Title - AI Solution Development
Location Atlanta/Syracuse/Indianapolis
5 -7 Years
Positions -2 (1 replacement and 1 additional position)
Location: Atlanta/Syracuse/Indianapolis
Job Description:
Agentic AI is must to have
- Agentic AI Multi Agents & MCP:
- Collaborate with engineering teams to design MCP-based integrations and other integrations for internal tool development.
- Enable agent-driven workflows that streamline engineering processes across software hardware and mechanical domains.
- AI Solution Development & Deployment:
- Design develop and deploy AI-driven solutions for engineering applications
- Designing scalable production-ready AI systems that integrate LLMs like GPT-4 Google Gemini Claude or Llama with internal data and APIs.
- Building complex workflows using frameworks like LangChain to manage prompt chaining memory and multi-agent systems.
- Retrieval-Augmented Generation (RAG): Implementing vector databases (e.g. Pinecone FAISS) to allow models to access and reason.
- Prompt Engineering: Refining and optimizing high-quality prompts to ensure model outputs are accurate safe and aligned with business requirements.
- Model Fine-Tuning: Using specialized techniques like LoRA (Low-Rank Adaptation) to adapt foundational models for niche domain-specific tasks.
- Evaluation & Monitoring: Establishing robust frameworks to test model performance against benchmarks for accuracy bias and reliability.
- Integrate AI capabilities into internal engineering tools to enhance productivity and automation.
- Take ownership design and lead project for internal customer stakeholders.
- LLMOps & Testing:
- Apply LLMOps best practices for lifecycle management of large language models including CI/CD pipelines monitoring and governance.
- Develop and execute testing strategies for AI applications to ensure reliability accuracy and compliance.
- Cloud AI Services Integration:
- Deploy and manage AI solutions on AWS ensuring scalability security and cost optimization.
- Implement containerization orchestration and serverless architectures for AI workloads.
- Collaboration & Documentation:
- Work closely with multidisciplinary teams in a global environment.
- Produce clear technical documentation and contribute to knowledge-sharing initiatives.
Title - AI Solution Development Location Atlanta/Syracuse/Indianapolis 5 -7 Years Positions -2 (1 replacement and 1 additional position) Location: Atlanta/Syracuse/Indianapolis Job Description: Agentic AI is must to have Agentic AI Multi Agents & MCP: Collaborate with engineering teams to ...
Title - AI Solution Development
Location Atlanta/Syracuse/Indianapolis
5 -7 Years
Positions -2 (1 replacement and 1 additional position)
Location: Atlanta/Syracuse/Indianapolis
Job Description:
Agentic AI is must to have
- Agentic AI Multi Agents & MCP:
- Collaborate with engineering teams to design MCP-based integrations and other integrations for internal tool development.
- Enable agent-driven workflows that streamline engineering processes across software hardware and mechanical domains.
- AI Solution Development & Deployment:
- Design develop and deploy AI-driven solutions for engineering applications
- Designing scalable production-ready AI systems that integrate LLMs like GPT-4 Google Gemini Claude or Llama with internal data and APIs.
- Building complex workflows using frameworks like LangChain to manage prompt chaining memory and multi-agent systems.
- Retrieval-Augmented Generation (RAG): Implementing vector databases (e.g. Pinecone FAISS) to allow models to access and reason.
- Prompt Engineering: Refining and optimizing high-quality prompts to ensure model outputs are accurate safe and aligned with business requirements.
- Model Fine-Tuning: Using specialized techniques like LoRA (Low-Rank Adaptation) to adapt foundational models for niche domain-specific tasks.
- Evaluation & Monitoring: Establishing robust frameworks to test model performance against benchmarks for accuracy bias and reliability.
- Integrate AI capabilities into internal engineering tools to enhance productivity and automation.
- Take ownership design and lead project for internal customer stakeholders.
- LLMOps & Testing:
- Apply LLMOps best practices for lifecycle management of large language models including CI/CD pipelines monitoring and governance.
- Develop and execute testing strategies for AI applications to ensure reliability accuracy and compliance.
- Cloud AI Services Integration:
- Deploy and manage AI solutions on AWS ensuring scalability security and cost optimization.
- Implement containerization orchestration and serverless architectures for AI workloads.
- Collaboration & Documentation:
- Work closely with multidisciplinary teams in a global environment.
- Produce clear technical documentation and contribute to knowledge-sharing initiatives.
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