Aspects-based representative significance of Machine Learning algorithms & natural language processing applications in nanotechnology.

Authors

DOI:

https://doi.org/10.4108/eetismla.4094

Keywords:

Machine learning, Nanotechnology, Algorithms & application, Natural language processing, Nanoinformatics

Abstract

Introduction: The rapid changes in computational power of machine learning algorithms and natural language processing applications have led to multi-scale and many core designs in nanotechnology. Machine learning algorithms and natural language processing applications are easing the burden engineers have to go through to understand nanoparticles.
Problem: There is still a challenge to predict and control particles of nanomaterials at nanoscale. Aspect-based climatic conditions are negatively impacting the world with huge modification on nanoparticles, nanomaterials and nanostructures.
Objective: Study examines aspects of machine learning algorithms and natural language processing applications that can be used to predict and control particles, and structure of nanomaterials at nanoscale. Method and materials. The study examines significance of machine learning algorithms & applications in nanotechnology, examines aspects of machine learning algorithms & natural language processing applications applied in nanotechnology, and discusses current-future trends of nanotechnology based on learning algorithms & natural language processing applications.
Results and conclusions. The findings result in the conclusion that machine learning & natural language processing application in nanotechnology is implementing an advanced microscopic revolution with the potential to metamorphose the world's industrialization and scale human existence. Machine learning algorithms have the potential to predict and classify nanomaterials and natural language processing has the potential to retrieve relevant data hidden within the classified nanomaterials which results has a huge significance in the pharmaceutical industry

Downloads

Download data is not yet available.

References

[1] Mawuli Agboklu, Frederick A Adrah, Prince Mawuli Agbenyo, and Hope Nyavor. From bits to atoms: Machine learning and nanotechnology for cancer therapy. Journal of Nanotechnology Research, 6(1):16–26, 2024.

[2] Farahnaz Behgounia and Bahman Zohuri. Artificial intelligence integration with nanotechnology. Nano Tech Appl, 3(1):1–7, 2020.

[3] Ana Caroline M Brito, Maria Cristina F Oliveira, Osvaldo N Oliveira Jr, Filipi N Silva, and Diego R Amancio. History of chemistry of materials according to topic evolution based on network analysis and natural language processing, 2024.

[4] Rung-Ching Chen, Christine Dewi, Su-Wen Huang, and Rezzy Eko Caraka. Selecting critical features for data classification based on machine learning methods. Journal of Big Data, 7(1):52, 2020.

[5] Leonid Grinin, Anton Grinin, and Andrey Korotayev. Nanotechnologies, robotics, artificial intelligence and other manbric technologies in the long-term development. In Cybernetic Revolution and Global Aging: Humankind on the Way to Cybernetic Society, or the Next Hundred Years, pages 403–457. Springer, 2024.

[6] Israel Griol Barres. Modelling of a system for the detection of weak signals through text mining and nlp. Proposal of improvement by a quantum variational circuit. PhD thesis, Universitat Politècnica de València, 2022.

[7] Christine Ogilvie Hendren, Christina M Powers, Mark D Hoover, and Stacey L Harper. The nanomaterial data curation initiative: A collaborative approach to assessing, evaluating, and advancing the state of the field. Beilstein journal of nanotechnology, 6(1):1752–1762, 2015.

[8] Wassim Jaber. Artificial intelligence and nanotechnology: Transforming the future. In Artificial Intelligence in the Age of Nanotechnology, pages 1–24. IGI Global, 2024.

[9] Yibin Jiang, Daniel Salley, Abhishek Sharma, Graham Keenan, Margaret Mullin, and Leroy Cronin. An artificial intelligence enabled chemical synthesis robot for exploration and optimization of nanomaterials. Science Advances, 8(40):eabo2626, 2022.

[10] Krishna Prakash Kalyanathaya, D Akila, and P Rajesh. Advances in natural language processing–a survey of current research trends, development tools and industry applications. International Journal of Recent Technology and Engineering, 7(5C):199–202, 2019.

[11] Sergej Kudruk, Connor M Forsyth, Michelle Z Dion, Jenny K Hedlund Orbeck, Jingqin Luo, Robyn S Klein, Albert H Kim, Amy B Heimberger, Chad A Mirkin, Alexander H Stegh, et al. Multimodal neuro-nanotechnology: Challenging the existing paradigm in glioblastoma therapy. Proceedings of the National Academy of Sciences, 121(8):e2306973121, 2024.

[12] B Lavanya and G Sasipriya. Study on emerging machine learning trends on nanoparticles—nanoinformatics. In International Conference on Innovative Computing and Communications: Proceedings of ICICC 2021, Volume 1, pages 443–458. Springer, 2022.

[13] Nastassja A Lewinski and Bridget T McInnes. Using natural language processing techniques to inform research on nanotechnology. Beilstein journal of nanotechnology, 6(1):1439–1449, 2015.

[14] Wenxiang Liu, Yongqiang Wu, Yang Hong, Zhongtao Zhang, Yanan Yue, and Jingchao Zhang. Applications of machine learning in computational nanotechnology. Nanotechnology, 33(16):162501, 2022.

[15] Pascal Muam Mah, Iwona Skalna, Tomasz Pełech-Pilichowski, Gilly Njoh Amuzang, Micheal Blake Somaah Itoe, and Ning Frida Tah. Integration of internet of things (iots) with wireless sensor networks (wsns) for a transformative secure community mindset applied deep learning models and natural language processing techniques. In IBIMA Conference on Artificial intelligence and Machine Learning, pages 3–19. Springer, 2023.

[16] Pascal Muam Mah, Iwona Skalna, Tomasz Pełech-Pilichowski, Tomasz Derlecki, Victor Aghaah Mah, and Kilian Nyamka. Enabling digital transformation and knowledge migration: The impact of nlp, ai, and ml in mobile applications. Scientific Papers of Silesian University of Technology. Organization & Management/Zeszyty Naukowe Politechniki Slaskiej. Seria Organizacji i Zarzadzanie, (184), 2023.

[17] Nuwan Indika Millagaha Gedara, Xuan Xu, Robert DeLong, Santosh Aryal, and Majid Jaberi-Douraki. Global trends in cancer nanotechnology: A qualitative scientific mapping using content-based and bibliometric features for machine learning text classification. Cancers, 13(17):4417, 2021.

[18] Thaer Moustafa Dieb. Framework for Experimental Information Extraction from Research Papers to Support Nanocrystal Device Development. PhD thesis, 2015.

[19] Debabrata Nandi, Sangam Banerjee, and Uday Chand Ghosh. Nanotechnology for sustainable development. J Nanopart Res, 14:1272, 2012.

[20] Elsa A Olivetti, Jacqueline M Cole, Edward Kim, Olga Kononova, Gerbrand Ceder, Thomas Yong-Jin Han, and Anna M Hiszpanski. Data-driven materials research enabled by natural language processing and information extraction. Applied Physics Reviews, 7(4), 2020.

[21] Rai Dhirendra Prasad, PD Sarvalkar, Nagina Prasad, Rai Surendra Prasad, Rai Bishvendra Prasad, Rai Rajnarayan Prasad, Shivarani Prasad, Brajendra Gour, SU Barade, RN Deshmukh, et al. Emerging trends of bioactive nano-materials in modern veterinary science and animal husbandry. ES Food & Agroforestry, 2024.

[22] Deependra Rastogi, Varun Tiwari, Shobhit Kumar, and Prabhat Chandra Gupta. Era of computational cognitive techniques in healthcare systems. Cognitive Intelligence and Big Data in Healthcare, pages 1–40, 2022.

[23] Jonas F Santos, Leydi del Rocío Silva-Calpa, Fernando Gomes de Souza, and Kaushik Pal. Central countries’ and brazil’s contributions to nanotechnology. Current Nanomaterials, 9(2):109–147, 2024.

[24] Maulin P Shah, Navneeta Bharadvaja, and Lakhan Kumar. Biogenic Nanomaterials for Environmental Sustainability: Principles, Practices, and Opportunities. Springer Nature, 2024.

[25] Els Van de Velde, Pieterjan Debergh, Arnold Verbeek, Christian Rammer, Katrin Cremers, Paula Schliessler, and Birgit Gehrke. Production and trade in kets-based products: The eu position in global value chains and specialization patterns within the eu. Brussels: European Commission, DG Enterprise, 2013.

[26] Dan Wu, Jianhua Lu, Nan Zheng, Mohamed Gamal Elsehrawy, Faiz Abdulaziz Alfaiz, Huajun Zhao, Mohammed S Alqahtani, and Hongtao Xu. Utilizing nanotechnology and advanced machine learning for early detection of gastric cancer surgery. Environmental Research, 245:117784, 2024.

[27] Li Yang and Abdallah Shami. On hyperparameter optimization of machine learning algorithms: Theory and practice. Neurocomputing, 415:295–316, 2020.

[28] Bahman Zohuri and Farahnaz Behgounia. Application of artificial intelligence driving nano-based drug delivery system. In A handbook of artificial intelligence in drug delivery, pages 145–212. Elsevier, 2023.

Downloads

Published

25-10-2024

How to Cite

[1]
P. M. Mah, “ natural language processing applications in nanotechnology”., EAI Endorsed Trans Int Sys Mach Lear App, vol. 1, Oct. 2024.