Purpose-Built for Scalable Extraction
Ship faster results without complex infrastructure. Sutro's Python SDK is purpose-built to scale up any LLM workflow for entity extraction.
import sutro as so
from pydantic import BaseModel
class ReviewClassifier(BaseModel):
sentiment: str
user_reviews = '.
User_reviews.csv
User_reviews-1.csv
User_reviews-2.csv
User_reviews-3.csv
system_prompt = 'Classify the review as positive, neutral, or negative.'
results = so.infer(user_reviews, system_prompt, output_schema=ReviewClassifier)
Progress: 1% | 1/514,879 | Input tokens processed: 0.41m, Tokens generated: 591k
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Prototype
Start small and iterate fast on your LLM batch workflows. Accelerate experiments by testing your extraction schema on Sutro before committing to large jobs.
Scale
Scale your LLM workflows so your team can do more in less time. Process billions of tokens in hours, not days, with no infrastructure headaches or exploding costs.
Integrate
Seamlessly connect Sutro to your existing LLM workflows. Sutro's Python SDK is compatible with popular data orchestration tools, like Airflow and Dagster.

Scale Effortlessly
Confidently handle millions of requests and billions of tokens at a time. Extract data from entire web crawls or document archives without the pain of managing infrastructure.
Get results faster and reduce costs by parallelizing your LLM calls through Sutro. Process massive extraction jobs in hours, not days.

From Idea to Insights, Simplified
Shorten development cycles by getting feedback from large batch jobs in as little as minutes before scaling up to process your full dataset.