--- language: - en license: apache-2.0 task_categories: - text-classification task_ids: - sentiment-analysis tags: - mlops - devops - sentiment - domain-specific size_categories: - n<1K --- # MLOps & DevOps Sentiment Dataset ## Dataset description A domain-specific sentiment dataset containing real-world MLOps and DevOps scenarios labeled as POSITIVE or NEGATIVE. Built to fine-tune sentiment classifiers for technical operations contexts where general-purpose models (trained on movie reviews) underperform. ## Why this dataset exists General sentiment models misclassify technical sentences. For example: - "The pipeline failed silently" → general models often miss the negativity - "Terraform rollback was effortless" → domain context needed for high confidence ## Dataset structure | Split | Examples | |-------|----------| | Train | 24 | | Test | 6 | ### Fields - `text` — sentence describing an MLOps/DevOps scenario - `label` — 0 (NEGATIVE) or 1 (POSITIVE) - `domain` — `mlops` or `devops` - `text_length` — word count (added during preprocessing) ## Source Manually curated by [@atulkrs](https://huggingface.co/atulkrs) based on real-world MLOps and DevOps engineering experience. ## Usage \`\`\`python from datasets import load_dataset ds = load_dataset("atulkrs/mlops-devops-sentiment") print(ds["train"][0]) \`\`\` ## Intended use - Fine-tuning sentiment classifiers for MLOps/DevOps tooling feedback - Benchmarking domain adaptation of general NLP models - Curriculum data for MLOps-aware LLM fine-tuning