Input path: /home/debian/html/nutritwin/output_llm/660b06ee153cf/input.json
Output path: /home/debian/html/nutritwin/output_llm/660b06ee153cf/output.json
Input text: J'ai mangé deux portions de vache kiri et je suis allé courir une demi-heure dans le parc d'à côté
DB path: __deriveddata__/DerivedObjects/Data/KcalMeDB_fr.sl3
Picto path: __deriveddata__/DerivedObjects/Data/PictoMatcherNetNG_fr.json
Sport grounding path: __deriveddata__/DerivedObjects/Data/DerivedSportMET.json
==================================================================================================================================
Prompt from user: J'ai mangé deux portions de vache kiri et je suis allé courir une demi-heure dans le parc d'à côté
==================================================================================================================================
==================================== Prompt =============================================
Identify in this list of intents: ["Capture the user food consumption", "Capture the user physical activity", "Other intent"], the intents of the prompt: ###J'ai mangé deux portions de vache kiri et je suis allé courir une demi-heure dans le parc d'à côté###.
Format the result in JSON format: {intents: []}.
=========================================================================================
------------------------------ LLM Raw response -----------------------------
{
"intents": ["Capture the user food consumption", "Capture the user physical activity"]
}
-----------------------------------------------------------------------------
----------------- Make it compliant ------------------
{
"intents": ["Capture the user food consumption", "Capture the user physical activity"]
}
------------------------------------------------------
------------------------ After simplification ------------------------
{"intents": ["Capture the user food consumption", "Capture the user physical activity"]}
----------------------------------------------------------------------
==================================== Prompt =============================================
I need to identify food information from sentences.
Analyze the following french sentence: "J'ai mangé deux portions de vache kiri et je suis allé courir une demi-heure dans le parc d'à côté".
I want to identify for the food or beverage: the name, the type, the quantity for each ingredient and, if it exists, identify the brand, the cooking mode and the company name.
Containers, like "canette" or "verre", are quantities and not ingredients or food product.
"Portions", like "tranche", are quantities.
"Quantity" is in french.
"Company" is the company of the brand.
"Quignon" is a quantity.
Ignore what it is not connected to nutrition, beverage or food.
Music and is not nutrition.
Extract how the product is consumed.
In the name, ignore the level of cooking mode.
When brand is not specified and the product is very well-known (like "Coca-Cola"), provide the brand name in "brand", otherwise set "brand" to "".
Ignore the actions.
The restaurants are not brand.
Identify what type of food.
Ignore food with a negative verb, ex "Je n'ai pas pris de viande".
Do not extract ingredients for product with a brand.
If the food or beverage consumption is in the past, the event is a "declaration", for example: "J'ai mangé du pain", the event is a declaration.
If the food or beverage consumption will be in the future or even soon, the event is an "intent", for example: "Je vais manger du pain", the event is an intent.
Otherwise the event is unknown.
Map the event of eating on ["intent", "declaration", "unknown"].
Identify the time of day when the foods were eaten and map it on "petit-déjeuner", "déjeuner", "grignotage" or "dîner".
Format the result in french in JSON in an array of tuples {"name":, "quantity":, "cooking":, "brand":, "company":, "type":, "time":, "event":}.
=========================================================================================
------------------------------ LLM Raw response -----------------------------
Based on your instructions, here's the analysis of the sentence "J'ai mangé deux portions de vache kiri et je suis allé courir une demi-heure dans le parc d'à côté".
The sentence mentions the consumption of food in the past, so the event is a "declaration". However, the time of day when the food was consumed is not specified in the sentence.
The food product mentioned is "vache kiri", which is a well-known brand of cheese. The quantity consumed is "deux portions" (two portions). The cooking mode is not specified.
Here's the information formatted in JSON:
```json
[
{
"name": "vache kiri",
"quantity": "deux portions",
"cooking": "",
"brand": "vache kiri",
"company": "",
"type": "fromage",
"time": "unknown",
"event": "declaration"
}
]
```
-----------------------------------------------------------------------------
----------------- Make it compliant ------------------
Based on your instructions, here's the analysis of the sentence "J'ai mangé deux portions de vache kiri et je suis allé courir une demi-heure dans le parc d'à côté".
The sentence mentions the consumption of food in the past, so the event is a "declaration". However, the time of day when the food was consumed is not specified in the sentence.
The food product mentioned is "vache kiri", which is a well-known brand of cheese. The quantity consumed is "deux portions" (two portions). The cooking mode is not specified.
Here's the information formatted in JSON:
```json
[
{
"name": "vache kiri",
"quantity": "deux portions",
"cooking": "",
"brand": "vache kiri",
"company": "",
"type": "fromage",
"time": "unknown",
"event": "declaration"
}
]
```
------------------------------------------------------
------------------------ After simplification ------------------------
[ { "name": "vache kiri", "quantity": "deux portions", "cooking": "", "brand": "vache kiri", "company": "", "type": "fromage", "time": "unknown", "event": "declaration" }]
----------------------------------------------------------------------
--------------------------------- LLM result -----------------------------------
{'response': [{'name': 'vache kiri', 'quantity': 'deux portions', 'cooking': '', 'brand': 'vache kiri', 'company': '', 'type': 'fromage', 'time': 'unknown', 'event': 'declaration'}], 'cost': 0.05964}
--------------------------------------------------------------------------------
First try:
SELECT V_Name,V_Comment,V_NormName,V_NormComment,V_PackType,V_GTIN,V_GTINRef,V_ID,V_GlobalCount,V_NormTrademark,V_Trademark,V_NormAggr FROM KCALME_TABLE WHERE V_NormName LIKE '% vache kiri %' AND (V_NormTrademark = '' OR V_NormTrademark IS NULL)
Second try:
SELECT V_Name,V_Comment,V_NormName,V_NormComment,V_PackType,V_GTIN,V_GTINRef,V_ID,V_GlobalCount,V_NormTrademark,V_Trademark,V_NormAggr FROM KCALME_TABLE WHERE V_NormAggr LIKE '% vache kiri %' AND V_NormTrademark LIKE '%%'
-------------------------------------------
------ERROR--------------------------------
No solution for query: SELECT V_Name,V_Comment,V_NormName,V_NormComment,V_PackType,V_GTIN,V_GTINRef,V_ID,V_GlobalCount,V_NormTrademark,V_Trademark,V_NormAggr FROM KCALME_TABLE WHERE V_NormAggr LIKE '% vache kiri %' AND V_NormTrademark LIKE '%%'
-------------------------------------------
-------------------------------------------
==================================== Prompt =============================================
I need to identify physical activities information from sentences.
Analyze the following french sentence: "J'ai mangé deux portions de vache kiri et je suis allé courir une demi-heure dans le parc d'à côté".
Identify all sports or physical activities, its current name and its duration if it exists.
If possible, map the name on one of the following activities in french: ["Basket-ball", "Cyclisme", "Boxe", "Danse", "Zumba", "Plong\u00e9e sous-marine", "Escrime", "Football", "Jardinage", "Golf", "Gymnastique", "Judo", "Karat\u00e9", "Corde \u00e0 sauter", "Rameur d'appartement", "Course \u00e0 pied", "Faire l'amour", "Ski de descente", "Natation", "Tennis", "Tapis de course", "A\u00e9robic", "Ski de fond", "danse", "V\u00e9lo d'appartement", "Aquabiking", "V\u00e9lo elliptique", "Exercice physique", "Equitation", "sports", "Escalade", "sports", "Patins en ligne", "sports", "Tennis de table", "sports", "Marche", "Activit\u00e9s nautiques et aquatiques", "Marche avec un chien", "T\u00e2ches m\u00e9nag\u00e8res", "Marche nordique"].
Ignore what it is not mapped to sport or physical activities.
"Ménage" is similar to "Nettoyage".
Cooking or eating are not a sport or a physical activities.
Define "intensity" of the sport. Map for "intensity" on one of these values: ["unknown", "low", "moderate", "high", "intense", "very intense"].
Duration must be a number.
Duration must be in minute.
If a physical activity will occur in the future, the event is an "intent".
If a physical activity has occured in the past, the event is a "declaration".
Map this event of the physical activity on ["intent", "declaration", "unknown"].
Ignore the negative action .
If the duration is unknown, set duration to 0.
Format the result for sport in french in JSON in an array of tuples {"name":, "duration":, "intensity":, "event":}.
When there is no solution, the result is: []
=========================================================================================
------------------------------ LLM Raw response -----------------------------
Based on your instructions, I have analyzed the sentence "J'ai mangé deux portions de vache kiri et je suis allé courir une demi-heure dans le parc d'à côté".
The physical activity identified is "Course à pied" which is mapped to "Course à pied" in the list you provided. The duration of the activity is "une demi-heure" which is 30 minutes. The intensity of running can vary, but for this analysis, I will consider it as "moderate". The event is a "declaration" as it has occurred in the past.
Here is the result in the requested JSON format:
```json
[
{
"name": "Course à pied",
"duration": 30,
"intensity": "moderate",
"event": "declaration"
}
]
```
-----------------------------------------------------------------------------
----------------- Make it compliant ------------------
Based on your instructions, I have analyzed the sentence "J'ai mangé deux portions de vache kiri et je suis allé courir une demi-heure dans le parc d'à côté".
The physical activity identified is "Course à pied" which is mapped to "Course à pied" in the list you provided. The duration of the activity is "une demi-heure" which is 30 minutes. The intensity of running can vary, but for this analysis, I will consider it as "moderate". The event is a "declaration" as it has occurred in the past.
Here is the result in the requested JSON format:
```json
[
{
"name": "Course à pied",
"duration": 30,
"intensity": "moderate",
"event": "declaration"
}
]
```
------------------------------------------------------
------------------------ After simplification ------------------------
[ { "name": "Course à pied", "duration": 30, "intensity": "moderate", "event": "declaration" }]
----------------------------------------------------------------------
--------------------------------- LLM result -----------------------------------
{'response': [{'name': 'Course à pied', 'duration': 30, 'intensity': 'moderate', 'event': 'declaration'}], 'cost': 0.06287999999999999}
--------------------------------------------------------------------------------
--------------------------------- final result -----------------------------------
{'prompt': "J'ai mangé deux portions de vache kiri et je suis allé courir une demi-heure dans le parc d'à côté", 'intents': ['Capture the user food consumption', 'Capture the user physical activity'], 'model': 'mistral-large-latest', 'solutions': {'nutrition': [], 'activity': [{'trigram': 'RUN', 'duration': 30, 'event': 'declaration', 'level': 'RUN06'}]}, 'cputime': 17.117971658706665}
----------------------------------------------------------------------------------
LLM CPU Time: 17.117971658706665