Selling Signals - the Data Monetisation Podcast

Brad Preston: Alternative Data in Emerging Markets

45 min · I går
episode Brad Preston: Alternative Data in Emerging Markets cover

Description

In this episode, we’re joined by Brad Preston, founder of Beagleworks. Brad spent two decades on the buyside in South Africa before moving into data and research, giving him a rare perspective on how alternative data gets used outside the US and Europe. We discuss what makes emerging markets different for data providers, why pricing needs to reflect liquidity and stock coverage, and how Brad thinks about the line between raw data and research. A highlight of the conversation is Brad walking through how he would evaluate a hypothetical South African consumer receipt dataset, from the economics of the market to the questions it could help investors answer. This episode is essential listening for anyone selling alternative data into smaller or less mature markets, or trying to understand what buyside users really need before a dataset becomes useful.

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13 episodes

episode Brad Preston: Alternative Data in Emerging Markets artwork

Brad Preston: Alternative Data in Emerging Markets

In this episode, we’re joined by Brad Preston, founder of Beagleworks. Brad spent two decades on the buyside in South Africa before moving into data and research, giving him a rare perspective on how alternative data gets used outside the US and Europe. We discuss what makes emerging markets different for data providers, why pricing needs to reflect liquidity and stock coverage, and how Brad thinks about the line between raw data and research. A highlight of the conversation is Brad walking through how he would evaluate a hypothetical South African consumer receipt dataset, from the economics of the market to the questions it could help investors answer. This episode is essential listening for anyone selling alternative data into smaller or less mature markets, or trying to understand what buyside users really need before a dataset becomes useful.

Yesterday45 min
episode Jordan Hauer: Taking Stock of the Alternative Data Industry artwork

Jordan Hauer: Taking Stock of the Alternative Data Industry

In this episode of Selling Signals, we’re joined by Jordan Hauer, Founder and CEO of Amass Insights. Through Amass, Jordan helps investment firms discover, evaluate, and source datasets while also helping data providers better understand and monetise their assets. Having spent more than a decade at the centre of the market, Jordan has a unique perspective on how alternative data has evolved, from the industry’s early days of scarce and highly differentiated datasets to today’s world of abundant data and rapidly advancing AI tools. We discuss which datasets are seeing the strongest demand in 2026, how funds evaluate new data sources, and why sales cycles remain stubbornly long despite significant improvements in the market. Jordan also shares his views on trials, pricing, backtesting, and the common mistakes data providers make when trying to sell to investment firms. Whether you’re a data provider, investor, or anyone building in the data economy, this episode offers a valuable look at where the industry is heading next.

12. juni 202656 min
episode Jonathan Chin: Building a Tier 1 Dataset artwork

Jonathan Chin: Building a Tier 1 Dataset

In this episode of Selling Signals, we’re joined by Jonathan Chin, co-founder of Facteus and author of Data-Minded. Jonathan brings a founder’s view on what it takes to build a transaction data provider trusted by institutional investors. We talk about why data businesses do not behave like SaaS companies. Data often sells optionality rather than a fixed outcome, which changes the way buyers evaluate products. Jonathan explains where SaaS playbooks break down, what still carries across and why data quality issues are different from software bugs. We also discuss aggregation, alpha decay and the role of AI in the future of alternative data. A big part of the conversation focuses on whether alternative datasets could become part of future model training rather than simply being queried through tools or MCP servers.

28. maj 202642 min