Machine Learning Engineer - (Python, NLP, AWS, API, Docker)- Hybrid

TN United Kingdom
London
3 days ago
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Social network you want to login/join with: MachineLearning Engineer - (Python, NLP, AWS, API, Docker) - Hybrid,Greater London Client: FactSet Location: Greater London, UnitedKingdom Job Category: Other EU work permit required: Yes JobReference: aff77cd3f63d Job Views: 6 Posted: 03.03.2025 ExpiryDate: 17.04.2025 Job Description: Responsibilities 1. Architect anddesign groundbreaking machine learning techniques tailored tofinancial tasks within Knowledge Graphs, creating innovativesolutions that extend beyond traditional applications. 2. Enhanceand scale our AWS-based infrastructure to ensure the efficient,reliable delivery of ML and AI solutions, including the integrationof LLM. 3. Work closely with data scientists and ML engineers tointegrate and manage diverse ML and NLP models within productionenvironments effectively. Offer expert advice on model selectionand deployment strategies. 4. Manage the entire softwaredevelopment lifecycle, from the initial design and coding throughto testing and the deployment of financial AI applications. 5.Construct and maintain robust data pipelines capable of processingcomplex structured and unstructured financial data, guaranteeingthe highest quality inputs for our models. 6. Act as a mentor toteam members, promoting a culture of innovation and continuouslearning within the team. Minimum Requirements: 1. 3-5 years ofprofound software engineering experience, significantly focused onAI/ML solutions in production environments. Skills: 1. Demonstratedexpertise in cloud architecture (primarily AWS) and familiaritywith a broad range of services. 2. Solid understanding of NaturalLanguage Processing/Machine Learning/Deep Learning fundamentals andtheir real-world applications, evidenced by a successful history ofmodel development and deployment. 3. Proficient in Python, withstrong skills in Docker and API development. 4. Excellentcommunication abilities, capable of engaging both technical andbusiness audiences alike, and leading cross-functional projects. 5.Knowledge of major database architectures including MongoDB, SQL,NoSQL, and Vector databases. Additional/Desired Skills: 1.Experience with Knowledge Graphs and architecting LLM-poweredsolutions. 2. Deep familiarity with the financial data, itsapplications, and specific industry challenges. 3. Expertise in NLPlibraries such as nltk and SpaCy and proficiency in unstructuredtext analysis. 4. Demonstrable leadership capabilities andexperience in mentoring or leading a team. Education: 1. An MSdegree in Machine Learning, Computer Science, or a related field ispreferred. Key Technologies: 1. Python 2. Deep Learning Frameworks:Tensorflow, Keras, PyTorch 3. NLP/Chatbot Technologies 4. CloudPlatforms: AWS, Azure 5. Graph Technology: Neo4j Why Join Us? 1.High-Impact Work: Your work will directly impact how financialprofessionals globally make pivotal decisions. 2. Collaborative,Innovative Team: Collaborate with top-tier engineers and scientiststo advance the frontier of financial AI. 3. Focus on Growth:FactSet is dedicated to continuous learning and offers ampleopportunities for professional development. Join us to push theboundaries of financial analytics and technology, harnessing yourskills to make a significant impact in the industry.J-18808-Ljbffr

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