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Posted to commits@ignite.apache.org by dm...@apache.org on 2020/03/18 19:25:27 UTC

svn commit: r1875388 - in /ignite/site/branches/ignite-redisign: ./ arch/ features/ includes/ use-cases/

Author: dmagda
Date: Wed Mar 18 19:25:26 2020
New Revision: 1875388

URL: http://svn.apache.org/viewvc?rev=1875388&view=rev
Log:
committing edits

Removed:
    ignite/site/branches/ignite-redisign/features/computegrid.html
Modified:
    ignite/site/branches/ignite-redisign/.htaccess
    ignite/site/branches/ignite-redisign/arch/multi-tier-storage.html
    ignite/site/branches/ignite-redisign/features/collocatedprocessing.html
    ignite/site/branches/ignite-redisign/includes/header.html
    ignite/site/branches/ignite-redisign/index.html
    ignite/site/branches/ignite-redisign/use-cases/datagrid.html
    ignite/site/branches/ignite-redisign/use-cases/dih.html
    ignite/site/branches/ignite-redisign/use-cases/hpc.html
    ignite/site/branches/ignite-redisign/use-cases/in-memory-cache.html
    ignite/site/branches/ignite-redisign/use-cases/in-memory-database.html

Modified: ignite/site/branches/ignite-redisign/.htaccess
URL: http://svn.apache.org/viewvc/ignite/site/branches/ignite-redisign/.htaccess?rev=1875388&r1=1875387&r2=1875388&view=diff
==============================================================================
--- ignite/site/branches/ignite-redisign/.htaccess (original)
+++ ignite/site/branches/ignite-redisign/.htaccess Wed Mar 18 19:25:26 2020
@@ -37,6 +37,7 @@ Redirect 301 /arch/durablememory.html /a
 Redirect 301 /features/runseverywhere.html /features/multilanguage.html
 Redirect 301 /features/igniterdd.html /use-cases/spark-acceleration.html
 Redirect 301 /blogs.html /
+Redirect 301 /features/computegrid.html /features/collocatedprocessing.html
 
 RewriteEngine On
 

Modified: ignite/site/branches/ignite-redisign/arch/multi-tier-storage.html
URL: http://svn.apache.org/viewvc/ignite/site/branches/ignite-redisign/arch/multi-tier-storage.html?rev=1875388&r1=1875387&r2=1875388&view=diff
==============================================================================
--- ignite/site/branches/ignite-redisign/arch/multi-tier-storage.html (original)
+++ ignite/site/branches/ignite-redisign/arch/multi-tier-storage.html Wed Mar 18 19:25:26 2020
@@ -43,7 +43,7 @@ under the License.
     <title>Multi-Tier Storage - Apache Ignite</title>
 
     <meta name="description"
-          content="Apache Ignite multi-tier storage uses memory, disk, and Intel® Optane™ as active storage tiers to
+          content="Apache Ignite multi-tier storage uses memory, disk, and Intel Optane as active storage tiers to
           provide the speed of memory with the consistency of disk-based databases without the need for memory
           warm-ups on restarts."/>
 
@@ -61,11 +61,11 @@ under the License.
         
 
         <p>
-            Apache Ignite is designed to work with memory, disk, and Intel® Optane™ as active storage tiers.
+            Apache Ignite is designed to work with memory, disk, and Intel Optane as active storage tiers.
             The memory tier allows using DRAM and Intel® Optane™ operating in the Memory Mode for data storage
             and processing needs. The disk tier is optional with the support of two options -- you can
             persist data in an external database or keep it in the Ignite native persistence. SSD, Flash,
-            HDD, or Intel® Optane™ operating in the AppDirect Mode can be used as a storage device.
+            HDD, or Intel Optane operating in the AppDirect Mode can be used as a storage device.
         </p>
        
         <img class="img-responsive diagram-right" src="/images/durable_memory.png" />        

Modified: ignite/site/branches/ignite-redisign/features/collocatedprocessing.html
URL: http://svn.apache.org/viewvc/ignite/site/branches/ignite-redisign/features/collocatedprocessing.html?rev=1875388&r1=1875387&r2=1875388&view=diff
==============================================================================
--- ignite/site/branches/ignite-redisign/features/collocatedprocessing.html (original)
+++ ignite/site/branches/ignite-redisign/features/collocatedprocessing.html Wed Mar 18 19:25:26 2020
@@ -62,6 +62,11 @@ under the License.
            
         <img class="diagram-right img-responsive" src="/images/collocated_processing.png" />
         <p>
+            Apache Ignite supports co-located processing technique for compute-intensive and data-intensive calculations
+            as well as machine learning algorithms. This technique increases performance by eliminating the impact of
+            network latency.
+        </p>
+        <p>
             In traditional disk-based systems, such as relational or NoSQL databases, client applications
             usually bring data from servers, use the records for local calculations, and discard the data as
             soon as the business task is complete. This approach does not scale well if a significant volume

Modified: ignite/site/branches/ignite-redisign/includes/header.html
URL: http://svn.apache.org/viewvc/ignite/site/branches/ignite-redisign/includes/header.html?rev=1875388&r1=1875387&r2=1875388&view=diff
==============================================================================
--- ignite/site/branches/ignite-redisign/includes/header.html (original)
+++ ignite/site/branches/ignite-redisign/includes/header.html Wed Mar 18 19:25:26 2020
@@ -128,23 +128,18 @@
                         <a class="nav-link dropdown-toggle" role="button" data-toggle="dropdown" aria-haspopup="true"
                            aira-expanded="false" aria-label="Resources" id="navbarResources">Resources</a>
                         <ul class="dropdown-menu" role="menu">
-                            <li class="dropdown-subtitle" role="presentation">Overview & FAQ</li>
+                            <li class="dropdown-subtitle" role="presentation">FAQ</li>
                             <li class="dropdown-item">
                                 <a href="/whatisignite.html" aria-label="Overview"
                                    onclick="ga('send', 'event', 'whatisignite', 'menu_click', 'whatisignite_page');">
-                                    What is Apache Ignite&reg;?</a>
+                                    What is Apache Ignite?</a>
                             </li>
-                            <li class="dropdown-subtitle" role="presentation">Docs & APIs</li>
-                            <li class="dropdown-item"><a href="/docs-and-apis.html#docs">Technical Docs</a></li>
-                            <li class="dropdown-item"><a href="/docs-and-apis.html#apis">APIs</a></li>
-
-                            <li class="dropdown-subtitle" role="presentation">Learning Ignite</li>
+                            <li class="dropdown-subtitle" role="presentation">Learn Ignite</li>
+                            <li class="dropdown-item"><a href="/docs-and-apis.html">Documentation & APIs</a></li>
+                            <li class="dropdown-item"><a href="/screencasts.html">Videos</a></li>
                             <li class="dropdown-item"><a href="https://github.com/apache/ignite/tree/master/examples"
                                                          target="_blank" rel="noopener">
                                 Examples <i class="fa fa-external-link" style="padding-left:5px;"></i></a></li>
-                            <li class="dropdown-item"><a href="/screencasts.html">Videos</a></li>
-
-                            <li class="dropdown-subtitle" role="presentation">Books and Courses</li>
                             <li class="dropdown-item"><a href="https://www.shamimbhuiyan.com/ignitebook" target="_blank"
                                                          rel="noopener">Ignite Book<i
                                     class="fa fa-external-link" style="padding-left:5px;"></i></a></li>

Modified: ignite/site/branches/ignite-redisign/index.html
URL: http://svn.apache.org/viewvc/ignite/site/branches/ignite-redisign/index.html?rev=1875388&r1=1875387&r2=1875388&view=diff
==============================================================================
--- ignite/site/branches/ignite-redisign/index.html (original)
+++ ignite/site/branches/ignite-redisign/index.html Wed Mar 18 19:25:26 2020
@@ -198,7 +198,7 @@ under the License.
 
         <div id="intro-text" class="container">
             <p>
-                Apache Ignite is a horizontally scalable, fault-tolerant distributed in-memory
+                Apache Ignite&reg; is a horizontally scalable, fault-tolerant distributed in-memory
                 computing platform used to build real-time applications processing terabytes of data with in-memory
                 speed.
             </p>
@@ -232,7 +232,7 @@ under the License.
                             <h3>In-Memory Data Grid</h3>
                             <p>
                                 Gain 100x acceleration by using Ignite as an
-                                advance in-memory data grid on top of RDBMS, Hadoop or another store.
+                                advanced in-memory data grid on top of RDBMS, Hadoop or another store.
                             </p>
                         </a>
                     </div>
@@ -245,8 +245,8 @@ under the License.
                             </svg>
                             <h3>In-Memory Database</span></h3>
                             <p>
-                                Scale out and up across RAM, NVRAM, Flash and legacy storage with Ignite native
-                                transactional multi-tier persistence.
+                                Scale out and up across RAM, NVRAM, Flash and disk with Ignite distributed multi-tier
+                                storage.
                             </p>
                         </a>
                     </div>

Modified: ignite/site/branches/ignite-redisign/use-cases/datagrid.html
URL: http://svn.apache.org/viewvc/ignite/site/branches/ignite-redisign/use-cases/datagrid.html?rev=1875388&r1=1875387&r2=1875388&view=diff
==============================================================================
--- ignite/site/branches/ignite-redisign/use-cases/datagrid.html (original)
+++ ignite/site/branches/ignite-redisign/use-cases/datagrid.html Wed Mar 18 19:25:26 2020
@@ -54,9 +54,9 @@ under the License.
 				<h1>In-Memory Data Grid <strong>With SQL, <br />ACID Transactions and Compute APIs</strong></h1>
 			
 				<p>
-                    Apache Ignite provides an extensive set of user-friendly APIs to serve as an in-memory data grid
-                    that integrates into your existing architecture seamlessly and accelerates databases, services, and
-                    custom APIs.
+                    Apache Ignite as an in-memory data grid that accelerates and scales your databases, services, and
+                    APIs. It supports key-value and ANSI SQL APIs, ACID transactions, co-located compute, and machine
+                    learning libraries required for real-time applications.
                 </p>
                 <p>
                     An in-memory data grid type of deployment is also known as a read-through/write-through caching

Modified: ignite/site/branches/ignite-redisign/use-cases/dih.html
URL: http://svn.apache.org/viewvc/ignite/site/branches/ignite-redisign/use-cases/dih.html?rev=1875388&r1=1875387&r2=1875388&view=diff
==============================================================================
--- ignite/site/branches/ignite-redisign/use-cases/dih.html (original)
+++ ignite/site/branches/ignite-redisign/use-cases/dih.html Wed Mar 18 19:25:26 2020
@@ -54,10 +54,10 @@ under the License.
 					 <h1>Building Digital Integration Hub <stron>With Apache Ignite</stron></h1>
             <img class="diagram-right img-fluid" src="/images/digital-hub.png"/>
                     <p>
-                        A digital integration hub (DIH) is an advanced platform architecture that aggregates multiple
-                        back-end systems and databases into a low-latency and shared data store. Apache Ignite can
-                        function as this high-performance shared store by caching and persisting data sets dispersed
-                        across many disjointed external databases and systems.
+                        Apache Ignite is used as a low-latency and shared store of your digital integration hub
+                        architecture that caches and persists data sets scattered across many disjointed back-end databases
+                        and systems. A digital integration hub (DIH) is an advanced platform architecture that aggregates multiple
+                        back-end systems and databases into a low-latency and shared data store.
                     </p>
 
                     <p>

Modified: ignite/site/branches/ignite-redisign/use-cases/hpc.html
URL: http://svn.apache.org/viewvc/ignite/site/branches/ignite-redisign/use-cases/hpc.html?rev=1875388&r1=1875387&r2=1875388&view=diff
==============================================================================
--- ignite/site/branches/ignite-redisign/use-cases/hpc.html (original)
+++ ignite/site/branches/ignite-redisign/use-cases/hpc.html Wed Mar 18 19:25:26 2020
@@ -48,101 +48,102 @@ under the License.
     <!--#include virtual="/includes/sh.html" -->
 </head>
 <body>
-    <!--#include virtual="/includes/header.html" -->
-    <article>
+<!--#include virtual="/includes/header.html" -->
+<article>
     <div class="container">
-					<h1>High-Performance Computing <strong>With Apache Ignite</strong></h1>
-			
-          <p>
-              High-performance computing (HPC) is the ability to process data and perform complex
-              calculations at high speeds. Apache Ignite enables HPC by providing APIs for compute- and
-              data-intensive calculations. The APIs implement the MapReduce paradigm and let you run
-              arbitrary tasks across the cluster of Ignite nodes.
-          </p>
-          <img class="diagram-right img-fluid" src="/images/collocated_processing.png"/>
-          <p>
-              Having Ignite as a high-performance compute cluster, you can turn a group of commodity
-              machines or a cloud environment into a distributed supercomputer of interconnected Ignite
-              nodes.
-          </p>
-          <p>
-              Ignite enables speed and scale for HPC scenarios by processing records in memory and reducing
-              data shuffling and network utilization.
-          </p>
-          
-                    
-                
-            <h2>Co-located Processing</h2>
-            <p>
-                Ignite uses the notion of co-located processing to guide HPC workloads implementations in distributed
-                in-memory environments. Co-located processing increases the performance of your complex calculations by
-                running them straight on the Ignite cluster nodes. These calculations are done only on local data sets
-                available on the nodes, thus avoiding data shuffling over the network and resulting in orders of magnitude
-                increase in performance.
-            </p>
-
-            <p>
-                To exploit the co-located processing in practice, first, you need to co-locate data by storing related
-                records on the same cluster node. As an example of related or co-located data, consider your bank account
-                and transactions posted to it. Once you set <code>accountID</code> as an affinity key for the
-                <code>Transactions</code> table, you'll instruct Ignite to store all transactions for your
-                <code>accountId</code> on the same node that keeps the record of your account in the
-                <code>Accounts</code> table. Now let's say a payment processing system sends a compute task that
-                verifies previous transactions of your account. Since the data is co-located, Ignite will execute this
-                task directly on the node that stores your account record with all completed transactions and finish the
-                verification locally on that machine instead of pulling all the transactions back to the application
-                over the network. This method of executing a task on the node where the data resides provides
-                exceptionally high performance.The effect is even more significant when the system needs to process
-                millions of transactions per second, verifying billions of previously completed payments.
-            </p>					
-				
-            <h2>Compute APIs</h2>
-
-            <p>
-                Ignite provides compute APIs (also known as compute grid) for creating and scheduling custom
-                tasks of arbitrary complexity. The APIs implement MapReduce paradigm and are presently available for Java,
-                C#, and C++.
-            </p>
-				
-      <div class="jumbotron jumbotron-fluid">
-        <div class="container">
-          <div class="title display-6">Learn More</div>
-          <hr class="my-4">
-          <div class="row">
-            <div class="col-6 col-xs-12">
-              <ul>
-                <li>
-                   <a href="http://localhost/features/collocatedprocessing.html">
-                    Co-located processing <i class="fa fa-angle-double-right"></i>
-                </a>
-                </li>
-                <li>
-                  <a href="https://apacheignite.readme.io/docs/compute-grid" target="docs">
-                    Compute APIs <i class="fa fa-angle-double-right"></i>
-                </a>
-                </li>
-              </ul>
-            </div>
-            <div class="col-6 col-xs-12">
-              <ul>
-                <li>
-                  <a href="/features/machinelearning.html">
-                    Machine and Deep Learning <i class="fa fa-angle-double-right"></i>
-                </a>
-                </li>
-                <li>
-                   <a href="/arch/multi-tier-storage.html">
-                    Multi-Tier Storage <i class="fa fa-angle-double-right"></i>
-                </a>
-                </li>
-              </ul>
+        <h1>High-Performance Computing <strong>With Apache Ignite</strong></h1>
+
+        <p>
+            Apache Ignite enables high-performance computing by providing APIs for data and
+            compute-intensive calculations. The APIs implement the MapReduce paradigm and let you run
+            arbitrary tasks across the cluster of Ignite nodes. High-performance computing (HPC) is the ability to
+            process data and
+            perform complex calculations at high speeds and with Ignite you can turn your commodity hardware or cloud
+            environment into a distributed supercomputer.
+        </p>
+        <img class="diagram-right img-fluid" src="/images/collocated_processing.png"/>
+        <p>
+            Having Ignite as a high-performance compute cluster, you can turn a group of commodity
+            machines or a cloud environment into a distributed supercomputer of interconnected Ignite
+            nodes.
+        </p>
+        <p>
+            Ignite enables speed and scale for HPC scenarios by processing records in memory and reducing
+            data shuffling and network utilization.
+        </p>
+
+
+        <h2>Co-located Processing</h2>
+        <p>
+            Ignite uses the notion of co-located processing to guide HPC workloads implementations in distributed
+            in-memory environments. Co-located processing increases the performance of your complex calculations by
+            running them straight on the Ignite cluster nodes. These calculations are done only on local data sets
+            available on the nodes, thus avoiding data shuffling over the network and resulting in orders of magnitude
+            increase in performance.
+        </p>
+
+        <p>
+            To exploit the co-located processing in practice, first, you need to co-locate data by storing related
+            records on the same cluster node. As an example of related or co-located data, consider your bank account
+            and transactions posted to it. Once you set <code>accountID</code> as an affinity key for the
+            <code>Transactions</code> table, you'll instruct Ignite to store all transactions for your
+            <code>accountId</code> on the same node that keeps the record of your account in the
+            <code>Accounts</code> table. Now let's say a payment processing system sends a compute task that
+            verifies previous transactions of your account. Since the data is co-located, Ignite will execute this
+            task directly on the node that stores your account record with all completed transactions and finish the
+            verification locally on that machine instead of pulling all the transactions back to the application
+            over the network. This method of executing a task on the node where the data resides provides
+            exceptionally high performance.The effect is even more significant when the system needs to process
+            millions of transactions per second, verifying billions of previously completed payments.
+        </p>
+
+        <h2>Compute APIs</h2>
+
+        <p>
+            Ignite provides compute APIs (also known as compute grid) for creating and scheduling custom
+            tasks of arbitrary complexity. The APIs implement MapReduce paradigm and are presently available for Java,
+            C#, and C++.
+        </p>
+
+        <div class="jumbotron jumbotron-fluid">
+            <div class="container">
+                <div class="title display-6">Learn More</div>
+                <hr class="my-4">
+                <div class="row">
+                    <div class="col-6 col-xs-12">
+                        <ul>
+                            <li>
+                                <a href="http://localhost/features/collocatedprocessing.html">
+                                    Co-located processing <i class="fa fa-angle-double-right"></i>
+                                </a>
+                            </li>
+                            <li>
+                                <a href="https://apacheignite.readme.io/docs/compute-grid" target="docs">
+                                    Compute APIs <i class="fa fa-angle-double-right"></i>
+                                </a>
+                            </li>
+                        </ul>
+                    </div>
+                    <div class="col-6 col-xs-12">
+                        <ul>
+                            <li>
+                                <a href="/features/machinelearning.html">
+                                    Machine and Deep Learning <i class="fa fa-angle-double-right"></i>
+                                </a>
+                            </li>
+                            <li>
+                                <a href="/arch/multi-tier-storage.html">
+                                    Multi-Tier Storage <i class="fa fa-angle-double-right"></i>
+                                </a>
+                            </li>
+                        </ul>
+                    </div>
+                </div>
             </div>
-          </div>
         </div>
-      </div>
-    
-      
-</div>
+
+
+    </div>
 </article>
 <!--#include virtual="/includes/footer.html" -->
 <!--#include virtual="/includes/scripts.html" -->

Modified: ignite/site/branches/ignite-redisign/use-cases/in-memory-cache.html
URL: http://svn.apache.org/viewvc/ignite/site/branches/ignite-redisign/use-cases/in-memory-cache.html?rev=1875388&r1=1875387&r2=1875388&view=diff
==============================================================================
--- ignite/site/branches/ignite-redisign/use-cases/in-memory-cache.html (original)
+++ ignite/site/branches/ignite-redisign/use-cases/in-memory-cache.html Wed Mar 18 19:25:26 2020
@@ -33,7 +33,7 @@ under the License.
 <!DOCTYPE html>
 <html lang="en">
 <head>
-<link rel="canonical" href="https://ignite.apache.org/use-cases/in-memory-cache.html" />
+    <link rel="canonical" href="https://ignite.apache.org/use-cases/in-memory-cache.html"/>
     <meta charset="utf-8">
     <meta name="viewport" content="width=device-width, initial-scale=1.0">
 
@@ -51,130 +51,130 @@ under the License.
 <!--#include virtual="/includes/header.html" -->
 <article>
     <div class="container">
-					<h1 >In-Memory Cache <strong>With SQL, <br />ACID Transactions and Compute APIs</strong></h1>
-        
-          <p>
-                  One of the usages of Apache Ignite is as a distributed in-memory cache that supports ANSI SQL,
-                  ACID transactions, and co-located computations. From APIs and sessions caching to databases and
-                  microservices acceleration, Ignite provides all essential components required to speed up
-                  applications.
-              </p>
-        
-                    <img class="img-fluid diagram-right" src="/images/in_memory_data.png"/>
-                
-            <p>
-                As with classic distributed caches, you can span an Ignite cluster across several interconnected
-                physical or virtual machines letting it utilize all the available memory and CPU resources. But the
-                difference lies in the way you can use the cluster. In addition to standard key-value APIs, you can
-                run distributed SQL queries joining and grouping various data sets. If strong consistency is required,
-                you can execute multi-records and cross-cache ACID transactions in both pessimistic and optimistic
-                modes. Additionally, if an application runs compute or data-intensive logic, you can minimize data
-                shuffling and network utilization by running co-located computations and distributed machine learning
-                APIs right on the cluster nodes that store your data.
-
-            </p>
-
-            <p>
-                There are two primary deployment strategies for Ignite as an in-memory cache -- the cache-aside
-                deployment and read-through/write-through caching. Let's review both of them.
-            </p>				
-      
-            
-					 <h2>Cache-Aside Deployment</h2>
-            <p>
-                With the cache-aside deployment strategy, a cache is deployed separately from the primary data store
-                and might not even know that the latter exists. An application or change-data-capture process (CDC)
-                becomes responsible for data synchronization between these two storage locations. For instance, if any
-                record gets updated in the primary data store, then its new value needs to be replicated to the cache.
-            </p>
-            <p>
-                This strategy works well when the cached data is rather static and not updated frequently, or temporary
-                data lag/inconsistency is allowed between the two storage locations. It's usually assumed that the
-                cache and the primary store will become consistent eventually when changes are replicated in full.
-            </p>
-            <p>
-                If Apache Ignite is deployed in a cache-aside configuration, then its native persistence can be used as
-                a disk store for Ignite data sets. The native persistence allows eliminating the time-consuming cache
-                warm-up step. Furthermore, since the native persistence always keeps a full copy of data on disk,
-                you are free to cache a subset of records in memory. If a required data record is missing in memory,
-                then Ignite reads it from the disk automatically regardless of the API you use -- be it SQL, key-value,
-                or scan queries.
-            </p>
-        
-            <h2>Read-Through/Write-Through Caching</h2>
-            <p>
-                The read-through/write-through caching strategy can also be classified as an in-memory data grid type
-                of deployment. When Apache Ignite is deployed as a data grid, the application layer starts treating
-                Ignite as the primary store. While the applications write to and read from Ignite, the latter ensures
-                that any underlying external databases stay updated and consistent with the in-memory data.
-            </p>
-
-            <p>
-                This strategy is favorable for architectures that need to accelerate existing disk-based databases or
-                create a shared caching layer across many disconnected data sources. Ignite integrates with many
-                databases out-of-the-box and can write-through or write-behind all the changes to them. This also
-                includes ACID transactions - Ignite will coordinate and commit a transaction across its in-memory
-                cluster as well as to a relational database.
-            </p>
-            <p>
-                The read-through capability implies that a cache can read data from an external database if a record is
-                missing in memory. Ignite fully supports this capability for key-value APIs. However, when using Ignite
-                SQL, you have to preload the entire data set in memory first (Ignite SQL can query data on
-                disk only if it is located in its native persistence).
-            </p>
-        
-            
-      <div class="jumbotron jumbotron-fluid">
-        <div class="container">
-          <div class="display-6 title">Learn More</div>
-          <hr class="my-4">
-          <div class="row">
-            <div class="col-6 col-xs-12">
-              <ul>
-                <li>
-                  <p> <a href="/features/sql.html">
-                    Distributed SQL <i class="fa fa-angle-double-right"></i>
-                </a></p>
-                </li>
-                <li>
-                  <p><a href="/features/collocatedprocessing.html">
-                    Co-located Processing <i class="fa fa-angle-double-right"></i>
-                </a></p>
-                </li>
-				  <li><p><a href="/features/transactions.html">
-                    ACID Transactions <i class="fa fa-angle-double-right"></i>
-                </a></p></li>
-				  <li><p><a href="/arch/persistence.html">
-                    Native Persistence <i class="fa fa-angle-double-right"></i>
-                </a></p></li>
-              </ul>
-            </div>
-            <div class="col-6 col-xs-12">
-              <ul>
-                <li>
-                  <p><a href="/features/machinelearning.html">
-                    Machine and Deep Learning <i class="fa fa-angle-double-right"></i>
-                </a></p>
-                </li>
-                <li>
-                  <p><a href="/features/datagrid.html">
-                    Ignite as an In-Memory Data Grid <i class="fa fa-angle-double-right"></i>
-                </a></p>
-                </li>
-				  <li><p><a href="/use-cases/in-memory-database.html">
-                    Ignite as an In-Memory Database <i class="fa fa-angle-double-right"></i>
-                </a></p></li>
-				  <li><p><a href="/use-cases/dih.html">
-                    Ignite as a Digital Integration Hub <i class="fa fa-angle-double-right"></i>
-                </a></p></li>
-              </ul>
+        <h1>In-Memory Cache <strong>With SQL, <br/>ACID Transactions and Compute APIs</strong></h1>
+
+        <p>
+            Apache Ignite is used as a distributed in-memory cache that supports ANSI SQL,
+            ACID transactions, co-located computations and machine learning libraries. From APIs and sessions caching
+            to databases and microservices acceleration, Ignite provides all essential components required to speed up
+            applications.
+        </p>
+
+        <img class="img-fluid diagram-right" src="/images/in_memory_data.png"/>
+
+        <p>
+            As with classic distributed caches, you can span an Ignite cluster across several interconnected
+            physical or virtual machines letting it utilize all the available memory and CPU resources. But the
+            difference lies in the way you can use the cluster. In addition to standard key-value APIs, you can
+            run distributed SQL queries joining and grouping various data sets. If strong consistency is required,
+            you can execute multi-records and cross-cache ACID transactions in both pessimistic and optimistic
+            modes. Additionally, if an application runs compute or data-intensive logic, you can minimize data
+            shuffling and network utilization by running co-located computations and distributed machine learning
+            APIs right on the cluster nodes that store your data.
+
+        </p>
+
+        <p>
+            There are two primary deployment strategies for Ignite as an in-memory cache -- the cache-aside
+            deployment and read-through/write-through caching. Let's review both of them.
+        </p>
+
+
+        <h2>Cache-Aside Deployment</h2>
+        <p>
+            With the cache-aside deployment strategy, a cache is deployed separately from the primary data store
+            and might not even know that the latter exists. An application or change-data-capture process (CDC)
+            becomes responsible for data synchronization between these two storage locations. For instance, if any
+            record gets updated in the primary data store, then its new value needs to be replicated to the cache.
+        </p>
+        <p>
+            This strategy works well when the cached data is rather static and not updated frequently, or temporary
+            data lag/inconsistency is allowed between the two storage locations. It's usually assumed that the
+            cache and the primary store will become consistent eventually when changes are replicated in full.
+        </p>
+        <p>
+            If Apache Ignite is deployed in a cache-aside configuration, then its native persistence can be used as
+            a disk store for Ignite data sets. The native persistence allows eliminating the time-consuming cache
+            warm-up step. Furthermore, since the native persistence always keeps a full copy of data on disk,
+            you are free to cache a subset of records in memory. If a required data record is missing in memory,
+            then Ignite reads it from the disk automatically regardless of the API you use -- be it SQL, key-value,
+            or scan queries.
+        </p>
+
+        <h2>Read-Through/Write-Through Caching</h2>
+        <p>
+            The read-through/write-through caching strategy can also be classified as an in-memory data grid type
+            of deployment. When Apache Ignite is deployed as a data grid, the application layer starts treating
+            Ignite as the primary store. While the applications write to and read from Ignite, the latter ensures
+            that any underlying external databases stay updated and consistent with the in-memory data.
+        </p>
+
+        <p>
+            This strategy is favorable for architectures that need to accelerate existing disk-based databases or
+            create a shared caching layer across many disconnected data sources. Ignite integrates with many
+            databases out-of-the-box and can write-through or write-behind all the changes to them. This also
+            includes ACID transactions - Ignite will coordinate and commit a transaction across its in-memory
+            cluster as well as to a relational database.
+        </p>
+        <p>
+            The read-through capability implies that a cache can read data from an external database if a record is
+            missing in memory. Ignite fully supports this capability for key-value APIs. However, when using Ignite
+            SQL, you have to preload the entire data set in memory first (Ignite SQL can query data on
+            disk only if it is located in its native persistence).
+        </p>
+
+
+        <div class="jumbotron jumbotron-fluid">
+            <div class="container">
+                <div class="display-6 title">Learn More</div>
+                <hr class="my-4">
+                <div class="row">
+                    <div class="col-6 col-xs-12">
+                        <ul>
+                            <li>
+                                <p><a href="/features/sql.html">
+                                    Distributed SQL <i class="fa fa-angle-double-right"></i>
+                                </a></p>
+                            </li>
+                            <li>
+                                <p><a href="/features/collocatedprocessing.html">
+                                    Co-located Processing <i class="fa fa-angle-double-right"></i>
+                                </a></p>
+                            </li>
+                            <li><p><a href="/features/transactions.html">
+                                ACID Transactions <i class="fa fa-angle-double-right"></i>
+                            </a></p></li>
+                            <li><p><a href="/arch/persistence.html">
+                                Native Persistence <i class="fa fa-angle-double-right"></i>
+                            </a></p></li>
+                        </ul>
+                    </div>
+                    <div class="col-6 col-xs-12">
+                        <ul>
+                            <li>
+                                <p><a href="/features/machinelearning.html">
+                                    Machine and Deep Learning <i class="fa fa-angle-double-right"></i>
+                                </a></p>
+                            </li>
+                            <li>
+                                <p><a href="/features/datagrid.html">
+                                    Ignite as an In-Memory Data Grid <i class="fa fa-angle-double-right"></i>
+                                </a></p>
+                            </li>
+                            <li><p><a href="/use-cases/in-memory-database.html">
+                                Ignite as an In-Memory Database <i class="fa fa-angle-double-right"></i>
+                            </a></p></li>
+                            <li><p><a href="/use-cases/dih.html">
+                                Ignite as a Digital Integration Hub <i class="fa fa-angle-double-right"></i>
+                            </a></p></li>
+                        </ul>
+                    </div>
+                </div>
             </div>
-          </div>
         </div>
-      </div>
-    
-      
-  </div>	
+
+
+    </div>
 </article>
 <!--#include virtual="/includes/footer.html" -->
 

Modified: ignite/site/branches/ignite-redisign/use-cases/in-memory-database.html
URL: http://svn.apache.org/viewvc/ignite/site/branches/ignite-redisign/use-cases/in-memory-database.html?rev=1875388&r1=1875387&r2=1875388&view=diff
==============================================================================
--- ignite/site/branches/ignite-redisign/use-cases/in-memory-database.html (original)
+++ ignite/site/branches/ignite-redisign/use-cases/in-memory-database.html Wed Mar 18 19:25:26 2020
@@ -50,43 +50,41 @@ under the License.
 </head>
 <body>
 
-    <!--#include virtual="/includes/header.html" -->
+<!--#include virtual="/includes/header.html" -->
 <article>
     <div class="container">
-        <h1 >In-Memory Database <strong>With Multi-Tier Storage</strong></h1>
+        <h1>In-Memory Database <strong>With Multi-Tier Storage</strong></h1>
         <img class="diagram-right img-responsive" src="/images/sql_database.png" width="400px" style="float:right;"/>
         <p>
-            Apache Ignite, as an in-memory database, is a high-performant system-of-records that is capable
-            of storing and querying large data sets from memory as well as disk without requiring to warm up
-            the memory tier on cluster restarts.
-        </p>
-        <p>
-            Ignite serves as a distributed database that scales horizontally across memory and disk tiers
-            and supports ACID transactions, ANSI SQL, key-value, compute, machine learning, and other data
-            processing APIs.
-        </p>
-            
-                    
-
-            <h2>Multi-Tier Storage</h2>
-            <p>
-                Apache Ignite is designed to work with memory, disk, and Intel® Optane™ as active storage tiers.
-                Such architecture lets you combine the advantages of in-memory computing with disk durability and
-                strong consistency in one system.
-            </p>
-            <p>
-                When the native persistence is enabled, Ignite allows you to control the amount of memory it should
-                consume. Depending on the memory space available, Ignite either caches the full data set in memory or
-                keeps only the most frequently used data there and retrieves missing records from disk when needed.
-                For instance, if there are 100 records and the memory of your system can accommodate only 20 of them,
-                then all 100 records will be stored on disk and only 20 records will be cached in memory for better
-                performance.
-            </p>
-
-            <p>
-                The following are the primary advantages of Ignite memory management architecture:
-            </p>
-        <ul class="page-list" >
+            Apache Ignite is used as a distributed in-memory database that scales horizontally across memory and disk
+            tiers and supports ACID transactions, ANSI SQL, key-value, compute, machine learning, and other data
+            processing APIs. As a database, Ignite uses memory, disk or Intel Optane as active storage tiers with
+            no need for caching of all the data and memory warm-ups.
+        </p>
+
+        <p>
+
+        </p>
+
+        <h2>Multi-Tier Storage</h2>
+        <p>
+            Apache Ignite is designed to work with memory, disk, and Intel® Optane™ as active storage tiers.
+            Such architecture lets you combine the advantages of in-memory computing with disk durability and
+            strong consistency in one system.
+        </p>
+        <p>
+            When the native persistence is enabled, Ignite allows you to control the amount of memory it should
+            consume. Depending on the memory space available, Ignite either caches the full data set in memory or
+            keeps only the most frequently used data there and retrieves missing records from disk when needed.
+            For instance, if there are 100 records and the memory of your system can accommodate only 20 of them,
+            then all 100 records will be stored on disk and only 20 records will be cached in memory for better
+            performance.
+        </p>
+
+        <p>
+            The following are the primary advantages of Ignite memory management architecture:
+        </p>
+        <ul class="page-list">
             <li>
                 Multi-tiered storage - Ignite treats disk as an active storage layer allowing to
                 cache a subset of the data in memory and query both in-memory and disk-only records with SQL and
@@ -125,32 +123,41 @@ under the License.
 
         <div class="jumbotron jumbotron-fluid">
             <div class="container">
-              <div class="title display-6">Learn More</div>
-              <hr class="my-4">
-              <div class="row">
-                <div class="col-6 col-xs-12">
-                    <ul>
-                        <li><a href="/arch/multi-tier-storage.html"><b>Multi-Tier Storage <i class="fa fa-angle-double-right"></i></b></a></li>
-                        <li><a href="/arch/persistence.html"><b>Native Persistence <i class="fa fa-angle-double-right"></i></b></a></li>
-                        <li><a href="/features/collocatedprocessing.html"><b>Co-located Processing <i class="fa fa-angle-double-right"></i></b></a></li>
-                        <li><a href="/features/sql.html"><b>Distributed SQL <i class="fa fa-angle-double-right"></i></b></a></li>
-                        <li><a href="/features/transactions.html"><b>ACID Transactions <i class="fa fa-angle-double-right"></i></b></a></li>
-                    </ul>
-                </div>
-                <div class="col-6 col-xs-12">
-                    <ul>
-                        <li><a href="/features/machinelearning.html"><b>Machine and Deep Learning <i class="fa fa-angle-double-right"></i></b></a></li>
-                        <li><a href="/features/datagrid.html"><b>Ignite as an In-Memory Data Grid <i class="fa fa-angle-double-right"></i></b></a></li>
-                        <li><a href="/use-cases/in-memory-cache.html"><b>Ignite as an In-Memory Cache <i class="fa fa-angle-double-right"></i></b></a></li>
-                        <li><a href="/use-cases/dih.html"><b>Ignite as a Digital Integration Hub <i class="fa fa-angle-double-right"></i></b></a></li>
-                    </ul>
+                <div class="title display-6">Learn More</div>
+                <hr class="my-4">
+                <div class="row">
+                    <div class="col-6 col-xs-12">
+                        <ul>
+                            <li><a href="/arch/multi-tier-storage.html"><b>Multi-Tier Storage <i
+                                    class="fa fa-angle-double-right"></i></b></a></li>
+                            <li><a href="/arch/persistence.html"><b>Native Persistence <i
+                                    class="fa fa-angle-double-right"></i></b></a></li>
+                            <li><a href="/features/collocatedprocessing.html"><b>Co-located Processing <i
+                                    class="fa fa-angle-double-right"></i></b></a></li>
+                            <li><a href="/features/sql.html"><b>Distributed SQL <i class="fa fa-angle-double-right"></i></b></a>
+                            </li>
+                            <li><a href="/features/transactions.html"><b>ACID Transactions <i
+                                    class="fa fa-angle-double-right"></i></b></a></li>
+                        </ul>
+                    </div>
+                    <div class="col-6 col-xs-12">
+                        <ul>
+                            <li><a href="/features/machinelearning.html"><b>Machine and Deep Learning <i
+                                    class="fa fa-angle-double-right"></i></b></a></li>
+                            <li><a href="/features/datagrid.html"><b>Ignite as an In-Memory Data Grid <i
+                                    class="fa fa-angle-double-right"></i></b></a></li>
+                            <li><a href="/use-cases/in-memory-cache.html"><b>Ignite as an In-Memory Cache <i
+                                    class="fa fa-angle-double-right"></i></b></a></li>
+                            <li><a href="/use-cases/dih.html"><b>Ignite as a Digital Integration Hub <i
+                                    class="fa fa-angle-double-right"></i></b></a></li>
+                        </ul>
+                    </div>
                 </div>
             </div>
-            </div>
-        </div>
         </div>
-        </article>
-    <!--#include virtual="/includes/footer.html" -->
+    </div>
+</article>
+<!--#include virtual="/includes/footer.html" -->
 
 <!--#include virtual="/includes/scripts.html" -->
 </body>