Location : Hyderabad, India (Onsite) Company : Spectraforce
Role Overview :
We are seeking a Data Scientist with deep technical expertise in large language models, autonomous agent design, and intelligent system orchestration. This role focuses on building self-directed, context-aware AI systems that can reason, learn, and interact with humans and software environments.
Key Responsibilities :
- Design and build Agentic AI architectures capable of autonomous task execution, reasoning, and planning.
- Develop and optimize LLM-driven multi-agent systems that coordinate, collaborate, and adapt dynamically.
- Implement retrieval-augmented generation (RAG) and memory-based reasoning pipelines for intelligent context use.
- Conduct prompt engineering, few-shot learning, and reinforcement learning to fine-tune agent behavior.
- Build and manage knowledge graphs, embedding databases, and semantic retrieval layers to power reasoning.
- Architect data ingestion, context extraction, and interaction layers that enable AI agents to interface with real-world APIs, databases, and systems.
- Lead experimentation, evaluation, and optimization cycles to improve agent accuracy, autonomy, and decision quality.
- Collaborate with AI engineers and product teams to integrate agents into scalable production systems.
Technical Skills :
Core AI and ML Expertise :
- Proficiency in Python, PyTorch, TensorFlow, or JAX.
- Strong understanding of transformer-based architectures, LLM tuning, and prompt optimization.
- Hands-on experience with Agentic frameworks such as LangChain, LlamaIndex, CrewAI, or similar orchestration tools.
- Deep knowledge of multi-agent systems, goal decomposition, and reasoning loops.
Data and Infrastructure Engineering :
- Experience with vector databases such as FAISS, Pinecone, or Milvus, and graph systems such as Neo4j or ArangoDB.
- Proficient in data pipeline design, feature computation, and knowledge representation.
- Familiarity with Docker, Kubernetes, and cloud-based AI deployment environments such as AWS, GCP, or Azure.
Advanced Capabilities (Preferred) :
- Exposure to self-improving agent architectures, meta-learning, or tool-using AI systems.
- Understanding of AI alignment, explainability, and autonomous evaluation mechanisms.