I specialise in building end-to-end machine learning solutions that turn complex data into actionable business insights. My experience spans the full data science lifecycle — from data extraction and preprocessing to model development, explainability, and deployment.

I’ve worked extensively with structured business data sources such as Salesforce, SharePoint, internal databases, and email systems, developing classification, clustering, and predictive models to support data-driven decision-making. My focus has been on Gradient Boosting, XGBoost, and LightGBM models, enhanced with calibration techniques and SHAP-based explainability for transparent and reliable predictions.

I’ve also built FastAPI-based prediction pipelines to operationalise machine learning models, incorporating comprehensive feature engineering, encoding methods, and skewness correction. On the unsupervised side, I’ve designed clustering systems using PCA and Yeo-Johnson transformations, evaluating performance through Silhouette, Davies–Bouldin, and Calinski–Harabasz indices to uncover meaningful customer or opportunity segments.

I have also built a full-stack predictive maintenance pipeline project, which predicts machine failure before it occurs and suggests a planned maintenance procedure to reduce downtime and prevent critical machine breakdown

I’m passionate about connecting data, automation, and business strategy, creating scalable, interpretable, and high-impact machine learning systems that drive measurable results.

Please find my CV attached below

Note: I have a transferable Iqama

--- CV ---
MOHAMMED MUSTAFA
AHMED
D A T A S C I E N T I S T | A I E N G I N E E R



Email: Phone: Address:
mustafa12042002 0595874698 Riyadh, Saudi
@gmail.com Arabia


PROFILE
Data Scientist & AI Engineer specializing in end-to-end ML systems and predictive maintenance solutions.
Experienced in building production-grade models (XGBoost, LightGBM, Gradient Boosting), real-time IoT pipelines,
explainable AI (SHAP), and full-stack deployments using FastAPI, AWS, MQTT, and LLM-powered insights to drive
operational intelligence and automation.


EXPERIENCE

AI ENGINEER
Nommas.ai Riyadh, Saudi Arabia
Aug 2025 - Jan 2026


Implemented an unsupervised learning approach to establish baseline operating conditions for industrial
equipment, enabling early detection of abnormal behaviour without reliance on labelled failure data.
Integrated a Retrieval-Augmented Generation (RAG) framework to ingest and reference machine documentation,
enhancing the contextual understanding of sensor anomalies and operational patterns.
Designed adaptive, machine-specific thresholds to account for variability across assets, improving the accuracy of
anomaly detection and reducing false positives.
Leveraged large language models to translate complex analytical outputs into clear, human-readable insights,
supporting faster interpretation and decision-making by operations and IT stakeholders.
Achieved a 55% reduction in equipment downtime and proactively prevented critical machinery failures through
AI-driven predictive maintenance in a manufacturing environment.



DATA SCIENTIST
Aldrich Research services Hyderabad, India
Feb 2025 - Jul 2025

Built a revenue prediction model to estimate conversion probability and expected deal value, enabling data-driven
prioritization of sales outreach across 10,000+ prospects.
Developed and deployed a customer churn prediction system using supervised learning and LLM-powered
explainability, automatically flagging at-risk customers and generating human-readable churn insights to support
retention teams.
Designed an Ideal Customer Profile (ICP) scoring model using behavioral and firmographic features to rank high-
value prospects, contributing to a 20% reduction in customer churn through improved targeting and engagement.
EDUCATION

BACHELORS IN COMPUTER SCIENCE ENGINEERING - CSE 2020- 2024
Osmania University Hyderbad, India


SKILLS

Python Programming Feature Engineering Langchain
SQL- Basic Model Evaluation Predictive Maintenance
Data Preprocessing RAG Gen-AI



PROJECTS


Sentiment Analysis using DLT & ML
Built sentiment analysis models leveraging both traditional Machine Learning (Logistic Regression, SVM) and
Deep Learning (LSTM, CNN) to classify customer reviews with high accuracy.

Big Sales Price Prediction
Developed a predictive model using Logistic Regression to forecast high-value sales outcomes, leveraging
customer and transactional data.

Stock Index Price Prediction
Implemented a Long Short-Term Memory (LSTM) deep learning model to predict stock index price trends using
time-series data.


TECHNICAL TOOLS & LIBRARIES


Python (Pandas, NumPy, Scikit-learn, ADDITIONAL
XGBoost, LightGBM) INFORMATION
Data Visualisation (Matplotlib, Seaborn,
Plotly)
SQL for Data Extraction & Analysis
Jupyter Notebook for Prototyping & Languages
Reporting
English
Tensorflow
Arabic
Langchain & Langraph
SHAP for model assessment
Iqama Status
Retrieval Augmented Generation (RAG) Transferable

Predictive Maintenance
Front-end (Streamlit)
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