LLM & RAG Solutions Architect ( Project Based )

AI overview

Design and implement innovative solutions using LLM and RAG technologies to enhance data retrieval and natural language processing for clients.

Description:

The LLM & RAG Solutions Architect at BlackStone eIT will be responsible for designing and implementing solutions that leverage Large Language Models (LLMs) and Retrieval-Augmented Generation (RAG) techniques. This role focuses on creating innovative solutions that enhance data retrieval, natural language processing, and information delivery for our clients.

Responsibilities:

• Develop architectures that incorporate LLM and RAG technologies to improve client solutions.

• Collaborate with data scientists, engineers, and business stakeholders to understand requirements and translate them into effective technical solutions.

• Design and implement workflows that integrate LLMs with existing data sources for enhanced information retrieval.

• Evaluate and select appropriate tools and frameworks for building and deploying LLM and RAG solutions.

• Conduct research on emerging trends in LLMs and RAG to inform architectural decisions.

• Ensure the scalability, security, and performance of LLM and RAG implementations.

• Provide technical leadership and mentorship to development teams in LLM and RAG best practices.

• Develop and maintain comprehensive documentation on solution architectures, workflows, and processes.

• Engage with clients to communicate technical strategies and educate them on the benefits of LLM and RAG.

• Monitor and troubleshoot implementations to ensure optimal operation and address any arising issues.

Requirements

Resource Requirement – AI/Multi-Agent Chatbot Architect (RAG & On-Prem LLM)

We are looking to onboard a specialized technical resource with the following expertise:

  • Proven Experience in Multi-Agent Chatbot Architectures:
    Hands-on experience designing and implementing multi-agent conversational systems that allow for scalable, modular interaction handling.
  • On-Premise LLM Integration:
    Demonstrated capability in deploying and integrating large language models (LLMs) in on-premise environments, ensuring data security and compliance.
  • RAG (Retrieval-Augmented Generation) Implementation:
    Prior experience in successfully implementing RAG pipelines, including knowledge of embedding strategies, vector databases, document chunking, and query optimization.
  • RAG Optimization:
    Deep understanding of optimizing RAG systems for performance and relevance, including latency reduction, caching strategies, embedding quality improvements, and hybrid retrieval techniques.

Optional but preferred:

  • Familiarity with open-source LLMs (e.g., LLaMA, Qwen, Mistral, Falcon)
  • Experience with vector DBs such as VectorDB, FAISS, Weaviate, Qdrant, etc.
  • Workflow orchestration using frameworks like LangChain, LlamaIndex, Haystack, etc.

Benefits

  • Paid Time Off
  • Performance Bonus
  • Training & Development

Perks & Benefits Extracted with AI

  • Training and Development: Training & Development
  • Paid Time Off: Paid Time Off

Blackstone eIT is a global company that provides innovative AI solutions to automate and digitally transform human and information-intensive processes. Their offerings include machine learning, natural language processing, and computer vision to enable...

View all jobs
Get hired quicker

Be the first to apply. Receive an email whenever similar jobs are posted.

Ace your job interview

Understand the required skills and qualifications, anticipate the questions you may be asked, and study well-prepared answers using our sample responses.

Solutions Architect Q&A's
Report this job
Apply for this job