Posted Jul 11, 2026

Customer Development Interview. AI Cloud Compute Users

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Customer Development Interview with AI cloud compute users We are looking to speak with experienced AI practitioners who have hands-on experience using GPU cloud infrastructure for model training or inference. This is a short research conversation about what has worked well and what has been painful in your past experience. The goal is to learn from practitioners and use those insights to shape a product in the future. It is not an evaluation of you, and is purely a learning conversation. Who is a good fit? You are: - An AI Engineer, ML Engineer, Applied AI Researcher, or Technical Founder - Currently working at: - An AI startup (Seed to Series B preferred), OR - An AI-heavy product company (gaming, video, agents, multimodal, LLM apps) - Directly involved in infrastructure decisions for: - Model training (fine-tuning, SFT, LoRA, QLoRA, etc.) - Inference workloads (batch or real-time) - Long-running AI agents or multimodal pipelines Infrastructure Experience Required You have used at least one of the following beyond AWS/GCP/Azure: - RunPod - CoreWeave - Lambda Labs - Paperspace - Vast.ai - Modal - Together.ai - Any other GPU cloud provider Bonus if youve: - Switched providers due to pricing or reliability - Experienced scaling issues across multiple GPUs - Compared bare metal vs managed GPU solutions - Faced GPU availability shortages We are especially interested if: - You manage AI compute budgets - You care about price/performance optimization - Youve struggled with unpredictable costs - Youve deployed production inference workloads - Youve optimized GPU utilization Not a Fit If: - You only used AWS Sagemaker once for a tutorial - You have no direct infrastructure decision-making involvement - You are not hands-on with model deployment Research interview Details - 30 minute structured interview - Remote (Google Meet) - Discussion topics: - GPU provider selection criteria - Pricing models and cost predictability - Performance bottlenecks - Workload types (training vs inference vs agents) - Switching costs and lock-in To Apply Please include: - What AI infrastructure providers have you personally used? - What type of workloads did you run? - Approximate monthly compute spend? - Your role in infrastructure decision-making?