🏢 Offshore Consulting Shops

Integrant is a custom software development and staff augmentation firm hiring for client-facing technical roles.

This company was flagged and excluded from default search results. Proceed with caution.

Save Job
Posted 3mo ago

Lead AI Platform

@ Integrant
Cairo, Cairo, Egypt
HybridFull Time
Responsibilities:Translate workloads, Optimize performance, Design pipelines
Requirements Summary:8+ years in AI/ML systems, strong Python, GPU workloads, model optimization; hands-on with PyTorch, ONNX, TensorRT, Triton; distributed systems; production AI deployments.
Technical Tools Mentioned:PyTorch, ONNX, TensorRT, Triton Inference Server, CUDA, cuDNN, NCCL, Kubernetes, Slurm, MLflow, Weights & Biases (W&B), Neptune, Nsight
Save
Mark Applied
Hide Job
Report & Hide
Job Description

Integrant is looking for game changers to join our team as " Lead AI Platform".

The Lead AI Platform Engineer is responsible for bridging AI workloads with production-grade infrastructure, with a strong focus on NVIDIA AI stack, enabling high-performance, scalable, and optimized AI systems.

This role focuses on model optimization, runtime efficiency, and GPU utilization, ensuring that AI workloads are production-ready, cost-efficient, and performant across enterprise environments.

Roles and Responsibilities:

  • Translate AI/ML workloads into optimized infrastructure and deployment strategies
  • Optimize model performance across GPU environments (latency, throughput, memory utilization)
  • Design and implement inference and training pipelines using NVIDIA stack tools (TensorRT, Triton, NIM)
  • Convert and optimize models across frameworks (PyTorch → ONNX → TensorRT)
  • Analyze and resolve performance bottlenecks using profiling tools (GPU, memory, network)
  • Improve GPU utilization and scheduling efficiency across clusters
  • Design scalable distributed training and inference architectures
  • Work closely with customers to define AI infrastructure strategies and deployment models
  • Support production deployments including monitoring, rollback, and performance validation
  • Conduct applied research to improve model efficiency and infrastructure utilization
  • Mentor team members on AI infrastructure, optimization, and GPU systems
  • Experiment tracking tools (MLflow, W&B, Neptune) log parameters, metrics, and artifacts for comparison
  • Find the Model degradation happens post-deployment: concept drift, data pipeline changes, traffic pattern shifts
  • Root cause analysis (RCA) applies to ML systems: isolating variables, reproducing issues