Complex Row Level Security in Oracle BI (OBIEE)

by Kurt Wolff

Row level security (constraining a user’s view of the data to rows which meet pre-defined criteria) is a common requirement in OBIEE. This post will explore this topic, using a simple schema with a single fact table and three dimension tables, built around the theme of retail sales.

The data model in this schema has dimension tables Weeks, Items and Stores. Users can see all weeks. So Oracle BI security does not have to be concerned with the Weeks table. In the dimension tables there are just three items and three stores.

obiee table 1Complex   Picture2

 

 

 

 

Here is the fact table (partially shown). Store, Item, and Week are foreign keys to the dimension tables. “QS” is the fact (Quantity Sold), which has a SUM aggregation rule.

Complex   Picture3

 

 

 

 

 

 

 

The Business Model looks like this.

Complex   Picture4

 

 

 

 

The first requirement is to restrict the data visibility of some users to just certain products in all stores. For example, user A should be able to see Product A in all stores, but not products B and C. The second requirement is to restrict other users to only a subset of products in a subset of stores. For example, user B should be able to see data just for Product B but only in Stores 1 and 2. User C should see only Product C but only in Stores 2 and 3.

A good way to implement this is to use an OBIEE initialization block to set session variables using row-wise initialization. A database table, such as the one in this schema called RowWiseVars, contains the data visibility rules for users A, B, and C. When each user logs on, an init block will read the table, creating and populating session variables.

Complex   Picture5

 

 

 

 

 

 

 

The init block contains the following SQL. It sets the session variables Product and Store (the values in the table’s VAR column) and their respective values (the values in the VALUE column) for each user. With row-wise initialization, the names of the columns are immaterial. The values in the first column in the SQL define and name the session variables. The values in the second column populate the session variables that are being defined.

Complex   Picture6

 

 

 

 

 

Now defining an rpd group called “RetailUsers”, we set the filters on the Business Model that will be used for this group. Queries could be dimensional only, fact only, or dimensions with facts. Filters are needed for all three cases.

The fact table filter will cause a join between the fact table and the Item and Store dimension tables and apply a filter on those tables even when the columns in the dimension tables are not involved in the user’s query. The expression builder does not show the session variables in its Session Variables folder, since they are not defined in the RPD but instead are set by row-wise initialization. The session variable names have to be entered manually, as shown in yellow.

Complex   Picture7

 

 

 

 

 

 

Filters are also defined on the RETAILITEMS and RETAILSTORES dimension tables. This will filter the values that will be returned to the user when queries are constructed that do not have to involve the logical fact table.

describe the image

 

 

 

Now when user A logs on, the initialization block runs with the following SQL.

Complex   Picture10

 

 

 

 

Which produces these results:

Complex   Picture11

 

 

 

 

The variable Store is set to Store 1, Store 2, and Store 3. The variable Product is set to Product A.

When user A queries the Items dimension, he only sees product A.

Complex   Picture12describe the image

 

 

 

 

 

The physical SQL generated is

select distinct T2372.ITEMNAME as c1
from
RETAILITEMS T2372
where ( T2372.ITEMNAME = ‘Product A’ )
order by c1

When user A queries just the fact table (i.e. queries for QS only), the result is the sum of QS for Product A in the three stores, which is 3.

Complex   Picture14

 

 

The physical SQL is

select sum(T2364.QS) as c1
from
RETAILSTORES T2376,
RETAILITEMS T2372,
RETAILFACTS T2364
where ( T2364.ITEM = T2372.ITEM
and T2364.STORE = T2376.STORE
and T2372.ITEMNAME = ‘Product A’
and (T2376.STORENAME in
(‘Store 1’, ‘Store 2’, ‘Store 3’)))

Note, because this repository (RPD) group needs to have data filtered by products and stores using two session variables, it is necessary to list all stores for user A in the RowWiseVars table. Alternatively, if A was limited by product only, we could have defined a separate rpd group and used a single session variable for that group. In that case the RowWiseVars table would not have included store information for user A.

This meets the requirements when the “legal data” is the intersection of the dimensional values. However, it may be that some requirements are more complex and cannot be accommodated by an intersection of dimension values. For example, suppose user D is allowed to see Product A, but only in Store1 and 2, and Product B, but only in Store 3. To handle this requirement we need to create another security table. Let’s call this table ComplexSecurity. It contains the list of legal product/store combinations for each user – in this case just User D.

Complex   Picture15

 

 

 

 

To filter the data correctly, the ComplexSecurity table must be joined to the fact table, like this.

describe the image

 

Complex   Picture17

 

 

 

 

 

In addition to constraining fact table data, it is also necessary to constrain the values returned by dimensional queries (e.g. when browsing using a dashboard prompt). To do this, we can use the session variable strategy that we used in the previous case and add these rows to the RowWiseVars table.

Complex   Picture19

 

 

 

 

 

 

We need to define a new RPD group with the dimensional and fact table filters.

describe the image

 

 

 

 

When D queries stores alone, he sees all three stores:

describe the image

 

 

The physical SQL includes the Store session variable values.

select distinct T2376.STORENAME as c1
from
RETAILSTORES T2376
where ( T2376.STORENAME in
(‘Store 1’, ‘Store 2’, ‘Store 3’) )
order by c1

When D queries items, he sees just A and B:

Complex   New

 

 

The physical SQL includes the Product session variable values.

select distinct T2372.ITEMNAME as c1
from
RETAILITEMS T2372
where ( T2372.ITEMNAME in (‘A’, ‘B’) )
order by c1

When D includes the fact QS in the query, the results are

describe the image

 

 

 

You can see that these results are correct by examining the relevant rows in the fact table for D.

Complex   Picture23

 

 

 

 

 

 

 

Note how the ComplexSecurityTable is included in the physical SQL.

select   T2372.ITEMNAME   as C1
,T2376.STORENAME as C2
,Sum(T2364.QS)   as C3
from    
COMPLEXSECURITY T2567
,RETAILSTORES T2376
,RETAILITEMS T2372
,RETAILFACTS T2364
where
T2364.ITEM = T2567.PRODUCT
and T2364.ITEM = T2372.ITEM
and T2364.store = T2376.store
and T2364.store = T2567.store
and T2567.USERID = ‘D’
and T2372.ITEMNAME in (‘Product A’,’Product B’)
and T2376.STORENAME in
(‘Store 1′,’Store 2′,’Store 3’)
group by T2372.ITEMNAME
,T2376.STORENAME
order by C1 ,C2

There are many possible variations on this theme. The important points are:

1) Use row-wise variables to filter dimensional queries.

2) Use row-wise variables to filter fact table queries when the intersection of dimensions defined by the row-wise variables meets the security requirements.

3) Use a table with the appropriate legal dimensional tuples to limit fact table queries. Join this table to the fact table physically and include it in the business model. Include this table in queries involving the logical fact table by configuring the security filter appropriately for the group with complex security requirements.

4) When the complex security involves attributes at a higher level than the grain of the fact table, then include those legal tuples in the complex security table and join the complex security table to the dimension tables.

原创文章,作者:ItWorker,如若转载,请注明出处:https://blog.ytso.com/275170.html

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