About the Journal
Call for Papers 
International Scientific Technical and Economic Research 
Dear Authors. 
We cordially invite you to submit your manuscripts to the journal International Scientific 
Technical and Economic Research. The journal is an international academic publication with the international issue number: ISSN 2959-1309. It is dedicated to the publication of high quality research in the fields of science, technology and economics. 
We welcome original research papers in all fields, including but not limited to the 
following topics: 
1. scientific research: research results in the fields of physics, chemistry, biology, earth 
sciences, mathematics, etc; 
2. technological developments: technological innovations in the fields of engineering, 
computer science, information technology, biotechnology, etc; 
3. economic research: economic theory and empirical research in the fields of  macroeconomics, microeconomics, international economics, finance, etc; 
4. interdisciplinary: interdisciplinary research in multiple fields, such as the relationship 
between science and technology innovation and economic development, the impact of 
technology applications on society and the environment, etc. 
Please follow the following requirements for the call for papers: 
1. Originality: Your submitted paper must be original, with a repetition rate of less than 
20%, and not published or submitted in other journals or conferences. 
2. Academic quality: We value academic rigor and quality, so please ensure that your 
research methods, data analysis, and paper structure meet academic standards. 
3. Article format: Please write and format your paper according to the journal's author 
guidelines. We accept submissions in English language only. 
4. Submission method: Submit your paper via our email address. email (istaer@126.com). 
5. Collaboration and number of authors: We encourage collaborative research, but please 
ensure that all authors have substantial contributions and are clearly listed in the paper. 
6. Review process: Our review process includes peer review to ensure fairness and 
anonymity of the review. Please wait patiently for the review results and make revisions based 
on the review comments, all of which will be returned in the email. 
7. The journal charges a small page fee according to the quality of the paper; it is 
recommended to indicate the fund project to the teacher; if there is a fund project, the page fee will be significantly reduced and other publication and mailing costs will be charged, and the publication cycle will take about 3 months. 
We are committed to completing the review process in a short time and providing high 
quality publication services. Successfully published papers will be published in full in both the print and online versions of the journal, providing a valuable reference for the global academic community and industry. 
If you have any questions or require further information, please feel free to contact our 
editorial team. We look forward to receiving your valuable submissions! 
Good luck! 
Editorial Board of International Scientific Technical and Economic Research 
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