Software Engineer III

FactSet
London
2 months ago
Applications closed

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Data Engineer III - Data Consumption, Access and SD - Chase UK

Software Engineer

Software Engineer

Software Engineer

Software Engineer

Software Engineer

Time left to apply End Date: March 31, 2025 (30+ days left to apply)

Please read the following job description thoroughly to ensure you are the right fit for this role before applying.Job requisition id R26624At FactSet, we're working to be the best financial data provider. We need highly motivated, talented individuals empowered to find answers through creative technology to get there.As a Software Engineer in Data Solutions Engineering, you will be part of our Digital Transformation, a mission to automate our data acquisition, quality assurance, content creation, and analytics in a scalable cloud environment. With the guidance of financial experts, you will leverage these large data sets to improve the quality and extend the scope of FactSet's existing and next-generation products.You will be working on private market data, which are heterogeneous and voluminous datasets. With the right tools and problem-solving, we want to automate data collection at scale and infer information. The end goals are company classification, tag extraction, relationship mapping, and company valuation. There is huge potential for machine learning, analytics, and NLP.Your responsibilities:Build and scale an automatic data pipeline

Ingest and analyze various data sources to drive innovation in content creation.Automate the acquisition, relevance scoring, and storage of incoming sources.Develop processes for data mining, data concordance, and data production.Explore and evaluate new data technologies to build a scalable, cloud-oriented data platform.Optimize data retrieval and develop dashboards and other visualizations for financial experts.

Participate in different projects as a data scientist and data engineer

Deliver clean, well-tested code that’s reliable, maintainable, and scalableBuild predictive models and communicate results with stakeholdersDeploy working solutionsDevelop dashboards and other visualizations for financial experts.Develop processes for data collection, quality assessment, and quality control.

Keep up to date / share your passions

Stay up to date with state-of-the-art approaches and technological advancementShare your passion for science, ML, and technology

Who are you?You have

BS or MS in Computer Science or Mathematics related field .You have

3+ years

of experience as a Software Engineer or Data Scientist.You have a successful history of writing and releasing production-grade code in an enterprise environment.You are a team player and adept at learning new technologies and client workflowsYou have experience working with

Agile methodology .You have strong

analytical skillsYou can communicate about complex subjects to non-technical stakeholdersYou are familiar with

Terraform ,

Python ,

Pandas , and

NumPyIt is great if you have:Experience with Neural Networks / Deep Learning.Experience with information extraction, parsing, and segmentation.Experience with machine learning frameworks ( sklearn …)

and ML workflow.Experience with NLP libraries and text preprocessing (nltk, SpaCy, language models, ...).Experience with cloud environments: AWS, Azure.Experience with business intelligence tools like Tableau or PowerBI.Experience working with LLMs.Experience working with AWS Services like EC2, RDS(Postgres), SQS, Sagemaker, MLflow, S3, API gateway, ECS.Experience in UI frameworks like VueJS is a plus.About Us FactSet creates flexible, open data and software solutions for tens of thousands of investment professionals around the world, providing instant access to financial data and analytics that investors use to make crucial decisions. Join a team of highly motivated, talented individuals who are empowered to find answers through creative technology.

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