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Staff Software Engineer - Data Scientist6AM CityCalifornia, Maryland, United States
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Staff Software Engineer - Data Scientist

6AM City
  • US
    California, Maryland, United States
  • US
    California, Maryland, United States

Über

Job Description Who We Are Baton is seeking ambitious individuals who desire the autonomy and agility of a startup environment combined with the backing, power, reach, and stability of a highly respected logistics industry giant.
Baton is the Silicon Valley-based technology innovation lab for Ryder, a leading logistics company that owns 260k trucks and manages $7.4B of freight.
Prior to the September 2022 acquisition, Baton was a venture-backed start-up that operated a fleet of trucks and hung out at truck stops to truly understand the challenges at hand.
The Problem We’re Solving Our mission is to eliminate supply chain waste by creating a digital platform to manage freight and eliminate supply chain waste.
There are 500 million hours wasted in trucking each year, over 3 billion gallons of fuel wasted per year from trucks idling, and 1 in 5 trucks on the road driving empty at any given point. This has a massive impact on the environment, the lives of millions of drivers, and ultimately, the cost of goods that we all pay. Baton is fixing that, and you will too through the impactful work you'll do here.
Role Staff Software Engineer, Data Scientist
Location Hayes Valley, San Francisco, CA
Basic Job Details Office days: Tuesday, Wednesday, Thursday
Work from home days: Monday and Friday
Job type: Full time
Job Description We are seeking a skilled Staff Software Engineer, Data Scientist to lead data science projects, develop machine learning models, and perform in-depth data analysis. This role involves building and deploying models for applications like demand forecasting and route optimization, conducting data wrangling, and applying statistical methods to derive insights.
Collaboration with cross‑functional teams and continuous learning to stay updated with the latest trends in data science are essential for success in this role. Excellent communication skills are required to present complex data insights to non‑technical stakeholders and work effectively in a collaborative team environment.
The ideal candidate will have advanced proficiency in Python, strong SQL skills, experience with machine learning frameworks, and a solid background in statistical analysis and data‑driven decision‑making.
Responsibilities
Lead Data Science Projects:
Lead the design, development, and implementation of machine learning models and advanced analytics solutions to solve complex business problems.
Data Analysis and Visualization:
Perform in-depth data analysis using statistical techniques and create insightful visualizations to communicate findings to stakeholders.
Machine Learning Model Development:
Build, test, and deploy machine learning models for various applications, such as demand forecasting, route optimization, and predictive maintenance.
Data Manipulation and Cleaning:
Conduct data wrangling and preprocessing to ensure data quality and integrity, using tools like Pandas and NumPy.
Statistical Analysis:
Apply statistical methods, including hypothesis testing and inferential statistics, to derive actionable insights from data.
Collaboration and Communication:
Work closely with cross‑functional teams, including engineering, operations, and business units, to understand their needs and deliver data‑driven solutions.
Present complex data insights in a clear and concise manner to non‑technical stakeholders.
Continuous Learning:
Stay updated with the latest trends and technologies in data science and actively contribute to a culture of continuous improvement and innovation.
Required Qualifications
Production Python Expertise:
Advanced proficiency in Python
Data Analysis Expertise:
Deep understanding of data analysis techniques
Ability to derive actionable insights from large data sets
Machine Learning & Statistics Expertise:
Substantial knowledge in machine learning algorithms
Statistical methods to develop predictive models and analytics tools
Preferred Qualifications
Experience:
5-7 years of experience in data science, with a proven track record of leading and delivering complex data projects.
First Principles Thinking:
Break down complex problems into their most basic elements and reconstruct solutions from the ground up
Problem‑Solving Skills:
Excellent critical thinking and problem‑solving abilities, with experience in formulating data‑driven solutions to business challenges.
Education:
Master's or PhD in Data Science, Computer Science, Statistics, or a related field.
Communication Skills:
Outstanding verbal and written communication skills, with the ability to present complex data insights to a non‑technical audience.
Collaboration:
Proven ability to work effectively in a collaborative team environment and manage multiple projects simultaneously.
Technical Skills:
Advanced proficiency in Python
Strong SQL skills for data manipulation and querying
Machine learning frameworks: Scikit-Learn, TensorFlow, Keras, and PyTorch
Proficiency in data visualization tools
Familiarity with cloud platforms like AWS
The Perks
Competitive salary and bonus structure
Annual bonus and Long Term Incentive Plan participation
Hybrid work schedule
401(k) with matching
Medical, Dental, and Vision health coverage
Employee Stock Purchase Program (15% discount to market value)
Hyper‑stable, publicly traded enterprise
Collaborative, fun, and tech forward office in Hayes Valley (San Francisco)
Compensation Range The annual base salary range for this position is $188,000 - $261,000*.
Compensation will vary based on factors including skill level, proficiencies, transferable knowledge, and experience.
In addition to base salary, Baton's full‑time employees are eligible for an annual performance bonus.
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  • California, Maryland, United States

Sprachkenntnisse

  • English
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