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    <title>Quant on Bits, Trades &amp; Systems</title>
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      <title>A Software Engineer Plays Quant: Building a Market-Data Research Stack in Python</title>
      <link>https://blog.turboawesome.win/2026/05/a-software-engineer-plays-quant-building-a-market-data-research-stack-in-python/</link>
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      <description>I spent a decade building the systems trading firms run on, without ever being the person making the trading decisions. This is the first post in a series where I cross the floor — a software engineer applying engineering discipline to market-data analysis in Python with numpy and pandas. Starting with the unglamorous foundation everything else depends on.</description>
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