Applied Ai/ml Scientist

Cerebras · Semiconductors · United Arab Emirates · AppliedML

Applied AI Scientist role focused on developing and customizing large language and deep learning models for customer problems using Cerebras' wafer-scale engine. Responsibilities include customer use case discovery, architecting and executing end-to-end training recipes, fine-tuning models, building agentic system components, and providing technical customer leadership. Requires strong expertise in deep learning, large model training/fine-tuning, Python, PyTorch, and distributed training.

What you'd actually do

  1. Architect and execute end-to-end training recipes for custom models, tailoring model architecture and training recipes to meet customer-specific performance and accuracy requirements.
  2. Design and implement sophisticated adaptation strategies, including continuous pre-training on private datasets, supervised fine-tuning (SFT), and post-training alignment via RLHF or DPO.
  3. Build and optimize the core components of agentic systems, focusing on tool-use capabilities, long-context reasoning, and multi-step planning.
  4. Collaborate with customer stakeholders to identify the best approaches to their business problem with AI.
  5. Define project milestones, success metrics, and rigorous evaluation benchmarks to ensure the solution delivers measurable value to the customer’s business.

Skills

Required

  • Python
  • PyTorch
  • distributed training frameworks
  • large-scale distributed data processing pipelines
  • Master’s or PhD in Computer Science, Machine Learning, or related fields
  • Broad Deep Learning Expertise
  • Hands-on Training Experience
  • Engineering Proficiency
  • Strong Interpersonal and Communication Skills

Nice to have

  • continuous pre-training on private datasets
  • RLHF
  • DPO
  • tool-use capabilities
  • long-context reasoning
  • multi-step planning

What the JD emphasized

  • training large models
  • fine-tuning
  • agentic systems
  • customer problems
  • customer use case
  • customer stakeholders
  • customer-specific performance
  • customer relationships
  • customer-facing successful projects
  • customer needs

Other signals

  • training large models
  • fine-tuning LLMs
  • agentic systems
  • customer use cases