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    Home/Jobs/Gen AI Engineer Python

    Gen AI Engineer Python

    Coditas

    Pune
    3-5 years
    Today
    ₹15–28 LPA
    Full-time
    Onsite

    Skills Required

    LangChain
    Retrieval-Augmented Generation (RAG)
    Prompt Engineering
    LLM
    multimodal AI
    Python
    FastAPI
    Django
    Flask
    Llama-Index
    PostgreSQL
    MySQL
    Pinecone
    Weaviate
    Supabase

    Description

    We are looking for a skilled Generative AI Engineer with a strong background in Python to join our dynamic team. In this role, you will integrate backend development expertise with the latest advancements in AI to create impactful solutions. If you excel in a fast-paced environment and enjoy tackling complex challenges, we encourage you to apply.

    Company: Coditas

    Role: Gen AI Engineer Python

    Location: Pune City, India

    Experience:

    • 3-5 years

    Key Skills:

    • Python
    • genai
    • python+16
    • LangChain
    • Llama-Index
    • FastAPI
    • Django
    • Flask
    • PostgreSQL
    • MySQL
    • Pinecone
    • Weaviate
    • Supabase
    • PGVector
    • Docker
    • Celery
    • cron jobs

    Role Focus:

    • Apply prompt engineering techniques to design effective queries and ensure optimal responses from language models.
    • Develop and implement generative AI models using frameworks like LangChain or Llama-Index.
    • Master advanced LLM functionalities, including prompt optimization, hyperparameter tuning, and response caching.
    • Implement Retrieval-Augmented Generation (RAG) workflows by integrating vector databases like Pinecone, Weaviate, Supabase, or PGVector for efficient similarity searches.
    • Work with embeddings and build solutions that leverage similarity search for personalized query resolution.
    • Explore and process multimodal data, including image and video understanding and generation.
    • Integrate observability tools for monitoring and evaluating LLM performance to ensure system reliability.
    • Build and maintain scalable backend systems using Python frameworks such as FastAPI, Django, or Flask.
    • Design and implement RESTful APIs for seamless communication between systems and services.
    • Optimize database performance with relational databases (PostgreSQL, MySQL) and integrate vector databases (Pinecone, PGVector, Weaviate, Supabase) for advanced AI workflows.
    • Implement asynchronous programming and adhere to clean code principles for maintainable, high-quality code.
    • Seamlessly integrate third-party SDKs and APIs, ensuring robust interoperability with external systems.
    • Develop backend pipelines for handling multimodal data processing, and supporting text, image, and video workflows.
    • Manage and schedule background tasks with tools like Celery, cron jobs, or equivalent job queuing systems.
    • Leverage containerization tools such as Docker for efficient and reproducible deployments.
    • Ensure security and scalability of backend systems with adherence to industry best practices.

    Other:

    • Proficiency in Python and experience with backend frameworks like FastAPI, Django, or Flask.
    • Knowledge of frameworks like LangChain, Llama-Index, or similar tools, with experience in prompt engineering and Retrieval-Augmented Generation (RAG).
    • Hands-on experience with relational databases (PostgreSQL, MySQL) and vector databases (Pinecone, Weaviate, Supabase, PGVector) for embeddings and similarity search.
    • Familiarity with LLMs, embeddings, and multimodal AI applications involving text, images, or video.
    • Proficiency in deploying AI models in production environments using Docker and managing pipelines for scalability and reliability.
    • Strong skills in writing and managing unit and integration tests (e.g., Pytest), along with application debugging and performance optimization.
    • Understanding of asynchronous programming concepts for handling concurrent tasks efficiently.
    • Experience with prompt engineering and Retrieval-Augmented Generation (RAG) workflows.

    Prepare for this role

    Recommended resources to build the skills for this position. Sponsored.

    Python for Everybody Specialization

    Coursera

    Learn Python from scratch — variables, data structures, web scraping, and databases.

    Generative AI with Large Language Models

    Coursera

    Comprehensive LLM course covering transformer architecture, fine-tuning, RLHF, and deployment.

    Python 3 Programming Specialization

    Coursera

    Intermediate Python covering classes, inheritance, APIs, and data processing.

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