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what

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One positive example of buying foreign IP for once in Turkey.
Smart purchase to avoid sanctions, to develop national capabilities and also export options. Win, win, win. More of it please.

The entire South Eastern Asia region build their riches with that strategy as a starting point.
They had entire committees that laid out plans on what technologies to procure and where. To build national champions was a national strategy.
 

Zafer

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Curious if abundant electric power can negate the need for natural gas power for home use; for heating, cooking, bathing which is powered by gas at the moment. What is the math?
 

Zafer

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I see that nuclear power is more than twice the price of gas in 2021 pre-war (?) prices.



EDIT: I see that cost of electric from gas has caught up with nuclear power as of 2023. It makes sense to increase nuclear power generation efforts.

1692697177300.png
 
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Agha Sher

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I think should finalize the second project first before evaluating sites for 4th plant.

2nd site has been confirmed to be Sinop. Talks with SK and Russia for the construction.
3rd site has been confirmed somewhere in Thrace. Talks with China for construction.

They are accelerating nuclear efforts. (potentially to acquire expertise rapidly in case a nuclear weapon program should become a priority)
 

uçuyorum

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Renewable is much cheaper than either and Turkey has enough combined wind and solar potential to feed entire grid eventually. Shoukd prioritize that
 

boredaf

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Now this is a very good purchase:

Turkish armour giant Nurol Teknoloji acquires German company


Nurol Teknoloji, the Ankara-based defence industry company Nurol Teknoloji, one of the world's leading manufacturers of advanced technical ballistic ceramics and one of the largest armour suppliers to Turkey and NATO countries, is strengthening its leadership in advanced technical ceramic technologies with the acquisition of a majority stake in the German ceramic raw material producer INDUSTRIE KERAMIK HOCHRHEIN (IKH).

INDUSTRIE KERAMIK HOCHRHEIN (IKH) has been developing and producing innovative advanced technical ceramic powders since 1995. IKH, which has been developing special products for many technology giants in the field of powder metallurgy and advanced technical ceramics for years, is one of the leading players in the advanced technical ceramics industry with its expertise in ceramic technologies, innovative approach and two modern production facilities for fine/ultrafine, oxide/non-oxide ceramic powders.
 

Huelague

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Now this is a very good purchase:

Turkish armour giant Nurol Teknoloji acquires German company


Nurol Teknoloji, the Ankara-based defence industry company Nurol Teknoloji, one of the world's leading manufacturers of advanced technical ballistic ceramics and one of the largest armour suppliers to Turkey and NATO countries, is strengthening its leadership in advanced technical ceramic technologies with the acquisition of a majority stake in the German ceramic raw material producer INDUSTRIE KERAMIK HOCHRHEIN (IKH).

INDUSTRIE KERAMIK HOCHRHEIN (IKH) has been developing and producing innovative advanced technical ceramic powders since 1995. IKH, which has been developing special products for many technology giants in the field of powder metallurgy and advanced technical ceramics for years, is one of the leading players in the advanced technical ceramics industry with its expertise in ceramic technologies, innovative approach and two modern production facilities for fine/ultrafine, oxide/non-oxide ceramic powders.
Cant find the news on german pages.
 

UkroTurk

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Do we have such nano nuclear generator projects?

ZEUS-Reactor-isolated.png

Featuring a fully solid core, removing heat through thermal conduction, eliminating the need for coolant and pumps. Our reactor utilizes the simplest design with the least moving components and ensures the immobilization of fission products.



Or cooled micro reactors?
images.jpeg




 
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Strong AI

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Within the scope of the Multi-band Software Defined Radio (SDR) in Joint Operations, Turkey’s most modern military flight control tower is delivered by ASELSAN with all its elements and put into active use.

 

MhhJA

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ASELSAN RAIL SYSTEM PROJECTS


ASELSAN'S FIELDS OF ACTIVITY AND PROJECTS CARRIED OUT IN RAIL VEHICLE SYSTEMS

ASELSAN produces indigenous and national solutions in critical and foreign-dependent areas such as traction drives, auxiliary power units, traction motors and train control management systems in rail vehicles with the experience gained in the military field.

ANKARAY OPERATION AUXILIARY POWER UNIT DEVELOPMENT AND MASS PRODUCTION PROJECT
Within the scope of the contract signed between EGO General Directorate and ASELSAN, a new generation Auxiliary Power Unit specifically for ANKARAY vehicles was developed by ASELSAN within a short period of time. The developed prototype product was designed in accordance with the existing mechanical and electrical interfaces of the vehicle. Therefore, there was no need to make any changes to the vehicle. The auxiliary power units of the entire fleet were replaced with new generation technological products. According to the data obtained from the field for 3 years, the availability percentage is calculated as 99.9%.

NATIONAL ELECTRIC TRAIN TRACTION CHAIN AND TRAIN CONTROL MANAGEMENT SYSTEM DEVELOPMENT AND MASS PRODUCTION PROJECTS
In the National Electric Train Set prototype project designed and manufactured by Türkiye Raylı Sistem Araçları Sanayii A.Ş. (TÜRASAŞ), ASELSAN provided the critical components of the Traction System (main transformer, traction converter and auxiliary converter, traction motor, gearbox) and Train Control Management System (TCMS).

Turkey's first drive unit CESUR™ (Traction Drive), one of the traction system components originally designed by ASELSAN, is used in the National Electric Train. CESUR™ is Turkey's first drive unit that includes a dual motor drive, auxiliary power unit, battery charging unit and internal liquid cooling system in a compact structure within the same unit.

The Train Control Management System (TCMS), indigenously developed by ASELSAN, controls the functions of the vehicle such as acceleration, door control, passenger passes and lighting, while also managing comfort-oriented subsystems such as air conditioning and passenger information. The architecture, control reliability algorithms, hardware, embedded and application software of the TKYS computer, which is designed in a modular structure, were developed by ASELSAN.

As a result of the success achieved in field tests, passenger operation has started in the first two train sets and a contract was signed with TÜRASAŞ on 01.11.2022 for the supply of ASELSAN systems for 19 train sets within the scope of mass production.

In parallel with the work on prototype train sets, the gearbox, traction motor and main transformer units, which previously had to be procured from abroad, are being nationalised under the leadership of ASELSAN.


 
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moz68k

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@moz68k would like to hear an explanation of Safir Zekâ, I don't know much about software stuff
Sure thing, from what I understand, it's TUBITAK's hand-rolled version of an end-to-end machine learning platform. ML/Data scientists, software engineers at various institutions across Turkey doing critical basic science and (defence) R&D probably used (or wanted to use) commercial MLaaS (Machine Learning as a Service) platforms like Azure ML or Amazon Sagemaker, which pose data ownership issues. It seems Safir Zeka (SZ) covers a lot of what those platforms have to offer. I will be simplifying a lot, so the following is not an accurate overview on MLOps.

- Web/Data Scraping: A specialized "crawler" is submitted to SZ which likely schedules and distributes (lightweight) VMs (virtual machines) collect the targeted data sources (for speed and the prevention of throttling). These are used to build large textual/media datasets for training models. OpenAI infamously scraped a large portion of the open web to train its family of GPT LLNs (large language models).

- Data Sources: When datasets get sufficiently large, it's difficult to organize and distribute them to users (machines or people). SZ probably provides an interface to databases (structured data only) or data lakes (all types of data, less structured, like a simplified computer filesystem for very large files on the cloud) that users can stream (Apache Spark/Flink) or download on-demand. The sources can be versioned, provisioned and distributed across multiple servers for added convenience, safety and redundancy.

- Data Pipelines: Raw data usually needs to be prepared before experimentation or training of ML models. In the diagram, they give the example of normalization. E.g. disparate date formats converted to a standard ISO version or numbers min-max normalized to lie in a certain interval (usually [0, 1]). SZ probably interfaces with Apache Airflow, which is a library that allows you chain scripts that do this stuff. These pipelines can be scheduled to run at specified intervals or triggered by programmed events (like new data). They can be processed incrementally or in batches.

- Data Visualization: Processed data from these pipelines are usually cached and written to one of those data sources. Since they mention containers, which are lightweight VMs that can be spun up quickly on the cloud, SZ provides services where you launch one of these containers (there are probably templates) and work on your experiments/analyses on the cloud via a notebook interface. DataBricks and/or Jupyter (Zeppelin) notebooks are probably integrated. Google has Colab, which works similarly, but is closed-source and runs only on their cloud. These notebooks can be used to develop the models, do data analysis and visualization etc. They can be automated as part of a pipeline.

- Training: When a model is ready to be trained, either a notebook or script is submitted to SZ which likely distributes the processing across (multiple) powerful clusters to massively speed up training. It's indicated that SZ provides a dashboard interface that allows users to monitor the progress/health of the training process. The most basic metric of how much you've trained your ML model is the loss function. When the loss is no longer decreasing in sufficiently large steps, you've just about finished training. Below is a screenshot of TensorBoard, which SZ probably provides an interface over. You'll need to report these statistics to SZ in your training script for the monitoring to work, so there's definitely an API (application programming interface) for it.

1699874635538.png


- Publishing: When your model is ready, it's essentially a massive multidimensional grid of numbers (a Tensor). SZ likely allows users to easily host these models that live on a container image that has, in addition to the model, the necessary server code to respond to web requests (e.g., asking ChatGPT a question) by first transforming said requests into a feature vector (what the grid of numbers will be fed), then reply with a processed response, i.e., the model's prediction. The data blob that forms the model as well as the container are all stored and executed on the same cloud infrastructure as the rest of the features I discussed earlier.

I've worked previously worked in data engineering and data scientist roles, and life was a pain before proper MLOps, so this is definitely a lovely homegrown platform if it matches or approaches Microsoft, Amazon, or Google's offerings. Cheers.

Edit: Safir seems to basically be what I described using Apache and other free and open-source technologies: OpenStack for the cloud infrastructure, Zeppelin for the notebooks, Hadoop/HDFS for distributed computing and data lakes, Spark for processing, Nvidia DIGITS for training etc.

Here are the architecture diagrams for those who're interested:

1699885010796.png

1699884952876.png


Here is how Turkish academia was using ML to assist flight envelope protection with active sidesticks way back in 2019, this stuff will make it much easier for users now that it exists:

Z. Ünal, “Simulator based evaluation of adaptive envelope protection algorithms for active sidestick controllers,” Thesis (M.S.) -- Graduate School of Natural and Applied Sciences. Aerospace Engineering., Middle East Technical University, 2019.

PS: This post should probably be moved to the Science and Tech thread.
 
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Radonsider

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Sure thing, from what I understand, it's TUBITAK's hand-rolled version of an end-to-end machine learning platform. ML/Data scientists, software engineers at various institutions across Turkey doing critical basic science and (defence) R&D probably used (or wanted to use) commercial MLaaS (Machine Learning as a Service) platforms like Azure ML or Amazon Sagemaker, which pose data ownership issues. It seems Safir Zeka (SZ) covers a lot of what those platforms have to offer. I will be simplifying a lot, so the following is not an accurate overview on MLOps.

- Web/Data Scraping: A specialized "crawler" is submitted to SZ which likely schedules and distributes (lightweight) VMs (virtual machines) collect the targeted data sources (for speed and the prevention of throttling). These are used to build large textual/media datasets for training models. OpenAI infamously scraped a large portion of the open web to train its family of GPT LLNs (large language models).

- Data Sources: When datasets get sufficiently large, it's difficult to organize and distribute them to users (machines or people). SZ probably provides an interface to databases (structured data only) or data lakes (all types of data, less structured, like a simplified computer filesystem for very large files on the cloud) that users can stream (Apache Spark/Flink) or download on-demand. The sources can be versioned, provisioned and distributed across multiple servers for added convenience, safety and redundancy.

- Data Pipelines: Raw data usually needs to be prepared before experimentation or training of ML models. In the diagram, they give the example of normalization. E.g. disparate date formats converted to a standard ISO version or numbers min-max normalized to lie in a certain interval (usually [0, 1]). SZ probably interfaces with Apache Airflow, which is a library that allows you chain scripts that do this stuff. These pipelines can be scheduled to run at specified intervals or triggered by programmed events (like new data). They can be processed incrementally or in batches.

- Data Visualization: Processed data from these pipelines are usually cached and written to one of those data sources. Since they mention containers, which are lightweight VMs that can be spun up quickly on the cloud, SZ provides services where you launch one of these containers (there are probably templates) and work on your experiments/analyses on the cloud via a notebook interface. DataBricks and/or Jupyter notebooks are probably integrated. Google has Colab, which works similarly, but is closed-source and runs only on their cloud. These notebooks can be used to develop the models, do data analysis and visualization etc. They can be automated as part of a pipeline.

- Training: When a model is ready to be trained, either a notebook or script is submitted to SZ which likely distributes the processing across (multiple) powerful clusters to massively speed up training. It's indicated that SZ provides a dashboard interface that allows users to monitor the progress/health of the training process. The most basic metric of how much you've trained your ML model is the loss function. When the loss is no longer decreasing in sufficiently large steps, you've just about finished training. Below is a screenshot of TensorBoard, which SZ probably provides an interface over. You'll need to report these statistics to SZ in your training script for the monitoring to work, so there's definitely an API (application programming interface) for it.

View attachment 62911

- Publishing: When your model is ready, it's essentially a massive multidimensional grid of numbers (a Tensor). SZ likely allows users to easily host these models that live on a container image that has, in addition to the model, the necessary server code to respond to web requests (e.g., asking ChatGPT a question) by first transforming said requests into a feature vector (what the grid of numbers will be fed), then reply with a processed response, i.e., the model's prediction. The data blob that forms the model as well as the container are all stored and executed on the same cloud infrastructure as the rest of the features I discussed earlier.

I've worked previously worked in data engineering and data scientist roles, and life was a pain before proper MLOps, so this is definitely a lovely homegrown platform if it matches or approaches Microsoft, Amazon, or Google's offerings. Cheers.

PS: This post should probably be moved to the Science and Tech thread.
Zamn thanks
 

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