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Inter and Intra Query Parallelism


INTER AND INTRA QUERY PARALLELISM

Parallel databases use parallel processing to speed up query execution.
Two fundamental types of parallelism in DBMS are:

  1. Inter-Query Parallelism
  2. Intra-Query Parallelism

These determine how multiple queries or a single query can utilize multiple processors at the same time.


1. INTER-QUERY PARALLELISM

Definition

Inter-Query Parallelism means executing multiple queries simultaneously, where each query runs on a separate processor or a set of processors.

Here, each full SQL query is treated as a separate task.


Explanation

If many users submit queries at the same time, the DBMS assigns each query to a different CPU, disk, or node.
Each query runs independently → increasing system throughput.


Advantages

1. Improved Throughput

More users can be served at the same time.

2. Independent Execution

Queries do not depend on each other.

3. Best for OLTP

Online Transaction Processing (banking, ticketing, etc.) has many small queries → ideal for inter-query parallelism.

4. Good Load Balancing

Queries are distributed evenly across processors.


Disadvantages

✘ Helps throughput but NOT the response time of a single query
✘ Not effective for very large analytical queries
✘ Works poorly when all queries are heavy and long


Example

Suppose three users run three separate queries:

Q1: SELECT * FROM Customers;
Q2: SELECT * FROM Orders WHERE amount > 10000;
Q3: UPDATE Products SET price = price * 1.10;

DBMS may run Q1 on CPU1, Q2 on CPU2, Q3 on CPU3 simultaneously.

Thus, execution of multiple queries in parallel = Inter-Query Parallelism.


2. INTRA-QUERY PARALLELISM

Definition

Intra-Query Parallelism means parallelizing a single SQL query by breaking it into multiple smaller tasks that are executed on different processors at the same time.

It improves the speed of a single large query.


⭐ Types of Intra-Query Parallelism

Intra-query parallelism has two major types:

  1. Intra-Operation Parallelism
  2. Inter-Operation Parallelism (Pipeline Parallelism)

Let’s discuss both.


A. Intra-Operation Parallelism

A single operation inside a query (scan, join, sort) is parallelized.

✔ Example: Parallel Table Scan

A table is partitioned across 4 disks; each CPU scans its partition:

CPU1 scans Partition 1  
CPU2 scans Partition 2  
CPU3 scans Partition 3  
CPU4 scans Partition 4

Result → 4× faster scan

✔ Common Intra-Operation parallel tasks:

  • Parallel Selection
  • Parallel Projection
  • Parallel Join (hash join, merge join)
  • Parallel Sorting
  • Parallel Aggregation

✔ Benefits:

  • Greatly speeds up large queries
  • Ideal for OLAP/data warehousing

B. Inter-Operation Parallelism (Pipeline Parallelism)

Different operations of a query tree execute simultaneously.

✔ Example:

A query plan:

σ ( Salary > 50000 ) 
       |
    Hash Join
       |
    Table Scan

Pipeline parallelism allows:

  • Table Scan → outputs tuples while
  • Hash Join → starts processing them, and
  • Selection → begins filtering simultaneously

This reduces overall query time.


Comparison: Intra-Operation vs Inter-Operation

TypeWhat is parallelized?Benefit
Intra-OperationA single operationHigh speed for large operations
Inter-Operation (Pipeline)Multiple operatorsReduced total query time

Advantages of Intra-Query Parallelism

✔ 1. Improves response time of large queries

✔ 2. Essential for OLAP, Data Warehouse, Big Data

✔ 3. Efficient for operations like JOIN, SORT, GROUP BY

✔ 4. Uses multiple processors to share workload


Disadvantages

✘ More complex than inter-query parallelism
✘ Synchronization overhead
✘ Required balanced data partitioning (data skew slows down processors)
✘ Requires advanced optimizer and parallel query engine


INTER-QUERY vs INTRA-QUERY PARALLELISM

FeatureInter-QueryIntra-Query
What is parallel?Multiple queriesOne large query
GoalIncrease throughputImprove query response time
Use caseOLTPOLAP, Big queries
ComplexityLowHigh
SpeedupFor many usersFor individual large queries

Combined Approach in Modern DBMS

Modern parallel DBMS (Oracle, PostgreSQL, SQL Server, Teradata) use both:

  • Inter-query parallelism for handling many users
  • Intra-query parallelism for accelerating analytical queries

Perfect 5–6 Mark Short Answer

Inter-Query Parallelism executes multiple individual queries simultaneously on different processors, improving system throughput and supporting large multi-user workloads.
Intra-Query Parallelism divides a single large query into sub-tasks executed in parallel, improving the response time of complex queries. It includes intra-operation parallelism (parallel scanning, joins, sorting) and inter-operation or pipeline parallelism. Both forms increase database performance but target different types of workloads.