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MPT-30B
MosaicML
Open weightstext
Commercial-friendly open LLM.
- Developer
- MosaicML
- Release date
- Jun 22, 2023
- Parameters
- Undisclosed
- Corpus size
- Undisclosed
- License
- Proprietary
- Context window
- 128K tokens
- Modalities
- text
Links
Learn this model
Tutorial tailored to MPT-30B—cost, capabilities, API setup, and production patterns based on this model's specs (not generic copy for every LLM).
Cost & access
MPT-30B weights are available under Proprietary. Direct API cost may be $0 if you self-host; budget for GPUs, storage, and engineering instead. Hosted endpoints (Together, Fireworks, Groq, etc.) charge per token—shop providers for mpt-30b latency and region. 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
- Commercial-friendly open LLM.
- Modalities: text · License: Proprietary · Released 2023-06-22.
- Best-fit workflows for this model:
- • Drafting, summarization, and structured extraction from long documents.
- • On-prem or VPC deployment when data cannot leave your network.
Technical foundation
- MosaicML reports Undisclosed parameters; training data: Undisclosed.
- Context: 128K tokens. Open weights: yes.
- MPT-30B is positioned as a general-purpose model in the MosaicML lineup.
First API call
Run MPT-30B locally with Ollama or Hugging Face transformers (weights under Proprietary).
# Ollama (if model is published there)
# ollama run mpt-30b
# Or Hugging Face transformers:
from transformers import pipeline
pipe = pipeline("text-generation", model="mpt-30b", device_map="auto")
print(pipe("Hello from MPT-30B", max_new_tokens=80)[0]["generated_text"])Important technical topics
- Prompting MPT-30B: be explicit about output format. Weak: "Analyze this." Better: "Return JSON with fields id, total, date for MosaicML billing data."
- Temperature: use 0–0.3 for extraction and compliance on MPT-30B; 0.7–1.0 for brainstorming.
- Tokens: MPT-30B 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 MPT-30B.
Real enterprise patterns
- RAG with MPT-30B: retrieve from your vector DB, cite sources in the prompt.
- Tool calling: define JSON schemas; let MPT-30B request functions, not free-form SQL.
- Eval suite: regression prompts before each model or prompt change.
- Cost routing: default to MPT-30B for hard tasks; smaller sibling model for triage.
Production & security
- Secrets: never commit keys for MPT-30B; use vault + per-environment rotation.
- PII: mask before inference; log redacted prompts only.
- Observability: trace id per request; log model=mpt-30b, tokens in/out, latency.
- GPU monitoring: VRAM, batch queue depth, and model revision hash on each deploy.
- Guardrails: schema-validate JSON; block disallowed topics; cross-check numbers against source docs.
Mini projects with this model
- Support copilot: MPT-30B 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+
- Model: MPT-30B via Ollama, vLLM, or Hugging Face
- Hardware: NVIDIA GPU with enough VRAM for quantization level
- API wrapper: FastAPI or LiteLLM proxy
- 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
- MosaicML authentication and MPT-30B model id (mpt-30b)
- First successful call to MPT-30B
- Prompt design and JSON / structured outputs
- RAG
- Tool use / function calling
- Evals and regression sets
- Production deploy + monitoring