Building Next Generation AI Infrastructure
Machine Learning Engineer – Post Training
Location
United States
Posted
9 days ago
Salary
$150K - $190K / year
Seniority
Mid Level
Job Description
Machine Learning Engineer – Post Training
Mindbeam AI
• Develop pipelines for post-training tasks such as fine-tuning, evaluation, and model compression. • Implement scalable systems for model deployment, monitoring, and optimization. • Collaborate with researchers to validate experimental results in production contexts. • Build tools to automate benchmarking and regression testing. • Identify opportunities to improve efficiency in resource utilization and inference speed.
Job Requirements
- Bachelor’s, Master’s, or PhD in Computer Science, ML/AI, or related field—or equivalent practical experience.
- 2+ years of experience in model training, evaluation, or deployment.
- Strong skills in Python, ML frameworks (PyTorch/TensorFlow), and data pipeline tools.
- Familiarity with optimization techniques (quantization, pruning, distillation).
- Hands-on experience deploying models on cloud and/or GPU infrastructure.
- Knowledge of monitoring and observability tools.
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