ETIC, Machine Learning, Senior Associate

Cairo - ETIC, Egypt

PwC

We unite expertise and tech so you can outthink, outpace and outperform​.

View all jobs at PwC

Apply now Apply later

Line of Service

Advisory

Industry/Sector

Technology

Specialism

Advisory - Other

Management Level

Senior Associate

Job Description & Summary

As a Machine Learning Engineer in the FS AI team you will use techniques such as machine learning and natural language processing to realise authentic, data-driven change and solutions.The team reports to the board and commercial executive and works with clients and PwC leadership across our business units to enhance performance and have impact on value creation.

ResponsibilitiesĀ 

Ā 

  • Designing and developing data science and machine learning assets for PwC and its clientsĀ 

  • Contributing effective, useful code to our Data Science codebaseĀ 

  • Participating in constant learning through training and skills developmentĀ 

  • Deploying and managing machine learning models in production environments, ensuring scalability, reliability and performance monitoringĀ 

  • Embedding Responsible AI practices across the model lifecycle, ensuring fairness, transparency, explainability, bias mitigation and compliance with ethical and regulatory standardsĀ 

  • Contributing to the strategy and growth of a fast developing data science capabilityĀ 

  • Craft and communicate compelling business ā€œstoriesā€ based on analytics insightĀ 

  • Business case and Proposal developmentĀ 

  • Presenting findings to senior internal and external stakeholdersĀ Ā 

  • Being part of this technology innovation effort of the FirmĀ 

Ā 

Key Skills RequiredĀ 

  • 4+ Years Experience

  • Statistical Analysis & Machine Learning Theory – Excellent understanding of statistics, machine learning techniques and algorithms. Hands-on experience with regression, classification, clustering and other classical statistical models and algorithms – Must have – AdvancedĀ 

  • Independently formulate hypotheses, choose and justify appropriate statistical tests and interpret resultsĀ 

  • Select, implement and tune ML algorithms (e.g. random forests, SVMs, gradient boosting) end-to-end, and explain the mathematical foundations and assumptions behind themĀ 

  • Hands-on experience designing and validating models for regression, classification and unsupervised learning tasksĀ 

  • Deep understanding of bias–variance tradeoff, regularization techniques, and feature selection methodsĀ 

  • Machine Learning Lifecycle Management – Experience delivering end-to-end solutions from data sourcing and preprocessing through model deployment and results interpretation – Must have – AdvancedĀ 

  • Architect and execute full pipelines—from data ingestion and feature engineering through model training, validation, deployment, monitoring and retraining, using best practices in reproducibility and CI/CDĀ 

  • Troubleshoot production issues (drift, latency, scaling) and optimise models for performance and costĀ 

  • Agile Methodologies – Ability to work effectively in an agile delivery environment, participating in sprint planning, stand-ups and retrospectives – Must have – IntermediateĀ 

  • Participate effectively in sprint planning, daily stand-ups and retrospectivesĀ 

  • Break work into user stories, estimate tasks and collaborate with product owners to groom the backlogĀ 

  • Requirements Gathering & Translation – Skill in partnering with product owners to translate business needs into data science requirements and success metrics – Must have – AdvancedĀ 

  • Lead interactions with stakeholders to outline clear business objectives and translate them into measurable data science success metrics.Ā 

  • Draft technical specifications and align on KPIs, risk factors and roadmap milestonesĀ 

  • Data Science Project Execution – Demonstrable track record of completing data science projects (professional, academic or personal) with a clear business focus – Must have – AdvancedĀ 

  • Own multiple data science projects from proof-of-concept through delivery, ensuring alignment with business value and timelinesĀ 

  • Document methodologies, maintain reproducible codebases and present actionable insights to senior leadershipĀ 

  • Python Programming – Strong programming skills in Python, including libraries like pandas, NumPy, scikit-learn and others for data manipulation and modeling – Must have – AdvancedĀ 

  • Write clean, modular, well-tested Python codeĀ 

  • Build custom utilities or packages, optimize critical code paths (vectorization, parallelism) and manage dependenciesĀ 

  • SQL Querying & Data Manipulation – Practical knowledge of SQL for extracting, transforming and loading data from relational databases – Must have – IntermediateĀ 

  • Extract and join complex datasets from relational databases, write performant queries (window functions, CTEs) and perform ETL tasksĀ 

  • Version Control & Git – Proficiency with Git for source code management, branching strategies, merging, and collaborative workflows – Must have – IntermediateĀ 

  • Use feature branching, pull requests and code reviews in a team settingĀ 

  • Data Science Communication – Ability to articulate complex data science concepts and results clearly to both technical and non-technical stakeholders – Must have – IntermediateĀ 

  • Craft clear, concise narratives around model design, performance and business impact for both technical and non-technical audiencesĀ 

  • Design and deliver visuals (e.g. dashboards, slide decks, annotated charts) that guide stakeholders through your methodology, results and recommended actionsĀ 

  • Team Collaboration & Knowledge Sharing – Enjoy working in cross-functional teams and learning from peers, contributing to collective problem-solving – Must have – IntermediateĀ 

  • Mentor junior engineers and foster a culture of continuous learningĀ 

  • Contribute to peer code reviews, internal tech talks or knowledge sharing sessionsĀ 

Ā 

Nice to haveĀ 

  • Deep Learning Frameworks – Proficiency with frameworks such as TensorFlow, PyTorch, Keras, Theano or CNTK for building and training neural networks – IntermediateĀ 

  • Cloud Computing Platforms – Experience working in cloud environments (Azure, GCP or AWS), including managing resources, pipelines and scalable deployments – IntermediateĀ 

  • Privacy Enhancing Techniques (PETs) – Some experience with homomorphic encryption, federated learning, differential privacy etc.Ā  – IntermediateĀ 

Ā 

Relevant experience areasĀ 

Machine Learning, Generative AI, MLOps & CI/CD, Cloud Native ML Services,Ā 

Ā 

Education (if blank, degree and/or field of study not specified)

Degrees/Field of Study required:

Degrees/Field of Study preferred:

Certifications (if blank, certifications not specified)

Required Skills

Optional Skills

Accepting Feedback, Accepting Feedback, Active Listening, AI Implementation, Analytical Thinking, C++ Programming Language, Communication, Complex Data Analysis, Creativity, Data Analysis, Data Infrastructure, Data Integration, Data Modeling, Data Pipeline, Data Quality, Deep Learning, Embracing Change, Emotional Regulation, Empathy, GPU Programming, Inclusion, Intellectual Curiosity, Java (Programming Language), Learning Agility, Machine Learning {+ 26 more}

Desired Languages (If blank, desired languages not specified)

Travel Requirements

0%

Available for Work Visa Sponsorship?

No

Government Clearance Required?

No

Job Posting End Date

Apply now Apply later

* Salary range is an estimate based on our AI, ML, Data Science Salary Index šŸ’°

Job stats:  0  0  0

Tags: Agile AWS Azure CI/CD Classification Clustering Data analysis Data quality Deep Learning Engineering ETL Feature engineering GCP Generative AI Git GPU Java Keras KPIs Machine Learning ML models MLOps Model deployment Model design Model training NLP NumPy Pandas Pipelines Privacy Python PyTorch RDBMS Responsible AI Scikit-learn SQL Statistics TensorFlow Theano Unsupervised Learning

Perks/benefits: Career development Transparency

Region: Middle East
Country: Egypt

More jobs like this