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Awais N. - Fullstack Developer, Deep Learning Framework, Backend

Being part of Softaims has allowed me to see the full spectrum of what technology can achieve when guided by empathy, discipline, and creativity. Each assignment, regardless of size, represents an opportunity to bring clarity to complexity and to turn ambitious ideas into tangible outcomes. I’ve come to realize that successful development isn’t just about writing code—it’s about listening carefully, understanding deeply, and designing thoughtfully. Every client brings unique challenges, and I make it a priority to align my work with their goals, ensuring that the end result is both effective and lasting. Softaims fosters an environment where collaboration is not optional—it’s essential. The collective expertise within the team pushes me to think beyond conventional boundaries, to question, refine, and innovate. I believe that this process of shared learning and experimentation is what makes our solutions resilient and impactful. My ultimate goal is to build technology that feels effortless to use yet powerful in function. I approach every task with the mindset that small details can make a big difference. Through continuous refinement and dedication, I aim to contribute to the kind of work that not only serves today’s needs but anticipates tomorrow’s possibilities.

Main technologies

  • Fullstack Developer

    4 years

  • Natural Language Processing

    3 Years

  • Data Science

    2 Years

  • Deep Learning

    1 Year

Additional skills

  • Natural Language Processing
  • Data Science
  • Deep Learning
  • Machine Learning
  • Data Scraping
  • Python
  • Data Visualization
  • Data Analysis
  • Chatbot Development
  • Artificial Neural Network
  • LLM Prompt Engineering
  • Artificial Intelligence
  • Web Scraping
  • AI Chatbot
  • Deep Learning Framework
  • Backend

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Experience Highlights

Mental Health AI Agents

This project uses GPT API for mental health counseling by simulating expert opinions from various therapy techniques like CBT, Psychodynamic, and Mindfulness Therapy. Dynamic prompting incorporates topic inputs, few-shot examples, and social determinants of health (SDoH) to generate personalized advice. Counseling responses are evaluated on psychotherapy factors like empathy, engagement, and alliance capacity, ensuring high-quality guidance. This approach combines AI with psychotherapy expertise to deliver tailored mental health support.

Forecast Sales using Machine Learning

In this project, I developed machine learning models to forecast sales using a variety of algorithms, including Linear Regression, Random Forest Regressor, XGBoost Regressor, and LSTM-based reinforcement learning. Trained and evaluated these models using sales data from 10 retail stores, assessing performance with metrics such as mean squared error, mean absolute error, and R2 score. This analysis helps businesses forecast sales trends and make strategic budget decisions while offering flexibility for further optimization.

Data Analysis and Visualization

In this project, I conducted a comprehensive data analysis and visualization of a video game sales dataset. The analysis involved exploring sales trends across various platforms, genres, and regions using Python libraries such as pandas, NumPy, and Matplotlib. The insights gained from this analysis help game publishers and platform developers make informed decisions, particularly highlighting the dominance of North America and Europe in sales and the potential of specific genres in Japan. This project also emphasized the importance of data-driven strategies in the gaming industry.

Fine-tuning LLaMA

Fine-tuned LLaMA for Diagnosis-Related Group (DRG) prediction using sequence classification on hospital discharge summaries. The model processes MIMIC-IV clinical data, extracting brief hospital courses to classify them into standardized DRG codes. Implemented LoRA-based fine-tuning on LLaMA-7B, optimizing training efficiency. Integrated a Gradio interface for live inference, enabling seamless DRG prediction. Used preprocessing pipelines to map multi-year DRG data into a unified version.

AI Multi Classifier Chat Analysis

I developed a multi model NLP pipeline to classify chatbot queries by sentiment, emotion, intent, and topic for an educational platform. And deployed on AWS SageMaker with Airflow triggers, it processes 200+ queries daily in GPU batches and stores results in RDS. I used RoBERTa for sentiment and DeBERTa for zero shot classification. Automated with lifecycle scripts for cost efficiency $5/day, the system provides structured insights for downstream analytics and personalization, with future ready support for real-time and multilingual expansion.

Education

  • University of Engineering and Technology, Lahore

    in

    2013-01-01-2017-01-01

  • Punjab College of Science

    in

    2011-01-01-2013-01-01

  • Allama Iqbal High School

    in

    2003-01-01-2011-01-01

  • The University of Texas at Austin

    Master's degree in Data Science

    2023-01-01-2025-01-01

Languages

  • English