AI Agent & Chatbot Development
Design and implement AI-driven chatbots using LLMs (e.g., GPT, LLaMA, Mistral, etc.).
Build domain-specific pipelines to integrate organizational/public health knowledge into conversational agents.
Ensure chatbot responses are accurate, contextual, and aligned with public health values.
Search & Personalization
Develop semantic search engines and retrieval-augmented generation (RAG) pipelines.
Implement personalization features (user profiling, adaptive responses).
Optimize relevance and ranking for search results using ML/AI techniques.
Virtual Assistant Capabilities
Extend AI agents to support virtual assistant features: task reminders, workflow automation, and knowledge support.
Integrate with productivity tools (calendars, CRM, digital platforms).
Technical Development & Integration
Fine-tune and deploy LLM models in secure and efficient environments.
Ensure scalability, performance optimization, and responsible use of AI.
Collaborate with cross-functional teams (Product Owner, developers, domain experts, QA).
Data Engineering & Preparation
Collect, clean, and preprocess structured and unstructured datasets for model training.
Build and maintain pipelines for knowledge ingestion (documents, APIs, databases).
Ensure data quality, labeling consistency, and bias mitigation.
Monitoring & Continuous Improvement
Monitor model performance post-deployment (latency, accuracy, hallucination rates, user adoption).
Implement feedback loops for continuous learning and model updates.
Detect and mitigate model drift or degraded performance.
Security, Ethics & Compliance
Ensure compliance with data protection and ethical AI principles (privacy, fairness, transparency).
Implement safeguards to reduce risks of hallucinations, misinformation, and bias in chatbot outputs.
Innovation & Documentation
Stay updated with AI/ML advancements, particularly in LLMs, agent frameworks, and healthcare AI.
Document development processes, model architectures, and APIs.
Contribute to knowledge-sharing sessions and training for internal teams.
QUALIFICATIONS, COMPETENCIES AND EXPERIENCE:
Minimum 2 years of hands-on AI/ML experience, especially with LLM-based applications.
Proven track record in building chatbots, AI agents, or virtual assistants.
Strong coding skills in Python and frameworks (PyTorch, TensorFlow, LangChain, LlamaIndex).
Familiarity with MLOps, Docker, Kubernetes, and cloud platforms (AWS, Azure, GCP).
Understanding of semantic search, personalization algorithms, and RAG pipelines.
Excellent problem-solving and analytical skills.
English and Vietnamese proficiency (French is an asset).
Experience in digital health or LMIC settings is highly desirable.
KEY DELIVERABLES:
Functional AI chatbot integrated with domain knowledge.
Semantic search engine with RAG pipeline.
Personalization module tested with end-users.
Virtual assistant prototype (if feasible in project timeline).
Technical documentation (system design, APIs, models).
Reports on usage metrics, performance, and adoption.