Our Client is looking to hire A Senior AI Solutions Engineer who will be design deploy integrates and support enterprise AI solutions using (Our Companys Document AI platform) plus the broader AI stack: LLMs vector databases knowledge graphs Agentic workflow frameworks and model-serving platforms. Work spans Document AI RAG over large enterprise collections knowledge-graph discovery and Agentic workflows deployed on-prem private cloud and air-gapped behind ministry firewalls.
What You Own:
Deploy and configure Farabi-based AI solutions at client sites: OCR document understanding classification extraction summarization semantic search knowledge-base chat.
Build and tune RAG pipelines: OCR output chunking (Arabic/English/mixed) embedding vector DB (Qdrant) re-ranking prompt design evaluation.
Build Agentic workflows in production frameworks (LangChain LangGraph n8n LlamaIndex Semantic Kernel CrewAI) with guardrails auditability and human-in-the-loop.
Deploy and operate model-serving layer (vLLM NVIDIA NIM Triton Ollama) size GPU/inference infrastructure.
Operate across on-prem private cloud air-gapped and public cloud environments.
Mentor the Agentic AI Engineer. Document deployment patterns and runbooks.
Requirements
What You Bring:
5 years software engineering backend cloud data or solution-engineering. Real production code and deployments.
23 years hands-on in-production AI work (LLMs RAG agentic workflows Document AI knowledge graphs).
At least one agentic workflow built and deployed in production with real users and failure modes handled.
At least one RAG pipeline built and tuned in production. Diagnosed real retrieval-quality problems.
On-prem private cloud or air-gapped AI deployment experience. Non-negotiable for Egyptian ministry clients.
Customer-facing technical communication has explained AI decisions to non-technical stakeholders.
ArabicEnglish bilingual at professional level (verified mid-call).
Sees the role as client-delivery AI work not a stepping stone to AI Research or product engineering.
Nice-to-Have:
Arabic OCR / Arabic NLP / multilingual Document AI exposure.
Egyptian government or large-corporate AI deployment experience.
Our Client is looking to hire A Senior AI Solutions Engineer who will be design deploy integrates and support enterprise AI solutions using (Our Companys Document AI platform) plus the broader AI stack: LLMs vector databases knowledge graphs Agentic workflow frameworks and model-serving platforms. W...
Our Client is looking to hire A Senior AI Solutions Engineer who will be design deploy integrates and support enterprise AI solutions using (Our Companys Document AI platform) plus the broader AI stack: LLMs vector databases knowledge graphs Agentic workflow frameworks and model-serving platforms. Work spans Document AI RAG over large enterprise collections knowledge-graph discovery and Agentic workflows deployed on-prem private cloud and air-gapped behind ministry firewalls.
What You Own:
Deploy and configure Farabi-based AI solutions at client sites: OCR document understanding classification extraction summarization semantic search knowledge-base chat.
Build and tune RAG pipelines: OCR output chunking (Arabic/English/mixed) embedding vector DB (Qdrant) re-ranking prompt design evaluation.
Build Agentic workflows in production frameworks (LangChain LangGraph n8n LlamaIndex Semantic Kernel CrewAI) with guardrails auditability and human-in-the-loop.
Deploy and operate model-serving layer (vLLM NVIDIA NIM Triton Ollama) size GPU/inference infrastructure.
Operate across on-prem private cloud air-gapped and public cloud environments.
Mentor the Agentic AI Engineer. Document deployment patterns and runbooks.
Requirements
What You Bring:
5 years software engineering backend cloud data or solution-engineering. Real production code and deployments.
23 years hands-on in-production AI work (LLMs RAG agentic workflows Document AI knowledge graphs).
At least one agentic workflow built and deployed in production with real users and failure modes handled.
At least one RAG pipeline built and tuned in production. Diagnosed real retrieval-quality problems.
On-prem private cloud or air-gapped AI deployment experience. Non-negotiable for Egyptian ministry clients.
Customer-facing technical communication has explained AI decisions to non-technical stakeholders.
ArabicEnglish bilingual at professional level (verified mid-call).
Sees the role as client-delivery AI work not a stepping stone to AI Research or product engineering.
Nice-to-Have:
Arabic OCR / Arabic NLP / multilingual Document AI exposure.
Egyptian government or large-corporate AI deployment experience.