What we build
We are building a generational application for support, sales and data analysis functionality. It uses chat, agents and functional calls to external systems.
Requirements:
Will be plus:
- Experience with Machine Learning Operations
- End-to-end experience in collection data, fine tuned, training, evaluating, testing, and deploying Generative app solutions in production;
- Background in building back-end microservices and data platforms using Python.
Responsibilities
• Write production code that meets high-quality and maintainability standards;
• Selecting the most appropriate Generative AI, Natural Language Processing (NLP), and Machine Learning(ML) model depending on the use case;
• Use your prompt engineering and prompt chaining skills to create new prompts and keep improving on the existing ones;
• LLM engineering, inference, tuning and training language models. Optimization NLP models;
• Deploy services in production environments;
• Develop and implement strategies for prompt engineering, model refinement, and training pipelines to enhance model performance;
• Manage the integration of сompany knowledge into NLP models to improve contextual understanding and output relevance;
• Evaluate and utilize state-of-the-art embedding vectors and encoding methods to ensure optimal model performance;
• Guide the team in the expansion and refinement of taxonomies using large language models, followed by human review for tagging accuracy;
• Drive the adoption of best practices in NLP model development, deployment, and maintenance, staying abreast of the latest industry trends and research;
• Improve our LLMOps infrastructure to have a solid feedback loop with the most appropriate metrics to keep optimizing each use case;
Degree
Computer Science, Engineering, Data science or similar
Tech Stack
Python, SQL, Fastapi, Celery, W&B, Docker, AWS: SQS, S3; APP runner, ECR; CircleCI, Docker Hub, Bitbucket, Localstack, LangGraph, LangChain, LlamaIndex, OpenAI, Mistral, llama 3;
показы: 10.5K
Войдите или зарегистрируйтесь чтобы оставлять комментарии.