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text

RAG-optimized Cohere model.

Developer
Cohere
Release date
Mar 11, 2024
Parameters
Undisclosed
Corpus size
Undisclosed
License
Proprietary
Context window
128K tokens
Modalities
text

Learn this model

Tutorial tailored to Command R—cost, capabilities, API setup, and production patterns based on this model's specs (not generic copy for every LLM).

Cost & access

Command R is proprietary via Cohere. Typical billing: input + output tokens; ChatGPT-style subscriptions are separate from API access. With a 128K tokens context window, long PDFs or chat histories increase input tokens quickly—trim history or summarize older turns in production.

Functional understanding

  • RAG-optimized Cohere model.
  • Modalities: text · License: Proprietary · Released 2024-03-11.
  • Best-fit workflows for this model:
  • • Drafting, summarization, and structured extraction from long documents.

Technical foundation

  • Cohere reports Undisclosed parameters; training data: Undisclosed.
  • Context: 128K tokens. Open weights: no.
  • Command R is positioned as a general-purpose model in the Cohere lineup.

First API call

Install cohere and call Command R via chat or embed endpoints per Cohere docs.

import cohere

co = cohere.ClientV2("YOUR_API_KEY")
resp = co.chat(
    model="command-r",
    messages=[{"role": "user", "content": "Hello from Command R"}],
)
print(resp.message.content[0].text)

Important technical topics

  • Prompting Command R: be explicit about output format. Weak: "Analyze this." Better: "Return JSON with fields id, total, date for Cohere billing data."
  • Temperature: use 0–0.3 for extraction and compliance on Command R; 0.7–1.0 for brainstorming.
  • Tokens: Command R bills by tokens (~¾ word each). Undisclosed parameters affect capability; your bill is driven by context length and call volume.
  • Context window (128K tokens): everything in one request—system prompt, tools, RAG chunks, and history—must fit. Truncate or summarize when approaching the limit for Command R.

Real enterprise patterns

  • RAG with Command R: retrieve from your vector DB, cite sources in the prompt.
  • Tool calling: define JSON schemas; let Command R request functions, not free-form SQL.
  • Eval suite: regression prompts before each model or prompt change.
  • Cost routing: default to Command R for hard tasks; smaller sibling model for triage.

Production & security

  • Secrets: never commit keys for Command R; use vault + per-environment rotation.
  • PII: mask before inference; log redacted prompts only.
  • Observability: trace id per request; log model=command-r, tokens in/out, latency.
  • Rate limits: handle Cohere 429/5xx with exponential backoff and circuit breakers.
  • Guardrails: schema-validate JSON; block disallowed topics; cross-check numbers against source docs.

Mini projects with this model

  • Support copilot: Command R drafts replies from KB snippets.
  • Contract clause extractor with human approval.
  • Weekly metrics narrative from SQL + CSV exports.
  • Agent that files expenses from receipt photos (if multimodal).

Suggested stack

  • Language: Python 3.11+
  • LLM: Command R (Cohere official SDK)
  • UI: Streamlit or Next.js for internal tools
  • APIs: FastAPI
  • Vector DB (RAG): Pinecone / Chroma / pgvector

Learning path

  • Python basics
  • HTTP/REST and environment variables
  • Cohere authentication and Command R model id (command-r)
  • First successful call to Command R
  • Prompt design and JSON / structured outputs
  • RAG
  • Tool use / function calling
  • Evals and regression sets
  • Production deploy + monitoring