Graduate Machine Learning Engineer (AI) [Urgent]

Ashdown Group
Crawley
10 months ago
Applications closed

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A multinational technology firm is looking for apersonable IT graduate with a passion for development to join itsteam, based in Manchester. As the business embraces flexibility,you can work from home up to 3 days per week. Working with a largeteam of developers in a fast-paced, dynamic environment, you willdevelop innovative web-based user interfaces that utilise ML toenhance the customer experience. You will craft user interfacesusing the latest JavaScript frameworks, HTML5, and CSS3, bringingcutting-edge AI-driven applications to life. You will build uponyour existing web development and design skills in a supportive andcollaborative environment. This role would suit an intelligent andpersonable web developer who is passionate about technology andinterested in AI and ML. To be considered for this role, you musthave a good degree in a relevant subject (IT, Computer Science, orsimilar), and a desire to build a career in web development. Inorder to be suitable for this position, you must have a secureunderstanding of core web technologies, including: JavaScript,HTML5, and CSS3. It is expected that you will also be familiar withAJAX or JSON for data exchange and have knowledge of JavaScriptframeworks. Knowledge of a server-side language such as Java, andof Artificial Intelligence and Machine Learning would beadvantageous to your application. This is an outstandingopportunity for a graduate to take the first step in their careerat a market-leading business that invests heavily in its staff andoffers a clearly defined career path. #J-18808-Ljbffr

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