2025 - Skylar Data Science/Trade Analyst Internship

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About the Job

We are a rapidly growing hedge fund with a mission to use technology for our growth. Established in 2012, we work with various commodity markets and leverage data science with its fullest potential for our business. The role involves, Implementing new predictive and cognitive solutions using statistical and mathematical models, data science algorithms, Image processing, and Natural Language Processing (NLP) techniques As part of our team, you will always find something passionate for you, architect, build, forecast,  backcast and provide competitive advantage to stakeholders. In return, we promise you unlimited growth for your creative mind and great reward for your contribution.

Job responsibilities

• Working with stake holders from business units and understand business requirements, leveraging the data to drive business solutions

• Work with highly complex data sets, apply statistical, mathematical models to generate business insights

• Develop expertise in the areas of data visualizations, machine learning, NaturalLanguage Processing and Deep Learning

• Compile and analyze data related to business from different sources and Develop clear visualizations

• Work with business users or clients interacting directly and showcasing solutions

• Understand and Follow best practices and standard processes for developing business solutions

Required skills

• Strong interpersonal and communication skills: ability to tell a clear, concise, actionable story with data, to business users or clients.

• Should have hands-on experience in programming, database and data visualization techniques using Python, SQL and Tableau

• Ability to learn and master new technologies and business domains quickly.

• Knowledge of advanced statistical techniques and concepts (regression, properties of distributions, statistical tests and proper usage, etc.) and experience with applications.

• Solid mathematical background (especially in linear algebra, probability theory,Statistical Analysis, operations research.

• Good knowledge of NLP/LLM solutions with application of GenAI and Prompt Engineering use cases.

Qualification(s)

Pursuing a degree in Engineering, Mathematics, Science, and/or Management from a reputed university.

About Skylar

We are an unconventional hedge fund management firm located in Houston, TX, focused on the natural gas and power markets with a mission to generate outsized, non-correlating returns for our investors.

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Video Disclaimer

The information contained herein is provided for informational purposes only, is not complete, and does not contain certain material information about the funds managed by Skylar (the "Funds"), including important disclosures and risk factors associated with an investment in the Funds. This video is not intended to be, nor should it be construed or used as an offer to sell, or a solicitation of any offer to buy, interests in any fund.  No offer or solicitation may be made prior to the delivery of a definitive private placement offering memorandum (the "Memorandum").  In the event of any conflict between information contained herein and information contained in the Memorandum, the information in the Memorandum will control and supersede the information contained herein. Except as otherwise specified herein, the information contained herein is believed to be accurate as of the date set forth. No assurance is made as to its continued accuracy after such date. All information contained herein is subject to revision without notice. There is no guarantee that the Investment Manager (Skylar Capital Management LP) will meet its investment objectives. No assurance can be made that profits will be achieved or that substantial losses will not be incurred.

Past performance is not indicative of future results and investors risk the loss of their entire investment.

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SKYLAR CAPITAL MANAGEMENT
5847 SAN FELIPE ST., SUITE 4450
HOUSTON, TEXAS 77057

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