801 to be preciseSomeone must have brought 800 shares
And predict a total volume of 801 1/2239
801 to be preciseSomeone must have brought 800 shares
Hi TTM,interesting like to Steve Brightfieldâs post
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Everything old????interesting like to Steve Brightfieldâs post
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(âŚ) I came across the name Fernando Sevilla MartĂnez before, in connection with RaĂşl Parada Medina, whom I first noticed liking BrainChip LinkedIn posts more than a year ago (and there have been many more sinceâŚ).
Given that RaĂşl Parada Medina describes himself as an âIoT research specialist within the connected car project at a Spanish automobile manufacturerâ, I had already suggested a connection to the Volkswagen Group via SEAT or CUPRA at the time.
https://thestockexchange.com.au/threads/brn-discussion-ongoing.1/post-424590
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RaĂşl Parada Medina, PhD - CTTC | LinkedIn
IoT research specialist within the connected car project at a Spanish automobile⌠¡ Experience: CTTC ¡ Education: Universitat Pompeu Fabra - Barcelona ¡ Location: Castelldefels ¡ 500+ connections on LinkedIn. View RaĂşl Parada Medina, PhDâs profile on LinkedIn, a professional community of 1...www.linkedin.com
Agent Raul Parada Medina - Col¡laboratori Catalunya
colabscatalunya.cat
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Extremely likely the same RaĂşl Parada Medina whom you recently spotted asking for help with Akida in the DeGirum Community - very disappointingly, no one from our company appears to have been willing to help solve this problem for more than 3 months!
Why promote DeGirum for developers wanting to work with Akida and then not give assistance when needed? Not a good look, if we are to believe shashi from the DeGirum team, who wrote on February 12 he would forward Paradaâs request to the BrainChip team, but apparently never got a reply.
https://thestockexchange.com.au/threads/brn-discussion-ongoing.1/post-461608
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The issue continued, until it was eventually solved on 27 May by another DeGirum team member, stephan-degirum (presumably Stephan Sokolov, who recently demonstrated running the DeGirum PySDK directly on BrainChip hardware at the 2025 Embedded Vision Summit - see the video here: https://thestockexchange.com.au/threads/brn-discussion-ongoing.1/post-469037)
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Create customized SNN code
Hi, Iâm interested in the neuromorphic hardware available, Akida. How can I create my own code to be launched in the platform? Thankscommunity.degirum.com
raul.parada.medina
May 27
Hi @alex and @shashi for your reply, it looks there is no update from Brianchip in this sense. Please, could you tell me how to upload this model in the platform? Age estimation (regression) example â Akida Examples documentation. Thanks!
1 Reply
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shashiDeGirum Team
May 27
@stephan-degirum
Can you please help @raul.parada.medina ?
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stephan-degirum
raul.parada.medina![]()
May 27
Hello @raul.parada.medina , conversion of a model from BrainChipâs model zoo into our format is straightforward:
Once you have an Akida model object, like Step 4 in the example:
model_akida = convert(model_quantized_keras)
Youâll need to map the model to your device and then convert it to a compatible binary:
from akida import devices
# Map model onto your Akida device
dev = devices()[0]
try:
model_akida.map(dev, hw_only=True)
except RuntimeError:
model_akida.map(dev, hw_only=False)
# Extract the C++-compatible program blob
blob = model_akida.sequences[0].program
with open("model_cxx.fbz", "wb") as f:
f.write(blob)
print("C++-compatible model written to model_cxx.fbz")
Note: You want to be sure that the model is supported on your Akida device. There are many models on the BrainChip model zoo that are not compatible with their âversion 1 IPâ devices.
If your device is a v1 device, youâll need to add a set_akida_version guard:
from cnn2snn import convert, set_akida_version, AkidaVersion
# Convert the model
with set_akida_version(AkidaVersion.v1):
model_akida = convert(model_quantized_keras)
model_akida.summary()
from akida import devices
# Map model onto your Akida device
# ... (see above)
for more information on v1/v2 model compatibility please see their docs: Akida models zoo â Akida Examples documentation
Once you have a model binary blob created:
Create a model JSON file adjacent to the blob by following Model JSON Structure | DeGirum Docs or by looking at existing BrainChip models on our AI Hub for reference: https://hub.degirum.com/degirum/brainchip
ModelPath is your binary model file
RuntimeAgent is AKIDA
DeviceType is the middle output from akida devices in all caps.
For example for if akida devices shows: PCIe/NSoC_v2/0 you put: NSOC_V2
Your JSON + binary model blob are now compatible with PySDK. Try running the inference on your device locally by specifying the full path to the JSON as a zoo_url, see: PySDK Package | DeGirum Docs
âFor local AI hardware inferences you specify zoo_urlparameter as either a path to a local model zoo directory, or a path to modelâs .json configuration file.â
You can then zip them up and upload them to your model zoo in our AI Hub.
Let me know if this helped.
P.S. we currently have v1 hardware in our cloud farm, and this model is the face estimation model for NSoC_v2: https://hub.degirum.com/degirum/brainchip/vgg_regress_age_utkface--32x32_quant_akida_NSoC_1
Anyway, as you had already noticed in your first post on this DeGirum enquiry, RaĂşl Parada Medina (assuming it is the same person, which I have no doubt about) and Fernando Sevilla MartĂnez are both co-authors of a paper on autonomous driving:
https://thestockexchange.com.au/threads/brn-discussion-ongoing.1/post-450543
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In fact, they have co-published two papers on autonomous driving, together with another researcher: Jordi Casas-Roma. He is director of the Master in Data Science at the Barcelona-based private online university Universitat Oberta de Catalunya, the same department where Fernando Sevilla MartĂnez got his Masterâs degree in 2022 before moving to Wolfsburg the following year, where he now works as a data scientist at the headquarters of the Volkswagen Group.
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Speaking of RaĂşl Parada Medina:
On 13 February I took this screenshot, but never followed up on it:
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It appears the planned WISSA workshop as well as some others got eventually cancelled, as only three of the scheduled workshops actually took place in late June:
https://www.ie2025.fraunhofer.de/workshops/
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Nevertheless it is evidence that RaĂşl Parada Medinaâs work is also relevant in the field of smart agriculture.
Prior to that, he was part of the 5GMED project that ran from September 2020 to August 2024 (sorry, donât have the time right now to look up the individual links - all the following screenshots were taken in mid-February).
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Keep in mind that Raúl Parada Medina has a telecommunications background and works as a Senior Researcher for CTTC in Castelldefels near Barcelona, the Centre Tecnològic de Telecomunicacions de Catalunya.
So when he describes himself as an âIoT research specialist within the connected car project at a Spanish automobile manufacturerâ, the emphasis is on âconnectedâ rather than on âautomobileâ. Therefore, any upcoming research projects may not involve cars at all.
FF
AiLabs a Brainchip partner has upgraded their website since last I took a look.
The following link takes you to 'News". They only have two news items and both relate to Brainchip.
The first one will be well known to genuine shareholders and investors but I had not seen the second which has involved quite a bit of work to present by AiLabs:
https://ailabsinc.com/news-event/details2