Senior Technical Program Manager (engineering) - AI Tooling & Systems

Deepgram Deepgram · AI Frontier · United States · Remote · Engineering

Drives execution of large-scale ML infrastructure and AI tooling initiatives, owning end-to-end delivery of programs spanning model serving infrastructure, ML pipelines, internal AI tooling, and real-time inference systems. Partners with ML engineers, research teams, and product to align on technical strategy and execution, focusing on creating clarity around complex ML system tradeoffs and building tools to accelerate model development and deployment.

What you'd actually do

  1. Own end-to-end delivery of AI infrastructure programs—from model training pipelines and experiment tracking to inference serving and production monitoring
  2. Define technical architecture, integration patterns, and rollout strategies for new ML systems and tooling (e.g., vector databases, model servers, evaluation frameworks, prompt engineering platforms)
  3. Serve as connective tissue between ML research, ML engineering, product, and data teams to align on ML system requirements, capability roadmaps, and deployment timelines
  4. Drive cost and latency optimization for real-time inference workloads at scale
  5. Build lightweight internal tools and processes to accelerate ML iteration cycles (experiment tracking, model versioning, A/B testing infrastructure)

Skills

Required

  • program management
  • technical leadership
  • ML infrastructure
  • ML platforms
  • AI tooling
  • ML systems
  • ML engineer
  • systems engineer
  • ML infrastructure engineer
  • cross-functional ML programs
  • model training
  • evaluation
  • serving
  • monitoring
  • ML/research requirements
  • scalable infrastructure
  • ambiguity
  • technical tradeoffs
  • communication
  • high-growth or startup environments

Nice to have

  • model serving frameworks (vLLM, TensorRT, TorchServe, or similar)
  • optimizing LLM or speech/audio model inference (quantization, distillation, KV-cache optimization, batching strategies)
  • ML experiment tracking and versioning tools (MLflow, Weights & Biases, DVC, or similar)
  • feature stores
  • vector databases
  • real-time ML systems
  • cost optimization for GPU/ML workloads
  • multi-region model serving
  • edge deployment
  • PyTorch
  • CUDA
  • Hugging Face
  • AWS SageMaker
  • GCP Vertex AI
  • Azure ML

What the JD emphasized

  • 5+ years of program management or technical leadership in ML infrastructure, ML platforms, or AI tooling (or equivalent)
  • Strong technical acumen in ML systems—ideally hands-on experience as an ML engineer, systems engineer, or ML infrastructure engineer
  • Experience coordinating cross-functional ML programs (e.g., model training → evaluation → serving → monitoring)
  • Proven ability to translate ML/research requirements into robust, scalable infrastructure
  • Comfortable working in ambiguity and helping teams navigate complex technical tradeoffs (e.g., accuracy vs. latency vs. cost)

Other signals

  • ML infrastructure
  • AI tooling
  • model serving
  • ML pipelines
  • inference systems