Harmonized Data

From dataZoa Wiki
Revision as of 09:26, 7 December 2016 by SNC (Talk | contribs) (Missing Values Handling)

Jump to: navigation, search

As you bring data into dataZoa, it is harmonized (or "normalized") so that any series can work with any other. While we preserve all the original series documentation, we load the dates and values into an idealized time series. This automatically handles the specific nuances of time series data, elimination the "data drudgery"; cleaning, aligning, pasting, re-typing and such.

Date Handling

Frequency/Periodicity

  • PERIODICITIES (FREQUENCIES):
    • Daily
    • Weekly
    • Monthly
    • Quarterly
    • Semiannual
    • Annual
    • Irregular

Date Range

  • EARLIEST DATE:
    • Because of the calendar discontinuity introduced at the Gregorian transition, the earliest year that can be stored accurately to the day is 1753.
    • Non accurate dates can begin as early as 1/1/1000.
  • LATEST DATE:
    • 12/31/9999

Gaps

Date Formats

Inputs
Outputs

Data Value Handling

Missing Values Handling

Values can be "missing" for different reasons, with different implications. dataZoa recognizes several different types of missing values and treats them appropriately.

Non-Numeric Type Meaning String to enter as Input String displayed as Output
No Data Data point is known not to exist ##ND## ND
Non-Disclosed Data Data point exists but is not being shown ##NDD## NDD
Not Available Data may exist but is not available ##NA## NA
Calculations

In all calculations, missing data has the highest precedence; e.g. a number plus an NA yields an NA. Specialized functions in the ComputeCloud can be used for specialized handling, such as carry-forward, etc.

Tables

By default, No Data (ND) formats as a blank, while NA, and NDD data are formatted with "NA" and "NDD", respectively. To fine tune these representations, see Displays.

Charts

Missing values are typically shown as gaps.

Value Formatting