Sumeet Malhotra - Blue Bell, Pennsylvania, United States | Professional Profile | LinkedIn (original) (raw)
Blue Bell, Pennsylvania, United States
19K followers 500+ connections
About
An industry recognized Management Consultant and Technology Executive who is focused on…
Activity
19K followers
Licenses & Certifications
Languages
English
Native or bilingual proficiency
Recommendations received
View Sumeet’s full profile
Other similar profiles
Explore more posts
- KYUNGJUN LIM freederia • 6K followers New Post: Integrated Safety-Constrained Edge AI Framework: Incentive-Driven Control, Federated Coordination, and Equity-Aware Privacy for Autonomous and Medical Systems - # Integrated Safety-Constrained Edge AI Framework: Incentive-Driven Control, Federated Coordination, and Equity-Aware Privacy for Autonomous and Medical Systems ## Abstract This record synthesizes three synthetic research seeds to propose a unified safety‑critical edge AI framework. Core modules provide an exponential token‑decay incentive engine, Bayesian logistic‑regression risk prediction, and a Gaussian‑process surrogate for adaptive parameter tuning. \[…\] \[Source & Legal Disclaimer\] This is an AI-generated simulation research dataset provided by Freederia.com, released under the Apache 2.0 License. Users may freely modify and commercially use this data \(including patenting novel improvements\); however, obtaining exclusive patent rights on the original raw data itself is prohibited. As this is AI-simulated data, users are strictly responsible for independently verifying existing copyrights and patents before use. The provider assumes no legal liability. For future Enterprise API access and bulk dataset purchase inquiries, please contact Freederia.com.
- KYUNGJUN LIM freederia • 6K followers New Post: Privacy-Preserving, Fairness-Aware Multimodal Symptom Triage Framework with Edge-Optimized Graph Sequencing and Audio Analysis - # Privacy-Preserving, Fairness-Aware Multimodal Symptom Triage Framework with Edge-Optimized Graph Sequencing and Audio Analysis ## Abstract This synthetic ASRSeed maps three complementary edge-AI tutoring modules onto a privacy-preserving, fairness-aware, multimodal symptom-triage system for healthcare. An audio front-end normalises patient-spoken symptom descriptions using formant-trajectory regression and Bayesian score fusion, feeding a hierarchical Bayesian state tracer that \[…\] Freederia continuously publishes synthetic, simulated, and projection-based research-data scaffolds on the open web. Where applicable, these materials are made available under the Apache License 2.0, allowing broad use for reading, reference, modification, reuse, research, and commercial exploration. Unless explicitly stated otherwise, Freederia records should be treated as exploratory research data rather than finalized experimental truth. They are intended to help AI agents, researchers, developers, and data pipelines explore new hypotheses, methods, and technical structures. Independent verification is recommended before academic, commercial, engineering, clinical, regulatory, or patent-related use. For larger-scale workflows, Freederia also provides structured API access. Compared with repeatedly crawling public HTML and then parsing, cleaning, deduplicating, and reconstructing metadata, API-based access can be more efficient and lower in post-processing cost. This can be especially useful for RAG pipelines, internal AI training preparation, model evaluation, dataset sampling, ontology construction, knowledge graph building, and research automation workflows. Freederia is an ongoing experiment in expanding both open discovery and machine-readable research-data access. Learn more: https://lnkd.in/gtErbjBn #Freederia #SyntheticData #AIResearch #RAG #MachineReadableData #ResearchData #AIInfrastructure
- KYUNGJUN LIM freederia • 6K followers New Post: Adaptive Prompt‑Injection Defense in Post‑Quantum Secure AI Deployment Pipelines Using Bayesian Policy Auditing - ## Reference Note The related-work entries in this generated exploratory research data are provided as representative methodological context, not as independently verified bibliography. Exact bibliographic details, DOI links, repository URLs, dataset availability, public-code claims, benchmark comparability, and independent verification status are not provided. Formal citation, technical due diligence, manuscript preparation, deployment planning, or commercial use \[…\] \[Source & Legal Disclaimer\] This is an AI-generated simulation research dataset provided by Freederia.com, released under the Apache 2.0 License. Users may freely modify and commercially use this data \(including patenting novel improvements\); however, obtaining exclusive patent rights on the original raw data itself is prohibited. As this is AI-simulated data, users are strictly responsible for independently verifying existing copyrights and patents before use. The provider assumes no legal liability. For future Enterprise API access and bulk dataset purchase inquiries, please contact Freederia.com.
- KYUNGJUN LIM freederia • 6K followers New Post: Adaptive Compliance Control for Humanoid Full‑Body Locomotion in Cluttered Environments Using Agent‑Based Musculoskeletal Modeling - ## Scope and Evidence Status This document is generated exploratory research data. Evidence status: **synthetic_simulated_projected**. Domain-risk tags detected: **ai_ml, biomedical_or_health, aerospace_tracking, synthetic_simulation, commercialization_roadmap, compliance_sensitive**. Quantitative values should be interpreted as synthetic, simulated, projected, or scaffold-level unless independently verified experimental evidence is explicitly provided. Exact references, official identifiers, repository links, datasets, hardware measurements, clinical claims, compliance \[…\] \[Source & Legal Disclaimer\] This is an AI-generated simulation research dataset provided by Freederia.com, released under the Apache 2.0 License. Users may freely modify and commercially use this data \(including patenting novel improvements\); however, obtaining exclusive patent rights on the original raw data itself is prohibited. As this is AI-simulated data, users are strictly responsible for independently verifying existing copyrights and patents before use. The provider assumes no legal liability. For future Enterprise API access and bulk dataset purchase inquiries, please contact Freederia.com.
- KYUNGJUN LIM freederia • 6K followers New Post: Scalable Emotion Recognition in Low‑Resource Settings via Multimodal Few‑Shot Learning and Federated Transfer - ## Reference Note The related-work entries in this generated exploratory research data are provided as representative methodological context, not as independently verified bibliography. Exact bibliographic details, DOI links, repository URLs, dataset availability, public-code claims, benchmark comparability, and independent verification status are not provided. Formal citation, technical due diligence, manuscript preparation, deployment planning, or commercial use \[…\] \[Source & Legal Disclaimer\] This is an AI-generated simulation research dataset provided by Freederia.com, released under the Apache 2.0 License. Users may freely modify and commercially use this data \(including patenting novel improvements\); however, obtaining exclusive patent rights on the original raw data itself is prohibited. As this is AI-simulated data, users are strictly responsible for independently verifying existing copyrights and patents before use. The provider assumes no legal liability. For future Enterprise API access and bulk dataset purchase inquiries, please contact Freederia.com.
- KYUNGJUN LIM freederia • 6K followers New Post: Privacy-Preserving Multi-Fidelity Edge-Control Framework with Causal Safety Masks for Aerospace Systems - # Privacy-Preserving Multi-Fidelity Edge-Control Framework with Causal Safety Masks for Aerospace Systems ## Abstract This synthetic exploratory seed unifies three complementary research strands into a single edge-centric control scaffold for aerospace power and thermal systems. A causal pathway graph isolates ion migration, grain-boundary chemistry, and shock sequencing while a federated Bayesian network enforces differential-privacy budgeting \[…\] Freederia continuously publishes synthetic, simulated, and projection-based research-data scaffolds on the open web. Where applicable, these materials are made available under the Apache License 2.0, allowing broad use for reading, reference, modification, reuse, research, and commercial exploration. Unless explicitly stated otherwise, Freederia records should be treated as exploratory research data rather than finalized experimental truth. They are intended to help AI agents, researchers, developers, and data pipelines explore new hypotheses, methods, and technical structures. Independent verification is recommended before academic, commercial, engineering, clinical, regulatory, or patent-related use. For larger-scale workflows, Freederia also provides structured API access. Compared with repeatedly crawling public HTML and then parsing, cleaning, deduplicating, and reconstructing metadata, API-based access can be more efficient and lower in post-processing cost. This can be especially useful for RAG pipelines, internal AI training preparation, model evaluation, dataset sampling, ontology construction, knowledge graph building, and research automation workflows. Freederia is an ongoing experiment in expanding both open discovery and machine-readable research-data access. Learn more: https://lnkd.in/gSRRN7q6 #Freederia #SyntheticData #AIResearch #RAG #MachineReadableData #ResearchData #AIInfrastructure
- KYUNGJUN LIM freederia • 6K followers New Post: Low‑Power Edge Inference for Real‑Time Authentication of Ancient DNA in Longitudinal Surveillance Systems - ## Reference Note The related-work entries in this generated exploratory research data are provided as representative methodological context, not as independently verified bibliography. Exact bibliographic details, DOI links, repository URLs, dataset availability, public-code claims, benchmark comparability, and independent verification status are not provided. Formal citation, technical due diligence, manuscript preparation, deployment planning, or commercial use \[…\] \[Source & Legal Disclaimer\] This is an AI-generated simulation research dataset provided by Freederia.com, released under the Apache 2.0 License. Users may freely modify and commercially use this data \(including patenting novel improvements\); however, obtaining exclusive patent rights on the original raw data itself is prohibited. As this is AI-simulated data, users are strictly responsible for independently verifying existing copyrights and patents before use. The provider assumes no legal liability. For future Enterprise API access and bulk dataset purchase inquiries, please contact Freederia.com.
- KYUNGJUN LIM freederia • 6K followers New Post: Integrated Self‑Verifying, Privacy‑Preserving, Symbolic Regression‑Based Structural Health Monitoring Framework for Critical Infrastructure - # Integrated Self‑Verifying, Privacy‑Preserving, Symbolic Regression‑Based Structural Health Monitoring Framework for Critical Infrastructure ## Abstract This record describes a synthetic, projected framework that unifies three complementary modules for real‑time structural health monitoring of critical infrastructure such as bridges, pipelines, and aerospace structures. A hybrid physics‑data Bayesian simulation loop continuously predicts structural response and applies a \[…\] \[Source & Legal Disclaimer\] This is an AI-generated simulation research dataset provided by Freederia.com, released under the Apache 2.0 License. Users may freely modify and commercially use this data \(including patenting novel improvements\); however, obtaining exclusive patent rights on the original raw data itself is prohibited. As this is AI-simulated data, users are strictly responsible for independently verifying existing copyrights and patents before use. The provider assumes no legal liability. For future Enterprise API access and bulk dataset purchase inquiries, please contact Freederia.com.
Explore top content on LinkedIn
Find curated posts and insights for relevant topics all in one place.