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Continuously
adjust your processes
 with predictive production capabilities

With our AI connected to your production, anticipate issues and adjust your processes in real-time. Our model analyzes trends and predicts variations to ensure optimal production, reduce costs, and improve efficiency at every stage.

Photo d'une usine de production
today
Adjusting
your production
Production variability that's difficult to control
Lack of anticipation for drift and performance loss
Rigid planning that's ineffective against the unexpected

Continuously
adjusting processes with AI
means ensuring

80
%

Non-production time eliminated

50
%

Improvement in quality rate

50
%

Savings on energy costs

the Juno method to

See results on your production line in 6 weeks.

step 1

Discovery & Process Understanding

We start with a plant visit to understand how your process actually works. Our team walks your production line, maps the process with your engineers, and captures the expertise that drives quality.

We analyze 6–12 months of historical data to identify what parameters truly matter and what constraints must be respected.

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step 2

Build your custom AI model

We clean your data and train a custom AI model that combines your historical performance with the expert knowledge we captured on-site.

This isn't generic machine learning — it's a model built specifically for your process, your constraints, and your quality standards.

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3
step 3

Live trial & validation

We apply recommendations on actual production runs — starting conservatively, then iterating based on what we learn. Your process engineers stay in control while we capture results and refine the model.

After 2-3 iterations, we present a readout showing proven results and a plan for scaling across your operations.

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3

All your questions answered

How is Juno different from other AI solutions we've tried?

Most AI vendors analyze your data remotely and deliver generic recommendations. Juno starts with plant visits — our engineers walk your production line, map the process with your team, and capture the expertise that drives quality. We then build custom AI models that combine your data with this domain knowledge. It's not plug-and-play AI; it's AI built specifically for your process.

What types of manufacturing processes does Juno work with?

Juno specializes in continuous and batch manufacturing processes including injection molding, extrusion, blow molding, coating, mixing, and assembly. If your process has adjustable parameters (temperature, pressure, speed, time) and measurable quality outcomes, Juno can optimize it.

How long does it take to see results?

Our standard pilot runs 6 weeks: 1 week for discovery and process mapping, 2 weeks to build and validate your custom AI model, then 2-3 weeks of live production trials to prove results. You'll see recommendations applied on your actual production line during the pilot — not just theoretical analysis.

Do we need data scientists or AI expertise on our team?

No. Juno is designed for process engineers, not data scientists. We handle all the AI complexity — data cleaning, model training, and validation. Your team focuses on what they do best: understanding the process and deciding which recommendations to implement.

What if our data is incomplete or messy?

That's normal. Most plants have data gaps, inconsistent timestamps, or missing quality records. Part of our discovery phase is auditing your data and identifying what's usable. We've built pilots with as little as 3 months of historical data when combined with strong process expertise from your engineers.

How do you protect our proprietary process knowledge and data?

All data and process knowledge captured during discovery and pilots remain strictly confidential. We sign NDAs upfront, store data in secure, isolated environments, and never share insights across customers. Your competitive process expertise stays yours — Juno just helps you leverage it more effectively.

What kind of results can we expect?

Results vary by process and KPI focus, but pilot customers typically see 15-30% improvements in their target metric — whether that's reduced scrap, improved first-time yield, faster cycle times, or lower energy consumption. We define success criteria upfront during kickoff so expectations are clear from day one.

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