Are you ready to revolutionize the world of AI-driven information retrieval and work at the cutting edge of language model technology? Join our team as an LLM/Agentic System Engineer, where you'll collaborate with the best in the industry to build innovative solutions that empower businesses worldwide. This is a unique opportunity to push the boundaries of LLM fine-tuning, QLoras, Loras, RAG, and knowledge graph integration. If you're passionate about combining technology with advanced AI techniques and eager to make a significant impact, we want you to be part of our groundbreaking journey!
We are seeking a highly skilled and innovative LLM/Agentic System Engineer who is an expert in fine-tuning LLMs and integrating them with knowledge graphs. The ideal candidate will have a deep understanding of and extensive experience with LLMs, QLoras, Loras, RAG, and optimizing LLMs for better performance and retrieval. Key qualifications include:
Expertise in LLM Fine-Tuning: Proven ability to fine-tune large language models (LLMs) for various applications.
Proficiency in Python: Advanced proficiency in Python programming, with a strong portfolio demonstrating the development of LLM-based solutions.
Experience with Knowledge Graphs: Extensive hands-on experience interfacing LLMs with knowledge graphs for enhanced information retrieval.
Community Engagement: Active participation in relevant ML and AI communities, staying abreast of the latest advancements and contributing to discussions and developments.
Optimization and Innovation: A knack for optimizing LLM performance and integrating new techniques to push the boundaries of what's possible in AI-driven solutions.
If you are a wizard in fine-tuning LLMs and integrating them with knowledge graphs and eager to contribute to cutting-edge projects in a collaborative and forward-thinking environment, we want to hear from you!
Fine-Tune LLMs: Fine-tune large language models to meet specific performance criteria and business objectives.
Optimize LLM Performance: Optimize LLMs such as QLoras, Loras, and RAG for accuracy, efficiency, and scalability.
Integrate with Knowledge Graphs: Interface LLMs with knowledge graphs and semantic databases to improve information retrieval and contextual understanding.
Collaborate with Experts: Work closely with AI researchers, data scientists, and domain experts to design and implement robust AI solutions.
Stay Current with Advancements: Continuously monitor and integrate the latest advancements in machine learning and natural language processing.
Community Engagement: Actively participate in ML and AI communities, contributing insights and staying informed about emerging trends and technologies.
Develop Algorithms: Develop and deploy innovative algorithms and techniques to enhance LLM capabilities in real-world scenarios.
Provide Technical Leadership: Provide technical leadership and mentorship to junior engineers, fostering a culture of innovation and excellence within the team.
Documentation and Training: Develop comprehensive documentation and training materials to support users in effectively utilizing AI tools.
Troubleshoot and Support: Provide technical support and troubleshooting for any issues related to LLMs and knowledge graph integration.
Conduct Research and Development: Engage in R&D to explore new techniques and methodologies that can enhance AI capabilities.
Collaborate with Development Teams: Work alongside other developers to ensure the seamless integration of AI workflows within the overall architecture of the solutions.
User Feedback Integration: Gather and analyze user feedback to continuously improve the functionality and user experience of AI tools.
Maintain Code Quality: Ensure high standards of code quality, including writing clean, maintainable code and conducting regular code reviews.
Advanced Degree: Bachelor's or Master’s degree in Computer Science, Machine Learning, or a related field.
Experience with LLMs: Proven experience in fine-tuning and optimizing large language models.
Proficiency in Python: Advanced proficiency in Python, with a strong portfolio of projects demonstrating expertise in ML and AI.
Hands-on Experience with Knowledge Graphs: Extensive experience interfacing LLMs with knowledge graphs and semantic databases.
Machine Learning Expertise: Deep understanding of machine learning principles, algorithms, and techniques, particularly in the context of language models.
Creative Problem-Solving: Strong creative and analytical problem-solving skills, with the ability to innovate and push the boundaries of current capabilities.
Community Engagement: Active participation in relevant ML and AI communities, staying informed about the latest advancements and contributing to discussions and developments.
Collaboration Skills: Excellent interpersonal and communication skills, with a proven ability to work effectively in a team-oriented environment.
Performance Optimization: Experience in optimizing the performance of ML models, ensuring efficiency and scalability.
Technical Documentation: Ability to develop comprehensive documentation and training materials.
Troubleshooting Skills: Strong troubleshooting and problem-solving abilities, with experience in providing technical support and resolving complex issues.
Research and Development: Experience in conducting research and development to explore new techniques and methodologies.
User-Centric Approach: A user-centric approach to design and development, with experience in gathering and integrating user feedback.
Code Quality: Commitment to maintaining high standards of code quality, including writing clean, maintainable code and conducting regular code reviews.
Top Skills
Similar Jobs
What you need to know about the Colorado Tech Scene
Key Facts About Colorado Tech
- Number of Tech Workers: 260,000; 8.5% of overall workforce (2024 CompTIA survey)
- Major Tech Employers: Lockheed Martin, Century Link, Comcast, BAE Systems, Level 3
- Key Industries: Software, artificial intelligence, aerospace, e-commerce, fintech, healthtech
- Funding Landscape: $4.9 billion in VC funding in 2024 (Pitchbook)
- Notable Investors: Access Venture Partners, Ridgeline Ventures, Techstars, Blackhorn Ventures
- Research Centers and Universities: Colorado School of Mines, University of Colorado Boulder, University of Denver, Colorado State University, Mesa Laboratory, Space Science Institute, National Center for Atmospheric Research, National Renewable Energy Laboratory, Gottlieb Institute