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Magnus Energy Group Ltd (MAGN) Personalization Marketing / MBA Resources

Introduction to Personalization Marketing

What is Personalization Marketing Analysis for Magnus Energy Group Ltd (Singapore)


At Oak Spring University , we define Personalization Marketing as a data driven that enables companies such as Magnus Energy Group Ltd to make informed decisions regarding current and future behaviour of targeted consumers. Personalization Marketing model is built upon how Magnus Energy Group Ltd customers are behaving at present and how their customer journey can be tailored to provided them an highly immersive and beneficial experience.

Personalization Marketing at Magnus Energy Group Ltd needs to not only cater to the promotional strategies targeting specific needs of the customers in the Oil Well Services & Equipment industry but also to steward overall customer behaviour towards a more holistic customer experience.



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How Magnus Energy Group Ltd can leverage Personalization Marketing


According to 2022, Cheetah Digital survey 74% of consumers want brands to treat them as an individual and 71% of the customers want to build a relationship with the brand that they buy regularly.

True Predictive Personalization Marketing goes further than just sales driving coupons or other promotion strategies. Predictive Personalization Marketing can help Magnus Energy Group Ltd to create more enriching brand experience, more convenient product purchase experience, more accessible post purchase experience that can drive higher customer satisfaction and loyalty among the customers in the Oil Well Services & Equipment industry.




Factors that impact Personalization Marketing

To build a predictive personalization marketing at scale, Magnus Energy Group Ltd needs three things in the Oil Well Services & Equipment industry – Build a rich database that can provide long loop customer data, use appropriate statistical and machine learning models to derive deep insights, and a operational system that can act on the personalization finding and deliver a rich customer experience.

Predictive Personalization Marketing can help in –

KPI driven approach

– Predictive Personalization Marketing approach is KPI driven approach where data is continuously analysed in various different contexts to build a highly relevant KPI that captures consumer behaviour to a great extent.

Highly relevant flash deals

– Even though flash deals is just a sub-segment of overall marketing and promotional strategies, but it captures the overall essence of personalization marketing strategy. It requires time based relevant marketing effort that can deliver a call to action. If the flash deal is not relevant then customers won’t use it, resulting in highly concentrated marketing expenses.

Experience differentiation

– Predictive personalization marketing can enable Magnus Energy Group Ltd to provide differentiated experience to different consumers in the Oil Well Services & Equipment industry. For example Netflix and YouTube able to provide differentiated video suggestions to each customer based on their preferences. Magnus Energy Group Ltd can also build a similar experience in both physical and digital world.

Highly efficient price perception management

– Managing price perception is highly important in the Oil Well Services & Equipment industry. Magnus Energy Group Ltd needs to employ data driven approach to not only manage price perception but also to get the best return on investment on its marketing budget. Often to attract large set of customers or to create marketing buzz, companies allow discount on large collection. This makes managing price and quality perception extremely difficult. Groupon customers suffered from it initially and the company never able to recover from it. Personalization Marketing helps organization to minimize the discounts by providing discounts on products and services that an individual customer values.

Reducing Audience fragmentation

– Marketing managers have long faced the problems of audience fragmentation. The growth of mobile phones has reduced that fragmentation to – Segment of One. Predictive personalization marketing can help in building a marketing message that cater to this – segment of one- customer.

Behavior Driven Marketing Efforts

– Consistent data collection mechanism can help Magnus Energy Group Ltd to build artificial intelligence and machine learning based behaviour marketing models. These data oriented models can help the organization to allocate marketing resources based on consumer prior behaviors rather than management hunch or predictions.

Consistent and relevant touch points

– Magnus Energy Group Ltd should build its personalization marketing strategy on consistent and relevant data collection. This can help the Magnus Energy Group Ltd to navigate customer journey in Oil Well Services & Equipment industry efficiently and effectively. It will provide the organization consistent set of data to build KPI and predict behaviour based on various data points.

Predictive Personalization Marketing can help Magnus Energy Group Ltd to make product purchase easier, maximise the effectiveness of its promotions and advertising efforts, and improve price perception.




Challenges to Predictive Personalization Marketing at Magnus Energy Group Ltd



Maintaining a Balance

Building a balance between the analytics and Magnus Energy Group Ltd competitive strategy is the key to efficient and effective personalization marketing strategy. Often only numbers driven approach can lead to highly optimal solutions that can deliver high revenue in short term but compromise the customer overall experience. This can result into long term sales stagnation. In Oil Well Services & Equipment industry, Magnus Energy Group Ltd needs to build a personalization marketing strategy that can build on each customer interaction in a meaningful way with a view to drive customer loyalty.

Defining Customer Values

Prioritizing customer value is a key to differentiation, targeting, and positioning strategy . Magnus Energy Group Ltd needs to clearly define the customer values it wants to target in the Oil Well Services & Equipment industry. For example very often high spending customers are viewed as loyal customers. But this can mean different thing in different context. A single member household or small business buyer may spend less on Magnus Energy Group Ltd products compare to four member household or large corporate buyer, but share of overall basket may be significantly different thus making Magnus Energy Group Ltd products more critical to smaller players.

Purpose and Message Clarity

Predictive personalization marketing efforts at Magnus Energy Group Ltd in Oil Well Services & Equipment won't be effective unless managers at Magnus Energy Group Ltd understand - what is the purpose of personalization marketing messeage, what Magnus Energy Group Ltd want to say and what relationship it wants to have with its customers in Oil Well Services & Equipment industry.




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