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A global firm in paper and pulp is seeking a Data Science Lead in Kerinci, Indonesia. The successful candidate will develop a comprehensive strategy for AI and Data Science, manage a high-performance team, and ensure project delivery while driving innovation. Ideal candidates should have over 10 years in technology leadership roles and strong skills in Python, SQL, and machine learning. This position offers a chance to contribute towards sustainable practices in a dynamic organization.
The APRIL Group, a forward-thinking organization in the global paper and pulp industry, is dedicated to sustainable practices, and actively plays a pivotal role in balancing economic growth with environmental conservation.
To accelerate the Digital Transformation drive in the APRIL Group, we are seeking a visionary and hands-on leader to join our team in Kerinci, as the Data Science Lead. The role presents exciting opportunities to drive innovation across diverse operations while fostering sustainable development practices. If you possess strong technical abilities, excellent communication skills, and a passion for problem-solving, this role offers both personal and professional growth within a dynamic global organization committed to making a positive impact on society and the environment.
Leveraging your expertise in data analysis, statistical modelling, machine learning, and AI algorithms, you'll collaborate with cross-functional teams across forestry management, manufacturing processes, and environmental science to extract valuable insights from rich and vast datasets, driving towards sustainable development.
Your work will significantly contribute towards optimizing our processes, improving product quality, enhancing efficiency, and fostering sustainable development practices within our ecosystems. In addition to technical skills, strong communication abilities and a passion for problem-solving are key qualities we seek in this role.
The Data Science Lead will be a visionary leader with strong technical skills, capable of driving strategic direction, managing talent, delivering innovative solutions, and collaborating effectively across diverse stakeholder groups. The successful candidate will have proven experience in building and leading high-performance data science teams and delivering impactful results within complex organizations.
Key Responsibilities:
Education & Experience:
Skill Requirements
Must have strong programming experience with Python/R and SQL.
Experience in machine learning, deep learning, data visualization, statistical, text analytics libraries, jupyter notebook and/or frameworks in Python or R.
Solid understanding of statistical concepts and techniques for hypothesis testing, regression analysis, time series analysis, and predictive modeling.
Experience with data wrangling and preprocessing such as data cleaning, feature engineering, and handling missing values.
Experience in supervised, unsupervised learning, ensemble methods, deep learning and evaluation of machine learning algorithms.
Experience in scikit-learn, numpy, pandas, seasborn, matplotlib, ggplot, deep learning framework: tensorflow, keras or pytorch.
Experience in public cloud infrastructure such as AWS and/or Google Cloud Platform for high performance computing.
Experience in developing and deploying applications running on public cloud infrastructure.
Experience in Git for code management.
Excellent written and verbal communication skills for coordinating across teams.
Demonstrated experience applying a variety of machine learning techniques (clustering, decision tree learning, artificial neural networks, etc.) and their real-world advantages/drawbacks.
Experience visualizing/presenting data for stakeholders using: Tableau, D3, ggplot is a plus.
Experience in performing distributed data analysis on large data set will be an added advantage.
Drive to learn and master new technologies and techniques.
Knowledge of advanced statistical techniques and concepts (regression, properties of distributions, statistical tests and proper usage, etc.) and experience with applications.
Experience visualizing/presenting data for stakeholders using: Tableau, D3, ggplot is a plus.
Experience in performing distributed data analysis on large data set will be an added advantage.
Drive to learn and master new technologies and techniques.