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datamorteler

Datamorteler is a term used in information technology to describe a data lifecycle concept focused on the end-of-life handling of data objects. It refers to automated processes that determine when data should be preserved, anonymized, archived, or deleted based on predefined retention policies and privacy requirements. The concept emphasizes data mortality as part of data governance, balancing analytical value with storage cost and risk.

Overview and scope

Datamorteler encompasses policy-driven mechanisms that classify data by sensitivity, source, and retention needs, then apply actions

Applications and implications

The approach supports regulatory compliance (privacy and data protection laws), data minimization principles, and risk management

Challenges

Implementing datamorteler practices can be complex due to heterogeneous data sources, evolving regulations, and the need

See also

Data lifecycle management, Data retention policy, Data governance, Data anonymization. Notes: the term is not universally

according
to
rules.
Key
components
typically
include
a
retention
policy
engine,
data
tagging
and
classification,
archival
or
nearline
storage,
secure
deletion,
and
anonymization
or
aggregation
where
appropriate.
The
workflow
generally
proceeds
from
data
ingestion
to
tagging,
processing,
retention
scoring,
and
final
action
(archive,
delete,
or
anonymize),
with
audit
trails
to
support
accountability
and
compliance.
by
reducing
exposed
data
and
simplifying
data
management.
It
also
aims
to
preserve
analytical
value
through
controlled
preservation,
summarization,
or
anonymization
rather
than
retaining
unnecessary
raw
data.
to
harmonize
policies
across
systems.
Ensuring
data
can
be
deleted
securely,
validating
archival
integrity,
and
maintaining
accurate
metadata
are
common
considerations.
standardized
and
may
be
used
with
variable
meanings
in
different
organizations.