Anthropic Claude in Omniscope

Modified on Mon, 19 Jan at 11:55 AM

Omniscope now integrates with Anthropic’s Claude models to bring powerful natural-language reasoning, advanced content generation, and sophisticated analytic capabilities into your workflows. Whether you’re driving AI-assisted analytics, generating narratives, or automating reasoning tasks, Claude offers flexible performance across a range of use cases.


Claude is a family of large language models (LLMs) developed by Anthropic, designed to be safe, helpful, and adaptable for enterprise and analytical workloads. The Claude family spans lightweight, fast models for interactive tasks through to deeply reasoning models tuned for long-form analysis and complex logic.


Claude Models as of Late 2025/2026


Here’s a breakdown of the most relevant Claude models available today:


Model / Variant    Primary Strengths / Use Cases

  • Claude Haiku (e.g., Haiku 4.5) - Fast, efficient variant for conversational use, light summarization, customer support workflows and real-time interactive tasks.
  • Claude Sonnet (e.g., Sonnet 4.5) - Balanced model with strong reasoning and writing capabilities. Ideal for data summarization, professional content creation, and structured analysis.
  • Claude Opus (e.g., Opus 4.5) - Deep reasoning, advanced coding, and sustained task performance - suitable for enterprise-scale analytics, research, multi-step workflows, and tool use.


Note: Model names (Haiku, Sonnet, Opus) indicate relative capability tiers within the Claude family, with Haiku focused on speed and efficiency, Sonnet on broad reasoning, and Opus on maximum capability and depth.


What Makes Claude Unique


Safety-first design: Claude models are trained using Anthropic’s Constitutional AI framework, which emphasises ethical guidance and helpful responses while limiting unsafe outputs.


Large context windows: Many Claude variants support extremely large token contexts — allowing them to maintain coherence over long documents, workflows and extended analytical tasks.


Flexible use cases: From summarising datasets and generating narrative reports to answering complex queries or even assisting with code and structured outputs, Claude excels across tasks requiring nuanced reasoning.


Configure Claude in Omniscope


To use Claude models in Omniscope, follow these general steps:


Obtain an Anthropic API key

Sign up for access on Anthropic’s developer platform and generate an API key for the Claude family models you plan to use.


Add Claude as a provider

In Omniscope, navigate to Admin → AI Settings, choose Add Provider, and select Anthropic. Paste in your API credentials.


Select model variants

Once Claude is configured as a provider, you can choose from available Claude variants (e.g., Haiku, Sonnet, Opus) where model selection is offered in Admin and at point-of-use. Ensure you required AI Integrations are configured with default models for them to become enabled - see “How to enable AI in Omniscope” for more information.


Apply in your projects

Claude will now be available as a model choice in AI Request (formerly AI Completion) and AI Insights blocks, Data Q&A view, Report Ninja, Workflow Ninja and other AI-enabled features.



Where Claude Can Be Used


Claude support extends across Omniscope’s AI integrations, empowering you to:


AI Request block (formerly AI Completion) - Generate text, summarise fields, transform datasets, or analyse text using Claude prompts.


AI Insights block (experimental) - Batch-generate data-driven insights or answers to any data questions, for use downstream in workflows or as static summaries in reports.


Data Q&A view (experimental) - Ask natural-language questions of your data and receive insightful, structured, explainable answers, now with a highly interactive and engaging experience.


Report Ninja - Produce narrative reports, overviews, and dashboard content based on natural language prompts.


Workflow Ninja (experimental) - Understand existing projects and how the workflows are structured.


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