Proposed Rescue for Mastodons: Cleaning Up the Countys Sights with Police and Architecture at Ctlength
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- Abu Matas
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Abstract
This paper proposes a rescue plan for the protection of mastodons by focusing on the cleaning up of the county's sights through the collaboration of police and architecture at Ctlength. The study highlights the critical importance of preserving the natural habitat of mastodons as they are a keystone species that play a crucial role in maintaining the ecological balance of the region. The approach suggested in this paper involves the implementation of a multi-faceted strategy that involves the deployment of police personnel to monitor and enforce strict regulations on illegal activities that endanger the mastodons, such as poaching and habitat destruction. Additionally, the paper proposes the use of architecture to design and construct suitable habitats and safe zones for the mastodons, thereby creating a conducive environment for their survival and growth. The paper argues that this approach is not only necessary but also achievable, given the technological advancements and expertise available in the field. The proposed rescue plan has the potential to significantly enhance the conservation efforts for mastodons and contribute to the preservation of the ecological balance of the region. The paper concludes by highlighting the need for urgent action and collaboration between various stakeholders to ensure the successful implementation of the proposed rescue plan.
Citation
Abu Matas "Proposed Rescue for Mastodons: Cleaning Up the Countys Sights with Police and Architecture at Ctlength". IEEE Exploration in Machine Learning, 2016.
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This paper appears in:
Date of Release: 2016
Author(s): Abu Matas.
IEEE Exploration in Machine Learning
Page(s): 8
Product Type: Conference/Journal Publications