Commodity Markets & Derivatives: Trading & Managing Risk
3 day practical course providing comprehensive deep dives on both physical commodity market fundamentals and derivatives / derivatives hedging applications for each major commodity.
Major commodity categories covered include:
- Energy - crude oil, natural gas, LNG, electricity, coal, carbon credits
- Base metals - copper, aluminium, other
- Precious metals - gold, silver, platinum, palladium
- Agricultural commodities - corn, wheat, soybeans, coffee, cocoa, sugar, cotton, palm oil
Derivatives coverage includes:
- Forwards, futures, futures options and swaps
- Spread options, exchange options, TAPOs
- Exotic options
- Pricing and Greeks under Black, jump diffusion, univariate and multivariate Monte Carlo simulation and SABR models
- Volatility surfaces and futures curves seen across commodity markets
- Pricing of correlation-sensitive commodity derivatives
- Real options pricing of physical commodity assets - storage facilities, power plants and mining assets
- Quanto pricing - compo forwards and options
- Hedging strategies for commodity producers, consumers and investors
- Trading strategies - curve trading, volatility trading, relative value, inventory-driven arbitrage and commodity-sensitive equities
This course is also available in London Time Zone and New York Time Zone
- Commodity producers
- Commodity consumers – raw materials purchase executives
- Commodity trading firm staff
- Analysts and portfolio managers at hedge funds and other asset management firms
- Quants
- Structures
- Deep dive understanding of major commodities markets - reserves, production, demand, inventory, producers, consumers.
- Comprehensive understanding of commodity derivatives, pricing approaches and risk management.
- How to use commodity derivatives to hedge for producers, consumers and investors as well as trading strategies
- Basic understanding of commodity markets and derivatives / derivatives pricing generally is helpful but not essential
Rupesh Tailor is a banking sector specialist with over 25 years’ experience in areas including Asset & Liability Management (ALM) and capital and liquidity management and stress testing (both ICAAP and ILAAP). He has worked for sell-side and buy-side financial institutions such as Goldman Sachs, Barclays, Bank of America Merrill Lynch, Morgan Stanley and Nordea Asset Management. He specialized in other institutional investors on their credit, equity and commodity investing, particularly across high yield and distressed debt markets, high growth companies and energy companies and commodities.
Rupesh has consulted for two of Europe’s Global Systemically Important Banks (GSIBs) regarding their stress test modelling - as part of the 2014 European Central Bank/European Banking Authority stress test of euro area banks - and has also developed stress test models for a variety of other banks’ ICAAP and ILAAP needs. His proprietary stress-testing models are widely recognized as having accurately predicted the failures of various US, Irish, Spanish and Icelandic banks; as well as being highly successful at identifying businesses in structural decline at an early stage.
At LFS, he delivers expert-led courses in ALM, Bank Liquidity Management, Bank Stress Testing, Credit, Equity and Commodity Derivatives, Distressed Debt, as well as Fixed Income Attribution, helping financial professionals and institutions succeed.
Rupesh received a MA in Economics from Cambridge University and achieved First Class Honours.
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a Brochure with full details for Commodity Markets & Derivatives: Trading & Managing Risk
Commodity Markets: Fundamentals & Price Formation
Commodity Market Overview
- Overview of energy, metals and agricultural commodities
- Physical vs financial markets
- Key exchanges and key exchange-traded contracts – CME, LME, ICE, SHFE, SGX
- Major participants – producers, consumers, trading firms and financial investors
- Case Study 1: Commodity-by-commodity market data and background. Trading volumes and major participants
Spot & Forward Price Formation
- Spot pricing dynamics and demand-supply drivers
- Inventory, storage, cost of carry and convenience yield
- Commodity forwards, futures, futures options and swaps
- Relationship between spot and forward prices
- Construction of forward curves
- Case Study 2: Construction of forward curve for WTI crude oil and comparison vs WTI crude oil futures curve
- Contango vs backwardation and forward curve interpretation
- Case Study 3: Crude oil forward curve in periods of market shocks – 2008, 2020
- Seasonality
Energy – Crude Oil
- Crude oil and exchanges
- Chemistry of oil
- Industry overview
- Exploration and production
- Refining and finished products
- Transportation and storage
- Seasonality
- Reserves
- ESG considerations
- Case Study 4: Deep dive crude oil market analysis. Reserves and production breakdown by company and country. Demand breakdown and outlook. Inventory analysis
Energy – Other
- Natural gas
- LNG
- Electricity
- Coal
- Carbon credits
Metals – Base Metals
- Copper, aluminium and other base metals
- Exchanges
- Case Study 5: Implications for copper markets from vehicle electrification
- Case Study 6: Implications for copper markets from growth in wind turbines
- Case Study 7: Deep dive copper and aluminium market analysis. Reserves and production breakdown by company and country. Demand breakdown and outlook. Inventory analysis
Metals – Precious Metals
- Gold, silver, platinum, palladium
- Case Study 8: Deep dive gold and silver market analysis. Reserves and production breakdown by company and country. Demand breakdown and outlook
- Precious metals vs bitcoin / crypto
Agricultural Commodities
- Weather risk and country risk
- Corn, wheat, soybeans, coffee, cocoa, sugar, cotton, palm oil
- Fertilisers and fertiliser swaps
Commodity Derivatives
- Recap – forwards, futures, futures options and swaps
- Spread options
- Exchange options
- Traded Average Price Options (TAPOs)
- Auto cancellable options
- Commodity structured products
- Physical vs financial optionality
Basic Option Pricing Models
- Black-Scholes and Black (1976) models. Why Black model is used more for pricing commodity futures options
- Implied volatility
- Greeks
- Case Study 9: Black model pricing, Greeks and scenario analysis for WTI crude oil futures options
- Mean reversion and seasonality in prices
- Jump diffusion models. Why these are relevant for commodity markets subject to supply shocks, geopolitics and storage constraints
- Case Study 10: Jump-diffusion model for pricing power futures, Greeks and scenario analysis
Volatility in Commodities
- Historical vs implied volatility
- Volatility term structure – relationship between implied volatility and expiration and what drives this
- Volatility skew and smile – relationship between implied volatility and strike / delta
- Why implied volatility is not constant across strikes / delta
- Case Study 11: Typical skew seen in energy, base metals, precious metals and agricultural commodities
- Volatility surface – 3-dimensional representation of how implied volatility varies across: (1) strike / delta; and (2) expiration
- Stochastic volatility models
Advanced Pricing Techniques
- Monte Carlo simulation – univariate and multivariate. Pricing of exotic options
- Case Study 12: Using univariate Monte Carlo to price Asian options on LME copper
- Correlation sensitive commodity derivatives including spread options, spark spread options and crack spread options. Margrabe’s model, Kirk’s approximation and Monte Carlo
- Case Study 13: Using Margrabe’s model, Kirk’s approximation and multivariate Monte Carlo to price crack spread option
Physical Asset Valuation – Real Options
- Valuation of storage facilities
- Valuation of power plants
- Case Study 14: Using crack spread option pricing to value a power plant
- Valuation of mining assets
Commodity Derivatives – Risk Management & Advanced Topics
Advanced Commodity Option Models
- Implied distribution
- Truncated distribution
- Volga-Vanna model
- SABR model. Objectives – generate realistic volatility surface fitted to implied volatility observed in traded options...
- Why SABR is generally better suited than Volga-Vanna for pricing commodity options
- Case Study 15: SABR model pricing, Greeks and scenario analysis for WTI crude oil futures options and comparison to Black model
Quanto Risk In Commodities
- Compo forwards
- Compo options
- Quanto pricing
- Case Study 16: Pricing Brent oil compo call for a UK investor
Risk Management & Hedging Strategies
- Delta hedging
- Case Study 17: P&L and position illustration for delta hedging LME copper futures options
- Proxy hedging
- Case Study 18: Hedging jet fuel price exposure for airline using crude oil futures as proxy hedge. Consideration of basis risks
- Correlation hedging
- Case Study 19: Using crack spread put options to hedge crack spread risk for oil refiner
- Quanto hedging
- Case Study 20: European investor hedging oil exposure in EUR
- Producer hedging
- Case Study 21: Hedging copper price exposure for copper miner
- Utility and power hedging
- Case Study 22: Hedging electricity price exposure for electric utility
Trading Strategies
- Curve trading (calendar spreads, roll yield)
- Volatility trading
- Relative value across commodities
- Inventory-driven arbitrage
- Commodity-sensitive equities
- Case Study 23: Assessing relative value between equities of commodity-sensitive companies and their primary underlying commodity exposure
Course Details
This course is also available in London Time Zone and New York Time Zone
- To run this course at your organisation, contact us.
Call now for more information on this course or to book:
Asia Pacific +65 3159 3707
London Financial Studies is registered with GARP as an Approved Provider of Continuing Professional Development (CPD) credits.
