What you'll get
  • 54+ Hours
  • 9 Courses
  • Course Completion Certificates
  • Self-paced Courses
  • Technical Support
  • Case Studies

Synopsis

  • Predictive modeling tools such as SPSS, Minitab, and SAS Enterprise Miner enable users to analyze and visualize data.
  • Provides one year of course access for flexible learning.
  • Open to individuals aiming to build a career in predictive analytics.
  • Recommends basic familiarity with predictive analytics concepts.
  • Includes a course completion certificate.
  • Offers verifiable certificates with unique links for courses and projects, suitable for resumes and professional profiles.
  • Delivered as a self-paced video-based training program.

Content

Courses No. of Hours Certificates Details
Predictive Modeling using Minitab15h 32mView Curriculum
Predictive Modeling using SPSS13h 17mView Curriculum
SAS - Predictive Modeling with SAS Enterprise Miner9h 19mView Curriculum
Predictive Modeling Training1h 6mView Curriculum
Courses No. of Hours Certificates Details
Logistic Regression Project using SAS Stat4h 26mView Curriculum
Project on Linear Regression in Python2h 28mView Curriculum
Project on Term Deposit Prediction using R3h 2mView Curriculum
Credit-Default using Logistic Regression3h 3mView Curriculum
House Price Prediction using Linear Regression3h 2mView Curriculum

Description

This course equips learners with the skills to analyze data, build predictive models, and generate actionable insights using industry-standard tools like SPSS, Minitab, and SAS Enterprise Miner. Designed for students, professionals, and anyone aiming to advance a career in data science, the program covers essential concepts, practical applications, and hands-on projects.
Participants gain a strong foundation in statistics, programming (Python and R), and predictive modeling techniques, preparing them for roles such as Data Analyst, Statistician, or IT professional in data-driven industries. The course is self-paced, includes verifiable completion certificates, and provides real-world project experience to showcase skills effectively.

Sample Certificate

Course Certification

Requirements

  • The program does not require mandatory prerequisites, though prior exposure to relevant concepts and tools can enhance the learning experience.
  • Learners demonstrate a genuine interest in data science and analytics.
  • A solid understanding of descriptive and inferential statistics is strongly associated with success in the program.
  • Having experience with programming languages like Python and R, coupled with practical coding practice, can greatly enhance learning.
  • Basic knowledge of programming fundamentals, including variables, control structures, functions, and common data structures, is advised.
  • Participants should be self-motivated, committed to continuous learning, and prepared to dedicate approximately 10 hours per week to meet course expectations.

Target Audience

  • Students pursuing a diploma, undergraduate, or graduate degree in statistics, mathematical modeling, or predictive analytics can benefit from this course, which covers the essential fundamentals.
  • Professionals aiming to become data analysts, statisticians, or IT specialists seeking a career transition into data analysis and predictive modeling are eligible to enroll.
  • Research scientists, IT experts, educators, and professors with an interest in data can leverage this course to enhance their analytical skills.
  • Individuals keen on learning to harness data to predict future trends will gain practical knowledge through real-world projects included in the training.