SlideShare a Scribd company logo
1 of 111
OGH Event – 24 October 2016
Marco Gralike
Principal Consultant
eProseed, The Netherlands
Oracle 20+ years experience
Oracle ACE Director
OakTable Member
www.xmldb.nl
 Many thanks for their endless patience (despite my stupid
questions and mistakes) and for helping out:
 Mark Drake (JSON / XMLDB)
 Beda Hammerschmidt (JSON/XMLDB)
 Andy Rivenes (DBIM)
 Maria Colgan (DB General / DBIM)
 What is JSON?
 Oracle 12.1.0.2
 Load & Store
 Select
 Index
 Oracle 12.2.0.1
 Generate
 Automate
 Improve performance via DBIM
Basic constructs
(recursive)
 Base values
number, string,
boolean, …
 Objects { }
sets of label-value
pairs
 Arrays [ ]
lists of values
 JSON data can also be
 Partitioned
 Used with Flashback
 Recovered (when proper backup)
 Used with Securefile storage
▪ Encryption
▪ Deduplication
▪ Compressed
 Multiple index options
 Caching advantages, etc., etc.,…
 New in Oracle Database 12.1.0.2.0
 Store and manage JSON documents in Database
▪ JSON documents stored as text
▪ JSON documents can be indexed
 Access JSON documents via developer-friendly ‘Document-Store’ API’s
 SQL query capabilities over JSON documents for reporting and analysis
 Allows Oracle RDBMS to be used as a JSON Document Store
 Enables storing, indexing and querying of JSON documents
 No new JSON data type
 IS JSON constraint used to ensure a column contains valid JSON
documents
 Apply to (N)CLOB, (N)VARCHAR2, RAW and BLOB data
 Enables use of .dotted notation to navigate JSON document structure and
access content
filelist.dat
./data/www.json-generator.com.01.json
./data/www.json-generator.com.02.json
./data/www.json-generator.com.03.json
./data/www.json-generator.com.04.json
./data/www.json-generator.com.05.json
./data/www.json-generator.com.06.json
./data/www.json-generator.com.07.json
./data/www.json-generator.com.08.json
./data/www.json-generator.com.09.json
./data/www.json-generator.com.10.json
sqlldr.sh
sqlldr userid=json/json control=sqlldr.ctl log=sqlldr.log bad=sqlldr.bad
sqlldr.ctl
LOAD DATA
INFILE 'filelist.dat'
truncate
INTO table JSON_DATA
FIELDSTERMINATED BY ',‘
( clob_filename filler char(120)
, clob_content LOBFILE(clob_filename) TERMINATED BY EOF
, nclob_filename filler char(120)
, nclob_content LOBFILE(nclob_filename)TERMINATED BY EOF
, bfile_filename filler char(120)
, bfile_content BFILE(CONSTANT "JSON_LOAD", bfile_filename))
 Check constraint guarantees that values are valid JSON
documents
 IS [NOT] JSON predicate
 ReturnsTRUE if column value is JSON, FALSE otherwise
 Full parse of the data while validating syntax
 Tolerant and strict modes
 Use to ensure that the documents stored in a column are valid
JSON
 LAX
 Default
 STRICT
 Among others:
▪ JSON property (key) name and each string value must be enclosed
in double quotation marks (")
▪ Fractional numerals must have leading zero ( 0.14 | .14)
▪ XML DB Developers Guide or JSON Standards (ECMA-404 / 262)
 More performance intensive than Lax
create table J_PURCHASEORDER
( ID RAW(16) NOT NULL,
DATE_LOADED TIMESTAMP(6) WITHTIME ZONE,
PO_DOCUMENT CLOB
CHECK (PO_DOCUMENT IS JSON) )
insert into J_PURCHASEORDER values(‘0x1’,‘{Invalid JSONText}');
ERROR at line 1:
ORA-02290: check constraint (DEMO.IS_VALID_JSON) violated
 ALL_JSON_COLUMNS
 DBA_JSON_COLUMNS
 USER_JSON_COLUMNS
 Will not show up when
 Check constraint combines condition IS JSON with another condition
using logical condition OR
 “jcol is json OR length(jcol) < 1000” ???
-- Default (lax)
SQL> SELECT json_column
2 FROM t
3 WHERE ( json_column IS JSON);
-- Explicit
SQL> SELECT json_column
2 FROM t
3 WHERE ( json_column IS JSON (STRICT));
SQL> insert into J_PURCHASEORDER
2 select SYS_GUID(),
3 SYSTIMESTAMP,
4 JSON_DOCUMENT
5 from STAGING_TABLE
6 where JSON_DOCUMENT IS JSON;
SQL> delete from STAGING_TABLE
2 where DOCUMENT IS NOT JSON;
 JSON content is accessible from SQL via
new operators
 JSON operators use JSON Path
language to navigate JSON objects
 Proposed extention to SQL standards
 The JSON Path language makes it possible to address the
contents of a JSON document
 A JSON path expression can address 1 of 4 items
▪ The entire object, a scalar value, an array, a specific object
 JSON Path expressions are similar to XPath Expressions
▪ The entire document is referenced by $
▪ All JSON path expressions start with a $ symbol
▪ Key names are separated by a ’.’ (period)
 JSON Path expressions are case sensitive
JSON Path Expression Type Contents
$.Reference String "ABULL-20120421"
$.ShippingInstructions.Address.zipcode Number 99236
$.ShippingInstructions.Address Object
{ "street": "200 SportingGreen",
"city": "South San Francisco",
"state": "CA",
"zipCode": 99236,
"country": “USA"
}
$LineItems Array
[ { "ItemNumber" : 1,
"Part" : {
"Description" : “Christmas”
"UPCCode" : 13131092899 }
},
{ "ItemNumber" : 2,
"Part" : {
"Description" : “Easter”
"UPCCode" : 13131092899 }
]
 Compatible with Java Script
 $.phone[0]
 Wildcards, Multi-Selects, Ranges
 $.phone[*], $.phone[0,1 5 to 9]
 Predicates
 .address?(.zip > $zip)
 SQL conversion functions usable in predicates
 .?(to_date(.date) > $date)
 JSON_VALUE
 Return a single scalar value from a JSON Document
 JSON_QUERY
 Return a JSON Object or JSON Array from a JSON Document
 JSON_EXISTS
 Filter rows based on JSON-PATH expressions
 JSON_TABLE
 Project in-line, nested relational views from JSON Documents
 JSON_TEXTCONTAINS
 JSON aware full-text searching of JSON Documents
Proposed extension to SQL standards
 Using .dotted notation
SQL> select j.PO_DOCUMENT
2 from J_PURCHASEORDER j
3 where j.PO_DOCUMENT.PONumber = 1600
4 /
SQL> select j.PO_DOCUMENT.ShippingInstructions.Address
2 from J_PURCHASEORDER j
3 where j.PO_DOCUMENT.PONumber = 1600
4 /
 Can only return a SCALAR value
SQL> select JSON_VALUE(PO_DOCUMENT,
2 '$.LineItems[0].Part.UnitPrice'
3 returning NUMBER(5,3))
4 from J_PURCHASEORDER p
5 where JSON_VALUE(PO_DOCUMENT,
6 '$.PONumber' returning NUMBER(10)) = 1600 ;
 Can only returns an ARRAY or OBJECT (= JSON content)
SELECT JSON_QUERY('{a:100, b:200, c:300}', '$.*' WITH WRAPPER)
AS value
FROM DUAL;
VALUE
--------------------------------------------------------------------------------
[100,200,300]
 Used in theWHERE clause
SQL> select count(*)
2 from J_PURCHASEORDER
3 where JSON_EXISTS( PO_DOCUMENT
4 , '$.ShippingInstructions.Address.state')
5 /
 Used in the FROM clause
 Creation of an inline relational view of JSON
SQL> SELECT m.*
2 FROM J_PURCHASEORDER p
3 , JSON_TABLE
4 ( p.PO_DOCUMENT, '$'
5 columns
6 po_rno FOR ORDINALITY,
7 po_number NUMBER(10) path '$.PONumber'
8 ) m
9 WHERE po_number > 1600 and PO_Number < 1605;
SQL> SELECT m.*
2 FROM J_PURCHASEORDER p
3 , JSON_TABLE
4 ( p.PO_DOCUMENT, '$'
5 columns
6 po_number NUMBER(10) path '$.PONumber',
7 reference VARCHAR2(30) path '$.Reference',
8 requestor VARCHAR2(32) path '$.Requestor',
9 userid VARCHAR2(10) path '$.User',
10 center VARCHAR2(16) path '$.CostCenter'
11 ) m
12 WHERE po_number > 1600 and PO_Number < 1605;
 1 row output for each row in table
PO_NUMBER REFERENCE REQUSTOR USERID CENTER
1600 ABULL-20140421 Alexis Bull ABULL A50
1601 ABULL-20140423 Alexis Bull ABULL A50
1602 ABULL-20140430 Alexis Bull ABULL A50
1603 KCHUNG-20141022 Kelly Chung KCHUNG A50
1604 LBISSOT-20141009 Laura Bissot LBISSOT A50
create or replace view J_PURCHASEORDER_DETAIL_VIEW as
select d.*
from J_PURCHASEORDER p,
JSON_TABLE
(p.PO_DOCUMENT, '$'
columns (
PO_NUMBER NUMBER(10) path '$.PONumber',
USERID VARCHAR2(10) path '$.User',
COSTCENTER VARCHAR2(16) path '$.CostCenter',
NESTED PATH '$.LineItems[*]'
columns
( ITEMNO NUMBER(38) path '$.ItemNumber',
UNITPRICE NUMBER(14,2) path '$.Part.UnitPrice'
) ) ) d;
 NULL on ERROR
 The Default
 Return NULL instead of raising the error
 ERROR on ERROR
 Raise the error (no special handling)
 TRUE ON ERROR
 In JSON_EXISTS
 ReturnTRUE instead of raising the error
 FALSE ON ERROR
 In JSON_EXISTS
 Return FALSE instead of raising the error
 EMPTY ON ERROR
 In JSON_QUERY
 Return an empty array ([]) instead of raising the error
 DEFAULT 'literal_value' ON ERROR
 Return the specified value instead of raising the error
 RETURNING clause
 PRETTY
▪ Can only be used in JSON_QUERY
▪ Pretty-print the returned data
 ASCII
▪ Can only be used in JSON_VALUE, JSON_QUERY
▪ Automatically escape all non-ASCII Unicode characters in the returned data,
using standard ASCII Unicode
 JSON_TABLE, JSON_QUERY
 without WRAPPER clause
▪ DEFAULT, no change
▪ Raise error, if scalar/multiple values in non JSON result
 WITH WRAPPER
▪ Wrap result as a JSON ARRAY [ ]
 WITH CONDITIONAL WRAPPER
▪ Wrap result as a JSON ARRAY [ ]
▪ Don’t wrap result if scalar/multiple values in JSON result
JSON
Example
WITH WRAPPER WITHOUT
WRAPPER
WITH CONDITIONAL
WRAPPER
{"id": 38327}
(single object)
[{"id": 38327}] {"id": 38327} {"id": 38327}
[42, "a", true]
(single array)
[[42, "a", true]] [42, "a", true] [42, "a", true]
42 [42] Error
(scalar)
[42]
42, "a", true [42, "a", true] Error
(multiple values)
[42, "a", true]
none [] Error
(no values)
[]
For a single JSON object or array value, it is the same as WITHOUT WRAPPER.
 JSON_TABLE
 FORMAT JSON
▪ Forces JSON_QUERY behavior
▪ Therefore can have an explicit wrapper clause
 Default
▪ Projection like JSON_VALUE
create unique index PO_NUMBER_IDX
on J_PURCHASEORDER
(JSON_VALUE ( PO_DOCUMENT, '$.PONumber'
returning NUMBER(10)
ERRORON ERROR));
create bitmap index COSTCENTER_IDX
on J_PURCHASEORDER
(JSON_VALUE (PO_DOCUMENT, '$.CostCenter'));
 Full-text search of JSON data that is stored in aVARCHAR2,
BLOB, or CLOB column
 Must be used in conjunction with special JSON OracleText
Index
 Use CTXSYS.JSON_SECTION_GROUP
 What is JSON?
 Oracle 12.1.0.2
 Load & Store
 Select
 Index
 Oracle 12.2.0.1
 Generate
 Automate
 Improve performance via DBIM
 Improvements
 Generate JSON
 PL/SQL support for JSON
 JSON Dataguide
 In-Memory Column support for JSON
 Materialized view support for JSON
 …for In-Memory Column support…
 JSON documentation has its own manual
 “JSON Developers Guide”
 The JSON chapter in the “XMLDB Developers Guide” has been
removed
 Last version has approximately 200 pages
 You can use CREATE SEARCH INDEX with keywords FOR
JSON to create a search index, a dataguide, or both at the
same time.The default behavior is to create both.
 CREATE SEARCH INDEX … FOR JSON
 In “Parameters” clause
▪ SEARCH_ON NONE (disable search)
▪ DATAGUIDE ON
 ALTER INDEX … REBUILD
 Support for
 ARRAYS
 ARRAY ELEMENTS
 JSON_VALUE, JSON_TABLE support for
 DATE
 TIMESTAMP
 TIMESTAMP WITHTIMEZONE
 SDO_GEOMETRY
▪ GeoJSON objects
 PL/SQL
 Added SQL/JSON Functions and Conditions
functionality
 JSON_ARRAY
 JSON_OBJECT
 JSON_ARRAYAGG
 JSON_OBJECTAGG
 Returns each row of data generated by
the SQL query as a JSON array.
 Returns each row of data generated by
the SQL query as a JSON object
 Aggregate generated JSON arrays
 Aggregate generated JSON objects
 JSON_ELEMENT_T
 Supertype of the other JSON object types
 JSON_OBJECT_T
 Subtype used to hold JSON objects
 JSON_ARRAY_T
 Subtype used to hold JSON arrays
 JSON_SCALAR_T
 Subtype used for scalar JSON values
 JSON_KEY_LIST
 a varray ofVARCHAR2(4000)
 Parsing
 “parse”
▪ accepts varchar2, CLOB, BLOB  output JSON tekst  JSON element
 Serialization
 “to_”
▪ to_string( )  returns string (varchar2) representation of JSON object
 Getter / Setter
For JSON_OBJECT_T and JSON_ARRAY_T
 obtain (“getter”)
▪ get( )  returns a reference
▪ “get_”  returns a copy, via for example “get_clob( )”
 update (“setter”)
▪ put ( )  update an object or array instance
▪ put_null ( )  sets object or array to NULL value
▪ append ( )  adds a new element at the end of the array
(forJSON_ARRAY only)
 Introspection
 “is_”  checks object, array, scalar, string, number
(returns boolean)
 get_size( )  returns the number of members
 get_type( )  returns the JSON type
 get_keys( )  returns an instance of JSON_KEY_LIST
 Other
 remove ( )  remove the object member or array element
 clone ( )  create and return copy of the object or array
 A JSON dataguide lets you discover
information about the structure and
content of JSON documents stored in
Oracle Database.
 Manually via DBMS_JSON package
 Create JSON schema document
 Create views
 Automatically add or update virtual
columns
 MAX_STRING_SIZE = EXTENDED
 JSON combined with DG / DBIM
  OSON (DBIM JSON Binary Format)
 Search optimization
 Pre-validate, type-check or exclude content
before insert
 compatible = 12.2.0.0
 inmemory_expressions_usage
 Set to either ENABLE | STATIC_ONLY
 inmemory_expressions_usage =
 ENABLE
 inmemory_virtual_columns =
 ENABLE
 inmemory_size
 Size large enough to hold objects in memory
 What is JSON?
 Oracle 12.1.0.2
 Load & Store
▪ JSON conditions
 Select
▪ JSON Path Expressions
▪ JSON Operators and Functions
 Index
 Oracle 12.2.0.1
 Generate
▪ JSON functions
▪ PL/SQL JSON Support
 Automate
▪ Dataguide
 Improve performance via DBIM
▪ In-Memory Expressions
 Many thanks for their endless patience (despite my stupid
questions and mistakes) and for helping out:
 Mark Drake (JSON / XMLDB)
 Beda Hammerschmidt (JSON/XMLDB)
 Andy Rivenes (DBIM)
 Maria Colgan (DB General / DBIM)
 Oracle Database SQL Language
Reference
 JSON Functions
▪ JSON_QUERY
▪ JSON_TABLE
▪ JSON_VALUE
 JSON Conditions
▪ IS JSON
▪ JSON_EXISTS
▪ JSON_TEXTCONTAINS
 Oracle XMLDB Developers
Guide
 JSON in DB 12.1.0.2
 JSON Path Expressions
▪ Syntax
 Indexing JSON
▪ Syntax
 Loading JSON
▪ A Method
 JSON on xmldb.nl
 Stanford - Introduction to Databases (JSON)
 Eclipse JSON Editor Plugin
 JSONView addon (Firefox/Chrome)
 JSON Schema
 Get StartedWith JSON
 www.json-generator.com
 JSON Datasets: www.data.gov
OGH Event – 24 October 2016

More Related Content

What's hot

DB2 LUW - Backup and Recovery
DB2 LUW - Backup and RecoveryDB2 LUW - Backup and Recovery
DB2 LUW - Backup and Recovery
imranasayed
 
Parallel Query on Exadata
Parallel Query on ExadataParallel Query on Exadata
Parallel Query on Exadata
Enkitec
 

What's hot (20)

Oracle_Multitenant_19c_-_All_About_Pluggable_D.pdf
Oracle_Multitenant_19c_-_All_About_Pluggable_D.pdfOracle_Multitenant_19c_-_All_About_Pluggable_D.pdf
Oracle_Multitenant_19c_-_All_About_Pluggable_D.pdf
 
IBM Power10.pdf
IBM Power10.pdfIBM Power10.pdf
IBM Power10.pdf
 
Sql server performance tuning
Sql server performance tuningSql server performance tuning
Sql server performance tuning
 
DB2 DOCUMENT
DB2 DOCUMENTDB2 DOCUMENT
DB2 DOCUMENT
 
Oracle Data Guard
Oracle Data GuardOracle Data Guard
Oracle Data Guard
 
Sap pm tables
Sap pm tablesSap pm tables
Sap pm tables
 
DB2 LUW - Backup and Recovery
DB2 LUW - Backup and RecoveryDB2 LUW - Backup and Recovery
DB2 LUW - Backup and Recovery
 
Practical Recipes for Daily DBA Activities using DB2 9 and 10 for z/OS
Practical Recipes for Daily DBA Activities using DB2 9 and 10 for z/OSPractical Recipes for Daily DBA Activities using DB2 9 and 10 for z/OS
Practical Recipes for Daily DBA Activities using DB2 9 and 10 for z/OS
 
Oracle RAC, Oracle Data Guard, and Pluggable Databases: When MAA Meets Oracle...
Oracle RAC, Oracle Data Guard, and Pluggable Databases: When MAA Meets Oracle...Oracle RAC, Oracle Data Guard, and Pluggable Databases: When MAA Meets Oracle...
Oracle RAC, Oracle Data Guard, and Pluggable Databases: When MAA Meets Oracle...
 
Essmaxl
EssmaxlEssmaxl
Essmaxl
 
Starting with JSON Path Expressions in Oracle 12.1.0.2
Starting with JSON Path Expressions in Oracle 12.1.0.2Starting with JSON Path Expressions in Oracle 12.1.0.2
Starting with JSON Path Expressions in Oracle 12.1.0.2
 
IBM SMP/E
IBM SMP/EIBM SMP/E
IBM SMP/E
 
Parallel Query on Exadata
Parallel Query on ExadataParallel Query on Exadata
Parallel Query on Exadata
 
Android Services Black Magic by Aleksandar Gargenta
Android Services Black Magic by Aleksandar GargentaAndroid Services Black Magic by Aleksandar Gargenta
Android Services Black Magic by Aleksandar Gargenta
 
Kernel Recipes 2015: Representing device-tree peripherals in ACPI
Kernel Recipes 2015: Representing device-tree peripherals in ACPIKernel Recipes 2015: Representing device-tree peripherals in ACPI
Kernel Recipes 2015: Representing device-tree peripherals in ACPI
 
Step by Step Restore rman to different host
Step by Step Restore rman to different hostStep by Step Restore rman to different host
Step by Step Restore rman to different host
 
Oracle data guard for beginners
Oracle data guard for beginnersOracle data guard for beginners
Oracle data guard for beginners
 
Database performance tuning and query optimization
Database performance tuning and query optimizationDatabase performance tuning and query optimization
Database performance tuning and query optimization
 
Oracle sql high performance tuning
Oracle sql high performance tuningOracle sql high performance tuning
Oracle sql high performance tuning
 
Postgresql database administration volume 1
Postgresql database administration volume 1Postgresql database administration volume 1
Postgresql database administration volume 1
 

Similar to Oracle Database - JSON and the In-Memory Database

JSON Data Parsing in Snowflake (By Faysal Shaarani)
JSON Data Parsing in Snowflake (By Faysal Shaarani)JSON Data Parsing in Snowflake (By Faysal Shaarani)
JSON Data Parsing in Snowflake (By Faysal Shaarani)
Faysal Shaarani (MBA)
 
Oh, that ubiquitous JSON !
Oh, that ubiquitous JSON !Oh, that ubiquitous JSON !
Oh, that ubiquitous JSON !
Alexander Korotkov
 
json.ppt download for free for college project
json.ppt download for free for college projectjson.ppt download for free for college project
json.ppt download for free for college project
AmitSharma397241
 

Similar to Oracle Database - JSON and the In-Memory Database (20)

UKOUG Tech14 - Getting Started With JSON in the Database
UKOUG Tech14 - Getting Started With JSON in the DatabaseUKOUG Tech14 - Getting Started With JSON in the Database
UKOUG Tech14 - Getting Started With JSON in the Database
 
Store non-structured data in JSON column types and enhancements of JSON
Store non-structured data in JSON column types and enhancements of JSONStore non-structured data in JSON column types and enhancements of JSON
Store non-structured data in JSON column types and enhancements of JSON
 
Json
JsonJson
Json
 
Going Native: Leveraging the New JSON Native Datatype in Oracle 21c
Going Native: Leveraging the New JSON Native Datatype in Oracle 21cGoing Native: Leveraging the New JSON Native Datatype in Oracle 21c
Going Native: Leveraging the New JSON Native Datatype in Oracle 21c
 
Validating JSON -- Percona Live 2021 presentation
Validating JSON -- Percona Live 2021 presentationValidating JSON -- Percona Live 2021 presentation
Validating JSON -- Percona Live 2021 presentation
 
Json
JsonJson
Json
 
JSON Data Parsing in Snowflake (By Faysal Shaarani)
JSON Data Parsing in Snowflake (By Faysal Shaarani)JSON Data Parsing in Snowflake (By Faysal Shaarani)
JSON Data Parsing in Snowflake (By Faysal Shaarani)
 
Oh, that ubiquitous JSON !
Oh, that ubiquitous JSON !Oh, that ubiquitous JSON !
Oh, that ubiquitous JSON !
 
Spray Json and MongoDB Queries: Insights and Simple Tricks.
Spray Json and MongoDB Queries: Insights and Simple Tricks.Spray Json and MongoDB Queries: Insights and Simple Tricks.
Spray Json and MongoDB Queries: Insights and Simple Tricks.
 
JSON and the Oracle Database
JSON and the Oracle DatabaseJSON and the Oracle Database
JSON and the Oracle Database
 
json.ppt download for free for college project
json.ppt download for free for college projectjson.ppt download for free for college project
json.ppt download for free for college project
 
Native JSON Support in SQL2016
Native JSON Support in SQL2016Native JSON Support in SQL2016
Native JSON Support in SQL2016
 
Postgre(No)SQL - A JSON journey
Postgre(No)SQL - A JSON journeyPostgre(No)SQL - A JSON journey
Postgre(No)SQL - A JSON journey
 
PostgreSQL 9.4 JSON Types and Operators
PostgreSQL 9.4 JSON Types and OperatorsPostgreSQL 9.4 JSON Types and Operators
PostgreSQL 9.4 JSON Types and Operators
 
Json
JsonJson
Json
 
JSON in Oracle 18c and 19c
JSON in Oracle 18c and 19cJSON in Oracle 18c and 19c
JSON in Oracle 18c and 19c
 
Mindmap: Oracle to Couchbase for developers
Mindmap: Oracle to Couchbase for developersMindmap: Oracle to Couchbase for developers
Mindmap: Oracle to Couchbase for developers
 
Power JSON with PostgreSQL
Power JSON with PostgreSQLPower JSON with PostgreSQL
Power JSON with PostgreSQL
 
JSON Support in MariaDB: News, non-news and the bigger picture
JSON Support in MariaDB: News, non-news and the bigger pictureJSON Support in MariaDB: News, non-news and the bigger picture
JSON Support in MariaDB: News, non-news and the bigger picture
 
Postgres vs Mongo / Олег Бартунов (Postgres Professional)
Postgres vs Mongo / Олег Бартунов (Postgres Professional)Postgres vs Mongo / Олег Бартунов (Postgres Professional)
Postgres vs Mongo / Олег Бартунов (Postgres Professional)
 

More from Marco Gralike

BGOUG 2012 - Design concepts for xml applications that will perform
BGOUG 2012 - Design concepts for xml applications that will performBGOUG 2012 - Design concepts for xml applications that will perform
BGOUG 2012 - Design concepts for xml applications that will perform
Marco Gralike
 
UKOUG 2011 - Drag, Drop and other Stuff. Using your Database as a File Server
UKOUG 2011 - Drag, Drop and other Stuff. Using your Database as a File ServerUKOUG 2011 - Drag, Drop and other Stuff. Using your Database as a File Server
UKOUG 2011 - Drag, Drop and other Stuff. Using your Database as a File Server
Marco Gralike
 

More from Marco Gralike (20)

UKOUG2018 - I Know what you did Last Summer [in my Database].pptx
UKOUG2018 - I Know what you did Last Summer [in my Database].pptxUKOUG2018 - I Know what you did Last Summer [in my Database].pptx
UKOUG2018 - I Know what you did Last Summer [in my Database].pptx
 
eProseed Oracle Open World 2016 debrief - Oracle Management Cloud
eProseed Oracle Open World 2016 debrief - Oracle Management CloudeProseed Oracle Open World 2016 debrief - Oracle Management Cloud
eProseed Oracle Open World 2016 debrief - Oracle Management Cloud
 
eProseed Oracle Open World 2016 debrief - Oracle 12.2.0.1 Database
eProseed Oracle Open World 2016 debrief - Oracle 12.2.0.1 DatabaseeProseed Oracle Open World 2016 debrief - Oracle 12.2.0.1 Database
eProseed Oracle Open World 2016 debrief - Oracle 12.2.0.1 Database
 
UKOUG Tech15 - Going Full Circle - Building a native JSON Database API
UKOUG Tech15 - Going Full Circle - Building a native JSON Database APIUKOUG Tech15 - Going Full Circle - Building a native JSON Database API
UKOUG Tech15 - Going Full Circle - Building a native JSON Database API
 
OakTable World 2015 - Using XMLType content with the Oracle In-Memory Column...
OakTable World 2015  - Using XMLType content with the Oracle In-Memory Column...OakTable World 2015  - Using XMLType content with the Oracle In-Memory Column...
OakTable World 2015 - Using XMLType content with the Oracle In-Memory Column...
 
UKOUG Tech14 - Using Database In-Memory Column Store with Complex Datatypes
UKOUG Tech14 - Using Database In-Memory Column Store with Complex DatatypesUKOUG Tech14 - Using Database In-Memory Column Store with Complex Datatypes
UKOUG Tech14 - Using Database In-Memory Column Store with Complex Datatypes
 
Ordina Oracle Open World
Ordina Oracle Open WorldOrdina Oracle Open World
Ordina Oracle Open World
 
An introduction into Oracle VM V3.x
An introduction into Oracle VM V3.xAn introduction into Oracle VM V3.x
An introduction into Oracle VM V3.x
 
An introduction into Oracle Enterprise Manager Cloud Control 12c Release 3
An introduction into Oracle Enterprise Manager Cloud Control 12c Release 3An introduction into Oracle Enterprise Manager Cloud Control 12c Release 3
An introduction into Oracle Enterprise Manager Cloud Control 12c Release 3
 
XML Amsterdam - Creating structure in unstructured data
XML Amsterdam - Creating structure in unstructured dataXML Amsterdam - Creating structure in unstructured data
XML Amsterdam - Creating structure in unstructured data
 
An AMIS Overview of Oracle database 12c (12.1)
An AMIS Overview of Oracle database 12c (12.1)An AMIS Overview of Oracle database 12c (12.1)
An AMIS Overview of Oracle database 12c (12.1)
 
Flexibiliteit & Snel Schakelen
Flexibiliteit & Snel SchakelenFlexibiliteit & Snel Schakelen
Flexibiliteit & Snel Schakelen
 
Hotsos 2013 - Creating Structure in Unstructured Data
Hotsos 2013 - Creating Structure in Unstructured DataHotsos 2013 - Creating Structure in Unstructured Data
Hotsos 2013 - Creating Structure in Unstructured Data
 
Expertezed 2012 Webcast - XML DB Use Cases
Expertezed 2012 Webcast - XML DB Use CasesExpertezed 2012 Webcast - XML DB Use Cases
Expertezed 2012 Webcast - XML DB Use Cases
 
BGOUG 2012 - Drag & drop and other stuff - Using your database as a file server
BGOUG 2012 - Drag & drop and other stuff - Using your database as a file serverBGOUG 2012 - Drag & drop and other stuff - Using your database as a file server
BGOUG 2012 - Drag & drop and other stuff - Using your database as a file server
 
BGOUG 2012 - XML Index Strategies
BGOUG 2012 - XML Index StrategiesBGOUG 2012 - XML Index Strategies
BGOUG 2012 - XML Index Strategies
 
BGOUG 2012 - Design concepts for xml applications that will perform
BGOUG 2012 - Design concepts for xml applications that will performBGOUG 2012 - Design concepts for xml applications that will perform
BGOUG 2012 - Design concepts for xml applications that will perform
 
ODTUG Webcast - Thinking Clearly about XML
ODTUG Webcast - Thinking Clearly about XMLODTUG Webcast - Thinking Clearly about XML
ODTUG Webcast - Thinking Clearly about XML
 
UKOUG 2011 - Drag, Drop and other Stuff. Using your Database as a File Server
UKOUG 2011 - Drag, Drop and other Stuff. Using your Database as a File ServerUKOUG 2011 - Drag, Drop and other Stuff. Using your Database as a File Server
UKOUG 2011 - Drag, Drop and other Stuff. Using your Database as a File Server
 
XFILES, The APEX 4 version - The truth is in there
XFILES, The APEX 4 version - The truth is in thereXFILES, The APEX 4 version - The truth is in there
XFILES, The APEX 4 version - The truth is in there
 

Recently uploaded

Recently uploaded (20)

MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024
 
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
 
Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherStrategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a Fresher
 
AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of Terraform
 
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
 
Real Time Object Detection Using Open CV
Real Time Object Detection Using Open CVReal Time Object Detection Using Open CV
Real Time Object Detection Using Open CV
 
A Year of the Servo Reboot: Where Are We Now?
A Year of the Servo Reboot: Where Are We Now?A Year of the Servo Reboot: Where Are We Now?
A Year of the Servo Reboot: Where Are We Now?
 
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
 
DBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor PresentationDBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor Presentation
 
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
 
Navi Mumbai Call Girls 🥰 8617370543 Service Offer VIP Hot Model
Navi Mumbai Call Girls 🥰 8617370543 Service Offer VIP Hot ModelNavi Mumbai Call Girls 🥰 8617370543 Service Offer VIP Hot Model
Navi Mumbai Call Girls 🥰 8617370543 Service Offer VIP Hot Model
 
Automating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps ScriptAutomating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps Script
 
Manulife - Insurer Transformation Award 2024
Manulife - Insurer Transformation Award 2024Manulife - Insurer Transformation Award 2024
Manulife - Insurer Transformation Award 2024
 
Artificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : UncertaintyArtificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : Uncertainty
 
Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonData Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt Robison
 
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
 
Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...
 
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, AdobeApidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
 
Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024
 
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data DiscoveryTrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
 

Oracle Database - JSON and the In-Memory Database

  • 1. OGH Event – 24 October 2016
  • 2. Marco Gralike Principal Consultant eProseed, The Netherlands Oracle 20+ years experience Oracle ACE Director OakTable Member www.xmldb.nl
  • 3.  Many thanks for their endless patience (despite my stupid questions and mistakes) and for helping out:  Mark Drake (JSON / XMLDB)  Beda Hammerschmidt (JSON/XMLDB)  Andy Rivenes (DBIM)  Maria Colgan (DB General / DBIM)
  • 4.
  • 5.  What is JSON?  Oracle 12.1.0.2  Load & Store  Select  Index  Oracle 12.2.0.1  Generate  Automate  Improve performance via DBIM
  • 6.
  • 7. Basic constructs (recursive)  Base values number, string, boolean, …  Objects { } sets of label-value pairs  Arrays [ ] lists of values
  • 8.
  • 9.  JSON data can also be  Partitioned  Used with Flashback  Recovered (when proper backup)  Used with Securefile storage ▪ Encryption ▪ Deduplication ▪ Compressed  Multiple index options  Caching advantages, etc., etc.,…
  • 10.
  • 11.  New in Oracle Database 12.1.0.2.0  Store and manage JSON documents in Database ▪ JSON documents stored as text ▪ JSON documents can be indexed  Access JSON documents via developer-friendly ‘Document-Store’ API’s  SQL query capabilities over JSON documents for reporting and analysis
  • 12.  Allows Oracle RDBMS to be used as a JSON Document Store  Enables storing, indexing and querying of JSON documents  No new JSON data type  IS JSON constraint used to ensure a column contains valid JSON documents  Apply to (N)CLOB, (N)VARCHAR2, RAW and BLOB data  Enables use of .dotted notation to navigate JSON document structure and access content
  • 14. sqlldr.ctl LOAD DATA INFILE 'filelist.dat' truncate INTO table JSON_DATA FIELDSTERMINATED BY ',‘ ( clob_filename filler char(120) , clob_content LOBFILE(clob_filename) TERMINATED BY EOF , nclob_filename filler char(120) , nclob_content LOBFILE(nclob_filename)TERMINATED BY EOF , bfile_filename filler char(120) , bfile_content BFILE(CONSTANT "JSON_LOAD", bfile_filename))
  • 15.
  • 16.
  • 17.  Check constraint guarantees that values are valid JSON documents  IS [NOT] JSON predicate  ReturnsTRUE if column value is JSON, FALSE otherwise  Full parse of the data while validating syntax  Tolerant and strict modes  Use to ensure that the documents stored in a column are valid JSON
  • 18.  LAX  Default  STRICT  Among others: ▪ JSON property (key) name and each string value must be enclosed in double quotation marks (") ▪ Fractional numerals must have leading zero ( 0.14 | .14) ▪ XML DB Developers Guide or JSON Standards (ECMA-404 / 262)  More performance intensive than Lax
  • 19. create table J_PURCHASEORDER ( ID RAW(16) NOT NULL, DATE_LOADED TIMESTAMP(6) WITHTIME ZONE, PO_DOCUMENT CLOB CHECK (PO_DOCUMENT IS JSON) ) insert into J_PURCHASEORDER values(‘0x1’,‘{Invalid JSONText}'); ERROR at line 1: ORA-02290: check constraint (DEMO.IS_VALID_JSON) violated
  • 20.  ALL_JSON_COLUMNS  DBA_JSON_COLUMNS  USER_JSON_COLUMNS  Will not show up when  Check constraint combines condition IS JSON with another condition using logical condition OR  “jcol is json OR length(jcol) < 1000” ???
  • 21. -- Default (lax) SQL> SELECT json_column 2 FROM t 3 WHERE ( json_column IS JSON); -- Explicit SQL> SELECT json_column 2 FROM t 3 WHERE ( json_column IS JSON (STRICT));
  • 22. SQL> insert into J_PURCHASEORDER 2 select SYS_GUID(), 3 SYSTIMESTAMP, 4 JSON_DOCUMENT 5 from STAGING_TABLE 6 where JSON_DOCUMENT IS JSON; SQL> delete from STAGING_TABLE 2 where DOCUMENT IS NOT JSON;
  • 23.
  • 24.
  • 25.
  • 26.  JSON content is accessible from SQL via new operators  JSON operators use JSON Path language to navigate JSON objects  Proposed extention to SQL standards
  • 27.  The JSON Path language makes it possible to address the contents of a JSON document  A JSON path expression can address 1 of 4 items ▪ The entire object, a scalar value, an array, a specific object  JSON Path expressions are similar to XPath Expressions ▪ The entire document is referenced by $ ▪ All JSON path expressions start with a $ symbol ▪ Key names are separated by a ’.’ (period)  JSON Path expressions are case sensitive
  • 28. JSON Path Expression Type Contents $.Reference String "ABULL-20120421" $.ShippingInstructions.Address.zipcode Number 99236 $.ShippingInstructions.Address Object { "street": "200 SportingGreen", "city": "South San Francisco", "state": "CA", "zipCode": 99236, "country": “USA" } $LineItems Array [ { "ItemNumber" : 1, "Part" : { "Description" : “Christmas” "UPCCode" : 13131092899 } }, { "ItemNumber" : 2, "Part" : { "Description" : “Easter” "UPCCode" : 13131092899 } ]
  • 29.  Compatible with Java Script  $.phone[0]  Wildcards, Multi-Selects, Ranges  $.phone[*], $.phone[0,1 5 to 9]  Predicates  .address?(.zip > $zip)  SQL conversion functions usable in predicates  .?(to_date(.date) > $date)
  • 30.
  • 31.  JSON_VALUE  Return a single scalar value from a JSON Document  JSON_QUERY  Return a JSON Object or JSON Array from a JSON Document  JSON_EXISTS  Filter rows based on JSON-PATH expressions  JSON_TABLE  Project in-line, nested relational views from JSON Documents  JSON_TEXTCONTAINS  JSON aware full-text searching of JSON Documents Proposed extension to SQL standards
  • 32.  Using .dotted notation SQL> select j.PO_DOCUMENT 2 from J_PURCHASEORDER j 3 where j.PO_DOCUMENT.PONumber = 1600 4 / SQL> select j.PO_DOCUMENT.ShippingInstructions.Address 2 from J_PURCHASEORDER j 3 where j.PO_DOCUMENT.PONumber = 1600 4 /
  • 33.  Can only return a SCALAR value SQL> select JSON_VALUE(PO_DOCUMENT, 2 '$.LineItems[0].Part.UnitPrice' 3 returning NUMBER(5,3)) 4 from J_PURCHASEORDER p 5 where JSON_VALUE(PO_DOCUMENT, 6 '$.PONumber' returning NUMBER(10)) = 1600 ;
  • 34.  Can only returns an ARRAY or OBJECT (= JSON content) SELECT JSON_QUERY('{a:100, b:200, c:300}', '$.*' WITH WRAPPER) AS value FROM DUAL; VALUE -------------------------------------------------------------------------------- [100,200,300]
  • 35.  Used in theWHERE clause SQL> select count(*) 2 from J_PURCHASEORDER 3 where JSON_EXISTS( PO_DOCUMENT 4 , '$.ShippingInstructions.Address.state') 5 /
  • 36.  Used in the FROM clause  Creation of an inline relational view of JSON SQL> SELECT m.* 2 FROM J_PURCHASEORDER p 3 , JSON_TABLE 4 ( p.PO_DOCUMENT, '$' 5 columns 6 po_rno FOR ORDINALITY, 7 po_number NUMBER(10) path '$.PONumber' 8 ) m 9 WHERE po_number > 1600 and PO_Number < 1605;
  • 37. SQL> SELECT m.* 2 FROM J_PURCHASEORDER p 3 , JSON_TABLE 4 ( p.PO_DOCUMENT, '$' 5 columns 6 po_number NUMBER(10) path '$.PONumber', 7 reference VARCHAR2(30) path '$.Reference', 8 requestor VARCHAR2(32) path '$.Requestor', 9 userid VARCHAR2(10) path '$.User', 10 center VARCHAR2(16) path '$.CostCenter' 11 ) m 12 WHERE po_number > 1600 and PO_Number < 1605;
  • 38.  1 row output for each row in table PO_NUMBER REFERENCE REQUSTOR USERID CENTER 1600 ABULL-20140421 Alexis Bull ABULL A50 1601 ABULL-20140423 Alexis Bull ABULL A50 1602 ABULL-20140430 Alexis Bull ABULL A50 1603 KCHUNG-20141022 Kelly Chung KCHUNG A50 1604 LBISSOT-20141009 Laura Bissot LBISSOT A50
  • 39. create or replace view J_PURCHASEORDER_DETAIL_VIEW as select d.* from J_PURCHASEORDER p, JSON_TABLE (p.PO_DOCUMENT, '$' columns ( PO_NUMBER NUMBER(10) path '$.PONumber', USERID VARCHAR2(10) path '$.User', COSTCENTER VARCHAR2(16) path '$.CostCenter', NESTED PATH '$.LineItems[*]' columns ( ITEMNO NUMBER(38) path '$.ItemNumber', UNITPRICE NUMBER(14,2) path '$.Part.UnitPrice' ) ) ) d;
  • 40.
  • 41.  NULL on ERROR  The Default  Return NULL instead of raising the error  ERROR on ERROR  Raise the error (no special handling)  TRUE ON ERROR  In JSON_EXISTS  ReturnTRUE instead of raising the error
  • 42.  FALSE ON ERROR  In JSON_EXISTS  Return FALSE instead of raising the error  EMPTY ON ERROR  In JSON_QUERY  Return an empty array ([]) instead of raising the error  DEFAULT 'literal_value' ON ERROR  Return the specified value instead of raising the error
  • 43.
  • 44.
  • 45.
  • 46.
  • 47.  RETURNING clause  PRETTY ▪ Can only be used in JSON_QUERY ▪ Pretty-print the returned data  ASCII ▪ Can only be used in JSON_VALUE, JSON_QUERY ▪ Automatically escape all non-ASCII Unicode characters in the returned data, using standard ASCII Unicode
  • 48.  JSON_TABLE, JSON_QUERY  without WRAPPER clause ▪ DEFAULT, no change ▪ Raise error, if scalar/multiple values in non JSON result  WITH WRAPPER ▪ Wrap result as a JSON ARRAY [ ]  WITH CONDITIONAL WRAPPER ▪ Wrap result as a JSON ARRAY [ ] ▪ Don’t wrap result if scalar/multiple values in JSON result
  • 49. JSON Example WITH WRAPPER WITHOUT WRAPPER WITH CONDITIONAL WRAPPER {"id": 38327} (single object) [{"id": 38327}] {"id": 38327} {"id": 38327} [42, "a", true] (single array) [[42, "a", true]] [42, "a", true] [42, "a", true] 42 [42] Error (scalar) [42] 42, "a", true [42, "a", true] Error (multiple values) [42, "a", true] none [] Error (no values) [] For a single JSON object or array value, it is the same as WITHOUT WRAPPER.
  • 50.  JSON_TABLE  FORMAT JSON ▪ Forces JSON_QUERY behavior ▪ Therefore can have an explicit wrapper clause  Default ▪ Projection like JSON_VALUE
  • 51.
  • 52. create unique index PO_NUMBER_IDX on J_PURCHASEORDER (JSON_VALUE ( PO_DOCUMENT, '$.PONumber' returning NUMBER(10) ERRORON ERROR)); create bitmap index COSTCENTER_IDX on J_PURCHASEORDER (JSON_VALUE (PO_DOCUMENT, '$.CostCenter'));
  • 53.  Full-text search of JSON data that is stored in aVARCHAR2, BLOB, or CLOB column  Must be used in conjunction with special JSON OracleText Index  Use CTXSYS.JSON_SECTION_GROUP
  • 54.  What is JSON?  Oracle 12.1.0.2  Load & Store  Select  Index  Oracle 12.2.0.1  Generate  Automate  Improve performance via DBIM
  • 55.
  • 56.  Improvements  Generate JSON  PL/SQL support for JSON  JSON Dataguide  In-Memory Column support for JSON  Materialized view support for JSON  …for In-Memory Column support…
  • 57.
  • 58.  JSON documentation has its own manual  “JSON Developers Guide”  The JSON chapter in the “XMLDB Developers Guide” has been removed  Last version has approximately 200 pages
  • 59.  You can use CREATE SEARCH INDEX with keywords FOR JSON to create a search index, a dataguide, or both at the same time.The default behavior is to create both.  CREATE SEARCH INDEX … FOR JSON  In “Parameters” clause ▪ SEARCH_ON NONE (disable search) ▪ DATAGUIDE ON  ALTER INDEX … REBUILD
  • 60.
  • 61.  Support for  ARRAYS  ARRAY ELEMENTS
  • 62.  JSON_VALUE, JSON_TABLE support for  DATE  TIMESTAMP  TIMESTAMP WITHTIMEZONE  SDO_GEOMETRY ▪ GeoJSON objects  PL/SQL  Added SQL/JSON Functions and Conditions functionality
  • 63.
  • 64.
  • 65.  JSON_ARRAY  JSON_OBJECT  JSON_ARRAYAGG  JSON_OBJECTAGG
  • 66.  Returns each row of data generated by the SQL query as a JSON array.
  • 67.
  • 68.  Returns each row of data generated by the SQL query as a JSON object
  • 69.
  • 70.
  • 71.  Aggregate generated JSON arrays
  • 72.
  • 73.
  • 74.  Aggregate generated JSON objects
  • 75.
  • 76.
  • 77.  JSON_ELEMENT_T  Supertype of the other JSON object types  JSON_OBJECT_T  Subtype used to hold JSON objects  JSON_ARRAY_T  Subtype used to hold JSON arrays  JSON_SCALAR_T  Subtype used for scalar JSON values  JSON_KEY_LIST  a varray ofVARCHAR2(4000)
  • 78.  Parsing  “parse” ▪ accepts varchar2, CLOB, BLOB  output JSON tekst  JSON element  Serialization  “to_” ▪ to_string( )  returns string (varchar2) representation of JSON object
  • 79.  Getter / Setter For JSON_OBJECT_T and JSON_ARRAY_T  obtain (“getter”) ▪ get( )  returns a reference ▪ “get_”  returns a copy, via for example “get_clob( )”  update (“setter”) ▪ put ( )  update an object or array instance ▪ put_null ( )  sets object or array to NULL value ▪ append ( )  adds a new element at the end of the array (forJSON_ARRAY only)
  • 80.  Introspection  “is_”  checks object, array, scalar, string, number (returns boolean)  get_size( )  returns the number of members  get_type( )  returns the JSON type  get_keys( )  returns an instance of JSON_KEY_LIST  Other  remove ( )  remove the object member or array element  clone ( )  create and return copy of the object or array
  • 81.
  • 82.
  • 83.
  • 84.  A JSON dataguide lets you discover information about the structure and content of JSON documents stored in Oracle Database.  Manually via DBMS_JSON package
  • 85.  Create JSON schema document  Create views  Automatically add or update virtual columns  MAX_STRING_SIZE = EXTENDED  JSON combined with DG / DBIM   OSON (DBIM JSON Binary Format)  Search optimization  Pre-validate, type-check or exclude content before insert
  • 86.
  • 87.
  • 88.
  • 89.
  • 90.
  • 91.
  • 92.
  • 93.
  • 94.
  • 95.
  • 96.
  • 97.
  • 98.
  • 99.
  • 100.
  • 101.
  • 102.  compatible = 12.2.0.0  inmemory_expressions_usage  Set to either ENABLE | STATIC_ONLY  inmemory_expressions_usage =  ENABLE  inmemory_virtual_columns =  ENABLE  inmemory_size  Size large enough to hold objects in memory
  • 103.
  • 104.
  • 105.
  • 106.
  • 107.  What is JSON?  Oracle 12.1.0.2  Load & Store ▪ JSON conditions  Select ▪ JSON Path Expressions ▪ JSON Operators and Functions  Index  Oracle 12.2.0.1  Generate ▪ JSON functions ▪ PL/SQL JSON Support  Automate ▪ Dataguide  Improve performance via DBIM ▪ In-Memory Expressions
  • 108.  Many thanks for their endless patience (despite my stupid questions and mistakes) and for helping out:  Mark Drake (JSON / XMLDB)  Beda Hammerschmidt (JSON/XMLDB)  Andy Rivenes (DBIM)  Maria Colgan (DB General / DBIM)
  • 109.  Oracle Database SQL Language Reference  JSON Functions ▪ JSON_QUERY ▪ JSON_TABLE ▪ JSON_VALUE  JSON Conditions ▪ IS JSON ▪ JSON_EXISTS ▪ JSON_TEXTCONTAINS  Oracle XMLDB Developers Guide  JSON in DB 12.1.0.2  JSON Path Expressions ▪ Syntax  Indexing JSON ▪ Syntax  Loading JSON ▪ A Method  JSON on xmldb.nl
  • 110.  Stanford - Introduction to Databases (JSON)  Eclipse JSON Editor Plugin  JSONView addon (Firefox/Chrome)  JSON Schema  Get StartedWith JSON  www.json-generator.com  JSON Datasets: www.data.gov
  • 111. OGH Event – 24 October 2016