DIGITAP.AI is a cutting-edge provider of AI/ML solutions tailored for the modern, internet-driven business landscape.
Our advanced technologies empower businesses with reliable, fast, and fully compliant customer onboarding, automated risk management, and big data-enabled services, including Risk Analytics and Customised Scorecards.
Our proprietary machine learning algorithms and modules boast some of the highest success rates in the market.
Partnering with the largest digital lenders in India, our team is a vibrant mix of expertise in Fintech Product & Risk Management, Fraud Detection, and Big Data Analytics.
Culture and Benefits:
Innovative Start-up Environment: Enjoy the flexibility to design, implement, and influence the development of cutting-edge solutions.
Transparency and Meritocracy: We value clear communication, eschew politics, and promote an open culture where contributions are recognized and rewarded.
Ownership and Impact: We encourage team members to take ownership, think beyond their roles, and contribute to the company's success in meaningful ways.
Competitive Compensation : We offer a competitive salary and a potential equity package, aligning your success with the company's growth.
As a Data Scientist – Machine Learning , you will design and develop advanced ML models for credit scoring and risk assessment, while also leading research and innovation in large-scale transformer-based systems.
Credit & Risk Analytics : Design, develop, and optimize ML models for credit scoring, risk prediction, and scorecard generation.
Model Deployment & Automation: Implement scalable pipelines for model training, validation, and deployment in production environments.
Feature Engineering: Identify, extract, and engineer key features from structured and unstructured data to enhance model performance.
Model Monitoring : Establish continuous monitoring frameworks to track model drift, performance metrics, and data quality.
Research & Innovation: Explore and apply state-of-the-art ML and transformer architectures to improve predictive accuracy and interpretability.
Collaboration: Work closely with data engineers, product managers, and domain experts to translate business objectives into robust ML solutions .
Machine Learning: 2+ years of hands-on experience in developing, training, and deploying ML models for structured or tabular data.
Statistical Modeling: Solid understanding of statistical concepts, feature engineering, and model evaluation techniques.
ML Frameworks: Experience with scikit-learn , PyTorch , or TensorFlow for building and optimizing predictive models.
Python Programming: Strong proficiency in Python , with experience using NumPy , Pandas , and Matplotlib for data manipulation and analysis.
Data Handling: Practical experience with large datasets, data cleaning, preprocessing, and transformation for ML workflows.
SQL & APIs: Proficiency in writing SQL queries and integrating ML models with APIs or backend systems.
Version Control & Collaboration: Familiarity with Git and collaborative model development practices.
Analytical Thinking: Strong problem-solving skills with the ability to translate business problems into data-driven ML solutions.
Education: Bachelor’s or Master’s degree in Computer Science , Data Science , Mathematics , or a related quantitative field.
Experience: Min2 years of experience in machine learning , data analytics , or applied statistics roles.
Cloud Platforms: Exposure to AWS , GCP , or Azure for model deployment or data processing.
Domain Knowledge: Familiarity with fintech , credit risk , or business analytics domains.
Automation & MLOps: Basic understanding of model deployment , monitoring , or pipeline automation tools.
Continuous Learning: Enthusiasm for exploring new ML algorithms, open-source tools, and emerging technologies in data science.