Overview
On Site
$50 - $60
Accepts corp to corp applications
Contract - W2
Contract - 12 Month(s)
Skills
Python
RAG
LLM
Vector
AWS
Job Details
AI Engineer
Experience: 4 8 years
Location: Portland, USA
Role Summary
Build intelligent capabilities using LLM-based inferencing, agentic AI workflows, and RAG-based solutions leveraging AWS-native AI/ML services. Focus on inference orchestration, vector search pipelines, and lightweight model training for predictive maintenance use cases.
Key Responsibilities
- LLM & Inference Engineering:
- Develop AI-driven features using LLMs, agentic patterns, RAG, and vector embeddings.
- Orchestrate inference pipelines with Python and AWS AI services.
- Build reusable components and prompt orchestration flows.
- Predictive Analytics & Light Model Training:
- Support predictive maintenance using classical ML techniques.
- Perform lightweight training with AWS SageMaker, AutoML, and deploy inference endpoints.
- AWS Engineering:
- Utilize AWS services (Lambda, API Gateway, S3, DynamoDB, SageMaker, Bedrock) for scalable AI workflows.
- Python Development:
- Write modular, testable Python code for inference orchestration and backend integrations.
- Collaboration & Delivery:
- Work with product and engineering teams; document AI workflows; participate in design reviews.
Must-Have Skills
- Strong proficiency in Python.
- Hands-on experience with LLM inferencing, RAG architectures, and vector embeddings.
- Working knowledge of AWS AI/ML services (SageMaker, Bedrock, Lambda, etc.).
- Familiarity with classical ML concepts (regression, classification, anomaly detection).
- Experience integrating models into production pipelines.
- Understanding of prompt engineering and evaluation
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