Retail Trading Infrastructure

Retail investors demanding sophisticated passive investment strategies are looking for an edge.

Overview

Retail trading infrastructure for low-cost and flexible wealth management

Retail trading and wealth management have seen significant changes as a result of digital transformation. Among these, the emergence of robo-advisory platforms has been among the most notable developments. Robo-advisory platforms use algorithms to provide automated investment advice and management services (asset allocation, portfolio rebalancing, and other related services) based on clients’ investment goals and risk tolerance. Most use either low-cost exchange-traded funds (ETFs) or index funds as investment vehicles.

Apart from robo-advisory services, online trading platforms have also emerged as a tool for investors to trade various securities such as stocks, ETFs, and options directly via digital platforms, luring investors with commission-free trading facilities. While robo-advisors offer investors a passive form of investing, online trading platforms enable investors to actively engage in day-to-day trading activities.

Industry Updates

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Market Sizing

The US market for retail robo-advisory platforms could reach USD 17.4 billion–25.8 billion by 2028

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Market Mapping


The retail trading industry comprises robo-advisors, online trading platforms, and digital infrastructure providers. Among robo-advisors, the industry is further split into three segments, based on their product offering (hybrid vs. digital) and target market.

Robo-advisors that offer hybrid services to consumers and online trading platforms contribute to the bulk of companies in the industry and include established players such as Wealthsimple, Betterment, and Robinhood. The robo-advisory (B2C: Hybrid) segment hosts several incumbents such as Vanguard, Charles Schwab, and Wells Fargo. Robo-advisors that are digital pure players include the likes of M1 Finance, Acorns, and Wealthfront, while those that offer B2B services are limited and include a few companies such as Guideline and Blooom.

Online trading platforms mainly focus on directly offering trading options to consumers and include established players such as Robinhood, Webull, and Moomoo. Players in the space have also branched out to offer cryptocurrency, futures, and commodities trading and banking services.

The Disruptors


Wealthsimple stands as the highest-funded disruptor in the robo-advisory space, with a total of USD 900.4 million as of June 2024. The company is a hybrid operator in the B2C space, combining digital robo advisory with human expertise, and holds a significant lead over the second-largest player in the space, Betterment, which had USD 435.0 million in funding as of the same date.

Other notable players include Scalable Capital, Wealthfront, and SigFig, which have been around for more than a decade and are well known in the robo advisory space. These companies compete in the mass market by offering a wide variety of features. Both Betterment and SigFig have also partnered with businesses, such as advisory firms and banks, to expand their respective client bases.

Smaller players often differentiate themselves by catering to specific clientele (such as female investors, non-resident investors, Halal investing, and employer-sponsored retirement accounts), responding to the fact that customers tend to feel more secure with personalized services rather than the generic offerings.

Among online trading platforms, Robinhood stands as the largest player and is also the only publicly-traded company in the space, having been listed on the NASDAQ in July 2021 at a valuation of USD 32 billion. Other notable players include Trade Republic, Public.com, and eToro, who have collectively raised over USD 2 billion in funding to date.

Funding History

Competitive Analysis


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Product Overview
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Incumbents


Incumbents mainly enter the retail trading space through in-house development and acquisitions

The incumbents include financial institutions such as asset management companies, brokerages, advisory firms, and banks. Most provide digital services primarily to accommodate demand for low-cost advisory services from existing clients and sophisticated investors. The incumbents generally charge slightly higher fees than the disruptors (e.g. 0.30% vs. 0.25%) and require higher minimum balances for standard services.

The incumbents have mainly participated in the industry through in-house developments, acquisitions, and partnerships, with the major players commonly developing their own proprietary platforms. With advances in technology, companies have scaled rapidly to dominant positions.

Some players made their entrance into the industry marked via acquisitions and partnerships designed to capture market share faster. One of the earliest through this avenue was BlackRock, via the acquisition of robo-advisory startup FutureAdvisor in 2015. More notable recent examples include Goldman Sachs when it acquired United Capital in May 2019 and Empower Retirement when it acquired Personal Capital in June 2020.

Many large incumbents have branched out to develop both robo-advisory services and online trading platforms. Morgan Stanley, for instance, developed and launched its own robo-advisory service “Access Investing” in 2017. In 2020, the company entered the online trading space by acquiring E*Trade Financial Corporation.

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Notable Investors


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Overview

Retail trading infrastructure: The future of low-cost wealth management

Retail trading infrastructure encompasses the digitization of wealth management solutions, which enables individuals, businesses, and financial advisors to carry out wealth management activities via digital platforms. This has taken many forms and includes new developments such as robo-advisors, online trading platforms, and digital infrastructure solutions.
The development of retail trading infrastructure has been enabled by many factors, with technological advancements such as high smartphone penetration being at the forefront.
Additionally, growing smartphone penetration, machine learning, and big data are the key technologies that have facilitated the development of robo-advisory and online trading platforms. In its early stages, the industry attracted younger generations that lacked investment experience, and those who could not meet the minimum investment requirements of traditional advisory firms. With time, wider service offerings (such as hybrid services and B2B) have drawn in other demographic groups, including the mass affluent, predominantly baby boomers.

Retail trading infrastructure segmentation based on product offering

Retail trading platforms offer automated investment services, reducing the need for human advisors and brokers

Robo-advisory platforms use algorithms to provide automated investment advice and management services (asset allocation, portfolio rebalancing, and other related services) based on clients’ investment goals and risk tolerance. Machine learning algorithms use data to determine optimal asset allocations (i.e. to generate either the highest returns for a given level of risk or the lowest risk for a given level of return). Machine learning algorithms have grown increasingly complex over time, and have enabled platforms to create more tools such as for tax-loss harvesting (i.e., selling an asset at a loss to offset capital gain taxes), cash flow management, and retirement planning.
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