Analyse the growth of big data and need for a scalable
Mar 13,23Question:
Background:
MITS6005
Big Data
Case Study
July 2020
Case Study Weightage: 10%
Submission deadline: Session 5
The purpose of assessment is to assess students on the following Learning Outcomes:
LO1: Analyse the growth of big data and need for a scalable processing framework. Synthesize the fundamental characteristics, storage, analysis techniques and the relevant distributions.
LO2: Expertly apply techniques to perform big data query manipulation, evaluate various data storage option and type of aggregated data modelling. Through a critical study, choose an appropriate storage model based on the application requirements for processing large amounts of structured and unstructured data.
Objective
In this assessment you will have to research a small case study and you will need to apply your knowledge to identify the main issues, prioritise, provide insights and to discuss alternatives. You must write a Case Study Report about your company discussing the strategic plan of an organization. To present a case study based on the selected organization’s current analytics strategy and your recommended strategy. Identify a key business initiative for your organization, something the business is trying to accomplish over the next 9 to 12 months. It
might be something like improve customer retention, optimize customer acquisition, reduce
customer churn, optimize predictive maintenance, reduce revenue theft, and so on.
Brainstorm and write down what (1) customer, (2) product, and (3) operational insights your organization would like to uncover in order to support the targeted business initiative. Start by capturing the different types of descriptive, predictive, and prescriptive questions you’d like to answer about the targeted business initiative. Tip: Don’t worry about whether or not you have the data sources you need to derive the insights you want (yet).
Write down data sources that might be useful in uncovering those key insights. Look both internally and externally for interesting data sources that might be useful. Tip: Think outside the box and imagine that you could access any data source in the world. Be analytical within your report and examine key terms and theoretical relationships in depth.
General Instructions
- Your writing should be clear and concise and be in your own
- The Case Study report should be written in appropriate business language so that your analysis and discussion have an objective
- Use headings to guide the reader and include tables or diagrams that make the case clearer.
- The Case Study report must be in the range of 1,500-2,500 words in length excluding references.
- The referencing style must follow the IEEE referencing
Submission Guidelines
- Follow the links in Moodle to upload your report on or before the deadline. The report must be submitted on the LMS in the respective link i.e. MITS6005 Case Study- (Melbourne/Sydney)
- A document that consists of introduction to the problem that you are working on with strategic plan and the resources that might help in the analysis should be
- Late penalty applies on late submission, 10% per day would be
- Incidence of plagiarism will be
Marking Guide: 50 Marks (scale to 10%)
- Structure of the written report: Background information is relevant, issues are logically ordered, recommendations clearly relate to the
- Identify main issues: Prioritize choices, justify and prioritize issues
- Analyze the issues: Each issue is discussed using relevant concepts and principles, insight
is shown in analyzing the information.
- Discuss alternatives: Consider all viable short-term and long-term alternatives to potentially solve each issue, examine the advantages and disadvantages of each alternative.
- Explain resources: Identify individuals from the case study, enumerate the time frame and monitoring processes required for the recommendations to be put into
- Write clearly and concisely: Arguments are explicit and succinct, appropriate headings are used, grammar and spelling are
Rubrics for MITS6005 Case Study
Task | Description | Marks |
Report Structure | Relevant background information clearing relating the issue | 10 |
Identify issue | Proper identification of the issue related to the organization. The proposed issue is discussed with relevant concepts and principles. | 10 |
Analysis | Proper insight analysis is shown using appropriate
charts/graphs found in the research. |
10 |
Justify
recommendation |
Each individual resource specified in the case study has properly justified the given analysis. | 15 |
Conclusion | Clear and explicit arguments with appropriate conclusion of the report | 5 |
Answer:
Introduction
How big data analytics will apply to grocery store?
Overview
One of the largest national grocery retail outlets, the consumer serves the demand for the food shopping industry, which comprises approughly 1,500 outlets in every country under different supermarket banners as well as more than 380 retail fuel stores. The retention of customers is better than the best principle than the acquisition of customers. In order to leveraged their marketing budget by conducting a tailored strategy and predict the growth trajectory of consumer behaviour, the Marketing Department needed a clear segmentation of customers ‘ shopping habits.
The approach that was built for clients to improve the digital network specialises of helping to assess efficiency and ensuring that their employees are well prepared and equipped to satisfy and market needs and reach client-specific goals as well as customer-focused sales. The framework is developed with Site sections of the third party, which were bought via the SharePoint Shop. The framework has now been combined with the Tableau simulation tool, which provides sophisticated analytics for the business members in all business verticals. The data are now collected from the client’s manufacturing system to the staging cloud in the corporate area using an interactive script produced by a team. They also converted data using the market logic and instructions, where data cleaning, normalisation, database configuration and interpretation are carried out. The data is visualised graphically using tableau to provide top management with an informative view to determine the success of both retail stores and networks. This has helped them recognise the need to change their marketing strategies based on sophisticated insights from region to region and thus improve the consumer loyalty and net worth of the consumer.
Background and Business Problem
It’s easy to witness the effects of the modern age, with wireless telephones everywhere, laptops everywhere and large back rooms of information management systems. However, the data itself is less visible. Half a century after computers became popular, the data began gathering to the level of something fresh and unusual. Not only is the planet filled of more knowledge than ever, it is rising quicker. The rise of size has brought about a revolution in the state of the art. The quantitative shift has made a qualitative contribution. In the early years of the 2000s, sciences like astronomy and genomics invented the word “Big Data.” Now the definition migrates to any field of human interaction.
In 2012, the Australia has experienced a second fastest growth rate in healthyness, fitness and wellbeing since 2007. This trend will increase in coming years. The central food chain agreed to restructure the nutrition, beauty and fitness areas in four shops to take advantage of this occasion and to investigate whether it will improve shopping demand and the overall size of the basket. The drug store was persuaded that it will tap into shoppers’ shopping needs and become a “one-stop shop,” granting it a strategic edge over competing outlets such as drugs and specialist health and beauty shops. A test-learned method to advise management decisions about the proposed remodelling of other companies in the chain was the remodelling programme. Hair and skin care goods, perfume, cosmetics, supplements and nutritants, food products, soaps, deodorants and eye care are all part of the group of organic, good-beauty and fitness products with hair and hair care items making a significant contribution to the retail industry. The four stores’ wellness, fitness and holistic recovery department includes a significant change of the overall look of the shop, a wider range of items, more staff and a number of new facilities and programmes. For instance, glamorous, sensual and wonderfully revamped areas of fashion, health, broader aisles and wooden floors encourage more browsing of items available, improved lighting and elegant displays and signs to draw the shopper. Importantly, the updated safe, makeup and fitness divisions expanded the variety of items, including luxury haircare, fragrance and making up items and launched high-end ‘salon’ products. Added staff including dietitians, nutritionists, makeup consultants and fitness coaching. Various health and fitness programmes, including diabetic therapies, fitness library, expert reviews, free mini-facials, nutrition tips and a vast range of educational classes have been included. The supermarket was interested in evaluating its effects on sales one year after the safe, beauty and fitness upgrades in the four stores. They also explored whether a greater boost in the sales after the rework than others was witnessed by some safe, beauty and fitness subcategories, as well as the comparatively large position of current goods against the emerging products and the reaction of different shopper segments to this remodelling initiative. In order to answer these questions, the food retailer used their FSP info. The following segment includes a thorough overview of their theoretical methodology and main observations.
Analytical and finding approach
The food supply chain used card details for the shoppers of four reshopped stores (hereinafter the test shops) for nutrition and appearance and fitness purposes and compared the test stores with a designed set of four other equally sized target stores with identical profiles of the shopper. The shopper regular details include all shoppers’ sales for 1 year prior to the safe, beauty and fitness remodelling initiative (called a pre-remodeling period now) and 1 year after the remodelling initiative.
First, in each of the four test stores, the food manufacturer looked at the shift in overall revenue in relation to the pre-remodel era for the group. Fig. 1 displays gross average shop revenue for panel shoppers both before and after the re-model in the four test shops. The results suggest that the consumption of healthy, beauty and wellness spending in all four stores has increased strongly. Sales elevators in Shop A range from 13% to 50% in Shop D
Figure 1 Sales in Comparison Shops for the entire year
In addition, a contrast with the revenue improvements in management chain stores during the same span over the two years (Figure 2) indicates that remodelled stores outperformed management shops substantially. Three-to-six times the increase in revenue demonstrated in the shops in which the skin, nutrition and fitness departments were remodelled. This shows clearly that the safe and beauty improvement project was exceptionally successful in rising the net revenue of the shops.
Second, a food, beauty, and wellness sales elevator study was performed by grocery retailer to determine if any subcategories gained more than others from the safe, beauty, and wellness remodelling portion. The study found that the highest rise in post-remodel revenue was seen in the cosmetics sector (62.7%), including skin care products (40.9%), and vitamins (23.8%). In comparison, the lowest percentage revenue rose respectively by 0.2% and 1.9%, in analgesics and cooling goods. Furthermore, Table 2 indicates an annual rise in gross dollar revenue in the test stores in both of the subcategories, for both regular and luxury items. On average, premium goods had a greater sales rise than normal products in the post-remodeling phase. For eg, sales of regular skin care products rose by 26%, while sales of luxury skin care products increased by 1094%. Similarly, sales of regular hair care products rose by 18%, with sales of luxury hair care products up by 2176%.
It underlines the greater advantage of the remodelling programme for premium product purchases as the redeveloped, up-to – date atmosphere undoubtedly encouraged consumers to visit the safe, beauty and fitness aisle and accept Quality goods.
Finally, as part of its FSP and its segmentation results, it used the demographic details gathered to determine what discrepancies occur in how different categories of customers respond to the remodelling campaign. Since the luxury categories in the post-transformation era witnessed the largest growth in revenue, Fig. 3 show the separation of revenue by age (Exhibit A) and salary (Exhibit B) in the top five safe, beauty and fitness prime categories. The outcome indicates that the most people spend in the top 5 luxury, beauty and health categories in the post-remodel timeframe, for both 48–57 years of age as well as those with comparatively high average household income ($125.000 – $134.999). In comparison, the research group recorded the fastest increase in overall post-model cost relative to a pre-remode duration of 46% and 26% in two categories, loyal moms and loyal children’s adults, who account for 35% of the entire consumer base of the company.
Conclusion
In brief, this case study illustrates how the traditional review of shopper data can be used to determine the results of changes in the storage area and the remodelling portion. The overall sales report shows that a positive move for the safe, beauty and fitness remodelling market was provided by the revamped stores
Stronger increase in sales than equivalent size and comparable control stores. Sites. In addition, the market review of the sub category showed safe and well-being sub categories that gained more from the store management programme for deciding the categories in which the product ranges could be extended first as luxury items could not be integrated into all organic, beauty and wellness sub-categories Finally, the market and population research also allowed the retail chain to assess the next stores to be redeveloped and which markets it can concentrate on in marketing its fitness, beauty and wellbeing.
The strategy not only reduced money, but also improved the satisfaction of consumers and optimised billing. The findings increased sales received and decreased consumer segments’ ad spending
References
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