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Francisco Mena

@fmenat.bsky.social

Researcher @gfz.bsky.social & PhD candidate @rptu.bsky.social πŸ‡©πŸ‡ͺ > MSc @UTFSM πŸ‡¨πŸ‡± | ex. Researcher @dfki.bsky.social πŸ‡©πŸ‡ͺ & visitor @Inria πŸ‡«πŸ‡· Enjoying research in AI & ML πŸ€– | Now, into #AI4EO πŸ›°οΈ

439 Followers  |  325 Following  |  29 Posts  |  Joined: 16.11.2024
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Posts by Francisco Mena (@fmenat.bsky.social)

Promotional graphic for the β€œCode for Earth” programme. The design features a dark blue and teal background with abstract geometric shapes. Large text reads β€œCall for participation,” with the word β€œparticipation” inside a green oval with small circular accents. A green label at the top left shows β€œPhase 1” and the dates β€œ24.02.2026 – 09.04.2026.” The top right displays the β€œCode for Earth” logo. Along the bottom are logos for ECMWF, the European Union, Copernicus, Destination Earth, and the European Weather Cloud.

Promotional graphic for the β€œCode for Earth” programme. The design features a dark blue and teal background with abstract geometric shapes. Large text reads β€œCall for participation,” with the word β€œparticipation” inside a green oval with small circular accents. A green label at the top left shows β€œPhase 1” and the dates β€œ24.02.2026 – 09.04.2026.” The top right displays the β€œCode for Earth” logo. Along the bottom are logos for ECMWF, the European Union, Copernicus, Destination Earth, and the European Weather Cloud.

πŸ“£ Applications are open for ECMWF’s Code for Earth 2026!

New data driven challenges across visualisation, machine learning, software development plus a brand new Africa focused stream with African partners.

πŸ“… Apply by 9 April 2026

@codeforearth.bsky.social

www.ecmwf.int/en/about/med...

25.02.2026 09:52 β€” πŸ‘ 8    πŸ” 5    πŸ’¬ 0    πŸ“Œ 0
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πŸŽ“ 10 #PhD positions in #AI & #DataScience - #Berlin

BIFOLD is hiring 10 PhD candidates in:
πŸ€– #MachineLearning
πŸ—„οΈ #DataManagement
πŸ”— #ML Γ— #DM

Apply until Feb 13, 2026
www.jobs.tu-berlin.de/en/job-posti...

@tuberlin.bsky.social @rieck.mlsec.org
#AcademicSky #PhDSky #sciencejobs
#academicjobs

19.01.2026 14:29 β€” πŸ‘ 7    πŸ” 3    πŸ’¬ 1    πŸ“Œ 0

I'm traveling πŸš„ towards Copenhagen πŸ‡©πŸ‡° for #Eurips. Happy to catch up if you are around πŸ˜€

02.12.2025 06:43 β€” πŸ‘ 3    πŸ” 0    πŸ’¬ 0    πŸ“Œ 0

We combine contrastive learning + modality-discriminative losses to structure features into shared and specific subspaces. Tested on four EO benchmarks (classification & regression) β†’ consistent gains over both EO and ML state-of-the-art.

21.11.2025 12:30 β€” πŸ‘ 0    πŸ” 0    πŸ’¬ 0    πŸ“Œ 0
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Multi-modal co-learning for Earth observation: enhancing single-modality models via modality collaboration - Machine Learning Multi-modal co-learning is emerging as an effective paradigm in machine learning, enabling models to collaboratively learn from different modalities to enhance single-modality predictions. Earth Obser...

I'm happy to share that our new paper in Multi-modal co-learning for Earth observation got published in the ML journalπŸŒπŸ“‘
Here, we show how models trained on multiple sensor modalities can boost single-modality inference
πŸ”— link.springer.com/article/10.1...

21.11.2025 12:30 β€” πŸ‘ 3    πŸ” 0    πŸ’¬ 1    πŸ“Œ 0
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Are these the happiest PhD students in the world? Nature - Brazil, Australia and Italy have the highest satisfaction scores in Nature’s global 2025 PhD survey β€” but are these nations really the best places to do a doctorate?

We asked 3,785 PhD students across 107 countries about their experiences. Where do you think the happiest doctoral candidates were?

go.nature.com/43usVmf

26.10.2025 15:51 β€” πŸ‘ 36    πŸ” 11    πŸ’¬ 0    πŸ“Œ 1

🌍 Excited to announce our Workshop on AI for Climate & Conservation (AICC) at #EurIPS2025 in Copenhagen! πŸŽ‰

πŸ“’ Call for Participation: sites.google.com/g.harvard.ed...

Confirmed speakers from Mistral AI, DeepMind, ETH Zurich, LSCE & more.

Looking forward to meeting and discussing in Copenhagen!

19.09.2025 10:37 β€” πŸ‘ 20    πŸ” 10    πŸ’¬ 1    πŸ“Œ 7
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Working on representation learning for Earth Observation?
Come join the discussion at the EurIPS workshop "REO: Advances in Representation Learning for Earth Observation"

Call for papers deadline: October 15, AoE
Workshop site: sites.google.com/view/reoeurips

@euripsconf.bsky.social @esa.int

09.10.2025 12:32 β€” πŸ‘ 8    πŸ” 4    πŸ’¬ 0    πŸ“Œ 1

Always happy to receive those accepted paper email πŸ˜ƒ

24.09.2025 06:26 β€” πŸ‘ 1    πŸ” 0    πŸ’¬ 0    πŸ“Œ 0
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In the search for optimal multi-view learning models for crop classification with global remote sensing data Studying and analyzing cropland is a difficult task due to its dynamic and heterogeneous growth behavior. Usually, diverse data sources can be collect…

It is possible to reduce the number of experiments when searching for the best combination of encoder architecture and fusion strategy for crop classification 🌱🚜?

Spoiler alert: In our recent (open access) paper πŸ“–, we show that it can!

www.sciencedirect.com/science/arti...

11.09.2025 14:04 β€” πŸ‘ 2    πŸ” 1    πŸ’¬ 1    πŸ“Œ 0
Workshops - A NeurIPS-endorsed conference in Europe A NeurIPS-endorsed conference in Europe held in Copenhagen, Denmark

We are delighted to announce the #EurIPS 2025 Workshops πŸŽ‰: eurips.cc/workshops/

We received 52 proposals, which were single-blind reviewed by more than 35 expert reviewers, leading to 18 accepted workshops (acceptance rate 34.6%).

12.09.2025 10:53 β€” πŸ‘ 17    πŸ” 5    πŸ’¬ 1    πŸ“Œ 1

We are looking for an NLP postdoc/engineer to work on adding language capabilities to our Earth observation sensor-agnostic models (Atomizer, to be presented at BMVC25).

Details here: jobs.inria.fr/public/class...

Atomizer: arxiv.org/pdf/2506.13542
GEO-ReSeT project: anr.fr/Projet-ANR-2...

08.09.2025 12:30 β€” πŸ‘ 3    πŸ” 2    πŸ’¬ 0    πŸ“Œ 0
Snapshot of paper link

Snapshot of paper link

Did you know that mutual distillation can be used to make deep learning models robust to missing sensor data?
We present this in our recent paper from a collaboration between @dfki.bsky.social and Inria (evergreen team). Available at @ieeeaccess.bsky.social πŸ”“

ieeexplore.ieee.org/document/10994…

13.05.2025 11:37 β€” πŸ‘ 3    πŸ” 2    πŸ’¬ 2    πŸ“Œ 0

Considering the current substantial use of computational resources in deep learning research and its consequential impact on the carbon footprint πŸ‘£, it is important to look for systematic ways that lead us to reduce computational efforts

11.09.2025 14:04 β€” πŸ‘ 1    πŸ” 0    πŸ’¬ 0    πŸ“Œ 0
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Instead of trying all possible combinations, the search could be reduced to a 2-step sequential search: 1) search for the best encoder architecture with early/input fusion, and then 2) with the encoder selected in (1), search for the best fusion strategy

11.09.2025 14:04 β€” πŸ‘ 1    πŸ” 0    πŸ’¬ 1    πŸ“Œ 0
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When considering all the diverse encoder architectures (like convolutional or attention-based) and fusion strategies (like input and feature) from the literature, the search space of all possible model combinations is considerably big and a resource-wasting process.

11.09.2025 14:04 β€” πŸ‘ 0    πŸ” 0    πŸ’¬ 1    πŸ“Œ 0
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In the search for optimal multi-view learning models for crop classification with global remote sensing data Studying and analyzing cropland is a difficult task due to its dynamic and heterogeneous growth behavior. Usually, diverse data sources can be collect…

It is possible to reduce the number of experiments when searching for the best combination of encoder architecture and fusion strategy for crop classification 🌱🚜?

Spoiler alert: In our recent (open access) paper πŸ“–, we show that it can!

www.sciencedirect.com/science/arti...

11.09.2025 14:04 β€” πŸ‘ 2    πŸ” 1    πŸ’¬ 1    πŸ“Œ 0
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🏞️ Today is @unep.org #WorldLakeDay!

Global, long-term satellite records developed by the ESA Climate Change Initiative shed light on lakes contribution to the hydrological, energy and carbon cycles and their response to climate change.

Check out the data set visualisations here: t1p.de/mvl0a

27.08.2025 14:51 β€” πŸ‘ 6    πŸ” 5    πŸ’¬ 0    πŸ“Œ 0
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πŸ“£ Please share: We invite submissions to the 29th International Conference on Artificial Intelligence and Statistics (#AISTATS 2026) and welcome paper submissions at the intersection of AI, machine learning, statistics, and related areas. [1/3]

12.08.2025 11:46 β€” πŸ‘ 36    πŸ” 21    πŸ’¬ 2    πŸ“Œ 2

Also, don't hesitate to visit our CCS in Probabilistic Machine Learning for Earth Observation (TU2.M1)!
⏲️ Tuesday, 5 August, 10:30 - 11:45

01.08.2025 14:31 β€” πŸ‘ 1    πŸ” 1    πŸ’¬ 0    πŸ“Œ 0

Also, don't hesitate to visit our CCS in Probabilistic Machine Learning for Earth Observation (TU2.M1)!
⏲️ Tuesday, 5 August, 10:30 - 11:45

01.08.2025 14:31 β€” πŸ‘ 1    πŸ” 1    πŸ’¬ 0    πŸ“Œ 0

⏲️ Thursday, 7 August, 15:45 - 17:00
πŸ“œ On What Depends the Robustness of Multi-source Models to Missing Data in Earth Observation? in the TH4.P11: Multi-source Semantic Segmentation (oral 🎀)
⭐I'll present our findings about three major factors that drive the robustness to missing data sources.

01.08.2025 14:31 β€” πŸ‘ 0    πŸ” 0    πŸ’¬ 1    πŸ“Œ 0

⏲️ Tuesday, 5 August, 09:15 - 10:30
πŸ“œ A Multi-modal Co-learning Model with Shared and Specific Features for Land-cover Classification in the TUP1.PB: Cross-Domain Learning and Semantic Segmentation in RS (posterπŸ–ΌοΈ)
⭐ Here we leverage co-learning and multiple losses to improve single-modality inference

01.08.2025 14:31 β€” πŸ‘ 2    πŸ” 0    πŸ’¬ 1    πŸ“Œ 0

This coming week will be a thrilling and enriching experience at IGARSS 2025. I'll be presenting two works in multi-modal/source learning focused on missing data sources.

Let's catch up if you are around!

#IGARSS #IEEE #GRSS #AI4EO #EO #AI

01.08.2025 14:31 β€” πŸ‘ 3    πŸ” 1    πŸ’¬ 1    πŸ“Œ 0
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During the last couple of years, we have read a lot of papers on explainability and often felt that something was fundamentally missingπŸ€”

This led us to write a position paper (accepted at #ICML2025) that attempts to identify the problem and to propose a solution.

arxiv.org/abs/2402.02870
πŸ‘‡πŸ§΅

10.07.2025 17:58 β€” πŸ‘ 12    πŸ” 5    πŸ’¬ 1    πŸ“Œ 1
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Academic "Deadlines"

03.07.2025 20:39 β€” πŸ‘ 99    πŸ” 17    πŸ’¬ 1    πŸ“Œ 1
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GitHub - fmenat/DSensDp: Public repository of our research work at IEEE Access Public repository of our research work at IEEE Access - fmenat/DSensDp

The code is available at github.com/fmenat/DSensDp

13.05.2025 13:03 β€” πŸ‘ 1    πŸ” 0    πŸ’¬ 0    πŸ“Œ 0
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We show that our multi-sensor approach is more robust in average than recent methods from the EO literature in three classification tasks, namely cropland classification, crop-type classification, and tree-species classification.

@interdonatos.bsky.social

13.05.2025 11:37 β€” πŸ‘ 3    πŸ” 1    πŸ’¬ 0    πŸ“Œ 0
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Concretely, we use a mix of sensor dropout as data augmentation and mutual distillation to enhance collaborative learning across sensors, namely DSensD+. We leverage multi-task learning to combine various objectives to achieve an optimal robustness

13.05.2025 11:37 β€” πŸ‘ 0    πŸ” 0    πŸ’¬ 1    πŸ“Œ 0
Snapshot of paper link

Snapshot of paper link

Did you know that mutual distillation can be used to make deep learning models robust to missing sensor data?
We present this in our recent paper from a collaboration between @dfki.bsky.social and Inria (evergreen team). Available at @ieeeaccess.bsky.social πŸ”“

ieeexplore.ieee.org/document/10994…

13.05.2025 11:37 β€” πŸ‘ 3    πŸ” 2    πŸ’¬ 2    πŸ“Œ 0