the above transcription of normalization is a detailed (narrow) transcription according to the rules of the International Phonetic Association; you can find a description of each symbol by clicking the phoneme buttons in the secction below.
normalization is pronounced in five syllables
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example pitch curve for pronunciation of normalization
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video examples of normalization pronunciation
An example use of normalization in a speech by a native speaker of american english:
“… moving down to normalization of the …”
meanings of normalization
In relational database design, a process that breaks down data into record groups for efficient processing, by eliminating redundancy.
A process whereby artificial and unwanted norms of behaviour and models of behaviour are made to seem natural and wanted, through propaganda, influence, imitation and conformity.
Sharing or enforcement of standard policies.
Any process that makes something more normal or regular, which typically means conforming to some regularity or rule, or returning from some state of abnormality.
Process of establishing normal diplomatic relations between two countries.
Standardization, act of imposing standards or norms or rules or regulations.
Globalization, the process of making a worldwide normal and dominant model of production and consumption.
The process of removing statistical error in repeated measured data.
Making a normalized production.
normalization frequency in english - C2+ level of CEFR
the word normalization occurs in english on average 0.3 times per one million words; this frequency warrants it to be in the study list for C2+ level of language mastery according to CEFR, the Common European Framework of Reference.
topics normalization can be related to
it is hard to perfectly classify words into specific topics since each word can have many context of its use, but our machine-learning models believe that normalization can be often used in the following areas: