AI Data Analyst Agent for Large Datasets
It is an efficient and easy-to-use text annotation tool for Natural Language Processing (NLP) applications. With this, you can train an NLP model in few hours by collaborating with team members and using the machine learning auto-annotation feature. | High performance NLP models based on spaCy and HuggingFace transformers, for NER, sentiment-analysis, classification, summarization, question answering, and POS tagging. All models are production-ready and served through a REST API. You can also deploy your own spaCy models. No DevOps required. |
Multi-format document upload: TXT, CSV , JSON , PDF, DOC, HTML;
Multilingual: English, French, German, Arabic, Spanish, etc…;
Dictionary/Regex auto-annotation: input a list of words or regex patterns along with their associated entities. The tool will automatically scan the documents and auto-annotate;
ML auto-annotation: Train an NER model to auto-annotate your documents;
Bias detection: visualize entity and word distribution across your documents to detect skewed annotation toward specific entities.
Collaboration: Share annotation tasks among team members and monitor progress;
Annotation format export: JSON, IOB, Amazon Comprehend, Stanford CoreNLP | Sentiment analysis; Classification; Summarization; Question answering; POS tagging; API; Machine learning; AI; Data science |
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