ZySec AI

AI Engineer

ZySec AI
Hyderabad Not disclosed
14 hours ago
On-Site
Apply to Job

About the job

We're building the future of Autonomous Data Intelligence at CyberPod AI and were looking for a deeply technical, hands-on AI Engineer to push the boundaries of whats possible with Large Language Models (LLMs). This role is for someone whos already been in the trenches: fine-tuned foundation models, experimented with quantization and performance tuning, and knows PyTorch inside out. If you're passionate about optimizing LLMs, crafting efficient reasoning architectures, and contributing to open-source communities like Hugging Face, this is your playground. What You'll Do • Fine-tune Large Language Models (LLMs) on custom datasets for specialized reasoning tasks. • Design and run benchmarking pipelines across accuracy, speed, token throughput, and energy efficiency. • Implement quantization, pruning, and distillation techniques for model compression and deployment readiness. • Evaluate and extend agentic RAG (Retrieval-Augmented Generation) pipelines and reasoning agents. • Contribute to SOTA model architectures for multi-hop, temporal, and multimodal reasoning. • Collaborate closely with the data engineering, infra, and applied research teams to bring ideas from paper to production. • Own and drive experiments, ablations, and performance dashboards end-to-end. Requirements • 3+ years of hands-on experience working with deep learning and large models, particularly LLMs. • Strong understanding of PyTorch internals: autograd, memory profiling, efficient dataloaders, mixed precision. • Proven track record in fine-tuning LLMs (e.g., LLaMA, Falcon, Mistral, Open LLaMA, T5, etc.) on real-world use cases. • Benchmarking skills: can run standardized evals (e.g., MMLU, GSM8K, HELM, TruthfulQA) and interpret metrics. • Deep familiarity with quantization techniques: GPTQ, AWQ, QLoRA, bitsandbytes, and low-bit inference. • Working knowledge of Hugging Face ecosystem (Transformers, Accelerate, Datasets, Evaluate). • Active Hugging Face profile with at least one public model/repo published. • Experience in training and optimizing multi-modal models (vision-language/audio) is a big plus. • Published work (arXiv, GitHub, blogs) or open-source contributions preferred. If you are passionate about AI and want to be a part of a dynamic and innovative team, then ZySec AI is the perfect place for you. Apply now and join us in shaping the future of artificial intelligence.

Similar Jobs

Ernst & Young (EY)

AI Engineer

Ernst & Young (EY)

KolkataNot disclosed
5 days agoOn-Site
EY

AI Engineer

EY

West BengalNot disclosed
6 days agoRemote
M

AI Engineer

Money Forward India

ChennaiNot disclosed
Last weekHybrid