What are the responsibilities and job description for the Generative AI Architect position at Jobs via Dice?
Dice is the leading career destination for tech experts at every stage of their careers. Our client, Info Dinamica Inc, is seeking the following. Apply via Dice today!
Job Title: Generative AI Architect
Location: Charlotte, NC (Onsite from Day 1)
Job Type: Contract
Skill Metrics:
Claude
Microsoft GitHub Copilot
PyTorch
What are the top skills required for this role?
GenAI solution in STLC
Job Title: Generative AI Architect
Location: Charlotte, NC (Onsite from Day 1)
Job Type: Contract
Skill Metrics:
Claude
Microsoft GitHub Copilot
PyTorch
What are the top skills required for this role?
- Hands on experience of driving gen AI solution using Copilot, Claude Code etc in the STLC
- Participate in design and implementation of solutions, fine-tuning pipelines, and prompt engineering frameworks
- Participate in cross-functional GenAI initiatives and PoC's across entire software lifecycle
- Seeking a visionary and experienced Senior Generative AI Architect to lead the design, development, and implementation of generative AI solutions across software test lifecycle.
- The selected candidate will define the strategic roadmap for GenAI, evaluate and select appropriate architectures, and ensure the scalability, security, and performance of deployed models.
- This is a highly collaborative role that bridges client needs, R&D innovation, and enterprise-grade AI engineering.
GenAI solution in STLC
- Build/Test Solution to create test automation code for UI/API through GenAI assisted coding
- Build/Test solution for test data mining using Generative AI
- Participate in design and implementation of solutions, fine-tuning pipelines, and prompt engineering frameworks
- Participate in cross-functional GenAI initiatives and PoC's across entire software lifecycle
- Define GenAI adoption roadmap in alignment with client goals
- Evaluate build-vs-buy decisions and advise on vendor/platform selections
- Advocate for responsible AI practices and model governance frameworks
- Collaborate with data scientists, ML engineers, product managers, and key stakeholders
- Mentor teams in GenAI best practices, including model optimization, deployment, and safety measures
- Stay ahead of the curve on advancements in transformer architectures, LLM training, and multimodal AI.
- Prototype custom models using frameworks like LangChain, PyTorch, etc.