Opening Cross: Hey, CERN, ‘Negative Latency’ Is Old News

The recent news that CERN, the European Organization for Nuclear Research, has apparently managed to transmit neutrino particles over a distance of more than 700 kilometers faster than the speed of light, has a lot of people in the data industry—where data latency is a big deal—very excited. However, while many are trying to achieve light speed (never mind even faster—after all, light isn’t necessarily the fastest thing; it’s simply the fastest that we know about), others are concentrating on something that can’t be achieved with faster hardware alone: “negative latency.”
For some time, I’ve been looking for a term that would encompass the new products and services that try to give traders an edge by creating information that pre-empts an event, rather than trying to just get information about an event to the trader as soon as possible after it occurs. And at last week’s European Financial Information Summit, I found just the catchphrase, courtesy of industry analyst Bob Giffords, who says he’s been banging on about the concept for years.
“With ultra-high-frequency trading, what you see is no longer what you get, even for co-located trading engines. So traders are now trying to anticipate market moves rather than just react to them. This creates a search for ‘negative latency’—the ability to take trading decisions in advance of the tape, even before you see a price move. In this scenario, the price feed is used increasingly to corroborate or calibrate the predictive model, rather than as the trigger for a decision,” Giffords says.
“The search for negative latency is leading to detailed analysis of tick data behavior in the sub-millisecond range and correlations between different asset classes. Over the past few years, research suggests this has become increasingly autocorrelated rather than random. This gives rise to inevitable micro-oscillations which are essentially noise. Some traders are even applying FPGA-based pattern-matching to recognize and respond to such complex patterns in real time,” Giffords adds.
However, I’d like to extend the concept beyond the high-performance trading space to encompass new types of data and analytics designed to act as an early proxy for traditional data. For example, industry messaging cooperative Swift recently announced the Global Swift Index, which will use message traffic over its payments network as a proxy for GDP data. The aim: predict economic figures before they are released by countries. Another example is MarketPsych’s upcoming Market Risk Index, which uses social media chatter to gauge stock sentiment, and apply that to market movements, to predict when prices will rise or fall.
The concept is also being used by long investors as a new component of research and commentary services, creating “ecosystems” that monitor everything around a company or sector to understand when something will affect that company before the rest of the market finds out—not by lowering technical latency after the fact, but by finding out before news breaks. For example, there is a lot of value to finding out about a fire that shut down a relatively unknown factory in China if that factory supplies minor yet crucial components to a major technology vendor—it could slow down production, impact quarterly sales, and ultimately cause its share price to drop. The “negative latency” component of this isn’t being the quickest to find out about the fire; it’s about knowing about the factory and what it produces in the first place.
Using intelligence to get ahead of the market in these ways potentially eliminates latency concerns of trying to be the first to capture and respond to price movements—though it may introduce a new wave of latency issues if everyone tries to identify and act on the same leading indicators. And then, CERN’s faster-than-light tests might take on new meaning for the markets.
Only users who have a paid subscription or are part of a corporate subscription are able to print or copy content.
To access these options, along with all other subscription benefits, please contact info@waterstechnology.com or view our subscription options here: https://subscriptions.waterstechnology.com/subscribe
You are currently unable to print this content. Please contact info@waterstechnology.com to find out more.
You are currently unable to copy this content. Please contact info@waterstechnology.com to find out more.
Copyright Infopro Digital Limited. All rights reserved.
As outlined in our terms and conditions, https://www.infopro-digital.com/terms-and-conditions/subscriptions/ (point 2.4), printing is limited to a single copy.
If you would like to purchase additional rights please email info@waterstechnology.com
Copyright Infopro Digital Limited. All rights reserved.
You may share this content using our article tools. As outlined in our terms and conditions, https://www.infopro-digital.com/terms-and-conditions/subscriptions/ (clause 2.4), an Authorised User may only make one copy of the materials for their own personal use. You must also comply with the restrictions in clause 2.5.
If you would like to purchase additional rights please email info@waterstechnology.com
More on Trading Tech
Bolsa Mexicana embarks on multi-year modernization project
Latin America’s second largest exchange is embracing cloud and upgrading its infrastructure in a bid to bolster its global standing, says CEO.
S&P’s $1.8 billion buy, an FIA restructure, a tokenization craze, and more
The Waters Cooler: CAIS creates CAISey, BNY deploys EquiLend, and more in this week’s news roundup.
Bloomberg integrates AI summaries into Port
One buy-side user says that while it’s still early for agentic tools, they’re excited by what they’ve seen so far.
Larry Fink: ‘We need to be tokenizing all assets’
The asset manager is currently exploring tokenizing long-term investment products like iShares, with an eye on non-financial assets down the road.
Examining how adaptive intelligence can create resilient trading ecosystems
Researchers from IBM and Wipro explore how multi-agent LLMs and multi-modal trading agents can be used to build trading ecosystems that perform better under stress.
S&P Global partners with IBM, Eventus launches Frank AI, Tradeweb expands algo execution abilities, and more
The Waters Cooler: Arcesium makes waves with Aquata Marketplace, NYSE Cloud flows into Blue Ocean Technologies, and more in this week’s news roundup.
Robinhood looks to ‘Chaos Monkey’ for op resilience playbook
As firms look to break down silos across business divisions to bolster operational resilience, the US broker is ditching emails, while utilizing chaos engineering and automating everything in sight.
Bank of America’s GenAI plan wants to avoid ‘sins of the past’
Waters Wrap: Anthony spoke with BofA’s head of platform and head of technology to discuss how the bank is exploring new forms of AI while reducing tech debt and growing interoperability.