Junior Machine Learning Engineer (3 Days Left)

Searchability (Uk)
London
2 months ago
Applications closed

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Junior Machine Learning Engineer * Job Title: JuniorMachine Learning Engineer * Location: London * Employment Type:Full-time, Permanent * Salary: £35,000 – £60,000 per annum Aboutthe client: We are thrilled to partner with an award-winningtelecommunications provider on their mission to become the UK’smost desirable telecoms provider. With recent acquisitions fuellingrapid growth, this leading-edge organisation is looking tostrengthen their London-based team with the addition of apassionate and skilled Junior Machine Learning Engineer. TheBenefits: * Competitive salary: £35,000 – £60,000 per annum *Hybrid working options, allowing you the flexibility to work bothremotely and in-office * Private Medical Insurance and LifeAssurance * Generous Company Pension Scheme * 25 days’ annualleave, with an additional day added each year (up to 35 days) *Exclusive retail discounts The Junior Machine Learning role: As aJunior Machine Learning Engineer, you’ll be part of a dynamic teamtasked with delivering meaningful, data-driven insights andsolutions that will shape the future of the UK’s telecommunicationslandscape. Your expertise will drive impactful changes, workingdirectly on high-visibility projects that require a collaborativeapproach. Our client values flexibility and an open-mindedapproach, and seeks someone eager to tackle challenges and embraceimperfection along the way—ideal for someone who values real-worldsolutions over theoretical perfection. This is an excellentopportunity for a Junior Machine Learning Engineer to apply theirtechnical acumen with SageMaker and Snowflake while contributing toa high-performing team with a culture of shared success. KeyResponsibilities: * Design, build, and deploy scalable machinelearning models, supporting key projects across the company *Optimise data pipelines and workflows, ensuring robust integrationwith AWS SageMaker and Snowflake platforms * Collaborate closelywith cross-functional teams to identify and implement actionableinsights that align with business objectives * Test, iterate, andrefine models, staying adaptable to evolving project requirements *Contribute to the organisation’s machine learning and datastrategy, enhancing model quality and predictive capabilitiesMachine Learning Engineer – Essential requirements: * Minimum of 1year’s experience in a similar Machine Learning Engineering role *Knowledge of AWS SageMaker and Snowflake, with hands-on experiencein model deployment and data warehousing * Degree qualified (BSc orMSc) in Mathematics, Data Science, Computer Science, or a relatedfield * Must be a UK Citizen (British, EU Settled, or with ILRstatus) * Proven ability to collaborate effectively within a teamand communicate complex technical ideas to non-technicalstakeholders * Ability to work iteratively, embracing challengesand quickly adapting to feedback To be considered… Please apply byclicking online or emailing me directly . For further information please callme on . By applying for this role, you give expressconsent for us to process and submit your application to our clientin conjunction with this vacancy only. Key Skills: AWS SageMaker,Snowflake, Data, Engineering, Communication, Machine LearningJ-18808-Ljbffr

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