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Senior Data Scientist

|  Posted On: Aug 5, 2025

Woodland Hills, CA 91367

6 Months, Contract

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Job Summary

Job Title:  
Senior Data Scientist

Posted Date:  
Aug 5, 2025

Duration:  
6 Months, Contract

Shift(s):  

08:00 - 16:00 PST


Salary ($): 
53.00 - 55.00 per Hourly (compensation based on experience and qualifications)

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Talk to our Recruiter

Name:
 
Dipenkumar Jadav

Email:
 
dipen@rangam.com

Phone:
 
781-645-7991

Description

Onsite need technically strong candidates

 

  • AI agent architectures, LLMs, NLP developing A2A Protocols and Model Context Protocols (MCP)
  • LLMs and NLP models (e.g., medical BERT, BioGPT)
  • retrieval-augmented generation (RAG)
  • coding experience in Python, with proficiency in ML/NLP libraries
  • healthcare data standards like FHIR, HL7, ICD/CPT, X12 EDI formats.
  • AWS, Azure, or GCP including Kubernetes, Docker, and CI/CD

Domain Experience (If any ) – Good to have healthcare experience

 

Description

  • We are hiring a Senior Data Scientist with deep expertise in AI agent architectures, LLMs, NLP, and hands-on development experience with A2A Protocols and Model Context Protocols (MCP).
  • This role is integral in building interoperable, context-aware, and self-improving agents that interact across clinical, administrative, and benefits platforms.

 

Key Responsibilities

  • Design and implement Agent-to-Agent (A2A) protocols enabling autonomous collaboration, negotiation, and task delegation between specialized AI agents (e.g., Claims Agent, Eligibility Agent, Provider Match Agent).
  • Architect and operationalize Model Context Protocol (MCP) pipelines that ensure persistent, memory-augmented, and contextually grounded LLM interactions across multi-turn healthcare use cases.
  • Build intelligent multi-agent systems orchestrated by LLM-driven planning modules to streamline benefit processing, prior authorization, clinical summarization, and member engagement.
  • Fine-tune and integrate domain-specific LLMs and NLP models (e.g., medical BERT, Bio GPT) for complex document understanding, intent classification, and personalized plan recommendations.