Skip to content
Home » SERVER SYSTEM ARCHITECTURES

SERVER SYSTEM ARCHITECTURES

Below is a complete, exam-oriented explanation of Server System Architectures in Database Systems.
This topic is part of Parallel Databases / Distributed Systems / DBMS Architecture and is a common 10–15 mark question.


SERVER SYSTEM ARCHITECTURES

A Server System Architecture defines how a database server is internally structured to process requests, manage data, and interact with clients.
It determines:

  • How queries are processed
  • How storage and memory are managed
  • How concurrency & transactions work
  • How scalability and parallelism are achieved

Modern DBMS servers are designed to efficiently handle multiple users, high workloads, and large datasets.

Server system architectures are broadly classified into:

  1. Single Server (Monolithic) Architecture
  2. Two-tier & Three-tier Server Architecture
  3. Parallel Server Architectures
  4. Distributed & Multiserver Architecture
  5. Cluster-based Architectures
  6. Classic SMP, MPP, Shared Memory/Shared Disk/Shared Nothing Architectures
  7. Cloud/Virtualized Server Architectures (Modern extension)

Let’s discuss them in depth.


1. SINGLE SERVER (MONOLITHIC) ARCHITECTURE

✔ Features:

  • Entire DBMS runs in a single process
  • All components (query parser, optimizer, execution engine, storage manager, transaction manager) are inside one server
  • Uses one CPU or a small number of CPUs
  • All users connect to the same central database server

✔ Advantages:

  • Simple design
  • Easy to maintain
  • Strong consistency
  • Ideal for small organizations

✔ Disadvantages:

  • Limited scalability
  • Single point of failure
  • Performance bottleneck with many users

✔ Examples:

  • Early versions of MySQL, PostgreSQL
  • Local desktop databases (SQLite)

2. CLIENT–SERVER ARCHITECTURE (Traditional Model)

Two main layers:

Client Tier

  • Provides UI, forms, reports
  • Sends SQL queries to server
  • Receives results

Server Tier

  • Parses queries
  • Optimizes execution
  • Manages transactions and concurrency
  • Maintains data on disk
  • Sends results back to client

Types:

  1. Two-tier architecture
  2. Three-tier architecture

3. PARALLEL SERVER ARCHITECTURES

Parallel server systems are designed to process large amounts of data by using multiple processors simultaneously.

They include:


A. Shared Memory Architecture (SMP)

  • All processors share common memory and disk
  • Fast communication between processors
  • Low-latency access
  • Good for small parallelism

Limitation: Memory contention & limited scalability
Examples: SQL Server SMP, Oracle SMP


B. Shared Disk Architecture

  • Each processor has private memory
  • Disks are shared
  • Requires global lock manager & cache coherence protocols

Advantages:

  • High availability
  • Easy failover

Limitations:

  • Disk becomes bottleneck
  • Overhead of synchronizing caches

Examples: Oracle RAC, IBM DB2 PureScale


C. Shared Nothing Architecture (MPP)

  • Each node has its own disk + memory + CPU
  • Nodes communicate via high-speed network
  • Ideal for large parallel processing

Advantages:

  • Linear scalability
  • Fault isolation
  • Highest performance for large data

Examples:

  • Teradata
  • Amazon Redshift
  • Google BigQuery
  • Greenplum
  • Cassandra

4. DISTRIBUTED SERVER ARCHITECTURE

Database is stored across multiple geographically separated sites.

✔ Types:

  • Homogeneous Distributed Systems
  • Heterogeneous Distributed Systems
  • Federated/Multi-DB Architectures

✔ Features:

  • Local autonomy
  • Distributed query processing
  • Replication & fragmentation strategies
  • Better reliability and fault tolerance

✔ Use Cases:

  • Global enterprises
  • Multi-branch institutions

5. CLUSTER-BASED SERVER ARCHITECTURE

Multiple servers work together as a cluster.

✔ Features:

  • Nodes share workload
  • Support load balancing
  • High availability (failover clusters)
  • Often used in both OLTP and OLAP

Examples:

  • Oracle RAC
  • SQL Server AlwaysOn Availability Groups
  • MySQL Galera Cluster

6. CLOUD DATABASE SERVER ARCHITECTURE (Modern & Important)

Cloud DBMS run on distributed cloud infrastructure:

  • Horizontally scalable
  • On-demand resource allocation
  • Managed services (DBaaS: Database-as-a-Service)

Examples:

  • Amazon RDS
  • Azure SQL Database
  • Google Cloud SQL
  • Snowflake

Features:

  • Elastic scaling
  • Distributed storage
  • Pay-as-you-go model
  • Automatic backups, patching, failover

7. DATABASE SERVER COMPONENT ARCHITECTURE (Internal)

A database server typically consists of these core subsystems:

✔ 1. Query Processor

  • Query Parser
  • Query Optimizer
  • Execution Engine

✔ 2. Storage Manager

  • Disk manager
  • File manager
  • Buffer manager
  • Index manager

✔ 3. Transaction Manager

  • Concurrency control manager
  • Lock manager
  • Log manager
  • Recovery manager

✔ 4. Communication Manager

  • Manages client connections
  • Implements protocols (TCP/IP, RPC)

✔ 5. Metadata Catalog (Data Dictionary)

  • Stores schema, tables, indexes, constraints

These components work together inside any database server architecture.


8. Comparison of Server System Architectures

ArchitectureScalabilityComplexityFault ToleranceBest Use
MonolithicLowLowLowSmall apps
Client–ServerMediumMediumMediumEnterprise DB
Shared MemoryLow–MediumLowMediumOLTP
Shared DiskMediumHighHighClusters
Shared NothingHighHighHighData warehouses/Big data
Distributed DBMSHighHighHighMultisite DB
Cloud DBMSVery HighLow (managed)HighModern scalable apps

Perfect 5–6 Mark Short Answer

Server system architectures describe how a DBMS server organizes its processors, memory, storage, and communication roles. Major architectures include:

  1. Monolithic Centralized Servers, where all components run on a single machine.
  2. Client–Server Architecture, where clients send SQL requests and the server processes them.
  3. Parallel Architectures such as Shared Memory, Shared Disk, and Shared Nothing, used for high-performance querying.
  4. Distributed Architectures where databases and computation are distributed across multiple sites.
  5. Cluster and Cloud Architectures, which provide scalability, fault tolerance, and high availability.
    These architectures determine performance, scalability, and reliability of a database system.