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Yash Thakkar
14 ш - перевести

When two theme-park operators merged, 34 parks still each ran their own SQL Server with ~2,720 source tables living on separate servers and over 10 million rows of data to migrate. Schema drift was causing failures in hard-coded ETL jobs, and there was no auditing or run level transparency, so data issues often surfaced only after flawed reports.

Inferenz built a config-driven data platform: centralizing mappings, load flags, S3 paths in a Snowflake table; using a dynamic COPY procedure with Python and Airflow; implementing object-level refresh tracking and row-count verification with alerts. Onboarding new park feeds became under two days, around 90% faster, schema drift issues dropped to zero manual fixes, and each run now logs full status and counts so leadership trusts the numbers.

Read the full case study on the Inferenz website to explore the architecture, challenges and lessons learned.

https://inferenz.ai/resources/....case-studies/config-

#configdrivendataplatform
#configurabledataplatform
#artificialintelligence

Configurable Data Platform for US Theme Park Analytics
inferenz.ai

Configurable Data Platform for US Theme Park Analytics

See how we developed a dynamic, configuration-driven data platform to enable real-time insights for a US-based theme park operator.
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Yash Thakkar
14 ш - перевести

A global online retailer with 90,000+ SKUs and more than 50 billion rows of transaction history was suffering from data silos: separate systems for sales, stock, promotions, and delayed reporting via nightly batches or external extracts. Pricing teams lacked visibility into how discounts impacted demand or margin. To address this, Inferenz built a unified cloud warehouse using Snowflake, Python, and Airflow, enabling near-real-time ingestion of stock and transactional data. A price elasticity engine was introduced to flag margin risks before campaigns, while reporting tools like Tableau and Hyperion were consolidated. This transformation happened in just 100 days, bringing in huge operational clarity.

The results were striking: dashboard creation sped up by 80%, manual data pulls reduced by 90%, and promo margin accuracy improved by 15%. A reusable ingestion framework also made it far easier to plug in new data sources without needing to rebuild pipelines. Decision makers now have the visibility and tools to run margin-aware pricing and promotional programs with much more confidence.

Discover the full case study on Inferenz’s website to learn more about the architecture, challenges, and real-world lessons.

https://inferenz.ai/resources/....case-studies/ai-driv

#aipoweredpricingandanalytics
#aipricinganalytics
#onlineretailanalytics

AI-Powered Pricing and Analytics for a Global Online Retail Firm
inferenz.ai

AI-Powered Pricing and Analytics for a Global Online Retail Firm

Learn how AI-driven pricing and analytics boosted efficiency, accuracy, and revenue for a leading global online retail firm.
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Yash Thakkar
15 ш - перевести

Modern healthcare systems are rich with data but often poor in data governance. From patient records and billing data to IoT streams and clinical notes, information is scattered across teams, tools, and cloud environments. This fragmentation increases compliance risks, slows down analytics, and creates operational bottlenecks.

Databricks Unity Catalog changes that. As a modern data governance solution built for platforms like Databricks, it provides centralized access control, audit trails, metadata management, and fine-grained lineage—all critical for healthcare CIOs navigating HIPAA, payer audits, and workforce scaling.

In this article, we share how Inferenz, a data-to-AI solutions provider, rolled out Unity Catalog across its Azure-based lakehouse environments. You’ll find architectural insights and real-world production lessons to align governance with clinical and operational goals.

https://inferenz.ai/resources/....blogs/databricks-uni

#aiinhealthcare #artificialintelligence #healthcareinnovation #homecare #healthtech

Databricks Unity Catalog in Healthcare: A Scalable Governance Framework
inferenz.ai

Databricks Unity Catalog in Healthcare: A Scalable Governance Framework

Discover how healthcare CIOs use Databricks Unity Catalog to manage PHI, enforce audit controls, and scale governed self-service analytics.
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Yash Thakkar
18 ш - перевести

Hospitals and home health teams continually face bottlenecks in Patient Access, EDs, Radiology, Nursing, Pharmacy, Revenue Cycle, and more. From messy referrals and imaging backlogs to alert fatigue and claim denials, these operational pain points add delays, errors, and financial strain. Agentic AI, digital co-workers embedded within EHR/ERP systems, tackle these issues by reading context, executing decisions, and writing back with clear audit trails to accelerate workflows and enhance revenue capture.

The blog outlines ten department specific Agentic AI applications including automating digital intake, eligibility checks, and referrals in Patient Access, active monitoring, alert prioritization, and summarization in Emergency Care, AI documentation, care plan personalization, and caregiver matching in Nursing, clinical risk scoring and CoPilot assisted reporting in Radiology, discharge summary automation in Surgical Services, medication risk checks in Pharmacy, care coordination and sentiment based follow up in Social Work, remote monitoring and retention analytics in Home Health, claims automation in Revenue Cycle, and patient feedback mining in Quality. These use cases illustrate how agentic AI can directly reduce friction and unlock efficiency across the care continuum.

CIOs can begin with a focused, high impact pilot by choosing one workflow with clear pain such as referral delays or denials, defining one outcome metric, and testing an agent for 60–90 days. By embedding governance such as HIPAA compliance and audit trails, leveraging existing interfaces like FHIR and HL7, and measuring quick returns including first pass claim rate and faster intake, CIOs can validate success and scale agents across departments. This hands on roadmap provides a pragmatic path from AI possibility to operational reality.


https://inferenz.ai/resources/....blogs/agentic-ai-in-

#agenticaiinhealthcare
#healthcareaiusecases
#patientcaregivermatching
#aiinhealthcare

Agentic AI in Healthcare: Department Use Cases for CIOs
inferenz.ai

Agentic AI in Healthcare: Department Use Cases for CIOs

This article maps hospital and home-health operations to agentic AI. Learn how to start AI pilots in hospitals for patient access, ED, RCM, etc. with clear steps.
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Yash Thakkar
19 ш - перевести

Healthcare CIOs today face growing operational challenges that affect both efficiency and care delivery. From data silos and revenue leakage to compliance pressures and staff burnout, these issues continue to strain healthcare organizations.

https://inferenz.ai/resources/....blogs/top-operationa

The blog “Top Operational Issues That Have Got Healthcare CIOs Worried” explores eight major pain points CIOs are dealing with, including documentation overload, staffing gaps, risk-prediction challenges, and the complexity of value-based care. These operational hurdles increase costs and slow down digital transformation efforts.


#caregiverburnoutsolutions
#caregiverconnect
#revenuecyclemanagementservices
#predictivestaffinghealthcare
#patientengagementsoftware

Top Operational Issues Facing Healthcare CIOs Today
inferenz.ai

Top Operational Issues Facing Healthcare CIOs Today

Discover the biggest operational issues that keep healthcare CIOs up at night: data security, interoperability, budgets, and more.
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    Информация
  • 21 сообщений
  • https://inferenz.ai/

  • Мужской
  • 05/21/84
  • Работает в Inferenz
  • Страна Индия
  • Город 1407 - 1415, The Capital 2 , Science City Road, Sola, Ahmedabad 380060, Gujarat, India.
  • Социальные ссылки
О нас

Yash Thakkar is the Co-Founder and Managing Director of Inferenz, a leading Data and AI/ML solutions provider. With expertise in Data Analytics, Databases, AI/ML, and Cloud Computing, Yash is dedicated to creating positive social and environmental impact through innovation. Passionate about learning and collaboration, he seeks opportunities to grow as a leader and contribute to dynamic organizations.

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