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| import gradio as gr | |
| import pandas as pd | |
| import PyPDF2 | |
| import json | |
| import re | |
| # Parse uploaded transcript file | |
| def parse_transcript(file): | |
| if file.name.endswith('.csv'): | |
| df = pd.read_csv(file.name) | |
| elif file.name.endswith(('.xls', '.xlsx')): | |
| df = pd.read_excel(file.name) | |
| elif file.name.endswith('.pdf'): | |
| reader = PyPDF2.PdfReader(file) | |
| text = "" | |
| for page in reader.pages: | |
| text += page.extract_text() or "" | |
| df = pd.DataFrame({'Transcript_Text': [text]}) | |
| else: | |
| raise ValueError("Unsupported file format. Use .csv, .xlsx, or .pdf") | |
| return df | |
| # Extract student info | |
| def extract_transcript_info(df): | |
| transcript_text = df['Transcript_Text'].iloc[0] if 'Transcript_Text' in df.columns else '' | |
| info = {} | |
| gpa_match = re.search(r'(GPA|Grade Point Average)[^\d]*(\d+\.\d+)', transcript_text, re.IGNORECASE) | |
| if gpa_match: | |
| info['GPA'] = gpa_match.group(2) | |
| grade_match = re.search(r'Grade:?[\s]*(\d{1,2})', transcript_text, re.IGNORECASE) | |
| if grade_match: | |
| info['Grade_Level'] = grade_match.group(1) | |
| courses = re.findall(r'(?i)\b([A-Z][a-zA-Z\s&/]+)\s+(\d{1,3})\b', transcript_text) | |
| if courses: | |
| info['Courses'] = list(set([c[0].strip() for c in courses])) | |
| return info | |
| # Learning style questions - from educationplanner.org | |
| learning_style_questions = [ | |
| "When you are learning something new, you prefer to:", | |
| "When you are at home, you like to:", | |
| "When you spell a word, you remember it by:", | |
| "When you read, you:", | |
| "When you write, you:", | |
| "When you listen to music, you:", | |
| "When you work at solving a problem, you:", | |
| "When you give someone directions, you:", | |
| "When you are concentrating, you:", | |
| "When you meet someone new, you remember them by:" | |
| ] | |
| learning_style_answers = [ | |
| ["Watch someone do it", "Listen to someone explain it", "Read about it"], | |
| ["Watch TV or play video games", "Listen to music or talk to people", "Read books or write stories"], | |
| ["Seeing the word in your mind", "Saying the word out loud", "Writing the word down"], | |
| ["See the action in your mind", "Hear the characters talk", "Focus on the written words"], | |
| ["Use diagrams or doodles", "Talk about ideas", "Write detailed notes"], | |
| ["Appreciate the rhythm and melodies", "Easily remember lyrics", "Analyze the lyrics"], | |
| ["Visualize the solution", "Discuss the problem", "Write out the steps"], | |
| ["Draw a map", "Give spoken directions", "Write directions"], | |
| ["Picture things", "Say things out loud", "Write or read quietly"], | |
| ["Remember faces", "Remember names or voices", "Remember what you wrote about them"] | |
| ] | |
| style_count_map = {0: "visual", 1: "auditory", 2: "reading/writing"} | |
| def learning_style_quiz(*answers): | |
| scores = {'visual': 0, 'auditory': 0, 'reading/writing': 0} | |
| for i, ans in enumerate(answers): | |
| if i < len(learning_style_answers): | |
| options = learning_style_answers[i] | |
| if ans in options: | |
| index = options.index(ans) | |
| style = style_count_map[index] | |
| scores[style] += 1 | |
| max_score = max(scores.values()) | |
| best_styles = [style.capitalize() for style, score in scores.items() if score == max_score] | |
| return ", ".join(best_styles) | |
| # PanoramaEd categories and multiple choice questions | |
| get_to_know_categories = { | |
| "All About Me": [ | |
| ("What’s your favorite way to spend a day off?", []), | |
| ("If you could only eat one food for the rest of your life, what would it be?", []), | |
| ("Do you have any pets? If so, what are their names?", []), | |
| ("If you could travel anywhere in the world, where would you go?", []), | |
| ("What’s your favorite holiday or tradition?", []), | |
| ("What are some of your favorite movies or shows?", []), | |
| ("Do you have a favorite book or book series? Why?", []), | |
| ("Who is a character from a show, book, or movie that you relate to? Why?", []), | |
| ("If you could be any fictional character, who would you be and why?", []) | |
| ], | |
| "Hopes and Dreams": [ | |
| ("What do you want to be when you grow up?", []), | |
| ("What’s something you hope to achieve this year?", []), | |
| ("If you could change the world in one way, what would you do?", []), | |
| ("What are you most proud of?", []), | |
| ("What’s a big dream you have for your future?", []) | |
| ], | |
| "School Life": [ | |
| ("What’s your favorite subject in school?", []), | |
| ("What’s something that makes learning easier for you?", []), | |
| ("Do you prefer working alone or in groups?", []), | |
| ("What helps you feel confident in class?", []), | |
| ("What’s something you’re good at in school?", []) | |
| ], | |
| "Relationships": [ | |
| ("Who do you look up to and why?", []), | |
| ("Who is someone that makes you feel safe and supported?", []), | |
| ("Do you have a best friend? What do you like to do together?", []), | |
| ("What’s one thing you wish people knew about you?", []), | |
| ("What’s something kind you’ve done for someone else?", []) | |
| ] | |
| } | |
| # Generators for output summaries | |
| def generate_learning_plan(info): | |
| level = info.get("Grade_Level", "unknown") | |
| courses = info.get("Courses", []) | |
| gpa = info.get("GPA", "N/A") | |
| return f""" | |
| 📘 **Personalized Learning Plan** | |
| - Grade Level: {level} | |
| - GPA: {gpa} | |
| - Suggested Focus Areas: {', '.join(courses[:3]) if courses else 'N/A'} | |
| - Goals: Strengthen key subjects, explore interests, and build study habits. | |
| """ | |
| def generate_learning_style_summary(style): | |
| return f""" | |
| 🧠 **Learning Style Summary** | |
| You are a **{style}** learner. That means you learn best through {"visual aids like charts and images" if "Visual" in style else "listening and verbal instruction" if "Auditory" in style else "reading and writing-based methods"}. | |
| """ | |
| def generate_motivation_section(responses): | |
| hopes = [ans for q, ans in responses.items() if "hope" in q.lower() or "dream" in q.lower()] | |
| return f""" | |
| 💡 **Motivational Summary** | |
| Your dreams are powerful: {'; '.join(hopes) if hopes else 'You are filled with potential!'}. | |
| Believe in yourself and keep moving forward. | |
| """ | |
| # Save all answers into profile | |
| def save_profile(file, *inputs): | |
| if not file: | |
| return "⚠️ Please upload your transcript." | |
| quiz_answers = inputs[:len(learning_style_questions)] | |
| if any(ans is None for ans in quiz_answers): | |
| return "⚠️ Please answer all the learning style questions." | |
| blog_checkbox = inputs[len(learning_style_questions)] | |
| blog_text = inputs[len(learning_style_questions)+1] | |
| category_answers = inputs[len(learning_style_questions)+2:] | |
| if any(ans.strip() == "" for ans in category_answers): | |
| return "⚠️ Please complete all 'Get to Know You' sections before saving." | |
| if blog_checkbox and blog_text.strip() == "": | |
| return "⚠️ You checked the blog option but didn’t write anything. Please write your mini blog or uncheck the option." | |
| df = parse_transcript(file) | |
| transcript_info = extract_transcript_info(df) | |
| learning_type = learning_style_quiz(*quiz_answers) | |
| question_texts = [q for cat in get_to_know_categories.values() for q, _ in cat] | |
| responses = dict(zip(question_texts, category_answers)) | |
| profile = { | |
| "transcript": df.to_dict(orient='records'), | |
| "transcript_info": transcript_info, | |
| "learning_style": learning_type, | |
| "get_to_know_answers": responses, | |
| "blog": blog_text if blog_checkbox else "[User chose to skip this section]" | |
| } | |
| summary = { | |
| "Learning_Plan": generate_learning_plan(transcript_info), | |
| "Style_Summary": generate_learning_style_summary(learning_type), | |
| "Motivation": generate_motivation_section(responses) | |
| } | |
| with open("student_profile.json", "w") as f: | |
| json.dump(profile, f, indent=4) | |
| with open("student_summary.md", "w") as f: | |
| f.write(summary["Learning_Plan"] + '\n' + summary["Style_Summary"] + '\n' + summary["Motivation"]) | |
| return f"✅ Profile saved! Your learning style is: {learning_type}" | |
| # Build Gradio UI | |
| with gr.Blocks() as demo: | |
| gr.Markdown("## 🎓 Personalized AI Student Assistant") | |
| with gr.Row(): | |
| file = gr.File(label="📄 Upload Your Transcript (.csv, .xlsx, .pdf)") | |
| with gr.Column(): | |
| gr.Markdown("### 🧠 Learning Style Discovery") | |
| quiz_components = [] | |
| for i, (question, options) in enumerate(zip(learning_style_questions, learning_style_answers)): | |
| quiz_components.append(gr.Radio( | |
| choices=options, | |
| label=f"{i+1}. {question}" | |
| )) | |
| category_inputs = [] | |
| for category, questions in get_to_know_categories.items(): | |
| gr.Markdown(f"### 📘 {category}") | |
| for q_text, _ in questions: | |
| category_inputs.append(gr.Textbox(label=q_text)) | |
| blog_checkbox = gr.Checkbox(label="📝 I'd like to write a mini blog about myself") | |
| blog_text = gr.Textbox(lines=5, label="✍️ Mini Blog", visible=False) | |
| blog_checkbox.change(fn=lambda x: gr.update(visible=x), inputs=blog_checkbox, outputs=blog_text) | |
| submit = gr.Button("🗕️ Save My Profile") | |
| output = gr.Textbox(label="Status") | |
| submit.click(fn=save_profile, | |
| inputs=[file, *quiz_components, blog_checkbox, blog_text, *category_inputs], | |
| outputs=[output]) | |
| if __name__ == '__main__': | |
| demo.launch() |