Solution for Elevator Assessment - Bautista Peco#70
Solution for Elevator Assessment - Bautista Peco#70bpeco wants to merge 1 commit intoCitric-Sheep:masterfrom
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AI Detection Analysis 🔍Confidence Score: 30% Reasoning: The pull request represents a well-structured and comprehensive solution to a technical data science task related to modeling elevator floor predictions. It includes multiple components: data extraction, preprocessing, feature engineering, machine learning training, and model serving. The documentation is clear, with explanations for design decisions, test instructions, and assumptions. Although the project contains polished language and well-organized modular code — characteristics often associated with AI-generated content — it also exhibits signs of real-world software engineering practices such as progress bars with tqdm, careful handling of rolling time windows, and performance-aware feature encoding. The inclusion of complex, domain-specific logic involving resting floor dynamics and thoughtful preprocessing strategies suggests human domain insight. Furthermore, edge-case awareness (e.g., use of previous floor as a proxy resting state, comments on scalability) points to practical experience unlikely to be fully captured by LLMs without extensive prompting. There are also slight inconsistencies and human-typical errors:
Key Indicators: Human Authorship Indicators:
Possible AI Indicators:
Overall, while there are polished components typically seen in AI-assisted outputs, the presence of human-style error patterns, domain-savvy feature decisions, and consistent implementation logic suggests the majority of this contribution is human-generated, perhaps with light AI-assisted help (e.g., Copilot-type suggestions). Thus, low likelihood of being predominantly AI-generated. Key Indicators:
Overall, more evidence supporting human authorship. ✅ No strong indicators of AI generation detected |
This pull request includes my solution for the elevator data modeling assessment.
Summary of decisions:
How to test:
README_solution.mdhas a Usage section: end-to-end usage, including data loading, preprocessing, and model inference.elevator_model_test.ipynbafterwards to predict.Please let me know if you have any questions or feedback!