▷ [Only 24h Left] Data Scientist – PwC | Visa SponsorshipAvailable

HipHopTune Media
Manchester
3 weeks ago
Applications closed

Are you a data-driven problem solver with expertise inmachine learning and data manipulation? PwC is looking for a DataScientist to join its innovative team. This role requires hands-onexperience with machine learning techniques and proficiency in datamanipulation libraries such as Pandas, Spark, and SQL. As a DataScientist at PwC, you will work on cutting-edge projects, usingdata to drive strategic insights and business decisions. If youhave strong analytical skills and a passion for turning complexdatasets into actionable solutions, this opportunity is for you.PwC offers visa sponsorship, making this an excellent opportunityfor talented professionals seeking to advance their careers in aleading global firm. About PwC PwC is a global professionalservices firm dedicated to building trust in society and solvingimportant problems. This commitment shapes the services it offersand the decisions it makes. More than just size or short-termrevenue growth, PwC prioritizes genuine leadership and long-termimpact. Founded in 1849 by Samuel Price as a sole tradingaccountant, PwC has grown into a leading professional servicesfirm, with a diverse community of 370,000 professionals across 149countries. The firm continuously evolves, embracing innovation andtransformation while maintaining trust and quality at its core.With a history of excellence, PwC remains a human-led, tech-poweredbusiness, ready to help clients navigate the challenges of thefuture. Position: Data Scientist Job Type: Full Time Location:London, Birmingham, Leeds and Manchester About the Role Line ofService: Internal Firm Services Specialism: IFS – Internal FirmServices – Other About the role: The AI and Emerging Technologiesteam identifies and develops AI solutions that solve hard problemsfor PwC and for its clients. Our team works at the frontier of AIand ML in professional services. We work across multipleindustries, including healthcare, financial services, andprofessional services. We are looking for people to contribute tothe development of AI tools and solutions, and help the businessbuild capabilities on cutting-edge AI and NLP techniques. We’recurrently looking for a motivated, self-starter individual,comfortable with ambiguity, and willing to work in across-functional environment, with 2+ years of experience in datascience, to join us across our Manchester, Leeds, Birmingham, andLondon offices. What your days will look like: - SolutionDevelopment: Contribute to designing, developing and scaling AI andNLP solutions addressing specific business problems oropportunities. - AI Strategy: Contribute to the organisation’s AIstrategy by identifying opportunities for leveraging AItechnologies to drive innovation, improve business processes, andenhance decision-making. - Model Development and Evaluation:Contribute to the development, deployment, and evaluation of AImodels and to the deployment and evaluation of off the shelf AImodels. - Collaboration and Stakeholder Management: Help the widerteam collaborating with business stakeholders, technology teams,and other relevant groups to understand their needs, gatherrequirements, and align AI solutions with organisational goals. -Prototyping, developing, and deploying machine learningapplications into production. - Contributing to our machinelearning enabled, business-facing applications. - Contributingeffective, high quality code to our codebase. - Model validationand model testing of production models. - Presenting findings tosenior internal and external stakeholders in written reports andpresentations. This role is for you if: - Python for API and Modeldevelopment (Machine learning frameworks and tooling e.g. Sklearn)and (Deep learning frameworks such as Pytorch and Tensorflow). -Understanding of machine learning techniques. - Experience withdata manipulation libraries (e.g. Pandas, Spark, SQL). - Git forversion control. - Cloud experience (we use Azure/GCP/AWS). Skillswe’d also like to hear about: - Evidence of modelling experienceapplied to industry relevant use cases. - Familiarity with workingin an MLOps environment. - Familiarity with simulation techniques.- Familiarity with optimisation techniques. What you’ll receivefrom us: No matter where you may be in your career or personallife, our benefits are designed to add value and support,recognising and rewarding you fairly for your contributions. Weoffer a range of benefits including empowered flexibility and aworking week split between office, home and client site; privatemedical cover and 24/7 access to a qualified virtual GP; sixvolunteering days a year and much more. Required Documents -CV/Resume Application Process APPLY TODAY and be part of a teamthat thrives on innovation and problem-solving.#J-18808-Ljbffr

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