Machine Learning Consultant in Geneva

Build Intelligent Systems That Learn and Adapt

Based in: Geneva, Switzerland

Expert machine learning consultant in Geneva specializing in building production-ready ML systems. From predictive models to recommendation engines, I help businesses leverage machine learning for competitive advantage. 8+ years experience deploying ML solutions that drive measurable business value.

Why Choose Me

Production-grade ML systems serving 30K+ users

Expertise in scikit-learn, TensorFlow, PyTorch

End-to-end ML pipeline development and deployment

MLOps best practices for reliable, scalable systems

Focus on business ROI, not just model accuracy

Experience across multiple ML domains (NLP, CV, recommendations)

Cloud-native deployments on AWS, Azure, GCP

Model monitoring and continuous improvement

Geneva-based with global ML project experience

Services Offered

Predictive Modeling

Build models to forecast customer behavior, sales, demand, churn, and other business outcomes. Use advanced ML algorithms for accurate predictions.

Recommendation Systems

Create personalized recommendation engines for products, content, or services. Collaborative filtering, content-based, and hybrid approaches.

Classification & Segmentation

Develop models for customer segmentation, fraud detection, quality control, and classification tasks. Support vector machines, random forests, and deep learning.

Natural Language Processing

Build NLP solutions for sentiment analysis, text classification, named entity recognition, document processing, and language understanding.

Computer Vision

Implement image recognition, object detection, visual search, and quality inspection systems. CNNs, YOLO, and modern vision transformers.

MLOps & Deployment

Deploy ML models to production with proper monitoring, versioning, A/B testing, and continuous delivery. Docker, Kubernetes, cloud platforms.

Frequently Asked Questions

What's the difference between AI and machine learning?

Machine learning is a subset of AI focused on systems that learn from data. While AI is a broad concept of machines performing intelligent tasks, ML specifically uses algorithms that improve through experience. Most practical AI applications today are built using ML techniques.

How much data do I need for machine learning?

It depends on the problem complexity. Simple models might work with hundreds of examples, while deep learning typically needs thousands. However, techniques like transfer learning and data augmentation can work with smaller datasets. I'll assess your specific situation during consultation.

How do you prevent ML models from being biased?

I implement bias detection and mitigation strategies including diverse training data, fairness metrics, regular audits, and techniques like reweighting and adversarial debiasing. Fairness and ethics are built into every ML project.

What's your process for ML project development?

I follow a structured approach: 1) Problem definition and data assessment, 2) Exploratory data analysis, 3) Feature engineering, 4) Model development and validation, 5) Deployment and monitoring, 6) Iteration based on real-world performance.

How long does it take to build an ML model?

Simple models can be prototyped in 1-2 weeks. Production-ready systems typically take 2-4 months including data preparation, model development, testing, and deployment. I always start with a quick proof of concept to validate feasibility.

Can you explain how ML models make decisions?

Yes! Model interpretability is crucial. I use techniques like SHAP values, feature importance analysis, LIME, and visualization tools to explain model predictions. This is essential for stakeholder trust and regulatory compliance.

Ready to Build Intelligent ML Systems?