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Analytics Practice Exam

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Analytics Practice Exam

Analytics refers to the practice of analyzing data to make decisions form the available or collected data. The practice helps to know patterns, and trends, so as to take data-driven decisions for the company t make more profits. The practice involves statistical methods, algorithms, and data visualization software to analyze large data sets  and interpret insights. It is applied in finance, healthcare, marketing, and operations.

Certification in analytics verifies your skills and knowledge in data analysis, statistics, and data-driven decision-making. This certification assess you in analytical tools, techniques, and methodologies.

Why is Analytics certification important?

  • Shows your proficiency in data analysis techniques and tools.
  • Enhances your employability in a competitive job market.
  • Improves your career prospects for data-driven roles.
  • Builds your credibility.
  • Provides your opportunities in data mining, and business intelligence.
  • Increases your earning potential.
  • Validates your ability to apply analytics.
  • Offers you a path for career advancement.

Who should take the Analytics Exam?

  • Data Analyst
  • Business Analyst
  • Data Scientist
  • Marketing Analyst
  • Operations Analyst
  • Financial Analyst
  • Risk Analyst
  • Business Intelligence Analyst
  • Data Engineer
  • Product Analyst
  • Market Research Analyst
  • Management Consultant
  • Healthcare Analyst
  • Supply Chain Analyst
  • Data Visualization Specialist

Skills Evaluated

Candidates taking the certification exam on the Analytics is evaluated for the following skills:

  • Data collection and cleaning
  • Descriptive and inferential statistics
  • Data visualization tools and techniques
  • Python, R, or SQL
  • SAS, Tableau, Excel, Power BI
  • Machine learning and predictive modeling
  • Data insights
  • Application of analytics
  • Statistical testing and hypothesis testing
  • Dashboards and reports

Analytics Certification Course Outline
The course outline for Analytics certification is as below -

 

Domain 1 - Introduction to Analytics
  • Overview of analytics and its importance
  • Types of analytics (descriptive, predictive, prescriptive)
  • Key metrics and KPIs

 

Domain 2 - Data Collection and Preparation
  • Data sources and types
  • Data cleaning and preprocessing techniques
  • Handling missing or inconsistent data

 

Domain 3 - Descriptive Analytics
  • Measures of central tendency (mean, median, mode)
  • Measures of spread (variance, standard deviation)
  • Data visualization techniques (charts, graphs, histograms)

 

Domain 4 - Inferential Statistics
  • Probability theory and distributions
  • Sampling techniques and hypothesis testing
  • Confidence intervals and p-values

 

Domain 5 - Predictive Analytics
  • Understanding Regression analysis (linear, multiple)
  • Understanding Time series analysis and forecasting
  • Understanding logistic regression, decision trees, etc.

 

Domain 6 - Data Visualization
  • Charts and graphs
  • Tableau, Power BI, etc.

 

Domain 7 - Advanced Analytics Techniques
  • Understanding Machine learning algorithms (supervised, unsupervised learning)
  • Understanding Clustering techniques (K-means, hierarchical)
  • Understanding Natural Language Processing (NLP)

 

Domain 8 - Business Analytics
  • Applying analytics to marketing, sales, and finance
  • Customer segmentation and behavior analysis
  • Analyzing financial and operational data

 

Domain 9 - Tools and Technologies for Analytics
  • Analytical software (Excel, SAS, R, Python, etc.)
  • Big data tools (Hadoop, Spark)
  • Cloud computing in analytics

 

Domain 10 - Reporting and Decision Making
  • Developing dashboards and reports
  • Communicating data insights to stakeholders
  • Making data-driven business decisions

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