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Research Overview

We carry out innovative research that is academically outstanding and has the potential to change how financial markets work, often in collaboration with industry. Below are some of the areas our researchers focus on.

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Quantitative-Finance

Electronic Trading
The transition from voice trading of liquid high volume assets like equity and FX to electronic trading occurred some time ago. Now, many institutions face big challenges to move as much as possible of their business onto electronic trading platforms. Computer algorithms execute the orders and make substantive decisions without any human intervention. There is a growing need to develop better quantitative trading algorithms.  In algorithmic trading, academic members are experts in the areas of algorithmic and high-frequency trading. There is extensive work on limit order books, optimal execution,  and market making, where the main tools are drawn from market microstructure, stochastic optimal control, and machine learning.

Data Analysis and Patterns in Data
The existence of easily accessible big data sets and the ability to extract meaningful information from them will shape the future in many research areas. From the analysis of the history of financial data, coupled with the history of the sentiment extracted from the web, one can endeavour to answer questions which will be important to all stakeholders in financial markets. Large heterogeneous data sets demand development of novel methodology to better describe.produce research using tools that benefit from the availability of this data, and endeavours to produce novel algorithmic innovations in machine learning which have downstream financial applications. Examples of this include deep learning, time-series forecasting, graph-based machine learning, natural language processing, reinforcement learning, Bayesian machine learning or causal inference. Expertise in answering fundamental questions in these fields allows for an improved understanding on how to perform financial forecasts, give insight on the connectivity between financial assets or allow to quantify the uncertainty of model predictions.

Natural Language Processing

Market agents are exchanging a substantial amount of information in natural language format via text and audio data. Social media posts, news articles, central bank statements, analyst reports, and company filings are just a few examples of the wide array of potential sources. Advancements in modern natural language processing (NLP) methods allow for ever more nuanced and precise automated information processing and signal extraction. Particularly, the fusion of traditional tabular financial data with text data seems promising to enrich financial and economic analyses.by working on improved multimodal machine learning models, investigating pivotal time-series structures for NLP models in financial contexts, and analysing news signals in central bank communication.

Multi-Agent Systems in Finance

The rise of artificial intelligence and adoption of autonomous agents will shape many aspects of financial markets. There is a growing need to further understand the interactions of multiple autonomous agents and the impact they have on prices, liquidity, and the efficiency and integrity of financial markets.

at the forefront of building the necessary theory for relevant stakeholders to understand how markets can become more efficient to reinforce competition, and to also understand various risks such as collusion and bubbles. The main tools come from game theory, stochastic approximation, optimal control, and misspecified learning.

Decision Making under Uncertainty, Asset Allocation and Pricing

Having to act in a context of uncertainty, or “take risks” is at the centre of much of human endeavour. Risks are hard to quantify and it is not always straightforward to make a decision under uncertainty.  In finance, risks stem from the randomness of a future outcome (e.g., unexpected changes in: prices, demand, supply, etc.) and from assuming that a model is a correct representation of a financial system. In both cases, deciding what is an optimal financial strategy or policy, requires a deep understanding of how key financial variables are interconnected to understand the system and to make predictions.

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financial modelling to machine learning

連絡先

focuses the attention on the recent and cutting-edge contributions to topics that can help lay the foundations for the future financial landscape: economics, microstructure, monetary policy, decentralised finance, and financial technology.
 

In the context of quant jobs, here are the five main types and the differences in their roles:

1. Derivative Quants

  • Role: Develop and validate pricing models for derivative products.

  • Location: Mainly on the sell-side (securities firms, banks), often found in both front and middle offices.

  • Skills: Use probability theory, partial differential equations, numerical analysis.

  • Programming: C++, Java, C#, Python, VBA.

  • Types:

    • Desk Quants: Support traders by developing tools.

    • Model Validation Quants: Validate models built by front-office quants.

    • Research Quants: Develop and publish new models, often associated with research institutions.

    • Quant Developers: Implement models into systems or tools.

2. Risk Quants (Capital Quants)

  • Role: Develop and validate models for risk measurement, like VaR/ES, stress testing, and scenario analysis.

  • Location: Mainly on the sell-side, usually in middle offices.

  • Skills: Use statistics, time series analysis.

  • Programming: Python, R, Matlab, SAS, VBA.

  • Notes: Responsible for internal and regulatory risk models across various assets, including derivatives, bonds, and equities.

3. Algo Trading Quants

  • Role: Develop algorithms for trading strategies such as arbitrage, market making, and optimal execution.

  • Location: Hedge funds or front-office departments on the sell-side.

  • Skills: Use machine learning, time series analysis, statistics, probability theory.

  • Programming: Python, C++, Java, Q language.

  • Notes: Their work is directly tied to profitability, often acting as both programmer and trader.

4. Asset Management (Asseman) Quants

  • Role: Develop quantitative models for asset management strategies and support quant fund managers (FM).

  • Location: Buy-side (asset management firms, insurance companies).

  • Skills: Use machine learning, time series analysis, statistics, mathematical optimization.

  • Programming: Python, R, VBA.

  • Notes: Work primarily with physical assets, and the pace is usually slower than on the sell-side.

5. Sell-Side Quant Analysts

  • Role: Perform quantitative analysis for external reports, focusing on stock price analysis and related financial modeling.

  • Location: Sell-side (securities firms).

  • Skills: Typically use less complex math, focused on clarity for external clients.

  • Programming: VBA, Python (if necessary).

  • Notes: Rare job role, with few specific entry paths available for new graduates. Less programming is involved compared to other quant roles.

These five quant roles differ primarily in the type of financial products they focus on, their location within financial institutions, and the mathematical and programming skills they employ.

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経済学研究
経営学 研究

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We do things which others have never done before by creating completely new methodologies. We co-create value boldly by delicately disrupting conventional value.

We provide open access to technology such that everyone, from individuals to organisations, can participate in and contribute to a sustainable ecosystem of intelligent  and technology for the benefit of society.

Cutting-edge technology that attracts the world's attention

​1. Artificial Intelligence (AI) ...

2. Internet of Things (IoT) ...

3. Cloud Computing...

4.5G connectivity...

5.Ubiquitous network...

6. Computer vision ...

7. Robots & Drones ...

8. Blockchain

9. Digital fabrication

10. Big data

self-driving car
Natural language processing*
* A series of technologies that allow computers to process language (voice assistant, automatic translation, etc.)
Plastic recycling technology
AI-powered sensor
Bioinformatics*
*Technology that analyzes life science information with IT technology and uses it for medical improvement and product development
green hydrogen
shared mobility
alternative protein
3D printer
materials informatics
precision agriculture
synthetic biology

"Environment/Energy Field", "System/Information Science Field", "Life Science/Clinical Medicine Field"), "Nanotechnology/Materials Field"
Bird's-eye view classification and research and development area
Environment/energy application
Next-generation solar cell materials/ Power storage devices/ Power semiconductor materials/devices/ Energy carriers/ Separation technology/
Life/Healthcare Applications/Biomaterials/Nanomedical Systems/Biomeasurement/Diagnostic Devices/Bioimaging
  ICT/Electronics/New Functional Nanoelectronics Devices/Integrated Photonics/Spintronics/MEMS/Sensing Devices/Robot Fundamental Technology/Quantum Information/Communication/Quantum Measurement/Sensing/
Social Infrastructure/Structural Materials (Metals)/Structural Materials (Composite Materials)/
Design and control of materials and functions/Molecules/Element strategy/Rare element replacement/Materials informatics/Phonon engineering/Topological materials/Low-dimensional materials/Design and process of complex materials/Nanomechanical control technology/
Common basic science / Microfabrication process / Additive manufacturing / Laser processing / Nano-operand measurement technology / Materials simulation / Common support measures / ELSI / EHS of nano / micro materials, international standards
Sustainable energy and resources, advanced materials and green intelligent manufacturing, ubiquitous information networks, eco-value agriculture and bio-industry, comprehensive health security, ecological and environmental protection, development, aerospace and maritime capacity development, national and public security In order to do so, the following strategic research will be focused on.
 1.Sustainable energy/resource system = three types of research, including scaled power generation and advanced nuclear energy using renewable energy, high-efficiency comprehensive utilization of clean coal, and research and development/application models for deep resource exploration equipment.
 2, Advanced materials and green intelligent manufacturing system = research on green manufacturing equipment for high-quality basic raw materials, high-performance composite material development and manufacturing equipment, highly efficient and clean recycling of resources, ubiquitous information manufacturing technology, etc.
 3, Ubiquitous information network system = "post-IP" network model, "IOT: Internet of Things" (ubiquitous network), research on low-cost, low-loss information equipment systems and application models.
4. Eco-value agriculture/bioindustry system = research on molecular design of agricultural animal and plant varieties, biomanufacturing, new bioindustry, etc.
5. Comprehensive health security system = four research areas: early diagnosis and systemic involvement of serious chronic diseases, brain and cognitive science, psychological and mental health, stem cell and regenerative medicine, and low-cost health and medical technology with widespread benefits.
6. Ecological/environmental protection, development and development system = carbon cycle/climate change response research, regional environmental simulation/watershed environmental management system/application model, research on strategic bioresource protection and utilization and biodiversity, etc.


AIGC is in high industry demand and has been labeled as one of the most prospective paths for the future of AI. The AI industry is expected to experience a technological revolution driven by the application of AIGC in text, audio, images/videos, games, the metaverse, and many other technological scenarios. The successful commercialization of AIGC in those fields represents the potential of a trillion-dollar market,and has made related startups extremely appealing to investors
Methods that train and fine-tune AIGC (AI-Generated Content) models in a faster and cheaper manner have become extremely sought after for the commercialization and application of AIGC. Using previous experience regarding large model acceleration, AI was able to release a complete open-source Stable Diffusion pretraining and fine-tuning solution. This solution reduces the pretraining cost by 6.5 times, and the hardware cost of fine-tuning by 7 times, while simultaneously speeding up the processes! The fine-tuning task flow can also be conveniently completed on an RTX 2070/3050 PC, allowing AIGC models such as Stable Diffusion to be available to those without access to extremely complicated machines.

ChatGPT: Optimizing
Language Models
for Dialogue

We’ve trained a model called ChatGPT which interacts in a conversational way. The dialogue format makes it possible for ChatGPT to answer followup questions, admit its mistakes, challenge incorrect premises, and reject inappropriate requests.

Our company participates in the R&D team of chatGPT

Our company participates in the R&D team of BaiDu chatGPT

 

Our company participates in the R&D team of Alibaba chatGPT

Introducing Bard

It’s a really exciting time to be working on these technologies as we translate deep research and breakthroughs into products that truly help people. That’s the journey we’ve been on with large language models. Two years ago we unveiled next-generation language and conversation capabilities powered by our Language Model for Dialogue Applications (or LaMDA for short).

We’ve been working on an experimental conversational AI service, powered by LaMDA, that we’re calling Bard.


An AI research and deployment company. Our mission is to ensure that artificial general intelligence benefits all of humanity.
· No-code AI is a category in the AI landscape that aims to democratize AI. No-code AI means using a no-code development platform with a visual, code-free, and often drag-and-drop interface to deploy AI and machine learning models. No code AI enables non-technical users to quickly classify, analyze data and easily build accurate models to make predictions


 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

Our mission is to build open-source AI projects through collaborative research efforts between leaders and experts in their fields; these include researchers, engineers, developers, PhD candidates, and AI artists across multiple disciplines. Current AI projects include text-to-image generation and model developments in language, learning, audio and biology.

Our primary drive is that creativity promotes the advancement and expansion of the human potential to develop breakthrough ideas and convert them into practical solutions to build an inclusive, more communicative, creative future for everyone.

ASR + #ChatGPT + TTS + Sentimental analysis + #Audio2Face + #MetaHumanUnrealEngine

FOUNDER & CTO Guolong

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Ph.D. in Computer Science, Harvard Universityand Doctor of Business Commerce and Management,Harvard University Research Scholar, University Professor

FOUNDER & CEO YuHongHong

Nobel Prize in Physiology or Medicine

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Partners

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