Digital
Appu’s aura goes digital with launch of Puneeth Rajkumar Star Fandom app
MUMBAI: The Power Star has found a new stage, the digital kind. The late Dr. Puneeth Rajkumar’s infectious energy and enduring charisma now live on through pixels and code, as Star Fandom LLP unveils the Dr. Puneeth Rajkumar Star Fandom App, a first-of-its-kind platform blending emotion, technology, and fandom.
Conceptualised by Dr. Samartha Raghava Nagabhushanam, founder chairman of Star Fandom, in collaboration with Smt. Ashwini Puneeth Rajkumar, the app was launched in the presence of deputy chief minister D. K. Shivakumar. The platform uses artificial intelligence, machine learning, and emotion mapping to let fans experience what technology rarely delivers connection with heart.
“Star Fandom was envisioned to bring fans closer to the emotions and values their stars ignite within them,” said Dr. Nagabhushanam. “Puneeth Rajkumar’s aura continues to be the heartbeat of this initiative. With the app, we’ve harnessed AI to make that connection dynamic and personal.”
The app is designed to unite over 70 million fans across the globe, serving as a digital meeting point for Kannadigas and cinema lovers. It reimagines fandom not as a one-way adoration but as a living, evolving relationship between fans and the legacy they love.
Smt. Ashwini Puneeth Rajkumar described it as “a space to celebrate Puneeth, learn from his values, and keep his energy alive every day.”
And there’s plenty within the app to keep the spirit of Appu alive:
● Podcasts – For the first time, Smt. Ashwini Puneeth Rajkumar opens up about her journey with Puneeth and the legacy of the Rajkumar family. Hosted by Anushree, the series features friends, colleagues, and collaborators sharing unseen memories and heartfelt anecdotes.
● Chota Appu – A playful, inspiring corner for children filled with stories and rhymes inspired by Appu, nurturing creativity and kindness.
● Puneeth-Inspired Fitness – Guided workouts modelled on the Power Star’s discipline and positivity, letting fans train like their hero.
● Quizzes & Puzzles – Fun challenges celebrating Puneeth’s cinematic milestones and Sandalwood culture.
● Sandalwood Pulse – A news hub tracking everything from new releases to behind-the-scenes stories across Kannada cinema.
● Connect to Connect – A collaborative digital space bringing together fans, artists, and technicians to co-create and share ideas.
● Daily Vibes – Wallpapers, stickers, and personalised content that keep the Power Star’s infectious positivity glowing on every device.
But this isn’t just a nostalgia app, it’s a tech-forward tribute that learns and evolves. With AI and emotion mapping, each interaction shapes a personalised journey, making the experience as unique as every fan’s connection to Puneeth.
For Star Fandom LLP, founded to bridge the gap between celebrities and their audiences, the app is just the first step. “We see Star Fandom as a blueprint for a new digital era of engagement,” Dr. Nagabhushanam added. “An era where emotion, innovation, and community come together to create living, lasting connections that transcend generations.”
Now available globally on Android and iOS, the Dr. Puneeth Rajkumar Star Fandom App ensures that the Power Star’s light doesn’t just shine on screen, it glows in every fan’s palm.
Digital
GUEST COLUMN: How AI is restructuring distributor and retailer motivation models
From incentives to intelligence, AI is redefining how brands engage channel partners
MUMBAI: Artificial intelligence is rapidly transforming how brands engage with their most critical yet often overlooked stakeholders: distributors, retailers, and last-mile influencers. For Abhinav Jain, co-founder and CEO of Almonds Ai, this shift marks a fundamental departure from traditional, transaction-led incentive models toward behaviour-driven, data-intelligent ecosystems. In this piece, Jain examines how AI is enabling brands to decode partner motivations, predict engagement patterns, and deliver personalised, scalable experiences—ultimately redefining channel relationships from transactional exchanges to long-term growth partnerships.
Across many sectors, there is increasing recognition that motivating those who bring products to market (distributors, retailers, last-mile influencers) poses a growing challenge.
Brands continue to invest significant marketing and digital resources to consumers, yet in many countries and the vast majority of emerging economies, these types of consumer-focused investment areas have had little impact on ultimate product delivery. Rather, it is still the case that traditional retail continues to make up most products sold.
So why is it that the systems built around motivating these channels have yet to evolve?
For decades, distributor and retailer engagement revolved around static schemes – quarterly targets, volume-based rewards, and occasional trade promotions. These programs were designed around transactions, not behaviour. The assumption was simple: if incentives increase, performance will follow.
Now, with the advent of artificial intelligence, the definition of performance is being challenged.
With the development of artificial intelligence, businesses can move beyond simply creating loyalty based on transactional-based models and toward models built on behaviours, the behaviours of channel partners that are intrinsic to their motivations in engaging with particular brands. As a result, the means by which businesses develop relationships within their distribution network are starting to evolve; thus, ultimately changing how brands interact with those within their distribution network.
Assessing engagement: Transitioning from transactional- to behavioural intelligence
Traditional loyalty systems refer to transactional activity (sales data). Although this data is valuable and important, it only provides a partial view of engagement across the channel partner.
For example, a retailer may have a high frequency of sales of a product, but their lack of engagement with the manufacturer would not reflect that they have true loyalty toward that brand. Conversely, a retailer who actively participates in training programmes, acts as brand advocates, and is engaged in learning with the supplier would exhibit more profound levels of loyalty but would have been invisible based on historical incentive programmes.
Artificial intelligence allows for the identification of behaviours that help to address this gap. Brands are able to use a variety of engagement data points, participate in learning programs, respond to communications, redeem behaviour and track platform use behaviour in order to identify motivation through behaviour.
McKinsey has stated that companies that leverage advanced analytics for their sales and distribution functions can achieve as much as a 15-20 per cent increase in productivity due to increased awareness of their behavioural trends throughout their networks.
This visibility of behavioural patterns within channel ecosystems can be transformational to brands as they can now view how partners engage on their path to purchasing products, instead of just measuring the sales revenue generated by those purchases.
Predicting motivations, not just measuring performance
Possibly, the largest contribution of Artificial Intelligence (AI) to helping brands engage with partners via channel ecosystems is its ability to predict future engagement versus simply measuring past performance.
Traditionally, brands only realised that a partner was disengaged (not likely to purchase products) once their sales performance had already declined. By then, the brand would have to use significant amounts of incentives or aggressive promotional activities to recovery their partner’s engagement level.
AI models can help organisations to detect early signs that a partner is becoming disengaged, such as declining participation in learning modules, declining interaction via the platform, or slower reward redemption rates. These indicators can help organisations to proactively engage with their partners before their sales performance begins to decline.
The practical application of AI and predictive analytics gives brands the ability to re-engage with their partners prior to their sales performance declines. For example, instead of developing and implementing broad-reaching incentive programs that provide a “one size fits all” incentive to all partners in an ecosystem, brands are able to develop targeted, engaging re-engagement programmes. This is how personalisation can be done on a large scale, such as across global distribution and retail networks.
The vast majority of distributor and retailer channels have thousands, if not millions, of individual channel partners. Historically, providing personalisation to such a large number of businesses has not been feasible.
However, with the advent of AI, personalisation at scale is becoming a reality.
Brands can now create tailored engagement journeys for all their partners, based on their partner profiles, through some combination of machine learning models and behavioural segmentation. For example, high-performing distributors might receive higher levels of leadership-based recognition and greater incentives to continue to grow. Emerging retailers, on the other hand, might be supported with training, onboarding rewards, and measurable performance milestones.
The shift towards personalisation of partner engagement echoes the direction that consumer marketing is already moving towards.
According to Salesforce’s report, over 70 per cent of customers expect personalisation in the way that brands engage with them. As such, there is a growing expectation for B2B ecosystems to have these same types of expectations from their channel partners.
Gamification and continuous engagement
AI is also radically changing how brands will engage with their channel partners through the use of gamification.
Many traditional incentive-based contests and leaderboards would spark temporary engagement among their participants, but they struggled to sustain engagement over time. With the use of AI, gamification mechanics are evolving dynamically based on historical and evolving participation patterns by their channel partners.
Challenges, rewards, and recognition structures can be modified continuously in order to sustain engagement with all of a brand’s partner segments. This will provide a greater opportunity to move away from episodic campaigns towards ongoing, continuous engagement experiences.
When channel partners receive motivation as part of their daily business activities through recognition, learning, and tracking their performance, long-term loyalty will be achieved.
Aligning motivation to broader impact
There is a growing trend within the channel ecosystem to integrate sustainability and socially responsible behaviours into the channel partner programmes of brands.
Increasingly, brands are motivating their partners to use sustainable practices in their operations, participate in sustainable practices like sustainability-related knowledge programmes, or promote products that are in line with their sustainability objectives.
Brands can use AI to monitor and measure these types of behaviours and incorporate them into their incentive frameworks so that brands can align their commercial objectives with broader social and environmental outcomes.
A shift in the way brands view their channel partners
AI is having the most significant impact on the way that brands are now viewing their channel partners, as it relates to the underlying philosophy of those fundamental relationships.
For the past several decades, many brands have viewed their channel partners as intermediaries in the supply chain. More and more brands are now beginning to view their channel partners as key ‘partners-in-growth,’ and their actions can have a direct impact on market performance.
In fact, all the channel ecosystems are using behavioural engagement platforms to design new models that reward not just transactional behaviour, but also create continuous engagement journeys for their partners, where their partners can receive recognition for their participation, learning, and continued engagement, thereby reinforcing long-term loyalty to the brand.
The future: Intelligent channel ecosystems
As we consider what the next phase of channel engagement may look like, many believe that it will be based on intelligent ecosystems, using AI to continuously monitor and adjust the engagement strategies used to engage their channel partners, in real time and based on the behaviours of those partners.
For brands operating in complex distribution networks, the ability to perform well will be determined both by whether products are available to their customers, as well as by the enthusiasm, expertise, and loyalty shown from each channel partner that represents the brand each and every day that they are working on behalf of the brand.
While AI clearly does not eliminate the human aspect of a brand’s relationship with its channel partners, it does allow brands to better understand and nurture that relationship.
In markets where the last mile will determine whether a sale is made, how one leverages the intelligence gained by using AI will ultimately be the difference between gaining a new, sustainable competitive advantage versus losing one.






