Unlocking the Black Box: Why Explainable AI is Crucial for the Future of BFS

Bridging the Gap Between Complex Machine Learning Models and Trustworthy Decision-Making

From Black Box to Glass Box: The Power of Explainable AI in BFS

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    Want to know what we do?

    We transform complex, opaque machine learning models into transparent, interpretable systems.

    We leverage cutting-edge techniques like SHAP, LIME, and advanced feature engineering.

    We enable organizations to confidently make data-driven decisions, ensuring compliance, fairness, and trust.

    Our solutions are designed to optimize model performance and are easy for stakeholders across levels to understand.

    Challenges

    01

    Complexity of ML Models: ML models, intense learning, often function as black boxes, making their decisions hard to interpret.

    02

    Balancing Precision and Interpretability: High-precision models can be challenging to explain, creating a trade-off between accuracy and clarity.

    03

    Scalability of Explanations: Explaining complex models across various use cases can be challenging, especially at scale.

    04

    Regulatory Compliance: BFS, a lack of transparency can lead to non-compliance with stringent regulations.

    05

    Trust & Adoption: With clear explanations, stakeholders may be confident in trusting and adopting AI-driven decisions.

    06

    Accountability & Fairness: Unexplainable models risk producing biased outcomes, undermining fairness and accountability.

    Our Approach

    • Enhanced model interpretability through advanced feature selection algorithms.
    • Implementing robust monitoring frameworks that trigger actionable alerts.
    • Focusing on local and global model explanations ensures that AI systems' decisions are transparent and aligned with the client's business objectives.
    • Our solutions improve the accuracy and robustness of models and provide insights that empower one's team to act decisively.

    Business Impact

    • Robust Explainable codes with about 40% reduction in run time (runs smoothly without any failure).
    • Feature Rationalization: Making models easier to interpret by reducing the number of features from ~4300 to ~500 without compromising model performance.
    • Early intervention models reduced expected payments by 25% in specific cases, enabling preventive actions to minimize risk.

    Why Tiger Analytics

    We provide certainty by solving your toughest challenges.

    Our problem-solving approach involves finding answers and asking more questions until we know what will determine success and how to get there. We excel at helping you drive the right course of action, dispel ambiguity, and confidently move ahead by combining the best of AI and analytics.

    Awards & Recognitions

    Ranked among Financial Times High Growth Companies Asia Pacific
    Ranked among Financial Times The Americas’ Fastest Growing Companies 2024
    Vaishnavi Kandala is recognized as 40 under 40 Data Scientist in India
    Leader in AIM's PeMa Quadrant for Top MLOps Service Providers

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