Home / Information & Technology / FinTech / Algorithmic Trading Market

Algorithmic Trading Market Size, Share & Industry Analysis, By Component (Solutions and Services), By Enterprise Type (Large Enterprises and Small & Medium Enterprises), By Type (Stock Market, Foreign Exchange, Exchange-Traded Fund, Bonds, Cryptocurrencies, and Others), By Deployment (On-premises and Cloud), By End-user (Short-term Traders, Long-term Traders, Retail Investors, and Institutional Investors), and Regional Forecast, 2024-2032

Report Format: PDF | Latest Update: Oct, 2024 | Published Date: Aug, 2024 | Report ID: FBI107174 | Status : Published

The global algorithmic trading market size was valued at USD 2.19 billion in 2023. The market is projected to grow from USD 2.36 billion in 2024 to USD 4.06 billion by 2032, exhibiting a CAGR of 7% during the forecast period. The algorithmic trading market size in the U.S. is projected to grow significantly, reaching an estimated value of USD 1,042.8 million by 2032, driven by the adoption of algorithmic trading in financial institutions.


The market’s scope consists of algorithmic trading platforms provided by companies, such as Tradetron, Wyden, TradeStation, Symphony, and FXCM Group. Algorithmic type of trading is a method of buying and selling orders using a computer programmed to follow a defined set of instructions for inserting a trade to make profits at a higher speed and frequency. It is also known as black-box trading, automated trading, or algo trading. These algorithms help users buy, create, and automatically send orders to the market via the brokerage platform.


The Security and Exchange Board of India (SEBI) has created several opportunities for stock brokers by offering trading services to investors via unregulated platforms. These unregulated platforms bid for algo trading services to stakeholders for the automatic execution of trades. Such strategies and services are being marketed with "claims" of high returns on investment. For instance,



  • In September 2022, SEBI announced guidelines for stock brokers who provide algorithm trading services to investors to avoid instances misspelling.


The COVID-19 pandemic had an positive impact on the global market as the implementation of these trading solutions increased in the face of unprecedented situations. It enhanced the growth rate of the market due to the augmented change toward algo trading for making decisions quickly by decreasing human errors.


Moreover, several market SROs and participants were forced to modify their supervisory, operational, and compliance protocols to accommodate their trading and support backup facilities or personnel working from home. For instance,



  • According to the New York Stock Exchange’s (NYSE) filing with the Commission in March, the spread of COVID-19 in the New York metropolitan area forced its employees to move to fully-electronic trading and temporarily close its main physical trading floor.


IMPACT OF GENERATIVE AI


Integration of Generative AI With Algorithm Trading to Enhance Operations and Create Market Growth Opportunities


The adoption of generative AI has profoundly impacted the algo trading market. Generative AI can analyze massive datasets encompassing historical price movements, trading volumes, and economic indicators. This allows for identifying complex patterns and generating more accurate forecasts of future market trends. These predictions can help traders make informed trading decisions and potentially lead to higher returns.


Furthermore, generative AI can dynamically adjust trading algorithms by continuously learning and adapting to evolving market conditions. This enables the creation of more robust strategies that can outperform static, pre-programmed rules. For instance,



  • With advancements in generative AI, it is estimated that by 2023, 30% of all online content, such as images, articles, and videos will be generated by AI algorithms. This will modernize online content processes and offer customers a huge array of diverse and appropriate content.


Thus, this factor will boost the global algorithmic trading market growth.


Algorithmic Trading Market Trends


Emergence of AI and ML in Financial Services to Boost Market Growth


Most financial services are using Machine Learning (ML) and Artificial Intelligence (AI) to bring data from digitally-driven channels. It is used by numerous companies operating in different areas, such as insurance, asset management, and banking. This is due to the recent decade's rising trend of data-driven investments. This factor, in turn, fueled the demand for such trading or high-frequency platforms. These AI-driven trading organizations analyze huge volumes of data faster than people would.


Integration of AI and ML technologies with algorithm trading helps users recognize the patterns and trading strategies, and predict market trends to make accurate and data-driven decisions in financial markets. This integration with algo-trading helps hold the potential for personalized investment and financial products for faster and more efficient trading.


Therefore, increasing adoption of AI and ML in financial services will play a vital role in the algo trading market growth.



Algorithmic Trading Market Growth Factors


Adoption of Algorithmic Trading in Financial Institutions to Foster Market Growth


Algorithms are more cost-effective for low-maintenance trades, and this has meant shifts in head-count and reductions on sales desks. The ability to submit orders automatically to exchanges directly rather than brokers has been a crucial innovation in lowering the cost of trading. Back office functions and post-trade services, such as settlement and clearing have also benefited from automation. Furthermore, broker-dealers use algorithms to match buy and sell orders without publishing quotes. By controlling the leakage of information and taking both the offer and bid sides of the trade, broker algorithms enhance liquidity and offer higher commissions to brokers.


Rising usage of high-frequency computers and algorithmic trading across financial institutions, such as brokerage houses and banks has led to a major development in trade execution by systematically assessing its risks. Additionally, it is assumed that factors, such as increase in the utilization of automated trading software by banking organizations, growing consumption of cloud-based solutions, and increased requirement for market monitoring software are contributing to the market’s development.


The adoption of an algo trading platform across small & medium-sized financial enterprises helps carry out the trades automatically by reducing the liquidity cost.


RESTRAINING FACTORS


Lack of Appropriate Risk Valuation Capabilities to Hinder Market Growth


Algorithm trading is prone to risks and uncertainties, wherein losses escalate quickly without proper controls. High-frequency trading is a method of algorithmic financial trading that uses electronic trading tools and fast-frequency financial data to trade at high turnover rates, high speeds, and high order-to-trade ratios. Investment companies withdraw orders that compromise the risk management thresholds. Moreover, algorithmic High-Frequency Trading (HFT) brings concerns, including increasing systemic risk. Also, unfamiliar market volatility erodes investors’ faith in the market’s integrity.


Thus, lack of risk valuation capabilities in algorithmic trading systems will hinder the market growth.


Algorithmic Trading Market Segmentation Analysis


By Component Analysis


Growing Demand for Algo Trading Solutions Among Several Enterprises to Drive Market Progress


On the basis of component, the market is categorized into solutions and services.


The solution segment dominates the market by capturing the largest global algorithmic trading market share and is expected to strengthen its dominance during the forecast period. This is due to algo trading solutions help enterprises reduce trading costs by minimizing slippage, optimizing trade execution, and automating manual process. This cost efficiency enables enterprises to achieve better trading performance and improve overall profitability. Moreover, the market players are providing sophisticated algo trading systems to meet consumer needs. Scalable and cost-effective solutions are vital for dealers since they are looking for a solution that will allow them to meet their exclusive needs at a scalable and affordable rate. Thus, this factor will boost the segment’s growth.


By Enterprise Type Analysis


Rising Adoption of Algo Trading Among Large Enterprises to Boost Segmental Growth


On the basis of enterprise type, the market is bifurcated into large enterprises and SMEs.


The large enterprise segment dominated the market with the highest share. These enterprises have the resources to leverage huge datasets for algorithmic development. Adopting AI and machine learning tools allows for more sophisticated analysis and the creation of complex trading strategies. Furthermore, algorithmic trading enables large enterprises to execute trades with high speed and efficiency, leveraging automated algorithms to capitalize on market opportunities in real-time. This efficiency and speed allow large enterprises to stay ahead of market trends and execute trades more effectively than manual trading method. Hence, this factor will accelerate the segment’s growth.


In addition, the SME segment is expected to record the highest CAGR during the forecast period. The increasing availability of data and analytics services allows small enterprises to make up-to-date trading decisions built on real-time market insights. Furthermore, regulatory changes and initiatives that aim to level the playing field in the financial markets allow SMEs to contend with larger players. In addition, the increasing demand for niche trading strategies and modified solutions will present a productive platform for SMEs to carve out specialized market niches. Moreover, cost-effectiveness is crucial, as cloud-based services and outsourcing decisions allow SMEs to access cutting-edge technologies without extensive upfront investments.


By Type Analysis


Increase in Demand for Stock Market to Drive Need for Traders


Based on type, the market is categorized into stock market, foreign exchange, exchange-traded funds, bonds, cryptocurrencies, and others.


The stock market segment captured the maximum revenue share in 2023. Algorithms are gaining popularity on online trading platforms, and many big customers demand them. These mathematical algorithms examine every price and trade on the stock market, recognize liquidity opportunities, and transform the information into intelligent trading results. Algorithmic trading reduces trading costs and permits stock managers to manage their trading processes. Algorithm modernization continues to offer returns for firms with the scale to absorb the prices and reap the benefits.


The Cryptocurrencies segment is projected to experience significant growth during the forecast period. It is a defined set of instructions for making trades to make a profit at speeds and frequencies that are unrealistic for human traders. The main advantage of automated trading is that it allows users to execute certain crypto trades at lightning speed on multiple indicators, including target prices. Strategy builders can create trading algorithms using the web-based strategy builder. Once a user creates an algorithm, it will be listed on an exchange and investors can subscribe to it and make these trades on their existing brokerage accounts.


By Deployment Analysis


Advantages of Cloud-based Solutions to Boost Their Use in Algo Trading


By deployment, the market is bifurcated into on-premises and cloud.


The cloud segment holds the maximum algo trading market share and is anticipated to record the highest CAGR during the forecast period owing to financial organizations' adoption of cloud-based applications to increase their productivity and efficiency. Additionally, cloud-based solutions are gaining popularity among traders as they ensure the effective automation of processes, data maintenance, and cost-friendly management. These factors will propel the adoption of cloud-based algo trading software during the forecast period.


By End-user Analysis



Investment Strategies among Short-term Traders to Foster the Market Growth


By end-user, the market is categorized into short-term traders, long-term traders, retail investors, and institutional investors. The short-term traders segment will register the highest CAGR during the forecast period. Algorithmic trading allows short-term traders to execute trades at lightning-fast speeds, often in milliseconds or microseconds. This speed advantage enables traders to capitalize on fleeting market opportunities and execute trades more efficiently than manual trading methods.


The institutional investors segment held the largest share of the market in 2023. Institutional investors are managed by a group or an institution's account. These investors also purchase and sell stocks on their behalf. Mutual fund families, pension funds, exchange-traded funds, and insurance firms are institutional investors. Therefore, large brokerage businesses and institutional investors mostly use algorithmic trading to save trading costs. Large order sizes benefit significantly from algorithmic trading.


REGIONAL INSIGHTS


Geographically, the market has been studied across North America, South America, Europe, the Middle East & Africa, and Asia Pacific.



North America is expected to dominate the global market’s revenue share during the forecast period. The region is anticipated to lead in algorithmic trading solution development and adoption due to its vast number of market participants, making it a competitive industry. This has led to enormous investments in trading technologies and improved government support for global trade. The extensive use of algorithm trading in financial institutions, substantial technology enhancements, and the presence of banks will boost the regional industry’s expansion.



Asia Pacific is projected to witness notable growth during the forecast period due to substantial investments by private and public sectors to improve their trading technologies, thereby driving the demand for solutions to automate the trading processes. Additionally, the increasing deployment of algo trading technology by trading companies is creating lucrative opportunities for the key players in the market. For instance,



  • In May 2022, TradeSmart, an India-based online broking firm, formed a partnership with KEEV to help traders improve their trading journey by enabling them to trade efficiently and accurately to increase their returns using KEEV’s algo-trading platform.


Furthermore, the rising adoption of cloud-based technologies in this region is contributing to the regional market’s growth.


Europe is expected to showcase a steady growth rate. The European market is examined across Germany, France, the U.K., Italy, and others. The usage of novel trading approaches and infrastructures in the field has increased owing to regulatory platforms, technological developments, and increased participant competition in the trading market. This will drive the trading industry in the region. Additionally, the governments are implementing special rules and regulations to endorse security and performance, which will nurture the regional market’s growth. For instance,



  • MiFID II, a European Union framework to rule financial markets, implemented a comprehensive set of algorithmic and high-frequency trading regulations in 2021.


The Middle Eastern trading market is slowly gathering speed as Turkey has become the latest country to activate a system that enables traders to buy and sell at high speeds. Additionally, the Istanbul Stock Exchange embraced algorithm trading, also known as “Robo-trading,” enabling the automatic trading of bonds, stocks, and currencies. These strategies enable high-frequency trading, in which algorithms trade on data too quickly for a human trader to react.


South America is expected to showcase a significant CAGR during the forecast period. The trading software enhances and automates trading capabilities of financial instruments, including equities, digital assets, securities, currency, and more. It bids a full set of algorithms in Brazil, including Time-Weighted Average Price (TWAP), Volume-Weighted Average Price (VWAP), Participate, and Custom Navigator, which aims to decrease market impact, maximize execution quality, and recover trading performance based on the particulars of each market.


KEY INDUSTRY PLAYERS


Growing Emphasis on Global Expansion to Strengthen Market Players’ Positions


The top market players are focused on expanding their geographical footprint by introducing industry-specific solutions. These players are collaborating with and acquiring local players to gain a strong regional grip. Innovations and new product launches will help them attract a vast customer base, thus improving their revenue margins. These companies are concentrating on creating effective marketing strategies and developing new solutions for maintaining and growing their market share. The rising global trading volume is expected to create lucrative opportunities for the market players. These companies are also focusing on numerous strategic initiatives, such as mergers & acquisitions and partnerships to stay competitive.


List of Top Algorithmic Trading Companies:



  • Tradetron (U.S.)

  • Tickblaze LLC (U.S.)

  • Wyden (U.S.)

  • TradeStation (U.S.)

  • InfoReach, Inc. (U.S.)

  • Symphony (U.S.)

  • ALGOTRADERS (U.S.)

  • Argo Software Engineering (U.S.)

  • FXCM Group (U.S.)

  • Tata Consultancy Services Limited (U.S.)


KEY INDUSTRY DEVELOPMENTS:



  • August 2023: BingX, a global cryptocurrency exchange platform, advanced its trading ecosystem by partnering with ALGOGENE, an algo-trading platform, to enhance customers' trading experience.

  • August 2023: MarketAxess Holdings Inc. announced the acquisition of Pragma to accelerate the development of quantitative execution algorithms and data-driven analytics for fixed-income. The acquisition helped both the firms integrate, innovate, and provide customers with quantifiable, AI-powered technology solutions driven by exclusive data designed to shorten and improve their workflows.

  • October 2022: Scotiabank launched an algorithmic trading platform with BestEx Research for the Canadian equities market. The new offering depends on research-based logic to significantly decrease costs and bids top tiers of trading performance for clients.

  • March 2022: Trading Technologies International, Inc., a trading software company, announced that it had acquired RCM-X, a technology supplier of quantitative trading products and algorithmic execution strategies. This acquisition of RCM-X, with its outstanding team, claims to offer best-in-class implementation tools.

  • June 2022: Instinet announced its decision to acquire the trading business of agency-broker FIS. The acquisition helped the company improve its customer execution quality, minimize information leakage, and decrease execution costs.

  • July 2021: Rain Technologies launched a market for completely automated algorithmic financing and trading models. It allows consumers to have a hassle-free experience. Customers can examine the marketplace, determine quant models, and subscribe to them with the touch of a button.


REPORT COVERAGE



The study on the market includes prominent areas worldwide to get a better knowledge of the industry. Furthermore, the report provides insights into the most recent market trends and an analysis of technologies that are being adopted quickly worldwide. It also emphasizes some of the growth-stimulating factors and restrictions, allowing the reader to obtain a thorough understanding of the industry.



REPORT SCOPE & SEGMENTATION










































ATTRIBUTE



DETAILS



Study Period



2019-2032



Base Year



2023



Estimated Year



2024



Forecast Period



2024-2032



Historical Period



2019-2022



Growth Rate



CAGR of 7% from 2024 to 2032



Unit



Value (USD Billion)



Segmentation



By Component



  • Solution

  • Services


By Enterprise Type



  • Large Enterprises

  • Small & Medium Enterprises


By Type



  • Stock Market

  • Foreign Exchange

  • Exchange-Traded Fund

  • Bonds

  • Cryptocurrencies

  • Others


By Deployment



  • Cloud

  • On-premise


By End-user



  • Short-term Traders

  • Long-term Traders

  • Retail Investors

  • Institutional Investors


By Region



  • North America (By Component, By Enterprise Type, By Type, By Development, By End-user, and By Country)


    • U.S. (By End-user)

    • Canada (By End-user)

    • Mexico (By End-user)


  • South America (By Component, By Enterprise Type, By Type, By Development, By End-user, and By Country)


    • Brazil (By End-user)

    • Argentina (By End-user)

    • Rest of South America


  • Europe (By Component, By Enterprise Type, By Type, By Development, By End-user, and By Country)


    • U.K. (By End-user)

    • Germany (By End-user)

    • France (By End-user)

    • Italy (By End-user)

    • Spain (By End-user)

    • Russia (By End-user)

    • Benelux (By End-user)

    • Nordics (By End-user)

    • Rest of Europe


  • Middle East & Africa (By Component, By Enterprise Type, By Type, By Development, By End-user, and By Country)


    • Turkey (By End-user)

    • Israel (By End-user)

    • GCC (By End-user)

    • South Africa (By End-user)

    • North Africa (By End-user)

    • Rest of the Middle East & Africa


  • Asia Pacific (By Component, By Enterprise Type, By Type, By Development, By End-user, and By Country)


    • China (By End-user)

    • India (By End-user)

    • Japan (By End-user)

    • South Korea (By End-user)

    • ASEAN (By End-user)

    • Oceania (By End-user)

    • Rest of Asia Pacific



Frequently Asked Questions

How much will the global algorithmic trading market be worth in 2032?

The market value is projected to reach USD 4.06 billion by 2032.

What was the value of the global algorithmic trading market in 2023?

In 2023, the market value stood at USD 2.19 billion.

At what CAGR is the market projected to grow during the forecast period of 2024-2032?

The market is projected to record a CAGR of 7% during the forecast period of 2024-2032.

Which is the fastest growing deployment segment in the market?

By deployment, the cloud segment is fastest growing in the market.

Which is the key factor driving the market growth?

The growing adoption of algorithmic trading across financial institutions is anticipated to foster the market growth.

Who are the top players in the market?

Tradetron, Inc., Tickblaze LLC., Wyden, TradeStation, InfoReach, Inc., Symphony, ALGOTRADERS, Argo Software Engineering, FXCM Group, and Tata Consultancy Services Limited are the top players in the market.

Which region is expected to hold the highest market share?

North America is expected to hold the highest market share.

Which end-user segment is expected to record the highest CAGR?

By end-user, the short-term traders segment is expected to record the highest CAGR.

  • Global
  • 2023
  • 2019-2022
  • 150
  • PRICE
  • $ 4850
    $ 5850
    $ 6850
    Buy Now

Information & Technology Clients