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Intelinair Welcomes Victor Hall as Senior ML Engineer

Intelinair is pleased to announce that Victor Hall has joined the company as a Senior Machine Learning Engineer, based in the Indianapolis office. Victor brings extensive experience in large-scale machine learning, distributed training, cloud-native development, and MLOps—expertise that will significantly enhance Intelinair’s technical capabilities as the company continues to advance the AGMRI platform.

Victor has spent more than two decades working across machine learning engineering, enterprise software development, and cloud infrastructure. Most recently, he worked as an ML Engineering and MLOps consultant, leading end-to-end model design and training for open-source large-language models, multimodal vision-language architectures, and text-to-image systems. His work includes developing advanced training pipelines using PyTorch, HuggingFace Accelerate, SLURM, Docker, and GPU-based cloud platforms such as AWS, Vast.ai, and CoreWeave.

His background includes senior engineering roles at organizations such as Sallie Mae, Zotec Partners, Infosys, KAR Auction Services, Salesforce, and Eli Lilly, where he delivered projects involving microservice design, cloud migrations, IoT data ingestion, and scalable data integration systems.

“Victor’s deep experience in distributed machine learning, cloud technologies, and production-scale training frameworks makes him an exceptional addition to Intelinair,” said Mingwei Yuan, Analytics Leader for Intelinair. “His engineering leadership and expertise will help accelerate the development of our advanced machine learning models and analytics capabilities.”

“I’m excited to join Intelinair and contribute to the company’s mission of advancing actionable crop intelligence,” said Victor Hall. “The opportunity to apply large-scale ML engineering to meaningful, real-world challenges in agriculture is incredibly motivating, and I’m looking forward to collaborating with the team to drive innovation forward.”

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