Submit Search
Upload
Class 9 & 10 class lesson 10 ( stomuch and gastic gland)
•
Download as PPTX, PDF
•
0 likes
•
258 views
Cambriannews
Follow
Cambrian School & College
Read less
Read more
Education
Report
Share
Report
Share
1 of 11
Download now
Recommended
Cambrian School & College
Class 7 bangladesh & global studies capter 3 class 1
Class 7 bangladesh & global studies capter 3 class 1
Cambriannews
sakalava
sakalava
marlons940
Presentación1
Presentación1
Biviana Tocto Saavedra
Mediterranean diet2
Mediterranean diet2
ardy_proot
Informativo IAB Chile Abril 2013
Informativo IAB Chile Abril 2013
IAB Chile
El Ayuntamiento de Pedrezuela comienza a preparar los campamentos de verano que se desarrollarán durante los meses de junio, julio, agosto y septiembre de 2013. Para los Campamentos Deportivos los niños deben haber nacidos entre 2005 y 1998, y para los Campamentos Urbanos entre 2004 y 2009. El Campamento Deportivo se realizará exclusivamente durante el mes de julio. El Campamento Urbano, para todas las edades, se realizará durante todo el verano. Un mínimo de 10 niños para que la actividad se realice. Además, se realizará campamento en Montenebro siempre que haya un grupo de 10 niños en horario de 9.30h a 14.00h.
2013 Campamentos de Verano en Pedrezuela - Inscripciones
2013 Campamentos de Verano en Pedrezuela - Inscripciones
Pedrezuela Activa
Overall 5.8 Years of Professional IT experience in Data Warehousing and Business Intelligence. Having one year onsite experience in Mexico and USA with USAA Client, USA. Having good Knowledge in Bigdata, Hadoop, Pig, Hive, Sqoop, Hbase, Python, Spark, Scala.
Sudhir hadoop and Data warehousing resume
Sudhir hadoop and Data warehousing resume
Sudhir Saxena
When working with big data or complex algorithms, we often look to parallelize our code to optimize runtime. By taking advantage of a GPUs 1000+ cores, a data scientist can quickly scale out solutions inexpensively and sometime more quickly than using traditional CPU cluster computing. In this webinar, we will present ways to incorporate GPU computing to complete computationally intensive tasks in both Python and R. See the full presentation here: 👉 https://vimeo.com/153290051 Learn more about the Domino data science platform: https://www.dominodatalab.com
GPU Computing for Data Science
GPU Computing for Data Science
Domino Data Lab
Recommended
Cambrian School & College
Class 7 bangladesh & global studies capter 3 class 1
Class 7 bangladesh & global studies capter 3 class 1
Cambriannews
sakalava
sakalava
marlons940
Presentación1
Presentación1
Biviana Tocto Saavedra
Mediterranean diet2
Mediterranean diet2
ardy_proot
Informativo IAB Chile Abril 2013
Informativo IAB Chile Abril 2013
IAB Chile
El Ayuntamiento de Pedrezuela comienza a preparar los campamentos de verano que se desarrollarán durante los meses de junio, julio, agosto y septiembre de 2013. Para los Campamentos Deportivos los niños deben haber nacidos entre 2005 y 1998, y para los Campamentos Urbanos entre 2004 y 2009. El Campamento Deportivo se realizará exclusivamente durante el mes de julio. El Campamento Urbano, para todas las edades, se realizará durante todo el verano. Un mínimo de 10 niños para que la actividad se realice. Además, se realizará campamento en Montenebro siempre que haya un grupo de 10 niños en horario de 9.30h a 14.00h.
2013 Campamentos de Verano en Pedrezuela - Inscripciones
2013 Campamentos de Verano en Pedrezuela - Inscripciones
Pedrezuela Activa
Overall 5.8 Years of Professional IT experience in Data Warehousing and Business Intelligence. Having one year onsite experience in Mexico and USA with USAA Client, USA. Having good Knowledge in Bigdata, Hadoop, Pig, Hive, Sqoop, Hbase, Python, Spark, Scala.
Sudhir hadoop and Data warehousing resume
Sudhir hadoop and Data warehousing resume
Sudhir Saxena
When working with big data or complex algorithms, we often look to parallelize our code to optimize runtime. By taking advantage of a GPUs 1000+ cores, a data scientist can quickly scale out solutions inexpensively and sometime more quickly than using traditional CPU cluster computing. In this webinar, we will present ways to incorporate GPU computing to complete computationally intensive tasks in both Python and R. See the full presentation here: 👉 https://vimeo.com/153290051 Learn more about the Domino data science platform: https://www.dominodatalab.com
GPU Computing for Data Science
GPU Computing for Data Science
Domino Data Lab
Slides from paper given at the Digital Methods Winter School Mini-Conference at the University of Amsterdam, 14th January 2016.
Ways of Seeing Data: Towards a Critical Literacy for Data Visualisations as R...
Ways of Seeing Data: Towards a Critical Literacy for Data Visualisations as R...
Jonathan Gray
Empowering developers to deploy their own data stores using Terrafom, Puppet and rage. A talk about automating server building and configuration for Elasticsearch clusters, using Hashicorp and puppet labs tool. Presented at Config Management Camp 2016 in Ghent
Empowering developers to deploy their own data stores
Empowering developers to deploy their own data stores
Tomas Doran
While technological innovation brings constant change to the data landscape, many organizations still struggle with the basics: ensuring they have reliable, high quality data. In health care, the promise of insight to be gained through analytics is dependent on ensuring the interactions between providers and patients are recorded accurately and completely. While traditional health care data is dependent on person-to-person contact, new technologies are emerging that change how health care is delivered and how health care data is captured, stored, accessed and used. Using health care as a lens through which to understand the emergence of big data, this presentation will ask the audience to think about data in old and new ways in order to gain insight about how to improve the quality of data, regardless of size.
DAMA Webinar - Big and Little Data Quality
DAMA Webinar - Big and Little Data Quality
DATAVERSITY
Data scientists, data engineers, and data businesspeople are critical to leveraging data in any organization. A common complaint from data science managers is that data scientists invest time prototyping algorithms, and throw them over a proverbial fence to engineers to implement, only to find the algorithms must be rebuilt from scratch to scale. This is a symptom of a broader ailment -- that data teams are often designed as functional silos without proper communication and planning. This talk outlines a framework to build and organize a data team that produces better results, minimizes wasted effort among team members, and ships great data products.
Bridging the Gap Between Data Science & Engineer: Building High-Performance T...
Bridging the Gap Between Data Science & Engineer: Building High-Performance T...
ryanorban
Talk for Computer Graphics on the Web
Visualising Data with Code
Visualising Data with Code
Ri Liu
Data Warehouse Modeling
Data Warehouse Modeling
vivekjv
The Net Promoter Score process involves a number of parameters which when worked together can provide the best outcome and can be very tricky to execute. This infographic highlights some pitfalls to avoid when running your next NPS campaign to churn out the best results out of it.
Net Promoter Score Pitfalls to Avoid
Net Promoter Score Pitfalls to Avoid
Aureus Analytics
How Pollen VC built a data-driven financial solution for digital businesses.
Pollen VC Building A Digital Lending Business
Pollen VC Building A Digital Lending Business
Pollen VC
Some examples and motivation for creating data structures from nothing but functions - Church Encoding! There's particular detail on how it can make free monads more efficient.
Data made out of functions
Data made out of functions
kenbot
Booz Allen Hamilton created the Field Guide to Data Science to help organizations and missions understand how to make use of data as a resource. The Second Edition of the Field Guide, updated with new features and content, delivers our latest insights in a fast-changing field. http://bit.ly/1O78U42
Booz Allen Field Guide to Data Science
Booz Allen Field Guide to Data Science
Booz Allen Hamilton
A look at the evolution of analytics and its revolutionary potential to transform ordinary businesses, power new business models, enable innovation, and deliver greater value. http://www2.deloitte.com/us/en/pages/deloitte-analytics/articles/analytics-trends.html
Analytics Trends 2016: The next evolution
Analytics Trends 2016: The next evolution
Deloitte United States
An evening workshop on Big Data at General Assembly, San Francisco
Working With Big Data
Working With Big Data
Seth Familian
Math
Math Lesson 10
Math Lesson 10
Cambriannews
Math
Math Lesson 9
Math Lesson 9
Cambriannews
Math
Math Lesson 8
Math Lesson 8
Cambriannews
Math
Math Lesson 7
Math Lesson 7
Cambriannews
Math
Math Lesson 4
Math Lesson 4
Cambriannews
Math
Math Lesson 5
Math Lesson 5
Cambriannews
Math
Math Lesson 6
Math Lesson 6
Cambriannews
Math
Math Lesson 3
Math Lesson 3
Cambriannews
Math
Math Lesson 2
Math Lesson 2
Cambriannews
Math
Math Lesson 1
Math Lesson 1
Cambriannews
More Related Content
Viewers also liked
Slides from paper given at the Digital Methods Winter School Mini-Conference at the University of Amsterdam, 14th January 2016.
Ways of Seeing Data: Towards a Critical Literacy for Data Visualisations as R...
Ways of Seeing Data: Towards a Critical Literacy for Data Visualisations as R...
Jonathan Gray
Empowering developers to deploy their own data stores using Terrafom, Puppet and rage. A talk about automating server building and configuration for Elasticsearch clusters, using Hashicorp and puppet labs tool. Presented at Config Management Camp 2016 in Ghent
Empowering developers to deploy their own data stores
Empowering developers to deploy their own data stores
Tomas Doran
While technological innovation brings constant change to the data landscape, many organizations still struggle with the basics: ensuring they have reliable, high quality data. In health care, the promise of insight to be gained through analytics is dependent on ensuring the interactions between providers and patients are recorded accurately and completely. While traditional health care data is dependent on person-to-person contact, new technologies are emerging that change how health care is delivered and how health care data is captured, stored, accessed and used. Using health care as a lens through which to understand the emergence of big data, this presentation will ask the audience to think about data in old and new ways in order to gain insight about how to improve the quality of data, regardless of size.
DAMA Webinar - Big and Little Data Quality
DAMA Webinar - Big and Little Data Quality
DATAVERSITY
Data scientists, data engineers, and data businesspeople are critical to leveraging data in any organization. A common complaint from data science managers is that data scientists invest time prototyping algorithms, and throw them over a proverbial fence to engineers to implement, only to find the algorithms must be rebuilt from scratch to scale. This is a symptom of a broader ailment -- that data teams are often designed as functional silos without proper communication and planning. This talk outlines a framework to build and organize a data team that produces better results, minimizes wasted effort among team members, and ships great data products.
Bridging the Gap Between Data Science & Engineer: Building High-Performance T...
Bridging the Gap Between Data Science & Engineer: Building High-Performance T...
ryanorban
Talk for Computer Graphics on the Web
Visualising Data with Code
Visualising Data with Code
Ri Liu
Data Warehouse Modeling
Data Warehouse Modeling
vivekjv
The Net Promoter Score process involves a number of parameters which when worked together can provide the best outcome and can be very tricky to execute. This infographic highlights some pitfalls to avoid when running your next NPS campaign to churn out the best results out of it.
Net Promoter Score Pitfalls to Avoid
Net Promoter Score Pitfalls to Avoid
Aureus Analytics
How Pollen VC built a data-driven financial solution for digital businesses.
Pollen VC Building A Digital Lending Business
Pollen VC Building A Digital Lending Business
Pollen VC
Some examples and motivation for creating data structures from nothing but functions - Church Encoding! There's particular detail on how it can make free monads more efficient.
Data made out of functions
Data made out of functions
kenbot
Booz Allen Hamilton created the Field Guide to Data Science to help organizations and missions understand how to make use of data as a resource. The Second Edition of the Field Guide, updated with new features and content, delivers our latest insights in a fast-changing field. http://bit.ly/1O78U42
Booz Allen Field Guide to Data Science
Booz Allen Field Guide to Data Science
Booz Allen Hamilton
A look at the evolution of analytics and its revolutionary potential to transform ordinary businesses, power new business models, enable innovation, and deliver greater value. http://www2.deloitte.com/us/en/pages/deloitte-analytics/articles/analytics-trends.html
Analytics Trends 2016: The next evolution
Analytics Trends 2016: The next evolution
Deloitte United States
An evening workshop on Big Data at General Assembly, San Francisco
Working With Big Data
Working With Big Data
Seth Familian
Viewers also liked
(12)
Ways of Seeing Data: Towards a Critical Literacy for Data Visualisations as R...
Ways of Seeing Data: Towards a Critical Literacy for Data Visualisations as R...
Empowering developers to deploy their own data stores
Empowering developers to deploy their own data stores
DAMA Webinar - Big and Little Data Quality
DAMA Webinar - Big and Little Data Quality
Bridging the Gap Between Data Science & Engineer: Building High-Performance T...
Bridging the Gap Between Data Science & Engineer: Building High-Performance T...
Visualising Data with Code
Visualising Data with Code
Data Warehouse Modeling
Data Warehouse Modeling
Net Promoter Score Pitfalls to Avoid
Net Promoter Score Pitfalls to Avoid
Pollen VC Building A Digital Lending Business
Pollen VC Building A Digital Lending Business
Data made out of functions
Data made out of functions
Booz Allen Field Guide to Data Science
Booz Allen Field Guide to Data Science
Analytics Trends 2016: The next evolution
Analytics Trends 2016: The next evolution
Working With Big Data
Working With Big Data
More from Cambriannews
Math
Math Lesson 10
Math Lesson 10
Cambriannews
Math
Math Lesson 9
Math Lesson 9
Cambriannews
Math
Math Lesson 8
Math Lesson 8
Cambriannews
Math
Math Lesson 7
Math Lesson 7
Cambriannews
Math
Math Lesson 4
Math Lesson 4
Cambriannews
Math
Math Lesson 5
Math Lesson 5
Cambriannews
Math
Math Lesson 6
Math Lesson 6
Cambriannews
Math
Math Lesson 3
Math Lesson 3
Cambriannews
Math
Math Lesson 2
Math Lesson 2
Cambriannews
Math
Math Lesson 1
Math Lesson 1
Cambriannews
Physics
Physics class 2
Physics class 2
Cambriannews
Physics
Physics class 10
Physics class 10
Cambriannews
Physics
Physics class 8
Physics class 8
Cambriannews
Physics
Physics class 9
Physics class 9
Cambriannews
Physics
Physics class 5
Physics class 5
Cambriannews
Physics
Physics class 3
Physics class 3
Cambriannews
Physics
Physics class 6
Physics class 6
Cambriannews
Physics
Physics class 7
Physics class 7
Cambriannews
Physics
Physics class 4
Physics class 4
Cambriannews
Physics
Physics class 1
Physics class 1
Cambriannews
More from Cambriannews
(20)
Math Lesson 10
Math Lesson 10
Math Lesson 9
Math Lesson 9
Math Lesson 8
Math Lesson 8
Math Lesson 7
Math Lesson 7
Math Lesson 4
Math Lesson 4
Math Lesson 5
Math Lesson 5
Math Lesson 6
Math Lesson 6
Math Lesson 3
Math Lesson 3
Math Lesson 2
Math Lesson 2
Math Lesson 1
Math Lesson 1
Physics class 2
Physics class 2
Physics class 10
Physics class 10
Physics class 8
Physics class 8
Physics class 9
Physics class 9
Physics class 5
Physics class 5
Physics class 3
Physics class 3
Physics class 6
Physics class 6
Physics class 7
Physics class 7
Physics class 4
Physics class 4
Physics class 1
Physics class 1
Class 9 & 10 class lesson 10 ( stomuch and gastic gland)
1.
2.
পরিরিরি
3.
পপৌরিকিন্ত্রেি প্রধান অংশ
ও সহায়িাকািী অংন্ত্রেি েঠনও কাজ বর্ণনা কিন্ত্রি পািন্ত্রব এ পাঠ পশন্ত্রে রশক্ষার্থীিা ……….. যকৃ ন্ত্রিি কাজ বর্ণনা কিন্ত্রি পািন্ত্রব অগ্ন্যাশন্ত্রয়ি কাজ বর্ণনা কিন্ত্রি পািন্ত্রব
4.
5.
পিত্তথপি অগ্ন্যাশয় যকৃ ত পিৌপিক-গ্রপি
6.
অন্ননালী পাকস্থলী পকালন ইরলয়াম মলাশয় পায়ু যকৃ ি পাকস্থলী
7.
যকৃ ততর কাজ িক্ত তিরি রিটারমন A,E,D,K তিরি বাপির কাজ
8.
দিীয়কাজ ১। বাপির কাজ
9.
মূিযায়ণ ১।বাপির কাজ ৩। বাপির
কাজ ২।বাপির কাজ
10.
বাপির কাজ ১।বাপির কাজ
Download now