Abhimanyu Yadav 0a1591fce2 refactor(frontend): remove old builder code and monitoring components
(#12082)

### Changes 🏗️

This PR removes old builder code and monitoring components as part of
the migration to the new flow editor:

- **NewControlPanel**: Simplified component by removing unused props
(`flowExecutionID`, `visualizeBeads`, `pinSavePopover`,
`pinBlocksPopover`, `nodes`, `onNodeSelect`, `onNodeHover`) and cleaned
up commented legacy code
- **Import paths**: Updated all references from
`legacy-builder/CustomNode` to `FlowEditor/nodes/CustomNode`
- **GraphContent**: Fixed type safety by properly handling
`customized_name` metadata and using `categoryColorMap` instead of
`getPrimaryCategoryColor`
- **useNewControlPanel**: Removed unused state and query parameter
handling related to old builder
- Removed dead code and commented-out imports throughout

### Checklist 📋

#### For code changes:

- [x] I have clearly listed my changes in the PR description
- [x] I have made a test plan
- [x] I have tested my changes according to the test plan:
    - [x] Verify NewControlPanel renders correctly
    - [x] Test BlockMenu functionality
    - [x] Test Save Control
    - [x] Test Undo/Redo buttons
    - [x] Verify graph search menu still works with updated imports

<!-- greptile_comment -->

<h2>Greptile Overview</h2>

<details><summary><h3>Greptile Summary</h3></summary>

This PR removes legacy builder components and monitoring page (~12,000
lines of code), simplifying `NewControlPanel` to focus only on the new
flow editor.

**Key changes:**
- Removed entire `legacy-builder/` directory (36 files) containing old
CustomNode, CustomEdge, Flow, and control components
- Deleted `/monitoring` page and all related components (9 files)
- Deleted `useAgentGraph` hook (1,043 lines) that was only used by
legacy components
- Simplified `NewControlPanel` by removing unused props
(`flowExecutionID`, `nodes`, `onNodeSelect`, etc.) and commented-out
code
- Updated imports in `NewSearchGraph` components to reference new
`FlowEditor/nodes/CustomNode` instead of deleted
`legacy-builder/CustomNode`
- Removed `/monitoring` from protected pages in `helpers.ts`
- Updated test files to remove monitoring-related test helpers

**Minor style issues:**
- `useNewControlPanel` hook returns unused state (`blockMenuSelected`)
that should be cleaned up
- Unnecessary double negation (`!!`) in `GraphContent.tsx:136`
</details>


<details><summary><h3>Confidence Score: 4/5</h3></summary>

- This PR is safe to merge with minor style improvements recommended
- The refactor is a straightforward deletion of legacy code with no
references remaining in the codebase. All imports have been updated
correctly, tests cleaned up, and routing configuration updated. The only
issues are minor unused code that could be cleaned up but won't cause
runtime errors.
- No files require special attention - the unused state in
`useNewControlPanel.ts` is a minor style issue
</details>


<details><summary><h3>Sequence Diagram</h3></summary>

```mermaid
sequenceDiagram
    participant User
    participant NewControlPanel
    participant BlockMenu
    participant NewSaveControl
    participant UndoRedoButtons
    participant Store as blockMenuStore (Zustand)

    Note over NewControlPanel: Simplified component (removed props & legacy code)
    
    User->>NewControlPanel: Render
    NewControlPanel->>useNewControlPanel: Call hook (unused return)
    
    NewControlPanel->>BlockMenu: Render
    BlockMenu->>Store: Access state via useBlockMenuStore
    Store-->>BlockMenu: Return search, filters, etc.
    
    NewControlPanel->>NewSaveControl: Render
    NewControlPanel->>UndoRedoButtons: Render
    
    Note over NewControlPanel,Store: State management moved from hook to Zustand store
    Note over User: Legacy components (CustomNode, Flow, etc.) completely removed
```
</details>


<!-- greptile_other_comments_section -->

<!-- /greptile_comment -->
2026-02-20 05:19:08 +00:00
2025-01-29 10:31:57 -06:00
2026-02-03 16:01:23 +04:00
2025-03-24 18:11:56 +00:00
2025-07-25 15:39:29 +01:00

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