• Post category:StudyBullet-18
  • Reading time:4 mins read


Business Intelligence, Predictive Analytics, BI, Artificial Intelligence and BI, Big Data Analytics. BI Tools, AI and ML

What you will learn

Demonstrate a thorough understanding of the concepts, scope, and importance of Business Intelligence (BI) and predictive analytics.

Acquire skills to identify, collect, clean, transform, and integrate data from various sources for BI and predictive analytics projects.

Utilize statistical methods and data visualization techniques to summarize and interpret data.

Develop and evaluate predictive models using techniques such as regression, classification, and clustering.

Apply advanced methods, including time series analysis, machine learning algorithms, and text mining, to complex business problems.

Understand the characteristics of big data and leverage big data technologies like Hadoop and Spark.

Implement real-time analytics solutions to provide immediate insights and responses to ongoing business activities.

Develop project planning and management skills specific to BI and predictive analytics initiatives.

Ensure compliance with legal and regulatory requirements in the handling and analysis of data.

Implement and utilize cloud-based platforms for BI and predictive analytics, such as AWS, Azure, and Google Cloud.

Implement and utilize cloud-based platforms for BI and predictive analytics, such as AWS, Azure, and Google Cloud.

Explore various career paths and opportunities, identifying necessary skills and certifications for success in the field.

Why take this course?

Course Description: Business Intelligence and Predictive Analytics 101

This comprehensive course delves into the essential principles and advanced techniques of Business Intelligence (BI) and Predictive Analytics, equipping students with the knowledge and skills needed to transform raw data into actionable insights. Through eight meticulously designed modules, learners will explore the fundamentals of BI and predictive analytics, mastering data collection, cleaning, transformation, and integration processes. The course covers a wide range of topics, including statistical methods for descriptive analytics, predictive modeling techniques like regression and classification, and advanced methods such as time series analysis, machine learning, and text mining.

Students will also gain practical experience with popular BI tools and big data technologies, learning to implement real-time analytics and cloud-based BI solutions. The curriculum emphasizes the importance of data governance, ethics, and compliance, ensuring that students are well-versed in the legal and regulatory aspects of data analytics. By examining industry-specific case studies and emerging trends, the course prepares students for various career opportunities in the dynamic field of BI and predictive analytics, highlighting the necessary skills and certifications for success.

In this 101 course, I would like to teach the 8 major topics:

Module 1: Introduction to Business Intelligence and Predictive Analytics

Module 2: Data Collection and Preparation


Get Instant Notification of New Courses on our Telegram channel.


Module 3: Descriptive Analytics

Module 4: Predictive Modeling Techniques

Module 5: Advanced Predictive Analytics

Module 6: Big Data and Predictive Analytics

Module 7: Implementing BI and Predictive Analytics Solutions

Module 8: Case Studies and Emerging Trends

Enroll now and learn today!

English
language