Postdoctoral Researcher

Innodata Inc.
Birmingham
1 week ago
Applications closed

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Senior Clinical Information Scientist

We are seeking a detail-orientedResearch Writerto contribute to the training ofLarge Language Models (LLMs). The ideal candidate will have a strong background in research, writing, and data curation, along with a deep understanding of AI, NLP, and machine learning concepts. This role involves generating high-quality datasets, curating information, and creating structured content to enhance the model’s learning capabilities.

Key Responsibilities:

  • Conduct in-depth research on various topics to generate factually accurate, high-quality content for LLM training.
  • Write, edit, and refine instructional datasets, including dialogues, summaries, explanations, and multi-turn conversations.
  • Ensure linguistic clarity, coherence, and adherence to ethical AI guidelines.
  • Review, validate, and refine model-generated outputs for accuracy and relevance.
  • Collaborate with AI engineers, data scientists, and linguists to improve the LLM’s comprehension and reasoning abilities.

Requirements:

  • Experience:Prior experience in research writing, technical writing, content curation, or AI data annotation.
  • Strong understanding ofNatural Language Processing (NLP), Machine Learning (ML), and Large Language Models (LLMs).
  • Excellent writing, editing, and analytical skills with a focus on accuracy and clarity.
  • Ability to synthesize complex information into digestible content.
  • Familiarity with AI model training workflows, prompt engineering, and data augmentation techniques is a plus.

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