaking.
5.2 India’s Youth Wave: Turning Potential into Progress
India’s 65% under-35 population isn’t just a stat—it’s rocket fuel. Take Aryan Sharma and Ayush Pathak, two 20-year-olds coding their way into Silicon Valley’s spotlight. Their startup, Induced AI, isn’t chasing hype—it’s solving actual problems. With $2.3M in seed funding from giants like Sam Altman and Peak XV, they’re automating tedious tasks (think sifting through documents or managing workflows) with the precision of a seasoned pro.
This isn’t a Silicon Valley fairytale. It’s proof that India’s next-gen—whether in Bengaluru or Mountain View—can build tools that reshape how the world works.
5.3 AI4Bharat: Building Tools That Speak Bharatiya Languages
Ever tried getting a chatbot to understand the nuance of “thoda adjust karlo”? Most tools fumble. Enter AI4Bharat—a project teaching machines to think in Indian languages, not just translate them.
Datasets: IndicCorpora (10M+ sentences in 22 languages) and Shrutilipi (digitizing ancient handwritten scripts).
Real-World Wins:
5.4 Localized Solutions for Indic Languages
Let’s play a game: Ask your favorite chatbot to explain “jugaad” in Odia. Most will stumble. But Krutrim, India’s homegrown language model, nails it. Launched by Ola’s Bhavish Aggarwal, Krutrim speaks 20+ Indian languages fluently, crafting responses that feel local, not robotic.
The Plot Twist: Krutrim isn’t just code. Ola’s new chips—Bodhi 1, Ojas, and Sarv 1—are redefining efficiency. For instance:
6. India’s LLM Ecosystem: Where Do We Stand?
6.1 Gyan AI’s Paramanu: The “Chotu” Model Outsmarting Giants
Imagine an AI model so efficient it runs on a budget smartphone but outsmarts giants like GPT-3.5-Turbo. That’s Paramanu by Gyan AI. Optimized for 10 Indian languages—Assamese, Bangla, Hindi, Tamil, and more—it’s hallucination-free and trained on a single GPU.
Why care? Startups and governments can now process Indian languages at 1/10th the cost of Western tools. Think of it as the Swades moment for AI—homegrown, frugal, and unapologetically local.
6.2 Yellow.ai's YellowG: The Chatbot That Feels Human
YellowG isn’t just code—it’s the friendly neighborhood aunty of customer service.
Fun fact: YellowG’s accuracy rivals human agents—proving AI can “adjust karlo” better than we thought.
6.3 Uniphore’s Conversational AI: Fixing Call Center Chaos
Uniphore is turning “Your call is important to us” from a lie to a promise:
Scale stats: Used by Axis Bank to handle 2M+ monthly queries—faster than your Zomato order arrives.
6.4 Hanooman AI: Jio’s Multilingual Moonshot
Backed by Reliance Jio, Hanooman is India’s answer to GPT-4:
Why it matters? A shopkeeper in Jaipur now uses voice commands in Hindi to track inventory—no coding degree needed.
6.5 CoRover’s BharatGPT: AI for the Next Billion
BharatGPT is bridging India’s digital divide:
The twist? It’s built for users who think “AI” stands for “Adjustment and Innovation
6.6 The Global AI Race: Where Does India Stand?
Here’s the reality: New-age AI start-ups in India are taking bold steps to build foundational LLMs tailored to our unique needs. But there’s a hurdle—they’re struggling to secure substantial investments. In 2024, Indian AI start-ups raised a total of $166 million, significantly lower than the $518.2 million raised in 2022, according to Business Standard.
On the other hand, the U.S. is investing $500 billion to build a robust AI infrastructure, while Britain’s government has launched an AI opportunities action plan, investing around $14 billion in AI development. Meanwhile, China continues to push boundaries with innovations like DeepSeek.
7. India’s Global South Strategy: Tech Diplomacy
7.1 Affordable Innovation: India’s Blueprint for the Global South
India isn’t just fixing its own problems—it’s crafting a playbook for the Global South. Inspired by China’s DeepSeek, India’s proving AI can be low-cost, high-impact. Picture this:
This isn’t sci-fi. In 2023, India signed an MoU with the African Union to share its Digital Public Infrastructure (DPI)—AI-driven solutions for healthcare, education, and farming.
7.2 Geopolitical Chess: Sovereignty & Survival
Relying on foreign tech isn’t just awkward—it’s playing with fire.
As Umakant Soni (AI Foundry) warns: “Our trains, airports, and power grids can’t depend on tech from nations that might sanction us tomorrow.”
7.3 The Export Playbook: From Bihar to Botswana
India’s secret sauce? Solve local, scale global:
Fun fact: JioBrain’s low-bandwidth AI works in regions where only 34% have broadband—think rural Africa or Laos.
7.4 The Road Ahead: Challenges & Moonshots
The Hurdles:
The 2030 Vision: Position India as the “AI Pharmacy of the World”—delivering ethical, affordable tools to 50+ Global South nations.
8. The Future is Multilingual: Will India Lead?
What does it take to turn India’s AI potential into reality? The future we’re building isn’t just about technology—it’s about people.
As Dr. Suresh Venkatasubramanian (Stanford AI Ethicist) warned: “Outsourcing AI to Silicon Valley would replay the 2000s IT tragedy—profits for a few, stagnation for all.”
The Antidote? Build AI by Bharat, for Bharat:
The Bottom Line: India’s AI future isn’t about chasing Silicon Valley—it’s about building technology that understands the dreams of 1.4 billion people in their own languages.
So, here’s the question to ask yourself: What will your contribution be?
Because let’s face it—the future of AI will be shaped by what you do next.
Founder of Simons Medical Innovations, LLC
5 天前I have start up ideas using AI for most. May I join your group and perhaps give a pitch? Thanks Jon