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WHAT ARE THE FREQUENTLY ASKED INTERVIEW QUESTIONS WITH ANSWERS: A FIRST POST OF A SERIES OF THREE

In the domain of data science, you’ll get a wide range of different career options to choose from. If you take an interest in data cleaning and data exploration and want to work as a data analyst, here are some interview questions that are frequently asked with their answers to get you job-ready.

  • Data cleaning where I’ll remove or fix incomplete, duplicate, corrupted, or erroneous data within a dataset.
  • Data exploration and interpretation where I’ll explore massive data sets to find out initial attributes, patterns, and points of interest and analyze these results.
  • To provide support for each phase of data analysis, and analyze complex datasets to identify the hidden patterns in them and extract insights for decision-making.
  • To keep the databases secured.
  • Cluster analysis
  • Markov process
  • Rank statistics
  • Bayesian methodologies
  • Imputation techniques
  • Tableau
  • Google Search Operators
  • RapidMiner
  • Google Fusion Tables
  • NodeXL
  • KNIME
  • OpenRefine
  • Solver
  • it’s intuitive.
  • data in it can be easily consumed.
  • data changes in it are scalable.
  • it’s responsive and adaptive to changes, which would make it capable of supporting new or growing business needs.
  • Feature transformation where new features are built from existing features.
  • Feature generation (or feature extraction) that involves creating new features via domain-specific or generic automatic feature generation methods; these new features aren’t usually the result of feature transformation.
  • Feature selection, where a small set of features are chosen from an extremely big pool of features; with the decreased feature set size, it becomes computationally viable to use specific data analytic and machine learning algorithms.
  • Automatic feature engineering, which is a generic method for automatically producing a huge number of features and choosing an effective subset of the produced features.
  • Feature analysis and evaluation where the efficacy of features and feature sets is assessed.

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