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Awais Nazir

NUST · 2026
Email
owaisnazir2228@gmail.com
Phone
923219834547
LinkedIn
https://www.linkedin.com/in/awais-nazir-92b08316b
GitHub

Academic

Program
BESE
CGPA
3.65
Year
2026
Education
SEECS
Address
Rawalpindi, Pakistan
DOB

Career

Current role
Target role
Skills
PyTorch, TensorFlow, Transformers, GANs, Computer Vision, NLP, Vector Databases, AWS, Lambda, SQS, EC2, API Gateway, ALB, ASG, Docker, CI/CD, TensorRT, Multithreaded pipelines, Queue-driven architectures, Parallel CPU/GPU execution, Inference optimization, Autonomous AI agents, Adaptive web interaction, Reinforcement learning, Temporal event detection, MLOps, OpenAI CLIP, Milvus, Facial recognition, Siamese network, Cosine similarity, Image processing, Pix2Pix GAN

Verbatim text

The exact text the LLM saw on the page (or the booklet text from the old import). This is what powers semantic search.
Awais Nazir
Cell: 923219834547 |  Email: owaisnazir2228@gmail.com
LinkedIn: https://www.linkedin.com/in/awais-nazir-92b08316b
Address: HOUSE#404 STREET#15 LANE#5 LALAZAR ESTATE, RAWALPINDI , Rawalpindi , Pakistan
PROFESSIONAL PROFILE
Machine Learning Engineer and final-year Software Engineering student at NUST, with strong industry and research experience in
artificial intelligence, computer vision, and scalable machine learning systems. Experienced in building production-ready, low-
latency ML pipelines and deploying end-to-end AI solutions in real-world environments.
Technical Expertise: PyTorch, TensorFlow, Transformers, GANs, Computer Vision, NLP, Vector Databases
MLOps & Cloud: AWS (Lambda, SQS, EC2, API Gateway, ALB, ASG), Docker, CI/CD, GPU acceleration (TensorRT)
Systems & Performance: Multithreaded pipelines, queue-driven architectures, parallel CPU/GPU execution, inference
optimization
Applied Research: Autonomous AI agents, adaptive web interaction, reinforcement learning, temporal event detection
Proven ability to bridge research and production, having reduced inference latency by ~40% in deployed systems and delivered
scalable ML solutions across cloud-native architectures. Actively researching autonomous AI agents and adaptive web
interaction, with a strong passion for applying cutting-edge AI research to solve complex, real-world problems with measurable
impact.
EDUCATION
BESE (Bachelors Of Software Engineering)
School of Electrical Engineering and Computer Sciences (SEECS) , Islamabad , 3.65 (2026)
INTERNSHIP EXPERIENCE
Pineamite Limited
01-Dec-2024 - 09-Jan-2026
1. Designed and optimized multithreaded, queue-driven ML pipelines enabling parallel CPU and GPU execution, achieving ~40%
reduction in end-to-end inference latency. 2. Built and deployed scalable, cloud-native ML workflows on AWS for UK rally car racing
telemetry using Lambda, SQS, API Gateway, EC2, ALB, ASG, and containerized services. 3. Developed a temporal event-detection
model using Transformer Encoder architecture to accurately localize critical racing events from time-series data. 4. Implemented
GPU acceleration and inference optimization using TensorRT to improve performance in production environments. 5. Applied MLOps
best practices including version control, containerization, automated deployment, and monitoring.
Made IT
01-Jun-2024 - 31-Aug-2024
1. Developed an AI-powered semantic search platform supporting text-based, image-based, and hybrid queries. 2. Utilized OpenAI
CLIP embeddings and Milvus vector database for efficient multimodal retrieval. 3. Designed similarity scoring using weighted fusion
of text and image embeddings to improve search relevance. 4. Conducted experiments and evaluations to validate retrieval accuracy
and system performance. 5. Developed a facial recognition system using Cosine similarity and Siamese network
NCAI TUKL Deep Learning Research Lab
01-Jun-2024 - 31-Aug-2024
1. Contributed to squash court ball tracking, addressing challenges such as occlusions and false positives through advanced
augmentation and tracking techniques. 2. Implemented and evaluated image processing and tracking pipelines, orchestrating end-to-
end evaluation scripts. 3. Developed a Pix2Pix GAN for generating building designs from sketches. 4. Improved image quality by

AI enrichment

Awais Nazir is a final-year Software Engineering student with a 3.65 CGPA and specialized experience in machine learning, computer vision, and MLOps. He has demonstrated practical skills in building scalable AI pipelines, optimizing inference latency, and deploying cloud-native solutions during internships at Pineamite Limited and Made IT.
Skills (AI)
["PyTorch", "TensorFlow", "Transformers", "Computer Vision", "NLP", "AWS", "Docker", "CI/CD", "TensorRT", "Vector Databases", "GANs", "MLOps"]
Status: ai_done
Provenance
Source file: SEECS - Software Engineering-2026(1).pdf
From job #260 page 26
Created: 1778138736