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SheemaMasood381/README.md

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Building with purpose. Learning with obsession. Solving with AI.

🚀 Automating the Future!!!! ' From LLM Pipelines to Autonomous Workflows '

I'm an AI Automation Engineer at the intersection of machine learning, agentic systems, and workflow intelligence — passionate about transforming ideas into autonomous, scalable solutions.

Whether it’s orchestrating LLM-driven workflows, building n8n automations, or crafting intelligent agents, I thrive on creating systems that think, act, and evolve.


Python TensorFlow PyTorch RAG Vertex AI MistralAI OpenAI Streamlit CrewAI LangChain Solana Docker GitHub Actions Lablab.ai Kaggle Hackathons

🔍 About Me

💡 AI Automation Engineer passionate about LLMs, agentic systems, and intelligent automation.
I specialize in connecting data pipelines, APIs, and AI models using n8n, Python, and LangChain — crafting automations that enhance productivity and decision-making.

🧠 My expertise lies in:

  • Building agentic multi-agent ecosystems using CrewAI, LangChain, and LLMs.
  • Designing end-to-end automation workflows (document processing, chatbots, AI assistants).
  • Engineering Generative AI pipelines for text, voice, and data-driven tasks.
  • Deploying scalable AI systems with Docker, Vertex AI, and GitHub Actions.

With a Pharm.D background, I bring analytical precision and real-world empathy into AI — ensuring every system I build matters.


⚙️ AI Automation Workflows

Integrating n8n + LLMs + Python for business process automation

  • Developed document parsing pipelines, voice-to-doc automation, and report generators.
  • Created autonomous task orchestration systems using multi-agent logic.
  • Reduced manual workflow time by 90% through intelligent automation.

💭 What Drives Me

I’m fueled by curiosity and precision — continuously learning, building, and deploying AI that transforms real-world workflows.

🤝 My mission:

  • To build autonomous systems that scale effortlessly.
  • To collaborate on AI-first startups creating meaningful automation.
  • To enable humans + machines to work together intelligently.

🏆 Featured Achievements

  • 🚀 CheapestBuy.AI — Built at Internet of Agents Hackathon @Solana Skyline (lablab.ai, Solana, Coral MCP, Mistral AI, AIMLAPI)

    • Registered shopping agent on Coral MCP
    • Integrated CrewAI multi-agent workflows, RAG, Solana Pay (DEVnet demo) + Helius API for on-chain verification
    • Added voice search (Whisper GPT-4o) for multilingual queries
    • 🎖️ Project Spotlight by AIMLAPI
    • 🎤 Invited to present at AIMLAPI Shark Tank (Discord livestream)
  • 🏅 Hackathon Finalist & Multiple Top Ranks on Kaggle

    • Petals to the Metal (3rd place, official Kaggle competition)
    • Blood Glucose Prediction (Top 15%)
    • Detect AI vs Human Images (Top 25 public LB, invited to share methodology)

🚀 Featured Projects

🧠 Multi-agent shopping assistant using CrewAI, Gemini, Whisper, Serper API, and LiteLLM.

  • Personalized recommendations and product summarization via RAG
  • Real-time product parsing & comparison with voice and text support
  • Built in Streamlit with 4-star expert rating at Lablab’s Execute Hackathon

🥇 Ranked 25th on public LB, 29th on private LB with F1 score: 0.80

  • Used EfficientNet, ViT, and custom augmentations
  • Selected among standout solutions; requested to present methodology due to high-quality results

🥉 Secured 3rd position in the official Kaggle "Petals to the Metal" competition using macro-F1 evaluation.

  • Built a high-performing ensemble using ConvNeXtBase, InceptionResNetV2, and ResNet50
  • Performed grid search over weights (α, β, γ) to maximize F1 score
  • Achieved F1 score = 0.9568 on first submission 🚀
  • Visualized results with confusion matrix, classification report, and model comparison charts

🎯 Achieved Top 19% (Rank 378 / 2025) with 87% accuracy

  • Custom mel-spectrogram pipeline using seresnext26t_32x4d
  • Advanced TTA, chunking, and ensemble inference
  • Addresses bioacoustic species detection in real-world environments

📊 Ranked in Top 15% with RMSE = 0.09

  • Time-series prediction using XGBoost, LGBM, and stacking
  • Engineered temporal features for BGL variation modeling

🧬 Achieved Top 30% in RSNA competition

  • Medical image classification using ResNet + EFFICIENTNET
  • Emphasis on class balancing and clinical impact

🗣️ Real-time voice chatbot using Whisper, Llama3, and gTTS

  • Reduces typing effort by 90%, ideal for customer support
  • Conversational, human-like interaction via Gradio interface

📚 Document Q&A and summarization using Gemini + ChromaDB

  • Extracts insights from PDFs, saving 70% review time
  • Gradio UI for instant document interrogation

🔎 Cuts down reading time by 80%

  • Summarizes PDFs, Word, and TXT files using Gemini + Gradio
  • Ideal for researchers and students needing instant insights

🎭 A fun NLP project fine-tuning LLMs for Yoda-style speech generation

  • Entertainment + creative writing use case
  • Deployed with Gradio for live demo interaction

🛠️ Technical Skills & Tools

👩‍💻 Languages & Frameworks

  • Python, SQL, JavaScript (Basics)
  • PyTorch, TensorFlow, Scikit-learn
  • LangChain, CrewAI, FastAPI, Flask, Streamlit

🤖 AI, LLMs & Agentic Systems

  • LLMs (OpenAI, Gemini, LLaMA, Mistral)
  • LangChain Agents, CrewAI Multi-Agent Workflows
  • RAG Pipelines, Vector DBs (ChromaDB, FAISS, Pinecone)
  • Coral Protocol (MCP), Solana Pay AI Agents
  • Whisper, Voice AI, Speech-to-Text / TTS
  • Vision Transformers (ViTs), CNNs, Transfer Learning
  • Fine-tuning, Prompt Engineering, Generative AI
  • Explainable AI (SHAP, LIME)

📊 Data Science & Machine Learning

  • Regression, Classification, Time Series Forecasting
  • Feature Engineering, Model Optimization, Cross Validation
  • EDA, Statistical Analysis, Data Wrangling

🖼️ Visualization & BI Tools

  • Power BI, Matplotlib, Seaborn, Plotly
  • Gradio, Streamlit, Interactive Dashboards

⚙️ Tools, Libraries & Tech

  • OpenCV, Pandas, NumPy
  • Hugging Face, Serper API, LiteLLM
  • API Integration, Agent-API Orchestration

💻 DevOps, Deployment & Cloud

  • Docker, GitHub Actions (CI/CD)
  • Render, Hugging Face Spaces, Vertex AI
  • Jupyter, Colab, VS Code, Cursor

🧪 MLOps & Experimentation

  • Experiment Tracking, Model Versioning
  • Feature Stores, Model Registries
  • Kaggle Notebooks & Competitions

📜 Certifications


Let's Connect:


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“Automation is not the end of work — it’s the evolution of intelligence.” Thanks for stopping by!
Let’s connect, collaborate, and build something extraordinary together. 🚀

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  1. Pearls-Karachi-AQI-Prediction-for-next-3-days- Pearls-Karachi-AQI-Prediction-for-next-3-days- Public

    End-to-end AQI Prediction System using real-time weather & pollutant data, with automated ML pipelines and a Streamlit dashboard.

    Jupyter Notebook 1 1

  2. Execute_Ai_Genesis_Hackathon_Lablabai_april2025 Execute_Ai_Genesis_Hackathon_Lablabai_april2025 Public

    ShopSmart.Ai - An intelligent shopping Assistant built with CRewAi

    Jupyter Notebook 4 1

  3. Detect_AI_vs_Human_Generated_Image Detect_AI_vs_Human_Generated_Image Public

    A deep learning-based model to distinguish between AI-generated and human-created images. This repository includes data preprocessing, model training (ConVitX with ConvNeXt and Swin Transformer), e…

    Jupyter Notebook 1

  4. Blood-Glucose-Levels-Prediction-2024-kaggle-competition Blood-Glucose-Levels-Prediction-2024-kaggle-competition Public

    "Predicting blood glucose levels using advanced machine learning techniques, including XGBoost, LightGBM, CatBoost, Random Forest, TabNet, and model stacking/ensembling with K-Fold cross-validation…

    Jupyter Notebook 2 1

  5. BirdClef-2025-Kaggle BirdClef-2025-Kaggle Public

    BirdCLEF 2025 soundscape classification project using deep learning (SeresNeXt26t) with PyTorch, pseudo-labeling, and audio preprocessing for bird species identification.

    Jupyter Notebook 1

  6. Kaggle-Competitions Kaggle-Competitions Public

    My Kaggle competition notebooks, analysis, and ML solutions , updated regularly with new challenges.

    Jupyter Notebook 1