Before u proceed below to check the jobs/CVs, please select your favorite job categories, whose top job alerts you want in your email & Subscribe to our Email Job Alert Service For FREE
Job Location: Work from home
Job Detail:
About the work from home job/internship
1. Design, develop, and maintain applications and APIs using Python, Django, and OpenAI’s language models
2. Implement LangChain library for building applications that leverage OpenAI’s LLMs
3. Explore and implement techniques for prompt engineering to improve the performance and usability of LLMs
4. Collaborate with cross-functional teams (data scientists, ML engineers, product managers) to understand requirements and deliver high-quality solutions
5. Implement best practices for deploying and scaling OpenAI’s LLMs on the AWS cloud platform
6. Optimize and scale LLM deployments for performance, cost-effectiveness, and reliability
7. Contribute to the development of tools, utilities, and pipelines for streamlining the LLM development and deployment process
8. Stay up-to-date with the latest advancements in OpenAI’s language models, NLP, and prompt engineering techniques
9. Participate in code reviews, knowledge sharing, and mentoring activities
10. Contribute to the development of documentation, tutorials, and best practices
Skill(s) required
Who can apply
Only those candidates can apply who:
1. are available for the work from home job/internship
2. can start the work from home job/internship between 3rd Jul’24 and 7th Aug’24
3. are available for duration of 6 months
4. have relevant skills and interests
Other requirements
1. Demonstrate strong understanding of natural language processing (NLP) and machine learning (ML) concepts
2. Possess hands-on experience with OpenAIs language models (GPT all versions, etc.) and the OpenAI API
3. Exhibit expertise in using LangChain library for building applications with large language models (LLMs)
4. Apply experience with prompt engineering techniques for effective interaction with LLMs
5. Familiarity with AWS cloud platform and experience in deploying and scaling LLMs on AWS
6. Utilize knowledge of containerization technologies (e.g., Docker) and serverless architectures (e.g., AWS Lambda)
7. Understand CI/CD practices and DevOps tools for automating deployment pipelines
8. Demonstrate strong problem-solving and analytical skills
9. Exhibit excellent communication and collaboration abilities
10. Possess experience in Python development, with proficiency in Django and Rest API framework