Due to copyright reports and some issues affecting our previous contact channels, we’ve officially moved to new accounts to ensure smooth and reliable communication with everyone.
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Thank you for staying connected with us — we’re back, stronger and more secure than before. 💪
In high-frequency trading (HFT), your “edge” comes from reacting to these microsecond-level dynamics faster and smarter than competitors.
So the challenge isn’t just prediction — it’s prediction under latency + noise + regime change.
🧠 2. Should You Use ML for HFT?
Short answer: ✅ Yes — ML can help with pattern detection, classification, microstructure understanding, ❌ But not every ML method fits real HFT constraints (latency, stability, slippage).
You don’t want a 100-million-parameter Transformer doing inference while your competitor executes in 200 µs.
So: Use ML carefully, focusing on fast, robust, interpretable models.
🔬 3. ML Models That Actually Work in Market Microstructure
Here’s what top proprietary firms and academic papers use effectively:
Rank
Model
Why It Works
🥇 Temporal Convolutional Networks (TCN)
Captures short-term temporal dependencies; faster than LSTMs; can process dense tick data.
Predict short-term price direction / order imbalance
🥈 LSTM / GRU (lightweight)
Sequential pattern modeling; works well if trained on event-based data.
“Now we were sending out orders before the data packet arrived.” Korean trading. Fun and games with Japanese infrastructure. The Toronto – New Jersey interlisted arb. How not to negotiate multi-million dollar deals. Reverse engineering the ASX. Building the world’s fastest (at the time) network switch and matching engine. Killing canaries. The ATS that wasn’t. Lots of reading fun to be had by all.
I started my HFT career at one of the larger American trading firms as a C++ jockey. On my first day, I was greeted by full panes of glass boasting glorious Sydney Harbour views which were modestly obscured by a hand-scrawled “< 2ms” on that glass. This was the main goal for the dozen of us in IT. That wasn’t my remit at the start though. First things first…