feat: added stheno (llambda based) text-only model, too

This commit is contained in:
2026-03-18 13:08:21 +01:00
parent 6a87fe6f08
commit 27849ccbd7
7 changed files with 101 additions and 21 deletions

View File

@@ -22,7 +22,7 @@ struct ContentView: View {
}
}
.onChange(of: modelManager.currentModel) {
chatVM?.resetSession()
chatVM?.handleModelChange()
// Persist last used model
if let id = modelManager.currentModel?.id {
Preferences.lastModelId = id

View File

@@ -3,10 +3,18 @@ import MLXLMCommon
/// Defines a supported model with its metadata.
struct ModelConfig: Identifiable, Hashable {
enum LoaderKind: Hashable {
case llm
case vlm
}
let id: String // alias: "gemma", "gemma3n", "qwen"
let repoId: String // HuggingFace ID
let displayName: String
let contextLength: Int
let loaderKind: LoaderKind
let supportsImages: Bool
let supportsTools: Bool
/// All models supported by the app.
static let availableModels: [ModelConfig] = [
@@ -14,19 +22,37 @@ struct ModelConfig: Identifiable, Hashable {
id: "gemma",
repoId: "mlx-community/gemma-3-4b-it-4bit",
displayName: "Gemma 3 4B",
contextLength: 128_000
contextLength: 128_000,
loaderKind: .vlm,
supportsImages: true,
supportsTools: true
),
ModelConfig(
id: "qwen",
repoId: "mlx-community/Qwen3-VL-4B-Instruct-4bit",
displayName: "Qwen3 VL 4B",
contextLength: 256_000
contextLength: 256_000,
loaderKind: .vlm,
supportsImages: true,
supportsTools: true
),
ModelConfig(
id: "qwen3.5-9b",
repoId: "mlx-community/Qwen3.5-9B-4bit",
displayName: "Qwen3.5 9B",
contextLength: 256_000
contextLength: 256_000,
loaderKind: .llm,
supportsImages: false,
supportsTools: true
),
ModelConfig(
id: "stheno",
repoId: "synk/L3-8B-Stheno-v3.2-MLX",
displayName: "Stheno L3 8B",
contextLength: 8_192,
loaderKind: .llm,
supportsImages: false,
supportsTools: false
),
]

View File

@@ -221,12 +221,22 @@ final class APIServer {
let requestId = "chatcmpl-\(UUID().uuidString.prefix(12).lowercased())"
let created = Int(Date().timeIntervalSince1970)
let modelName = request.model ?? modelManager.currentModel?.repoId ?? "unknown"
let currentModel = modelManager.currentModel
let contextLength = modelManager.currentModel?.contextLength ?? 0
if let tools = request.tools, !tools.isEmpty, currentModel?.supportsTools != true {
sendResponse(
connection: connection,
status: 400,
body: #"{"error":{"message":"The currently selected model does not support tool calls.","type":"invalid_request_error","code":"tools_not_supported"}}"#
)
return
}
// Convert API messages to Chat.Message, extracting images from content parts
var chatMessages: [Chat.Message] = []
var images: [UserInput.Image] = []
let currentModelRepoId = modelManager.currentModel?.repoId ?? modelName
let currentModelRepoId = currentModel?.repoId ?? modelName
// Build the instructions string (system prompt + tool definitions).
// This is passed to ChatSession via `instructions:` rather than injected
@@ -298,6 +308,15 @@ final class APIServer {
images.append(contentsOf: messageImages)
}
if !images.isEmpty, currentModel?.supportsImages != true {
sendResponse(
connection: connection,
status: 400,
body: #"{"error":{"message":"The currently selected model does not support image inputs.","type":"invalid_request_error","code":"vision_not_supported"}}"#
)
return
}
// Context window check: estimate token count and reject if over limit
if contextLength > 0 {
let totalChars = chatMessages.reduce(0) { $0 + $1.content.count }

View File

@@ -53,7 +53,7 @@ final class ChatViewModel {
ensureSession()
guard let session = chatSession else { return }
let images = attachedImages
let images = modelManager.currentModel?.supportsImages == true ? attachedImages : []
inputText = ""
attachedImages = []
@@ -135,6 +135,7 @@ final class ChatViewModel {
}
func attachImage(_ image: NSImage) {
guard modelManager.currentModel?.supportsImages == true else { return }
attachedImages.append(image)
}
@@ -154,6 +155,13 @@ final class ChatViewModel {
chatSession = nil
}
func handleModelChange() {
resetSession()
if modelManager.currentModel?.supportsImages != true {
attachedImages = []
}
}
// MARK: - API Server
func startAPIServer() {

View File

@@ -1,6 +1,7 @@
import Foundation
import Hub
import MLX
import MLXLLM
import MLXLMCommon
import MLXVLM
@@ -77,11 +78,21 @@ final class ModelManager {
configuration = config.modelConfiguration
}
let container = try await VLMModelFactory.shared.loadContainer(
hub: Self.hub,
configuration: configuration,
progressHandler: progressHandler
)
let container: ModelContainer
switch config.loaderKind {
case .llm:
container = try await LLMModelFactory.shared.loadContainer(
hub: Self.hub,
configuration: configuration,
progressHandler: progressHandler
)
case .vlm:
container = try await VLMModelFactory.shared.loadContainer(
hub: Self.hub,
configuration: configuration,
progressHandler: progressHandler
)
}
self.isDownloading = false
self.modelContainer = container

View File

@@ -5,10 +5,14 @@ struct ChatInputView: View {
@Bindable var viewModel: ChatViewModel
@State private var pasteMonitor: Any?
private var supportsImages: Bool {
viewModel.modelManager.currentModel?.supportsImages == true
}
var body: some View {
VStack(spacing: 8) {
// Image preview strip
if !viewModel.attachedImages.isEmpty {
if supportsImages && !viewModel.attachedImages.isEmpty {
ScrollView(.horizontal, showsIndicators: false) {
HStack(spacing: 8) {
ForEach(Array(viewModel.attachedImages.enumerated()), id: \.offset) { index, image in
@@ -46,7 +50,7 @@ struct ChatInputView: View {
.font(.title3)
}
.buttonStyle(.plain)
.disabled(!viewModel.modelManager.isReady)
.disabled(!viewModel.modelManager.isReady || !supportsImages)
// Text field
TextField("Message…", text: $viewModel.inputText, axis: .vertical)
@@ -87,6 +91,7 @@ struct ChatInputView: View {
}
.padding(.top, 4)
.onDrop(of: [.image, .fileURL], isTargeted: nil) { providers in
guard supportsImages else { return false }
for provider in providers {
if provider.hasItemConformingToTypeIdentifier(UTType.fileURL.identifier) {
provider.loadItem(forTypeIdentifier: UTType.fileURL.identifier, options: nil) { data, _ in
@@ -121,6 +126,7 @@ struct ChatInputView: View {
private func installPasteMonitor() {
guard pasteMonitor == nil else { return }
pasteMonitor = NSEvent.addLocalMonitorForEvents(matching: .keyDown) { event in
guard supportsImages else { return event }
// Check for Cmd+V
guard event.modifierFlags.contains(.command),
event.charactersIgnoringModifiers == "v" else {
@@ -178,6 +184,7 @@ struct ChatInputView: View {
// MARK: - File picker
private func pickImage() {
guard supportsImages else { return }
let panel = NSOpenPanel()
panel.allowedContentTypes = [.image]
panel.allowsMultipleSelection = true

View File

@@ -1,14 +1,17 @@
# MLX Server
Native macOS app for running local LLMs on Apple Silicon via [MLX](https://github.com/ml-explore/mlx). Built with SwiftUI, it provides both a **chat UI** and an embedded **OpenAI-compatible API server**. Supports vision, tool use, and thinking mode.
Native macOS app for running local LLMs on Apple Silicon via [MLX](https://github.com/ml-explore/mlx). Built with SwiftUI, it provides both a **chat UI** and an embedded **OpenAI-compatible API server**. Supports both vision-capable and text-only MLX models, plus tool use and thinking mode where the selected model supports them.
## Supported Models
| Alias | Model | Context | Capabilities |
|-------|-------|---------|-------------|
| `gemma` | `mlx-community/gemma-3-4b-it-4bit` | 128k | Vision, tool use (`tool_code` blocks) |
| `qwen` | `mlx-community/Qwen3-VL-4B-Instruct-4bit` | 256k | Vision, tool use (`<tool_call>` tags) |
| `qwen3.5-9b` | `mlx-community/Qwen3.5-9B-4bit` | 256k | Thinking mode, tool use |
| Alias | Model | Context | Loader | Capabilities |
|-------|-------|---------|--------|-------------|
| `gemma` | `mlx-community/gemma-3-4b-it-4bit` | 128k | `VLMModelFactory` | Vision, tool use (`tool_code` blocks) |
| `qwen` | `mlx-community/Qwen3-VL-4B-Instruct-4bit` | 256k | `VLMModelFactory` | Vision, tool use (`<tool_call>` tags) |
| `qwen3.5-9b` | `mlx-community/Qwen3.5-9B-4bit` | 256k | `LLMModelFactory` | Text-only, thinking mode, tool use |
| `stheno` | `synk/L3-8B-Stheno-v3.2-MLX` | 8k | `LLMModelFactory` | Text-only |
`stheno` is loaded as a standard MLX text model. The Hugging Face card provides an `mlx_lm.load(...)` sample rather than a VLM example, and its config reports `model_type: llama` with `max_position_embeddings: 8192`, so the app treats it as an 8k Llama-family text model.
Any model in MLX format on HuggingFace can be added — there is no restriction on uploader or architecture.
@@ -23,7 +26,7 @@ open "build/Debug/MLX Server.app"
## App Features
- **Chat interface** with markdown rendering, image attachments (file picker, drag & drop, clipboard paste, Finder copy-paste)
- **Chat interface** with markdown rendering and model-aware image attachments (file picker, drag & drop, clipboard paste, Finder copy-paste on vision-capable models)
- **Model picker** in toolbar with local/download status indicators and re-download button
- **Download progress modal** — shows file progress, percentage, and speed when downloading a new model
- **Thinking mode** — models like Qwen3.5 can reason internally before responding; thinking content appears in a collapsible box. Toggle on/off in Settings.
@@ -42,6 +45,8 @@ The embedded API server (toggle in toolbar) runs on port 1234 by default. Standa
- `POST /v1/chat/completions` — chat completions (streaming and non-streaming)
- `GET /health` — health check
Capability checks are enforced server-side. If a request sends images to a text-only model or tools to a model without tool support, the server returns a `400 invalid_request_error`.
### Model Swapping
Send any model ID or alias in the `model` field. If it differs from the currently loaded model, the server swaps automatically:
@@ -69,10 +74,14 @@ Pass images as base64 data URIs in the `image_url` content part:
}
```
Text-only models such as `qwen3.5-9b` and `stheno` reject image inputs.
### Tool Use
Pass tools in the `tools` field (OpenAI format). The server handles model-specific formatting (Gemma `tool_code` blocks, Qwen `<tool_call>` XML tags) and parses tool calls from output automatically. When tools are present during streaming, output is buffered to strip tool-call markup before sending to the client.
`stheno` is currently documented and configured as a plain text model, so tool requests to it are rejected.
## Project Structure
```
@@ -112,7 +121,7 @@ build.sh — One-command build script (xcodegen + xcodebuild)
## Key Design Decisions
- Uses `mlx-swift-lm` (`MLXVLM` / `VLMModelFactory`) for inference — loads any MLX-format model from HuggingFace
- Uses `mlx-swift-lm` for inference — `VLMModelFactory` for vision models and `LLMModelFactory` for text-only models
- **Offline-first**: `LocalModelResolver` checks both the sandboxed app container and `~/.cache/huggingface/hub/` for locally-cached models before downloading
- **No duplicate storage**: custom `HubApi` with blob cache disabled — models are stored once in the snapshot cache
- **KV cache reuse** across API requests — reuses `ChatSession` when conversation history prefix matches