- Security >
- Implement Field Level Redaction
Implement Field Level Redaction¶
On this page
The $redact
pipeline operator restricts the contents of the
documents based on information stored in the documents themselves.
To store the access criteria data, add a field to the documents and embedded documents. To allow for multiple combinations of access levels for the same data, consider setting the access field to an array of arrays. Each array element contains a required set that allows a user with that set to access the data.
Then, include the $redact
stage in the
db.collection.aggregate()
operation to restrict contents of
the result set based on the access required to view the data.
For more information on the $redact
pipeline operator,
including its syntax and associated system variables as well as
additional examples, see $redact
.
Procedure¶
For example, a forecasts
collection contains documents of the
following form where the tags
field determines the access levels
required to view the data:
{
_id: 1,
title: "123 Department Report",
tags: [ [ "G" ], [ "FDW" ] ],
year: 2014,
subsections: [
{
subtitle: "Section 1: Overview",
tags: [ [ "SI", "G" ], [ "FDW" ] ],
content: "Section 1: This is the content of section 1."
},
{
subtitle: "Section 2: Analysis",
tags: [ [ "STLW" ] ],
content: "Section 2: This is the content of section 2."
},
{
subtitle: "Section 3: Budgeting",
tags: [ [ "TK" ], [ "FDW", "TGE" ] ],
content: {
text: "Section 3: This is the content of section3.",
tags: [ [ "HCS"], [ "FDW", "TGE", "BX" ] ]
}
}
]
}
For each document, the tags
field contains various access groupings
necessary to view the data. For example, the value [ [ "G" ], [
"FDW", "TGE" ] ]
can specify that a user requires either access level
["G"]
or both [ "FDW", "TGE" ]
to view the data.
Consider a user who only has access to view information tagged with
either "FDW"
or "TGE"
. To run a query on all documents with
year 2014
for this user, include a $redact
stage as in
the following:
var userAccess = [ "FDW", "TGE" ];
db.forecasts.aggregate(
[
{ $match: { year: 2014 } },
{ $redact:
{
$cond: {
if: { $anyElementTrue:
{
$map: {
input: "$tags" ,
as: "fieldTag",
in: { $setIsSubset: [ "$$fieldTag", userAccess ] }
}
}
},
then: "$$DESCEND",
else: "$$PRUNE"
}
}
}
]
)
The aggregation operation returns the following “redacted” document for the user:
{ "_id" : 1,
"title" : "123 Department Report",
"tags" : [ [ "G" ], [ "FDW" ] ],
"year" : 2014,
"subsections" :
[
{
"subtitle" : "Section 1: Overview",
"tags" : [ [ "SI", "G" ], [ "FDW" ] ],
"content" : "Section 1: This is the content of section 1."
},
{
"subtitle" : "Section 3: Budgeting",
"tags" : [ [ "TK" ], [ "FDW", "TGE" ] ]
}
]
}
See also