Data Scientist | Candy Crush Soda Saga, A&R

King
1 year ago
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Job Description:

We are looking for a dedicated and technically proficient Data Scientist interested in building, defining and pushing the boundaries of operational health tracking and A/B test analysis for Candy Crush Soda Saga! You’ll help us to further understand, model, predict, segment, and retain our players and be part of a community of 100+ business intelligence & analytics experts.

Your Role within the Kingdom

In the role as Data Scientist, you will work closely with your teammates and the Head of Tech in Soda. You will also work closely with other Data Scientists and developers across the business to leverage insights from one game across multiple games and build data pipelines and monitoring tools to understand the operational health of the game. 

As you are part of a central analytics team, you will also design, monitor, analyse and communicate results for A/B tests, and proactively develop new analyses, experiments and data- driven tools to help the business evolve and seize new opportunities. 

Create, define, maintain and be responsible for the operational health metrics of the game

Provide a business analytical perspective to discussions and help to drive the priorities within your game 

Support leadership with an analytical perspective in discussions, priority definition and business decisions.

Be responsible defining and tracking business metrics for internal stakeholders

Be self- motivated to learn and support the technical development of the team, and help evolve the methodology and tools available to King’s data science community.

Communicate, visualise and report your findings in a clear and unambiguous way to people with diverse degrees of numerical proficiency.

Ensure that the data required to understand how our players interact with the game is available and reliable.

Be able to systematically break complex and abstract problems into solvable questions.

Skills to Create the Thrills

Communicative:

Business Insight; The ability to identify the problems and issues our games and business wants to solve, and then defining the most appropriate data, analysis or interpretation to lead to the right recommendations and decisions

Stakeholder Management; The ability to recognize dependencies, form relationships and influence others

Designing good ways of presenting, visualising or reporting your results/analysis so they are clear and unambiguous

You should have experience in taking complex data and make it simple and readable for a non- technical audience

You do not not necessarily have to have gaming experience or background but technical experience from consumer- facing product is required

Technical:

SQL: The ability to write efficient SQL queries to extract relevant data from our databases with 300+ million players

Capacity to understand and vet data from multiple different sources (e.g. ready- made data tables, tracking data, jira tickets, external data etc)

Analytical coding: Using tools such as R or Python for analytical purposes

Prior experience (at least knowledge of) technical KPIs

Stats: Understanding the basics of appropriate statistical or machine learning techniques.

Familiarity with massive data sets and tools to deal with them (e.g., BigQuery/AWS/Hadoop)

Standard reporting tools such as Looker/Tableau/etc.

Data visualisation skillet in excel/powerpoint/think cell

Bonus points

Experience in behavioural psychology/economics and experimental design, and game theory.

Experience in predictive analytics, segmentation, and related areas

Experience in the games industry or customer- facing digital businesses

Working knowledge of randomised controlled trials (ex: social science research, medical research, biostatistics, policy research etc.) or digital A/B testing and online controlled experiments

Familiar with collaborative programming (git is a must) and highly skilled in R or Python

Software engineering skills in Java and other languages (beyond R and Python which we use most frequently)

About King

King is the game developer behind the world- famous Candy Crush franchise, as well as mobile game hits including Farm Heroes, Bubble Witch and Pet Rescue. Candy Crush is the top- grossing franchise in US app stores, a position it has held for the last two years, and King’s games are being played by 245 million monthly active users as of Q3 2021. King, which is part of the Activision Blizzard group since its acquisition in 2016, employs nearly 2,000 people in game studios in Stockholm, Malmö, London, Barcelona and Berlin, and offices in San Francisco, New York, and Malta.

A Great Saga Needs All Sorts of Heroes

Making games is fun. Especially when you do it with people who share the same idea of what makes a good workplace great. We design games for everyone, no matter where they are or who they are, and we employ all sorts of people from all kinds of backgrounds to bring them to life. Truth is, we simply cannot expect diversity in our players and originality in our games without first nurturing it in our people. A great saga needs all sorts of heroes.

Making the World Playful

Making the World Playful is what inspires us to create new experiences and raise the bar. It’s what makes King a place where we can all dream bigger, continue to add innovation to our games, broadening the portfolio and exploring new territories in mid- core and casual. We take the art and science of gaming to the next level through our curiosity for the unexplored, passion for games, respect for each other and love for our players - and we’re not afraid to have fun along the way. In fact, together with our parent company Activision Blizzard and experts around the world, we believe having fun is good for you. There has never been a better time to join us. We're dreaming bigger and see a world of possibilities ahead. If you share our passion, our values, and our hunger to shape the future, join us in Making the World Playful!

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