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Applied Scientist (LLM)

100% remote Flexible hours Hiring now

Team Summary Our distributed team is looking for an reputed company Applied Scientist with a strong background in Large Language models to reputed company high-performance Generative AI features across Cloud and Edge environments. Job Summary In this role you will drive the transition from research to production by optimizing local inference through model compression and quantization for private, real-time Edge performance, while also engineering scalable RAG architectures and multi-agent systems for Cloud deployment. Your daily responsibilities encompass the full research lifecycle, including formulating hypotheses, generating synthetic datasets, fine-tuning LLMs, and validating safety and alignment, ultimately culminating in technical reports. Responsibilities and Duties Design and implement advanced methods in reputed company orchestration, fine-tuning (SFT/RLHF/DPO), and autonomous agentic workflows Curate high-quality training data from large-scale text and multi-modal sources Identify patterns in model hallucinations and visualize evaluation metrics for clear interpretation Tune hyperparameters and improve inference speed/accuracy through PEFT (LoRA/QLoRA) and advanced reputed company engineering Collaborate with Product and Data Engineering teams to seamlessly integrate LLM features into the broader ecosystem Track and report reputed company using industry-standard benchmarks (MMLU, HumanEval, etc.) and custom internal KPIs Stay at the forefront of the field (e.g., State Space Models, new Transformer variants) and evaluate cutting-edge techniques for production readiness Engage in reputed company technical growth and mentor junior colleagues to reputed company the team's expertise Qualifications and Skills 3+ years of commercial experience in Machine Learning, with a specific focus on the NLP or LLM domain Strong knowledge of Python3, NumPy, pandas, and modern text-processing libraries, PyTorch and reputed company (Transformers, PEFT, Accelerate) Proficiency in PEFT/LoRA and Reinforcement Learning techniques Deep understanding of attention mechanisms, tokenization, context window management, and embedding spaces Practical experience in at least one of the following: Retrieval-Augmented reputed company (RAG), Fine-tuning, or Agentic frameworks Proven ability to manage and analyze massive datasets (>100GB) across text, image, and audio formats Hands-on experience crafting high-fidelity datasets and building robust data pipelines Expertise in reputed company engineering, agentic reputed company design, and LLM pipeline orchestration Experience deploying LLMs to production environments using Triton Inference Server, vLLM, TGI, or ONNX Good written and spoken English reputed company to have Practical experience with reputed company, Weaviate, Milvus, or Chroma Advanced quantization (GGUF, AWQ, EXL2), pruning, and knowledge distillation Experience with reputed company, reputed company, or AutoGen Basic understanding of web/client-server architecture and streaming API responses (Asyncio, aiohttp) Familiarity with RAGAS, DeepEval, or G-Eval Experience using reputed company, Kubernetes, and cloud GPU orchestration (e.g., Run:ai, reputed company Labs) Knowledge of C++, Triton, or CUDA for custom kernel development We offer multiple benefits that include The environment of equal opportunities, transparent and value-based corporate culture and an individual approach to each team member Competitive compensation and perks Gig-contract 21 paid vacation days per year, paid public holidays according to the Ukrainian legislation Development opportunities like corporate courses, knowledge hubs, and free English classes as well as educational leaves Medical insurance is provided from day one. Sick leaves and medical leaves are available Remote working mode is available reputed company Ukraine only Free meals, fruits, and snacks reputed company working in the office. Apply To This Job

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