V

Lead AI Engineer

Vinmar
Full-time
On-site
Vail
About Vailent & Vinmar

Vinmar is a global leader in the marketing and distribution of polymers and chemicals, operating in over 100 countries with more than 45 years of success. Vailent is a subsidiary of Vinmar, created to reimagine how polymers are bought and sold. We’re building a technology-enabled B2B marketplace that gives buyers and sellers a faster, more transparent, and more efficient way to do business. Our platform is designed to empower Vinmar’s global network while transforming an industry that has seen little digital innovation. About the Role

At Vailent, you’ll join a small, agile, and fully remote team with the backing and stability of a global parent company. We combine the autonomy of a startup with the reach of a world leader. You’ll find the freedom to own your work, the support of approachable leadership, and the opportunity to solve complex challenges that directly impact how an entire industry operates. As a

Lead AI Engineer , you’ll step into a leadership role, taking ownership of the technical vision for AI across our products and platform. You’ll lead the design, development, and deployment of advanced AI systems, setting architecture, practices, and standards that ensure solutions are scalable, production-ready, and deeply embedded in our product strategy. Beyond hands-on engineering, you’ll mentor other developers, guide cross-functional teams, and drive adoption of best practices. With access to state-of-the-art infrastructure and AI/ML tools, you’ll architect large-scale solutions and collaborate with product, engineering, and business leaders to shape the future of AI innovation across the company. Why Join Us

A culture that values

technical excellence, ownership, and innovation . High impact, real ownership — Your work directly shapes the future of a global industry. Autonomy & trust — Freedom to own projects and make decisions. Team & culture — A collaborative environment where leadership is accessible, and people genuinely enjoy working together. Growth & learning — Opportunities to learn new skills, take on big challenges, and grow with a company on the rise. Flexibility — Remote-first culture with balance built in. Competitive compensation — Salary, benefits, and support for professional development. What You’ll Do

Define the

technical strategy and roadmap

for AI initiatives across the organization. Architect and implement

large-scale AI/ML systems

that meet performance, reliability, and security requirements. Lead integration of

LLMs, generative AI, and ML models

into customer-facing applications and internal platforms. Oversee the

end-to-end AI lifecycle : data engineering, model training, deployment, monitoring, and continuous improvement. Guide teams in leveraging

cloud infrastructure (AWS SageMaker, EC2 GPU, Lambda, RDS, S3)

to scale AI workloads. Establish

MLOps best practices , including CI/CD pipelines for models, monitoring, and governance. Collaborate with executives and stakeholders to align AI solutions with business goals and product vision. Mentor and coach engineers across levels, raising the bar for AI/ML knowledge and engineering excellence. Stay ahead of

emerging AI trends

(LLMs, multimodal models, vector databases, retrieval systems) and evaluate applicability. Hard Skills

AI/ML Expertise : Deep hands-on experience with modern LLM architectures. Systems Architecture : Proven track record designing and deploying

production AI systems

at scale. Programming : Strong in

Python, etc.

for AI/ML; working knowledge of

Java/Spring Boot

for enterprise integration. Cloud Infrastructure : Advanced experience with

AWS AI/ML stack

(SageMaker, Lambda, GPU/EC2, RDS, CloudWatch). MLOps & CI/CD : Skilled with

GitHub Actions, Docker, Kubernetes , and automated AI deployment/monitoring pipelines. Data Systems : Expertise in

SQL/NoSQL, data pipelines, feature stores , and vector databases (e.g., Pinecone, Weaviate, FAISS). Soft Skills

Strong leadership and ability to

influence technical direction

across engineering teams. Excellent communicator who can bridge technical and business discussions. Resourceful, independent thinker with a “figure it out” mindset , able to navigate ambiguity and drive clarity. Deep sense of ownership, accountability, and ability to

set standards and enforce best practices . Skilled at mentoring and developing engineering talent. Experienced in

Agile/Kanban environments , with an emphasis on scaling processes for AI work. Preferred

Master’s or PhD in Computer Science, AI/ML, Data Science, or related field. Research or production experience with

large language models, RAG (retrieval-augmented generation), and generative AI systems . Knowledge of

responsible AI practices : model fairness, bias mitigation, explainability, and compliance. Track record of

leading AI strategy

and delivering measurable business impact.

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