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Final Project Grade #17

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22 of 23 tasks
ShanEllis opened this issue Mar 21, 2024 · 0 comments
Open
22 of 23 tasks

Final Project Grade #17

ShanEllis opened this issue Mar 21, 2024 · 0 comments

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@ShanEllis
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ShanEllis commented Mar 21, 2024

Final Project Grade

Score (out of 15 pts)

Score = 14.9

Rubric

Notes: Checked checkbox means that you earned this rubric item. Uncheck box indicate you did not (fully) earned this rubric item. See the Notes for details.

  • Overview (0.5 pt):

    • Write a clear overview of the project including results (0.25pts)
    • Include - Names/Title (0.25)
    • Notes: the abstract should be a concise summary of the project. It shouldn't include too much unnecessary information such as how the project developed. -0.1
  • Research Question (0.5 pt):

    • Include a specific, clear data science question relevant to the scope of the course. (0.25)
    • Variables needed to answer the question are clear (0.25)
    • Notes:
  • Background & Prior Work and Hypothesis (0.5 pts):

    • Cite and explain the work done previously and how you used info from the same. (0.25)
    • Relevant/Cogent hypothesis included and explained clearly (0.25)
    • Notes:
  • Data Description/ Datasets (0.75 pts):

    • Datasets clearly stated and source, links, No. of observations, nature of observations (0.5)
    • Description of data attributes and dataset provided (0.25)
    • Notes:
  • Data Cleaning/Processing (0.75 pts):

    • Cleaning procedure/requirement needs to be shown/stated and if no cleaning required that too should be stated along with reason. (0.5)
    • Cleaned data should be demonstrated (0.25)
  • Data Visualizations (3 pts): minimum of 3 viz required; divide points by N visualizations

    • Plots that make sense & give useful information (2)
    • Figure explains itself on axes/legend/caption OR text surrounding explains it (1)
  • Data Analysis and Results (4.5 pts) divide points by N analyses performed

    • Analysis chosen was appropriate to answer research question (1.5 pts)
    • Analysis was performed in a technically correct manner (1.5 pts)
    • Output of analysis interpreted and interpretation included in notebook (1.5 pts)
    • Notes:
  • Privacy/Ethics Considerations (1.5 pts):

    • Thoughtful discussion of ethical concerns. NB: bare minimum examine potential unintended consequences of work and sources of bias (1 pts)
    • Ethical concerns consider the whole data science process (question asked, data collected, data being used, the bias in data, analysis, post-analysis, etc.) (0.25 pts)
    • How your group handled bias/ethical concerns clearly described (0.25 pts)
    • Notes:
  • Conclusion & Discussion (1.5 pts):

    • Clear conclusion (answer to the question being asked) and discussion of results (1 pts)
    • Limitations of analysis discussed (0.5 pts)
    • Does not ramble on beyond providing necessary information
  • Documentation/ Written Communication (1.5 pts):

    • Code errors / code purpose not clear in comments or surrounding text (0.75 pts)
    • Narrative structure of the report: (0.75pts)
      • The report clearly supports the main points of the conclusion
      • Doesn’t go down a bunch of side streets that aren’t important
    • Notes:

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Regrade from Previous Checkpoints

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