QHO430 Data Analysis, Tools and Application Individual Assessment 1 Report

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University Southampton Solent University
Subject QHO430 Data Analysis Tools and Application

QHO430 Assessment Brief 

Module Title: Data Analysis, Tools and Application
Module Code: QHO430
Module Leaders: O’Brien C. Nyambayo & Niaz Chowdhury
Level: 4
Assessment Title: Data Analysis Report
Assessment Number: AE1
Assessment Type: Report
Restrictions on Time/Word Count: 2000 (-/+10%) Words

(The word count includes any headings, figure captions, table tiles, citations, etc. that make up the body of your work but does not include cover page, table of contents, table of figures, and reference list at the end)

Consequence of not meeting time/word count limit: It is essential that assignments keep within the word count limit stated above. Any work beyond the maximum word length permitted will be disregarded and not accounted for in the final grade.
Individual/Group: Individual
Assessment Weighting: 70%
Issue Date: 16th June 2025
Hand In Date: 19th September 2025 before 4 pm
Planned Feedback Date: Within 4 working weeks
Mode of Submission: Online via SOL

  • 1 copy of a report in word format
  • 1 copy of an excel file containing raw data of your analysis, along with your analysis results, charts, or graphs that align with the findings presented in the report and generated from the analysis in the submitted file. Note:
  • To ensure the originality of your work, it is essential to submit the analysis file from your chosen analysis tool, such as Excel. Without the analysis file, this may affect your mark and could result in a failing mark due to insufficient evidence that the learning outcomes have been met.
  • Only FINAL submissions will be accepted. DRAFT submissions will not be considered an attempt and will not be marked.
Anonymous Marking This assessment is exempt from anonymous marking.

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Assessment Task

The assessment includes both group work and individual research, focusing on data analysis. Groups of four to five students will discuss and choose a data analysis area to study. The available data is crucial for this choice and can cover various impactful topics such as the environment, population distribution, wealth, business, health, education, or international issues. The datasets can be obtained from various sources, including government organisations such as the Office of National Statistics (ONS) and GOV.UK. Additionally, the World Data Bank offers a vast collection of open datasets that could be considered. After selecting the analysis domain, each group member will define their individual topic of investigation within that domain. This will enable a detailed exploration of their chosen topic, allowing individuals to generate useful information that can be combined for the group presentation of findings.

In this assessment, you will focus on individual data analysis. You will analyse data based on a topic you choose within the group’s domain and produce an academic report. You should clearly define your individual data analysis objectives and follow the data analysis process outlined below:

  • Collect raw data (unanalysed data). You can obtain it from a single source if it is suitable for multiple analysis techniques, or you can gather data from various sources to support your analysis objectives.
  • Prepare your collected data by organising or formatting it appropriately for analysis.
  • Utilise analysis tool such as Excel to analyse your collected data, employing a range of analysis methods suitable to your objective. These methods may include descriptive analysis, predictive analysis, or prescriptive analysis.
  • Present your data analysis results using suitable data visualisation techniques that effectively convey the insights you wish to present.

Additionally, it is important to maintain thorough records of group meetings, discussions, and collaborations throughout the data analysis project. Your individual report should also include a self- reflection on your learning process during the module and the data analysis project.

At the end of the module, your individual data analysis and results will be summarised and combined into an insightful group presentation for your stakeholders.

Formatting of the Report

Cover Page

Table of Contents

Table of Figures

Report Contents

1. Introduction

a. A brief statement of your group project motivation/problems
b. Group project aim(s)
c. Your objective(s) for your analysis part, you can have more than one objective

2. Method

a. Data collection: discuss where did you get the data from (you can identify both the dataset use in a group and any specific dataset you use for your individual analysis); how did you retrieve the dataset. Ensure you reference sources for any data you collected or used.
b. Data preparation: identify process of data preparation that you perform on your collected data. The process can consist with all the following process or some of them depends on the suitability of the process and collected data.
i. data understanding, e.g., what variables that have been collected, how many variables in that dataset
ii. data cleaning e.g., handling missing value (if it’s needed)
iii. data pre-processing e.g., selecting certain variables to use for analysis, merging data from different file, sorting data etc.

c. Data analysis: identify data analysis techniques/approaches/methods that you use to get the results. Analysis methods need to match with your analysis objectives. You need to perform data analysis using analysis tool such as Excel based on your identified approaches

d. Results: present the analysis results of your analysis with appropriate data visualisation

e. Conclusion: conclusion or summary of your individual analysis results

3. Project Management

a. Project plan: present your work plan (tasks) and timeline using Gantt chart
b. Project collaboration: identify your skill of collaboration – how you are meeting up, how did you work as a group, evidence of group work collaboration e.g., snapshot of discussion board, online-diary, share document on MS team etc.
c. Learning reflection: discuss learning outcome you achieve; issues you have had and what you might do differently in the future

4. References

a. A list of citations for all sources you have referred to in the body of your report. These should all be in Solent Harvard reference format

Note: If you have any special requirements or disability, please discuss this with your tutor

REFERENCING

Note:
QHO430 Formatting Guidelines of the Individual Report Document

Specifications of the Individual Report Document

Data Analysis_Report_Template_2023 (2).docx

Use of AI in this Assessment

Generative AI is permitted at Solent University under specific conditions and must continue to follow the university’s rules around Academic Misconduct and the AI and Academic Integrity policy.

In this assessment, you are permitted to use GenAI tools, such as Large Language Models (LLMs) or grammar support tools, to assist in editing the content of your data analysis report or to suggest topics for your data analysis project. However, it is crucial that you carefully review any generated content to ensure that it maintains the original message you intend to convey. You may also make edits to improve the clarity, accuracy, or relevance of the generated text. Furthermore, it is your responsibility to check the correctness of the information produced by these tools.

If you choose to use a GenAI tool for these purposes, you are required to disclose your usage clearly. This means specifying which tool was used, identifying which parts of the content were generated by the tool, and highlighting any changes or edits you made after reviewing the output. Transparency in this process is essential.

However, it is important to note that you are not allowed to use GenAI tools to carry out any part of the data analysis process on your behalf. The analysis itself, including data identification, data understanding, preparation, analysis, and visualisation, must be performed entirely by you. This is necessary to fulfil the learning outcomes of the module, which emphasise the importance of understanding and executing the full analysis process.

Using GenAI tools to conduct the data analysis or generate results and claiming them as your own work constitutes a breach of academic integrity. This practice can lead to an unfair advantage and does not demonstrate your own understanding of the material. Therefore, you must perform the data analysis independently to ensure that your skills and knowledge are accurately represented.

 AI and Academic Integrity Policy

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QHO430 Assessment Criteria

Learning Outcomes UPPER FIRST

Exceed expectations in many aspects

FIRST

Substantially exceeds expectations

UPPER SECOND

High Meet learning outcomes and

exceeds expectations in several aspects

LOWER SECOND

Good Meet learning outcomes and

sometimes exceeds expectations

THIRD

Competent

Meet learning outcomes

FAIL

Incomplete/Poor

Fails to meet learning outcomes

SOLENT MARK 100 92 83 74 68 65 62 58 55 52 48 45 42 35 20 15
Identify appropriate Motivation/Aims/Obj Motivation/Aims/O Motivation/Aims/Obje Motivation/Aims/Obje Motivation/Aims/Obj Motivation/Ai No evidence
tools and ectives are bjectives are clear ctives are clearly ctives are stated and ectives are stated ms/Objectives of attempting
techniques for data exceptionally clear and well- stated understandable unclear are missing or required
analysis, data visualisation and presentation. and well-developed

 

 

developed

 

 

 

 

 

 

 

 

miss focus

 

 

threshold

 

 

Carry out small- Shows exceptional Effectively Identifies and gathers Collects data with Uses basic data Struggles to Fails to
scale research, skill in finding gathers data data effectively, occasional gaps in collection methods identify and effectively
information diverse, relevant aligned with aligning with research alignment with with a limited gather data identify and
gathering and data data aligned with research goals, objectives for a solid research objectives. understanding of with gather data,
collection to research goals. Uses using advanced analysis foundation. Uses standard advanced substantial with major
generate knowledge advanced methods, methods Proficiently uses methods with room techniques. Exhibits gaps in gaps in
to support the including innovative proficiently. standard data for improvement. deficiencies in alignment with alignment
project with some approaches for Demonstrates collection methods, Competent in conventional research with research
guidance. comprehensive creativity in demonstrating good conventional data approaches, resulting objectives. objectives.
insights. Maintains exploring understanding. gathering with in an incomplete Limited Lacks a
meticulous attention alternative Ensures a occasional oversights. dataset. understanding fundamental
to detail, ensuring sources for comprehensive Maintains attention to Demonstrates of standard understanding
accurate, complete, comprehensive dataset with detail but may have inconsistent data collection of standard
and relevant data for coverage. proficiency in occasional lapses attention to detail, methods, data
sophisticated Maintains high conventional impacting accuracy impacting data needing collection
analysis. attention to approaches. Maintains and relevance. accuracy and improvement. methods. Fails
detail, ensuring attention to detail for relevance. Fails to use to use
accurate and accurate and relevant conventional conventional
relevant data for data. data gathering data
analysis. effectively, gathering,
resulting in a resulting in an

 

Learning Outcomes UPPER FIRST

Exceed expectations in many aspects

FIRST

Substantially exceeds expectations

UPPER SECOND

High Meet learning outcomes and

exceeds expectations in several aspects

LOWER SECOND

Good Meet learning outcomes and

sometimes exceeds expectations

THIRD

Competent

Meet learning outcomes

FAIL

Incomplete/Poor

Fails to meet learning outcomes

significantly inadequate
incomplete dataset.
dataset. Shows Demonstrates
frequent lapses a pervasive
in attention to lack of
detail, attention to
impacting data detail,
accuracy and severely
relevance.

 

 

 

compromising data accuracy and relevance.
Discuss the use of Conducts advanced Conducts Conducts proficient Analyses data in Excel. Analyses data with Struggles with Unable to
relevant data data analysis in Excel advanced data data analysis in Excel. Applies standard notable data analysis in perform
analysis tools. with exceptional skill, analysis using Applies standard techniques, shortcomings and tools like Excel, actual data
employing a range of tools like Excel. analysis techniques occasionally with gaps limited proficiency in demonstrating analysis;
techniques Applies various (descriptive, in understanding or tools like Excel. limited copies or
(descriptive, techniques predictive, or execution. Presents Demonstrates basic understanding describes
predictive, (descriptive, prescriptive), results adequately, understanding of of techniques. results
prescriptive) to predictive, or presenting results with some insights analysis techniques Presents without solid
showcase a deep prescriptive) with clear insights, supported by but with significant results with evidence.
understanding. effectively, supporting evidence, evidence and basic gaps. Presents results major Lacks
Presents flawless presenting results and well visualisations. with limited clarity, deficiencies, fundamental
analysis results with with valuable visualisations. Integrates data for lacking lacking clarity understandin
comprehensive insights, clear Integrates data from analysis with comprehensive and evidence. g of analysis
insights, clear evidence, and various sources, occasional lapses in insights and Fails to techniques
evidence, and strong visualisations. ensuring completeness or visualisations. integrate data and tools like
visualisations. Skilfully integrates completeness and relevance. Struggles to integrate effectively, Excel.
Exceptional ability to data from various relevance. data effectively for with Presents
integrate and sources for analysis. substantial results with
Learning Outcomes UPPER FIRST

Exceed expectations in many aspects

FIRST

Substantially exceeds expectations

UPPER SECOND

High Meet learning outcomes and

exceeds expectations in several aspects

LOWER SECOND

Good Meet learning outcomes and

sometimes exceeds expectations

THIRD

Competent

Meet learning outcomes

FAIL

Incomplete/Poor

Fails to meet learning outcomes

synthesise data from comprehensive gaps in severe
various sources for a analysis. completeness deficiencies,
thorough analysis.

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

and relevance.

 

 

 

 

 

 

 

 

 

 

 

 

 

lacking

clarity,

evidence, and

meaningful

insights. Fails to integrate data effectively, with pervasive gaps in completeness and relevance.

Collaborate in Shows outstanding Demonstrates Displays proficient Demonstrates a Shows deficiencies in Significantly Fails to
groups on projects collaboration skills by excellent collaboration skills, satisfactory in time collaboration, with struggles in demonstrate
and work on each seamlessly collaboration managing time management, notable issues in collaboration, effective
step of the data life combining excellent skills, excelling in effectively, communication, and time management, with poor time collaboration,
cycle. time management, time communicating well, self-reflection. communication, and management, including time
effective management, and engaging in self- Manages time self-reflection. Faces ineffective management,
communication, and communication, reflection. Completes adequately but faces challenges in communicatio communicatio
self-reflection. and self- project tasks on time. occasional challenges effective time n, and limited n, and self-
Exhibits exceptional reflection. Ensures a productive in meeting deadlines. management, self-reflection. reflection.
time management, Manages time group workflow Communicates with resulting in Faces Faces
completing all effectively, through effective the team but requires occasional project substantial insurmountab
project tasks ahead completing tasks communication with improvement in task delays. challenges in le challenges
of schedule. efficiently and team members. fostering a positive Communicates with managing time, in managing
Communicates meeting Conducts a well self- group dynamic. the team but leading to time, leading
Learning Outcomes UPPER FIRST

Exceed expectations in many aspects

FIRST

Substantially exceeds expectations

UPPER SECOND

High Meet learning outcomes and

exceeds expectations in several aspects

LOWER SECOND

Good Meet learning outcomes and

sometimes exceeds expectations

THIRD

Competent

Meet learning outcomes

FAIL

Incomplete/Poor

Fails to meet learning outcomes

confidently and deadlines reflection on learning Conducts a basic self- struggles to maintain frequent to consistent
efficiently with team consistently. outcomes, recognising reflection on learning a cohesive group project task project task
members, fostering a Confidently personal and group outcomes, identifying dynamic. Conducts a delays. delays. Fails
positive group communicates contributions. areas for limited self-reflection Struggles to to
dynamic. with team improvement. on learning communicate communicate
Demonstrates members, outcomes, lacking effectively effectively
thoughtful and fostering a depth and insight. within the within the
insightful self- positive and group, group,
reflection on learning collaborative impacting severely
outcomes, revealing group overall impacting
a deep environment. productivity. overall
understanding of Conducts a strong Conducts productivity.
personal and group self-reflection on minimal self- Conducts no
contributions. learning reflection on meaningful
outcomes, learning self-reflection
showcasing keen outcomes, with on learning
awareness of notable gaps in outcomes,
personal and understanding lacking
group personal and recognition of
achievements. group personal or
 

 

 

 

 

 

 

 

 

 

contributions.

 

group contributions.
Summarise and Creates excellent Produces reports Produces reports with Generates reports Creates reports with Struggles Fails to create
present the results reports with a with excellent consistent and well with satisfactory level. format significantly effective
of data analysis to a consistent format format and strong format. Presents Presents information inconsistencies. with report reports with
range of and impeccable information information logically with occasional gaps Presents information format issues. no consistent
stakeholders presentation. presentation. and coherently for in logic. Demonstrates with noticeable gaps Presents format.
making Presents information Summarises stakeholder a good understanding in logic. information Presents
recommendations. logically, coherently, logically and understanding. of data analysis, with Demonstrates a with significant information
and interestingly. coherently with Demonstrates a well areas for limited lapses in logic. with severe
Learning Outcomes UPPER FIRST

Exceed expectations in many aspects

FIRST

Substantially exceeds expectations

UPPER SECOND

High Meet learning outcomes and

exceeds expectations in several aspects

LOWER SECOND

Good Meet learning outcomes and

sometimes exceeds expectations

THIRD

Competent

Meet learning outcomes

FAIL

Incomplete/Poor

Fails to meet learning outcomes

Demonstrates a clear an engaging style. understanding of data improvement. understanding of Demonstrates gaps in logic,
understanding of the Exhibits clear analysis. Maintains a Maintains a somewhat data analysis. a poor coherence,
data analysis, understanding of reasonable flow uneven flow between Maintains an uneven understanding and
showcasing data analysis, between topics for topics. May exceed or flow between topics, of data understanding
expertise. Maintains reflecting stakeholder fall short of the impacting analysis, . Completely
a smooth flow proficiency. engagement. optimal word limit. stakeholder requiring fails in
between topics, Ensures a smooth Manages word limit engagement. remediation. summarising
ensuring stakeholder flow between adequately, providing Struggles to manage Maintains a and
engagement. topics, sufficient detail. word limit disjointed flow presenting
Adheres to the maintaining effectively, impacting between data analysis.
perfect word limit, stakeholder clarity. topics, Maintains a
balancing interest. Manages hindering completely
conciseness and word limit stakeholder disjointed
completeness. effectively, engagement. flow, severely
balancing brevity Fails to hindering
with necessary manage word stakeholder
detail. limit engagement.
effectively, Disregards the
impacting word limit
 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

overall clarity.

 

 

 

 

 

entirely, resulting in an unreadable and ineffective presentation.

Learning Outcomes

This assessment will enable you to demonstrate in full or in part your fulfilment of the following learning outcomes identified in the Module Descriptor:

  1. Identify appropriate tools and techniques for data analysis, data visualisation and presentation.
  2. Carry out small-scale research, information gathering and data collection to generate knowledge to support the project with some guidance.
  3. Discuss the use of relevant data analysis tools.
  4. Collaborate in groups on projects and work on each step of the data life cycle.
  5. Summarise and present the results of data analysis to a range of stakeholders making recommendations.
  6. Communicate and summarise and present the results of data analysis to a range of stakeholders making recommendations.

Living CV

As part of the University’s Work Ready, Future Ready strategy, you will be expected to build a professional, Living CV as you successfully engage and pass each module of your degree.

The Living CV outputs evidenced on completion of this assessment are:

  1. Ability to use analytical tools such as MS Excel to analyse data using descriptive and predictive techniques and produce reports, charts and tables to present the results and data.
  2. Ability to undertake small-scale research to acquire data from both primary and secondary data sources and analyse collected data.
  3. Able to select analysis model that suitable with data sets
  4. To work as part of a team and carry out my own initiative work.
  5. To present the findings of analysis results in a clear and simple format for non-technical audiences

Please add these to your CV via the Living CV builder platform on Solent Futures Online Solent Futures

Important Information

Solent University Academic Regulations 2024-25

Late Submissions

You are reminded that:

  1. If this assessment is submitted late i.e. within 7 calendar days of the submission deadline, the mark will be capped at 40% if a pass mark is achieved;
  2. If this assessment is submitted later than 7 calendar days after the submission deadline, the work will be regarded as a non-submission and will be awarded a zero;
  3. If this assessment is being submitted as a referred piece of work, then it must be submitted by the deadline date; any Refer assessment submitted late will be regarded as a non-submission and will be awarded a zero.

Assessment regulations

Extenuating Circumstances

The University’s Extenuating Circumstances (EC) procedure is in place if there are genuine short term exceptional circumstances that may prevent you submitting an assessment. You are able to self-certify for up to two assessment dates in any semester without supporting evidence for an extension of up to seven calendar days for coursework or to defer an exam to the resit period.

Alternatively, if you are not ‘fit to study’ (or you have used up your two self-certification opportunities), you can request:

  • an extension to the submission deadline of 7 calendar days, or
  • a request to submit the assessment at the next opportunity, i.e. the resit period (as a Defer without capping of the grade).

In both instances you must submit an EC application with relevant evidence. If accepted under the university regulations, there will be no academic penalty for late submission or non-submission dependent on what is requested. You are reminded that EC covers only short-term issues (20 working days) and that if you experience longer term matters that impact on your learning then you must contact the Student Hub for advice.

Please find a link to the EC policy below:

Extenuating Circumstances

Academic Misconduct

Any submission must be your own work and, where facts or ideas have been used from other sources, these sources must be appropriately referenced. The University’s Academic Regulations includes the definitions of all practices that will be deemed to constitute academic misconduct. You should check this link before submitting your work.

Procedures relating to student academic misconduct are given below: Academic Misconduct

Ethics Policy

The work being carried out must be in compliance with the university Ethics Policy. Where there is an ethical issue, as specified within the Ethics Policy, then you will need an ethics release or ethics approval prior to the start of the project.

The Ethics Policy is contained within Section 2S of the Academic Handbook:

Ethics Policy

Grade marking

The University uses a numeric grade scale for the marking of assessments. More detailed information on grade marking and the grade scale can be found on the portal and in the Student Handbook.

Grade Marking Scale

Guidance for online submission through Solent Online Learning (SOL)

Online Submission

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Students at Solent University often struggle with the QHO430 Data Analysis, Tools and Application Assignment due to data collection, Excel-based analysis, visualisation, and strict reporting requirements. Selecting the right dataset, applying correct analysis methods, and presenting results clearly within the word limit can be time-consuming. There’s no need to worry—Students Assignment Help provides expert data analysis assignment help aligned fully with Solent University standards. For trust and clarity, you can also review expert-written assignment samples before placing an order. Order today with instant assignment help and get your QHO430 report written exclusively for you.

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