Side-by-side comparison of AI visibility scores, market position, and capabilities
Document AI API platform for invoice, receipt, and ID data extraction; developer-friendly OCR with pre-built and custom models competing with AWS Textract and Google Document AI.
Mindee is a document AI and OCR technology company providing developer APIs for automated data extraction from structured and semi-structured documents — invoices, receipts, identity documents, passports, bank statements, W-9 forms, and custom document types — using computer vision and machine learning models trained on millions of real-world documents. Founded in 2017 in San Francisco, Mindee is a Y Combinator W21 graduate that raised $23.75 million total including a Series A-II in March 2023, serving developers building document automation workflows.\n\nMindee's API platform provides both pre-built extraction models for common document types (invoice parsing returns structured JSON with vendor name, line items, totals, tax) and custom model training capabilities where developers can train extraction models on their own proprietary document formats. The DocTI product (launched 2024) extends document intelligence to more complex multi-page documents with classification and routing capabilities. The API-first approach enables developers to add document processing to their applications without building OCR infrastructure themselves.\n\nIn 2025, Mindee competes in the document AI market with AWS Textract, Google Document AI, Azure Form Recognizer, Rossum, and Hyperscience for document data extraction automation. The document AI market has grown substantially as enterprises pursue AP automation, digital onboarding, and compliance document processing at scale. Mindee's developer-focused positioning (clean APIs, well-documented SDKs, generous free tier) differentiates it from enterprise-focused platforms that require professional services implementation. The 2025 strategy focuses on expanding the pre-built model library to cover more document types globally, improving custom model training workflows, and growing adoption in the fintech, healthcare, and logistics verticals where document processing automation delivers high ROI.
Open-source vector database with embedded deployment for RAG and semantic search; Lance columnar format with multimodal support for text, image, and video embeddings.
LanceDB is an open-source vector database purpose-built for AI applications, offering serverless vector storage with embedded deployment, multimodal data support (text, images, video, audio), and native integration with popular AI development frameworks. Founded in 2022 and headquartered in San Francisco, LanceDB raised $10 million in seed funding and has gained significant traction among AI developers building retrieval-augmented generation (RAG) systems, semantic search applications, and multimodal AI pipelines.
Monitor how your brand performs across ChatGPT, Gemini, Perplexity, Claude, and Grok daily.