Job Description
Job Summary
The AI Solutions Engineer at Nymbl delivers enterprise-grade AI solutions directly with clients. Acting as a forward-deployed engineer, this role blends full-stack development expertise, applied AI/ML engineering, and strong client-facing skills. AI Solutions Engineers implement Retrieval-Augmented Generation (RAG) systems, design and deploy LLM-powered applications, and integrate AI into enterprise workflows to create measurable client outcomes.
This role blends responsibilities from:
Forward-Deployed Engineerβ client delivery, technical advisory, building in production environments.
Machine Learning Engineerβ Fine tune, and deploy LLM and RAG systems with applied AI expertise.
Full-Stack Developerβ enterprise-grade coding across front-end, back-end, and data layers.
Your Responsibilities
β’ Collaborate with clients to understand their business requirements and translate them into technical specifications.
β’ Design and implement scalable solutions using cloud technologies such as AWS.
β’ Develop machine learning models utilizing frameworks like TensorFlow, R, and Python for various applications including natural language processing and data mining.
β’ Perform ETL processes to integrate data from multiple sources into cohesive datasets for analysis.
β’ Conduct model training and deployment, ensuring optimal performance of machine learning applications.
β’ Utilize big data technologies such as Hadoop and Spark to process large datasets efficiently.
β’ Engage in database design and management, ensuring data integrity and accessibility using SQL and other database languages.
β’ Implement analytics solutions using tools like Looker for data visualization and reporting.
β’ Stay updated on industry trends, emerging technologies, and best practices in quantum engineering and AI.
Expectations
β’ Leadership:Take ownership of technical implementation, guiding both clients and internal teams toward scalable, production-ready AI solutions.
β’ Communication:Translate complex AI concepts into clear business and technical language for executives, stakeholders, and developers.
β’ Autonomy:Lead end-to-end delivery of AI features and integrations, managing coding, testing, deployment, and client handoff.
β’ Collaboration:Partner closely with Solution Architects, Client Partners, and Developers to ensure projects balance innovation, feasibility, and business value.
β’ Client Engagement:Act as a trusted technical advisor in workshops, demos, and delivery reviews, building confidence that Nymbl can execute reliably.
What You'll Do
β’ Designand implement RAG pipelines with LLMs and enterprise data sources.
β’ Buildand deploy AI agents using frameworks such as LangChain, Semantic Kernel, or custom architectures.
β’ Developfull-stack AI-enabled applications (front-end, back-end, APIs, and data integrations).
β’ Optimizevector databases (e.g., Pinecone, FAISS, Milvus) for retrieval and semantic search.
β’ Fine-tune or adaptLLMs for industry- or client-specific needs.
β’ Deploysolutions with enterprise reliability standards (Docker, Kubernetes, CI/CD).
β’ Run client demos,technical workshops, and enablement sessions to accelerate adoption.
β’ Collaboratewith internal teams on burn tracking, utilization, and project profitability.
β’ Documentarchitectures, pipelines, and operational guidelines for client and internal use.
Common Challenges and Needed Skills
β’ Enterprise data complexity: problem-solving, unstructured + structured data pipelines.
β’ Rapidly evolving AI tools: continuous learning, adaptability, maturity assessment.
β’ Client skepticism about AI:clear communication, proof points, framing business value.
β’ Balancing innovation vs production-readiness:disciplined testing, pragmatic engineering mindset.
β’ Integration into legacy systems: creativity, patience, full-stack development skills.
Technical Skills
Prompt Engineering
β Crafting and iterating on prompts for LLMs to achieve consistent, accurate, and enterprise-ready outputs.
β Applying structured techniques to reduce variability and ensure responses align with client requirements.
Retrieval-Augmented Generation (RAG) Systems
β Designing pipelines that integrate vector databases, embeddings, and prompt templates.
β Connecting enterprise data sources into LLM-powered workflows for context-rich responses.
Model Fine-Tuning
β Applying supervised fine-tuning, reinforcement learning with human feedback (RLHF), or domain adaptation.
β Providing client-specific datasets to improve accuracy, compliance, and relevance.
_AI Agents_
β Building autonomous agents that use reasoning + tools to act within client environments.
β Combining multiple LLM roles (e.g., planner, executor, validator) into reliable workflows.
_LLM Deployment_
β Packaging and deploying LLM solutions into client production environments.
β Leveraging containerization, APIs, and deployment pipelines for scalability and security.
LLM Optimization
β Applying quantization, distillation, caching, and latency reduction techniques.
β Balancing model performance, cost efficiency, and client SLAs.
LLM Observability
β Implementing monitoring for model accuracy, bias, latency, and cost.
β Using tracing, dashboards, and evaluation frameworks to ensure reliability at scale.
Context Engineering
β Designing workflows that bring the right data (documents, memory, tools, databases) into prompts.
β Ensuring compliance, data governance, and high fidelity of client knowledge bases.
Job Type: Full-time
Benefits:
β’ 401(k)
β’ Dental insurance
β’ Health insurance
β’ Paid time off
Application Question(s):
β’ LinkedIn Link Required for Candidacy
Work Location: Remote