TigerData logo
TigerData logo
  • Product

    Tiger Cloud

    Robust elastic cloud platform for startups and enterprises

    Agentic Postgres

    Postgres for Agents

    TimescaleDB

    Postgres for time-series, real-time analytics and events

  • Docs
  • Pricing

    Pricing

    Enterprise Tier

  • Developer Hub

    Changelog

    Benchmarks

    Blog

    Community

    Customer Stories

    Events

    Support

    Integrations

    Launch Hub

  • Company

    Contact us

    About

    Timescale

    Partners

    Security

    Careers

Log InTry for free
Home
AWS Time-Series Database: Understanding Your OptionsStationary Time-Series AnalysisThe Best Time-Series Databases ComparedTime-Series Analysis and Forecasting With Python Alternatives to TimescaleWhat Are Open-Source Time-Series Databases—Understanding Your OptionsWhy Consider Using PostgreSQL for Time-Series Data?Time-Series Analysis in RWhat Is Temporal Data?What Is a Time Series and How Is It Used?Is Your Data Time Series? Data Types Supported by PostgreSQL and TimescaleUnderstanding Database Workloads: Variable, Bursty, and Uniform PatternsHow to Work With Time Series in Python?Tools for Working With Time-Series Analysis in PythonGuide to Time-Series Analysis in PythonUnderstanding Autoregressive Time-Series ModelingCreating a Fast Time-Series Graph With Postgres Materialized Views
Understanding PostgreSQLOptimizing Your Database: A Deep Dive into PostgreSQL Data TypesUnderstanding FROM in PostgreSQL (With Examples)How to Address ‘Error: Could Not Resize Shared Memory Segment’ How to Install PostgreSQL on MacOSUnderstanding FILTER in PostgreSQL (With Examples)Understanding GROUP BY in PostgreSQL (With Examples)PostgreSQL Join Type TheoryA Guide to PostgreSQL ViewsStructured vs. Semi-Structured vs. Unstructured Data in PostgreSQLUnderstanding Foreign Keys in PostgreSQLUnderstanding PostgreSQL User-Defined FunctionsUnderstanding PostgreSQL's COALESCE FunctionUnderstanding SQL Aggregate FunctionsUsing PostgreSQL UPDATE With JOINHow to Install PostgreSQL on Linux5 Common Connection Errors in PostgreSQL and How to Solve ThemUnderstanding HAVING in PostgreSQL (With Examples)How to Fix No Partition of Relation Found for Row in Postgres DatabasesHow to Fix Transaction ID Wraparound ExhaustionUnderstanding 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 FunctionsPostgreSQL Joins : A SummaryUnderstanding OFFSET in PostgreSQL (With Examples)Understanding PostgreSQL Date and Time FunctionsWhat Is Data Compression and How Does It Work?What Is Data Transformation, and Why Is It Important?Understanding the Postgres string_agg FunctionWhat Is a PostgreSQL Left Join? And a Right Join?Understanding PostgreSQL SELECTSelf-Hosted or Cloud Database? A Countryside Reflection on Infrastructure ChoicesUnderstanding ACID Compliance Understanding percentile_cont() and percentile_disc() in PostgreSQLUnderstanding PostgreSQL Conditional FunctionsUnderstanding PostgreSQL Array FunctionsWhat Characters Are Allowed in PostgreSQL Strings?Understanding WHERE in PostgreSQL (With Examples)What Is a PostgreSQL Full Outer Join?What Is a PostgreSQL Cross Join?What Is a PostgreSQL Inner Join?Data Partitioning: What It Is and Why It MattersStrategies for Improving Postgres JOIN PerformanceUnderstanding the Postgres extract() FunctionUnderstanding the rank() and dense_rank() Functions in PostgreSQL
Guide to PostgreSQL PerformanceHow to Reduce Bloat in Large PostgreSQL TablesDesigning Your Database Schema: Wide vs. Narrow Postgres TablesBest Practices for Time-Series Data Modeling: Single or Multiple Partitioned Table(s) a.k.a. Hypertables Best Practices for (Time-)Series Metadata Tables A Guide to Data Analysis on PostgreSQLA Guide to Scaling PostgreSQLGuide to PostgreSQL SecurityHandling Large Objects in PostgresHow to Query JSON Metadata in PostgreSQLHow to Query JSONB in PostgreSQLHow to Use PostgreSQL for Data TransformationOptimizing Array Queries With GIN Indexes in PostgreSQLPg_partman vs. Hypertables for Postgres PartitioningPostgreSQL Performance Tuning: Designing and Implementing Your Database SchemaPostgreSQL Performance Tuning: Key ParametersPostgreSQL Performance Tuning: Optimizing Database IndexesDetermining the Optimal Postgres Partition SizeNavigating Growing PostgreSQL Tables With Partitioning (and More)Top PostgreSQL Drivers for PythonWhen to Consider Postgres PartitioningGuide to PostgreSQL Database OperationsUnderstanding PostgreSQL TablespacesWhat Is Audit Logging and How to Enable It in PostgreSQLGuide to Postgres Data ManagementHow to Index JSONB Columns in PostgreSQLHow to Monitor and Optimize PostgreSQL Index PerformanceSQL/JSON Data Model and JSON in SQL: A PostgreSQL PerspectiveA Guide to pg_restore (and pg_restore Example)PostgreSQL Performance Tuning: How to Size Your DatabaseAn Intro to Data Modeling on PostgreSQLExplaining PostgreSQL EXPLAINWhat Is a PostgreSQL Temporary View?A PostgreSQL Database Replication GuideHow to Compute Standard Deviation With PostgreSQLHow PostgreSQL Data Aggregation WorksBuilding a Scalable DatabaseRecursive Query in SQL: What It Is, and How to Write OneGuide to PostgreSQL Database DesignHow to Use Psycopg2: The PostgreSQL Adapter for Python
Best Practices for Scaling PostgreSQLHow to Design Your PostgreSQL Database: Two Schema ExamplesHow to Handle High-Cardinality Data in PostgreSQLHow to Store Video in PostgreSQL Using BYTEABest Practices for PostgreSQL Database OperationsHow to Manage Your Data With Data Retention PoliciesBest Practices for PostgreSQL AggregationBest Practices for Postgres Database ReplicationHow to Use a Common Table Expression (CTE) in SQLBest Practices for Postgres Data ManagementBest Practices for Postgres PerformanceBest Practices for Postgres SecurityBest Practices for PostgreSQL Data AnalysisTesting Postgres Ingest: INSERT vs. Batch INSERT vs. COPYHow to Use PostgreSQL for Data Normalization
PostgreSQL Extensions: amcheckPostgreSQL Extensions: Unlocking Multidimensional Points With Cube PostgreSQL Extensions: hstorePostgreSQL Extensions: ltreePostgreSQL Extensions: Secure Your Time-Series Data With pgcryptoPostgreSQL Extensions: pg_prewarmPostgreSQL Extensions: pgRoutingPostgreSQL Extensions: pg_stat_statementsPostgreSQL Extensions: Install pg_trgm for Data MatchingPostgreSQL Extensions: Turning PostgreSQL Into a Vector Database With pgvectorPostgreSQL Extensions: Database Testing With pgTAPPostgreSQL Extensions: PL/pgSQLPostgreSQL Extensions: Using PostGIS and Timescale for Advanced Geospatial InsightsPostgreSQL Extensions: Intro to uuid-ossp
Columnar Databases vs. Row-Oriented Databases: Which to Choose?Data Analytics vs. Real-Time Analytics: How to Pick Your Database (and Why It Should Be PostgreSQL)How to Choose a Real-Time Analytics DatabaseUnderstanding OLTPOLAP Workloads on PostgreSQL: A GuideHow to Choose an OLAP DatabasePostgreSQL as a Real-Time Analytics DatabaseWhat Is the Best Database for Real-Time AnalyticsHow to Build an IoT Pipeline for Real-Time Analytics in PostgreSQL
When Should You Use Full-Text Search vs. Vector Search?HNSW vs. DiskANNA Brief History of AI: How Did We Get Here, and What's Next?A 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 DiskANNA Guide to Cosine SimilarityStreaming DiskANN: How We Made PostgreSQL as Fast as Pinecone for Vector DataImplementing 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 PgvectorRAG Is More Than Just Vector SearchPostgreSQL Hybrid Search Using Pgvector and CohereImplementing Filtered Semantic Search Using Pgvector and JavaScriptRefining Vector Search Queries With Time Filters in Pgvector: A TutorialUnderstanding Semantic SearchWhat Is Vector Search? Vector Search vs Semantic SearchText-to-SQL: A Developer’s Zero-to-Hero GuideNearest Neighbor Indexes: What Are IVFFlat Indexes in Pgvector and How Do They WorkBuilding an AI Image Gallery With OpenAI CLIP, Claude Sonnet 3.5, and Pgvector
Understanding IoT (Internet of Things)A Beginner’s Guide to IIoT and Industry 4.0Storing IoT Data: 8 Reasons Why You Should Use PostgreSQLMoving Past Legacy Systems: Data Historian vs. Time-Series DatabaseWhy You Should Use PostgreSQL for Industrial IoT DataHow 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 % CompressionHow Hopthru Powers Real-Time Transit Analytics From a 1 TB Table Migrating a Low-Code IoT Platform Storing 20M Records/DayHow 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
5 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)What InfluxDB Got WrongTimescaleDB vs. InfluxDB: Purpose Built Differently for Time-Series Data
5 Ways to Monitor Your PostgreSQL DatabaseHow to Migrate Your Data to Timescale (3 Ways)Postgres TOAST vs. Timescale CompressionBuilding Python Apps With PostgreSQL: A Developer's GuideData Visualization in PostgreSQL With Apache SupersetMore Time-Series Data Analysis, Fewer Lines of Code: Meet HyperfunctionsIs Postgres Partitioning Really That Hard? An Introduction To HypertablesPostgreSQL Materialized Views and Where to Find ThemTimescale Tips: Testing Your Chunk Size
Postgres cheat sheet
HomeTime series basicsPostgres basicsPostgres guidesPostgres best practicesPostgres extensionsPostgres for real-time analytics
Sections

Postgres overview

Understanding PostgreSQLOptimizing Your Database: A Deep Dive into PostgreSQL Data Types

Postgres errors

How to Address ‘Error: Could Not Resize Shared Memory Segment’ 5 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 Exhaustion

Install postgres

How to Install PostgreSQL on LinuxHow to Install PostgreSQL on MacOS

Postgres clauses

Understanding FROM in PostgreSQL (With Examples)Understanding FILTER in PostgreSQL (With Examples)Understanding HAVING in PostgreSQL (With Examples)Understanding GROUP BY in PostgreSQL (With Examples)Understanding LIMIT in PostgreSQL (With Examples)Understanding ORDER BY in PostgreSQL (With Examples)Understanding WINDOW in PostgreSQL (With Examples)Understanding PostgreSQL WITHIN GROUPUnderstanding DISTINCT in PostgreSQL (With Examples)Understanding WHERE in PostgreSQL (With Examples)Understanding OFFSET in PostgreSQL (With Examples)

Postgres joins

PostgreSQL Joins : A SummaryWhat 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 TheoryStrategies for Improving Postgres JOIN Performance

Postgres operations

A Guide to PostgreSQL ViewsData 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 Choices

More

Understanding ACID Compliance Structured vs. Semi-Structured vs. Unstructured Data in PostgreSQLUnderstanding Foreign Keys in PostgreSQL

Postgres functions

Understanding PostgreSQL FunctionsPostgreSQL Mathematical Functions: Enhancing Coding EfficiencyUsing PostgreSQL String Functions for Improved Data AnalysisData Processing With PostgreSQL Window FunctionsUnderstanding PostgreSQL Date and Time FunctionsUnderstanding the Postgres string_agg FunctionUnderstanding PostgreSQL User-Defined FunctionsUnderstanding PostgreSQL's COALESCE FunctionUnderstanding SQL Aggregate FunctionsUnderstanding percentile_cont() and percentile_disc() in PostgreSQLUnderstanding PostgreSQL Conditional FunctionsUnderstanding PostgreSQL Array FunctionsUnderstanding the Postgres extract() FunctionUnderstanding the rank() and dense_rank() Functions in PostgreSQL

Postgres statements

Understanding PostgreSQL SELECTUsing PostgreSQL UPDATE With JOINWhat Characters Are Allowed in PostgreSQL Strings?

Data analysis

What Is Data Transformation, and Why Is It Important?

Products

Time Series and Analytics AI and Vector Enterprise Plan Cloud Status Support Security Cloud Terms of Service

Learn

Documentation Blog Forum Tutorials Changelog Success Stories Time Series Database

Company

Contact Us Careers About Brand Community Code Of Conduct Events

Subscribe to the Tiger Data Newsletter

By submitting, you acknowledge Tiger Data's Privacy Policy

2025 (c) Timescale, Inc., d/b/a Tiger Data. All rights reserved.

Privacy preferences
LegalPrivacySitemap

Published at Jun 13, 2024

Understanding PostgreSQL

An elephant in a high-tech data center in neon colors.

Written by Dylan Paulus

PostgreSQL is one of the world's most widely used open-source database systems, used by giants like Microsoft and Amazon. Its popularity stems from its robust feature set, reliability, and active development community. Learning about PostgreSQL is absolutely crucial for any developer, analyst, or database administrator. In this guide, we'll introduce you to PostgreSQL, exploring its strengths and weaknesses and how it can power your applications.

PostgreSQL Overview

What is PostgreSQL?

PostgreSQL, an open-source object-relational database management system (ORDBMS), traces its roots back to POSTGRES, a relational database developed at the University of California, Berkeley Computer Science Department in 1986. Over the years, it has evolved and grown, adding SQL query language support in 1994 and becoming the PostgreSQL we know today. Its versatility is evident in its use across diverse industries, from underground mining to archiving space missions, enhancing eldercare, providing infrastructure in Japan, and beyond.

As mentioned, PostgreSQL is considered an ORDBMS database. An ORDBMS is a superset of a relational database (RDBMS), which stores data in tables, rows, and columns related to each other. ORDBMS adds support for object-oriented features like user-defined data types and inheritance.

At its core, PostgreSQL follows a client-server architecture. The server (PostgreSQL) stores the data, manages ACID (Atomicity, Consistency, Isolation, and Durability) compliance, and processes queries. Clients, like applications or command-line tools, connect to the PostgreSQL server and submit SQL commands to modify or retrieve data. This architecture has the benefit of allowing multiple clients to access the database concurrently.

image

PostgreSQL pros and cons

Like any technology, PostgreSQL comes with its own set of advantages and limitations.

Pros:

  • Rich features and extensions: PostgreSQL provides a wide array of features out-of-the-box, including transactions, foreign keys, views, triggers, and sophisticated data types like arrays and JSON. Its extensible nature allows for adding custom data types, functions, and even programming languages.

  • Open source: As an open-source project, PostgreSQL benefits from a large and active community of developers who contribute to its continued improvement and maintenance.

  • Performance, reliability, and scalability: PostgreSQL is known for its exceptional performance, reliability, and scalability, making it suitable for handling large datasets and high-traffic applications.

  • Proven: PostgreSQL has been used in some of the largest companies in all different industries for over 30+ years.

Cons:

  • Single intake: PostgreSQL can only ingest data from a single source at a time, which may limit its throughput for high-volume data ingestion scenarios

  • Configuration overload: PostgreSQL is highly customizable—which is one of its advantages, but this makes it tough for newcomers to get the most out of the database (for example, fine-tuning autovacuum can be cumbersome)

  • Column storage limits: PostgreSQL stores data in a row-based format, which can be less efficient for analytical workloads that primarily access a subset of columns.

"Postgres for Everything"

Over the years, PostgreSQL has evolved into a highly reliable and feature-rich database system thanks to its active development community and extensive collection of extensions. Extensions augment PostgreSQL's capabilities, allowing it to tackle many use cases beyond a traditional relational database. 

For example, TimescaleDB is built on top of PostgreSQL, adding time-series support. Pgvector turns PostgreSQL into a vector database—useful for machine learning and AI—while pgai and pgvectorscale complement pgvector to make PostgreSQL a better AI database. PostGIS adds geospatial data and querying to PostgreSQL. Finally, PostgreSQL comes built-in with JSON/B support, allowing it to support NoSQL schemas.

Combining extensions with PostgreSQL's extensive feature set means that PostgreSQL can handle any use case you throw at it. You no longer need a wide set of databases specially built for narrow use cases. PostgreSQL does it all without compromising speed, security, and reliability!

image

To learn more about PostgreSQL's versatility and the diverse array of extensions available, check out our article on "Postgres for Everything."

PostgreSQL Development

Now that we know what PostgreSQL is, let's look at how to use it. In this section, we'll quickly examine how to use Python to connect to and query PostgreSQL and practices around data management.

Building with PostgreSQL and Python

Python is one of the world's most popular languages for developing applications. When combined with PostgreSQL, developers can leverage the power of both technologies to build robust and scalable solutions.

There are many different libraries out there that allow us to talk to PostgreSQL using Python. The psycopg library, a PostgreSQL adapter for Python, is the most popular. 

To start, make sure Python is installed and that an instance of PostgreSQL is running. Install psycopg using pip (pip install psycopg or python -m pip install psycopg). Once installed, we can connect to and query PostgreSQL using the example below (replace psycopg.connect(".....") with a valid connection string to your PostgreSQL instance: import psycopg

# Connect to PostgresQL with psycopg.connect("dbname=mydb user=postgres password=secret") as conn:

    # Create a cursor to perform database operations with conn.cursor() as cursor:

# Execute a SQL query  cursor.execute("SELECT * FROM my_table;") 

# Fetch the results from PostgreSQL, and bring it into memory results = cursor.fetchall() 

# Print all resulting rows from the SQL query    for row in results: print(row)

This code snippet demonstrates how to establish a connection, execute an SQL query, and fetch the results. For more in-depth examples and best practices, refer to our guide on Building Python Apps with PostgreSQL and psycopg3.

Data management with PostgreSQL

Effective data management is crucial for ensuring the integrity, availability, and performance of your PostgreSQL-based applications. Our guide on Postgres Data Management Best Practices outlines four key pillars: usability, security, documentation, and automation.

1. Usability: your data in PostgreSQL should be accessible and quick to query. Design database schemas for your exact use case, and use proper and consistent naming conventions.

2. Security: security is essential in establishing and maintaining customer trust—any decision around data management should start with security.

3. Documentation: there is no better way of communicating best practices and technical decisions than through documentation. Having clear and accurate documentation ensures your data is understandable and maintainable over time.

4. Automation: once the other pillars are established, we can automate them to enforce best practices, test for security vulnerabilities, create documentation, and more.

The Data Lifecycle Management (DLM) process is necessary when handling large amounts of generated data, for example, in time-series data. DLM is broken down into five steps:

1. Ingest and store: efficiently ingesting and storing data in PostgreSQL.

2. Recent data queries: optimizing queries for accessing recent data.

3. Aggregated rollups: creating and maintaining aggregated data rollups for analytical workloads.

4. Archive data: archiving and managing historical data effectively.

5. Delete data: identifying and securely deleting obsolete data.

image

Following these best practices, you can build robust, secure, and scalable applications using PostgreSQL.

PostgreSQL Performance

As applications become more complex and data volumes increase, optimizing PostgreSQL's performance becomes crucial for ensuring smooth operation and a positive user experience.

PostgreSQL performance

Our guide on PostgreSQL Performance covers key aspects of table design, including the following:

Table design

Proper table design plays a significant role in PostgreSQL's performance. For example, normalizing is the process of organizing your data into smaller, related tables to reduce redundancy and improve data integrity. However, there is a balancing act between normalization and query complexity. Excessive normalization can lead to complex joins and potentially degrade performance. Striking the right balance between narrow and wide tables for your specific use case can be huge for fast queries in PostgreSQL.

At a certain point, your PostgreSQL database will grow too large and encounter performance problems. Table partitioning is a technique that can help break down a large table into smaller physical pieces using criteria like date ranges or geographical regions.

Query design

It's important to design our tables efficiently, but we also need to optimize how we query PostgreSQL. When using SELECT statements, avoid using * to return all columns and return only the data needed (e.g., SELECT id, first_name FROM people;). We can speed up queries that utilize WHERE clauses and joins by applying proper indexes on tables and columns. Rewriting complex queries to use CTEs (Common Table Expressions) allows the query planner to cache results.

All of these techniques will not only make your queries very fast but also reduce the amount of memory and I/O PostgreSQL uses.

Scaling PostgreSQL

As your applications' data and demand grow, you will need to scale PostgreSQL to maintain performance and availability. In our guide on Best Practices for Scaling PostgreSQL, we touch on topics like multi-process and batch ingestion, materialized views, and partitioning.

  • Multi-Process and batch ingest: Utilizing multiple processes and batch ingestion to increase data ingestion throughput.

  • Materialized views: Creating and maintaining materialized views to improve query performance for analytical workloads.

  • Partitioning: Partitioning tables based on criteria like time ranges or geographical regions to improve query performance and maintenance efficiency.

Timescale improves on PostgreSQL's existing scaling features by adding:

  • Storage Space Optimizations

    • Tiered storage stores data on different hardware based on how frequently it's accessed—optimizing cost and freeing up space.

    • Column compression combines multiple rows of data to improve query speed, reduce costs, and reduce disk space.

  • Hypertable Partitioning

    • Hypertables enable seamless partitioning of time-series data across time and an optional additional attribute.

  • Continuous Aggregates

    • Materialized Views are used to "cache" complex queries—continuous aggregates take it a step further by automatically refreshing the data automatically.

Conclusion

PostgreSQL is proven to be a robust, feature-rich, and highly extensible database capable of powering a wide range of applications across various industries. By understanding its strengths, limitations, and best practices, you can leverage its full potential to build secure, efficient, and scalable solutions. This is just the start of our journey. Timescale offers a diverse collection of articles and guides to amplify your PostgreSQL mastery.

To learn more about how Timescale can supercharge your time-series workloads, check out our blog post on PostgreSQL and TimescaleDB: 1,000x Faster Queries, 90% Data Compression, and Much More.

On this page