AI Engineer
What We Offer:
- Canteen Subsidy
- Night Shift allowance as per process
- Health Insurance
- Tuition Reimbursement
- Work-Life Balance Initiatives
- Rewards & Recognition
What You’ll Be Doing:
- Design, build, and deploy LLM-driven applications (e.g., document summarization, RAG-based QA, chatbots).
- Work with open-source LLMs using platforms like Ollama and Hugging Face.
- Implement Lang Chain and Lang Graph workflows for multi-step, multi-agent task resolution.
- Build and optimize RAG (Retrieval-Augmented Generation) systems using vector databases.
- Collaborate with cross-functional teams to ship features to production.
- Stay up to date with the latest in open-source LLMs, model optimization (LoRA, quantization), and multi-modal AI.
What We Expect You To Have:
- 3–5 years of hands-on experience in AI/ML engineering.
- Proficient in Python, PyTorch, and Hugging Face Transformers.
- Proven experience with Lang Chain and Lang Graph for LLM workflows.
- Familiarity with Ollama, Mistral, LLaMA, or similar open-source LLMs.
- Experience working with vector stores (Qdrant, Pinecone, Weaviate, FAISS).
- Skilled in backend integration using FastAPI, Docker, and cloud platforms.
- Solid grasp of NLP, LLM reasoning, prompt engineering, and document parsing.
- Experience with LangServe, OpenAI tool/function calling, or agent orchestration.
- Background in multi-modal AI (e.g., image + text analysis).
- Familiarity with MLOps tools (MLflow, Weights & Biases, Airflow).
- Contributions to open-source GenAI projects.
- Understanding LLM safety, security, and alignment principles.
To apply for this job email your details to sethisharanpalsingh@gmail.com
AI Engineers design, develop, and deploy artificial intelligence models and systems to solve real-world problems, often working with machine learning, deep learning, and data science tools.
AI Engineers work closely with data scientists, software developers, and business stakeholders to integrate AI solutions into products and ensure that models meet business needs.
Common challenges include acquiring quality data, optimizing model performance, ensuring scalability, and addressing ethical or bias concerns in algorithms.