STAC Summit, 29 October 2024, Chicago

STAC Summits

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STAC Summits bring together CTOs and other industry leaders responsible for solution architecture, infrastructure engineering, application development, machine learning/deep learning engineering, data engineering, and operational intelligence to discuss important technical challenges in trading and investment.

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WHEN
Tueday, October 29, 2024
STAC Exchange (Exhibits) opens at 8:30am CDT
Conference starts at 9:00am CDT
Networking lunch at ~12:00pm CDT
Conference concludes at ~4:00pm CDT
Reception immediately following
WHERE
The Metropolitan Club
Willis Tower
233 South Wacker Drive
66th Floor
Chicago



Topics tend to cluster in three areas:

  • Quant technology. Architectures for big data and big compute workloads such as AI (ML & DL) model training, strategy research & backtesting, tick analytics, alt data processing, market and credit risk, portfolio optimization, fraud detection, and compliance.
  • Low-latency infrastructure. Architectures for fast decision making and trade execution, primarily in automated trading. Networks, FPGA, servers, software, and other technologies for market data, trading and matching algorithms, execution, and trade-time risk.
  • Command and control. Monitoring of trade flows, time synchronization, and orchestration and management of on-prem and cloud-based infrastructure.

We're currently putting together the agenda for this event.
To see agendas from past STAC Summits, click here.

Important Information:
Please allow extra time to arrive at the Willis Tower. At the lobby, present your photo ID and let the
receptionist know that you are attending the STAC Summit at the Metropolitan Club.


 

About STAC Events & Meetings

STAC events bring together CTOs and other industry leaders responsible for solution architecture, infrastructure engineering, application development, machine learning/deep learning engineering, data engineering, and operational intelligence to discuss important technical challenges in finance.