Prompt & Content Engineering Lead
InOpTra Digital · United States · 8 mo ago
RemoteRemoteInformation TechnologyFull-time
Key Responsibilities
- Strong Data Engineer with Agentic AI experience, capable of Data Extract, Transformation, Feature Engineering, Analytics to build AI/ML models
- Curate and preprocess training corpora for domain-specific instruction tuning
- Fine-tune open-source LLMs using LoRA, RLHF, DPO, and model distillation techniques
- Implement model evaluation pipelines and benchmark reporting
- Collaborate with Prompt & Data teams to create repeatable model tuning workflows
- Data Engineering & Preparation
- Architect and implement data pipelines for large-scale text ingestion, cleaning, and transformation
- Perform data extraction, transformation, and feature engineering across structured and unstructured sources
- Develop and maintain data quality frameworks ensuring clean, diverse, and bias-mitigated datasets for model training
- Automate data labeling and annotation workflows using LLM-assisted or agentic tools
- Build domain-specific corpora for instruction tuning, conversational grounding, and retrieval-augmented training
- Model Training & Fine-Tuning
- Fine-tune and adapt open-source LLMs (e.g., LLaMA, Mistral, Falcon, Gemma) using LoRA, QLoRA, RLHF, DPO, and model distillation
- Implement self-instruct and multi-turn conversational fine-tuning for agentic use cases
- Design training orchestration scripts for distributed GPU/TPU environments (PyTorch, DeepSpeed, HuggingFace Accelerate)
- Model Evaluation & Benchmarking
- Develop evaluation frameworks for automatic and human-in-the-loop assessment of LLM performance
- Benchmark models against standard datasets (MMLU, HELM, ARC, TruthfulQA) and custom internal benchmarks
- Generate detailed performance dashboards tracking precision, hallucination rate, factual consistency, and latency
- Conduct A/B testing and regression analysis on model updates to ensure stable improvement
- Collaboration & AI Workflow Automation
- Work cross-functionally with Prompt Engineers, Data Scientists, and DevOps to operationalize model development
- Build repeatable pipelines for fine-tuning, version control, and continuous model improvement (MLOps)
- Integrate agentic feedback loops for continuous self-improvement and autonomous retraining cycles
- Support deployment through containerized model serving (FastAPI, Triton, or Ray Serve)
- Research & Innovation
- Stay current with cutting-edge research in LLM fine-tuning, alignment, and model compression
- Contribute to internal whitepapers and experiments evaluating emerging architectures and optimization methods
- Prototype and publish novel training methodologies or agentic evaluation techniques
- Strong Python expertise with hands-on experience in PyTorch, Hugging Face Transformers, and LangChain
- Deep understanding of LLM architectures, tokenizer mechanics, and parameter-efficient fine-tuning
- Proficiency in data processing frameworks (Spark, Airflow, Pandas, Arrow, Dask)
- Experience with distributed training and GPU/TPU optimization (CUDA, NCCL)
- Knowledge of evaluation metrics and human-aligned reward modeling
- Experience with Vector Databases (FAISS, Milvus, Pinecone) for context retrieval
- Familiarity with cloud platforms (AWS, GCP, Azure) and container orchestration (Docker, Kubernetes)
- Exposure to agentic AI frameworks and feedback-based continuous improvement systems is a plus
- Prior experience contributing to open-source LLM projects
- Background in NLP research or applied ML
- Knowledge of data privacy, ethical AI, and prompt alignment techniques
- Master’s or Ph.D. in Computer Science, AI, or related field preferred