Our client is an Aussie grown and based AI start-up who have built an innovative decision augmentation platform that is licensed by several telcos, utilities and media businesses across Australia and NZ.
They are looking for a passionate Data Analyst to help wrangle client data on their platform and shape their industry data models. You'll join a small, but experienced engineering and data science team who are all familiar working with the client data and appreciate the challenges of the data work.
You will need to have deep technical expertise with using SQL to transform raw data into structured views for analysis and help develop client business KPIs.
Strong SQL fluency within analytical data houses
Must know how to write multi-table joins, grouping and aggregation, common table expressions and conditional filters
Can use tools like ETL or SQL for cleaning and modelling of large quantities of raw data
Experience using data sources like Google BigQuery or Salesforce
Experience in telco or utilities industry and using DBT for data transformation, testing and documentation is a bonus
A couple of other things about the client:
They have got 3 PHD qualified data scientists on staff that you'll work with
They are based in the Australian Computer Society which is a hub for start ups and it's a pretty awesome location too!
They encourage you to work in a hybrid - home office manner
They support flexible working if that's what you enjoy
If you're independent, self-directed, conscientious and you want to work with good people doing cool things we'd love to hear from you.
If you wish to apply for this position, please submit your resume by clicking the 'Apply Now' button. For further information please contact Amreen Badani at Clicks IT Recruitment on 02 9200 4441.
At Clicks we embrace diversity, inclusion and equal opportunity.
We provide reasonable adjustments, including alternate formats to the recruitment process for individuals with disability. If you require an adjustment to be made during the recruitment process, please call 1300 254 257 or email email@example.com