How to Run LLMs on AWS EC2: Instance Types, Setup, and Cost Guide

AWS EC2 GPU Instance Families for LLMs AWS offers several GPU instance families suited to LLM workloads, each targeting a different use case and budget point. Understanding the differences prevents paying for capabilities you do not need or under-provisioning for your actual workload. p3 instances use NVIDIA V100 GPUs (16 GB VRAM each). The p3.2xlarge … Read more

Cheap GPU Cloud Providers for LLM Inference and Training: Lambda, Vast.ai, RunPod, and More

Why GPU Cloud Costs Vary So Much GPU cloud infrastructure is sold through dramatically different business models, and understanding them is key to finding the right cost-performance fit. The major hyperscalers (AWS, GCP, Azure) charge premium prices for the ecosystem value they provide — managed services, compliance certifications, SLAs, and deep integration with the rest … Read more

How to Reduce LLM Inference Latency: Flash Attention, Speculative Decoding, and KV Cache Optimisation

The Three Components of LLM Latency LLM inference latency has three distinct components that require different optimisation strategies. Time to first token (TTFT) is the delay between sending a request and receiving the first token of the response — dominated by prefill time, the cost of processing all input tokens. Time per output token (TPOT) … Read more

NVIDIA H100 vs A100 for LLM Inference and Training: Which Should You Choose?

Why the H100 vs A100 Decision Matters The NVIDIA A100 has been the workhorse GPU for LLM training and inference since 2020. The H100, released in 2022 and widely available by 2023, represents the next generation — faster, more memory-efficient, and with new hardware features specifically designed for transformer workloads. For teams provisioning GPU infrastructure … Read more

Apple Silicon for LLMs: M3 vs M4 Max vs M4 Ultra Benchmarks and Real-World Performance

Why Apple Silicon Changed Local LLM Inference Before Apple Silicon, running large language models locally meant either accepting painfully slow CPU inference or buying expensive NVIDIA GPU hardware. Apple’s M-series chips changed this with unified memory architecture — CPU, GPU, and Neural Engine share a single high-bandwidth memory pool. A Mac Studio with 128 GB … Read more