علوم اسلامی و انسانی دیجیتال

علوم اسلامی و انسانی دیجیتال

مروری بر کاربست هوش مصنوعی و فناوری‌های نوین اطلاعات در پژوهش‌های علوم‌ اسلامی

نوع مقاله : مقاله پژوهشی

نویسنده
معاون فناوری مرکز تحقیقات کامپیوتری علوم اسلامی و مدیر آزمایشگاه هوش مصنوعی
چکیده
طی سالهای اخیر با پیشرفت هوش مصنوعی و فناوری اطلاعات شاهد گسترش استفاده از این فناوری‌ها در دامنه‌های کاربردی مختلف هستیم. در این بین، فرایندهای پژوهشی و به طور خاص، پژوهش در محتوای علوم اسلامی نیز از این امر مستثنی نیستند. در راستای بهره‌برداری حداکثری از هوش مصنوعی و فناوری‌های نوین اطلاعات در پژوهش‌های علوم‌ اسلامی طی سالیان اخیر و در اقصی نقاط جامعه اسلامی شاهد تلاش‌های متعددی در این زمینه هستیم. آشنایی با فضای کلی آخرین پیشرفت‌ها در این حوزه می‌تواند از دیدگاه‌های مختلفی حائز اهمیت باشد؛ از قبیل بهره‌مندی از مزایای فناوری‌های نوین در پژوهش‌های علوم اسلامی، ارتقای برنامه‌ریزی‌‌های راهبردی در فرایندهای آموزشی و پژوهشی و در نهایت جریان‌سازی در تولید علم و فناوری در حوزه علوم اسلامی دیجیتال.
در این مطالعه، بر اساس روش‌های استاندارد، مروری روشمند در میان صدها مقاله علمی بین المللی مرتبط با کاربست هوش مصنوعی و فناوری‌های نوین اطلاعات در پژوهش‌های علوم‌ اسلامی به عمل آمده است؛ به طوری که پس از گزینش 975 مقاله از میان بیش از 4 هزار مقاله، علاوه بر شناسایی مراکز و نهادهای فعال در این زمینه، به طبقه‌بندی مقالات گزینش‌شده و ارائه درختواره جامع کاربردی به‌ازای 5 حوزه‌ موضوعی قرآن کریم، حدیث و رجال، محتوای عام علوم اسلامی و فضای مجازی، فقه و اصول و سایر علوم اسلامی و معرفی مقالات شاخص در هر حیطه پرداخته شده است.
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