Senior Data Scientist (AI Solutions)

Vilnius

Applications have closed

When you work at Nasdaq, you’re working for more open and transparent markets so that more people can access opportunities. Connections can be made, jobs can be created, and communities can thrive. We want all our employees to have access to opportunity, too. That means planning for career growth, ensuring you have the tools you need, and promoting an inclusive culture where we’re all valued for our unique perspective. 

Here, you will work for a global tech leader committed to breaking down barriers to inclusive prosperity. We see technology as a means to free people up to work together more productively and effectively by centralizing data, analytics, and market intelligence. 

As a Senior Data Scientist at Nasdaq, you will play a pivotal role in shaping the future of our data science and analytics capabilities. You will join a specialized team of AI researchers pushing the boundaries of AI innovation towards enhancing market transparency, efficiency, and integrity. You will lead a team of skilled data scientists, collaborate with cross-functional teams, and drive the development of data-driven solutions to address complex challenges in the financial industry. The ideal candidate should possess a proven background in machine learning and statistical modeling, and a deep understanding of the financial industry. 

What you will do: 

  • Develop high-performing AI solutions across the enterprise. 

  • Establish and maintain clear lines of communication, providing regular updates on project progress, insights, and potential impact on key performance indicators. 

  • Present findings and insights to non-technical stakeholders in a clear and understandable manner, fostering a collaborative environment for informed decision-making. 

  • Engage with key stakeholders to understand their business objectives and communicate the value proposition of data science initiatives. 

  • Collaborate with engineering teams to understand system architecture needs and constraints, actively contributing to the development of solutions that facilitate the seamless embedding of AI models within pre-existing systems. 

  • Note: The candidate is expected to moderately align their schedule with US East Coast working hours (10 AM to 7 PM EET) and work from the office at least two days per week. 

What we expect:  

  • Bachelor’s or master’s degree in computer science, Math, Physics, Engineering, Statistics, or other technical field.

  • Proven years of Data Science experience in complex, data-rich environments. Experience collaborating with cross-functional teams to align data science initiatives with overarching business goals and strategies. Ability to translate complex technical findings into actionable business insights and recommendations, and to communicate complex technical concepts and results to non-technical audiences. 

  • Deep understanding of statistics & Machine Learning (hypothesis testing, p-values, confidence intervals, regression, classification, and optimization). Exposure to Natural Language Processing (NLP) and Generative AI technology is preferred. Experience in experimentation design or A/B testing is also desirable. 

  • Strong algorithmic problem-solving skills. Demonstrated ability to effectively use Git for version control, ensuring organized and collaborative development processes throughout the data science lifecycle. 

  • Proficiency with: Python; SQL or other similar relational database management systems; Big Data frameworks (e.g., Hadoop, Spark, Pig/Hive, etc); and cloud services providers (e.g., AWS, Azure, GCP). 

  • Familiarity with financial markets and the financial industry is highly valued. 

  • Excellent verbal and written English communication skills to guide cross-functional teams on complex data-driven projects.  ​ 

What we offer: 

  • Monthly base salary 3500-4900 EUR gross. Final offer will be based on your experience and skills 

  • Annual monetary bonus  

  • An opportunity to become a Nasdaq shareholder  

  • Employee Stock Purchase Program Nasdaq stocks with a discount  

  • III pillar pension plan with additional contribution from Nasdaq  

  • Flexible health insurance program  

  • Flexible working schedule and hybrid way of work  

  • Additional paid leave days after 2 years of working at Nasdaq  

  • Flex day program (up to 6 paid days off a year)  

  • Internal mentorship program – get a mentor or become one  

  • Wide selection of online learning resources, e.g., Udemy  

 

Here, we’re committed to building a more diverse and inclusive workforce. Not only is it our responsibility to do better, but we also need representative voices to power the fresh thinking that is vital for our business and our clients. 

Come as You Are

Nasdaq is an equal opportunity employer. We positively encourage applications from suitably qualified and eligible candidates regardless of age, color, disability, national origin, ancestry, race, religion, gender, sexual orientation, gender identity and/or expression, veteran status, genetic information, or any other status protected by applicable law.

We will ensure that individuals with disabilities are provided reasonable accommodation to participate in the job application or interview process, to perform essential job functions, and to receive other benefits and privileges of employment. Please contact us to request an accommodation.

Tags: A/B testing Architecture AWS Azure Big Data Classification Computer Science Engineering GCP Generative AI Git Hadoop Machine Learning Mathematics NLP Physics Python RDBMS Spark SQL Statistical modeling Statistics Testing

Perks/benefits: Career development Flex hours Health care Insurance Salary bonus

Region: Europe
Country: Lithuania
Job stats:  10  1  0

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