Unlocking the Potential of AI

    About MediaTek Research

    MediaTek Research is a specialized AI research unit within the Global MediaTek Group. With two state- of-the-art research centers located in Cambridge (UK) and National Taiwan University, we foster a collaborative environment where we work closely with esteemed institutions and academics worldwide.

    Our team comprises accomplished researchers with diverse backgrounds in computer science, engineering, mathematics, and physics. This expertise enables us to approach the most pressing challenges from multiple angles, fostering innovation and cross-disciplinary collaboration to seek both fundamental breakthroughs and practical applications.

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    Vision banner

    Vision

    Our vision is to push the limits of what is possible in Artificial Intelligence (AI) and Machine Learning (ML). We are committed to advancing the field by developing innovative technologies that empower people, while striving to create systems that are genuinely intelligent, ethical, secure, and sustainable.

    Our goal is to enable machines to learn, reason, and interact with humans in ways that are natural, intuitive, and beneficial to society; it should enhance the human potential, enabling us to lead happier, healthier, and more fulfilling lives. We believe that by pushing the boundaries of what AI can do, we can unlock new opportunities, discoveries, and progress that will shape our future.

    Research

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    Papers

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    Best AI Research Chipset

    Tek Talk

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    MediaTek Research Corp

    Seminars

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    Papers

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    Seminars

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    Latest Updates

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    2024-03-05

    Breeze-7B: Experience the Latest Highly Efficient Large Language Model Developed by MediaTek Research

    MediaTek Advanced Research Center
    2023-08-22

    Wireless channel modelling with diffusion models at GLOBECOM

    MediaTek Research Corp
    2023-06-23

    Innovate UK awards MediaTek Research up to £1 million funding on Eureka Globalstars.

    MediaTek Research
    2023-06-23

    Improving generative modelling with Shortest Path Diffusion (ICML paper)

    MediaTek AI Processing Unit
    2023-04-28

    MediaTek Research launches the world’s first AI LLM in Traditional Chinese

    Best AI Model
    2023-04-28

    MediaTek Research: Improving the speed and reliability of AI model training

    MediaTek Research
    2022-10-25

    AI breaks into IC design! Deep learning algorithm is showing its power

    AI Processing Unit
    2022-05-05

    MediaTek Announces Breakthrough in Artificial Intelligence and Chip Design

    AI Research Chipset
    2021-11-16

    MediaTek Research opened a brand new office in National Taiwan University

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    2021-11-12

    MediaTek Research has 6 papers accepted at NeurIPS 2021 conference and workshops

    Field of Expertise

    MediaTek AI Processor

    Generative
    Models

    Best AI Processor

    Artificial
    Intelligence

    MediaTek Advanced Research Center

    Wireless
    Communication

    MediaTek AI Processor

    Chip
    Placement

    MediaTek AI Processor

    Generative
    Models

    Best AI Processor

    Artificial
    Intelligence

    MediaTek Advanced Research Center

    Wireless
    Communication

    MediaTek AI Processor

    Chip
    Placement

    Online Lectures

    Chang Wei Yueh

    Chang Wei Yueh

    Trend in AI Theory Seminar: A Theoretical Analysis of Deep Q-Learning

    Mark Chang

    Mark Chang

    Trend in AI Theory Seminar: Provably Efficient Reinforcement Learning Algorithms

    Jezabel Garcia

    Jezabel Rodriguez Garcia

    Trend in AI Theory Seminar: Emergence: Complexity matters also in AI

    Yu Wang

    Yu Wang

    Provable Defenses against Adversarial Examples via the Convex Outer Adversarial Polytope

    Yen Ru Lai

    Yen Ru Lai

    Trends in AI Theory Seminar: Simple And Scalable Off-Policy Reinforcement Learning

    Sattar Vakili

    Sattar Vakili

    An Overview of Stochastic Bandits

    Chung En Tsai

    Chung En Tsai

    Trends in AI Theory Seminar: Learning Quantum States with the Log-Loss

    Chiatse Wang

    Chiatse Wang

    Trends in AI Theory Seminar: An Introduction to Sampling High Dimensional Constrained Continuous..

    Sattar Vakili

    Sattar Vakili

    Improved Convergence Rates for Sparse Approximation Methods in Kernel-Based Learning

    Alexandru Cioba

    Alexandru Cioba

    An Introduction to the Mean-Field Approach for Neural Networks

    Jun-Kai You

    Jun-Kai You

    Polyak-type step sizes for mirror descent methods

    Mark Chang

    Mark Chang

    Optimal Order Simple Regret for Gaussian Process Bandits

    Alexandru Cioba

    Alexandru Cioba

    An Introduction to the Mean-Field Approach for Neural Networks

    Mark Chang

    Mark Chang

    Generative Flow Networks (GFlowNets)

    Chung En Tsai

    Chung En Tsai

    Trends in AI Theory Seminar: "Online Portfolio Selection and Online Entropic Mirror Descent"

    Kuan Jen wang

    Kuan Jen wang

    A brief introduction to optimization on manifolds

    Yen Ru Lai

    Yen Ru Lai

    Off-Policy Deep Reinforcement Learning without Exploration

    Mark Chang

    Mark Chang

    Contextual Bandits with Linear Payoff Functions

    Sattar Vakili

    Sattar Vakili

    Kernel-Based Bandits: Fundamentals and Recent Advances

    Jezabel Garcia

    Jezabel Rodriguez Garcia

    Neural Networks and Quantum Field Theory?

    Si-An Chen

    Si-An Chen

    A Unified View of cGANs with and without Classifiers

    Jia-Hau Bau

    Jia-Hau Bau

    Provable verification on maxpool-based CNN via convex outer bound

    Michael Bromberg

    Michael Bromberg

    Overparametrized Neural Networks and Corresponding Error Estimates

    Mark Chang

    Mark Chang

    Is Q-learning provably efficient?

    Alexandru Cioba

    Alexandru Cioba

    A Brief Recap of SGD Convergence and an Application to MAML

    Chang Wei Yueh

    Chang Wei Yueh

    Trends in AI Theory Seminar: Stochastic bandits robust to adversarial corruptions

    Mark Chang

    Mark Chang

    Trends in AI Theory Seminar: "Contextual Bandits with Linear Payoff Functions"

    Alexandru Cioba

    Alexandru Cioba

    An Introduction to the Mean-Field Approach for Neural Networks

    Alexandru Cioba

    Alexandru Cioba

    A Brief Recap of SGD Convergence and an Application to MAML

    Mark Chang

    Mark Chang

    Contextual Bandits with Linear Payoff Functions

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