Senior Software Engineer

Hirebound

Hirebound

Software Engineering
India
Posted on Mar 20, 2026

Key Responsibilities

Agent Performance Evaluation

  • Design and implement robust frameworks to evaluate agent performance across dimensions such as decision-making, learning speed, and adaptability.

Intelligence Enhancement

  • Develop methodologies to improve agent intelligence, enabling better reasoning, adaptability, and autonomous problem-solving.

Memory Architectures

  • Create advanced short-term and long-term memory architectures that help agents retain and apply past experiences to future decisions.

LLM Fine-Tuning

  • Fine-tune and optimize Large Language Models (LLMs) to improve contextual understanding, reasoning, and task performance within agents.

Agent Evaluation Metrics

  • Establish quantitative and qualitative metrics to assess agent intelligence, efficiency, and long-term adaptability.

Feedback Loops & Reinforcement Learning

  • Implement reinforcement learning strategies and feedback loops that enable agents to autonomously optimize their performance.

Optimization for Fast Learning

  • Use technologies such as VLLM to ensure fast and accurate learning, training, and inference within agent systems.

Containerized Deployment

  • Utilize Docker and Kubernetes to deploy, scale, and orchestrate agent systems in production environments.

Basic Qualifications

  • 5+ years of Python development experience, with a strong focus on AI, machine learning, and agent-based systems.
  • Proven expertise in agent performance evaluation and intelligence enhancement techniques.
  • Strong experience with VLLM for fine-tuning and optimizing LLMs.
  • Experience developing short-term and long-term memory architectures for intelligent agents.
  • Deep knowledge of reinforcement learning, self-learning frameworks, and feedback-driven optimization.
  • Proficiency with Docker and Kubernetes for containerization and orchestration.
  • Expertise in building frameworks to assess and improve agent learning speed, decision accuracy, and adaptability.
  • Hands-on experience with LLM fine-tuning and model optimization to improve reasoning and contextual understanding.

Preferred Qualifications

  • Familiarity with advanced memory networks, neural-symbolic integration, and other intelligence-enhancing techniques.
  • Experience deploying, scaling, and managing intelligent agent systems in cloud-native environments.
  • Background in developing custom evaluation frameworks and performance metrics for intelligent agents.