Lead AI Engineer
Pivotal IT Services
Lead AI Engineer
- Remote
Description
About the Company
Our core values of People Matter, Integrity, and a Commitment to Excellence drive all that we do. By joining us, you’ll become a part of a fun and diverse team of talented and creative consultants who share the goal of using the latest technology to solve business challenges. We provide our clients with a dynamic mix of services and deliver focused solutions like no one else.
We're seeking talented and bright team players who are passionate about technology and want to work in a fast-paced, dynamic, and ego-free culture while applying a creative approach to problem-solving. Team members who like to grow their skill sets while solving challenging, real world business problems thrive.
About the Role
We are seeking a Lead AI Engineer who is passionate about cutting-edge technology and thrives in a dynamic and collaborative environment. As part of our team, you will lead the development of innovative AI solutions while working with a diverse and talented group of engineers, subject matter experts and data scientists. We're looking for a well-rounded team member to contribute to digital transformation efforts in the US Army.
In this role, you will apply creative problem-solving to some of our most complex challenges, including automating and optimizing business processes through AI-driven platforms. You’ll spearhead the development and deployment of AI models, from deep learning and NLP to large language models (LLMs), across cloud platforms. Working closely with cross-functional teams, you will drive the automation of model deployment pipelines, standardize data processes, and deliver AI capabilities that unify and streamline operations. This is a unique opportunity to lead AI innovation in a culture that values creativity, collaboration, and continuous learning, while delivering impactful solutions to the Department of Defense.
RESPONSIBILITIES
AI Application Development:
- Design, build and deploy advanced machine intelligence applications such as digital agents (chatbots) and pattern recognition systems for text, image, and speech recognition.
- Develop and optimize Natural Language Processing (NLP) systems, with a focus on entity extraction and machine learning-driven language understanding.
- Deep Learning Model Development:
- Design and implement deep learning models for various AI applications, including text classification, image recognition, and generative models.
- Perform machine learning optimization via feature selection, metrics analysis, and hyperparameter adjustment for enhanced model accuracy and efficiency.
Large Language Models (LLM) & Retrieval-Augmented Generation (RAG):
- Apply expertise in large language models (LLM) and Retrieval-Augmented Generation (RAG) to create scalable, high-performance language models that drive business and product innovation.
Model Deployment & Real-Time Monitoring:
- Deploy machine learning models into larger systems, ensuring seamless integration and monitoring real-time performance. Implement feedback loops to continuously optimize models based on production data.
Platform Capability Development:
- Develop Generative AI & Traditional AI platform capabilities on enterprise on-prem and cloud platforms.
- Build automation capabilities for ML and LLM model deployment on on-prem and cloud platforms (e.g., GCP-Vertex AI, Azure ML).
- Standardize model consumption and data pipeline deployment, enabling multiple Lines of Business (LOB) to utilize the deployed models efficiently.
UI Development for AI Applications:
- Lead the design and development of intuitive and responsive user interfaces for AI applications, ensuring smooth user interaction and visualization of AI-driven insights.
- Work closely with UX/UI designers and front-end developers to create interfaces that enhance the user experience of AI-powered tools such as chatbots and AI dashboards.
Collaboration & Optimization:
- Collaborate with Data Scientists to optimize the scoring pipeline for AI models, ensuring high-performance scoring and inferencing capabilities for ML models and LLMs.
- Work with product owners, DevSecOps teams, data scientists, and support teams to define and drive end-to-end model scoring pipelines, ensuring seamless deployment and scalability.
- Design, build and deploy artificial intelligence solutions that empower humans to make more informed decisions.
- Participate in day-to-day standups to contribute to platform capability development and ensure alignment across teams.
Leadership & SME Guidance:
- Provide Subject Matter Expertise (SME) guidance to data science teams on software engineering principles, model training and deployments, and platform capabilities.
- Lead AI use case delivery, collaborating with business subject matter experts, data scientists, data engineers, security engineers and LOB technology teams using standardized platform processes and capabilities.
QUALIFICATIONS
- Typically requires a minimum of 8 years of related experience with a Bachelor’s degree; or 6 years and a Master’s degree; or a PhD with 3 years’ experience; or equivalent combination of related education and work experience.
- Expertise in entity extraction and advanced NLP techniques within machine learning frameworks.
- Strong experience in deep learning model design and development, including classification and generative models.
- Skilled in machine learning optimization, focusing on feature selection, metrics analysis, and hyperparameter tuning.
- Hands-on experience with large language models (LLM) and Retrieval-Augmented Generation (RAG).
- Proven ability to deploy AI models to Microsoft cloud platforms (CoPilot, Azure ML), including real-time performance monitoring.
- Experience in building platform capabilities to automate ML/LLM model deployment and scaling, as well as standardizing data pipeline deployments for model consumption across various LOBs.
- Collaborate with data scientists to optimize model scoring pipelines and ensure high-quality model inferencing.
- Strong ability to collaborate across functions, including product management, DevOps, and data science teams, and lead AI use case delivery from concept to deployment.
- Preferred candidate will have significant substantive experience with mission IT-focused AI solutions.
- Preferred candidate will demonstrate experience and capability to advise the federal government on all aspects of the AI domain to implement and adopt innovative AI solutions.
- Military experienced candidates are encouraged to apply.
- Candidates may need to obtain Security Clearances.
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