Proxym Group
Proxym Group
Tunisie

30 Intelligent Financial Product Recommendation Engine PFE

Artificial Intelligence / Machine Learningbackend developmentMobile/Web Development

Publié il y a 6 mois

Stage
⏱️3 mois
💼Hybride
📅Expiré il y a 6 mois
Reste lisible (ATS friendly).

Description du poste

Project overview

  • Develop an AI module integrated into an existing banking solution to provide personalized financial product recommendations (savings, investments, loans, insurance).
  • The system analyzes transactions, spending habits, financial history and demographic data to generate proactive, relevant and personalized recommendations while ensuring privacy and compliance.

Responsibilities & scope

  • Design and implement data pipelines to aggregate and preprocess client transaction, behavior and profile data for model consumption.
  • Build and train recommendation models or rule-based hybrid engines to score and rank appropriate financial products for each client.
  • Integrate the AI module with the existing backend (Java / Spring Boot) and expose APIs for the web/mobile client stack (React JS / React Native).
  • Implement intelligent notifications and delivery mechanisms via the client interface (web and mobile).

Technologies & required profile

  • Required technologies: React JS / React Native for client integration, Java / Spring Boot for backend services, PostgreSQL for data storage.
  • Engineer profile expected; project open for 1 trainee (PFE) to join and work under supervision of the engineering team.
  • Strong knowledge expected in data analysis, machine learning / recommender systems, REST APIs and relational databases.

Security, compliance & quality

  • Ensure recommendations respect user privacy and comply with banking regulations and internal policies.
  • Implement data handling safeguards, anonymization where required, and logging/auditing for compliance review.
  • Deliver unit and integration tests for the module and provide deployment and rollback procedures.

Deliverables & outcomes

  • A deployed AI recommendation module integrated into the bank’s solution with documented APIs consumed by web/mobile clients.
  • Source code, model artifacts, test suites, and technical documentation (integration guide, data schema, compliance notes).
  • A final project report and demo showing end-to-end flow: data ingestion → scoring → recommendation delivery via client interfaces.

How to apply

  • Apply via the trainees platform: https://trainees-platform.proxym-group.net
  • Use the email subject line when contacting HR or referencing the project: "PRX-2026-15 - Application - Intelligent Financial Product Recommendation Engine PFE"