日韩性视频-久久久蜜桃-www中文字幕-在线中文字幕av-亚洲欧美一区二区三区四区-撸久久-香蕉视频一区-久久无码精品丰满人妻-国产高潮av-激情福利社-日韩av网址大全-国产精品久久999-日本五十路在线-性欧美在线-久久99精品波多结衣一区-男女午夜免费视频-黑人极品ⅴideos精品欧美棵-人人妻人人澡人人爽精品欧美一区-日韩一区在线看-欧美a级在线免费观看

歡迎訪問 生活随笔!

生活随笔

當前位置: 首頁 > 编程资源 > 编程问答 >内容正文

编程问答

Introduction for i-Teams

發(fā)布時間:2025/3/19 编程问答 25 豆豆
生活随笔 收集整理的這篇文章主要介紹了 Introduction for i-Teams 小編覺得挺不錯的,現(xiàn)在分享給大家,幫大家做個參考.

Introduction for i-Teams

Jan 17

文章目錄

  • Introduction for i-Teams
    • Online platform
    • Covid
    • Zoom rooms
    • Amy Weatherup
    • Histroy
    • samples
    • no 1 reason for start up to fail
    • No market need (42%)
    • timing is everything
    • nvoy [an iphone in 2003]
    • What went wrong?
    • STNC- the first mobile web browser
    • What went right?
    • Chance favors only the prepared mind---Louis Pasteur
    • ITEAM FORMATION
    • What
    • How does it help?
    • Iteams works like like real startup
    • What skills are you bringing to your teams?
    • Customers
    • **Benefits** not features
    • Finding contacts
    • Some past iteams projects
    • Inventor meeting
    • Research interests
    • Research projects
    • Teaching activity
    • Research opportunities
    • Department role and responsibilities
    • Content
    • Signaloid
    • 1 what
    • 2 why do not
    • possible relative modest edge devices
    • what does it mean for the automatic distributions
    • goal2

Online platform

  • moodle
    • recording
    • accouncements
  • zoom
    • online meeting rooms
  • slack
    • team communication
  • google drive
    • Storage
    • all materials needed
  • Micro.com
    • online interactive whiteboard
    • workshop
    • next week’s brainstorming

Covid

  • symptoms and isolations
  • masks
  • pizza
    • 6:30

Zoom rooms

  • lectures
  • team meetings

Amy Weatherup

  • STNC
  • Microsoft
  • Quuaalcomm
  • Start up business development
  • commercial and charitable boards
  • university teaching
  • created and run iteams
  • university of cambridge primary school
  • birthlight

Histroy

  • MIT
  • 2006
  • Pre-spin-out stage
  • Essex
  • UoL
  • 200 projects
  • 1300 students
  • 90 start ups founded
  • 2/3 still actively commercialising

samples

  • raspberry pi

no 1 reason for start up to fail

  • overconfidence
  • not creating what customer’s need
  • poor team structure
  • lack of capital
  • no market need !!!!!
  • no market
  • not right tea
  • get completed

No market need (42%)

  • Sanity check
  • if someone can not find it
  • which people
  • which company
  • how they will pay for it?
  • take a different approach at it

timing is everything

  • Time
  • note
    • not taking the

nvoy [an iphone in 2003]

What went wrong?

  • right product, wrong time

  • no viable route-to-market

  • Did not listen, did not solve current problems

  • Customers are not reasdy to take it

STNC- the first mobile web browser

  • brining information to people on the move

What went right?

  • Right product, right time
  • Route-to-market
  • business model
  • fast and flexible
  • paying customer

Time, timing and money is the most important things in life

  • Dr. andy richards
  • chiroscience, DanioLabs, Arakis and others

Chance favors only the prepared mind—Louis Pasteur

  • https://carey.jhu.edu/one/2010/fall/the-mind-of-the-enterpreneur

ITEAM FORMATION

  • new technology from cambridge lab

What

  • Analysis and recommend
    • best target applications for new technologies
      • no commercial application
        • valid and useful answers
  • use real feedback
    • industry experts
      • not just an interest exercise
  • your maintask real world feedback on your technologies
  • Geoffrey Moore in Crossing the Chasm
    • What is the one application that best captures the power and value of your technology?

How does it help?

  • Work on real inventions while still in the lab
  • look for real world uses that solve real customer problems
    • is it good match

Iteams works like like real startup

  • iteams
    • interdisciplinary
    • Mentoring
    • Contact
    • repeated revision of conclusions required
  • startup
    • complimentary skills
    • Feedback
    • Contact
    • Re[eayed review of progress and direction to ensure success

What skills are you bringing to your teams?

Customers

  • paying money to your product
  • sustainable business need paying customers
  • government grants and investment can help you started, but they are not customers
  • get the people willing to pay
  • people willing to pay

Benefits not features

  • do something new
  • do something better
  • behaviour change takes a generation
  • beware of assumptions
    • cheaper
    • safer
    • cleaner
    • quicker
    • less manual efforts
  • LARGE AND SMALL ONE
    • actually they are not the key things
    • actually, the industry want to see the best performance of the sensors
    • make the associated insights
    • problems for our technologies to make the implications

Finding contacts

  • Identify companies working in the relevant area
    • try different search terms
    • wikipedia
    • relevant industry market report
    • patent searching for relevant technical
      • Ways to looking for fields in the domain
  • finding out more about them
    • company websites
    • company annual reports
    • Pre releases and technology white papers
      • what they are saying what
  • identify people in your target companies
    • conference speakers and attendees
    • new items/ pre releases
    • linkedin
      • people talking about their companies
      • it is better to give a video call
      • which is much more engaging

Some past iteams projects

  • Cell cultivator
    • what is the technology and what has been done with it?
      • Cell cultivator 耕耘機 created to help inventor’s own research project
      • needed a controllable environment for observing cells over several weeks
      • working model cfreated and used in experiments, refined several times
      • we need to know the existance of others by systematic literature review
  • What is the technology and what has been done with it?
    • South american
      • toothache plant
    • plant
    • commercial
    • phase ii human clinical trials
    • I-teams
      • before
        • EU legislation ti
      • during
      • After

Inventor meeting

  • MarcBax

    • I assist clients to turn ideas, inventions and insights into tangible, valuable and sellable products. In some cases this means taking a product from proof-of-concept through to volume manufacture. But it can also mean working out a rough idea into an investable proposition by creating concepts and product demonstrators. Value is not intrinsic to an idea, but is created by making it practical, by execution.

      I focus on ideas where sensors and sensing play an important role - products that detect, monitor, diagnose, measure or image something. In application fields including medical devices, lab equipment, security/defense, and environmental monitoring.

      I’m a mechanical engineer and physicist by education, added a marketing degree through evening study and think I’ve become an all-round product- and business-developer by experience.

      For employers in the medical device and printing equipment industries I’ve taken products from concepts through to commercial success. Since 2003 I work freelance mostly for start-ups and SMEs.

      Apart from working on product design and development through my company Panchromos Limited I collaborate with my brother Laszlo in Bax & Company, an open innovation consultancy with offices in Spain, the UK and the Netherlands. We set up and execute collaborative innovation projects with an EU perspective (e.g. Horizon 2020, Interreg).

      I also volunteer as business mentor for i-Teams projects at the University of Cambridge.

  • Philip stanley marbell

    • Research interests

      NOTE: The publication list above is auto-generated by the University and is outdated and inaccurate. See below or here for an up-to-date list.

      Summary of Recent Research: My research exploits information about the physical world to make more efficient computing systems that interact with nature. This requires a combination of theory (applied mathematics) and hardware (circuits and computer architecture). My research involves equal parts of equations, proofs, circuits, and hardware prototypes. I spent some time in the mid-nineties working at Bell-Labs in the group that created C, C++, and Unix. Partly as a result, I enjoy designing domain-specific programming languages and compilers (inevitably, for problems involving efficient computing systems that interact with nature).

      Capsule Bio: B.Sc., 1999 (Rutgers); M.Sc., 2001 (Rutgers); Ph.D., 2007 (Carnegie Mellon). In the summers of 1995, 1996, and 1999, I worked as an intern / engineer at Bell Labs (Murray Hill, NJ), first in the Microelectronics Division, and then in the Data Networking Division, on a project spun out by the research group that created the C programming language, the Unix, Inferno, and Plan 9 operating systems, and much more. I spent 2006–2008 at Technische Universiteit Eindhoven in the Netherlands, joined IBM Research in Zürich, Switzerland, as a permanent Research Staff Member from 2008–2012, and then joined Apple in Cupertino from 2012–2014. I moved back to academia in 2014: I was in the MIT Computer Science and Artificial Intelligence Laboratory (CSAIL) from 2014-2017 and joined the University of Cambridge as a faculty member in 2017. Since 2018, I am also a faculty fellow at the Alan Turing Institute for Data Science and Artificial Intelligence in London.

      I lead the Physical Computation Laboratory, a research group with about a dozen members (three postdocs, two directly-supervised PhD students, two PhD project students from the Faculty of Mathematics, and five M.Eng./M.Res./IIB students from the Nano DTC, Graphene CDT, and elsewhere). I teach one third year / IIA project course (RISC-V Processor Design), one fourth-year / IIB course (Embedded Systems), and serve as a cohort leader for the Part IA Integrated Electrical Project. Additionally, I am leading the Embedded Systems Technology-Enabled Learning (TEL) Pilot Program in Cooperation with the Cambridge University Press and edX.

      Recent Professional Service

      • Program committee, USENIX/ACM European Conference on Computer Systems (EuroSys), 2020.
      • Co-Organizer, Dagstuhl International Workshop 20222 on Approximate Systems, Schloss Dagstuhl – Leibniz-Zentrum für Informatik, May 2020.
      • Associate Editor, IEEE Transactions on Computer-Aided Design of Integrated Circuits and Systems, 2019 to present.
      • Vice Chair, ACM Special Interest Group on Operating Systems (SIGOPS), 2019 to present.
      • Executive Committee, EPSRC Connected Everything NetworkPlus, 2019 to present.
      • Steering Committee, EPSRC Centre for Doctoral Training in Sensor Technologies and Applications (Sensor CDT), 2019 to present.
      • Steering committee, University of Cambridge Trust and Technology Initiative, 2017 to present.
      • Steering committee, USENIX/ACM Hot Topics in Operating Systems (HotOS XVII), 2017, 2019.
      • Program committee, USENIX/ACM European Conference on Computer Systems (EuroSys), 2019.
      • Program committee, IEEE Symposium on High Performance Computer Architecture (HPCA), 2019.
      • Program committee, ACM/IEEE International Symposium on Computer Architecture (ISCA), 2018.

      Selected Recent Research Publications

      • J. T. Meech and P. Stanley-Marbell, “Efficient Programmable Random Variate Generation Accelerator from Sensor Noise". Accepted for publication / to appear in IEEE Embedded Systems Letters, June 2020.
      • N. J. Tye, J. T. Meech, B. A. Bilgin, and P. Stanley-Marbell, “Generating Non-Uniform Random Variates Using Graphene Field-Effect Transistors”. Accepted for publication / to appear in 31st IEEE International Conference on Application-specific Systems, Architectures and Processors, July 2020.
      • R. Hopper, D. Popa, V. Tsoutsouras, F. Udrea, and P. Stanley-Marbell, “Miniaturized Thermal Acoustic Gas Sensor based on a CMOS Micro-hotplate and MEMS Microphone”. Proceedings of 4th Functional Integrated NanoSystems (NanoFIS), May 2020.
      • P. Stanley-Marbell, A. Alaghi, M. Carbin, E. Darulova, L. Dolecek, A. Gerstlauer, G. Gillani, D. Jevdjic, T. Moreau, M. Cacciotti, A. Daglis, N. Enright Jerger, B. Falsafi, A. Misailovic, A. Sampson, and D. Zufferey, “Exploiting Errors for Efficiency: A Survey from Circuits to Algorithms”. ACM Computing Surveys Vol. 53, No. 3, Article 51., 2020. (Nominated for best paper award.) Available as preprint ArXiv:1809.05859.
      • P. Stanley-Marbell and M. Rinard, "Warp: A Hardware Platform for Efficient Multimodal Sensing With Adaptive Approximation. IEEE Micro, vol. 40, no. 1, pp. 57-66, 1 Jan.-Feb. 2020.
      • Y. Wang, S. Willis, V. Tsoutsouras, and P. Stanley-Marbell, “Deriving Equations from Sensor Data Using Dimensional Function Synthesis". ACM Transactions on Embedded Computing Systems (best paper award winner), volume 18, issue 5s, (22 pages) October 2019.
      • P. Stanley-Marbell and M. Rinard, “Perceived Color Approximation Transforms for Programs that Draw". In IEEE Micro Journal, vol. 38, no. 4, pp. 20-29, July/August 2018.

      Selected Recent Patent Grants

      • P. Stanley-Marbell and M. Rinard, “Method and Apparatus for Reducing Sensor Power Dissipation". US Patent number 10,539,419, granted 21st January 2020.
      • D. Chan, J. Iarocci, G. Kapoor, K.-M.Wan, P. Stanley-Marbell et al. (Apple, Inc.), “Initiating background updates based on user activity”. US Patent number 10,223,156, granted 5th March 2019.
      • P. Stanley-Marbell and M. Rinard, “System, method, and apparatus for reducing power dissipation of sensor data on bit-serial communication interfaces". US Patent number 10,135,471 B2, granted 20th November 2018.
      • C. de la Cropte de Chanterac, P. Stanley-Marbell, K. Venkatraman, and G. Kapoor (Apple, Inc.). “Smart Advice To Charge Notification”. US Patent 10,083,105, granted 25th September 2018.
      • P. Stanley-Marbell, G. Kapoor, and U. Vaishampayan (Apple, Inc.). “Dynamic adjustment of mobile device based on voter feedback”. US Patent 9,813,990, granted November 7, 2017.

      Research projects

      • Programmable Sensing Composites
        Funder: EPSRC (EP/V004654/1). Investigators: P. Stanley-Marbell (PI), A. Barbalace (Co-I), S. Pattinson (Co-I)
      • OLED Color Power Optimization
        Funder: Industrial Sponsor. Investigators: P. Stanley-Marbell (PI).
      • Graphene-Based Ambient Light Sensing and Signal Processing
        Funder: Industrial Sponsor. Investigators: S. Hofmann (PI) and P. Stanley-Marbell (Co-I).
      • Uncertainty Propagating Processor (UPP) Industrial Demonstrator
        Funder: EPSRC Impact Acceleration Account (EP/R511675/1). Investigators: P. Stanley-Marbell (PI).
      • New Industrial Systems: Optimising Me Manufacturing Systems
        Funder: EPSRC EP/R022534/1. Investigators: P. Stanley-Marbell (Co-I). Collaborators: Kent (PI), Bath (Co-I), UWE (Co-I), Imperial College London (Co-I), University College London (Co-I).
      • Computational and Sensing Vitamins for Construction and Infrastructure
        Funder: Industrial Sponsor. Investigators: P. Stanley-Marbell (PI).
      • Programmable In-Powder Sensors (PIPS) for Real Time Metrology and Data Analysis in Powder Processes
        Funder: EPSRC (via MAPP Hub). Investigators: P. Stanley-Marbell (PI).
      • Continuous In Situ Microstructure and Composition Analysis within 3D-Printed Structures Using In-Chamber Sensors
        Funder: EPSRC (via Connected Everything Network Plus). Investigators: P. Stanley-Marbell (PI). Collaborators: Imperial College London (Co-I), Sheffield-Hallam University (Co-I).
      • Energy, Information-Leakage, and Noise Characterization for Sensor Fingerprinting and Sensor Privacy Guards
        Funder: Royal Society Grant RG170136. Investigators: P. Stanley-Marbell (PI).
      • Graphical Programming with Physical Laws for Engineering Students (Grapples)
        Funder: Teaching and Learning Innovation Fund (TLIF) award. Investigators: P. Stanley-Marbell (PI).

      Teaching activity

      • Module lecturer, CUED 4B25 (Embedded Systems)
      • Project lecturer/leader, CUED GB3 (RISC-V Processor Design)
      • Course instructor, MIT 6.S194/IAP (Error-Efficient Computing Systems) in IAP 2017.
      • Workshop instructor, MIT 6.S977 (Technical Communication Skills for Graduate Students), spring 2016.
      • Course instructor, MIT 6.S194/IAP (Error-Efficient Computing Systems) in IAP 2016.
      • Advisor, MIT EECS Communication Laboratory (Communication Skills for Engineers), 2015 to 2017.
      • MIT Kaufman Teaching Certificate Program, spring 2015.
      • From about 2002 to 2005, I took part in the Carnegie Mellon Eberly Center for Teaching Excellence program.

      Research opportunities

      • Compile-Time Transformations to Induce Optical Illusions in a Vector Drawing Language (available, starting 2020)
      • Machine Learning for Sensor Transducer Conversion Routines (available, starting 2020)
      • Synthetic Sensors and Digital Sensor Substitution (available, starting 2020)
      • Feature Extraction in Multi-Modal Sensor Data by Dimensional Function Synthesis on FPGAs (available, starting 2020)
      • Performance and Power Analysis of Sensor Access Schedulers (available, starting 2020)
      • Sensor access schedulers (available, starting 2020)
      • Virtual Machine / Interpreter for C-like Language on Microcontrollers with Less Than 128k RAM (available, starting in 2020)

      Department role and responsibilities

      • Designed and introduced new 4th-year undergraduate course, 4B25 Embedded Systems (2017/2018)
      • Designed and introduced a new 3rd-year undergraduate project-based course on Computer Architecture with RISC-V, Verilog, and the iCE40 FPGA (2018/2019)
      • Cohort leader for IA IEP

Content

  • five years ago
  • program
    • Mit-translation program
    • technology for embedded system
    • accurate system sensors
    • interesting things
  • patent filing
  • lent to spin out-
  • examples
  • picture description of the problem
  • keep the slides brief

Signaloid

  • tesla

  • swirlesland

  • Auto

  • coop

  • computing system

  • how uncertainty they are

  • algorithms

  • large and growing challenge across markets

    • computational finance
      • customers can we analyze the POE solution
      • volatity
      • equity
      • commity
      • models they have today
      • predictions
      • Price of the stock
      • with the signaloid’s technology
      • distribution and the uncertainity of the information
        • how sure the data things will do
          • will you have the single number
          • in reality , you have a distribution
          • at least, they want you to know the probability of the price distribution
    • healthy
      • customer
        • can we make repp indicate prediction uncertainty??? what makes the different in normal ai?
          • pixals
          • estimate the temperature of the skin
          • response
          • 55 beats
        • a distribution for the thing
    • ai in autonomous systems
      • customer
        • can we explain uncertainty in decisions of legacy sensor-driven firmware?
        • the distribution of the
  • representation of the uncertainity

  • taking existing software on the computing platforms

  • on the implementations of the algorithms to be implemented today

  • intermediate

  • context


  • question
  • what do we want to find out
  • primary from the renewable energy sectors
  • building a sub sea auto veheicles
  • behaviour of the auto veicles
  • Taking our technology to make their system safer
  • automaous system
  • automous system interecting with the human
  • human robotic
  • uav
  • driveless car
  • full auto

  • identify specific domain, people, company
  • this people is the boss in the domain
  • this people is the best in this domain
  • they would benefit their
  • cloud deployment for analyszing their stage
  • they want to see their systems
  • find out their person
  • who they can
  • a lead on the people who will use our product
  • if you
  • Get

signaloid

  • trustworthy data-driven system
  • by providing technologies for
    • capturing
    • storing
    • transmitting
    • computation
      • empirical data
        • have uncertainties
  • The process
    • source of empirical data
    • technologies for representing uncertain data
    • technologies for storing and i/o uncertain data
    • technologies for computing on uncertain data
    • legacy host software
  • every measurement in nature is related to uncertainty
  • Estimate of uncertainity of the things
  • specific point to the questions
    • seperate from the product
    • integrated circuit
    • interfaces
    • number of standard interfaces
    • standard equippments
    • integrated circuits for sit behind it
    • quantification of the measurement of the uncertainity
    • Camera of the phone has the csi
  • allow the characteristiction for th

  • is it a hardware?
    • Scale through cloud api’s growth in services integrating it
    • indicator of success: get other cloud platforms / apps building on top of our infracturcture
    • Lead market in hardware modules for trustworthy automous
    • indicator of success: get autonomous systems integrating our GPU/fpga

  • what is your business model?

  • product vision
    • Go to market
    • via cloud deployment
    • indicator of succes

  • CHIP DESIGN
    • PHASE I
      • VHDL
      • R-T-L; Register-Transistor-Logical design
    • PHASE II
      • Physical design
      • actual circuits

  • Leads in

  • route to market
    • product line
      • prototypes
        • partners
    • product line
    • product line

  • cloud platforms
  • edge hardware
  • working to make these solutions that happen

  • i-teams
  • really who have the pains today

  • people who understand that they have the problem in the autonomous systems

  • you can identify
  • have the need to make that
  • understand their problem better
  • dealing with the problems on the problem they are selling

  • eu legistration
  • business a lot of businesses in your directions
  • gdpr
  • Sub industry

  • security

  • what are your description on how your product

    • Outcome 1
      • A large company some
    • Outcome 2
      • A small company really benefits for your
      • real customer who has the real pain point
  • I-teams

    • a clear distinctions
      • not here to sell the technologies
    • i-teams
      • gather information about the types of the institutions
      • get opinions from the technologies
      • the roadmap identifided
      • get their perceptions in their mind
      • where they will deverications from
      • intelligence
      • produce
      • a conversations about the preselling processs
      • how do you sell your product?
      • which benefits for your products?
      • what development chocies do you have to make in order to make it possible to happen
  • we help you get the information on how other people think about it

  • solve your uncertainties problems

  • insulted to

  • do you have an issue about the uncertainity

  • the conservations

  • the business development on their side


  • 16 times compared using monte carlo simulations

  • Ecosystems and competition

  • ver

    • deployment model sophistication
      • cloud+hardware
      • hardware only
      • cloud compute
      • Library/os
      • End-user service
  • hor

    • technology solipholicatoion and risk
      • classical computation
      • confidence intervals
      • distribution track
      • classiscal interface for NISQ
      • Quantum
  • Signaled: cloud-navie hardware

  • Over 2000 x faster than the state of art at uncertainity tracking


  • computer archiecture
  • CMU
  • half of the decade in ibm
  • apple
  • what other people think about the
  • 8 publications
  • since the first publication
  • top picks in the
  • key
  • Gchq
  • the world has the

  • uncertainity of the sensor side
  • machine learning

a = 0.754354

b = 14.985515

c = -1.106014

  • use my technologies for making perictions

  • values

  • Appreciation

  • floating values


  • step things
  • representing to make it
  • different
  • go beyond sensor data
  • sensors

  • variables
  • Uncertainity and distribution data
  • uncertainity data
  • Uncertainity does not come only from data
  • a probability distribution about the
  • rador
  • flight sensors
  • analog
  • creating the 3d imagies
  • have the measurement uncertainities
  • multi paths
  • objects in the room
  • what you know you should be
  • noises
  • just because the measurement system, which is ill formed
  • signoid sub
  • tracking uncertainty
  • emperical market data
  • push that to the black sore equity for
  • making the decision about the trust

  • great
  • think

  • brainstroming
  • applications of the technologies

1 what

summary of technologies

  • sentense 1: it is a technology to visualize the uncertainty

  • sentense 2: starting from the cloud computing services now to the edge computing platforms in the future for higher performances.

  • elivator plitch

  • have 20 seconds to hook someone

2 why do not

  • dimensions or questions
  • potential aspects for that
    • it is useful for data analysists for making the interperations
    • it is useful for the real data responses
  • considerations people will have
    • people who need to quanitiy the uncertainity to make the interperations will benefit most
  • some applications for high
  • possible relative modest edge devices

  • what does it mean for the automatic distributions

  • what are the imagine the systems
  • auto

  • le
    • urban planning
    • smart cities
    • computer visions
    • computer imagines
    • archectures
    • cost living lab
    • tool of understanding of it
    • sensors
    • how to get people involved in the ICT problems
    • How the culture archive them in the databases in a highly
    • digital twin for in phd at digital twin
    • urban planning
    • urban modelling
  • peter
    • ai in logistics
  • franscrio
    • digital twin
    • living model of
    • engine
    • Operating at certain minutes per
    • cool thins in the
    • complex
    • harvessing data
    • manufacturing
    • and data gathering
    • making it as broad as possible
    • new cities
    • new costs
    • crm
    • one big problem
    • ideal to digital twin
    • exact copy of this things
    • billion of pound
    • government product
    • trying to make the practical solutions
    • digital twins in organizational learning processes
    • how digital twins for their knowledge interperinal
      • machine learning staff in the staff
    • one being the phd
      • veronica

  • Adium-
    • eng
    • bachelor
    • master
    • Electronic
    • information
    • theory
    • machine learning
    • second
    • natural language processing group
    • information extraction
    • how well people on

  • s
    • ug
      • csee
    • master
      • computer vision
      • breahing
      • healthcare purposes

  • chemical engineering
  • Chem engineering
  • radio
  • Chemical
  • sustainable
  • neural networks
  • y
  • neural network
  • bay
  • confidence
  • pattern
  • specture
  • solution
  • hblc
  • cambridge
  • survival
  • academically

  • time
  • interested to see

  • ramioms
  • inperformance
  • Micro

  • read the paper in the

  • Goal

    • who are we?
  • Goal1

    • understand
    • https://signaloid.io/cores
  • goal2

與50位技術專家面對面20年技術見證,附贈技術全景圖

總結

以上是生活随笔為你收集整理的Introduction for i-Teams的全部內容,希望文章能夠幫你解決所遇到的問題。

如果覺得生活随笔網(wǎng)站內容還不錯,歡迎將生活随笔推薦給好友。