Job Summary
Adecco is partnering with one of the most well-established and respected financial institution with a strong track record of success. They have a culture of innovation and continuous improvement, constantly looking for ways to improve their services and offerings. Our client is looking for a Machine Learning/AI Engineer to handle transversal and international projects. Candidates would have the hands-on opportunity to build models, build engineer scalable, production-grade ML systems.
Main Responsibilities
- Collaborate with business stakeholders to understand use cases and define AI solution work on Proof of Concepts wherever needed
- Engineer and deploy ML models into production using MLOps best practices (model versioning, monitoring, CI/CD, etc.).
- Build & maintain data pipelines and model performance for scalability and maintainability.
- Ensure all models adhere to organizational AI policies, responsible AI practices, and audit requirements.
- Support data exploration, feature engineering, and occasional model building where needed.
- Automate model retraining, testing, and monitoring to ensure performance over time.
- Document ML workflows, governance checkpoints, and risk assessments.
- Partner with various teams to integrate solutions into enterprise platforms.
Qualifications and Profile
Mandatory:
- Have degree or master's degree in the field of AI / ML and data science with proven ability to design and develop models
- 8+ years of experience in software development, data science and ML, with at least 3+ years in AI engineering roles.
- Proven experience in end-to-end ML lifecycle: data wrangling, model development, deployment, and monitoring.
- Strong programming skills in Python with Solid knowledge of AI/ML, including LLMs and data science libraries like pandas, scikit-learn, TensorFlow/PyTorch, etc.
- Experience with LLM Orchestration frameworks like Langchain, LangGraph, vLLM, LMDeploy.
- Strong knowledge in NoSQL databases (any experience in Graph database is desirable)
- Experience with MLOps tools: MLflow, Airflow, Kubeflow, or similar.
- Familiarity with either of cloud platforms (GCP, AWS) for AI Solutioning and ML deployment.
- Knowledge of data science techniques including supervised/unsupervised learning, NLP, time series, etc.
- Experience with CI/CD pipelines and containerization (Docker, Kubernetes).
- Strong understanding of AI governance, model risk management, and regulatory requirements in AI.
- Ability to communicate technical concepts to non-technical stakeholders.
Preferred skills:
- Experience with Responsible AI frameworks and bias/fairness testing.
- Exposure to feature stores, model registries, and data versioning.
- Knowledge of data privacy, anonymization, and compliance in regulated industries (e.g., banking, healthcare).
Next Step
- Prepare your updated resume and expected package.
- Simply click on Apply here or email to [Confidential Information] to drop your resume.
- All shortlisted candidates will be contacted.
Tamanna Bilandi
EA Licence No. 91C2918
Personnel Registration No. R2096241