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The Blushing Quants Podcast

The Blushing Quants Podcast

Released: 2026-03-19
© Copyright 2025 All rights reserved.
The Blushing Quants Podcast - QR Code
14 Episodes
Audio
Listen on Apple Podcasts
14 Episodes
Audio
Listen on Apple Podcasts
Released: 2026-03-19
© Copyright 2025 All rights reserved.
Most Recent Episode
Robert Tratt: 25 Years in Markets - From Prop Trader to Sharpe 4 Systems | Blushing Quants #14

Robert Tratt: 25 Years in Markets - From Prop Trader to Sharpe 4 Systems | Blushing Quants #14

Robert is a London-based systematic trader with 25+ years in markets. He started in the early 2000s prop trading futures, survived the no-simulator era, and evolved from discretionary trading into fully systematic research and automation. Today, he buil
Time: 1:16:07
Robert is a London-based systematic trader with 25+ years in markets. He started in the early 2000s prop trading futures, survived the no-simulator era, and evolved from discretionary trading into fully systematic research and automation. Today, he builds short-term strategies across equity indices and rates futures, and has recently helped a large institution stand up a proprietary trading team.
In this episode, we get practical about how an independent trader thinks and operates: finding edges in intermarket relationships, turning market intuition into systematic decision trees, and building portfolios that aim for strong Sharpe with positive skew. Rob also breaks down how he approaches regime awareness and robustness, in-sample vs out-of-sample work, and why walk-forward style processes are harder than they sound when you actually care about “the right trades", not just the best backtest. We also talk about the fundraising catch-22 for independents and why selling signals and research can be a smarter wedge than trying to raise a big flagship fund on day one.
 
*DISCLAIMER*
The information shared on this podcast is for educational and informational purposes only and reflects the personal opinions of the hosts and guests at the time of recording. Nothing in this podcast constitutes financial, investment, legal, tax, or trading advice, and nothing should be interpreted as a recommendation to buy, sell, or hold any security, cryptocurrency, derivative, or financial product.
Trading and investing involve substantial risk, including the possible loss of all or part of your capital. You are solely responsible for your own decisions, and you should consult a qualified professional before making financial decisions. By listening to this podcast, you agree that the hosts, guests, and producers are not liable for any losses or damages arising from the use of any information discussed.
Episode ID: 1000756148397
GUID: theblushingquants.podbean.com/c3cf94d5-8aad-318f-be56-dd8e474e364a
Release Date: 19/03/2026, 19:30:00

Description

The Blushing Quants is a candid look at the intersection of quantitative finance and machine learning. We discuss the hard truths of building ML-based investment systems. What works, what fails, and why. We leave the LLMs to the chatbots and focus on the heavy hitters of quantitative finance: Neural Networks, Time Series Analysis, and Statistical Learning.
*DISCLAIMER*
The information shared on this podcast is for educational and informational purposes only and reflects the personal opinions of the hosts and guests at the time of recording. Nothing in this podcast constitutes financial, investment, legal, tax, or trading advice, and nothing should be interpreted as a recommendation to buy, sell, or hold any security, cryptocurrency, derivative, or financial product.
Trading and investing involve substantial risk, including the possible loss of all or part of your capital. You are solely responsible for your own decisions, and you should consult a qualified professional before making financial decisions. By listening to this podcast, you agree that the hosts, guests, and producers are not liable for any losses or damages arising from the use of any information discussed.

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