Reflecting on a Decade in Data Analytics: My Journey and Future Aspirations

Mochamad Kautzar Ichramsyah
7 min readJun 25, 2024

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Photo by Annie Spratt on Unsplash

Introduction

As I celebrate 10 years in the data analytics field at technology companies, I find myself reflecting on the diverse and enriching experiences I’ve had. Over these past ten years, I’ve spent almost 8 years immersed in the fast-paced world of e-commerce (Bukalapak, Tokopedia) and 2.5 years in the dynamic realm of online travel agencies (Traveloka). Throughout this journey, I’ve had the privilege of diving deep into various domains of data analytics, including:

  • Product Analytics: Understanding user behavior and product performance to enhance user experience and drive product improvements.
  • Business Analytics: Encompasses overall business performance and strategic decision-making.
  • Marketing Analytics: Measuring campaign effectiveness, optimizing marketing strategies, and maximizing ROI.
  • Fraud Analytics: Detecting and preventing fraudulent activities to safeguard the integrity of transactions.
  • Customer Analytics: Analyzing customer behavior and preferences to improve retention and satisfaction.

Despite this extensive experience, I realize there are still many domains within data analytics that I have yet to explore. Some of the key areas:

  • Operations Analytics
  • Financial Analytics
  • HR Analytics
  • Healthcare Analytics
  • Retail Analytics
  • Sports Analytics
  • Energy Analytics
  • Educational Analytics
  • Environmental Analytics

Each of these domains offers unique challenges and opportunities, and I am excited about the prospect of expanding my expertise and contributing to these areas in the future.

Domain knowledge of data analytics

Data analytics spans multiple domains, each with its specific knowledge areas. Here are the key domains in data analytics along with their respective domain knowledge, but not limited to:

1. Product Analytics

Definition: Product analytics involves analyzing data related to the use, performance, and development of a product. This type of analytics helps in understanding user behavior, product performance, and areas for improvement.

Daily Tasks:

  • Monitoring real-time product usage data.
  • Analyzing user sessions and interactions.
  • Identifying and investigating anomalies or bugs.

Weekly Tasks:

  • Conducting A/B tests and analyzing results.
  • Preparing user feedback reports.
  • Tracking key product performance indicators.

Monthly Tasks:

  • Conducting deep-dive analysis on user retention and engagement.
  • Assessing the impact of new features.
  • Reporting on product lifecycle metrics and trends.

Key Metrics:

  • User engagement (DAU, MAU).
  • User retention and churn rates.
  • Feature adoption rate.
  • Average session duration.

Stakeholders:

  • Product Managers.
  • UX/UI Designers.
  • Development Teams.

2. Marketing Analytics

Definition: Marketing analytics focuses on the performance of marketing campaigns and initiatives. It helps in measuring the effectiveness of marketing strategies and optimizing them for better ROI.

Daily Tasks:

  • Monitoring real-time campaign performance.
  • Analyzing website traffic and conversion rates.
  • Tracking social media engagement.

Weekly Tasks:

  • Reviewing campaign performance reports.
  • Analyzing customer acquisition costs (CAC) and lifetime value (LTV).
  • Conducting competitor analysis.

Monthly Tasks:

  • Evaluating overall marketing strategy effectiveness.
  • Reporting on ROI for different marketing channels.
  • Planning and strategizing for upcoming campaigns.

Key Metrics:

  • Conversion rates.
  • Customer acquisition cost (CAC).
  • Return on investment (ROI).
  • Customer lifetime value (CLV/LTV).

Stakeholders:

  • Marketing Managers.
  • Sales Teams.
  • Content Creators.

3. Business Analytics

Definition: Business analytics encompasses the analysis of data across all business functions to support strategic decision-making. It aims to provide insights into business performance and identify opportunities for improvement.

Daily Tasks:

  • Monitoring financial performance metrics.
  • Tracking key business KPIs.
  • Generating ad-hoc reports for management.

Weekly Tasks:

  • Conducting performance reviews of different departments.
  • Analyzing sales and revenue data.
  • Identifying trends and patterns in business operations.

Monthly Tasks:

  • Preparing comprehensive business performance reports.
  • Evaluating business strategies and their outcomes.
  • Planning for resource allocation and budgeting.

Key Metrics:

  • Revenue growth.
  • Profit margins.
  • Operational efficiency.
  • Market share.

Stakeholders:

  • Executives and Senior Management.
  • Financial Analysts.
  • Department Heads.

4. Operations Analytics

Definition: Operations analytics involves analyzing data related to the operational aspects of a business, such as supply chain, logistics, and production processes. The goal is to optimize efficiency and reduce costs.

Daily Tasks:

  • Monitoring supply chain and inventory levels.
  • Tracking production metrics.
  • Identifying and resolving operational issues.

Weekly Tasks:

  • Reviewing process efficiency and productivity reports.
  • Analyzing supply chain performance.
  • Conducting root cause analysis for operational issues.

Monthly Tasks:

  • Evaluating overall operational efficiency.
  • Reporting on cost reduction initiatives.
  • Planning for process improvements.

Key Metrics:

  • Inventory turnover rate.
  • Production yield.
  • Order fulfillment time.
  • Operational cost per unit.

Stakeholders:

  • Operations Managers.
  • Supply Chain Managers.
  • Quality Control Teams.

5. Financial Analytics

Definition: Financial analytics focuses on the analysis of financial data to support financial planning, budgeting, forecasting, and investment decisions.

Key Metrics:

  • Gross profit margin.
  • Earnings before interest and taxes (EBIT).
  • Return on assets (ROA).
  • Cash flow analysis.

Stakeholders:

  • CFO and Finance Teams.
  • Investors.
  • Accountants.

6. HR Analytics

Definition: HR analytics involves analyzing data related to human resources to improve hiring processes, employee engagement, and workforce planning.

Key Metrics:

  • Employee turnover rate.
  • Time to hire.
  • Employee satisfaction index.
  • Training effectiveness.

Stakeholders:

  • HR Managers.
  • Recruitment Teams.
  • Learning and Development Teams.

7. Healthcare Analytics

Definition: Healthcare analytics involves analyzing data from various sources within the healthcare industry to improve patient care, reduce costs, and enhance operational efficiency.

Daily Tasks:

  • Monitoring patient outcomes and clinical performance.
  • Analyzing real-time patient data for immediate care adjustments.
  • Tracking hospital admission and discharge rates.

Weekly Tasks:

  • Reviewing the performance of medical staff.
  • Analyzing trends in patient visits and treatment outcomes.
  • Conducting root cause analysis for any clinical issues.

Monthly Tasks:

  • Preparing reports on patient care quality and safety.
  • Evaluating the effectiveness of new treatments or procedures.
  • Reporting on financial performance and cost management.

Key Metrics:

  • Patient readmission rates.
  • Treatment success rates.
  • Average length of stay.
  • Cost per patient.
  • Patient satisfaction scores.

Stakeholders:

  • Hospital Administrators.
  • Medical Practitioners.
  • Healthcare Policy Makers.
  • Insurance Companies.

8. Retail Analytics

Definition: Retail analytics involves analyzing data from retail operations to optimize sales, inventory, customer experience, and overall business performance.

Daily Tasks:

  • Monitoring sales performance and inventory levels.
  • Analyzing customer purchasing patterns.
  • Tracking point-of-sale (POS) transactions.

Weekly Tasks:

  • Reviewing stock levels and managing reorder processes.
  • Analyzing promotional campaign performance.
  • Conducting competitor analysis.

Monthly Tasks:

  • Preparing sales performance reports.
  • Evaluating customer loyalty programs.
  • Reporting on inventory turnover rates.

Key Metrics:

  • Sales per square foot.
  • Inventory turnover rate.
  • Customer lifetime value (CLV).
  • Conversion rate.
  • Average transaction value.

Stakeholders:

  • Store Managers.
  • Merchandising Teams.
  • Marketing Managers.
  • Supply Chain Managers.

9. Sports Analytics

Definition: Sports analytics involves analyzing data related to sports performance, player statistics, and team strategies to improve game outcomes and player development.

Daily Tasks:

  • Monitoring player performance metrics.
  • Analyzing game footage for strategic insights.
  • Tracking injury reports and player health data.

Weekly Tasks:

  • Reviewing team performance and game results.
  • Analyzing opponent strategies and weaknesses.
  • Conducting training and performance assessments.

Monthly Tasks:

  • Preparing detailed player performance reports.
  • Evaluating the effectiveness of training programs.
  • Reporting on fan engagement and attendance.

Key Metrics:

  • Player efficiency ratings.
  • Win/loss ratios.
  • Injury rates.
  • Fan attendance and engagement.
  • Training effectiveness.

Stakeholders:

  • Coaches and Team Managers.
  • Athletic Trainers.
  • Sports Analysts.
  • Fans and Sponsors.

10. Energy Analytics

Definition: Energy analytics involves analyzing data from energy production, distribution, and consumption to optimize efficiency, reduce costs, and enhance sustainability.

Daily Tasks:

  • Monitoring energy production levels.
  • Analyzing real-time energy consumption data.
  • Tracking equipment performance and maintenance needs.

Weekly Tasks:

  • Reviewing energy usage patterns and trends.
  • Analyzing the performance of renewable energy sources.
  • Conducting efficiency assessments for energy systems.

Monthly Tasks:

  • Preparing energy consumption and cost reports.
  • Evaluating the impact of energy-saving initiatives.
  • Reporting on regulatory compliance and sustainability metrics.

Key Metrics:

  • Energy consumption per unit.
  • Cost per kilowatt-hour (kWh).
  • Renewable energy utilization.
  • Carbon footprint.
  • Equipment downtime.

Stakeholders:

  • Energy Plant Managers.
  • Environmental Engineers.
  • Regulatory Authorities.
  • Utility Companies.

11. Educational Analytics

Definition: Educational analytics involves analyzing data from educational institutions to improve student outcomes, optimize teaching strategies, and enhance institutional performance.

Daily Tasks:

  • Monitoring student attendance and participation.
  • Analyzing real-time academic performance data.
  • Tracking student engagement in online platforms.

Weekly Tasks:

  • Reviewing student progress and identifying at-risk students.
  • Analyzing the effectiveness of teaching methods.
  • Conducting surveys on student satisfaction.

Monthly Tasks:

  • Preparing academic performance reports.
  • Evaluating curriculum effectiveness.
  • Reporting on faculty performance and development needs.

Key Metrics:

  • Student retention rates.
  • Graduation rates.
  • Average test scores.
  • Course completion rates.
  • Student satisfaction scores.

Stakeholders:

  • School Administrators.
  • Teachers and Professors.
  • Curriculum Developers.
  • Students and Parents.

12. Environmental Analytics

Definition: Environmental analytics involves analyzing data related to environmental factors to monitor and improve sustainability, manage natural resources, and address environmental challenges.

Daily Tasks:

  • Monitoring environmental sensors and data feeds.
  • Analyzing pollution levels and air quality.
  • Tracking weather patterns and climate data.

Weekly Tasks:

  • Reviewing environmental impact reports.
  • Analyzing trends in resource consumption.
  • Conducting risk assessments for environmental hazards.

Monthly Tasks:

  • Preparing sustainability and compliance reports.
  • Evaluating the effectiveness of environmental initiatives.
  • Reporting on biodiversity and conservation efforts.

Key Metrics:

  • Air and water quality indices.
  • Carbon emissions levels.
  • Resource usage rates.
  • Waste reduction metrics.
  • Biodiversity health indicators.

Stakeholders:

  • Environmental Scientists.
  • Government Agencies.
  • Non-Governmental Organizations (NGOs).
  • Community Groups.

Conclusion

Data analytics is an ever-evolving field that spans numerous domains, each with its unique challenges and opportunities. By leveraging the power of data, organizations can drive informed decision-making and achieve their strategic goals across various sectors.

Each domain involves specific daily, weekly, and monthly tasks, focuses on distinct metrics, and collaborates with different stakeholders to achieve its goals. While I have gained extensive experience in product analytics, business analytics, marketing analytics, fraud analytics, and customer analytics, there remain several other exciting areas in data analytics waiting to be explored.

As I continue my journey in this dynamic field, embracing these new domains can provide even more opportunities to make a significant impact through data-driven insights. Here’s to continued growth, learning, and success in the world of data analytics!

Thank you for reading!

I am learning to write, mistakes are unavoidable, even when I try my best. If you need any help/mistakes, please let me know!

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Mochamad Kautzar Ichramsyah
Mochamad Kautzar Ichramsyah

Written by Mochamad Kautzar Ichramsyah

Data analytics professional with 10 years of experience at tech companies in Indonesia.

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