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We Make
Land Legible.

Precision sensor networks and machine learning for agribusiness operations managing 50,000+ hectares. From soil chemistry to board-ready yield metrics.

Verified Outcome · 2024↑ 31% water efficiencyMato Grosso soy operation — 78,400 ha under management
01
4–6 weeks

Phase 01: Audit

Understanding your current state across every dimension of the operation.

Deliverables

Soil & Infrastructure Survey

2,400-point soil sampling protocol across all managed hectares. Topography, drainage, compaction mapping.

Data Inventory Report

Full audit of existing sensors, ERP systems, weather stations, and manual record-keeping workflows.

Gap Analysis Matrix

Side-by-side comparison of current vs. benchmark precision operations. Quantified opportunity per input category.

ROI Projection Model

Conservative, base, and optimistic financial models tied to specific intervention points identified during audit.

Client Team Involved

COO / Operations DirectorHead of AgronomyIT Infrastructure LeadField Operations Manager

Technology Deployed

Drone LiDAR surveys (1cm resolution)
Soil EC mapping — EM38-MK2
Satellite multispectral imagery (Sentinel-2)
Interview & system access protocols

Timeline

Stakeholder interviews…
Drone & soil survey de…
Data system inventory …
Analysis & report synt…
Findings presentation
Week 0Week 18
02
3–4 weeks

Phase 02: Architect

Designing the sensor network, data architecture, and ML pipeline before a single cable is run.

Deliverables

Sensor Network Blueprint

Node placement maps for soil moisture, EC, temperature, and weather stations. LoRaWAN vs. cellular decision matrix per zone.

Data Architecture Spec

Cloud infrastructure design (AWS/Azure), data lake schema, API integration specs for existing ERP and market systems.

ML Model Selection Report

Crop-specific model recommendations: yield prediction, irrigation scheduling, disease risk scoring. Training data requirements.

Procurement & Vendor List

Hardware SKUs, vendor contracts, lead times, and total cost of ownership over 5 years.

Client Team Involved

CTO / Head of TechnologyAgronomy LeadData Engineering Lead (Cultivate)COO Sign-off

Technology Deployed

LoRaWAN / NB-IoT network design
AWS IoT Core / Azure IoT Hub architecture
PostgreSQL + TimescaleDB schema
MQTT protocol specification

Timeline

Network topology desig…
Cloud architecture & d…
ML model scoping & ven…
Procurement finalizati…
Week 0Week 13
03
8–14 weeks

Phase 03: Integrate

Physical installation, data pipeline commissioning, and baseline model training.

Deliverables

Deployed Sensor Network

All nodes installed, powered, and transmitting. Network coverage map with signal strength per zone. 99.2% uptime SLA.

Live Dashboard v1.0

Real-time field monitoring dashboard. Per-hectare soil moisture, temperature, EC, and weather overlays. Alert configuration.

Data Pipeline Certification

End-to-end data flow testing. Latency benchmarks. Failover protocols. GDPR/data sovereignty compliance documentation.

Baseline ML Models (Active)

First-generation yield and irrigation models live with 8–12 weeks of training data. Accuracy benchmarks documented.

Client Team Involved

Field Operations TeamCultivate Hardware EngineersData Engineering TeamAgronomy Lead

Technology Deployed

Sentek EnviroSCAN soil probes
Davis Instruments weather stations
Dragino LoRa gateways
Python / Apache Kafka pipeline
Grafana + custom React dashboard

Timeline

Hardware delivery & si…
Network installation —…
Network installation —…
Data pipeline commissi…
Dashboard deployment &…
ML baseline training &…
Week 0Week 19
04
12–24 months

Phase 04: Optimize

Continuous model refinement, agronomic integration, and measurable yield improvement.

Deliverables

Monthly Optimization Reports

Per-field performance vs. pre-integration baseline. Irrigation savings quantified. Input cost per tonne tracked against target.

Adaptive Irrigation Schedules

ML-generated irrigation prescriptions updated weekly. Water savings vs. calendar-based scheduling documented per zone.

Yield Prediction Accuracy Reports

Model accuracy improving each season. 90-day yield forecasts with confidence intervals for board presentations.

Quarterly Executive Dashboard

Board-ready PDF and live view. Yield-per-input, water efficiency, cost-per-hectare, and risk index. Benchmark vs. regional average.

Client Team Involved

Agronomy LeadOperations Data AnalystCultivate ML EngineersBoard Reporting (quarterly)

Technology Deployed

XGBoost / LightGBM yield models
LSTM irrigation scheduling network
Automated retraining pipelines
Power BI / Tableau board exports

Timeline

Model retraining cycle…
Irrigation optimizatio…
Quarterly board report…
Annual model architect…
Week 0Week 24
05
6–8 weeks

Phase 05: Transfer

Building internal capability so your team owns the system — not depends on us.

Deliverables

Internal Training Program

40-hour certification curriculum for data analysts and agronomists. Dashboard operation, alert management, model interpretation.

System Documentation Package

Complete technical documentation. Hardware maintenance guides. Model retraining playbooks. Troubleshooting decision trees.

Vendor & Support Handover

Direct relationships established with hardware vendors. Support contracts transferred. Emergency escalation protocols documented.

12-Month Post-Transfer Support

Retained access to Cultivate engineers for 12 months post-handover. Monthly check-in calls. Priority ticket response within 4 hours.

Client Team Involved

Internal Data TeamAgronomy LeadIT AdministratorCOO / Operations Director

Technology Deployed

Custom LMS training modules
Runbook documentation (Notion/Confluence)
Monitoring alerting (PagerDuty)
Video library — 24 operational guides

Timeline

Documentation sprint
Training cohort — Anal…
Training cohort — Agro…
Final handover & sign-…
Week 0Week 9
Verified Field Outcomes

↑ 31%

Water efficiency

Mato Grosso soy operation

Brazil · 78,400 ha · 2024

↑ 18%

Yield per input

Saskatchewan wheat cooperative

Canada · 124,000 ha · 2023

−23%

Fertilizer cost/tonne

Pampas corn & soy rotation

Argentina · 52,000 ha · 2024

94%

Yield prediction accuracy

Season-ahead forecasting

Multiple operations · Season 3 · 2024

Operations by ICP

Agribusiness COO

São Paulo–based grain exporter, 92,000 ha soy & corn

Challenge

Board demanded 15% yield improvement without capex increase. Irrigation scheduling was calendar-based. No soil data below 30cm.

Outcome

Deployed 2,840 soil probes across 6 zones. ML irrigation model reduced water use 28% while yield increased 14% in first full season.

11 months to first board report
Cooperative Director

340-member wheat cooperative, Western Australia, 186,000 ha aggregate

Challenge

Climate volatility creating 40% yield variance between members on identical inputs. Cooperative needed shared infrastructure economics.

Outcome

Shared LoRaWAN network across all member properties. Individual prescription maps. Variance reduced to 18%. Shared cost: $4.20/ha/year.

18 months full deployment
Ministry Modernization

Federal agricultural ministry, subsidy reform program, 1.2M ha target

Challenge

Subsidy payments based on self-reported yield data. No verification infrastructure. Political pressure to tie payments to measurable outcomes.

Outcome

Pilot program across 85,000 ha. Satellite + sensor verification layer. Subsidy framework redesigned around verified yield-per-input metrics.

24-month pilot → national rollout
Free Download

The 12-Month Digital Farm Roadmap

The complete methodology, hardware specifications, cost benchmarks, and ROI templates used across 40+ operations. No sales call required.

Technology Infrastructure

Hardware. Pipeline. Intelligence.

No proprietary black boxes. Every component is specification-grade, vendor-independent, and documented for internal handover.

Hardware Stack

Sentek EnviroSCAN

Soil Moisture

0.1% VWC accuracy · 10 depths

Dragino LoRa Gateways

Connectivity

LoRaWAN 1.0.3 · 15km range

Davis Vantage Pro 2

Weather Station

ET calculation · 1-min intervals

DJI Matrice 350 RTK

Aerial Survey

1cm GSD · NDVI/NDRE payloads

EM38-MK2

Soil EC Mapping

Electromagnetic induction · 1.5m depth

Trimble R12i

GNSS / RTK

±4mm horizontal accuracy

Data Pipeline Architecture

Ingestion

AWS IoT Core / MQTT

Real-time sensor data ingestion at 50k msg/sec

Storage

TimescaleDB + S3

Time-series optimized, 5-year hot storage

Processing

Apache Kafka + Spark

Stream processing, anomaly detection pipeline

ML Models

XGBoost / LightGBM / LSTM

Yield prediction, irrigation scheduling, disease risk

Visualization

Custom React + Mapbox GL

Per-hectare overlays, live telemetry, board exports

Platform Integrations

John Deere Operations CenterClimate FieldViewSAP AgroTrimble Ag SoftwareGranularProagricaSentinel HubPlanet Labs
Begin the Process

Request a Transformation Audit

A 30-minute diagnostic call with a senior Cultivate engineer and agronomist. No pitch deck — just an honest assessment of where your operation sits and what the next 12 months could look like.

No sales process. A genuine diagnostic call within 5 business days.

What Happens in the 30-Minute Call

0–8 min

Operation Overview

You brief us on scale, crops, current systems, and the pressure you're under.

8–18 min

Gap Identification

We map your operation against our benchmark database. Where are the largest yield-per-input gaps?

18–26 min

Rough Opportunity Sizing

Conservative estimate of what Phase 1 (Audit) would surface. No commitment required.

26–30 min

Next Steps

If there's mutual fit, we outline the Audit scope and timeline. You leave with a written summary.

Direct Calendar Scheduling

Prefer to book directly? Schedule a 30-minute diagnostic call with a senior Cultivate engineer.

March 2026
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