AI/ML Architect

Posted 18ds ago

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Job Description

AI/ML Architect leading design, development, and operationalization of AI solutions for ELEKS. Collaborating with cross-functional teams to translate requirements into robust AI systems.

Responsibilities:

  • Design end-to-end AI/ML architectures, including data ingestion pipelines, feature stores, model training, deployment patterns, and monitoring frameworks
  • Lead the evaluation and selection of AI/ML tools, frameworks, cloud components, and platforms
  • Define standards, best practices, and governance frameworks for responsible AI usage
  • Partner with product and engineering leadership to shape the long-term AI roadmap
  • Provide expert guidance across the full ML lifecycle: data preparation, modeling, experimentation, optimization, deployment, monitoring
  • Architect scalable solutions using Python-based ML stacks (e.g., TensorFlow, PyTorch, Scikit-Learn) and modern cloud environments (AWS, Azure, GCP).
  • Support the development of LLM-based applications, vector database architectures, and retrieval-augmented generation (RAG) systems
  • Evaluate new AI capabilities (e.g., agent frameworks, fine-tuning strategies, MLOps automation)
  • Oversee the technical design of AI projects and ensure solution quality, reliability, and security
  • Work with cross-functional teams to define clear success metrics for AI initiatives
  • Conduct architecture reviews, code reviews, and technical deep dives
  • Mentor engineers and data scientists to elevate technical excellence.

Requirements:

  • 7+ years of experience in data science, machine learning, or AI engineering
  • 3+ years in a senior or principal-level architectural role
  • Strong proficiency in Python and common ML/AI frameworks (TensorFlow, PyTorch, Scikit-Learn, transformers libraries)
  • Hands-on experience with:
  • Cloud AI services (AWS Sagemaker, Azure ML, GCP Vertex AI)
  • Data engineering tools (Spark, Databricks, Airflow, Kafka)
  • LLM architectures, fine-tuning, embeddings, vector stores (FAISS, Pinecone, Weaviate)
  • MLOps tools (MLflow, Kubeflow, DVC, CI/CD pipelines)
  • Solid understanding of distributed computing, APIs, microservices, and containerization (Docker, Kubernetes).

Benefits:

  • Close cooperation with a customer
  • Challenging tasks
  • Competence development
  • Team of professionals
  • Dynamic environment with a low level of bureaucracy