An AI Trading Strategy Platform.  Fast strategy simulations over large data sets  Dynamic back-testing without pre-programming setup ideas  Artificial.

Slides:



Advertisements
Similar presentations
Trade Shows: How to Effectively Use the Opportunities as a Market Access Tool Greg Hanes Asst. VP, International Marketing USMEF.
Advertisements

ECOE 560 Design Methodologies and Tools for Software/Hardware Systems Spring 2004 Serdar Taşıran.
© 2014 Fair Isaac Corporation. Confidential. This presentation is provided for the recipient only and cannot be reproduced or shared without Fair Isaac.
January 6. January 7 January 8 January 9 January 10.
Aaron Summers. What is Artificial Intelligence (AI)? Great question right?
Discussion – Development of 2012 NGAC Guidance Ivan DeLoatch NGAC Meeting January 12, 2012.
Data Mining Glen Shih CS157B Section 1 Dr. Sin-Min Lee April 4, 2006.
Breadth First Search
Chapter 10 Artificial Intelligence © 2007 Pearson Addison-Wesley. All rights reserved.
HOW TO MAKE A CLIMATE GRAPH CLIMATE GRAPHING ASSIGNMENT PT.2.
CPSC 695 Future of GIS Marina L. Gavrilova. The future of GIS.
Buy Cirus Control Equiptment Time: 1 week Task Leader: Norm Test Control equipment in lab Time: 2 weeks Task Leader: Alex Determine optimal location in.
FEC Financial Engineering Club. Trading Platform: Back Tester w/ Algorithmic Trading API Market Simulator and Click Trading UI and/or Algo API, link others.
21 st Century... Stuff An Attempt to Talk the Talk that We are Going to Walk.
ROOT: A Data Mining Tool from CERN Arun Tripathi and Ravi Kumar 2008 CAS Ratemaking Seminar on Ratemaking 17 March 2008 Cambridge, Massachusetts.
PPT 206 Instrumentation, Measurement and Control SEM 2 (2012/2013) Dr. Hayder Kh. Q. Ali 1.
June 2014 Performance Report RM Education Stoke BSF and Stoke CIS.
Hands on Oracle CRM On Demand Custom Objects Not All Custom Objects are Created Equally Clive Johnson, Senior Sales Consultant, Oracle Inc.
Overview of the Course Copyright 2003, Keith D. Cooper, Ken Kennedy & Linda Torczon, all rights reserved. Students enrolled in Comp 412 at Rice University.
Data Mining Techniques in Stock Market Prediction
Master Thesis Defense Jan Fiedler 04/17/98
RECENT DEVELOPMENTS OF INDUCTION MOTOR DRIVES FAULT DIAGNOSIS USING AI TECHNIQUES 1 Oly Paz.
Copyright © 2008 Pearson Education, Inc. Publishing as Pearson Addison-Wesley Chapter 11: Artificial Intelligence Computer Science: An Overview Tenth Edition.
Lecture on Introduction to Artificial Intelligence Chapter#10 Sec 10.1 and 10.3 (before Heuristics)
Machine Learning for an Artificial Intelligence Playing Tic-Tac-Toe Computer Systems Lab 2005 By Rachel Miller.
Network theory 101 Temporal effects What we are interested in What kind of relevant temporal /topological structures are there? Why? How does.
LegendCorp What is System Center Virtual Machine Manager (SCVMM)? SCVMM at a glance Features and Benefits Components / Topology /
Haksun Li
WEEK INTRODUCTION IT440 ARTIFICIAL INTELLIGENCE.
CU Student Organizer Trey McAlhany CPSC 482 Mobile Software Development Clemson University April 30, 2015.
SunSatFriThursWedTuesMon January
1 Algorithms CSCI 235, Fall 2015 Lecture 39 Final Exam Review.
Lake Powell Operations CRFS Spring 2015 March 25, 2015.
Judge Frog Brice Boula Collin Duncan David Tomlinson Landon Westrom Senior Capstone Project TCU Computer Science.
UNIT 2 Calculation Architecture. Topics Types of calculations Data storage Calculation order Dynamic Calculations Two-pass calculations Intelligent Calcs.
Arbor Bars Brian Timm Amy Hartwig Ryan Brissette.
Database Overview What is a database? What types of databases are there? How are databases more powerful than spreadsheets?
Redesign/ Change Management Team 3. Point of Actions  Joint Application Design (JAD) session (2 weeks)  Representatives from each department  Overview.
Using Free Online Office Tools for Learning and Teaching in School
Chapter 11: Artificial Intelligence
The Johns Hopkins Business and Consulting Club
TELPAS Spring 2017 Dates Date Activity Jan 3-6
PART IV: The Potential of Algorithmic Machines.
Sep Oct Nov Dec Jan Feb Mar Apr May Jun Today
Meeting at CERN March 2011.
Movement in a full and dynamic environment using a limited influence map Paulo Lafeta Ferreira Artificial Intelligence for Games – CS 580 Professor: Steve.
(Business Professional)
Baltimore.
Two way tables CoachRailCarAirTotals Jan Feb Mar Total
Overview of the Course Copyright 2003, Keith D. Cooper, Ken Kennedy & Linda Torczon, all rights reserved. Students enrolled in Comp 412 at Rice University.
Dynamic Routing Using Inter Capsule Routing Protocol Between Capsules
Artificial Intelligence استوارت راسل، پیتر نورویگ
Redesign of a Safety Syringe
CSE 4705 Artificial Intelligence
Discovery Search vs. Library Catalogue
(VIP-EDC) Point 6 of the agenda


6.375 Final Project.
Trustbuilder How do you make decisions when
Graph of the derived function
Wireless Local Number Portability Timeline - Phase 2
Search Exercise Search Tree? Solution (Breadth First Search)?
Bell Quiz How much did Maria earn babysitting in March?
01 DRAW YOUR TIMELINE HERE JAN. MAR. JAN. MAR. FEB. APR. FEB. APR.

Introduction to algo quant, an integrated trading research tool
Wireless Local Number Portability Timeline - Phase 2
Progress Report. Progress Report Location Analysis for Outdoor Recycling Bin Placement Prepared for:
Next-Generation Experimentation with Self-Driving Laboratories
Presentation transcript:

An AI Trading Strategy Platform

 Fast strategy simulations over large data sets  Dynamic back-testing without pre-programming setup ideas  Artificial intelligence to find trading methods

 Simple tools for data collection and storage  Platform for AI strategy discovery  Rich feature set for analysis

Week:Adam (x)Mike (y)Valentina (z) 1: Jan 7Project Idea 2: Jan 14Presentation, More Specific Specs for each part of Project, Learn C# 3: Jan 21 Coleman (layout) Randolph, Database SetupWinthorpe 4: Jan 28Randolph Coleman (layout) 5: Feb 4Coleman (layout) February 6 th : First Demo Day 6:Feb 11 Coleman (graphing) Randolph (database) Coleman (properties) 7: Feb 18Randolph (studies) 8: Feb 25 (spring break) 9: Mar 3Coleman (analysis)RandolphColeman (graphing) 10: Mar 10Demo prep March 15 th : Second Demo Day 11: Mar 17 Coleman (analysis)Randolph (AI engine)Coleman (analysis) 12: Marc 24 13: Mar 31Strategy finding 14: Apr 7Wine tasting April 11 th, Final Demo Day

 TD Ameritrade StrategyDesk TradersStudioTradingSolutionsMortimer Input specific strategies XXX EOD testing XXXX Neural networks XX AI optimization XX Time frames to <1min bars XXX Time frames to <5sec bars X Relative action indication X

 Artificial intelligence backtesting  Breadth of data, speed  Rich analysis

 Analyzing more components exponentially increases time  Data integrity and verification  Presenting strategies in meaningful context

 Simple, AI-backed strategy searching  Market inefficiency is (probably) exploitable  Find these inefficiencies on a high-frequency level