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analyzing-commodity-markets

Structures commodity market analysis with supply/demand balances, inventory dynamics, and price driver attribution. Use when analyzing commodities, evaluating supply/demand, or forecasting commodity prices.

personAuthor: jakexiaohubgithub

Analyzing Commodity Markets

Structures commodity market analysis with supply/demand balances, inventory dynamics, and price driver attribution.

When To Use

  • Building a supply/demand balance for a specific commodity (e.g., crude oil, copper, wheat, natural gas)
  • Attributing recent price moves to fundamental, technical, or macro drivers
  • Evaluating inventory dynamics — draws, builds, days-of-supply coverage
  • Assessing the impact of policy changes (tariffs, export bans, sanctions, subsidies) on commodity flows
  • Comparing forward curve structure (contango/backwardation) against physical market signals
  • Preparing commodity-focused sections of macro research notes or investment committee materials

Inputs To Gather

  • Commodity and timeframe: Specific commodity (or commodity complex) and the analysis horizon (spot, quarterly, annual)
  • Production data: Global and regional output figures, capacity utilization, rig counts, planted acreage, or mine throughput as applicable
  • Consumption/demand data: Sectoral demand breakdown (industrial, transport, power generation, feed/food), regional demand estimates
  • Inventory levels: Exchange-reported stocks (LME, COMEX, SHFE), commercial and strategic reserve levels, floating storage or in-transit volumes
  • Price series: Spot, front-month futures, and relevant spreads (crack spreads, crush margins, locational basis)
  • Policy/event context: Sanctions, OPEC+ decisions, weather events, trade policy shifts, regulatory changes [VERIFY current policy status]
  • Forward curve and positioning: Futures term structure, CFTC/COT managed-money positioning, options open interest

Workflow

  1. Define scope and commodity taxonomy

    • Identify whether the analysis covers a single commodity, a complex (e.g., energy, base metals, agriculture), or a cross-commodity theme
    • Set the time horizon: near-term (spot to 3 months), medium-term (1–4 quarters), or structural (multi-year)
  2. Construct the supply/demand balance

    • Build a table with production, consumption, net trade, and implied stock change by period
    • Separate known data periods from forecast periods; label forecasts clearly
    • Identify the marginal source of supply (swing producer, marginal cost curve position)
    • Note any supply disruptions, maintenance schedules, or ramp-ups in new capacity [VERIFY production figures against latest reporting agency data — EIA, IEA, USDA, ICSG, etc.]
  3. Analyze inventory dynamics

    • Calculate days-of-supply coverage (inventories / daily consumption)
    • Compare current stocks to 5-year seasonal range and identify whether levels are above, below, or within normal bands
    • Assess visible vs. estimated invisible inventories (e.g., Chinese bonded warehouse stocks, floating storage)
    • Note rate of change — whether stocks are drawing or building, and at what pace relative to seasonal norms
  4. Attribute price drivers

    • Decompose recent price action into categories:
      • Fundamental: supply outage, demand surprise, inventory report
      • Macro: USD moves, rate expectations, GDP revisions, risk appetite
      • Technical/positioning: speculative positioning extremes, options expiry, trend-following signals
      • Policy/geopolitical: sanctions, tariffs, weather, conflict disruption
    • Rank drivers by estimated magnitude of price impact
  5. Evaluate forward curve structure

    • Characterize the curve as contango, backwardation, or flat and note the degree ($/unit, % annualized)
    • Interpret the curve signal: backwardation typically signals tight physical markets; contango suggests ample supply or weak spot demand
    • Compare curve shape to inventory trajectory — divergences may flag mispricing or hidden stock shifts
  6. Assess risks and scenarios

    • Identify the top 2–3 upside and downside risks to the base case balance
    • Quantify scenario impact where possible (e.g., "loss of 1 mb/d Libyan supply would shift the balance to a 0.5 mb/d deficit")
    • Flag binary event risks (elections, OPEC meetings, crop reports) and their timing

Output

Structure the deliverable as:

  • Executive summary: 3–5 sentence overview of the commodity's current state, balance trajectory, and price view
  • Supply/demand balance table: Quarterly or annual, with production, consumption, stock change, and price assumptions
  • Inventory analysis: Current levels, seasonal context, days-of-supply, trajectory
  • Price driver attribution: Ranked list of factors moving the market, with directional impact
  • Forward curve commentary: Structure description, interpretation, and any notable spread trades
  • Risk matrix: Upside/downside scenarios with estimated probability and price impact
  • Key data releases calendar: Upcoming reports that could shift the view (e.g., EIA weekly, USDA WASDE, OPEC MOMR)

Quality Checks

  • Supply/demand balance must arithmetically reconcile (production - consumption = stock change +/- net trade adjustments)
  • All data sources and vintages are cited; no undated or unsourced figures
  • Forecast assumptions are separated from reported actuals and clearly labeled
  • Inventory comparisons use consistent units (barrels, tonnes, bushels) and seasonal adjustment methodology
  • Price driver attribution avoids circular reasoning (don't attribute a price rise solely to "buying pressure" without identifying the catalyst)
  • Forward curve analysis references actual curve data rather than generic statements
  • [VERIFY] any referenced government policy, sanction, or trade restriction against current status — these change frequently
  • [VERIFY] production quotas (OPEC+, mining country export limits) against most recent official announcements