data cleaning - meaning and definition. What is data cleaning
Diclib.com
ChatGPT AI Dictionary
Enter a word or phrase in any language 👆
Language:

Translation and analysis of words by ChatGPT artificial intelligence

On this page you can get a detailed analysis of a word or phrase, produced by the best artificial intelligence technology to date:

  • how the word is used
  • frequency of use
  • it is used more often in oral or written speech
  • word translation options
  • usage examples (several phrases with translation)
  • etymology

What (who) is data cleaning - definition

PROCESS OF DETECTING AND CORRECTING (OR REMOVING) CORRUPT, INACCURATE OR UNWANTED RECORDS FROM A RECORD SET
Data cleaning; Data Cleaning; User:Aceldam/Cleansing and Conforming Data; Cleansing and conforming data; Statistical data editing; Cleansing and Conforming Data

Data cleansing         
Data cleansing or data cleaning is the process of detecting and correcting (or removing) corrupt or inaccurate records from a record set, table, or database and refers to identifying incomplete, incorrect, inaccurate or irrelevant parts of the data and then replacing, modifying, or deleting the dirty or coarse data. Data cleansing may be performed interactively with data wrangling tools, or as batch processing through scripting or a data quality firewall.
Teeth cleaning         
PART OF ORAL HYGIENE
Dental cleaning; Tooth cleaning; Dental prophylaxis; Professional teeth cleaning
Teeth cleaning is part of oral hygiene and involves the removal of dental plaque from teeth with the intention of preventing cavities (dental caries), gingivitis, and periodontal disease. People routinely clean their own teeth by brushing and interdental cleaning, and dental hygienists can remove hardened deposits (tartar) not removed by routine cleaning.
dry-cleaning         
  • A dry-cleaner in East Germany, 1975
  • groups]] bind water, leading to swelling of the fabric and leading to wrinkling, which is minimized when these materials are treated with tetrachloroethylene or other dry cleaning solvents.
  • Italian dry cleaning machine used in France in the 1960s
  • Many dry cleaners place cleaned clothes inside thin clear plastic garment bags.
  • Series 3 dry cleaning machine with PLC control. Manufacturer: BÖWE Textile Cleaning; Germany.
  • A modern dry cleaning machine with touchscreen and SPS control. Manufacturer: EazyClean, type EC124. Photo taken prior to installation.
  • Solvent reprocessing machinery (Germany)
  • A Firbimatic Saver Series. This machine uses activated clay filtration instead of distillation. It uses much less energy than conventional methods.
  • [[Perchloroethylene]] is the main solvent used in dry cleaning
  • A modern dry cleaning machine for use with various solvents
CLEANING OF FABRICS IN NON-AQUEOUS SOLVENTS
Dry Cleaning Industry; Dry clean; Dry Cleaning; Dry cleaner; Drycleaning; Drycleaner; Dry cleaners; Dry-cleaning; Dry clean only; Dryclean; Dry-cleaned; Dry cleaning bag; Dry-cleaning solvent; Jean Baptiste Jolly; Dry-cleaning shop; Dry cleaning solvent
also dry cleaning
1.
Dry-cleaning is the action or work of dry-cleaning things such as clothes.
He owns a dry-cleaning business.
N-UNCOUNT
2.
Dry-cleaning is things that have been dry-cleaned, or that are going to be dry-cleaned.
N-UNCOUNT

Wikipedia

Data cleansing

Data cleansing or data cleaning is the process of detecting and correcting (or removing) corrupt or inaccurate records from a record set, table, or database and refers to identifying incomplete, incorrect, inaccurate or irrelevant parts of the data and then replacing, modifying, or deleting the dirty or coarse data. Data cleansing may be performed interactively with data wrangling tools, or as batch processing through scripting or a data quality firewall.

After cleansing, a data set should be consistent with other similar data sets in the system. The inconsistencies detected or removed may have been originally caused by user entry errors, by corruption in transmission or storage, or by different data dictionary definitions of similar entities in different stores. Data cleaning differs from data validation in that validation almost invariably means data is rejected from the system at entry and is performed at the time of entry, rather than on batches of data.

The actual process of data cleansing may involve removing typographical errors or validating and correcting values against a known list of entities. The validation may be strict (such as rejecting any address that does not have a valid postal code), or with fuzzy or approximate string matching (such as correcting records that partially match existing, known records). Some data cleansing solutions will clean data by cross-checking with a validated data set. A common data cleansing practice is data enhancement, where data is made more complete by adding related information. For example, appending addresses with any phone numbers related to that address. Data cleansing may also involve harmonization (or normalization) of data, which is the process of bringing together data of "varying file formats, naming conventions, and columns", and transforming it into one cohesive data set; a simple example is the expansion of abbreviations ("st, rd, etc." to "street, road, etcetera").