Full-stack ai engineer
Role details
Job location
Tech stack
Job description
Prepare, clean, and curate high-quality datasets for modeling. You'll also design and maintain a feature store to ensure consistent, reliable data availability for training and inference. * Build Robust Data & ML Pipelines Develop and maintain end-to-end data and machine learning pipelines-from ingestion to deployment and monitoring. This includes building analytics infrastructure using reusable dbt models and designing scalable workflows with Airflow. * Develop and Deploy Models Take a hands-on role in model design, training, and evaluation. You'll explore and prototype solutions using a range of neural architectures, including but not limited to LLMs, ensuring performance, reproducibility, and reliability. * Implement Advanced Retrieval Systems Design and experiment with Retrieval-Augmented Generation (RAG), Graph RAG, and related methods to enhance information retrieval and reasoning. This includes graph construction, entity linking, and hybrid scoring strategies. * Enable
Requirements
On-Device Intelligence Quantize and optimise larger models into efficient versions suitable for on-device and edge processing when appropriate. Our Ideal Candidate * End-To-End Ownership Experience delivering complete AI components-from planning and modeling to deployment, monitoring, and iteration. * Modeling Expertise Strong Python skills and deep familiarity with ML frameworks such as Scikit-Learn, TensorFlow, PyTorch, and Hugging Face. You're comfortable designing, evaluating, and prototyping diverse model types. * MLOps & Data Engineering Proficiency Hands-on experience with MLOps tools (e.g., MLflow, Zen ML), dbt modeling, and working with cloud data warehouses or data lakes. * Pipeline & Data Skills Experience building and scheduling pipelines in Airflow. Familiarity with modern data stacks such as Kafka, Spark, and cloud warehouses (BigQuery, Redshift, Snowflake). Ability to define event-level tracking schemas for reliable analytics. * Problem-Solving & Evaluation Strong understanding of model behavior and evaluation. Experience developing frameworks for assessing model quality, reliability, hallucination detection, prompt regression, safety scoring, or multi-hop reasoning. Familiarity with RAG, graph-based retrieval, and prompt design. * Practical, Builder Mindset A focus on shipping systems that are robust, explainable, and usable by others. #J-18808-Ljbffr