LLM Consultant
Location
United States
Posted
21 days ago
Salary
Not specified
No structured requirement data.
Job Description
Job Requirements
- 3+ years in AI/ML engineering, applied LLM development, or AI consulting
- Hands-on experience with LLM APIs (OpenAI, Anthropic, etc.)
- Experience building multi-agent or tool-enabled workflows
- Strong Python development skills
- Experience with APIs, microservices, and cloud deployment (AWS/Azure/GCP)
- Familiarity with vector databases and embedding pipelines
- Ability to translate business problems into AI-driven solutions
- ERP system integration experience (e.g., Infor, Epicor, NetSuite, SAP, etc.)
- Production deployment of LLM-powered systems
- Experience with observability, logging, and model monitoring
- Understanding of ML fundamentals and predictive modeling
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