The global algorithmic trading market is expected to grow from $14.13 billion in 2021 to $15.93 billion in 2022 at a compound annual growth rate (CAGR) of 12.7%. The algorithmic trading market is expected to reach $24.79 billion in 2026 at a CAGR of 11.7%.
The algorithmic trading includes revenues earned by entities by providing automated trading services, financial services, trade executions, system architecture management. The market value includes the value of related goods sold by the service provider or included within the service offering.
Algorithmic trading is a technique that uses scripted computer codes and algorithms to open and close transactions under predefined rules that are programmed into a computer system. It reduces transaction costs and avoids significant price changes.
North America was the largest region in the algorithmic trading market in 2021. Asia Pacific is expected to be the fastest-growing region in the forecast period. The regions covered in the algorithmic trading market report are Asia-Pacific, Western Europe, Eastern Europe, North America, South America, Middle East and Africa.
The market value is defined as the revenues that enterprises gain from goods and/or services sold within the specified market and geography through sales, grants, or donations in terms of currency (in USD ($) unless otherwise specified).
The revenues for a specified geography are consumption values - that is, they are revenues generated by organisations in the specified geography within the specified market, irrespective of where they are produced. It does not include revenues from resales either further along the supply chain or as part of other products.
The main types of algorithmic trading are stock market, foreign exchange (forex), exchange-traded fund (ETF), bonds, cryptocurrencies, and others. A stock market refers to a location where buyers and sellers exchange public corporation equity shares. The components involved are solutions and services that operate on programming, debugging, data extraction, back-testing and optimization, risk management functions. These are used by institutional investors, long-term traders, short-term traders, retail investors for equities, forex, commodities, funds, other applications.
The rising need for quick digital transformation is expected to propel the algorithmic trading market going forward. Digital transformation refers to the process of employing digital technology to build new business processes, cultures, and customer experiences or to adapt current ones to fit shifting company and market needs. The quick digital transformation leads to an increasing number of trades that can boost algorithmic trading.
For instance, according to articles published by Forbes, a US-based business magazine, in 2019 globally, 70% of businesses either already have a digital transformation strategy in place or are developing one. Additionally, the year 2019 has seen a 40% increase in investment in technology related to digital transformation with businesses investing over $2 trillion in digital transformation. Therefore, the rising need for quick digital transformation is driving the algorithmic trading market.
Product innovations are a key trend gaining popularity in the algorithmic trading market. Major players are concentrating their efforts on creating innovative products to sustain their position in the algorithmic trading market. For instance, in July 2021, Rain Technologies, Inc., a Canada-based technology company, launched RAIN TRADER. Rain Trader is a web-based platform that provides automated trading and algorithmic trading models. This platform gives individuals the opportunity to engage in hassle-free, fully automated algorithmic trading.
In March 2022, Trading Technologies International Inc., a US-based technology company specializing in professional trading software, infrastructure, and data solutions, acquired RCM-X for an undisclosed amount. Through this acquisition Trading Technologies increases its product portfolio in algorithmic execution strategies, trade analytics, and TCA (transaction cost analysis) services to improve customer experience. RCM-X is a US-based financial technology company that develops algorithmic execution strategies and quantitative trading products.
The countries covered in the algorithmic trading market report are Australia, Brazil, China, France, Germany, India, Indonesia, Japan, Russia, South Korea, UK, USA.
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A selection of companies mentioned in this report includes
63 Moons Technologies Limited
MetaQuotes Software
AlgoTrader
Virtu Financial Inc.
Tethys Technology Inc.
Trading Technologies International Inc.
Argo SE
Software AG
Vela Trading Systems LLC
uTrade Solutions
InfoReach Inc.
Tata Consultancy Services
Symphony Fintech Solutions Pvt. Ltd.
Refinitiv
Thomson Reuters Corporation
iRageCapital Advisory Private Limited
Lightspeed Financial Services Group LLC
FlexTrade Systems Inc.
Citadel LLC.
Key Topics Covered:
1. Executive Summary
2. Algorithmic Trading Market Characteristics
3. Algorithmic Trading Market Trends And Strategies
4. Algorithmic Trading Market - Macro Economic Scenario
4.1. COVID-19 Impact On Algorithmic Trading Market
4.2. Ukraine-Russia War Impact On Algorithmic Trading Market
4.3. Impact Of High Inflation On Algorithmic Trading Market
5. Algorithmic Trading Market Size And Growth
5.1. Global Algorithmic Trading Historic Market, 2016-2021, $ Billion
5.1.1. Drivers Of The Market
5.1.2. Restraints On The Market
5.2. Global Algorithmic Trading Forecast Market, 2021-2026F, 2031F, $ Billion
5.2.1. Drivers Of The Market
5.2.2. Restraints On the Market
6. Algorithmic Trading Market Segmentation
6.1. Global Algorithmic Trading Market, Segmentation By Type, Historic and Forecast, 2016-2021, 2021-2026F, 2031F, $ Billion
Stock Market
Foreign Exchange (FOREX)
Exchange-Traded Fund (ETF)
Bonds
Cryptocurrencies
Other Types
6.2. Global Algorithmic Trading Market, Segmentation By Component, Historic and Forecast, 2016-2021, 2021-2026F, 2031F, $ Billion
Solution
Services
6.3. Global Algorithmic Trading Market, Segmentation By Function, Historic and Forecast, 2016-2021, 2021-2026F, 2031F, $ Billion
Programming
Debugging
Data Extraction
Back-Testing and Optimization
Risk Management
6.4. Global Algorithmic Trading Market, Segmentation By Type Of Traders, Historic and Forecast, 2016-2021, 2021-2026F, 2031F, $ Billion
Institutional Investors
Long-Term Traders
Short-Term Traders
Retail Investors
6.5. Global Algorithmic Trading Market, Segmentation By Application, Historic and Forecast, 2016-2021, 2021-2026F, 2031F, $ Billion
Equities
Forex
Commodities
Funds
Other Applications
7. Algorithmic Trading Market Regional And Country Analysis
7.1. Global Algorithmic Trading Market, Split By Region, Historic and Forecast, 2016-2021, 2021-2026F, 2031F, $ Billion
7.2. Global Algorithmic Trading Market, Split By Country, Historic and Forecast, 2016-2021, 2021-2026F, 2031F, $ Billion
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