We are seeking an experienced Generative AI Data Scientist with a strong background in LLM training prompt engineering and agentic AI systems. The ideal candidate will combine deep technical expertise with innovative thinking to design train and deploy cutting-edge AI solutions that drive business impact. You will work closely with cross-functional teams to implement and scale generative AI capabilities across the organization. LLM Development & Optimization Fine-tune and optimize foundation models (e.g. GPT LLaMA Claude Mistral) for specific business and domain applications. Build scalable pipelines for model training evaluation and deployment. Conduct performance tuning benchmarking and continuous improvement of model accuracy and efficiency. Prompt Engineering & Evaluation: Develop and refine advanced prompting strategies (structured few-shot chain-of-thought tool-augmented prompts). Design automated evaluation frameworks for response quality consistency and factual accuracy. Agentic AI & System Design: Architect intelligent autonomous or semi-autonomous AI agents that can reason plan and execute tasks using contextual knowledge. Integrate external APIs vector databases and retrieval systems to enhance model reasoning and context handling. Data Strategy & Engineering: Curate preprocess and manage large-scale datasets for generative AI model training and fine-tuning. Ensure data quality ethical use and compliance with data governance standards. Research & Innovation: Stay up to date with advancements in LLMs RAG multi-agent systems and multimodal AI. Prototype and experiment with emerging GenAI technologies to identify potential use cases and improvements. Bachelor or Master degree in Computer Science Artificial Intelligence Machine Learning or related field. Proficiency in Python with strong knowledge of libraries and frameworks such as PyTorch TensorFlow Hugging Face Transformers LangChain or LlamaIndex. Hands-on experience in LLM fine-tuning prompt design RAG pipelines and model evaluation. Familiarity with vector databases (e.g. FAISS Pinecone Weaviate) and AI orchestration frameworks. Strong understanding of machine learning workflows data pipelines and model deployment (MLOps / LLMOps) on AWS Azure or GCP. Experience building or integrating agentic AI systems or multi-agent orchestration frameworks. Exposure to multimodal AI systems (text image and audio). Knowledge of AI safety interpretability .
We are seeking an experienced Generative AI Data Scientist with a strong background in LLM training prompt engineering and agentic AI systems. The ideal candidate will combine deep technical expertise with innovative thinking to design train and deploy cutting-edge AI solutions that drive business i...
We are seeking an experienced Generative AI Data Scientist with a strong background in LLM training prompt engineering and agentic AI systems. The ideal candidate will combine deep technical expertise with innovative thinking to design train and deploy cutting-edge AI solutions that drive business impact. You will work closely with cross-functional teams to implement and scale generative AI capabilities across the organization. LLM Development & Optimization Fine-tune and optimize foundation models (e.g. GPT LLaMA Claude Mistral) for specific business and domain applications. Build scalable pipelines for model training evaluation and deployment. Conduct performance tuning benchmarking and continuous improvement of model accuracy and efficiency. Prompt Engineering & Evaluation: Develop and refine advanced prompting strategies (structured few-shot chain-of-thought tool-augmented prompts). Design automated evaluation frameworks for response quality consistency and factual accuracy. Agentic AI & System Design: Architect intelligent autonomous or semi-autonomous AI agents that can reason plan and execute tasks using contextual knowledge. Integrate external APIs vector databases and retrieval systems to enhance model reasoning and context handling. Data Strategy & Engineering: Curate preprocess and manage large-scale datasets for generative AI model training and fine-tuning. Ensure data quality ethical use and compliance with data governance standards. Research & Innovation: Stay up to date with advancements in LLMs RAG multi-agent systems and multimodal AI. Prototype and experiment with emerging GenAI technologies to identify potential use cases and improvements. Bachelor or Master degree in Computer Science Artificial Intelligence Machine Learning or related field. Proficiency in Python with strong knowledge of libraries and frameworks such as PyTorch TensorFlow Hugging Face Transformers LangChain or LlamaIndex. Hands-on experience in LLM fine-tuning prompt design RAG pipelines and model evaluation. Familiarity with vector databases (e.g. FAISS Pinecone Weaviate) and AI orchestration frameworks. Strong understanding of machine learning workflows data pipelines and model deployment (MLOps / LLMOps) on AWS Azure or GCP. Experience building or integrating agentic AI systems or multi-agent orchestration frameworks. Exposure to multimodal AI systems (text image and audio). Knowledge of AI safety interpretability .
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