What are the responsibilities and job description for the AI/ML Engineer - Generative AI & Agentic Systems position at SSTech LLC?
Job Description: AI/ML Engineer - Generative AI & Agentic Systems
Role Overview: We are seeking a highly skilled AI / ML Engineer with strong expertise in Generative AI, Large Language Models (LLMs), and Agentic AI systems to design, develop, and deploy intelligent applications at scale. The ideal candidate should possess hands-on experience building AI-driven solutions using modern frameworks, implementing production-grade machine learning systems, and integrating advanced language model capabilities into enterprise workflows.
Key Responsibilities
Key Responsibilities
- Design, develop, and deploy scalable AI and machine learning solutions for real-world applications.
- Build and optimize Generative AI applications leveraging Large Language Models (LLMs).
- Develop Agentic AI and multi-agent workflows using modern orchestration frameworks.
- Design and implement Retrieval-Augmented Generation (RAG) architectures with semantic search capabilities.
- Engineer prompts and optimize LLM outputs for accuracy, reliability, and business outcomes.
- Fine-tune, evaluate, and benchmark AI models for domain-specific use cases.
- Develop custom machine learning models for classification, clustering, recommendation systems, and predictive analytics.
- Perform feature engineering, model selection, experimentation, and optimization.
- Build end-to-end ML pipelines and manage model lifecycle processes using MLOps practices.
- Collaborate with cross-functional teams to integrate AI solutions into production environments.
- Monitor model performance, conduct evaluations, and continuously improve deployed systems.
- AI / Machine Learning
- Generative AI and Large Language Models (LLMs)
- Agentic AI and Multi-Agent Systems
- Retrieval-Augmented Generation (RAG)
- Semantic Search Architectures
- Prompt Engineering
- Fine-Tuning and Model Evaluation
- Custom Machine Learning Model Development
- Classification Models
- Clustering Techniques
- Recommendation Systems
- Predictive Analytics
- Feature Engineering
- MLOps and Model Lifecycle Management
- Frameworks & Libraries
- LangGraph
- LangChain
- CrewAI (preferred)
- AutoGen
- MCP (Model Context Protocol)
- OpenAI APIs
- Anthropic Claude APIs
- Hugging Face Ecosystem
- Scikit-Learn
- XGBoost
- PyTorch
- Experience building production-grade AI systems using cloud-native architectures.
- Understanding of multi-agent orchestration and workflow automation.
- Experience with model evaluation, observability, and AI system monitoring.
- Strong software engineering fundamentals and API integration experience.
- Familiarity with scalable deployment patterns for AI applications.
- Experience with vector databases and embedding pipelines.
- Exposure to distributed training or large-scale inference systems.
- Experience with experimentation frameworks and A/B testing for AI systems.
- Knowledge of responsible AI practices and model governance.
- Ideal Candidate Profile
- Strong analytical and problem-solving skills.
- Ability to translate business requirements into AI solutions.
- Comfortable working across research, experimentation, and production environments.
- Passionate about emerging AI technologies and continuous learning.