<?xml version="1.0" encoding="UTF-8"?>
<urlset xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance" xsi:schemaLocation="http://www.sitemaps.org/schemas/sitemap/0.9 http://www.sitemaps.org/schemas/sitemap/0.9/sitemap.xsd" xmlns="http://www.sitemaps.org/schemas/sitemap/0.9">
<url>
<loc>https://sriharsha-paladugula.github.io/posts/model-efficiency/</loc>
<lastmod>2025-11-27T14:39:08+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/Efficiency-Metrics-Part1-Performance-Metrics/</loc>
<lastmod>2024-11-13T05:00:00+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/Efficiency-Metrics-Part2-Memory-Metrics/</loc>
<lastmod>2024-11-16T05:00:00+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/Efficiency-Metrics-Part3-Computation-Metrics/</loc>
<lastmod>2025-11-27T14:39:08+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/CPU-Memory-Architecture-and-GPU-Differences/</loc>
<lastmod>2024-12-10T06:00:00+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/GPU-Memory-Part1-Understanding-the-Hierarchy/</loc>
<lastmod>2024-12-15T06:00:00+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/GPU-Memory-Part2-Global-and-Specialized-Memory/</loc>
<lastmod>2024-12-18T06:00:00+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/GPU-Memory-Part3-Optimization-Practices/</loc>
<lastmod>2024-12-21T06:00:00+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/Principal-Component_Analysis-(PCA)/</loc>
<lastmod>2025-03-25T06:00:00+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/Transformers-Part1-RNN-and-Attention/</loc>
<lastmod>2025-12-01T06:07:46+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/Transformers-Part2-Architecture-Embeddings/</loc>
<lastmod>2025-12-01T06:07:46+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/Transformers-Part3-Multi-Head-Attention/</loc>
<lastmod>2025-12-01T06:07:46+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/Transformers-Part4-Layer-Norm-FFN/</loc>
<lastmod>2025-12-01T06:07:46+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/Transformers-Part5-Decoder-Output/</loc>
<lastmod>2025-12-01T06:07:46+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/Transformers-Part6-Training-Applications/</loc>
<lastmod>2025-12-01T06:07:46+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/LLM-Inference-Parameters-Part1-Temperature/</loc>
<lastmod>2025-05-10T10:00:00+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/Neural-Network-Pruning-Part1-Why-Pruning-Matters/</loc>
<lastmod>2025-11-27T10:46:06+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/Neural-Network-Pruning-Part2-Pruning-Granularities/</loc>
<lastmod>2025-11-27T10:46:06+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/LLM-Inference-Parameters-Part2A-Basic-Strategies/</loc>
<lastmod>2025-05-15T10:00:00+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/Neural-Network-Pruning-Part3-Pruning-Criteria/</loc>
<lastmod>2025-11-27T10:46:06+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/LLM-Inference-Parameters-Part2B-Advanced-Sampling/</loc>
<lastmod>2025-05-20T10:00:00+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/Neural-Network-Pruning-Part4-Advanced-Techniques/</loc>
<lastmod>2025-11-27T10:46:06+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/LLM-Inference-Parameters-Part3-Advanced-Parameters/</loc>
<lastmod>2025-05-25T10:00:00+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/Neural-Network-Pruning-Part5-Lottery-Tickets-and-Beyond/</loc>
<lastmod>2025-11-27T10:46:06+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/Quantization-Part1-Numeric-Data-Types/</loc>
<lastmod>2025-06-05T04:30:00+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/Quantization-Part2-K-Means-Quantization/</loc>
<lastmod>2025-06-10T04:30:00+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/Quantization-Part3-Linear-Quantization/</loc>
<lastmod>2025-06-15T04:30:00+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/Quantization-Part4-Quantized-Operations/</loc>
<lastmod>2025-06-20T04:30:00+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/Quantization-Part5-Post-Training-Quantization/</loc>
<lastmod>2025-06-25T04:30:00+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/Quantization-Part6-Quantization-Aware-Training/</loc>
<lastmod>2025-06-30T04:30:00+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/Quantization-Part7-Binary-Ternary-Quantization/</loc>
<lastmod>2025-07-05T04:30:00+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/Quantization-Part8-Mixed-Precision-Quantization/</loc>
<lastmod>2025-07-10T04:30:00+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/Neural-Architecture-Search-Part1-Foundations/</loc>
<lastmod>2025-12-11T15:02:18+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/Neural-Architecture-Search-Part2-Search-Strategies/</loc>
<lastmod>2025-12-11T15:02:18+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/Neural-Architecture-Search-Part3-Applications/</loc>
<lastmod>2025-12-11T15:02:18+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/Neural-Architecture-Search-Part4-Efficient-Estimation/</loc>
<lastmod>2025-12-11T15:02:18+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/posts/Neural-Architecture-Search-Part5-Hardware-Codesign/</loc>
<lastmod>2025-12-11T15:02:18+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/categories/</loc>
<lastmod>2025-12-12T05:54:50+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/</loc>
<lastmod>2025-12-12T05:54:50+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/archives/</loc>
<lastmod>2025-12-12T05:54:50+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/about/</loc>
<lastmod>2025-12-12T05:54:50+00:00</lastmod>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/notebooks/Efficient_Deep_Learning/Cuda_Programming/2025-01-29-100_days_challenge.html</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/model-efficiency/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/deep-learning/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/efficiency-metrics/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/model-optimization/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/performance/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/latency/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/throughput/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/memory/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/parameters/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/model-size/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/macs/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/flops/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/optimization/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/neural-networks/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/cpu-architecture/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/memory-hierarchy/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/performance-optimization/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/hardware/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/gpu-architecture/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/nvidia-a100/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/hbm/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/profiling/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/machine-learning/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/dimensionality-reduction/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/nlp/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/transformers/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/rnn/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/attention/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/embeddings/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/positional-encoding/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/multi-head-attention/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/layer-normalization/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/feed-forward/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/decoder/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/cross-attention/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/training/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/applications/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/inference/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/temperature/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/sampling/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/llm-parameters/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/text-generation/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/model-compression/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/pruning/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/efficiency/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/structured-pruning/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/greedy-decoding/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/beam-search/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/top-k/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/pruning-criteria/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/top-p/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/nucleus-sampling/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/typical-sampling/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/contrastive-search/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/automl/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/production-ml/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/frequency-penalty/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/presence-penalty/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/best-practices/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/lottery-ticket/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/sparse-training/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/quantization/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/numeric-data-types/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/floating-point/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/integer/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/ieee-754/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/energy-efficiency/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/k-means/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/weight-clustering/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/deep-compression/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/model-compression/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/linear-quantization/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/integer-arithmetic/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/scale-factor/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/zero-point/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/symmetric-quantization/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/matrix-multiplication/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/convolution/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/fused-operations/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/inference-optimization/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/post-training-quantization/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/per-channel/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/group-quantization/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/calibration/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/range-clipping/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/quantization-aware-training/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/qat/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/straight-through-estimator/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/fake-quantization/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/model-training/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/binary-quantization/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/ternary-quantization/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/xnor-net/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/binaryconnect/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/extreme-quantization/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/mixed-precision/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/haq/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/reinforcement-learning/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/automl/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/hardware-aware/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/nas/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/neural-architecture-search/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/deep-learning/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/model-architecture/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/building-blocks/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/search-space/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/optimization/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/applications/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/efficientnet/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/mobilenet/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/real-world-deployment/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/practical-ai/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/efficiency-estimation/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/weight-sharing/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/hypernetworks/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/training-cost/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/co-design/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/specialization/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/tags/latency-aware/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/categories/efficient-deep-learning/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/categories/model-efficiency-basics/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/categories/machine-learning/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/categories/llm/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/categories/transformers/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/categories/inference/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/categories/pruning/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/categories/quantization/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/categories/architecture-design/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/page2/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/page3/</loc>
</url>
<url>
<loc>https://sriharsha-paladugula.github.io/page4/</loc>
</url>
</urlset>
