Status: running

The SatYield Engine

End-to-end biophysical processing and predictive modeling architecture for global agricultural yield forecasting.

Brazil Safrinha forecast

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106.5 MMT

Lead time

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23 Days

Accuracy

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1.7% Error

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In-Depth Pipeline & Methodology
Prediction Model:
Satellite LAI + Phenology + ML Ensemble
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Spatial Resolution:
County-level (HASC-2) → State → National
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Update Frequency:
Weekly during growing season (Jul–Nov)
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Phenology Stages:
Emergence → Vegetative → Flowering → Grain Fill → Maturity
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Stage 01

Satellite Imagery Acquisition

L1C/L2A INGESTION: NOMINAL

DATA FUSION ENGINE

10M/PXL OPTICAL RESOLUTION

Satellite heat map
Live Output Stream
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Stage 02

Phenology & Stress

GROWTH STAGE TRACKING: ACTIVE

VI/LAI CONFIDENCE

90%

Thermal Stress Analysis
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Stage 03

Digital Twins

CROP SIMULATION: RUNNING
Initialization12,000 Scenarios
Calibration100 Matched
ProjectionsREADY
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Stage 04

Yield Modeling

Model Convergence: OPTIMAL

CONFIDENCE INTERVAL

±0.2

3.4t/ha
Predicted Mean Yield
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Stage 05

Area Mapping

Extent Results: FINALIZED
Crop Classification
Classification Map
Primary Class DetectionCORN: 994-A2 PARCEL IDENTIFIED
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Stage 06

Regional Aggregation

Cluster Analysis: COMPLETE
South Cluster12,400 ha
South Cluster45,102 ha
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Stage 07: Final Output

Production Signals

A comprehensive suite of data and insights tailored for professionals in agricultural commodity trading.

Pushing to API V2.1...

98% SYNC

trending_upLive Reports Active
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Digital Twin Engine Active

Biophysical-Based
Digital Twins

Comprehensive biophysical-based cropsimulations coupled and powered by high spatio-temporal satellite imagery andadvanced weather models to crate a digital replica of the monitored crops.

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Weather

Daily, weekly, and monthly climate variables

Temperature, precipitation, radiation, and wind.
Historical and in-season forecasts.

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Soil

Soil type, characteristics and texture

Plant-available water eastimation and retention characteristics.

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Seed and Crop Parameters

Crop type and cultivar characteristics

Phenological and physiological constraints.

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Remote Sensing

Optical and SAR satellite earth observations

Vegetation dynamics and structural chemical properties.

Digital Twins
Energy (fAPAR)
0.82 (82%) normal
● Peak LAI
Maximum canopy density: 4.5
Water Stress: LST ANOMALY
Deviation vs normal: +3.2°C
Active Phase: Dent
Bands: NIR
Resolution: 10m
Radiation Intercepted
320
MJ/m²
Phenology Stage
R2–R5
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Stable
plant water USE
3.1
mm/day

Biophysical Crop State Outputs

The digital crop twins generate structured, time-series outputs including:

Output Stream Status: Synchronized

Stream_01

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Crop yield estimates

Stream_02

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Soil moisture and plant-available water

Stream_03

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Plant biomass accumulation

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Leaf Area Index (LAI)

Measure what is planted and harvested, before it reaches consensus

SatYield measures planted and harvested area directly from high-spatio-temporal Earth Observing satellites, capturing crop activityas it unfolds and revealing supply shifts before surveys and market consensusadjust.

Crop Classification
SOURCE: MULTISPECTRAL

High-Resolution

Satellite Imagery

PROCESSING: DEEP LEARNING

AI Algos

Deep Learning on Every Dot on Earth

OUTPUT: CROP CLASSIFICATION

INFERENCE RESULT

Large Scale Classification Maps

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Crop Cycle Intelligence Timeline

SIGNAL LATENCY: 3 DAYS

Planting

Growth

SatYield Signal

L-3 WEEKS

Official Reports

Harvest

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Classification Framework

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Crop type identification & mapping
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Planting and emergence timing
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Harvesting and abandonment signals
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Double-cropping and rotation detection
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Classification confidence and stability over time
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Intelligence Outputs

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Earlier planted area estimation
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Better aggregation of crop state and yield signals
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Reduced model error from misclassification
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Improved comparability across regions and seasons

INFRASTRUCTURE GATEWAY READY

Engineered for Alpha

Seamlessly integrate satellite-derived agricultural signals into your quant stack with our developer-first infrastructure.

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REST API

For programmatic access and automation

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Batch files (CSV or Parquet)

For research and backtests

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Cloud delivery

To supported storage locations

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Direct integration support

For client-specific pipelines

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DATA INTEGRITY (TRUST ANCHOR)

Point-in-Time and Auditable by Design

SatYield data is built for environments where integrity matters:

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Clear timestamps for each observation
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Versioning for models and datasets
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Confidence and quality fields included, not hidden
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Backfillable history aligned to point-in-time principles
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Audit Log Stream

Channel: integrity.v2.logs

SY_VERIFIED

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[2024-10-24 08:00:00.001] SHA-256 Verified: Dataset_v4.2.0
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[2024-10-24 08:00:00.045] Observation: Yield_Est_Confirmed
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[2024-10-24 08:00:00.112] Metadata: Confidence_Score: 0.982