Difference between Hive internal tables and external tables? - hadoop

Can anyone tell me the difference between Hive's external table and internal tables.
I know the difference comes when dropping the table. I don't understand what you mean by the data and metadata is deleted in internal and only metadata is deleted in external tables.
Can anyone explain me in terms of nodes please.

Hive has a relational database on the master node it uses to keep track of state.
For instance, when you CREATE TABLE FOO(foo string) LOCATION 'hdfs://tmp/';, this table schema is stored in the database.
If you have a partitioned table, the partitions are stored in the database(this allows hive to use lists of partitions without going to the file-system and finding them, etc). These sorts of things are the 'metadata'.
When you drop an internal table, it drops the data, and it also drops the metadata.
When you drop an external table, it only drops the meta data. That means hive is ignorant of that data now. It does not touch the data itself.

Hive tables can be created as EXTERNAL or INTERNAL. This is a choice that affects how data is loaded, controlled, and managed.
Use EXTERNAL tables when:
The data is also used outside of Hive. For example, the data files are read and processed by an existing program that doesn't lock the files.
Data needs to remain in the underlying location even after a DROP TABLE. This can apply if you are pointing multiple schemas (tables or views) at a single data set or if you are iterating through various possible schemas.
You want to use a custom location such as ASV.
Hive should not own data and control settings, dirs, etc., you have another program or process that will do those things.
You are not creating table based on existing table (AS SELECT).
Use INTERNAL tables when:
The data is temporary.
You want Hive to completely manage the lifecycle of the table and data.

To answer you Question :
For External Tables, Hive stores the data in the LOCATION specified during creation of the table(generally not in warehouse directory). If the external table is dropped, then the table metadata is deleted but not the data.
For Internal tables, Hive stores data into its warehouse directory. If the table is dropped then both the table metadata and the data will be deleted.
For your reference,
Difference between Internal & External tables :
For External Tables -
External table stores files on the HDFS server but tables are not linked to the source file completely.
If you delete an external table the file still remains on the HDFS server.
As an example if you create an external table called “table_test” in HIVE using HIVE-QL and link the table to file “file”, then deleting “table_test” from HIVE will not delete “file” from HDFS.
External table files are accessible to anyone who has access to HDFS file structure and therefore security needs to be managed at the HDFS
file/folder level.
Meta data is maintained on master node, and deleting an external table from HIVE only deletes the metadata not the data/file.
For Internal Tables-
Stored in a directory based on settings in hive.metastore.warehouse.dir,
by default internal tables are stored in the following directory “/user/hive/warehouse” you can change it by updating the location in the config file .
Deleting the table deletes the metadata and data from master-node and HDFS respectively.
Internal table file security is controlled solely via HIVE. Security needs to be managed within HIVE, probably at the schema level (depends
on organization).
Hive may have internal or external tables, this is a choice that affects how data is loaded, controlled, and managed.
Use EXTERNAL tables when:
The data is also used outside of Hive. For example, the data files are read and processed by an existing program that doesn’t lock the files.
Data needs to remain in the underlying location even after a DROP TABLE. This can apply if you are pointing multiple schema (tables or views) at a single data set or if you are iterating through various possible schema.
Hive should not own data and control settings, directories, etc., you may have another program or process that will do those things.
You are not creating table based on existing table (AS SELECT).
Use INTERNAL tables when:
The data is temporary.
You want Hive to completely manage the life-cycle of the table and data.
Source :
HDInsight: Hive Internal and External Tables Intro
Internal & external tables in Hadoop- HIVE

An internal table data is stored in the warehouse folder, whereas an external table data is stored at the location you mentioned in table creation.
So when you delete an internal table, it deletes the schema as well as the data under the warehouse folder, but for an external table it's only the schema that you will loose.
So when you want an external table back you again after deleting it, can create a table with the same schema again and point it to the original data location. Hope it is clear now.

The only difference in behaviour (not the intended usage) based on my limited research and testing so far (using Hive 1.1.0 -cdh5.12.0) seems to be that when a table is dropped
the data of the Internal (Managed) tables gets deleted from the HDFS file system
while the data of the External tables does NOT get deleted from the HDFS file system.
(NOTE: See Section 'Managed and External Tables' in https://cwiki.apache.org/confluence/display/Hive/LanguageManual+DDL which list some other difference which I did not completely understand)
I believe Hive chooses the location where it needs to create the table based on the following precedence from top to bottom
Location defined during the Table Creation
Location defined in the Database/Schema Creation in which the table is created.
Default Hive Warehouse Directory (Property hive.metastore.warehouse.dir in hive.site.xml)
When the "Location" option is not used during the "creation of a hive table", the above precedence rule is used. This is applicable for both Internal and External tables. This means an Internal table does not necessarily have to reside in the Warehouse directory and can reside anywhere else.
Note: I might have missed some scenarios, but based on my limited exploration, the behaviour of both Internal and Extenal table seems to be the same except for the one difference (data deletion) described above. I tried the following scenarios for both Internal and External tables.
Creating table with and without Location option
Creating table with and without Partition Option
Adding new data using the Hive Load and Insert Statements
Adding data files to the Table location outside of Hive (using HDFS commands) and refreshing the table using the "MSCK REPAIR TABLE command
Dropping the tables

In external tables, if you drop it, it deletes only schema of the table, table data exists in physical location. So to deleted the data use hadoop fs - rmr tablename .
Managed table hive will have full control on tables. In external tables users will have control on it.

INTERNAL : Table is created First and Data is loaded later
EXTERNAL : Data is present and Table is created on top of it.

Internal tables are useful if you want Hive to manage the complete lifecycle of your data including the deletion, whereas external tables are useful when the files are being used outside of Hive.

External hive table has advantages that it does not remove files when we drop tables,we can set row formats with different settings , like serde....delimited

Also Keep in mind that Hive is a big data warehouse. When you want to drop a table you dont want to lose Gigabytes or Terabytes of data. Generating, moving and copying data at that scale can be time consuming.
When you drop a 'Managed' table hive will also trash its data.
When you drop a 'External' table only the schema definition from hive meta-store is removed. The data on the hdfs still remains.

Consider this scenario which best suits for External Table:
A MapReduce (MR) job filters a huge log file to spit out n sub log files (e.g. each sub log file contains a specific message type log) and the output i.e n sub log files are stored in hdfs.
These log files are to be loaded into Hive tables for performing further analytic, in this scenario I would recommend an External Table(s), because the actual log files are generated and owned by an external process i.e. a MR job besides you can avoid an additional step of loading each generated log file into respective Hive table as well.

The best use case for an external table in the hive is when you want to create the table from a file either CSV or text

Both Internal and External tables are owned by HIVE. The only difference being the ownership of data. The commands for creating both tables are shown below. Only an additional EXTERNAL keyword comes in case of external table creation. Both tables can be created/deleted/modified using SQL Statements.
In case of Internal Tables, both the table and the data contained in the tables are managed by HIVE. That is, we can add/delete/modify any data using HIVE. When we DROP the table, along with the table, the data will also get deleted.
Eg: CREATE TABLE tweets (text STRING, words INT, length INT) ROW FORMAT DELIMITED FIELDS TERMINATED BY ',' STORED AS TEXTFILE;
In case of External Tables, only the table is managed by HIVE. The data present in these tables can be from any storage locations like HDFS. We cant add/delete/modify the data in these tables. We can only use the data in these tables using SELECT statements. When we DROP the table, only the table gets deleted and not the data contained in it. This is why its said that only meta-data gets deleted. When we create EXTERNAL tables, we need to mention the location of the data.
Eg: CREATE EXTERNAL TABLE tweets (text STRING, words INT, length INT) ROW FORMAT DELIMITED FIELDS TERMINATED BY ',' STORED AS TEXTFILE LOCATION '/user/hive/warehouse/tweets';

hive stores only the meta data in metastore and original data in out side of hive when we use external table we can give location' ' by these our original data wont effect when we drop the table

When there is data already in HDFS, an external Hive table can be created to describe the data. It is called EXTERNAL because the data in the external table is specified in the LOCATION properties instead of the default warehouse directory.
When keeping data in the internal tables, Hive fully manages the life cycle of the table and data. This means the data is removed once the internal table is dropped. If the external table is dropped, the table metadata is deleted but the data is kept. Most of the time, an external table is preferred to avoid deleting data along with tables by mistake.

For managed tables, Hive controls the lifecycle of their data. Hive stores the data for managed tables in a sub-directory under the directory defined by hive.metastore.warehouse.dir by default.
When we drop a managed table, Hive deletes the data in the table.But managed tables are less convenient for sharing with other tools. For example, lets say we have data that is created and used primarily by Pig , but we want to run some queries against it, but not give Hive ownership of the data.
At that time, external table is defined that points to that data, but doesn’t take ownership of it.

In Hive We can also create an external table. It tells Hive to refer to the data that is at an existing location outside the warehouse directory.
Dropping External tables will delete metadata but not the data.

I would like to add that
Internal tables are used when the data needs to be updated or some rows need to be deleted because ACID properties can be supported on the Internal tables but ACID properties cannot be supported on the external tables.
Please ensure that there is a backup of the data in the Internal table because if a internal table is dropped then the data will also be lost.

In simple words, there are two things:
Hive can manage things in warehouse i.e. it will not delete data out of warehouse.
When we delete table:
1) For internal tables the data is managed internally in warehouse. So will be deleted.
2) For external tables the data is managed eternal from warehouse. So can't be deleted and clients other then hive can also use it.

Related

what's a processing storage for HIVE?

I'm new to hive and read about it online too. But still having doubts which are not cleared.
for hive external tables, hive keep table's metadata within HDFS, but not in its warehouse which is also in HDFS. correct ?
whether its internal or external table, in both cases data of table will be available in HDFS only but NOWHERE else. Mean to say, data can taken from anywhere but has to be loaded in HDFS, because HIVE uses hadoop's processing engine to process data. Correct ?
internal table, table's metadata and table's data both will be available in HIVE's data warehouse, and this data warehouse will be at nowhere else but in HDFS only. correct ?
in external table, table's metadata and table's data both will be NOT available in HIVE's data warehouse but in HDFS. But hive must be keeping some info with itself that where is table's metadata located and where is its data located in HDFS, correct ?
Can anyone share feedback to above understanding ?
THanks
Hive uses relational database like MySQL, MariaDB, PostgreSQL, Oracle, DerbyDB(for embedded deployment only) for storing metadata (databases, tables definitions, statistics, grants, etc). See deployment modes and database requirements. Does not matter Internal or external table, the metadata are stored in the relational database.
Yes, the data is stored in HDFS, but also Hive supports integration with external databases using JDBC storage handler. Such table looks like normal Hive table, but the data is stored in some database, your queries executed in the database, predicate push-down works, you can use hive native tables with storage handler tables in single query. Also HBase storage handler is available, Kafka storage handler, etc, you can write your own storage handler.
Depending on your Hive version/vendor It is possible to create many tables (both managed and external at the same time) on top of the same location in HDFS. Though Cloudera prefers to have managed tables in dedicated HDFS location for them, see https://stackoverflow.com/a/67073849/2700344 and does not allow to specify location for managed tables outside the warehouse root by default. Read abot the difference between managed and external tables here.
Everything seems correct except last one. When you create external table table metadata will be stored in the Hive otherwise you can not query through hive. HDFS itself keeps control of your data when you create external table. While when you create internal table Hive will be responsible. Dropping internal table drops your data and metadata but dropping external table only drops metadata from Hive. But your data will be remain inside of your file system. Thats why we are changing table types a lot as a workaround when some of our external connection is not compatible with our hive version.

Can Hive table automatically update when underlying directory is changed

If I build a Hive table on top of some S3 (or HDFS) directory like so:
create external table newtable (name string)
row format delimited
fields terminated by ','
stored as textfile location 's3a://location/subdir/';
When I add files to that S3 location, the Hive table doesn't automatically update. The new data is only included if I create a new Hive table on that location. Is there a way to build a Hive table (maybe using partitions) so that whenever new files are added to the underlying directory, the Hive table automatically shows that data (without having to recreate the Hive table)?
On HDFS each file scanned each time table being queried as #Dudu Markovitz pointed. And files in HDFS are immediately consistent.
Update: S3 is also strongly consistent now, so removed part about eventual consistency.
Also there may be a problem with using statistics when querying table after adding files, see here: https://stackoverflow.com/a/39914232/2700344
Everything #leftjoin says is correct, with one extra detail: s3 doesn't offer immediate consistency on listings. A new blob can be uploaded, HEAD/GET will return it but a list operation on the parent path may not see it. This means that Hive code which lists the directory may not see the data. Using unique names doesn't fix this, only using a consistent DB like Dynamo which is updated as files are added/removed. Even there, you have added a new thing to keep in sync...

measure the time of load tables with data in hive (its possible?)

I created a table in hive from data stored in hdfs with this command:
create external table users
(ID INT, NAME STRING, ADRESS STRING, EMAIL STRING)
ROW FORMAT DELIMITED FIELDS TERMINATED BY '|' STORED AS TEXTFILE LOCATION '/data/tpch/users';
This users table stored in hdfs has 10gb. And the create table just took 1second to create the table and load the data. So this is strange or it is really fast. My doubt is, to check the time of load tables with data in hive can be with that command above with location? Or that command just create a reference to data stored in hdfs?
So what is the correct way to check the time to load data in hive tables?
Because 1second seems really fast, mysql or another relational database probably need 30 or more minutes for load 10gb of data into a table.
Your create table statement is pointing to external storage for the tables, so Hive is not copying the data over. The documentation explains external tables like this:
External Tables
The EXTERNAL keyword lets you create a table and provide a LOCATION so
that Hive does not use a default location for this table. This comes
in handy if you already have data generated. When dropping an EXTERNAL
table, data in the table is NOT deleted from the file system.
An EXTERNAL table points to any HDFS location for its storage, rather
than being stored in a folder specified by the configuration property
hive.metastore.warehouse.dir.
This is not 100% explicit, but the idea is that Hive is pointing to the table contents rather than managing it directly.

How Hive stores the data (loaded from HDFS)?

I am fairly new to Hadoop (HDFS and Hbase) and Hadoop Eco system (Hive, Pig, Impala etc.). I have got a good understanding of Hadoop components such as NamedNode, DataNode, Job Tracker, Task Tracker and how they work in tandem to store the data in efficient manner.
While trying to understand fundamentals of data access layer such as Hive, I need to understand where exactly a table’s data (created in Hive) gets stored? We can create external and internal table in Hive. As external tables can be in HDFS or any other file system, Hive doesnt store data for such tables in warehouse. What about internal tables? This table will be created as a directory on one of the data nodes on Hadoop Cluster. Once we load data in these tables from local or HDFS file system, are there further files getting created to store data in tables created in Hive?
Say for example:
A sample file named test_emp_feedback.csv was brought from local file system to HDFS.
A table (emp_feedback) was created in Hive with a structure similar to csv file structure. This lead to creation of a directory in Hadoop cluster say /users/big_data/hive/emp_feedback
Now once I create the table and load data in emp_feedback table from test_emp_feedback.csv
Is Hive going to create a copy of file in emp_feedback directory? Wont it cause data redundancy?
Creating a Managed table will create a directory with Same name as table name at Hive warehouse directory(Usually at /user/hive/warehouse/dbname/tablename).Also the table structure(Hive Metadata) is created in the metastore(RDBMS/HCat).
Before you load the data on the table, this directory(with the same name as table name under hive warehouse) is empty.
There could be 2 possible scenarios.
If the table is external the data is not copied to warehouse directory at all.
If the table is managed(not external), when you load your data to the table it is moved(not Copied) from current HDFS location to Hive warehouse directory9/user/hive/warehouse//). So this will not replicate the data.
Caution: It is always advisable to create external table unless the data is only used by hive. Dropping a managed table would delete the data from HDFS(Warehouse of HIVE).
HadoopGig
To answer you Question :
For External Tables:
Hive does not move the data into its warehouse directory. If the external table is dropped, then the table metadata is deleted but not the data.
For Internal tables
Hive moves data into its warehouse directory. If the table is dropped, then the table metadata and the data will be deleted.
For your reference
Difference between Internal & External tables:
For External Tables
External table stores files on the HDFS server but tables are not linked to the source file completely.
If you delete an external table the file still remains on the HDFS server.
As an example if you create an external table called “table_test” in HIVE using HIVE-QL and link the table to file “file”, then deleting “table_test” from HIVE will not delete “file” from HDFS.
External table files are accessible to anyone who has access to HDFS file structure and therefore security needs to be managed at the HDFS file/folder level.
Meta data is maintained on master node, and deleting an external table from HIVE only deletes the metadata not the data/file.
For Internal Tables
Stored in a directory based on settings in hive.metastore.warehouse.dir, by default internal tables are stored in the following directory /user/hive/warehouse you can change it by updating the location in the config file.
Deleting the table deletes the metadata and data from master-node and HDFS respectively.
Internal table file security is controlled solely via HIVE. Security needs to be managed within HIVE, probably at the schema level (depends on organization).
Hive may have internal or external tables, this is a choice that affects how data is loaded, controlled, and managed.
Use EXTERNAL tables when:
The data is also used outside of Hive. For example, the data files are read and processed by an existing program that doesn’t lock the files.
Data needs to remain in the underlying location even after a DROP TABLE. This can apply if you are pointing multiple schema (tables or views) at a single data set or if you are iterating through various possible schema.
Hive should not own data and control settings, directories, etc., you may have another program or process that will do those things.
You are not creating table based on existing table (AS SELECT).
Use INTERNAL tables when:
The data is temporary.
You want Hive to completely manage the life-cycle of the table and data.
Source:
HDInsight: Hive Internal and External Tables Intro
Internal & external tables in Hadoop- HIVE
It would not cause data redundancy. For managed (not external) tables Hive moves the data into its warehouse directory. In your example, the data will be moved from original location on HDFS to '/users/big_data/hive/emp_feedback'.
Be careful with the removal of the managed table, it will lead to removal data on HDFS also.
You can send data in two days
A) use LOAD DATA INPATH 'file_location_of_csv' INTO TABLE emp_feedback;
Note that this command will remove content at source directory and create a internal table
OR)
B) Use copyFromLocal or put command to copy local file into HDFS and then create external table and copy the data into table. Now data won't be moved from source. You can drop external table but still source data is available.
e.g.
create external table emp_feedback (
emp_id int,
emp_name string
)
location '/location_in_hdfs_for_csv file';
When you drop an external table, it only drops the meta data of HIVE table. Data still exists at HDFS file location.
Got it. This is what I was able to understand so far.
It all depends upon which type of table is being created and where from the file is picked up. Below are possible use cases
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Why we need to move external table to managed hive table?

I am new to Hadoop and learning Hive.
In Hadoop definative guide 3rd edition page no. 428 last paragraph
I don't understand below paragraph regarding external table in HIVE.
"A common pattern is to use an external table to access an initial dataset stored in HDFS (created by another process), then use a Hive transform to move the data into a managed Hive table."
Can anybody explain briefly what above phrase says?
Usually the data in the initial dataset is not constructed in the optimal way for queries.
You may want to modify the data (like modifying some columns adding columns, making aggregation etc) and to store it in a specific way (partitions / buckets / sorted etc) so that the queries would benefit from these optimizations.
The key difference between external and managed table in Hive is that data in the external table is not managed by Hive.
When you create external table you define HDFS directory for that table and Hive is simply "looking" in it and can get data from it but Hive can't delete or change data in that folder. When you drop external table Hive only deletes metadata from its metastore and data in HDFS remains unchanged.
Managed table basically is a directory in HDFS and it's created and managed by Hive. Even more - all operations for removing/changing partitions/raw data/table in that table MUST be done by Hive otherwise metadata in Hive metastore may become incorrect (e.g. you manually delete partition from HDFS but Hive metastore contains info that partition exists).
In Hadoop definative guide I think author meant that it is a common practice to write MR-job that produces some raw data and keeps it in some folder. Than you create Hive external table which will look into that folder. And than safelly run queries without the risk to drop table etc.
In other words - you can do MR job that produces some generic data and than use Hive external table as a source of data for insert into managed tables. It helps you to avoid creating boring similar MR jobs and delegate this task to Hive queries - you create query that takes data from external table, aggregates/processes it how you want and puts the result into managed tables.
Another goal of external table is to use as a source data from remote servers, e.g. in csv format.
There is no reason to move table to managed unless you are going to enable ACID or other features supported only for managed tables.
The list of differences in features supported by managed/external tables may change in future, better use current documentation. Currently these features are:
ARCHIVE/UNARCHIVE/TRUNCATE/MERGE/CONCATENATE only work for managed
tables
DROP deletes data for managed tables while it only deletes
metadata for external ones
ACID/Transactional only works for
managed tables
Query Results Caching only works for managed
tables
Only the RELY constraint is allowed on external tables
Some Materialized View features only work on managed tables
You can create both EXTERNAL and MANAGED tables on top of the same location, see this answer with more details and tests: https://stackoverflow.com/a/54038932/2700344
Data structure has nothing in common with external/managed table type. If you want to change structure you do not necessarily need to change table managed/external type
It is also mentioned in the book.
when your table is external table.
you can use other technologies like PIG,Cascading or Mapreduce to process it .
You can also use multiple schemas for that dataset.
and You can also create data lazily if it is external table.
when you decide that dataset should be used by only Hive,make it hive managed table.

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