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  • Hi πŸ‘‹ I'm Owais, a Data Scientist with an M.Tech in Statistical Computing from JNU⚑⚑.
  • Currently rocking as an AI Engineer at IBM! πŸš€ Let's team up for some creative content collaborations.
  • πŸ’‘ Fun fact: I'm all about diving deep into data, spotting trends, and crafting scalable data pipelines.
  • I love learning new stuff and sharing knowledge! πŸ“ˆ
  • πŸ“§ Reach out in a flash: [email protected] πŸš€

mailto:owaiskhan9654@gmail.com GitHub badge LinkedIn hacker Earth Kaggle Me+Website Stack Overflow

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Owais Ahmad's Projects

image-table-ocr icon image-table-ocr

Turn images of tables into CSV data. Detect tables from images and run OCR on the cells.

langchain icon langchain

⚑ Building applications with LLMs through composability ⚑

mach icon mach

Extreme Classification in Log Memory via Count-Min Sketch

manim icon manim

Animation engine for explanatory math videos

ml_dl-tutorials icon ml_dl-tutorials

Supplementary Machine Learning and Deep Learning tutorial sessions with code to AMMI program 2019-2020 cohort.

models icon models

A collection of pre-trained, state-of-the-art models in the ONNX format

models-1 icon models-1

Models and examples built with TensorFlow

multi-label-classification-of-pubmed-articles icon multi-label-classification-of-pubmed-articles

The traditional machine learning models give a lot of pain when we do not have sufficient labeled data for the specific task or domain we care about to train a reliable model. Transfer learning allows us to deal with these scenarios by leveraging the already existing labeled data of some related task or domain. We try to store this knowledge gained in solving the source task in the source domain and apply it to our problem of interest. In this work, I have utilized Transfer Learning utilizing BertForSequenceClassification model. Also tried RobertaForSequenceClassification and XLNetForSequenceClassification models for Fine-Tuning the Model.

notebooks icon notebooks

Notebooks using the Hugging Face libraries πŸ€—

notebooks-1 icon notebooks-1

Set of Jupyter Notebooks linked to Roboflow Blogpost and used in our YouTube videos.

owaiskhan9654 icon owaiskhan9654

This repo contains my achievements and tracks my progress and contributions to open source community

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