At HyperSpectral, we harness the power of advanced machine learning and deep spectral analysis to transform complex spectral datasets into actionable insights. As an AI Engineer specializing in spectral data modeling, you’ll be a driving force in developing and integrating state-of-the-art AI and machine learning algorithms into our robust data analysis tools. This role demands both technical excellence and a collaborative spirit, as you will pioneer advanced analytics, deep learning methods, and GenAI-driven solutions that enhance real-time decision-making. If you’re eager to push boundaries at the forefront of spectral analysis and AI innovation, we’d love to have you join our team.
Education and Experience
- Master’s or Ph.D. in Computer Science, Artificial Intelligence, Data Science, or a related technical field, or 4 years relevant work experience.
- Several years of experience in AI engineering, including a track record of successful project completion and innovation.
- Publication of research in AI or contributions to open-source AI projects would be a plus.
Supervisory Responsibilities
- Mentoring junior team members, providing guidance on AI/ML best practices.
- Leading project teams and initiatives, ensuring timely delivery of objectives and ensuring adherence to best practices.
- Educating non-technical team members on AI/ML concepts and initiatives as needed
Responsibilities
- Data Preprocessing and Analysis:
- Cleaning and preprocessing large datasets of spectral data to ensure quality and consistency.
- Analyzing spectral data to identify patterns, anomalies, and significant features.
- Handling noise reduction and signal processing to improve data quality.
- Model Development and Implementation:
- Designing and developing machine learning models to analyze and interpret spectral data.
- Implementing advanced algorithms like neural networks, support vector machines, or random forests tailored for spectral data analysis.
- Optimizing and fine-tuning models for accuracy and efficiency.
- Experience in Large Language Models (LLM) and Retrieval-Augmented Generation (RAG) for Generative AI
- Leveraging LLMs and RAG to address complex business challenges
- Feature Engineering and Selection:
- Identifying and extracting relevant features from spectral data that contribute to meaningful insights.
- Applying techniques such as principal component analysis (PCA) to reduce dimensionality and improve model performance.
- Cross-Disciplinary Collaboration:
- Collaborating with domain experts (like chemists or physicists) to understand the context and application of spectral data.
- Collaborate with data collection team to ensure sufficient data breadth and depth to meet project goals
- Collaborate with Product, ATI, and CIO teams to ensure implementation of ML/AI pipelines in production
- Communicating with other data scientists, engineers, and stakeholders to align AI/ML objectives with broader project goals
- Model Validation and Testing:
- Rigorously testing and validating models against known datasets to ensure reliability and accuracy.
- Employing cross-validation techniques to assess model performance and generalize ability.
- Research and Development:
- Staying abreast of the latest developments in AI/ML as well as spectral analysis techniques.
- Researching and experimenting with new methods and technologies to enhance modeling capabilities.
- Documentation and Reporting:
- Documenting the development process, model architectures, and performance metrics.
- Preparing reports and presentations for both technical and non-technical audiences to communicate findings and insights.
Physical Requirements
- Ability to remain in a stationary position for prolonged periods, typically sitting at a desk, to perform coding and data analysis.
- Manual dexterity to operate computers and/or other necessary technology.
What We Offer
-The opportunity to work with a cutting-edge AI-powered technology company
-Collaborative and innovative work environment
-Opportunities for professional growth and development.
Applicants must be U.S. citizens. We do not sponsor H-1B or any other employment visas for this position.
Top Skills
What We Do
HyperSpectral has created a first-of-its-kind platform that applies AI to democratize access to spectral data—the world’s most reliable information source.
Led by a team of problem solvers who combine decades of experience and domain expertise in AI, spectral science, and software, HyperSpectral uniquely enables real-time visibility into pathogens, contaminants, VOCs, and more, empowering companies to act before those invisible threats negatively impact their businesses and their customers.