Dasca in action: Predictive Modeling series / Nurul Nisa’ Khairol Azmi ... [et al.].

Khairol Azmi, Nurul Nisa’ and Abdul Hadi, Az’lina and Mohd Yusop, Noorezatty and Abdul Wahab, Nurul Aini and Azlan, Nuralina and Md Yasin, Zaitul Anna Melisa and Mohd Razali, Nornadiah (2024) Dasca in action: Predictive Modeling series / Nurul Nisa’ Khairol Azmi ... [et al.]. Bulletin. Universiti Teknologi MARA, Negeri Sembilan.

Abstract

The Predictive Modeling Series is a knowledge-sharing program dedicated to enhancing analysis and modeling skills. It is a collaborative effort between the Special Interest Group Data Science and Predictive Analytics (SIG DASCA) and the College of Computing, Informatics, and Mathematics (KPPIM) at UiTM Negeri Sembilan Seremban Campus.
On November 15 and 16, 2023, the Predictive Modeling Series: Time Series Analysis and Forecasting using R programming was successfully conducted at the Library of Tun Abdul Razak, UiTM Negeri Sembilan, Seremban Campus, running from 9:00 am to 4:30 pm as shown in Figure 1. The event attracted a total of 17 beginners and 14 intermediate participants who registered for Course I and Course II of the workshop, respectively. Participants included academicians, industry professionals, and postgraduate students.

Metadata

Item Type: Monograph (Bulletin)
Creators:
Creators
Email / ID Num.
Khairol Azmi, Nurul Nisa’
UNSPECIFIED
Abdul Hadi, Az’lina
UNSPECIFIED
Mohd Yusop, Noorezatty
UNSPECIFIED
Abdul Wahab, Nurul Aini
UNSPECIFIED
Azlan, Nuralina
UNSPECIFIED
Md Yasin, Zaitul Anna Melisa
UNSPECIFIED
Mohd Razali, Nornadiah
UNSPECIFIED
Subjects: P Language and Literature > PN Literature (General) > Collections of general literature
Divisions: Universiti Teknologi MARA, Negeri Sembilan > Kuala Pilah Campus
Journal or Publication Title: What’s What PSPM
ISSN: 2756-7729
Keywords: Library of Tun Abdul Razak, UiTM, Negeri Sembilan, Seremban Campus
Date: March 2024
URI: https://ir.uitm.edu.my/id/eprint/94697
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