Helix AI >
Blog Posts
-
fiber_manual_record
AskFelix AI Assistant Tech Stack
Felix to build dashboards and graphs, transform, aggregate and enrich your data. Tech breakdown -
fiber_manual_record
AI Agents in 10 years time
AI Agents in 10 years time, what will they be able to do? What will they be like? -
fiber_manual_record
Automating Actionable Business Insights with Helix AI
How businesses can leverage Helix AI to automate data analysis, visualization, and extract actionable insights without technical expertise -
fiber_manual_record
Running Helix on ZFS
How Helix uses ZFS for resilient storage, snapshots, replication and observability. -
fiber_manual_record
Query generation pipeline
Detailed walkthrough of Helix query planning, SQL generation and chart synthesis pipeline. -
fiber_manual_record
LLM judge and regression harness
How Helix evaluates agents with layered LLM judges, workflow replays and drift analysis. -
fiber_manual_record
Plugins, data platform and exports
Overview of Helix plugin lifecycle, data adapters and export surfaces. -
fiber_manual_record
Using PostgreSQL with Helix
Connect Helix to PostgreSQL and generate charts by mentioning your tables. - fiber_manual_record
- fiber_manual_record
- fiber_manual_record
- fiber_manual_record
- fiber_manual_record
- fiber_manual_record
- fiber_manual_record
-
fiber_manual_record
Using Redshift with Helix
Describe the reports you need from Amazon Redshift and Helix will deliver. -
fiber_manual_record
What Makes a Good Graph
Principles of effective data visualization - choosing the right chart type, clarity, and actionable insights. -
fiber_manual_record
Choosing the Right Chart Type
A comprehensive guide to selecting the most effective chart type for your data and audience. -
fiber_manual_record
Building an AI Agent for Graph Construction
Technical deep-dive into how Helix uses LLMs, query pipelines, and semantic understanding to construct actionable business graphs. -
fiber_manual_record
From Question to Actionable Insight: The Helix Pipeline
How Helix transforms natural language questions into SQL queries, data aggregations, and meaningful visualizations.