I will build custom computer vision systems using yolo, sam, clip and deep learning
About this Gig
I will develop advanced Computer Vision solutions for image and video analysis using deep learning.
I build custom AI systems for automation, surveillance, healthcare, and analytics using modern vision models.
Services I Offer
Object Detection & Tracking systems (YOLO-based detection pipelines)
Image Segmentation using modern models such as SAM-based segmentation
Pose Estimation systems for fitness, physiotherapy, and activity analysis
Face Detection and Recognition systems
Vision-Language search systems using CLIP models
AI Surveillance solutions (person detection, tracking, behavior analysis)
OCR and document analysis from images or reports
3D visualization of medical or imaging data
Custom model training and optimization on your dataset
Tech Stack
Python, OpenCV, PyTorch, TensorFlow, YOLO, CLIP, SAM models, FastAPI, Streamlit
Use Cases
Security and surveillance systems
Healthcare and medical imaging applications
Automation and robotics projects
Research and academic AI projects
If you have a specific idea or project, send me a message and we can design a custom Computer Vision solution.
Programming language:
Python
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SQL
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Colab
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MLflow
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Amazon SageMaker
Frameworks:
Scikit-learn
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DeepPy
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Keras
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PyTorch
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Panda
My Portfolio
Other Data Science & ML Services I Offer
FAQ
Q1: Can you train a model using my custom dataset?
A: Yes! I can preprocess, clean, and train a model on your dataset (images, video frames, or annotations). You can provide data in formats like JPG, PNG, CSV, COCO, or Pascal VOC.
Q2: Will you help with deployment or integration?
A: Absolutely. I offer deployment via Flask or FastAPI and can also help with Docker, Streamlit UI, or exporting the model to TensorFlow Lite, ONNX, or even Raspberry Pi/Jetson Nano.
Q3: Do you handle annotation or labeling of raw images?
A: Yes! I can help annotate your dataset using tools like LabelImg or CVAT, or I can guide you to use online tools like Roboflow to speed up the process.

