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Alternatives to TimescaleTime-Series Analysis in RAWS Time-Series Database: Understanding Your OptionsWhat Is a Time Series and How Is It Used?Is Your Data Time Series? Data Types Supported by PostgreSQL and TimescaleWhy Consider Using PostgreSQL for Time-Series Data?How to Work With Time Series in Python?Tools for Working With Time-Series Analysis in PythonGuide to Time-Series Analysis in PythonTime-Series Analysis and Forecasting With Python Understanding Database Workloads: Variable, Bursty, and Uniform PatternsThe Best Time-Series Databases ComparedUnderstanding Autoregressive Time-Series ModelingStationary Time-Series AnalysisCreating a Fast Time-Series Graph With Postgres Materialized ViewsWhat Are Open-Source Time-Series Databases—Understanding Your OptionsWhat Is Temporal Data?
Optimizing Your Database: A Deep Dive into PostgreSQL Data TypesHow to Install PostgreSQL on LinuxHow to Install PostgreSQL on MacOS5 Common Connection Errors in PostgreSQL and How to Solve ThemHow to Fix No Partition of Relation Found for Row in Postgres DatabasesHow to Fix Transaction ID Wraparound ExhaustionUnderstanding PostgreSQL Date and Time FunctionsData Partitioning: What It Is and Why It MattersWhat Is Data Compression and How Does It Work?Self-Hosted or Cloud Database? A Countryside Reflection on Infrastructure ChoicesUnderstanding ACID Compliance Understanding percentile_cont() and percentile_disc() in PostgreSQLUsing PostgreSQL UPDATE With JOINUnderstanding PostgreSQL Conditional FunctionsUnderstanding PostgreSQL Array FunctionsWhat Characters Are Allowed in PostgreSQL Strings?Understanding PostgreSQL's COALESCE FunctionWhat Is Data Transformation, and Why Is It Important?Understanding PostgreSQL User-Defined FunctionsStructured vs. Semi-Structured vs. Unstructured Data in PostgreSQLUnderstanding SQL Aggregate FunctionsUnderstanding Foreign Keys in PostgreSQLUnderstanding PostgreSQLUnderstanding FROM in PostgreSQL (With Examples)Understanding FILTER in PostgreSQL (With Examples)How to Address ‘Error: Could Not Resize Shared Memory Segment’ Understanding HAVING in PostgreSQL (With Examples)Understanding GROUP BY in PostgreSQL (With Examples)Understanding LIMIT in PostgreSQL (With Examples)Understanding PostgreSQL FunctionsUnderstanding ORDER BY in PostgreSQL (With Examples)Understanding WINDOW in PostgreSQL (With Examples)Understanding PostgreSQL WITHIN GROUPPostgreSQL Mathematical Functions: Enhancing Coding EfficiencyUnderstanding DISTINCT in PostgreSQL (With Examples)Using PostgreSQL String Functions for Improved Data AnalysisData Processing With PostgreSQL Window FunctionsUnderstanding WHERE in PostgreSQL (With Examples)PostgreSQL Joins : A SummaryUnderstanding OFFSET in PostgreSQL (With Examples)Understanding the Postgres string_agg FunctionWhat Is a PostgreSQL Full Outer Join?What Is a PostgreSQL Cross Join?What Is a PostgreSQL Inner Join?What Is a PostgreSQL Left Join? And a Right Join?PostgreSQL Join Type TheoryUnderstanding PostgreSQL SELECTA Guide to PostgreSQL ViewsStrategies for Improving Postgres JOIN PerformanceUnderstanding the Postgres extract() FunctionUnderstanding the rank() and dense_rank() Functions in PostgreSQL
Top PostgreSQL Drivers for PythonPostgreSQL Performance Tuning: Optimizing Database IndexesDetermining the Optimal Postgres Partition SizeBest Practices for (Time-)Series Metadata Tables Guide to Postgres Data ManagementHow to Query JSONB in PostgreSQLHow to Index JSONB Columns in PostgreSQLHow to Monitor and Optimize PostgreSQL Index PerformanceOptimizing Array Queries With GIN Indexes in PostgreSQLSQL/JSON Data Model and JSON in SQL: A PostgreSQL PerspectiveHow to Query JSON Metadata in PostgreSQLA Guide to pg_restore (and pg_restore Example)Handling Large Objects in PostgresPostgreSQL Performance Tuning: Designing and Implementing Your Database SchemaGuide to PostgreSQL PerformancePostgreSQL Performance Tuning: Key ParametersHow to Reduce Bloat in Large PostgreSQL TablesGuide to PostgreSQL Database OperationsPostgreSQL Performance Tuning: How to Size Your DatabaseExplaining PostgreSQL EXPLAINA Guide to Data Analysis on PostgreSQLHow PostgreSQL Data Aggregation WorksBuilding a Scalable DatabaseA Guide to Scaling PostgreSQLPg_partman vs. Hypertables for Postgres PartitioningHow to Use PostgreSQL for Data TransformationWhen to Consider Postgres PartitioningDesigning Your Database Schema: Wide vs. Narrow Postgres TablesRecursive Query in SQL: What It Is, and How to Write OneGuide to PostgreSQL Database DesignWhat Is Audit Logging and How to Enable It in PostgreSQLGuide to PostgreSQL SecurityNavigating Growing PostgreSQL Tables With Partitioning (and More)An Intro to Data Modeling on PostgreSQLBest Practices for Time-Series Data Modeling: Single or Multiple Partitioned Table(s) a.k.a. Hypertables What Is a PostgreSQL Temporary View?A PostgreSQL Database Replication GuideUnderstanding PostgreSQL TablespacesHow to Compute Standard Deviation With PostgreSQLHow to Use Psycopg2: The PostgreSQL Adapter for Python
Best Practices for Scaling PostgreSQLBest Practices for PostgreSQL Database OperationsHow to Store Video in PostgreSQL Using BYTEAHow to Handle High-Cardinality Data in PostgreSQLHow to Use PostgreSQL for Data NormalizationTesting Postgres Ingest: INSERT vs. Batch INSERT vs. COPYBest Practices for Postgres SecurityBest Practices for Postgres Data ManagementBest Practices for Postgres PerformanceHow to Design Your PostgreSQL Database: Two Schema ExamplesHow to Manage Your Data With Data Retention PoliciesBest Practices for PostgreSQL Data AnalysisBest Practices for PostgreSQL AggregationBest Practices for Postgres Database ReplicationHow to Use a Common Table Expression (CTE) in SQL
PostgreSQL Extensions: Unlocking Multidimensional Points With Cube PostgreSQL Extensions: hstorePostgreSQL Extensions: ltreePostgreSQL Extensions: pg_prewarmPostgreSQL Extensions: pgRoutingPostgreSQL Extensions: Using PostGIS and Timescale for Advanced Geospatial InsightsPostgreSQL Extensions: Turning PostgreSQL Into a Vector Database With pgvectorPostgreSQL Extensions: amcheckPostgreSQL Extensions: Secure Your Time-Series Data With pgcryptoPostgreSQL Extensions: pg_stat_statementsPostgreSQL Extensions: Database Testing With pgTAPPostgreSQL Extensions: Install pg_trgm for Data MatchingPostgreSQL Extensions: PL/pgSQLPostgreSQL Extensions: Intro to uuid-ossp
PostgreSQL as a Real-Time Analytics DatabaseHow to Build an IoT Pipeline for Real-Time Analytics in PostgreSQLHow to Choose a Real-Time Analytics DatabaseUnderstanding OLTPOLAP Workloads on PostgreSQL: A GuideHow to Choose an OLAP DatabaseData Analytics vs. Real-Time Analytics: How to Pick Your Database (and Why It Should Be PostgreSQL)What Is the Best Database for Real-Time AnalyticsColumnar Databases vs. Row-Oriented Databases: Which to Choose?
A Brief History of AI: How Did We Get Here, and What's Next?Text-to-SQL: A Developer’s Zero-to-Hero GuideA Beginner’s Guide to Vector EmbeddingsPostgreSQL as a Vector Database: A Pgvector TutorialUsing Pgvector With PythonHow to Choose a Vector DatabaseVector Databases Are the Wrong AbstractionUnderstanding DiskANNStreaming DiskANN: How We Made PostgreSQL as Fast as Pinecone for Vector DataA Guide to Cosine SimilarityImplementing Cosine Similarity in PythonVector Database Basics: HNSWVector Database Options for AWSVector Store vs. Vector Database: Understanding the ConnectionPgvector vs. Pinecone: Vector Database Performance and Cost ComparisonHow to Build LLM Applications With Pgvector Vector Store in LangChainHow to Implement RAG With Amazon Bedrock and LangChainRetrieval-Augmented Generation With Claude Sonnet 3.5 and PgvectorPostgreSQL Hybrid Search Using Pgvector and CohereWhat Is Vector Search? Vector Search vs Semantic SearchNearest Neighbor Indexes: What Are IVFFlat Indexes in Pgvector and How Do They WorkRAG Is More Than Just Vector SearchImplementing Filtered Semantic Search Using Pgvector and JavaScriptRefining Vector Search Queries With Time Filters in Pgvector: A TutorialUnderstanding Semantic SearchBuilding an AI Image Gallery With OpenAI CLIP, Claude Sonnet 3.5, and PgvectorWhen Should You Use Full-Text Search vs. Vector Search?HNSW vs. DiskANN
Understanding IoT (Internet of Things)Storing IoT Data: 8 Reasons Why You Should Use PostgreSQLHow to Choose an IoT DatabaseHow to Simulate a Basic IoT Sensor Dataset on PostgreSQLFrom Ingest to Insights in Milliseconds: Everactive's Tech Transformation With TimescaleHow Ndustrial Is Providing Fast Real-Time Queries and Safely Storing Client Data With 97 % CompressionA Beginner’s Guide to IIoT and Industry 4.0Why You Should Use PostgreSQL for Industrial IoT DataHow Hopthru Powers Real-Time Transit Analytics From a 1 TB Table Migrating a Low-Code IoT Platform Storing 20M Records/DayMoving Past Legacy Systems: Data Historian vs. Time-Series DatabaseHow United Manufacturing Hub Is Introducing Open Source to ManufacturingBuilding IoT Pipelines for Faster Analytics With IoT CoreVisualizing IoT Data at Scale With Hopara and TimescaleDB
What Is ClickHouse and How Does It Compare to PostgreSQL and TimescaleDB for Time Series?Timescale vs. Amazon RDS PostgreSQL: Up to 350x Faster Queries, 44 % Faster Ingest, 95 % Storage Savings for Time-Series DataWhat We Learned From Benchmarking Amazon Aurora PostgreSQL ServerlessTimescaleDB vs. Amazon Timestream: 6,000x Higher Inserts, 5-175x Faster Queries, 150-220x CheaperHow to Store Time-Series Data in MongoDB and Why That’s a Bad IdeaPostgreSQL + TimescaleDB: 1,000x Faster Queries, 90 % Data Compression, and Much MoreEye or the Tiger: Benchmarking Cassandra vs. TimescaleDB for Time-Series Data
Alternatives to RDSWhy Is RDS so Expensive? Understanding RDS Pricing and CostsEstimating RDS CostsHow to Migrate From AWS RDS for PostgreSQL to TimescaleAmazon Aurora vs. RDS: Understanding the Difference
What InfluxDB Got Wrong5 InfluxDB Alternatives for Your Time-Series Data8 Reasons to Choose Timescale as Your InfluxDB Alternative InfluxQL, Flux, and SQL: Which Query Language Is Best? (With Cheatsheet)TimescaleDB vs. InfluxDB: Purpose Built Differently for Time-Series Data
How to Migrate Your Data to Timescale (3 Ways)Postgres TOAST vs. Timescale CompressionBuilding Python Apps With PostgreSQL: A Developer's GuideMore Time-Series Data Analysis, Fewer Lines of Code: Meet HyperfunctionsTimescale Tips: Testing Your Chunk SizeIs Postgres Partitioning Really That Hard? An Introduction To HypertablesPostgreSQL Materialized Views and Where to Find Them5 Ways to Monitor Your PostgreSQL DatabaseData Visualization in PostgreSQL With Apache Superset
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Published at Jan 10, 2024

Scalable Database

A Guide to Scaling PostgreSQL

An upward trending bar chart—learn how to scale Postgres.

Written by Paulinho Giovannini Pereira

PostgreSQL is celebrated for its robust feature set, compliance with SQL standards, and open-source development ethos. These attributes make it an attractive choice for many developers and organizations worldwide—no wonder it’s the only database ever to win four times the DB-Engines title of database management system (DBMS) of the year, including in 2023.  

But while PostgreSQL is known for its power and versatility, scaling it effectively as data volumes and application demands grow presents challenges. Scaling Postgres requires not only a deep understanding of its architecture but also a strategic approach to database design.

Moreover, scaling complexities go beyond just handling more data; they impact analytics design and overall system architecture, leading to increased engineering overhead and the need for system redesigns to support larger-scale operations.

In this article, we'll delve into the specific strategies and tools for scaling PostgreSQL, addressing these challenges and considerations for handling large-scale data environments. Our focus will be on providing practical insights and guidance on how to scale PostgreSQL to efficiently manage and process terabytes of data daily, balancing performance and maintainability.

Let’s get started.

Assess the challenges of scaling your system

As mentioned, scaling PostgreSQL presents various challenges, each impacting the system's performance and efficiency differently. These include:

Large intake volume: Common in scenarios like application analytics or IoT monitoring—which usually involve time series or temporal data—PostgreSQL often faces large volumes of new data entries. Unlike standard business data, these scenarios typically involve adding new rows for each update rather than overwriting existing ones. This can significantly increase the database's ingestion rate, demanding your attention to optimize how new data is integrated into the system​. 

Expensive storage requirements: Large and expanding databases require efficient storage management. This involves not only ensuring adequate storage space but also managing how data is stored to optimize access and reduce costs as part of the data lifecycle management. 

Query slowdown: As the database's scale increases, the queries' complexity can also rise. This can lead to slower response times and reduced efficiency in data retrieval, impacting overall system performance.

Analytic delay: With the scaling of the database, monitoring, and analytics can become more complex and slower. Keeping track of database performance and optimizing queries for analytics purposes can be challenging in a larger-scale environment (Timescale can help in the query monitoring department).

As you can see, to optimize the performance of your PostgreSQL database, you have to evaluate all these challenges carefully. You’ll need to address current issues and anticipate future scaling needs. This is why the most effective scaling strategies must be adaptable and capable of managing the increased demands on the system, whether it's through optimizing data ingestion, managing complex queries, efficient storage, or robust analytics.

In the next sections, we'll delve into specific strategies and tools to tackle these hurdles, ensuring your PostgreSQL system remains efficient and scalable as it grows.

Solutions to PostgreSQL Scaling Problems

Let’s look at solutions to each of these scaling issues PostgreSQL faces:

Handling intake volume

Assessing ingest needs

PostgreSQL demonstrates impressive baseline ingestion capabilities, approximately 100k rows per second. However, this rate might not suffice for all use cases, especially those involving time-series data or high-frequency data updates. It's crucial to determine if this suffices for your specific requirements. 

For higher ingest demands, platforms like Timescale, which can coordinate multiple ingest processes, become crucial. Timescale, built on PostgreSQL, suggests aiming for 50-100k rows per second per ingest process and scaling up with multiple processes as needed. 

Optimizing ingest

Resource allocation: Ensure that your client-side and Timescale (or PostgreSQL) service have sufficient resources, particularly CPU, to handle the ingest volume. At Timescale, we recommend adjusting the CPU count to at least the number of ingest processes—for example, four ingest processes equals four CPU instances.

Network structure: To rev up your ingest rate, optimize your network by positioning your client and server in close proximity, preferably in the same cloud region, to maximize data throughput.

Batch inserts: Plus, leverage batch inserts for efficiency. Inserting many rows per INSERT statement, as opposed to row-by-row, can significantly improve your ingest rate.

INSERT INTO your_table (column1, column2) VALUES  ('value1a', 'value2a'), ('value1b', 'value2b'), ...;

This SQL script demonstrates how to perform batch inserts, which are crucial for efficient data ingestion in PostgreSQL.

We dive deeper into this advice in 13 tips to improve PostgreSQL insert performance, and you’ll get more Timescale-specific advice on optimizing your ingest rate here.

Through these strategies, PostgreSQL can effectively manage and even enhance its intake volume, ensuring that data ingestion remains efficient and scalable.

Managing storage costs

As PostgreSQL databases grow, managing storage costs becomes a critical aspect of scaling. Large tables, especially those reaching terabytes in size, can incur substantial hardware and access time expenses.

Analyzing storage needs

Nature of data: Assess the type of data stored, focusing on the frequency of access and the size of data segments. Understanding which data is frequently accessed and which is infrequently used but still necessary is vital.

Data growth: Evaluate how data segments grow as new data is ingested. This analysis will inform your storage scaling strategy.

Strategies for storage optimization

Estimating cloud storage costs: Based on this evaluation, you can now try to estimate the costs of cloud storage like AWS RDS for PostgreSQL. You can read our RDS cost estimate to save you the work. We looked into everything, from the right storage type (general purpose or provisioned) to data transfer costs, backup costs, and strategies to cut down your bill, like offloading data.

Tiered Storage: A much simpler and cheaper option to manage your costs is using a solution like Timescale’s Tiered Storage, a multi-tiered storage architecture that allows you to tier your older, infrequently used data in a low-cost storage tier while still being able to access it and without ever compromising on performance for your frequently used data.

This approach enables the efficient compression of rarely used data​ and lowers costs by orders of magnitude, with a flat price of $0.021 per GB/month for data—cheaper than Amazon S3.

Query slowdown

Query slowdown is a common issue as PostgreSQL tables increase in size, affecting various aspects of the data pipeline, including intake, engineering, and analysis. Efficiently managing large tables requires specific strategies.

Understanding and implementing partitioning

PostgreSQL supports table partitioning, a technique where a large table is divided into smaller, more manageable pieces or partitions. This can significantly improve query performance, especially when most accessed rows are concentrated in a few partitions. In this blog post, we outlined some of the situations when we should consider Postgres partitioning. PostgreSQL's partitioning can be done in several ways:

Range partitioning: dividing the table into ranges based on key columns​.

CREATE TABLE measurement (     city_id         int not null,     logdate         date not null,     peaktemp        int,     unitsales       int ) PARTITION BY RANGE (logdate);

This script shows how to create a table with range partitioning based on the 'logdate' column.

List partitioning: partitioning by explicitly listing key values for each partition​.

Hash partitioning: using a modulus and a remainder for partitioning, which is useful for evenly distributing data​.

Sub-partitioning: allows further dividing partitions into subpartitions, each with its own indexes and constraints​.

CREATE TABLE measurement_y2021m07 PARTITION OF measurement FOR VALUES FROM ('2021-07-01') TO ('2021-08-01') PARTITION BY RANGE (city_id);

Here's an example of creating a sub-partition for the 'measurement' table.

However, the complexity of setting up and managing a partitioning structure is significant. Decisions about the number and size of partitions and adjusting query handling as the partition structure scales require careful planning and ongoing maintenance.

Hypertables in TimescaleDB

To simplify the partitioning process, TimescaleDB introduces the concept of hypertables. Hypertables automate the generation and management of data partitions, making the process seamless and efficient. They are particularly optimized for time-based partitioning but can also handle other types, such as primary keys. A regular PostgreSQL table can be easily converted into a hypertable, significantly reducing the complexity and manual effort involved in partition management.

Hypertables offer several advantages:

Automatic partitioning: They automatically create and manage partitions based on specified intervals, ensuring optimal data distribution without manual intervention​​.

Improved query performance: Timescale’s query planner intelligently routes queries to the appropriate partition(s), ensuring efficient data access.

Columnar compression: Hypertables support columnar compression for faster queries and reduced storage costs, making them ideal for handling large volumes of data​​.

Using hypertables, PostgreSQL databases can manage hundreds of terabytes without the complexities of traditional partitioning, offering a scalable and efficient solution for large-scale data management.

Delays in analytics

When dealing with large tables in PostgreSQL, analytics can be significantly slowed down, impacting the efficiency of dashboards and analysis. To mitigate this, different approaches have been developed, such as materialized views and continuous aggregates.

Materialized views

Materialized views are essentially snapshots of data that can speed up query times by storing the results of complex computations ahead of time. While they are easy to create and flexible, they come with certain drawbacks:

Static nature: Materialized views are static snapshots requiring manual updates using TRIGGERs or CRON-like applications.

Data replacement: Typically, every refresh of a PostgreSQL materialized view replaces all historical data, which can be resource-intensive and prevent older raw data from being dropped to save space.

Continuous aggregates in TimescaleDB

In 2019, TimescaleDB introduced continuous aggregates to address these limitations, making the ongoing aggregation of massive time-series data more efficient:

Dynamic and automatic updates: Continuous aggregates automatically track changes to the underlying raw data, with user-defined policies to keep the materialized data up-to-date without manual intervention.

Storage efficiency: Continuous aggregates require significantly less storage compared to previous versions, directly translating into storage savings.

Enhanced flexibility and performance: They allow the use of any aggregate function, overcoming limitations like the inability to use DISTINCT, FILTER, or ORDER BY. Continuous aggregates are faster and lighter since TimescaleDB 2.7, offering improved performance and reduced storage requirements.

Data downsampling and compression: You can retain materialized data even after dropping the raw data, enabling the downsampling of large datasets. Older data can also be compressed, saving space and enhancing query performance.

Hierarchical continuous aggregates: To make the experience of defining continuous aggregates even more efficient, Timescale introduced hierarchical continuous aggregates in TimescaleDB 2.9. Once you get familiar with continuous aggregates, you can start creating them on top of other continuous aggregates.

image

By leveraging continuous aggregates, developers can effectively manage delays in analytics, ensuring that their PostgreSQL-powered applications remain efficient even as they scale to handle large volumes of data.

CREATE VIEW daily_temperature_avg WITH (timescaledb.continuous) AS SELECT city_id,        time_bucket('1 day', logdate) as bucket,        AVG(peaktemp) as avg_temp FROM measurement GROUP BY city_id, bucket;

This SQL script demonstrates creating a continuous aggregate view in TimescaleDB, simplifying data aggregation and enhancing query efficiency for large-scale time-series data.

Using the Right Tools for Scaling PostgreSQL

By now, it’s pretty obvious how Timescale stands out as a comprehensive solution to help you scale PostgreSQL, offering a suite of features designed to enhance the scalability and performance of PostgreSQL databases. 

Timescale not only streamlines the scaling process but also ensures that your PostgreSQL database remains efficient, cost-effective, and capable of handling the ever-increasing demands of modern data applications.

So, if you’re looking for a solution that can provide fast data intake, the capability to tier your infrequently accessed data into a low-cost storage tier, automatic partitioning, and lightning-fast data rollups, try Timescale for free today.

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