Category: Data Analytics

  • Data Analytics Question

    I uploaded the files which contains the Exercise and the other files to solve it.

    Please adhere to the following:

    1- Do not use artificial intelligence, as the university detects its use and has Turnitin.

    2- Do not duplicate assignments from other students.

    3- Submit within the specified timeframe; I have chosen 4 days.

    Delivering Performance Excellence (DPE): Business Analytics

    Business Analytics Assessment: Individual Assignment

    Mark: 35% of DPE Module marks

    Submission date: 5th March 2026

    Required: Business Analytics Report

    Format: 1500-2000 words (Excluding graphs and charts) based on the guidelines below.

    I. Assignment Brief

    This assignment requires you to produce an academically grounded business analytics report.

    You are required to select one dataset from the pool of datasets provided on the assignment

    Loop submission link. All datasets have been sourced from open-access repositories and are

    approved for use for educational purposes only.

    Choose a dataset that aligns with an industry sector of interest to you (e.g. Healthcare

    Management, Human Resources, Marketing, Inventory Management, Transport, Education,

    etc.). Your role is to identify a business problem or opportunity that can be addressed

    analytically using the variables available in the selected dataset.

    Your task is to conduct the appropriate analytics processes to address the identified problem or

    opportunity and to present your findings in a business analytics report.

    In brief, a business analytics report is a structured document that presents data-driven insights to

    inform business decision-making. Using your chosen dataset, you are required to conduct descriptive,

    predictive, and prescriptive analytics.

    1. 2. II. Analytics Report Framework

    1. Organisational Context and Decision Challenge (20%)

    This section must demonstrate that the analytics work is grounded in a business need. You should

    include:

    Industry Context: Introduce the sector and explain the relevance of the dataset to a real

    industry setting.

    Decision Problem or Strategic Opportunity: Clearly define the business problem or

    opportunity. Business Value and Strategic Importance: Explain why this issue matters and what

    organisational value is sought (e.g., efficiency, growth, risk mitigation, optimisation).

    Analytics Objectives and Key Questions: Frame clear, data-answerable business questions

    aligned with the decision challenge.

    2. Working with Data and Analytical Design (20%)

    This section must demonstrate the use of the dataset to answer the business questions, not just

    technical execution. You should include:

    Dataset Overview and Variable Classification: Identify key predictors (independent variables)

    and targets (dependent variables).

    Data Exploration and Assumptions: Discuss patterns, outliers, and potential limitations.

    Data Preparation and Transformation: Explain cleaning steps and justification.

    Analytical Approach and Justification: Describe why specific descriptive, predictive, and

    prescriptive techniques were selected (you can limit the techniques to those taught in class).

    3. Analytical Execution and Evidence (30%)

    This section presents the analytic process and techniques in a structured analytical output.

    Descriptive steps and insights

    Predictive modelling results

    Prescriptive analysis and decision scenarios

    Analytics Dashboard: All key charts, tables, and visualisations must be presented together.

    Each visual must include a short managerial insight statement.

    4. Critical Evaluation and Managerial Insight (20%)

    This section discusses your evaluation of the results.

    Interpretation of results

    Discussion of reliability, assumptions, risks, and limitations.

    Managerial implications

    Demonstrate how analytical outputs are combined with your industry understanding to inform

    decisions.

    5. Recommendations and Decision Communication (5%)

    This section translates your analysis into action.

    Actionable recommendations

    Expected organisational impact

    Implementation considerations

    6. Housekeeping (5%)

    Harvard or APA referencing (include DOIs where available)

    Logical structure and coherent argumentation

    Table of contents

    Professional presentation of dashboard and appendices

    II. Minimum Requirements for Technical Analytics

    1. Descriptive Analytics

    a) Select four (4) variables from the dataset and formulate four (4) descriptive analytics

    questions that are relevant to your stated business problem.

    b) Produce data visualisations to support your descriptive analysis and summary statistics.c) Each visualisation must include a brief insight statement explaining what the visual shows

    and what decision or action it may inform.

    All descriptive analytics visualisations should be compiled and presented together in an

    analytics dashboard.

    2. Predictive Analytics

    Formulate and analyse at least one (1) predictive analytics question. Explain how the results of the

    analysis could influence or support the business decision or action.

    3. Prescriptive Analytics

    Formulate and analyse at least one (1) prescriptive analytics question. Clearly explain how the

    resulting recommendation would change or improve the business decision or action.

    Notes:

    1. 2. 3. Academic work at MSc level is expected to demonstrate independent research and critical

    judgement, supported by academic evidence and reputable third-party sources. Please use the

    Harvard or APA referencing style throughout your work.

    A wide range of relevant peer-reviewed journal articles covering all areas of analytics is

    available and should be consulted where appropriate.

    Plagiarism will not be tolerated. All sources must be properly acknowledged in accordance

    with the chosen referencing style in short : This is not a data exercise.

    It is a decision-focused business analytics report.

    You are expected to:

    Choose one dataset

    Identify a real business problem or opportunity

    Move through:

    o Descriptive

    o Predictive

    o Prescriptive analytics

    Translate everything into managerial decisions

    Its 35% of the module. High stakes.

    The structure is fixed. Marks are allocated per section.

    1. Organisational Context & Decision Challenge (20%)

    This is where most students go wrong.

    You must:

    Introduce the industry

    Explain why the dataset is relevant

    Define a clear business problem

    Identify your target variable

    Explain:

    o Why this problem matters

    o What decision will be made

    o What business value is expected

    Important:

    Do NOT write data questions like:What is the average X?

    Instead write: What factors influence X so that management can decide Y?

    This section is strategic. Not technical.

    Working with Data & Analytical Design (20%)

    Now you move into:

    Variable classification (dependent vs independent)

    Data exploration (patterns, outliers, assumptions)

    Data cleaning and justification

    Why you selected:

    o Descriptive methods

    o Predictive model

    o Prescriptive technique

    Key rule:

    Do not dump everything you tried in Excel.

    Only include what supports your decision logic.

    Analytical Execution & Evidence (30%)

    This is your technical core.

    Descriptive (Minimum Requirement)

    4 variables

    4 descriptive questions

    Visualisations

    Each visual must include a short managerial insight

    Not just: Mean = 20

    But:The high variance suggests instability in X, which may affect Y decision.

    Predictive (Minimum 1)

    One clear predictive question

    One target variable

    Regression (if continuous)

    Logistic regression if categorical (be careful here)

    Explain:

    What does the model tell management?

    What decisions does it support

    Prescriptive (Minimum 1)

    Use Solver or scenario analysis

    Show how decision changes

    Show improvement logic

    This is about: Given what we know, what should we do?

    Dashboard

    All visuals must be presented together.

    Each must include:

    Clear label

    Short managerial insight

    No random graphs.

    4. Critical Evaluation & Managerial Insight (20%)

    This is where MSc-level thinking shows.

    You must:

    Interpret results in business terms

    Discuss:

    o Reliability

    o Assumptions

    o Risks

    o Limitations

    Show understanding beyond Excel

    This is not repeating results.

    This is critical reflection.

    5. Recommendations (5%)

    Clear.

    Actionable.

    Decision-focused.

    Explain:

    What should management do?

    Expected impact

    Implementation considerations

    6. Housekeeping (5%)

    15002000 words

    Harvard or APA

    Table of contents

    Professional structure

    Proper placement of figures (not dumped in appendix)

    Minimum Technical Requirements (Non-Negotiable)

    From the brief :

    4 descriptive questions

    1 predictive

    1 prescriptive

    Dashboard compiled

    Each visual includes insight statement

    If one of these is missing, marks drop immediately.

    The Most Important Warnings from the Transcript

    From your professors explanation :

    You must define your own business problem.

    Target variable choice is critical.

    Keep regression constraints in mind.

    Do not overwhelm with technical noise.

    Business value > technical complexity.

    Critical evaluation separates high grades from average ones.

    Use DCU grade descriptor to aim for distinction level thinking

    What I Need From You Now

    To properly guide you:

    1. Which dataset are you choosing?

    2. What industry is it from?

    3. Do you already have a business problem in mind?

    4. Is your target variable continuous or categorical?

    Once I know that, I can:

    Help you refine your decision challenge

    Make sure your target variable works for regression

    Structure your descriptive questions correctly

    Design your predictive + prescriptive logic properly

    Make sure your report hits distinction level

    THE PROFESSOR IMPORTANT REQUIREMENTS:

    This Is a Decision Report Not a Data Report

    She repeated this multiple times.

    Your work must always answer:

    What decision will this analysis support?

    If your report sounds like:

    We analysed X.

    The mean is Y.

    The correlation is Z.

    Thats weak.

    It must sound like:

    Understanding X allows management to decide Y.

    If variable A increases, the company should consider B.

    Everything must point toward decision-making.

    Target Variable Choice Is Critical

    She warned clearly about this.

    If your target variable is:

    Categorical you cannot run linear regression.

    Binary you would need logistic regression.

    She explicitly mentioned students making this mistake and realising too late.

    So before you start:

    Confirm your target variable works with the regression method taught in class.

    This is a technical constraint you must respect.

    Do Not Overcrowd With Analytics

    She said:

    You will try many things in Excel.

    Do NOT put everything in the report.

    Only include analysis that supports your decision logic.

    This means:

    No random charts.

    No unnecessary statistics.

    No just because I can analysis.

    Be selective. Strategic. Intentional.

    Insight After Every Analysis

    This was strongly emphasised.

    For:

    Every descriptive statistic

    Every visual

    Every model result

    You must add 12 sentences explaining:

    What does this mean?

    Why does it matter?

    What decision does it influence?

    No raw outputs

    Section 1 and Section 4 Require the Most Thinking

    She clearly said:

    Section 2 and 3 are more technical.

    Section 1 (context) and Section 4 (critical evaluation) require real thinking.

    These sections determine distinction-level work.

    Especially Section 4:

    Reliability

    Assumptions

    What you would improve

    What data is missing

    Risks of using this model

    Thats where MSc depth shows.

    Use Academic Support to Justify Importance

    She suggested:

    Read 12 peer-reviewed papers in your datasets area.

    Use them to justify:

    o Why your problem matters.

    o Why certain variables are important.

    o What might be missing.

    This strengthens Section 1 and Section 4 significantly.

    Many students skip this and lose quality.

    Business Value Over Technical Complexity

    She made this very clear.

    Doing:

    5 regressions

    10 models

    Complex analysis

    Does NOT equal higher marks.

    Clear logic + decision value = higher marks.

    Dashboard Must Be Clean and Purposeful

    She emphasised:

    All visuals together.

    Each must serve the business question.

    No visual noise.

    Each visual must have insight.

    Dumping visuals into appendix is wrong.

    Putting visuals randomly in text is wrong.

    They must be placed logically and referenced properly.

    This Is Structured Like a Research Paper

    She compared it to:

    Methodology

    Results

    Interpretation

    Recommendations

    That means:

    Clear flow.

    Logical progression.

    Not jumping between sections.

    Work Within Constraints

    She said something very important conceptually:

    Business analytics also means working within:

    Data constraints

    Technical constraints

    Skill constraints

    If something cannot be done with your dataset or tools,

    acknowledge it and justify your approach.

    That shows maturity.

    The Real Hidden Message

    What she really emphasised overall:

    This assignment tests whether you can:

    Think like a decision-maker

    Think like an analyst

    Connect technical outputs to business logic

    Critically evaluate your own analysis

    Not just use Excel.

    Requirements:

  • Data Analytics Question

    Attached is the homework

    Requirements: hw assignment

  • Discussion question: presenting analytics to stakeholders

    Purpose

    Your textbook notes that 85% of Fortune 500 firms use optimization in areas like labor scheduling, inventory management, and production planning. When paired with strong data visualizations, optimization tools can guide better decisions and more effective strategies. This week youll practice a skill used constantly in leadership: translating analysis into clear, actionable recommendations for non-technical audiences.

    Task

    Using your Retail Performance Datasetand visualizations from Unit 6, identify one meaningful insight and propose a next-step optimization idea, all in a format that a business leader without technical expertise can understand.

    In your initial post, include the following:

    1. Key Insight. Briefly summarize one trend or finding you identified in your visual analysis.
    2. Optimization Recommendation. Explain how your insight could inform an optimization strategy. Use optimization in a broad sense, recommend an improvement that allocates resources more efficiently (e.g., better labor scheduling, store promotions, product placement, etc.). What would you recommend changing?
    3. Stakeholder Communication (12 paragraphs): Write as if youre briefing a manager or executive. Focus on business impact, not technical jargon. Your writing should be polished but easy to understand.
    4. Embed a Visual Insight (Required): Insert one relevant data visualization directly into your post, not only as an attachment. This could be a chart, graph, or infographic created in Excel. Make sure it clearly supports your recommendation and is easy to interpret. To learn how to embed your visual, follow the steps on this or .
    5. Reflection: What challenges did you face in simplifying your analysis for a non-technical audience?

    In your responses to your peers, address the following:

    • Assess clarity, business value, and visual communication.
    • Suggest one improvement (visual or message).
    • Offer a different optimization idea or the next step

    Requirements: A couple paragraphs

  • Need a report done

    What can you learn about the iatrogenic (doctor- or practitioner-related) causes of death for adults in the United States from , , as well as ?

    You might find the 13-minute interview with to be helpful.

    Every set of data can tell many stories. You must analyze the data and select a story from the data. Never project your story onto the data. Focus your work on this case study on one story from the data.

    Submit a report of fewer than eight pages. Use level one, two, and three headings as needed. Ensure you have an introduction and conclusion. Ensure you use visualizations (e.g. charts and graphs) to support your analysis. Ensure you properly cite visualizations you do not create.

    Requirements

    • APA version 7 format for the report.
      • Include a cover page and abstract.
      • Do not include a table of contents.
      • Use for guidance.
    • Three scholarly citations in addition to the sources provided.
    • Review the rubric to ensure you understand how you will be assessed.

    References:
    Bates, D. W., & Singh, H. (2018). Two decades since To Err is Human: An assessment of progress and emerging priorities in patient safety. Health Affairs, 37(11), 1736-1743. Retrieved from

    BMJ (2016, May 3). Medical error – the third leading cause of death in the US. Audio recording. Available at

    Makary, M. A., & Daniel, M. (2016). Medical errorthe third leading cause of death in the US. BMJ, 353, i2139. Retrieved from

    Shojania, K. G., & Dixon-Woods, M. (2017). Estimating deaths due to medical error: The ongoing controversy and why it matters. BMJ Qual Saf, 26(5), 423-428. Retrieved from

    Requirements: However long it says

  • Data Analytics Question

    for both assignments my corporation is Starbucks

    Go to any financial website of your choosing (such as or the main website for your assigned corporation) and locate the financial statements for your assigned corporation. Note that certain websites, such as , will allow you to export the data to Excel for free which might simplify your Excel calculations.

    Now refer to in the text.

    1) Using an Excel spreadsheet, you will create a three-year ratio trend analysis from the financial statements for your assigned corporation. The trend will consist of the following ratios:

    • Current Ratio and the Quick Ratio from the I. Short term solvency, or liquidity, ratios category
    • Debt to Equity Ratio and the Times Interest Earned Ratio (aka Interest Coverage Ratio) from the II. Long-term solvency, or financial leverage, ratios category
    • Return on Assets Ratio and the Return on Equity Ratio from the IV. Profitability ratios category

    Then provide a one-page (minimum) discussion about what each trend indicates for your assigned corporation. Is the trend good or bad, why?

    2) Using the , find the industry ratios for your corporation. Note that the ratios provided in readyratios.com for your assigned corporation may not match your part (1) calculations exactly.

    Compare your calculated ratios for your assigned corporation to the industry ratios. Then provide a one-page (minimum) discussion that details whether your assigned corporation is performing better or worse than the industry based on the definitions of the six ratios. Are your calculated trends from part (1) moving closer to or farther away from the industry averages? Is this good or bad?

    I will attach assignment 2

    Requirements: As needed

  • Data Analytics Question

    I will attach a PDF file explaining what is required and a CVS file containing the data.

    Solve the Assignment in two ways: first, by Python, and second, using the Knime analytics platform.

    For Python, each part question should have three parts:

    1-the code used.

    2-the code output.

    3- explanation

    For Knime, use the Spreadsheet workflow.

    Requirements: There is no limit, Enough to answer all the questions clearly

  • Data Analytics Question

    I will attach a PDF file explaining what is required and a CVS file containing the data.

    Solve the Assignment in two ways: first, by Python, and second, using Knime analytics platform.

    For the Python epart ach question should have three parts:

    1-the code used.

    2-the code output.

    3- explanation

    For Knime, use the Spreadsheet workflow.

    Requirements: There is no limit, Enough to answer all the questions clearly

  • BUSN660: advanced analytics I

    Week 7 – Assignment – Due

    Feb 22, 2026 11:59 PM

    BUSN660 B001 Winter 2026

    Assignment Directions:

    Week 7 Assignment

    The primary aim of this project is to showcase your proficiency in the tools and methodologies we’ve covered in this course. You will apply advanced analytics to a comprehensive business case study, utilizing Excel as your primary tool, to draw actionable insights and make informed decisions.

    Case Study: Optimal Sales and Revenue Strategy for ‘Superstore’ Retail Chain

    Background: Superstore is a fast-growing urban department store-style retailer. They currently have stores spread across a number of states and there is a strong need to optimize sales and revenue.

    Data Provided:

    1. Superstore.xlsx: This file contains sales data for all stores for the past 10 years. Order numbers, locations, dates, and even profit margins are included in this worksheet.

    Assignment Requirements:

    1. Use the customer data provided to determine the relationship between discounts and revenue in order to determine how discounts should be applied to maximize revenue.
    2. From the sales data by store, determine what discounts should be applied in what locations.
    3. Use whatever tools to support your decisions about sales and revenue. Your final presentation should tell a compelling story about how Superstore should approach its expansion.

    Evaluation Criteria:

    Depth of analysis and application of course tools: 50%

    Quality and clarity of the report: 50%

    Submission Instructions:

    Submit the Excel workbook with all your analyses, labeled appropriately.

    Include a report (no longer than 5 pages) detailing your methodology, findings, and decisions. Ensure that each decision made is substantiated with data.

    • A 35-page Word Document
    • Must include a title page, abstract, and references. These are not counted in the page count/slide count.

    Be sure to review the following prior to submitting your assignment:

    This assignment aligns with the following:

    Resources & Supports

    • : You have free access as an APUS student. Sign in with your MyCampus Email credentials.
    • : Watch this 3-minute video if you need guidance on submitting your assignment.

    Good luck! Remember, the objective is to demonstrate your holistic understanding and application of the tools and techniques discussed in this course. Ensure your solutions are data-driven, and the decisions made are backed by solid analytical reasoning. Due date: Week 7, Day 7, 11:55pm

    Requirements: 3-5 PAGES & EXCEL DOCS

  • Do homework

    Complete as required

    Requirements: 20 hours

  • data mining hw3

    please follow the instructions carefully and dont go more advanced than what the professor expects please.

    Requirements: 4 tasks