malavikapradeep2001's picture
Update
9eef730
raw
history blame
4.49 kB
import { useState, useEffect } from "react";
import axios from "axios";
import { Header } from "./components/Header";
import { Sidebar } from "./components/Sidebar";
import { UploadSection } from "./components/UploadSection";
import { ResultsPanel } from "./components/ResultsPanel";
import { Footer } from "./components/Footer";
import { ProgressBar } from "./components/progressbar";
export function App() {
const [selectedTest, setSelectedTest] = useState("cytology");
const [uploadedImage, setUploadedImage] = useState<string | null>(null);
const [selectedModel, setSelectedModel] = useState("");
const [apiResult, setApiResult] = useState<any>(null);
const [showResults, setShowResults] = useState(false);
const [currentStep, setCurrentStep] = useState(0);
const [loading, setLoading] = useState(false);
// Progress bar logic
useEffect(() => {
if (showResults) setCurrentStep(2);
else if (uploadedImage) setCurrentStep(1);
else setCurrentStep(0);
}, [uploadedImage, showResults]);
// Reset logic
useEffect(() => {
setCurrentStep(0);
setShowResults(false);
setUploadedImage(null);
setSelectedModel("");
setApiResult(null);
}, [selectedTest]);
const handleAnalyze = async () => {
console.log('Analyze button clicked', { uploadedImage, selectedModel });
if (!uploadedImage || !selectedModel) {
alert("Please select a model and upload an image first!");
return;
}
setLoading(true);
setShowResults(false);
setApiResult(null);
try {
// Extract file extension from data URL or use .jpg default
const extension = uploadedImage.startsWith('data:image/')
? uploadedImage.split(';')[0].split('/')[1]
: 'jpg';
// Create a more descriptive filename
const filename = `analysis_input.${extension}`;
let blob: Blob;
if (uploadedImage.startsWith('data:')) {
// Handle data URLs (from file upload)
blob = await fetch(uploadedImage).then(r => r.blob());
} else {
// Handle sample images (relative URLs)
blob = await fetch(uploadedImage)
.then(r => r.blob())
.catch(() => {
// If fetch fails, try with base URL
const baseURL = import.meta.env.MODE === "development"
? "http://127.0.0.1:5173"
: window.location.origin;
return fetch(`${baseURL}${uploadedImage}`).then(r => r.blob());
});
}
const file = new File([blob], filename, { type: blob.type || `image/${extension}` });
const formData = new FormData();
formData.append("file", file);
formData.append("model_name", selectedModel);
console.log('Sending request:', {
filename,
type: file.type,
size: file.size,
model: selectedModel
});
const baseURL = import.meta.env.MODE === "development"
? "http://127.0.0.1:8000"
: window.location.origin;
const res = await axios.post(`${baseURL}/predict/`, formData, {
headers: { "Content-Type": "multipart/form-data" },
});
if (res.data.error) {
throw new Error(res.data.error);
}
console.log('Received response:', res.data);
setApiResult(res.data);
setShowResults(true);
} catch (err: any) {
console.error("❌ Error during inference:", err);
const errorMessage = err.response?.data?.error || err.message || "Unknown error occurred";
alert(`Error analyzing the image: ${errorMessage}`);
} finally {
setLoading(false);
}
};
return ( <div className="flex flex-col min-h-screen w-full bg-gray-50"> <Header /> <ProgressBar currentStep={currentStep} />
<div className="flex flex-1">
<Sidebar selectedTest={selectedTest} onTestChange={setSelectedTest} />
<main className="flex-1 p-6">
<div className="max-w-7xl mx-auto grid grid-cols-1 lg:grid-cols-2 gap-6">
<UploadSection
selectedTest={selectedTest}
uploadedImage={uploadedImage}
setUploadedImage={setUploadedImage}
selectedModel={selectedModel}
setSelectedModel={setSelectedModel}
onAnalyze={handleAnalyze}
/>
{(showResults || loading) && (
<ResultsPanel
uploadedImage={
apiResult?.annotated_image_url || uploadedImage
}
result={apiResult}
loading={loading}
/>
)}
</div>
</main>
</div>
<Footer />
</div>
);
}