Overview
On Site
BASED ON EXPERIENCE
Full Time
Contract - W2
Contract - Independent
Contract - 4+ mo(s)
Skills
AI ENGINEER
PYTHON
GCP
GOOGLE CLOUD
GKE
GOOGLE KUBERNETES ENGINE
RAG
RAGFLOW
GENERATIVE AI
GEN AI
Job Details
AI Engineer
Location: Irving, TX Onsite
* 6+ years of experience with strong Python coding skills.
* Experience building and optimizing production-grade RAG pipelines.
* Proven expertise in creating robust knowledge layers and processing high-volume, multi-modal documents
* Skilled in deploying on Google Cloud Platform platforms such as GKE and Cloud Run (serverless)
* Deep understanding of both Vector and Graph databases to support complex, scalable architectures
* Demonstrated experience in navigating the ecosystem of embedding models for embedding generation and multiple LLM models for effective data extraction/generation
* Strong foundational knowledge in operationalizing data architecture in production
Location: Irving, TX Onsite
Must have
- Python
- Google Cloud Platform (GKE/Serverless Cloud Run)
- Pre-processing, Chunking, Enrichment, Embedding, Reranking, RAG, Vector/Graph DB
* 6+ years of experience with strong Python coding skills.
* Experience building and optimizing production-grade RAG pipelines.
* Proven expertise in creating robust knowledge layers and processing high-volume, multi-modal documents
* Skilled in deploying on Google Cloud Platform platforms such as GKE and Cloud Run (serverless)
* Deep understanding of both Vector and Graph databases to support complex, scalable architectures
* Demonstrated experience in navigating the ecosystem of embedding models for embedding generation and multiple LLM models for effective data extraction/generation
* Strong foundational knowledge in operationalizing data architecture in production
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