ChatGPT in R&D: Conclusion& references

 Conclusion

In this chapter, we have provided a practical guide on how to use ChatGPT for literature review, data analysis, writing and publishing, teaching and learning, and exploring the ethical and social implications of its use. ChatGPT is a powerful and versatile tool that can be used for various purposes in academia, scientific research, and development. ChatGPT is a powerful tool that can be used to transform academia. By automating and improving a variety of tasks, ChatGPT can help researchers save time, improve the quality of their work, generate new ideas, quickly identify data trends and patterns, and make informed research decisions. However, it also poses some challenges and risks that need to be addressed and mitigated. We hope that this guide can help researchers harness the potential of ChatGPT while also being aware of its limitations and responsibilities. We also encourage further research and development in the field of NLP to improve the capabilities and quality of ChatGPT and other conversational AI models.


References

1.   Chen, X., Chatgpt and its possible impact on library reference services. Internet Reference Services Quarterly, 2023: p. 1-9.

2.  Hassani, H. and E.S. Silva, The role of ChatGPT in data science: how AI-assisted conversational interfaces are revolutionizing the field. Big data and cognitive computing, 2023. 7(2): p. 62.

3.    Paul, J., A. Ueno, and C. Dennis, ChatGPT and consumers: Benefits, pitfalls and future research agenda. 2023, Wiley Online Library.

4.    El-Gayar, M.M., et al., Enhanced search engine using proposed framework and ranking algorithm based on semantic relations. IEEE Access, 2019. 7: p. 139337-139349.

5.    Hariri, W., Unlocking the Potential of ChatGPT: A Comprehensive Exploration of its Applications, Advantages, Limitations, and Future Directions in Natural Language Processing. arXiv preprint arXiv:2304.02017, 2023.

6.    White, J., et al., A prompt pattern catalog to enhance prompt engineering with chatgpt. arXiv preprint arXiv:2302.11382, 2023.

7.    Haleem, A., M. Javaid, and R.P. Singh, An era of ChatGPT as a significant futuristic support tool: A study on features, abilities, and challenges. BenchCouncil transactions on benchmarks, standards and evaluations, 2022. 2(4): p. 100089.

8.    Polonioli, A., In search of better science: on the epistemic costs of systematic reviews and the need for a pluralistic stance to literature search. Scientometrics, 2020. 122(2): p. 1267-1274.

9.    Rathore, B., Future of textile: Sustainable manufacturing & prediction via chatgpt. Eduzone: International Peer Reviewed/Refereed Multidisciplinary Journal, 2023. 12(1): p. 52-62.

10. Panda, S. and N. Kaur, Exploring the viability of ChatGPT as an alternative to traditional chatbot systems in library and information centers. Library Hi Tech News, 2023.

11. Verma, M., Novel Study on AI-Based Chatbot (ChatGPT) Impacts on the Traditional Library Management. 2023.

12. Dwivedi, Y.K., et al., “So what if ChatGPT wrote it?” Multidisciplinary perspectives on opportunities, challenges and implications of generative conversational AI for research, practice and policy. International Journal of Information Management, 2023. 71: p. 102642.

13. Zhang, Z., et al., VISAR: A Human-AI Argumentative Writing Assistant with Visual Programming and Rapid Draft Prototyping. arXiv preprint arXiv:2304.07810, 2023.

14. Rathore, B., Future of AI & Generation Alpha: ChatGPT beyond Boundaries. Eduzone: International Peer Reviewed/Refereed Multidisciplinary Journal, 2023. 12(1): p. 63-68.

15. Carrillo-Hermosilla, J., P. Del Río, and T. Könnölä, Diversity of eco-innovations: Reflections from selected case studies. Journal of cleaner production, 2010. 18(10-11): p. 1073-1083.

16. Brynjolfsson, E. and A. McAfee, Race against the machine: How the digital revolution is accelerating innovation, driving productivity, and irreversibly transforming employment and the economy. 2012: Brynjolfsson and McAfee.

17. Salvagno, M., F.S. Taccone, and A.G. Gerli, Can artificial intelligence help for scientific writing? Critical care, 2023. 27(1): p. 1-5.

18. Macey-Dare, R., How ChatGPT and Generative AI Systems will Revolutionize Legal Services and the Legal Profession. Available at SSRN, 2023.

19. Pargaonkar, Y.R., Leveraging patent landscape analysis and IP competitive intelligence for competitive advantage. World Patent Information, 2016. 45: p. 10-20.

20. Zheng, O., et al., ChatGPT is on the horizon: Could a large language model be all we need for Intelligent Transportation? arXiv preprint arXiv:2303.05382, 2023.

21. Chui, M., R. Roberts, and L. Yee, Generative AI is here: How tools like ChatGPT could change your business. Quantum Black AI by McKinsey, 2022.

22. Kasneci, E., et al., ChatGPT for good? On opportunities and challenges of large language models for education. Learning and Individual Differences, 2023. 103: p. 102274.

23. Strowel, A., ChatGPT and Generative AI Tools: Theft of Intellectual Labor? IIC-International Review of Intellectual Property and Competition Law, 2023: p. 1-4.

24. Rivas, P. and L. Zhao, Marketing with ChatGPT: Navigating the Ethical Terrain of GPT-Based Chatbot Technology. AI, 2023. 4(2): p. 375-384.

25. Lund, B., et al., ChatGPT and a New Academic Reality: AI-Written Research Papers and the Ethics of the Large Language Models in Scholarly Publishing. arXiv preprint arXiv:2303.13367, 2023.

26. George, A.S. and A.H. George, A review of ChatGPT AI's impact on several business sectors. Partners Universal International Innovation Journal, 2023. 1(1): p. 9-23.

27. Rahaman, M., Can chatgpt be your friend? emergence of entrepreneurial research. Emergence of Entrepreneurial Research (February 18, 2023), 2023.

28. Tong, Y. and L. Zhang, Discovering the next decade's synthetic biology research trends with ChatGPT. Synthetic and Systems Biotechnology, 2023. 8(2): p. 220.

29. Badini, S., et al., Assessing the capabilities of ChatGPT to improve additive manufacturing troubleshooting. Advanced Industrial and Engineering Polymer Research, 2023.

30. Akyar, I., Standard operating procedures (what are they good for?). Latest research into quality control, 2012: p. 367-391.

31. Zhang, M., Fault diagnosis & root cause analysis of invertible dynamic system. 2017, Université Paul Sabatier-Toulouse III.

32. ALSEDDIQI, M., et al., Exploring the Benefits of ChatGPT in Medical Equipment Maintenance: An Evaluation of Performance. 2023.

33. White, J., et al., Chatgpt prompt patterns for improving code quality, refactoring, requirements elicitation, and software design. arXiv preprint arXiv:2303.07839, 2023.

34. Dong, Y., et al., Self-collaboration Code Generation via ChatGPT. arXiv preprint arXiv:2304.07590, 2023.

35. Biswas, S., Role of ChatGPT in Computer Programming.: ChatGPT in Computer Programming. Mesopotamian Journal of Computer Science, 2023. 2023: p. 8-16.

36. Eysenbach, G., The role of chatgpt, generative language models, and artificial intelligence in medical education: A conversation with chatgpt and a call for papers. JMIR Medical Education, 2023. 9(1): p. e46885.

37. Martin, J.A., K.A. Miller, and E. Pinkhassik, Starting and sustaining a laboratory safety team (LST). ACS Chemical Health & Safety, 2020. 27(3): p. 170-182.

38. Sousa, S.P., et al., Health and safety concerns related to CNT and graphene products, and related composites. Journal of Composites Science, 2020. 4(3): p. 106.

39. Council, N.R., Prudent practices in the laboratory: handling and management of chemical hazards, updated version. 2011.

40. Tabard, A., W.E. Mackay, and E. Eastmond. From individual to collaborative: the evolution of prism, a hybrid laboratory notebook. in Proceedings of the 2008 ACM conference on Computer supported cooperative work. 2008.

41. Bird, C.L., C. Willoughby, and J.G. Frey, Laboratory notebooks in the digital era: the role of ELNs in record keeping for chemistry and other sciences. Chemical Society Reviews, 2013. 42(20): p. 8157-8175.

42. Lund, B.D. and T. Wang, Chatting about ChatGPT: how may AI and GPT impact academia and libraries? Library Hi Tech News, 2023.

43. Chen, L., et al., The Future of ChatGPT-enabled Labor Market: A Preliminary Study. arXiv preprint arXiv:2304.09823, 2023.

44. Zhou, C., et al., A comprehensive survey on pretrained foundation models: A history from bert to chatgpt. arXiv preprint arXiv:2302.09419, 2023.

45. Kowsari, K., et al., Text classification algorithms: A survey. Information, 2019. 10(4): p. 150.

46. Bast, H. and C. Korzen. A benchmark and evaluation for text extraction from PDF. in 2017 ACM/IEEE joint conference on digital libraries (JCDL). 2017. IEEE.

47. Emenike, M.E. and B.U. Emenike, Was This Title Generated by ChatGPT? Considerations for Artificial Intelligence Text-Generation Software Programs for Chemists and Chemistry Educators. Journal of Chemical Education, 2023.

48. Hossain, M.Z., et al., A comprehensive survey of deep learning for image captioning. ACM Computing Surveys (CsUR), 2019. 51(6): p. 1-36.

49. Biswas, S.S., Potential use of chat gpt in global warming. Annals of biomedical engineering, 2023: p. 1-2.

50. Midway, S.R., Principles of effective data visualization. Patterns, 2020. 1(9): p. 100141.

51. Malandrakis, N., et al., Controlled text generation for data augmentation in intelligent artificial agents. arXiv preprint arXiv:1910.03487, 2019.

52. Ahmad, M.S., et al., RetClean: Retrieval-Based Data Cleaning Using Foundation Models and Data Lakes. arXiv preprint arXiv:2303.16909, 2023.

53. Le, V. and S. Gulwani. Flashextract: A framework for data extraction by examples. in Proceedings of the 35th ACM SIGPLAN Conference on Programming Language Design and Implementation. 2014.

54.  Romero, C. and S. Ventura, Data mining in education. Wiley Interdisciplinary Reviews: Data mining and knowledge discovery, 2013. 3(1): p. 12-27.

 


Share
Facebook
Twitter
Instagram
Google Plus
In
YouTube