GenAI Architect - Set Sail AI
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Job Description
GenAI Architect - Set Sail AI
Lead the Next Generation of Generative AI-Powered Virtual Assistants
At Set Sail AI (setsail.ai), we're pioneering sophisticated virtual assistant solutions driven by cutting-edge Generative AI. We've successfully deployed over 150 AI solutions to large enterprise clients, including prominent names like MTR, BOC LIFE, CLP, Hang Seng Bank, and HK Express. We're seeking a highly skilled and passionate GenAI Architect to spearhead our Generative AI initiatives. This is a unique opportunity to lead a team, shape the future of intelligent virtual assistants, and build upon our proven track record of success.
About the Role:
As our GenAI Architect, you will be responsible for the overall direction and execution of our Generative AI strategy, focusing on building and deploying advanced LLM-powered solutions for our virtual assistant platform. You'll lead a team of talented engineers, fostering a culture of innovation and collaboration. Your deep understanding of LLMs, NLP, multimodal learning, and MLOps will be crucial to our success.
What You'll Do:
- Mentor the GenAI Team: Provide technical leadership, guidance, and mentorship to a team of AI engineers.
- Develop and Implement GenAI Strategy: Define and execute our Generative AI roadmap, aligning with business objectives.
- Research and Implement State-of-the-Art Techniques: Research, develop, and implement cutting-edge algorithms and models in LLMs, NLP, and multimodal learning, particularly in document understanding and document intelligence.
- Architect and Deploy LLM-Powered Solutions: Design and deploy robust, scalable, and efficient LLM-based solutions, leveraging best practices in software engineering and MLOps.
- Drive Innovation with RAG, LangChain, & LangSmith: Lead the exploration and implementation of advanced techniques such as Retrieval Augmented Generation (RAG), using tools like LangChain and LangSmith for optimized LLM workflows.
- Champion Multi-Agent System Design and Multimodal Learning: Explore and implement multi-agent system architectures and multimodal learning approaches to enhance the intelligence and capabilities of our virtual assistants.
- Oversee Data and Model Lifecycle: Manage the entire model lifecycle, from data preparation and cleaning to model training, hyperparameter tuning, deployment, and monitoring. Ensure data quality for effective model training.
- Collaborate & Ensure Quality: Work closely with cross-functional teams, including testing engineers, to develop and execute test cases, ensuring model accuracy and reliability. Construct and execute test cases to verify model performance.
- Build and Maintain MLOps Toolkit: Contribute to the development and maintenance of our MLOps infrastructure and toolkit to manage the machine learning lifecycle effectively.
Essential Skills & Technologies:
- Over 5 years of experience in implementing AI/ ML enterprise solutions
- Deep understanding of LLMs (e.g., GPT-4, LLaMA, QWEN) and Generative AI principles
- Expertise in Retrieval Augmented Generation (RAG) techniques
- Proficiency with LangChain and LangSmith for LLM workflow optimization
- Experience with multi-agent system design and implementation
- Familiarity with multimodal learning and representation learning
- Strong programming skills in Python
- Experience with ML frameworks (e.g., PyTorch, TensorFlow) and libraries (e.g., scikit-learn, pandas)
- Solid understanding of MLOps principles and tools
- Excellent leadership, communication, and collaboration skills
Job Function | |
Work Location | Cheung Sha Wan |