Job Description
Roles & Responsibilities :
Roles & Responsibilities :
Education and Work Experience Requirements :
- 5 to 8 years of experience as Data Scientist
- 2 to 3 years of experience in Generative AI solution development
- Strong understanding of AI agent collaboration, negotiation, and autonomous decision-making.
- Experience in developing and deploying AI agents that operate independently or collaboratively in complex environments.
- Deep knowledge of agentic AI principles, including self-improving, self-organizing, and goal-driven agents.
- Proficiency in multi-agent frameworks such as AutoGen, LangGraph, LangChain, and CrewAI for orchestrating AI workflows.
- Hands-on experience integrating LLMs (GPT, LLaMA, Mistral, etc.) with agentic frameworks to enhance automation and reasoning.
- Expertise in hierarchical agent frameworks, distributed agent coordination, and decentralized AI governance.
- Strong grasp of memory architectures, tool use, and action planning within AI agents.
- Autonomy Score : Measures the degree of independence in decision-making.
- Collaboration Efficiency : Evaluates the ability of agents to work together and share information.
- Task Completion Rate : Tracks the percentage of tasks successfully executed by agents.
- Response Time : Measures the latency in agent decision-making and execution.
- Adaptability Index : Assesses how well agents adjust to dynamic changes in the environment.
- Resource Utilization Efficiency : Evaluates computational and memory usage for optimization.
- Explainability & Interpretability Score : Ensures transparency in agent reasoning and outputs.
- Error Rate & Recovery Time : Tracks failures and the system’s ability to self-correct.
- Knowledge Retention & Utilization : Measures how effectively agents recall and apply information.
- Hands-on experience with LLMs such as GPT, BERT, LLaMA, Mistral, Claude, Gemini, etc.
- Proven expertise in both open-source (LLaMA, Gemma, Mixtral) and closed-source (OpenAI GPT, Azure OpenAI, Claude, Gemini) LLMs.
- Advanced skills in prompt engineering, tuning, retrieval-augmented generation (RAG), reinforcement learning (RAFT), and LLM fine-tuning (PEFT, LoRA, QLoRA).
- Strong understanding of small language models (SLMs) like Phi-3 and BERT, along with Transformer architectures.
- Experience working with text-to-image models such as Stable Diffusion, DALL
- E, and Midjourney.
- Proficiency in vector databases such as Pinecone, Qdrant for knowledge retrieval in agentic AI systems.
- Deep understanding of Human-Machine Interaction (HMI) frameworks within cloud and on-prem environments.
- Strong grasp of deep learning architectures, including CNNs, RNNs, Transformers, GANs, and VAEs.
- Expertise in Python, R, TensorFlow, Keras, and PyTorch.
- Hands-on experience with NLP tools and libraries : OpenNLP, CoreNLP, WordNet, NLTK, SpaCy, Gensim, Knowledge Graphs, and LLM-based applications.
- Proficiency in advanced statistical methods and transformer-based text processing.
- Experience in reinforcement learning and planning techniques for autonomous agent behavior.
Mandatory Skills :
Design, develop, test, and deploy Machine Learning models using state-of-the-art algorithms with a strong focus on language models.Strong understanding of LLMs, and associated technologies like RAG, Agents, VectorDB and GuardrailsHand-on experience in GenAI frameworks like LlamaIndex, Langchain, Autogen, etc.Experience in cloud services like Azure, GCP and AWSMulti-agent frameworks : AutoGen, LangGraph, LangChain, CrewAILarge Language Models (LLMs) : GPT,Qualifications
Educational qualification :
BE,BTECH or PHD
Experience : 7-11 years
Mandatory / requires Skills : AI
Preferred Skills :