- 1、本文档共22页,可阅读全部内容。
- 2、有哪些信誉好的足球投注网站(book118)网站文档一经付费(服务费),不意味着购买了该文档的版权,仅供个人/单位学习、研究之用,不得用于商业用途,未经授权,严禁复制、发行、汇编、翻译或者网络传播等,侵权必究。
- 3、本站所有内容均由合作方或网友上传,本站不对文档的完整性、权威性及其观点立场正确性做任何保证或承诺!文档内容仅供研究参考,付费前请自行鉴别。如您付费,意味着您自己接受本站规则且自行承担风险,本站不退款、不进行额外附加服务;查看《如何避免下载的几个坑》。如果您已付费下载过本站文档,您可以点击 这里二次下载。
- 4、如文档侵犯商业秘密、侵犯著作权、侵犯人身权等,请点击“版权申诉”(推荐),也可以打举报电话:400-050-0827(电话支持时间:9:00-18:30)。
查看更多
Python and R for Quantitative Finance .pdf
Python and R for
Quantitative Finance
An Introduction
Luca Sbardella
luca.sbardella@
@lsbardel
LondonR - Nov 09
Overview
1) Putting things into context
2) Python and R
3) Examples
1 Context
How can quantitative finance pratictioners best
leverage their expertise without reinventing the
wheel and spending lots of their precious time
writing low level code?
opensource technologies
Current Approach
✔ Extensive use of large propriety C, C++ or Java libraries.
✔ Serverside applications written in
✔ .Net/C# Windows servers
✔ Java – Windows Linux/Unix
✔ VBA/Excel on the client side :(
✔ Some web/based clients :)
✔ Limited if inexistent use of powerful opensource
technologies/libraries.
Problems
✔ Full development cycle in lowlevel languages is expensive
C++ : Python = 7 : 1
✔ Writing code already developed many times before
✔ Difficult to adjust to new technologies as they become
available
✔ Often libraries are deployed on the client machine
✔ Some technologies (.Net) force a decision on the platform
to be used (Windows)
A different approach
✔ Limit lowlevel development to critical numbercrunching
components
✔ Use available highstandard opensource technologies
✔ Flexible, multiplatform serverside configuration
✔ Multilanguage support
✔ Abstraction when possible
✔ Remote procedure calls (RPC)
A proposed solution
✔ Use of Python as main server side driver
✔ Legacy C, C++ as Python modules (BoostPython)
✔ Interaction with other technologies
✔ R for statistics
✔ Erlang/Haskell – functional programming
文档评论(0)