hello / gist:d779ed23463a4e70b08655702a1b7472
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1 | Hello. |
2 | World. |
3 | (this is revision 2) |
hanfy / gist:ae102370517b4a3ea4c14056ed91816f
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1 | 地方撒发生 |
hanfy / gist:3283b9e503f049e581be30144b67fb72
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1 | 分身乏术方式 |
slackmage / gist:dd9da855d6b94d3ab25959387109996e
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1 | Here are the AI job titles that businesses are currently hiring for, as mentioned across the provided sources: |
2 | |
3 | 1. Machine Learning Engineer[1][3][5][6][10][16] |
4 | 2. Data Scientist[1][3][5][6][10][16] |
5 | 3. AI Research Scientist[1][5][6] |
6 | 4. Applied AI Scientist[1] |
7 | 5. Natural Language Processing (NLP) Scientist[1] |
8 | 6. AI Engineer[2][5][10][12] |
9 | 7. AI Product Manager[2][10] |
10 | 8. AI Designer[2] |
slackmage / gist:b70fda230e0c407181072ad087bcb89e
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1 | Here is a list of growth stocks mentioned in the sources along with their growth rates: |
2 | Lifeway Foods, Inc. - 248.59% |
3 | Palantir Technologies Inc. - 190.97% |
4 | MakeMyTrip Ltd. - 183.17% |
5 | Crowdstrike Holdings - Specific growth rate not mentioned |
6 | Tesla (NASDAQ:TSLA) - 39% |
7 | Shopify (NYSE:SHOP) - 24% |
8 | Block (NYSE:SQ) - 16% |
9 | Etsy (NASDAQ:ETSY) - 10% |
10 | Nvidia (NASDAQ:NVDA) - 39% |
damascene / gist:e5157ec6a1c5417ea771344226c52658
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• Forked from1 | Test |
slackmage / gist:e5157ec6a1c5417ea771344226c52658
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1 | Training your own AI music generator involves several steps, primarily focused on gathering data, choosing a model, training the model, and then fine-tuning it for specific tasks. Here’s a detailed guide on how to train your own AI music generator: |
2 | |
3 | ### Step 1: Gather Musical Data |
4 | The first step in training an AI music generator is to collect a large dataset of music. This dataset should be as diverse as possible to allow the AI to learn various musical styles and structures. You can use MIDI files, audio files, or even sheet music as your data source. Websites like the Global Copyright Exchange offer genre-specific datasets for AI-generated music, which can be a valuable resource[11]. |
5 | |
6 | ### Step 2: Choose a Model |
7 | Select an appropriate model for music generation. Deep learning models, particularly Recurrent Neural Networks (RNNs) and Transformer models, are popular choices due to their effectiveness in handling sequential data like music. Tools like Google's Magenta project provide pre-built models and tools specifically designed for music generation[16][17]. |
8 | |
9 | ### Step 3: Preprocess the Data |
10 | Before training, the data needs to be preprocessed. For MIDI and audio files, this might involve converting them into a format suitable for training, such as piano roll representations or spectrograms. This step is crucial as it directly affects the quality of the training. |
slackmage / gist:b0ee05c9f208477b935333e2443da3dc
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1 | Training your own AI music generator involves several steps, primarily focused on gathering data, choosing a model, training the model, and then fine-tuning it for specific tasks. Here’s a detailed guide on how to train your own AI music generator: |
2 | |
3 | ### Step 1: Gather Musical Data |
4 | The first step in training an AI music generator is to collect a large dataset of music. This dataset should be as diverse as possible to allow the AI to learn various musical styles and structures. You can use MIDI files, audio files, or even sheet music as your data source. Websites like the Global Copyright Exchange offer genre-specific datasets for AI-generated music, which can be a valuable resource[11]. |
5 | |
6 | ### Step 2: Choose a Model |
7 | Select an appropriate model for music generation. Deep learning models, particularly Recurrent Neural Networks (RNNs) and Transformer models, are popular choices due to their effectiveness in handling sequential data like music. Tools like Google's Magenta project provide pre-built models and tools specifically designed for music generation[16][17]. |
8 | |
9 | ### Step 3: Preprocess the Data |
10 | Before training, the data needs to be preprocessed. For MIDI and audio files, this might involve converting them into a format suitable for training, such as piano roll representations or spectrograms. This step is crucial as it directly affects the quality of the training. |