Senior AI Engineer
Location
United States
Posted
3 days ago
Salary
Not specified
Job Description
Company Overview
ExeQut is a fast-growing consulting firm specializing in enterprise applications, cloud solutions, AI-driven platforms, cybersecurity, and software development. We emphasize transparency, collaboration, and innovation, helping businesses optimize their technology strategies.
About the Role
ExeQut is seeking a highly experienced and technically proficient Senior AI Engineer to drive our development efforts in cutting-edge Generative AI solutions.
This role is centered on the practical architecture, deployment, and optimization of Large Language Models (LLMs), RAG systems, and AI Agents in a production environment. The ideal candidate possesses deep expertise in Python, AI orchestration frameworks, and vector database technologies, with a proven ability to translate complex AI concepts into scalable, reliable enterprise solutions.
Key Responsibilities
- LLM & Agentic Systems: Architect and implement solutions leveraging LLMs, embeddings, AI agents, and advanced RAG (Retrieval-Augmented Generation) frameworks.
- Prompt Engineering: Apply expert-level prompt engineering and fine-tuning techniques for LLM optimization and performance.
- Language Proficiency: Utilize expert-level proficiency in Python for AI/ML development, alongside strong working knowledge of JavaScript/TypeScript for front-end integration.
- Data Technologies: Implement and maintain systems utilizing vector databases (e.g., Pinecone, Weaviate, Qdrant, or similar) for semantic search and knowledge retrieval.
- API Integration: Develop and integrate robust API services (RESTful, GraphQL) to expose AI functionalities across enterprise applications.
Production Experience & Deployment
- AI Workflow: Architect and deploy production-grade AI workflows, semantic search architectures, and automation systems at scale.
- Orchestration: Deep understanding and practical experience with AI orchestration frameworks and workflow automation tools.
- Cloud Deployment: Leverage cloud platforms (AWS, Azure, or GCP) to design and deploy highly available and secure AI infrastructure using containerization (Docker).
- Best Practices: Implement and enforce best practices for LLM integration, optimization, security, and monitoring.
Qualifications
Technical Expertise
- AI Core: 5+ years of experience Hands-on experience with LLMs, AI agents, embeddings, RAG systems, vector databases, and prompt engineering.
- Primary Language: Fluent in Python (primary) for all stages of the ML lifecycle.
- Secondary Language: Strong experience with JavaScript/TypeScript (secondary) for integration work.
- Tools: Experience with vector database technologies (Pinecone, Weaviate, Qdrant, or similar).
- DevOps: Strong Git version control and collaborative development practices, with familiarity in Docker/containerization.
- Cloud: Strong experience with cloud platforms (AWS, Azure, or GCP) for AI deployment.
Soft Skills & Professionalism
- Autonomy: Self-driven, independent worker with excellent problem-solving abilities, capable of owning and executing complex feature development end-to-end.
- Quality: Strong documentation practices and adherence to high code quality standards.
- Communication: Advanced English writing and speaking skills (fluent communication required) to articulate technical architectures and findings clearly.
- Solutioning: Proven ability to translate complex AI concepts and business needs into scalable technical solutions.
Work Schedule
This role supports a US-based client (NIH) and requires specific overlap with the US Eastern Standard Time (EST) zone.
- Role Type: Full Time
- Location & Time zone: Remote & Must overlap at least 3 hours with US EST.
- Preferred Shift: 4:00 AM 12:00 PM EST (perfect alignment for overlapping collaboration).
- Work Week: Standard work week (Monday - Friday) is preferred, but a generic "Sunday - Thursday" work week (with Friday off) is acceptable if required by your local region, provided the Sunday work is productive.
If you're a driven product leader ready to shape powerful solutions and thrive in a fast-paced, collaborative environment we'd love to see your application!
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