AI Developer
Job Description
About Salvo Software
\nSalvo Software is a global firm that provides cost-effective software solutions to guide enterprises and startups through digital transformation. With distributed teams across the US, LATAM, and India, we partner with clients to build high-performance, scalable systems that solve complex technical challenges. Our culture values innovation, ownership, and engineering excellence.
\nRole Overview
\nWe are seeking a highly skilled AI Developer with a strong backend and machine learning engineering background to design, train, optimize, and deploy LLM models in on-prem and offline environments. This role is deeply technical and hands-on, requiring expertise across Python ML stacks, model optimization, local inference frameworks, RAG (Retrieval-Augmented Generation) architectures, MCP (Model Context Protocol) integrations, and DevOps workflows tailored for offline systems.
\nYou will work closely with our engineering and product teams to build end-to-end LLM pipelines — including data preprocessing, supervised fine-tuning, model quantization, evaluation, RAG pipeline design, and deployment using local or air-gapped infrastructure. If you enjoy working with cutting-edge open-source LLMs, building context-aware AI systems, and designing reliable backend pipelines, this role is for you.
\nKey Responsibilities
\nCore LLM Development
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- Train and fine-tune LLMs using supervised fine-tuning (SFT). \n
- Work with open-source models such as LLaMA, Mistral, Qwen, and similar architectures. \n
- Build LoRA / Q-LoRA pipelines for efficient fine-tuning. \n
- Implement and optimize data preprocessing workflows, including tokenization and long-context handling. \n
- Use and extend Hugging Face Transformers & Datasets for training and inference. \n
- Parse and process structured and semi-structured data, including XML/XSD files. \n
- Implement document parsing solutions for Office formats (python-docx, OpenXML). \n
RAG & Context-Aware Systems
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- Design and implement end-to-end Retrieval-Augmented Generation (RAG) pipelines for document-grounded question answering and knowledge retrieval. \n
- Build and maintain vector stores and embedding pipelines using tools such as FAISS, Chroma, Weaviate, or pgvector. \n
- Optimize retrieval strategies including hybrid search, re-ranking, and chunking approaches tailored for domain-specific corpora. \n
- Develop and maintain MCP (Model Context Protocol) server integrations to enable LLMs to interact dynamically with tools, APIs, and external data sources. \n
- Design agentic workflows that leverage MCP to give models structured access to internal systems and context in a controlled, auditable manner. \n
Offline / On-Prem Model Expertise
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- Deploy, run, and maintain models fully offline and in air-gapped environments. \n
- Perform model optimization and quantization (GGUF, GPTQ, AWQ, bitsandbytes). \n
- Build and maintain inference systems using frameworks like vLLM, TGI, and Ollama. \n
- Optimize GPU usage (CUDA, cuDNN, VRAM-aware batching). \n
- Maintain local CI/CD pipelines for ML models without cloud dependencies. \n
- Manage local model registries, versioning, and artifacts. \n
- Ensure RAG and MCP components are fully operational in offline and restricted network environments. \n
Backend & DevOps
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- Build backend services in Python for ML training and inference workflows. \n
- Work with relational databases (Postgres/MySQL) and vector databases for RAG storage layers. \n
- Use Docker and Git for reliable development and deployment pipelines. \n
- Use Azure DevOps for CI/CD, including local runners when applicable. \n
Requirements
\nTechnical Skills
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- Strong experience in Python for backend and ML development. \n
- Expertise with ML frameworks such as PyTorch or TensorFlow, scikit-learn, and pandas. \n
- Solid knowledge of Postgres or MySQL for data storage. \n
- Experience with Docker, Git, and DevOps best practices. \n
- Hands-on expertise with LLM training, fine-tuning, and optimization. \n
- Experience with Hugging Face Transformers & Datasets. \n
- Familiarity with XML/XSD and Office document parsing tools. \n
- Experience deploying models with vLLM, TGI, or Ollama. \n
- Understanding of quantization techniques (GGUF/GPTQ/AWQ). \n
- Experience working with GPU optimization and the CUDA stack. \n
- Ability to build solutions for offline, on-prem, and air-gapped environments. \n
- Hands-on experience designing and implementing RAG pipelines, including embedding models, vector stores (FAISS, Chroma, Weaviate, or pgvector), and retrieval optimization strategies. \n
- Experience building or integrating MCP (Model Context Protocol) servers to connect LLMs with external tools, APIs, and structured data sources. \n
Nice to Have
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- Experience building agentic systems using MCP in production or near-production environments. \n
- Familiarity with advanced RAG techniques such as HyDE, re-ranking, or multi-hop retrieval. \n
- Experience managing ML model registries in offline environments. \n
- Familiarity with AWS for hybrid deployments. \n
- Experience with secure environments, restricted networks, or enterprise compliance requirements. \n
Soft Skills
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- Strong ownership mindset and problem-solving ability. \n
- Ability to work effectively in distributed teams across time zones. \n
- Clear communication when discussing complex technical topics with both technical and non-technical stakeholders. \n