Data Scientist

Deloitte Philadelphia , PA 19107

Posted 4 days ago

Position Summary

Data Scientist for

ConvergePROSPERITY, Deloitte Consulting

Are you looking for an organization with start-up spirit AND enterprise strength? Deloitte's ConvergePROSPERITY hybrid business offers both! You will be key member of the ConvergePROSPERITY Growth Engines team as a data scientist. ConvergePROSPERITY is hybrid business that is committed to partnering with our clients to enable financial security and prosperity for all. The Growth Engines team builds and manages solutions to improve customer relationships, enable accelerated acquisition, and improved customer stickiness.

You will help lead a team focused on developing cutting-edge quantitative solutions that address our client's most challenging problems in the financial services industry. You will be providing advanced technical leadership, guiding research and applications of quantitative methods, but will also provide direct supervision, mentorship, support, guidance, and oversight for the team. This is an exciting, hands on role that will stretch your knowledge and curiosity, offering the opportunity to deepen your skills, and solve novel problems.

Key Responsibilities:

  • Apply data science techniques to solve complex business problems

  • Explain analytics model behavior / results in the vernacular of the market need

  • Build, test, validate and demonstrate analytical models through various relevant error metrics and calibration techniques

  • Deploy models into production

  • Perform exploratory data analysis to define analytical models

  • Consistently strive to acquire new skills on AI / ML, Cloud, Big Data technologies

  • Support and coach your team on best coding practices, development tools, and pathfinding and surveys for technologies

  • Ensure SDLC best practices and standards are followed

Qualifications:

  • A BA/BS degree in Computer Science, Statistics, Data Science, Engineering, Applied Mathematics, or similar Quantitative Field with a minimum 2+ yrs. of experience as data scientist

  • An advanced degree in Engineering, Statistics, Data Science, Applied Mathematics, Computer Science, Physics, Computational Biology, Computational Chemistry or related quantitative field

  • Expert understanding of a programming language such as Python

  • Demonstrated ability to write high-quality, production-ready code

  • Demonstrated ability to develop novel machine learning methods that go beyond putting together of existing code, and to apply problem-solving skills to complex issues

  • Previous financial services industry experience

  • Proven ability to successfully collaborate with internal stakeholders from various levels and areas of the organization and drive successful outcomes cross-functionally

  • Excellent written and verbal communication skills

  • Ability to work autonomously and collaboratively as part of a team to both teach and learn every day

Qualifications:

  • Experience with at least one Deep Learning framework such as PyTorch or TensorFlow/Keras

  • Familiarity with cloud computing services (AWS, GCP, or Azure)

  • Experience with product management or product marketing for software, analytics and/or SaaS-based products

  • Experience working closely with an engineering organization to define applications and manage them through the entire product lifecycle

  • Must be legally authorized to work in the United States without the need for employer sponsorship, now or at any time in the future.

#ConvergePROSPERITY2021 #Converge

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Benefits

At Deloitte, we know that great people make a great organization. We value our people and offer employees a broad range of benefits. Learn more about what working at Deloitte can mean for you.

Our people and culture

Our diverse, equitable, and inclusive culture empowers our people to be who they are, contribute their unique perspectives, and make a difference individually and collectively. It enables us to leverage different ideas and perspectives, and bring more creativity and innovation to help solve our client most complex challenges. This makes Deloitte one of the most rewarding places to work. Learn more about our inclusive culture.

Professional development

From entry-level employees to senior leaders, we believe there's always room to learn. We offer opportunities to build new skills, take on leadership opportunities and connect and grow through mentorship. From on-the-job learning experiences to formal development programs, our professionals have a variety of opportunities to continue to grow throughout their career.

As used in this posting, "Deloitte" means Deloitte Consulting LLP, a subsidiary of Deloitte LLP. Please see www.deloitte.com/us/about for a detailed description of the legal structure of Deloitte LLP and its subsidiaries.

All qualified applicants will receive consideration for employment without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, age, disability or protected veteran status, or any other legally protected basis, in accordance with applicable law.

Deloitte will consider for employment all qualified applicants, including those with criminal histories, in a manner consistent with the requirements of applicable state and local laws. See notices of various ban-the-box laws where available.

Requisition code: 69642

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Data Scientist

Deloitte