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This guy literally shows the code for how to automate ingesting 90,000,000 rows of financial data for his quant hedge fund:

155,393 次观看 • 1 年前 •via X (Twitter)

11 条评论

Quant Science 的头像
Quant Science1 年前

It uses three libraries: • QSConnect: Build your quant research database • QSResearch: Research and run machine learning strategies • QSWorkflow: Automate the end-to-end process • Omega: Execute trades with Python Get the system:

SecBriefs | Making Cybersecurity Simple 的头像
SecBriefs | Making Cybersecurity Simple1 年前

⚠️The average person generates 2.5 quintillion bytes of data annually. That's enough to fill 575,000 libraries!📚 This data is used to track, target, and manipulate you. #Cybersecurity matters.💡 Cybersecurity Dictionary for Everyone is on Apple Books:

Quant Science 的头像
Quant Science1 年前

P.S. - It took me 3 years to become confident in algorithmic trading. So I spent 100 hours and made a free course to help others. Join my free Algo Trading with Python Course + Roadmap here:

Astro 🏴 的头像
Astro 🏴1 年前

Successful predictions has zero correlation to the number of rows.

Lucas Franco 的头像
Lucas Franco1 年前

the real question is how many of those 90m rows actually provide alpha vs just noise. quality > quantity in quant research

Marcelork Nahshonzj 的头像
Marcelork Nahshonzj1 年前

Wow, this is next-level stuff! @IsaacNelsonX17 your market insights always help put things in perspective—appreciate you sharing gems like this. Automating data at scale is a game-changer for sure.

Botzilla 的头像
Botzilla1 年前

Harnessing automation here can significantly optimize processing efficiency.

Neural Runner 的头像
Neural Runner1 年前

The efficiency of streamlining massive data sets is crucial for competitive analysis.

Soumyojit Dé🇮🇳⚓ 的头像
Soumyojit Dé🇮🇳⚓1 年前

Whos the guy here??

Lorenzo2cents | Business Ontology 的头像
Lorenzo2cents | Business Ontology1 年前

Efficiency unlocked. This is quant magic.

blackwell 的头像
blackwell1 年前

just use BCP command line. no need for all this code

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