Oracle AI
Build, train, and deploy machine learning models. Or use AI services to add prebuilt chatbot, anomaly detection, NLP, and speech capabilities to appli
Based on the available social mentions, there's insufficient direct user feedback about Oracle's AI products specifically. Most mentions relate to Oracle's broader business decisions (like job cuts) or general AI discussions rather than user experiences with Oracle AI tools. The few Oracle-specific mentions focus on corporate news like ending data center expansion plans with OpenAI rather than product reviews. Without substantial user reviews or detailed feedback, it's not possible to accurately summarize user sentiment about Oracle AI's strengths, weaknesses, pricing, or overall reputation from this data set.
Snorkel Flow
The platform for programmatic AI development—set a new pace for AI application development.
Labeled data is required to train highly accurate AI/ML models for specialized, domain-specific tasks. However, manual data labeling with human annotation is slow, expensive, and often blocks enterprise AI projects on day one. AI data development eliminates this bottleneck by streamlining collaboration between data scientists and SMEs via a unified platform for capturing domain knowledge and applying it to enterprise data, empowering data scientists to label entire datasets with the click of a button rather than requiring a team of SMEs to hand label each data point. Snorkel Flow provides data scientists and subject matter experts with a collaborative platform for capturing domain knowledge, using it to label entire datasets or generate synthetic ones, and to quickly iterate on training data and model development via built-in guided error analysis and model evaluation. AI/ML teams should never be blocked due to missing or low-quality training data. Nor should data scientists, ML engineers, and SMEs be required to spend valuable time on manual data labeling. Empower data scientists to curate high-quality training data in days rather than months Take advantage of SME-in-the-loop to improve quality without the need for manual data labeling Deploy AI/AML models which demonstrate higher accuracy and meet production requirements Curate training data and fine-tune embedding models and LLMs as well as extract document metadata for enhanced retrieval. Foundation models have become extremely capable, but they lack the domain knowledge needed to perform specialized tasks within the enterprise. However, specialized models can be derived from them, combining their inherent natural language and reasoning capabilities with enterprise data, corporate policies, and industry standards. Deploy models with MLflow or via AWS SageMaker, Google Vertex AI, and Databricks integration. Optimize RAG pipelines by fine-tuning embedding models and extracting document metadata to improve retrieval accuracy. Take the next step and see how you can accelerate AI development by 100x. In the new world of off-the-shelf generative AI models, you can just grab a model pre-trained by OpenAI, Google, Hugging Face, etc., and start generating predictions. And these predictions can be large chunks of generated content! This leaves many data scientists wondering, where does my data actually add value in the development of production AI healthcare applications? In this webinar, you’ll learn how your unique data is critical to developing high-quality generative AI applications and learn where your data can be used and how it should be prepared, managed, and applied to deliver real-world value for your organization. Nazanin Makkinejad is an applied machine learning engineer at Snorkel AI, where she works with enterprise data science teams to realize the benefits of data-centric AI and Snorkel Flow. Prior to her role at Snorkel AI, Nazanin was a Postdoctoral Research Fellow at Ha
Oracle AI
Snorkel Flow
Oracle AI
Pricing found: $300, $300
Snorkel Flow
Pricing found: $3
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Oracle AI
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