Alternative Data Providers

Top 10 Alternative Data Providers and APIs – Datarade

Alternative data can mean essentially anything. Whether we talk about data collected from satellite imagery, scraped website data, or information collected upon point of sales, they all have one thing in common; hedge funds, asset managers and financial insitutions love them.
Why?
Alternative data is mainly used during financial analysts to predict a stock’s performance more accurately. Quality predictions can give an investor a competitive edge over others, thus being able to beat the average market returns. This difference is called the alpha.
With strong evidence of data’s power in financial analysis, there is a rising number of market research companies using cutting-edge technologies that provide a variety of alternative data for different markets.
How do you as an investor make sure that you’re talking to a provider who can take your decisions to the next level?
While there are many criteria to data quality which are often determined by your specific use case, there are a few companies which stand above the others.
We compiled a list of the top 10 alternative data companies on our platform. The list is here to help you get started in your search for alpha.
With over 700, 000 public and private companies in their database, Thinknum enables strategists to create investment ideas rooted in alternative data. The company’s time specific data series helps both research firms and institutional investors in issues from alpha generation to risk mitigation. Thinknum indexes all of their real-time data trails using proprietary machine-learning techniques in order to offer directly actionable insights.
Quexopa is the leading alternative data provider for the South American markets. Headquartered in Panama, the company brings Latin American transaction insights into the fingertips of financial institutions and governments. In Mexico alone, Quexopa, covers over 250, 000 accounts with over 5 million monthly transactions.
Yewno has its focus on creating a fully comprehensive knowledge graph for hedge funds and asset managers. The company collects information from events and the public data which is then put into their artificial intelligence to enable financial professionals with actionable insights on topics like ESG, Patent Analytics, distinct alpa signals and many more.
Providing low latency quality information and investment signals, Infotrie’s API gives financial leaders new routes to investment strategies and alpha generation. As an alternative data and fintech specialist the company has data on over 50, 000 stocks in global markets, covering the US, Europe, Asia, Australia, and even South America.
Based in the US, Caretta provides alternative data for clients who are looking to screen for crowded stocks, manage risks, and benchmark their investor performance against others. Their wide coverage of collected, and analyzed long/short ownership data is derived by using state-of-the-art technology.
By building a bridge between new technology and timely macro strategy Exante Data has enabled an extraction of price signals from detailed capital flow analysis. Offering more than 10, 000 data series for more than 30 countries globally the company complements hard data and raw model outputs with timely, narrative-based content, focusing on key global thematics and risk scenarios.
With more than 19, 000 news and social media sources RavenPack Analytics is one of the leading alternative data providers for alpha generation and risk management. With the company’s offering, hedge funds can gain access to analytics based on content across the last 20 years. All of their analytics are produced on entity basis and include scores for relevance, and sentiment.
Brain is a data research company providing alternative datasets through Natural Language Processing (NLP) and machine learning (ML) infrastructures. The company has used these technologies to create a sentiment indicator which measures the “mood” of about 8500 global stocks. Selling these proprietary signals makes BRAIN an interesting player in the Alternative Data ecosystem.
Suburbia provides alternative insights by gathering point-of-sale transactions from scalable sources across geographies. Founded in 2018 and headquartered in Netherlands, Suburbia partners with other companies in the payments ecosystem in order to capture evn cash payments – which are still a big portion of the general trade in many european economies like Germany.
With their web-scraped data from over 1 billion websites, Accern has enabled intelligent decision making for some of the most prestigious financial services firms in the world. The company’s solutions influence 100+ billion in AUM every single year. By scraping public news/blog websites Accern produces actionable financial information while maintaining strict policy in their data quality.
Top 10 Alternative Data Providers and APIs - Datarade

Top 10 Alternative Data Providers and APIs – Datarade

Alternative data can mean essentially anything. Whether we talk about data collected from satellite imagery, scraped website data, or information collected upon point of sales, they all have one thing in common; hedge funds, asset managers and financial insitutions love them.
Why?
Alternative data is mainly used during financial analysts to predict a stock’s performance more accurately. Quality predictions can give an investor a competitive edge over others, thus being able to beat the average market returns. This difference is called the alpha.
With strong evidence of data’s power in financial analysis, there is a rising number of market research companies using cutting-edge technologies that provide a variety of alternative data for different markets.
How do you as an investor make sure that you’re talking to a provider who can take your decisions to the next level?
While there are many criteria to data quality which are often determined by your specific use case, there are a few companies which stand above the others.
We compiled a list of the top 10 alternative data companies on our platform. The list is here to help you get started in your search for alpha.
With over 700, 000 public and private companies in their database, Thinknum enables strategists to create investment ideas rooted in alternative data. The company’s time specific data series helps both research firms and institutional investors in issues from alpha generation to risk mitigation. Thinknum indexes all of their real-time data trails using proprietary machine-learning techniques in order to offer directly actionable insights.
Quexopa is the leading alternative data provider for the South American markets. Headquartered in Panama, the company brings Latin American transaction insights into the fingertips of financial institutions and governments. In Mexico alone, Quexopa, covers over 250, 000 accounts with over 5 million monthly transactions.
Yewno has its focus on creating a fully comprehensive knowledge graph for hedge funds and asset managers. The company collects information from events and the public data which is then put into their artificial intelligence to enable financial professionals with actionable insights on topics like ESG, Patent Analytics, distinct alpa signals and many more.
Providing low latency quality information and investment signals, Infotrie’s API gives financial leaders new routes to investment strategies and alpha generation. As an alternative data and fintech specialist the company has data on over 50, 000 stocks in global markets, covering the US, Europe, Asia, Australia, and even South America.
Based in the US, Caretta provides alternative data for clients who are looking to screen for crowded stocks, manage risks, and benchmark their investor performance against others. Their wide coverage of collected, and analyzed long/short ownership data is derived by using state-of-the-art technology.
By building a bridge between new technology and timely macro strategy Exante Data has enabled an extraction of price signals from detailed capital flow analysis. Offering more than 10, 000 data series for more than 30 countries globally the company complements hard data and raw model outputs with timely, narrative-based content, focusing on key global thematics and risk scenarios.
With more than 19, 000 news and social media sources RavenPack Analytics is one of the leading alternative data providers for alpha generation and risk management. With the company’s offering, hedge funds can gain access to analytics based on content across the last 20 years. All of their analytics are produced on entity basis and include scores for relevance, and sentiment.
Brain is a data research company providing alternative datasets through Natural Language Processing (NLP) and machine learning (ML) infrastructures. The company has used these technologies to create a sentiment indicator which measures the “mood” of about 8500 global stocks. Selling these proprietary signals makes BRAIN an interesting player in the Alternative Data ecosystem.
Suburbia provides alternative insights by gathering point-of-sale transactions from scalable sources across geographies. Founded in 2018 and headquartered in Netherlands, Suburbia partners with other companies in the payments ecosystem in order to capture evn cash payments – which are still a big portion of the general trade in many european economies like Germany.
With their web-scraped data from over 1 billion websites, Accern has enabled intelligent decision making for some of the most prestigious financial services firms in the world. The company’s solutions influence 100+ billion in AUM every single year. By scraping public news/blog websites Accern produces actionable financial information while maintaining strict policy in their data quality.
Alternative data (finance) - Wikipedia

Alternative data (finance) – Wikipedia

Alternative data (in finance) refers to data used to obtain insight into the investment process. [1][2] These data sets are often used by hedge fund managers and other institutional investment professionals within an investment company. [3][4][5] Alternative data sets are information about a particular company that is published by sources outside of the company, which can provide unique and timely insights into investment opportunities. [3][6][7]
Alternative data sets are often categorized as big data, [8] which means that they may be very large and complex and often cannot be handled by software traditionally used for storing or handling data, such as Microsoft Excel. An alternative data set can be compiled from various sources such as financial transactions, sensors, mobile devices, satellites, public records, and the internet. [3][6][9][10][11] Alternative data can be compared with data that is traditionally used by investment companies such as investor presentations, SEC filings, and press releases. [6][12] These examples of “traditional data” are produced directly by the company itself.
Since alternative data sets originate as a product of a company’s operations, these data sets are often less readily accessible and less structured than traditional sources of data. [3][13] Alternative data is also known as “exhaust data. ”[14] The company that produces alternative data generally overlooks the value of the data to institutional investors. During the last decade, many data brokers, aggregators, and other intermediaries began specializing in providing alternative data to investors and analysts. [15][16]
Types[edit]
Examples of alternative data include:
Geolocation (foot traffic)
Credit card transactions
Email receipts
Point-of-sale transactions
Web site usage
Mobile App or App Store analytics
Obscure city hall records
Satellite images
Social media posts[17][18]
Online browsing activity
Shipping container receipts
Product reviews
Price trackers
Shipping trackers
Internet activity and quality data
Example of sentiment analysis against stock price (S&P 500)
Uses[edit]
Alternative data is being used by fundamental and quantitative institutional investors to create innovative sources of alpha. The field is still in the early phases of development, yet depending on the resources and risk tolerance of a fund, multiple approaches abound to participate in this new paradigm. [19][20]
The process to extract benefits from alternative data can be extremely challenging. The analytics, systems, and technologies for processing such data are relatively new and most institutional investors do not have capabilities to integrate alternative data into their investment decision process. [21] However, with the right tools and strategy, a fund can mitigate costs while creating an enduring competitive advantage. [19]
Most alternative data research projects are lengthy and resource intensive; therefore, due-diligence is required before working with a data set. The due-diligence should include an approval from the compliance team, validation of processes that create and deliver this data set, and identification of investment insights that can be additive to the investment process. [19][22]
However, the usage of the alternative data is not restricted by investment sphere, it’s successfully used in economics and politics as well as retail and e-commerce spheres. It’s possible to predict geopolitical risk through a profound alternative data analysis, while social media sites reveal a host of data for consumer sentiment analysis.
Methodology[edit]
Alternative data can be accessed via:
Web scraping (or web Harvesting, performed by computer programmers that design an algorithm that searches websites for specific data on a desired topic)[23]
Acquisition of Raw data
Third-party Licensing
Analysis[edit]
In finance, Alternative data is often analysed in the following ways:
Scarcity: the data Information overload within financial markets
Granularity: the level of detail and aggregation of data (including time)
History: the trajectory of data
Structure: the form of the data (csv, json etc. )
Coverage: the stocks or geographical locations that data can be linked with
Best practices[edit]
While compliance and internal regulation are widely practiced in the alternative data field, there exists a need for an industry-wide best practices standard. Such a standard should address personally identifiable information (PII) obfuscation and access scheme requirements among other issues. Compliance professionals and decision makers can benefit from proactively creating internal guidelines for data operations. Publications such as NIST 800-122[24] provide guidelines for protecting PII and are useful when developing internal best practices. Investment Data Standards Organization (IDSO) was established to develop, maintain, and promote industry-wide standards and best practices for the Alternative Data industry.
Web Scraping[edit]
Legal aspects surrounding web scraping of alternative data have yet to be defined. Current best practices address the following issues when determining legal compliance of web crawling operations:
Review of the terms and conditions associated with the websites crawled
Control over the potential interference with crawled websites
Web scraped data refers to data harvested from public websites. With 4 billion webpages and 1. 2 million terabytes of data on the internet, there is a mountain of information that can be valuable to investors when analyzing a corporate performance.
The companies that specialize in this type of data collection, like Thinknum Alternative Data, [25][26][27] write programs that access targeted websites and collect and store the scraped information on a periodic basis. In some cases web scraping requires use of public APIs as a way to access the data within those pages directly without visiting the actual website.
Types of web scraped data include:
Job listings: A company that is increasing hiring and headcount is likely experiencing growth.
Company ratings: Sites like Glassdoor allows employees to rate their company; increasing ratings, especially (in conjunction with increasing job listings) can be another growth indicator.
Online retail data: High product rankings on online retailers suggest strong sales for those product manufacturers. On the flip side, heavy discounting of products suggest weak sales. [28]
Standards Board for Alternative Investment (SBAI) is the global standard-setting agency for the alternative investment industry and guardian of the Alternative Investment Standards. The agency supported by approximately 200 alternative investment managers and institutional investors and collectively manage $3. 5 trillion. The SBAI has published the Standardised Trial Data License Agreement which addresses investment managers’ issues when comes to new data trailing process, like alternative data and big data. [29] Thomas Deinet, Executive Director of the SBAI said: “This Trial Data Licence Agreement template highlights a number of very important issues, including personal data protection, which has become a hot topic in light of the overhaul of data protection regulation in many jurisdictions. It also includes key protections for managers in areas such as prevention of insider trading and ‘right to use data’. It is crucial that managers and data vendors fully understand all risks when selling and using new data. “[30]
See also[edit]
Fintech
References[edit]
^ Z., W. (2016-08-22). “Why investors want alternative data”. The Economist. Retrieved 21 August 2017.
^ Flanagan, Terry (2016-12-07). “‘Early Days’ For Alternative Data”. Markets Media. Retrieved 21 August 2017.
^ a b c d Kolanovic, Marko; Krishnamachari, Rajesh. “Big Data and AI Strategies – Machine Learning and Alternative Data Approach to Investing”. RavenPack. J. P. Morgan, Global Quantitative & Derivatives Strategy. Archived from the original on July 22, 2018. Retrieved June 29, 2017.
^ Nathan, Krishna (2017-01-03). “What is ‘alternative data’ and how can you use it? “. CIO. Retrieved 20 August 2017.
^ Belissent, Jennifer (2017-06-23). “The Age of Alt: Data Commercialization Brings Alternative Data To Market”. Forrester Research. Forrester Research, Inc. Retrieved 20 August 2017.
^ a b c “Searching for Alpha: Big Data. Navigating New Alternative Datasets”. Eagle Alpha. Citi Research. Retrieved July 3, 2017.
^ Hafez, Peter. “Data Hoarding and Alternative Data In Finance – How to Overcome the Challenges”. RavenPack.
^ Savi, Raffaele; Shen, Jeff; Betts, Brad; MacCartney, Bill. “The Evolution of Active Investing Finding Big Alpha in Big Data” (PDF). BlackRock. Retrieved August 9, 2017.
^ Kilburn, Faye (2017-07-19). “Quants look to image recognition to process alternative data”. Retrieved 21 August 2017.
^ Sapnu, Raquel. “Why Alternative Data is the New Financial Data for Industry Investors”. Datafloq. Retrieved 21 August 2017.
^ Barnes, Dan (2017-07-02). “The role of data in gaining valuable financial insights”. Raconteur. Raconteur Media Ltd. Retrieved 21 August 2017.
^ Turner, Matt. “This is the future of investing, and you probably can’t afford it”. Business Insider. Retrieved 11 August 2017.
^ Iati, Robert. “Alternative Data: The Hidden Source of Alpha” (PDF). Dun & Bradstreet. Retrieved August 9, 2017.
^ Noyes, Katherine (2016-05-13). “5 things you need to know about data exhaust”. Computer World. IDG News. Retrieved 11 August 2017.
^ Levy, Rachael. “Hedge funds are tracking your every move, and ‘it’s the future of investing”. Retrieved 21 August 2017.
^ Wigglesworth, Robin. “Investors mine Big Data for cutting-edge strategies”. Financial Times. Retrieved 21 August 2017.
^ Borzykowski, Bryan (2016-06-09). “How investors are using social media to make money”. Retrieved August 3, 2017.
^ Wieczner, Jen. “How Social Media Is Helping Investors Make Money”. Fortune. Retrieved August 4, 2017.
^ a b c Ekster, Gene. “Driving Investment Performance with Alternative Data”. Integrity Research. Retrieved August 2, 2017.
^ McPartland, Kevin. “Alternative Data for Alpha” (PDF). GREENWICH ASSOCIATES. Retrieved 11 August 2017.
^ Najork, Marc; Heydon, Allan (2002). Handbook of Massive Data Sets. Springer US. pp. 25–45. doi:10. 1007/978-1-4615-0005-6. ISBN 9781461348825.
^ Ekster, Gene (2015-08-19). “Alternative Data Cross-functional Teams and Workflow”. Retrieved August 7, 2017.
^ Ekster, Gene (2016-05-02). “Mitigating Alternative Data Compliance Risks Associated with Web Crawling”. Retrieved June 20, 2017.
^ McCallister, Erika; Grance, Tim; Scarfone, Karen. “National Institute of Standards and Technology Special Publication 800-122: Guide to Protecting the Confidentiality of Personally Identifiable Information (PII)” (PDF). National Institute of Standards and Technology. Retrieved June 25, 2017.
^
^ Johnson, Richard. “Alternative Data in Action: Web-Scraping. ” 14 January 2019
^ “SBAI Publishes Standardised Trial Data License Agreement” 6 February 2019. Retrieved 15 May 2019. [permanent dead link]
^ “SBAI publishes Standardised Trial Data License Agreement. “6 February 2019. Retrieved 15 May 2019.
Further reading[edit]
Alexander Denev and Saeed Amen, The Book of Alternative Data: A Guide for Investors, Traders and Risk Managers (Wiley 2020)
Marko Kolanovic and Rajesh T. Krishnamachari, Big Data & AI Strategies: Machine Learning and Alternative Data Approach to Investing (JP Morgan 2018)

Frequently Asked Questions about alternative data providers

What are alternative data providers?

The Top 10 Alternative Data Providers and APIsThinknum. With over 700,000 public and private companies in their database, Thinknum enables strategists to create investment ideas rooted in alternative data. … QueXopa. … Yewno. … InfoTrie. … Caretta. … Exante Data. … RavenPack. … Brain Company.More items…•Mar 10, 2020

Where can I get alternative data?

Examples of alternative data include:Geolocation (foot traffic)Credit card transactions.Email receipts.Point-of-sale transactions.Web site usage.Mobile App or App Store analytics.Obscure city hall records.Satellite images.More items…

How many alternative data providers are there?

Spending on this data is expected to surpass $1 billion by 2020. In fact, more than 400 alternative data suppliers exist on the market today, so demand and use will only increase.

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