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Russhabh Thakkar on cracking India’s CTV code, one immersive ad at a time

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MUMBAI: For Russhabh Thakkar, founder and CEO of Frodoh, held a curiosity back in time about where technology intersects with media CTV, DOOH, and the systems behind how ads really work. He knew that he wanted to build something of his own in that space. Frodoh came from spotting the gap between how people watch today and how brands still plan. The goal was simple, build for the way attention actually works now, not how it used to.

Perched in his no-frills office in the heart of Lower Parel, Thakkar was all set for a deep-dive chat, coffee brewed and insights loaded. But in true Mumbai fashion, the city’s legendary traffic had other plans. Yours truly arrived fashionably late (read: embarrassingly delayed), much to Thakkar’s polite but unmistakable dismay.

Still, being the sport he is, we squeezed in a zippy 20-minute power convo before he dashed off for an urgent client meet. “No worries,” he smiled, “I’ll put pen to paper or well, fingers to keyboard and send over the rest.” And just like that, what started as a botched in-person interview turned into a digital dialogue packed with CTV gold.

With the mantra “Don’t just get viewed, get noticed,” Thakkar and his team are helping brands ditch passive impressions for precision engagement. “We saw the gap early,” says Thakkar. “People were watching content differently, but ads hadn’t caught up. Frodoh is built for the way attention works now and not how it used to.”

According to the FICCI-EY 2025 report, India has over 30 million CTV sets, with viewers clocking 40+ hours per month on smart TVs. But Thakkar believes this isn’t just about reach, “It’s where scale meets intent in real time.” With tier 2 and 3 towns joining the CTV party thanks to affordable smart TVs and bundled OTT deals, the viewing landscape has exploded. But most brands, he says, are “still fumbling with legacy playbooks.” Yes, Frodoh is helping them unlearn.

Old-school demographics don’t work in today’s CTV ecosystem. Thakkar explains, “It’s not about who is watching, but why, when, and how.” His team helps brands track viewing behaviour, content types, and time-of-day data to serve dynamic creatives, sequential stories, and context-rich moments.

To supercharge this, they built Frodoh Forge, an AI-powered campaign planner that takes a brand brief, decodes audience signals, suggests channels, and builds a media plan in minutes. “No extra forms. No lag. And everything’s tracked live,” he adds.

While many still see programmatic CTV as a shiny new buzzword, Thakkar insists it’s “the backbone of how smart media gets delivered today.” As a supply-side platform (SSP), Frodoh curates inventory across niche OTTs, regional OEMs, and long-tail content players—making them DSP-agnostic and giving agencies the flexibility they crave.

And with India’s ad market pegged to hit Rs 1.64 lakh crore according to GroupM’s TYNY 2025 report, CTV is no longer a footnote. “It’s the bridge between scale and precision,” says Thakkar. “We’re already seeing brands move from testing to long-term bets.”

Frodoh sees shoppable TV, QR overlays, and pause ads as the next big frontiers—formats that turn the screen into a point-of-sale without breaking immersion. “We’re not just watching CTV anymore, we’re starting to use it,” he says.

Thakkar is clear-eyed about the road ahead. “India’s CTV shift isn’t a trend, it’s a tectonic change. Some are adapting. We were built for it.”

With the right blend of technology, talent, and timing, Frodoh World is ensuring brands don’t just survive this bonfire, they shine through it.

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IDS 2026: AI rewires media value chain, says JioStar’s Prashant Khanna

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BENGALURU: Artificial intelligence is rapidly becoming the operating backbone of the media industry, transforming everything from content creation to distribution, said JioStar head – sports and live experiences, production technology and services Prashant Khanna, at the India Digital Summit 2026.

Speaking at a panel on automating the content value chain organised by IAMAI, Khanna said AI was no longer a peripheral tool but a core layer enabling scale, precision and personalisation across media workflows.

Live sports, he noted, requires unparalleled accuracy, with tens of millions of viewers watching in real time. AI-driven systems are now helping production teams move from reactive execution to predictive storytelling, using data, context and historical patterns to anticipate visuals, graphics and narrative elements before they are needed.

This shift, Khanna said, allows creative professionals to focus more on storytelling while automation handles manual processes.

Beyond production, AI is reshaping distribution by enabling the same live content to be delivered across multiple formats, from vertical video and short highlights to extended recaps and full-length broadcasts, tailored to different viewing preferences.

According to Khanna, seamless automation across the value chain is increasingly central to acquiring viewers and deepening engagement. He added that AI is also democratising premium production experiences, making features such as high-quality language commentary, advanced camera work, auto-framing and real-time adaptation accessible at scale.

Addressing the rise of AI-generated content, Khanna said technology lowers barriers to entry but does not replace the need for strong storytelling. Its true power lies in expanding creative possibilities rather than substituting narrative craft.

Looking ahead, he predicted a more immersive and interactive future for live entertainment, driven by virtual reality, second-screen experiences and personalised data layers, allowing fans to curate their own viewing experiences.

In Khanna’s view, AI’s true impact on media will be measured not by novelty, but by how seamlessly it integrates creativity, certainty and scale, turning the entire content lifecycle into a more intelligent, responsive and inclusive system.
 

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Why AI’s Next Big Flex is Knowing When to Zip It

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MUMBAI: We’ve all been sold the same sci-fi fever dream for decades: the invisible digital butler. The Jarvis to our Tony Stark, if you may. An intelligence that doesn’t wait for a prompt but simply exists in the periphery, whispering the right answer before you’ve even finished forming the question.

Recent moves from the tech giants suggest we’re finally crossing the threshold into “personal intelligence,” a system that pulls context across your entire digital life. We have, thankfully, graduated from the “goldfish amnesia” phase of early LLMs. Context windows and memory features have given AI a decent short-term recall, but we are still languishing in the uncanny valley of partial context. You’ve likely had that moment where you stare at a generated response and wonder, “What on earth made you think that was what I wanted?” Custom instructions and pinned memories can only do so much heavy lifting when the AI is still looking at your life through a keyhole.

But as AI moves from a tool we “talk to” to a system that essentially lives in our OS, the industry is obsessed with the wrong metric. We’re still counting parameters and bragging about reasoning capabilities. The real breakthrough isn’t going to be how much the AI knows; it’s going to be how much it chooses to ignore.

From “Helpful” to “Opinionated”

When AI starts linking context across your life, it ceases to be a neutral tool and starts becoming an opinionated system. This is where the “intelligence” narrative gets spicy. At their core, Large Language Models still function as high-speed autocomplete. They predict the next word in a sequence based on a generic world-view, and that isn’t fundamentally changing. What is changing is the rise of agentic AI. Agents sit around the model, interacting with tools, data, and the environment to observe context, react to signals, and take action. Personal intelligence, then, becomes about how those predictions get applied to your specific history.

If these agents know your budget, your health goals, and your calendar, and you ask for a dinner recommendation, does it give you what you want or what it thinks you need? Imagine a scenario where you’ve had a brutal day at work, and you just want a greasy burger. However, your AI “sees” your high cortisol levels and the fact that you’ve missed your last three gym sessions. Does it “helpfully” bury the burger joint in the search results and prioritize a salad bar instead?

At what point does “helpful context” become a digital nanny? This isn’t just a UI challenge; it’s a fundamental shift in the power dynamic between human and machine. As these systems grow more proactive, governance can’t just be about data privacy, it has to be about agency. We need to ensure that as AI gets better at recognizing our needs, it doesn’t start dictating them to us. A system that “knows best” is only one bad update away from becoming a system that “knows better than you.” If an AI becomes too opinionated, it doesn’t solve friction; it creates a new kind of psychological tax where the user feels they have to “fight” their assistant to get what they actually want.

Designing the Invisible (and Avoiding the Creepy)

There is a razor-thin line between an AI that feels like a superpower and one that feels like a digital stalker. The tech industry has a pathological need to show its work. Usually, when a system gains a new capability, the marketing instinct is to broadcast it. But in the world of personal intelligence, this “Are you proud of me?” approach to software engineering is a fast track to the uncanny valley.

The goal for personal intelligence should be to become digital wallpaper essential, but unnoticed. The moment an AI “interrupts” to show off how much it knows about you, it has failed. To make AI feel invisible rather than invasive, we have to master the art of the “nudge.” This requires a deep understanding of human psychology, and by extension the art of shutting up.

The Ultimate Advantage: Strategic Restraint

The “hero narrative” of AI has always been about more: more data, more speed, more answers. But as we move into the era of personal intelligence, the ultimate competitive advantage is going to be restraint. This is a concept we rarely talk about in Silicon Valley, where “growth” and “engagement” are the primary gods. However, for a system to be truly personal, it must respect the sanctity of the user’s focus.

In the real world, the smartest person in the room is rarely the loudest; it’s the one who knows exactly when to chime in and when to stay silent. The same applies to our silicon counterparts. The engineering challenge is no longer just about building a model that can pass the Bar Exam or write a sonnet in the voice of a 17th-century pirate. The real challenge is building a model that has access to your deepest digital secrets and has the “wisdom” to do absolutely nothing with them until the exact moment it actually matters.

This brings us to the core question: Is the next AI advantage about intelligence, or about knowing when not to act on personal data?

If a company can prove that their AI has the discipline to stay in the background, they will win the one thing that is currently in shortest supply: trust. We are reaching “intelligence saturation.” Every major player has a model that is “smart.” What they don’t all have is a philosophy of silence. Knowing when not to act is the highest form of intelligence because it requires a level of contextual nuance that goes beyond pattern matching. It requires an understanding of human boundaries.

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Stockholding rolls out StockFin 2.0 app to simplify investing nationwide

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MUMBAI: When investing meets a software refresh, ease is the real upgrade. Stockholding Services Limited has rolled out Stockfin 2.0 nationwide, positioning the revamped investing app as a one-stop, mobile-first platform aimed at widening retail participation across India.

Designed to work as smoothly in metro markets as in fast-growing tier II and tier III cities, Stockfin 2.0 reflects the changing profile of India’s investors. Built on a future-ready architecture, the app features upgraded performance, a refreshed interface and a simplified structure intended to make market participation less intimidating and more intuitive.

The platform brings together equities, derivatives, stock SIPs, mutual funds, ETFs, SME stocks and IPOs within a single interface. Product-wise grouping allows users to navigate quickly, while a clean dashboard offers real-time snapshots of market indices, portfolio value, top gainers and losers, and profit and loss positions.

For investors seeking deeper insight, Stockfin 2.0 includes screeners, technical indicators, research calls and detailed reports. Short-term traders are catered to with a dedicated ‘Buy Today, Sell Tomorrow’ section, while goal-based mutual fund flows aim to simplify long-term financial planning.

The app also focuses on execution and security. Best price routing directs trades to the exchange offering the most competitive price, while MPIN, biometric login and OTP-based verification reinforce account safety. Personalisation options, including themes, font sizes and saved order settings, add flexibility to the user experience.

Speaking at the launch, officials highlighted the role of technology-led platforms in expanding financial inclusion and supporting India’s broader digital and self-reliance goals. Company leadership described Stockfin 2.0 as more than a cosmetic upgrade, positioning it as a step towards making investing more accessible, informed and dependable for retail participants nationwide.

Backed by StockHolding’s long-standing presence in financial services, the new app is aimed at investors who want real-time insights, secure access and the ability to manage multiple asset classes on the move, all without losing clarity in a fast-moving market.

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