Return-Path: Delivered-To: apmail-xml-cocoon-users-archive@xml.apache.org Received: (qmail 22374 invoked by uid 500); 22 May 2003 04:13:52 -0000 Mailing-List: contact cocoon-users-help@xml.apache.org; run by ezmlm Precedence: bulk list-help: list-unsubscribe: list-post: Reply-To: cocoon-users@xml.apache.org Delivered-To: mailing list cocoon-users@xml.apache.org Received: (qmail 22352 invoked from network); 22 May 2003 04:13:44 -0000 Received: from vamana-60.cablenet.com.ni (HELO ags01.agsoftware.dnsalias.com) (216.6.48.60) by daedalus.apache.org with SMTP; 22 May 2003 04:13:44 -0000 Received: from ags01.agsoftware.dnsalias.com (localhost [127.0.0.1]) by ags01.agsoftware.dnsalias.com (8.12.8/8.12.5) with ESMTP id h4M4Ds1B006972 for ; Wed, 21 May 2003 22:13:54 -0600 Received: (from apache@localhost) by ags01.agsoftware.dnsalias.com (8.12.8/8.12.8/Submit) id h4M4Dr3Q006970; Wed, 21 May 2003 22:13:53 -0600 X-Authentication-Warning: ags01.agsoftware.dnsalias.com: apache set sender to agallardo@agsoftware.dnsalias.com using -f Received: from 10.0.0.5 (SquirrelMail authenticated user agallardo) by ags01.agsoftware.dnsalias.com with HTTP; Wed, 21 May 2003 22:13:52 -0600 (CST) Message-ID: <33254.10.0.0.5.1053576832.squirrel@ags01.agsoftware.dnsalias.com> Date: Wed, 21 May 2003 22:13:52 -0600 (CST) Subject: [SUMMARY] Actions and Modular Databases Actions From: "Antonio Gallardo" To: In-Reply-To: <20030521073918.GA11752@bremen.dvs1.informatik.tu-darmstadt.de> References: <38085.10.0.0.5.1053480667.squirrel@ags01.agsoftware.dnsalias.com> <20030521073918.GA11752@bremen.dvs1.informatik.tu-darmstadt.de> X-Priority: 3 Importance: Normal X-Mailer: SquirrelMail (version 1.2.11) MIME-Version: 1.0 Content-Type: multipart/mixed; boundary="----=_20030521221352_16680" X-Spam-Rating: daedalus.apache.org 1.6.2 0/1000/N ------=_20030521221352_16680 Content-Type: text/plain; charset=iso-8859-1 Content-Transfer-Encoding: 8bit Hi Chris: Thanks for your advise, it help us to decide the way we solved this. With two pipelines, one public and one internal. 1- 2- 3- 4- 5- 6- 7- 8- 9- The Action (line 2) query data from the databse and returns the URI "insert_pipeline" that is called at line 7. "insert_pipeline" looks like: executeinsert?param1=1¶m2=2¶m3=3 ...... Of course into the internal pipeline that process the line 7 there is a traditional modular database insert action. I dont know if this is the best practices or a elegant solution that but this works. But I think is secure. The prepared data in line 2 are inserted in 3 tables where is a cascade master-details, master-detail. By the way we dont liked the idea to make another database_pool with false and control all the BEGIN TRANSACTION, COMMIT and ROLLBACK into the Action. I think this will be a very ugly solution. I attached a diagram that describes what we did. Well thanks for your advise again. Beest Regards, Antonio Gallardo. Christian Haul dijo: > On 20.May.2003 -- 07:31 PM, Antonio Gallardo wrote: >> Hi: >> >> I have the following scenario: >> >> I need to generate some data based on a request from the user. The >> problem is that this data will use more than 1 table. Then we need to >> use Database transactions. We also know that Modular Database Actions >> are >> transactional. They can do the work. >> >> After thinking about the solution of this problem, we tought that in >> order to prepare the data before the use of "DatabaseAddAction". We >> need to build an Action. Here is a scratch of the sitemap: >> >> 1- >> 2- >> 3- >> 4- >> 5- >> 6- >> 7- >> 8- >> 9- >> 10 >> >> The question is: >> >> If we will store the data into line 2, the action will return new data >> into a "map" (As normal). But I dont know how to tell that the >> parameters will come from returned map and not from the traditional: > > Indeed, there is currently no way for an input module to get at the > sitemap variables. I fear it's not easily hackable because > aggregations and includes share the same request IIRC. > > So you need to store your data that is accessible from a > module. Request attributes come to mind for this. > > Another idea could be to prepare the data in a module. Of course this > depends on the complexity of the preparation and the dependencies > among the values. > > Chris. > -- > C h r i s t i a n H a u l > haul@informatik.tu-darmstadt.de > fingerprint: 99B0 1D9D 7919 644A 4837 7D73 FEF9 6856 335A 9E08 > > --------------------------------------------------------------------- To > unsubscribe, e-mail: cocoon-users-unsubscribe@xml.apache.org > For additional commands, e-mail: cocoon-users-help@xml.apache.org ------=_20030521221352_16680 Content-Type: image/png; name="dataprocessing.png" Content-Disposition: attachment; filename="dataprocessing.png" Content-Transfer-Encoding: base64 iVBORw0KGgoAAAANSUhEUgAAA6cAAAIdCAIAAABOWJyAAAAAA3NCSVQICAjb4U/gAAAgAElEQVR4 nOzdeZwT9f348c9MsvdmD2ARBJF6lEXFo94oigfiUawo1AOrVtSfWrfqt9paDxRtC6hUELWerfVs qxZvRbTeWE/QVYEKCF6oy7VZ9k5mfn8EQ0hmJjPJJDP55PV88OCRnUw+n/dMJsk7n7znM4qu6wIA AACQmup1AAAAAEDOkfUCAABAfkGvAygAiqIKIXRdy3P7rvQbayS1HbPlxczmDs/+ecm4hfizlmUA 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