Data Science/ R Shinny App Expert - Upwork

Helo We are looking for a data science expert who have experience in R Language to complete Assignment and  a report with application for a Task that is as follow: Students will work independently to perform the entire data science pipeline on a given real-world dementia dataset using R. You will be required to describe the entire project in a detailed report and submit the code. The data set used in this study was obtained from a mobile health care service offered in collaboration with non-governmental organizations that run elderly care centers. This service was provided to elderly people residing in various districts of Hong Kong for free from 2008 to 2018. The data set consists of 2299 cases, each of which includes eleven variables. These variables include age, body height, body weight, education level, financial support, geriatric depression scale score, out-of-pocket financial source (whether they were independent or dependent on family), marital status, Mini Nutritional Assessment part A score, Mini Nutritional Assessment part B score. The outcome labels were based on the categories of the Mini Mental State Exam. Assignment guidelines:     • Each student is required to submit one project report in a Word document, and R files which are reproducible to generate all the results in the report.     • R is the only accepted programming language for this assignment. You must use R to complete all tasks and analyses. Dataset description: Provide background information on the dataset used in the project, including its source and any relevant characteristics. Include summary statistics to give readers an overview of the data. Data pre-processing: Explain any pre-processing steps that were necessary for the dataset and justify why they were performed. This section should consider steps such as cleaning, transforming or encoding the data. Exploratory data analysis: Perform preliminary investigations on the dataset using summary statistics and visualizations. This section should provide insights into the dataset and help identify any potential patterns or trends. Prediction modelling: Select two prediction models and applied them on the given dataset.  This section should also include some brief information on the selected models, explain why the chosen models were appropriate for the dataset. Also evaluate the performance of the two models and compare their results using the appropriate performance metrics. Results and discussion: Analyze the results and discuss the findings in a clear and engaging manner. This section should include visualizations and any insights gleaned from the data. Conclusion: summarize the project to give a concise overview of the project and useful insights and conclusions. In addition to the project report, we also require the submission of an R file that includes the complete code performed from data loading to prediction modeling. The code should be well-organized, easy to follow, and produce the same outcomes as presented in the project report. R file guidelines:     • In your submitted code file, include comments to explain the purpose and functionality of each section of code.     • Organize the code into clear sections, such as data cleaning, exploratory data analysis and prediction model implementation.     • Use white space and indentation to enhance readability.     • Avoid using overly complicated code, and instead focus on writing clear, concise code. Along with that do a task: Create an R Shiny app that allows users to interact with the data science pipeline you developed in the project. Note that 1) Some useful online links are provided to guide creating the R Shiny app. Therefore, students who are interested need to rely on their self-learning and exploration to complete the task. Specification: The R Shiny app should 1) be user-friendly, with clear instructions and intuitive navigation. 2) Users should be able to upload the dataset, perform exploration data analysis via generating different visualizations, select prediction models, and view performance metrics. To develop the app, the student will need to integrate the code used in the previous tasks into the Shiny framework. Additional features, such as interactive visualizations, can also be added to enhance the user experience. Submission for the bonus task requires the Shiny app R scripts and a separate simple user guide Word document (1-2 pages) that explains the app's functionality and provides instructions on how to use it. Students can include screenshots and code snippets to showcase the app's features and functionality.Budget: $100 Posted On: May 02, 2023 06:15 UTCCategory: Data AnalyticsSkills:Data Science, R, Data Analysis, Data Visualization, Big Data, R Shiny, Python, Data Modeling, Analytics Country: Pakistan click to apply

Data Science/ R Shinny App  Expert - Upwork

Helo We are looking for a data science expert who have experience in R Language to complete Assignment and  a report with application for a Task that is as follow:

Students will work independently to perform the entire data science pipeline on a given real-world dementia dataset using R. You will be required to describe the entire project in a detailed report and submit the code.

The data set used in this study was obtained from a mobile health care service offered in collaboration with non-governmental organizations that run elderly care centers. This service was provided to elderly people residing in various districts of Hong Kong for free from 2008 to 2018. The data set consists of 2299 cases, each of which includes eleven variables. These variables include age, body height, body weight, education level, financial support, geriatric depression scale score, out-of-pocket financial source (whether they were independent or dependent on family), marital status, Mini Nutritional Assessment part A score, Mini Nutritional Assessment part B score. The outcome labels were based on the categories of the Mini Mental State Exam.


Assignment guidelines:
    • Each student is required to submit one project report in a Word document, and R files which are reproducible to generate all the results in the report.
    • R is the only accepted programming language for this assignment. You must use R to complete all tasks and analyses.


Dataset description: Provide background information on the dataset used in the project, including its source and any relevant characteristics. Include summary statistics to give readers an overview of the data.

Data pre-processing: Explain any pre-processing steps that were necessary for the dataset and justify why they were performed. This section should consider steps such as cleaning, transforming or encoding the data.

Exploratory data analysis: Perform preliminary investigations on the dataset using summary statistics and visualizations. This section should provide insights into the dataset and help identify any potential patterns or trends.

Prediction modelling: Select two prediction models and applied them on the given dataset.  This section should also include some brief information on the selected models, explain why the chosen models were appropriate for the dataset. Also evaluate the performance of the two models and compare their results using the appropriate performance metrics.

Results and discussion: Analyze the results and discuss the findings in a clear and engaging manner. This section should include visualizations and any insights gleaned from the data.

Conclusion: summarize the project to give a concise overview of the project and useful insights and conclusions.


In addition to the project report, we also require the submission of an R file that includes the complete code performed from data loading to prediction modeling. The code should be well-organized, easy to follow, and produce the same outcomes as presented in the project report.

R file guidelines:
    • In your submitted code file, include comments to explain the purpose and functionality of each section of code.
    • Organize the code into clear sections, such as data cleaning, exploratory data analysis and prediction model implementation.
    • Use white space and indentation to enhance readability.
    • Avoid using overly complicated code, and instead focus on writing clear, concise code.



Along with that do a task:
Create an R Shiny app that allows users to interact with the data science pipeline you developed in the project.



Note that

1) Some useful online links are provided to guide creating the R Shiny app. Therefore, students who are interested need to rely on their self-learning and exploration to complete the task.


Specification: The R Shiny app should 1) be user-friendly, with clear instructions and intuitive navigation. 2) Users should be able to upload the dataset, perform exploration data analysis via generating different visualizations, select prediction models, and view performance metrics. To develop the app, the student will need to integrate the code used in the previous tasks into the Shiny framework. Additional features, such as interactive visualizations, can also be added to enhance the user experience.

Submission for the bonus task requires the Shiny app R scripts and a separate simple user guide Word document (1-2 pages) that explains the app's functionality and provides instructions on how to use it. Students can include screenshots and code snippets to showcase the app's features and functionality.


Budget: $100
Posted On: May 02, 2023 06:15 UTC
Category: Data Analytics
Skills:Data Science, R, Data Analysis, Data Visualization, Big Data, R Shiny, Python, Data Modeling, Analytics
Country: Pakistan
click to apply