AI Lead, Client Technology - SVP
Listed on 2026-02-18
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Software Development
AI Engineer, Machine Learning/ ML Engineer
Job Summary/Position Overview
We are seeking a highly skilled and pragmatic AI Lead to design, develop, deploy and manage advanced AI solutions. This multifaceted role involves creating intelligent AI agents capable of understanding goals, planning actions, and executing tasks with minimal human intervention, as well as contributing to the development and implementation of generative AI solutions. The ideal candidate will possess a strong understanding of AI principles, agent-based systems, machine learning, software engineering and management best practices.
This hybrid position emphasizes technical leadership, focusing on rapid prototyping, iterative improvement, and delivering measurable business value by translating research ideas into robust, scalable production systems.
- Agent and Generative AI Development: Design, implement, and deploy intelligent agents, including perception, reasoning, planning, and action execution modules. Contribute to the development and implementation of generative AI solutions, ensuring they meet technical requirements and business objectives.
- System Architecture & Scalability: Develop scalable and robust architectures for agentic systems and generative AI applications, ensuring high performance, reliability, and security.
- Machine Learning & LLM Integration: Integrate various machine learning models (e.g., LLMs, reinforcement learning, predictive models) to enhance agent capabilities and decision‑making. Implement LLM integration using platforms like OpenAI, Anthropic, and Bedrock APIs.
- Task Automation & Workflow Optimization: Develop agents that can automate complex tasks, optimize workflows, and solve real‑world problems across various domains.
- Rapid Delivery: MVP first approach, iterative improvement approach with a focus on "time to value" (quick iterations, hypothesis testing, A/B experiments).
- Framework and Tooling: Utilize and contribute to agentic AI frameworks and development tools. Build full‑stack applications that integrate existing ML/LLM tools and services.
- Evaluation and Optimization: Design and implement metrics and evaluation strategies for agent performance, continuously optimizing and improving agent behavior.
- Research and Innovation: Stay abreast of the latest advancements in AI, particularly in agent-based systems, autonomous AI, and related fields, and propose innovative solutions. Demonstrate deep expertise in generative AI technologies, actively participating in the development of proofs of concept (POCs) and exploring new methodologies.
- Collaboration & Leadership: Work closely with cross‑functional teams (AI researchers, data scientists, product managers, software engineers) to integrate agentic and generative AI solutions into broader products and services. Lead technical teams through hands‑on coding and architectural decisions, championing pragmatic "buy and integrate" approaches.
- Documentation: Create comprehensive technical documentation for agent designs, implementations, and operational procedures.
- Team Management: Manage a small AI team to deliver on key AI initiatives in the client delivery space.
- Education: Bachelor's or Master's degree in Computer Science, Artificial Intelligence, Robotics, or a related quantitative field.
- Experience:
- 10+ years software engineering experience with recent hands‑on coding, with a track record of rapid delivery and launching multiple AI features in production.
- Minimum 3+ years of professional experience in software development with a focus on AI, prompt engineering, machine learning and/or agentic AI systems.
- Experience in the finance industry is a plus.
- Programming Proficiency:
- Strong proficiency in Python (FastAPI, Django, Flask, PySpark) or Java (Spring Boot, Spring Cloud, Spring Security), and SQL.
- JavaScript (React, Next.js, Node.js, Type Script).
- Full‑stack development with a focus on rapid prototyping.
- AI/ML Expertise:
- Solid understanding of core AI concepts, including knowledge representation, automated planning, decision‑making under uncertainty, and multi‑agent systems.
- Experience with machine learning frameworks (e.g., Tensor Flow, PyTorch) and relevant…
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