Application of AI in Research and Data Science
Authors/Creators
-
Rahaeimehr, Reza
-
Babakhani, Zahra
-
Fakharzadeh Moghadam, Omid
-
Mir Nasir, Seyedmohammadmahan
-
Safaei, Parisa
-
Abdollahi, Mir Ali Asghar
-
Bakhtiari Haftlang, Mina
-
Baghaei-Shiva, Ghazaleh
-
Salimian, Nasrin
-
Taheri Hosseinkhani, Nima
-
Abedi, Sanaz
-
Alinasab, Niloufar
-
Damiri, Maryam
-
Amiri, Fatemeh
-
Arabshahi, Reza
-
Montazeri, Sina
-
Fattahiamin, Sogand
-
Mahbod, Ali
-
Bahadori, Nastaran
-
Rabiei, Negin
-
Hasani Mehraban, Saeed
-
Haghighibardineh, Seyedehroshanak
-
Kowsari, Kimia
-
Amiri, Ali
-
Nakhaie, Mohsen
-
Khodadadpour Mahani, Fatemeh
-
Yazdantalab, Elham
-
Zafar Jafarzadeh, Ali
-
Taheri, Sadaf
-
Gorjizadeh, Neda
- Mohammadpoor, Habib
-
Eslami, Mohammad
-
Abdollahpour, Saman
-
Amiri Marbini, Sanaz
-
Moradi, Dariush
Description
Artificial intelligence (AI) has become an essential component of modern research and data science, transforming how knowledge is generated, analyzed, and applied. Its integration into research workflows has accelerated discovery across disciplines by enabling the processing of vast and complex datasets that would be impossible for humans to analyze manually. Through techniques such as machine learning, deep learning, and natural language processing, AI identifies patterns, correlations, and causal relationships within data, facilitating new insights and predictive modeling. In data science, AI algorithms automate data cleaning, integration, and analysis, enhancing accuracy and efficiency. Predictive analytics models help forecast trends and outcomes in areas such as healthcare, economics, and environmental science. In biomedical research, AI assists in identifying genetic markers, analyzing medical images, and accelerating drug discovery. In the social sciences, it processes large volumes of text and social media data to detect behavioral patterns and public sentiment. AI also supports research reproducibility and transparency by automating statistical validation and optimizing experimental design. Natural language processing tools are increasingly used to scan scientific literature, summarize findings, and identify emerging research trends, thereby reducing the time required for literature reviews. Moreover, AI-driven simulations and optimization models allow researchers to test hypotheses virtually before conducting physical experiments, saving resources and time. Ultimately, the application of AI in research and data science is reshaping scientific inquiry into a more data-driven, efficient, and interdisciplinary process, enhancing the capacity of researchers to address complex global challenges with unprecedented speed and precision.
Files
Book60.pdf
Files
(1.0 MB)
| Name | Size | Download all |
|---|---|---|
|
md5:4f4c24b5e4920cd3685587d2548686d0
|
1.0 MB | Preview Download |