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Unlock the Power of AI: A Guide for Enterprises

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By Alaa Antar – Regional Sales Manager, Liferay

AI is revolutionizing enterprises by enhancing efficiency, personalizing customer experiences, and unlocking new business opportunities. With Machine Learning (ML) and Generative AI (GenAI) driving automation and data-driven insights, organizations can streamline operations, optimize decision-making, and foster innovation—while ensuring ethical AI practices that promote fairness, transparency, and security in a digital world.

While our introduction to Artificial Intelligence started as a sci-fi fantasy some decades back, today, it is rapidly intertwining with all things digital to infuse accuracy and generate quick results. AI underpins many aspects of our daily lives, often working behind the scenes to personalize our experiences, optimize processes, and even entertain us. From unlocking smartphones with facial recognition to receiving accurate product recommendations online, AI has become an integral part of our interactions with technology. According to PwC, the Middle East, is poised to become a global AI hub, and anticipated to accrue  US$320 billion in AI related benefits by 2030. 

In today’s fast-paced digital landscape, delivering exceptional customer experiences is paramount. AI, low-code development, and automation are transforming the way businesses interact with their customers. By harnessing the power of these technologies, organizations can streamline operations, personalize interactions, and drive innovation.

Understanding AI, ML, and GenAI 

At its core, artificial intelligence refers to the ability of machines to mimic human cognitive functions without explicit programming. These encompass a wide range of capabilities, such as learning and problem-solving, visual perception, speech recognition, and language translation with commonly known examples of Siri, ChatGPT and more. 

Artificial Learning (AI) usually refers to the field of machine learning. But AI can do more than just learn from data; it can also reason, make decisions, solve problems, and be creative.

As a subset of Artificial intelligence, Machine Learning (ML) powers many AI applications encountered daily. ML uses an algorithm, often referred to as a model, to analyze and extract patterns from data. . Over time, the models become adept at making predictions, classifications, and recommendations, automating tasks, and improving decision-making – all based on the learned pattern

Using ML and GenAI to Create Business Value

Early adopters of AI, ML, and GenAI gain a competitive edge. For example, both ML and GenAI offer great opportunities to unlock the hidden potential within the data in enterprises. ML uncovers valuable insights to inform strategies, while GenAI transforms content creation processes and personalize customer interactions.

Cumulatively, through a systematic leverage of AI, organizations improve decision-making, automate and streamline operations, and enhance customer experiences.

Practical examples of GenAI in the Enterprise:

  • In customer service,​​​​​​​ GenAI can handle real-time language translation to support agents responding to customer queries from multiple regions. AI-powered chatbots can answer routine questions, engage in dynamic conversations, offer empathetic responses. By offloading common inquiries, human agents can focus on complex, high-value tasks, leading to improved efficiency and enhanced customer satisfaction.
  • In marketing, GenAI can support generating personalized marketing copy, headlines and social media posts based on target audience preferences. GenAI can even be trained on a company’s brand voice and product data, automatically crafting unique descriptions for online stores.
  • In product design, GenAI can assist by generating design variations or optimizing product descriptions for different markets and target groups. If trained on existing product data and user reviews, GenAI can suggest design iterations to address customer pain points or cater to specific market preferences, allowing for data-driven product development and accelerating time-to-market. 
  • In media production, GenAI can assist in scriptwriting, music composition, and movie trailers.

Responsible AI: A Crucial Consideration

Although AI offers immense potential, it also demands careful consideration of ethical implications. Models learn from data, and if that is biased, the resulting outputs can lead to discriminatory outcomes. Additionally, the lack of transparency in some AI algorithms can make it difficult to understand how they reach their conclusions. That’s why ensuring responsible AI development and use is paramount. Here’s why:

  • Fairness and bias – Biased training data can lead to biased outputs. Businesses should scrutinize data and employ debiasing techniques to provide fairness, accountability and transparency in AI.
  • Transparency and trust – Algorithms that are a “black box” can erode trust. Businesses should strive for transparency in AI decision-making processes and provide explanations for outputs, allowing users to assess their validity. Users deserve explanations for GenAI outputs and an understanding of how the AI arrived at its results.
  • Human oversight. AI and ML should augment, not replace human judgement. A “human-in-the-loop” approach ensures ethical considerations are factored in and safeguards against unintended consequences.​​​​​​​
  • Privacy and security. AI systems that handle sensitive data necessitate robust privacy and security measures. Enterprises should comply with data protection regulations and implement appropriate safeguards to protect user privacy.

Embracing AI is not just about adopting new technologies—but about rethinking business strategies.  Integrating AI, ML, and GenAI into daily operations can reveal hidden efficiencies, enable personalization, spark innovation, and secure a competitive edge in a digital world. 

​In addition, Open source DXP platforms such as Liferay encourage organizations to adopt a BYOAI (Bring your own AI) approach. This facilitates a formidable combination of Gen AI with DXP platforms, driving advanced results and widening new possibilities of use cases through combined features. As an example, Liferay’s robust out-of-the-box content management features simplifies social media posting through a tailored approach to communicate with audiences using the company’s preferred AI engines. Organizations can then accurately schedule and publish content on different platforms such as FB, Twitter and LinkedIn. This empowers a marketeer with seamless integration to streamline different workflows, save time and ensure consistent messaging across different channels making it an essential tool to enhance social media strategy across content and images.

By breaking down the complexities of AI, enterprises can embark on this journey with confidence. Implemented ethically and responsibly, AI can fuel sustainable growth, enhance decision-making, please customers, and shape a future where human expertise and AI capabilities work in harmony.

Tech Features

FROM AI EXPERIMENTS TO EVERYDAY IMPACT: FIXING THE LAST-MILE PROBLEM 

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By Aashay Tattu, Senior AI Automation Engineer, IT Max Global

Over the last quarter, we’ve heard a version of the same question in nearly every client check-in: “Which AI use cases have actually made it into day-to-day operations?”

We’ve built strong pilots, including copilots in CRM and automations in the contact centre, but the hard part is making them survive change control, monitoring, access rules, and Monday morning volume.

The ‘last mile’ problem: why POCs don’t become products

The pattern is familiar: we pilot something promising, a few teams try it, and then everyone quietly slides back to the old workflow because the pilot never becomes the default.

Example 1:

We recently rolled out a pilot of an AI knowledge bot in Teams for a global client’s support organisation. During the demo, it answered policy questions and ‘how-to’ queries in seconds, pulling from SharePoint and internal wikis. In the first few months of limited production use, some teams adopted it enthusiastically and saw fewer repetitive tickets, but we quickly hit the realities of scale: no clear ownership for keeping content current, inconsistent access permissions across sites, and a compliance team that wanted tighter control over which sources the bot could search. The bot is now a trusted helper for a subset of curated content, yet the dream of a single, always-up-to-date ‘brain’ for the whole organisation remains just out of reach.

Example 2: 

For a consumer brand, we built a web-based customer avatar that could greet visitors, answer FAQs, and guide them through product selection. Marketing loved the early prototypes because the avatar matched the brand perfectly and was demonstrated beautifully at the launch event. It now runs live on selected campaign pages and handles simple pre-purchase questions. However, moving it beyond a campaign means connecting to live stock and product data, keeping product answers in sync with the latest fact sheets, and baking consent into the journey (not bolting it on after). For now, the avatar is a real, working touchpoint, but still more of a branded experience than the always-on front line for customer service that the original deck imagined.

This is the ‘last mile’ problem of AI: the hard part isn’t intelligence – it’s operations. Identity and permissions, integration, content ownership, and the discipline to run the thing under a service-level agreement (SLA) are what decide whether a pilot becomes normal work. Real impact only happens when we deliberately weave AI into how we already deliver infrastructure, platforms and business apps.

That means:

  • Embed AI where work happens, such as in ticketing, CRM, or Teams, and not in experimental side portals. This includes inside the tools that engineers, agents and salespeople use every day.
  • Govern the sources of truth. Decide which data counts as the source of truth, who maintains it, and how we manage permissions across wikis, CRM and telemetry.
  • Operate it like a core platform. It should be subject to the same expectations, such as security review, monitoring, resilience, and SLA, as core platforms.
  • Close the loop by defining what engineers, service desk agents or salespeople do with AI outputs, how they override them, and how to capture feedback into our processes.

This less glamorous work is where the real value lies: turning a great demo into a dependable part of a project. It becomes a cross-functional effort, not an isolated AI project. That’s the shift we need to make; from “let’s try something cool with AI” to “let’s design and run a better end-to-end service, with AI as one of the components.”

From demos to dependable services

A simple sanity check for any AI idea is: would it survive a Monday morning? This means a full queue, escalations flying, permissions not lining up, and the business demanding an answer now. That’s the gap the stories above keep pointing to. AI usually doesn’t fall over because the model is ‘bad’. It falls over because it never becomes normal work, or in other words, something we can run at 2am, support under an SLA, and stand behind in an audit.

If we want AI work to become dependable (and billable), we should treat it like any other production service from day one: name an owner, lock the sources, define the fallback, and agree how we’ll measure success.

  • Start with a real service problem, not a cool feature. Tie it to an SLA, a workflow step, or a customer journey moment.
  • Design the last mile early. Where will it live? Is it in ticketing, CRM, Teams, or a portal? What data is it allowed to touch? What’s the fallback when it’s wrong?
  • Make ownership explicit. Who owns the content, the integrations, and the change control after the pilot glow wears off?
  • Build it with the people who’ll run it. Managed services, infra/PaaS, CRM/Power Platform, and security in the same conversation early – because production is where all the hidden requirements show up.

When we do these consistently, AI ideas stop living as side demos and start showing up as quiet improvements inside the services people already rely on – reliable, supportable, and actually used.

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WHY LEADERSHIP MUST EVOLVE TO THRIVE IN AN AI DRIVEN WORLD

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By Sanjay Raghunath, Chairman and Managing Director of Centena Group

Leadership today is being reshaped not by technology alone, but by the pace at which the world around us is changing. Conventional leadership models built on rigid hierarchies, authority, and control are no longer sufficient in an era defined by artificial intelligence, automation, and constant disruption. What organisations need now is a more human-centric model, adaptive, and grounded form of leadership.

As digital transformation accelerates, the role of a leader has fundamentally shifted from imposing authority. Leadership is no longer about issuing directions from the top; it is about guiding organisations and people through uncertainty with clarity and confidence. In an AI-driven world, effectiveness does not come from being the most technical person in the room, but from understanding how technology reshapes industries and how to integrate it responsibly to create long-term value.

The economic impact of AI is already undeniable. Reports suggest that AI could contribute up to USD 320 billion to the Middle East’s GDP by 2030, with the UAE alone expected to see an impact of nearly 14 per cent of GDPby that time. Globally,PwC estimates that AI adoption could increase global GDP by up to 15 per cent by 2035. These numbers signal more than opportunity, they signal inevitability. Leaders who cling to static models and resist change risk being overtaken as industries evolve around them.

One of the most persistent challenges in leadership today is resistance to change. When leaders rely on outdated hierarchies and familiar ways of working, organisations struggle to respond to volatility. What worked yesterday may no longer work tomorrow. Flexibility, once considered a desirable trait, has become a necessity for survival. Ignoring change is no longer an option.

At the same time, expectations of our colleagues have shifted significantly. People today seek more than compensation or career progression. They are looking for purpose, belonging, and leaders who communicate with transparency rather than authority. This shift is reinforced by the 2025 Employee Experience Trends Report, which draws on feedback from 169,000 employees. The findings show that belonging and purpose are now among the strongest drivers of engagement, while AI-related anxiety and change fatigue are growing concerns within the workforce.

These factors highlight the role of authentic human connection in leadership. One of the critical elements in this regard is emotional intelligence (EQ), which enables leaders to build trust, inspire confidence and form meaningful relationships with their teams. While data, analytics, and AI can inform better decisions, it is empathy that sustains relationships and credibility. Leaders who lack emotional awareness often appear distant, making trust difficult to establish and sustain.

In an era of advanced technologies such as AI, automation and chatbots, there is a prevailing fear about technology overtaking the human role. It is the leadership’s responsibility to instil confidence in people that technologies are designed to enhance human capability, not to diminish it. Technology must be positioned as an enabler. Even though the pace of this transformation can be exhausting, leaders must navigate this challenge with renewed energy and a clear strategy to guide their organisations.

Today, leadership that is adaptable, collaborative, and emotionally aware is proving far more effective than traditional command-and-control models. The transition is from exercising authority to creating genuine connections. Strong leaders integrate change into their strategies while keeping people at the centre of their organisations, while viewing technological innovations as a partner rather than a threat.

Investing in people is not optional, as roles continue to evolve and skill requirements change.  Our colleagues must feel valued and supported, as recognition and empathy contribute to boosting engagement and innovation. Empathic leadership helps bridge the gap between market demands and individual needs. Listening with intent, understanding context and responding with genuine concern are no longer additional qualities, they are essential leadership competencies.

The future belongs to leaders who blend clear thinking with empathy, who remain grounded in the present while envisioning bold possibilities and driving innovation forward without eroding trust. In this AI-driven age, success depends on how leaders balance innovation with trust. Leadership is neither about resisting change nor surrendering to it entirely. It is the ability to guide people through uncertainty with emotional depth and stability, recognising that true authority is not earned through control, but through the strength of human connection.

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PLAUD Note Pro: This Tiny AI Recorder Might Be the Smartest Life Upgrade You Make!

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By Srijith KN

I’ve been using the Plaud Note Pro for over three months now, and this is a device that has quietly earned a permanent place in my daily life now. Let me walk you through what it does—and why I say that so?

Well at first I thought this wasn’t going to do much with my life, and by the looks of it Plaud Note Pro looks like a tiny, card-sized gadget—minimal, unobtrusive to carry it around.

With a single press of the top button, it starts recording meetings, classes, interviews, or discussions. Once you end your session, the audio is seamlessly transferred to the Plaud app on your phone, where it’s transformed into structured outputs—summaries, action lists, mind maps, and more.

In essence, it’s a capture device that takes care of one part of your work so you can concentrate on the bigger game.

Design-wise, the device feels premium, it features a small display that shows battery level, recording status, and transfer progress—just enough information without distraction. The ripple-textured finish looks elegant and feels solid, paired with a clean, responsive button. It also comes with a magnetic case that snaps securely onto the back of your phone, sitting flush and tight, making it easy to carry around without thinking twice.

Battery life is another standout. On a full charge, the Plaud Note Pro can last up to 60 days, even with frequent, long recording sessions. Charging anxiety simply doesn’t exist here.

Well, my impressions about the device changed once I had an audio captured. I tested this in a busy press conference setting—eight to ten journalists around me, multiple voices, ambient noise—and the recording came out sharp and clear. Thanks to its four-microphone array, it captures voices clearly from up to four to five meters away, isolating speech with precision and keeping voices naturally forward. This directly translates into cleaner transcripts. It supports 120 languages, and yes, I even tested transcription into Malayalam—it worked remarkably well, condensed the entire convo-interview that I had during an automotive racing show that I was into.

Real meetings or interviews are rarely happens in a neat environment, and that’s where I found the Plaud Note Pro working for me. It captures nuances and details I often miss in the moment. As a journalist, that’s invaluable. The app also allows you to add photos during recordings, enriching your notes with context and visuals.

I tested transferring files over 20 minutes long, and the process was smooth and quick. Accessing the recordings on my PC via the browser was equally intuitive—everything is easy to navigate and well laid out.

Now to what is inside this tiny recorder. Well, the core of the experience is Plaud Intelligence, the AI engine powering all Plaud note-takers. It dynamically routes tasks across OpenAI, Anthropic, and Google’s latest LLMs to deliver professional-grade results. With over 3,000 templates, AI Suggestions, and features like Ask Plaud, the system turns raw conversations into organized, searchable, and actionable insights. These capabilities are available across the Plaud App (iOS and Android) and Plaud Web.

Privacy is what I happen to see them look at seriously. All data is protected under strict compliance standards, including SOC 2, HIPAA, GDPR, and EN18031, ensuring enterprise-grade security.

What makes the AI experience truly effective is the quality of input. Unlike a phone recorder—where notifications, distractions, and inconsistent mic pickup interfere—the Plaud Note Pro does one job and does it exceptionally well. It records cleanly, consistently, and without interruption, delivering what is easily one of the smoothest recording and transcription experiences I’ve used so far.

I’m genuinely curious to see how Plaud evolves this product further. If this is where they are today, the next version should be very interesting indeed.



“The Plaud Note Pro isn’t just a recorder; it’s a pocket-sized thinking partner that captures the details so you can think bigger, clearer, and faster.”

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