Nemotron 4 340B vs Cohere Embed v4

Compare Nemotron 4 340B and Cohere Embed v4: pricing, performance, context window, latency, and best use cases. Side-by-side comparison on XALEN.

Updated 2026-05-21 · By Abhishek Raj · Our methodology

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Feature Nemotron 4 340B Cohere Embed v4
CategoryOpen SourceEmbedding
Parameters340B~400M
Context Window128K128K
Input Price$0.07/1M tokens$0.001/1M tokens
Output Price$0.12/1M tokensN/A/1M tokens
Latency~500ms~15ms

Choose Nemotron 4 340B when:

  • ✓ Data generation
  • ✓ Training data
  • ✓ Research
Key Strengths:

Synthetic data generation, Large scale, Good quality

Choose Cohere Embed v4 when:

  • ✓ Long document RAG
  • ✓ Multimodal search
  • ✓ Large knowledge bases
Key Strengths:

128K context, Multimodal embedding, Matryoshka

Verdict: Nemotron 4 340B vs Cohere Embed v4

For cost efficiency, Cohere Embed v4 wins at $0.001/1M input tokens. For speed, Cohere Embed v4 is faster at ~15ms. Nemotron 4 340B excels at Data generation while Cohere Embed v4 is better for Long document RAG. Both are available on XALEN through a single API — try them in the Playground to see which fits your workload.

Detailed Analysis

Pricing Comparison

Nemotron 4 340B costs $0.07/1M input tokens and $0.12/1M output tokens. Cohere Embed v4 costs $0.001 input and N/A output. Cohere Embed v4 is 70.0x cheaper on input tokens. XALEN offers batch processing at 50% discount on both models.

Performance & Context

Nemotron 4 340B has a 128K context window with ~500ms latency. Cohere Embed v4 offers 128K context at ~15ms. Both have identical context windows.

Best For

Nemotron 4 340B (Open Source) is optimized for: Data generation, Training data, Research. Cohere Embed v4 (Embedding) works best for: Long document RAG, Multimodal search, Large knowledge bases.

Try Both on XALEN

Both models are available through XALEN's OpenAI-compatible API. Switch between them by changing the model parameter:

from xalen import XALEN

client = XALEN(api_key="xln_test_YOUR_KEY")

# Use Nemotron 4 340B
response_a = client.chat.completions.create(
    model="nemotron-4-340b",
    messages=[{"role": "user", "content": "Your question here"}]
)

# Use Cohere Embed v4
response_b = client.chat.completions.create(
    model="embed-v4",
    messages=[{"role": "user", "content": "Your question here"}]
)

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Get API Key Try in Playground

Frequently Asked Questions

Which is better, Nemotron 4 340B or Cohere Embed v4?

Nemotron 4 340B (Open Source, 340B) offers Synthetic data generation. Cohere Embed v4 (Embedding, ~400M) offers 128K context. Choose Nemotron 4 340B for Data generation or Cohere Embed v4 for Long document RAG.

How much does Nemotron 4 340B cost vs Cohere Embed v4?

Nemotron 4 340B: $0.07/1M input, $0.12/1M output. Cohere Embed v4: $0.001/1M input, N/A/1M output. Both available on XALEN with batch processing at 50% discount.

Can I use both models on XALEN?

Yes. XALEN provides 200+ models through a single OpenAI-compatible API. Switch between Nemotron 4 340B and Cohere Embed v4 by changing the model parameter. No code changes needed.

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Last updated: 2026-05-21. Pricing and specifications may change. Check pricing page for latest rates.