PromptBase
Close icon
General
Home
Marketplace
Hire
Create
Login
Sell
Explore
🤖 GPT

Research Paper Reviewer

Research Paper Reviewer gpt prompt mini thumbnail
17Heart icon
Favorites
421Eye icon
Views
TestedTick icon
Reviews scholarly papers based on a title and an abstract.
...more
$3.99
Get prompt
After purchasing, you will gain access to the prompt file which you can use with GPT or the app builder. You'll receive 20 free generation credits with this purchase. By purchasing this prompt, you agree to our terms of service.
Over 1 month ago

Prompt Details

Model
Completion - GPT-3 (text-davinci-002)
Token size
207 ($0.00410 / call)
Example input
Paper Name: "ScrapNet: An Efficient Approach to Trash Classification" Paper Abstract: "As people have become more aware of their actions and how they affect their surroundings, they have realized the dire state of the environment. As a result, the recycling movement has gained momentum as a measure to save it. Contemporarily, the recycling industry has not seen a major shift and the problems that existed decades earlier persist. Trash classification is at the core of these problems, because if you can’t classify it, obviously you can’t recycle it. Manual classification often leads to misclassification as humans classify or judge things based on their experiences, knowledge, and not just absolute facts. Additionally, if the waste to be sorted is toxic, being in direct contact may be physically harmful to the people involved. Until a solution is found for this problem, the recycling industry won’t be on par with the rise in recycling culture. Thus, this is the problem we have set out to solve; this paper proposes a Deep Learning model based on EfficientNet Architecture that can classify different kinds of trash with an accuracy high enough to make it a viable solution for the industry while using a comparatively lower number of parameters than existing methods. We achieved an accuracy of 98% on the TrashNet dataset, the standard data for Trash classification, and outperformed all existing models. Additionally, as no large dataset with a varied set of trash images was present, we created a new dataset of 8135 images by combining various datasets and standardized them, achieving a classification accuracy of 92.87% with EfficientNet B3."
Example output
The authors of the paper have proposed a deep learning model based on the EfficientNet architecture to solve the problem of trash classification. The model is trained on the TrashNet dataset, which is a standard dataset for trash classification. The accuracy of the model is 98% on the TrashNet dataset. The authors have also created a new dataset of 8135 images by combining various datasets and standardized them. The classification accuracy of the model on this new dataset is 92.87%. The paper is well-written and the research is thorough. The proposed model is a viable solution for trash classification, with a high accuracy on both standard and new datasets. There are no major technical criticisms of the paper. However, it would be helpful if the authors could provide more detail on how the new dataset was created and standardized. Additionally, it would be useful to see how the proposed model compares to other existing models in terms of accuracy and computational efficiency. Overall, this is a strong paper that makes a significant contribution to the field of recycling and trash classification.
Browse Marketplace