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Information Technology_USA - USA_Engineer

Real Soft, Inc.
locationJacksonville, FL, USA
PublishedPublished: 7/12/2026
Full time
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MSP Owner: Michelle Lee
Location: Hartford, CT/Remote
Duration: 6 months
skill id: 10856066

We are seeking an AI/ML Engineer with hands-on experience building, fine-tuning, and deploying LLM-based solutions. You will work on NLP/GenAI use cases such as classification, summarization, and retrieval-augmented generation (RAG), partnering with product and engineering teams to deliver scalable, secure, and measurable outcomes.

Responsibilities
• Design, build, and fine-tune NLP/LLM solutions for business use cases (e.g., classification, summarization, Q&A).
• Develop efficient, well-documented Python code for training, inference, and evaluation pipelines.
• Build RAG applications using embeddings, vector databases, and prompt engineering techniques.
• Integrate LLM applications into services/APIs and ensure performance, reliability, and scalability.
• Establish model evaluation, monitoring, and governance practices (quality, safety, bias, drift).
• Collaborate with data engineering and platform teams on data pipelines, deployments, and CI/CD.

Required Qualifications
• 6+ years of overall experience in software development focusing on AI/ML engineering.
• 2+ years of hands-on experience with deep learning for NLP/GenAI.
• Strong Python proficiency, including writing production-quality, testable, maintainable code.
• Experience with deep learning frameworks and libraries: PyTorch or TensorFlow; Hugging Face Transformers.
• Solid understanding of deep learning architectures and modern NLP/LLM concepts (tokenization, attention/transformers, fine-tuning approaches).
• Experience building rapid prototypes and APIs using FastAPI/Flask and/or Streamlit.

Preferred Qualifications
• Experience with LLM orchestration frameworks (LangChain, LlamaIndex, Semantic Kernel, or similar).
• Experience with vector databases and embedding workflows (e.g., FAISS, Pinecone, Weaviate, Chroma, Azure AI Search).
• Experience deploying and scaling ML/LLM workloads on cloud platforms (Azure preferred; GCP/AWS acceptable).
• Familiarity with agentic architectures and multi-agent patterns (e.g., AutoGen or similar).
• Healthcare domain knowledge and/or experience building solutions in regulated environments.

Standard Technical Skills
• MLOps & Deployment: Model packaging and serving, CI/CD, containers (Docker), orchestration (Kubernetes), experiment tracking (MLflow), model registry, monitoring/observability.
• LLM Evaluation: Offline/online evaluation, prompt/version management, automated testing, hallucination and factuality checks, retrieval evaluation, human-in-the-loop review.
• Software Engineering: Git, code reviews, unit/integration testing (pytest), REST APIs, basic system design, performance optimization.
• Security & Compliance: Secure coding, secrets management, PII/PHI handling, access control; familiarity with responsible AI principles is a plus.