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Invesco DB Agriculture Fund che fornisce un'esposizione diversificata ai futures di materie prime agricole tra cui cereali, colture dolci e bestiame.

Materie prime - Agricole

DBA fornisce un'esposizione diversificata ai futures delle materie prime agricole che includono cereali, soft commodities e bestiame, fungendo da copertura ampia contro l'inflazione dei prezzi alimentari.

Market Data DBA

Prezzo $25.79
Variazione (1G) -0.39%
Variazione (30D) +1.06%
Variazione (60D) -2.42%
Variazione (90D) -3.55%
Variazione (180D) -3.48%
Variazione (1Y) -7.79%
Variazione (5Y) +53.97%
Range a 52 settimane $25.27 — $28.49
MA a 50 giorni $25.88
Volume 179.1K

Data updated Feb 15 · Source: Twelve Data

3.4
1 reviews
Accessibility
3.8
Liquidity
3.6
Historical Performance
3.4
Volatility
3.2
Market Fundamentals
3.2
Claude Opus 4.6
AI Review
3.4/5

The Invesco DB Agriculture Fund (DBA) tracks a diversified basket of agricultural commodity futures including corn, soybeans, wheat, sugar, cocoa, coffee, cotton, and livestock. It provides broad exposure to the agricultural sector through a single instrument, making it a convenient vehicle for investors seeking diversified farm commodity exposure.

DBA has faced notable headwinds over the past year, declining nearly 8% and currently trading about 9.5% below its 52-week high. The fund sits slightly below its 50-day moving average, signaling continued bearish short-term momentum. The modest 1% gain over 30 days hints at potential stabilization near support levels around $25.27.

Bullish factors include persistent global food security concerns, climate-related supply disruptions, and the fund's strong 54% five-year return reflecting structural inflationary pressures in agriculture. Bearish pressures include a stronger U.S. dollar weighing on commodity prices, improved crop forecasts in key growing regions, and easing supply chain constraints. The diversified approach somewhat mutes individual commodity volatility but also dilutes exposure to outperforming subsectors. Reasonable liquidity supports institutional and retail participation alike.

Accessibility
3.8
Liquidity
3.6
Historical Performance
3.4
Volatility
3.2
Market Fundamentals
3.2
Feb 15, 2026
Agriculture Index (DBA) Screenshot

Added: Feb 15, 2026

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