Data Science & Analytics Leadership
Chargebee, Inc.
All India, Chennai • 1 month ago
Experience: 10 to 14 Yrs
PREMIUM
Deal of the Day
--:--:--
15 Days Free Trial
Upgrade to CVX24 Premium
- Free Resume Writing
-
Get a Verified Blue tick
- See who viewed your profile
- Unlimited chat with recruiters
- Rank higher in recruiter searches
- Get up to 10× more recruiter visibility
- Auto-forward profile to 10 top recruiters
- Receive verified recruiter messages directly
- Unlock hidden jobs, not visible to free users
$0
Activate
$0
A small token amount will be charged to verify.
Get Refund in 48 Hours.
After free-trial 6 Months subscription will be auto Activated @ $2.49 (Cancel Anytime).
Free Bluetooth earphones with 6 Months subscription only.
Enter Your Details
Job Description
As a visionary and hands-on Director of Data Analytics, Science & AI Enablement at Chargebee, your role will involve leading the creation and growth of a data function to power enterprise-wide AI initiatives. You will design, build, and lead a cross-functional team responsible for enterprise data analytics, data science, data governance, and structured data enablement to support advanced AI/ML use cases. Your strategic partnership with business and technology executives will enable insight-driven decision-making and scalable AI applications through modern data architecture and practices.
**Roles and Responsibilities:**
- Lead the development and deployment of machine learning, generative AI, recommendation systems, and predictive models to improve product intelligence and automation.
- Build and scale AI capabilities across the platform, including personalization, NLP, anomaly detection, and customer segmentation.
- Drive insights into user behavior, product performance, churn prediction, and lifecycle value using customer and usage data.
- Develop dashboards, KPIs, and self-service analytics tools for marketing, product, sales, and support teams.
- Build and lead a high-performance team of data scientists, AI/ML engineers, analysts, and data product managers.
- Collaborate with Data Engineering to ensure scalable data architecture and high-quality data pipelines.
- Lead the development of dashboards, metrics, and decision-support tools that empower business leaders.
**Qualification Required:**
- Bachelors or Masters degree in Computer Science, Statistics, Data Science, Engineering, or related discipline.
- Proven experience working in a SaaS or tech environment with subscription-based metrics (e.g., MRR, ARR, CAC, LTV).
- 10+ years of experience in data analytics, data science, or related fields, with at least 3-5 years in a leadership capacity.
- Strong knowledge of AI/ML concepts, data platforms (e.g., Snowflake, Databricks), and BI tools (e.g., Tableau, Power BI).
- Deep understanding of data governance, data quality, and metadata management.
- Demonstrated ability to lead change in a global, fast-paced, and matrixed environment.
- Excellent communication and stakeholder management skills.
- Deep understanding of SaaS metrics, PLG (product-led growth), and usage-based pricing strategies.
- Prior experience with product instrumentation and event tracking platforms (Mixpanel, Segment, etc.).
In summary, as the Director of Data Analytics, Science & AI Enablement at Chargebee, you will play a crucial role in driving AI initiatives, leading a high-performance team, and ensuring data governance and quality to support advanced analytics and AI solutions. As a visionary and hands-on Director of Data Analytics, Science & AI Enablement at Chargebee, your role will involve leading the creation and growth of a data function to power enterprise-wide AI initiatives. You will design, build, and lead a cross-functional team responsible for enterprise data analytics, data science, data governance, and structured data enablement to support advanced AI/ML use cases. Your strategic partnership with business and technology executives will enable insight-driven decision-making and scalable AI applications through modern data architecture and practices.
**Roles and Responsibilities:**
- Lead the development and deployment of machine learning, generative AI, recommendation systems, and predictive models to improve product intelligence and automation.
- Build and scale AI capabilities across the platform, including personalization, NLP, anomaly detection, and customer segmentation.
- Drive insights into user behavior, product performance, churn prediction, and lifecycle value using customer and usage data.
- Develop dashboards, KPIs, and self-service analytics tools for marketing, product, sales, and support teams.
- Build and lead a high-performance team of data scientists, AI/ML engineers, analysts, and data product managers.
- Collaborate with Data Engineering to ensure scalable data architecture and high-quality data pipelines.
- Lead the development of dashboards, metrics, and decision-support tools that empower business leaders.
**Qualification Required:**
- Bachelors or Masters degree in Computer Science, Statistics, Data Science, Engineering, or related discipline.
- Proven experience working in a SaaS or tech environment with subscription-based metrics (e.g., MRR, ARR, CAC, LTV).
- 10+ years of experience in data analytics, data science, or related fields, with at least 3-5 years in a leadership capacity.
- Strong knowledge of AI/ML concepts, data platforms (e.g., Snowflake, Databricks), and BI tools (e.g., Tableau, Power BI).
- Deep understanding of data governance, data quality, and metadata management.
- Demonstrated ability to lead change in a global, fast-paced, and matrixed environment.
- Excellent communication and stakeholder management skills.
- Deep understanding of SaaS metrics, PLG (product-led
Skills Required
Data Analytics
Data Science
Machine Learning
NLP
Anomaly Detection
Customer Segmentation
Business Analytics
Data Governance
Compliance Management
Data Engineering
Master Data Management
Advanced Analytics
BI Tools
Stakeholder Management
AI Enablement
Generative AI
Recommendation Systems
Predictive Models
User Behavior Analysis
Product Performance Analysis
Churn Prediction
Lifecycle Value Analysis
Data Quality Management
Data Pipelines
Data Privacy Regulations
Enterprise Data Catalog Development
AI Strategy
Data Platforms
SaaS Metrics
PLG
UsageBased Pricing Strategies
Product Instrumentation
Event Tracking Platforms
Posted on: March 22, 2026
Relevant Jobs
Step 2 of 2