knaufk commented on code in PR #680:
URL: https://github.com/apache/flink-web/pull/680#discussion_r1349960460


##########
docs/content/posts/2023-10-10-release-1.18.0.md:
##########
@@ -0,0 +1,542 @@
+---
+authors:
+- JingGe:
+  name: "Jing Ge"
+  twitter: jingengineer
+- KonstantinKnauf:
+  name: "Konstantin Knauf"
+  twitter: snntrable
+- SergeyNuyanzin:
+  name: "Sergey Nuyanzin"
+  twitter: uckamello
+- QingshengRen:
+  name: "Qingsheng Ren"
+  twitter: renqstuite
+date: "2023-10-10T08:00:00Z"
+subtitle: ""
+title: Announcing the Release of Apache Flink 1.18
+aliases:
+- /news/2023/10/10/release-1.18.0.html
+---
+
+The Apache Flink PMC is pleased to announce the release of Apache Flink 
1.18.0. As usual, we are looking at a packed 
+release with a wide variety of improvements and new features. Overall, 176 
people contributed to this release completing 
+18 FLIPS and 700+ issues. Thank you!
+
+Let's dive into the highlights.
+
+# Towards a Streaming Lakehouse
+
+## Flink SQL Improvements
+
+### Introduce Flink JDBC Driver For Sql Gateway 
+
+Flink 1.18 comes with a JDBC Driver for the Flink SQL Gateway. So, you can now 
use any SQL Client that supports JDBC to 
+interact with your tables via Flink SQL. Here is an example using 
[SQLLine](https://julianhyde.github.io/sqlline/manual.html). 
+
+```shell
+sqlline> !connect jdbc:flink://localhost:8083
+```
+
+```shell
+sqlline version 1.12.0
+sqlline> !connect jdbc:flink://localhost:8083
+Enter username for jdbc:flink://localhost:8083:
+Enter password for jdbc:flink://localhost:8083:
+0: jdbc:flink://localhost:8083> CREATE TABLE T(
+. . . . . . . . . . . . . . .)>      a INT,
+. . . . . . . . . . . . . . .)>      b VARCHAR(10)
+. . . . . . . . . . . . . . .)>  ) WITH (
+. . . . . . . . . . . . . . .)>      'connector' = 'filesystem',
+. . . . . . . . . . . . . . .)>      'path' = 'file:///tmp/T.csv',
+. . . . . . . . . . . . . . .)>      'format' = 'csv'
+. . . . . . . . . . . . . . .)>  );
+No rows affected (0.122 seconds)
+0: jdbc:flink://localhost:8083> INSERT INTO T VALUES (1, 'Hi'), (2, 'Hello');
++----------------------------------+
+|              job id              |
++----------------------------------+
+| fbade1ab4450fc57ebd5269fdf60dcfd |
++----------------------------------+
+1 row selected (1.282 seconds)
+0: jdbc:flink://localhost:8083> SELECT * FROM T;
++---+-------+
+| a |   b   |
++---+-------+
+| 1 | Hi    |
+| 2 | Hello |
++---+-------+
+2 rows selected (1.955 seconds)
+0: jdbc:flink://localhost:8083>
+```
+
+**More Information**
+* 
[Documentation](https://nightlies.apache.org/flink/flink-docs-master/docs/dev/table/jdbcdriver/)
 
+* [FLIP-293: Introduce Flink Jdbc Driver For Sql 
Gateway](https://cwiki.apache.org/confluence/display/FLINK/FLIP-293%3A+Introduce+Flink+Jdbc+Driver+For+Sql+Gateway)
+
+
+### Stored Procedures
+
+Stored Procedures provide a convenient way to encapsulate complex logic to 
perform data manipulation or administrative 
+tasks in Apache Flink itself. Thereforeļ¼Œ Flink introduces the support for 
calling stored procedures. 
+Flink now allows catalog developers to develop their own built-in stored 
procedures and then enables users to call these
+predefined stored procedures.
+
+**More Information**
+* 
[Documentation](https://nightlies.apache.org/flink/flink-docs-master/docs/dev/table/procedures/)
+* [FLIP-311: Support Call Stored 
Procedure](https://cwiki.apache.org/confluence/display/FLINK/FLIP-311%3A+Support+Call+Stored+Procedure)
+
+### Extended DDL Support
+
+From this release onwards, Flink supports
+
+- `REPLACE TABLE AS SELECT`
+- `CREATE OR REPLACE TABLE AS SELECT`
+
+and both these commands and previously supported `CREATE TABLE AS` can now 
support atomicity provided the underlying 
+connector supports this.
+
+Moreover, Apache Flink now supports TRUNCATE TABLE in batch execution mode. As 
before, the underlying connector needs 
+to implement and provide this capability
+
+And, finally, we have also added support for adding, dropping and listing 
partitions via
+
+- `ALTER TABLE ADD PARTITION`
+- `ALTER TABLE DROP PARTITION`
+- `SHOW PARTITIONS`
+
+**More Information**
+- [Documentation on 
TRUNCATE](https://nightlies.apache.org/flink/flink-docs-master/docs/dev/table/sql/truncate/)
+- [Documentation on CREATE OR 
REPLACE](https://nightlies.apache.org/flink/flink-docs-master/docs/dev/table/sql/create/#create-or-replace-table)
+- [Documentation on ALTER 
TABLE](https://nightlies.apache.org/flink/flink-docs-master/docs/dev/table/sql/alter/#alter-table)
+- [FLIP-302: Support TRUNCATE TABLE statement in batch 
mode](https://cwiki.apache.org/confluence/display/FLINK/FLIP-302%3A+Support+TRUNCATE+TABLE+statement+in+batch+mode)
+- [FLIP-303: Support REPLACE TABLE AS SELECT 
statement](https://cwiki.apache.org/confluence/display/FLINK/FLIP-303%3A+Support+REPLACE+TABLE+AS+SELECT+statement)
+- [FLIP-305: Support atomic for CREATE TABLE AS SELECT(CTAS) 
statement](https://cwiki.apache.org/confluence/display/FLINK/FLIP-305%3A+Support+atomic+for+CREATE+TABLE+AS+SELECT%28CTAS%29+statement)
+
+### Time Travelling
+
+Flink supports the time travel SQL syntax for querying historical versions of 
data that allows users to specify a point 
+in time and retrieve the data and schema of a table as it appeared at that 
time. With time travel, users can easily 
+analyze and compare historical versions of data.
+
+**More information**
+- 
[Documentation](https://nightlies.apache.org/flink/flink-docs-master/docs/dev/table/sql/queries/time-travel/)
+- [FLIP-308: Support Time 
Travel](https://cwiki.apache.org/confluence/display/FLINK/FLIP-308%3A+Support+Time+Travel)
+
+## Streaming Execution Improvements
+
+### Support Operator-Level State TTL
+
+Starting from Flink 1.18, Table API and SQL users can set state time-to-live 
(TTL) individually for stateful operators.
+This means that for scenarios like stream regular joins, users can now set 
different TTLs for the left and right 
+streams. In previous versions, state expiration could only be controlled at 
the pipeline level using the configuration 
+`table.exec.state.ttl`. With the introduction of operator-level state 
retention, users can now optimize resource 
+usage according to their specific requirements.
+
+**More Information**
+- 
[Documentation](https://nightlies.apache.org/flink/flink-docs-master/docs/dev/table/concepts/overview/#configure-operator-level-state-ttl)
+- [FLIP-292: Enhance COMPILED PLAN to support operator-level state TTL 
configuration](https://cwiki.apache.org/confluence/display/FLINK/FLIP-292%3A+Enhance+COMPILED+PLAN+to+support+operator-level+state+TTL+configuration)
+
+### Watermark Alignment and Idleness Detection in SQL
+
+You can now configure [watermark 
alignment](https://nightlies.apache.org/flink/flink-docs-stable/docs/dev/datastream/event-time/generating_watermarks/#watermark-alignment)
 
+and [source idleness 
timeouts](https://nightlies.apache.org/flink/flink-docs-stable/docs/dev/datastream/event-time/generating_watermarks/#dealing-with-idle-sources)
 
+in pure SQL via hints. Previously, these features were only available in the 
DataStream API.
+
+**More Information**
+- 
[Documentation](https://nightlies.apache.org/flink/flink-docs-master/docs/dev/table/sql/queries/hints/)
+- [FLIP-296: Extend watermark-related features for 
SQL](https://cwiki.apache.org/confluence/display/FLINK/FLIP-296%3A+Extend+watermark-related+features+for+SQL)
+
+## Batch Execution Improvements
+
+### Hybrid Shuffle supports Remote Storage
+
+Hybrid Shuffle supports storing the shuffle data in remote storage. The remote 
storage path can be configured with the 
+option `taskmanager.network.hybrid-shuffle.remote.path`. Hybrid Shuffle uses 
less network memory than before by 
+decoupling the memory usage from the number of parallelisms, improving the 
stability and ease of use. 
+
+For more detailed 
+information, please refer to 
+
+**More Information**
+* 
[Documentation](https://nightlies.apache.org/flink/flink-docs-master/docs/ops/batch/batch\_shuffle/#hybrid-shuffle)
+* [FLIP-301: Hybrid Shuffle supports Remote 
Storage](https://cwiki.apache.org/confluence/display/FLINK/FLIP-301%3A+Hybrid+Shuffle+supports+Remote+Storage)
+
+
+### Performance Improvements & TPC-DS Benchmark
+
+In previous releases, the community has done a lot of work to improve batch 
processing performance, which has led to 
+significant improvements. In this release cycle, community contributors have 
continued to put a lot of effort into 
+improving batch performance.
+
+#### Runtime Filter for Flink SQL
+
+Runtime filter is a common optimization to improve join performance. It is 
designed to dynamically generate filter 
+conditions for certain Join queries at runtime to reduce the amount of scanned 
or shuffled data, avoid unnecessary I/O 
+and network transmission, and speed up the query. We introduced runtime 
filters in Flink 1.18, and verified its 
+effectiveness through the TPC-DS benchmark, and observed up to 3x speedup for 
some queries by enabling this feature.
+
+#### Operator Fusion Codegen for Flink SQL
+
+Operator Fusion Codegen improves the execution performance of a query by 
fusing an operator DAG into a single optimized 
+operator that eliminates virtual function calls, leverages CPU registers for 
intermediate data and reduces the 
+instruction cache miss. As a general technical optimization, we verified its 
effectiveness through TPC-DS, and 
+only some batch operators completed fusion codegen support in version 1.18, 
getting significant performance gains on 
+some query.
+
+Note that both features are considered experimental and disabled by default in 
Flink 1.18. 
+They can be enabled using `table.optimizer.runtime-filter.enabled` and 
`able.exec.operator-fusion-codegen.enabled` 
+respectively.
+
+Since Flink 1.16, the Apache Flink Community has been continuously tracking 
the performance of its batch engine via the 
+TPC-DS benchmarking framework. After significant improvements in Flink 1.17 
(dynamic join-reordering, 
+dynamic local aggregations), the two improvements described in the previous 
sections lead to 12% performance improvement
+compared to Flink 1.17 , a 35% performance improvement compared to Flink 1.16 
on a 10T dataset for partitioned tables.
+
+<div style="text-align: center;">
+<img src="/img/blog/2023-10-10-release-1.18.0/tpc-ds-benchmark.png" 
style="width:90%;margin:15px">
+</div>
+
+**More Information**
+* [FLIP-324: Introduce Runtime Filter for Flink Batch 
Jobs](https://cwiki.apache.org/confluence/display/FLINK/FLIP-324%3A+Introduce+Runtime+Filter+for+Flink+Batch+Jobs)
+* [FLIP-315: Support Operator Fusion Codegen for Flink 
SQL](https://cwiki.apache.org/confluence/display/FLINK/FLIP-315+Support+Operator+Fusion+Codegen+for+Flink+SQL)
+
+# Towards Cloud-Native Elasticity
+
+Elasticity describes the ability of a system to adapt to workload changes in a 
non-disruptive ideally automatic manner.
+It is a defining characteristic of cloud-native systems and for long-running 
streaming workloads it is particularly 
+important. As such elasticity improvements are an area of continuous 
investment in the Apache Flink community. 
+Recent initiatives include the Kubernetes 
+[Autoscaler](https://nightlies.apache.org/flink/flink-kubernetes-operator-docs-release-1.6/docs/custom-resource/autoscaler/),
 
+numerous improvements to rescaling performance and last but not least 
+the [Adaptive 
Scheduler](https://nightlies.apache.org/flink/flink-docs-release-1.17/docs/deployment/elastic_scaling/#adaptive-scheduler).

Review Comment:
   Yes, I will do a find+replace. 



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