Personalization at Scale: Using Big Data to Create Tailored Products
In the digital age, getting a product or a service tailored exactly for you is no longer a pipe dream. Moreover, an increasing number of modern businesses strive to personalize their offerings to meet the expectations of every client. In this fierce race, Big Data, or vast amounts of information that humanity generates around the clock, becomes a valuable source of insights for creating truly personalized products. In this article, we will delve into the peculiarities of personalization and the importance of Big Data in this process.
1: The Personalization Imperative
In the modern day, when consumers are inundated with choices, businesses have a hard time trying to win and keep customer loyalty in order to remain ahead of the competition. This is where personalization comes into play: knowing your client's exact preferences and habits increases your chances of creating a product or service that will be in demand and help your business thrive.
With ubiquitous digitalization, people spend increasing amounts of time online, including for shopping, entertaining, and educating themselves. As a result, user and customer expectations are increasingly shifting away from simple products and towards tailored experiences that address the unique needs of each person. From personalised ads to curated playlists on music streaming platforms and recommended shows on streaming services, there is a growing demand for personal touches in every digital interaction. It is no surprise that the most popular streaming platforms today, such as Netflix and Spotify, prioritise highly personalised experiences for their users.
2: The Big Data Revolution
The ongoing spread of Internet technologies leads to an ever-increasing number of people joining the process of non-stop data generation, which has reached a tremendous scale. Every click, like, share, and interaction of today's 4.66 billion Internet users leaves a digital footprint, adding to the growing data pool. It is estimated that over 328.77 million terabytes of data are created daily in 2023, with this figure expected to rise.
It is unsurprising that such rapid expansion of the global data pool presents a unique set of challenges and opportunities. While dealing with such massive amounts of data can be extremely difficult, with challenges in storing, processing, and securing it, leveraging them can help businesses reach new heights by predicting user behaviour and crafting hyper-personalized experiences.
Understanding Big Data is critical in this context because it allows for the capture of real-time user interactions, the processing of various types of data ranging from social media activity to purchase histories, and the assurance of the accuracy of these insights. Businesses can gain a comprehensive understanding of their users and thus create products tailored specifically for them by carefully analysing Big Data.
3: Harnessing Data Analytics
In order to turn the immense amounts of Big Data into actionable insights, businesses resort to a wide range of Data analytics tools. They are critical in processing, analysing, and interpreting data in order to gain a clear understanding of user behavior, trends, and preferences.
All major technology companies use data analytics tools in their operations. Netflix, for example, uses data analytics to create personalised recommendations based on user viewing habits. In the case of Spotify, data analytics plays an important role in personalising playlists, recommending music, and improving user experience.
Overall, decisions made by businesses based on thoroughly collected and analysed data, rather than intuition or bare assumptions, are more likely to correspond to actual user demands. This allows for more precise product tailoring based on a target audience, resulting in higher user satisfaction and ROI.
4: Machine Learning: The Engine of Personalization
In today’s world, one of the key tools for reaching higher levels of personalization is machine learning. This method enables computer systems to learn from data without being explicitly programmed. It has the power to process vast amounts of data in order to predict user preferences and behaviors.
Machine learning algorithms that are commonly used for user data analysis include supervised, unsupervised, and reinforcement learning. While the first requires labelled data, the second can learn without it, and the third learns through trial and error.
YouTube, for example, employs all of the aforementioned types of machine-learning algorithms to achieve goals such as analysing user behaviour and providing personalised video recommendations.
5: Understanding User Preferences
The smart combination of data analytics and machine learning techniques gives a unique opportunity for analyzing vast troves of data like browsing history, purchase patterns, and social media interactions. This gives businesses a powerful means to understand and predict user behavior.
The process of collecting user data, which provides invaluable information to businesses, is central to this venture. While browsing history can help businesses understand user interests, purchase patterns can provide insight into user purchasing behaviours and preferences, and social media interactions can provide insight into user likes, dislikes, and opinions.
However, user data collection remains a delicate issue because it raises the risk of data privacy violations, which are illegal in many countries. This is why obtaining explicit user consent and providing options for users to opt out of data collection are critical.
6: Predicting User Needs
One of the valuable methodologies for understanding user necessities is predictive analytics. It utilizes statistical algorithms and machine learning techniques to identify the likelihood of future outcomes based on historical data. Its primary aim is to go beyond what has happened to provide the best estimate of what will happen in the future.
Target, for example, is one of the companies that uses predictive analytics to determine which customers may be pregnant based on their purchase patterns, allowing them to send targeted ads. Another example is Airbnb, which uses this methodology to suggest pricing to hosts based on a variety of factors such as location, time of year, and local events.
Despite being a powerful business tool, predictive analytics has flaws such as accuracy and privacy. Predictions based on historical data may be inaccurate because they do not account for unexpected factors. In terms of privacy, users must be aware that their data is being used to make predictions and must consent to such use.
7: Tailoring Products at Scale
Businesses use Data Analytics tools to sift through large data sets with information about user behaviours, preferences, and interactions in order to retrieve actionable insights when developing a personalised product. Then they use Machine Learning techniques to build predictive models that can predict user behaviours and preferences. As a result, businesses can offer personalised products or services before a user expresses an explicit need.
This entire process can be scaled so that a large number of users receive personalised experiences at the same time. However, in order to achieve high levels of scalability, which will drive user satisfaction and loyalty, product managers must change their product design strategies. Products must be designed to be adaptable, with the ability to change based on user data.
Both recommendation systems and customization offer personalization options. While the first predicts what a user is likely to want next and presents relevant products, the second allows users to customise product features or settings to their liking, ranging from cosmetic changes to deep functional changes.
8: Ethical and Privacy Concerns
The key dilemma of large-scale personalization is collecting user data while respecting their privacy. It is ethically required that users understand and agree to data collection practises. As a result, companies must obtain explicit user consent before gathering data, ensure data security, and be transparent about their data practises.
Data privacy laws such as the EU's General Data Protection Regulation (GDPR) and the California Consumer Privacy Act (CCPA) are setting the bar. Among other things, these regulations emphasise user consent, data minimization, and the right to erasure.
9: The Future of Personalization
The evolution of ML models and data analytics practices will make hyper-personalization possible to create highly tailored user experiences. Other trending novelties will also be emotion recognition, predictive personalization, and cross-platform consistency. At the same time, ethical considerations and user-controlled data through technologies like blockchain will become paramount in ensuring trust and transparency.
Personalization will become more immersive with technologies such as Augmented Reality (AR) and Virtual Reality (VR). In a shopping context, for example, AR could allow users to see how a piece of furniture looks in their living space before purchasing it. VR could provide fully immersive, personalised digital experiences, such as personalised virtual vacations.
Future technological advancements will allow businesses to cater even more closely to individual user needs and preferences. However, they will be posing some privacy-related challenges that must be addressed.
Conclusion
In today's business world, the pursuit of personalization in product development has become critical for a company seeking to compete. Big Data has given businesses unprecedented opportunities to tailor products and provide personalised user experiences based on data analytics and machine learning insights. However, the rise of new technologies, as it always does, poses some risks. This time, they are linked to user consent and data security, which necessitate an adequate response in the form of laws and new approaches to ensure trust between users and the business world. And staying up to date on the advancement of personalization technologies can ensure that you make the most of the technological progress that the future brings!
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Written by
Natalia Zotkina
Natalia Zotkina
Product Director (CPO) at VK company