Our client, a leader in data-driven solutions, is seeking ML Engineers to contribute to their AI-driven automation and efficiency projects in the US. This role is part of a larger company’s strategy leveraging Generative AI (GenAI) to enhance workflows, decision-making, and data management of the enterprise solutions in tax, auditing and risk management used by the largest companies in the world.
The project is focused on building proof-of-concept (POC) applications and then converting them into scalable, production-ready systems using large-scale Neural Networks, Deep Learning and Reinforcement Learning techniques.
This is a remote-first position for engineers based in Europe, Turkey, Georgia, Armenia, or the United Arab Emirates with a required overlap of US working hours (2-6 PM CET).
Responsibilities
- Develop and train transformer-based models for text and image processing, ensuring high performance and scalability. 
- Design and manage the full model lifecycle, from data preparation and model architecture to training, validation, deployment, and continuous monitoring. 
- Collaborate with cross-functional teams, including data scientists, software engineers, and domain experts, to build and implement AI-driven solutions that align with business objectives. 
- Stay up to date with the latest advancements in AI and machine learning, incorporating cutting-edge techniques and technologies to enhance model effectiveness. 
Requirements
- Strong expertise in large-scale Neural Networks, Deep Learning, and Reinforcement Learning techniques, with a focus on real-world applications. 
- Hands-on experience with GenAI projects and related frameworks, including RAG applications, vector databases, LangChain, LlamaIndex, and agentic frameworks. 
- Advanced proficiency in Python and machine learning libraries, such as SciPy, Scikit-learn, TensorFlow, PyTorch, pyMC, and pgmpy. 
- Practical experience with cloud computing platforms, preferably Azure, but also AWS or GCP. 
- Deep understanding of the full ML lifecycle, with hands-on experience in MLOps and DataOps practices. 
- Strong background in Probabilistic Graphical Models, including Bayesian Networks, Markov Random Fields, and Factor Graphs. 
- Excellent problem-solving skills and keen attention to detail. 
Work Conditions
- Start Date: ASAP 
- Location: Remote (99%); must be able to travel freely within the UK & Europe for workshops. 
- Onsite Requirements: Mandatory planning sessions/workshops (1x per year). 
- US Time Zone Overlap: Required (2 AM - 6 PM CET) 
Highlights
If you are passionate about ML Engineering, LLMs, and AI applications, this role with our client offers an exciting opportunity to work on impactful projects!
