
The global market for Cloud-Native Time Series Database was valued at US$ 1560 million in the year 2023 and is projected to reach a revised size of US$ 2367 million by 2030, growing at a CAGR of 6.2% during the forecast period.
A cloud-native time series database is a database system designed specifically for storing, managing, and analyzing time series data. It makes full use of the characteristics of the cloud computing environment and is highly scalable, flexible, and efficient. Time series data refers to continuous data points in a time-based sequence, such as sensor data, monitoring data, and log records. Cloud-native time series databases are usually based on containerized architecture, microservice design, and automated operation and maintenance. They can achieve high-concurrency read and write operations in a distributed environment and can cope with large-scale data volumes and rapidly growing data streams. They use the elastic expansion capabilities of the cloud platform to dynamically expand resources according to demand, support horizontal expansion, and ensure high performance and high availability under different workloads. In addition, cloud-native time series databases usually have automated data management functions, such as data compression, deduplication, and lifecycle management, to optimize storage efficiency and query performance. In a cloud environment, cloud-native time series databases can easily integrate other cloud services, such as machine learning analysis, real-time monitoring, and big data processing, to provide users with powerful data analysis and decision support capabilities. This makes it have broad application prospects in the fields of the Internet of Things (IoT), real-time data analysis, financial market monitoring, and energy management.
Cloud-native time series databases represent an important trend in the development of modern database architectures towards greater efficiency, flexibility, and scalability. In traditional time series databases, they often rely on a single hardware device and centralized storage, resulting in performance bottlenecks and lack of flexibility when facing large-scale, high-throughput, and rapidly growing data. Cloud-native time series databases solve these problems by combining the database architecture with the elastic and distributed characteristics of cloud computing. It can not only dynamically scale resources according to load, but also improve the maintainability and high availability of the system through containerization and microservices design. The key advantage of cloud-native time series databases lies in their high scalability and elasticity. It can handle a steady stream of big data streams from IoT devices, sensors, application logs, etc., and ensure the real-time and consistency of data through distributed storage and computing architecture. Compared with traditional databases, it can better cope with complex data patterns and query requirements while reducing hardware investment and operation and maintenance costs. Since cloud-native time series databases usually have built-in intelligent data compression and indexing technologies, they can effectively reduce storage requirements and optimize data retrieval speed. In addition, with the help of other services on the cloud platform (such as data analysis, machine learning, etc.), it can further enhance the value of data and achieve real-time decision-making and predictive analysis.In short, cloud-native time series databases not only represent the cutting-edge development of database technology, but are also a powerful tool for addressing today's challenges in large-scale time series data management and analysis. With the continuous development of cloud computing and the Internet of Things, its application prospects in industries such as energy, finance, and smart manufacturing will become more extensive.
This report aims to provide a comprehensive presentation of the global market for Cloud-Native Time Series Database, with both quantitative and qualitative analysis, to help readers develop business/growth strategies, assess the market competitive situation, analyze their position in the current marketplace, and make informed business decisions regarding Cloud-Native Time Series Database.
The Cloud-Native Time Series Database market size, estimations, and forecasts are provided in terms of and revenue ($ millions), considering 2023 as the base year, with history and forecast data for the period from 2019 to 2030. This report segments the global Cloud-Native Time Series Database market comprehensively. Regional market sizes, concerning products by Type, by Application, and by players, are also provided.
For a more in-depth understanding of the market, the report provides profiles of the competitive landscape, key competitors, and their respective market ranks. The report also discusses technological trends and new product developments.
The report will help the Cloud-Native Time Series Database companies, new entrants, and industry chain related companies in this market with information on the revenues for the overall market and the sub-segments across the different segments, by company, by Type, by Application, and by regions.
Market Segmentation
By Company
Amazon
Microsoft
Google
InfluxData
Timescale
DataStax
QuestDB
OpenTSDB
Redpanda
VictoriaMetrics
Segment by Type
Distributed Architecture
Single Node Architecture
Segment by Application
Large Enterprises
Medium Enterprises
Small Enterprises
By Region
North America
United States
Canada
Asia-Pacific
China
Japan
South Korea
Southeast Asia
India
Australia
Rest of Asia
Europe
Germany
France
U.K.
Italy
Russia
Nordic Countries
Rest of Europe
Latin America
Mexico
Brazil
Rest of Latin America
Middle East & Africa
Turkey
Saudi Arabia
UAE
Rest of MEA
Chapter Outline
Chapter 1: Introduces the report scope of the report, executive summary of different market segments (by Type, by Application, etc), including the market size of each market segment, future development potential, and so on. It offers a high-level view of the current state of the market and its likely evolution in the short to mid-term, and long term.
Chapter 2: Introduces executive summary of global market size, regional market size, this section also introduces the market dynamics, latest developments of the market, the driving factors and restrictive factors of the market, the challenges and risks faced by companies in the industry, and the analysis of relevant policies in the industry.
Chapter 3: Detailed analysis of Cloud-Native Time Series Database company competitive landscape, revenue market share, latest development plan, merger, and acquisition information, etc.
Chapter 4: Provides the analysis of various market segments by Type, covering the market size and development potential of each market segment, to help readers find the blue ocean market in different market segments.
Chapter 5: Provides the analysis of various market segments by Application, covering the market size and development potential of each market segment, to help readers find the blue ocean market in different downstream markets.
Chapter 6, 7, 8, 9, 10: North America, Europe, Asia Pacific, Latin America, Middle East and Africa segment by country. It provides a quantitative analysis of the market size and development potential of each region and its main countries and introduces the market development, future development prospects, market space, and capacity of each country in the world.
Chapter 11: Provides profiles of key players, introducing the basic situation of the main companies in the market in detail, including product sales, revenue, price, gross margin, product introduction, recent development, etc.
Chapter 12: The main points and conclusions of the report.
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1 Report Overview
1.1 Study Scope
1.2 Market Analysis by Type
1.2.1 Global Cloud-Native Time Series Database Market Size Growth Rate by Type: 2019 VS 2023 VS 2030
1.2.2 Distributed Architecture
1.2.3 Single Node Architecture
1.3 Market by Application
1.3.1 Global Cloud-Native Time Series Database Market Growth by Application: 2019 VS 2023 VS 2030
1.3.2 Large Enterprises
1.3.3 Medium Enterprises
1.3.4 Small Enterprises
1.4 Assumptions and Limitations
1.5 Study Objectives
1.6 Years Considered
2 Global Growth Trends
2.1 Global Cloud-Native Time Series Database Market Perspective (2019-2030)
2.2 Global Cloud-Native Time Series Database Growth Trends by Region
2.2.1 Global Cloud-Native Time Series Database Market Size by Region: 2019 VS 2023 VS 2030
2.2.2 Cloud-Native Time Series Database Historic Market Size by Region (2019-2024)
2.2.3 Cloud-Native Time Series Database Forecasted Market Size by Region (2025-2030)
2.3 Cloud-Native Time Series Database Market Dynamics
2.3.1 Cloud-Native Time Series Database Industry Trends
2.3.2 Cloud-Native Time Series Database Market Drivers
2.3.3 Cloud-Native Time Series Database Market Challenges
2.3.4 Cloud-Native Time Series Database Market Restraints
3 Competition Landscape by Key Players
3.1 Global Top Cloud-Native Time Series Database Players by Revenue
3.1.1 Global Top Cloud-Native Time Series Database Players by Revenue (2019-2024)
3.1.2 Global Cloud-Native Time Series Database Revenue Market Share by Players (2019-2024)
3.2 Global Cloud-Native Time Series Database Market Share by Company Type (Tier 1, Tier 2, and Tier 3)
3.3 Global Key Players Ranking by Cloud-Native Time Series Database Revenue
3.4 Global Cloud-Native Time Series Database Market Concentration Ratio
3.4.1 Global Cloud-Native Time Series Database Market Concentration Ratio (CR5 and HHI)
3.4.2 Global Top 10 and Top 5 Companies by Cloud-Native Time Series Database Revenue in 2023
3.5 Global Key Players of Cloud-Native Time Series Database Head office and Area Served
3.6 Global Key Players of Cloud-Native Time Series Database, Product and Application
3.7 Global Key Players of Cloud-Native Time Series Database, Date of Enter into This Industry
3.8 Mergers & Acquisitions, Expansion Plans
4 Cloud-Native Time Series Database Breakdown Data by Type
4.1 Global Cloud-Native Time Series Database Historic Market Size by Type (2019-2024)
4.2 Global Cloud-Native Time Series Database Forecasted Market Size by Type (2025-2030)
5 Cloud-Native Time Series Database Breakdown Data by Application
5.1 Global Cloud-Native Time Series Database Historic Market Size by Application (2019-2024)
5.2 Global Cloud-Native Time Series Database Forecasted Market Size by Application (2025-2030)
6 North America
6.1 North America Cloud-Native Time Series Database Market Size (2019-2030)
6.2 North America Cloud-Native Time Series Database Market Growth Rate by Country: 2019 VS 2023 VS 2030
6.3 North America Cloud-Native Time Series Database Market Size by Country (2019-2024)
6.4 North America Cloud-Native Time Series Database Market Size by Country (2025-2030)
6.5 United States
6.6 Canada
7 Europe
7.1 Europe Cloud-Native Time Series Database Market Size (2019-2030)
7.2 Europe Cloud-Native Time Series Database Market Growth Rate by Country: 2019 VS 2023 VS 2030
7.3 Europe Cloud-Native Time Series Database Market Size by Country (2019-2024)
7.4 Europe Cloud-Native Time Series Database Market Size by Country (2025-2030)
7.5 Germany
7.6 France
7.7 U.K.
7.8 Italy
7.9 Russia
7.10 Nordic Countries
8 Asia-Pacific
8.1 Asia-Pacific Cloud-Native Time Series Database Market Size (2019-2030)
8.2 Asia-Pacific Cloud-Native Time Series Database Market Growth Rate by Country: 2019 VS 2023 VS 2030
8.3 Asia-Pacific Cloud-Native Time Series Database Market Size by Region (2019-2024)
8.4 Asia-Pacific Cloud-Native Time Series Database Market Size by Region (2025-2030)
8.5 China
8.6 Japan
8.7 South Korea
8.8 Southeast Asia
8.9 India
8.10 Australia
9 Latin America
9.1 Latin America Cloud-Native Time Series Database Market Size (2019-2030)
9.2 Latin America Cloud-Native Time Series Database Market Growth Rate by Country: 2019 VS 2023 VS 2030
9.3 Latin America Cloud-Native Time Series Database Market Size by Country (2019-2024)
9.4 Latin America Cloud-Native Time Series Database Market Size by Country (2025-2030)
9.5 Mexico
9.6 Brazil
10 Middle East & Africa
10.1 Middle East & Africa Cloud-Native Time Series Database Market Size (2019-2030)
10.2 Middle East & Africa Cloud-Native Time Series Database Market Growth Rate by Country: 2019 VS 2023 VS 2030
10.3 Middle East & Africa Cloud-Native Time Series Database Market Size by Country (2019-2024)
10.4 Middle East & Africa Cloud-Native Time Series Database Market Size by Country (2025-2030)
10.5 Turkey
10.6 Saudi Arabia
10.7 UAE
11 Key Players Profiles
11.1 Amazon
11.1.1 Amazon Company Details
11.1.2 Amazon Business Overview
11.1.3 Amazon Cloud-Native Time Series Database Introduction
11.1.4 Amazon Revenue in Cloud-Native Time Series Database Business (2019-2024)
11.1.5 Amazon Recent Development
11.2 Microsoft
11.2.1 Microsoft Company Details
11.2.2 Microsoft Business Overview
11.2.3 Microsoft Cloud-Native Time Series Database Introduction
11.2.4 Microsoft Revenue in Cloud-Native Time Series Database Business (2019-2024)
11.2.5 Microsoft Recent Development
11.3 Google
11.3.1 Google Company Details
11.3.2 Google Business Overview
11.3.3 Google Cloud-Native Time Series Database Introduction
11.3.4 Google Revenue in Cloud-Native Time Series Database Business (2019-2024)
11.3.5 Google Recent Development
11.4 InfluxData
11.4.1 InfluxData Company Details
11.4.2 InfluxData Business Overview
11.4.3 InfluxData Cloud-Native Time Series Database Introduction
11.4.4 InfluxData Revenue in Cloud-Native Time Series Database Business (2019-2024)
11.4.5 InfluxData Recent Development
11.5 Timescale
11.5.1 Timescale Company Details
11.5.2 Timescale Business Overview
11.5.3 Timescale Cloud-Native Time Series Database Introduction
11.5.4 Timescale Revenue in Cloud-Native Time Series Database Business (2019-2024)
11.5.5 Timescale Recent Development
11.6 DataStax
11.6.1 DataStax Company Details
11.6.2 DataStax Business Overview
11.6.3 DataStax Cloud-Native Time Series Database Introduction
11.6.4 DataStax Revenue in Cloud-Native Time Series Database Business (2019-2024)
11.6.5 DataStax Recent Development
11.7 QuestDB
11.7.1 QuestDB Company Details
11.7.2 QuestDB Business Overview
11.7.3 QuestDB Cloud-Native Time Series Database Introduction
11.7.4 QuestDB Revenue in Cloud-Native Time Series Database Business (2019-2024)
11.7.5 QuestDB Recent Development
11.8 OpenTSDB
11.8.1 OpenTSDB Company Details
11.8.2 OpenTSDB Business Overview
11.8.3 OpenTSDB Cloud-Native Time Series Database Introduction
11.8.4 OpenTSDB Revenue in Cloud-Native Time Series Database Business (2019-2024)
11.8.5 OpenTSDB Recent Development
11.9 Redpanda
11.9.1 Redpanda Company Details
11.9.2 Redpanda Business Overview
11.9.3 Redpanda Cloud-Native Time Series Database Introduction
11.9.4 Redpanda Revenue in Cloud-Native Time Series Database Business (2019-2024)
11.9.5 Redpanda Recent Development
11.10 VictoriaMetrics
11.10.1 VictoriaMetrics Company Details
11.10.2 VictoriaMetrics Business Overview
11.10.3 VictoriaMetrics Cloud-Native Time Series Database Introduction
11.10.4 VictoriaMetrics Revenue in Cloud-Native Time Series Database Business (2019-2024)
11.10.5 VictoriaMetrics Recent Development
12 Analyst's Viewpoints/Conclusions
13 Appendix
13.1 Research Methodology
13.1.1 Methodology/Research Approach
13.1.1.1 Research Programs/Design
13.1.1.2 Market Size Estimation
13.1.1.3 Market Breakdown and Data Triangulation
13.1.2 Data Source
13.1.2.1 Secondary Sources
13.1.2.2 Primary Sources
13.2 Author Details
13.3 Disclaimer
Amazon
Microsoft
Google
InfluxData
Timescale
DataStax
QuestDB
OpenTSDB
Redpanda
VictoriaMetrics
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*If Applicable.
