• In a world where programmers chase perfection, the humble beauty of Perl fades into the shadows. Once a language that embraced the chaos of human creativity, it now feels like a distant memory, lost in the relentless pursuit of more polished code. The warmth of imperfection and the messiness of our humanity seem to vanish, leaving behind a cold, sterile environment. I find myself alone in this digital void, longing for the days when coding was an art, not a competition. The echoes of forgotten lines whisper tales of connection, now silenced by the sterile click of keys. Where did the heart go?

    #Perl #Programming #Loneliness #HumanTouch #EmotionalCoding
    In a world where programmers chase perfection, the humble beauty of Perl fades into the shadows. Once a language that embraced the chaos of human creativity, it now feels like a distant memory, lost in the relentless pursuit of more polished code. The warmth of imperfection and the messiness of our humanity seem to vanish, leaving behind a cold, sterile environment. I find myself alone in this digital void, longing for the days when coding was an art, not a competition. The echoes of forgotten lines whisper tales of connection, now silenced by the sterile click of keys. Where did the heart go? 💔 #Perl #Programming #Loneliness #HumanTouch #EmotionalCoding
    Programmers Aren’t So Humble Anymore—Maybe Because Nobody Codes in Perl
    Perl is a messy, maddening programming language, the “duct tape of the internet.” But at least you can tell it was made by humans.
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  • Zwift: a supposed revolution in training, but what a colossal letdown it has become! Since its launch in 2014, this so-called innovative platform has been plagued with technical errors and frustrating glitches that ruin the experience for users. It’s unacceptable that after nearly a decade, Zwift still can’t provide a seamless workout environment! Instead of enhancing our training, it has turned into a digital nightmare filled with bugs and connectivity issues. Why should we pay for an application that can’t even function properly? It’s time to demand accountability from Zwift and stop accepting mediocrity as the norm. Enough is enough!

    #ZwiftFail #TrainingNightmare #TechDisaster #VirtualReality #Accountability
    Zwift: a supposed revolution in training, but what a colossal letdown it has become! Since its launch in 2014, this so-called innovative platform has been plagued with technical errors and frustrating glitches that ruin the experience for users. It’s unacceptable that after nearly a decade, Zwift still can’t provide a seamless workout environment! Instead of enhancing our training, it has turned into a digital nightmare filled with bugs and connectivity issues. Why should we pay for an application that can’t even function properly? It’s time to demand accountability from Zwift and stop accepting mediocrity as the norm. Enough is enough! #ZwiftFail #TrainingNightmare #TechDisaster #VirtualReality #Accountability
    Zwift : tout ce que vous devez savoir sur l’application
    Zwift a connu un franc succès depuis sa sortie en 2014. Cette plateforme d’entraînement et […] Cet article Zwift : tout ce que vous devez savoir sur l’application a été publié sur REALITE-VIRTUELLE.COM.
    1 Комментарии 0 Поделились 0 предпросмотр
  • مرحبًا أصدقائي!

    أحب أن أشارككم خبرًا رائعًا! تعاونت Hyperlite Mountain Gear مع Dyneema لإنتاج مادة مركبة جديدة خفيفة، قوية، وأكثر متانة من أي وقت مضى! الآن يمكنكم الاستمتاع برحلاتكم في أحضان الطبيعة مع حقائب ظهر أخف وزناً، مما يتيح لكم تحقيق المزيد من المغامرات!

    تذكروا، كل خطوة تأخذونها نحو الطموحات الجديدة تزيد من قوتكم وتفتح أمامكم آفاقًا جديدة! دعونا نستمتع بكل لحظة، ونجعل من كل رحلة تجربة لا تُنسى
    🌟✨ مرحبًا أصدقائي! 🌟✨ أحب أن أشارككم خبرًا رائعًا! تعاونت Hyperlite Mountain Gear مع Dyneema لإنتاج مادة مركبة جديدة خفيفة، قوية، وأكثر متانة من أي وقت مضى! 😍💪 الآن يمكنكم الاستمتاع برحلاتكم في أحضان الطبيعة مع حقائب ظهر أخف وزناً، مما يتيح لكم تحقيق المزيد من المغامرات! 🚵‍♂️🌄 تذكروا، كل خطوة تأخذونها نحو الطموحات الجديدة تزيد من قوتكم وتفتح أمامكم آفاقًا جديدة! دعونا نستمتع بكل لحظة، ونجعل من كل رحلة تجربة لا تُنسى
    Dyneema’s New Fiber Composite Is Lighter, Stronger, and More Durable Than Ever
    Hyperlite Mountain Gear and Dyneema collaborate on lighter, more durable hiking backpacks, which lets you put even more Dyneema on your Dyneema.
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  • Blender 4.5 LTS est censé être une avancée dans le monde du logiciel 3D open-source, mais laissez-moi vous dire à quel point c'est une blague ! Oui, il y a un prétendu support complet de Vulkan, mais qu'en est-il des fonctionnalités qui sont réellement utiles ? Le nouvel importateur FBX, par exemple, est loin d'être à la hauteur des attentes. Au lieu de se concentrer sur des "perles cachées", pourquoi ne pas corriger les problèmes majeurs qui persistent depuis des années ? C'est inacceptable de sortir une mise à jour avec des améliorations superficielles pendant que les utilisateurs luttent avec des bugs fondamentaux. C'est une déception monument
    Blender 4.5 LTS est censé être une avancée dans le monde du logiciel 3D open-source, mais laissez-moi vous dire à quel point c'est une blague ! Oui, il y a un prétendu support complet de Vulkan, mais qu'en est-il des fonctionnalités qui sont réellement utiles ? Le nouvel importateur FBX, par exemple, est loin d'être à la hauteur des attentes. Au lieu de se concentrer sur des "perles cachées", pourquoi ne pas corriger les problèmes majeurs qui persistent depuis des années ? C'est inacceptable de sortir une mise à jour avec des améliorations superficielles pendant que les utilisateurs luttent avec des bugs fondamentaux. C'est une déception monument
    Blender 4.5 LTS is out: check out its 5 key features
    Read our pick of the latest features in the open-source 3D software, from full Vulkan support to hidden gems like the new FBX importer.
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  • What a joke! An "open-concept 3D printer using cantilever arms"? Seriously? If you're trying to avoid the limitations of a cubic frame, why on Earth would you settle for a design that screams mediocrity? This half-baked solution is just another attempt to peddle expensive gimmicks instead of real innovation. We need more from 3D printing technology, not this pathetic excuse of a design that doesn't even utilize a bed-slinger properly. It's 2023—step up your game or get out of the way!

    #3DPrinting #CantileverArms #TechInnovation #OpenConcept #DesignFail
    What a joke! An "open-concept 3D printer using cantilever arms"? Seriously? If you're trying to avoid the limitations of a cubic frame, why on Earth would you settle for a design that screams mediocrity? This half-baked solution is just another attempt to peddle expensive gimmicks instead of real innovation. We need more from 3D printing technology, not this pathetic excuse of a design that doesn't even utilize a bed-slinger properly. It's 2023—step up your game or get out of the way! #3DPrinting #CantileverArms #TechInnovation #OpenConcept #DesignFail
    HACKADAY.COM
    An Open-Concept 3D Printer Using Cantilever Arms
    If you’re looking for a more open, unenclosed 3D printer design than a cubic frame can accommodate, but don’t want to use a bed-slinger, you don’t have many options. [Boothy …read more
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  • Why are we still struggling with merging Google Business Profiles? It’s 2023, and yet businesses are still losing reviews, traffic, and visibility due to duplicate profiles! It’s a complete failure on Google’s part to address this issue properly. The so-called “guidelines” for merging profiles are vague and leave businesses in a state of confusion. Why should entrepreneurs have to jump through hoops just to consolidate their presence online? It’s infuriating! If you care about your business, now is the time to demand better support from Google. Stop accepting mediocrity and hold them accountable for this ridiculous mess!

    #GoogleBusiness #ProfileMerge #BusinessVisibility #TechFail #Frustration
    Why are we still struggling with merging Google Business Profiles? It’s 2023, and yet businesses are still losing reviews, traffic, and visibility due to duplicate profiles! It’s a complete failure on Google’s part to address this issue properly. The so-called “guidelines” for merging profiles are vague and leave businesses in a state of confusion. Why should entrepreneurs have to jump through hoops just to consolidate their presence online? It’s infuriating! If you care about your business, now is the time to demand better support from Google. Stop accepting mediocrity and hold them accountable for this ridiculous mess! #GoogleBusiness #ProfileMerge #BusinessVisibility #TechFail #Frustration
    WWW.SEMRUSH.COM
    How to Merge Google Business Profiles (and When You Shouldn’t)
    Learn when and how to merge duplicate Google Business Profiles without losing reviews, traffic, or visibility.
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  • Hey everyone! Have you ever thought about diving into the exciting world of VR? Watching VR porn is a thrilling experience that’s gaining popularity, and it’s never been more accessible! Whether you’re curious or just looking for a new adventure, exploring this innovative technology can open up a whole new realm of sensations!

    The key to enjoying VR porn lies in understanding how to set it up properly. So, let’s embrace this journey together and make the most out of this immersive experience! Remember, the possibilities are endless when you allow yourself to explore!

    Stay curious, stay adventurous!

    #VRporn #VirtualReality #ExploreTheNew #PositiveVibes #EmbraceAdventure
    🌟 Hey everyone! Have you ever thought about diving into the exciting world of VR? 🌈 Watching VR porn is a thrilling experience that’s gaining popularity, and it’s never been more accessible! 🎉 Whether you’re curious or just looking for a new adventure, exploring this innovative technology can open up a whole new realm of sensations! 🌌 The key to enjoying VR porn lies in understanding how to set it up properly. So, let’s embrace this journey together and make the most out of this immersive experience! 🚀 Remember, the possibilities are endless when you allow yourself to explore! Stay curious, stay adventurous! 💖 #VRporn #VirtualReality #ExploreTheNew #PositiveVibes #EmbraceAdventure
    Regarder du porn VR : comment faire ? - juillet 2025
    Regarder du porno en VR séduit actuellement de plus en plus de monde, même les […] Cet article Regarder du porn VR : comment faire ? - juillet 2025 a été publié sur REALITE-VIRTUELLE.COM.
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  • Why is it so hard for people to grasp the absolute necessity of setting up 301 redirects in an .htaccess file? Honestly, it’s infuriating! We’re in a digital age where every click counts, and yet, so many website owners continue to neglect this vital aspect of web management. Why? Because they’re either too lazy to learn or they just don’t care about preserving their ranking authority!

    Let’s get one thing straight: if you think you can just change URLs and your content magically stays relevant, you’re living in a fantasy world! When you fail to implement 301 redirects properly, you’re not just risking your SEO; you’re throwing away all the hard work you’ve put into building your online presence. It’s like setting fire to a pile of money because you couldn’t be bothered to use a fire extinguisher. Ridiculous!

    The process of adding 301 redirects in .htaccess files is straightforward. It’s not rocket science, people! You have two methods at your disposal, and yet countless websites are still losing traffic and authority daily because their owners can’t figure it out. You would think that in a realm where every detail matters, folks would prioritize understanding how to maintain their site’s integrity. But no! Instead, they leave their sites vulnerable, confused visitors, and plunging search rankings in their wake.

    If you’re still scratching your head over how to set up 301 redirects in an .htaccess file, wake up! The first method is simply to use the `RedirectPermanent` directive. It’s right there for you, and it’s as easy as pie. You just need to specify the old URL and the new URL, and boom! You’re done. Or, if you’re feeling fancy, the second method involves using the `RewriteRule` directive. Again, it’s not complicated! Just a few lines of code, and you’re on your way to preserving that precious ranking authority.

    What’s more infuriating is when people rush into updating their websites without even considering the fallout of their actions. Do you think Google is going to give you a free pass for being reckless? No! It will punish you for not taking the necessary precautions. Imagine losing all that traffic you worked so hard to get, just because you couldn’t be bothered to set up a simple redirect. Pathetic!

    Let’s not even begin to talk about the customer experience. When users click on a link and end up on a 404 error page because you didn’t implement a 301 redirect, that’s a surefire way to lose their trust and business. Do you really want to be known as the website that provides a dead-end for visitors? Absolutely not! So, for the love of all that is holy in the digital world, get your act together and learn how to set up those redirects!

    In conclusion, if you’re still ignoring the importance of 301 redirects in your .htaccess file, you’re not just being negligent; you’re actively sabotaging your own success. Stop making excuses, roll up your sleeves, and do what needs to be done. Your website deserves better!

    #301Redirects #SEO #WebManagement #DigitalMarketing #htaccess
    Why is it so hard for people to grasp the absolute necessity of setting up 301 redirects in an .htaccess file? Honestly, it’s infuriating! We’re in a digital age where every click counts, and yet, so many website owners continue to neglect this vital aspect of web management. Why? Because they’re either too lazy to learn or they just don’t care about preserving their ranking authority! Let’s get one thing straight: if you think you can just change URLs and your content magically stays relevant, you’re living in a fantasy world! When you fail to implement 301 redirects properly, you’re not just risking your SEO; you’re throwing away all the hard work you’ve put into building your online presence. It’s like setting fire to a pile of money because you couldn’t be bothered to use a fire extinguisher. Ridiculous! The process of adding 301 redirects in .htaccess files is straightforward. It’s not rocket science, people! You have two methods at your disposal, and yet countless websites are still losing traffic and authority daily because their owners can’t figure it out. You would think that in a realm where every detail matters, folks would prioritize understanding how to maintain their site’s integrity. But no! Instead, they leave their sites vulnerable, confused visitors, and plunging search rankings in their wake. If you’re still scratching your head over how to set up 301 redirects in an .htaccess file, wake up! The first method is simply to use the `RedirectPermanent` directive. It’s right there for you, and it’s as easy as pie. You just need to specify the old URL and the new URL, and boom! You’re done. Or, if you’re feeling fancy, the second method involves using the `RewriteRule` directive. Again, it’s not complicated! Just a few lines of code, and you’re on your way to preserving that precious ranking authority. What’s more infuriating is when people rush into updating their websites without even considering the fallout of their actions. Do you think Google is going to give you a free pass for being reckless? No! It will punish you for not taking the necessary precautions. Imagine losing all that traffic you worked so hard to get, just because you couldn’t be bothered to set up a simple redirect. Pathetic! Let’s not even begin to talk about the customer experience. When users click on a link and end up on a 404 error page because you didn’t implement a 301 redirect, that’s a surefire way to lose their trust and business. Do you really want to be known as the website that provides a dead-end for visitors? Absolutely not! So, for the love of all that is holy in the digital world, get your act together and learn how to set up those redirects! In conclusion, if you’re still ignoring the importance of 301 redirects in your .htaccess file, you’re not just being negligent; you’re actively sabotaging your own success. Stop making excuses, roll up your sleeves, and do what needs to be done. Your website deserves better! #301Redirects #SEO #WebManagement #DigitalMarketing #htaccess
    How to Set Up 301 Redirects in an .htaccess File
    Adding 301 redirects in .htaccess files is useful to preserve ranking authority. Here are two methods.
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  • Ankur Kothari Q&A: Customer Engagement Book Interview

    Reading Time: 9 minutes
    In marketing, data isn’t a buzzword. It’s the lifeblood of all successful campaigns.
    But are you truly harnessing its power, or are you drowning in a sea of information? To answer this question, we sat down with Ankur Kothari, a seasoned Martech expert, to dive deep into this crucial topic.
    This interview, originally conducted for Chapter 6 of “The Customer Engagement Book: Adapt or Die” explores how businesses can translate raw data into actionable insights that drive real results.
    Ankur shares his wealth of knowledge on identifying valuable customer engagement data, distinguishing between signal and noise, and ultimately, shaping real-time strategies that keep companies ahead of the curve.

     
    Ankur Kothari Q&A Interview
    1. What types of customer engagement data are most valuable for making strategic business decisions?
    Primarily, there are four different buckets of customer engagement data. I would begin with behavioral data, encompassing website interaction, purchase history, and other app usage patterns.
    Second would be demographic information: age, location, income, and other relevant personal characteristics.
    Third would be sentiment analysis, where we derive information from social media interaction, customer feedback, or other customer reviews.
    Fourth would be the customer journey data.

    We track touchpoints across various channels of the customers to understand the customer journey path and conversion. Combining these four primary sources helps us understand the engagement data.

    2. How do you distinguish between data that is actionable versus data that is just noise?
    First is keeping relevant to your business objectives, making actionable data that directly relates to your specific goals or KPIs, and then taking help from statistical significance.
    Actionable data shows clear patterns or trends that are statistically valid, whereas other data consists of random fluctuations or outliers, which may not be what you are interested in.

    You also want to make sure that there is consistency across sources.
    Actionable insights are typically corroborated by multiple data points or channels, while other data or noise can be more isolated and contradictory.
    Actionable data suggests clear opportunities for improvement or decision making, whereas noise does not lead to meaningful actions or changes in strategy.

    By applying these criteria, I can effectively filter out the noise and focus on data that delivers or drives valuable business decisions.

    3. How can customer engagement data be used to identify and prioritize new business opportunities?
    First, it helps us to uncover unmet needs.

    By analyzing the customer feedback, touch points, support interactions, or usage patterns, we can identify the gaps in our current offerings or areas where customers are experiencing pain points.

    Second would be identifying emerging needs.
    Monitoring changes in customer behavior or preferences over time can reveal new market trends or shifts in demand, allowing my company to adapt their products or services accordingly.
    Third would be segmentation analysis.
    Detailed customer data analysis enables us to identify unserved or underserved segments or niche markets that may represent untapped opportunities for growth or expansion into newer areas and new geographies.
    Last is to build competitive differentiation.

    Engagement data can highlight where our companies outperform competitors, helping us to prioritize opportunities that leverage existing strengths and unique selling propositions.

    4. Can you share an example of where data insights directly influenced a critical decision?
    I will share an example from my previous organization at one of the financial services where we were very data-driven, which made a major impact on our critical decision regarding our credit card offerings.
    We analyzed the customer engagement data, and we discovered that a large segment of our millennial customers were underutilizing our traditional credit cards but showed high engagement with mobile payment platforms.
    That insight led us to develop and launch our first digital credit card product with enhanced mobile features and rewards tailored to the millennial spending habits. Since we had access to a lot of transactional data as well, we were able to build a financial product which met that specific segment’s needs.

    That data-driven decision resulted in a 40% increase in our new credit card applications from this demographic within the first quarter of the launch. Subsequently, our market share improved in that specific segment, which was very crucial.

    5. Are there any other examples of ways that you see customer engagement data being able to shape marketing strategy in real time?
    When it comes to using the engagement data in real-time, we do quite a few things. In the recent past two, three years, we are using that for dynamic content personalization, adjusting the website content, email messaging, or ad creative based on real-time user behavior and preferences.
    We automate campaign optimization using specific AI-driven tools to continuously analyze performance metrics and automatically reallocate the budget to top-performing channels or ad segments.
    Then we also build responsive social media engagement platforms like monitoring social media sentiments and trending topics to quickly adapt the messaging and create timely and relevant content.

    With one-on-one personalization, we do a lot of A/B testing as part of the overall rapid testing and market elements like subject lines, CTAs, and building various successful variants of the campaigns.

    6. How are you doing the 1:1 personalization?
    We have advanced CDP systems, and we are tracking each customer’s behavior in real-time. So the moment they move to different channels, we know what the context is, what the relevance is, and the recent interaction points, so we can cater the right offer.
    So for example, if you looked at a certain offer on the website and you came from Google, and then the next day you walk into an in-person interaction, our agent will already know that you were looking at that offer.
    That gives our customer or potential customer more one-to-one personalization instead of just segment-based or bulk interaction kind of experience.

    We have a huge team of data scientists, data analysts, and AI model creators who help us to analyze big volumes of data and bring the right insights to our marketing and sales team so that they can provide the right experience to our customers.

    7. What role does customer engagement data play in influencing cross-functional decisions, such as with product development, sales, and customer service?
    Primarily with product development — we have different products, not just the financial products or products whichever organizations sell, but also various products like mobile apps or websites they use for transactions. So that kind of product development gets improved.
    The engagement data helps our sales and marketing teams create more targeted campaigns, optimize channel selection, and refine messaging to resonate with specific customer segments.

    Customer service also gets helped by anticipating common issues, personalizing support interactions over the phone or email or chat, and proactively addressing potential problems, leading to improved customer satisfaction and retention.

    So in general, cross-functional application of engagement improves the customer-centric approach throughout the organization.

    8. What do you think some of the main challenges marketers face when trying to translate customer engagement data into actionable business insights?
    I think the huge amount of data we are dealing with. As we are getting more digitally savvy and most of the customers are moving to digital channels, we are getting a lot of data, and that sheer volume of data can be overwhelming, making it very difficult to identify truly meaningful patterns and insights.

    Because of the huge data overload, we create data silos in this process, so information often exists in separate systems across different departments. We are not able to build a holistic view of customer engagement.

    Because of data silos and overload of data, data quality issues appear. There is inconsistency, and inaccurate data can lead to incorrect insights or poor decision-making. Quality issues could also be due to the wrong format of the data, or the data is stale and no longer relevant.
    As we are growing and adding more people to help us understand customer engagement, I’ve also noticed that technical folks, especially data scientists and data analysts, lack skills to properly interpret the data or apply data insights effectively.
    So there’s a lack of understanding of marketing and sales as domains.
    It’s a huge effort and can take a lot of investment.

    Not being able to calculate the ROI of your overall investment is a big challenge that many organizations are facing.

    9. Why do you think the analysts don’t have the business acumen to properly do more than analyze the data?
    If people do not have the right idea of why we are collecting this data, we collect a lot of noise, and that brings in huge volumes of data. If you cannot stop that from step one—not bringing noise into the data system—that cannot be done by just technical folks or people who do not have business knowledge.
    Business people do not know everything about what data is being collected from which source and what data they need. It’s a gap between business domain knowledge, specifically marketing and sales needs, and technical folks who don’t have a lot of exposure to that side.

    Similarly, marketing business people do not have much exposure to the technical side — what’s possible to do with data, how much effort it takes, what’s relevant versus not relevant, and how to prioritize which data sources will be most important.

    10. Do you have any suggestions for how this can be overcome, or have you seen it in action where it has been solved before?
    First, cross-functional training: training different roles to help them understand why we’re doing this and what the business goals are, giving technical people exposure to what marketing and sales teams do.
    And giving business folks exposure to the technology side through training on different tools, strategies, and the roadmap of data integrations.
    The second is helping teams work more collaboratively. So it’s not like the technology team works in a silo and comes back when their work is done, and then marketing and sales teams act upon it.

    Now we’re making it more like one team. You work together so that you can complement each other, and we have a better strategy from day one.

    11. How do you address skepticism or resistance from stakeholders when presenting data-driven recommendations?
    We present clear business cases where we demonstrate how data-driven recommendations can directly align with business objectives and potential ROI.
    We build compelling visualizations, easy-to-understand charts and graphs that clearly illustrate the insights and the implications for business goals.

    We also do a lot of POCs and pilot projects with small-scale implementations to showcase tangible results and build confidence in the data-driven approach throughout the organization.

    12. What technologies or tools have you found most effective for gathering and analyzing customer engagement data?
    I’ve found that Customer Data Platforms help us unify customer data from various sources, providing a comprehensive view of customer interactions across touch points.
    Having advanced analytics platforms — tools with AI and machine learning capabilities that can process large volumes of data and uncover complex patterns and insights — is a great value to us.
    We always use, or many organizations use, marketing automation systems to improve marketing team productivity, helping us track and analyze customer interactions across multiple channels.
    Another thing is social media listening tools, wherever your brand is mentioned or you want to measure customer sentiment over social media, or track the engagement of your campaigns across social media platforms.

    Last is web analytical tools, which provide detailed insights into your website visitors’ behaviors and engagement metrics, for browser apps, small browser apps, various devices, and mobile apps.

    13. How do you ensure data quality and consistency across multiple channels to make these informed decisions?
    We established clear guidelines for data collection, storage, and usage across all channels to maintain consistency. Then we use data integration platforms — tools that consolidate data from various sources into a single unified view, reducing discrepancies and inconsistencies.
    While we collect data from different sources, we clean the data so it becomes cleaner with every stage of processing.
    We also conduct regular data audits — performing periodic checks to identify and rectify data quality issues, ensuring accuracy and reliability of information. We also deploy standardized data formats.

    On top of that, we have various automated data cleansing tools, specific software to detect and correct data errors, redundancies, duplicates, and inconsistencies in data sets automatically.

    14. How do you see the role of customer engagement data evolving in shaping business strategies over the next five years?
    The first thing that’s been the biggest trend from the past two years is AI-driven decision making, which I think will become more prevalent, with advanced algorithms processing vast amounts of engagement data in real-time to inform strategic choices.
    Somewhat related to this is predictive analytics, which will play an even larger role, enabling businesses to anticipate customer needs and market trends with more accuracy and better predictive capabilities.
    We also touched upon hyper-personalization. We are all trying to strive toward more hyper-personalization at scale, which is more one-on-one personalization, as we are increasingly capturing more engagement data and have bigger systems and infrastructure to support processing those large volumes of data so we can achieve those hyper-personalization use cases.
    As the world is collecting more data, privacy concerns and regulations come into play.
    I believe in the next few years there will be more innovation toward how businesses can collect data ethically and what the usage practices are, leading to more transparent and consent-based engagement data strategies.
    And lastly, I think about the integration of engagement data, which is always a big challenge. I believe as we’re solving those integration challenges, we are adding more and more complex data sources to the picture.

    So I think there will need to be more innovation or sophistication brought into data integration strategies, which will help us take a truly customer-centric approach to strategy formulation.

     
    This interview Q&A was hosted with Ankur Kothari, a previous Martech Executive, for Chapter 6 of The Customer Engagement Book: Adapt or Die.
    Download the PDF or request a physical copy of the book here.
    The post Ankur Kothari Q&A: Customer Engagement Book Interview appeared first on MoEngage.
    #ankur #kothari #qampampa #customer #engagement
    Ankur Kothari Q&A: Customer Engagement Book Interview
    Reading Time: 9 minutes In marketing, data isn’t a buzzword. It’s the lifeblood of all successful campaigns. But are you truly harnessing its power, or are you drowning in a sea of information? To answer this question, we sat down with Ankur Kothari, a seasoned Martech expert, to dive deep into this crucial topic. This interview, originally conducted for Chapter 6 of “The Customer Engagement Book: Adapt or Die” explores how businesses can translate raw data into actionable insights that drive real results. Ankur shares his wealth of knowledge on identifying valuable customer engagement data, distinguishing between signal and noise, and ultimately, shaping real-time strategies that keep companies ahead of the curve.   Ankur Kothari Q&A Interview 1. What types of customer engagement data are most valuable for making strategic business decisions? Primarily, there are four different buckets of customer engagement data. I would begin with behavioral data, encompassing website interaction, purchase history, and other app usage patterns. Second would be demographic information: age, location, income, and other relevant personal characteristics. Third would be sentiment analysis, where we derive information from social media interaction, customer feedback, or other customer reviews. Fourth would be the customer journey data. We track touchpoints across various channels of the customers to understand the customer journey path and conversion. Combining these four primary sources helps us understand the engagement data. 2. How do you distinguish between data that is actionable versus data that is just noise? First is keeping relevant to your business objectives, making actionable data that directly relates to your specific goals or KPIs, and then taking help from statistical significance. Actionable data shows clear patterns or trends that are statistically valid, whereas other data consists of random fluctuations or outliers, which may not be what you are interested in. You also want to make sure that there is consistency across sources. Actionable insights are typically corroborated by multiple data points or channels, while other data or noise can be more isolated and contradictory. Actionable data suggests clear opportunities for improvement or decision making, whereas noise does not lead to meaningful actions or changes in strategy. By applying these criteria, I can effectively filter out the noise and focus on data that delivers or drives valuable business decisions. 3. How can customer engagement data be used to identify and prioritize new business opportunities? First, it helps us to uncover unmet needs. By analyzing the customer feedback, touch points, support interactions, or usage patterns, we can identify the gaps in our current offerings or areas where customers are experiencing pain points. Second would be identifying emerging needs. Monitoring changes in customer behavior or preferences over time can reveal new market trends or shifts in demand, allowing my company to adapt their products or services accordingly. Third would be segmentation analysis. Detailed customer data analysis enables us to identify unserved or underserved segments or niche markets that may represent untapped opportunities for growth or expansion into newer areas and new geographies. Last is to build competitive differentiation. Engagement data can highlight where our companies outperform competitors, helping us to prioritize opportunities that leverage existing strengths and unique selling propositions. 4. Can you share an example of where data insights directly influenced a critical decision? I will share an example from my previous organization at one of the financial services where we were very data-driven, which made a major impact on our critical decision regarding our credit card offerings. We analyzed the customer engagement data, and we discovered that a large segment of our millennial customers were underutilizing our traditional credit cards but showed high engagement with mobile payment platforms. That insight led us to develop and launch our first digital credit card product with enhanced mobile features and rewards tailored to the millennial spending habits. Since we had access to a lot of transactional data as well, we were able to build a financial product which met that specific segment’s needs. That data-driven decision resulted in a 40% increase in our new credit card applications from this demographic within the first quarter of the launch. Subsequently, our market share improved in that specific segment, which was very crucial. 5. Are there any other examples of ways that you see customer engagement data being able to shape marketing strategy in real time? When it comes to using the engagement data in real-time, we do quite a few things. In the recent past two, three years, we are using that for dynamic content personalization, adjusting the website content, email messaging, or ad creative based on real-time user behavior and preferences. We automate campaign optimization using specific AI-driven tools to continuously analyze performance metrics and automatically reallocate the budget to top-performing channels or ad segments. Then we also build responsive social media engagement platforms like monitoring social media sentiments and trending topics to quickly adapt the messaging and create timely and relevant content. With one-on-one personalization, we do a lot of A/B testing as part of the overall rapid testing and market elements like subject lines, CTAs, and building various successful variants of the campaigns. 6. How are you doing the 1:1 personalization? We have advanced CDP systems, and we are tracking each customer’s behavior in real-time. So the moment they move to different channels, we know what the context is, what the relevance is, and the recent interaction points, so we can cater the right offer. So for example, if you looked at a certain offer on the website and you came from Google, and then the next day you walk into an in-person interaction, our agent will already know that you were looking at that offer. That gives our customer or potential customer more one-to-one personalization instead of just segment-based or bulk interaction kind of experience. We have a huge team of data scientists, data analysts, and AI model creators who help us to analyze big volumes of data and bring the right insights to our marketing and sales team so that they can provide the right experience to our customers. 7. What role does customer engagement data play in influencing cross-functional decisions, such as with product development, sales, and customer service? Primarily with product development — we have different products, not just the financial products or products whichever organizations sell, but also various products like mobile apps or websites they use for transactions. So that kind of product development gets improved. The engagement data helps our sales and marketing teams create more targeted campaigns, optimize channel selection, and refine messaging to resonate with specific customer segments. Customer service also gets helped by anticipating common issues, personalizing support interactions over the phone or email or chat, and proactively addressing potential problems, leading to improved customer satisfaction and retention. So in general, cross-functional application of engagement improves the customer-centric approach throughout the organization. 8. What do you think some of the main challenges marketers face when trying to translate customer engagement data into actionable business insights? I think the huge amount of data we are dealing with. As we are getting more digitally savvy and most of the customers are moving to digital channels, we are getting a lot of data, and that sheer volume of data can be overwhelming, making it very difficult to identify truly meaningful patterns and insights. Because of the huge data overload, we create data silos in this process, so information often exists in separate systems across different departments. We are not able to build a holistic view of customer engagement. Because of data silos and overload of data, data quality issues appear. There is inconsistency, and inaccurate data can lead to incorrect insights or poor decision-making. Quality issues could also be due to the wrong format of the data, or the data is stale and no longer relevant. As we are growing and adding more people to help us understand customer engagement, I’ve also noticed that technical folks, especially data scientists and data analysts, lack skills to properly interpret the data or apply data insights effectively. So there’s a lack of understanding of marketing and sales as domains. It’s a huge effort and can take a lot of investment. Not being able to calculate the ROI of your overall investment is a big challenge that many organizations are facing. 9. Why do you think the analysts don’t have the business acumen to properly do more than analyze the data? If people do not have the right idea of why we are collecting this data, we collect a lot of noise, and that brings in huge volumes of data. If you cannot stop that from step one—not bringing noise into the data system—that cannot be done by just technical folks or people who do not have business knowledge. Business people do not know everything about what data is being collected from which source and what data they need. It’s a gap between business domain knowledge, specifically marketing and sales needs, and technical folks who don’t have a lot of exposure to that side. Similarly, marketing business people do not have much exposure to the technical side — what’s possible to do with data, how much effort it takes, what’s relevant versus not relevant, and how to prioritize which data sources will be most important. 10. Do you have any suggestions for how this can be overcome, or have you seen it in action where it has been solved before? First, cross-functional training: training different roles to help them understand why we’re doing this and what the business goals are, giving technical people exposure to what marketing and sales teams do. And giving business folks exposure to the technology side through training on different tools, strategies, and the roadmap of data integrations. The second is helping teams work more collaboratively. So it’s not like the technology team works in a silo and comes back when their work is done, and then marketing and sales teams act upon it. Now we’re making it more like one team. You work together so that you can complement each other, and we have a better strategy from day one. 11. How do you address skepticism or resistance from stakeholders when presenting data-driven recommendations? We present clear business cases where we demonstrate how data-driven recommendations can directly align with business objectives and potential ROI. We build compelling visualizations, easy-to-understand charts and graphs that clearly illustrate the insights and the implications for business goals. We also do a lot of POCs and pilot projects with small-scale implementations to showcase tangible results and build confidence in the data-driven approach throughout the organization. 12. What technologies or tools have you found most effective for gathering and analyzing customer engagement data? I’ve found that Customer Data Platforms help us unify customer data from various sources, providing a comprehensive view of customer interactions across touch points. Having advanced analytics platforms — tools with AI and machine learning capabilities that can process large volumes of data and uncover complex patterns and insights — is a great value to us. We always use, or many organizations use, marketing automation systems to improve marketing team productivity, helping us track and analyze customer interactions across multiple channels. Another thing is social media listening tools, wherever your brand is mentioned or you want to measure customer sentiment over social media, or track the engagement of your campaigns across social media platforms. Last is web analytical tools, which provide detailed insights into your website visitors’ behaviors and engagement metrics, for browser apps, small browser apps, various devices, and mobile apps. 13. How do you ensure data quality and consistency across multiple channels to make these informed decisions? We established clear guidelines for data collection, storage, and usage across all channels to maintain consistency. Then we use data integration platforms — tools that consolidate data from various sources into a single unified view, reducing discrepancies and inconsistencies. While we collect data from different sources, we clean the data so it becomes cleaner with every stage of processing. We also conduct regular data audits — performing periodic checks to identify and rectify data quality issues, ensuring accuracy and reliability of information. We also deploy standardized data formats. On top of that, we have various automated data cleansing tools, specific software to detect and correct data errors, redundancies, duplicates, and inconsistencies in data sets automatically. 14. How do you see the role of customer engagement data evolving in shaping business strategies over the next five years? The first thing that’s been the biggest trend from the past two years is AI-driven decision making, which I think will become more prevalent, with advanced algorithms processing vast amounts of engagement data in real-time to inform strategic choices. Somewhat related to this is predictive analytics, which will play an even larger role, enabling businesses to anticipate customer needs and market trends with more accuracy and better predictive capabilities. We also touched upon hyper-personalization. We are all trying to strive toward more hyper-personalization at scale, which is more one-on-one personalization, as we are increasingly capturing more engagement data and have bigger systems and infrastructure to support processing those large volumes of data so we can achieve those hyper-personalization use cases. As the world is collecting more data, privacy concerns and regulations come into play. I believe in the next few years there will be more innovation toward how businesses can collect data ethically and what the usage practices are, leading to more transparent and consent-based engagement data strategies. And lastly, I think about the integration of engagement data, which is always a big challenge. I believe as we’re solving those integration challenges, we are adding more and more complex data sources to the picture. So I think there will need to be more innovation or sophistication brought into data integration strategies, which will help us take a truly customer-centric approach to strategy formulation.   This interview Q&A was hosted with Ankur Kothari, a previous Martech Executive, for Chapter 6 of The Customer Engagement Book: Adapt or Die. Download the PDF or request a physical copy of the book here. The post Ankur Kothari Q&A: Customer Engagement Book Interview appeared first on MoEngage. #ankur #kothari #qampampa #customer #engagement
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    Ankur Kothari Q&A: Customer Engagement Book Interview
    Reading Time: 9 minutes In marketing, data isn’t a buzzword. It’s the lifeblood of all successful campaigns. But are you truly harnessing its power, or are you drowning in a sea of information? To answer this question (and many others), we sat down with Ankur Kothari, a seasoned Martech expert, to dive deep into this crucial topic. This interview, originally conducted for Chapter 6 of “The Customer Engagement Book: Adapt or Die” explores how businesses can translate raw data into actionable insights that drive real results. Ankur shares his wealth of knowledge on identifying valuable customer engagement data, distinguishing between signal and noise, and ultimately, shaping real-time strategies that keep companies ahead of the curve.   Ankur Kothari Q&A Interview 1. What types of customer engagement data are most valuable for making strategic business decisions? Primarily, there are four different buckets of customer engagement data. I would begin with behavioral data, encompassing website interaction, purchase history, and other app usage patterns. Second would be demographic information: age, location, income, and other relevant personal characteristics. Third would be sentiment analysis, where we derive information from social media interaction, customer feedback, or other customer reviews. Fourth would be the customer journey data. We track touchpoints across various channels of the customers to understand the customer journey path and conversion. Combining these four primary sources helps us understand the engagement data. 2. How do you distinguish between data that is actionable versus data that is just noise? First is keeping relevant to your business objectives, making actionable data that directly relates to your specific goals or KPIs, and then taking help from statistical significance. Actionable data shows clear patterns or trends that are statistically valid, whereas other data consists of random fluctuations or outliers, which may not be what you are interested in. You also want to make sure that there is consistency across sources. Actionable insights are typically corroborated by multiple data points or channels, while other data or noise can be more isolated and contradictory. Actionable data suggests clear opportunities for improvement or decision making, whereas noise does not lead to meaningful actions or changes in strategy. By applying these criteria, I can effectively filter out the noise and focus on data that delivers or drives valuable business decisions. 3. How can customer engagement data be used to identify and prioritize new business opportunities? First, it helps us to uncover unmet needs. By analyzing the customer feedback, touch points, support interactions, or usage patterns, we can identify the gaps in our current offerings or areas where customers are experiencing pain points. Second would be identifying emerging needs. Monitoring changes in customer behavior or preferences over time can reveal new market trends or shifts in demand, allowing my company to adapt their products or services accordingly. Third would be segmentation analysis. Detailed customer data analysis enables us to identify unserved or underserved segments or niche markets that may represent untapped opportunities for growth or expansion into newer areas and new geographies. Last is to build competitive differentiation. Engagement data can highlight where our companies outperform competitors, helping us to prioritize opportunities that leverage existing strengths and unique selling propositions. 4. Can you share an example of where data insights directly influenced a critical decision? I will share an example from my previous organization at one of the financial services where we were very data-driven, which made a major impact on our critical decision regarding our credit card offerings. We analyzed the customer engagement data, and we discovered that a large segment of our millennial customers were underutilizing our traditional credit cards but showed high engagement with mobile payment platforms. That insight led us to develop and launch our first digital credit card product with enhanced mobile features and rewards tailored to the millennial spending habits. Since we had access to a lot of transactional data as well, we were able to build a financial product which met that specific segment’s needs. That data-driven decision resulted in a 40% increase in our new credit card applications from this demographic within the first quarter of the launch. Subsequently, our market share improved in that specific segment, which was very crucial. 5. Are there any other examples of ways that you see customer engagement data being able to shape marketing strategy in real time? When it comes to using the engagement data in real-time, we do quite a few things. In the recent past two, three years, we are using that for dynamic content personalization, adjusting the website content, email messaging, or ad creative based on real-time user behavior and preferences. We automate campaign optimization using specific AI-driven tools to continuously analyze performance metrics and automatically reallocate the budget to top-performing channels or ad segments. Then we also build responsive social media engagement platforms like monitoring social media sentiments and trending topics to quickly adapt the messaging and create timely and relevant content. With one-on-one personalization, we do a lot of A/B testing as part of the overall rapid testing and market elements like subject lines, CTAs, and building various successful variants of the campaigns. 6. How are you doing the 1:1 personalization? We have advanced CDP systems, and we are tracking each customer’s behavior in real-time. So the moment they move to different channels, we know what the context is, what the relevance is, and the recent interaction points, so we can cater the right offer. So for example, if you looked at a certain offer on the website and you came from Google, and then the next day you walk into an in-person interaction, our agent will already know that you were looking at that offer. That gives our customer or potential customer more one-to-one personalization instead of just segment-based or bulk interaction kind of experience. We have a huge team of data scientists, data analysts, and AI model creators who help us to analyze big volumes of data and bring the right insights to our marketing and sales team so that they can provide the right experience to our customers. 7. What role does customer engagement data play in influencing cross-functional decisions, such as with product development, sales, and customer service? Primarily with product development — we have different products, not just the financial products or products whichever organizations sell, but also various products like mobile apps or websites they use for transactions. So that kind of product development gets improved. The engagement data helps our sales and marketing teams create more targeted campaigns, optimize channel selection, and refine messaging to resonate with specific customer segments. Customer service also gets helped by anticipating common issues, personalizing support interactions over the phone or email or chat, and proactively addressing potential problems, leading to improved customer satisfaction and retention. So in general, cross-functional application of engagement improves the customer-centric approach throughout the organization. 8. What do you think some of the main challenges marketers face when trying to translate customer engagement data into actionable business insights? I think the huge amount of data we are dealing with. As we are getting more digitally savvy and most of the customers are moving to digital channels, we are getting a lot of data, and that sheer volume of data can be overwhelming, making it very difficult to identify truly meaningful patterns and insights. Because of the huge data overload, we create data silos in this process, so information often exists in separate systems across different departments. We are not able to build a holistic view of customer engagement. Because of data silos and overload of data, data quality issues appear. There is inconsistency, and inaccurate data can lead to incorrect insights or poor decision-making. Quality issues could also be due to the wrong format of the data, or the data is stale and no longer relevant. As we are growing and adding more people to help us understand customer engagement, I’ve also noticed that technical folks, especially data scientists and data analysts, lack skills to properly interpret the data or apply data insights effectively. So there’s a lack of understanding of marketing and sales as domains. It’s a huge effort and can take a lot of investment. Not being able to calculate the ROI of your overall investment is a big challenge that many organizations are facing. 9. Why do you think the analysts don’t have the business acumen to properly do more than analyze the data? If people do not have the right idea of why we are collecting this data, we collect a lot of noise, and that brings in huge volumes of data. If you cannot stop that from step one—not bringing noise into the data system—that cannot be done by just technical folks or people who do not have business knowledge. Business people do not know everything about what data is being collected from which source and what data they need. It’s a gap between business domain knowledge, specifically marketing and sales needs, and technical folks who don’t have a lot of exposure to that side. Similarly, marketing business people do not have much exposure to the technical side — what’s possible to do with data, how much effort it takes, what’s relevant versus not relevant, and how to prioritize which data sources will be most important. 10. Do you have any suggestions for how this can be overcome, or have you seen it in action where it has been solved before? First, cross-functional training: training different roles to help them understand why we’re doing this and what the business goals are, giving technical people exposure to what marketing and sales teams do. And giving business folks exposure to the technology side through training on different tools, strategies, and the roadmap of data integrations. The second is helping teams work more collaboratively. So it’s not like the technology team works in a silo and comes back when their work is done, and then marketing and sales teams act upon it. Now we’re making it more like one team. You work together so that you can complement each other, and we have a better strategy from day one. 11. How do you address skepticism or resistance from stakeholders when presenting data-driven recommendations? We present clear business cases where we demonstrate how data-driven recommendations can directly align with business objectives and potential ROI. We build compelling visualizations, easy-to-understand charts and graphs that clearly illustrate the insights and the implications for business goals. We also do a lot of POCs and pilot projects with small-scale implementations to showcase tangible results and build confidence in the data-driven approach throughout the organization. 12. What technologies or tools have you found most effective for gathering and analyzing customer engagement data? I’ve found that Customer Data Platforms help us unify customer data from various sources, providing a comprehensive view of customer interactions across touch points. Having advanced analytics platforms — tools with AI and machine learning capabilities that can process large volumes of data and uncover complex patterns and insights — is a great value to us. We always use, or many organizations use, marketing automation systems to improve marketing team productivity, helping us track and analyze customer interactions across multiple channels. Another thing is social media listening tools, wherever your brand is mentioned or you want to measure customer sentiment over social media, or track the engagement of your campaigns across social media platforms. Last is web analytical tools, which provide detailed insights into your website visitors’ behaviors and engagement metrics, for browser apps, small browser apps, various devices, and mobile apps. 13. How do you ensure data quality and consistency across multiple channels to make these informed decisions? We established clear guidelines for data collection, storage, and usage across all channels to maintain consistency. Then we use data integration platforms — tools that consolidate data from various sources into a single unified view, reducing discrepancies and inconsistencies. While we collect data from different sources, we clean the data so it becomes cleaner with every stage of processing. We also conduct regular data audits — performing periodic checks to identify and rectify data quality issues, ensuring accuracy and reliability of information. We also deploy standardized data formats. On top of that, we have various automated data cleansing tools, specific software to detect and correct data errors, redundancies, duplicates, and inconsistencies in data sets automatically. 14. How do you see the role of customer engagement data evolving in shaping business strategies over the next five years? The first thing that’s been the biggest trend from the past two years is AI-driven decision making, which I think will become more prevalent, with advanced algorithms processing vast amounts of engagement data in real-time to inform strategic choices. Somewhat related to this is predictive analytics, which will play an even larger role, enabling businesses to anticipate customer needs and market trends with more accuracy and better predictive capabilities. We also touched upon hyper-personalization. We are all trying to strive toward more hyper-personalization at scale, which is more one-on-one personalization, as we are increasingly capturing more engagement data and have bigger systems and infrastructure to support processing those large volumes of data so we can achieve those hyper-personalization use cases. As the world is collecting more data, privacy concerns and regulations come into play. I believe in the next few years there will be more innovation toward how businesses can collect data ethically and what the usage practices are, leading to more transparent and consent-based engagement data strategies. And lastly, I think about the integration of engagement data, which is always a big challenge. I believe as we’re solving those integration challenges, we are adding more and more complex data sources to the picture. So I think there will need to be more innovation or sophistication brought into data integration strategies, which will help us take a truly customer-centric approach to strategy formulation.   This interview Q&A was hosted with Ankur Kothari, a previous Martech Executive, for Chapter 6 of The Customer Engagement Book: Adapt or Die. Download the PDF or request a physical copy of the book here. The post Ankur Kothari Q&A: Customer Engagement Book Interview appeared first on MoEngage.
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