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Rice University CoFES Conference

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Title: Rice University CoFES Conference


1
Rice University CoFES Conference
  • Derivatives Risk Systems - An IT Perspective

Steve Beasty Managing Director, CTO Credit
Derivatives and Structured Finance JPMorganChase
2
Agenda
  • Derivatives, Analytics, and Risk Systems
  • Derivatives at JPM
  • Analytics and Risk Systems - Who Does What
  • Valuation and Risk Calculation
  • A Typical Risk System
  • Challenges
  • Opportunities
  • JPMs North American Technology Center
  • Vision and Resource Strategy
  • What We Plan To Do in Houston
  • Growth Plans

3
Derivatives at JPMorgan
  • Largest Derivative House on the street today,
    with over 475,000 outstanding trades
  • Interest Rate Swaps 260,000
  • Interest Rate Options 50,000
  • FX Options 45,000
  • Exotics/Hybrids 35,000
  • Equity Derivatives 45,000
  • Credit Derivatives 40,000
  • Competitive advantage in derivatives lies in two
    key strengths
  • Ability to bring new, innovative products to
    market quickly
  • Ability to understand, quantify, and manage the
    market risk of a derivatives book
  • Quantitative modelling and information technology
    expertise are critical elements in gaining that
    competitive advantage.

4
How Were Organized Around Providing Analytics
and Risk Systems
  • Derivatives Research
  • IB Technology (IT)
  • Quant/Tactical
  • LOB Strategic Tech Teams
  • What They Do
  • Innovate new pricing and risk models
  • Implement models in the form of analytics
    libraries
  • Work closely with traders to vet and tune new
    models
  • Typical Technology Tools
  • - C/C
  • - Excel
  • Typical Education
  • - PhD, Mathematics-Focused (Physics, Engineering,
    etc.)
  • What They Do
  • Delivery quick time-to-market technology
    solutions
  • Integrate DR analytics into pricing and risk
    management tools
  • Work closely with traders to solve day-to-day
    risk management business problems
  • Projects measured in days or weeks
  • Typical Technology Tools
  • - Excel/VBA
  • - Access
  • Typical Education
  • - BS Engineering, Math, Com Sci.
  • - Heavy Finance background
  • What They Do
  • Deliver robust, scalable, enterprise risk
    management systems
  • Integrate analytics for products that have
    outgrown tactical tools
  • Projects measured in weeks or months
  • Typical Technology Tools
  • - Java/EJB
  • - C
  • - Smalltalk
  • Typical Education
  • - BS, MS Engineering, Math, Com Sci.
  • - Finance background

Innovation
Industrialization
5
Trade Valuation and Risk Calculation
  • Valuation
  • A majority of derivative products are valued
    under a term structure model.
  • Techniques include tree-models, monte-carlo,
    others.
  • Risk Calculation (Delta)
  • Trading/Market Risk - Calculations are based on
    an empirical risk framework
  • Sensitivity of a trades valuation to each market
    parameter is measured by iteratively perturbing
    each parameter (e.g. 10 year Swap Yield) and
    revaluing the trade.
  • Those individual sensitivities are then converted
    into common equivalents, using the sensitivity
    of a common hedging instrument (e.g. 10mm 5 year
    LIBOR swap).
  • The total of the common equivalents across a
    traders portfolio of trades tells him what trade
    he would have to put on to hedge his risk.
  • The Challenge
  • The model works well for simple products under
    small market movements.
  • Under large market moves, a trades sensitivity
    will change (gamma). To have an accurate view of
    risk, a recalculation of the sensitivity for
    every trade is required.
  • Risk calculations are compute intensive - most
    banks have the capacity to compute them only
    once/day.

6
Traditional/Typical Derivatives Risk Management
System
Valuation Engine
3
4
Trade Repository
Risk Engine
1
2
5
1. New trades are captured/existing trades
maintained 2. Sensitivity/risk calculations are
broken down into a series of valuation
requests. 3. Valuation requests are dispatched
to compute nodes 4. Appropriate pricing routines
are executed to calculate the requested
valuation 5. Valuation results are aggregated
and converted into sensitivity/risk
representations.
7
Implications and Challenges
Examples
Key Challenges
  • Across a typical banks derivatives portfolio,
    tens of millions of valuation calculations need
    to be performed daily.
  • As product complexity increases, the number of
    valuations increases in a non-linear fashion.
  • The cost of IT infrastructure to support this
    business is high and product margins are
    shrinking as complex products are commoditized.

Product/Business Totals
30 Yr USD/JPY X-CCY Swap
Challenge Cost
  • Scalability and support cost of Unix servers is
    high
  • Ex 32-cpu Sun server - 750K
  • JPMs infrastructure employs over 1100 cpus

Challenge Data
Challenge Complex Products
  • Complex Trades can require 1000s of valuations
    each
  • Risk/Valuation Engine split is not optimal for
    many complex credit products
  • Risk engines need to allow flexible definition of
    new risks
  • Aggregation of millions of results stresses
    hardware memory limitations
  • Interactive analysis of results stresses even the
    best OLAP tools

8
The Opportunities Moving Forward...
  • Time-to-market will continue to be the key
    differentiator in the market
  • more flexible analytics to support product
    variations without code changes
  • plug-n-play of new analytics into risk systems
  • Risk calculations move inside the black box of
    the Analytics libraries
  • risk calculation efficiency greatly improves
  • relieves the data volume challenge
  • Intel/NT/Linux-based replaces Sun/Unix as the
    high-performance computing choice
  • Far superior price/performance profile
  • Greatly improved fault tolerance profile
  • High-performance compute infrastructure becomes a
    cross-industry utility
  • common need for distributed calculation
    capability across many industries
  • capacity-on-demand, pay-by-the-cycle model
    reduces operating cost, increases flexibility
  • People Implications - more overlapping skills
    between quants and IT people
  • Quants will need more of an appreciation for the
    practical limits of the technology
  • IT developers will need to have a better
    understanding/appreciation for the models

9
JPM IB Technology - Our Vision and Resource
Strategy
Resource Strategy Goals
Organizational Goals - The IB Technology Vision
  • Define flexible resource supply model which can
    grow and contract with market demand
  • Determine the location of resources (location
    strategy) to identify the potential to move
    resources to lower cost locations
  • Reduce cost of business-as-usual support through
    application of differentiated service levels,
    sourcing through strategic partners, and
    application of alternative delivery models
  • Secure access to a strategic source of
    development skills which can supply a
    cost-effective set of expertise and talent where
    and when required
  • Derive results through strong partnerships with
    the business
  • Enable client driven business strategy
  • Be excellent solution providers
  • Be a learning organization
  • Develop and retain core competencies

Currently 95 of resources are located in primary
locations target is to source 38 from secondary
locations.
Current
Future Location Profiles
  • Houses strategic positions/organizational
    leadership
  • Manages technology where client interaction is
    critical

Primary (e.g. NYC/ London)
Premium Cost Profile
  • Same time zone as primary site
  • All build functions with the exception of client
    facing technology
  • Includes non-client facing functions
  • Staffed with JPM employees and Sourced TM

Secondary Site By Region (e.g.Glasgow/Houston)
Moderate Cost Profile
  • Asian resource strategy includes
  • Moving from high cost locations (e.g. Tokyo) to
    lower cost locations (Singapore / Sydney)
  • Cost savings throughout the region are increased
    by staffing with resources from India

Asia
Moderate Low Cost Profile
  • Low cost location, able to perform
    standard/maintenance tasks
  • Includes potential to move resources from India
    to secondary or primary locations

Offsite, India
Low Cost Profile
10
Houston Will Provide Services Across A Broad Set
Of Applications and Technologies
Houston Offerings
  • The ability for primary sites to extend their
    teams and realize reduced costs
  • A portal, enabling tertiary sites (India) to be
    come operational at reduced costs
  • A support site, where operational staff are able
    to support applications that are run around the
    globe
  • Secure access to a strategic source of
    development skills which can supply a
    cost-effective set of expertise and talent where
    and when required
  • A project site where lower cost resources can be
    deployed and housed for a specific initiative
  • Why Houston? Sizeable market for skilled
    technologists, related industry (energy trading),
    University pipeline

Technologies
Business Applications
  • Web Technology Java, Websphere, etc.
  • Traditional client/server
  • AS/400
  • Others
  • Equities Trading
  • Corporate Credit Risk Management
  • Client Information and Profitability
  • Debt Capital Markets Origination
  • Fixed Income Trading and Risk Management
  • Fixed Income Back Office

Software Development Roles
  • Technology Developer Leading Edge Technologies,
    New Development
  • Technology Developer Mature Technologies New
    Development
  • Technology Developer Leading Edge Technologies
    Maintenance Enhancement
  • Technology Developer Mature Technologies
    Maintenance Enhancement
  • Technology Developer Package Integration/Customi
    zations
  • Regression and Other Testing
  • Development SA DBA

11
The Houston Technology Center Will Grow
Significantly From 2003 Onward
  • Houston Center opened in July 2002, Fannin Street
  • India Portal model implemented with Accenture
    with 7 consultants in September 2002
  • Current staff totals 60 targeted to grow to 75
    by year-end 2002
  • Staff expected to grow to 200 by year-end 2003

Critical To Our Success
  • Ability to recruit the best and brightest
    Business Technologists in Houston
  • Ability to build and maintain a base of product
    and industry knowledge in the Houston team
  • Access to a junior/entry level pipeline of talent
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