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We are seeking a highly skilled AI/ML Software Engineer with strong programming experience in Python to design, develop, and deploy intelligent software systems that leverage Artificial Intelligence and Machine Learning techniques.
This role involves working on cutting-edge solutions such as LLM agents, RAG systems, chatbots, document intelligence, and AI-powered automation tools.
Required Qualifications
AI/ML Development & System Design:
We are seeking a highly skilled AI/ML Software Engineer with strong programming experience in Python to design, develop, and deploy intelligent software systems that leverage Artificial Intelligence and Machine Learning techniques.
This role involves working on cutting-edge solutions such as LLM agents, RAG systems, chatbots, document intelligence, and AI-powered automation tools.
Required Qualifications
- Bachelor’s degree in:
- Computer Science / Engineering / Data Science / Mathematics or related field
- Strong programming experience in Python
- Solid understanding of:
- Data structures & algorithms
- Clean coding principles
AI/ML Development & System Design:
- Design and develop AI/ML-powered applications for:
- Document analysis, redaction, and generation
- Chatbots and conversational AI
- Knowledge retrieval using LLM agents
- Translation, transcription, and data processing
- Build and optimize RAG (Retrieval-Augmented Generation) systems
- Design multi-agent AI systems and task-oriented workflows
- Evaluate when to use LLM vs non-LLM approaches
- Develop production-grade backend systems using Python
- Build APIs, middleware, and scalable data pipelines
- Work with service-oriented architecture and microservices
- Integrate AI solutions into existing enterprise systems
- Deploy AI/ML solutions in hybrid cloud environments
- Work with containerized applications (Docker)
- Optimize applications for low-resource environments (limited GPU)
- Maintain and monitor production AI systems
- SQL and relational database systems (e.g., PostgreSQL)
- Fine-tuning small language models or embedding models
- Contributing to or maintaining open-source software projects
- Graph databases or graph extensions (e.g., Neo4j, Apache AGE)
- Designing and implementing multi-agent or task-oriented AI systems
- Embedding models, vector similarity, re-ranking, and graph retrieval techniques in RAG systems
- Version control systems (e.g., Git), containerization technologies (e.g., Docker), and
- Collaborating with large language models (LLMs), including both API-based
- Validating AI-generated outputs, mitigating hallucinations, and integrating AI tools