Weaviate vs Weights and Biases
Side-by-side comparison
Overall Winner: Weights and Biases (Score: 80)
W
Weaviate
🇳🇱 Bob van Luijt
72
W
Weights and Biases
🇺🇸 Lukas Biewald
80
| Metric | Weaviate | Weights and Biases |
|---|---|---|
| Valuation | $200M | $1.3BWinner |
| Total Funding | $67.5M | $250MWinner |
| Founded | 2019Winner | 2017 |
| Stage | Series B | Series C |
| Employees | 80 | 300 |
| Country | Netherlands | USA |
| Category | Data AI | Data AI |
| Awaira Score | 72 | 80Winner |
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Frequently Asked Questions
Is Weaviate bigger than Weights and Biases?▾
No, Weights and Biases has a higher valuation ($1.3B) compared to Weaviate ($200M).
Which company raised more funding — Weaviate or Weights and Biases?▾
Weaviate raised $67.5M while Weights and Biases raised $250M.
Which company has a higher Awaira Score?▾
Weights and Biases has the higher Awaira Score of 80.
What does Weaviate do vs Weights and Biases?▾
Weaviate: Weaviate is a Netherlands-based vector database company founded in 2019 that enables organizations to build AI applications using vector search and semantic search capabilities. The platform stores, indexes, and searches unstructured data—including text, images, and audio—by converting them into vector embeddings, making it suitable for large language model applications and retrieval-augmented generation (RAG) systems.
The core product is an open-source vector database with both community and enterprise versions. Weaviate allows developers to perform similarity searches and build knowledge graphs with semantic understanding. The platform integrates with machine learning frameworks and supports various embedding models, enabling organizations to power AI applications without extensive machine learning infrastructure expertise.
Founded during the emergence of modern AI applications, Weaviate operates in the expanding vector database category competing with Pinecone, Milvus, and Qdrant. The company has raised $68 million across funding rounds with a valuation of $200 million as of its Series B stage.
Weaviate serves use cases across e-commerce recommendation systems, content discovery, semantic search, and enterprise search applications. The company has gained adoption among developers and organizations building AI-powered products. Its open-source approach provides both community engagement and enterprise monetization pathways. The vector database market has experienced significant growth as organizations increasingly adopt large language models requiring efficient vector storage and retrieval infrastructure. Weaviate combines open-source accessibility with enterprise vector database capabilities positioned to capture growth in RAG and semantic search application development.. Weights and Biases: Weights and Biases is a machine learning platform founded in 2017 that provides infrastructure for experiment tracking, model management, and collaboration in AI development. The company's core product enables data scientists and ML engineers to log, visualize, and compare machine learning experiments, addressing the reproducibility and collaboration challenges inherent in modern AI workflows.
The platform integrates with popular ML frameworks including PyTorch, TensorFlow, and scikit-learn, allowing teams to track metrics, parameters, and outputs across training runs. W&B's offering extends to model registry capabilities, enabling organizations to version, document, and deploy models systematically. The company serves enterprises across computer vision, natural language processing, and reinforcement learning domains.
As of its Series C funding stage, Weights and Biases has raised $250 million at a $1.3 billion valuation, positioning it among well-capitalized AI infrastructure startups. The company competes in the ML operations space alongside platforms like Databricks and Neptune, differentiating through its focus on experiment tracking and accessibility to individual practitioners and teams.
Notable adoption spans research institutions and technology companies implementing large-scale ML pipelines. The platform's freemium model has facilitated rapid adoption within the academic and startup ecosystems, while enterprise offerings target organizations requiring advanced governance and integration capabilities. Growth trajectory reflects increasing enterprise demand for ML operations infrastructure. Weights and Biases occupies a critical position in the ML operations stack by specializing in experiment tracking and model management, essential infrastructure that bridges individual data scientist workflows and enterprise-scale ML deployment..
Which company was founded first?▾
Weights and Biases was founded first in 2017. Weaviate was founded in 2019.