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AgriTech in production: IoT for crops, supply chain traceability and AI for yields.
- Crop & machinery monitoring (IoT, telemetry, MQTT)
- Farm-to-fork traceability — audit-ready in hours, not weeks
- AI: yield prediction & disease detection (TensorFlow, satellite data)
- Full code ownership. Your repository, your infrastructure.
No obligations. NDA on request.
When data lives in spreadsheets, decisions come too late.
- No telemetry = reactive decisions — you learn about drought from wilted crops
- Manual traceability = audit risk — a single recall costs more than a full system
- Excel yield planning = 15-20% error margin — losses invisible until harvest
- No fleet tracking = idle machines, wasted fuel, unmeasurable field time
EU food recall costs average €10M per incident. 80% are traceable to manual data gaps.
Supply chain without traceability — where errors hide
When this is the right solution
- Makes sense when:
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- You manage 50+ ha or multiple production sites
- You export to the EU and need compliance-ready traceability
- You have sensor data (or want to deploy sensors) and need a central platform
- Decisions today are based on experience, not live data
- You have a clear process owner (COO, Farm Manager, CTO)
- Doesn't make sense when:
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- You're looking for an "app for everything" without a defined process
- Budget under 20,000 PLN — a pilot needs a minimum scope to prove value
- No internal champion — software without an owner becomes shelfware
- You need a ready SaaS, not a custom platform
Three implementation paths: CUSTOM DEV, NEURAL, LAUNCH
Precision Farming & IoT Monitoring
Dashboards for real-time crop monitoring. MQTT / AWS IoT integration. Fleet tracking, irrigation automation, traceability system farm-to-fork.
- Precision Farming & IoT Monitoring
- Precision Farming Platform: centralized IoT-driven system for real-time crop monitoring, automated irrigation, and supply chain traceability in agriculture.
AI for Agricultural Data
Yield prediction models (TensorFlow). Disease and pest detection from drone/satellite imagery. Soil analysis optimization and variable-rate application maps.
- AI for Agricultural Data
- Agricultural AI: machine learning models trained on field data to predict crop yields, detect plant diseases, and optimize input application rates.
AgriTech MVP in 4-6 weeks
Hypothesis validation before full investment. Working prototype with real field data. Pilot on one area, measurable results, go/no-go decision based on evidence.
- AgriTech MVP in 4-6 weeks
- AgriTech MVP Development: rapid prototyping of agricultural technology solutions with field validation to prove ROI before scaling.
Case studies from implementations: from data to decisions
Crop monitoring IoT: alerts instead of field inspections
- Problem
- Grain producer (800 ha) lost 12% of yield annually due to late drought and pest detection.
- Solution
- Deployed 120 soil sensors + weather stations with central IoT dashboard and real-time alert system.
- Result
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- Yield loss reduced from 12% to 3%
- MTTR for irrigation issues: 4h → 20min
Farm-to-fork traceability: audit in minutes
- Problem
- Dairy processor failed 2 EU compliance audits due to manual batch tracking in spreadsheets.
- Solution
- Built end-to-end traceability platform with QR codes, batch genealogy, and automated compliance reports.
- Result
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- Audit preparation: 3 weeks → 2 hours
- 0 compliance failures since deployment
Yield prediction AI: decisions based on data, not intuition
- Problem
- AgriTech startup needed to validate yield prediction model with real field data from 3 growing seasons.
- Solution
- Trained TensorFlow model on satellite + sensor data. Built prediction dashboard with variable-rate application maps.
- Result
-
- Prediction accuracy: 94% (vs. 68% manual)
- Input cost reduction: 22%
Implementation process: pilot → rollout → maintenance
Each step has a clear deliverable. You know what you're getting — before we write code.
Operational Discovery (1-2 weeks)
Process mapping, data audit, sensor readiness assessment. You get an architecture document and risk map.
Data Architecture (1 week)
Data pipeline design, IoT protocol selection (MQTT/AMQP), integration map. Schema for traceability and sensor streams.
Pilot (1 area) (2-6 weeks)
Working system on one field/production line. Real data, real alerts, measurable results. Go/no-go decision based on evidence.
Rollout (scaling) (6-12 weeks)
Expanding to remaining areas, integration with ERP/WMS, user training. Architecture tested under production load.
Maintenance (SLA) (Ongoing)
Monitoring, incident response, seasonal updates, data model optimization. Defined SLA with response time commitments.
Data Readiness Checklist
- IoT sensor data available via API or exportable
- Historical yield data (min. 2 seasons)
- Defined production process (field → storage → dispatch)
- Internet connectivity on site (Wi-Fi/LTE/LoRaWAN)
- Internal data owner / process champion assigned
- Budget approved for pilot scope (min. 4 weeks)
Quality proof: security, code ownership, auditability
Every project is delivered with a private repository, documented code review process, and full data audit trail.
- Client repository with full commit history
- Code review on every merge — zero cowboy commits
- Data audit trail — who changed what, when, why
- Infrastructure-as-code (Terraform / Pulumi)
Implementation packages for AgriTech
Discovery
Process mapping before code
1-2 weeks
- Process audit & data mapping
- Sensor readiness assessment
- Architecture document
- Integration map (ERP/WMS/IoT)
- Go / No-Go recommendation
Pilot
Proof on one area
2-6 weeks
- Everything in Discovery
- IoT platform for 1 field/line
- Real-time dashboard + alerts
- Basic traceability module
- Measurable KPI report
- Full code handoff
Rollout
Full production scale
6-12+ weeks
- Everything in Pilot
- Scaling to all areas
- ERP/WMS integration
- AI prediction models
- User training & onboarding
- Infrastructure-as-code
Maintenance
Ongoing operations & SLA
Monthly
- 24/7 monitoring + on-call
- Seasonal model updates
- Sensor health checks
- Data pipeline optimization
- Monthly performance reports
Final pricing depends on scope, sensor count, and integration complexity. Free estimate after Discovery call.
What is NOT in scope
- AI without historical data — models need training material
- Being a complete ERP — we integrate with yours, not replace it
- Hardware procurement — we specify, you purchase
- Agronomic consulting — we build tools, not farming advice
Most common objections — our principles
FAQ: IoT, AI, traceability in agriculture
Start with a pilot. See data in a week, decisions in a month.
You'll get: process audit, architecture, pilot plan. NDA on request. Zero spam.
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