Video 3 Carga Productos

Video 3 Carga Productos

Loading Product Information and Data Transformation

Introduction to Data Loading

  • The previous video covered loading an input category file with four categories and discussed the necessary configuration changes for data sources.
  • In this video, the focus shifts to loading product information from an Excel file, moving away from previous options.

Importing Data from Excel

  • The process involves locating the Excel file containing product data, which is recognized by Excel as a table named "productos."
  • Regardless of which table is selected, the information remains consistent across tables; variations depend on available data.

Transforming Data Steps

  • The transformation process includes three main steps: origin, navigation, and header management.
  • A new step involves selecting the specific sheet within the Excel workbook that contains product data.

Suggestions for Efficient Data Transformation

  • It’s recommended to perform all necessary transformations first before removing any columns to avoid redundancy in steps.
  • Understanding cost versus price is crucial; cost refers to production expenses while price indicates selling value.

Changing Data Types

  • Product costs need conversion into a currency format; this can be done by selecting appropriate numeric types with decimals.
  • Similar transformations apply to product prices, ensuring consistency in data formatting throughout.

Reviewing Additional Information

  • Other attributes like product category and subcategory are confirmed as correct numeric types without further changes needed.
  • A column labeled "wiki" contains numerical values representing categories; there’s potential for enhancing clarity by replacing numbers with category names.

Combining Queries for Enhanced Clarity

Merging Queries

  • To improve readability, merging queries allows numerical representations of categories to be replaced with their respective names through a combination of queries.

Steps for Combining Queries:

  1. Select the option to combine queries.
  1. Choose relevant tables (categories).

Understanding Data Transformation in a Joint System

Overview of Column Configuration

  • The joint system allows for similar functionality as previous configurations, recommending settings that include a left-side nerve configuration.
  • A new column labeled "categories" is created, which pulls information from existing categories that match the product data from Wiki.

Information Extraction Process

  • Users can expand the view to see all columns related to the selected product without needing to select Wiki products again.
  • By selecting specific options, users can rename categories for clarity, eliminating unnecessary numeric identifiers and displaying only relevant category names.

Renaming and Prefixed Adjustments

  • Automatic renaming occurs based on source information; however, users have the option to customize prefixes for better clarity.
  • Users can delete or modify prefixes directly through settings, enhancing the organization of their data presentation.

Managing Columns and Data Integrity

  • Additional transformations may involve removing unnecessary columns that do not contribute to sales modeling or analysis.
  • Users are encouraged to utilize keyboard shortcuts (like Control + click) for efficient multi-column selection when deleting unneeded data.

Recovery of Deleted Information

  • If a column is mistakenly deleted, users can easily revert changes by editing their queries without losing original data integrity.
  • The system retains all steps executed within the current version of the file, allowing users to recover any lost information seamlessly.

Conclusion on Data Management Practices

  • There’s no need for concern when deleting columns since all actions are reversible within the query context; original files remain untouched.