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  • Approximate string matching with a letter confusion matrix?

    - by zigglenaut
    I'm trying to model a phonetic recognizer that has to isolate instances of words (strings of phones) out of a long stream of phones that doesn't have gaps between each word. The stream of phones may have been poorly recognized, with letter substitutions/insertions/deletions, so I will have to do approximate string matching. However, I want the matching to be phonetically-motivated, e.g. "m" and "n" are phonetically similar, so the substitution cost of "m" for "n" should be small, compared to say, "m" and "k". So, if I'm searching for [mein] "main", it would match the letter sequence [meim] "maim" with, say, cost 0.1, whereas it would match the letter sequence [meik] "make" with, say, cost 0.7. Similarly, there are differing costs for inserting or deleting each letter. I can supply a confusion matrix that, for each letter pair (x,y), gives the cost of substituting x with y, where x and y are any letter or the empty string. I know that there are tools available that do approximate matching such as agrep, but as far as I can tell, they do not take a confusion matrix as input. That is, the cost of any insertion/substitution/deletion = 1. My question is, are there any open-source tools already available that can do approximate matching with confusion matrices, and if not, what is a good algorithm that I can implement to accomplish this?

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  • How to optimize my PostgreSQL DB for prefix search?

    - by asmaier
    I have a table called "nodes" with roughly 1.7 million rows in my PostgreSQL db =#\d nodes Table "public.nodes" Column | Type | Modifiers --------+------------------------+----------- id | integer | not null title | character varying(256) | score | double precision | Indexes: "nodes_pkey" PRIMARY KEY, btree (id) I want to use information from that table for autocompletion of a search field, showing the user a list of the ten titles having the highest score fitting to his input. So I used this query (here searching for all titles starting with "s") =# explain analyze select title,score from nodes where title ilike 's%' order by score desc; QUERY PLAN ----------------------------------------------------------------------------------------------------------------------- Sort (cost=64177.92..64581.38 rows=161385 width=25) (actual time=4930.334..5047.321 rows=161264 loops=1) Sort Key: score Sort Method: external merge Disk: 5712kB -> Seq Scan on nodes (cost=0.00..46630.50 rows=161385 width=25) (actual time=0.611..4464.413 rows=161264 loops=1) Filter: ((title)::text ~~* 's%'::text) Total runtime: 5260.791 ms (6 rows) This was much to slow for using it with autocomplete. With some information from Using PostgreSQL in Web 2.0 Applications I was able to improve that with a special index =# create index title_idx on nodes using btree(lower(title) text_pattern_ops); =# explain analyze select title,score from nodes where lower(title) like lower('s%') order by score desc limit 10; QUERY PLAN ------------------------------------------------------------------------------------------------------------------------------------------ Limit (cost=18122.41..18122.43 rows=10 width=25) (actual time=1324.703..1324.708 rows=10 loops=1) -> Sort (cost=18122.41..18144.60 rows=8876 width=25) (actual time=1324.700..1324.702 rows=10 loops=1) Sort Key: score Sort Method: top-N heapsort Memory: 17kB -> Bitmap Heap Scan on nodes (cost=243.53..17930.60 rows=8876 width=25) (actual time=96.124..1227.203 rows=161264 loops=1) Filter: (lower((title)::text) ~~ 's%'::text) -> Bitmap Index Scan on title_idx (cost=0.00..241.31 rows=8876 width=0) (actual time=90.059..90.059 rows=161264 loops=1) Index Cond: ((lower((title)::text) ~>=~ 's'::text) AND (lower((title)::text) ~<~ 't'::text)) Total runtime: 1325.085 ms (9 rows) So this gave me a speedup of factor 4. But can this be further improved? What if I want to use '%s%' instead of 's%'? Do I have any chance of getting a decent performance with PostgreSQL in that case, too? Or should I better try a different solution (Lucene?, Sphinx?) for implementing my autocomplete feature?

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  • How can I work around SQL Server - Inline Table Value Function execution plan variation based on par

    - by Ovidiu Pacurar
    Here is the situation: I have a table value function with a datetime parameter ,lest's say tdf(p_date) , that filters about two million rows selecting those with column date smaller than p_date and computes some aggregate values on other columns. It works great but if p_date is a custom scalar value function (returning the end of day in my case) the execution plan is altered an the query goes from 1 sec to 1 minute execution time. A proof of concept table - 1K products, 2M rows: CREATE TABLE [dbo].[POC]( [Date] [datetime] NOT NULL, [idProduct] [int] NOT NULL, [Quantity] [int] NOT NULL ) ON [PRIMARY] The inline table value function: CREATE FUNCTION tdf (@p_date datetime) RETURNS TABLE AS RETURN ( SELECT idProduct, SUM(Quantity) AS TotalQuantity, max(Date) as LastDate FROM POC WHERE (Date < @p_date) GROUP BY idProduct ) The scalar value function: CREATE FUNCTION [dbo].[EndOfDay] (@date datetime) RETURNS datetime AS BEGIN DECLARE @res datetime SET @res=dateadd(second, -1, dateadd(day, 1, dateadd(ms, -datepart(ms, @date), dateadd(ss, -datepart(ss, @date), dateadd(mi,- datepart(mi,@date), dateadd(hh, -datepart(hh, @date), @date)))))) RETURN @res END Query 1 - Working great SELECT * FROM [dbo].[tdf] (getdate()) The end of execution plan: Stream Aggregate Cost 13% <--- Clustered Index Scan Cost 86% Query 2 - Not so great SELECT * FROM [dbo].[tdf] (dbo.EndOfDay(getdate())) The end of execution plan: Stream Aggregate Cost 4% <--- Filter Cost 12% <--- Clustered Index Scan Cost 86%

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  • GridView's NewValues and OldValues empty in the OnRowUpdating event.

    - by Abe Miessler
    I have the GridView below. I am binding to a custom datasource in the code behind. It gets into the "OnRowUpdating" event just fine, but there are no NewValues or OldValues. Any suggestions as to how I can get these values? <asp:GridView ID="gv_Personnel" runat="server" OnRowDataBound="gv_Personnel_DataBind" OnRowCancelingEdit="gv_Personnel_CancelEdit" OnRowEditing="gv_Personnel_EditRow" OnRowUpdating="gv_Personnel_UpdateRow" AutoGenerateColumns="false" ShowFooter="true" DataKeyNames="BudgetLineID" AutoGenerateEditButton="true" AutoGenerateDeleteButton="true" > <Columns> <asp:BoundField HeaderText="Level of Staff" DataField="LineDescription" /> <%--<asp:BoundField HeaderText="Hrs/Units requested" DataField="NumberOfUnits" />--%> <asp:TemplateField HeaderText="Hrs/Units requested"> <ItemTemplate> <%# Eval("NumberOfUnits")%> </ItemTemplate> <EditItemTemplate> <asp:TextBox ID="tb_NumUnits" runat="server" Text='<%# Bind("NumberOfUnits")%>' /> </EditItemTemplate> </asp:TemplateField> <asp:BoundField HeaderText="Hrs/Units of Applicant Cost Share" DataField="" NullDisplayText="0" /> <asp:BoundField HeaderText="Hrs/Units of Partner Cost Share" DataField="" NullDisplayText="0" /> <asp:BoundField FooterStyle-Font-Bold="true" FooterText="TOTAL PERSONNEL SERVICES:" HeaderText="Rate" DataFormatString="{0:C}" DataField="UnitPrice" /> <asp:TemplateField HeaderText="Amount Requested" ItemStyle-HorizontalAlign="Right" FooterStyle-HorizontalAlign="Right" FooterStyle-BorderWidth="2" FooterStyle-Font-Bold="true"/> <asp:TemplateField HeaderText="Applicant Cost Share" ItemStyle-HorizontalAlign="Right" FooterStyle-HorizontalAlign="Right" FooterStyle-BorderWidth="2" FooterStyle-Font-Bold="true"/> <asp:TemplateField HeaderText="Partner Cost Share" ItemStyle-HorizontalAlign="Right" FooterStyle-HorizontalAlign="Right" FooterStyle-BorderWidth="2" FooterStyle-Font-Bold="true"/> <asp:TemplateField HeaderText="Total Projet Cost" ItemStyle-HorizontalAlign="Right" FooterStyle-HorizontalAlign="Right" FooterStyle-BorderWidth="2" FooterStyle-Font-Bold="true"/> </Columns> </asp:GridView>

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  • Python code formatting

    - by Curious2learn
    In response to another question of mine, someone suggested that I avoid long lines in the code and to use PEP-8 rules when writing Python code. One of the PEP-8 rules suggested avoiding lines which are longer than 80 characters. I changed a lot of my code to comply with this requirement without any problems. However, changing the following line in the manner shown below breaks the code. Any ideas why? Does it have to do with the fact that what follows return command has to be in a single line? The line longer that 80 characters: def __str__(self): return "Car Type \n"+"mpg: %.1f \n" % self.mpg + "hp: %.2f \n" %(self.hp) + "pc: %i \n" %self.pc + "unit cost: $%.2f \n" %(self.cost) + "price: $%.2f "%(self.price) The line changed by using Enter key and Spaces as necessary: def __str__(self): return "Car Type \n"+"mpg: %.1f \n" % self.mpg + "hp: %.2f \n" %(self.hp) + "pc: %i \n" %self.pc + "unit cost: $%.2f \n" %(self.cost) + "price: $%.2f "%(self.price)

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  • Dijkstras Algorithm exaplination java

    - by alchemey89
    Hi, I have found an implementation for dijkstras algorithm on the internet and was wondering if someone could help me understand how the code works. Many thanks private int nr_points=0; private int[][]Cost; private int []mask; private void dijkstraTSP() { if(nr_points==0)return; //algorithm=new String("Dijkstra"); nod1=new Vector(); nod2=new Vector(); weight=new Vector(); mask=new int[nr_points]; //initialise mask with zeros (mask[x]=1 means the vertex is marked as used) for(int i=0;i<nr_points;i++)mask[i]=0; //Dijkstra: int []dd=new int[nr_points]; int []pre=new int[nr_points]; int []path=new int[nr_points+1]; int init_vert=0,pos_in_path=0,new_vert=0; //initialise the vectors for(int i=0;i<nr_points;i++) { dd[i]=Cost[init_vert][i]; pre[i]=init_vert; path[i]=-1; } pre[init_vert]=0; path[0]=init_vert; pos_in_path++; mask[init_vert]=1; for(int k=0;k<nr_points-1;k++) { //find min. cost in dd for(int j=0;j<nr_points;j++) if(dd[j]!=0 && mask[j]==0){new_vert=j; break;} for(int j=0;j<nr_points;j++) if(dd[j]<dd[new_vert] && mask[j]==0 && dd[j]!=0)new_vert=j; mask[new_vert]=1; path[pos_in_path]=new_vert; pos_in_path++; for(int j=0;j<nr_points;j++) { if(mask[j]==0) { if(dd[j]>dd[new_vert]+Cost[new_vert][j]) { dd[j]=dd[new_vert]+Cost[new_vert][j]; } } } } //Close the cycle path[nr_points]=init_vert; //Save the solution in 3 vectors (for graphical purposes) for(int i=0;i<nr_points;i++) { nod1.addElement(path[i]); nod2.addElement(path[i+1]); weight.addElement(Cost[path[i]][path[i+1]]); } }

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  • Maximum float value in php

    - by Alex Deem
    Is there a way to programmatically retrieve the maximum float value for php. Akin to FLT_MAX or std::numeric_limits< float >::max() in C / C++? I am using something like the following: $minimumCost = MAXIMUM_FLOAT_VALUE??; foreach ( $objects as $object ) { $cost = $object->CalculateCost(); if ( $cost < $minimumCost ) { $minimumCost = $cost; } } (using php 5.2)

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  • Dijkstra's Algorithm explanation java

    - by alchemey89
    Hi, I have found an implementation for dijkstras algorithm on the internet and was wondering if someone could help me understand how the code works. Many thanks private int nr_points=0; private int[][]Cost; private int []mask; private void dijkstraTSP() { if(nr_points==0)return; //algorithm=new String("Dijkstra"); nod1=new Vector(); nod2=new Vector(); weight=new Vector(); mask=new int[nr_points]; //initialise mask with zeros (mask[x]=1 means the vertex is marked as used) for(int i=0;i<nr_points;i++)mask[i]=0; //Dijkstra: int []dd=new int[nr_points]; int []pre=new int[nr_points]; int []path=new int[nr_points+1]; int init_vert=0,pos_in_path=0,new_vert=0; //initialise the vectors for(int i=0;i<nr_points;i++) { dd[i]=Cost[init_vert][i]; pre[i]=init_vert; path[i]=-1; } pre[init_vert]=0; path[0]=init_vert; pos_in_path++; mask[init_vert]=1; for(int k=0;k<nr_points-1;k++) { //find min. cost in dd for(int j=0;j<nr_points;j++) if(dd[j]!=0 && mask[j]==0){new_vert=j; break;} for(int j=0;j<nr_points;j++) if(dd[j]<dd[new_vert] && mask[j]==0 && dd[j]!=0)new_vert=j; mask[new_vert]=1; path[pos_in_path]=new_vert; pos_in_path++; for(int j=0;j<nr_points;j++) { if(mask[j]==0) { if(dd[j]>dd[new_vert]+Cost[new_vert][j]) { dd[j]=dd[new_vert]+Cost[new_vert][j]; } } } } //Close the cycle path[nr_points]=init_vert; //Save the solution in 3 vectors (for graphical purposes) for(int i=0;i<nr_points;i++) { nod1.addElement(path[i]); nod2.addElement(path[i+1]); weight.addElement(Cost[path[i]][path[i+1]]); } }

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  • Algorithm for generating an array of non-equal costs for a transport problem optimization

    - by Carlos
    I have an optimizer that solves a transportation problem, using a cost matrix of all the possible paths. The optimiser works fine, but if two of the costs are equal, the solution contains one more path that the minimum number of paths. (Think of it as load balancing routers; if two routes are same cost, you'll use them both.) I would like the minimum number of routes, and to do that I need a cost matrix that doesn't have two costs that are equal within a certain tolerance. At the moment, I'm passing the cost matrix through a baking function which tests every entry for equality to each of the other entries, and moves it a fixed percentage if it matches. However, this approach seems to require N^2 comparisons, and if the starting values are all the same, the last cost will be r^N bigger. (r is the arbitrary fixed percentage). Also there is the problem that by multiplying by the percentage, you end up on top of another value. So the problem seems to have an element of recursion, or at least repeated checking, which bloats the code. The current implementation is basically not very good (I won't paste my GOTO-using code here for you all to mock), and I'd like to improve it. Is there a name for what I'm after, and is there a standard implementation? Example: {1,1,2,3,4,5} (tol = 0.05) becomes {1,1.05,2,3,4,5}

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  • How to optimize shopping carts for minimal prices?

    - by tangens
    I have a list of items I want to buy. The items are offered by different shops and different prices. The shops have individual delivery costs. I'm looking for an optimal shopping strategy (and a java library supporting it) to purchase all of the items with a minimal total price. Example: Item1 is offered at Shop1 for $100, at Shop2 for $111. Item2 is offered at Shop1 for $90, at Shop2 for $85. Delivery cost of Shop1: $10 if total order < $150; $0 otherwise Delivery cost of Shop2: $5 if total order < $50; $0 otherwise If I buy Item1 and Item2 at Shop1 the total cost is $100 + $90 +$0 = $190. If I buy Item1 and Item2 at Shop2 the total cost is $111 + $85 +$0 = $196. If I buy Item1 at Shop1 and Item2 at Shop2 the total cost is $100 + $10 + $85 + $0 = 195. I get the minimal price if I order Item1 at Shop1 and Item2 at Shop2: $195 Question I need some hints which algorithms may help me to solve optimization problems of this kind for number of items about 100 and number of shops about 20. I already looked at apache-math and its optimization package, but I have no idea what algorithm to look for.

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  • How to generate a monotone MART ROC in R?

    - by user1521587
    I am using R and applying MART (Alg. for multiple additive regression trees) on a training set to build prediction models. When I look at the ROC curve, it is not monotone. I would be grateful if someone can help me with how I should fix this. I am guessing the issue is that initially, MART generates n trees and if these trees are not the same for all the models I am building, the results will not be comparable. Here are the steps I take: 1) Fix the false-negative cost, c_fn. Let cost = c(0, 1, c_fn, 0). 2) use the following line to build the mart model: mart(x, y, lx, martmode='class', niter=2000, cost.mtx=cost) where x is the matrix of training set variables, y is the observation matrix, lx is the matrix which specifies which of the variables in x is numerical, which one categorical. 3) I predict the test set observations using the mart model found in step 2 using this line: y_pred = martpred(x_test, probs=T) 4) I compute the false-positive and false-negative errors as follows: t = 1/(1+c_fn) %threshold based on Bayes optimal rule where c_fp=1 and c_fn. p_0 = length(which(y_test==1))/dim(y_test)[1] p_01 = sum(1*(y_pred[,2]t & y_test==0))/dim(y_test)[1] p_11 = sum(1*(y_pred[,2]t & y_test==1))/dim(y_test)[1] p_fp = p_01/(1-p_0) p_tp = p_11/p_0 5) repeat step 1-4 for a new false-negative cost.

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  • how to show all added items into another activity, like: AddtoCart and ViewCart Functionality

    - by Stanley
    i am trying to make a shopping cart app, allowing user to choose category then select item to purchase, once user will click on any item to purchase, then showing that selected item into another activity with item image, name, cost, qty (to accept by user) and also providing add to cart functionality, now i want whenever user will click on Add to Cart button, then selected item need to show in ViewCart Activity, so here i am placing my AddtoCart Activity code, please tell me what i need to write to show added item(s) into ViewCart Category just like in shopping cart, In ViewCart activity i just want to show item title, cost and qty (entered by user):- public class AddtoCart extends Activity{ static final String KEY_TITLE = "title"; static final String KEY_COST = "cost"; static final String KEY_THUMB_URL = "imageUri"; @Override public void onCreate(Bundle savedInstanceState) { super.onCreate(savedInstanceState); setContentView(R.layout.single); Intent in = getIntent(); String title = in.getStringExtra(KEY_TITLE); String thumb_url = in.getStringExtra(KEY_THUMB_URL); String cost = in.getStringExtra(KEY_COST); ImageLoader imageLoader = new ImageLoader(getApplicationContext()); ImageView imgv = (ImageView) findViewById(R.id.single_thumb); TextView txttitle = (TextView) findViewById(R.id.single_title); TextView txtcost = (TextView) findViewById(R.id.single_cost); txttitle.setText(title); txtcost.setText(cost); imageLoader.DisplayImage(thumb_url, imgv); // Save a reference to the quantity edit text final EditText editTextQuantity = (EditText) findViewById(R.id.edit_qty); ImageButton addToCartButton = (ImageButton) findViewById(R.id.img_add); addToCartButton.setOnClickListener(new OnClickListener() { public void onClick(View v) { // Check to see that a valid quantity was entered int quantity = 0; try { quantity = Integer.parseInt(editTextQuantity.getText() .toString()); if (quantity <= 0) { Toast.makeText(getBaseContext(), "Please enter a quantity of 1 or higher", Toast.LENGTH_SHORT).show(); return; } } catch (Exception e) { Toast.makeText(getBaseContext(), "Please enter a numeric quantity", Toast.LENGTH_SHORT).show(); return; } // Close the activity finish(); } }); }}

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  • Simple aggregating query very slow in PostgreSql, any way to improve?

    - by Ash
    HI I have a table which holds files and their types such as CREATE TABLE files ( id SERIAL PRIMARY KEY, name VARCHAR(255), filetype VARCHAR(255), ... ); and another table for holding file properties such as CREATE TABLE properties ( id SERIAL PRIMARY KEY, file_id INTEGER CONSTRAINT fk_files REFERENCES files(id), size INTEGER, ... // other property fields ); The file_id field has an index. The file table has around 800k lines, and the properties table around 200k (not all files necessarily have/need a properties). I want to do aggregating queries, for example find the average size and standard deviation for all file types. But it's very slow - around 70 seconds for the latter query. I understand it needs a sequential scan, but still it seems too much. Here's the query SELECT f.filetype, avg(size), stddev(size) FROM files as f, properties as pr WHERE f.id = pr.file_id GROUP BY f.filetype; and the explain HashAggregate (cost=140292.20..140293.94 rows=116 width=13) (actual time=74013.621..74013.954 rows=110 loops=1) -> Hash Join (cost=6780.19..138945.47 rows=179564 width=13) (actual time=1520.104..73156.531 rows=179499 loops=1) Hash Cond: (f.id = pr.file_id) -> Seq Scan on files f (cost=0.00..108365.41 rows=1140941 width=9) (actual time=0.998..62569.628 rows=805270 loops=1) -> Hash (cost=3658.64..3658.64 rows=179564 width=12) (actual time=1131.053..1131.053 rows=179499 loops=1) -> Seq Scan on properties pr (cost=0.00..3658.64 rows=179564 width=12) (actual time=0.753..557.171 rows=179574 loops=1) Total runtime: 74014.520 ms Any ideas why it is so slow/how to make it faster?

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  • Getting confused why i dont get expected amount ?

    - by Stackfan
    I have 1 result and which i will receive in Bank account, Based on that account i have to Put a balance to user account. How can you find the Handling cost from total tried 491.50 / 0.95 = 517.36 which is wrong ? It should be 500.00 (to my expectation) User balance requires 500.00 When 500.00 selected he gets 5% discount There is a handling cost for this ex: 1) Discount: 500.00 - 5% = 475.00 2) Handling cost: (475.00 x 0.034) + 0.35 = 16.50 3) Total: 475.00 + 16.50 = 491.50 So problem is from 491.50, i have to find atleast handling cost to get promised Balance. Any solution ? Cant figure it out myself...

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  • Speeding up a group by date query on a big table in postgres

    - by zaius
    I've got a table with around 20 million rows. For arguments sake, lets say there are two columns in the table - an id and a timestamp. I'm trying to get a count of the number of items per day. Here's what I have at the moment. SELECT DATE(timestamp) AS day, COUNT(*) FROM actions WHERE DATE(timestamp) >= '20100101' AND DATE(timestamp) < '20110101' GROUP BY day; Without any indices, this takes about a 30s to run on my machine. Here's the explain analyze output: GroupAggregate (cost=675462.78..676813.42 rows=46532 width=8) (actual time=24467.404..32417.643 rows=346 loops=1) -> Sort (cost=675462.78..675680.34 rows=87021 width=8) (actual time=24466.730..29071.438 rows=17321121 loops=1) Sort Key: (date("timestamp")) Sort Method: external merge Disk: 372496kB -> Seq Scan on actions (cost=0.00..667133.11 rows=87021 width=8) (actual time=1.981..12368.186 rows=17321121 loops=1) Filter: ((date("timestamp") >= '2010-01-01'::date) AND (date("timestamp") < '2011-01-01'::date)) Total runtime: 32447.762 ms Since I'm seeing a sequential scan, I tried to index on the date aggregate CREATE INDEX ON actions (DATE(timestamp)); Which cuts the speed by about 50%. HashAggregate (cost=796710.64..796716.19 rows=370 width=8) (actual time=17038.503..17038.590 rows=346 loops=1) -> Seq Scan on actions (cost=0.00..710202.27 rows=17301674 width=8) (actual time=1.745..12080.877 rows=17321121 loops=1) Filter: ((date("timestamp") >= '2010-01-01'::date) AND (date("timestamp") < '2011-01-01'::date)) Total runtime: 17038.663 ms I'm new to this whole query-optimization business, and I have no idea what to do next. Any clues how I could get this query running faster?

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  • multiple join query in entity framework

    - by gvLearner
    I have following tables tasks id | name | proj_id 1 | task1 | 1 2 | task2 | 1 3 | task3 | 1 projects id | name 1 | sample proj1 2 | demo project budget_versions id | version_name| proj_id 1 | 50 | 1 budgets id | cost | budget_version_id | task_id 1 | 3000 | 1 | 2 2 | 5000 | 1 | 1 I need to join these tables to get a result as below task_id | task_name | project_id | budget_version | budget_id | cost 1 | task1 | 1 | 1 | 2 |5000 2 | task2 | 1 | 1 | 1 |3000 3 | task3 | 1 | NULL | NULL |NULL select tsk.id,tsk.name, tsk.project_id, bgtver.id, bgt.id, bgt.cost from TASK tsk left outer join BUDGET_VERSIONS bgtver on tsk.project_id= bgtver.project_id left outer join BUDGETS bgt on bgtver.id = bgt.budget_version_id and tsk.id = bgt.task_id where bgtver.id = 1

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  • While loop read multiple lines from a grep

    - by Basil
    I'm writing a script in AIX 5.3 that will loop through the output of a df and check each volume against another config file. If the volume appears in the config file, it will set a flag which is needed later in the script. If my config file only has a single column and I use a for loop, this works perfectly. My problem, however, is that if I use a while read loop to populate more than one variable per line, any variables I set between the while and the done are discarded. For example, assuming the contents of /netapp/conf/ExcludeFile.conf are a bunch of lines containing two fields each: volName="myVolume" utilization=70 thresholdFlag=0 grep volName /netapp/conf/ExcludeFile.conf | while read vol threshold; do if [ $utilization -ge $threshold ] ; then thresholdFlag=1 fi done echo "$thresholdFlag" In this example, thresholdFlag will always be 0, even if the volume appears in the file and its utilization is greater than the threshold. I could have added an echo "setting thresholdFlag to 1" in there, see the echo, and it'll still echo a 0 at the end. Is there a clean way to do this? I think my while loop is being done in a subshell, and changes I make to variables in there are actually being made to local variables that are discarded after the done.

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  • ASA hairpining: I basicaly want to allow 2 spokes to be able to communicate with each other.

    - by Thirst4Knowledge
    ASA Spoke to Spoke Communication I have been looking at spke to spoke comms or "hairpining" for months and have posted on numerouse forums but to no avail. I have a Hub and spoke network where the HUB is an ASA Firewall version 8.2 * I basicaly want to allow 2 spokes to be able to communicate with each other. I think that I have got the concept of the ASA Config for example: same-security-traffic permit intra-interface access-list HQ-LAN extended permit ip ASA-LAN 255.255.248.0 HQ-LAN 255.255.255.0 access-list HQ-LAN extended permit ip 192.168.99.0 255.255.255.0 HQ-LAN 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 HQ-LAN 255.255.255.0 access-list no-nat extended permit ip HQ-LAN 255.255.255.0 192.168.99.0 255.255.255.0 access-list no-nat extended permit ip 192.168.99.0 255.255.255.0 HQ-LAN 255.255.255.0 I think my problem may be that the other spokes are not CIsco Firewalls and I need to work out how to do the alternative setups. I want to at least make sure that my firewall etup is correct then I can move onto the other spokes here is my config: Hostname ASA domain-name mydomain.com names ! interface Ethernet0/0 speed 100 duplex full nameif outside security-level 0 ip address 1.1.1.246 255.255.255.224 ! interface Ethernet0/1 speed 100 duplex full nameif inside security-level 100 ip address 192.168.240.33 255.255.255.224 ! interface Ethernet0/2 description DMZ VLAN-253 speed 100 duplex full nameif DMZ security-level 50 ip address 192.168.254.1 255.255.255.0 ! interface Ethernet0/3 no nameif no security-level no ip address ! boot system disk0:/asa821-k8.bin ftp mode passive clock timezone GMT/BST 0 dns server-group DefaultDNS domain-name mydomain.com same-security-traffic permit inter-interface same-security-traffic permit intra-interface object-group network ASA_LAN_Plus_HQ_LAN network-object ASA_LAN 255.255.248.0 network-object HQ-LAN 255.255.255.0 access-list outside_acl remark Exchange web access-list outside_acl extended permit tcp any host MS-Exchange_server-NAT eq https access-list outside_acl remark PPTP Encapsulation access-list outside_acl extended permit gre any host MS-ISA-Server-NAT access-list outside_acl remark PPTP access-list outside_acl extended permit tcp any host MS-ISA-Server-NAT eq pptp access-list outside_acl remark Intra Http access-list outside_acl extended permit tcp any host MS-ISA-Server-NAT eq www access-list outside_acl remark Intra Https access-list outside_acl extended permit tcp any host MS-ISA-Server-NAT eq https access-list outside_acl remark SSL Server-Https 443 access-list outside_acl remark Https 8443(Open VPN Custom port for SSLVPN client downlaod) access-list outside_acl remark FTP 20 access-list outside_acl remark Http access-list outside_acl extended permit tcp any host OpenVPN-Srvr-NAT object-group DM_INLINE_TCP_1 access-list outside_acl extended permit tcp any host OpenVPN-Srvr-NAT eq 8443 access-list outside_acl extended permit tcp any host OpenVPN-Srvr-NAT eq www access-list outside_acl remark For secure remote Managment-SSH access-list outside_acl extended permit tcp any host OpenVPN-Srvr-NAT eq ssh access-list outside_acl extended permit ip Genimage_Anyconnect 255.255.255.0 ASA_LAN 255.255.248.0 access-list ASP-Live remark Live ASP access-list ASP-Live extended permit ip ASA_LAN 255.255.248.0 192.168.60.0 255.255.255.0 access-list Bo remark Bo access-list Bo extended permit ip ASA_LAN 255.255.248.0 192.168.169.0 255.255.255.0 access-list Bill remark Bill access-list Bill extended permit ip ASA_LAN 255.255.248.0 Bill.15 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 Bill.5 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 192.168.149.0 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 192.168.160.0 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 192.168.165.0 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 192.168.144.0 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 192.168.140.0 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 192.168.152.0 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 192.168.153.0 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 192.168.163.0 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 192.168.157.0 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 192.168.167.0 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 192.168.156.0 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 North-Office-LAN 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 192.168.161.0 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 192.168.143.0 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 192.168.137.0 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 192.168.159.0 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 HQ-LAN 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 192.168.169.0 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 192.168.150.0 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 192.168.162.0 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 192.168.166.0 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 192.168.168.0 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 192.168.174.0 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 192.168.127.0 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 192.168.173.0 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 192.168.175.0 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 192.168.176.0 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 192.168.100.0 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 192.168.99.0 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 10.10.10.0 255.255.255.0 access-list no-nat extended permit ip host 192.168.240.34 Cisco-admin-LAN 255.255.255.0 access-list no-nat extended permit ip ASA_LAN 255.255.248.0 Genimage_Anyconnect 255.255.255.0 access-list no-nat extended permit ip host Tunnel-DC host HQ-SDSL-Peer access-list no-nat extended permit ip HQ-LAN 255.255.255.0 North-Office-LAN 255.255.255.0 access-list no-nat extended permit ip North-Office-LAN 255.255.255.0 HQ-LAN 255.255.255.0 access-list Car remark Car access-list Car extended permit ip ASA_LAN 255.255.248.0 192.168.165.0 255.255.255.0 access-list Che remark Che access-list Che extended permit ip ASA_LAN 255.255.248.0 192.168.144.0 255.255.255.0 access-list Chi remark Chi access-list Chi extended permit ip ASA_LAN 255.255.248.0 192.168.140.0 255.255.255.0 access-list Cla remark Cla access-list Cla extended permit ip ASA_LAN 255.255.248.0 192.168.152.0 255.255.255.0 access-list Eas remark Eas access-list Eas extended permit ip ASA_LAN 255.255.248.0 192.168.149.0 255.255.255.0 access-list Ess remark Ess access-list Ess extended permit ip ASA_LAN 255.255.248.0 192.168.153.0 255.255.255.0 access-list Gat remark Gat access-list Gat extended permit ip ASA_LAN 255.255.248.0 192.168.163.0 255.255.255.0 access-list Hud remark Hud access-list Hud extended permit ip ASA_LAN 255.255.248.0 192.168.157.0 255.255.255.0 access-list Ilk remark Ilk access-list Ilk extended permit ip ASA_LAN 255.255.248.0 192.168.167.0 255.255.255.0 access-list Ken remark Ken access-list Ken extended permit ip ASA_LAN 255.255.248.0 192.168.156.0 255.255.255.0 access-list North-Office remark North-Office access-list North-Office extended permit ip ASA_LAN 255.255.248.0 North-Office-LAN 255.255.255.0 access-list inside_acl remark Inside_ad access-list inside_acl extended permit ip any any access-list Old_HQ remark Old_HQ access-list Old_HQ extended permit ip ASA_LAN 255.255.248.0 HQ-LAN 255.255.255.0 access-list Old_HQ extended permit ip HQ-LAN 255.255.255.0 192.168.99.0 255.255.255.0 access-list She remark She access-list She extended permit ip ASA_LAN 255.255.248.0 192.168.150.0 255.255.255.0 access-list Lit remark Lit access-list Lit extended permit ip ASA_LAN 255.255.248.0 192.168.143.0 255.255.255.0 access-list Mid remark Mid access-list Mid extended permit ip ASA_LAN 255.255.248.0 192.168.137.0 255.255.255.0 access-list Spi remark Spi access-list Spi extended permit ip ASA_LAN 255.255.248.0 192.168.162.0 255.255.255.0 access-list Tor remark Tor access-list Tor extended permit ip ASA_LAN 255.255.248.0 192.168.166.0 255.255.255.0 access-list Tra remark Tra access-list Tra extended permit ip ASA_LAN 255.255.248.0 192.168.168.0 255.255.255.0 access-list Tru remark Tru access-list Tru extended permit ip ASA_LAN 255.255.248.0 192.168.174.0 255.255.255.0 access-list Yo remark Yo access-list Yo extended permit ip ASA_LAN 255.255.248.0 192.168.127.0 255.255.255.0 access-list Nor remark Nor access-list Nor extended permit ip ASA_LAN 255.255.248.0 192.168.159.0 255.255.255.0 access-list Nor extended permit ip ASA_LAN 255.255.248.0 192.168.173.0 255.255.255.0 inactive access-list ST remark ST access-list ST extended permit ip ASA_LAN 255.255.248.0 192.168.175.0 255.255.255.0 access-list Le remark Le access-list Le extended permit ip ASA_LAN 255.255.248.0 192.168.161.0 255.255.255.0 access-list DMZ-ACL remark DMZ access-list DMZ-ACL extended permit ip host OpenVPN-Srvr any access-list no-nat-dmz remark DMZ -No Nat access-list no-nat-dmz extended permit ip 192.168.250.0 255.255.255.0 HQ-LAN 255.255.255.0 access-list Split_Tunnel_List remark ASA-LAN access-list Split_Tunnel_List standard permit ASA_LAN 255.255.248.0 access-list Split_Tunnel_List standard permit Genimage_Anyconnect 255.255.255.0 access-list outside_cryptomap_30 remark Po access-list outside_cryptomap_30 extended permit ip ASA_LAN 255.255.248.0 Po 255.255.255.0 access-list outside_cryptomap_24 extended permit ip ASA_LAN 255.255.248.0 192.168.100.0 255.255.255.0 access-list outside_cryptomap_16 extended permit ip ASA_LAN 255.255.248.0 192.168.99.0 255.255.255.0 access-list outside_cryptomap_34 extended permit ip ASA_LAN 255.255.248.0 10.10.10.0 255.255.255.0 access-list outside_31_cryptomap extended permit ip host 192.168.240.34 Cisco-admin-LAN 255.255.255.0 access-list outside_32_cryptomap extended permit ip host Tunnel-DC host HQ-SDSL-Peer access-list Genimage_VPN_Any_connect_pix_client remark Genimage "Any Connect" VPN access-list Genimage_VPN_Any_connect_pix_client standard permit Genimage_Anyconnect 255.255.255.0 access-list Split-Tunnel-ACL standard permit ASA_LAN 255.255.248.0 access-list nonat extended permit ip HQ-LAN 255.255.255.0 192.168.99.0 255.255.255.0 pager lines 24 logging enable logging timestamp logging console notifications logging monitor notifications logging buffered warnings logging asdm informational no logging message 106015 no logging message 313001 no logging message 313008 no logging message 106023 no logging message 710003 no logging message 106100 no logging message 302015 no logging message 302014 no logging message 302013 no logging message 302018 no logging message 302017 no logging message 302016 no logging message 302021 no logging message 302020 flow-export destination inside MS-ISA-Server 2055 flow-export destination outside 192.168.130.126 2055 flow-export template timeout-rate 1 flow-export delay flow-create 15 mtu outside 1500 mtu inside 1500 mtu DMZ 1500 mtu management 1500 ip local pool RAS-VPN 10.0.0.1.1-10.0.0.1.254 mask 255.255.255.255 icmp unreachable rate-limit 1 burst-size 1 icmp permit any unreachable outside icmp permit any echo outside icmp permit any echo-reply outside icmp permit any outside icmp permit any echo inside icmp permit any echo-reply inside icmp permit any echo DMZ icmp permit any echo-reply DMZ asdm image disk0:/asdm-621.bin no asdm history enable arp timeout 14400 nat-control global (outside) 1 interface global (inside) 1 interface nat (inside) 0 access-list no-nat nat (inside) 1 0.0.0.0 0.0.0.0 nat (DMZ) 0 access-list no-nat-dmz static (inside,outside) MS-ISA-Server-NAT MS-ISA-Server netmask 255.255.255.255 static (DMZ,outside) OpenVPN-Srvr-NAT OpenVPN-Srvr netmask 255.255.255.255 static (inside,outside) MS-Exchange_server-NAT MS-Exchange_server netmask 255.255.255.255 access-group outside_acl in interface outside access-group inside_acl in interface inside access-group DMZ-ACL in interface DMZ route outside 0.0.0.0 0.0.0.0 1.1.1.225 1 route inside 10.10.10.0 255.255.255.0 192.168.240.34 1 route outside Genimage_Anyconnect 255.255.255.0 1.1.1.225 1 route inside Open-VPN 255.255.248.0 OpenVPN-Srvr 1 route inside HQledon-Voice-LAN 255.255.255.0 192.168.240.34 1 route outside Bill 255.255.255.0 1.1.1.225 1 route outside Yo 255.255.255.0 1.1.1.225 1 route inside 192.168.129.0 255.255.255.0 192.168.240.34 1 route outside HQ-LAN 255.255.255.0 1.1.1.225 1 route outside Mid 255.255.255.0 1.1.1.225 1 route outside 192.168.140.0 255.255.255.0 1.1.1.225 1 route outside 192.168.143.0 255.255.255.0 1.1.1.225 1 route outside 192.168.144.0 255.255.255.0 1.1.1.225 1 route outside 192.168.149.0 255.255.255.0 1.1.1.225 1 route outside 192.168.152.0 255.255.255.0 1.1.1.225 1 route outside 192.168.153.0 255.255.255.0 1.1.1.225 1 route outside North-Office-LAN 255.255.255.0 1.1.1.225 1 route outside 192.168.156.0 255.255.255.0 1.1.1.225 1 route outside 192.168.157.0 255.255.255.0 1.1.1.225 1 route outside 192.168.159.0 255.255.255.0 1.1.1.225 1 route outside 192.168.160.0 255.255.255.0 1.1.1.225 1 route outside 192.168.161.0 255.255.255.0 1.1.1.225 1 route outside 192.168.162.0 255.255.255.0 1.1.1.225 1 route outside 192.168.163.0 255.255.255.0 1.1.1.225 1 route outside 192.168.165.0 255.255.255.0 1.1.1.225 1 route outside 192.168.166.0 255.255.255.0 1.1.1.225 1 route outside 192.168.167.0 255.255.255.0 1.1.1.225 1 route outside 192.168.168.0 255.255.255.0 1.1.1.225 1 route outside 192.168.173.0 255.255.255.0 1.1.1.225 1 route outside 192.168.174.0 255.255.255.0 1.1.1.225 1 route outside 192.168.175.0 255.255.255.0 1.1.1.225 1 route outside 192.168.99.0 255.255.255.0 1.1.1.225 1 route inside ASA_LAN 255.255.255.0 192.168.240.34 1 route inside 192.168.124.0 255.255.255.0 192.168.240.34 1 route inside 192.168.50.0 255.255.255.0 192.168.240.34 1 route inside 192.168.51.0 255.255.255.128 192.168.240.34 1 route inside 192.168.240.0 255.255.255.224 192.168.240.34 1 route inside 192.168.240.164 255.255.255.224 192.168.240.34 1 route inside 192.168.240.196 255.255.255.224 192.168.240.34 1 timeout xlate 3:00:00 timeout conn 1:00:00 half-closed 0:10:00 udp 0:02:00 icmp 0:00:02 timeout sunrpc 0:10:00 h323 0:05:00 h225 1:00:00 mgcp 0:05:00 mgcp-pat 0:05:00 timeout sip 0:30:00 sip_media 0:02:00 sip-invite 0:03:00 sip-disconnect 0:02:00 timeout sip-provisional-media 0:02:00 uauth 0:05:00 absolute timeout tcp-proxy-reassembly 0:01:00 dynamic-access-policy-record DfltAccessPolicy aaa-server vpn protocol radius max-failed-attempts 5 aaa-server vpn (inside) host 192.168.X.2 timeout 60 key a5a53r3t authentication-port 1812 radius-common-pw a5a53r3t aaa authentication ssh console LOCAL aaa authentication http console LOCAL http server enable http 0.0.0.0 0.0.0.0 inside http 1.1.1.2 255.255.255.255 outside http 1.1.1.234 255.255.255.255 outside http 0.0.0.0 0.0.0.0 management http 1.1.100.198 255.255.255.255 outside http 0.0.0.0 0.0.0.0 outside crypto map FW_Outside_map 1 match address Bill crypto map FW_Outside_map 1 set peer x.x.x.121 crypto map FW_Outside_map 1 set transform-set SECURE crypto map FW_Outside_map 2 match address Bo crypto map FW_Outside_map 2 set peer x.x.x.202 crypto map FW_Outside_map 2 set transform-set SECURE crypto map FW_Outside_map 3 match address ASP-Live crypto map FW_Outside_map 3 set peer x.x.x.113 crypto map FW_Outside_map 3 set transform-set SECURE crypto map FW_Outside_map 4 match address Car crypto map FW_Outside_map 4 set peer x.x.x.205 crypto map FW_Outside_map 4 set transform-set SECURE crypto map FW_Outside_map 5 match address Old_HQ crypto map FW_Outside_map 5 set peer x.x.x.2 crypto map FW_Outside_map 5 set transform-set SECURE WG crypto map FW_Outside_map 6 match address Che crypto map FW_Outside_map 6 set peer x.x.x.204 crypto map FW_Outside_map 6 set transform-set SECURE crypto map FW_Outside_map 7 match address Chi crypto map FW_Outside_map 7 set peer x.x.x.212 crypto map FW_Outside_map 7 set transform-set SECURE crypto map FW_Outside_map 8 match address Cla crypto map FW_Outside_map 8 set peer x.x.x.215 crypto map FW_Outside_map 8 set transform-set SECURE crypto map FW_Outside_map 9 match address Eas crypto map FW_Outside_map 9 set peer x.x.x.247 crypto map FW_Outside_map 9 set transform-set SECURE crypto map FW_Outside_map 10 match address Ess crypto map FW_Outside_map 10 set peer x.x.x.170 crypto map FW_Outside_map 10 set transform-set SECURE crypto map FW_Outside_map 11 match address Hud crypto map FW_Outside_map 11 set peer x.x.x.8 crypto map FW_Outside_map 11 set transform-set SECURE crypto map FW_Outside_map 12 match address Gat crypto map FW_Outside_map 12 set peer x.x.x.212 crypto map FW_Outside_map 12 set transform-set SECURE crypto map FW_Outside_map 13 match address Ken crypto map FW_Outside_map 13 set peer x.x.x.230 crypto map FW_Outside_map 13 set transform-set SECURE crypto map FW_Outside_map 14 match address She crypto map FW_Outside_map 14 set peer x.x.x.24 crypto map FW_Outside_map 14 set transform-set SECURE crypto map FW_Outside_map 15 match address North-Office crypto map FW_Outside_map 15 set peer x.x.x.94 crypto map FW_Outside_map 15 set transform-set SECURE crypto map FW_Outside_map 16 match address outside_cryptomap_16 crypto map FW_Outside_map 16 set peer x.x.x.134 crypto map FW_Outside_map 16 set transform-set SECURE crypto map FW_Outside_map 16 set security-association lifetime seconds crypto map FW_Outside_map 17 match address Lit crypto map FW_Outside_map 17 set peer x.x.x.110 crypto map FW_Outside_map 17 set transform-set SECURE crypto map FW_Outside_map 18 match address Mid crypto map FW_Outside_map 18 set peer 78.x.x.110 crypto map FW_Outside_map 18 set transform-set SECURE crypto map FW_Outside_map 19 match address Sp crypto map FW_Outside_map 19 set peer x.x.x.47 crypto map FW_Outside_map 19 set transform-set SECURE crypto map FW_Outside_map 20 match address Tor crypto map FW_Outside_map 20 set peer x.x.x.184 crypto map FW_Outside_map 20 set transform-set SECURE crypto map FW_Outside_map 21 match address Tr crypto map FW_Outside_map 21 set peer x.x.x.75 crypto map FW_Outside_map 21 set transform-set SECURE crypto map FW_Outside_map 22 match address Yo crypto map FW_Outside_map 22 set peer x.x.x.40 crypto map FW_Outside_map 22 set transform-set SECURE crypto map FW_Outside_map 23 match address Tra crypto map FW_Outside_map 23 set peer x.x.x.145 crypto map FW_Outside_map 23 set transform-set SECURE crypto map FW_Outside_map 24 match address outside_cryptomap_24 crypto map FW_Outside_map 24 set peer x.x.x.46 crypto map FW_Outside_map 24 set transform-set SECURE crypto map FW_Outside_map 24 set security-association lifetime seconds crypto map FW_Outside_map 25 match address Nor crypto map FW_Outside_map 25 set peer x.x.x.70 crypto map FW_Outside_map 25 set transform-set SECURE crypto map FW_Outside_map 26 match address Ilk crypto map FW_Outside_map 26 set peer x.x.x.65 crypto map FW_Outside_map 26 set transform-set SECURE crypto map FW_Outside_map 27 match address Nor crypto map FW_Outside_map 27 set peer x.x.x.240 crypto map FW_Outside_map 27 set transform-set SECURE crypto map FW_Outside_map 28 match address ST crypto map FW_Outside_map 28 set peer x.x.x.163 crypto map FW_Outside_map 28 set transform-set SECURE crypto map FW_Outside_map 28 set security-association lifetime seconds crypto map FW_Outside_map 28 set security-association lifetime kilobytes crypto map FW_Outside_map 29 match address Lei crypto map FW_Outside_map 29 set peer x.x.x.4 crypto map FW_Outside_map 29 set transform-set SECURE crypto map FW_Outside_map 30 match address outside_cryptomap_30 crypto map FW_Outside_map 30 set peer x.x.x.34 crypto map FW_Outside_map 30 set transform-set SECURE crypto map FW_Outside_map 31 match address outside_31_cryptomap crypto map FW_Outside_map 31 set pfs crypto map FW_Outside_map 31 set peer Cisco-admin-Peer crypto map FW_Outside_map 31 set transform-set ESP-AES-256-SHA crypto map FW_Outside_map 32 match address outside_32_cryptomap crypto map FW_Outside_map 32 set pfs crypto map FW_Outside_map 32 set peer HQ-SDSL-Peer crypto map FW_Outside_map 32 set transform-set ESP-AES-256-SHA crypto map FW_Outside_map 34 match address outside_cryptomap_34 crypto map FW_Outside_map 34 set peer x.x.x.246 crypto map FW_Outside_map 34 set transform-set ESP-AES-128-SHA ESP-AES-192-SHA ESP-AES-256-SHA crypto map FW_Outside_map 65535 ipsec-isakmp dynamic dynmap crypto map FW_Outside_map interface outside crypto map FW_outside_map 31 set peer x.x.x.45 crypto isakmp identity address crypto isakmp enable outside crypto isakmp policy 9 webvpn enable outside svc enable group-policy ASA-LAN-VPN internal group-policy ASA_LAN-VPN attributes wins-server value 192.168.x.1 192.168.x.2 dns-server value 192.168.x.1 192.168.x.2 vpn-tunnel-protocol IPSec svc split-tunnel-policy tunnelspecified split-tunnel-network-list value Split-Tunnel-ACL default-domain value MYdomain username xxxxxxxxxx password privilege 15 tunnel-group DefaultRAGroup ipsec-attributes isakmp keepalive threshold 30 retry 2 tunnel-group DefaultWEBVPNGroup ipsec-attributes isakmp keepalive threshold 30 retry 2 tunnel-group x.x.x.121 type ipsec-l2l tunnel-group x.x.x..121 ipsec-attributes pre-shared-key * isakmp keepalive threshold 30 retry 2 tunnel-group x.x.x.202 type ipsec-l2l tunnel-group x.x.x.202 ipsec-attributes pre-shared-key * isakmp keepalive threshold 30 retry 2 tunnel-group x.x.x.113 type ipsec-l2l tunnel-group x.x.x.113 ipsec-attributes pre-shared-key * isakmp keepalive threshold 30 retry 2 tunnel-group x.x.x.205 type ipsec-l2l tunnel-group x.x.x.205 ipsec-attributes pre-shared-key * isakmp keepalive threshold 30 retry 2 tunnel-group x.x.x.204 type ipsec-l2l tunnel-group x.x.x.204 ipsec-attributes pre-shared-key * isakmp keepalive threshold 30 retry 2 tunnel-group x.x.x.212 type ipsec-l2l tunnel-group x.x.x.212 ipsec-attributes pre-shared-key * tunnel-group x.x.x.215 type ipsec-l2l tunnel-group x.x.x.215 ipsec-attributes pre-shared-key * tunnel-group x.x.x.247 type ipsec-l2l tunnel-group x.x.x.247 ipsec-attributes pre-shared-key * tunnel-group x.x.x.170 type ipsec-l2l tunnel-group x.x.x.170 ipsec-attributes pre-shared-key * isakmp keepalive disable tunnel-group x.x.x..8 type ipsec-l2l tunnel-group x.x.x.8 ipsec-attributes pre-shared-key * tunnel-group x.x.x.212 type ipsec-l2l tunnel-group x.x.x.212 ipsec-attributes pre-shared-key * tunnel-group x.x.x.230 type ipsec-l2l tunnel-group x.x.x.230 ipsec-attributes pre-shared-key * tunnel-group x.x.x.24 type ipsec-l2l tunnel-group x.x.x.24 ipsec-attributes pre-shared-key * tunnel-group x.x.x.46 type ipsec-l2l tunnel-group x.x.x.46 ipsec-attributes pre-shared-key * isakmp keepalive disable tunnel-group x.x.x.4 type ipsec-l2l tunnel-group x.x.x.4 ipsec-attributes pre-shared-key * tunnel-group x.x.x.110 type ipsec-l2l tunnel-group x.x.x.110 ipsec-attributes pre-shared-key * tunnel-group 78.x.x.110 type ipsec-l2l tunnel-group 78.x.x.110 ipsec-attributes pre-shared-key * tunnel-group x.x.x.47 type ipsec-l2l tunnel-group x.x.x.47 ipsec-attributes pre-shared-key * tunnel-group x.x.x.34 type ipsec-l2l tunnel-group x.x.x.34 ipsec-attributes pre-shared-key * isakmp keepalive disable tunnel-group x.x.x..129 type ipsec-l2l tunnel-group x.x.x.129 ipsec-attributes pre-shared-key * isakmp keepalive disable tunnel-group x.x.x.94 type ipsec-l2l tunnel-group x.x.x.94 ipsec-attributes pre-shared-key * isakmp keepalive disable tunnel-group x.x.x.40 type ipsec-l2l tunnel-group x.x.x.40 ipsec-attributes pre-shared-key * isakmp keepalive disable tunnel-group x.x.x.65 type ipsec-l2l tunnel-group x.x.x.65 ipsec-attributes pre-shared-key * tunnel-group x.x.x.70 type ipsec-l2l tunnel-group x.x.x.70 ipsec-attributes pre-shared-key * tunnel-group x.x.x.134 type ipsec-l2l tunnel-group x.x.x.134 ipsec-attributes pre-shared-key * isakmp keepalive disable tunnel-group x.x.x.163 type ipsec-l2l tunnel-group x.x.x.163 ipsec-attributes pre-shared-key * isakmp keepalive disable tunnel-group x.x.x.2 type ipsec-l2l tunnel-group x.x.x.2 ipsec-attributes pre-shared-key * isakmp keepalive disable tunnel-group ASA-LAN-VPN type remote-access tunnel-group ASA-LAN-VPN general-attributes address-pool RAS-VPN authentication-server-group vpn authentication-server-group (outside) vpn default-group-policy ASA-LAN-VPN tunnel-group ASA-LAN-VPN ipsec-attributes pre-shared-key * tunnel-group x.x.x.184 type ipsec-l2l tunnel-group x.x.x.184 ipsec-attributes pre-shared-key * tunnel-group x.x.x.145 type ipsec-l2l tunnel-group x.x.x.145 ipsec-attributes pre-shared-key * isakmp keepalive disable tunnel-group x.x.x.75 type ipsec-l2l tunnel-group x.x.x.75 ipsec-attributes pre-shared-key * tunnel-group x.x.x.246 type ipsec-l2l tunnel-group x.x.x.246 ipsec-attributes pre-shared-key * isakmp keepalive disable tunnel-group x.x.x.2 type ipsec-l2l tunnel-group x.x.x..2 ipsec-attributes pre-shared-key * tunnel-group x.x.x.98 type ipsec-l2l tunnel-group x.x.x.98 ipsec-attributes pre-shared-key * ! ! ! policy-map global_policy description Netflow class class-default flow-export event-type all destination MS-ISA-Server policy-map type inspect dns migrated_dns_map_1 parameters message-length maximum 512 Anyone have a clue because Im on the verge of going postal.....

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  • Shut down windows service based on load

    - by JP
    Hello, I was wondering if there are any free / open source solutions that will start and stop a windows service based on load? I have some pubsub subscriber services that do background work which is not critical. Ideally i would like tot be able to automate things so that these services could start if memory/cpu/disk i/o was under a certain threshold and stop gracefully if that threshold was met. Do you know of any solutions? Thanks JP

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  • Edge detection using wavelet

    - by cheoma
    I had done Edge detection using wavelet transform using thus steps changing the image to Gray scale decomposing the image using dwt2(discrete wavelet transform,Haar wavelet filter ) in to horizontal,vertical,diagonal and approximation(detail) further decomposing the horizontal part threshold (global threshold like canny Edge detection ) i got the edge but i got a problem while locating the edge to complete image to mean recovering original image using only the Edges so i need help concerning this either in concept ,mat lab code or references I hope i will get your help soon

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  • Thresholding in Matlab

    - by 3babala
    How do I threshold an image to find the local maxes in a robust way? I know I can just look at the data, visually guess at some appropriate h value, and do imextendedmax(I,h) where h is the threshold... but I'm looking for a more robust way to do it in Matlab. I'm pretty new to Matlab and coding so this is all foreign...

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  • thresholding to distinguish small features in noisy data

    - by Daniel
    Hi, I'm wondering what type of threshold would work well for distinguishing features that are very small (small in the xy sense) in comparison with the full spread, if that makes sense. The graythresh() function in Matlab that uses the Otsu method doesn't work too well for my data. Otsu is a clustering method where I think the # of pixels should be similar in each class, which is not the case for me so when I employ it I get a threshold that is way too small and falls well within a lot of the background noise that remains even after filtering.

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  • Improving Partitioned Table Join Performance

    - by Paul White
    The query optimizer does not always choose an optimal strategy when joining partitioned tables. This post looks at an example, showing how a manual rewrite of the query can almost double performance, while reducing the memory grant to almost nothing. Test Data The two tables in this example use a common partitioning partition scheme. The partition function uses 41 equal-size partitions: CREATE PARTITION FUNCTION PFT (integer) AS RANGE RIGHT FOR VALUES ( 125000, 250000, 375000, 500000, 625000, 750000, 875000, 1000000, 1125000, 1250000, 1375000, 1500000, 1625000, 1750000, 1875000, 2000000, 2125000, 2250000, 2375000, 2500000, 2625000, 2750000, 2875000, 3000000, 3125000, 3250000, 3375000, 3500000, 3625000, 3750000, 3875000, 4000000, 4125000, 4250000, 4375000, 4500000, 4625000, 4750000, 4875000, 5000000 ); GO CREATE PARTITION SCHEME PST AS PARTITION PFT ALL TO ([PRIMARY]); There two tables are: CREATE TABLE dbo.T1 ( TID integer NOT NULL IDENTITY(0,1), Column1 integer NOT NULL, Padding binary(100) NOT NULL DEFAULT 0x,   CONSTRAINT PK_T1 PRIMARY KEY CLUSTERED (TID) ON PST (TID) );   CREATE TABLE dbo.T2 ( TID integer NOT NULL, Column1 integer NOT NULL, Padding binary(100) NOT NULL DEFAULT 0x,   CONSTRAINT PK_T2 PRIMARY KEY CLUSTERED (TID, Column1) ON PST (TID) ); The next script loads 5 million rows into T1 with a pseudo-random value between 1 and 5 for Column1. The table is partitioned on the IDENTITY column TID: INSERT dbo.T1 WITH (TABLOCKX) (Column1) SELECT (ABS(CHECKSUM(NEWID())) % 5) + 1 FROM dbo.Numbers AS N WHERE n BETWEEN 1 AND 5000000; In case you don’t already have an auxiliary table of numbers lying around, here’s a script to create one with 10 million rows: CREATE TABLE dbo.Numbers (n bigint PRIMARY KEY);   WITH L0 AS(SELECT 1 AS c UNION ALL SELECT 1), L1 AS(SELECT 1 AS c FROM L0 AS A CROSS JOIN L0 AS B), L2 AS(SELECT 1 AS c FROM L1 AS A CROSS JOIN L1 AS B), L3 AS(SELECT 1 AS c FROM L2 AS A CROSS JOIN L2 AS B), L4 AS(SELECT 1 AS c FROM L3 AS A CROSS JOIN L3 AS B), L5 AS(SELECT 1 AS c FROM L4 AS A CROSS JOIN L4 AS B), Nums AS(SELECT ROW_NUMBER() OVER (ORDER BY (SELECT NULL)) AS n FROM L5) INSERT dbo.Numbers WITH (TABLOCKX) SELECT TOP (10000000) n FROM Nums ORDER BY n OPTION (MAXDOP 1); Table T1 contains data like this: Next we load data into table T2. The relationship between the two tables is that table 2 contains ‘n’ rows for each row in table 1, where ‘n’ is determined by the value in Column1 of table T1. There is nothing particularly special about the data or distribution, by the way. INSERT dbo.T2 WITH (TABLOCKX) (TID, Column1) SELECT T.TID, N.n FROM dbo.T1 AS T JOIN dbo.Numbers AS N ON N.n >= 1 AND N.n <= T.Column1; Table T2 ends up containing about 15 million rows: The primary key for table T2 is a combination of TID and Column1. The data is partitioned according to the value in column TID alone. Partition Distribution The following query shows the number of rows in each partition of table T1: SELECT PartitionID = CA1.P, NumRows = COUNT_BIG(*) FROM dbo.T1 AS T CROSS APPLY (VALUES ($PARTITION.PFT(TID))) AS CA1 (P) GROUP BY CA1.P ORDER BY CA1.P; There are 40 partitions containing 125,000 rows (40 * 125k = 5m rows). The rightmost partition remains empty. The next query shows the distribution for table 2: SELECT PartitionID = CA1.P, NumRows = COUNT_BIG(*) FROM dbo.T2 AS T CROSS APPLY (VALUES ($PARTITION.PFT(TID))) AS CA1 (P) GROUP BY CA1.P ORDER BY CA1.P; There are roughly 375,000 rows in each partition (the rightmost partition is also empty): Ok, that’s the test data done. Test Query and Execution Plan The task is to count the rows resulting from joining tables 1 and 2 on the TID column: SET STATISTICS IO ON; DECLARE @s datetime2 = SYSUTCDATETIME();   SELECT COUNT_BIG(*) FROM dbo.T1 AS T1 JOIN dbo.T2 AS T2 ON T2.TID = T1.TID;   SELECT DATEDIFF(Millisecond, @s, SYSUTCDATETIME()); SET STATISTICS IO OFF; The optimizer chooses a plan using parallel hash join, and partial aggregation: The Plan Explorer plan tree view shows accurate cardinality estimates and an even distribution of rows across threads (click to enlarge the image): With a warm data cache, the STATISTICS IO output shows that no physical I/O was needed, and all 41 partitions were touched: Running the query without actual execution plan or STATISTICS IO information for maximum performance, the query returns in around 2600ms. Execution Plan Analysis The first step toward improving on the execution plan produced by the query optimizer is to understand how it works, at least in outline. The two parallel Clustered Index Scans use multiple threads to read rows from tables T1 and T2. Parallel scan uses a demand-based scheme where threads are given page(s) to scan from the table as needed. This arrangement has certain important advantages, but does result in an unpredictable distribution of rows amongst threads. The point is that multiple threads cooperate to scan the whole table, but it is impossible to predict which rows end up on which threads. For correct results from the parallel hash join, the execution plan has to ensure that rows from T1 and T2 that might join are processed on the same thread. For example, if a row from T1 with join key value ‘1234’ is placed in thread 5’s hash table, the execution plan must guarantee that any rows from T2 that also have join key value ‘1234’ probe thread 5’s hash table for matches. The way this guarantee is enforced in this parallel hash join plan is by repartitioning rows to threads after each parallel scan. The two repartitioning exchanges route rows to threads using a hash function over the hash join keys. The two repartitioning exchanges use the same hash function so rows from T1 and T2 with the same join key must end up on the same hash join thread. Expensive Exchanges This business of repartitioning rows between threads can be very expensive, especially if a large number of rows is involved. The execution plan selected by the optimizer moves 5 million rows through one repartitioning exchange and around 15 million across the other. As a first step toward removing these exchanges, consider the execution plan selected by the optimizer if we join just one partition from each table, disallowing parallelism: SELECT COUNT_BIG(*) FROM dbo.T1 AS T1 JOIN dbo.T2 AS T2 ON T2.TID = T1.TID WHERE $PARTITION.PFT(T1.TID) = 1 AND $PARTITION.PFT(T2.TID) = 1 OPTION (MAXDOP 1); The optimizer has chosen a (one-to-many) merge join instead of a hash join. The single-partition query completes in around 100ms. If everything scaled linearly, we would expect that extending this strategy to all 40 populated partitions would result in an execution time around 4000ms. Using parallelism could reduce that further, perhaps to be competitive with the parallel hash join chosen by the optimizer. This raises a question. If the most efficient way to join one partition from each of the tables is to use a merge join, why does the optimizer not choose a merge join for the full query? Forcing a Merge Join Let’s force the optimizer to use a merge join on the test query using a hint: SELECT COUNT_BIG(*) FROM dbo.T1 AS T1 JOIN dbo.T2 AS T2 ON T2.TID = T1.TID OPTION (MERGE JOIN); This is the execution plan selected by the optimizer: This plan results in the same number of logical reads reported previously, but instead of 2600ms the query takes 5000ms. The natural explanation for this drop in performance is that the merge join plan is only using a single thread, whereas the parallel hash join plan could use multiple threads. Parallel Merge Join We can get a parallel merge join plan using the same query hint as before, and adding trace flag 8649: SELECT COUNT_BIG(*) FROM dbo.T1 AS T1 JOIN dbo.T2 AS T2 ON T2.TID = T1.TID OPTION (MERGE JOIN, QUERYTRACEON 8649); The execution plan is: This looks promising. It uses a similar strategy to distribute work across threads as seen for the parallel hash join. In practice though, performance is disappointing. On a typical run, the parallel merge plan runs for around 8400ms; slower than the single-threaded merge join plan (5000ms) and much worse than the 2600ms for the parallel hash join. We seem to be going backwards! The logical reads for the parallel merge are still exactly the same as before, with no physical IOs. The cardinality estimates and thread distribution are also still very good (click to enlarge): A big clue to the reason for the poor performance is shown in the wait statistics (captured by Plan Explorer Pro): CXPACKET waits require careful interpretation, and are most often benign, but in this case excessive waiting occurs at the repartitioning exchanges. Unlike the parallel hash join, the repartitioning exchanges in this plan are order-preserving ‘merging’ exchanges (because merge join requires ordered inputs): Parallelism works best when threads can just grab any available unit of work and get on with processing it. Preserving order introduces inter-thread dependencies that can easily lead to significant waits occurring. In extreme cases, these dependencies can result in an intra-query deadlock, though the details of that will have to wait for another time to explore in detail. The potential for waits and deadlocks leads the query optimizer to cost parallel merge join relatively highly, especially as the degree of parallelism (DOP) increases. This high costing resulted in the optimizer choosing a serial merge join rather than parallel in this case. The test results certainly confirm its reasoning. Collocated Joins In SQL Server 2008 and later, the optimizer has another available strategy when joining tables that share a common partition scheme. This strategy is a collocated join, also known as as a per-partition join. It can be applied in both serial and parallel execution plans, though it is limited to 2-way joins in the current optimizer. Whether the optimizer chooses a collocated join or not depends on cost estimation. The primary benefits of a collocated join are that it eliminates an exchange and requires less memory, as we will see next. Costing and Plan Selection The query optimizer did consider a collocated join for our original query, but it was rejected on cost grounds. The parallel hash join with repartitioning exchanges appeared to be a cheaper option. There is no query hint to force a collocated join, so we have to mess with the costing framework to produce one for our test query. Pretending that IOs cost 50 times more than usual is enough to convince the optimizer to use collocated join with our test query: -- Pretend IOs are 50x cost temporarily DBCC SETIOWEIGHT(50);   -- Co-located hash join SELECT COUNT_BIG(*) FROM dbo.T1 AS T1 JOIN dbo.T2 AS T2 ON T2.TID = T1.TID OPTION (RECOMPILE);   -- Reset IO costing DBCC SETIOWEIGHT(1); Collocated Join Plan The estimated execution plan for the collocated join is: The Constant Scan contains one row for each partition of the shared partitioning scheme, from 1 to 41. The hash repartitioning exchanges seen previously are replaced by a single Distribute Streams exchange using Demand partitioning. Demand partitioning means that the next partition id is given to the next parallel thread that asks for one. My test machine has eight logical processors, and all are available for SQL Server to use. As a result, there are eight threads in the single parallel branch in this plan, each processing one partition from each table at a time. Once a thread finishes processing a partition, it grabs a new partition number from the Distribute Streams exchange…and so on until all partitions have been processed. It is important to understand that the parallel scans in this plan are different from the parallel hash join plan. Although the scans have the same parallelism icon, tables T1 and T2 are not being co-operatively scanned by multiple threads in the same way. Each thread reads a single partition of T1 and performs a hash match join with the same partition from table T2. The properties of the two Clustered Index Scans show a Seek Predicate (unusual for a scan!) limiting the rows to a single partition: The crucial point is that the join between T1 and T2 is on TID, and TID is the partitioning column for both tables. A thread that processes partition ‘n’ is guaranteed to see all rows that can possibly join on TID for that partition. In addition, no other thread will see rows from that partition, so this removes the need for repartitioning exchanges. CPU and Memory Efficiency Improvements The collocated join has removed two expensive repartitioning exchanges and added a single exchange processing 41 rows (one for each partition id). Remember, the parallel hash join plan exchanges had to process 5 million and 15 million rows. The amount of processor time spent on exchanges will be much lower in the collocated join plan. In addition, the collocated join plan has a maximum of 8 threads processing single partitions at any one time. The 41 partitions will all be processed eventually, but a new partition is not started until a thread asks for it. Threads can reuse hash table memory for the new partition. The parallel hash join plan also had 8 hash tables, but with all 5,000,000 build rows loaded at the same time. The collocated plan needs memory for only 8 * 125,000 = 1,000,000 rows at any one time. Collocated Hash Join Performance The collated join plan has disappointing performance in this case. The query runs for around 25,300ms despite the same IO statistics as usual. This is much the worst result so far, so what went wrong? It turns out that cardinality estimation for the single partition scans of table T1 is slightly low. The properties of the Clustered Index Scan of T1 (graphic immediately above) show the estimation was for 121,951 rows. This is a small shortfall compared with the 125,000 rows actually encountered, but it was enough to cause the hash join to spill to physical tempdb: A level 1 spill doesn’t sound too bad, until you realize that the spill to tempdb probably occurs for each of the 41 partitions. As a side note, the cardinality estimation error is a little surprising because the system tables accurately show there are 125,000 rows in every partition of T1. Unfortunately, the optimizer uses regular column and index statistics to derive cardinality estimates here rather than system table information (e.g. sys.partitions). Collocated Merge Join We will never know how well the collocated parallel hash join plan might have worked without the cardinality estimation error (and the resulting 41 spills to tempdb) but we do know: Merge join does not require a memory grant; and Merge join was the optimizer’s preferred join option for a single partition join Putting this all together, what we would really like to see is the same collocated join strategy, but using merge join instead of hash join. Unfortunately, the current query optimizer cannot produce a collocated merge join; it only knows how to do collocated hash join. So where does this leave us? CROSS APPLY sys.partitions We can try to write our own collocated join query. We can use sys.partitions to find the partition numbers, and CROSS APPLY to get a count per partition, with a final step to sum the partial counts. The following query implements this idea: SELECT row_count = SUM(Subtotals.cnt) FROM ( -- Partition numbers SELECT p.partition_number FROM sys.partitions AS p WHERE p.[object_id] = OBJECT_ID(N'T1', N'U') AND p.index_id = 1 ) AS P CROSS APPLY ( -- Count per collocated join SELECT cnt = COUNT_BIG(*) FROM dbo.T1 AS T1 JOIN dbo.T2 AS T2 ON T2.TID = T1.TID WHERE $PARTITION.PFT(T1.TID) = p.partition_number AND $PARTITION.PFT(T2.TID) = p.partition_number ) AS SubTotals; The estimated plan is: The cardinality estimates aren’t all that good here, especially the estimate for the scan of the system table underlying the sys.partitions view. Nevertheless, the plan shape is heading toward where we would like to be. Each partition number from the system table results in a per-partition scan of T1 and T2, a one-to-many Merge Join, and a Stream Aggregate to compute the partial counts. The final Stream Aggregate just sums the partial counts. Execution time for this query is around 3,500ms, with the same IO statistics as always. This compares favourably with 5,000ms for the serial plan produced by the optimizer with the OPTION (MERGE JOIN) hint. This is another case of the sum of the parts being less than the whole – summing 41 partial counts from 41 single-partition merge joins is faster than a single merge join and count over all partitions. Even so, this single-threaded collocated merge join is not as quick as the original parallel hash join plan, which executed in 2,600ms. On the positive side, our collocated merge join uses only one logical processor and requires no memory grant. The parallel hash join plan used 16 threads and reserved 569 MB of memory:   Using a Temporary Table Our collocated merge join plan should benefit from parallelism. The reason parallelism is not being used is that the query references a system table. We can work around that by writing the partition numbers to a temporary table (or table variable): SET STATISTICS IO ON; DECLARE @s datetime2 = SYSUTCDATETIME();   CREATE TABLE #P ( partition_number integer PRIMARY KEY);   INSERT #P (partition_number) SELECT p.partition_number FROM sys.partitions AS p WHERE p.[object_id] = OBJECT_ID(N'T1', N'U') AND p.index_id = 1;   SELECT row_count = SUM(Subtotals.cnt) FROM #P AS p CROSS APPLY ( SELECT cnt = COUNT_BIG(*) FROM dbo.T1 AS T1 JOIN dbo.T2 AS T2 ON T2.TID = T1.TID WHERE $PARTITION.PFT(T1.TID) = p.partition_number AND $PARTITION.PFT(T2.TID) = p.partition_number ) AS SubTotals;   DROP TABLE #P;   SELECT DATEDIFF(Millisecond, @s, SYSUTCDATETIME()); SET STATISTICS IO OFF; Using the temporary table adds a few logical reads, but the overall execution time is still around 3500ms, indistinguishable from the same query without the temporary table. The problem is that the query optimizer still doesn’t choose a parallel plan for this query, though the removal of the system table reference means that it could if it chose to: In fact the optimizer did enter the parallel plan phase of query optimization (running search 1 for a second time): Unfortunately, the parallel plan found seemed to be more expensive than the serial plan. This is a crazy result, caused by the optimizer’s cost model not reducing operator CPU costs on the inner side of a nested loops join. Don’t get me started on that, we’ll be here all night. In this plan, everything expensive happens on the inner side of a nested loops join. Without a CPU cost reduction to compensate for the added cost of exchange operators, candidate parallel plans always look more expensive to the optimizer than the equivalent serial plan. Parallel Collocated Merge Join We can produce the desired parallel plan using trace flag 8649 again: SELECT row_count = SUM(Subtotals.cnt) FROM #P AS p CROSS APPLY ( SELECT cnt = COUNT_BIG(*) FROM dbo.T1 AS T1 JOIN dbo.T2 AS T2 ON T2.TID = T1.TID WHERE $PARTITION.PFT(T1.TID) = p.partition_number AND $PARTITION.PFT(T2.TID) = p.partition_number ) AS SubTotals OPTION (QUERYTRACEON 8649); The actual execution plan is: One difference between this plan and the collocated hash join plan is that a Repartition Streams exchange operator is used instead of Distribute Streams. The effect is similar, though not quite identical. The Repartition uses round-robin partitioning, meaning the next partition id is pushed to the next thread in sequence. The Distribute Streams exchange seen earlier used Demand partitioning, meaning the next partition id is pulled across the exchange by the next thread that is ready for more work. There are subtle performance implications for each partitioning option, but going into that would again take us too far off the main point of this post. Performance The important thing is the performance of this parallel collocated merge join – just 1350ms on a typical run. The list below shows all the alternatives from this post (all timings include creation, population, and deletion of the temporary table where appropriate) from quickest to slowest: Collocated parallel merge join: 1350ms Parallel hash join: 2600ms Collocated serial merge join: 3500ms Serial merge join: 5000ms Parallel merge join: 8400ms Collated parallel hash join: 25,300ms (hash spill per partition) The parallel collocated merge join requires no memory grant (aside from a paltry 1.2MB used for exchange buffers). This plan uses 16 threads at DOP 8; but 8 of those are (rather pointlessly) allocated to the parallel scan of the temporary table. These are minor concerns, but it turns out there is a way to address them if it bothers you. Parallel Collocated Merge Join with Demand Partitioning This final tweak replaces the temporary table with a hard-coded list of partition ids (dynamic SQL could be used to generate this query from sys.partitions): SELECT row_count = SUM(Subtotals.cnt) FROM ( VALUES (1),(2),(3),(4),(5),(6),(7),(8),(9),(10), (11),(12),(13),(14),(15),(16),(17),(18),(19),(20), (21),(22),(23),(24),(25),(26),(27),(28),(29),(30), (31),(32),(33),(34),(35),(36),(37),(38),(39),(40),(41) ) AS P (partition_number) CROSS APPLY ( SELECT cnt = COUNT_BIG(*) FROM dbo.T1 AS T1 JOIN dbo.T2 AS T2 ON T2.TID = T1.TID WHERE $PARTITION.PFT(T1.TID) = p.partition_number AND $PARTITION.PFT(T2.TID) = p.partition_number ) AS SubTotals OPTION (QUERYTRACEON 8649); The actual execution plan is: The parallel collocated hash join plan is reproduced below for comparison: The manual rewrite has another advantage that has not been mentioned so far: the partial counts (per partition) can be computed earlier than the partial counts (per thread) in the optimizer’s collocated join plan. The earlier aggregation is performed by the extra Stream Aggregate under the nested loops join. The performance of the parallel collocated merge join is unchanged at around 1350ms. Final Words It is a shame that the current query optimizer does not consider a collocated merge join (Connect item closed as Won’t Fix). The example used in this post showed an improvement in execution time from 2600ms to 1350ms using a modestly-sized data set and limited parallelism. In addition, the memory requirement for the query was almost completely eliminated  – down from 569MB to 1.2MB. The problem with the parallel hash join selected by the optimizer is that it attempts to process the full data set all at once (albeit using eight threads). It requires a large memory grant to hold all 5 million rows from table T1 across the eight hash tables, and does not take advantage of the divide-and-conquer opportunity offered by the common partitioning. The great thing about the collocated join strategies is that each parallel thread works on a single partition from both tables, reading rows, performing the join, and computing a per-partition subtotal, before moving on to a new partition. From a thread’s point of view… If you have trouble visualizing what is happening from just looking at the parallel collocated merge join execution plan, let’s look at it again, but from the point of view of just one thread operating between the two Parallelism (exchange) operators. Our thread picks up a single partition id from the Distribute Streams exchange, and starts a merge join using ordered rows from partition 1 of table T1 and partition 1 of table T2. By definition, this is all happening on a single thread. As rows join, they are added to a (per-partition) count in the Stream Aggregate immediately above the Merge Join. Eventually, either T1 (partition 1) or T2 (partition 1) runs out of rows and the merge join stops. The per-partition count from the aggregate passes on through the Nested Loops join to another Stream Aggregate, which is maintaining a per-thread subtotal. Our same thread now picks up a new partition id from the exchange (say it gets id 9 this time). The count in the per-partition aggregate is reset to zero, and the processing of partition 9 of both tables proceeds just as it did for partition 1, and on the same thread. Each thread picks up a single partition id and processes all the data for that partition, completely independently from other threads working on other partitions. One thread might eventually process partitions (1, 9, 17, 25, 33, 41) while another is concurrently processing partitions (2, 10, 18, 26, 34) and so on for the other six threads at DOP 8. The point is that all 8 threads can execute independently and concurrently, continuing to process new partitions until the wider job (of which the thread has no knowledge!) is done. This divide-and-conquer technique can be much more efficient than simply splitting the entire workload across eight threads all at once. Related Reading Understanding and Using Parallelism in SQL Server Parallel Execution Plans Suck © 2013 Paul White – All Rights Reserved Twitter: @SQL_Kiwi

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  • links for 2010-03-15

    - by Bob Rhubart
    ComputerworldUK: Morrison boosts IT investment by £200 million "[I]mproving efficiencies in areas such as manufacturing and distribution...helped the company make total savings of £526 million, surpassing its expected cost savings of £460 million. A total £43 million in cost savings was due to the IT investment." -- Anh Nguyen, ComputerworldUK (h/t to Brian Dayton for the link) (tags: oracle investment informationtechnology soasuite fusionmiddleware)

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