Distributed Training & Inference Optimization Engineer (Indore)
Distributed Training & Inference Optimization Engineer (Indore)
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Indore, India
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Posted: a week ago
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Description
Overview Join a highly advanced AI infrastructure team focused on building and optimizing large-scale machine learning systems. This environment leverages cutting-edge technologies to enable high-performance experimentation, scalable model deployment, and efficient processing of large datasets. The team operates globally, bringing together engineers and researchers to push the boundaries of deep learning, distributed systems, and next-generation compute platforms. About the Role This position is centered on maximizing the efficiency and scalability of GPU-based machine learning workloads, particularly for large language models (LLMs) and generative AI systems. You will work on improving both training performance and inference efficiency, ensuring optimal utilization of hardware resources, reduced latency, and faster model iteration cycles. The role requires hands-on expertise in deep learning frameworks, distributed systems, and performance optimization. Key Responsibilities
- Enhance performance of distributed training frameworks such as PyTorch, DeepSpeed, or similar systems
- Identify and resolve bottlenecks in large-scale training pipelines (e.g., memory usage, communication overhead, GPU utilization)
- Optimize inference systems using techniques like quantization, caching, and batching to achieve low latency and high throughput
- Collaborate with infrastructure and platform teams to improve resource orchestration, scheduling, and system reliability
- Design benchmarking tools and metrics to measure training efficiency, system throughput, and latency performance
- Apply advanced optimization techniques (e.g., mixture-of-experts, speculative decoding, model parallelism) to improve large model performance
- Continuously evaluate new approaches to hardware acceleration and model execution efficiency Required Qualifications
- 3+ years of hands-on experience optimizing GPU-based machine learning workloads
- Strong expertise in deep learning frameworks such as PyTorch, DeepSpeed, or equivalent
- Experience with distributed training techniques for large-scale models
- Solid understanding of inference optimization strategies (e.g., quantization, pruning, caching, batching)
- Degree in Computer Science, Engineering, or a related technical field Preferred Qualifications
- Experience with CUDA programming and GPU performance profiling tools
- Familiarity with distributed systems communication libraries and optimization techniques
- Knowledge of model optimization methods such as FlashAttention, LoRA, or similar techniques
- Experience working with containerized or orchestrated environments for ML workloads
- Contributions to open-source machine learning or infrastructure projects
- Hands-on experience with up-to-date inference serving frameworks Apply on Kit Job: kitjob.in/job/4ll44v
- Enhance performance of distributed training frameworks such as PyTorch, DeepSpeed, or similar systems
- Identify and resolve bottlenecks in large-scale training pipelines (e.g., memory usage, communication overhead, GPU utilization)
- Optimize inference systems using techniques like quantization, caching, and batching to achieve low latency and high throughput
- Collaborate with infrastructure and platform teams to improve resource orchestration, scheduling, and system reliability
- Design benchmarking tools and metrics to measure training efficiency, system throughput, and latency performance
- Apply advanced optimization techniques (e.g., mixture-of-experts, speculative decoding, model parallelism) to improve large model performance
- Continuously evaluate new approaches to hardware acceleration and model execution efficiency Required Qualifications
- 3+ years of hands-on experience optimizing GPU-based machine learning workloads
- Strong expertise in deep learning frameworks such as PyTorch, DeepSpeed, or equivalent
- Experience with distributed training techniques for large-scale models
- Solid understanding of inference optimization strategies (e.g., quantization, pruning, caching, batching)
- Degree in Computer Science, Engineering, or a related technical field Preferred Qualifications
- Experience with CUDA programming and GPU performance profiling tools
- Familiarity with distributed systems communication libraries and optimization techniques
- Knowledge of model optimization methods such as FlashAttention, LoRA, or similar techniques
- Experience working with containerized or orchestrated environments for ML workloads
- Contributions to open-source machine learning or infrastructure projects
- Hands-on experience with up-to-date inference serving frameworks Apply on Kit Job: kitjob.in/job/4ll44v
Highlights
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Company nameGoogle
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Job positionDistributed Training & Inference Optimization Engineer (Indore)
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