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lib/fips140/v1.1.0-rc1.zip
make([]uint, n) copy(newLimbs, x.limbs) x.limbs = newLimbs return x } extraLimbs := x.limbs[len(x.limbs):n] clear(extraLimbs) x.limbs = x.limbs[:n] return x } // reset returns a zero nat of n limbs, reusing x's storage if n <= cap(x.limbs). func (x *Nat) reset(n int) *Nat { if cap(x.limbs) < n { x.limbs = make([]uint, n) return x } // Clear both the returned limbs and the previously used ones. clear(x.limbs[:max(n, len(x.limbs))]) x.limbs = x.limbs[:n] return x } // resetToBytes assigns x = b, where b...
Created: Tue Dec 30 11:13:12 GMT 2025 - Last Modified: Thu Dec 11 16:27:41 GMT 2025 - 663K bytes - Click Count (0) -
lib/fips140/v1.0.0-c2097c7c.zip
ciphertext, data); err != nil { // We sometimes decrypt and authenticate concurrently, so we overwrite // dst in the event of a tag mismatch. To be consistent across platforms // and to avoid releasing unauthenticated plaintext, we clear the buffer // in the event of an error. clear(out) return nil, err } return ret, nil } // sliceForAppend takes a slice and a requested number of bytes. It returns a // slice with the contents of the given slice followed by that many bytes and a // second slice that aliases...Created: Tue Dec 30 11:13:12 GMT 2025 - Last Modified: Thu Sep 25 19:53:19 GMT 2025 - 642.7K bytes - Click Count (0) -
docs/en/docs/release-notes.md
async def lifespan(app: FastAPI): # Load the ML model ml_models["answer_to_everything"] = fake_answer_to_everything_ml_model yield # Clean up the ML models and release the resources ml_models.clear() app = FastAPI(lifespan=lifespan) @app.get("/predict") async def predict(x: float): result = ml_models["answer_to_everything"](x) return {"result": result} ```
Created: Sun Dec 28 07:19:09 GMT 2025 - Last Modified: Sat Dec 27 19:06:15 GMT 2025 - 586.7K bytes - Click Count (0) -
RELEASE.md
* Add tf.keras.layers.AbstractRNNCell as the preferred implementation of RNN cell for TF v2. User can use it to implement RNN cell with custom behavior. * Adding `clear_losses` API to be able to clear losses at the end of forward pass in a custom training loop in eager. * Add support for passing list of lists to the `metrics` param in Keras `compile`.Created: Tue Dec 30 12:39:10 GMT 2025 - Last Modified: Tue Oct 28 22:27:41 GMT 2025 - 740.4K bytes - Click Count (3)