SENSOR MA’LUMOTLARINI QAYTA ISHLASHDA TAQSIMLANGAN TEXNOLOGIYALAR TAHLILI
Maqola haqida umumiy ma'lumotlar
Ushbu maqolada sensor ma’lumotlari manbalari, ularni qanday shakllanishi va qayta ishlashga qanday tayyorlanishi haqida so’z boradi. Ma’lumotlarni qayta ishlashda bir necha texnoogiyalar mavjud. Lekin sensor ma’lumotlari turli xil bo’lishi va real vaqtda to’xtovsiz bo’lishi ularni katta hajmli ma’lumotlar deb atashga sabab bo’ladi. Shuning uchun ham big data larni qayta ishlashda taqsimlangan hamda parallel texnologiyalardan foydalanish kerak bo’ladi. Bu maqolada bir necha taqsimlangan texnologiyalar tahlil qilingan.
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Annazarova , B. R. (2023). SENSOR MA’LUMOTLARINI QAYTA ISHLASHDA TAQSIMLANGAN TEXNOLOGIYALAR TAHLILI. Academic Research in Educational Sciences, 4(5), 71–75. https://doi.org/
Annazarova , Barno. “SENSOR MA’LUMOTLARINI QAYTA ISHLASHDA TAQSIMLANGAN TEXNOLOGIYALAR TAHLILI.” Academic Research in Educational Sciences, vol. 5, no. 4, 2023, pp. 71–75, https://doi.org/.
Annazarova , R. 2023. SENSOR MA’LUMOTLARINI QAYTA ISHLASHDA TAQSIMLANGAN TEXNOLOGIYALAR TAHLILI. Academic Research in Educational Sciences. 5(4), pp.71–75.