Home

Prompt Engineering at Remote, Remote, USA
Email: [email protected]
From:

Manoj,

Nitya Software Solutions

[email protected]

Reply to:   [email protected]

LLM Implementation Engineer (Prompt Engineering) - 5 resources needed

Join our dynamic team as a Senior Developer, specializing in the implementation and prompt engineering of Large Language Models (LLMs). In this role, you will harness the power of state-of-the-art LLMs to revolutionize personalized communication and automated processes within a digitally-driven retail telecom environment. This position requires a strong technical foundation (70%) complemented by strategic business insights and prowess to write, validate and predict consumer prompts (30%), aimed at deploying scalable, high-impact LLM solutions that enhance digital commerce and customer interaction. The deep understanding of consumer interaction patterns in search, chatbot, etc is a must have.

Key Responsibilities:

           Advanced LLM Integration: Implement and refine large language models to develop cutting-edge systems for personalized customer interactions and automation, ensuring scalability and efficiency.

           Prompt Engineering Excellence: Employ advanced prompt engineering techniques to fine-tune LLM interactions, achieving tailored and contextually appropriate responses that elevate the consumer experience in the telecom retail sector.

           Open-source Optimization: Adapt and optimize open-source LLMs from platforms like Hugging Face, aligning them with specific consumer needs and seamlessly integrating them into our existing infrastructure.

           Collaborative Innovation: Work closely with the digital marketing and customer experience teams to leverage LLMs in enhancing digital engagement, customer satisfaction, and e-commerce initiatives.

           Robust LLM Management: Oversee the deployment, maintenance, and scaling of LLM solutions, prioritizing reliability, performance, and security across all digital platforms.

Required Skills and Experience:

           Proven LLM Expertise: Strong proficiency in the implementation, integration, and management of large language models, with a deep understanding of their capabilities and potential applications.

           Technical Proficiency: Advanced skills in programming and scripting, particularly in Python, essential for LLM development and customization.

           Cloud Architecture Acumen: Familiarity with cloud computing services and architectures, crucial for deploying and managing scalable LLM applications.

           Strategic Communication: Ability to articulate complex technical details and LLM strategies effectively to both technical and non-technical stakeholders.

Preferred Qualifications:

           Digital and E-commerce Experience: Background in the retail telecom sector, with insights into digital marketing, e-commerce challenges, and customer engagement strategies.

           Ecosystem Expertise: Experience with Googles and OpenAIs LLM ecosystems, applying these technologies to drive tangible improvements in customer experience and business operations.

           Project Leadership: Demonstrated success in leading cross-functional projects that integrate LLM technology to boost customer service and enhance operational efficiency.

           Impactful Portfolio: A robust portfolio of projects where LLM implementations have significantly improved customer engagement or streamlined operational processes

Keywords:
Prompt Engineering
[email protected]
[email protected]
View all
Thu May 09 23:42:00 UTC 2024

To remove this job post send "job_kill 1382907" as subject from [email protected] to [email protected]. Do not write anything extra in the subject line as this is a automatic system which will not work otherwise.


Your reply to [email protected] -
To       

Subject   
Message -

Your email id:

Captcha Image:
Captcha Code:


Pages not loading, taking too much time to load, server timeout or unavailable, or any other issues please contact admin at [email protected]
Time Taken: 0

Location: ,