Closing date: 13th of October, 2023
About Axiom:
Axiom is a recognized leader in the business of law, and defined the “alternative legal services” category over 20 years ago. While not a law firm, Axiom would rank among the top 10 big law firms by number of lawyers employed.
Axiom manages a diverse global network of legal professionals that are matched to engagements with Axiom’s prestigious clients using a bespoke technology platform. While Axiom has made progress to automate this matchmaking process using machine learning, the vast majority of matches are still made manually by Axiom staff.
Axiom is ready to transition from manual to automated matchmaking by pioneering technologies within the machine learning space. Using NLP and other data extraction, Axiom seeks to build out the capability to identify the best talent for roles at the right time. Pulling information out of the vast database of Talent and Client preferences, Axiom believes it can provide best in class experiences to the broad Axiom Talent Network.
To enable this transformation, Axiom’s Research & Development department is adding its first data science team. This is your opportunity to join at the beginning of Axiom’s data science journey and chart the course of Axiom’s future.
About the role:
The data science function within Axiom R&D is new, but with big eyes. A dedicated team focused on solving the deeper questions, the data science team will will be comprised of a dedicated Technical Product Manager, Data Engineer (this role), and Data Research Scientist.
Axiom is looking for a Data Engineer to work closely with our Data Scientist to ensure the right information is in the right place, at the right time. Working within the R&D data as well as the broader information across the rest of Axiom, this role will be responsible to help define, find, and transform what is needed to successfully execute our long range machine learning programs.
As a Data Engineer, you should be an expert with data warehousing technical components (e.g. Data Modeling, ETL and Reporting) and their integrations. You should have understanding of the architecture for enterprise level data warehouse solutions and familiarity with integrating with SaaS reporting platforms. You should be familiar in the design, creation, management, and business use of large datasets. You should have excellent business and communication skills to be able to work with business owners to develop and define key business questions, and to build data sets that answer those questions.
The individual is expected to be able to build efficient, flexible, extensible, and scalable ETL and reporting solutions. You should be enthusiastic about learning new technologies and be able to implement solutions using them to provide new functionality to the users or to scale the existing platform. Excellent written and verbal communication skills are required as the person will work very closely with diverse teams.
Having strong analytical skills is a plus. Above all, you should be passionate about working with data and someone who loves to enable business team with data to answer critical questions and drive change. As a data engineer, you will work closely with the other engineers on the team and across axiom to establish best practices and the general development of the data engineering program.
A successful candidate will have a passion for clarity, be a self-starter comfortable with ambiguity, have strong attention to detail, be able to work in a fast-paced and entrepreneurial environment and be driven by a desire to innovate. Given the complex nature of the questions we are working on, the ideal candidate will be relentlessly curious and be able to/be interested in having the business conversation underlying the data.
Specifically, this role will:
About you:
Required Qualifications
Preferred Qualifications
Axiom is an equal opportunity employer and committed to a diverse workforce.
Last updated on Sep 26, 2023
Belfast, Northern Ireland
·30+ days ago
Chicago, Illinois
·30+ days ago
San Francisco, California
·30+ days ago
New York, New York
·30+ days ago
Chicago, Illinois
·30+ days ago