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datacapture

Datacapture refers to the process of collecting data from various sources and converting it into a digital form suitable for storage, processing, and analysis. It encompasses both automatic extraction from devices and documents, and manual entry by people.

Sources include structured data from databases and forms, semi-structured data such as emails and invoices, and

A typical datacapture workflow involves data acquisition, extraction, validation, and integration into data stores such as

Applications span enterprise digitization, accounting and invoicing, healthcare records, logistics tracking, and market research. High-quality datacapture

Challenges include ensuring accuracy, completeness, privacy, and security; handling heterogeneous sources; managing latency and costs; and

unstructured
data
like
images,
audio,
and
video.
Common
methods
include
optical
character
recognition
(OCR),
barcode
and
RFID
scanning,
form
recognition,
electronic
data
interchange,
and
mobile
capture
apps.
databases,
data
warehouses,
or
data
lakes.
Technologies
range
from
document
capture
software
and
intelligent
character
recognition
to
machine
learning-based
data
extraction,
rule-based
validation,
and
workflow
orchestration.
supports
data
governance,
compliance,
and
analytics
by
reducing
manual
entry
errors
and
enabling
timely
data
availability.
maintaining
interoperability
with
standards
and
metadata.
Good
practice
emphasizes
validation,
audit
trails,
access
controls,
and
clear
data
quality
metrics.