Premium Tunisian engineering, delivered remotely, in 3 languages.
From Tunis, we deliver for organizations in Europe, Africa, and the Middle East. Trilingual teams, native French, English, Arabic. Mastered remote work, processes refined over 14 years, stable senior engineers. No promises, only production delivery.
 
  • OUR APPROACHThree commitments kept for 14 years, without compromise.
Our value proposition isn’t a sales pitch, it’s what we’ve held for 14 years, project after project, for 180+ clients across three continents. Three simple commitments, but hard to hold over time.

Premium quality, as the standard

No juniors disguised as seniors.
No “low-cost” profiles with inflated titles.
Our engineers average 3 to 8 years of real experience, with solid initial training and verifiable references.
We don’t charge clients for ongoing training, we absorb it.

Native trilingualism

French, English, Arabic, all at professional native level.
Not approximate French or English Our engineers write your specifications, lead your agile ceremonies, draft your technical documentation in the language of your stakeholders, including Arabic for Middle East and North Africa clients.

Institutional stability, proven

14 years of continuous operation. 85%+ retention rate over 3 years. On long-term engagements (banks, insurers, governments), zero rotation on the core team.
No “consultants rotating every 6 months”, our engineers are full-time employees, and our clients see the same faces year after year.
 
  • USE CASESFive ML use cases that deliver measurable ROI

These are the machine learning use cases we’ve deployed most often in production, each addressing a specific business question with quantifiable outcomes.

Churn Prediction

Know which customers will leave 30 to 60 days before they do, giving your customer success team time to intervene with the right offer, not a last-minute discount.

Demand Forecasting

Predict what customers will buy, when, and in what quantities, across product categories, geographies and seasons. Reduces stockouts and overstock simultaneously.

Real-Time Fraud Detection

Catch fraudulent transactions in real time without blocking legitimate customers, reducing fraud losses while keeping the false positive rate low enough to preserve customer experience.

Personalized Recommendations

Give customers what they want before they know they want it, boosting conversion rates and average order value through personalized product recommendations based on real behavior, not just demographics.

Predictive Maintenance

Know when equipment will fail weeks before it does, replacing emergency repairs (expensive, disruptive) with scheduled maintenance (cheap, predictable). Critical for manufacturing, energy and transportation.

 
  • HOW AI CREATES VALUEIntelligence that continuously improves 
Machine learning systems learn, adapt and evolve over time, unlike static rule-based systems that must be manually updated.
More Accurate
Decisions
ML models analyze complex patterns across large datasets that no human, or no rule-based system, could process, producing decisions that are both faster and more accurate than traditional approaches. Accuracy typically improves by 20 to 40% versus rule-based systems on comparable tasks.
Scalability Without Complexity

ML automates decision-making at scale, allowing organizations to grow without increasing operational overhead.

Continuous
Optimization

Models improve as your data grows — delivering increasing value over time instead of static, decaying outcomes. A well-maintained model becomes more accurate each quarter it runs in production.

TRANSFORM DATA INTO INTELLIGENT ACTIONS.

Every ML engagement starts with a discovery workshop to align on the business outcome we’re building toward.

  • tools we useA modern machine learning stack, operated in production
Machine learning works best when it’s built with clarity and intent. We build ML solutions that are explainable, maintainable, and aligned with real business outcomes, designed to create trust, adoption, and long-term value, not just a clever demo. We’re framework-agnostic: we use what’s right for your problem, not what’s trendy this month.

FRAMEWORKS

CLOUD

MLOPS

DEPLOYMENT

READY TO PREDICT THE FUTURE?

Your competitors are already using ML. The question isn't whether you'll adopt It, it's whether you'll be early or late. We help you be early, with a structured 4-week POC that proves value before full deployment.

 

  • CASE STUDIESOUR WORK SPEAKS FOR ITSELF

Explore our portfolio of bold and impactful projects, designed to inspire and deliver excellence.

case study oof STEPS : Business Smart Travel Management

Travel & hospitality

A digital illustration shows a laptop displaying a colourful customer segmentation grid. Text on the left describes MOOST, an AI marketing tool by Steps Tunisia, highlighting its web development & AI features for profiling and segmenting customers.

AI & Data

 

  • FAQFREQUENTLY
    ASKED QUESTIONS

It depends on the complexity, but here are general guidelines:

For simple classification (lead scoring, basic churn): 5,000 to 10,000 records minimum, 50,000+ ideal.

For complex patterns (fraud detection, demand forecasting): 50,000 to 100,000 records minimum, 500,000+ ideal.

For deep learning: 100,000+ minimum, millions ideal.

More important than quantity is quality. 10,000 clean, relevant records beats 1 million noisy ones. During our Discovery phase, we assess your data and tell you honestly if you have enough.

What’s the difference between ML and traditional analytics?

Traditional analytics answers: What happened? Why did it happen?

Machine learning answers: What will happen? What should we do?

Traditional analytics looks backward. It tells you that sales dropped 15% last quarter and helps you understand why.

Machine learning looks forward. It tells you which customers will churn next month, which products will sell out, which transactions are fraudulent.

Both are valuable. Most companies need both. We often start with analytics (dashboards) and add ML when the foundation is solid.

Discovery phase: 1-2 weeks. You’ll know if ML is feasible for your use case.

POC with accuracy metrics: 4-6 weeks. You’ll see real numbers on your real data.

Production deployment: 10-16 weeks total from start.

ROI realization: Typically 2-6 months after deployment, depending on use case.

The POC phase is designed to prove value quickly. If it doesn’t hit accuracy targets, you don’t proceed to production.

No. We design for low-maintenance operation.

What’s automated: Model retraining on schedule, data drift monitoring, performance alerts, basic issue detection.

What you need: Someone to review alerts (can be a business user), domain experts to validate edge cases, IT support for infrastructure (or we can host it).

Optional: Our MLOps retainer  handles all ongoing maintenance if you don’t want to manage it internally. Most clients without data science teams choose this option.

ML models can degrade as patterns change. We address this with:

Monitoring: We track prediction accuracy continuously, detect data drift (when input patterns change), and alert you when performance drops below thresholds.

Retraining: Models are retrained on schedule (weekly, monthly) or triggered when drift is detected. New models are tested before replacing old ones.

Human oversight: Regular performance reviews, feedback loops from end users, and quarterly model audits.

This is all included in our MLOps retainer, or we train your team to do it.

Yes. We design for integration, not replacement.

Common integration patterns: REST API (your app calls our model), batch scoring (we score data on schedule), CRM integration (predictions in Salesforce, HubSpot), ERP integration (forecasts in SAP, Oracle), webhooks (trigger actions based on predictions).

We’ve integrated with virtually every major system. If it has an API or database access, we can connect to it.

We define ROI metrics during Discovery, before building anything.

For churn prediction: Revenue retained minus project cost. If we reduce churn from 18% to 12% on a €10M customer base, that’s €600K saved annually.

For fraud detection: Fraud prevented minus project cost plus false positive reduction value.

For demand forecasting: Inventory cost savings (reduced stockouts plus reduced overstock).

For recommendations: Incremental revenue attributed to recommendations minus project cost.

We build ROI tracking into every deployment so you can see value continuously, not just at the en

We’ve deployed ML models across:

Financial services: Fraud detection, credit scoring, churn prediction, customer segmentation, AML monitoring.

Retail and e-commerce: Demand forecasting, recommendation engines, price optimization, customer lifetime value.

Telecommunications: Churn prediction, network optimization, customer segmentation.

Manufacturing: Predictive maintenance, quality prediction, demand forecasting, supply chain optimization.

Healthcare: Patient risk stratification, readmission prediction, resource optimization.

Energy and utilities: Consumption forecasting, anomaly detection, predictive maintenance.

The algorithms are similar across industries. What changes is domain knowledge and feature engineering. We bring both.

 
  • BLOG & NewsINSIGHTS, TIPS & news
    About AI and digital world
Ready to turn your data into predictions?

Book a 60-minute ML discovery call. We review your data, identify the highest-ROI use cases for your business, and provide a POC plan within 5 business days, no obligation to continue.