EFG International

AI Engineer

EFG International  •  Genève, CH (Hybrid)  •  2 months ago
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Job Description

General Info

  • Department: Data Office
  • Work time Percentage: 100%
  • Location: Geneva

Our Company

EFG International is a global private banking group, offering private banking and asset management services. We serve clients in over 40 locations worldwide. EFG International offers a stimulating and dynamic work environment and strives to be an employer of choice.

EFG is committed to providing an equitable and inclusive working environment that is founded on the principle of mutual respect. Joining our team means experiencing a supportive environment, where your contributions are valued and recognised. We strongly believe that the diversity of our teams gives us a competitive advantage by fostering better decision-making and greater innovation.

Our Purpose and Mission

Empowering entrepreneurial minds to create value – today and for the future.

We are a private bank, offering personalised solutions on a global scale to private and institutional clients. Our sustainable success is based on our talents and on how we partner with our clients and communities to create lasting value.

Introduction of the team

  • At EFG we want to create value fom data. Within our Data Office department, we’re seeking a highly skilled and motivated AI Software Engineer to join our Machine Learning & GenAI team. You will embark on building a new, scalable AI platform and design, build, and deploy AI-driven systems that deliver measurable business impact.
  • This is an excellent opportunity to make a significant impact in a growing organization committed to delivering an outstanding digital banking experience for our clients.

Main responsibilities

  1. 1) Platform and Architecture
  • Design and build a hybrid (on-prem / on-cloud) AI/ML platform to run AI use cases at scale (feature stores, model registry, experimentation, evaluation, observability).
  • Define and implement secure, reliable inference and training architectures, including vector search and RAG components where applicable.
  • Provide platform support for embeddings, vector databases, and AI agentic communication protocols to enable grounded, interoperable AI workflows.
  • Document machine learning processes, system architecture, and operational runbooks for reproducibility and knowledge sharing.
  1. 2) Model Development & Evaluation
  • Collaborate on training, fine-tuning, and optimizing models (LLMs, NLP, recommendations), including LoRA/PEFT when relevant.
  • Implement guardrails and prompt strategies to reduce hallucinations and improve safety and consistency, and support agentic workflows.
  • Establish evaluation frameworks for RAG and LLM systems.
  1. 3) Software Development & MLOps
  • Own end-to-end software development of AI services and APIs (from design and coding to testing and deployment).
  • Automate build, test, and deployment using CI/CD pipelines; manage model/version releases via model registries.
  • Implement continuous monitoring for deployed AI systems.
  1. 4) Product & Stakeholder Collaboration
  • Work closely with Business Users, Product Owners, Business Engineers, Data Managers, Data Scientists, and technology teams to understand AI/ML use cases, requirements, and success metrics.
  • Partner with Data Scientists to iterate on prototypes and convert them into robust, scalable production services.
  • Translate emerging GenAI/Agentic AI capabilities into actionable product opportunities and reusable components for the Bank.
  1. 5) Security, Privacy, and Compliance
  • Ensure all AI/ML solutions meet bank-wide data and AI guidelines and standards, including data protection, cyber security, and responsible AI practices.
  • Embed privacy-by-design, access controls, encryption, and auditability across data flows and model operations.
  • Collaborate with Risk, Security, and Compliance to align with SOC 2, GDPR/CCPA, and internal governance.

Skills and experience

1) Education

  • Advanced degree in Computer Science, Data Science, Mathematics, Statistics, Physics, or related.

2) Must-Have

  • Extensive knowledge of ML/AI frameworks: PyTorch or TensorFlow; Hugging Face ecosystem; LangChain/LlamaIndex or equivalent for orchestration, data structures, data modeling, and software architecture.
  • Practical LLM experience: prompt engineering, fine-tuning/LoRA, embeddings, vector databases (FAISS, Pinecone, Weaviate), RAG patterns.
  • Solid programming skills in Python, R or Java/Scala, hands on experience in SQL, ETL tool and Linux and Control-M & Terraform knowledge are a plus.
  • Prior experience deploying applications on cloud environments (Azure); familiarity with hybrid on‑prem/cloud setups.
  • Experience building production-grade services and APIs (REST/gRPC), cloud-native (AWS/GCP/Azure), containers (Docker), and orchestration (Openshift, Kubernetes).
  • MLOps foundations: experiment tracking (MLflow/W&B), model registries, CI/CD, model monitoring, feature stores.
  • Ability to monitor, debug, and maintain CI/CD pipelines that feed into production deployments (GitHub Actions/GitLab CI/Azure DevOps).
  • Data engineering proficiency: SQL, data modeling, ETL/ELT, and working with warehouses/lakes (Snowflake, BigQuery, S3/Delta).
  • Ability to work in a SCRUM/Agile environment with a focus on delivery and stakeholder collaboration.
  • Excellent analytical and problem-solving abilities; results- and detail-oriented with strong written and verbal communication.
  • Experience in the Banking Or Wealth Management Industry is an advantage

3) Nice-to-Have

  • Experience deploying and optimizing open-source models (Llama, Mistral, Mixtral) on GPUs; quantization (INT8/4), tensor/Flash attention.
  • Knowledge of retrieval systems (BM25, hybrid search), semantic caching, and structured tool use/agents.
  • Evaluation expertise for LLMs: rubric-based grading, golden sets, adversarial testing, and A/B experimentation.
  • Security practices for AI applications: prompt injection defenses, output filtering, content moderation, and red-teaming.
  • Contributions to open-source AI projects or published work.

Our Values

  • Accountability: Taking ownership for tasks and challenges, as well as seeking continuous improvement
  • Hands-on: Being proactive to rapidly deliver high-quality results
  • Passionate: Being committed and striving for excellence
  • Solution-driven: Focusing on client outcomes and treating clients fairly with a risk-aware mindset
  • Partnership-oriented: Promoting collaboration and teamwork. Working together with an entrepreneurial spirit.
  1. Please ensure to attach a cover letter to your CV when filling the application.

Application

  1. Should you wish to apply for this position use this link to apply.
EFG International

About EFG International

EFG International is a global private banking group offering private banking and asset management services and is headquartered in Zurich. Its registered shares (EFGN) are listed on the SIX Swiss Exchange. As a leading Swiss private bank, EFG International has a presence in major financial centres and growth markets, operating in around 40 locations worldwide, with a network spanning Europe, Asia Pacific, the Americas and the Middle East.

As one of the best-capitalised Swiss private banks, EFG International is a financial partner that offers the security and solidity needed to provide clients with effective support. An entrepreneurial spirit has shaped the bank since its inception, enabling it to develop hands-on solutions and to build long-lasting client relationships.

In other words: Entrepreneurial thinking. Private banking.

Industry
Finance & Insurance
Company Size
1,001-5,000 employees
Headquarters
Zürich, CH
Year Founded
1980
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