GroqvsLlamaIndex

Full side-by-side comparison — features, pricing, platforms, and which one wins in 2026.

Groq

LLM APIs & Inference

The fastest AI inference platform — LPU-powered, 1000+ tokens/sec

LlamaIndex

Data & ETL

Featured

Data framework for connecting LLMs to external data

FeatureGroqLlamaIndex
CategoryLLM APIs & InferenceData & ETL
PricingFree tier available, pay-per-token for productionFree (open-source) + Cloud
GitHub Stars
More stars
38k
PlatformsWebLinux, macOS, Windows
Key Features
  • LPU hardware — custom chips for inference, not repurposed GPUs
  • GPT OSS 120B at 500 tok/s ($0.15/M input)
  • GPT OSS 20B at 1000 tok/s ($0.075/M input)
  • Llama 4 Scout 17B at 750 tok/s with 131K context + vision
  • Qwen3-32B at 400 tok/s with 131K context
  • Compound AI systems with web search + code execution
  • Whisper transcription ($0.04-0.11/hour)
  • OpenAI-compatible API — drop-in replacement
  • Free developer tier: 250-300K TPM, 1K RPM
  • RAG pipelines
  • Data connectors
  • Indexing
  • Query engine
  • Agent tools
Pros
  • + Fastest inference available (500-1000 tok/s)
  • + Free tier with generous limits (250K+ tokens/min)
  • + OpenAI-compatible API — swap one line of code
  • + Latest open-source models (GPT OSS, Llama 4, Qwen3)
  • + Compound AI for agentic workflows (search + code exec)
  • + Best-in-class RAG framework
  • + 100+ data connectors
  • + Multiple index types
  • + Great documentation
  • + Active community
Cons
  • Cloud-only — cannot self-host LPU hardware
  • Rate limits on free tier (1K RPM)
  • Smaller model catalog than running locally via Ollama
  • Can be complex for simple use cases
  • Abstractions hide complexity
  • Learning curve for advanced features
  • Some features require LlamaCloud
Tags
inferencefastfreehardware
ragdataindexingopen-source

Want to compare different tools?

← Back to compare picker

Related Comparisons