Contract
Posted on 24 June 25 by Reginald Dykes
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Job Title: Generative AI Engineer
Location: Charlotte, NC
Pay: [Full-Time / Contract]
We are seeking a Generative AI Engineer with deep technical expertise across Generative AI, MLOps, and scalable distributed systems. In this role, you’ll lead the design, development, deployment, and optimization of AI/ML solutions powered by LLMs, embedding models, and Retrieval-Augmented Generation (RAG) frameworks. You'll also be instrumental in driving production-grade MLOps workflows, managing big data pipelines, and integrating cloud-native tools across AWS, GCP, and Azure.
You’ll work closely with cross-functional teams and mentor engineers to deliver transformative AI solutions for enterprise environments, including the Microsoft ecosystem.
Design and implement Generative AI solutions using LLMs, vector databases, embedding models, vector search, and RAG techniques.
Build and maintain robust MLOps pipelines for model training, testing, and deployment using AWS SageMaker, Ray, and modern CI/CD practices.
Engineer distributed data pipelines and streaming systems using Apache Spark, Kafka, Hadoop, HBase, and Cassandra.
Apply machine learning and deep learning frameworks such as Scikit-learn, TensorFlow, Keras, and Spark MLlib.
Conduct advanced NLP tasks using spaCy, nltk, and embedding strategies.
Analyze large datasets using the Python data ecosystem (Pandas, Scikit-learn, etc.).
Optimize performance of distributed systems and applications in Python, Java, and Scala.
Manage and scale data stores: vector stores (e.g., Milvus, MongoDB Atlas), NoSQL (e.g., Redis, Cassandra), and SQL (e.g., Postgres, MySQL).
Utilize DevOps and infrastructure tools: Docker, Kubernetes, Ansible, Terraform, Linux, and Git.
Monitor and tune the performance of AI models, applications, and distributed systems.
Lead, mentor, and inspire high-performing technical teams.
Collaborate on AI integrations with Microsoft Copilot Studio, Power Platform, and Dynamics 365.
7+ years of experience in AI/ML, data engineering, or distributed systems.
Proven experience with LLMs, RAG architectures, and vector databases.
Hands-on expertise with MLOps tools, especially SageMaker and Ray.
Strong programming skills in Python, Java, Scala, and R.
Solid understanding of cloud platforms: AWS (preferred), GCP, and Azure.
Demonstrated success leading engineering teams or AI initiatives.
Proficient with modern DevOps toolchains and best practices.
Experience with enterprise AI integrations using Microsoft Copilot Studio, Power Platform, or Dynamics 365.
Background in building real-time AI solutions and observability tooling.
Contributions to open-source AI projects or research in Generative AI.