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I habe a organizational user management structure where a user for example Level 5 in a position of an org unit is automatically in Level 4, 3, 2, 1.

As you can see in the screenshot.

enter image description here

Each org unit has it's own ID and each user as well. So I have an extra table where I store all groupId<->userId relations for each level. In this case I can just get all users e.g. from Level 3 because all users are related using the n:n table.

This way it is easy to query if a user is in a specified org unit but... it is complex to hold this structure consistent.

Example: If I remove a user from Level 3/Employee it also has to be removed from Level 2, but only from Level 1 if this user is not in Level B/Employee.

So the question is. As I can't change the way the user inherit the org units from bottom up is there a way or design pattern how to implement this approach with having the user only referenced once to his final location.

Example: I reference a user to Level 5/employee and this is persisted in the database, but I don't want to add relations for Level 4 - 1, but I still want to query fast if the user is e.g. in Level 2.

I don't want any detail codes, this is more a general design question because I want to redesign my user management to make it less error prone. Fantastic would be also if I can query the data fast with SQL (e.g. CTE queries with MS SQL) but it should generally work in a MVC (using RoR) environment.

If someone need more details or information I will post ofc.

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1 Answer

As I got many answers :) I did some more investigations and have a final approach now.

The answer is nested tree to perform fast queries.

What I did:

Create a user table.

CREATE TABLE [dbo].[actor_users](
    [id] [int] NOT NULL,
    [manager_id] [int] NULL,
    [deputy_id] [int] NULL,
    [username] [nvarchar](48) NOT NULL,
    [pwd] [nvarchar](40) NULL,
    [pwd_url] [char](38) NULL,
    [guid] [char](38) NULL,
    [deactivated] [smallint] NULL,
    [lastname] [nvarchar](48) NULL,
    [middlename] [nvarchar](48) NULL,
    [firstname] [nvarchar](48) NULL,
    [acronym] [nvarchar](16) NULL,
    [employee_nr] [nvarchar](16) NULL,
    [department] [nvarchar](250) NULL,
    [cost_unit] [nvarchar](16) NULL,
    [desc] [nvarchar](max) NULL,
    [email] [nvarchar](192) NULL,
    [sex] [int] NULL,
    [group_ids] [nvarchar](4000) NULL,
    [picture_id] [int] NULL,
    [lcid] [int] NULL,
 CONSTRAINT [ct_actor_users] PRIMARY KEY CLUSTERED 
( [id] ASC ) WITH (PAD_INDEX = OFF, STATISTICS_NORECOMPUTE = OFF, IGNORE_DUP_KEY = OFF, ALLOW_ROW_LOCKS = ON, ALLOW_PAGE_LOCKS = ON) ON [PRIMARY] ) ON [PRIMARY]

Create a group table.

CREATE TABLE [dbo].[actor_groups](
    [id] [int] NOT NULL,
    [parent_id] [int] NULL,
    [group_name] [nvarchar](max) NULL,
    [group_type] [int] NOT NULL,
    [group_reference] [int] NOT NULL,
    [description] [nvarchar](max) NULL,
    [depth] [int] NULL,
    [left] [int] NULL,
    [right] [int] NULL,
    [id_path] [nvarchar](max) NULL,
    [name_path] [nvarchar](max) NULL,
 CONSTRAINT [ct_actor_groups] PRIMARY KEY CLUSTERED 
( [id] ASC ) WITH (PAD_INDEX = OFF, STATISTICS_NORECOMPUTE = OFF, IGNORE_DUP_KEY = OFF, ALLOW_ROW_LOCKS = ON, ALLOW_PAGE_LOCKS = ON) ON [PRIMARY]) ON [PRIMARY] TEXTIMAGE_ON [PRIMARY]

I filled the user table with around 10k rows of random users.

Now I created some random tree

-- create some random tree for testing
DECLARE @id int;
DECLARE @name nvarchar(max);
WHILE (SELECT COUNT(*) FROM actor_groups)<1000 
BEGIN
SET @id = (SELECT ISNull(MAX(id),0) + 1 FROM actors);
SET @name = 'random_ou' + CAST(NEWID() AS nvarchar(40));

INSERT INTO actor_groups (id, parent_id, group_name, group_type, group_reference, [description], depth, [left], [right], id_path, name_path) 
SELECT @id
  , (SELECT TOP 1 id FROM actor_groups ORDER BY NEWID()) AS parent_id
  , @name group_name
  , 3 group_type
  , -1 group_reference
  , '' [description]
  , 0 depth
  , 0 [left]
  , 0 [right]
  , '' id_path
  , '' name_path
END

After this I have to update the nested set relations....

-- update tree 
WHILE EXISTS (SELECT * FROM actor_groups WHERE depth IS NULL) 
UPDATE tr SET 
  tr.depth = par.depth + 1 , 
  tr.id_path = par.id_path + ',' + CAST(tr.id AS nvarchar(255)) , 
  tr.name_path = (CASE par.id WHEN 40 THEN '' ELSE par.name_path + '/' END) + tr.group_name
FROM actor_groups AS tr 
INNER JOIN actor_groups AS par ON (tr.parent_id = par.id) 
WHERE par.depth >=0 AND tr.depth IS NULL

GO

-- left, right nested set
WITH treerows AS
( SELECT actor_groups.*, ROW_NUMBER() OVER (ORDER BY id_path) AS Row FROM actor_groups )

UPDATE actor_groups
SET [left] = tbl.Lft
  , [right] = tbl.Rgt
FROM actor_groups
JOIN (SELECT
  ER.id,
  ER.id_path,
  ER.depth,
  ER.Row,
  (ER.Row * 2) - ER.depth AS Lft,
  ((ER.Row * 2) - ER.depth) +
    (
        SELECT COUNT(*) * 2
        FROM treerows ER2
        WHERE ER2.id_path LIKE ER.id_path + ',%'
    ) + 1 AS Rgt
FROM treerows ER
) tbl ON tbl.id = actor_groups.id

Now I did some random mappings...

-- do some random mappings
DECLARE @map int;
DECLARE @mapuser int;
DECLARE @counter int;
SET @counter = 1;
WHILE @counter<1000 
BEGIN
  SET @map = (SELECT TOP 1 id FROM actor_groups ORDER BY NEWID())
  SET @mapuser = (SELECT TOP 1 id FROM actor_users ORDER BY NEWID())
  INSERT INTO actor_mappings ([group_id], [user_id], imported) VALUES (@map, @mapuser, 0)
  SET @counter = @counter + 1;
END

So now I have a groups and a user table. Users are filled with 10.000 users and my tree has around 1.000 nodes. I did start the random mapping SQL several times, so I have around 100.000 mappings.

My query:

SELECT DISTINCT 
      m.[user_id] AS luserid
    , org.[id] AS lgroupid
    , m.imported AS bimported
  FROM [test].[dbo].[actor_groups] org
  JOIN [actor_groups] org2 ON org2.[left] BETWEEN org.[left] AND org.[right]
  JOIN actor_mappings m ON org2.id = m.group_id

Query runs in around 700ms if I do not narrow it. Seeking for a special node or user is made in around 150-300ms on my tests.

Resolution: This can be done using nested sets.

Updating the tree with my 1.000 nodes is made in like 1 second and query the data without any additional index on my tables is always below 1 second as well.

Hope this helps other people facing the same issue.

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