$109K - 215K a year
Design and architect enterprise AI/ML solutions with generative AI and LLMs, lead technical discussions, manage cloud and data architectures, and ensure AI ethics and compliance.
Extensive AI/ML architecture experience, strong knowledge of generative AI and LLMs, multi-agent system design, prompt engineering, cloud and distributed systems expertise, programming proficiency including Python, and leadership skills.
What Skills Are Expected•AI/ML Solution Architecture: Extensive experience in designing and architecting AI or machine learning solutions in an enterprise context.•Deep Technical Knowledge: Strong understanding of machine learning and AI techniques, especially Generative AI and large language models.•Multi-Agent System Design: Knowledge of multi-agent system patterns and frameworks.•Prompt Engineering & RAG: Ability to craft effective prompts and chaining strategies for LLMs, familiar with retrieval-augmented generation methods.•AI Ethics & Responsible AI: Strong grasp of AI ethics and safety principles, able to identify ethical risks and design mitigations.•Cloud & Distributed Systems: Deep understanding of cloud architecture and distributed system design.•Data Management: Solid understanding of data architecture as it relates to AI, including data pipelines, databases, and data lakes.•Leadership & Communication: Excellent communication and stakeholder management skills, capable of leading discussions with C-level executives and technical brainstorming with engineers.•Consulting and Domain Acumen: Prior consulting or client-facing experience, adept at requirement gathering and crafting proposals.•Problem-Solving & Innovation: Creative mindset to devise innovative solutions leveraging AI agents, strong problem-solving skills.•Continuous Learning: Demonstrated habit of continuous learning, staying updated via research papers, conferences, or hands-on experimentation.Key Technology Capabilities•AI & ML Frameworks: Familiarity with major AI/ML frameworks and services, including OpenAI GPT models, Google PaLM/Vertex AI, and Hugging Face Transformers library.•SaaS AI & Data Platforms: Experience with leading SaaS AI & Data platforms in terms of agentic AI development, implementation, orchestration, AI guardrails •Agentic AI Tooling: Exposure to frameworks and libraries for building AI agents and chains, such as LangChain ,Microsoft’s Semantic Kernel.•Retrieval Systems: Strong knowledge of search and retrieval technologies, including vector databases and semantic search.•Cloud Services: Expertise in cloud ecosystems (AWS, Azure, GCP), including cloud AI services, serverless computing, containerization, and related DevOps tools.•Programming & Scripting: Proficiency in programming languages commonly used for AI and integration, primarily Python and at least one general-purpose language.•Data Platforms: Knowledge of modern data platforms, including relational databases, NoSQL stores, and data processing frameworks.•Integration & APIs: Experience designing and using APIs and middleware, knowledge of event-driven architectures and message brokers.•DevOps & MLOps: Familiar with CI/CD pipelines and infrastructure as code, understanding of MLOps principles and tools.•Security & Compliance Tools: Comfort with technologies for securing AI applications, including identity and access management, encryption, and compliance tools.•Collaboration & Design: Proficient with tools used in architecture and design documentation, including UML design tools and agile project management tools.•Emerging Tech: Awareness of emerging tech such as knowledge graphs and reinforcement learning frameworks. Job Type: Full-time Pay: $109,416.28 - $215,000.00 per year Work Location: Remote
This job posting was last updated on 10/18/2025