You will work with other data scientists, data/ML engineers, designers, project managers and business subject matter experts on interdisciplinary projects across various industry sectors to enable business ambitions with data & analytics.
Who you are
You are a highly collaborative individual who is capable of laying aside your own agenda, listening to and learning from colleagues, challenging thoughtfully and prioritizing impact. You search for ways to improve things and work collaboratively with colleagues. You believe in iterative change, experimenting with new approaches, learning and improving to move forward quickly.
Our Tech Stack
While we advocate for using the right tools for the right task, we also take into account client’s current landscape and preferences. Often, we use Python, PySpark, TensorFlow, PyTorch, Databricks, SQL, Docker and Kubernetes. We also leverage our own proprietary tools such as Kedro, CuasalNex, MLRun (check out more OSS here:
https://www.mckinsey.com/capabilities/quantumblack/labs). We work on regular basis with cloud service providers such as AWS, GCP and Azure.
As a data science consultant at QuantumBlack, you will work in multi-disciplinary environments harnessing data to provide real-world impact for organizations globally. You will influence many of the recommendations our clients need to positively change their businesses and enhance performance.
Role responsibilities
- Work on complex and extremely varied data sets from some of the world’s largest organizations to solve real world problems
- Develop high quality data science products and solutions for clients as well as assets for our internal data teams
- Focus on modelling, working alongside the Data Engineering team
- Present findings, recommendations and provide consultation to stakeholders (internal and clients)
What you’ll learn
- Work across various industries and sectors, gaining insights into diverse business challenges and applications of data science
- Build large-scale data & analytics solutions, handling complex problems and advanced client situations
- Best practices in data & analytics development including framework, responsibility model, high quality code, data security, sustainability and scalability
- Work in collaborative teams with diverse skill sets, fostering effective teamwork and learning from colleagues in a multicultural and creative environment
- Stay up-to-date with the latest advancements in data science tools, techniques, and technologies as well as first class learning programs
- Develop strong client-facing skills, including effective communication, problem-solving, and presentation abilities