Aegistech
Lead Data Scientist
Aegistech, Baltimore, Maryland, United States, 21276
Job Description:
As a
Lead Data Scientist
you will push the limits of our analytics and predictive capabilities through research, experimentation, and data modeling techniques. You will join the Data Science & Analytics team tasked with modeling, understanding, and automating various aspects of our growth, margin, and retention initiatives in addition to product features. This role is intended to wear many hats, but with a skew towards advanced & predictive analytics. You will also be involved with some reporting, data modeling, and visualization requirements.
Day-To-Day Responsibilities:
As a Lead Data Scientist with a focus on both reporting and predictive modeling, your day-to-day responsibilities will include a mix of tasks related to data analysis, visualization, and predictive model development. Your core duties will consist of: Exposing Insights:
As a Data Scientist, your goal is not to just display data but turn it into information. You will produce analysis reports and diagnostic models to try and discover hidden relationships and patterns between our data and metrics of interest. Evaluate & Produce Quality:
Good code is reviewed code. You will be involved in ensuring your and your teammates' code is free from errors, bias, and is easy to understand. Data Engineering:
We are a newer team at a growing company, and you'll need to do a lot of your own data engineering. Gather, clean, and preprocess data from various sources, ensuring accuracy and consistency. Perform feature engineering to generate new variables or transform existing ones to improve the quality and usefulness of the dataset. Tie all these tasks together in a pipeline and deploy on cloud-based infrastructure. Predictive Modeling:
Develop, validate, and deploy predictive models using machine learning algorithms and statistical techniques, such as regression, classification, clustering, time series forecasting, and optimization. Generative Modeling:
Use a combination of open source and paid technologies to produce abstractions & novel features for other applications. Continuous Improvement:
Data Science is a quickly moving field and you'll need to keep up to date. You will need to keep abreast of the latest developments in data science, machine learning, and reporting technologies, while incorporating them into your work when appropriate. Participate in knowledge-sharing sessions to contribute to the growth and development of others. Requirements:
6+ years of experience in a data science or machine learning role. Experience with business efficiency metrics, such as: Customer Acquisition Cost (CAC), Revenue Acquisition Cost (RAC), Retention, Margin, Annual Recurring Revenue (ARR), Lifetime Value (LTV), and Engagement. Experience with at least one dashboarding tool, such as: Tableau, Power BI, Looker, Google Data Studio, Streamlit, Dash, etc. Proficiency with Python Proficiency with SQL Knowledge of machine learning algorithms and statistical techniques for predictive modeling, such as: Regression, Classification, Clustering, Time Series Analysis, and Optimization. Proficiency with end-to-end pipelines. Expert knowledge in model evaluation metrics. Experience pulling data from various third-party systems and APIs. Proficiency with version control. Proven ability to work both independently and as part of a team. Proficiency with visualization in python. Familiar with best practices in secure data handling and customer data privacy. Preferred Qualifications:
Prior experience in the financial planning industry. Prior experience in the consumer technology industry. Prior experience using containers to produce repeatable and shareable code. Prior experience with Natural Language Processing. Prior experience with cloud deployment. Prior experience with Neural Networks and/or LLMs. Benefits:
Equity Flexible PTO All the benefits: medical, dental, and vision insurance, 401(k) with employer match, short- and long-term disability coverage (paid by client), life insurance options and paid parental leave Certification reimbursement program Work from anywhere in the US
As a
Lead Data Scientist
you will push the limits of our analytics and predictive capabilities through research, experimentation, and data modeling techniques. You will join the Data Science & Analytics team tasked with modeling, understanding, and automating various aspects of our growth, margin, and retention initiatives in addition to product features. This role is intended to wear many hats, but with a skew towards advanced & predictive analytics. You will also be involved with some reporting, data modeling, and visualization requirements.
Day-To-Day Responsibilities:
As a Lead Data Scientist with a focus on both reporting and predictive modeling, your day-to-day responsibilities will include a mix of tasks related to data analysis, visualization, and predictive model development. Your core duties will consist of: Exposing Insights:
As a Data Scientist, your goal is not to just display data but turn it into information. You will produce analysis reports and diagnostic models to try and discover hidden relationships and patterns between our data and metrics of interest. Evaluate & Produce Quality:
Good code is reviewed code. You will be involved in ensuring your and your teammates' code is free from errors, bias, and is easy to understand. Data Engineering:
We are a newer team at a growing company, and you'll need to do a lot of your own data engineering. Gather, clean, and preprocess data from various sources, ensuring accuracy and consistency. Perform feature engineering to generate new variables or transform existing ones to improve the quality and usefulness of the dataset. Tie all these tasks together in a pipeline and deploy on cloud-based infrastructure. Predictive Modeling:
Develop, validate, and deploy predictive models using machine learning algorithms and statistical techniques, such as regression, classification, clustering, time series forecasting, and optimization. Generative Modeling:
Use a combination of open source and paid technologies to produce abstractions & novel features for other applications. Continuous Improvement:
Data Science is a quickly moving field and you'll need to keep up to date. You will need to keep abreast of the latest developments in data science, machine learning, and reporting technologies, while incorporating them into your work when appropriate. Participate in knowledge-sharing sessions to contribute to the growth and development of others. Requirements:
6+ years of experience in a data science or machine learning role. Experience with business efficiency metrics, such as: Customer Acquisition Cost (CAC), Revenue Acquisition Cost (RAC), Retention, Margin, Annual Recurring Revenue (ARR), Lifetime Value (LTV), and Engagement. Experience with at least one dashboarding tool, such as: Tableau, Power BI, Looker, Google Data Studio, Streamlit, Dash, etc. Proficiency with Python Proficiency with SQL Knowledge of machine learning algorithms and statistical techniques for predictive modeling, such as: Regression, Classification, Clustering, Time Series Analysis, and Optimization. Proficiency with end-to-end pipelines. Expert knowledge in model evaluation metrics. Experience pulling data from various third-party systems and APIs. Proficiency with version control. Proven ability to work both independently and as part of a team. Proficiency with visualization in python. Familiar with best practices in secure data handling and customer data privacy. Preferred Qualifications:
Prior experience in the financial planning industry. Prior experience in the consumer technology industry. Prior experience using containers to produce repeatable and shareable code. Prior experience with Natural Language Processing. Prior experience with cloud deployment. Prior experience with Neural Networks and/or LLMs. Benefits:
Equity Flexible PTO All the benefits: medical, dental, and vision insurance, 401(k) with employer match, short- and long-term disability coverage (paid by client), life insurance options and paid parental leave Certification reimbursement program Work from anywhere in the US