Data Management and Business Intelligence
Associate Certified Analytics Professional aCAP
Overview:
Introduction:
This program is designed to prepare participants for the certification exam only.
This training program is designed to enhance participants' knowledge and skills in analytics. Through it, they will gain a deep understanding of analytical methods, tools, and best practices essential for effective data-driven decision-making.
Program Objectives:
By the end of this program, participants will be able to:
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Grasp the core concepts and principles of data analytics.
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Utilize various techniques to analyze data and generate insights.
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Create and validate data models to support decision-making.
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Effectively communicate findings and recommendations to stakeholders.
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Gain the knowledge and skills necessary to pass the aCAP certification exam.
Targeted Audience:
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Aspiring data analysts seeking certification.
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Professionals transitioning into analytics roles.
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Managers looking to enhance their data-driven decision-making skills.
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IT professionals interested in analytics.
Program Outlines:
Unit 1:
Data Analytics Fundamentals:
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Overview of data analytics and its importance in business.
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Understanding different data types and sources.
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Techniques for collecting and sourcing data.
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Ensuring data quality and governance.
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Overview of commonly used analytical tools and software.
Unit 2:
Statistical and Quantitative Analysis:
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Understanding measures of central tendency, variability, and distribution.
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Conducting hypothesis testing and confidence interval estimation.
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Applying linear and logistic regression techniques.
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Analyzing time series data for trends and seasonality.
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Utilizing probability distributions and building predictive models.
Unit 3:
Data Management and Preparation:
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Techniques for cleaning and preparing data for analysis.
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Methods for transforming and normalizing data.
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Combining data from different sources for comprehensive analysis.
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Techniques for exploring and visualizing data.
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Creating new features to improve model performance.
Unit 4:
Advanced Analytical Techniques:
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Introduction to machine learning concepts and algorithms.
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Techniques for classification and regression tasks.
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Methods for clustering and association analysis.
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Basics of NLP and text analytics.
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Techniques for evaluating and validating models.
Unit 5:
Communicating Analytical Results
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Principles and best practices for effective data visualization.
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Hands-on practice with tools like Tableau, Power BI, or Python..
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Techniques for presenting data in a compelling narrative.
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Creating insightful reports and dashboards.
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Best practices for presenting findings and recommendations to diverse audiences.
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Prepare for the certifiation exam.