LLM/Prompt - Context Engineer

Overview

On Site
$1 - $2
Accepts corp to corp applications
Contract - Independent
Contract - W2
Contract - 12 Month(s)
100% Travel

Skills

LLM
Python
API
EastART Flask
Django
SQL
NoSQL
OpenAI
Anthropie
open-source LLMS
Docker
LangGraph

Job Details

We are looking for a highly skilled LLM/Prompt-Context Engineer with a strong fellslack Python background to design, develop, and integrate intelligent systems focused on large language models (LLMs), prompt engineering, and advanced content management In this role, you will play a antical part in architecting context-rich Al solutions, crafting effective prompts, and ensuring seamless agent interactions using trameworks like LangGraph.

Key Responsibilities:

Prompt & Context Engineering:

Design, optimize, and evaluate prompts for LLMS to achieve precise, reliable, and contextually relevant outputs across a variety of use cases.

Context Management:

Architect and implement dynamic context management strategies, including session memory, retrieval-augmented generation, and user personalization, to enhance agent performance.

LEM Integration:

Integrate, fine-tune, and orchestrate LL Ms within Python-based applications, leveraging APIs and custom pipelines for scalable deployment.

LangGraph & Agent Flows:

Build and manage complex conversational and agent workflows using the Lang Graph framework to support multi-agent or mole step solutions.

Eullstack Development:

Develop robust backend services, APIs, and (optionally) front-end interfaces to enable end-to-end AI-powered applications.

Collaboration:

Work closely with product, data science, and engineering teams to define requirements, run prompt experiments, and iterate quickly on solutions:

Evaluation & Optimization:

Implement testing, monitoring, and evaluation pipelines to improve prompt effectiveness and content handling continuously

Required Skills & Qualifications:

Deep experience with full-stack, Python development (EastART Flask, Django; SQL, NoSQL databases).

Demonstrated expertise in prompt engineering for LIMs (e.g., OpenAI, Anthropie, open-source LLMS).

.

Strong understanding of context engineering, including session management, vector search, and knowledge retrieval strategies.

Hands-on experience integrating Al agents and LLMs into production systems

Proficient with conversational flow frameworks such as LangGraph

Familiarity with cloud infrastructure, containerization (Docker), and CI CD practices.

Exceptional analytical, problem-solving, and communication skills.

Preferred:

Experience evaluating and fine-tuning LLMs for working with RAG architectures

Background in information retrieval, search, or knowledge management systems.

Contributions to open-source LLM, agent, or prompt engineering projects.

Employers have access to artificial intelligence language tools (“AI”) that help generate and enhance job descriptions and AI may have been used to create this description. The position description has been reviewed for accuracy and Dice believes it to correctly reflect the job opportunity.