Picture by Creator
The Expertise Innovation Institute (TII) in Abu Dhabi launched its subsequent sequence of Falcon language fashions on Might 14. The brand new fashions match the TII mission as know-how enablers and can be found as open-source fashions on HuggingFace. They launched two variants of the Falcon 2 fashions: Falcon-2-11B and Falcon-2-11B-VLM. The brand new VLM mannequin guarantees distinctive multi-model compatibilities that carry out on par with different open-source and closed-source fashions.
Mannequin Options and Efficiency
The current Falcon-2 language mannequin has 11 billion parameters and is skilled on 5.5 trillion tokens from the falcon-refinedweb dataset. The newer, extra environment friendly fashions compete properly towards the Meta’s current Llama3 mannequin with 8 billion parameters. The outcomes are summarized within the beneath desk shared by TII:
Picture by TII
As well as, the Falcon-2 mannequin fares properly towards Google’s Gemma with 7 billion parameters. Gemma-7B outperforms the Falcon-2 common efficiency by solely 0.01. As well as, the mannequin is multi-lingual, skilled on generally used languages inclduing English, French, Spanish and German amongst others.
Nevertheless, the groundbreaking achievement is the discharge of Falcon-2-11B Imaginative and prescient Language Mannequin that provides picture understanding and multi-modularity to the identical language mannequin. The image-to-text dialog functionality with comparable capabilities with current fashions like Llama3 and Gemma is a big development.
Use the Fashions for Inference
Let’s get to the coding half so we will run the mannequin on our native system and generate responses. First, like every other undertaking, allow us to arrange a recent surroundings to keep away from dependency conflicts. Given the mannequin is launched just lately, we’ll the necessity the most recent variations of all libraries to keep away from lacking help and pipelines.
Create a brand new Python digital surroundings and activate it utilizing the beneath instructions:
python -m venv venv
supply venv/bin/activate
Now now we have a clear surroundings, we will set up our required libraries and dependencies utilizing Python package deal supervisor. For this undertaking, we’ll use photographs accessible on the web and cargo them in Python. The requests and Pillow library are appropriate for this goal. Furthermore, for loading the mannequin, we’ll you utilize the transformers library that has inner help for HuggingFace mannequin loading and inference. We are going to use bitsandbytes, PyTorch and speed up as a mannequin loading utility and quantization.
To ease up the arrange course of, we will create a easy necessities textual content file as follows:
# necessities.txt
speed up # For distributed loading
bitsandbytes # For Quantization
torch # Utilized by HuggingFace
transformers # To load pipelines and fashions
Pillow # Primary Loading and Picture Processing
requests # Downloading picture from URL
We will now set up all of the dependencies in a single line utilizing:
pip set up -r necessities.txt
We will now begin engaged on our code to make use of the mannequin for inference. Let’s begin by loading the mannequin in our native system. The mannequin is obtainable on HuggingFace and the overall dimension exceeds 20GB of reminiscence. We can’t load the mannequin in shopper grade GPUs which normally have round 8-16GB RAM. Therefore, we might want to quantize the mannequin i.e. we’ll load the mannequin in 4-bit floating level numbers as an alternative of the standard 32-bit precision to lower the reminiscence necessities.
The bitsandbytes library gives a simple interface for quantization of Massive Language Fashions in HuggingFace. We will initalize a quantization configuration that may be handed to the mannequin. HuggingFace internally handles all required operations and units the proper precision and changes for us. The config will be set as follows:
from transformers import BitsAndBytesConfig
quantization_config = BitsAndBytesConfig(
load_in_4bit=True,
bnb_4bit_quant_type="nf4",
# Unique mannequin help BFloat16
bnb_4bit_compute_dtype=torch.bfloat16,
)
This enables the mannequin to slot in beneath 16GB GPU RAM, making it simpler to load the mannequin with out offloading and distribution. We will now load the Falcon-2B-VLM. Being a multi-modal mannequin, we shall be dealing with photographs alongside textual prompts. The LLava mannequin and pipelines are designed for this goal as they permit CLIP-based picture embeddings to be projected to language mannequin inputs. The transformers library has built-in Llava mannequin processors and pipelines. We will then load the mannequin as beneath:
from transformers import LlavaNextForConditionalGeneration, LlavaNextProcessor
processor = LlavaNextProcessor.from_pretrained(
"tiiuae/falcon-11B-vlm",
tokenizer_class="PreTrainedTokenizerFast"
)
mannequin = LlavaNextForConditionalGeneration.from_pretrained(
"tiiuae/falcon-11B-vlm",
quantization_config=quantization_config,
device_map="auto"
)
We move the mannequin url from the HuggingFace mannequin card to the processor and generator. We additionally move the bitsandbytes quantization config to the generative mannequin, so will probably be robotically loaded in 4-bit precision.
We will now begin utilizing the mannequin to generate responses! To discover the multi-modal nature of Falcon-11B, we might want to load a picture in Python. For a check pattern, allow us to load this normal picture accessible right here. To load a picture from an online URL, we will use the Pillow and requests library as beneath:
from Pillow import Picture
import requests
url = "https://static.theprint.in/wp-content/uploads/2020/07/football.jpg"
img = Picture.open(requests.get(url, stream=True).uncooked)
The requests library downloads the picture from the URL, and the Pillow library can learn the picture from bytes to an ordinary picture format. Now that may have our check picture, we will now generate a pattern response from our mannequin.
Let’s arrange a pattern immediate template that the mannequin is delicate to.
instruction = "Write a long paragraph about this picture."
immediate = f"""User:<image>n{instruction} Falcon:"""
The immediate template itself is self-explanatory and we have to comply with it for finest responses from the VLM. We move the immediate and the picture to the Llava picture processor. It internally makes use of CLIP to create a mixed embedding of the picture and the immediate.
inputs = processor(
immediate,
photographs=img,
return_tensors="pt",
padding=True
).to('cuda:0')
The returned tensor embedding acts as an enter for the generative mannequin. We move the embeddings and the transformer-based Falcon-11B mannequin generates a textual response based mostly on the picture and instruction offered initially.
We will generate the response utilizing the beneath code:
output = mannequin.generate(**inputs, max_new_tokens=256)
generated_captions = processor.decode(output[0], skip_special_tokens=True).strip()
There now we have it! The generated_captions variable is a string that comprises the generated response from the mannequin.
Outcomes
We examined numerous photographs utilizing the above code and the responses for a few of them are summarized on this picture beneath. We see that the Falcon-2 mannequin has a robust understanding of the picture and generates legible solutions to point out its comprehension of the situations within the photographs. It will possibly learn textual content and likewise highlights the worldwide data as an entire. To summarize, the mannequin has glorious capabilities for visible duties, and can be utilized for image-based conversations.
Picture by Creator| Inference photographs from the Web. Sources: Cats Picture, Card Picture, Soccer Picture
License and Compliance
Along with being open-source, the fashions are launched with the Apache2.0 License making them accessible for Open Entry. This enables the modification and distribution of the mannequin for private and business makes use of. This implies you can now use Falcon-2 fashions to supercharge your LLM-based purposes and open-source fashions to supply multi-modal capabilities on your customers.
Wrapping Up
General, the brand new Falcon-2 fashions present promising outcomes. However that’s not all! TII is already engaged on the following iteration to additional push efficiency. They give the impression of being to combine the Combination-of-Consultants (MoE) and different machine studying capabilities into their fashions to enhance accuracy and intelligence. If Falcon-2 looks like an enchancment, be prepared for his or her subsequent announcement.
Kanwal Mehreen Kanwal is a machine studying engineer and a technical author with a profound ardour for knowledge science and the intersection of AI with drugs. She co-authored the e-book “Maximizing Productivity with ChatGPT”. As a Google Era Scholar 2022 for APAC, she champions range and tutorial excellence. She’s additionally acknowledged as a Teradata Range in Tech Scholar, Mitacs Globalink Analysis Scholar, and Harvard WeCode Scholar. Kanwal is an ardent advocate for change, having based FEMCodes to empower girls in STEM fields.